比较提交

..

29 次代码提交

作者 SHA1 备注 提交日期
binary-husky
ffb5655a23 Merge branch 'frontier' into production 2023-12-09 22:36:50 +08:00
binary-husky
cb92ccb409 Merge branch 'frontier' into production 2023-12-05 15:09:03 +08:00
binary-husky
cc4df91900 Merge branch 'frontier' into production 2023-11-30 22:37:58 +08:00
binary-husky
89707a1c58 Merge branch 'frontier' into production 2023-11-30 22:24:54 +08:00
binary-husky
d539ad809e Merge branch 'frontier' into production 2023-11-29 00:33:19 +08:00
binary-husky
02b18ff67a Merge branch 'frontier' into production 2023-11-26 17:24:47 +08:00
binary-husky
6896b10be9 Merge branch 'frontier' into production 2023-11-24 03:28:30 +08:00
binary-husky
0ec5a8e5f8 Merge branch 'frontier' into production 2023-11-23 16:22:17 +08:00
binary-husky
79a0b687b8 Merge branch 'frontier' into production 2023-11-20 01:10:02 +08:00
binary-husky
70766cdd44 Merge branch 'frontier' into production 2023-11-14 23:29:51 +08:00
binary-husky
97f33b8bea 支持gpt-4-vision-preview 2023-11-13 13:10:15 +08:00
binary-husky
7280ea17fd Merge branch 'frontier' into production 2023-11-13 01:12:03 +08:00
binary-husky
535a901991 Merge branch 'frontier' into production 2023-11-13 00:49:57 +08:00
binary-husky
56f42397b1 Merge branch 'frontier' into production 2023-11-13 00:16:44 +08:00
binary-husky
aa7c47e821 Merge branch 'frontier' into production 2023-11-12 23:42:02 +08:00
binary-husky
62fb2794ec fix nougat 2023-11-12 14:13:34 +08:00
binary-husky
3121dee04a print plugin calls 2023-11-12 00:43:31 +08:00
binary-husky
cad541d8d7 Merge branch 'frontier' into production 2023-11-11 23:51:10 +08:00
binary-husky
9023aa6732 Merge branch 'frontier' into production 2023-11-11 14:09:39 +08:00
binary-husky
2d37b74a0c Merge branch 'frontier' into production 2023-11-08 18:41:04 +08:00
binary-husky
fdc350cfe8 Merge branch 'frontier' into production 2023-11-07 12:12:09 +08:00
binary-husky
58c6d45d84 Merge branch 'frontier' into production 2023-10-31 20:39:33 +08:00
binary-husky
4cc6ff65ac better local model interaction 2023-10-31 16:17:52 +08:00
binary-husky
8632413011 Merge branch 'frontier' into production 2023-10-31 03:09:41 +08:00
binary-husky
46e279b5dd Merge branch 'frontier' into production 2023-10-30 11:00:08 +08:00
binary-husky
25cf86dae6 修复get_conf接口 2023-10-30 10:59:08 +08:00
binary-husky
19e202ddfd bug fix 2023-10-29 00:57:43 +08:00
binary-husky
65dab46a28 api_key_manager 2023-10-29 00:47:48 +08:00
binary-husky
ecb473bc8b api_key_manager 2023-10-29 00:46:19 +08:00
共有 202 个文件被更改,包括 4116 次插入11616 次删除

查看文件

@@ -34,7 +34,7 @@ body:
- Others | 非最新版
validations:
required: true
- type: dropdown
id: os
attributes:
@@ -47,7 +47,7 @@ body:
- Docker
validations:
required: true
- type: textarea
id: describe
attributes:
@@ -55,7 +55,7 @@ body:
description: Describe the bug | 简述
validations:
required: true
- type: textarea
id: screenshot
attributes:
@@ -63,9 +63,15 @@ body:
description: Screen Shot | 有帮助的截图
validations:
required: true
- type: textarea
id: traceback
attributes:
label: Terminal Traceback & Material to Help Reproduce Bugs | 终端traceback如有 + 帮助我们复现的测试材料样本(如有)
description: Terminal Traceback & Material to Help Reproduce Bugs | 终端traceback如有 + 帮助我们复现的测试材料样本(如有)

查看文件

@@ -21,3 +21,8 @@ body:
attributes:
label: Feature Request | 功能请求
description: Feature Request | 功能请求

查看文件

@@ -1,44 +0,0 @@
# https://docs.github.com/en/actions/publishing-packages/publishing-docker-images#publishing-images-to-github-packages
name: build-with-all-capacity-beta
on:
push:
branches:
- 'master'
env:
REGISTRY: ghcr.io
IMAGE_NAME: ${{ github.repository }}_with_all_capacity_beta
jobs:
build-and-push-image:
runs-on: ubuntu-latest
permissions:
contents: read
packages: write
steps:
- name: Checkout repository
uses: actions/checkout@v3
- name: Log in to the Container registry
uses: docker/login-action@v2
with:
registry: ${{ env.REGISTRY }}
username: ${{ github.actor }}
password: ${{ secrets.GITHUB_TOKEN }}
- name: Extract metadata (tags, labels) for Docker
id: meta
uses: docker/metadata-action@v4
with:
images: ${{ env.REGISTRY }}/${{ env.IMAGE_NAME }}
- name: Build and push Docker image
uses: docker/build-push-action@v4
with:
context: .
push: true
file: docs/GithubAction+AllCapacityBeta
tags: ${{ steps.meta.outputs.tags }}
labels: ${{ steps.meta.outputs.labels }}

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@@ -15,7 +15,7 @@ jobs:
permissions:
issues: write
pull-requests: read
steps:
- uses: actions/stale@v8
with:

2
.gitignore vendored
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@@ -152,5 +152,3 @@ request_llms/moss
media
flagged
request_llms/ChatGLM-6b-onnx-u8s8
.pre-commit-config.yaml
themes/common.js.min.*.js

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@@ -18,6 +18,7 @@ WORKDIR /gpt
# 安装大部分依赖,利用Docker缓存加速以后的构建 (以下三行,可以删除)
COPY requirements.txt ./
COPY ./docs/gradio-3.32.6-py3-none-any.whl ./docs/gradio-3.32.6-py3-none-any.whl
RUN pip3 install -r requirements.txt

117
README.md
查看文件

@@ -1,8 +1,8 @@
> [!IMPORTANT]
> 2024.5.1: 加入Doc2x翻译PDF论文的功能,[查看详情](https://github.com/binary-husky/gpt_academic/wiki/Doc2x)
> 2024.4.30: 3.75版本引入Edge-TTS和SoVits语音克隆模块,[查看详情](https://www.bilibili.com/video/BV1Rp421S7tF/)
> 2024.3.11: 恭迎Claude3和Moonshot,全力支持Qwen、GLM、DeepseekCoder等中文大语言模型
> 2024.1.17: 安装依赖时,请选择`requirements.txt`中**指定的版本**。 安装命令:`pip install -r requirements.txt`。本项目完全开源免费,您可通过订阅[在线服务](https://github.com/binary-husky/gpt_academic/wiki/online)的方式鼓励本项目的发展
> **Caution**
>
> 2023.11.12: 某些依赖包尚不兼容python 3.12,推荐python 3.11。
>
> 2023.11.7: 安装依赖时,请选择`requirements.txt`中**指定的版本**。 安装命令:`pip install -r requirements.txt`。本项目开源免费,近期发现有人蔑视开源协议并利用本项目违规圈钱,请提高警惕,谨防上当受骗
<br>
@@ -42,11 +42,13 @@ If you like this project, please give it a Star.
Read this in [English](docs/README.English.md) | [日本語](docs/README.Japanese.md) | [한국어](docs/README.Korean.md) | [Русский](docs/README.Russian.md) | [Français](docs/README.French.md). All translations have been provided by the project itself. To translate this project to arbitrary language with GPT, read and run [`multi_language.py`](multi_language.py) (experimental).
<br>
> [!NOTE]
> 1.本项目中每个文件的功能都在[自译解报告](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告)`self_analysis.md`详细说明。随着版本的迭代,您也可以随时自行点击相关函数插件,调用GPT重新生成项目的自我解析报告。常见问题请查阅wiki
> [![常规安装方法](https://img.shields.io/static/v1?label=&message=常规安装方法&color=gray)](#installation) [![一键安装脚本](https://img.shields.io/static/v1?label=&message=一键安装脚本&color=gray)](https://github.com/binary-husky/gpt_academic/releases) [![配置说明](https://img.shields.io/static/v1?label=&message=配置说明&color=gray)](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明) [![wiki](https://img.shields.io/static/v1?label=&message=wiki&color=gray)]([https://github.com/binary-husky/gpt_academic/wiki/项目配置说明](https://github.com/binary-husky/gpt_academic/wiki))
> 1.请注意只有 **高亮** 标识的插件(按钮)才支持读取文件,部分插件位于插件区的**下拉菜单**中。另外我们以**最高优先级**欢迎和处理任何新插件的PR
>
> 2.本项目兼容并鼓励尝试国内中文大语言基座模型如通义千问,智谱GLM等。支持多个api-key共存,可在配置文件中填写如`API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`。需要临时更换`API_KEY`时,在输入区输入临时的`API_KEY`然后回车键提交即可生效
> 2.本项目中每个文件的功能都在[自译解报告](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告)`self_analysis.md`详细说明。随着版本的迭代,您也可以随时自行点击相关函数插件,调用GPT重新生成项目的自我解析报告。常见问题请查阅wiki
> [![常规安装方法](https://img.shields.io/static/v1?label=&message=常规安装方法&color=gray)](#installation) [![一键安装脚本](https://img.shields.io/static/v1?label=&message=一键安装脚本&color=gray)](https://github.com/binary-husky/gpt_academic/releases) [![配置说明](https://img.shields.io/static/v1?label=&message=配置说明&color=gray)](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明) [![wiki](https://img.shields.io/static/v1?label=&message=wiki&color=gray)]([https://github.com/binary-husky/gpt_academic/wiki/项目配置说明](https://github.com/binary-husky/gpt_academic/wiki))
>
> 3.本项目兼容并鼓励尝试国产大语言模型ChatGLM等。支持多个api-key共存,可在配置文件中填写如`API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`。需要临时更换`API_KEY`时,在输入区输入临时的`API_KEY`然后回车键提交即可生效。
<br><br>
@@ -54,12 +56,7 @@ Read this in [English](docs/README.English.md) | [日本語](docs/README.Japanes
功能(⭐= 近期新增功能) | 描述
--- | ---
⭐[接入新模型](https://github.com/binary-husky/gpt_academic/wiki/%E5%A6%82%E4%BD%95%E5%88%87%E6%8D%A2%E6%A8%A1%E5%9E%8B) | 百度[千帆](https://cloud.baidu.com/doc/WENXINWORKSHOP/s/Nlks5zkzu)与文心一言, 通义千问[Qwen](https://modelscope.cn/models/qwen/Qwen-7B-Chat/summary),上海AI-Lab[书生](https://github.com/InternLM/InternLM),讯飞[星火](https://xinghuo.xfyun.cn/),[LLaMa2](https://huggingface.co/meta-llama/Llama-2-7b-chat-hf),[智谱GLM4](https://open.bigmodel.cn/),DALLE3, [DeepseekCoder](https://coder.deepseek.com/)
⭐支持mermaid图像渲染 | 支持让GPT生成[流程图](https://www.bilibili.com/video/BV18c41147H9/)、状态转移图、甘特图、饼状图、GitGraph等等3.7版本)
⭐Arxiv论文精细翻译 ([Docker](https://github.com/binary-husky/gpt_academic/pkgs/container/gpt_academic_with_latex)) | [插件] 一键[以超高质量翻译arxiv论文](https://www.bilibili.com/video/BV1dz4y1v77A/),目前最好的论文翻译工具
⭐[实时语音对话输入](https://github.com/binary-husky/gpt_academic/blob/master/docs/use_audio.md) | [插件] 异步[监听音频](https://www.bilibili.com/video/BV1AV4y187Uy/),自动断句,自动寻找回答时机
⭐AutoGen多智能体插件 | [插件] 借助微软AutoGen,探索多Agent的智能涌现可能
⭐虚空终端插件 | [插件] 能够使用自然语言直接调度本项目其他插件
⭐[接入新模型](https://github.com/binary-husky/gpt_academic/wiki/%E5%A6%82%E4%BD%95%E5%88%87%E6%8D%A2%E6%A8%A1%E5%9E%8B) | 百度[千帆](https://cloud.baidu.com/doc/WENXINWORKSHOP/s/Nlks5zkzu)与文心一言, 通义千问[Qwen](https://modelscope.cn/models/qwen/Qwen-7B-Chat/summary),上海AI-Lab[书生](https://github.com/InternLM/InternLM),讯飞[星火](https://xinghuo.xfyun.cn/),[LLaMa2](https://huggingface.co/meta-llama/Llama-2-7b-chat-hf),[智谱API](https://open.bigmodel.cn/),DALLE3, [DeepseekCoder](https://coder.deepseek.com/)
润色、翻译、代码解释 | 一键润色、翻译、查找论文语法错误、解释代码
[自定义快捷键](https://www.bilibili.com/video/BV14s4y1E7jN) | 支持自定义快捷键
模块化设计 | 支持自定义强大的[插件](https://github.com/binary-husky/gpt_academic/tree/master/crazy_functions),插件支持[热更新](https://github.com/binary-husky/gpt_academic/wiki/%E5%87%BD%E6%95%B0%E6%8F%92%E4%BB%B6%E6%8C%87%E5%8D%97)
@@ -68,16 +65,22 @@ Read this in [English](docs/README.English.md) | [日本語](docs/README.Japanes
Latex全文[翻译](https://www.bilibili.com/video/BV1nk4y1Y7Js/)、[润色](https://www.bilibili.com/video/BV1FT411H7c5/) | [插件] 一键翻译或润色latex论文
批量注释生成 | [插件] 一键批量生成函数注释
Markdown[中英互译](https://www.bilibili.com/video/BV1yo4y157jV/) | [插件] 看到上面5种语言的[README](https://github.com/binary-husky/gpt_academic/blob/master/docs/README_EN.md)了吗?就是出自他的手笔
chat分析报告生成 | [插件] 运行后自动生成总结汇报
[PDF论文全文翻译功能](https://www.bilibili.com/video/BV1KT411x7Wn) | [插件] PDF论文提取题目&摘要+翻译全文(多线程)
[Arxiv小助手](https://www.bilibili.com/video/BV1LM4y1279X) | [插件] 输入arxiv文章url即可一键翻译摘要+下载PDF
Latex论文一键校对 | [插件] 仿Grammarly对Latex文章进行语法、拼写纠错+输出对照PDF
[谷歌学术统合小助手](https://www.bilibili.com/video/BV19L411U7ia) | [插件] 给定任意谷歌学术搜索页面URL,让gpt帮你[写relatedworks](https://www.bilibili.com/video/BV1GP411U7Az/)
互联网信息聚合+GPT | [插件] 一键[让GPT从互联网获取信息](https://www.bilibili.com/video/BV1om4y127ck)回答问题,让信息永不过时
⭐Arxiv论文精细翻译 ([Docker](https://github.com/binary-husky/gpt_academic/pkgs/container/gpt_academic_with_latex)) | [插件] 一键[以超高质量翻译arxiv论文](https://www.bilibili.com/video/BV1dz4y1v77A/),目前最好的论文翻译工具
⭐[实时语音对话输入](https://github.com/binary-husky/gpt_academic/blob/master/docs/use_audio.md) | [插件] 异步[监听音频](https://www.bilibili.com/video/BV1AV4y187Uy/),自动断句,自动寻找回答时机
公式/图片/表格显示 | 可以同时显示公式的[tex形式和渲染形式](https://user-images.githubusercontent.com/96192199/230598842-1d7fcddd-815d-40ee-af60-baf488a199df.png),支持公式、代码高亮
⭐AutoGen多智能体插件 | [插件] 借助微软AutoGen,探索多Agent的智能涌现可能
启动暗色[主题](https://github.com/binary-husky/gpt_academic/issues/173) | 在浏览器url后面添加```/?__theme=dark```可以切换dark主题
[多LLM模型](https://www.bilibili.com/video/BV1wT411p7yf)支持 | 同时被GPT3.5、GPT4、[清华ChatGLM2](https://github.com/THUDM/ChatGLM2-6B)、[复旦MOSS](https://github.com/OpenLMLab/MOSS)伺候的感觉一定会很不错吧?
⭐ChatGLM2微调模型 | 支持加载ChatGLM2微调模型,提供ChatGLM2微调辅助插件
更多LLM模型接入,支持[huggingface部署](https://huggingface.co/spaces/qingxu98/gpt-academic) | 加入Newbing接口(新必应),引入清华[Jittorllms](https://github.com/Jittor/JittorLLMs)支持[LLaMA](https://github.com/facebookresearch/llama)和[盘古α](https://openi.org.cn/pangu/)
⭐[void-terminal](https://github.com/binary-husky/void-terminal) pip包 | 脱离GUI,在Python中直接调用本项目的所有函数插件开发中
⭐虚空终端插件 | [插件] 能够使用自然语言直接调度本项目其他插件
更多新功能展示 (图像生成等) …… | 见本文档结尾处 ……
</div>
@@ -87,10 +90,6 @@ Latex论文一键校对 | [插件] 仿Grammarly对Latex文章进行语法、拼
<img src="https://user-images.githubusercontent.com/96192199/279702205-d81137c3-affd-4cd1-bb5e-b15610389762.gif" width="700" >
</div>
<div align="center">
<img src="https://github.com/binary-husky/gpt_academic/assets/96192199/70ff1ec5-e589-4561-a29e-b831079b37fb.gif" width="700" >
</div>
- 所有按钮都通过读取functional.py动态生成,可随意加自定义功能,解放剪贴板
<div align="center">
@@ -112,7 +111,7 @@ Latex论文一键校对 | [插件] 仿Grammarly对Latex文章进行语法、拼
<img src="https://user-images.githubusercontent.com/96192199/226935232-6b6a73ce-8900-4aee-93f9-733c7e6fef53.png" width="700" >
</div>
- 多种大语言模型混合调用ChatGLM + OpenAI-GPT3.5 + GPT4
- 多种大语言模型混合调用ChatGLM + OpenAI-GPT3.5 + [API2D](https://api2d.com/)-GPT4
<div align="center">
<img src="https://user-images.githubusercontent.com/96192199/232537274-deca0563-7aa6-4b5d-94a2-b7c453c47794.png" width="700" >
</div>
@@ -120,26 +119,7 @@ Latex论文一键校对 | [插件] 仿Grammarly对Latex文章进行语法、拼
<br><br>
# Installation
```mermaid
flowchart TD
A{"安装方法"} --> W1("I. 🔑直接运行 (Windows, Linux or MacOS)")
W1 --> W11["1. Python pip包管理依赖"]
W1 --> W12["2. Anaconda包管理依赖推荐⭐"]
A --> W2["II. 🐳使用Docker (Windows, Linux or MacOS)"]
W2 --> k1["1. 部署项目全部能力的大镜像(推荐⭐)"]
W2 --> k2["2. 仅在线模型GPT, GLM4等镜像"]
W2 --> k3["3. 在线模型 + Latex的大镜像"]
A --> W4["IV. 🚀其他部署方法"]
W4 --> C1["1. Windows/MacOS 一键安装运行脚本(推荐⭐)"]
W4 --> C2["2. Huggingface, Sealos远程部署"]
W4 --> C4["3. ... 其他 ..."]
```
### 安装方法I直接运行 (Windows, Linux or MacOS)
### 安装方法I直接运行 (Windows, Linux or MacOS)
1. 下载项目
@@ -152,7 +132,7 @@ flowchart TD
在`config.py`中,配置API KEY等变量。[特殊网络环境设置方法](https://github.com/binary-husky/gpt_academic/issues/1)、[Wiki-项目配置说明](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明)。
「 程序会优先检查是否存在名为`config_private.py`的私密配置文件,并用其中的配置覆盖`config.py`的同名配置。如您能理解以上读取逻辑,我们强烈建议您在`config.py`同路径下创建一个名为`config_private.py`的新配置文件,并使用`config_private.py`配置项目,从而确保自动更新时不会丢失配置 」。
「 程序会优先检查是否存在名为`config_private.py`的私密配置文件,并用其中的配置覆盖`config.py`的同名配置。如您能理解以上读取逻辑,我们强烈建议您在`config.py`同路径下创建一个名为`config_private.py`的新配置文件,并使用`config_private.py`配置项目,以确保更新或其他用户无法轻易查看您的私有配置 」。
「 支持通过`环境变量`配置项目,环境变量的书写格式参考`docker-compose.yml`文件或者我们的[Wiki页面](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明)。配置读取优先级: `环境变量` > `config_private.py` > `config.py` 」。
@@ -172,11 +152,11 @@ flowchart TD
<details><summary>如果需要支持清华ChatGLM2/复旦MOSS/RWKV作为后端,请点击展开此处</summary>
<p>
【可选步骤】如果需要支持清华ChatGLM3/复旦MOSS作为后端,需要额外安装更多依赖前提条件熟悉Python + 用过Pytorch + 电脑配置够强):
【可选步骤】如果需要支持清华ChatGLM2/复旦MOSS作为后端,需要额外安装更多依赖前提条件熟悉Python + 用过Pytorch + 电脑配置够强):
```sh
# 【可选步骤I】支持清华ChatGLM3。清华ChatGLM备注如果遇到"Call ChatGLM fail 不能正常加载ChatGLM的参数" 错误,参考如下: 1以上默认安装的为torch+cpu版,使用cuda需要卸载torch重新安装torch+cuda; 2如因本机配置不够无法加载模型,可以修改request_llm/bridge_chatglm.py中的模型精度, 将 AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) 都修改为 AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
# 【可选步骤I】支持清华ChatGLM2。清华ChatGLM备注如果遇到"Call ChatGLM fail 不能正常加载ChatGLM的参数" 错误,参考如下: 1以上默认安装的为torch+cpu版,使用cuda需要卸载torch重新安装torch+cuda; 2如因本机配置不够无法加载模型,可以修改request_llm/bridge_chatglm.py中的模型精度, 将 AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) 都修改为 AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
# 【可选步骤II】支持复旦MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -217,7 +197,7 @@ pip install peft
docker-compose up
```
1. 仅ChatGPT + GLM4 + 文心一言+spark等在线模型推荐大多数人选择
1. 仅ChatGPT+文心一言+spark等在线模型推荐大多数人选择
[![basic](https://github.com/binary-husky/gpt_academic/actions/workflows/build-without-local-llms.yml/badge.svg?branch=master)](https://github.com/binary-husky/gpt_academic/actions/workflows/build-without-local-llms.yml)
[![basiclatex](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-latex.yml/badge.svg?branch=master)](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-latex.yml)
[![basicaudio](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-audio-assistant.yml/badge.svg?branch=master)](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-audio-assistant.yml)
@@ -229,7 +209,7 @@ pip install peft
P.S. 如果需要依赖Latex的插件功能,请见Wiki。另外,您也可以直接使用方案4或者方案0获取Latex功能。
2. ChatGPT + GLM3 + MOSS + LLAMA2 + 通义千问(需要熟悉[Nvidia Docker](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/install-guide.html#installing-on-ubuntu-and-debian)运行时)
2. ChatGPT + ChatGLM2 + MOSS + LLAMA2 + 通义千问(需要熟悉[Nvidia Docker](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/install-guide.html#installing-on-ubuntu-and-debian)运行时)
[![chatglm](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-chatglm.yml/badge.svg?branch=master)](https://github.com/binary-husky/gpt_academic/actions/workflows/build-with-chatglm.yml)
``` sh
@@ -257,13 +237,14 @@ P.S. 如果需要依赖Latex的插件功能,请见Wiki。另外,您也可以
# Advanced Usage
### I自定义新的便捷按钮学术快捷键
现在已可以通过UI中的`界面外观`菜单中的`自定义菜单`添加新的便捷按钮。如果需要在代码中定义,请使用任意文本编辑器打开`core_functional.py`,添加如下条目即可:
任意文本编辑器打开`core_functional.py`,添加如下条目,然后重启程序。(如果按钮已存在,那么可以直接修改(前缀、后缀都已支持热修改),无需重启程序即可生效。)
例如
```python
"超级英译中": {
# 前缀,会被加在你的输入之前。例如,用来描述你的要求,例如翻译、解释代码、润色等等
"Prefix": "请翻译把下面一段内容成中文,然后用一个markdown表格逐一解释文中出现的专有名词\n\n",
"Prefix": "请翻译把下面一段内容成中文,然后用一个markdown表格逐一解释文中出现的专有名词\n\n",
# 后缀,会被加在你的输入之后。例如,配合前缀可以把你的输入内容用引号圈起来。
"Suffix": "",
},
@@ -327,9 +308,9 @@ Tip不指定文件直接点击 `载入对话历史存档` 可以查看历史h
<img src="https://github.com/binary-husky/gpt_academic/assets/96192199/bc7ab234-ad90-48a0-8d62-f703d9e74665" width="500" >
</div>
8. 基于mermaid的流图、脑图绘制
8. OpenAI音频解析与总结
<div align="center">
<img src="https://github.com/binary-husky/gpt_academic/assets/96192199/c518b82f-bd53-46e2-baf5-ad1b081c1da4" width="500" >
<img src="https://github.com/binary-husky/gpt_academic/assets/96192199/709ccf95-3aee-498a-934a-e1c22d3d5d5b" width="500" >
</div>
9. Latex全文校对纠错
@@ -346,8 +327,8 @@ Tip不指定文件直接点击 `载入对话历史存档` 可以查看历史h
### II版本:
- version 3.80(TODO): 优化AutoGen插件主题并设计一系列衍生插件
- version 3.70: 引入Mermaid绘图,实现GPT画脑图等功能
- version 3.70todo: 优化AutoGen插件主题并设计一系列衍生插件
- version 3.60: 引入AutoGen作为新一代插件的基石
- version 3.57: 支持GLM3,星火v3,文心一言v4,修复本地模型的并发BUG
- version 3.56: 支持动态追加基础功能按钮,新汇报PDF汇总页面
@@ -380,32 +361,6 @@ GPT Academic开发者QQ群`610599535`
- 某些浏览器翻译插件干扰此软件前端的运行
- 官方Gradio目前有很多兼容性问题,请**务必使用`requirement.txt`安装Gradio**
```mermaid
timeline LR
title GPT-Academic项目发展历程
section 2.x
1.0~2.2: 基础功能: 引入模块化函数插件: 可折叠式布局: 函数插件支持热重载
2.3~2.5: 增强多线程交互性: 新增PDF全文翻译功能: 新增输入区切换位置的功能: 自更新
2.6: 重构了插件结构: 提高了交互性: 加入更多插件
section 3.x
3.0~3.1: 对chatglm支持: 对其他小型llm支持: 支持同时问询多个gpt模型: 支持多个apikey负载均衡
3.2~3.3: 函数插件支持更多参数接口: 保存对话功能: 解读任意语言代码: 同时询问任意的LLM组合: 互联网信息综合功能
3.4: 加入arxiv论文翻译: 加入latex论文批改功能
3.44: 正式支持Azure: 优化界面易用性
3.46: 自定义ChatGLM2微调模型: 实时语音对话
3.49: 支持阿里达摩院通义千问: 上海AI-Lab书生: 讯飞星火: 支持百度千帆平台 & 文心一言
3.50: 虚空终端: 支持插件分类: 改进UI: 设计新主题
3.53: 动态选择不同界面主题: 提高稳定性: 解决多用户冲突问题
3.55: 动态代码解释器: 重构前端界面: 引入悬浮窗口与菜单栏
3.56: 动态追加基础功能按钮: 新汇报PDF汇总页面
3.57: GLM3, 星火v3: 支持文心一言v4: 修复本地模型的并发BUG
3.60: 引入AutoGen
3.70: 引入Mermaid绘图: 实现GPT画脑图等功能
3.80(TODO): 优化AutoGen插件主题: 设计衍生插件
```
### III主题
可以通过修改`THEME`选项config.py变更主题
1. `Chuanhu-Small-and-Beautiful` [网址](https://github.com/GaiZhenbiao/ChuanhuChatGPT/)
@@ -415,8 +370,8 @@ timeline LR
1. `master` 分支: 主分支,稳定版
2. `frontier` 分支: 开发分支,测试版
3. 如何[接入其他大模型](request_llms/README.md)
4. 访问GPT-Academic的[在线服务并支持我们](https://github.com/binary-husky/gpt_academic/wiki/online)
3. 如何接入其他大模型:[接入其他大模型](request_llms/README.md)
### V参考与学习

查看文件

@@ -47,7 +47,7 @@ def backup_and_download(current_version, remote_version):
shutil.copytree('./', backup_dir, ignore=lambda x, y: ['history'])
proxies = get_conf('proxies')
try: r = requests.get('https://github.com/binary-husky/chatgpt_academic/archive/refs/heads/master.zip', proxies=proxies, stream=True)
except: r = requests.get('https://public.agent-matrix.com/publish/master.zip', proxies=proxies, stream=True)
except: r = requests.get('https://public.gpt-academic.top/publish/master.zip', proxies=proxies, stream=True)
zip_file_path = backup_dir+'/master.zip'
with open(zip_file_path, 'wb+') as f:
f.write(r.content)
@@ -81,7 +81,7 @@ def patch_and_restart(path):
dir_util.copy_tree(path_new_version, './')
print亮绿('代码已经更新,即将更新pip包依赖……')
for i in reversed(range(5)): time.sleep(1); print(i)
try:
try:
import subprocess
subprocess.check_call([sys.executable, '-m', 'pip', 'install', '-r', 'requirements.txt'])
except:
@@ -113,7 +113,7 @@ def auto_update(raise_error=False):
import json
proxies = get_conf('proxies')
try: response = requests.get("https://raw.githubusercontent.com/binary-husky/chatgpt_academic/master/version", proxies=proxies, timeout=5)
except: response = requests.get("https://public.agent-matrix.com/publish/version", proxies=proxies, timeout=5)
except: response = requests.get("https://public.gpt-academic.top/publish/version", proxies=proxies, timeout=5)
remote_json_data = json.loads(response.text)
remote_version = remote_json_data['version']
if remote_json_data["show_feature"]:
@@ -159,7 +159,7 @@ def warm_up_modules():
enc.encode("模块预热", disallowed_special=())
enc = model_info["gpt-4"]['tokenizer']
enc.encode("模块预热", disallowed_special=())
def warm_up_vectordb():
print('正在执行一些模块的预热 ...')
from toolbox import ProxyNetworkActivate
@@ -167,7 +167,7 @@ def warm_up_vectordb():
import nltk
with ProxyNetworkActivate("Warmup_Modules"): nltk.download("punkt")
if __name__ == '__main__':
import os
os.environ['no_proxy'] = '*' # 避免代理网络产生意外污染

查看文件

@@ -3,7 +3,7 @@ from sys import stdout
if platform.system()=="Linux":
pass
else:
else:
from colorama import init
init()

142
config.py
查看文件

@@ -2,8 +2,8 @@
以下所有配置也都支持利用环境变量覆写,环境变量配置格式见docker-compose.yml。
读取优先级:环境变量 > config_private.py > config.py
--- --- --- --- --- --- --- --- --- --- --- --- --- --- --- --- --- --- --- --- ---
All the following configurations also support using environment variables to override,
and the environment variable configuration format can be seen in docker-compose.yml.
All the following configurations also support using environment variables to override,
and the environment variable configuration format can be seen in docker-compose.yml.
Configuration reading priority: environment variable > config_private.py > config.py
"""
@@ -30,37 +30,11 @@ if USE_PROXY:
else:
proxies = None
# [step 3]>> 模型选择是 (注意: LLM_MODEL是默认选中的模型, 它*必须*被包含在AVAIL_LLM_MODELS列表中 )
LLM_MODEL = "gpt-3.5-turbo-16k" # 可选 ↓↓↓
AVAIL_LLM_MODELS = ["gpt-4-1106-preview", "gpt-4-turbo-preview", "gpt-4-vision-preview", "gpt-4-turbo", "gpt-4-turbo-2024-04-09",
"gpt-3.5-turbo-1106", "gpt-3.5-turbo-16k", "gpt-3.5-turbo", "azure-gpt-3.5",
"gpt-4", "gpt-4-32k", "azure-gpt-4", "glm-4", "glm-4v", "glm-3-turbo",
"gemini-pro", "chatglm3"
]
# --- --- --- ---
# P.S. 其他可用的模型还包括
# AVAIL_LLM_MODELS = [
# "qianfan", "deepseekcoder",
# "spark", "sparkv2", "sparkv3", "sparkv3.5",
# "qwen-turbo", "qwen-plus", "qwen-max", "qwen-local",
# "moonshot-v1-128k", "moonshot-v1-32k", "moonshot-v1-8k",
# "gpt-3.5-turbo-0613", "gpt-3.5-turbo-16k-0613", "gpt-3.5-turbo-0125"
# "claude-3-haiku-20240307","claude-3-sonnet-20240229","claude-3-opus-20240229", "claude-2.1", "claude-instant-1.2",
# "moss", "llama2", "chatglm_onnx", "internlm", "jittorllms_pangualpha", "jittorllms_llama",
# "yi-34b-chat-0205", "yi-34b-chat-200k"
# ]
# --- --- --- ---
# 此外,您还可以在接入one-api/vllm/ollama时,
# 使用"one-api-*","vllm-*","ollama-*"前缀直接使用非标准方式接入的模型,例如
# AVAIL_LLM_MODELS = ["one-api-claude-3-sonnet-20240229(max_token=100000)", "ollama-phi3(max_token=4096)"]
# --- --- --- ---
# --------------- 以下配置可以优化体验 ---------------
# ------------------------------------ 以下配置可以优化体验, 但大部分场合下并不需要修改 ------------------------------------
# 重新URL重新定向,实现更换API_URL的作用高危设置! 常规情况下不要修改! 通过修改此设置,您将把您的API-KEY和对话隐私完全暴露给您设定的中间人
# 格式: API_URL_REDIRECT = {"https://api.openai.com/v1/chat/completions": "在这里填写重定向的api.openai.com的URL"}
# 举例: API_URL_REDIRECT = {"https://api.openai.com/v1/chat/completions": "https://reverse-proxy-url/v1/chat/completions", "http://localhost:11434/api/chat": "在这里填写您ollama的URL"}
# 格式: API_URL_REDIRECT = {"https://api.openai.com/v1/chat/completions": "在这里填写重定向的api.openai.com的URL"}
# 举例: API_URL_REDIRECT = {"https://api.openai.com/v1/chat/completions": "https://reverse-proxy-url/v1/chat/completions"}
API_URL_REDIRECT = {}
@@ -92,7 +66,7 @@ LAYOUT = "LEFT-RIGHT" # "LEFT-RIGHT"(左右布局) # "TOP-DOWN"(上下
# 暗色模式 / 亮色模式
DARK_MODE = True
DARK_MODE = True
# 发送请求到OpenAI后,等待多久判定为超时
@@ -111,6 +85,17 @@ MAX_RETRY = 2
DEFAULT_FN_GROUPS = ['对话', '编程', '学术', '智能体']
# 模型选择是 (注意: LLM_MODEL是默认选中的模型, 它*必须*被包含在AVAIL_LLM_MODELS列表中 )
LLM_MODEL = "gpt-3.5-turbo" # 可选 ↓↓↓
AVAIL_LLM_MODELS = ["gpt-3.5-turbo-1106","gpt-4-1106-preview","gpt-4-vision-preview",
"gpt-3.5-turbo-16k", "gpt-3.5-turbo", "azure-gpt-3.5",
"api2d-gpt-3.5-turbo", 'api2d-gpt-3.5-turbo-16k',
"gpt-4", "gpt-4-32k", "azure-gpt-4", "api2d-gpt-4",
"chatglm3", "moss", "claude-2"]
# P.S. 其他可用的模型还包括 ["zhipuai", "qianfan", "deepseekcoder", "llama2", "qwen", "gpt-3.5-turbo-0613", "gpt-3.5-turbo-16k-0613", "gpt-3.5-random"
# "spark", "sparkv2", "sparkv3", "chatglm_onnx", "claude-1-100k", "claude-2", "internlm", "jittorllms_pangualpha", "jittorllms_llama"]
# 定义界面上“询问多个GPT模型”插件应该使用哪些模型,请从AVAIL_LLM_MODELS中选择,并在不同模型之间用`&`间隔,例如"gpt-3.5-turbo&chatglm3&azure-gpt-4"
MULTI_QUERY_LLM_MODELS = "gpt-3.5-turbo&chatglm3"
@@ -118,11 +103,7 @@ MULTI_QUERY_LLM_MODELS = "gpt-3.5-turbo&chatglm3"
# 选择本地模型变体只有当AVAIL_LLM_MODELS包含了对应本地模型时,才会起作用
# 如果你选择Qwen系列的模型,那么请在下面的QWEN_MODEL_SELECTION中指定具体的模型
# 也可以是具体的模型路径
QWEN_LOCAL_MODEL_SELECTION = "Qwen/Qwen-1_8B-Chat-Int8"
# 接入通义千问在线大模型 https://dashscope.console.aliyun.com/
DASHSCOPE_API_KEY = "" # 阿里灵积云API_KEY
QWEN_MODEL_SELECTION = "Qwen/Qwen-1_8B-Chat-Int8"
# 百度千帆LLM_MODEL="qianfan"
@@ -139,7 +120,6 @@ CHATGLM_PTUNING_CHECKPOINT = "" # 例如"/home/hmp/ChatGLM2-6B/ptuning/output/6b
LOCAL_MODEL_DEVICE = "cpu" # 可选 "cuda"
LOCAL_MODEL_QUANT = "FP16" # 默认 "FP16" "INT4" 启用量化INT4版本 "INT8" 启用量化INT8版本
# 设置gradio的并行线程数不需要修改
CONCURRENT_COUNT = 100
@@ -157,8 +137,7 @@ ADD_WAIFU = False
AUTHENTICATION = []
# 如果需要在二级路径下运行(常规情况下,不要修改!!
# (举例 CUSTOM_PATH = "/gpt_academic",可以让软件运行在 http://ip:port/gpt_academic/ 下。)
# 如果需要在二级路径下运行(常规情况下,不要修改!!需要配合修改main.py才能生效!
CUSTOM_PATH = "/"
@@ -172,7 +151,7 @@ API_ORG = ""
# 如果需要使用Slack Claude,使用教程详情见 request_llms/README.md
SLACK_CLAUDE_BOT_ID = ''
SLACK_CLAUDE_BOT_ID = ''
SLACK_CLAUDE_USER_TOKEN = ''
@@ -186,8 +165,14 @@ AZURE_ENGINE = "填入你亲手写的部署名" # 读 docs\use_azure.
AZURE_CFG_ARRAY = {}
# 阿里云实时语音识别 配置难度较高
# 参考 https://github.com/binary-husky/gpt_academic/blob/master/docs/use_audio.md
# 使用Newbing (不推荐使用,未来将删除)
NEWBING_STYLE = "creative" # ["creative", "balanced", "precise"]
NEWBING_COOKIES = """
put your new bing cookies here
"""
# 阿里云实时语音识别 配置难度较高 仅建议高手用户使用 参考 https://github.com/binary-husky/gpt_academic/blob/master/docs/use_audio.md
ENABLE_AUDIO = False
ALIYUN_TOKEN="" # 例如 f37f30e0f9934c34a992f6f64f7eba4f
ALIYUN_APPKEY="" # 例如 RoPlZrM88DnAFkZK
@@ -195,12 +180,6 @@ ALIYUN_ACCESSKEY="" # (无需填写)
ALIYUN_SECRET="" # (无需填写)
# GPT-SOVITS 文本转语音服务的运行地址(将语言模型的生成文本朗读出来)
TTS_TYPE = "DISABLE" # LOCAL / LOCAL_SOVITS_API / DISABLE
GPT_SOVITS_URL = ""
EDGE_TTS_VOICE = "zh-CN-XiaoxiaoNeural"
# 接入讯飞星火大模型 https://console.xfyun.cn/services/iat
XFYUN_APPID = "00000000"
XFYUN_API_SECRET = "bbbbbbbbbbbbbbbbbbbbbbbbbbbbbbbb"
@@ -209,38 +188,17 @@ XFYUN_API_KEY = "aaaaaaaaaaaaaaaaaaaaaaaaaaaaaaaa"
# 接入智谱大模型
ZHIPUAI_API_KEY = ""
ZHIPUAI_MODEL = "" # 此选项已废弃,不再需要填写
ZHIPUAI_MODEL = "chatglm_turbo"
# Claude API KEY
ANTHROPIC_API_KEY = ""
# 月之暗面 API KEY
MOONSHOT_API_KEY = ""
# 零一万物(Yi Model) API KEY
YIMODEL_API_KEY = ""
# Mathpix 拥有执行PDF的OCR功能,但是需要注册账号
MATHPIX_APPID = ""
MATHPIX_APPKEY = ""
# DOC2X的PDF解析服务,注册账号并获取API KEY: https://doc2x.noedgeai.com/login
DOC2X_API_KEY = ""
# 自定义API KEY格式
CUSTOM_API_KEY_PATTERN = ""
# Google Gemini API-Key
GEMINI_API_KEY = ''
# HUGGINGFACE的TOKEN,下载LLAMA时起作用 https://huggingface.co/docs/hub/security-tokens
HUGGINGFACE_ACCESS_TOKEN = "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"
@@ -249,8 +207,8 @@ HUGGINGFACE_ACCESS_TOKEN = "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"
# 获取方法复制以下空间https://huggingface.co/spaces/qingxu98/grobid,设为public,然后GROBID_URL = "https://(你的hf用户名如qingxu98)-(你的填写的空间名如grobid).hf.space"
GROBID_URLS = [
"https://qingxu98-grobid.hf.space","https://qingxu98-grobid2.hf.space","https://qingxu98-grobid3.hf.space",
"https://qingxu98-grobid4.hf.space","https://qingxu98-grobid5.hf.space", "https://qingxu98-grobid6.hf.space",
"https://qingxu98-grobid7.hf.space", "https://qingxu98-grobid8.hf.space",
"https://qingxu98-grobid4.hf.space","https://qingxu98-grobid5.hf.space", "https://qingxu98-grobid6.hf.space",
"https://qingxu98-grobid7.hf.space", "https://qingxu98-grobid8.hf.space",
]
@@ -271,7 +229,7 @@ PATH_LOGGING = "gpt_log"
# 除了连接OpenAI之外,还有哪些场合允许使用代理,请勿修改
WHEN_TO_USE_PROXY = ["Download_LLM", "Download_Gradio_Theme", "Connect_Grobid",
WHEN_TO_USE_PROXY = ["Download_LLM", "Download_Gradio_Theme", "Connect_Grobid",
"Warmup_Modules", "Nougat_Download", "AutoGen"]
@@ -286,11 +244,7 @@ PLUGIN_HOT_RELOAD = False
# 自定义按钮的最大数量限制
NUM_CUSTOM_BASIC_BTN = 4
"""
--------------- 配置关联关系说明 ---------------
在线大模型配置关联关系示意图
├── "gpt-3.5-turbo" 等openai模型
@@ -314,7 +268,7 @@ NUM_CUSTOM_BASIC_BTN = 4
│ ├── XFYUN_API_SECRET
│ └── XFYUN_API_KEY
├── "claude-3-opus-20240229" 等claude模型
├── "claude-1-100k" 等claude模型
│ └── ANTHROPIC_API_KEY
├── "stack-claude"
@@ -326,24 +280,15 @@ NUM_CUSTOM_BASIC_BTN = 4
│ ├── BAIDU_CLOUD_API_KEY
│ └── BAIDU_CLOUD_SECRET_KEY
├── "glm-4", "glm-3-turbo", "zhipuai" 智谱AI大模型
── ZHIPUAI_API_KEY
├── "zhipuai" 智谱AI大模型chatglm_turbo
── ZHIPUAI_API_KEY
│ └── ZHIPUAI_MODEL
── "yi-34b-chat-0205", "yi-34b-chat-200k" 等零一万物(Yi Model)大模型
── YIMODEL_API_KEY
├── "qwen-turbo" 等通义千问大模型
│ └── DASHSCOPE_API_KEY
├── "Gemini"
│ └── GEMINI_API_KEY
└── "one-api-...(max_token=...)" 用一种更方便的方式接入one-api多模型管理界面
├── AVAIL_LLM_MODELS
├── API_KEY
└── API_URL_REDIRECT
── "newbing" Newbing接口不再稳定,不推荐使用
── NEWBING_STYLE
└── NEWBING_COOKIES
本地大模型示意图
├── "chatglm3"
@@ -355,7 +300,7 @@ NUM_CUSTOM_BASIC_BTN = 4
├── "jittorllms_pangualpha"
├── "jittorllms_llama"
├── "deepseekcoder"
├── "qwen-local"
├── "qwen"
├── RWKV的支持见Wiki
└── "llama2"
@@ -383,9 +328,6 @@ NUM_CUSTOM_BASIC_BTN = 4
│ └── ALIYUN_SECRET
└── PDF文档精准解析
── GROBID_URLS
├── MATHPIX_APPID
└── MATHPIX_APPKEY
── GROBID_URLS
"""

查看文件

@@ -3,69 +3,30 @@
# 'stop' 颜色对应 theme.py 中的 color_er
import importlib
from toolbox import clear_line_break
from toolbox import apply_gpt_academic_string_mask_langbased
from toolbox import build_gpt_academic_masked_string_langbased
from textwrap import dedent
def get_core_functions():
return {
"学术语料润色": {
# [1*] 前缀字符串,会被加在你的输入之前。例如,用来描述你的要求,例如翻译、解释代码、润色等等。
# 这里填一个提示词字符串就行了,这里为了区分中英文情景搞复杂了一点
"Prefix": build_gpt_academic_masked_string_langbased(
text_show_english=
r"Below is a paragraph from an academic paper. Polish the writing to meet the academic style, "
r"improve the spelling, grammar, clarity, concision and overall readability. When necessary, rewrite the whole sentence. "
r"Firstly, you should provide the polished paragraph. "
r"Secondly, you should list all your modification and explain the reasons to do so in markdown table.",
text_show_chinese=
r"作为一名中文学术论文写作改进助理,你的任务是改进所提供文本的拼写、语法、清晰、简洁和整体可读性,"
r"同时分解长句,减少重复,并提供改进建议。请先提供文本的更正版本,然后在markdown表格中列出修改的内容,并给出修改的理由:"
) + "\n\n",
# [2*] 后缀字符串,会被加在你的输入之后。例如,配合前缀可以把你的输入内容用引号圈起来
"Suffix": r"",
# [3] 按钮颜色 (可选参数,默认 secondary)
"Color": r"secondary",
# [4] 按钮是否可见 (可选参数,默认 True,即可见)
"Visible": True,
# [5] 是否在触发时清除历史 (可选参数,默认 False,即不处理之前的对话历史)
"AutoClearHistory": False,
# [6] 文本预处理 (可选参数,默认 None,举例写个函数移除所有的换行符
"PreProcess": None,
},
"总结绘制脑图": {
"英语学术润色": {
# 前缀,会被加在你的输入之前。例如,用来描述你的要求,例如翻译、解释代码、润色等等
"Prefix": '''"""\n\n''',
"Prefix": r"Below is a paragraph from an academic paper. Polish the writing to meet the academic style, " +
r"improve the spelling, grammar, clarity, concision and overall readability. When necessary, rewrite the whole sentence. " +
r"Firstly, you should provide the polished paragraph. "
r"Secondly, you should list all your modification and explain the reasons to do so in markdown table." + "\n\n",
# 后缀,会被加在你的输入之后。例如,配合前缀可以把你的输入内容用引号圈起来
"Suffix":
# dedent() 函数用于去除多行字符串的缩进
dedent("\n\n"+r'''
"""
使用mermaid flowchart对以上文本进行总结,概括上述段落的内容以及内在逻辑关系,例如
以下是对以上文本的总结,以mermaid flowchart的形式展示
```mermaid
flowchart LR
A["节点名1"] --> B("节点名2")
B --> C{"节点名3"}
C --> D["节点名4"]
C --> |"箭头名1"| E["节点名5"]
C --> |"箭头名2"| F["节点名6"]
```
注意:
1使用中文
2节点名字使用引号包裹,如["Laptop"]
3`|` 和 `"`之间不要存在空格
4根据情况选择flowchart LR从左到右或者flowchart TD从上到下
'''),
"Suffix": r"",
# 按钮颜色 (默认 secondary)
"Color": r"secondary",
# 按钮是否可见 (默认 True,即可见)
"Visible": True,
# 是否在触发时清除历史 (默认 False,即不处理之前的对话历史)
"AutoClearHistory": False
},
"中文学术润色": {
"Prefix": r"作为一名中文学术论文写作改进助理,你的任务是改进所提供文本的拼写、语法、清晰、简洁和整体可读性," +
r"同时分解长句,减少重复,并提供改进建议。请只提供文本的更正版本,避免包括解释。请编辑以下文本" + "\n\n",
"Suffix": r"",
},
"查找语法错误": {
"Prefix": r"Help me ensure that the grammar and the spelling is correct. "
r"Do not try to polish the text, if no mistake is found, tell me that this paragraph is good. "
@@ -85,61 +46,42 @@ def get_core_functions():
"Suffix": r"",
"PreProcess": clear_line_break, # 预处理:清除换行符
},
"中译英": {
"Prefix": r"Please translate following sentence to English:" + "\n\n",
"Suffix": r"",
},
"学术英中互译": {
"Prefix": build_gpt_academic_masked_string_langbased(
text_show_chinese=
r"I want you to act as a scientific English-Chinese translator, "
r"I will provide you with some paragraphs in one language "
r"and your task is to accurately and academically translate the paragraphs only into the other language. "
r"Do not repeat the original provided paragraphs after translation. "
r"You should use artificial intelligence tools, "
r"such as natural language processing, and rhetorical knowledge "
r"and experience about effective writing techniques to reply. "
r"I'll give you my paragraphs as follows, tell me what language it is written in, and then translate:",
text_show_english=
r"你是经验丰富的翻译,请把以下学术文章段落翻译成中文,"
r"并同时充分考虑中文的语法、清晰、简洁和整体可读性,"
r"必要时,你可以修改整个句子的顺序以确保翻译后的段落符合中文的语言习惯。"
r"你需要翻译的文本如下:"
) + "\n\n",
"Suffix": r"",
"学术中英互译": {
"Prefix": r"I want you to act as a scientific English-Chinese translator, " +
r"I will provide you with some paragraphs in one language " +
r"and your task is to accurately and academically translate the paragraphs only into the other language. " +
r"Do not repeat the original provided paragraphs after translation. " +
r"You should use artificial intelligence tools, " +
r"such as natural language processing, and rhetorical knowledge " +
r"and experience about effective writing techniques to reply. " +
r"I'll give you my paragraphs as follows, tell me what language it is written in, and then translate:" + "\n\n",
"Suffix": "",
"Color": "secondary",
},
"英译中": {
"Prefix": r"翻译成地道的中文:" + "\n\n",
"Suffix": r"",
"Visible": False,
"Visible": False,
},
"找图片": {
"Prefix": r"我需要你找一张网络图片。使用Unsplash API(https://source.unsplash.com/960x640/?<英语关键词>)获取图片URL,"
"Prefix": r"我需要你找一张网络图片。使用Unsplash API(https://source.unsplash.com/960x640/?<英语关键词>)获取图片URL," +
r"然后请使用Markdown格式封装,并且不要有反斜线,不要用代码块。现在,请按以下描述给我发送图片" + "\n\n",
"Suffix": r"",
"Visible": False,
"Visible": False,
},
"解释代码": {
"Prefix": r"请解释以下代码:" + "\n```\n",
"Suffix": "\n```\n",
},
"参考文献转Bib": {
"Prefix": r"Here are some bibliography items, please transform them into bibtex style."
r"Note that, reference styles maybe more than one kind, you should transform each item correctly."
r"Items need to be transformed:" + "\n\n",
"Visible": False,
"Prefix": r"Here are some bibliography items, please transform them into bibtex style." +
r"Note that, reference styles maybe more than one kind, you should transform each item correctly." +
r"Items need to be transformed:",
"Visible": False,
"Suffix": r"",
}
}
@@ -156,18 +98,8 @@ def handle_core_functionality(additional_fn, inputs, history, chatbot):
return inputs, history
else:
# 预制功能
if "PreProcess" in core_functional[additional_fn]:
if core_functional[additional_fn]["PreProcess"] is not None:
inputs = core_functional[additional_fn]["PreProcess"](inputs) # 获取预处理函数(如果有的话)
# 为字符串加上上面定义的前缀和后缀。
inputs = apply_gpt_academic_string_mask_langbased(
string = core_functional[additional_fn]["Prefix"] + inputs + core_functional[additional_fn]["Suffix"],
lang_reference = inputs,
)
if "PreProcess" in core_functional[additional_fn]: inputs = core_functional[additional_fn]["PreProcess"](inputs) # 获取预处理函数(如果有的话)
inputs = core_functional[additional_fn]["Prefix"] + inputs + core_functional[additional_fn]["Suffix"]
if core_functional[additional_fn].get("AutoClearHistory", False):
history = []
return inputs, history
if __name__ == "__main__":
t = get_core_functions()["总结绘制脑图"]
print(t["Prefix"] + t["Suffix"])

查看文件

@@ -27,127 +27,120 @@ def get_crazy_functions():
from crazy_functions.辅助功能 import 清除缓存
from crazy_functions.批量Markdown翻译 import Markdown英译中
from crazy_functions.批量总结PDF文档 import 批量总结PDF文档
from crazy_functions.PDF批量翻译 import 批量翻译PDF文档
from crazy_functions.批量翻译PDF文档_多线程 import 批量翻译PDF文档
from crazy_functions.谷歌检索小助手 import 谷歌检索小助手
from crazy_functions.理解PDF文档内容 import 理解PDF文档内容标准文件输入
from crazy_functions.Latex全文润色 import Latex中文润色
from crazy_functions.Latex全文润色 import Latex英文纠错
from crazy_functions.Latex全文翻译 import Latex中译英
from crazy_functions.Latex全文翻译 import Latex英译中
from crazy_functions.批量Markdown翻译 import Markdown中译英
from crazy_functions.虚空终端 import 虚空终端
from crazy_functions.生成多种Mermaid图表 import 生成多种Mermaid图表
function_plugins = {
"虚空终端": {
"Group": "对话|编程|学术|智能体",
"Color": "stop",
"AsButton": True,
"Function": HotReload(虚空终端),
"Function": HotReload(虚空终端)
},
"解析整个Python项目": {
"Group": "编程",
"Color": "stop",
"AsButton": True,
"Info": "解析一个Python项目的所有源文件(.py) | 输入参数为路径",
"Function": HotReload(解析一个Python项目),
"Function": HotReload(解析一个Python项目)
},
"载入对话历史存档(先上传存档或输入路径)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Info": "载入对话历史存档 | 输入参数为路径",
"Function": HotReload(载入对话历史存档),
"Function": HotReload(载入对话历史存档)
},
"删除所有本地对话历史记录(谨慎操作)": {
"Group": "对话",
"AsButton": False,
"Info": "删除所有本地对话历史记录,谨慎操作 | 不需要输入参数",
"Function": HotReload(删除所有本地对话历史记录),
"Function": HotReload(删除所有本地对话历史记录)
},
"清除所有缓存文件(谨慎操作)": {
"Group": "对话",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "清除所有缓存文件,谨慎操作 | 不需要输入参数",
"Function": HotReload(清除缓存),
},
"生成多种Mermaid图表(从当前对话或路径(.pdf/.md/.docx)中生产图表)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Info" : "基于当前对话或文件生成多种Mermaid图表,图表类型由模型判断",
"Function": HotReload(生成多种Mermaid图表),
"AdvancedArgs": True,
"ArgsReminder": "请输入图类型对应的数字,不输入则为模型自行判断:1-流程图,2-序列图,3-类图,4-饼图,5-甘特图,6-状态图,7-实体关系图,8-象限提示图,9-思维导图",
"Function": HotReload(清除缓存)
},
"批量总结Word文档": {
"Group": "学术",
"Color": "stop",
"AsButton": True,
"Info": "批量总结word文档 | 输入参数为路径",
"Function": HotReload(总结word文档),
"Function": HotReload(总结word文档)
},
"解析整个Matlab项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"Info": "解析一个Matlab项目的所有源文件(.m) | 输入参数为路径",
"Function": HotReload(解析一个Matlab项目),
"Function": HotReload(解析一个Matlab项目)
},
"解析整个C++项目头文件": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个C++项目的所有头文件(.h/.hpp) | 输入参数为路径",
"Function": HotReload(解析一个C项目的头文件),
"Function": HotReload(解析一个C项目的头文件)
},
"解析整个C++项目(.cpp/.hpp/.c/.h": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个C++项目的所有源文件(.cpp/.hpp/.c/.h| 输入参数为路径",
"Function": HotReload(解析一个C项目),
"Function": HotReload(解析一个C项目)
},
"解析整个Go项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个Go项目的所有源文件 | 输入参数为路径",
"Function": HotReload(解析一个Golang项目),
"Function": HotReload(解析一个Golang项目)
},
"解析整个Rust项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个Rust项目的所有源文件 | 输入参数为路径",
"Function": HotReload(解析一个Rust项目),
"Function": HotReload(解析一个Rust项目)
},
"解析整个Java项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个Java项目的所有源文件 | 输入参数为路径",
"Function": HotReload(解析一个Java项目),
"Function": HotReload(解析一个Java项目)
},
"解析整个前端项目js,ts,css等": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个前端项目的所有源文件js,ts,css等 | 输入参数为路径",
"Function": HotReload(解析一个前端项目),
"Function": HotReload(解析一个前端项目)
},
"解析整个Lua项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个Lua项目的所有源文件 | 输入参数为路径",
"Function": HotReload(解析一个Lua项目),
"Function": HotReload(解析一个Lua项目)
},
"解析整个CSharp项目": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "解析一个CSharp项目的所有源文件 | 输入参数为路径",
"Function": HotReload(解析一个CSharp项目),
"Function": HotReload(解析一个CSharp项目)
},
"解析Jupyter Notebook文件": {
"Group": "编程",
@@ -163,104 +156,103 @@ def get_crazy_functions():
"Color": "stop",
"AsButton": False,
"Info": "读取Tex论文并写摘要 | 输入参数为路径",
"Function": HotReload(读文章写摘要),
"Function": HotReload(读文章写摘要)
},
"翻译README或MD": {
"Group": "编程",
"Color": "stop",
"AsButton": True,
"Info": "将Markdown翻译为中文 | 输入参数为路径或URL",
"Function": HotReload(Markdown英译中),
"Function": HotReload(Markdown英译中)
},
"翻译Markdown或README支持Github链接": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"Info": "将Markdown或README翻译为中文 | 输入参数为路径或URL",
"Function": HotReload(Markdown英译中),
"Function": HotReload(Markdown英译中)
},
"批量生成函数注释": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "批量生成函数的注释 | 输入参数为路径",
"Function": HotReload(批量生成函数注释),
"Function": HotReload(批量生成函数注释)
},
"保存当前的对话": {
"Group": "对话",
"AsButton": True,
"Info": "保存当前的对话 | 不需要输入参数",
"Function": HotReload(对话历史存档),
"Function": HotReload(对话历史存档)
},
"[多线程Demo]解析此项目本身(源码自译解)": {
"Group": "对话|编程",
"AsButton": False, # 加入下拉菜单中
"Info": "多线程解析并翻译此项目的源码 | 不需要输入参数",
"Function": HotReload(解析项目本身),
"Function": HotReload(解析项目本身)
},
"历史上的今天": {
"Group": "对话",
"AsButton": True,
"Info": "查看历史上的今天事件 (这是一个面向开发者的插件Demo) | 不需要输入参数",
"Function": HotReload(高阶功能模板函数),
"Function": HotReload(高阶功能模板函数)
},
"精准翻译PDF论文": {
"Group": "学术",
"Color": "stop",
"AsButton": True,
"AsButton": True,
"Info": "精准翻译PDF论文为中文 | 输入参数为路径",
"Function": HotReload(批量翻译PDF文档),
"Function": HotReload(批量翻译PDF文档)
},
"询问多个GPT模型": {
"Group": "对话",
"Color": "stop",
"AsButton": True,
"Function": HotReload(同时问询),
"Function": HotReload(同时问询)
},
"批量总结PDF文档": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "批量总结PDF文档的内容 | 输入参数为路径",
"Function": HotReload(批量总结PDF文档),
"Function": HotReload(批量总结PDF文档)
},
"谷歌学术检索助手输入谷歌学术搜索页url": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "使用谷歌学术检索助手搜索指定URL的结果 | 输入参数为谷歌学术搜索页的URL",
"Function": HotReload(谷歌检索小助手),
"Function": HotReload(谷歌检索小助手)
},
"理解PDF文档内容 模仿ChatPDF": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "理解PDF文档的内容并进行回答 | 输入参数为路径",
"Function": HotReload(理解PDF文档内容标准文件输入),
"Function": HotReload(理解PDF文档内容标准文件输入)
},
"英文Latex项目全文润色输入路径或上传压缩包": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "对英文Latex项目全文进行润色处理 | 输入参数为路径或上传压缩包",
"Function": HotReload(Latex英文润色),
"Function": HotReload(Latex英文润色)
},
"英文Latex项目全文纠错输入路径或上传压缩包": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "对英文Latex项目全文进行纠错处理 | 输入参数为路径或上传压缩包",
"Function": HotReload(Latex英文纠错)
},
"中文Latex项目全文润色输入路径或上传压缩包": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "对中文Latex项目全文进行润色处理 | 输入参数为路径或上传压缩包",
"Function": HotReload(Latex中文润色),
"Function": HotReload(Latex中文润色)
},
# 已经被新插件取代
# "英文Latex项目全文纠错输入路径或上传压缩包": {
# "Group": "学术",
# "Color": "stop",
# "AsButton": False, # 加入下拉菜单中
# "Info": "对英文Latex项目全文进行纠错处理 | 输入参数为路径或上传压缩包",
# "Function": HotReload(Latex英文纠错),
# },
# 已经被新插件取代
# "Latex项目全文中译英输入路径或上传压缩包": {
# "Group": "学术",
@@ -269,6 +261,7 @@ def get_crazy_functions():
# "Info": "对Latex项目全文进行中译英处理 | 输入参数为路径或上传压缩包",
# "Function": HotReload(Latex中译英)
# },
# 已经被新插件取代
# "Latex项目全文英译中输入路径或上传压缩包": {
# "Group": "学术",
@@ -277,412 +270,334 @@ def get_crazy_functions():
# "Info": "对Latex项目全文进行英译中处理 | 输入参数为路径或上传压缩包",
# "Function": HotReload(Latex英译中)
# },
"批量Markdown中译英输入路径或上传压缩包": {
"Group": "编程",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "批量将Markdown文件中文翻译为英文 | 输入参数为路径或上传压缩包",
"Function": HotReload(Markdown中译英),
"Function": HotReload(Markdown中译英)
},
}
# -=--=- 尚未充分测试的实验性插件 & 需要额外依赖的插件 -=--=-
try:
from crazy_functions.下载arxiv论文翻译摘要 import 下载arxiv论文并翻译摘要
function_plugins.update(
{
"一键下载arxiv论文并翻译摘要先在input输入编号,如1812.10695": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
# "Info": "下载arxiv论文并翻译摘要 | 输入参数为arxiv编号如1812.10695",
"Function": HotReload(下载arxiv论文并翻译摘要),
}
function_plugins.update({
"一键下载arxiv论文并翻译摘要先在input输入编号,如1812.10695": {
"Group": "学术",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
# "Info": "下载arxiv论文并翻译摘要 | 输入参数为arxiv编号如1812.10695",
"Function": HotReload(下载arxiv论文并翻译摘要)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.联网的ChatGPT import 连接网络回答问题
function_plugins.update(
{
"连接网络回答问题(输入问题后点击该插件,需要访问谷歌)": {
"Group": "对话",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
# "Info": "连接网络回答问题(需要访问谷歌)| 输入参数是一个问题",
"Function": HotReload(连接网络回答问题),
}
function_plugins.update({
"连接网络回答问题(输入问题后点击该插件,需要访问谷歌)": {
"Group": "对话",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
# "Info": "连接网络回答问题(需要访问谷歌)| 输入参数是一个问题",
"Function": HotReload(连接网络回答问题)
}
)
})
from crazy_functions.联网的ChatGPT_bing版 import 连接bing搜索回答问题
function_plugins.update(
{
"连接网络回答问题中文Bing版,输入问题后点击该插件": {
"Group": "对话",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "连接网络回答问题需要访问中文Bing| 输入参数是一个问题",
"Function": HotReload(连接bing搜索回答问题),
}
function_plugins.update({
"连接网络回答问题中文Bing版,输入问题后点击该插件": {
"Group": "对话",
"Color": "stop",
"AsButton": False, # 加入下拉菜单中
"Info": "连接网络回答问题需要访问中文Bing| 输入参数是一个问题",
"Function": HotReload(连接bing搜索回答问题)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.解析项目源代码 import 解析任意code项目
function_plugins.update(
{
"解析项目源代码(手动指定和筛选源代码文件类型)": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": '输入时用逗号隔开, *代表通配符, 加了^代表不匹配; 不输入代表全部匹配。例如: "*.c, ^*.cpp, config.toml, ^*.toml"', # 高级参数输入区的显示提示
"Function": HotReload(解析任意code项目),
},
}
)
function_plugins.update({
"解析项目源代码(手动指定和筛选源代码文件类型)": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "输入时用逗号隔开, *代表通配符, 加了^代表不匹配; 不输入代表全部匹配。例如: \"*.c, ^*.cpp, config.toml, ^*.toml\"", # 高级参数输入区的显示提示
"Function": HotReload(解析任意code项目)
},
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.询问多个大语言模型 import 同时问询_指定模型
function_plugins.update(
{
"询问多个GPT模型手动指定询问哪些模型": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "支持任意数量的llm接口,用&符号分隔。例如chatglm&gpt-3.5-turbo&gpt-4", # 高级参数输入区的显示提示
"Function": HotReload(同时问询_指定模型),
},
}
)
function_plugins.update({
"询问多个GPT模型手动指定询问哪些模型": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "支持任意数量的llm接口,用&符号分隔。例如chatglm&gpt-3.5-turbo&api2d-gpt-4", # 高级参数输入区的显示提示
"Function": HotReload(同时问询_指定模型)
},
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.图片生成 import 图片生成_DALLE2, 图片生成_DALLE3, 图片修改_DALLE2
function_plugins.update(
{
"图片生成_DALLE2 先切换模型到gpt-*": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "在这里输入分辨率, 如1024x1024默认,支持 256x256, 512x512, 1024x1024", # 高级参数输入区的显示提示
"Info": "使用DALLE2生成图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片生成_DALLE2),
},
}
)
function_plugins.update(
{
"图片生成_DALLE3 先切换模型到gpt-*": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "在这里输入自定义参数「分辨率-质量(可选)-风格(可选)」, 参数示例「1024x1024-hd-vivid」 || 分辨率支持 「1024x1024」(默认) /「1792x1024」/「1024x1792」 || 质量支持 「-standard」(默认) /「-hd」 || 风格支持 「-vivid」(默认) /「-natural」", # 高级参数输入区的显示提示
"Info": "使用DALLE3生成图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片生成_DALLE3),
},
}
)
function_plugins.update(
{
"图片修改_DALLE2 先切换模型到gpt-*": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": False, # 调用时,唤起高级参数输入区默认False
# "Info": "使用DALLE2修改图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片修改_DALLE2),
},
}
)
function_plugins.update({
"图片生成_DALLE2 先切换模型到openai或api2d": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "在这里输入分辨率, 如1024x1024默认,支持 256x256, 512x512, 1024x1024", # 高级参数输入区的显示提示
"Info": "使用DALLE2生成图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片生成_DALLE2)
},
})
function_plugins.update({
"图片生成_DALLE3 先切换模型到openai或api2d": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True, # 调用时,唤起高级参数输入区默认False
"ArgsReminder": "在这里输入自定义参数「分辨率-质量(可选)-风格(可选)」, 参数示例「1024x1024-hd-vivid」 || 分辨率支持 「1024x1024」(默认) /「1792x1024」/「1024x1792」 || 质量支持 「-standard」(默认) /「-hd」 || 风格支持 「-vivid」(默认) /「-natural」", # 高级参数输入区的显示提示
"Info": "使用DALLE3生成图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片生成_DALLE3)
},
})
function_plugins.update({
"图片修改_DALLE2 先切换模型到openai或api2d": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": False, # 调用时,唤起高级参数输入区默认False
# "Info": "使用DALLE2修改图片 | 输入参数字符串,提供图像的内容",
"Function": HotReload(图片修改_DALLE2)
},
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.总结音视频 import 总结音视频
function_plugins.update(
{
"批量总结音视频(输入路径或上传压缩包)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "调用openai api 使用whisper-1模型, 目前支持的格式:mp4, m4a, wav, mpga, mpeg, mp3。此处可以输入解析提示,例如解析为简体中文默认",
"Info": "批量总结音频或视频 | 输入参数为路径",
"Function": HotReload(总结音视频),
}
function_plugins.update({
"批量总结音视频(输入路径或上传压缩包)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "调用openai api 使用whisper-1模型, 目前支持的格式:mp4, m4a, wav, mpga, mpeg, mp3。此处可以输入解析提示,例如解析为简体中文默认",
"Info": "批量总结音频或视频 | 输入参数为路径",
"Function": HotReload(总结音视频)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.数学动画生成manim import 动画生成
function_plugins.update(
{
"数学动画生成Manim": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Info": "按照自然语言描述生成一个动画 | 输入参数是一段话",
"Function": HotReload(动画生成),
}
function_plugins.update({
"数学动画生成Manim": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Info": "按照自然语言描述生成一个动画 | 输入参数是一段话",
"Function": HotReload(动画生成)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.批量Markdown翻译 import Markdown翻译指定语言
function_plugins.update(
{
"Markdown翻译指定翻译成何种语言": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "请输入要翻译成哪种语言,默认为Chinese。",
"Function": HotReload(Markdown翻译指定语言),
}
function_plugins.update({
"Markdown翻译指定翻译成何种语言": {
"Group": "编程",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "请输入要翻译成哪种语言,默认为Chinese。",
"Function": HotReload(Markdown翻译指定语言)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.知识库问答 import 知识库文件注入
function_plugins.update(
{
"构建知识库(先上传文件素材,再运行此插件)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "此处待注入的知识库名称id, 默认为default。文件进入知识库后可长期保存。可以通过再次调用本插件的方式,向知识库追加更多文档。",
"Function": HotReload(知识库文件注入),
}
function_plugins.update({
"构建知识库(先上传文件素材,再运行此插件)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "此处待注入的知识库名称id, 默认为default。文件进入知识库后可长期保存。可以通过再次调用本插件的方式,向知识库追加更多文档。",
"Function": HotReload(知识库文件注入)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.知识库问答 import 读取知识库作答
function_plugins.update(
{
"知识库文件注入(构建知识库后,再运行此插件)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "待提取的知识库名称id, 默认为default, 您需要构建知识库后再运行此插件。",
"Function": HotReload(读取知识库作答),
}
function_plugins.update({
"知识库文件注入(构建知识库后,再运行此插件)": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "待提取的知识库名称id, 默认为default, 您需要构建知识库后再运行此插件。",
"Function": HotReload(读取知识库作答)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.交互功能函数模板 import 交互功能模板函数
function_plugins.update(
{
"交互功能模板Demo函数查找wallhaven.cc的壁纸": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Function": HotReload(交互功能模板函数),
}
function_plugins.update({
"交互功能模板Demo函数查找wallhaven.cc的壁纸": {
"Group": "对话",
"Color": "stop",
"AsButton": False,
"Function": HotReload(交互功能模板函数)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.Latex输出PDF import Latex英文纠错加PDF对比
from crazy_functions.Latex输出PDF import Latex翻译中文并重新编译PDF
from crazy_functions.Latex输出PDF import PDF翻译中文并重新编译PDF
function_plugins.update(
{
"Latex英文纠错+高亮修正位置 [需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "如果有必要, 请在此处追加更细致的矫错指令(使用英文)。",
"Function": HotReload(Latex英文纠错加PDF对比),
},
"Arxiv论文精细翻译输入arxivID[需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": r"如果有必要, 请在此处给出自定义翻译命令, 解决部分词汇翻译不准确的问题。 "
r"例如当单词'agent'翻译不准确时, 请尝试把以下指令复制到高级参数区: "
r'If the term "agent" is used in this section, it should be translated to "智能体". ',
"Info": "Arixv论文精细翻译 | 输入参数arxiv论文的ID,比如1812.10695",
"Function": HotReload(Latex翻译中文并重新编译PDF),
},
"本地Latex论文精细翻译上传Latex项目[需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": r"如果有必要, 请在此处给出自定义翻译命令, 解决部分词汇翻译不准确的问题。 "
r"例如当单词'agent'翻译不准确时, 请尝试把以下指令复制到高级参数区: "
r'If the term "agent" is used in this section, it should be translated to "智能体". ',
"Info": "本地Latex论文精细翻译 | 输入参数是路径",
"Function": HotReload(Latex翻译中文并重新编译PDF),
},
"PDF翻译中文并重新编译PDF上传PDF[需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": r"如果有必要, 请在此处给出自定义翻译命令, 解决部分词汇翻译不准确的问题。 "
r"例如当单词'agent'翻译不准确时, 请尝试把以下指令复制到高级参数区: "
r'If the term "agent" is used in this section, it should be translated to "智能体". ',
"Info": "PDF翻译中文,并重新编译PDF | 输入参数为路径",
"Function": HotReload(PDF翻译中文并重新编译PDF)
}
from crazy_functions.Latex输出PDF结果 import Latex英文纠错加PDF对比
function_plugins.update({
"Latex英文纠错+高亮修正位置 [需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder": "如果有必要, 请在此处追加更细致的矫错指令(使用英文)。",
"Function": HotReload(Latex英文纠错加PDF对比)
}
)
})
from crazy_functions.Latex输出PDF结果 import Latex翻译中文并重新编译PDF
function_plugins.update({
"Arxiv论文精细翻译输入arxivID[需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder":
"如果有必要, 请在此处给出自定义翻译命令, 解决部分词汇翻译不准确的问题。 " +
"例如当单词'agent'翻译不准确时, 请尝试把以下指令复制到高级参数区: " +
'If the term "agent" is used in this section, it should be translated to "智能体". ',
"Info": "Arixv论文精细翻译 | 输入参数arxiv论文的ID,比如1812.10695",
"Function": HotReload(Latex翻译中文并重新编译PDF)
}
})
function_plugins.update({
"本地Latex论文精细翻译上传Latex项目[需Latex]": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"AdvancedArgs": True,
"ArgsReminder":
"如果有必要, 请在此处给出自定义翻译命令, 解决部分词汇翻译不准确的问题。 " +
"例如当单词'agent'翻译不准确时, 请尝试把以下指令复制到高级参数区: " +
'If the term "agent" is used in this section, it should be translated to "智能体". ',
"Info": "本地Latex论文精细翻译 | 输入参数是路径",
"Function": HotReload(Latex翻译中文并重新编译PDF)
}
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from toolbox import get_conf
ENABLE_AUDIO = get_conf("ENABLE_AUDIO")
ENABLE_AUDIO = get_conf('ENABLE_AUDIO')
if ENABLE_AUDIO:
from crazy_functions.语音助手 import 语音助手
function_plugins.update(
{
"实时语音对话": {
"Group": "对话",
"Color": "stop",
"AsButton": True,
"Info": "这是一个时刻聆听着的语音对话助手 | 没有输入参数",
"Function": HotReload(语音助手),
}
function_plugins.update({
"实时语音对话": {
"Group": "对话",
"Color": "stop",
"AsButton": True,
"Info": "这是一个时刻聆听着的语音对话助手 | 没有输入参数",
"Function": HotReload(语音助手)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.批量翻译PDF文档_NOUGAT import 批量翻译PDF文档
function_plugins.update(
{
"精准翻译PDF文档NOUGAT": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"Function": HotReload(批量翻译PDF文档),
}
function_plugins.update({
"精准翻译PDF文档NOUGAT": {
"Group": "学术",
"Color": "stop",
"AsButton": False,
"Function": HotReload(批量翻译PDF文档)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.函数动态生成 import 函数动态生成
function_plugins.update(
{
"动态代码解释器CodeInterpreter": {
"Group": "智能体",
"Color": "stop",
"AsButton": False,
"Function": HotReload(函数动态生成),
}
function_plugins.update({
"动态代码解释器CodeInterpreter": {
"Group": "智能体",
"Color": "stop",
"AsButton": False,
"Function": HotReload(函数动态生成)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
try:
from crazy_functions.多智能体 import 多智能体终端
function_plugins.update(
{
"AutoGen多智能体终端仅供测试": {
"Group": "智能体",
"Color": "stop",
"AsButton": False,
"Function": HotReload(多智能体终端),
}
function_plugins.update({
"AutoGen多智能体终端仅供测试": {
"Group": "智能体",
"Color": "stop",
"AsButton": False,
"Function": HotReload(多智能体终端)
}
)
})
except:
print(trimmed_format_exc())
print("Load function plugin failed")
try:
from crazy_functions.互动小游戏 import 随机小游戏
function_plugins.update(
{
"随机互动小游戏(仅供测试)": {
"Group": "智能体",
"Color": "stop",
"AsButton": False,
"Function": HotReload(随机小游戏),
}
}
)
except:
print(trimmed_format_exc())
print("Load function plugin failed")
print('Load function plugin failed')
# try:
# from crazy_functions.高级功能函数模板 import 测试图表渲染
# from crazy_functions.互动小游戏 import 随机小游戏
# function_plugins.update({
# "绘制逻辑关系(测试图表渲染)": {
# "随机小游戏": {
# "Group": "智能体",
# "Color": "stop",
# "AsButton": True,
# "Function": HotReload(测试图表渲染)
# "Function": HotReload(随机小游戏)
# }
# })
# except:
@@ -703,6 +618,8 @@ def get_crazy_functions():
# except:
# print('Load function plugin failed')
"""
设置默认值:
- 默认 Group = 对话
@@ -712,12 +629,12 @@ def get_crazy_functions():
"""
for name, function_meta in function_plugins.items():
if "Group" not in function_meta:
function_plugins[name]["Group"] = "对话"
function_plugins[name]["Group"] = '对话'
if "AsButton" not in function_meta:
function_plugins[name]["AsButton"] = True
if "AdvancedArgs" not in function_meta:
function_plugins[name]["AdvancedArgs"] = False
if "Color" not in function_meta:
function_plugins[name]["Color"] = "secondary"
function_plugins[name]["Color"] = 'secondary'
return function_plugins

查看文件

@@ -0,0 +1,232 @@
from collections.abc import Callable, Iterable, Mapping
from typing import Any
from toolbox import CatchException, update_ui, gen_time_str, trimmed_format_exc
from toolbox import promote_file_to_downloadzone, get_log_folder
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from .crazy_utils import input_clipping, try_install_deps
from multiprocessing import Process, Pipe
import os
import time
templete = """
```python
import ... # Put dependencies here, e.g. import numpy as np
class TerminalFunction(object): # Do not change the name of the class, The name of the class must be `TerminalFunction`
def run(self, path): # The name of the function must be `run`, it takes only a positional argument.
# rewrite the function you have just written here
...
return generated_file_path
```
"""
def inspect_dependency(chatbot, history):
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return True
def get_code_block(reply):
import re
pattern = r"```([\s\S]*?)```" # regex pattern to match code blocks
matches = re.findall(pattern, reply) # find all code blocks in text
if len(matches) == 1:
return matches[0].strip('python') # code block
for match in matches:
if 'class TerminalFunction' in match:
return match.strip('python') # code block
raise RuntimeError("GPT is not generating proper code.")
def gpt_interact_multi_step(txt, file_type, llm_kwargs, chatbot, history):
# 输入
prompt_compose = [
f'Your job:\n'
f'1. write a single Python function, which takes a path of a `{file_type}` file as the only argument and returns a `string` containing the result of analysis or the path of generated files. \n',
f"2. You should write this function to perform following task: " + txt + "\n",
f"3. Wrap the output python function with markdown codeblock."
]
i_say = "".join(prompt_compose)
demo = []
# 第一步
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=demo,
sys_prompt= r"You are a programmer."
)
history.extend([i_say, gpt_say])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
# 第二步
prompt_compose = [
"If previous stage is successful, rewrite the function you have just written to satisfy following templete: \n",
templete
]
i_say = "".join(prompt_compose); inputs_show_user = "If previous stage is successful, rewrite the function you have just written to satisfy executable templete. "
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=inputs_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
sys_prompt= r"You are a programmer."
)
code_to_return = gpt_say
history.extend([i_say, gpt_say])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
# # 第三步
# i_say = "Please list to packages to install to run the code above. Then show me how to use `try_install_deps` function to install them."
# i_say += 'For instance. `try_install_deps(["opencv-python", "scipy", "numpy"])`'
# installation_advance = yield from request_gpt_model_in_new_thread_with_ui_alive(
# inputs=i_say, inputs_show_user=inputs_show_user,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# sys_prompt= r"You are a programmer."
# )
# # # 第三步
# i_say = "Show me how to use `pip` to install packages to run the code above. "
# i_say += 'For instance. `pip install -r opencv-python scipy numpy`'
# installation_advance = yield from request_gpt_model_in_new_thread_with_ui_alive(
# inputs=i_say, inputs_show_user=i_say,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# sys_prompt= r"You are a programmer."
# )
installation_advance = ""
return code_to_return, installation_advance, txt, file_type, llm_kwargs, chatbot, history
def make_module(code):
module_file = 'gpt_fn_' + gen_time_str().replace('-','_')
with open(f'{get_log_folder()}/{module_file}.py', 'w', encoding='utf8') as f:
f.write(code)
def get_class_name(class_string):
import re
# Use regex to extract the class name
class_name = re.search(r'class (\w+)\(', class_string).group(1)
return class_name
class_name = get_class_name(code)
return f"{get_log_folder().replace('/', '.')}.{module_file}->{class_name}"
def init_module_instance(module):
import importlib
module_, class_ = module.split('->')
init_f = getattr(importlib.import_module(module_), class_)
return init_f()
def for_immediate_show_off_when_possible(file_type, fp, chatbot):
if file_type in ['png', 'jpg']:
image_path = os.path.abspath(fp)
chatbot.append(['这是一张图片, 展示如下:',
f'本地文件地址: <br/>`{image_path}`<br/>'+
f'本地文件预览: <br/><div align="center"><img src="file={image_path}"></div>'
])
return chatbot
def subprocess_worker(instance, file_path, return_dict):
return_dict['result'] = instance.run(file_path)
def have_any_recent_upload_files(chatbot):
_5min = 5 * 60
if not chatbot: return False # chatbot is None
most_recent_uploaded = chatbot._cookies.get("most_recent_uploaded", None)
if not most_recent_uploaded: return False # most_recent_uploaded is None
if time.time() - most_recent_uploaded["time"] < _5min: return True # most_recent_uploaded is new
else: return False # most_recent_uploaded is too old
def get_recent_file_prompt_support(chatbot):
most_recent_uploaded = chatbot._cookies.get("most_recent_uploaded", None)
path = most_recent_uploaded['path']
return path
@CatchException
def 虚空终端CodeInterpreter(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
plugin_kwargs 插件模型的参数,暂时没有用武之地
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
web_port 当前软件运行的端口号
"""
raise NotImplementedError
# 清空历史,以免输入溢出
history = []; clear_file_downloadzone(chatbot)
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"CodeInterpreter开源版, 此插件处于开发阶段, 建议暂时不要使用, 插件初始化中 ..."
])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
if have_any_recent_upload_files(chatbot):
file_path = get_recent_file_prompt_support(chatbot)
else:
chatbot.append(["文件检索", "没有发现任何近期上传的文件。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 读取文件
if ("recently_uploaded_files" in plugin_kwargs) and (plugin_kwargs["recently_uploaded_files"] == ""): plugin_kwargs.pop("recently_uploaded_files")
recently_uploaded_files = plugin_kwargs.get("recently_uploaded_files", None)
file_path = recently_uploaded_files[-1]
file_type = file_path.split('.')[-1]
# 粗心检查
if is_the_upload_folder(txt):
chatbot.append([
"...",
f"请在输入框内填写需求,然后再次点击该插件(文件路径 {file_path} 已经被记忆)"
])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 开始干正事
for j in range(5): # 最多重试5次
try:
code, installation_advance, txt, file_type, llm_kwargs, chatbot, history = \
yield from gpt_interact_multi_step(txt, file_type, llm_kwargs, chatbot, history)
code = get_code_block(code)
res = make_module(code)
instance = init_module_instance(res)
break
except Exception as e:
chatbot.append([f"{j}次代码生成尝试,失败了", f"错误追踪\n```\n{trimmed_format_exc()}\n```\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 代码生成结束, 开始执行
try:
import multiprocessing
manager = multiprocessing.Manager()
return_dict = manager.dict()
p = multiprocessing.Process(target=subprocess_worker, args=(instance, file_path, return_dict))
# only has 10 seconds to run
p.start(); p.join(timeout=10)
if p.is_alive(): p.terminate(); p.join()
p.close()
res = return_dict['result']
# res = instance.run(file_path)
except Exception as e:
chatbot.append(["执行失败了", f"错误追踪\n```\n{trimmed_format_exc()}\n```\n"])
# chatbot.append(["如果是缺乏依赖,请参考以下建议", installation_advance])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 顺利完成,收尾
res = str(res)
if os.path.exists(res):
chatbot.append(["执行成功了,结果是一个有效文件", "结果:" + res])
new_file_path = promote_file_to_downloadzone(res, chatbot=chatbot)
chatbot = for_immediate_show_off_when_possible(file_type, new_file_path, chatbot)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
else:
chatbot.append(["执行成功了,结果是一个字符串", "结果:" + res])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
"""
测试:
裁剪图像,保留下半部分
交换图像的蓝色通道和红色通道
将图像转为灰度图像
将csv文件转excel表格
"""

查看文件

@@ -26,8 +26,8 @@ class PaperFileGroup():
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index])
else:
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
segments = breakdown_text_to_satisfy_token_limit(file_content, max_token_limit)
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
segments = breakdown_txt_to_satisfy_token_limit_for_pdf(file_content, self.get_token_num, max_token_limit)
for j, segment in enumerate(segments):
self.sp_file_contents.append(segment)
self.sp_file_index.append(index)
@@ -46,7 +46,7 @@ class PaperFileGroup():
manifest.append(path + '.polish.tex')
f.write(res)
return manifest
def zip_result(self):
import os, time
folder = os.path.dirname(self.file_paths[0])
@@ -59,7 +59,7 @@ def 多文件润色(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
from .crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
# <-------- 读取Latex文件,删除其中的所有注释 ---------->
# <-------- 读取Latex文件,删除其中的所有注释 ---------->
pfg = PaperFileGroup()
for index, fp in enumerate(file_manifest):
@@ -73,31 +73,31 @@ def 多文件润色(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
pfg.file_paths.append(fp)
pfg.file_contents.append(clean_tex_content)
# <-------- 拆分过长的latex文件 ---------->
# <-------- 拆分过长的latex文件 ---------->
pfg.run_file_split(max_token_limit=1024)
n_split = len(pfg.sp_file_contents)
# <-------- 多线程润色开始 ---------->
# <-------- 多线程润色开始 ---------->
if language == 'en':
if mode == 'polish':
inputs_array = [r"Below is a section from an academic paper, polish this section to meet the academic standard, " +
r"improve the grammar, clarity and overall readability, do not modify any latex command such as \section, \cite and equations:" +
inputs_array = ["Below is a section from an academic paper, polish this section to meet the academic standard, " +
"improve the grammar, clarity and overall readability, do not modify any latex command such as \section, \cite and equations:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
else:
inputs_array = [r"Below is a section from an academic paper, proofread this section." +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " +
r"Answer me only with the revised text:" +
inputs_array = [r"Below is a section from an academic paper, proofread this section." +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " +
r"Answer me only with the revised text:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"Polish {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper writer." for _ in range(n_split)]
elif language == 'zh':
if mode == 'polish':
inputs_array = [r"以下是一篇学术论文中的一段内容,请将此部分润色以满足学术标准,提高语法、清晰度和整体可读性,不要修改任何LaTeX命令,例如\section,\cite和方程式" +
inputs_array = [f"以下是一篇学术论文中的一段内容,请将此部分润色以满足学术标准,提高语法、清晰度和整体可读性,不要修改任何LaTeX命令,例如\section,\cite和方程式" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
else:
inputs_array = [r"以下是一篇学术论文中的一段内容,请对这部分内容进行语法矫正。不要修改任何LaTeX命令,例如\section,\cite和方程式" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_array = [f"以下是一篇学术论文中的一段内容,请对这部分内容进行语法矫正。不要修改任何LaTeX命令,例如\section,\cite和方程式" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"润色 {f}" for f in pfg.sp_file_tag]
sys_prompt_array=["你是一位专业的中文学术论文作家。" for _ in range(n_split)]
@@ -113,7 +113,7 @@ def 多文件润色(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
scroller_max_len = 80
)
# <-------- 文本碎片重组为完整的tex文件,整理结果为压缩包 ---------->
# <-------- 文本碎片重组为完整的tex文件,整理结果为压缩包 ---------->
try:
pfg.sp_file_result = []
for i_say, gpt_say in zip(gpt_response_collection[0::2], gpt_response_collection[1::2]):
@@ -124,7 +124,7 @@ def 多文件润色(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
except:
print(trimmed_format_exc())
# <-------- 整理结果,退出 ---------->
# <-------- 整理结果,退出 ---------->
create_report_file_name = time.strftime("%Y-%m-%d-%H-%M-%S", time.localtime()) + f"-chatgpt.polish.md"
res = write_history_to_file(gpt_response_collection, file_basename=create_report_file_name)
promote_file_to_downloadzone(res, chatbot=chatbot)
@@ -135,11 +135,11 @@ def 多文件润色(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
@CatchException
def Latex英文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Latex英文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"对整个Latex项目进行润色。函数插件贡献者: Binary-Husky。注意,此插件不调用Latex,如果有Latex环境,请使用Latex英文纠错+高亮修正位置(需Latex)插件"])
"对整个Latex项目进行润色。函数插件贡献者: Binary-Husky。注意,此插件不调用Latex,如果有Latex环境,请使用Latex英文纠错+高亮插件"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 尝试导入依赖,如果缺少依赖,则给出安装建议
@@ -173,7 +173,7 @@ def Latex英文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_p
@CatchException
def Latex中文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Latex中文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
@@ -209,7 +209,7 @@ def Latex中文润色(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_p
@CatchException
def Latex英文纠错(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Latex英文纠错(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",

查看文件

@@ -26,8 +26,8 @@ class PaperFileGroup():
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index])
else:
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
segments = breakdown_text_to_satisfy_token_limit(file_content, max_token_limit)
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
segments = breakdown_txt_to_satisfy_token_limit_for_pdf(file_content, self.get_token_num, max_token_limit)
for j, segment in enumerate(segments):
self.sp_file_contents.append(segment)
self.sp_file_index.append(index)
@@ -39,7 +39,7 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
import time, os, re
from .crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
# <-------- 读取Latex文件,删除其中的所有注释 ---------->
# <-------- 读取Latex文件,删除其中的所有注释 ---------->
pfg = PaperFileGroup()
for index, fp in enumerate(file_manifest):
@@ -53,11 +53,11 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
pfg.file_paths.append(fp)
pfg.file_contents.append(clean_tex_content)
# <-------- 拆分过长的latex文件 ---------->
# <-------- 拆分过长的latex文件 ---------->
pfg.run_file_split(max_token_limit=1024)
n_split = len(pfg.sp_file_contents)
# <-------- 抽取摘要 ---------->
# <-------- 抽取摘要 ---------->
# if language == 'en':
# abs_extract_inputs = f"Please write an abstract for this paper"
@@ -70,14 +70,14 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
# sys_prompt="Your job is to collect information from materials。",
# )
# <-------- 多线程润色开始 ---------->
# <-------- 多线程润色开始 ---------->
if language == 'en->zh':
inputs_array = ["Below is a section from an English academic paper, translate it into Chinese, do not modify any latex command such as \section, \cite and equations:" +
inputs_array = ["Below is a section from an English academic paper, translate it into Chinese, do not modify any latex command such as \section, \cite and equations:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"翻译 {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper translator." for _ in range(n_split)]
elif language == 'zh->en':
inputs_array = [f"Below is a section from a Chinese academic paper, translate it into English, do not modify any latex command such as \section, \cite and equations:" +
inputs_array = [f"Below is a section from a Chinese academic paper, translate it into English, do not modify any latex command such as \section, \cite and equations:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"翻译 {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper translator." for _ in range(n_split)]
@@ -93,7 +93,7 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
scroller_max_len = 80
)
# <-------- 整理结果,退出 ---------->
# <-------- 整理结果,退出 ---------->
create_report_file_name = time.strftime("%Y-%m-%d-%H-%M-%S", time.localtime()) + f"-chatgpt.polish.md"
res = write_history_to_file(gpt_response_collection, create_report_file_name)
promote_file_to_downloadzone(res, chatbot=chatbot)
@@ -106,7 +106,7 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
@CatchException
def Latex英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Latex英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
@@ -143,7 +143,7 @@ def Latex英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prom
@CatchException
def Latex中译英(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Latex中译英(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",

查看文件

@@ -1,543 +0,0 @@
from toolbox import update_ui, trimmed_format_exc, get_conf, get_log_folder, promote_file_to_downloadzone, check_repeat_upload, map_file_to_sha256
from toolbox import CatchException, report_exception, update_ui_lastest_msg, zip_result, gen_time_str
from functools import partial
import glob, os, requests, time, json, tarfile
pj = os.path.join
ARXIV_CACHE_DIR = os.path.expanduser(f"~/arxiv_cache/")
# =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=- 工具函数 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-
# 专业词汇声明 = 'If the term "agent" is used in this section, it should be translated to "智能体". '
def switch_prompt(pfg, mode, more_requirement):
"""
Generate prompts and system prompts based on the mode for proofreading or translating.
Args:
- pfg: Proofreader or Translator instance.
- mode: A string specifying the mode, either 'proofread' or 'translate_zh'.
Returns:
- inputs_array: A list of strings containing prompts for users to respond to.
- sys_prompt_array: A list of strings containing prompts for system prompts.
"""
n_split = len(pfg.sp_file_contents)
if mode == 'proofread_en':
inputs_array = [r"Below is a section from an academic paper, proofread this section." +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " + more_requirement +
r"Answer me only with the revised text:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
sys_prompt_array = ["You are a professional academic paper writer." for _ in range(n_split)]
elif mode == 'translate_zh':
inputs_array = [
r"Below is a section from an English academic paper, translate it into Chinese. " + more_requirement +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " +
r"Answer me only with the translated text:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
sys_prompt_array = ["You are a professional translator." for _ in range(n_split)]
else:
assert False, "未知指令"
return inputs_array, sys_prompt_array
def desend_to_extracted_folder_if_exist(project_folder):
"""
Descend into the extracted folder if it exists, otherwise return the original folder.
Args:
- project_folder: A string specifying the folder path.
Returns:
- A string specifying the path to the extracted folder, or the original folder if there is no extracted folder.
"""
maybe_dir = [f for f in glob.glob(f'{project_folder}/*') if os.path.isdir(f)]
if len(maybe_dir) == 0: return project_folder
if maybe_dir[0].endswith('.extract'): return maybe_dir[0]
return project_folder
def move_project(project_folder, arxiv_id=None):
"""
Create a new work folder and copy the project folder to it.
Args:
- project_folder: A string specifying the folder path of the project.
Returns:
- A string specifying the path to the new work folder.
"""
import shutil, time
time.sleep(2) # avoid time string conflict
if arxiv_id is not None:
new_workfolder = pj(ARXIV_CACHE_DIR, arxiv_id, 'workfolder')
else:
new_workfolder = f'{get_log_folder()}/{gen_time_str()}'
try:
shutil.rmtree(new_workfolder)
except:
pass
# align subfolder if there is a folder wrapper
items = glob.glob(pj(project_folder, '*'))
items = [item for item in items if os.path.basename(item) != '__MACOSX']
if len(glob.glob(pj(project_folder, '*.tex'))) == 0 and len(items) == 1:
if os.path.isdir(items[0]): project_folder = items[0]
shutil.copytree(src=project_folder, dst=new_workfolder)
return new_workfolder
def arxiv_download(chatbot, history, txt, allow_cache=True):
def check_cached_translation_pdf(arxiv_id):
translation_dir = pj(ARXIV_CACHE_DIR, arxiv_id, 'translation')
if not os.path.exists(translation_dir):
os.makedirs(translation_dir)
target_file = pj(translation_dir, 'translate_zh.pdf')
if os.path.exists(target_file):
promote_file_to_downloadzone(target_file, rename_file=None, chatbot=chatbot)
target_file_compare = pj(translation_dir, 'comparison.pdf')
if os.path.exists(target_file_compare):
promote_file_to_downloadzone(target_file_compare, rename_file=None, chatbot=chatbot)
return target_file
return False
def is_float(s):
try:
float(s)
return True
except ValueError:
return False
if txt.startswith('https://arxiv.org/pdf/'):
arxiv_id = txt.split('/')[-1] # 2402.14207v2.pdf
txt = arxiv_id.split('v')[0] # 2402.14207
if ('.' in txt) and ('/' not in txt) and is_float(txt): # is arxiv ID
txt = 'https://arxiv.org/abs/' + txt.strip()
if ('.' in txt) and ('/' not in txt) and is_float(txt[:10]): # is arxiv ID
txt = 'https://arxiv.org/abs/' + txt[:10]
if not txt.startswith('https://arxiv.org'):
return txt, None # 是本地文件,跳过下载
# <-------------- inspect format ------------->
chatbot.append([f"检测到arxiv文档连接", '尝试下载 ...'])
yield from update_ui(chatbot=chatbot, history=history)
time.sleep(1) # 刷新界面
url_ = txt # https://arxiv.org/abs/1707.06690
if not txt.startswith('https://arxiv.org/abs/'):
msg = f"解析arxiv网址失败, 期望格式例如: https://arxiv.org/abs/1707.06690。实际得到格式: {url_}"
yield from update_ui_lastest_msg(msg, chatbot=chatbot, history=history) # 刷新界面
return msg, None
# <-------------- set format ------------->
arxiv_id = url_.split('/abs/')[-1]
if 'v' in arxiv_id: arxiv_id = arxiv_id[:10]
cached_translation_pdf = check_cached_translation_pdf(arxiv_id)
if cached_translation_pdf and allow_cache: return cached_translation_pdf, arxiv_id
url_tar = url_.replace('/abs/', '/e-print/')
translation_dir = pj(ARXIV_CACHE_DIR, arxiv_id, 'e-print')
extract_dst = pj(ARXIV_CACHE_DIR, arxiv_id, 'extract')
os.makedirs(translation_dir, exist_ok=True)
# <-------------- download arxiv source file ------------->
dst = pj(translation_dir, arxiv_id + '.tar')
if os.path.exists(dst):
yield from update_ui_lastest_msg("调用缓存", chatbot=chatbot, history=history) # 刷新界面
else:
yield from update_ui_lastest_msg("开始下载", chatbot=chatbot, history=history) # 刷新界面
proxies = get_conf('proxies')
r = requests.get(url_tar, proxies=proxies)
with open(dst, 'wb+') as f:
f.write(r.content)
# <-------------- extract file ------------->
yield from update_ui_lastest_msg("下载完成", chatbot=chatbot, history=history) # 刷新界面
from toolbox import extract_archive
extract_archive(file_path=dst, dest_dir=extract_dst)
return extract_dst, arxiv_id
def pdf2tex_project(pdf_file_path):
# Mathpix API credentials
app_id, app_key = get_conf('MATHPIX_APPID', 'MATHPIX_APPKEY')
headers = {"app_id": app_id, "app_key": app_key}
# Step 1: Send PDF file for processing
options = {
"conversion_formats": {"tex.zip": True},
"math_inline_delimiters": ["$", "$"],
"rm_spaces": True
}
response = requests.post(url="https://api.mathpix.com/v3/pdf",
headers=headers,
data={"options_json": json.dumps(options)},
files={"file": open(pdf_file_path, "rb")})
if response.ok:
pdf_id = response.json()["pdf_id"]
print(f"PDF processing initiated. PDF ID: {pdf_id}")
# Step 2: Check processing status
while True:
conversion_response = requests.get(f"https://api.mathpix.com/v3/pdf/{pdf_id}", headers=headers)
conversion_data = conversion_response.json()
if conversion_data["status"] == "completed":
print("PDF processing completed.")
break
elif conversion_data["status"] == "error":
print("Error occurred during processing.")
else:
print(f"Processing status: {conversion_data['status']}")
time.sleep(5) # wait for a few seconds before checking again
# Step 3: Save results to local files
output_dir = os.path.join(os.path.dirname(pdf_file_path), 'mathpix_output')
if not os.path.exists(output_dir):
os.makedirs(output_dir)
url = f"https://api.mathpix.com/v3/pdf/{pdf_id}.tex"
response = requests.get(url, headers=headers)
file_name_wo_dot = '_'.join(os.path.basename(pdf_file_path).split('.')[:-1])
output_name = f"{file_name_wo_dot}.tex.zip"
output_path = os.path.join(output_dir, output_name)
with open(output_path, "wb") as output_file:
output_file.write(response.content)
print(f"tex.zip file saved at: {output_path}")
import zipfile
unzip_dir = os.path.join(output_dir, file_name_wo_dot)
with zipfile.ZipFile(output_path, 'r') as zip_ref:
zip_ref.extractall(unzip_dir)
return unzip_dir
else:
print(f"Error sending PDF for processing. Status code: {response.status_code}")
return None
# =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= 插件主程序1 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
@CatchException
def Latex英文纠错加PDF对比(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
# <-------------- information about this plugin ------------->
chatbot.append(["函数插件功能?",
"对整个Latex项目进行纠错, 用latex编译为PDF对修正处做高亮。函数插件贡献者: Binary-Husky。注意事项: 目前仅支持GPT3.5/GPT4,其他模型转化效果未知。目前对机器学习类文献转化效果最好,其他类型文献转化效果未知。仅在Windows系统进行了测试,其他操作系统表现未知。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------------- more requirements ------------->
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
more_req = plugin_kwargs.get("advanced_arg", "")
_switch_prompt_ = partial(switch_prompt, more_requirement=more_req)
# <-------------- check deps ------------->
try:
import glob, os, time, subprocess
subprocess.Popen(['pdflatex', '-version'])
from .latex_fns.latex_actions import Latex精细分解与转化, 编译Latex
except Exception as e:
chatbot.append([f"解析项目: {txt}",
f"尝试执行Latex指令失败。Latex没有安装, 或者不在环境变量PATH中。安装方法https://tug.org/texlive/。报错信息\n\n```\n\n{trimmed_format_exc()}\n\n```\n\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- clear history and read input ------------->
history = []
if os.path.exists(txt):
project_folder = txt
else:
if txt == "": txt = '空空如也的输入栏'
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到本地项目或无权访问: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.tex', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到任何.tex文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- if is a zip/tar file ------------->
project_folder = desend_to_extracted_folder_if_exist(project_folder)
# <-------------- move latex project away from temp folder ------------->
project_folder = move_project(project_folder, arxiv_id=None)
# <-------------- if merge_translate_zh is already generated, skip gpt req ------------->
if not os.path.exists(project_folder + '/merge_proofread_en.tex'):
yield from Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot, history, system_prompt, mode='proofread_en',
switch_prompt=_switch_prompt_)
# <-------------- compile PDF ------------->
success = yield from 编译Latex(chatbot, history, main_file_original='merge',
main_file_modified='merge_proofread_en',
work_folder_original=project_folder, work_folder_modified=project_folder,
work_folder=project_folder)
# <-------------- zip PDF ------------->
zip_res = zip_result(project_folder)
if success:
chatbot.append((f"成功啦", '请查收结果(压缩包)...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
else:
chatbot.append((f"失败了",
'虽然PDF生成失败了, 但请查收结果(压缩包), 内含已经翻译的Tex文档, 也是可读的, 您可以到Github Issue区, 用该压缩包+对话历史存档进行反馈 ...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
# <-------------- we are done ------------->
return success
# =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= 插件主程序2 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
@CatchException
def Latex翻译中文并重新编译PDF(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
# <-------------- information about this plugin ------------->
chatbot.append([
"函数插件功能?",
"对整个Latex项目进行翻译, 生成中文PDF。函数插件贡献者: Binary-Husky。注意事项: 此插件Windows支持最佳,Linux下必须使用Docker安装,详见项目主README.md。目前仅支持GPT3.5/GPT4,其他模型转化效果未知。目前对机器学习类文献转化效果最好,其他类型文献转化效果未知。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------------- more requirements ------------->
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
more_req = plugin_kwargs.get("advanced_arg", "")
no_cache = more_req.startswith("--no-cache")
if no_cache: more_req.lstrip("--no-cache")
allow_cache = not no_cache
_switch_prompt_ = partial(switch_prompt, more_requirement=more_req)
# <-------------- check deps ------------->
try:
import glob, os, time, subprocess
subprocess.Popen(['pdflatex', '-version'])
from .latex_fns.latex_actions import Latex精细分解与转化, 编译Latex
except Exception as e:
chatbot.append([f"解析项目: {txt}",
f"尝试执行Latex指令失败。Latex没有安装, 或者不在环境变量PATH中。安装方法https://tug.org/texlive/。报错信息\n\n```\n\n{trimmed_format_exc()}\n\n```\n\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- clear history and read input ------------->
history = []
try:
txt, arxiv_id = yield from arxiv_download(chatbot, history, txt, allow_cache)
except tarfile.ReadError as e:
yield from update_ui_lastest_msg(
"无法自动下载该论文的Latex源码,请前往arxiv打开此论文下载页面,点other Formats,然后download source手动下载latex源码包。接下来调用本地Latex翻译插件即可。",
chatbot=chatbot, history=history)
return
if txt.endswith('.pdf'):
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"发现已经存在翻译好的PDF文档")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
if os.path.exists(txt):
project_folder = txt
else:
if txt == "": txt = '空空如也的输入栏'
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到本地项目或无法处理: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.tex', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到任何.tex文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- if is a zip/tar file ------------->
project_folder = desend_to_extracted_folder_if_exist(project_folder)
# <-------------- move latex project away from temp folder ------------->
project_folder = move_project(project_folder, arxiv_id)
# <-------------- if merge_translate_zh is already generated, skip gpt req ------------->
if not os.path.exists(project_folder + '/merge_translate_zh.tex'):
yield from Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot, history, system_prompt, mode='translate_zh',
switch_prompt=_switch_prompt_)
# <-------------- compile PDF ------------->
success = yield from 编译Latex(chatbot, history, main_file_original='merge',
main_file_modified='merge_translate_zh', mode='translate_zh',
work_folder_original=project_folder, work_folder_modified=project_folder,
work_folder=project_folder)
# <-------------- zip PDF ------------->
zip_res = zip_result(project_folder)
if success:
chatbot.append((f"成功啦", '请查收结果(压缩包)...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
else:
chatbot.append((f"失败了",
'虽然PDF生成失败了, 但请查收结果(压缩包), 内含已经翻译的Tex文档, 您可以到Github Issue区, 用该压缩包进行反馈。如系统是Linux,请检查系统字体见Github wiki ...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
# <-------------- we are done ------------->
return success
# =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=- 插件主程序3 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
@CatchException
def PDF翻译中文并重新编译PDF(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# <-------------- information about this plugin ------------->
chatbot.append([
"函数插件功能?",
"将PDF转换为Latex项目,翻译为中文后重新编译为PDF。函数插件贡献者: Marroh。注意事项: 此插件Windows支持最佳,Linux下必须使用Docker安装,详见项目主README.md。目前仅支持GPT3.5/GPT4,其他模型转化效果未知。目前对机器学习类文献转化效果最好,其他类型文献转化效果未知。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------------- more requirements ------------->
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
more_req = plugin_kwargs.get("advanced_arg", "")
no_cache = more_req.startswith("--no-cache")
if no_cache: more_req.lstrip("--no-cache")
allow_cache = not no_cache
_switch_prompt_ = partial(switch_prompt, more_requirement=more_req)
# <-------------- check deps ------------->
try:
import glob, os, time, subprocess
subprocess.Popen(['pdflatex', '-version'])
from .latex_fns.latex_actions import Latex精细分解与转化, 编译Latex
except Exception as e:
chatbot.append([f"解析项目: {txt}",
f"尝试执行Latex指令失败。Latex没有安装, 或者不在环境变量PATH中。安装方法https://tug.org/texlive/。报错信息\n\n```\n\n{trimmed_format_exc()}\n\n```\n\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- clear history and read input ------------->
if os.path.exists(txt):
project_folder = txt
else:
if txt == "": txt = '空空如也的输入栏'
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到本地项目或无法处理: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.pdf', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到任何.pdf文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
if len(file_manifest) != 1:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"不支持同时处理多个pdf文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
app_id, app_key = get_conf('MATHPIX_APPID', 'MATHPIX_APPKEY')
if len(app_id) == 0 or len(app_key) == 0:
report_exception(chatbot, history, a="缺失 MATHPIX_APPID 和 MATHPIX_APPKEY。", b=f"请配置 MATHPIX_APPID 和 MATHPIX_APPKEY")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
hash_tag = map_file_to_sha256(file_manifest[0])
# <-------------- check repeated pdf ------------->
chatbot.append([f"检查PDF是否被重复上传", "正在检查..."])
yield from update_ui(chatbot=chatbot, history=history)
repeat, project_folder = check_repeat_upload(file_manifest[0], hash_tag)
except_flag = False
if repeat:
yield from update_ui_lastest_msg(f"发现重复上传,请查收结果(压缩包)...", chatbot=chatbot, history=history)
try:
trans_html_file = [f for f in glob.glob(f'{project_folder}/**/*.trans.html', recursive=True)][0]
promote_file_to_downloadzone(trans_html_file, rename_file=None, chatbot=chatbot)
translate_pdf = [f for f in glob.glob(f'{project_folder}/**/merge_translate_zh.pdf', recursive=True)][0]
promote_file_to_downloadzone(translate_pdf, rename_file=None, chatbot=chatbot)
comparison_pdf = [f for f in glob.glob(f'{project_folder}/**/comparison.pdf', recursive=True)][0]
promote_file_to_downloadzone(comparison_pdf, rename_file=None, chatbot=chatbot)
zip_res = zip_result(project_folder)
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
return True
except:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"发现重复上传,但是无法找到相关文件")
yield from update_ui(chatbot=chatbot, history=history)
chatbot.append([f"没有相关文件", '尝试重新翻译PDF...'])
yield from update_ui(chatbot=chatbot, history=history)
except_flag = True
elif not repeat or except_flag:
yield from update_ui_lastest_msg(f"未发现重复上传", chatbot=chatbot, history=history)
# <-------------- convert pdf into tex ------------->
chatbot.append([f"解析项目: {txt}", "正在将PDF转换为tex项目,请耐心等待..."])
yield from update_ui(chatbot=chatbot, history=history)
project_folder = pdf2tex_project(file_manifest[0])
if project_folder is None:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"PDF转换为tex项目失败")
yield from update_ui(chatbot=chatbot, history=history)
return False
# <-------------- translate latex file into Chinese ------------->
yield from update_ui_lastest_msg("正在tex项目将翻译为中文...", chatbot=chatbot, history=history)
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.tex', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a=f"解析项目: {txt}", b=f"找不到任何.tex文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- if is a zip/tar file ------------->
project_folder = desend_to_extracted_folder_if_exist(project_folder)
# <-------------- move latex project away from temp folder ------------->
project_folder = move_project(project_folder)
# <-------------- set a hash tag for repeat-checking ------------->
with open(pj(project_folder, hash_tag + '.tag'), 'w') as f:
f.write(hash_tag)
f.close()
# <-------------- if merge_translate_zh is already generated, skip gpt req ------------->
if not os.path.exists(project_folder + '/merge_translate_zh.tex'):
yield from Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot, history, system_prompt, mode='translate_zh',
switch_prompt=_switch_prompt_)
# <-------------- compile PDF ------------->
yield from update_ui_lastest_msg("正在将翻译好的项目tex项目编译为PDF...", chatbot=chatbot, history=history)
success = yield from 编译Latex(chatbot, history, main_file_original='merge',
main_file_modified='merge_translate_zh', mode='translate_zh',
work_folder_original=project_folder, work_folder_modified=project_folder,
work_folder=project_folder)
# <-------------- zip PDF ------------->
zip_res = zip_result(project_folder)
if success:
chatbot.append((f"成功啦", '请查收结果(压缩包)...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
else:
chatbot.append((f"失败了",
'虽然PDF生成失败了, 但请查收结果(压缩包), 内含已经翻译的Tex文档, 您可以到Github Issue区, 用该压缩包进行反馈。如系统是Linux,请检查系统字体见Github wiki ...'))
yield from update_ui(chatbot=chatbot, history=history);
time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
# <-------------- we are done ------------->
return success

查看文件

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from toolbox import update_ui, trimmed_format_exc, get_conf, get_log_folder, promote_file_to_downloadzone
from toolbox import CatchException, report_exception, update_ui_lastest_msg, zip_result, gen_time_str
from functools import partial
import glob, os, requests, time
pj = os.path.join
ARXIV_CACHE_DIR = os.path.expanduser(f"~/arxiv_cache/")
# =================================== 工具函数 ===============================================
# 专业词汇声明 = 'If the term "agent" is used in this section, it should be translated to "智能体". '
def switch_prompt(pfg, mode, more_requirement):
"""
Generate prompts and system prompts based on the mode for proofreading or translating.
Args:
- pfg: Proofreader or Translator instance.
- mode: A string specifying the mode, either 'proofread' or 'translate_zh'.
Returns:
- inputs_array: A list of strings containing prompts for users to respond to.
- sys_prompt_array: A list of strings containing prompts for system prompts.
"""
n_split = len(pfg.sp_file_contents)
if mode == 'proofread_en':
inputs_array = [r"Below is a section from an academic paper, proofread this section." +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " + more_requirement +
r"Answer me only with the revised text:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
sys_prompt_array = ["You are a professional academic paper writer." for _ in range(n_split)]
elif mode == 'translate_zh':
inputs_array = [r"Below is a section from an English academic paper, translate it into Chinese. " + more_requirement +
r"Do not modify any latex command such as \section, \cite, \begin, \item and equations. " +
r"Answer me only with the translated text:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
sys_prompt_array = ["You are a professional translator." for _ in range(n_split)]
else:
assert False, "未知指令"
return inputs_array, sys_prompt_array
def desend_to_extracted_folder_if_exist(project_folder):
"""
Descend into the extracted folder if it exists, otherwise return the original folder.
Args:
- project_folder: A string specifying the folder path.
Returns:
- A string specifying the path to the extracted folder, or the original folder if there is no extracted folder.
"""
maybe_dir = [f for f in glob.glob(f'{project_folder}/*') if os.path.isdir(f)]
if len(maybe_dir) == 0: return project_folder
if maybe_dir[0].endswith('.extract'): return maybe_dir[0]
return project_folder
def move_project(project_folder, arxiv_id=None):
"""
Create a new work folder and copy the project folder to it.
Args:
- project_folder: A string specifying the folder path of the project.
Returns:
- A string specifying the path to the new work folder.
"""
import shutil, time
time.sleep(2) # avoid time string conflict
if arxiv_id is not None:
new_workfolder = pj(ARXIV_CACHE_DIR, arxiv_id, 'workfolder')
else:
new_workfolder = f'{get_log_folder()}/{gen_time_str()}'
try:
shutil.rmtree(new_workfolder)
except:
pass
# align subfolder if there is a folder wrapper
items = glob.glob(pj(project_folder,'*'))
items = [item for item in items if os.path.basename(item)!='__MACOSX']
if len(glob.glob(pj(project_folder,'*.tex'))) == 0 and len(items) == 1:
if os.path.isdir(items[0]): project_folder = items[0]
shutil.copytree(src=project_folder, dst=new_workfolder)
return new_workfolder
def arxiv_download(chatbot, history, txt, allow_cache=True):
def check_cached_translation_pdf(arxiv_id):
translation_dir = pj(ARXIV_CACHE_DIR, arxiv_id, 'translation')
if not os.path.exists(translation_dir):
os.makedirs(translation_dir)
target_file = pj(translation_dir, 'translate_zh.pdf')
if os.path.exists(target_file):
promote_file_to_downloadzone(target_file, rename_file=None, chatbot=chatbot)
target_file_compare = pj(translation_dir, 'comparison.pdf')
if os.path.exists(target_file_compare):
promote_file_to_downloadzone(target_file_compare, rename_file=None, chatbot=chatbot)
return target_file
return False
def is_float(s):
try:
float(s)
return True
except ValueError:
return False
if ('.' in txt) and ('/' not in txt) and is_float(txt): # is arxiv ID
txt = 'https://arxiv.org/abs/' + txt.strip()
if ('.' in txt) and ('/' not in txt) and is_float(txt[:10]): # is arxiv ID
txt = 'https://arxiv.org/abs/' + txt[:10]
if not txt.startswith('https://arxiv.org'):
return txt, None
# <-------------- inspect format ------------->
chatbot.append([f"检测到arxiv文档连接", '尝试下载 ...'])
yield from update_ui(chatbot=chatbot, history=history)
time.sleep(1) # 刷新界面
url_ = txt # https://arxiv.org/abs/1707.06690
if not txt.startswith('https://arxiv.org/abs/'):
msg = f"解析arxiv网址失败, 期望格式例如: https://arxiv.org/abs/1707.06690。实际得到格式: {url_}"
yield from update_ui_lastest_msg(msg, chatbot=chatbot, history=history) # 刷新界面
return msg, None
# <-------------- set format ------------->
arxiv_id = url_.split('/abs/')[-1]
if 'v' in arxiv_id: arxiv_id = arxiv_id[:10]
cached_translation_pdf = check_cached_translation_pdf(arxiv_id)
if cached_translation_pdf and allow_cache: return cached_translation_pdf, arxiv_id
url_tar = url_.replace('/abs/', '/e-print/')
translation_dir = pj(ARXIV_CACHE_DIR, arxiv_id, 'e-print')
extract_dst = pj(ARXIV_CACHE_DIR, arxiv_id, 'extract')
os.makedirs(translation_dir, exist_ok=True)
# <-------------- download arxiv source file ------------->
dst = pj(translation_dir, arxiv_id+'.tar')
if os.path.exists(dst):
yield from update_ui_lastest_msg("调用缓存", chatbot=chatbot, history=history) # 刷新界面
else:
yield from update_ui_lastest_msg("开始下载", chatbot=chatbot, history=history) # 刷新界面
proxies = get_conf('proxies')
r = requests.get(url_tar, proxies=proxies)
with open(dst, 'wb+') as f:
f.write(r.content)
# <-------------- extract file ------------->
yield from update_ui_lastest_msg("下载完成", chatbot=chatbot, history=history) # 刷新界面
from toolbox import extract_archive
extract_archive(file_path=dst, dest_dir=extract_dst)
return extract_dst, arxiv_id
# ========================================= 插件主程序1 =====================================================
@CatchException
def Latex英文纠错加PDF对比(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# <-------------- information about this plugin ------------->
chatbot.append([ "函数插件功能?",
"对整个Latex项目进行纠错, 用latex编译为PDF对修正处做高亮。函数插件贡献者: Binary-Husky。注意事项: 目前仅支持GPT3.5/GPT4,其他模型转化效果未知。目前对机器学习类文献转化效果最好,其他类型文献转化效果未知。仅在Windows系统进行了测试,其他操作系统表现未知。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------------- more requirements ------------->
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
more_req = plugin_kwargs.get("advanced_arg", "")
_switch_prompt_ = partial(switch_prompt, more_requirement=more_req)
# <-------------- check deps ------------->
try:
import glob, os, time, subprocess
subprocess.Popen(['pdflatex', '-version'])
from .latex_fns.latex_actions import Latex精细分解与转化, 编译Latex
except Exception as e:
chatbot.append([ f"解析项目: {txt}",
f"尝试执行Latex指令失败。Latex没有安装, 或者不在环境变量PATH中。安装方法https://tug.org/texlive/。报错信息\n\n```\n\n{trimmed_format_exc()}\n\n```\n\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- clear history and read input ------------->
history = []
if os.path.exists(txt):
project_folder = txt
else:
if txt == "": txt = '空空如也的输入栏'
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到本地项目或无权访问: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.tex', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到任何.tex文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- if is a zip/tar file ------------->
project_folder = desend_to_extracted_folder_if_exist(project_folder)
# <-------------- move latex project away from temp folder ------------->
project_folder = move_project(project_folder, arxiv_id=None)
# <-------------- if merge_translate_zh is already generated, skip gpt req ------------->
if not os.path.exists(project_folder + '/merge_proofread_en.tex'):
yield from Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot, history, system_prompt, mode='proofread_en', switch_prompt=_switch_prompt_)
# <-------------- compile PDF ------------->
success = yield from 编译Latex(chatbot, history, main_file_original='merge', main_file_modified='merge_proofread_en',
work_folder_original=project_folder, work_folder_modified=project_folder, work_folder=project_folder)
# <-------------- zip PDF ------------->
zip_res = zip_result(project_folder)
if success:
chatbot.append((f"成功啦", '请查收结果(压缩包)...'))
yield from update_ui(chatbot=chatbot, history=history); time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
else:
chatbot.append((f"失败了", '虽然PDF生成失败了, 但请查收结果(压缩包), 内含已经翻译的Tex文档, 也是可读的, 您可以到Github Issue区, 用该压缩包+对话历史存档进行反馈 ...'))
yield from update_ui(chatbot=chatbot, history=history); time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
# <-------------- we are done ------------->
return success
# ========================================= 插件主程序2 =====================================================
@CatchException
def Latex翻译中文并重新编译PDF(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# <-------------- information about this plugin ------------->
chatbot.append([
"函数插件功能?",
"对整个Latex项目进行翻译, 生成中文PDF。函数插件贡献者: Binary-Husky。注意事项: 此插件Windows支持最佳,Linux下必须使用Docker安装,详见项目主README.md。目前仅支持GPT3.5/GPT4,其他模型转化效果未知。目前对机器学习类文献转化效果最好,其他类型文献转化效果未知。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------------- more requirements ------------->
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
more_req = plugin_kwargs.get("advanced_arg", "")
no_cache = more_req.startswith("--no-cache")
if no_cache: more_req.lstrip("--no-cache")
allow_cache = not no_cache
_switch_prompt_ = partial(switch_prompt, more_requirement=more_req)
# <-------------- check deps ------------->
try:
import glob, os, time, subprocess
subprocess.Popen(['pdflatex', '-version'])
from .latex_fns.latex_actions import Latex精细分解与转化, 编译Latex
except Exception as e:
chatbot.append([ f"解析项目: {txt}",
f"尝试执行Latex指令失败。Latex没有安装, 或者不在环境变量PATH中。安装方法https://tug.org/texlive/。报错信息\n\n```\n\n{trimmed_format_exc()}\n\n```\n\n"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- clear history and read input ------------->
history = []
txt, arxiv_id = yield from arxiv_download(chatbot, history, txt, allow_cache)
if txt.endswith('.pdf'):
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"发现已经存在翻译好的PDF文档")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
if os.path.exists(txt):
project_folder = txt
else:
if txt == "": txt = '空空如也的输入栏'
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到本地项目或无法处理: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.tex', recursive=True)]
if len(file_manifest) == 0:
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到任何.tex文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# <-------------- if is a zip/tar file ------------->
project_folder = desend_to_extracted_folder_if_exist(project_folder)
# <-------------- move latex project away from temp folder ------------->
project_folder = move_project(project_folder, arxiv_id)
# <-------------- if merge_translate_zh is already generated, skip gpt req ------------->
if not os.path.exists(project_folder + '/merge_translate_zh.tex'):
yield from Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot, history, system_prompt, mode='translate_zh', switch_prompt=_switch_prompt_)
# <-------------- compile PDF ------------->
success = yield from 编译Latex(chatbot, history, main_file_original='merge', main_file_modified='merge_translate_zh', mode='translate_zh',
work_folder_original=project_folder, work_folder_modified=project_folder, work_folder=project_folder)
# <-------------- zip PDF ------------->
zip_res = zip_result(project_folder)
if success:
chatbot.append((f"成功啦", '请查收结果(压缩包)...'))
yield from update_ui(chatbot=chatbot, history=history); time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
else:
chatbot.append((f"失败了", '虽然PDF生成失败了, 但请查收结果(压缩包), 内含已经翻译的Tex文档, 您可以到Github Issue区, 用该压缩包进行反馈。如系统是Linux,请检查系统字体见Github wiki ...'))
yield from update_ui(chatbot=chatbot, history=history); time.sleep(1) # 刷新界面
promote_file_to_downloadzone(file=zip_res, chatbot=chatbot)
# <-------------- we are done ------------->
return success

查看文件

@@ -1,324 +0,0 @@
from toolbox import CatchException, report_exception, get_log_folder, gen_time_str, check_packages
from toolbox import update_ui, promote_file_to_downloadzone, update_ui_lastest_msg, disable_auto_promotion
from toolbox import write_history_to_file, promote_file_to_downloadzone, get_conf, extract_archive
from toolbox import generate_file_link, zip_folder, trimmed_format_exc, trimmed_format_exc_markdown
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from .crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
from .crazy_utils import read_and_clean_pdf_text
from .crazy_utils import get_files_from_everything
from .pdf_fns.parse_pdf import parse_pdf, get_avail_grobid_url, translate_pdf
from colorful import *
import os
@CatchException
def 批量翻译PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
disable_auto_promotion(chatbot)
# 基本信息:功能、贡献者
chatbot.append([None, "插件功能批量翻译PDF文档。函数插件贡献者: Binary-Husky"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
check_packages(["fitz", "tiktoken", "scipdf"])
except:
report_exception(chatbot, history,
a=f"解析项目: {txt}",
b=f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pymupdf tiktoken scipdf_parser```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 清空历史,以免输入溢出
history = []
success, file_manifest, project_folder = get_files_from_everything(txt, type='.pdf')
# 检测输入参数,如没有给定输入参数,直接退出
if not success:
if txt == "": txt = '空空如也的输入栏'
# 如果没找到任何文件
if len(file_manifest) == 0:
report_exception(chatbot, history,
a=f"解析项目: {txt}", b=f"找不到任何.pdf拓展名的文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 开始正式执行任务
DOC2X_API_KEY = get_conf("DOC2X_API_KEY")
# ------- 第一种方法,效果最好,但是需要DOC2X服务 -------
if len(DOC2X_API_KEY) != 0:
try:
yield from 解析PDF_DOC2X(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, DOC2X_API_KEY, user_request)
return
except:
chatbot.append([None, f"DOC2X服务不可用,现在将执行效果稍差的旧版代码。{trimmed_format_exc_markdown()}"])
yield from update_ui(chatbot=chatbot, history=history)
# ------- 第二种方法,效果次优 -------
grobid_url = get_avail_grobid_url()
if grobid_url is not None:
yield from 解析PDF_基于GROBID(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, grobid_url)
return
# ------- 第三种方法,早期代码,效果不理想 -------
yield from update_ui_lastest_msg("GROBID服务不可用,请检查config中的GROBID_URL。作为替代,现在将执行效果稍差的旧版代码。", chatbot, history, delay=3)
yield from 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
return
def 解析PDF_DOC2X_单文件(fp, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, DOC2X_API_KEY, user_request):
def pdf2markdown(filepath):
import requests, json, os
markdown_dir = get_log_folder(plugin_name="pdf_ocr")
doc2x_api_key = DOC2X_API_KEY
if doc2x_api_key.startswith('sk-'):
url = "https://api.doc2x.noedgeai.com/api/v1/pdf"
else:
url = "https://api.doc2x.noedgeai.com/api/platform/pdf"
chatbot.append((None, "加载PDF文件,发送至DOC2X解析..."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
res = requests.post(
url,
files={"file": open(filepath, "rb")},
data={"ocr": "1"},
headers={"Authorization": "Bearer " + doc2x_api_key}
)
res_json = []
if res.status_code == 200:
decoded = res.content.decode("utf-8")
for z_decoded in decoded.split('\n'):
if len(z_decoded) == 0: continue
assert z_decoded.startswith("data: ")
z_decoded = z_decoded[len("data: "):]
decoded_json = json.loads(z_decoded)
res_json.append(decoded_json)
else:
raise RuntimeError(format("[ERROR] status code: %d, body: %s" % (res.status_code, res.text)))
uuid = res_json[0]['uuid']
to = "md" # latex, md, docx
url = "https://api.doc2x.noedgeai.com/api/export"+"?request_id="+uuid+"&to="+to
chatbot.append((None, f"读取解析: {url} ..."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
res = requests.get(url, headers={"Authorization": "Bearer " + doc2x_api_key})
md_zip_path = os.path.join(markdown_dir, gen_time_str() + '.zip')
if res.status_code == 200:
with open(md_zip_path, "wb") as f: f.write(res.content)
else:
raise RuntimeError(format("[ERROR] status code: %d, body: %s" % (res.status_code, res.text)))
promote_file_to_downloadzone(md_zip_path, chatbot=chatbot)
chatbot.append((None, f"完成解析 {md_zip_path} ..."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return md_zip_path
def deliver_to_markdown_plugin(md_zip_path, user_request):
from crazy_functions.批量Markdown翻译 import Markdown英译中
import shutil, re
time_tag = gen_time_str()
target_path_base = get_log_folder(chatbot.get_user())
file_origin_name = os.path.basename(md_zip_path)
this_file_path = os.path.join(target_path_base, file_origin_name)
os.makedirs(target_path_base, exist_ok=True)
shutil.copyfile(md_zip_path, this_file_path)
ex_folder = this_file_path + ".extract"
extract_archive(
file_path=this_file_path, dest_dir=ex_folder
)
# edit markdown files
success, file_manifest, project_folder = get_files_from_everything(ex_folder, type='.md')
for generated_fp in file_manifest:
# 修正一些公式问题
with open(generated_fp, 'r', encoding='utf8') as f:
content = f.read()
# 将公式中的\[ \]替换成$$
content = content.replace(r'\[', r'$$').replace(r'\]', r'$$')
# 将公式中的\( \)替换成$
content = content.replace(r'\(', r'$').replace(r'\)', r'$')
content = content.replace('```markdown', '\n').replace('```', '\n')
with open(generated_fp, 'w', encoding='utf8') as f:
f.write(content)
promote_file_to_downloadzone(generated_fp, chatbot=chatbot)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 生成在线预览html
file_name = '在线预览翻译(原文)' + gen_time_str() + '.html'
preview_fp = os.path.join(ex_folder, file_name)
from shared_utils.advanced_markdown_format import markdown_convertion_for_file
with open(generated_fp, "r", encoding="utf-8") as f:
md = f.read()
# Markdown中使用不标准的表格,需要在表格前加上一个emoji,以便公式渲染
md = re.sub(r'^<table>', r'😃<table>', md, flags=re.MULTILINE)
html = markdown_convertion_for_file(md)
with open(preview_fp, "w", encoding="utf-8") as f: f.write(html)
chatbot.append([None, f"生成在线预览:{generate_file_link([preview_fp])}"])
promote_file_to_downloadzone(preview_fp, chatbot=chatbot)
chatbot.append((None, f"调用Markdown插件 {ex_folder} ..."))
plugin_kwargs['markdown_expected_output_dir'] = ex_folder
translated_f_name = 'translated_markdown.md'
generated_fp = plugin_kwargs['markdown_expected_output_path'] = os.path.join(ex_folder, translated_f_name)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
yield from Markdown英译中(ex_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request)
if os.path.exists(generated_fp):
# 修正一些公式问题
with open(generated_fp, 'r', encoding='utf8') as f: content = f.read()
content = content.replace('```markdown', '\n').replace('```', '\n')
# Markdown中使用不标准的表格,需要在表格前加上一个emoji,以便公式渲染
content = re.sub(r'^<table>', r'😃<table>', content, flags=re.MULTILINE)
with open(generated_fp, 'w', encoding='utf8') as f: f.write(content)
# 生成在线预览html
file_name = '在线预览翻译' + gen_time_str() + '.html'
preview_fp = os.path.join(ex_folder, file_name)
from shared_utils.advanced_markdown_format import markdown_convertion_for_file
with open(generated_fp, "r", encoding="utf-8") as f:
md = f.read()
html = markdown_convertion_for_file(md)
with open(preview_fp, "w", encoding="utf-8") as f: f.write(html)
promote_file_to_downloadzone(preview_fp, chatbot=chatbot)
# 生成包含图片的压缩包
dest_folder = get_log_folder(chatbot.get_user())
zip_name = '翻译后的带图文档.zip'
zip_folder(source_folder=ex_folder, dest_folder=dest_folder, zip_name=zip_name)
zip_fp = os.path.join(dest_folder, zip_name)
promote_file_to_downloadzone(zip_fp, chatbot=chatbot)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
md_zip_path = yield from pdf2markdown(fp)
yield from deliver_to_markdown_plugin(md_zip_path, user_request)
def 解析PDF_DOC2X(file_manifest, *args):
for index, fp in enumerate(file_manifest):
yield from 解析PDF_DOC2X_单文件(fp, *args)
return
def 解析PDF_基于GROBID(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, grobid_url):
import copy, json
TOKEN_LIMIT_PER_FRAGMENT = 1024
generated_conclusion_files = []
generated_html_files = []
DST_LANG = "中文"
from crazy_functions.pdf_fns.report_gen_html import construct_html
for index, fp in enumerate(file_manifest):
chatbot.append(["当前进度:", f"正在连接GROBID服务,请稍候: {grobid_url}\n如果等待时间过长,请修改config中的GROBID_URL,可修改成本地GROBID服务。"]); yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
article_dict = parse_pdf(fp, grobid_url)
grobid_json_res = os.path.join(get_log_folder(), gen_time_str() + "grobid.json")
with open(grobid_json_res, 'w+', encoding='utf8') as f:
f.write(json.dumps(article_dict, indent=4, ensure_ascii=False))
promote_file_to_downloadzone(grobid_json_res, chatbot=chatbot)
if article_dict is None: raise RuntimeError("解析PDF失败,请检查PDF是否损坏。")
yield from translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_files, TOKEN_LIMIT_PER_FRAGMENT, DST_LANG)
chatbot.append(("给出输出文件清单", str(generated_conclusion_files + generated_html_files)))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
def 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt):
"""
此函数已经弃用
"""
import copy
TOKEN_LIMIT_PER_FRAGMENT = 1024
generated_conclusion_files = []
generated_html_files = []
from crazy_functions.pdf_fns.report_gen_html import construct_html
for index, fp in enumerate(file_manifest):
# 读取PDF文件
file_content, page_one = read_and_clean_pdf_text(fp)
file_content = file_content.encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
page_one = str(page_one).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
# 递归地切割PDF文件
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
paper_fragments = breakdown_text_to_satisfy_token_limit(txt=file_content, limit=TOKEN_LIMIT_PER_FRAGMENT, llm_model=llm_kwargs['llm_model'])
page_one_fragments = breakdown_text_to_satisfy_token_limit(txt=page_one, limit=TOKEN_LIMIT_PER_FRAGMENT//4, llm_model=llm_kwargs['llm_model'])
# 为了更好的效果,我们剥离Introduction之后的部分如果有
paper_meta = page_one_fragments[0].split('introduction')[0].split('Introduction')[0].split('INTRODUCTION')[0]
# 单线,获取文章meta信息
paper_meta_info = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=f"以下是一篇学术论文的基础信息,请从中提取出“标题”、“收录会议或期刊”、“作者”、“摘要”、“编号”、“作者邮箱”这六个部分。请用markdown格式输出,最后用中文翻译摘要部分。请提取{paper_meta}",
inputs_show_user=f"请从{fp}中提取出“标题”、“收录会议或期刊”等基本信息。",
llm_kwargs=llm_kwargs,
chatbot=chatbot, history=[],
sys_prompt="Your job is to collect information from materials。",
)
# 多线,翻译
gpt_response_collection = yield from request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
inputs_array=[
f"你需要翻译以下内容:\n{frag}" for frag in paper_fragments],
inputs_show_user_array=[f"\n---\n 原文: \n\n {frag.replace('#', '')} \n---\n 翻译:\n " for frag in paper_fragments],
llm_kwargs=llm_kwargs,
chatbot=chatbot,
history_array=[[paper_meta] for _ in paper_fragments],
sys_prompt_array=[
"请你作为一个学术翻译,负责把学术论文准确翻译成中文。注意文章中的每一句话都要翻译。" for _ in paper_fragments],
# max_workers=5 # OpenAI所允许的最大并行过载
)
gpt_response_collection_md = copy.deepcopy(gpt_response_collection)
# 整理报告的格式
for i,k in enumerate(gpt_response_collection_md):
if i%2==0:
gpt_response_collection_md[i] = f"\n\n---\n\n ## 原文[{i//2}/{len(gpt_response_collection_md)//2}] \n\n {paper_fragments[i//2].replace('#', '')} \n\n---\n\n ## 翻译[{i//2}/{len(gpt_response_collection_md)//2}]\n "
else:
gpt_response_collection_md[i] = gpt_response_collection_md[i]
final = ["一、论文概况\n\n---\n\n", paper_meta_info.replace('# ', '### ') + '\n\n---\n\n', "二、论文翻译", ""]
final.extend(gpt_response_collection_md)
create_report_file_name = f"{os.path.basename(fp)}.trans.md"
res = write_history_to_file(final, create_report_file_name)
promote_file_to_downloadzone(res, chatbot=chatbot)
# 更新UI
generated_conclusion_files.append(f'{get_log_folder()}/{create_report_file_name}')
chatbot.append((f"{fp}完成了吗?", res))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# write html
try:
ch = construct_html()
orig = ""
trans = ""
gpt_response_collection_html = copy.deepcopy(gpt_response_collection)
for i,k in enumerate(gpt_response_collection_html):
if i%2==0:
gpt_response_collection_html[i] = paper_fragments[i//2].replace('#', '')
else:
gpt_response_collection_html[i] = gpt_response_collection_html[i]
final = ["论文概况", paper_meta_info.replace('# ', '### '), "二、论文翻译", ""]
final.extend(gpt_response_collection_html)
for i, k in enumerate(final):
if i%2==0:
orig = k
if i%2==1:
trans = k
ch.add_row(a=orig, b=trans)
create_report_file_name = f"{os.path.basename(fp)}.trans.html"
generated_html_files.append(ch.save_file(create_report_file_name))
except:
from toolbox import trimmed_format_exc
print('writing html result failed:', trimmed_format_exc())
# 准备文件的下载
for pdf_path in generated_conclusion_files:
# 重命名文件
rename_file = f'翻译-{os.path.basename(pdf_path)}'
promote_file_to_downloadzone(pdf_path, rename_file=rename_file, chatbot=chatbot)
for html_path in generated_html_files:
# 重命名文件
rename_file = f'翻译-{os.path.basename(html_path)}'
promote_file_to_downloadzone(html_path, rename_file=rename_file, chatbot=chatbot)
chatbot.append(("给出输出文件清单", str(generated_conclusion_files + generated_html_files)))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面

查看文件

@@ -35,11 +35,7 @@ def gpt_academic_generate_oai_reply(
class AutoGenGeneral(PluginMultiprocessManager):
def gpt_academic_print_override(self, user_proxy, message, sender):
# ⭐⭐ run in subprocess
try:
print_msg = sender.name + "\n\n---\n\n" + message["content"]
except:
print_msg = sender.name + "\n\n---\n\n" + message
self.child_conn.send(PipeCom("show", print_msg))
self.child_conn.send(PipeCom("show", sender.name + "\n\n---\n\n" + message["content"]))
def gpt_academic_get_human_input(self, user_proxy, message):
# ⭐⭐ run in subprocess
@@ -66,33 +62,33 @@ class AutoGenGeneral(PluginMultiprocessManager):
def exe_autogen(self, input):
# ⭐⭐ run in subprocess
input = input.content
code_execution_config = {"work_dir": self.autogen_work_dir, "use_docker": self.use_docker}
agents = self.define_agents()
user_proxy = None
assistant = None
for agent_kwargs in agents:
agent_cls = agent_kwargs.pop('cls')
kwargs = {
'llm_config':self.llm_kwargs,
'code_execution_config':code_execution_config
}
kwargs.update(agent_kwargs)
agent_handle = agent_cls(**kwargs)
agent_handle._print_received_message = lambda a,b: self.gpt_academic_print_override(agent_kwargs, a, b)
for d in agent_handle._reply_func_list:
if hasattr(d['reply_func'],'__name__') and d['reply_func'].__name__ == 'generate_oai_reply':
d['reply_func'] = gpt_academic_generate_oai_reply
if agent_kwargs['name'] == 'user_proxy':
agent_handle.get_human_input = lambda a: self.gpt_academic_get_human_input(user_proxy, a)
user_proxy = agent_handle
if agent_kwargs['name'] == 'assistant': assistant = agent_handle
try:
if user_proxy is None or assistant is None: raise Exception("用户代理或助理代理未定义")
with ProxyNetworkActivate("AutoGen"):
with ProxyNetworkActivate("AutoGen"):
code_execution_config = {"work_dir": self.autogen_work_dir, "use_docker": self.use_docker}
agents = self.define_agents()
user_proxy = None
assistant = None
for agent_kwargs in agents:
agent_cls = agent_kwargs.pop('cls')
kwargs = {
'llm_config':self.llm_kwargs,
'code_execution_config':code_execution_config
}
kwargs.update(agent_kwargs)
agent_handle = agent_cls(**kwargs)
agent_handle._print_received_message = lambda a,b: self.gpt_academic_print_override(agent_kwargs, a, b)
for d in agent_handle._reply_func_list:
if hasattr(d['reply_func'],'__name__') and d['reply_func'].__name__ == 'generate_oai_reply':
d['reply_func'] = gpt_academic_generate_oai_reply
if agent_kwargs['name'] == 'user_proxy':
agent_handle.get_human_input = lambda a: self.gpt_academic_get_human_input(user_proxy, a)
user_proxy = agent_handle
if agent_kwargs['name'] == 'assistant': assistant = agent_handle
try:
if user_proxy is None or assistant is None: raise Exception("用户代理或助理代理未定义")
user_proxy.initiate_chat(assistant, message=input)
except Exception as e:
tb_str = '```\n' + trimmed_format_exc() + '```'
self.child_conn.send(PipeCom("done", "AutoGen 执行失败: \n\n" + tb_str))
except Exception as e:
tb_str = '```\n' + trimmed_format_exc() + '```'
self.child_conn.send(PipeCom("done", "AutoGen 执行失败: \n\n" + tb_str))
def subprocess_worker(self, child_conn):
# ⭐⭐ run in subprocess

查看文件

@@ -9,7 +9,7 @@ class PipeCom:
class PluginMultiprocessManager:
def __init__(self, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def __init__(self, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# ⭐ run in main process
self.autogen_work_dir = os.path.join(get_log_folder("autogen"), gen_time_str())
self.previous_work_dir_files = {}
@@ -18,7 +18,7 @@ class PluginMultiprocessManager:
self.chatbot = chatbot
self.history = history
self.system_prompt = system_prompt
# self.user_request = user_request
# self.web_port = web_port
self.alive = True
self.use_docker = get_conf("AUTOGEN_USE_DOCKER")
self.last_user_input = ""
@@ -72,7 +72,7 @@ class PluginMultiprocessManager:
if file_type.lower() in ['png', 'jpg']:
image_path = os.path.abspath(fp)
self.chatbot.append([
'检测到新生图像:',
'检测到新生图像:',
f'本地文件预览: <br/><div align="center"><img src="file={image_path}"></div>'
])
yield from update_ui(chatbot=self.chatbot, history=self.history)
@@ -114,21 +114,21 @@ class PluginMultiprocessManager:
self.cnt = 1
self.parent_conn = self.launch_subprocess_with_pipe() # ⭐⭐⭐
repeated, cmd_to_autogen = self.send_command(txt)
if txt == 'exit':
if txt == 'exit':
self.chatbot.append([f"结束", "结束信号已明确,终止AutoGen程序。"])
yield from update_ui(chatbot=self.chatbot, history=self.history)
self.terminate()
return "terminate"
# patience = 10
while True:
time.sleep(0.5)
if not self.alive:
# the heartbeat watchdog might have it killed
self.terminate()
return "terminate"
if self.parent_conn.poll():
if self.parent_conn.poll():
self.feed_heartbeat_watchdog()
if "[GPT-Academic] 等待中" in self.chatbot[-1][-1]:
self.chatbot.pop(-1) # remove the last line
@@ -152,8 +152,8 @@ class PluginMultiprocessManager:
yield from update_ui(chatbot=self.chatbot, history=self.history)
if msg.cmd == "interact":
yield from self.overwatch_workdir_file_change()
self.chatbot.append([f"程序抵达用户反馈节点.", msg.content +
"\n\n等待您的进一步指令." +
self.chatbot.append([f"程序抵达用户反馈节点.", msg.content +
"\n\n等待您的进一步指令." +
"\n\n(1) 一般情况下您不需要说什么, 清空输入区, 然后直接点击“提交”以继续. " +
"\n\n(2) 如果您需要补充些什么, 输入要反馈的内容, 直接点击“提交”以继续. " +
"\n\n(3) 如果您想终止程序, 输入exit, 直接点击“提交”以终止AutoGen并解锁. "

查看文件

@@ -8,7 +8,7 @@ class WatchDog():
self.interval = interval
self.msg = msg
self.kill_dog = False
def watch(self):
while True:
if self.kill_dog: break

查看文件

@@ -32,7 +32,7 @@ def string_to_options(arguments):
return args
@CatchException
def 微调数据集生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 微调数据集生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -40,13 +40,13 @@ def 微调数据集生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
chatbot.append(("这是什么功能?", "[Local Message] 微调数据集生成"))
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
args = plugin_kwargs.get("advanced_arg", None)
if args is None:
if args is None:
chatbot.append(("没给定指令", "退出"))
yield from update_ui(chatbot=chatbot, history=history); return
else:
@@ -69,7 +69,7 @@ def 微调数据集生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
sys_prompt_array=[arguments.system_prompt for _ in (batch)],
max_workers=10 # OpenAI所允许的最大并行过载
)
with open(txt+'.generated.json', 'a+', encoding='utf8') as f:
for b, r in zip(batch, res[1::2]):
f.write(json.dumps({"content":b, "summary":r}, ensure_ascii=False)+'\n')
@@ -80,7 +80,7 @@ def 微调数据集生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
@CatchException
def 启动微调(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 启动微调(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -88,19 +88,19 @@ def 启动微调(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
import subprocess
history = [] # 清空历史,以免输入溢出
chatbot.append(("这是什么功能?", "[Local Message] 微调数据集生成"))
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
args = plugin_kwargs.get("advanced_arg", None)
if args is None:
if args is None:
chatbot.append(("没给定指令", "退出"))
yield from update_ui(chatbot=chatbot, history=history); return
else:
arguments = string_to_options(arguments=args)
pre_seq_len = arguments.pre_seq_len # 128

查看文件

@@ -12,7 +12,7 @@ def input_clipping(inputs, history, max_token_limit):
mode = 'input-and-history'
# 当 输入部分的token占比 小于 全文的一半时,只裁剪历史
input_token_num = get_token_num(inputs)
if input_token_num < max_token_limit//2:
if input_token_num < max_token_limit//2:
mode = 'only-history'
max_token_limit = max_token_limit - input_token_num
@@ -21,7 +21,7 @@ def input_clipping(inputs, history, max_token_limit):
n_token = get_token_num('\n'.join(everything))
everything_token = [get_token_num(e) for e in everything]
delta = max(everything_token) // 16 # 截断时的颗粒度
while n_token > max_token_limit:
where = np.argmax(everything_token)
encoded = enc.encode(everything[where], disallowed_special=())
@@ -38,9 +38,9 @@ def input_clipping(inputs, history, max_token_limit):
return inputs, history
def request_gpt_model_in_new_thread_with_ui_alive(
inputs, inputs_show_user, llm_kwargs,
inputs, inputs_show_user, llm_kwargs,
chatbot, history, sys_prompt, refresh_interval=0.2,
handle_token_exceed=True,
handle_token_exceed=True,
retry_times_at_unknown_error=2,
):
"""
@@ -77,7 +77,7 @@ def request_gpt_model_in_new_thread_with_ui_alive(
exceeded_cnt = 0
while True:
# watchdog error
if len(mutable) >= 2 and (time.time()-mutable[1]) > watch_dog_patience:
if len(mutable) >= 2 and (time.time()-mutable[1]) > watch_dog_patience:
raise RuntimeError("检测到程序终止。")
try:
# 【第一种情况】:顺利完成
@@ -135,29 +135,15 @@ def request_gpt_model_in_new_thread_with_ui_alive(
yield from update_ui(chatbot=chatbot, history=[]) # 如果最后成功了,则删除报错信息
return final_result
def can_multi_process(llm) -> bool:
from request_llms.bridge_all import model_info
def default_condition(llm) -> bool:
# legacy condition
if llm.startswith('gpt-'): return True
if llm.startswith('api2d-'): return True
if llm.startswith('azure-'): return True
if llm.startswith('spark'): return True
if llm.startswith('zhipuai') or llm.startswith('glm-'): return True
return False
if llm in model_info:
if 'can_multi_thread' in model_info[llm]:
return model_info[llm]['can_multi_thread']
else:
return default_condition(llm)
else:
return default_condition(llm)
def can_multi_process(llm):
if llm.startswith('gpt-'): return True
if llm.startswith('api2d-'): return True
if llm.startswith('azure-'): return True
return False
def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
inputs_array, inputs_show_user_array, llm_kwargs,
chatbot, history_array, sys_prompt_array,
inputs_array, inputs_show_user_array, llm_kwargs,
chatbot, history_array, sys_prompt_array,
refresh_interval=0.2, max_workers=-1, scroller_max_len=30,
handle_token_exceed=True, show_user_at_complete=False,
retry_times_at_unknown_error=2,
@@ -201,7 +187,7 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
# 屏蔽掉 chatglm的多线程,可能会导致严重卡顿
if not can_multi_process(llm_kwargs['llm_model']):
max_workers = 1
executor = ThreadPoolExecutor(max_workers=max_workers)
n_frag = len(inputs_array)
# 用户反馈
@@ -226,7 +212,7 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
try:
# 【第一种情况】:顺利完成
gpt_say = predict_no_ui_long_connection(
inputs=inputs, llm_kwargs=llm_kwargs, history=history,
inputs=inputs, llm_kwargs=llm_kwargs, history=history,
sys_prompt=sys_prompt, observe_window=mutable[index], console_slience=True
)
mutable[index][2] = "已成功"
@@ -258,7 +244,7 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
print(tb_str)
gpt_say += f"[Local Message] 警告,线程{index}在执行过程中遭遇问题, Traceback\n\n{tb_str}\n\n"
if len(mutable[index][0]) > 0: gpt_say += "此线程失败前收到的回答:\n\n" + mutable[index][0]
if retry_op > 0:
if retry_op > 0:
retry_op -= 1
wait = random.randint(5, 20)
if ("Rate limit reached" in tb_str) or ("Too Many Requests" in tb_str):
@@ -296,11 +282,12 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
# 在前端打印些好玩的东西
for thread_index, _ in enumerate(worker_done):
print_something_really_funny = "[ ...`"+mutable[thread_index][0][-scroller_max_len:].\
replace('\n', '').replace('`', '.').replace(' ', '.').replace('<br/>', '.....').replace('$', '.')+"`... ]"
replace('\n', '').replace('`', '.').replace(
' ', '.').replace('<br/>', '.....').replace('$', '.')+"`... ]"
observe_win.append(print_something_really_funny)
# 在前端打印些好玩的东西
stat_str = ''.join([f'`{mutable[thread_index][2]}`: {obs}\n\n'
if not done else f'`{mutable[thread_index][2]}`\n\n'
stat_str = ''.join([f'`{mutable[thread_index][2]}`: {obs}\n\n'
if not done else f'`{mutable[thread_index][2]}`\n\n'
for thread_index, done, obs in zip(range(len(worker_done)), worker_done, observe_win)])
# 在前端打印些好玩的东西
chatbot[-1] = [chatbot[-1][0], f'多线程操作已经开始,完成情况: \n\n{stat_str}' + ''.join(['.']*(cnt % 10+1))]
@@ -314,7 +301,7 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
for inputs_show_user, f in zip(inputs_show_user_array, futures):
gpt_res = f.result()
gpt_response_collection.extend([inputs_show_user, gpt_res])
# 是否在结束时,在界面上显示结果
if show_user_at_complete:
for inputs_show_user, f in zip(inputs_show_user_array, futures):
@@ -325,6 +312,95 @@ def request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
return gpt_response_collection
def breakdown_txt_to_satisfy_token_limit(txt, get_token_fn, limit):
def cut(txt_tocut, must_break_at_empty_line): # 递归
if get_token_fn(txt_tocut) <= limit:
return [txt_tocut]
else:
lines = txt_tocut.split('\n')
estimated_line_cut = limit / get_token_fn(txt_tocut) * len(lines)
estimated_line_cut = int(estimated_line_cut)
for cnt in reversed(range(estimated_line_cut)):
if must_break_at_empty_line:
if lines[cnt] != "":
continue
print(cnt)
prev = "\n".join(lines[:cnt])
post = "\n".join(lines[cnt:])
if get_token_fn(prev) < limit:
break
if cnt == 0:
raise RuntimeError("存在一行极长的文本!")
# print(len(post))
# 列表递归接龙
result = [prev]
result.extend(cut(post, must_break_at_empty_line))
return result
try:
return cut(txt, must_break_at_empty_line=True)
except RuntimeError:
return cut(txt, must_break_at_empty_line=False)
def force_breakdown(txt, limit, get_token_fn):
"""
当无法用标点、空行分割时,我们用最暴力的方法切割
"""
for i in reversed(range(len(txt))):
if get_token_fn(txt[:i]) < limit:
return txt[:i], txt[i:]
return "Tiktoken未知错误", "Tiktoken未知错误"
def breakdown_txt_to_satisfy_token_limit_for_pdf(txt, get_token_fn, limit):
# 递归
def cut(txt_tocut, must_break_at_empty_line, break_anyway=False):
if get_token_fn(txt_tocut) <= limit:
return [txt_tocut]
else:
lines = txt_tocut.split('\n')
estimated_line_cut = limit / get_token_fn(txt_tocut) * len(lines)
estimated_line_cut = int(estimated_line_cut)
cnt = 0
for cnt in reversed(range(estimated_line_cut)):
if must_break_at_empty_line:
if lines[cnt] != "":
continue
prev = "\n".join(lines[:cnt])
post = "\n".join(lines[cnt:])
if get_token_fn(prev) < limit:
break
if cnt == 0:
if break_anyway:
prev, post = force_breakdown(txt_tocut, limit, get_token_fn)
else:
raise RuntimeError(f"存在一行极长的文本!{txt_tocut}")
# print(len(post))
# 列表递归接龙
result = [prev]
result.extend(cut(post, must_break_at_empty_line, break_anyway=break_anyway))
return result
try:
# 第1次尝试,将双空行\n\n作为切分点
return cut(txt, must_break_at_empty_line=True)
except RuntimeError:
try:
# 第2次尝试,将单空行\n作为切分点
return cut(txt, must_break_at_empty_line=False)
except RuntimeError:
try:
# 第3次尝试,将英文句号.)作为切分点
res = cut(txt.replace('.', '\n'), must_break_at_empty_line=False) # 这个中文的句号是故意的,作为一个标识而存在
return [r.replace('\n', '.') for r in res]
except RuntimeError as e:
try:
# 第4次尝试,将中文句号作为切分点
res = cut(txt.replace('', '。。\n'), must_break_at_empty_line=False)
return [r.replace('。。\n', '') for r in res]
except RuntimeError as e:
# 第5次尝试,没办法了,随便切一下敷衍吧
return cut(txt, must_break_at_empty_line=False, break_anyway=True)
def read_and_clean_pdf_text(fp):
"""
@@ -364,7 +440,7 @@ def read_and_clean_pdf_text(fp):
if wtf['size'] not in fsize_statiscs: fsize_statiscs[wtf['size']] = 0
fsize_statiscs[wtf['size']] += len(wtf['text'])
return max(fsize_statiscs, key=fsize_statiscs.get)
def ffsize_same(a,b):
"""
提取字体大小是否近似相等
@@ -400,7 +476,7 @@ def read_and_clean_pdf_text(fp):
if index == 0:
page_one_meta = [" ".join(["".join([wtf['text'] for wtf in l['spans']]) for l in t['lines']]).replace(
'- ', '') for t in text_areas['blocks'] if 'lines' in t]
############################## <第 2 步,获取正文主字体> ##################################
try:
fsize_statiscs = {}
@@ -416,7 +492,7 @@ def read_and_clean_pdf_text(fp):
mega_sec = []
sec = []
for index, line in enumerate(meta_line):
if index == 0:
if index == 0:
sec.append(line[fc])
continue
if REMOVE_FOOT_NOTE:
@@ -477,9 +553,6 @@ def read_and_clean_pdf_text(fp):
return True
else:
return False
# 对于某些PDF会有第一个段落就以小写字母开头,为了避免索引错误将其更改为大写
if starts_with_lowercase_word(meta_txt[0]):
meta_txt[0] = meta_txt[0].capitalize()
for _ in range(100):
for index, block_txt in enumerate(meta_txt):
if starts_with_lowercase_word(block_txt):
@@ -513,12 +586,12 @@ def get_files_from_everything(txt, type): # type='.md'
"""
这个函数是用来获取指定目录下所有指定类型(如.md的文件,并且对于网络上的文件,也可以获取它。
下面是对每个参数和返回值的说明:
参数
- txt: 路径或网址,表示要搜索的文件或者文件夹路径或网络上的文件。
参数
- txt: 路径或网址,表示要搜索的文件或者文件夹路径或网络上的文件。
- type: 字符串,表示要搜索的文件类型。默认是.md。
返回值
- success: 布尔值,表示函数是否成功执行。
- file_manifest: 文件路径列表,里面包含以指定类型为后缀名的所有文件的绝对路径。
返回值
- success: 布尔值,表示函数是否成功执行。
- file_manifest: 文件路径列表,里面包含以指定类型为后缀名的所有文件的绝对路径。
- project_folder: 字符串,表示文件所在的文件夹路径。如果是网络上的文件,就是临时文件夹的路径。
该函数详细注释已添加,请确认是否满足您的需要。
"""
@@ -558,6 +631,7 @@ def get_files_from_everything(txt, type): # type='.md'
@Singleton
class nougat_interface():
def __init__(self):
@@ -568,7 +642,7 @@ class nougat_interface():
from toolbox import ProxyNetworkActivate
logging.info(f'正在执行命令 {command}')
with ProxyNetworkActivate("Nougat_Download"):
process = subprocess.Popen(command, shell=False, cwd=cwd, env=os.environ)
process = subprocess.Popen(command, shell=True, cwd=cwd, env=os.environ)
try:
stdout, stderr = process.communicate(timeout=timeout)
except subprocess.TimeoutExpired:
@@ -582,7 +656,7 @@ class nougat_interface():
def NOUGAT_parse_pdf(self, fp, chatbot, history):
from toolbox import update_ui_lastest_msg
yield from update_ui_lastest_msg("正在解析论文, 请稍候。进度:正在排队, 等待线程锁...",
yield from update_ui_lastest_msg("正在解析论文, 请稍候。进度:正在排队, 等待线程锁...",
chatbot=chatbot, history=history, delay=0)
self.threadLock.acquire()
import glob, threading, os
@@ -590,10 +664,9 @@ class nougat_interface():
dst = os.path.join(get_log_folder(plugin_name='nougat'), gen_time_str())
os.makedirs(dst)
yield from update_ui_lastest_msg("正在解析论文, 请稍候。进度正在加载NOUGAT... 提示首次运行需要花费较长时间下载NOUGAT参数",
yield from update_ui_lastest_msg("正在解析论文, 请稍候。进度正在加载NOUGAT... 提示首次运行需要花费较长时间下载NOUGAT参数",
chatbot=chatbot, history=history, delay=0)
command = ['nougat', '--out', os.path.abspath(dst), os.path.abspath(fp)]
self.nougat_with_timeout(command, cwd=os.getcwd(), timeout=3600)
self.nougat_with_timeout(f'nougat --out "{os.path.abspath(dst)}" "{os.path.abspath(fp)}"', os.getcwd(), timeout=3600)
res = glob.glob(os.path.join(dst,'*.mmd'))
if len(res) == 0:
self.threadLock.release()

查看文件

@@ -1,122 +0,0 @@
import os
from textwrap import indent
class FileNode:
def __init__(self, name):
self.name = name
self.children = []
self.is_leaf = False
self.level = 0
self.parenting_ship = []
self.comment = ""
self.comment_maxlen_show = 50
@staticmethod
def add_linebreaks_at_spaces(string, interval=10):
return '\n'.join(string[i:i+interval] for i in range(0, len(string), interval))
def sanitize_comment(self, comment):
if len(comment) > self.comment_maxlen_show: suf = '...'
else: suf = ''
comment = comment[:self.comment_maxlen_show]
comment = comment.replace('\"', '').replace('`', '').replace('\n', '').replace('`', '').replace('$', '')
comment = self.add_linebreaks_at_spaces(comment, 10)
return '`' + comment + suf + '`'
def add_file(self, file_path, file_comment):
directory_names, file_name = os.path.split(file_path)
current_node = self
level = 1
if directory_names == "":
new_node = FileNode(file_name)
current_node.children.append(new_node)
new_node.is_leaf = True
new_node.comment = self.sanitize_comment(file_comment)
new_node.level = level
current_node = new_node
else:
dnamesplit = directory_names.split(os.sep)
for i, directory_name in enumerate(dnamesplit):
found_child = False
level += 1
for child in current_node.children:
if child.name == directory_name:
current_node = child
found_child = True
break
if not found_child:
new_node = FileNode(directory_name)
current_node.children.append(new_node)
new_node.level = level - 1
current_node = new_node
term = FileNode(file_name)
term.level = level
term.comment = self.sanitize_comment(file_comment)
term.is_leaf = True
current_node.children.append(term)
def print_files_recursively(self, level=0, code="R0"):
print(' '*level + self.name + ' ' + str(self.is_leaf) + ' ' + str(self.level))
for j, child in enumerate(self.children):
child.print_files_recursively(level=level+1, code=code+str(j))
self.parenting_ship.extend(child.parenting_ship)
p1 = f"""{code}[\"🗎{self.name}\"]""" if self.is_leaf else f"""{code}[[\"📁{self.name}\"]]"""
p2 = """ --> """
p3 = f"""{code+str(j)}[\"🗎{child.name}\"]""" if child.is_leaf else f"""{code+str(j)}[[\"📁{child.name}\"]]"""
edge_code = p1 + p2 + p3
if edge_code in self.parenting_ship:
continue
self.parenting_ship.append(edge_code)
if self.comment != "":
pc1 = f"""{code}[\"🗎{self.name}\"]""" if self.is_leaf else f"""{code}[[\"📁{self.name}\"]]"""
pc2 = f""" -.-x """
pc3 = f"""C{code}[\"{self.comment}\"]:::Comment"""
edge_code = pc1 + pc2 + pc3
self.parenting_ship.append(edge_code)
MERMAID_TEMPLATE = r"""
```mermaid
flowchart LR
%% <gpt_academic_hide_mermaid_code> 一个特殊标记,用于在生成mermaid图表时隐藏代码块
classDef Comment stroke-dasharray: 5 5
subgraph {graph_name}
{relationship}
end
```
"""
def build_file_tree_mermaid_diagram(file_manifest, file_comments, graph_name):
# Create the root node
file_tree_struct = FileNode("root")
# Build the tree structure
for file_path, file_comment in zip(file_manifest, file_comments):
file_tree_struct.add_file(file_path, file_comment)
file_tree_struct.print_files_recursively()
cc = "\n".join(file_tree_struct.parenting_ship)
ccc = indent(cc, prefix=" "*8)
return MERMAID_TEMPLATE.format(graph_name=graph_name, relationship=ccc)
if __name__ == "__main__":
# File manifest
file_manifest = [
"cradle_void_terminal.ipynb",
"tests/test_utils.py",
"tests/test_plugins.py",
"tests/test_llms.py",
"config.py",
"build/ChatGLM-6b-onnx-u8s8/chatglm-6b-int8-onnx-merged/model_weights_0.bin",
"crazy_functions/latex_fns/latex_actions.py",
"crazy_functions/latex_fns/latex_toolbox.py"
]
file_comments = [
"根据位置和名称,可能是一个模块的初始化文件根据位置和名称,可能是一个模块的初始化文件根据位置和名称,可能是一个模块的初始化文件",
"包含一些用于文本处理和模型微调的函数和装饰器包含一些用于文本处理和模型微调的函数和装饰器包含一些用于文本处理和模型微调的函数和装饰器",
"用于构建HTML报告的类和方法用于构建HTML报告的类和方法用于构建HTML报告的类和方法",
"包含了用于文本切分的函数,以及处理PDF文件的示例代码包含了用于文本切分的函数,以及处理PDF文件的示例代码包含了用于文本切分的函数,以及处理PDF文件的示例代码",
"用于解析和翻译PDF文件的功能和相关辅助函数用于解析和翻译PDF文件的功能和相关辅助函数用于解析和翻译PDF文件的功能和相关辅助函数",
"是一个包的初始化文件,用于初始化包的属性和导入模块是一个包的初始化文件,用于初始化包的属性和导入模块是一个包的初始化文件,用于初始化包的属性和导入模块",
"用于加载和分割文件中的文本的通用文件加载器用于加载和分割文件中的文本的通用文件加载器用于加载和分割文件中的文本的通用文件加载器",
"包含了用于构建和管理向量数据库的函数和类包含了用于构建和管理向量数据库的函数和类包含了用于构建和管理向量数据库的函数和类",
]
print(build_file_tree_mermaid_diagram(file_manifest, file_comments, "项目文件树"))

查看文件

@@ -1,42 +0,0 @@
from toolbox import CatchException, update_ui, update_ui_lastest_msg
from crazy_functions.multi_stage.multi_stage_utils import GptAcademicGameBaseState
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from request_llms.bridge_all import predict_no_ui_long_connection
from crazy_functions.game_fns.game_utils import get_code_block, is_same_thing
import random
class MiniGame_ASCII_Art(GptAcademicGameBaseState):
def step(self, prompt, chatbot, history):
if self.step_cnt == 0:
chatbot.append(["我画你猜(动物)", "请稍等..."])
else:
if prompt.strip() == 'exit':
self.delete_game = True
yield from update_ui_lastest_msg(lastmsg=f"谜底是{self.obj},游戏结束。", chatbot=chatbot, history=history, delay=0.)
return
chatbot.append([prompt, ""])
yield from update_ui(chatbot=chatbot, history=history)
if self.step_cnt == 0:
self.lock_plugin(chatbot)
self.cur_task = 'draw'
if self.cur_task == 'draw':
avail_obj = ["","","","","老鼠",""]
self.obj = random.choice(avail_obj)
inputs = "I want to play a game called Guess the ASCII art. You can draw the ASCII art and I will try to guess it. " + \
f"This time you draw a {self.obj}. Note that you must not indicate what you have draw in the text, and you should only produce the ASCII art wrapped by ```. "
raw_res = predict_no_ui_long_connection(inputs=inputs, llm_kwargs=self.llm_kwargs, history=[], sys_prompt="")
self.cur_task = 'identify user guess'
res = get_code_block(raw_res)
history += ['', f'the answer is {self.obj}', inputs, res]
yield from update_ui_lastest_msg(lastmsg=res, chatbot=chatbot, history=history, delay=0.)
elif self.cur_task == 'identify user guess':
if is_same_thing(self.obj, prompt, self.llm_kwargs):
self.delete_game = True
yield from update_ui_lastest_msg(lastmsg="你猜对了!", chatbot=chatbot, history=history, delay=0.)
else:
self.cur_task = 'identify user guess'
yield from update_ui_lastest_msg(lastmsg="猜错了,再试试,输入“exit”获取答案。", chatbot=chatbot, history=history, delay=0.)

查看文件

@@ -1,212 +0,0 @@
prompts_hs = """ 请以“{headstart}”为开头,编写一个小说的第一幕。
- 尽量短,不要包含太多情节,因为你接下来将会与用户互动续写下面的情节,要留出足够的互动空间。
- 出现人物时,给出人物的名字。
- 积极地运用环境描写、人物描写等手法,让读者能够感受到你的故事世界。
- 积极地运用修辞手法,比如比喻、拟人、排比、对偶、夸张等等。
- 字数要求第一幕的字数少于300字,且少于2个段落。
"""
prompts_interact = """ 小说的前文回顾:
{previously_on_story}
你是一个作家,根据以上的情节,给出4种不同的后续剧情发展方向,每个发展方向都精明扼要地用一句话说明。稍后,我将在这4个选择中,挑选一种剧情发展。
输出格式例如:
1. 后续剧情发展1
2. 后续剧情发展2
3. 后续剧情发展3
4. 后续剧情发展4
"""
prompts_resume = """小说的前文回顾:
{previously_on_story}
你是一个作家,我们正在互相讨论,确定后续剧情的发展。
在以下的剧情发展中,
{choice}
我认为更合理的是:{user_choice}
请在前文的基础上(不要重复前文),围绕我选定的剧情情节,编写小说的下一幕。
- 禁止杜撰不符合我选择的剧情。
- 尽量短,不要包含太多情节,因为你接下来将会与用户互动续写下面的情节,要留出足够的互动空间。
- 不要重复前文。
- 出现人物时,给出人物的名字。
- 积极地运用环境描写、人物描写等手法,让读者能够感受到你的故事世界。
- 积极地运用修辞手法,比如比喻、拟人、排比、对偶、夸张等等。
- 小说的下一幕字数少于300字,且少于2个段落。
"""
prompts_terminate = """小说的前文回顾:
{previously_on_story}
你是一个作家,我们正在互相讨论,确定后续剧情的发展。
现在,故事该结束了,我认为最合理的故事结局是:{user_choice}
请在前文的基础上(不要重复前文),编写小说的最后一幕。
- 不要重复前文。
- 出现人物时,给出人物的名字。
- 积极地运用环境描写、人物描写等手法,让读者能够感受到你的故事世界。
- 积极地运用修辞手法,比如比喻、拟人、排比、对偶、夸张等等。
- 字数要求最后一幕的字数少于1000字。
"""
from toolbox import CatchException, update_ui, update_ui_lastest_msg
from crazy_functions.multi_stage.multi_stage_utils import GptAcademicGameBaseState
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from request_llms.bridge_all import predict_no_ui_long_connection
from crazy_functions.game_fns.game_utils import get_code_block, is_same_thing
import random
class MiniGame_ResumeStory(GptAcademicGameBaseState):
story_headstart = [
'先行者知道,他现在是全宇宙中唯一的一个人了。',
'深夜,一个年轻人穿过天安门广场向纪念堂走去。在二十二世纪编年史中,计算机把他的代号定为M102。',
'他知道,这最后一课要提前讲了。又一阵剧痛从肝部袭来,几乎使他晕厥过去。',
'在距地球五万光年的远方,在银河系的中心,一场延续了两万年的星际战争已接近尾声。那里的太空中渐渐隐现出一个方形区域,仿佛灿烂的群星的背景被剪出一个方口。',
'伊依一行三人乘坐一艘游艇在南太平洋上做吟诗航行,他们的目的地是南极,如果几天后能顺利到达那里,他们将钻出地壳去看诗云。',
'很多人生来就会莫名其妙地迷上一样东西,仿佛他的出生就是要和这东西约会似的,正是这样,圆圆迷上了肥皂泡。'
]
def begin_game_step_0(self, prompt, chatbot, history):
# init game at step 0
self.headstart = random.choice(self.story_headstart)
self.story = []
chatbot.append(["互动写故事", f"这次的故事开头是:{self.headstart}"])
self.sys_prompt_ = '你是一个想象力丰富的杰出作家。正在与你的朋友互动,一起写故事,因此你每次写的故事段落应少于300字结局除外'
def generate_story_image(self, story_paragraph):
try:
from crazy_functions.图片生成 import gen_image
prompt_ = predict_no_ui_long_connection(inputs=story_paragraph, llm_kwargs=self.llm_kwargs, history=[], sys_prompt='你需要根据用户给出的小说段落,进行简短的环境描写。要求80字以内。')
image_url, image_path = gen_image(self.llm_kwargs, prompt_, '512x512', model="dall-e-2", quality='standard', style='natural')
return f'<br/><div align="center"><img src="file={image_path}"></div>'
except:
return ''
def step(self, prompt, chatbot, history):
"""
首先,处理游戏初始化等特殊情况
"""
if self.step_cnt == 0:
self.begin_game_step_0(prompt, chatbot, history)
self.lock_plugin(chatbot)
self.cur_task = 'head_start'
else:
if prompt.strip() == 'exit' or prompt.strip() == '结束剧情':
# should we terminate game here?
self.delete_game = True
yield from update_ui_lastest_msg(lastmsg=f"游戏结束。", chatbot=chatbot, history=history, delay=0.)
return
if '剧情收尾' in prompt:
self.cur_task = 'story_terminate'
# # well, game resumes
# chatbot.append([prompt, ""])
# update ui, don't keep the user waiting
yield from update_ui(chatbot=chatbot, history=history)
"""
处理游戏的主体逻辑
"""
if self.cur_task == 'head_start':
"""
这是游戏的第一步
"""
inputs_ = prompts_hs.format(headstart=self.headstart)
history_ = []
story_paragraph = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs_, '故事开头', self.llm_kwargs,
chatbot, history_, self.sys_prompt_
)
self.story.append(story_paragraph)
# # 配图
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>正在生成插图中 ...', chatbot=chatbot, history=history, delay=0.)
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>'+ self.generate_story_image(story_paragraph), chatbot=chatbot, history=history, delay=0.)
# # 构建后续剧情引导
previously_on_story = ""
for s in self.story:
previously_on_story += s + '\n'
inputs_ = prompts_interact.format(previously_on_story=previously_on_story)
history_ = []
self.next_choices = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs_, '请在以下几种故事走向中,选择一种(当然,您也可以选择给出其他故事走向):', self.llm_kwargs,
chatbot,
history_,
self.sys_prompt_
)
self.cur_task = 'user_choice'
elif self.cur_task == 'user_choice':
"""
根据用户的提示,确定故事的下一步
"""
if '请在以下几种故事走向中,选择一种' in chatbot[-1][0]: chatbot.pop(-1)
previously_on_story = ""
for s in self.story:
previously_on_story += s + '\n'
inputs_ = prompts_resume.format(previously_on_story=previously_on_story, choice=self.next_choices, user_choice=prompt)
history_ = []
story_paragraph = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs_, f'下一段故事(您的选择是:{prompt})。', self.llm_kwargs,
chatbot, history_, self.sys_prompt_
)
self.story.append(story_paragraph)
# # 配图
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>正在生成插图中 ...', chatbot=chatbot, history=history, delay=0.)
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>'+ self.generate_story_image(story_paragraph), chatbot=chatbot, history=history, delay=0.)
# # 构建后续剧情引导
previously_on_story = ""
for s in self.story:
previously_on_story += s + '\n'
inputs_ = prompts_interact.format(previously_on_story=previously_on_story)
history_ = []
self.next_choices = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs_,
'请在以下几种故事走向中,选择一种。当然,您也可以给出您心中的其他故事走向。另外,如果您希望剧情立即收尾,请输入剧情走向,并以“剧情收尾”四个字提示程序。', self.llm_kwargs,
chatbot,
history_,
self.sys_prompt_
)
self.cur_task = 'user_choice'
elif self.cur_task == 'story_terminate':
"""
根据用户的提示,确定故事的结局
"""
previously_on_story = ""
for s in self.story:
previously_on_story += s + '\n'
inputs_ = prompts_terminate.format(previously_on_story=previously_on_story, user_choice=prompt)
history_ = []
story_paragraph = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs_, f'故事收尾(您的选择是:{prompt})。', self.llm_kwargs,
chatbot, history_, self.sys_prompt_
)
# # 配图
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>正在生成插图中 ...', chatbot=chatbot, history=history, delay=0.)
yield from update_ui_lastest_msg(lastmsg=story_paragraph + '<br/>'+ self.generate_story_image(story_paragraph), chatbot=chatbot, history=history, delay=0.)
# terminate game
self.delete_game = True
return

查看文件

@@ -5,7 +5,7 @@ def get_code_block(reply):
import re
pattern = r"```([\s\S]*?)```" # regex pattern to match code blocks
matches = re.findall(pattern, reply) # find all code blocks in text
if len(matches) == 1:
if len(matches) == 1:
return "```" + matches[0] + "```" # code block
raise RuntimeError("GPT is not generating proper code.")
@@ -13,10 +13,10 @@ def is_same_thing(a, b, llm_kwargs):
from pydantic import BaseModel, Field
class IsSameThing(BaseModel):
is_same_thing: bool = Field(description="determine whether two objects are same thing.", default=False)
def run_gpt_fn(inputs, sys_prompt, history=[]):
def run_gpt_fn(inputs, sys_prompt, history=[]):
return predict_no_ui_long_connection(
inputs=inputs, llm_kwargs=llm_kwargs,
inputs=inputs, llm_kwargs=llm_kwargs,
history=history, sys_prompt=sys_prompt, observe_window=[]
)
@@ -24,7 +24,7 @@ def is_same_thing(a, b, llm_kwargs):
inputs_01 = "Identity whether the user input and the target is the same thing: \n target object: {a} \n user input object: {b} \n\n\n".format(a=a, b=b)
inputs_01 += "\n\n\n Note that the user may describe the target object with a different language, e.g. cat and 猫 are the same thing."
analyze_res_cot_01 = run_gpt_fn(inputs_01, "", [])
inputs_02 = inputs_01 + gpt_json_io.format_instructions
analyze_res = run_gpt_fn(inputs_02, "", [inputs_01, analyze_res_cot_01])

查看文件

@@ -41,11 +41,11 @@ def is_function_successfully_generated(fn_path, class_name, return_dict):
# Now you can create an instance of the class
instance = some_class()
return_dict['success'] = True
return
return
except:
return_dict['traceback'] = trimmed_format_exc()
return
def subprocess_worker(code, file_path, return_dict):
return_dict['result'] = None
return_dict['success'] = False

查看文件

@@ -1,37 +0,0 @@
import platform
import pickle
import multiprocessing
def run_in_subprocess_wrapper_func(v_args):
func, args, kwargs, return_dict, exception_dict = pickle.loads(v_args)
import sys
try:
result = func(*args, **kwargs)
return_dict['result'] = result
except Exception as e:
exc_info = sys.exc_info()
exception_dict['exception'] = exc_info
def run_in_subprocess_with_timeout(func, timeout=60):
if platform.system() == 'Linux':
def wrapper(*args, **kwargs):
return_dict = multiprocessing.Manager().dict()
exception_dict = multiprocessing.Manager().dict()
v_args = pickle.dumps((func, args, kwargs, return_dict, exception_dict))
process = multiprocessing.Process(target=run_in_subprocess_wrapper_func, args=(v_args,))
process.start()
process.join(timeout)
if process.is_alive():
process.terminate()
raise TimeoutError(f'功能单元{str(func)}未能在规定时间内完成任务')
process.close()
if 'exception' in exception_dict:
# ooops, the subprocess ran into an exception
exc_info = exception_dict['exception']
raise exc_info[1].with_traceback(exc_info[2])
if 'result' in return_dict.keys():
# If the subprocess ran successfully, return the result
return return_dict['result']
return wrapper
else:
return func

查看文件

@@ -62,8 +62,8 @@ class GptJsonIO():
if "type" in reduced_schema:
del reduced_schema["type"]
# Ensure json in context is well-formed with double quotes.
schema_str = json.dumps(reduced_schema)
if self.example_instruction:
schema_str = json.dumps(reduced_schema)
return PYDANTIC_FORMAT_INSTRUCTIONS.format(schema=schema_str)
else:
return PYDANTIC_FORMAT_INSTRUCTIONS_SIMPLE.format(schema=schema_str)
@@ -89,7 +89,7 @@ class GptJsonIO():
error + "\n\n" + \
"Now, fix this json string. \n\n"
return prompt
def generate_output_auto_repair(self, response, gpt_gen_fn):
"""
response: string containing canidate json

查看文件

@@ -1,11 +1,10 @@
from toolbox import update_ui, update_ui_lastest_msg, get_log_folder
from toolbox import get_conf, promote_file_to_downloadzone
from toolbox import get_conf, objdump, objload, promote_file_to_downloadzone
from .latex_toolbox import PRESERVE, TRANSFORM
from .latex_toolbox import set_forbidden_text, set_forbidden_text_begin_end, set_forbidden_text_careful_brace
from .latex_toolbox import reverse_forbidden_text_careful_brace, reverse_forbidden_text, convert_to_linklist, post_process
from .latex_toolbox import fix_content, find_main_tex_file, merge_tex_files, compile_latex_with_timeout
from .latex_toolbox import find_title_and_abs
from .latex_pickle_io import objdump, objload
import os, shutil
import re
@@ -91,16 +90,16 @@ class LatexPaperSplit():
"版权归原文作者所有。翻译内容可靠性无保障,请仔细鉴别并以原文为准。" + \
"项目Github地址 \\url{https://github.com/binary-husky/gpt_academic/}。"
# 请您不要删除或修改这行警告,除非您是论文的原作者如果您是论文原作者,欢迎加REAME中的QQ联系开发者
self.msg_declare = "为了防止大语言模型的意外谬误产生扩散影响,禁止移除或修改此警告。}}\\\\"
self.msg_declare = "为了防止大语言模型的意外谬误产生扩散影响,禁止移除或修改此警告。}}\\\\"
self.title = "unknown"
self.abstract = "unknown"
def read_title_and_abstract(self, txt):
try:
title, abstract = find_title_and_abs(txt)
if title is not None:
if title is not None:
self.title = title.replace('\n', ' ').replace('\\\\', ' ').replace(' ', '').replace(' ', '')
if abstract is not None:
if abstract is not None:
self.abstract = abstract.replace('\n', ' ').replace('\\\\', ' ').replace(' ', '').replace(' ', '')
except:
pass
@@ -112,7 +111,7 @@ class LatexPaperSplit():
result_string = ""
node_cnt = 0
line_cnt = 0
for node in self.nodes:
if node.preserve:
line_cnt += node.string.count('\n')
@@ -145,7 +144,7 @@ class LatexPaperSplit():
return result_string
def split(self, txt, project_folder, opts):
def split(self, txt, project_folder, opts):
"""
break down latex file to a linked list,
each node use a preserve flag to indicate whether it should
@@ -156,7 +155,7 @@ class LatexPaperSplit():
manager = multiprocessing.Manager()
return_dict = manager.dict()
p = multiprocessing.Process(
target=split_subprocess,
target=split_subprocess,
args=(txt, project_folder, return_dict, opts))
p.start()
p.join()
@@ -176,6 +175,7 @@ class LatexPaperFileGroup():
self.sp_file_contents = []
self.sp_file_index = []
self.sp_file_tag = []
# count_token
from request_llms.bridge_all import model_info
enc = model_info["gpt-3.5-turbo"]['tokenizer']
@@ -192,12 +192,13 @@ class LatexPaperFileGroup():
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index])
else:
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
segments = breakdown_text_to_satisfy_token_limit(file_content, max_token_limit)
from ..crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
segments = breakdown_txt_to_satisfy_token_limit_for_pdf(file_content, self.get_token_num, max_token_limit)
for j, segment in enumerate(segments):
self.sp_file_contents.append(segment)
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index] + f".part-{j}.tex")
print('Segmentation: done')
def merge_result(self):
self.file_result = ["" for _ in range(len(self.file_paths))]
@@ -218,13 +219,13 @@ def Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin
from ..crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
from .latex_actions import LatexPaperFileGroup, LatexPaperSplit
# <-------- 寻找主tex文件 ---------->
# <-------- 寻找主tex文件 ---------->
maintex = find_main_tex_file(file_manifest, mode)
chatbot.append((f"定位主Latex文件", f'[Local Message] 分析结果该项目的Latex主文件是{maintex}, 如果分析错误, 请立即终止程序, 删除或修改歧义文件, 然后重试。主程序即将开始, 请稍候。'))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
time.sleep(3)
# <-------- 读取Latex文件, 将多文件tex工程融合为一个巨型tex ---------->
# <-------- 读取Latex文件, 将多文件tex工程融合为一个巨型tex ---------->
main_tex_basename = os.path.basename(maintex)
assert main_tex_basename.endswith('.tex')
main_tex_basename_bare = main_tex_basename[:-4]
@@ -241,13 +242,13 @@ def Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin
with open(project_folder + '/merge.tex', 'w', encoding='utf-8', errors='replace') as f:
f.write(merged_content)
# <-------- 精细切分latex文件 ---------->
# <-------- 精细切分latex文件 ---------->
chatbot.append((f"Latex文件融合完成", f'[Local Message] 正在精细切分latex文件,这需要一段时间计算,文档越长耗时越长,请耐心等待。'))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
lps = LatexPaperSplit()
lps.read_title_and_abstract(merged_content)
res = lps.split(merged_content, project_folder, opts) # 消耗时间的函数
# <-------- 拆分过长的latex片段 ---------->
# <-------- 拆分过长的latex片段 ---------->
pfg = LatexPaperFileGroup()
for index, r in enumerate(res):
pfg.file_paths.append('segment-' + str(index))
@@ -256,17 +257,17 @@ def Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin
pfg.run_file_split(max_token_limit=1024)
n_split = len(pfg.sp_file_contents)
# <-------- 根据需要切换prompt ---------->
# <-------- 根据需要切换prompt ---------->
inputs_array, sys_prompt_array = switch_prompt(pfg, mode)
inputs_show_user_array = [f"{mode} {f}" for f in pfg.sp_file_tag]
if os.path.exists(pj(project_folder,'temp.pkl')):
# <-------- 【仅调试】如果存在调试缓存文件,则跳过GPT请求环节 ---------->
# <-------- 【仅调试】如果存在调试缓存文件,则跳过GPT请求环节 ---------->
pfg = objload(file=pj(project_folder,'temp.pkl'))
else:
# <-------- gpt 多线程请求 ---------->
# <-------- gpt 多线程请求 ---------->
history_array = [[""] for _ in range(n_split)]
# LATEX_EXPERIMENTAL, = get_conf('LATEX_EXPERIMENTAL')
# if LATEX_EXPERIMENTAL:
@@ -285,32 +286,32 @@ def Latex精细分解与转化(file_manifest, project_folder, llm_kwargs, plugin
scroller_max_len = 40
)
# <-------- 文本碎片重组为完整的tex片段 ---------->
# <-------- 文本碎片重组为完整的tex片段 ---------->
pfg.sp_file_result = []
for i_say, gpt_say, orig_content in zip(gpt_response_collection[0::2], gpt_response_collection[1::2], pfg.sp_file_contents):
pfg.sp_file_result.append(gpt_say)
pfg.merge_result()
# <-------- 临时存储用于调试 ---------->
# <-------- 临时存储用于调试 ---------->
pfg.get_token_num = None
objdump(pfg, file=pj(project_folder,'temp.pkl'))
write_html(pfg.sp_file_contents, pfg.sp_file_result, chatbot=chatbot, project_folder=project_folder)
# <-------- 写出文件 ---------->
# <-------- 写出文件 ---------->
msg = f"当前大语言模型: {llm_kwargs['llm_model']},当前语言模型温度设定: {llm_kwargs['temperature']}"
final_tex = lps.merge_result(pfg.file_result, mode, msg)
objdump((lps, pfg.file_result, mode, msg), file=pj(project_folder,'merge_result.pkl'))
with open(project_folder + f'/merge_{mode}.tex', 'w', encoding='utf-8', errors='replace') as f:
if mode != 'translate_zh' or "binary" in final_tex: f.write(final_tex)
# <-------- 整理结果, 退出 ---------->
# <-------- 整理结果, 退出 ---------->
chatbot.append((f"完成了吗?", 'GPT结果已输出, 即将编译PDF'))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# <-------- 返回 ---------->
# <-------- 返回 ---------->
return project_folder + f'/merge_{mode}.tex'
@@ -363,7 +364,7 @@ def 编译Latex(chatbot, history, main_file_original, main_file_modified, work_f
yield from update_ui_lastest_msg(f'尝试第 {n_fix}/{max_try} 次编译, 编译转化后的PDF ...', chatbot, history) # 刷新Gradio前端界面
ok = compile_latex_with_timeout(f'pdflatex -interaction=batchmode -file-line-error {main_file_modified}.tex', work_folder_modified)
if ok and os.path.exists(pj(work_folder_modified, f'{main_file_modified}.pdf')):
# 只有第二步成功,才能继续下面的步骤
yield from update_ui_lastest_msg(f'尝试第 {n_fix}/{max_try} 次编译, 编译BibTex ...', chatbot, history) # 刷新Gradio前端界面
@@ -394,23 +395,23 @@ def 编译Latex(chatbot, history, main_file_original, main_file_modified, work_f
original_pdf_success = os.path.exists(pj(work_folder_original, f'{main_file_original}.pdf'))
modified_pdf_success = os.path.exists(pj(work_folder_modified, f'{main_file_modified}.pdf'))
diff_pdf_success = os.path.exists(pj(work_folder, f'merge_diff.pdf'))
results_ += f"原始PDF编译是否成功: {original_pdf_success};"
results_ += f"转化PDF编译是否成功: {modified_pdf_success};"
results_ += f"对比PDF编译是否成功: {diff_pdf_success};"
results_ += f"原始PDF编译是否成功: {original_pdf_success};"
results_ += f"转化PDF编译是否成功: {modified_pdf_success};"
results_ += f"对比PDF编译是否成功: {diff_pdf_success};"
yield from update_ui_lastest_msg(f'{n_fix}编译结束:<br/>{results_}...', chatbot, history) # 刷新Gradio前端界面
if diff_pdf_success:
result_pdf = pj(work_folder_modified, f'merge_diff.pdf') # get pdf path
promote_file_to_downloadzone(result_pdf, rename_file=None, chatbot=chatbot) # promote file to web UI
if modified_pdf_success:
yield from update_ui_lastest_msg(f'转化PDF编译已经成功, 正在尝试生成对比PDF, 请稍候 ...', chatbot, history) # 刷新Gradio前端界面
yield from update_ui_lastest_msg(f'转化PDF编译已经成功, 即将退出 ...', chatbot, history) # 刷新Gradio前端界面
result_pdf = pj(work_folder_modified, f'{main_file_modified}.pdf') # get pdf path
origin_pdf = pj(work_folder_original, f'{main_file_original}.pdf') # get pdf path
if os.path.exists(pj(work_folder, '..', 'translation')):
shutil.copyfile(result_pdf, pj(work_folder, '..', 'translation', 'translate_zh.pdf'))
promote_file_to_downloadzone(result_pdf, rename_file=None, chatbot=chatbot) # promote file to web UI
# 将两个PDF拼接
if original_pdf_success:
if original_pdf_success:
try:
from .latex_toolbox import merge_pdfs
concat_pdf = pj(work_folder_modified, f'comparison.pdf')
@@ -426,7 +427,7 @@ def 编译Latex(chatbot, history, main_file_original, main_file_modified, work_f
if n_fix>=max_try: break
n_fix += 1
can_retry, main_file_modified, buggy_lines = remove_buggy_lines(
file_path=pj(work_folder_modified, f'{main_file_modified}.tex'),
file_path=pj(work_folder_modified, f'{main_file_modified}.tex'),
log_path=pj(work_folder_modified, f'{main_file_modified}.log'),
tex_name=f'{main_file_modified}.tex',
tex_name_pure=f'{main_file_modified}',
@@ -446,14 +447,14 @@ def write_html(sp_file_contents, sp_file_result, chatbot, project_folder):
import shutil
from crazy_functions.pdf_fns.report_gen_html import construct_html
from toolbox import gen_time_str
ch = construct_html()
ch = construct_html()
orig = ""
trans = ""
final = []
for c,r in zip(sp_file_contents, sp_file_result):
for c,r in zip(sp_file_contents, sp_file_result):
final.append(c)
final.append(r)
for i, k in enumerate(final):
for i, k in enumerate(final):
if i%2==0:
orig = k
if i%2==1:

查看文件

@@ -1,38 +0,0 @@
import pickle
class SafeUnpickler(pickle.Unpickler):
def get_safe_classes(self):
from .latex_actions import LatexPaperFileGroup, LatexPaperSplit
# 定义允许的安全类
safe_classes = {
# 在这里添加其他安全的类
'LatexPaperFileGroup': LatexPaperFileGroup,
'LatexPaperSplit' : LatexPaperSplit,
}
return safe_classes
def find_class(self, module, name):
# 只允许特定的类进行反序列化
self.safe_classes = self.get_safe_classes()
if f'{module}.{name}' in self.safe_classes:
return self.safe_classes[f'{module}.{name}']
# 如果尝试加载未授权的类,则抛出异常
raise pickle.UnpicklingError(f"Attempted to deserialize unauthorized class '{name}' from module '{module}'")
def objdump(obj, file="objdump.tmp"):
with open(file, "wb+") as f:
pickle.dump(obj, f)
return
def objload(file="objdump.tmp"):
import os
if not os.path.exists(file):
return
with open(file, "rb") as f:
unpickler = SafeUnpickler(f)
return unpickler.load()

查看文件

@@ -1,18 +1,15 @@
import os, shutil
import re
import numpy as np
PRESERVE = 0
TRANSFORM = 1
pj = os.path.join
class LinkedListNode:
class LinkedListNode():
"""
Linked List Node
"""
def __init__(self, string, preserve=True) -> None:
self.string = string
self.preserve = preserve
@@ -21,47 +18,41 @@ class LinkedListNode:
# self.begin_line = 0
# self.begin_char = 0
def convert_to_linklist(text, mask):
root = LinkedListNode("", preserve=True)
current_node = root
for c, m, i in zip(text, mask, range(len(text))):
if (m == PRESERVE and current_node.preserve) or (
m == TRANSFORM and not current_node.preserve
):
if (m==PRESERVE and current_node.preserve) \
or (m==TRANSFORM and not current_node.preserve):
# add
current_node.string += c
else:
current_node.next = LinkedListNode(c, preserve=(m == PRESERVE))
current_node.next = LinkedListNode(c, preserve=(m==PRESERVE))
current_node = current_node.next
return root
def post_process(root):
# 修复括号
node = root
while True:
string = node.string
if node.preserve:
if node.preserve:
node = node.next
if node is None:
break
if node is None: break
continue
def break_check(string):
str_stack = [""] # (lv, index)
str_stack = [""] # (lv, index)
for i, c in enumerate(string):
if c == "{":
str_stack.append("{")
elif c == "}":
if c == '{':
str_stack.append('{')
elif c == '}':
if len(str_stack) == 1:
print("stack fix")
print('stack fix')
return i
str_stack.pop(-1)
else:
str_stack[-1] += c
return -1
bp = break_check(string)
if bp == -1:
@@ -78,66 +69,51 @@ def post_process(root):
node.next = q
node = node.next
if node is None:
break
if node is None: break
# 屏蔽空行和太短的句子
node = root
while True:
if len(node.string.strip("\n").strip("")) == 0:
node.preserve = True
if len(node.string.strip("\n").strip("")) < 42:
node.preserve = True
if len(node.string.strip('\n').strip(''))==0: node.preserve = True
if len(node.string.strip('\n').strip(''))<42: node.preserve = True
node = node.next
if node is None:
break
if node is None: break
node = root
while True:
if node.next and node.preserve and node.next.preserve:
node.string += node.next.string
node.next = node.next.next
node = node.next
if node is None:
break
if node is None: break
# 将前后断行符脱离
node = root
prev_node = None
while True:
if not node.preserve:
lstriped_ = node.string.lstrip().lstrip("\n")
if (
(prev_node is not None)
and (prev_node.preserve)
and (len(lstriped_) != len(node.string))
):
prev_node.string += node.string[: -len(lstriped_)]
lstriped_ = node.string.lstrip().lstrip('\n')
if (prev_node is not None) and (prev_node.preserve) and (len(lstriped_)!=len(node.string)):
prev_node.string += node.string[:-len(lstriped_)]
node.string = lstriped_
rstriped_ = node.string.rstrip().rstrip("\n")
if (
(node.next is not None)
and (node.next.preserve)
and (len(rstriped_) != len(node.string))
):
node.next.string = node.string[len(rstriped_) :] + node.next.string
rstriped_ = node.string.rstrip().rstrip('\n')
if (node.next is not None) and (node.next.preserve) and (len(rstriped_)!=len(node.string)):
node.next.string = node.string[len(rstriped_):] + node.next.string
node.string = rstriped_
# =-=-=
# =====
prev_node = node
node = node.next
if node is None:
break
if node is None: break
# 标注节点的行数范围
node = root
n_line = 0
expansion = 2
while True:
n_l = node.string.count("\n")
node.range = [n_line - expansion, n_line + n_l + expansion] # 失败时,扭转的范围
n_line = n_line + n_l
n_l = node.string.count('\n')
node.range = [n_line-expansion, n_line+n_l+expansion] # 失败时,扭转的范围
n_line = n_line+n_l
node = node.next
if node is None:
break
if node is None: break
return root
@@ -152,125 +128,97 @@ def set_forbidden_text(text, mask, pattern, flags=0):
"""
Add a preserve text area in this paper
e.g. with pattern = r"\\begin\{algorithm\}(.*?)\\end\{algorithm\}"
you can mask out (mask = PRESERVE so that text become untouchable for GPT)
you can mask out (mask = PRESERVE so that text become untouchable for GPT)
everything between "\begin{equation}" and "\end{equation}"
"""
if isinstance(pattern, list):
pattern = "|".join(pattern)
if isinstance(pattern, list): pattern = '|'.join(pattern)
pattern_compile = re.compile(pattern, flags)
for res in pattern_compile.finditer(text):
mask[res.span()[0] : res.span()[1]] = PRESERVE
mask[res.span()[0]:res.span()[1]] = PRESERVE
return text, mask
def reverse_forbidden_text(text, mask, pattern, flags=0, forbid_wrapper=True):
"""
Move area out of preserve area (make text editable for GPT)
count the number of the braces so as to catch compelete text area.
count the number of the braces so as to catch compelete text area.
e.g.
\begin{abstract} blablablablablabla. \end{abstract}
\begin{abstract} blablablablablabla. \end{abstract}
"""
if isinstance(pattern, list):
pattern = "|".join(pattern)
if isinstance(pattern, list): pattern = '|'.join(pattern)
pattern_compile = re.compile(pattern, flags)
for res in pattern_compile.finditer(text):
if not forbid_wrapper:
mask[res.span()[0] : res.span()[1]] = TRANSFORM
mask[res.span()[0]:res.span()[1]] = TRANSFORM
else:
mask[res.regs[0][0] : res.regs[1][0]] = PRESERVE # '\\begin{abstract}'
mask[res.regs[1][0] : res.regs[1][1]] = TRANSFORM # abstract
mask[res.regs[1][1] : res.regs[0][1]] = PRESERVE # abstract
mask[res.regs[0][0]: res.regs[1][0]] = PRESERVE # '\\begin{abstract}'
mask[res.regs[1][0]: res.regs[1][1]] = TRANSFORM # abstract
mask[res.regs[1][1]: res.regs[0][1]] = PRESERVE # abstract
return text, mask
def set_forbidden_text_careful_brace(text, mask, pattern, flags=0):
"""
Add a preserve text area in this paper (text become untouchable for GPT).
count the number of the braces so as to catch compelete text area.
count the number of the braces so as to catch compelete text area.
e.g.
\caption{blablablablabla\texbf{blablabla}blablabla.}
\caption{blablablablabla\texbf{blablabla}blablabla.}
"""
pattern_compile = re.compile(pattern, flags)
for res in pattern_compile.finditer(text):
brace_level = -1
p = begin = end = res.regs[0][0]
for _ in range(1024 * 16):
if text[p] == "}" and brace_level == 0:
break
elif text[p] == "}":
brace_level -= 1
elif text[p] == "{":
brace_level += 1
for _ in range(1024*16):
if text[p] == '}' and brace_level == 0: break
elif text[p] == '}': brace_level -= 1
elif text[p] == '{': brace_level += 1
p += 1
end = p + 1
end = p+1
mask[begin:end] = PRESERVE
return text, mask
def reverse_forbidden_text_careful_brace(
text, mask, pattern, flags=0, forbid_wrapper=True
):
def reverse_forbidden_text_careful_brace(text, mask, pattern, flags=0, forbid_wrapper=True):
"""
Move area out of preserve area (make text editable for GPT)
count the number of the braces so as to catch compelete text area.
count the number of the braces so as to catch compelete text area.
e.g.
\caption{blablablablabla\texbf{blablabla}blablabla.}
\caption{blablablablabla\texbf{blablabla}blablabla.}
"""
pattern_compile = re.compile(pattern, flags)
for res in pattern_compile.finditer(text):
brace_level = 0
p = begin = end = res.regs[1][0]
for _ in range(1024 * 16):
if text[p] == "}" and brace_level == 0:
break
elif text[p] == "}":
brace_level -= 1
elif text[p] == "{":
brace_level += 1
for _ in range(1024*16):
if text[p] == '}' and brace_level == 0: break
elif text[p] == '}': brace_level -= 1
elif text[p] == '{': brace_level += 1
p += 1
end = p
mask[begin:end] = TRANSFORM
if forbid_wrapper:
mask[res.regs[0][0] : begin] = PRESERVE
mask[end : res.regs[0][1]] = PRESERVE
mask[res.regs[0][0]:begin] = PRESERVE
mask[end:res.regs[0][1]] = PRESERVE
return text, mask
def set_forbidden_text_begin_end(text, mask, pattern, flags=0, limit_n_lines=42):
"""
Find all \begin{} ... \end{} text block that with less than limit_n_lines lines.
Add it to preserve area
"""
pattern_compile = re.compile(pattern, flags)
def search_with_line_limit(text, mask):
for res in pattern_compile.finditer(text):
cmd = res.group(1) # begin{what}
this = res.group(2) # content between begin and end
this_mask = mask[res.regs[2][0] : res.regs[2][1]]
white_list = [
"document",
"abstract",
"lemma",
"definition",
"sproof",
"em",
"emph",
"textit",
"textbf",
"itemize",
"enumerate",
]
if (cmd in white_list) or this.count(
"\n"
) >= limit_n_lines: # use a magical number 42
this = res.group(2) # content between begin and end
this_mask = mask[res.regs[2][0]:res.regs[2][1]]
white_list = ['document', 'abstract', 'lemma', 'definition', 'sproof',
'em', 'emph', 'textit', 'textbf', 'itemize', 'enumerate']
if (cmd in white_list) or this.count('\n') >= limit_n_lines: # use a magical number 42
this, this_mask = search_with_line_limit(this, this_mask)
mask[res.regs[2][0] : res.regs[2][1]] = this_mask
mask[res.regs[2][0]:res.regs[2][1]] = this_mask
else:
mask[res.regs[0][0] : res.regs[0][1]] = PRESERVE
mask[res.regs[0][0]:res.regs[0][1]] = PRESERVE
return text, mask
return search_with_line_limit(text, mask)
return search_with_line_limit(text, mask)
"""
@@ -279,7 +227,6 @@ Latex Merge File
=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
"""
def find_main_tex_file(file_manifest, mode):
"""
在多Tex文档中,寻找主文件,必须包含documentclass,返回找到的第一个。
@@ -287,36 +234,27 @@ def find_main_tex_file(file_manifest, mode):
"""
canidates = []
for texf in file_manifest:
if os.path.basename(texf).startswith("merge"):
if os.path.basename(texf).startswith('merge'):
continue
with open(texf, "r", encoding="utf8", errors="ignore") as f:
with open(texf, 'r', encoding='utf8', errors='ignore') as f:
file_content = f.read()
if r"\documentclass" in file_content:
if r'\documentclass' in file_content:
canidates.append(texf)
else:
continue
if len(canidates) == 0:
raise RuntimeError("无法找到一个主Tex文件包含documentclass关键字")
raise RuntimeError('无法找到一个主Tex文件包含documentclass关键字')
elif len(canidates) == 1:
return canidates[0]
else: # if len(canidates) >= 2 通过一些Latex模板中常见但通常不会出现在正文的单词,对不同latex源文件扣分,取评分最高者返回
else: # if len(canidates) >= 2 通过一些Latex模板中常见但通常不会出现在正文的单词,对不同latex源文件扣分,取评分最高者返回
canidates_score = []
# 给出一些判定模板文档的词作为扣分项
unexpected_words = [
"\\LaTeX",
"manuscript",
"Guidelines",
"font",
"citations",
"rejected",
"blind review",
"reviewers",
]
expected_words = ["\\input", "\\ref", "\\cite"]
unexpected_words = ['\LaTeX', 'manuscript', 'Guidelines', 'font', 'citations', 'rejected', 'blind review', 'reviewers']
expected_words = ['\input', '\ref', '\cite']
for texf in canidates:
canidates_score.append(0)
with open(texf, "r", encoding="utf8", errors="ignore") as f:
with open(texf, 'r', encoding='utf8', errors='ignore') as f:
file_content = f.read()
file_content = rm_comments(file_content)
for uw in unexpected_words:
@@ -325,10 +263,9 @@ def find_main_tex_file(file_manifest, mode):
for uw in expected_words:
if uw in file_content:
canidates_score[-1] += 1
select = np.argmax(canidates_score) # 取评分最高者返回
select = np.argmax(canidates_score) # 取评分最高者返回
return canidates[select]
def rm_comments(main_file):
new_file_remove_comment_lines = []
for l in main_file.splitlines():
@@ -337,39 +274,30 @@ def rm_comments(main_file):
pass
else:
new_file_remove_comment_lines.append(l)
main_file = "\n".join(new_file_remove_comment_lines)
main_file = '\n'.join(new_file_remove_comment_lines)
# main_file = re.sub(r"\\include{(.*?)}", r"\\input{\1}", main_file) # 将 \include 命令转换为 \input 命令
main_file = re.sub(r"(?<!\\)%.*", "", main_file) # 使用正则表达式查找半行注释, 并替换为空字符串
main_file = re.sub(r'(?<!\\)%.*', '', main_file) # 使用正则表达式查找半行注释, 并替换为空字符串
return main_file
def find_tex_file_ignore_case(fp):
dir_name = os.path.dirname(fp)
base_name = os.path.basename(fp)
# 如果输入的文件路径是正确的
if os.path.isfile(pj(dir_name, base_name)):
return pj(dir_name, base_name)
if os.path.isfile(pj(dir_name, base_name)): return pj(dir_name, base_name)
# 如果不正确,试着加上.tex后缀试试
if not base_name.endswith(".tex"):
base_name += ".tex"
if os.path.isfile(pj(dir_name, base_name)):
return pj(dir_name, base_name)
if not base_name.endswith('.tex'): base_name+='.tex'
if os.path.isfile(pj(dir_name, base_name)): return pj(dir_name, base_name)
# 如果还找不到,解除大小写限制,再试一次
import glob
for f in glob.glob(dir_name + "/*.tex"):
for f in glob.glob(dir_name+'/*.tex'):
base_name_s = os.path.basename(fp)
base_name_f = os.path.basename(f)
if base_name_s.lower() == base_name_f.lower():
return f
if base_name_s.lower() == base_name_f.lower(): return f
# 试着加上.tex后缀试试
if not base_name_s.endswith(".tex"):
base_name_s += ".tex"
if base_name_s.lower() == base_name_f.lower():
return f
if not base_name_s.endswith('.tex'): base_name_s+='.tex'
if base_name_s.lower() == base_name_f.lower(): return f
return None
def merge_tex_files_(project_foler, main_file, mode):
"""
Merge Tex project recrusively
@@ -381,18 +309,18 @@ def merge_tex_files_(project_foler, main_file, mode):
fp_ = find_tex_file_ignore_case(fp)
if fp_:
try:
with open(fp_, "r", encoding="utf-8", errors="replace") as fx:
c = fx.read()
with open(fp_, 'r', encoding='utf-8', errors='replace') as fx: c = fx.read()
except:
c = f"\n\nWarning from GPT-Academic: LaTex source file is missing!\n\n"
else:
raise RuntimeError(f"找不到{fp},Tex源文件缺失")
raise RuntimeError(f'找不到{fp},Tex源文件缺失')
c = merge_tex_files_(project_foler, c, mode)
main_file = main_file[: s.span()[0]] + c + main_file[s.span()[1] :]
main_file = main_file[:s.span()[0]] + c + main_file[s.span()[1]:]
return main_file
def find_title_and_abs(main_file):
def extract_abstract_1(text):
pattern = r"\\abstract\{(.*?)\}"
match = re.search(pattern, text, re.DOTALL)
@@ -434,30 +362,21 @@ def merge_tex_files(project_foler, main_file, mode):
main_file = merge_tex_files_(project_foler, main_file, mode)
main_file = rm_comments(main_file)
if mode == "translate_zh":
if mode == 'translate_zh':
# find paper documentclass
pattern = re.compile(r"\\documentclass.*\n")
pattern = re.compile(r'\\documentclass.*\n')
match = pattern.search(main_file)
assert match is not None, "Cannot find documentclass statement!"
position = match.end()
add_ctex = "\\usepackage{ctex}\n"
add_url = "\\usepackage{url}\n" if "{url}" not in main_file else ""
add_ctex = '\\usepackage{ctex}\n'
add_url = '\\usepackage{url}\n' if '{url}' not in main_file else ''
main_file = main_file[:position] + add_ctex + add_url + main_file[position:]
# fontset=windows
import platform
main_file = re.sub(
r"\\documentclass\[(.*?)\]{(.*?)}",
r"\\documentclass[\1,fontset=windows,UTF8]{\2}",
main_file,
)
main_file = re.sub(
r"\\documentclass{(.*?)}",
r"\\documentclass[fontset=windows,UTF8]{\1}",
main_file,
)
main_file = re.sub(r"\\documentclass\[(.*?)\]{(.*?)}", r"\\documentclass[\1,fontset=windows,UTF8]{\2}",main_file)
main_file = re.sub(r"\\documentclass{(.*?)}", r"\\documentclass[fontset=windows,UTF8]{\1}",main_file)
# find paper abstract
pattern_opt1 = re.compile(r"\\begin\{abstract\}.*\n")
pattern_opt1 = re.compile(r'\\begin\{abstract\}.*\n')
pattern_opt2 = re.compile(r"\\abstract\{(.*?)\}", flags=re.DOTALL)
match_opt1 = pattern_opt1.search(main_file)
match_opt2 = pattern_opt2.search(main_file)
@@ -466,9 +385,7 @@ def merge_tex_files(project_foler, main_file, mode):
main_file = insert_abstract(main_file)
match_opt1 = pattern_opt1.search(main_file)
match_opt2 = pattern_opt2.search(main_file)
assert (match_opt1 is not None) or (
match_opt2 is not None
), "Cannot find paper abstract section!"
assert (match_opt1 is not None) or (match_opt2 is not None), "Cannot find paper abstract section!"
return main_file
@@ -478,7 +395,6 @@ The GPT-Academic program cannot find abstract section in this paper.
\end{abstract}
"""
def insert_abstract(tex_content):
if "\\maketitle" in tex_content:
# find the position of "\maketitle"
@@ -486,13 +402,7 @@ def insert_abstract(tex_content):
# find the nearest ending line
end_line_index = tex_content.find("\n", find_index)
# insert "abs_str" on the next line
modified_tex = (
tex_content[: end_line_index + 1]
+ "\n\n"
+ insert_missing_abs_str
+ "\n\n"
+ tex_content[end_line_index + 1 :]
)
modified_tex = tex_content[:end_line_index+1] + '\n\n' + insert_missing_abs_str + '\n\n' + tex_content[end_line_index+1:]
return modified_tex
elif r"\begin{document}" in tex_content:
# find the position of "\maketitle"
@@ -500,39 +410,29 @@ def insert_abstract(tex_content):
# find the nearest ending line
end_line_index = tex_content.find("\n", find_index)
# insert "abs_str" on the next line
modified_tex = (
tex_content[: end_line_index + 1]
+ "\n\n"
+ insert_missing_abs_str
+ "\n\n"
+ tex_content[end_line_index + 1 :]
)
modified_tex = tex_content[:end_line_index+1] + '\n\n' + insert_missing_abs_str + '\n\n' + tex_content[end_line_index+1:]
return modified_tex
else:
return tex_content
"""
=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
Post process
=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=
"""
def mod_inbraket(match):
"""
为啥chatgpt会把cite里面的逗号换成中文逗号呀
为啥chatgpt会把cite里面的逗号换成中文逗号呀
"""
# get the matched string
cmd = match.group(1)
str_to_modify = match.group(2)
# modify the matched string
str_to_modify = str_to_modify.replace("", ":") # 前面是中文冒号,后面是英文冒号
str_to_modify = str_to_modify.replace("", ",") # 前面是中文逗号,后面是英文逗号
str_to_modify = str_to_modify.replace('', ':') # 前面是中文冒号,后面是英文冒号
str_to_modify = str_to_modify.replace('', ',') # 前面是中文逗号,后面是英文逗号
# str_to_modify = 'BOOM'
return "\\" + cmd + "{" + str_to_modify + "}"
def fix_content(final_tex, node_string):
"""
Fix common GPT errors to increase success rate
@@ -543,10 +443,10 @@ def fix_content(final_tex, node_string):
final_tex = re.sub(r"\\([a-z]{2,10})\{([^\}]*?)\}", mod_inbraket, string=final_tex)
if "Traceback" in final_tex and "[Local Message]" in final_tex:
final_tex = node_string # 出问题了,还原原文
if node_string.count("\\begin") != final_tex.count("\\begin"):
final_tex = node_string # 出问题了,还原原文
if node_string.count("\_") > 0 and node_string.count("\_") > final_tex.count("\_"):
final_tex = node_string # 出问题了,还原原文
if node_string.count('\\begin') != final_tex.count('\\begin'):
final_tex = node_string # 出问题了,还原原文
if node_string.count('\_') > 0 and node_string.count('\_') > final_tex.count('\_'):
# walk and replace any _ without \
final_tex = re.sub(r"(?<!\\)_", "\\_", final_tex)
@@ -554,32 +454,24 @@ def fix_content(final_tex, node_string):
# this function count the number of { and }
brace_level = 0
for c in string:
if c == "{":
brace_level += 1
elif c == "}":
brace_level -= 1
if c == "{": brace_level += 1
elif c == "}": brace_level -= 1
return brace_level
def join_most(tex_t, tex_o):
# this function join translated string and original string when something goes wrong
p_t = 0
p_o = 0
def find_next(string, chars, begin):
p = begin
while p < len(string):
if string[p] in chars:
return p, string[p]
if string[p] in chars: return p, string[p]
p += 1
return None, None
while True:
res1, char = find_next(tex_o, ["{", "}"], p_o)
if res1 is None:
break
res1, char = find_next(tex_o, ['{','}'], p_o)
if res1 is None: break
res2, char = find_next(tex_t, [char], p_t)
if res2 is None:
break
if res2 is None: break
p_o = res1 + 1
p_t = res2 + 1
return tex_t[:p_t] + tex_o[p_o:]
@@ -588,14 +480,10 @@ def fix_content(final_tex, node_string):
# 出问题了,还原部分原文,保证括号正确
final_tex = join_most(final_tex, node_string)
return final_tex
def compile_latex_with_timeout(command, cwd, timeout=60):
import subprocess
process = subprocess.Popen(
command, shell=True, stdout=subprocess.PIPE, stderr=subprocess.PIPE, cwd=cwd
)
process = subprocess.Popen(command, shell=True, stdout=subprocess.PIPE, stderr=subprocess.PIPE, cwd=cwd)
try:
stdout, stderr = process.communicate(timeout=timeout)
except subprocess.TimeoutExpired:
@@ -605,52 +493,43 @@ def compile_latex_with_timeout(command, cwd, timeout=60):
return False
return True
def run_in_subprocess_wrapper_func(func, args, kwargs, return_dict, exception_dict):
import sys
try:
result = func(*args, **kwargs)
return_dict["result"] = result
return_dict['result'] = result
except Exception as e:
exc_info = sys.exc_info()
exception_dict["exception"] = exc_info
exception_dict['exception'] = exc_info
def run_in_subprocess(func):
import multiprocessing
def wrapper(*args, **kwargs):
return_dict = multiprocessing.Manager().dict()
exception_dict = multiprocessing.Manager().dict()
process = multiprocessing.Process(
target=run_in_subprocess_wrapper_func,
args=(func, args, kwargs, return_dict, exception_dict),
)
process = multiprocessing.Process(target=run_in_subprocess_wrapper_func,
args=(func, args, kwargs, return_dict, exception_dict))
process.start()
process.join()
process.close()
if "exception" in exception_dict:
if 'exception' in exception_dict:
# ooops, the subprocess ran into an exception
exc_info = exception_dict["exception"]
exc_info = exception_dict['exception']
raise exc_info[1].with_traceback(exc_info[2])
if "result" in return_dict.keys():
if 'result' in return_dict.keys():
# If the subprocess ran successfully, return the result
return return_dict["result"]
return return_dict['result']
return wrapper
def _merge_pdfs(pdf1_path, pdf2_path, output_path):
import PyPDF2 # PyPDF2这个库有严重的内存泄露问题,把它放到子进程中运行,从而方便内存的释放
import PyPDF2 # PyPDF2这个库有严重的内存泄露问题,把它放到子进程中运行,从而方便内存的释放
Percent = 0.95
# raise RuntimeError('PyPDF2 has a serious memory leak problem, please use other tools to merge PDF files.')
# Open the first PDF file
with open(pdf1_path, "rb") as pdf1_file:
with open(pdf1_path, 'rb') as pdf1_file:
pdf1_reader = PyPDF2.PdfFileReader(pdf1_file)
# Open the second PDF file
with open(pdf2_path, "rb") as pdf2_file:
with open(pdf2_path, 'rb') as pdf2_file:
pdf2_reader = PyPDF2.PdfFileReader(pdf2_file)
# Create a new PDF file to store the merged pages
output_writer = PyPDF2.PdfFileWriter()
@@ -670,25 +549,14 @@ def _merge_pdfs(pdf1_path, pdf2_path, output_path):
page2 = PyPDF2.PageObject.createBlankPage(pdf1_reader)
# Create a new empty page with double width
new_page = PyPDF2.PageObject.createBlankPage(
width=int(
int(page1.mediaBox.getWidth())
+ int(page2.mediaBox.getWidth()) * Percent
),
height=max(page1.mediaBox.getHeight(), page2.mediaBox.getHeight()),
width = int(int(page1.mediaBox.getWidth()) + int(page2.mediaBox.getWidth()) * Percent),
height = max(page1.mediaBox.getHeight(), page2.mediaBox.getHeight())
)
new_page.mergeTranslatedPage(page1, 0, 0)
new_page.mergeTranslatedPage(
page2,
int(
int(page1.mediaBox.getWidth())
- int(page2.mediaBox.getWidth()) * (1 - Percent)
),
0,
)
new_page.mergeTranslatedPage(page2, int(int(page1.mediaBox.getWidth())-int(page2.mediaBox.getWidth())* (1-Percent)), 0)
output_writer.addPage(new_page)
# Save the merged PDF file
with open(output_path, "wb") as output_file:
with open(output_path, 'wb') as output_file:
output_writer.write(output_file)
merge_pdfs = run_in_subprocess(_merge_pdfs) # PyPDF2这个库有严重的内存泄露问题,把它放到子进程中运行,从而方便内存的释放
merge_pdfs = run_in_subprocess(_merge_pdfs) # PyPDF2这个库有严重的内存泄露问题,把它放到子进程中运行,从而方便内存的释放

查看文件

@@ -85,8 +85,8 @@ def write_numpy_to_wave(filename, rate, data, add_header=False):
def is_speaker_speaking(vad, data, sample_rate):
# Function to detect if the speaker is speaking
# The WebRTC VAD only accepts 16-bit mono PCM audio,
# sampled at 8000, 16000, 32000 or 48000 Hz.
# The WebRTC VAD only accepts 16-bit mono PCM audio,
# sampled at 8000, 16000, 32000 or 48000 Hz.
# A frame must be either 10, 20, or 30 ms in duration:
frame_duration = 30
n_bit_each = int(sample_rate * frame_duration / 1000)*2 # x2 because audio is 16 bit (2 bytes)
@@ -94,7 +94,7 @@ def is_speaker_speaking(vad, data, sample_rate):
for t in range(len(data)):
if t!=0 and t % n_bit_each == 0:
res_list.append(vad.is_speech(data[t-n_bit_each:t], sample_rate))
info = ''.join(['^' if r else '.' for r in res_list])
info = info[:10]
if any(res_list):
@@ -186,10 +186,10 @@ class AliyunASR():
keep_alive_last_send_time = time.time()
while not self.stop:
# time.sleep(self.capture_interval)
audio = rad.read(uuid.hex)
audio = rad.read(uuid.hex)
if audio is not None:
# convert to pcm file
temp_file = f'{temp_folder}/{uuid.hex}.pcm' #
temp_file = f'{temp_folder}/{uuid.hex}.pcm' #
dsdata = change_sample_rate(audio, rad.rate, NEW_SAMPLERATE) # 48000 --> 16000
write_numpy_to_wave(temp_file, NEW_SAMPLERATE, dsdata)
# read pcm binary

查看文件

@@ -3,12 +3,12 @@ from scipy import interpolate
def Singleton(cls):
_instance = {}
def _singleton(*args, **kargs):
if cls not in _instance:
_instance[cls] = cls(*args, **kargs)
return _instance[cls]
return _singleton
@@ -39,7 +39,7 @@ class RealtimeAudioDistribution():
else:
res = None
return res
def change_sample_rate(audio, old_sr, new_sr):
duration = audio.shape[0] / old_sr

查看文件

@@ -40,7 +40,7 @@ class GptAcademicState():
class GptAcademicGameBaseState():
"""
1. first init: __init__ ->
1. first init: __init__ ->
"""
def init_game(self, chatbot, lock_plugin):
self.plugin_name = None
@@ -53,7 +53,7 @@ class GptAcademicGameBaseState():
raise ValueError("callback_fn is None")
chatbot._cookies['lock_plugin'] = self.callback_fn
self.dump_state(chatbot)
def get_plugin_name(self):
if self.plugin_name is None:
raise ValueError("plugin_name is None")
@@ -71,7 +71,7 @@ class GptAcademicGameBaseState():
state = chatbot._cookies.get(f'plugin_state/{plugin_name}', None)
if state is not None:
state = pickle.loads(state)
else:
else:
state = cls()
state.init_game(chatbot, lock_plugin)
state.plugin_name = plugin_name
@@ -79,7 +79,7 @@ class GptAcademicGameBaseState():
state.chatbot = chatbot
state.callback_fn = callback_fn
return state
def continue_game(self, prompt, chatbot, history):
# 游戏主体
yield from self.step(prompt, chatbot, history)

查看文件

@@ -1,125 +0,0 @@
from crazy_functions.ipc_fns.mp import run_in_subprocess_with_timeout
def force_breakdown(txt, limit, get_token_fn):
""" 当无法用标点、空行分割时,我们用最暴力的方法切割
"""
for i in reversed(range(len(txt))):
if get_token_fn(txt[:i]) < limit:
return txt[:i], txt[i:]
return "Tiktoken未知错误", "Tiktoken未知错误"
def maintain_storage(remain_txt_to_cut, remain_txt_to_cut_storage):
""" 为了加速计算,我们采样一个特殊的手段。当 remain_txt_to_cut > `_max` 时, 我们把 _max 后的文字转存至 remain_txt_to_cut_storage
当 remain_txt_to_cut < `_min` 时,我们再把 remain_txt_to_cut_storage 中的部分文字取出
"""
_min = int(5e4)
_max = int(1e5)
# print(len(remain_txt_to_cut), len(remain_txt_to_cut_storage))
if len(remain_txt_to_cut) < _min and len(remain_txt_to_cut_storage) > 0:
remain_txt_to_cut = remain_txt_to_cut + remain_txt_to_cut_storage
remain_txt_to_cut_storage = ""
if len(remain_txt_to_cut) > _max:
remain_txt_to_cut_storage = remain_txt_to_cut[_max:] + remain_txt_to_cut_storage
remain_txt_to_cut = remain_txt_to_cut[:_max]
return remain_txt_to_cut, remain_txt_to_cut_storage
def cut(limit, get_token_fn, txt_tocut, must_break_at_empty_line, break_anyway=False):
""" 文本切分
"""
res = []
total_len = len(txt_tocut)
fin_len = 0
remain_txt_to_cut = txt_tocut
remain_txt_to_cut_storage = ""
# 为了加速计算,我们采样一个特殊的手段。当 remain_txt_to_cut > `_max` 时, 我们把 _max 后的文字转存至 remain_txt_to_cut_storage
remain_txt_to_cut, remain_txt_to_cut_storage = maintain_storage(remain_txt_to_cut, remain_txt_to_cut_storage)
while True:
if get_token_fn(remain_txt_to_cut) <= limit:
# 如果剩余文本的token数小于限制,那么就不用切了
res.append(remain_txt_to_cut); fin_len+=len(remain_txt_to_cut)
break
else:
# 如果剩余文本的token数大于限制,那么就切
lines = remain_txt_to_cut.split('\n')
# 估计一个切分点
estimated_line_cut = limit / get_token_fn(remain_txt_to_cut) * len(lines)
estimated_line_cut = int(estimated_line_cut)
# 开始查找合适切分点的偏移cnt
cnt = 0
for cnt in reversed(range(estimated_line_cut)):
if must_break_at_empty_line:
# 首先尝试用双空行(\n\n作为切分点
if lines[cnt] != "":
continue
prev = "\n".join(lines[:cnt])
post = "\n".join(lines[cnt:])
if get_token_fn(prev) < limit:
break
if cnt == 0:
# 如果没有找到合适的切分点
if break_anyway:
# 是否允许暴力切分
prev, post = force_breakdown(remain_txt_to_cut, limit, get_token_fn)
else:
# 不允许直接报错
raise RuntimeError(f"存在一行极长的文本!{remain_txt_to_cut}")
# 追加列表
res.append(prev); fin_len+=len(prev)
# 准备下一次迭代
remain_txt_to_cut = post
remain_txt_to_cut, remain_txt_to_cut_storage = maintain_storage(remain_txt_to_cut, remain_txt_to_cut_storage)
process = fin_len/total_len
print(f'正在文本切分 {int(process*100)}%')
if len(remain_txt_to_cut.strip()) == 0:
break
return res
def breakdown_text_to_satisfy_token_limit_(txt, limit, llm_model="gpt-3.5-turbo"):
""" 使用多种方式尝试切分文本,以满足 token 限制
"""
from request_llms.bridge_all import model_info
enc = model_info[llm_model]['tokenizer']
def get_token_fn(txt): return len(enc.encode(txt, disallowed_special=()))
try:
# 第1次尝试,将双空行\n\n作为切分点
return cut(limit, get_token_fn, txt, must_break_at_empty_line=True)
except RuntimeError:
try:
# 第2次尝试,将单空行\n作为切分点
return cut(limit, get_token_fn, txt, must_break_at_empty_line=False)
except RuntimeError:
try:
# 第3次尝试,将英文句号.)作为切分点
res = cut(limit, get_token_fn, txt.replace('.', '\n'), must_break_at_empty_line=False) # 这个中文的句号是故意的,作为一个标识而存在
return [r.replace('\n', '.') for r in res]
except RuntimeError as e:
try:
# 第4次尝试,将中文句号作为切分点
res = cut(limit, get_token_fn, txt.replace('', '。。\n'), must_break_at_empty_line=False)
return [r.replace('。。\n', '') for r in res]
except RuntimeError as e:
# 第5次尝试,没办法了,随便切一下吧
return cut(limit, get_token_fn, txt, must_break_at_empty_line=False, break_anyway=True)
breakdown_text_to_satisfy_token_limit = run_in_subprocess_with_timeout(breakdown_text_to_satisfy_token_limit_, timeout=60)
if __name__ == '__main__':
from crazy_functions.crazy_utils import read_and_clean_pdf_text
file_content, page_one = read_and_clean_pdf_text("build/assets/at.pdf")
from request_llms.bridge_all import model_info
for i in range(5):
file_content += file_content
print(len(file_content))
TOKEN_LIMIT_PER_FRAGMENT = 2500
res = breakdown_text_to_satisfy_token_limit(file_content, TOKEN_LIMIT_PER_FRAGMENT)

查看文件

@@ -64,8 +64,8 @@ def produce_report_markdown(gpt_response_collection, meta, paper_meta_info, chat
# 再做一个小修改重新修改当前part的标题,默认用英文的
cur_value += value
translated_res_array.append(cur_value)
res_path = write_history_to_file(meta + ["# Meta Translation" , paper_meta_info] + translated_res_array,
file_basename = f"{gen_time_str()}-translated_only.md",
res_path = write_history_to_file(meta + ["# Meta Translation" , paper_meta_info] + translated_res_array,
file_basename = f"{gen_time_str()}-translated_only.md",
file_fullname = None,
auto_caption = False)
promote_file_to_downloadzone(res_path, rename_file=os.path.basename(res_path)+'.md', chatbot=chatbot)
@@ -74,7 +74,7 @@ def produce_report_markdown(gpt_response_collection, meta, paper_meta_info, chat
def translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_files, TOKEN_LIMIT_PER_FRAGMENT, DST_LANG):
from crazy_functions.pdf_fns.report_gen_html import construct_html
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
from crazy_functions.crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from crazy_functions.crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
@@ -116,7 +116,7 @@ def translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_fi
# find a smooth token limit to achieve even seperation
count = int(math.ceil(raw_token_num / TOKEN_LIMIT_PER_FRAGMENT))
token_limit_smooth = raw_token_num // count + count
return breakdown_text_to_satisfy_token_limit(txt, limit=token_limit_smooth, llm_model=llm_kwargs['llm_model'])
return breakdown_txt_to_satisfy_token_limit_for_pdf(txt, get_token_fn=get_token_num, limit=token_limit_smooth)
for section in article_dict.get('sections'):
if len(section['text']) == 0: continue
@@ -144,11 +144,11 @@ def translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_fi
produce_report_markdown(gpt_response_collection, meta, paper_meta_info, chatbot, fp, generated_conclusion_files)
# -=-=-=-=-=-=-=-= 写出HTML文件 -=-=-=-=-=-=-=-=
ch = construct_html()
ch = construct_html()
orig = ""
trans = ""
gpt_response_collection_html = copy.deepcopy(gpt_response_collection)
for i,k in enumerate(gpt_response_collection_html):
for i,k in enumerate(gpt_response_collection_html):
if i%2==0:
gpt_response_collection_html[i] = inputs_show_user_array[i//2]
else:
@@ -159,7 +159,7 @@ def translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_fi
final = ["", "", "一、论文概况", "", "Abstract", paper_meta_info, "二、论文翻译", ""]
final.extend(gpt_response_collection_html)
for i, k in enumerate(final):
for i, k in enumerate(final):
if i%2==0:
orig = k
if i%2==1:

查看文件

@@ -1,85 +0,0 @@
from crazy_functions.crazy_utils import read_and_clean_pdf_text, get_files_from_everything
import os
import re
def extract_text_from_files(txt, chatbot, history):
"""
查找pdf/md/word并获取文本内容并返回状态以及文本
输入参数 Args:
chatbot: chatbot inputs and outputs (用户界面对话窗口句柄,用于数据流可视化)
history (list): List of chat history (历史,对话历史列表)
输出 Returns:
文件是否存在(bool)
final_result(list):文本内容
page_one(list):第一页内容/摘要
file_manifest(list):文件路径
excption(string):需要用户手动处理的信息,如没出错则保持为空
"""
final_result = []
page_one = []
file_manifest = []
excption = ""
if txt == "":
final_result.append(txt)
return False, final_result, page_one, file_manifest, excption #如输入区内容不是文件则直接返回输入区内容
#查找输入区内容中的文件
file_pdf,pdf_manifest,folder_pdf = get_files_from_everything(txt, '.pdf')
file_md,md_manifest,folder_md = get_files_from_everything(txt, '.md')
file_word,word_manifest,folder_word = get_files_from_everything(txt, '.docx')
file_doc,doc_manifest,folder_doc = get_files_from_everything(txt, '.doc')
if file_doc:
excption = "word"
return False, final_result, page_one, file_manifest, excption
file_num = len(pdf_manifest) + len(md_manifest) + len(word_manifest)
if file_num == 0:
final_result.append(txt)
return False, final_result, page_one, file_manifest, excption #如输入区内容不是文件则直接返回输入区内容
if file_pdf:
try: # 尝试导入依赖,如果缺少依赖,则给出安装建议
import fitz
except:
excption = "pdf"
return False, final_result, page_one, file_manifest, excption
for index, fp in enumerate(pdf_manifest):
file_content, pdf_one = read_and_clean_pdf_text(fp) # 尝试按照章节切割PDF
file_content = file_content.encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
pdf_one = str(pdf_one).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
final_result.append(file_content)
page_one.append(pdf_one)
file_manifest.append(os.path.relpath(fp, folder_pdf))
if file_md:
for index, fp in enumerate(md_manifest):
with open(fp, 'r', encoding='utf-8', errors='replace') as f:
file_content = f.read()
file_content = file_content.encode('utf-8', 'ignore').decode()
headers = re.findall(r'^#\s(.*)$', file_content, re.MULTILINE) #接下来提取md中的一级/二级标题作为摘要
if len(headers) > 0:
page_one.append("\n".join(headers)) #合并所有的标题,以换行符分割
else:
page_one.append("")
final_result.append(file_content)
file_manifest.append(os.path.relpath(fp, folder_md))
if file_word:
try: # 尝试导入依赖,如果缺少依赖,则给出安装建议
from docx import Document
except:
excption = "word_pip"
return False, final_result, page_one, file_manifest, excption
for index, fp in enumerate(word_manifest):
doc = Document(fp)
file_content = '\n'.join([p.text for p in doc.paragraphs])
file_content = file_content.encode('utf-8', 'ignore').decode()
page_one.append(file_content[:200])
final_result.append(file_content)
file_manifest.append(os.path.relpath(fp, folder_word))
return True, final_result, page_one, file_manifest, excption

查看文件

@@ -1,73 +0,0 @@
<!DOCTYPE html>
<html xmlns="http://www.w3.org/1999/xhtml">
<head>
<meta http-equiv="Content-Type" content="text/html; charset=UTF-8" />
<title>GPT-Academic 翻译报告书</title>
<style>
.centered-a {
color: red;
text-align: center;
margin-bottom: 2%;
font-size: 1.5em;
}
.centered-b {
color: red;
text-align: center;
margin-top: 10%;
margin-bottom: 20%;
font-size: 1.5em;
}
.centered-c {
color: rgba(255, 0, 0, 0);
text-align: center;
margin-top: 2%;
margin-bottom: 20%;
font-size: 7em;
}
</style>
<script>
// Configure MathJax settings
MathJax = {
tex: {
inlineMath: [
['$', '$'],
['\(', '\)']
]
}
}
addEventListener('zero-md-rendered', () => {MathJax.typeset(); console.log('MathJax typeset!');})
</script>
<!-- Load MathJax library -->
<script src="https://cdn.jsdelivr.net/npm/mathjax@3/es5/tex-chtml.js"></script>
<script
type="module"
src="https://cdn.jsdelivr.net/gh/zerodevx/zero-md@2/dist/zero-md.min.js"
></script>
</head>
<body>
<div class="test_temp1" style="width:10%; height: 500px; float:left;">
</div>
<div class="test_temp2" style="width:80%; height: 500px; float:left;">
<!-- Simply set the `src` attribute to your MD file and win -->
<div class="centered-a">
请按Ctrl+S保存此页面,否则该页面可能在几分钟后失效。
</div>
<zero-md src="translated_markdown.md" no-shadow>
</zero-md>
<div class="centered-b">
本报告由GPT-Academic开源项目生成,地址https://github.com/binary-husky/gpt_academic。
</div>
<div class="centered-c">
本报告由GPT-Academic开源项目生成,地址https://github.com/binary-husky/gpt_academic。
</div>
</div>
<div class="test_temp3" style="width:10%; height: 500px; float:left;">
</div>
</body>
</html>

查看文件

@@ -28,7 +28,7 @@ EMBEDDING_DEVICE = "cpu"
# 基于上下文的prompt模版,请务必保留"{question}"和"{context}"
PROMPT_TEMPLATE = """已知信息:
{context}
{context}
根据上述已知信息,简洁和专业的来回答用户的问题。如果无法从中得到答案,请说 “根据已知信息无法回答该问题” 或 “没有提供足够的相关信息”,不允许在答案中添加编造成分,答案请使用中文。 问题是:{question}"""
@@ -58,7 +58,7 @@ OPEN_CROSS_DOMAIN = False
def similarity_search_with_score_by_vector(
self, embedding: List[float], k: int = 4
) -> List[Tuple[Document, float]]:
def seperate_list(ls: List[int]) -> List[List[int]]:
lists = []
ls1 = [ls[0]]
@@ -200,7 +200,7 @@ class LocalDocQA:
return vs_path, loaded_files
else:
raise RuntimeError("文件加载失败,请检查文件格式是否正确")
def get_loaded_file(self, vs_path):
ds = self.vector_store.docstore
return set([ds._dict[k].metadata['source'].split(vs_path)[-1] for k in ds._dict])
@@ -290,10 +290,10 @@ class knowledge_archive_interface():
self.threadLock.acquire()
# import uuid
self.current_id = id
self.qa_handle, self.kai_path = construct_vector_store(
vs_id=self.current_id,
self.qa_handle, self.kai_path = construct_vector_store(
vs_id=self.current_id,
vs_path=vs_path,
files=file_manifest,
files=file_manifest,
sentence_size=100,
history=[],
one_conent="",
@@ -304,7 +304,7 @@ class knowledge_archive_interface():
def get_current_archive_id(self):
return self.current_id
def get_loaded_file(self, vs_path):
return self.qa_handle.get_loaded_file(vs_path)
@@ -312,10 +312,10 @@ class knowledge_archive_interface():
self.threadLock.acquire()
if not self.current_id == id:
self.current_id = id
self.qa_handle, self.kai_path = construct_vector_store(
vs_id=self.current_id,
self.qa_handle, self.kai_path = construct_vector_store(
vs_id=self.current_id,
vs_path=vs_path,
files=[],
files=[],
sentence_size=100,
history=[],
one_conent="",
@@ -329,7 +329,7 @@ class knowledge_archive_interface():
query = txt,
vs_path = self.kai_path,
score_threshold=VECTOR_SEARCH_SCORE_THRESHOLD,
vector_search_top_k=VECTOR_SEARCH_TOP_K,
vector_search_top_k=VECTOR_SEARCH_TOP_K,
chunk_conent=True,
chunk_size=CHUNK_SIZE,
text2vec = self.get_chinese_text2vec(),

查看文件

@@ -35,9 +35,9 @@ def get_recent_file_prompt_support(chatbot):
most_recent_uploaded = chatbot._cookies.get("most_recent_uploaded", None)
path = most_recent_uploaded['path']
prompt = "\nAdditional Information:\n"
prompt = "In case that this plugin requires a path or a file as argument,"
prompt += f"it is important for you to know that the user has recently uploaded a file, located at: `{path}`"
prompt += f"Only use it when necessary, otherwise, you can ignore this file."
prompt = "In case that this plugin requires a path or a file as argument,"
prompt += f"it is important for you to know that the user has recently uploaded a file, located at: `{path}`"
prompt += f"Only use it when necessary, otherwise, you can ignore this file."
return prompt
def get_inputs_show_user(inputs, plugin_arr_enum_prompt):
@@ -82,7 +82,7 @@ def execute_plugin(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prom
msg += "\n但您可以尝试再试一次\n"
yield from update_ui_lastest_msg(lastmsg=msg, chatbot=chatbot, history=history, delay=2)
return
# ⭐ ⭐ ⭐ 确认插件参数
if not have_any_recent_upload_files(chatbot):
appendix_info = ""
@@ -99,7 +99,7 @@ def execute_plugin(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prom
inputs = f"A plugin named {plugin_sel.plugin_selection} is selected, " + \
"you should extract plugin_arg from the user requirement, the user requirement is: \n\n" + \
">> " + (txt + appendix_info).rstrip('\n').replace('\n','\n>> ') + '\n\n' + \
gpt_json_io.format_instructions
gpt_json_io.format_instructions
run_gpt_fn = lambda inputs, sys_prompt: predict_no_ui_long_connection(
inputs=inputs, llm_kwargs=llm_kwargs, history=[], sys_prompt=sys_prompt, observe_window=[])
plugin_sel = gpt_json_io.generate_output_auto_repair(run_gpt_fn(inputs, ""), run_gpt_fn)

查看文件

@@ -10,7 +10,7 @@ def modify_configuration_hot(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
ALLOW_RESET_CONFIG = get_conf('ALLOW_RESET_CONFIG')
if not ALLOW_RESET_CONFIG:
yield from update_ui_lastest_msg(
lastmsg=f"当前配置不允许被修改如需激活本功能,请在config.py中设置ALLOW_RESET_CONFIG=True后重启软件。",
lastmsg=f"当前配置不允许被修改如需激活本功能,请在config.py中设置ALLOW_RESET_CONFIG=True后重启软件。",
chatbot=chatbot, history=history, delay=2
)
return
@@ -35,7 +35,7 @@ def modify_configuration_hot(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
inputs = "Analyze how to change configuration according to following user input, answer me with json: \n\n" + \
">> " + txt.rstrip('\n').replace('\n','\n>> ') + '\n\n' + \
gpt_json_io.format_instructions
run_gpt_fn = lambda inputs, sys_prompt: predict_no_ui_long_connection(
inputs=inputs, llm_kwargs=llm_kwargs, history=[], sys_prompt=sys_prompt, observe_window=[])
user_intention = gpt_json_io.generate_output_auto_repair(run_gpt_fn(inputs, ""), run_gpt_fn)
@@ -45,11 +45,11 @@ def modify_configuration_hot(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
ok = (explicit_conf in txt)
if ok:
yield from update_ui_lastest_msg(
lastmsg=f"正在执行任务: {txt}\n\n新配置{explicit_conf}={user_intention.new_option_value}",
lastmsg=f"正在执行任务: {txt}\n\n新配置{explicit_conf}={user_intention.new_option_value}",
chatbot=chatbot, history=history, delay=1
)
yield from update_ui_lastest_msg(
lastmsg=f"正在执行任务: {txt}\n\n新配置{explicit_conf}={user_intention.new_option_value}\n\n正在修改配置中",
lastmsg=f"正在执行任务: {txt}\n\n新配置{explicit_conf}={user_intention.new_option_value}\n\n正在修改配置中",
chatbot=chatbot, history=history, delay=2
)
@@ -69,7 +69,7 @@ def modify_configuration_reboot(txt, llm_kwargs, plugin_kwargs, chatbot, history
ALLOW_RESET_CONFIG = get_conf('ALLOW_RESET_CONFIG')
if not ALLOW_RESET_CONFIG:
yield from update_ui_lastest_msg(
lastmsg=f"当前配置不允许被修改如需激活本功能,请在config.py中设置ALLOW_RESET_CONFIG=True后重启软件。",
lastmsg=f"当前配置不允许被修改如需激活本功能,请在config.py中设置ALLOW_RESET_CONFIG=True后重启软件。",
chatbot=chatbot, history=history, delay=2
)
return

查看文件

@@ -6,7 +6,7 @@ class VoidTerminalState():
def reset_state(self):
self.has_provided_explaination = False
def lock_plugin(self, chatbot):
chatbot._cookies['lock_plugin'] = 'crazy_functions.虚空终端->虚空终端'
chatbot._cookies['plugin_state'] = pickle.dumps(self)

查看文件

@@ -130,7 +130,7 @@ def get_name(_url_):
@CatchException
def 下载arxiv论文并翻译摘要(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 下载arxiv论文并翻译摘要(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
CRAZY_FUNCTION_INFO = "下载arxiv论文并翻译摘要,函数插件作者[binary-husky]。正在提取摘要并下载PDF文档……"
import glob
@@ -144,8 +144,8 @@ def 下载arxiv论文并翻译摘要(txt, llm_kwargs, plugin_kwargs, chatbot, hi
try:
import bs4
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade beautifulsoup4```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
@@ -157,12 +157,12 @@ def 下载arxiv论文并翻译摘要(txt, llm_kwargs, plugin_kwargs, chatbot, hi
try:
pdf_path, info = download_arxiv_(txt)
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"下载pdf文件未成功")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 翻译摘要等
i_say = f"请你阅读以下学术论文相关的材料,提取摘要,翻译为中文。材料如下:{str(info)}"
i_say_show_user = f'请你阅读以下学术论文相关的材料,提取摘要,翻译为中文。论文:{pdf_path}'

查看文件

@@ -3,38 +3,57 @@ from crazy_functions.multi_stage.multi_stage_utils import GptAcademicGameBaseSta
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from request_llms.bridge_all import predict_no_ui_long_connection
from crazy_functions.game_fns.game_utils import get_code_block, is_same_thing
import random
class MiniGame_ASCII_Art(GptAcademicGameBaseState):
def step(self, prompt, chatbot, history):
if self.step_cnt == 0:
chatbot.append(["我画你猜(动物)", "请稍等..."])
else:
if prompt.strip() == 'exit':
self.delete_game = True
yield from update_ui_lastest_msg(lastmsg=f"谜底是{self.obj},游戏结束。", chatbot=chatbot, history=history, delay=0.)
return
chatbot.append([prompt, ""])
yield from update_ui(chatbot=chatbot, history=history)
if self.step_cnt == 0:
self.lock_plugin(chatbot)
self.cur_task = 'draw'
if self.cur_task == 'draw':
avail_obj = ["","","","","老鼠",""]
self.obj = random.choice(avail_obj)
inputs = "I want to play a game called Guess the ASCII art. You can draw the ASCII art and I will try to guess it. " + f"This time you draw a {self.obj}. Note that you must not indicate what you have draw in the text, and you should only produce the ASCII art wrapped by ```. "
raw_res = predict_no_ui_long_connection(inputs=inputs, llm_kwargs=self.llm_kwargs, history=[], sys_prompt="")
self.cur_task = 'identify user guess'
res = get_code_block(raw_res)
history += ['', f'the answer is {self.obj}', inputs, res]
yield from update_ui_lastest_msg(lastmsg=res, chatbot=chatbot, history=history, delay=0.)
elif self.cur_task == 'identify user guess':
if is_same_thing(self.obj, prompt, self.llm_kwargs):
self.delete_game = True
yield from update_ui_lastest_msg(lastmsg="你猜对了!", chatbot=chatbot, history=history, delay=0.)
else:
self.cur_task = 'identify user guess'
yield from update_ui_lastest_msg(lastmsg="猜错了,再试试,输入“exit”获取答案。", chatbot=chatbot, history=history, delay=0.)
@CatchException
def 随机小游戏(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
from crazy_functions.game_fns.game_interactive_story import MiniGame_ResumeStory
# 清空历史
history = []
# 选择游戏
cls = MiniGame_ResumeStory
# 如果之前已经初始化了游戏实例,则继续该实例;否则重新初始化
state = cls.sync_state(chatbot,
llm_kwargs,
cls,
plugin_name='MiniGame_ResumeStory',
callback_fn='crazy_functions.互动小游戏->随机小游戏',
lock_plugin=True
)
yield from state.continue_game(prompt, chatbot, history)
@CatchException
def 随机小游戏1(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
from crazy_functions.game_fns.game_ascii_art import MiniGame_ASCII_Art
def 随机小游戏(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 清空历史
history = []
# 选择游戏
cls = MiniGame_ASCII_Art
# 如果之前已经初始化了游戏实例,则继续该实例;否则重新初始化
state = cls.sync_state(chatbot,
llm_kwargs,
cls,
state = cls.sync_state(chatbot,
llm_kwargs,
cls,
plugin_name='MiniGame_ASCII_Art',
callback_fn='crazy_functions.互动小游戏->随机小游戏1',
callback_fn='crazy_functions.互动小游戏->随机小游戏',
lock_plugin=True
)
yield from state.continue_game(prompt, chatbot, history)

查看文件

@@ -3,7 +3,7 @@ from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
@CatchException
def 交互功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 交互功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数, 如温度和top_p等, 一般原样传递下去就行
@@ -11,7 +11,7 @@ def 交互功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
chatbot.append(("这是什么功能?", "交互功能函数模板。在执行完成之后, 可以将自身的状态存储到cookie中, 等待用户的再次调用。"))
@@ -38,7 +38,7 @@ def 交互功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
inputs=inputs_show_user=f"Extract all image urls in this html page, pick the first 5 images and show them with markdown format: \n\n {page_return}"
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=inputs, inputs_show_user=inputs_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt="When you want to show an image, use markdown format. e.g. ![image_description](image_url). If there are no image url provided, answer 'no image url provided'"
)
chatbot[-1] = [chatbot[-1][0], gpt_say]

查看文件

@@ -6,10 +6,10 @@
- 将图像转为灰度图像
- 将csv文件转excel表格
Testing:
- Crop the image, keeping the bottom half.
- Swap the blue channel and red channel of the image.
- Convert the image to grayscale.
Testing:
- Crop the image, keeping the bottom half.
- Swap the blue channel and red channel of the image.
- Convert the image to grayscale.
- Convert the CSV file to an Excel spreadsheet.
"""
@@ -29,12 +29,12 @@ import multiprocessing
templete = """
```python
import ... # Put dependencies here, e.g. import numpy as np.
import ... # Put dependencies here, e.g. import numpy as np.
class TerminalFunction(object): # Do not change the name of the class, The name of the class must be `TerminalFunction`
def run(self, path): # The name of the function must be `run`, it takes only a positional argument.
# rewrite the function you have just written here
# rewrite the function you have just written here
...
return generated_file_path
```
@@ -48,7 +48,7 @@ def get_code_block(reply):
import re
pattern = r"```([\s\S]*?)```" # regex pattern to match code blocks
matches = re.findall(pattern, reply) # find all code blocks in text
if len(matches) == 1:
if len(matches) == 1:
return matches[0].strip('python') # code block
for match in matches:
if 'class TerminalFunction' in match:
@@ -68,8 +68,8 @@ def gpt_interact_multi_step(txt, file_type, llm_kwargs, chatbot, history):
# 第一步
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=demo,
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=demo,
sys_prompt= r"You are a world-class programmer."
)
history.extend([i_say, gpt_say])
@@ -82,33 +82,33 @@ def gpt_interact_multi_step(txt, file_type, llm_kwargs, chatbot, history):
]
i_say = "".join(prompt_compose); inputs_show_user = "If previous stage is successful, rewrite the function you have just written to satisfy executable templete. "
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=inputs_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
inputs=i_say, inputs_show_user=inputs_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
sys_prompt= r"You are a programmer. You need to replace `...` with valid packages, do not give `...` in your answer!"
)
code_to_return = gpt_say
history.extend([i_say, gpt_say])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
# # 第三步
# i_say = "Please list to packages to install to run the code above. Then show me how to use `try_install_deps` function to install them."
# i_say += 'For instance. `try_install_deps(["opencv-python", "scipy", "numpy"])`'
# installation_advance = yield from request_gpt_model_in_new_thread_with_ui_alive(
# inputs=i_say, inputs_show_user=inputs_show_user,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# inputs=i_say, inputs_show_user=inputs_show_user,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# sys_prompt= r"You are a programmer."
# )
# # # 第三步
# # # 第三步
# i_say = "Show me how to use `pip` to install packages to run the code above. "
# i_say += 'For instance. `pip install -r opencv-python scipy numpy`'
# installation_advance = yield from request_gpt_model_in_new_thread_with_ui_alive(
# inputs=i_say, inputs_show_user=i_say,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# inputs=i_say, inputs_show_user=i_say,
# llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
# sys_prompt= r"You are a programmer."
# )
installation_advance = ""
return code_to_return, installation_advance, txt, file_type, llm_kwargs, chatbot, history
@@ -117,7 +117,7 @@ def gpt_interact_multi_step(txt, file_type, llm_kwargs, chatbot, history):
def for_immediate_show_off_when_possible(file_type, fp, chatbot):
if file_type in ['png', 'jpg']:
image_path = os.path.abspath(fp)
chatbot.append(['这是一张图片, 展示如下:',
chatbot.append(['这是一张图片, 展示如下:',
f'本地文件地址: <br/>`{image_path}`<br/>'+
f'本地文件预览: <br/><div align="center"><img src="file={image_path}"></div>'
])
@@ -139,7 +139,7 @@ def get_recent_file_prompt_support(chatbot):
return path
@CatchException
def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -147,7 +147,7 @@ def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
# 清空历史
@@ -177,7 +177,7 @@ def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
chatbot.append(["文件检索", "没有发现任何近期上传的文件。"])
yield from update_ui_lastest_msg("没有发现任何近期上传的文件。", chatbot, history, 1)
return # 2. 如果没有文件
# 读取文件
file_type = file_list[0].split('.')[-1]
@@ -185,7 +185,7 @@ def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
if is_the_upload_folder(txt):
yield from update_ui_lastest_msg(f"请在输入框内填写需求, 然后再次点击该插件! 至于您的文件,不用担心, 文件路径 {txt} 已经被记忆. ", chatbot, history, 1)
return
# 开始干正事
MAX_TRY = 3
for j in range(MAX_TRY): # 最多重试5次
@@ -238,7 +238,7 @@ def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
# chatbot.append(["如果是缺乏依赖,请参考以下建议", installation_advance])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 顺利完成,收尾
res = str(res)
if os.path.exists(res):
@@ -248,5 +248,5 @@ def 函数动态生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
else:
chatbot.append(["执行成功了,结果是一个字符串", "结果:" + res])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新

查看文件

@@ -4,7 +4,7 @@ from .crazy_utils import input_clipping
import copy, json
@CatchException
def 命令行助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 命令行助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本, 例如需要翻译的一段话, 再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数, 如温度和top_p等, 一般原样传递下去就行
@@ -12,7 +12,7 @@ def 命令行助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_pro
chatbot 聊天显示框的句柄, 用于显示给用户
history 聊天历史, 前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
# 清空历史, 以免输入溢出
history = []
@@ -21,8 +21,8 @@ def 命令行助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_pro
i_say = "请写bash命令实现以下功能" + txt
# 开始
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
inputs=i_say, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt="你是一个Linux大师级用户。注意,当我要求你写bash命令时,尽可能地仅用一行命令解决我的要求。"
)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新

查看文件

@@ -7,7 +7,7 @@ def gen_image(llm_kwargs, prompt, resolution="1024x1024", model="dall-e-2", qual
from request_llms.bridge_all import model_info
proxies = get_conf('proxies')
# Set up OpenAI API key and model
# Set up OpenAI API key and model
api_key = select_api_key(llm_kwargs['api_key'], llm_kwargs['llm_model'])
chat_endpoint = model_info[llm_kwargs['llm_model']]['endpoint']
# 'https://api.openai.com/v1/chat/completions'
@@ -93,7 +93,7 @@ def edit_image(llm_kwargs, prompt, image_path, resolution="1024x1024", model="da
@CatchException
def 图片生成_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 图片生成_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -101,19 +101,15 @@ def 图片生成_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, sys
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
if prompt.strip() == "":
chatbot.append((prompt, "[Local Message] 图像生成提示为空白,请在“输入区”输入图像生成提示。"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 界面更新
return
chatbot.append(("您正在调用“图像生成”插件。", "[Local Message] 生成图像, 请先把模型切换至gpt-*。如果中文Prompt效果不理想, 请尝试英文Prompt。正在处理中 ....."))
chatbot.append(("您正在调用“图像生成”插件。", "[Local Message] 生成图像, 请先把模型切换至gpt-*或者api2d-*。如果中文Prompt效果不理想, 请尝试英文Prompt。正在处理中 ....."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 由于请求gpt需要一段时间,我们先及时地做一次界面更新
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
resolution = plugin_kwargs.get("advanced_arg", '1024x1024')
image_url, image_path = gen_image(llm_kwargs, prompt, resolution)
chatbot.append([prompt,
chatbot.append([prompt,
f'图像中转网址: <br/>`{image_url}`<br/>'+
f'中转网址预览: <br/><div align="center"><img src="{image_url}"></div>'
f'本地文件地址: <br/>`{image_path}`<br/>'+
@@ -123,13 +119,9 @@ def 图片生成_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, sys
@CatchException
def 图片生成_DALLE3(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 图片生成_DALLE3(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
if prompt.strip() == "":
chatbot.append((prompt, "[Local Message] 图像生成提示为空白,请在“输入区”输入图像生成提示。"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 界面更新
return
chatbot.append(("您正在调用“图像生成”插件。", "[Local Message] 生成图像, 请先把模型切换至gpt-*。如果中文Prompt效果不理想, 请尝试英文Prompt。正在处理中 ....."))
chatbot.append(("您正在调用“图像生成”插件。", "[Local Message] 生成图像, 请先把模型切换至gpt-*或者api2d-*。如果中文Prompt效果不理想, 请尝试英文Prompt。正在处理中 ....."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 由于请求gpt需要一段时间,我们先及时地做一次界面更新
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
resolution_arg = plugin_kwargs.get("advanced_arg", '1024x1024-standard-vivid').lower()
@@ -144,7 +136,7 @@ def 图片生成_DALLE3(prompt, llm_kwargs, plugin_kwargs, chatbot, history, sys
elif part in ['vivid', 'natural']:
style = part
image_url, image_path = gen_image(llm_kwargs, prompt, resolution, model="dall-e-3", quality=quality, style=style)
chatbot.append([prompt,
chatbot.append([prompt,
f'图像中转网址: <br/>`{image_url}`<br/>'+
f'中转网址预览: <br/><div align="center"><img src="{image_url}"></div>'
f'本地文件地址: <br/>`{image_path}`<br/>'+
@@ -164,7 +156,7 @@ class ImageEditState(GptAcademicState):
confirm = (len(file_manifest) >= 1 and file_manifest[0].endswith('.png') and os.path.exists(file_manifest[0]))
file = None if not confirm else file_manifest[0]
return confirm, file
def lock_plugin(self, chatbot):
chatbot._cookies['lock_plugin'] = 'crazy_functions.图片生成->图片修改_DALLE2'
self.dump_state(chatbot)
@@ -209,7 +201,7 @@ class ImageEditState(GptAcademicState):
return all([x['value'] is not None for x in self.req])
@CatchException
def 图片修改_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 图片修改_DALLE2(prompt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 尚未完成
history = [] # 清空历史
state = ImageEditState.get_state(chatbot, ImageEditState)

查看文件

@@ -21,7 +21,7 @@ def remove_model_prefix(llm):
@CatchException
def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -29,7 +29,7 @@ def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
# 检查当前的模型是否符合要求
supported_llms = [
@@ -50,18 +50,25 @@ def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
return
if model_info[llm_kwargs['llm_model']]["endpoint"] is not None: # 如果不是本地模型,加载API_KEY
llm_kwargs['api_key'] = select_api_key(llm_kwargs['api_key'], llm_kwargs['llm_model'])
# 检查当前的模型是否符合要求
API_URL_REDIRECT = get_conf('API_URL_REDIRECT')
if len(API_URL_REDIRECT) > 0:
chatbot.append([f"处理任务: {txt}", f"暂不支持中转."])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
import autogen
if get_conf("AUTOGEN_USE_DOCKER"):
import docker
except:
chatbot.append([ f"处理任务: {txt}",
chatbot.append([ f"处理任务: {txt}",
f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pyautogen docker```。"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
import autogen
@@ -72,7 +79,7 @@ def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
chatbot.append([f"处理任务: {txt}", f"缺少docker运行环境"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 解锁插件
chatbot.get_cookies()['lock_plugin'] = None
persistent_class_multi_user_manager = GradioMultiuserManagerForPersistentClasses()
@@ -89,7 +96,7 @@ def 多智能体终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
history = []
chatbot.append(["正在启动: 多智能体终端", "插件动态生成, 执行开始, 作者 Microsoft & Binary-Husky."])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
executor = AutoGenMath(llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request)
executor = AutoGenMath(llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port)
persistent_class_multi_user_manager.set(persistent_key, executor)
exit_reason = yield from executor.main_process_ui_control(txt, create_or_resume="create")

查看文件

@@ -66,10 +66,10 @@ def read_file_to_chat(chatbot, history, file_name):
i_say, gpt_say = h.split('<hr style="border-top: dotted 3px #ccc;">')
chatbot.append([i_say, gpt_say])
chatbot.append([f"存档文件详情?", f"[Local Message] 载入对话{len(html)}条,上下文{len(history)}条。"])
return chatbot, history
return chatbot, history
@CatchException
def 对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -77,10 +77,10 @@ def 对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
chatbot.append(("保存当前对话",
chatbot.append(("保存当前对话",
f"[Local Message] {write_chat_to_file(chatbot, history)},您可以调用下拉菜单中的“载入对话历史存档”还原当下的对话。"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
@@ -91,7 +91,7 @@ def hide_cwd(str):
return str.replace(current_path, replace_path)
@CatchException
def 载入对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 载入对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -99,7 +99,7 @@ def 载入对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
from .crazy_utils import get_files_from_everything
success, file_manifest, _ = get_files_from_everything(txt, type='.html')
@@ -108,9 +108,9 @@ def 载入对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
if txt == "": txt = '空空如也的输入栏'
import glob
local_history = "<br/>".join([
"`"+hide_cwd(f)+f" ({gen_file_preview(f)})"+"`"
"`"+hide_cwd(f)+f" ({gen_file_preview(f)})"+"`"
for f in glob.glob(
f'{get_log_folder(get_user(chatbot), plugin_name="chat_history")}/**/{f_prefix}*.html',
f'{get_log_folder(get_user(chatbot), plugin_name="chat_history")}/**/{f_prefix}*.html',
recursive=True
)])
chatbot.append([f"正在查找对话历史文件html格式: {txt}", f"找不到任何html文件: {txt}。但本地存储了以下历史文件,您可以将任意一个文件路径粘贴到输入区,然后重试:<br/>{local_history}"])
@@ -126,7 +126,7 @@ def 载入对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
return
@CatchException
def 删除所有本地对话历史记录(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 删除所有本地对话历史记录(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -134,12 +134,12 @@ def 删除所有本地对话历史记录(txt, llm_kwargs, plugin_kwargs, chatbot
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
import glob, os
local_history = "<br/>".join([
"`"+hide_cwd(f)+"`"
"`"+hide_cwd(f)+"`"
for f in glob.glob(
f'{get_log_folder(get_user(chatbot), plugin_name="chat_history")}/**/{f_prefix}*.html', recursive=True
)])

查看文件

@@ -29,21 +29,26 @@ def 解析docx(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot
except:
raise RuntimeError('请先将.doc文档转换为.docx文档。')
print(file_content)
# private_upload里面的文件名在解压zip后容易出现乱码rar和7z格式正常,故可以只分析文章内容,不输入文件名
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
from request_llms.bridge_all import model_info
max_token = model_info[llm_kwargs['llm_model']]['max_token']
TOKEN_LIMIT_PER_FRAGMENT = max_token * 3 // 4
paper_fragments = breakdown_text_to_satisfy_token_limit(txt=file_content, limit=TOKEN_LIMIT_PER_FRAGMENT, llm_model=llm_kwargs['llm_model'])
paper_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=file_content,
get_token_fn=model_info[llm_kwargs['llm_model']]['token_cnt'],
limit=TOKEN_LIMIT_PER_FRAGMENT
)
this_paper_history = []
for i, paper_frag in enumerate(paper_fragments):
i_say = f'请对下面的文章片段用中文做概述,文件名是{os.path.relpath(fp, project_folder)},文章内容是 ```{paper_frag}```'
i_say_show_user = f'请对下面的文章片段做概述: {os.path.abspath(fp)}的第{i+1}/{len(paper_fragments)}个片段。'
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say_show_user,
inputs=i_say,
inputs_show_user=i_say_show_user,
llm_kwargs=llm_kwargs,
chatbot=chatbot,
chatbot=chatbot,
history=[],
sys_prompt="总结文章。"
)
@@ -56,10 +61,10 @@ def 解析docx(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot
if len(paper_fragments) > 1:
i_say = f"根据以上的对话,总结文章{os.path.abspath(fp)}的主要内容。"
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say,
inputs=i_say,
inputs_show_user=i_say,
llm_kwargs=llm_kwargs,
chatbot=chatbot,
chatbot=chatbot,
history=this_paper_history,
sys_prompt="总结文章。"
)
@@ -79,7 +84,7 @@ def 解析docx(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot
@CatchException
def 总结word文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 总结word文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
import glob, os
# 基本信息:功能、贡献者

查看文件

@@ -1,5 +1,5 @@
import glob, shutil, os, re, logging
from toolbox import update_ui, trimmed_format_exc, gen_time_str
import glob, time, os, re, logging
from toolbox import update_ui, trimmed_format_exc, gen_time_str, disable_auto_promotion
from toolbox import CatchException, report_exception, get_log_folder
from toolbox import write_history_to_file, promote_file_to_downloadzone
fast_debug = False
@@ -18,7 +18,7 @@ class PaperFileGroup():
def get_token_num(txt): return len(enc.encode(txt, disallowed_special=()))
self.get_token_num = get_token_num
def run_file_split(self, max_token_limit=2048):
def run_file_split(self, max_token_limit=1900):
"""
将长文本分离开来
"""
@@ -28,8 +28,8 @@ class PaperFileGroup():
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index])
else:
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
segments = breakdown_text_to_satisfy_token_limit(file_content, max_token_limit)
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
segments = breakdown_txt_to_satisfy_token_limit_for_pdf(file_content, self.get_token_num, max_token_limit)
for j, segment in enumerate(segments):
self.sp_file_contents.append(segment)
self.sp_file_index.append(index)
@@ -53,7 +53,7 @@ class PaperFileGroup():
def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, language='en'):
from .crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
# <-------- 读取Markdown文件,删除其中的所有注释 ---------->
# <-------- 读取Markdown文件,删除其中的所有注释 ---------->
pfg = PaperFileGroup()
for index, fp in enumerate(file_manifest):
@@ -63,23 +63,23 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
pfg.file_paths.append(fp)
pfg.file_contents.append(file_content)
# <-------- 拆分过长的Markdown文件 ---------->
pfg.run_file_split(max_token_limit=2048)
# <-------- 拆分过长的Markdown文件 ---------->
pfg.run_file_split(max_token_limit=1500)
n_split = len(pfg.sp_file_contents)
# <-------- 多线程翻译开始 ---------->
# <-------- 多线程翻译开始 ---------->
if language == 'en->zh':
inputs_array = ["This is a Markdown file, translate it into Chinese, do NOT modify any existing Markdown commands, do NOT use code wrapper (```), ONLY answer me with translated results:" +
inputs_array = ["This is a Markdown file, translate it into Chinese, do not modify any existing Markdown commands:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"翻译 {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper translator." for _ in range(n_split)]
elif language == 'zh->en':
inputs_array = [f"This is a Markdown file, translate it into English, do NOT modify any existing Markdown commands, do NOT use code wrapper (```), ONLY answer me with translated results:" +
inputs_array = [f"This is a Markdown file, translate it into English, do not modify any existing Markdown commands:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"翻译 {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper translator." for _ in range(n_split)]
else:
inputs_array = [f"This is a Markdown file, translate it into {language}, do NOT modify any existing Markdown commands, do NOT use code wrapper (```), ONLY answer me with translated results:" +
inputs_array = [f"This is a Markdown file, translate it into {language}, do not modify any existing Markdown commands, only answer me with translated results:" +
f"\n\n{frag}" for frag in pfg.sp_file_contents]
inputs_show_user_array = [f"翻译 {f}" for f in pfg.sp_file_tag]
sys_prompt_array = ["You are a professional academic paper translator." for _ in range(n_split)]
@@ -99,16 +99,11 @@ def 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, ch
for i_say, gpt_say in zip(gpt_response_collection[0::2], gpt_response_collection[1::2]):
pfg.sp_file_result.append(gpt_say)
pfg.merge_result()
output_file_arr = pfg.write_result(language)
for output_file in output_file_arr:
promote_file_to_downloadzone(output_file, chatbot=chatbot)
if 'markdown_expected_output_path' in plugin_kwargs:
expected_f_name = plugin_kwargs['markdown_expected_output_path']
shutil.copyfile(output_file, expected_f_name)
pfg.write_result(language)
except:
logging.error(trimmed_format_exc())
# <-------- 整理结果,退出 ---------->
# <-------- 整理结果,退出 ---------->
create_report_file_name = gen_time_str() + f"-chatgpt.md"
res = write_history_to_file(gpt_response_collection, file_basename=create_report_file_name)
promote_file_to_downloadzone(res, chatbot=chatbot)
@@ -158,12 +153,13 @@ def get_files_from_everything(txt, preference=''):
@CatchException
def Markdown英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Markdown英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"对整个Markdown项目进行翻译。函数插件贡献者: Binary-Husky"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
disable_auto_promotion(chatbot)
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
@@ -197,12 +193,13 @@ def Markdown英译中(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_p
@CatchException
def Markdown中译英(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Markdown中译英(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"对整个Markdown项目进行翻译。函数插件贡献者: Binary-Husky"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
disable_auto_promotion(chatbot)
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
@@ -229,12 +226,13 @@ def Markdown中译英(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_p
@CatchException
def Markdown翻译指定语言(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def Markdown翻译指定语言(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"对整个Markdown项目进行翻译。函数插件贡献者: Binary-Husky"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
disable_auto_promotion(chatbot)
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
@@ -257,7 +255,7 @@ def Markdown翻译指定语言(txt, llm_kwargs, plugin_kwargs, chatbot, history,
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到任何.md文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
language = plugin_kwargs.get("advanced_arg", 'Chinese')
yield from 多文件翻译(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, language=language)

查看文件

@@ -17,15 +17,20 @@ def 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot,
file_content, page_one = read_and_clean_pdf_text(file_name) # 尝试按照章节切割PDF
file_content = file_content.encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
page_one = str(page_one).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
TOKEN_LIMIT_PER_FRAGMENT = 2500
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
paper_fragments = breakdown_text_to_satisfy_token_limit(txt=file_content, limit=TOKEN_LIMIT_PER_FRAGMENT, llm_model=llm_kwargs['llm_model'])
page_one_fragments = breakdown_text_to_satisfy_token_limit(txt=str(page_one), limit=TOKEN_LIMIT_PER_FRAGMENT//4, llm_model=llm_kwargs['llm_model'])
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
from request_llms.bridge_all import model_info
enc = model_info["gpt-3.5-turbo"]['tokenizer']
def get_token_num(txt): return len(enc.encode(txt, disallowed_special=()))
paper_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=file_content, get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT)
page_one_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=str(page_one), get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT//4)
# 为了更好的效果,我们剥离Introduction之后的部分如果有
paper_meta = page_one_fragments[0].split('introduction')[0].split('Introduction')[0].split('INTRODUCTION')[0]
############################## <第 1 步,从摘要中提取高价值信息,放到history中> ##################################
final_results = []
final_results.append(paper_meta)
@@ -44,10 +49,10 @@ def 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot,
i_say = f"Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} Chinese characters: {paper_fragments[i]}"
i_say_show_user = f"[{i+1}/{n_fragment}] Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} Chinese characters: {paper_fragments[i][:200]}"
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(i_say, i_say_show_user, # i_say=真正给chatgpt的提问, i_say_show_user=给用户看的提问
llm_kwargs, chatbot,
llm_kwargs, chatbot,
history=["The main idea of the previous section is?", last_iteration_result], # 迭代上一次的结果
sys_prompt="Extract the main idea of this section with Chinese." # 提示
)
)
iteration_results.append(gpt_say)
last_iteration_result = gpt_say
@@ -67,15 +72,15 @@ def 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot,
- (2):What are the past methods? What are the problems with them? Is the approach well motivated?
- (3):What is the research methodology proposed in this paper?
- (4):On what task and what performance is achieved by the methods in this paper? Can the performance support their goals?
Follow the format of the output that follows:
Follow the format of the output that follows:
1. Title: xxx\n\n
2. Authors: xxx\n\n
3. Affiliation: xxx\n\n
4. Keywords: xxx\n\n
5. Urls: xxx or xxx , xxx \n\n
6. Summary: \n\n
- (1):xxx;\n
- (2):xxx;\n
- (1):xxx;\n
- (2):xxx;\n
- (3):xxx;\n
- (4):xxx.\n\n
Be sure to use Chinese answers (proper nouns need to be marked in English), statements as concise and academic as possible,
@@ -85,8 +90,8 @@ do not have too much repetitive information, numerical values using the original
file_write_buffer.extend(final_results)
i_say, final_results = input_clipping(i_say, final_results, max_token_limit=2000)
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user='开始最终总结',
llm_kwargs=llm_kwargs, chatbot=chatbot, history=final_results,
inputs=i_say, inputs_show_user='开始最终总结',
llm_kwargs=llm_kwargs, chatbot=chatbot, history=final_results,
sys_prompt= f"Extract the main idea of this paper with less than {NUM_OF_WORD} Chinese characters"
)
final_results.append(gpt_say)
@@ -101,7 +106,7 @@ do not have too much repetitive information, numerical values using the original
@CatchException
def 批量总结PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 批量总结PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
import glob, os
# 基本信息:功能、贡献者
@@ -114,8 +119,8 @@ def 批量总结PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
try:
import fitz
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pymupdf```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
@@ -134,7 +139,7 @@ def 批量总结PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
# 搜索需要处理的文件清单
file_manifest = [f for f in glob.glob(f'{project_folder}/**/*.pdf', recursive=True)]
# 如果没找到任何文件
if len(file_manifest) == 0:
report_exception(chatbot, history, a = f"解析项目: {txt}", b = f"找不到任何.tex或.pdf文件: {txt}")

查看文件

@@ -85,10 +85,10 @@ def 解析Paper(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbo
msg = '正常'
# ** gpt request **
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say_show_user,
inputs=i_say,
inputs_show_user=i_say_show_user,
llm_kwargs=llm_kwargs,
chatbot=chatbot,
chatbot=chatbot,
history=[],
sys_prompt="总结文章。"
) # 带超时倒计时
@@ -106,10 +106,10 @@ def 解析Paper(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbo
msg = '正常'
# ** gpt request **
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say,
inputs=i_say,
inputs_show_user=i_say,
llm_kwargs=llm_kwargs,
chatbot=chatbot,
chatbot=chatbot,
history=history,
sys_prompt="总结文章。"
) # 带超时倒计时
@@ -124,7 +124,7 @@ def 解析Paper(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbo
@CatchException
def 批量总结PDF文档pdfminer(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 批量总结PDF文档pdfminer(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
@@ -138,8 +138,8 @@ def 批量总结PDF文档pdfminer(txt, llm_kwargs, plugin_kwargs, chatbot, histo
try:
import pdfminer, bs4
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pdfminer beautifulsoup4```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return

查看文件

@@ -48,7 +48,7 @@ def markdown_to_dict(article_content):
@CatchException
def 批量翻译PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 批量翻译PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
disable_auto_promotion(chatbot)
# 基本信息:功能、贡献者
@@ -76,8 +76,8 @@ def 批量翻译PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
success_mmd, file_manifest_mmd, _ = get_files_from_everything(txt, type='.mmd')
success = success or success_mmd
file_manifest += file_manifest_mmd
chatbot.append(["文件列表:", ", ".join([e.split('/')[-1] for e in file_manifest])]);
yield from update_ui( chatbot=chatbot, history=history)
chatbot.append(["文件列表:", ", ".join([e.split('/')[-1] for e in file_manifest])]);
yield from update_ui( chatbot=chatbot, history=history)
# 检测输入参数,如没有给定输入参数,直接退出
if not success:
if txt == "": txt = '空空如也的输入栏'

查看文件

@@ -0,0 +1,182 @@
from toolbox import CatchException, report_exception, get_log_folder, gen_time_str, check_packages
from toolbox import update_ui, promote_file_to_downloadzone, update_ui_lastest_msg, disable_auto_promotion
from toolbox import write_history_to_file, promote_file_to_downloadzone
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from .crazy_utils import request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency
from .crazy_utils import read_and_clean_pdf_text
from .pdf_fns.parse_pdf import parse_pdf, get_avail_grobid_url, translate_pdf
from colorful import *
import os
@CatchException
def 批量翻译PDF文档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
disable_auto_promotion(chatbot)
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"批量翻译PDF文档。函数插件贡献者: Binary-Husky"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# 尝试导入依赖,如果缺少依赖,则给出安装建议
try:
check_packages(["fitz", "tiktoken", "scipdf"])
except:
report_exception(chatbot, history,
a=f"解析项目: {txt}",
b=f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pymupdf tiktoken scipdf_parser```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 清空历史,以免输入溢出
history = []
from .crazy_utils import get_files_from_everything
success, file_manifest, project_folder = get_files_from_everything(txt, type='.pdf')
# 检测输入参数,如没有给定输入参数,直接退出
if not success:
if txt == "": txt = '空空如也的输入栏'
# 如果没找到任何文件
if len(file_manifest) == 0:
report_exception(chatbot, history,
a=f"解析项目: {txt}", b=f"找不到任何.pdf拓展名的文件: {txt}")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# 开始正式执行任务
grobid_url = get_avail_grobid_url()
if grobid_url is not None:
yield from 解析PDF_基于GROBID(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, grobid_url)
else:
yield from update_ui_lastest_msg("GROBID服务不可用,请检查config中的GROBID_URL。作为替代,现在将执行效果稍差的旧版代码。", chatbot, history, delay=3)
yield from 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
def 解析PDF_基于GROBID(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, grobid_url):
import copy, json
TOKEN_LIMIT_PER_FRAGMENT = 1024
generated_conclusion_files = []
generated_html_files = []
DST_LANG = "中文"
from crazy_functions.pdf_fns.report_gen_html import construct_html
for index, fp in enumerate(file_manifest):
chatbot.append(["当前进度:", f"正在连接GROBID服务,请稍候: {grobid_url}\n如果等待时间过长,请修改config中的GROBID_URL,可修改成本地GROBID服务。"]); yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
article_dict = parse_pdf(fp, grobid_url)
grobid_json_res = os.path.join(get_log_folder(), gen_time_str() + "grobid.json")
with open(grobid_json_res, 'w+', encoding='utf8') as f:
f.write(json.dumps(article_dict, indent=4, ensure_ascii=False))
promote_file_to_downloadzone(grobid_json_res, chatbot=chatbot)
if article_dict is None: raise RuntimeError("解析PDF失败,请检查PDF是否损坏。")
yield from translate_pdf(article_dict, llm_kwargs, chatbot, fp, generated_conclusion_files, TOKEN_LIMIT_PER_FRAGMENT, DST_LANG)
chatbot.append(("给出输出文件清单", str(generated_conclusion_files + generated_html_files)))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
def 解析PDF(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt):
"""
此函数已经弃用
"""
import copy
TOKEN_LIMIT_PER_FRAGMENT = 1024
generated_conclusion_files = []
generated_html_files = []
from crazy_functions.pdf_fns.report_gen_html import construct_html
for index, fp in enumerate(file_manifest):
# 读取PDF文件
file_content, page_one = read_and_clean_pdf_text(fp)
file_content = file_content.encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
page_one = str(page_one).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
# 递归地切割PDF文件
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
from request_llms.bridge_all import model_info
enc = model_info["gpt-3.5-turbo"]['tokenizer']
def get_token_num(txt): return len(enc.encode(txt, disallowed_special=()))
paper_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=file_content, get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT)
page_one_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=page_one, get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT//4)
# 为了更好的效果,我们剥离Introduction之后的部分如果有
paper_meta = page_one_fragments[0].split('introduction')[0].split('Introduction')[0].split('INTRODUCTION')[0]
# 单线,获取文章meta信息
paper_meta_info = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=f"以下是一篇学术论文的基础信息,请从中提取出“标题”、“收录会议或期刊”、“作者”、“摘要”、“编号”、“作者邮箱”这六个部分。请用markdown格式输出,最后用中文翻译摘要部分。请提取{paper_meta}",
inputs_show_user=f"请从{fp}中提取出“标题”、“收录会议或期刊”等基本信息。",
llm_kwargs=llm_kwargs,
chatbot=chatbot, history=[],
sys_prompt="Your job is to collect information from materials。",
)
# 多线,翻译
gpt_response_collection = yield from request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency(
inputs_array=[
f"你需要翻译以下内容:\n{frag}" for frag in paper_fragments],
inputs_show_user_array=[f"\n---\n 原文: \n\n {frag.replace('#', '')} \n---\n 翻译:\n " for frag in paper_fragments],
llm_kwargs=llm_kwargs,
chatbot=chatbot,
history_array=[[paper_meta] for _ in paper_fragments],
sys_prompt_array=[
"请你作为一个学术翻译,负责把学术论文准确翻译成中文。注意文章中的每一句话都要翻译。" for _ in paper_fragments],
# max_workers=5 # OpenAI所允许的最大并行过载
)
gpt_response_collection_md = copy.deepcopy(gpt_response_collection)
# 整理报告的格式
for i,k in enumerate(gpt_response_collection_md):
if i%2==0:
gpt_response_collection_md[i] = f"\n\n---\n\n ## 原文[{i//2}/{len(gpt_response_collection_md)//2}] \n\n {paper_fragments[i//2].replace('#', '')} \n\n---\n\n ## 翻译[{i//2}/{len(gpt_response_collection_md)//2}]\n "
else:
gpt_response_collection_md[i] = gpt_response_collection_md[i]
final = ["一、论文概况\n\n---\n\n", paper_meta_info.replace('# ', '### ') + '\n\n---\n\n', "二、论文翻译", ""]
final.extend(gpt_response_collection_md)
create_report_file_name = f"{os.path.basename(fp)}.trans.md"
res = write_history_to_file(final, create_report_file_name)
promote_file_to_downloadzone(res, chatbot=chatbot)
# 更新UI
generated_conclusion_files.append(f'{get_log_folder()}/{create_report_file_name}')
chatbot.append((f"{fp}完成了吗?", res))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
# write html
try:
ch = construct_html()
orig = ""
trans = ""
gpt_response_collection_html = copy.deepcopy(gpt_response_collection)
for i,k in enumerate(gpt_response_collection_html):
if i%2==0:
gpt_response_collection_html[i] = paper_fragments[i//2].replace('#', '')
else:
gpt_response_collection_html[i] = gpt_response_collection_html[i]
final = ["论文概况", paper_meta_info.replace('# ', '### '), "二、论文翻译", ""]
final.extend(gpt_response_collection_html)
for i, k in enumerate(final):
if i%2==0:
orig = k
if i%2==1:
trans = k
ch.add_row(a=orig, b=trans)
create_report_file_name = f"{os.path.basename(fp)}.trans.html"
generated_html_files.append(ch.save_file(create_report_file_name))
except:
from toolbox import trimmed_format_exc
print('writing html result failed:', trimmed_format_exc())
# 准备文件的下载
for pdf_path in generated_conclusion_files:
# 重命名文件
rename_file = f'翻译-{os.path.basename(pdf_path)}'
promote_file_to_downloadzone(pdf_path, rename_file=rename_file, chatbot=chatbot)
for html_path in generated_html_files:
# 重命名文件
rename_file = f'翻译-{os.path.basename(html_path)}'
promote_file_to_downloadzone(html_path, rename_file=rename_file, chatbot=chatbot)
chatbot.append(("给出输出文件清单", str(generated_conclusion_files + generated_html_files)))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面

查看文件

@@ -1,7 +1,6 @@
import os
from toolbox import CatchException, update_ui, gen_time_str, promote_file_to_downloadzone
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from crazy_functions.crazy_utils import input_clipping
from toolbox import CatchException, update_ui, gen_time_str
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from .crazy_utils import input_clipping
def inspect_dependency(chatbot, history):
# 尝试导入依赖,如果缺少依赖,则给出安装建议
@@ -27,16 +26,15 @@ def eval_manim(code):
class_name = get_class_name(code)
try:
time_str = gen_time_str()
try:
subprocess.check_output([sys.executable, '-c', f"from gpt_log.MyAnimation import {class_name}; {class_name}().render()"])
shutil.move(f'media/videos/1080p60/{class_name}.mp4', f'gpt_log/{class_name}-{time_str}.mp4')
return f'gpt_log/{time_str}.mp4'
shutil.move('media/videos/1080p60/{class_name}.mp4', f'gpt_log/{class_name}-{gen_time_str()}.mp4')
return f'gpt_log/{gen_time_str()}.mp4'
except subprocess.CalledProcessError as e:
output = e.output.decode()
print(f"Command returned non-zero exit status {e.returncode}: {output}.")
return f"Evaluating python script failed: {e.output}."
except:
except:
print('generating mp4 failed')
return "Generating mp4 failed."
@@ -45,12 +43,12 @@ def get_code_block(reply):
import re
pattern = r"```([\s\S]*?)```" # regex pattern to match code blocks
matches = re.findall(pattern, reply) # find all code blocks in text
if len(matches) != 1:
if len(matches) != 1:
raise RuntimeError("GPT is not generating proper code.")
return matches[0].strip('python') # code block
@CatchException
def 动画生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 动画生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -58,10 +56,10 @@ def 动画生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
# 清空历史,以免输入溢出
history = []
history = []
# 基本信息:功能、贡献者
chatbot.append([
@@ -73,31 +71,29 @@ def 动画生成(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
# 尝试导入依赖, 如果缺少依赖, 则给出安装建议
dep_ok = yield from inspect_dependency(chatbot=chatbot, history=history) # 刷新界面
if not dep_ok: return
# 输入
i_say = f'Generate a animation to show: ' + txt
demo = ["Here is some examples of manim", examples_of_manim()]
_, demo = input_clipping(inputs="", history=demo, max_token_limit=2560)
# 开始
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=demo,
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=demo,
sys_prompt=
r"Write a animation script with 3blue1brown's manim. "+
r"Please begin with `from manim import *`. " +
r"Please begin with `from manim import *`. " +
r"Answer me with a code block wrapped by ```."
)
chatbot.append(["开始生成动画", "..."])
history.extend([i_say, gpt_say])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
# 将代码转为动画
code = get_code_block(gpt_say)
res = eval_manim(code)
chatbot.append(("生成的视频文件路径", res))
if os.path.exists(res):
promote_file_to_downloadzone(res, chatbot=chatbot)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
# 在这里放一些网上搜集的demo,辅助gpt生成代码

查看文件

@@ -15,15 +15,20 @@ def 解析PDF(file_name, llm_kwargs, plugin_kwargs, chatbot, history, system_pro
file_content, page_one = read_and_clean_pdf_text(file_name) # 尝试按照章节切割PDF
file_content = file_content.encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
page_one = str(page_one).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
TOKEN_LIMIT_PER_FRAGMENT = 2500
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
paper_fragments = breakdown_text_to_satisfy_token_limit(txt=file_content, limit=TOKEN_LIMIT_PER_FRAGMENT, llm_model=llm_kwargs['llm_model'])
page_one_fragments = breakdown_text_to_satisfy_token_limit(txt=str(page_one), limit=TOKEN_LIMIT_PER_FRAGMENT//4, llm_model=llm_kwargs['llm_model'])
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
from request_llms.bridge_all import model_info
enc = model_info["gpt-3.5-turbo"]['tokenizer']
def get_token_num(txt): return len(enc.encode(txt, disallowed_special=()))
paper_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=file_content, get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT)
page_one_fragments = breakdown_txt_to_satisfy_token_limit_for_pdf(
txt=str(page_one), get_token_fn=get_token_num, limit=TOKEN_LIMIT_PER_FRAGMENT//4)
# 为了更好的效果,我们剥离Introduction之后的部分如果有
paper_meta = page_one_fragments[0].split('introduction')[0].split('Introduction')[0].split('INTRODUCTION')[0]
############################## <第 1 步,从摘要中提取高价值信息,放到history中> ##################################
final_results = []
final_results.append(paper_meta)
@@ -40,12 +45,12 @@ def 解析PDF(file_name, llm_kwargs, plugin_kwargs, chatbot, history, system_pro
for i in range(n_fragment):
NUM_OF_WORD = MAX_WORD_TOTAL // n_fragment
i_say = f"Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} words: {paper_fragments[i]}"
i_say_show_user = f"[{i+1}/{n_fragment}] Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} words: {paper_fragments[i][:200]} ...."
i_say_show_user = f"[{i+1}/{n_fragment}] Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} words: {paper_fragments[i][:200]}"
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(i_say, i_say_show_user, # i_say=真正给chatgpt的提问, i_say_show_user=给用户看的提问
llm_kwargs, chatbot,
llm_kwargs, chatbot,
history=["The main idea of the previous section is?", last_iteration_result], # 迭代上一次的结果
sys_prompt="Extract the main idea of this section, answer me with Chinese." # 提示
)
)
iteration_results.append(gpt_say)
last_iteration_result = gpt_say
@@ -63,7 +68,7 @@ def 解析PDF(file_name, llm_kwargs, plugin_kwargs, chatbot, history, system_pro
@CatchException
def 理解PDF文档内容标准文件输入(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 理解PDF文档内容标准文件输入(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
import glob, os
# 基本信息:功能、贡献者
@@ -76,8 +81,8 @@ def 理解PDF文档内容标准文件输入(txt, llm_kwargs, plugin_kwargs, chat
try:
import fitz
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pymupdf```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return

查看文件

@@ -16,7 +16,7 @@ def 生成函数注释(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot.append((i_say_show_user, "[Local Message] waiting gpt response."))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
if not fast_debug:
if not fast_debug:
msg = '正常'
# ** gpt request **
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
@@ -27,7 +27,7 @@ def 生成函数注释(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
yield from update_ui(chatbot=chatbot, history=history, msg=msg) # 刷新界面
if not fast_debug: time.sleep(2)
if not fast_debug:
if not fast_debug:
res = write_history_to_file(history)
promote_file_to_downloadzone(res, chatbot=chatbot)
chatbot.append(("完成了吗?", res))
@@ -36,7 +36,7 @@ def 生成函数注释(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
@CatchException
def 批量生成函数注释(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 批量生成函数注释(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):

查看文件

@@ -1,296 +0,0 @@
from toolbox import CatchException, update_ui, report_exception
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
import datetime
#以下是每类图表的PROMPT
SELECT_PROMPT = """
{subject}
=============
以上是从文章中提取的摘要,将会使用这些摘要绘制图表。请你选择一个合适的图表类型:
1 流程图
2 序列图
3 类图
4 饼图
5 甘特图
6 状态图
7 实体关系图
8 象限提示图
不需要解释原因,仅需要输出单个不带任何标点符号的数字。
"""
#没有思维导图!!!测试发现模型始终会优先选择思维导图
#流程图
PROMPT_1 = """
请你给出围绕“{subject}”的逻辑关系图,使用mermaid语法,mermaid语法举例
```mermaid
graph TD
P(编程) --> L1(Python)
P(编程) --> L2(C)
P(编程) --> L3(C++)
P(编程) --> L4(Javascipt)
P(编程) --> L5(PHP)
```
"""
#序列图
PROMPT_2 = """
请你给出围绕“{subject}”的序列图,使用mermaid语法,mermaid语法举例
```mermaid
sequenceDiagram
participant A as 用户
participant B as 系统
A->>B: 登录请求
B->>A: 登录成功
A->>B: 获取数据
B->>A: 返回数据
```
"""
#类图
PROMPT_3 = """
请你给出围绕“{subject}”的类图,使用mermaid语法,mermaid语法举例
```mermaid
classDiagram
Class01 <|-- AveryLongClass : Cool
Class03 *-- Class04
Class05 o-- Class06
Class07 .. Class08
Class09 --> C2 : Where am i?
Class09 --* C3
Class09 --|> Class07
Class07 : equals()
Class07 : Object[] elementData
Class01 : size()
Class01 : int chimp
Class01 : int gorilla
Class08 <--> C2: Cool label
```
"""
#饼图
PROMPT_4 = """
请你给出围绕“{subject}”的饼图,使用mermaid语法,mermaid语法举例
```mermaid
pie title Pets adopted by volunteers
"" : 386
"" : 85
"兔子" : 15
```
"""
#甘特图
PROMPT_5 = """
请你给出围绕“{subject}”的甘特图,使用mermaid语法,mermaid语法举例
```mermaid
gantt
title 项目开发流程
dateFormat YYYY-MM-DD
section 设计
需求分析 :done, des1, 2024-01-06,2024-01-08
原型设计 :active, des2, 2024-01-09, 3d
UI设计 : des3, after des2, 5d
section 开发
前端开发 :2024-01-20, 10d
后端开发 :2024-01-20, 10d
```
"""
#状态图
PROMPT_6 = """
请你给出围绕“{subject}”的状态图,使用mermaid语法,mermaid语法举例
```mermaid
stateDiagram-v2
[*] --> Still
Still --> [*]
Still --> Moving
Moving --> Still
Moving --> Crash
Crash --> [*]
```
"""
#实体关系图
PROMPT_7 = """
请你给出围绕“{subject}”的实体关系图,使用mermaid语法,mermaid语法举例
```mermaid
erDiagram
CUSTOMER ||--o{ ORDER : places
ORDER ||--|{ LINE-ITEM : contains
CUSTOMER {
string name
string id
}
ORDER {
string orderNumber
date orderDate
string customerID
}
LINE-ITEM {
number quantity
string productID
}
```
"""
#象限提示图
PROMPT_8 = """
请你给出围绕“{subject}”的象限图,使用mermaid语法,mermaid语法举例
```mermaid
graph LR
A[Hard skill] --> B(Programming)
A[Hard skill] --> C(Design)
D[Soft skill] --> E(Coordination)
D[Soft skill] --> F(Communication)
```
"""
#思维导图
PROMPT_9 = """
{subject}
==========
请给出上方内容的思维导图,充分考虑其之间的逻辑,使用mermaid语法,mermaid语法举例
```mermaid
mindmap
root((mindmap))
Origins
Long history
::icon(fa fa-book)
Popularisation
British popular psychology author Tony Buzan
Research
On effectiveness<br/>and features
On Automatic creation
Uses
Creative techniques
Strategic planning
Argument mapping
Tools
Pen and paper
Mermaid
```
"""
def 解析历史输入(history,llm_kwargs,file_manifest,chatbot,plugin_kwargs):
############################## <第 0 步,切割输入> ##################################
# 借用PDF切割中的函数对文本进行切割
TOKEN_LIMIT_PER_FRAGMENT = 2500
txt = str(history).encode('utf-8', 'ignore').decode() # avoid reading non-utf8 chars
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
txt = breakdown_text_to_satisfy_token_limit(txt=txt, limit=TOKEN_LIMIT_PER_FRAGMENT, llm_model=llm_kwargs['llm_model'])
############################## <第 1 步,迭代地历遍整个文章,提取精炼信息> ##################################
results = []
MAX_WORD_TOTAL = 4096
n_txt = len(txt)
last_iteration_result = "从以下文本中提取摘要。"
if n_txt >= 20: print('文章极长,不能达到预期效果')
for i in range(n_txt):
NUM_OF_WORD = MAX_WORD_TOTAL // n_txt
i_say = f"Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} words in Chinese: {txt[i]}"
i_say_show_user = f"[{i+1}/{n_txt}] Read this section, recapitulate the content of this section with less than {NUM_OF_WORD} words: {txt[i][:200]} ...."
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(i_say, i_say_show_user, # i_say=真正给chatgpt的提问, i_say_show_user=给用户看的提问
llm_kwargs, chatbot,
history=["The main content of the previous section is?", last_iteration_result], # 迭代上一次的结果
sys_prompt="Extracts the main content from the text section where it is located for graphing purposes, answer me with Chinese." # 提示
)
results.append(gpt_say)
last_iteration_result = gpt_say
############################## <第 2 步,根据整理的摘要选择图表类型> ##################################
if ("advanced_arg" in plugin_kwargs) and (plugin_kwargs["advanced_arg"] == ""): plugin_kwargs.pop("advanced_arg")
gpt_say = plugin_kwargs.get("advanced_arg", "") #将图表类型参数赋值为插件参数
results_txt = '\n'.join(results) #合并摘要
if gpt_say not in ['1','2','3','4','5','6','7','8','9']: #如插件参数不正确则使用对话模型判断
i_say_show_user = f'接下来将判断适合的图表类型,如连续3次判断失败将会使用流程图进行绘制'; gpt_say = "[Local Message] 收到。" # 用户提示
chatbot.append([i_say_show_user, gpt_say]); yield from update_ui(chatbot=chatbot, history=[]) # 更新UI
i_say = SELECT_PROMPT.format(subject=results_txt)
i_say_show_user = f'请判断适合使用的流程图类型,其中数字对应关系为:1-流程图,2-序列图,3-类图,4-饼图,5-甘特图,6-状态图,7-实体关系图,8-象限提示图。由于不管提供文本是什么,模型大概率认为"思维导图"最合适,因此思维导图仅能通过参数调用。'
for i in range(3):
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt=""
)
if gpt_say in ['1','2','3','4','5','6','7','8','9']: #判断返回是否正确
break
if gpt_say not in ['1','2','3','4','5','6','7','8','9']:
gpt_say = '1'
############################## <第 3 步,根据选择的图表类型绘制图表> ##################################
if gpt_say == '1':
i_say = PROMPT_1.format(subject=results_txt)
elif gpt_say == '2':
i_say = PROMPT_2.format(subject=results_txt)
elif gpt_say == '3':
i_say = PROMPT_3.format(subject=results_txt)
elif gpt_say == '4':
i_say = PROMPT_4.format(subject=results_txt)
elif gpt_say == '5':
i_say = PROMPT_5.format(subject=results_txt)
elif gpt_say == '6':
i_say = PROMPT_6.format(subject=results_txt)
elif gpt_say == '7':
i_say = PROMPT_7.replace("{subject}", results_txt) #由于实体关系图用到了{}符号
elif gpt_say == '8':
i_say = PROMPT_8.format(subject=results_txt)
elif gpt_say == '9':
i_say = PROMPT_9.format(subject=results_txt)
i_say_show_user = f'请根据判断结果绘制相应的图表。如需绘制思维导图请使用参数调用,同时过大的图表可能需要复制到在线编辑器中进行渲染。'
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt=""
)
history.append(gpt_say)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
@CatchException
def 生成多种Mermaid图表(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
plugin_kwargs 插件模型的参数,用于灵活调整复杂功能的各种参数
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
web_port 当前软件运行的端口号
"""
import os
# 基本信息:功能、贡献者
chatbot.append([
"函数插件功能?",
"根据当前聊天历史或指定的路径文件(文件内容优先)绘制多种mermaid图表,将会由对话模型首先判断适合的图表类型,随后绘制图表。\
\n您也可以使用插件参数指定绘制的图表类型,函数插件贡献者: Menghuan1918"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
if os.path.exists(txt): #如输入区无内容则直接解析历史记录
from crazy_functions.pdf_fns.parse_word import extract_text_from_files
file_exist, final_result, page_one, file_manifest, excption = extract_text_from_files(txt, chatbot, history)
else:
file_exist = False
excption = ""
file_manifest = []
if excption != "":
if excption == "word":
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"找到了.doc文件,但是该文件格式不被支持,请先转化为.docx格式。")
elif excption == "pdf":
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade pymupdf```。")
elif excption == "word_pip":
report_exception(chatbot, history,
a=f"解析项目: {txt}",
b=f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade python-docx pywin32```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
else:
if not file_exist:
history.append(txt) #如输入区不是文件则将输入区内容加入历史记录
i_say_show_user = f'首先你从历史记录中提取摘要。'; gpt_say = "[Local Message] 收到。" # 用户提示
chatbot.append([i_say_show_user, gpt_say]); yield from update_ui(chatbot=chatbot, history=history) # 更新UI
yield from 解析历史输入(history,llm_kwargs,file_manifest,chatbot,plugin_kwargs)
else:
file_num = len(file_manifest)
for i in range(file_num): #依次处理文件
i_say_show_user = f"[{i+1}/{file_num}]处理文件{file_manifest[i]}"; gpt_say = "[Local Message] 收到。" # 用户提示
chatbot.append([i_say_show_user, gpt_say]); yield from update_ui(chatbot=chatbot, history=history) # 更新UI
history = [] #如输入区内容为文件则清空历史记录
history.append(final_result[i])
yield from 解析历史输入(history,llm_kwargs,file_manifest,chatbot,plugin_kwargs)

查看文件

@@ -9,11 +9,11 @@ install_msg ="""
3. python -m pip install unstructured[all-docs] --upgrade
4. python -c 'import nltk; nltk.download("punkt")'
4. python -c 'import nltk; nltk.download("punkt")'
"""
@CatchException
def 知识库文件注入(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 知识库文件注入(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数, 如温度和top_p等, 一般原样传递下去就行
@@ -21,7 +21,7 @@ def 知识库文件注入(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
@@ -56,7 +56,7 @@ def 知识库文件注入(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
chatbot.append(["没有找到任何可读取文件", "当前支持的格式包括: txt, md, docx, pptx, pdf, json等"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
# < -------------------预热文本向量化模组--------------- >
chatbot.append(['<br/>'.join(file_manifest), "正在预热文本向量化模组, 如果是第一次运行, 将消耗较长时间下载中文向量化模型..."])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
@@ -84,7 +84,7 @@ def 知识库文件注入(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
@CatchException
def 读取知识库作答(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request=-1):
def 读取知识库作答(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port=-1):
# resolve deps
try:
# from zh_langchain import construct_vector_store
@@ -109,8 +109,8 @@ def 读取知识库作答(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
chatbot.append((txt, f'[知识库 {kai_id}] ' + prompt))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=prompt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
inputs=prompt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt=system_prompt
)
history.extend((prompt, gpt_say))

查看文件

@@ -40,10 +40,10 @@ def scrape_text(url, proxies) -> str:
'User-Agent': 'Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/94.0.4606.61 Safari/537.36',
'Content-Type': 'text/plain',
}
try:
try:
response = requests.get(url, headers=headers, proxies=proxies, timeout=8)
if response.encoding == "ISO-8859-1": response.encoding = response.apparent_encoding
except:
except:
return "无法连接到该网页"
soup = BeautifulSoup(response.text, "html.parser")
for script in soup(["script", "style"]):
@@ -55,7 +55,7 @@ def scrape_text(url, proxies) -> str:
return text
@CatchException
def 连接网络回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 连接网络回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -63,10 +63,10 @@ def 连接网络回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
chatbot.append((f"请结合互联网信息回答以下问题:{txt}",
chatbot.append((f"请结合互联网信息回答以下问题:{txt}",
"[Local Message] 请注意,您正在调用一个[函数插件]的模板,该模板可以实现ChatGPT联网信息综合。该函数面向希望实现更多有趣功能的开发者,它可以作为创建新功能函数的模板。您若希望分享新的功能模组,请不吝PR"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
@@ -91,13 +91,13 @@ def 连接网络回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
# ------------- < 第3步ChatGPT综合 > -------------
i_say = f"从以上搜索结果中抽取信息,然后回答问题:{txt}"
i_say, history = input_clipping( # 裁剪输入,从最长的条目开始裁剪,防止爆token
inputs=i_say,
history=history,
inputs=i_say,
history=history,
max_token_limit=model_info[llm_kwargs['llm_model']]['max_token']*3//4
)
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
sys_prompt="请从给定的若干条搜索结果中抽取信息,对最相关的两个搜索结果进行总结,然后回答问题。"
)
chatbot[-1] = (i_say, gpt_say)

查看文件

@@ -55,7 +55,7 @@ def scrape_text(url, proxies) -> str:
return text
@CatchException
def 连接bing搜索回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 连接bing搜索回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -63,7 +63,7 @@ def 连接bing搜索回答问题(txt, llm_kwargs, plugin_kwargs, chatbot, histor
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
chatbot.append((f"请结合互联网信息回答以下问题:{txt}",

查看文件

@@ -33,7 +33,7 @@ explain_msg = """
- 「请调用插件,解析python源代码项目,代码我刚刚打包拖到上传区了」
- 「请问Transformer网络的结构是怎样的?」
2. 您可以打开插件下拉菜单以了解本项目的各种能力。
2. 您可以打开插件下拉菜单以了解本项目的各种能力。
3. 如果您使用「调用插件xxx」、「修改配置xxx」、「请问」等关键词,您的意图可以被识别的更准确。
@@ -67,7 +67,7 @@ class UserIntention(BaseModel):
def chat(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_intention):
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=txt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt=system_prompt
)
chatbot[-1] = [txt, gpt_say]
@@ -104,7 +104,7 @@ def analyze_intention_with_simple_rules(txt):
@CatchException
def 虚空终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 虚空终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
disable_auto_promotion(chatbot=chatbot)
# 获取当前虚空终端状态
state = VoidTerminalState.get_state(chatbot)
@@ -115,13 +115,13 @@ def 虚空终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
if is_the_upload_folder(txt):
state.set_state(chatbot=chatbot, key='has_provided_explaination', value=False)
appendix_msg = "\n\n**很好,您已经上传了文件**,现在请您描述您的需求。"
if is_certain or (state.has_provided_explaination):
# 如果意图明确,跳过提示环节
state.set_state(chatbot=chatbot, key='has_provided_explaination', value=True)
state.unlock_plugin(chatbot=chatbot)
yield from update_ui(chatbot=chatbot, history=history)
yield from 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request)
yield from 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port)
return
else:
# 如果意图模糊,提示
@@ -133,7 +133,7 @@ def 虚空终端(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
def 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = []
chatbot.append(("虚空终端状态: ", f"正在执行任务: {txt}"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
@@ -152,7 +152,7 @@ def 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
analyze_res = run_gpt_fn(inputs, "")
try:
user_intention = gpt_json_io.generate_output_auto_repair(analyze_res, run_gpt_fn)
lastmsg=f"正在执行任务: {txt}\n\n用户意图理解: 意图={explain_intention_to_user[user_intention.intention_type]}",
lastmsg=f"正在执行任务: {txt}\n\n用户意图理解: 意图={explain_intention_to_user[user_intention.intention_type]}",
except JsonStringError as e:
yield from update_ui_lastest_msg(
lastmsg=f"正在执行任务: {txt}\n\n用户意图理解: 失败 当前语言模型({llm_kwargs['llm_model']})不能理解您的意图", chatbot=chatbot, history=history, delay=0)
@@ -161,7 +161,7 @@ def 虚空终端主路由(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
pass
yield from update_ui_lastest_msg(
lastmsg=f"正在执行任务: {txt}\n\n用户意图理解: 意图={explain_intention_to_user[user_intention.intention_type]}",
lastmsg=f"正在执行任务: {txt}\n\n用户意图理解: 意图={explain_intention_to_user[user_intention.intention_type]}",
chatbot=chatbot, history=history, delay=0)
# 用户意图: 修改本项目的配置

查看文件

@@ -15,7 +15,8 @@ class PaperFileGroup():
# count_token
from request_llms.bridge_all import model_info
enc = model_info["gpt-3.5-turbo"]['tokenizer']
def get_token_num(txt): return len(enc.encode(txt, disallowed_special=()))
def get_token_num(txt): return len(
enc.encode(txt, disallowed_special=()))
self.get_token_num = get_token_num
def run_file_split(self, max_token_limit=1900):
@@ -28,8 +29,9 @@ class PaperFileGroup():
self.sp_file_index.append(index)
self.sp_file_tag.append(self.file_paths[index])
else:
from crazy_functions.pdf_fns.breakdown_txt import breakdown_text_to_satisfy_token_limit
segments = breakdown_text_to_satisfy_token_limit(file_content, max_token_limit)
from .crazy_utils import breakdown_txt_to_satisfy_token_limit_for_pdf
segments = breakdown_txt_to_satisfy_token_limit_for_pdf(
file_content, self.get_token_num, max_token_limit)
for j, segment in enumerate(segments):
self.sp_file_contents.append(segment)
self.sp_file_index.append(index)
@@ -60,7 +62,7 @@ def parseNotebook(filename, enable_markdown=1):
Code += f"This is {idx+1}th code block: \n"
Code += code+"\n"
return Code
return Code
def ipynb解释(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt):
@@ -115,7 +117,7 @@ def ipynb解释(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbo
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
@CatchException
def 解析ipynb文件(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析ipynb文件(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
chatbot.append([
"函数插件功能?",
"对IPynb文件进行解析。Contributor: codycjy."])

查看文件

@@ -82,13 +82,12 @@ def 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
inputs=inputs, inputs_show_user=inputs_show_user, llm_kwargs=llm_kwargs, chatbot=chatbot,
history=this_iteration_history_feed, # 迭代之前的分析
sys_prompt="你是一个程序架构分析师,正在分析一个项目的源代码。" + sys_prompt_additional)
diagram_code = make_diagram(this_iteration_files, result, this_iteration_history_feed)
summary = "请用一句话概括这些文件的整体功能。\n\n" + diagram_code
summary = "请用一句话概括这些文件的整体功能"
summary_result = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=summary,
inputs_show_user=summary,
llm_kwargs=llm_kwargs,
inputs=summary,
inputs_show_user=summary,
llm_kwargs=llm_kwargs,
chatbot=chatbot,
history=[i_say, result], # 迭代之前的分析
sys_prompt="你是一个程序架构分析师,正在分析一个项目的源代码。" + sys_prompt_additional)
@@ -105,12 +104,9 @@ def 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs,
chatbot.append(("完成了吗?", res))
yield from update_ui(chatbot=chatbot, history=history_to_return) # 刷新界面
def make_diagram(this_iteration_files, result, this_iteration_history_feed):
from crazy_functions.diagram_fns.file_tree import build_file_tree_mermaid_diagram
return build_file_tree_mermaid_diagram(this_iteration_history_feed[0::2], this_iteration_history_feed[1::2], "项目示意图")
@CatchException
def 解析项目本身(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析项目本身(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob
file_manifest = [f for f in glob.glob('./*.py')] + \
@@ -123,7 +119,7 @@ def 解析项目本身(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个Python项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Python项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -141,7 +137,7 @@ def 解析一个Python项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个Matlab项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Matlab项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -159,7 +155,7 @@ def 解析一个Matlab项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个C项目的头文件(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个C项目的头文件(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -179,7 +175,7 @@ def 解析一个C项目的头文件(txt, llm_kwargs, plugin_kwargs, chatbot, his
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个C项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个C项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -201,7 +197,7 @@ def 解析一个C项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system
@CatchException
def 解析一个Java项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Java项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -223,7 +219,7 @@ def 解析一个Java项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, sys
@CatchException
def 解析一个前端项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个前端项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -252,7 +248,7 @@ def 解析一个前端项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
@CatchException
def 解析一个Golang项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Golang项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -273,7 +269,7 @@ def 解析一个Golang项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个Rust项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Rust项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -293,7 +289,7 @@ def 解析一个Rust项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, sys
yield from 解析源代码新(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt)
@CatchException
def 解析一个Lua项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个Lua项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -315,7 +311,7 @@ def 解析一个Lua项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
@CatchException
def 解析一个CSharp项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析一个CSharp项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):
@@ -335,7 +331,7 @@ def 解析一个CSharp项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, s
@CatchException
def 解析任意code项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 解析任意code项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
txt_pattern = plugin_kwargs.get("advanced_arg")
txt_pattern = txt_pattern.replace("", ",")
# 将要匹配的模式(例如: *.c, *.cpp, *.py, config.toml)
@@ -345,12 +341,9 @@ def 解析任意code项目(txt, llm_kwargs, plugin_kwargs, chatbot, history, sys
pattern_except_suffix = [_.lstrip(" ^*.,").rstrip(" ,") for _ in txt_pattern.split(" ") if _ != "" and _.strip().startswith("^*.")]
pattern_except_suffix += ['zip', 'rar', '7z', 'tar', 'gz'] # 避免解析压缩文件
# 将要忽略匹配的文件名(例如: ^README.md)
pattern_except_name = [_.lstrip(" ^*,").rstrip(" ,").replace(".", r"\.") # 移除左边通配符,移除右侧逗号,转义点号
for _ in txt_pattern.split(" ") # 以空格分割
if (_ != "" and _.strip().startswith("^") and not _.strip().startswith("^*.")) # ^开始,但不是^*.开始
]
pattern_except_name = [_.lstrip(" ^*,").rstrip(" ,").replace(".", "\.") for _ in txt_pattern.split(" ") if _ != "" and _.strip().startswith("^") and not _.strip().startswith("^*.")]
# 生成正则表达式
pattern_except = r'/[^/]+\.(' + "|".join(pattern_except_suffix) + ')$'
pattern_except = '/[^/]+\.(' + "|".join(pattern_except_suffix) + ')$'
pattern_except += '|/(' + "|".join(pattern_except_name) + ')$' if pattern_except_name != [] else ''
history.clear()

查看文件

@@ -2,7 +2,7 @@ from toolbox import CatchException, update_ui, get_conf
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
import datetime
@CatchException
def 同时问询(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 同时问询(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -10,7 +10,7 @@ def 同时问询(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
MULTI_QUERY_LLM_MODELS = get_conf('MULTI_QUERY_LLM_MODELS')
@@ -20,8 +20,8 @@ def 同时问询(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
# llm_kwargs['llm_model'] = 'chatglm&gpt-3.5-turbo&api2d-gpt-3.5-turbo' # 支持任意数量的llm接口,用&符号分隔
llm_kwargs['llm_model'] = MULTI_QUERY_LLM_MODELS # 支持任意数量的llm接口,用&符号分隔
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=txt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
inputs=txt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
sys_prompt=system_prompt,
retry_times_at_unknown_error=0
)
@@ -32,7 +32,7 @@ def 同时问询(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
@CatchException
def 同时问询_指定模型(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 同时问询_指定模型(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
@@ -40,7 +40,7 @@ def 同时问询_指定模型(txt, llm_kwargs, plugin_kwargs, chatbot, history,
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
@@ -52,8 +52,8 @@ def 同时问询_指定模型(txt, llm_kwargs, plugin_kwargs, chatbot, history,
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=txt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
inputs=txt, inputs_show_user=txt,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=history,
sys_prompt=system_prompt,
retry_times_at_unknown_error=0
)

查看文件

@@ -39,7 +39,7 @@ class AsyncGptTask():
try:
MAX_TOKEN_ALLO = 2560
i_say, history = input_clipping(i_say, history, max_token_limit=MAX_TOKEN_ALLO)
gpt_say_partial = predict_no_ui_long_connection(inputs=i_say, llm_kwargs=llm_kwargs, history=history, sys_prompt=sys_prompt,
gpt_say_partial = predict_no_ui_long_connection(inputs=i_say, llm_kwargs=llm_kwargs, history=history, sys_prompt=sys_prompt,
observe_window=observe_window[index], console_slience=True)
except ConnectionAbortedError as token_exceed_err:
print('至少一个线程任务Token溢出而失败', e)
@@ -120,7 +120,7 @@ class InterviewAssistant(AliyunASR):
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
self.plugin_wd.feed()
if self.event_on_result_chg.is_set():
if self.event_on_result_chg.is_set():
# called when some words have finished
self.event_on_result_chg.clear()
chatbot[-1] = list(chatbot[-1])
@@ -151,7 +151,7 @@ class InterviewAssistant(AliyunASR):
# add gpt task 创建子线程请求gpt,避免线程阻塞
history = chatbot2history(chatbot)
self.agt.add_async_gpt_task(self.buffered_sentence, len(chatbot)-1, llm_kwargs, history, system_prompt)
self.buffered_sentence = ""
chatbot.append(["[ 请讲话 ]", "[ 正在等您说完问题 ]"])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
@@ -166,7 +166,7 @@ class InterviewAssistant(AliyunASR):
@CatchException
def 语音助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 语音助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
# pip install -U openai-whisper
chatbot.append(["对话助手函数插件:使用时,双手离开鼠标键盘吧", "音频助手, 正在听您讲话(点击“停止”键可终止程序)..."])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面

查看文件

@@ -44,7 +44,7 @@ def 解析Paper(file_manifest, project_folder, llm_kwargs, plugin_kwargs, chatbo
@CatchException
def 读文章写摘要(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 读文章写摘要(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
history = [] # 清空历史,以免输入溢出
import glob, os
if os.path.exists(txt):

查看文件

@@ -20,10 +20,10 @@ def get_meta_information(url, chatbot, history):
proxies = get_conf('proxies')
headers = {
'User-Agent': 'Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/116.0.0.0 Safari/537.36',
'Accept-Encoding': 'gzip, deflate, br',
'Accept-Encoding': 'gzip, deflate, br',
'Accept-Language': 'en-US,en;q=0.9,zh-CN;q=0.8,zh;q=0.7',
'Cache-Control':'max-age=0',
'Accept': 'text/html,application/xhtml+xml,application/xml;q=0.9,image/avif,image/webp,image/apng,*/*;q=0.8,application/signed-exchange;v=b3;q=0.7',
'Accept': 'text/html,application/xhtml+xml,application/xml;q=0.9,image/avif,image/webp,image/apng,*/*;q=0.8,application/signed-exchange;v=b3;q=0.7',
'Connection': 'keep-alive'
}
try:
@@ -95,7 +95,7 @@ def get_meta_information(url, chatbot, history):
)
try: paper = next(search.results())
except: paper = None
is_match = paper is not None and string_similar(title, paper.title) > 0.90
# 如果在Arxiv上匹配失败,检索文章的历史版本的题目
@@ -132,7 +132,7 @@ def get_meta_information(url, chatbot, history):
return profile
@CatchException
def 谷歌检索小助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 谷歌检索小助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
disable_auto_promotion(chatbot=chatbot)
# 基本信息:功能、贡献者
chatbot.append([
@@ -146,8 +146,8 @@ def 谷歌检索小助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
import math
from bs4 import BeautifulSoup
except:
report_exception(chatbot, history,
a = f"解析项目: {txt}",
report_exception(chatbot, history,
a = f"解析项目: {txt}",
b = f"导入软件依赖失败。使用该模块需要额外依赖,安装方法```pip install --upgrade beautifulsoup4 arxiv```。")
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面
return
@@ -163,7 +163,7 @@ def 谷歌检索小助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
if len(meta_paper_info_list[:batchsize]) > 0:
i_say = "下面是一些学术文献的数据,提取出以下内容:" + \
"1、英文题目;2、中文题目翻译;3、作者;4、arxiv公开is_paper_in_arxiv;4、引用数量cite;5、中文摘要翻译。" + \
f"以下是信息源:{str(meta_paper_info_list[:batchsize])}"
f"以下是信息源:{str(meta_paper_info_list[:batchsize])}"
inputs_show_user = f"请分析此页面中出现的所有文章:{txt},这是第{batch+1}"
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
@@ -175,11 +175,11 @@ def 谷歌检索小助手(txt, llm_kwargs, plugin_kwargs, chatbot, history, syst
history.extend([ f"{batch+1}", gpt_say ])
meta_paper_info_list = meta_paper_info_list[batchsize:]
chatbot.append(["状态?",
chatbot.append(["状态?",
"已经全部完成,您可以试试让AI写一个Related Works,例如您可以继续输入Write a \"Related Works\" section about \"你搜索的研究领域\" for me."])
msg = '正常'
yield from update_ui(chatbot=chatbot, history=history, msg=msg) # 刷新界面
path = write_history_to_file(history)
promote_file_to_downloadzone(path, chatbot=chatbot)
chatbot.append(("完成了吗?", path));
chatbot.append(("完成了吗?", path));
yield from update_ui(chatbot=chatbot, history=history, msg=msg) # 刷新界面

查看文件

@@ -11,7 +11,7 @@ import os
@CatchException
def 猜你想问(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 猜你想问(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
if txt:
show_say = txt
prompt = txt+'\n回答完问题后,再列出用户可能提出的三个问题。'
@@ -32,7 +32,7 @@ def 猜你想问(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt
@CatchException
def 清除缓存(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 清除缓存(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
chatbot.append(['清除本地缓存数据', '执行中. 删除数据'])
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面

查看文件

@@ -1,99 +1,29 @@
from toolbox import CatchException, update_ui
from crazy_functions.crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
from .crazy_utils import request_gpt_model_in_new_thread_with_ui_alive
import datetime
高阶功能模板函数示意图 = f"""
```mermaid
flowchart TD
%% <gpt_academic_hide_mermaid_code> 一个特殊标记,用于在生成mermaid图表时隐藏代码块
subgraph 函数调用["函数调用过程"]
AA["输入栏用户输入的文本(txt)"] --> BB["gpt模型参数(llm_kwargs)"]
BB --> CC["插件模型参数(plugin_kwargs)"]
CC --> DD["对话显示框的句柄(chatbot)"]
DD --> EE["对话历史(history)"]
EE --> FF["系统提示词(system_prompt)"]
FF --> GG["当前用户信息(web_port)"]
A["开始(查询5天历史事件)"]
A --> B["获取当前月份和日期"]
B --> C["生成历史事件查询提示词"]
C --> D["调用大模型"]
D --> E["更新界面"]
E --> F["记录历史"]
F --> |"下一天"| B
end
```
"""
@CatchException
def 高阶功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
def 高阶功能模板函数(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port):
"""
# 高阶功能模板函数示意图https://mermaid.live/edit#pako:eNptk1tvEkEYhv8KmattQpvlvOyFCcdeeaVXuoYssBwie8gyhCIlqVoLhrbbtAWNUpEGUkyMEDW2Fmn_DDOL_8LZHdOwxrnamX3f7_3mmZk6yKhZCfAgV1KrmYKoQ9fDuKC4yChX0nld1Aou1JzjznQ5fWmejh8LYHW6vG2a47YAnlCLNSIRolnenKBXI_zRIBrcuqRT890u7jZx7zMDt-AaMbnW1--5olGiz2sQjwfoQxsZL0hxplSSU0-rop4vrzmKR6O2JxYjHmwcL2Y_HDatVMkXlf86YzHbGY9bO5j8XE7O8Nsbc3iNB3ukL2SMcH-XIQBgWoVOZzxuOxOJOyc63EPGV6ZQLENVrznViYStTiaJ2vw2M2d9bByRnOXkgCnXylCSU5quyto_IcmkbdvctELmJ-j1ASW3uB3g5xOmKqVTmqr_Na3AtuS_dtBFm8H90XJyHkDDT7S9xXWb4HGmRChx64AOL5HRpUm411rM5uh4H78Z4V7fCZzytjZz2seto9XaNPFue07clLaVZF8UNLygJ-VES8lah_n-O-5Ozc7-77NzJ0-K0yr0ZYrmHdqAk50t2RbA4qq9uNohBASw7YpSgaRkLWCCAtxAlnRZLGbJba9bPwUAC5IsCYAnn1kpJ1ZKUACC0iBSsQLVBzUlA3ioVyQ3qGhZEUrxokiehAz4nFgqk1VNVABfB1uAD_g2_AGPl-W8nMcbCvsDblADfNCz4feyobDPy3rYEMtxwYYbPFNVUoHdCPmDHBv2cP4AMfrCbiBli-Q-3afv0X6WdsIjW2-10fgDy1SAig
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
plugin_kwargs 插件模型的参数,用于灵活调整复杂功能的各种参数
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
web_port 当前软件运行的端口号
"""
history = [] # 清空历史,以免输入溢出
chatbot.append((
"您正在调用插件:历史上的今天",
"[Local Message] 请注意,您正在调用一个[函数插件]的模板,该函数面向希望实现更多有趣功能的开发者,它可以作为创建新功能函数的模板该函数只有20多行代码。此外我们也提供可同步处理大量文件的多线程Demo供您参考。您若希望分享新的功能模组,请不吝PR" + 高阶功能模板函数示意图))
chatbot.append(("这是什么功能?", "[Local Message] 请注意,您正在调用一个[函数插件]的模板,该函数面向希望实现更多有趣功能的开发者,它可以作为创建新功能函数的模板该函数只有20多行代码。此外我们也提供可同步处理大量文件的多线程Demo供您参考。您若希望分享新的功能模组,请不吝PR"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
for i in range(5):
currentMonth = (datetime.date.today() + datetime.timedelta(days=i)).month
currentDay = (datetime.date.today() + datetime.timedelta(days=i)).day
i_say = f'历史中哪些事件发生在{currentMonth}{currentDay}日?列举两条并发送相关图片。发送图片时,请使用Markdown,将Unsplash API中的PUT_YOUR_QUERY_HERE替换成描述该事件的一个最重要的单词。'
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
inputs=i_say, inputs_show_user=i_say,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt="当你想发送一张照片时,请使用Markdown, 并且不要有反斜线, 不要用代码块。使用 Unsplash API (https://source.unsplash.com/1280x720/? < PUT_YOUR_QUERY_HERE >)。"
)
chatbot[-1] = (i_say, gpt_say)
history.append(i_say);history.append(gpt_say)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
PROMPT = """
请你给出围绕“{subject}”的逻辑关系图,使用mermaid语法,mermaid语法举例
```mermaid
graph TD
P(编程) --> L1(Python)
P(编程) --> L2(C)
P(编程) --> L3(C++)
P(编程) --> L4(Javascipt)
P(编程) --> L5(PHP)
```
"""
@CatchException
def 测试图表渲染(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request):
"""
txt 输入栏用户输入的文本,例如需要翻译的一段话,再例如一个包含了待处理文件的路径
llm_kwargs gpt模型参数,如温度和top_p等,一般原样传递下去就行
plugin_kwargs 插件模型的参数,用于灵活调整复杂功能的各种参数
chatbot 聊天显示框的句柄,用于显示给用户
history 聊天历史,前情提要
system_prompt 给gpt的静默提醒
user_request 当前用户的请求信息IP地址等
"""
history = [] # 清空历史,以免输入溢出
chatbot.append(("这是什么功能?", "一个测试mermaid绘制图表的功能,您可以在输入框中输入一些关键词,然后使用mermaid+llm绘制图表。"))
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 由于请求gpt需要一段时间,我们先及时地做一次界面更新
if txt == "": txt = "空白的输入栏" # 调皮一下
i_say_show_user = f'请绘制有关“{txt}”的逻辑关系图。'
i_say = PROMPT.format(subject=txt)
gpt_say = yield from request_gpt_model_in_new_thread_with_ui_alive(
inputs=i_say,
inputs_show_user=i_say_show_user,
llm_kwargs=llm_kwargs, chatbot=chatbot, history=[],
sys_prompt=""
)
history.append(i_say); history.append(gpt_say)
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新
yield from update_ui(chatbot=chatbot, history=history) # 刷新界面 # 界面更新

查看文件

@@ -1,12 +1,12 @@
## ===================================================
# docker-compose.yml
# docker-compose.yml
## ===================================================
# 1. 请在以下方案中选择任意一种,然后删除其他的方案
# 2. 修改你选择的方案中的environment环境变量,详情请见github wiki或者config.py
# 3. 选择一种暴露服务端口的方法,并对相应的配置做出修改:
# 方法1: 适用于Linux,很方便,可惜windows不支持与宿主的网络融合为一体,这个是默认配置
# 方法1: 适用于Linux,很方便,可惜windows不支持与宿主的网络融合为一体,这个是默认配置
# network_mode: "host"
# 方法2: 适用于所有系统包括Windows和MacOS端口映射,把容器的端口映射到宿主的端口注意您需要先删除network_mode: "host",再追加以下内容)
# 方法2: 适用于所有系统包括Windows和MacOS端口映射,把容器的端口映射到宿主的端口注意您需要先删除network_mode: "host",再追加以下内容)
# ports:
# - "12345:12345" # 注意12345必须与WEB_PORT环境变量相互对应
# 4. 最后`docker-compose up`运行
@@ -25,7 +25,7 @@
## ===================================================
## ===================================================
## 方案零 部署项目的全部能力这个是包含cuda和latex的大型镜像。如果您网速慢、硬盘小或没有显卡,则不推荐使用这个
## 方案零 部署项目的全部能力这个是包含cuda和latex的大型镜像。如果您网速慢、硬盘小或没有显卡,则不推荐使用这个
## ===================================================
version: '3'
services:
@@ -63,10 +63,10 @@ services:
# count: 1
# capabilities: [gpu]
# WEB_PORT暴露方法1: 适用于Linux与宿主的网络融合
# WEB_PORT暴露方法1: 适用于Linux与宿主的网络融合
network_mode: "host"
# WEB_PORT暴露方法2: 适用于所有系统端口映射
# WEB_PORT暴露方法2: 适用于所有系统端口映射
# ports:
# - "12345:12345" # 12345必须与WEB_PORT相互对应
@@ -75,8 +75,10 @@ services:
bash -c "python3 -u main.py"
## ===================================================
## 方案一 如果不需要运行本地模型(仅 chatgpt, azure, 星火, 千帆, claude 等在线大模型服务)
## 方案一 如果不需要运行本地模型(仅 chatgpt, azure, 星火, 千帆, claude 等在线大模型服务)
## ===================================================
version: '3'
services:
@@ -95,16 +97,16 @@ services:
# DEFAULT_WORKER_NUM: ' 10 '
# AUTHENTICATION: ' [("username", "passwd"), ("username2", "passwd2")] '
# 「WEB_PORT暴露方法1: 适用于Linux」与宿主的网络融合
# 与宿主的网络融合
network_mode: "host"
# 启动命令
# 不使用代理网络拉取最新代码
command: >
bash -c "python3 -u main.py"
### ===================================================
### 方案二 如果需要运行ChatGLM + Qwen + MOSS等本地模型
### 方案二 如果需要运行ChatGLM + Qwen + MOSS等本地模型
### ===================================================
version: '3'
services:
@@ -127,11 +129,9 @@ services:
runtime: nvidia
devices:
- /dev/nvidia0:/dev/nvidia0
# 「WEB_PORT暴露方法1: 适用于Linux」与宿主的网络融合
# 与宿主的网络融合
network_mode: "host"
# 启动命令
command: >
bash -c "python3 -u main.py"
@@ -139,9 +139,8 @@ services:
# command: >
# bash -c "pip install -r request_llms/requirements_qwen.txt && python3 -u main.py"
### ===================================================
### 方案三 如果需要运行ChatGPT + LLAMA + 盘古 + RWKV本地模型
### 方案三 如果需要运行ChatGPT + LLAMA + 盘古 + RWKV本地模型
### ===================================================
version: '3'
services:
@@ -164,17 +163,17 @@ services:
runtime: nvidia
devices:
- /dev/nvidia0:/dev/nvidia0
# 「WEB_PORT暴露方法1: 适用于Linux」与宿主的网络融合
# 与宿主的网络融合
network_mode: "host"
# 启动命令
# 不使用代理网络拉取最新代码
command: >
python3 -u main.py
## ===================================================
## 方案四 ChatGPT + Latex
## 方案四 ChatGPT + Latex
## ===================================================
version: '3'
services:
@@ -191,16 +190,16 @@ services:
DEFAULT_WORKER_NUM: ' 10 '
WEB_PORT: ' 12303 '
# 「WEB_PORT暴露方法1: 适用于Linux」与宿主的网络融合
# 与宿主的网络融合
network_mode: "host"
# 启动命令
# 不使用代理网络拉取最新代码
command: >
bash -c "python3 -u main.py"
## ===================================================
## 方案五 ChatGPT + 语音助手 (请先阅读 docs/use_audio.md
## 方案五 ChatGPT + 语音助手 (请先阅读 docs/use_audio.md
## ===================================================
version: '3'
services:
@@ -224,9 +223,10 @@ services:
# (无需填写) ALIYUN_ACCESSKEY: ' LTAI5q6BrFUzoRXVGUWnekh1 '
# (无需填写) ALIYUN_SECRET: ' eHmI20AVWIaQZ0CiTD2bGQVsaP9i68 '
# 「WEB_PORT暴露方法1: 适用于Linux」与宿主的网络融合
# 与宿主的网络融合
network_mode: "host"
# 启动命令
# 不使用代理网络拉取最新代码
command: >
bash -c "python3 -u main.py"

查看文件

@@ -1 +1,2 @@
# 此Dockerfile不再维护,请前往docs/GithubAction+ChatGLM+Moss

查看文件

@@ -1 +1 @@
# 此Dockerfile不再维护,请前往docs/GithubAction+JittorLLMs
# 此Dockerfile不再维护,请前往docs/GithubAction+JittorLLMs

查看文件

@@ -1,53 +0,0 @@
# docker build -t gpt-academic-all-capacity -f docs/GithubAction+AllCapacity --network=host --build-arg http_proxy=http://localhost:10881 --build-arg https_proxy=http://localhost:10881 .
# docker build -t gpt-academic-all-capacity -f docs/GithubAction+AllCapacityBeta --network=host .
# docker run -it --net=host gpt-academic-all-capacity bash
# 从NVIDIA源,从而支持显卡检查宿主的nvidia-smi中的cuda版本必须>=11.3
FROM fuqingxu/11.3.1-runtime-ubuntu20.04-with-texlive:latest
# use python3 as the system default python
WORKDIR /gpt
RUN curl -sS https://bootstrap.pypa.io/get-pip.py | python3.8
# # 非必要步骤,更换pip源 (以下三行,可以删除)
# RUN echo '[global]' > /etc/pip.conf && \
# echo 'index-url = https://mirrors.aliyun.com/pypi/simple/' >> /etc/pip.conf && \
# echo 'trusted-host = mirrors.aliyun.com' >> /etc/pip.conf
# 下载pytorch
RUN python3 -m pip install torch torchvision --extra-index-url https://download.pytorch.org/whl/cu113
# 准备pip依赖
RUN python3 -m pip install openai numpy arxiv rich
RUN python3 -m pip install colorama Markdown pygments pymupdf
RUN python3 -m pip install python-docx moviepy pdfminer
RUN python3 -m pip install zh_langchain==0.2.1 pypinyin
RUN python3 -m pip install rarfile py7zr
RUN python3 -m pip install aliyun-python-sdk-core==2.13.3 pyOpenSSL webrtcvad scipy git+https://github.com/aliyun/alibabacloud-nls-python-sdk.git
# 下载分支
WORKDIR /gpt
RUN git clone --depth=1 https://github.com/binary-husky/gpt_academic.git
WORKDIR /gpt/gpt_academic
RUN git clone --depth=1 https://github.com/OpenLMLab/MOSS.git request_llms/moss
RUN python3 -m pip install -r requirements.txt
RUN python3 -m pip install -r request_llms/requirements_moss.txt
RUN python3 -m pip install -r request_llms/requirements_qwen.txt
RUN python3 -m pip install -r request_llms/requirements_chatglm.txt
RUN python3 -m pip install -r request_llms/requirements_newbing.txt
RUN python3 -m pip install nougat-ocr
# 预热Tiktoken模块
RUN python3 -c 'from check_proxy import warm_up_modules; warm_up_modules()'
# 安装知识库插件的额外依赖
RUN apt-get update && apt-get install libgl1 -y
RUN pip3 install transformers protobuf langchain sentence-transformers faiss-cpu nltk beautifulsoup4 bitsandbytes tabulate icetk --upgrade
RUN pip3 install unstructured[all-docs] --upgrade
RUN python3 -c 'from check_proxy import warm_up_vectordb; warm_up_vectordb()'
RUN rm -rf /usr/local/lib/python3.8/dist-packages/tests
# COPY .cache /root/.cache
# COPY config_private.py config_private.py
# 启动
CMD ["python3", "-u", "main.py"]

查看文件

@@ -13,7 +13,7 @@ COPY . .
RUN pip3 install -r requirements.txt
# 安装语音插件的额外依赖
RUN pip3 install aliyun-python-sdk-core==2.13.3 pyOpenSSL webrtcvad scipy git+https://github.com/aliyun/alibabacloud-nls-python-sdk.git
RUN pip3 install pyOpenSSL scipy git+https://github.com/aliyun/alibabacloud-nls-python-sdk.git
# 可选步骤,用于预热模块
RUN python3 -c 'from check_proxy import warm_up_modules; warm_up_modules()'

查看文件

@@ -15,7 +15,7 @@ WORKDIR /gpt
RUN pip3 install openai numpy arxiv rich
RUN pip3 install colorama Markdown pygments pymupdf
RUN pip3 install python-docx pdfminer
RUN pip3 install python-docx pdfminer
RUN pip3 install nougat-ocr
# 装载项目文件

查看文件

@@ -17,10 +17,10 @@ RUN apt-get update && apt-get install libgl1 -y
RUN pip3 install torch torchvision --index-url https://download.pytorch.org/whl/cpu
RUN pip3 install transformers protobuf langchain sentence-transformers faiss-cpu nltk beautifulsoup4 bitsandbytes tabulate icetk --upgrade
RUN pip3 install unstructured[all-docs] --upgrade
RUN python3 -c 'from check_proxy import warm_up_vectordb; warm_up_vectordb()'
# 可选步骤,用于预热模块
RUN python3 -c 'from check_proxy import warm_up_modules; warm_up_modules()'
RUN python3 -c 'from check_proxy import warm_up_vectordb; warm_up_vectordb()'
# 启动
CMD ["python3", "-u", "main.py"]

查看文件

@@ -2,9 +2,9 @@
> **ملحوظة**
>
>
> تمت ترجمة هذا الملف README باستخدام GPT (بواسطة المكون الإضافي لهذا المشروع) وقد لا تكون الترجمة 100٪ موثوقة، يُرجى التمييز بعناية بنتائج الترجمة.
>
>
> 2023.11.7: عند تثبيت التبعيات، يُرجى اختيار الإصدار المُحدد في `requirements.txt`. الأمر للتثبيت: `pip install -r requirements.txt`.
# <div align=center><img src="logo.png" width="40"> GPT الأكاديمي</div>
@@ -12,14 +12,14 @@
**إذا كنت تحب هذا المشروع، فيُرجى إعطاؤه Star. لترجمة هذا المشروع إلى لغة عشوائية باستخدام GPT، قم بقراءة وتشغيل [`multi_language.py`](multi_language.py) (تجريبي).
> **ملحوظة**
>
>
> 1. يُرجى ملاحظة أنها الإضافات (الأزرار) المميزة فقط التي تدعم قراءة الملفات، وبعض الإضافات توجد في قائمة منسدلة في منطقة الإضافات. بالإضافة إلى ذلك، نرحب بأي Pull Request جديد بأعلى أولوية لأي إضافة جديدة.
>
>
> 2. تُوضّح كل من الملفات في هذا المشروع وظيفتها بالتفصيل في [تقرير الفهم الذاتي `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). يمكنك في أي وقت أن تنقر على إضافة وظيفة ذات صلة لاستدعاء GPT وإعادة إنشاء تقرير الفهم الذاتي للمشروع. للأسئلة الشائعة [`الويكي`](https://github.com/binary-husky/gpt_academic/wiki). [طرق التثبيت العادية](#installation) | [نصب بنقرة واحدة](https://github.com/binary-husky/gpt_academic/releases) | [تعليمات التكوين](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明).
>
>
> 3. يتم توافق هذا المشروع مع ودعم توصيات اللغة البيجائية الأكبر شمولًا وشجاعة لمثل ChatGLM. يمكنك توفير العديد من مفاتيح Api المشتركة في تكوين الملف، مثل `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. عند تبديل مؤقت لـ `API_KEY`، قم بإدخال `API_KEY` المؤقت في منطقة الإدخال ثم اضغط على زر "إدخال" لجعله ساري المفعول.
<div align="center">
@@ -46,7 +46,7 @@
⭐إضغط على وكيل "شارلوت الذكي" | [وظائف] استكمال الذكاء للكأس الأول للذكاء المكتسب من مايكروسوفت، اكتشاف وتطوير عالمي العميل
تبديل الواجهة المُظلمة | يمكنك التبديل إلى الواجهة المظلمة بإضافة ```/?__theme=dark``` إلى نهاية عنوان URL في المتصفح
دعم المزيد من نماذج LLM | دعم لجميع GPT3.5 وGPT4 و[ChatGLM2 في جامعة ثوه في لين](https://github.com/THUDM/ChatGLM2-6B) و[MOSS في جامعة فودان](https://github.com/OpenLMLab/MOSS)
⭐تحوي انطباعة "ChatGLM2" | يدعم استيراد "ChatGLM2" ويوفر إضافة المساعدة في تعديله
⭐تحوي انطباعة "ChatGLM2" | يدعم استيراد "ChatGLM2" ويوفر إضافة المساعدة في تعديله
دعم المزيد من نماذج "LLM"، دعم [نشر الحديس](https://huggingface.co/spaces/qingxu98/gpt-academic) | انضم إلى واجهة "Newbing" (Bing الجديدة)،نقدم نماذج Jittorllms الجديدة تؤيدهم [LLaMA](https://github.com/facebookresearch/llama) و [盘古α](https://openi.org.cn/pangu/)
⭐حزمة "void-terminal" للشبكة (pip) | قم بطلب كافة وظائف إضافة هذا المشروع في python بدون واجهة رسومية (قيد التطوير)
⭐PCI-Express لإعلام (PCI) | [وظائف] باللغة الطبيعية، قم بتنفيذ المِهام الأخرى في المشروع
@@ -200,8 +200,8 @@ docker-compose up
```
"ترجمة سوبر الإنجليزية إلى العربية": {
# البادئة، ستتم إضافتها قبل إدخالاتك. مثلاً، لوصف ما تريده مثل ترجمة أو شرح كود أو تلوين وهلم جرا
"بادئة": "يرجى ترجمة النص التالي إلى العربية ثم استخدم جدول Markdown لشرح المصطلحات المختصة المذكورة في النص:\n\n",
"بادئة": "يرجى ترجمة النص التالي إلى العربية ثم استخدم جدول Markdown لشرح المصطلحات المختصة المذكورة في النص:\n\n",
# اللاحقة، سيتم إضافتها بعد إدخالاتك. يمكن استخدامها لوضع علامات اقتباس حول إدخالك.
"لاحقة": "",
},
@@ -341,3 +341,4 @@ https://github.com/oobabooga/one-click-installers
# المزيد:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -18,11 +18,11 @@ To translate this project to arbitrary language with GPT, read and run [`multi_l
> 1.Please note that only plugins (buttons) highlighted in **bold** support reading files, and some plugins are located in the **dropdown menu** in the plugin area. Additionally, we welcome and process any new plugins with the **highest priority** through PRs.
>
> 2.The functionalities of each file in this project are described in detail in the [self-analysis report `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). As the version iterates, you can also click on the relevant function plugin at any time to call GPT to regenerate the project's self-analysis report. Common questions are in the [`wiki`](https://github.com/binary-husky/gpt_academic/wiki). [Regular installation method](#installation) | [One-click installation script](https://github.com/binary-husky/gpt_academic/releases) | [Configuration instructions](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明).
>
>
> 3.This project is compatible with and encourages the use of domestic large-scale language models such as ChatGLM. Multiple api-keys can be used together. You can fill in the configuration file with `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"` to temporarily switch `API_KEY` during input, enter the temporary `API_KEY`, and then press enter to apply it.
<div align="center">
@@ -126,7 +126,7 @@ python -m pip install -r requirements.txt # This step is the same as the pip ins
【Optional Step】If you need to support THU ChatGLM2 or Fudan MOSS as backends, you need to install additional dependencies (Prerequisites: Familiar with Python + Familiar with Pytorch + Sufficient computer configuration):
```sh
# 【Optional Step I】Support THU ChatGLM2. Note: If you encounter the "Call ChatGLM fail unable to load ChatGLM parameters" error, refer to the following: 1. The default installation above is for torch+cpu version. To use cuda, uninstall torch and reinstall torch+cuda; 2. If the model cannot be loaded due to insufficient local configuration, you can modify the model accuracy in request_llm/bridge_chatglm.py. Change AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) to AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# 【Optional Step II】Support Fudan MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -204,8 +204,8 @@ For example:
```
"Super Translation": {
# Prefix: will be added before your input. For example, used to describe your request, such as translation, code explanation, proofreading, etc.
"Prefix": "Please translate the following paragraph into Chinese and then explain each proprietary term in the text using a markdown table:\n\n",
"Prefix": "Please translate the following paragraph into Chinese and then explain each proprietary term in the text using a markdown table:\n\n",
# Suffix: will be added after your input. For example, used to wrap your input in quotation marks along with the prefix.
"Suffix": "",
},
@@ -355,3 +355,4 @@ https://github.com/oobabooga/one-click-installers
# More:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -2,9 +2,9 @@
> **Remarque**
>
>
> Ce README a été traduit par GPT (implémenté par le plugin de ce projet) et n'est pas fiable à 100 %. Veuillez examiner attentivement les résultats de la traduction.
>
>
> 7 novembre 2023 : Lors de l'installation des dépendances, veuillez choisir les versions **spécifiées** dans le fichier `requirements.txt`. Commande d'installation : `pip install -r requirements.txt`.
@@ -12,7 +12,7 @@
**Si vous aimez ce projet, merci de lui donner une étoile ; si vous avez inventé des raccourcis ou des plugins utiles, n'hésitez pas à envoyer des demandes d'extraction !**
Si vous aimez ce projet, veuillez lui donner une étoile.
Si vous aimez ce projet, veuillez lui donner une étoile.
Pour traduire ce projet dans une langue arbitraire avec GPT, lisez et exécutez [`multi_language.py`](multi_language.py) (expérimental).
> **Remarque**
@@ -22,7 +22,7 @@ Pour traduire ce projet dans une langue arbitraire avec GPT, lisez et exécutez
> 2. Les fonctionnalités de chaque fichier de ce projet sont spécifiées en détail dans [le rapport d'auto-analyse `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic个项目自译解报告). Vous pouvez également cliquer à tout moment sur les plugins de fonctions correspondants pour appeler GPT et générer un rapport d'auto-analyse du projet. Questions fréquemment posées [wiki](https://github.com/binary-husky/gpt_academic/wiki). [Méthode d'installation standard](#installation) | [Script d'installation en un clic](https://github.com/binary-husky/gpt_academic/releases) | [Instructions de configuration](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明)..
>
> 3. Ce projet est compatible avec et recommande l'expérimentation de grands modèles de langage chinois tels que ChatGLM, etc. Prend en charge plusieurs clés API, vous pouvez les remplir dans le fichier de configuration comme `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. Pour changer temporairement la clé API, entrez la clé API temporaire dans la zone de saisie, puis appuyez sur Entrée pour soumettre et activer celle-ci.
<div align="center">
@@ -128,7 +128,7 @@ python -m pip install -r requirements.txt # This step is the same as the pip ins
[Optional Steps] If you need to support Tsinghua ChatGLM2/Fudan MOSS as backends, you need to install additional dependencies (Prerequisites: Familiar with Python + Have used PyTorch + Sufficient computer configuration):
```sh
# [Optional Step I] Support Tsinghua ChatGLM2. Comment on this note: If you encounter the error "Call ChatGLM generated an error and cannot load the parameters of ChatGLM", refer to the following: 1: The default installation is the torch+cpu version. To use cuda, you need to uninstall torch and reinstall torch+cuda; 2: If the model cannot be loaded due to insufficient computer configuration, you can modify the model precision in request_llm/bridge_chatglm.py. Change AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) to AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True).
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# [Optional Step II] Support Fudan MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -201,7 +201,7 @@ Par exemple:
"Traduction avancée de l'anglais vers le français": {
# Préfixe, ajouté avant votre saisie. Par exemple, utilisez-le pour décrire votre demande, telle que la traduction, l'explication du code, l'amélioration, etc.
"Prefix": "Veuillez traduire le contenu suivant en français, puis expliquer chaque terme propre à la langue anglaise utilisé dans le texte à l'aide d'un tableau markdown : \n\n",
# Suffixe, ajouté après votre saisie. Par exemple, en utilisant le préfixe, vous pouvez entourer votre contenu par des guillemets.
"Suffix": "",
},
@@ -354,3 +354,4 @@ https://github.com/oobabooga/one-click-installers
# Plus
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -2,9 +2,9 @@
> **Hinweis**
>
> Dieses README wurde mithilfe der GPT-Übersetzung (durch das Plugin dieses Projekts) erstellt und ist nicht zu 100 % zuverlässig. Bitte überprüfen Sie die Übersetzungsergebnisse sorgfältig.
>
>
> Dieses README wurde mithilfe der GPT-Übersetzung (durch das Plugin dieses Projekts) erstellt und ist nicht zu 100 % zuverlässig. Bitte überprüfen Sie die Übersetzungsergebnisse sorgfältig.
>
> 7. November 2023: Beim Installieren der Abhängigkeiten bitte nur die in der `requirements.txt` **angegebenen Versionen** auswählen. Installationsbefehl: `pip install -r requirements.txt`.
@@ -12,19 +12,19 @@
**Wenn Ihnen dieses Projekt gefällt, geben Sie ihm bitte einen Star. Wenn Sie praktische Tastenkombinationen oder Plugins entwickelt haben, sind Pull-Anfragen willkommen!**
Wenn Ihnen dieses Projekt gefällt, geben Sie ihm bitte einen Star.
Wenn Ihnen dieses Projekt gefällt, geben Sie ihm bitte einen Star.
Um dieses Projekt mit GPT in eine beliebige Sprache zu übersetzen, lesen Sie [`multi_language.py`](multi_language.py) (experimentell).
> **Hinweis**
>
> 1. Beachten Sie bitte, dass nur die mit **hervorgehobenen** Plugins (Schaltflächen) Dateien lesen können. Einige Plugins befinden sich im **Drop-down-Menü** des Plugin-Bereichs. Außerdem freuen wir uns über jede neue Plugin-PR mit **höchster Priorität**.
>
>
> 2. Die Funktionen jeder Datei in diesem Projekt sind im [Selbstanalysebericht `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPT-Academic-Selbstanalysebericht) ausführlich erläutert. Sie können jederzeit auf die relevanten Funktions-Plugins klicken und GPT aufrufen, um den Selbstanalysebericht des Projekts neu zu generieren. Häufig gestellte Fragen finden Sie im [`Wiki`](https://github.com/binary-husky/gpt_academic/wiki). [Standardinstallationsmethode](#installation) | [Ein-Klick-Installationsskript](https://github.com/binary-husky/gpt_academic/releases) | [Konfigurationsanleitung](https://github.com/binary-husky/gpt_academic/wiki/Projekt-Konfigurationsanleitung).
>
>
> 3. Dieses Projekt ist kompatibel mit und unterstützt auch die Verwendung von inländischen Sprachmodellen wie ChatGLM. Die gleichzeitige Verwendung mehrerer API-Schlüssel ist möglich, indem Sie sie in der Konfigurationsdatei wie folgt angeben: `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. Wenn Sie den `API_KEY` vorübergehend ändern möchten, geben Sie vorübergehend den temporären `API_KEY` im Eingabebereich ein und drücken Sie die Eingabetaste, um die Änderung wirksam werden zu lassen.
<div align="center">
@@ -93,7 +93,7 @@ Weitere Funktionen anzeigen (z. B. Bildgenerierung) …… | Siehe das Ende dies
</div>
# Installation
### Installation Method I: Run directly (Windows, Linux or MacOS)
### Installation Method I: Run directly (Windows, Linux or MacOS)
1. Download the project
```sh
@@ -128,7 +128,7 @@ python -m pip install -r requirements.txt # This step is the same as installing
[Optional] If you need to support Tsinghua ChatGLM2/Fudan MOSS as the backend, you need to install additional dependencies (Prerequisites: Familiar with Python + Have used PyTorch + Strong computer configuration):
```sh
# [Optional Step I] Support Tsinghua ChatGLM2. Tsinghua ChatGLM note: If you encounter the error "Call ChatGLM fail cannot load ChatGLM parameters normally", refer to the following: 1: The default installation above is torch+cpu version. To use cuda, you need to uninstall torch and reinstall torch+cuda; 2: If you cannot load the model due to insufficient computer configuration, you can modify the model accuracy in request_llm/bridge_chatglm.py. Change AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) to AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# [Optional Step II] Support Fudan MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -207,8 +207,8 @@ Beispiel:
```
"Übersetzung von Englisch nach Chinesisch": {
# Präfix, wird vor Ihrer Eingabe hinzugefügt. Zum Beispiel, um Ihre Anforderungen zu beschreiben, z.B. Übersetzen, Code erklären, verbessern usw.
"Präfix": "Bitte übersetzen Sie den folgenden Abschnitt ins Chinesische und erklären Sie dann jedes Fachwort in einer Markdown-Tabelle:\n\n",
"Präfix": "Bitte übersetzen Sie den folgenden Abschnitt ins Chinesische und erklären Sie dann jedes Fachwort in einer Markdown-Tabelle:\n\n",
# Suffix, wird nach Ihrer Eingabe hinzugefügt. Zum Beispiel, um Ihre Eingabe in Anführungszeichen zu setzen.
"Suffix": "",
},
@@ -361,3 +361,4 @@ https://github.com/oobabooga/one-click-installers
# Weitere:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -12,7 +12,7 @@
**Se ti piace questo progetto, per favore dagli una stella; se hai idee o plugin utili, fai una pull request!**
Se ti piace questo progetto, dagli una stella.
Se ti piace questo progetto, dagli una stella.
Per tradurre questo progetto in qualsiasi lingua con GPT, leggi ed esegui [`multi_language.py`](multi_language.py) (sperimentale).
> **Nota**
@@ -20,11 +20,11 @@ Per tradurre questo progetto in qualsiasi lingua con GPT, leggi ed esegui [`mult
> 1. Fai attenzione che solo i plugin (pulsanti) **evidenziati** supportano la lettura dei file, alcuni plugin si trovano nel **menu a tendina** nell'area dei plugin. Inoltre, accogliamo e gestiamo con **massima priorità** qualsiasi nuovo plugin attraverso pull request.
>
> 2. Le funzioni di ogni file in questo progetto sono descritte in dettaglio nel [rapporto di traduzione automatica del progetto `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). Con l'iterazione della versione, puoi anche fare clic sui plugin delle funzioni rilevanti in qualsiasi momento per richiamare GPT e rigenerare il rapporto di auto-analisi del progetto. Domande frequenti [`wiki`](https://github.com/binary-husky/gpt_academic/wiki) | [Metodo di installazione standard](#installazione) | [Script di installazione one-click](https://github.com/binary-husky/gpt_academic/releases) | [Configurazione](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明)。
>
>
> 3. Questo progetto è compatibile e incoraggia l'uso di modelli di linguaggio di grandi dimensioni nazionali, come ChatGLM. Supporto per la coesistenza di più chiavi API, puoi compilare nel file di configurazione come `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. Quando è necessario sostituire temporaneamente `API_KEY`, inserisci temporaneamente `API_KEY` nell'area di input e premi Invio per confermare.
<div align="center">
@@ -128,7 +128,7 @@ python -m pip install -r requirements.txt # Questo passaggio è identico alla pr
[Optional] Se desideri utilizzare ChatGLM2 di Tsinghua/Fudan MOSS come backend, è necessario installare ulteriori dipendenze (Requisiti: conoscenza di Python + esperienza con Pytorch + hardware potente):
```sh
# [Optional Step I] Supporto per ChatGLM2 di Tsinghua. Note di ChatGLM di Tsinghua: Se si verifica l'errore "Call ChatGLM fail non può caricare i parametri di ChatGLM", fare riferimento a quanto segue: 1: L'installazione predefinita è la versione torch+cpu, per usare cuda è necessario disinstallare torch ed installare nuovamente la versione con torch+cuda; 2: Se il modello non può essere caricato a causa di una configurazione insufficiente, è possibile modificare la precisione del modello in request_llm/bridge_chatglm.py, sostituendo AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) con AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# [Optional Step II] Supporto per Fudan MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -206,8 +206,8 @@ Ad esempio,
```
"Traduzione avanzata Cinese-Inglese": {
# Prefisso, sarà aggiunto prima del tuo input. Ad esempio, utilizzato per descrivere la tua richiesta, come traduzione, spiegazione del codice, rifinitura, ecc.
"Prefisso": "Si prega di tradurre il seguente testo in cinese e fornire spiegazione per i termini tecnici utilizzati, utilizzando una tabella in markdown uno per uno:\n\n",
"Prefisso": "Si prega di tradurre il seguente testo in cinese e fornire spiegazione per i termini tecnici utilizzati, utilizzando una tabella in markdown uno per uno:\n\n",
# Suffisso, sarà aggiunto dopo il tuo input. Ad esempio, in combinazione con il prefisso, puoi circondare il tuo input con virgolette.
"Suffisso": "",
},
@@ -224,7 +224,7 @@ La scrittura di plugin per questo progetto è facile e richiede solo conoscenze
# Aggiornamenti
### I: Aggiornamenti
1. Funzionalità di salvataggio della conversazione. Chiamare `Salva la conversazione corrente` nell'area del plugin per salvare la conversazione corrente come un file html leggibile e ripristinabile.
1. Funzionalità di salvataggio della conversazione. Chiamare `Salva la conversazione corrente` nell'area del plugin per salvare la conversazione corrente come un file html leggibile e ripristinabile.
Inoltre, nella stessa area del plugin (menu a tendina) chiamare `Carica la cronologia della conversazione` per ripristinare una conversazione precedente.
Suggerimento: fare clic su `Carica la cronologia della conversazione` senza specificare un file per visualizzare la tua cronologia di archiviazione HTML.
<div align="center">
@@ -358,3 +358,4 @@ https://github.com/oobabooga/one-click-installers
# Altre risorse:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -2,9 +2,9 @@
> **注意**
>
>
> 此READMEはGPTによる翻訳で生成されましたこのプロジェクトのプラグインによって実装されています、翻訳結果は100%正確ではないため、注意してください。
>
>
> 2023年11月7日: 依存関係をインストールする際は、`requirements.txt`で**指定されたバージョン**を選択してください。 インストールコマンド: `pip install -r requirements.txt`。
@@ -18,11 +18,11 @@ GPTを使用してこのプロジェクトを任意の言語に翻訳するに
> 1. **強調された** プラグインボタンのみがファイルを読み込むことができることに注意してください。一部のプラグインは、プラグインエリアのドロップダウンメニューにあります。また、新しいプラグインのPRを歓迎し、最優先で対応します。
>
> 2. このプロジェクトの各ファイルの機能は、[自己分析レポート`self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic%E9%A1%B9%E7%9B%AE%E8%87%AA%E8%AF%91%E8%A7%A3%E5%A0%82)で詳しく説明されています。バージョンが進化するにつれて、関連する関数プラグインをクリックして、プロジェクトの自己分析レポートをGPTで再生成することもできます。よくある質問については、[`wiki`](https://github.com/binary-husky/gpt_academic/wiki)をご覧ください。[標準的なインストール方法](#installation) | [ワンクリックインストールスクリプト](https://github.com/binary-husky/gpt_academic/releases) | [構成の説明](https://github.com/binary-husky/gpt_academic/wiki/Project-Configuration-Explain)。
>
>
> 3. このプロジェクトは、[ChatGLM](https://www.chatglm.dev/)などの中国製の大規模言語モデルも互換性があり、試してみることを推奨しています。複数のAPIキーを共存させることができ、設定ファイルに`API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`のように記入できます。`API_KEY`を一時的に変更する必要がある場合は、入力エリアに一時的な`API_KEY`を入力し、Enterキーを押して提出すると有効になります。
<div align="center">
@@ -189,7 +189,7 @@ Python環境に詳しくないWindowsユーザーは、[リリース](https://gi
"超级英译中" {
# プレフィックス、入力の前に追加されます。例えば、要求を記述するために使用されます。翻訳、コードの解説、校正など
"プレフィックス" "下記の内容を中国語に翻訳し、専門用語を一つずつマークダウンテーブルで解説してください:\n\n"、
# サフィックス、入力の後に追加されます。プレフィックスと一緒に使用して、入力内容を引用符で囲むことができます。
"サフィックス" ""、
}、
@@ -342,3 +342,4 @@ https://github.com/oobabooga/one-click-installers
# その他:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -27,7 +27,7 @@ GPT를 사용하여 이 프로젝트를 임의의 언어로 번역하려면 [`mu
<div align="center">
@@ -130,7 +130,7 @@ python -m pip install -r requirements.txt # This step is the same as the pip ins
[Optional Step] If you need support for Tsinghua ChatGLM2/Fudan MOSS as the backend, you need to install additional dependencies (Prerequisites: Familiar with Python + Have used Pytorch + Sufficient computer configuration):
```sh
# [Optional Step I] Support for Tsinghua ChatGLM2. Note for Tsinghua ChatGLM: If you encounter the error "Call ChatGLM fail cannot load ChatGLM parameters", refer to the following: 1: The default installation above is torch+cpu version. To use cuda, uninstall torch and reinstall torch+cuda; 2: If you cannot load the model due to insufficient computer configuration, you can modify the model precision in request_llm/bridge_chatglm.py, change AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) to AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# [Optional Step II] Support for Fudan MOSS
python -m pip install -r request_llms/requirements_moss.txt
@@ -208,8 +208,8 @@ Please visit the [cloud server remote deployment wiki](https://github.com/binary
```
"초급영문 번역": {
# 접두사, 입력 내용 앞에 추가됩니다. 예를 들어 요구 사항을 설명하는 데 사용됩니다. 예를 들어 번역, 코드 설명, 교정 등
"Prefix": "다음 내용을 한국어로 번역하고 전문 용어에 대한 설명을 적용한 마크다운 표를 사용하세요:\n\n",
"Prefix": "다음 내용을 한국어로 번역하고 전문 용어에 대한 설명을 적용한 마크다운 표를 사용하세요:\n\n",
# 접미사, 입력 내용 뒤에 추가됩니다. 예를 들어 접두사와 함께 입력 내용을 따옴표로 감쌀 수 있습니다.
"Suffix": "",
},
@@ -361,3 +361,4 @@ https://github.com/oobabooga/one-click-installers
# 더보기:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -2,9 +2,9 @@
> **Nota**
>
>
> Este README foi traduzido pelo GPT (implementado por um plugin deste projeto) e não é 100% confiável. Por favor, verifique cuidadosamente o resultado da tradução.
>
>
> 7 de novembro de 2023: Ao instalar as dependências, favor selecionar as **versões especificadas** no `requirements.txt`. Comando de instalação: `pip install -r requirements.txt`.
# <div align=center><img src="logo.png" width="40"> GPT Acadêmico</div>
@@ -15,12 +15,12 @@ Para traduzir este projeto para qualquer idioma utilizando o GPT, leia e execute
> **Nota**
>
> 1. Observe que apenas os plugins (botões) marcados em **destaque** são capazes de ler arquivos, alguns plugins estão localizados no **menu suspenso** do plugin area. Também damos boas-vindas e prioridade máxima a qualquer novo plugin via PR.
>
>
> 2. As funcionalidades de cada arquivo deste projeto estão detalhadamente explicadas em [autoanálise `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). Com a iteração das versões, você também pode clicar nos plugins de funções relevantes a qualquer momento para chamar o GPT para regerar o relatório de autonálise do projeto. Perguntas frequentes [`wiki`](https://github.com/binary-husky/gpt_academic/wiki) | [Método de instalação convencional](#installation) | [Script de instalação em um clique](https://github.com/binary-husky/gpt_academic/releases) | [Explicação de configuração](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明)。
>
> 3. Este projeto é compatível e encoraja o uso de modelos de linguagem chineses, como ChatGLM. Vários api-keys podem ser usados simultaneamente, podendo ser especificados no arquivo de configuração como `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. Quando precisar alterar temporariamente o `API_KEY`, insira o `API_KEY` temporário na área de entrada e pressione Enter para que ele seja efetivo.
<div align="center">
Funcionalidades (⭐= funcionalidade recentemente adicionada) | Descrição
@@ -89,7 +89,7 @@ Apresentação de mais novas funcionalidades (geração de imagens, etc.) ... |
</div>
# Instalação
### Método de instalação I: Executar diretamente (Windows, Linux ou MacOS)
### Método de instalação I: Executar diretamente (Windows, Linux ou MacOS)
1. Baixe o projeto
```sh
@@ -124,7 +124,7 @@ python -m pip install -r requirements.txt # Este passo é igual ao da instalaç
[Opcional] Se você quiser suporte para o ChatGLM2 do THU/ MOSS do Fudan, precisará instalar dependências extras (pré-requisitos: familiarizado com o Python + já usou o PyTorch + o computador tem configuração suficiente):
```sh
# [Opcional Passo I] Suporte para ChatGLM2 do THU. Observações sobre o ChatGLM2 do THU: Se você encontrar o erro "Call ChatGLM fail 不能正常加载ChatGLM的参数" (Falha ao chamar o ChatGLM, não é possível carregar os parâmetros do ChatGLM), consulte o seguinte: 1: A versão instalada por padrão é a versão torch+cpu. Se você quiser usar a versão cuda, desinstale o torch e reinstale uma versão com torch+cuda; 2: Se a sua configuração não for suficiente para carregar o modelo, você pode modificar a precisão do modelo em request_llm/bridge_chatglm.py, alterando todas as ocorrências de AutoTokenizer.from_pretrained("THUDM/chatglm-6b", trust_remote_code=True) para AutoTokenizer.from_pretrained("THUDM/chatglm-6b-int4", trust_remote_code=True)
python -m pip install -r request_llms/requirements_chatglm.txt
python -m pip install -r request_llms/requirements_chatglm.txt
# [Opcional Passo II] Suporte para MOSS do Fudan
python -m pip install -r request_llms/requirements_moss.txt
@@ -202,8 +202,8 @@ Por exemplo:
```
"超级英译中": {
# Prefixo, adicionado antes do seu input. Por exemplo, usado para descrever sua solicitação, como traduzir, explicar o código, revisar, etc.
"Prefix": "Por favor, traduza o parágrafo abaixo para o chinês e explique cada termo técnico dentro de uma tabela markdown:\n\n",
"Prefix": "Por favor, traduza o parágrafo abaixo para o chinês e explique cada termo técnico dentro de uma tabela markdown:\n\n",
# Sufixo, adicionado após o seu input. Por exemplo, em conjunto com o prefixo, pode-se colocar seu input entre aspas.
"Suffix": "",
},
@@ -355,3 +355,4 @@ https://github.com/oobabooga/instaladores-de-um-clique
# Mais:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -2,9 +2,9 @@
> **Примечание**
>
>
> Этот README был переведен с помощью GPT (реализовано с помощью плагина этого проекта) и не может быть полностью надежным, пожалуйста, внимательно проверьте результаты перевода.
>
>
> 7 ноября 2023 года: При установке зависимостей, пожалуйста, выберите **указанные версии** из `requirements.txt`. Команда установки: `pip install -r requirements.txt`.
@@ -17,12 +17,12 @@
>
> 1. Пожалуйста, обратите внимание, что только плагины (кнопки), выделенные **жирным шрифтом**, поддерживают чтение файлов, некоторые плагины находятся в выпадающем меню **плагинов**. Кроме того, мы с радостью приветствуем и обрабатываем PR для любых новых плагинов с **наивысшим приоритетом**.
>
> 2. Функции каждого файла в этом проекте подробно описаны в [отчете о самостоятельном анализе проекта `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). С каждым новым релизом вы также можете в любое время нажать на соответствующий функциональный плагин, вызвать GPT для повторной генерации сводного отчета о самоанализе проекта. Часто задаваемые вопросы [`wiki`](https://github.com/binary-husky/gpt_academic/wiki) | [обычные методы установки](#installation) | [скрипт одношаговой установки](https://github.com/binary-husky/gpt_academic/releases) | [инструкции по настройке](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明).
> 2. Функции каждого файла в этом проекте подробно описаны в [отчете о самостоятельном анализе проекта `self_analysis.md`](https://github.com/binary-husky/gpt_academic/wiki/GPTAcademic项目自译解报告). С каждым новым релизом вы также можете в любое время нажать на соответствующий функциональный плагин, вызвать GPT для повторной генерации сводного отчета о самоанализе проекта. Часто задаваемые вопросы [`wiki`](https://github.com/binary-husky/gpt_academic/wiki) | [обычные методы установки](#installation) | [скрипт одношаговой установки](https://github.com/binary-husky/gpt_academic/releases) | [инструкции по настройке](https://github.com/binary-husky/gpt_academic/wiki/项目配置说明).
>
> 3. Этот проект совместим и настоятельно рекомендуется использование китайской NLP-модели ChatGLM и других моделей больших языков производства Китая. Поддерживает одновременное использование нескольких ключей API, которые можно указать в конфигурационном файле, например, `API_KEY="openai-key1,openai-key2,azure-key3,api2d-key4"`. Если нужно временно заменить `API_KEY`, введите временный `API_KEY` в окне ввода и нажмите Enter для его подтверждения.
<div align="center">
@@ -204,8 +204,8 @@ docker-compose up
```
"Супер-англо-русский перевод": {
# Префикс, который будет добавлен перед вашим вводом. Например, используется для описания вашего запроса, например, перевода, объяснения кода, редактирования и т.д.
"Префикс": "Пожалуйста, переведите следующий абзац на русский язык, а затем покажите каждый термин на экране с помощью таблицы Markdown:\n\n",
"Префикс": "Пожалуйста, переведите следующий абзац на русский язык, а затем покажите каждый термин на экране с помощью таблицы Markdown:\n\n",
# Суффикс, который будет добавлен после вашего ввода. Например, можно использовать с префиксом, чтобы заключить ваш ввод в кавычки.
"Суффикс": "",
},
@@ -335,7 +335,7 @@ GPT Academic Группа QQ разработчиков: `610599535`
```
В коде использовались многие функции, представленные в других отличных проектах, поэтому их порядок не имеет значения:
# ChatGLM2-6B от Тиньхуа:
# ChatGLM2-6B от Тиньхуа:
https://github.com/THUDM/ChatGLM2-6B
# Линейные модели с ограниченной памятью от Тиньхуа:
@@ -358,3 +358,4 @@ https://github.com/oobabooga/one-click-installers
# Больше:
https://github.com/gradio-app/gradio
https://github.com/fghrsh/live2d_demo

查看文件

@@ -17,18 +17,18 @@ nano config.py
- # 如果需要在二级路径下运行
- # CUSTOM_PATH = get_conf('CUSTOM_PATH')
- # if CUSTOM_PATH != "/":
- # if CUSTOM_PATH != "/":
- # from toolbox import run_gradio_in_subpath
- # run_gradio_in_subpath(demo, auth=AUTHENTICATION, port=PORT, custom_path=CUSTOM_PATH)
- # else:
- # else:
- # demo.launch(server_name="0.0.0.0", server_port=PORT, auth=AUTHENTICATION, favicon_path="docs/logo.png")
+ 如果需要在二级路径下运行
+ CUSTOM_PATH = get_conf('CUSTOM_PATH')
+ if CUSTOM_PATH != "/":
+ if CUSTOM_PATH != "/":
+ from toolbox import run_gradio_in_subpath
+ run_gradio_in_subpath(demo, auth=AUTHENTICATION, port=PORT, custom_path=CUSTOM_PATH)
+ else:
+ else:
+ demo.launch(server_name="0.0.0.0", server_port=PORT, auth=AUTHENTICATION, favicon_path="docs/logo.png")
if __name__ == "__main__":

二进制
docs/gradio-3.32.6-py3-none-any.whl 普通文件

二进制文件未显示。

查看文件

@@ -28,7 +28,7 @@
| crazy_functions\批量Markdown翻译.py | 将指定目录下的Markdown文件进行中英文翻译 |
| crazy_functions\批量总结PDF文档.py | 对PDF文件进行切割和摘要生成 |
| crazy_functions\批量总结PDF文档pdfminer.py | 对PDF文件进行文本内容的提取和摘要生成 |
| crazy_functions\PDF批量翻译.py | 将指定目录下的PDF文件进行中英文翻译 |
| crazy_functions\批量翻译PDF文档_多线程.py | 将指定目录下的PDF文件进行中英文翻译 |
| crazy_functions\理解PDF文档内容.py | 对PDF文件进行摘要生成和问题解答 |
| crazy_functions\生成函数注释.py | 自动生成Python函数的注释 |
| crazy_functions\联网的ChatGPT.py | 使用网络爬虫和ChatGPT模型进行聊天回答 |
@@ -165,7 +165,7 @@ toolbox.py是一个工具类库,其中主要包含了一些函数装饰器和
3. read_file_to_chat(chatbot, history, file_name):从传入的文件中读取内容,解析出对话历史记录并更新聊天显示框。
4. 对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, user_request)一个主要函数,用于保存当前对话记录并提醒用户。如果用户希望加载历史记录,则调用read_file_to_chat()来更新聊天显示框。如果用户希望删除历史记录,调用删除所有本地对话历史记录()函数完成删除操作。
4. 对话历史存档(txt, llm_kwargs, plugin_kwargs, chatbot, history, system_prompt, web_port)一个主要函数,用于保存当前对话记录并提醒用户。如果用户希望加载历史记录,则调用read_file_to_chat()来更新聊天显示框。如果用户希望删除历史记录,调用删除所有本地对话历史记录()函数完成删除操作。
## [19/48] 请对下面的程序文件做一个概述: crazy_functions\总结word文档.py
@@ -187,9 +187,9 @@ toolbox.py是一个工具类库,其中主要包含了一些函数装饰器和
该程序文件是一个用于批量总结PDF文档的函数插件,使用了pdfminer插件和BeautifulSoup库来提取PDF文档的文本内容,对每个PDF文件分别进行处理并生成中英文摘要。同时,该程序文件还包括一些辅助工具函数和处理异常的装饰器。
## [24/48] 请对下面的程序文件做一个概述: crazy_functions\PDF批量翻译.py
## [24/48] 请对下面的程序文件做一个概述: crazy_functions\批量翻译PDF文档_多线程.py
这个程序文件是一个Python脚本,文件名为“PDF批量翻译.py”。它主要使用了“toolbox”、“request_gpt_model_in_new_thread_with_ui_alive”、“request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency”、“colorful”等Python库和自定义的模块“crazy_utils”的一些函数。程序实现了一个批量翻译PDF文档的功能,可以自动解析PDF文件中的基础信息,递归地切割PDF文件,翻译和处理PDF论文中的所有内容,并生成相应的翻译结果文件包括md文件和html文件。功能比较复杂,其中需要调用多个函数和依赖库,涉及到多线程操作和UI更新。文件中有详细的注释和变量命名,代码比较清晰易读。
这个程序文件是一个Python脚本,文件名为“批量翻译PDF文档_多线程.py”。它主要使用了“toolbox”、“request_gpt_model_in_new_thread_with_ui_alive”、“request_gpt_model_multi_threads_with_very_awesome_ui_and_high_efficiency”、“colorful”等Python库和自定义的模块“crazy_utils”的一些函数。程序实现了一个批量翻译PDF文档的功能,可以自动解析PDF文件中的基础信息,递归地切割PDF文件,翻译和处理PDF论文中的所有内容,并生成相应的翻译结果文件包括md文件和html文件。功能比较复杂,其中需要调用多个函数和依赖库,涉及到多线程操作和UI更新。文件中有详细的注释和变量命名,代码比较清晰易读。
## [25/48] 请对下面的程序文件做一个概述: crazy_functions\理解PDF文档内容.py
@@ -331,7 +331,7 @@ check_proxy.py, colorful.py, config.py, config_private.py, core_functional.py, c
这些程序源文件提供了基础的文本和语言处理功能、工具函数和高级插件,使 Chatbot 能够处理各种复杂的学术文本问题,包括润色、翻译、搜索、下载、解析等。
## 用一张Markdown表格简要描述以下文件的功能
crazy_functions\代码重写为全英文_多线程.py, crazy_functions\图片生成.py, crazy_functions\对话历史存档.py, crazy_functions\总结word文档.py, crazy_functions\总结音视频.py, crazy_functions\批量Markdown翻译.py, crazy_functions\批量总结PDF文档.py, crazy_functions\批量总结PDF文档pdfminer.py, crazy_functions\PDF批量翻译.py, crazy_functions\理解PDF文档内容.py, crazy_functions\生成函数注释.py, crazy_functions\联网的ChatGPT.py, crazy_functions\解析JupyterNotebook.py, crazy_functions\解析项目源代码.py, crazy_functions\询问多个大语言模型.py, crazy_functions\读文章写摘要.py。根据以上分析,用一句话概括程序的整体功能。
crazy_functions\代码重写为全英文_多线程.py, crazy_functions\图片生成.py, crazy_functions\对话历史存档.py, crazy_functions\总结word文档.py, crazy_functions\总结音视频.py, crazy_functions\批量Markdown翻译.py, crazy_functions\批量总结PDF文档.py, crazy_functions\批量总结PDF文档pdfminer.py, crazy_functions\批量翻译PDF文档_多线程.py, crazy_functions\理解PDF文档内容.py, crazy_functions\生成函数注释.py, crazy_functions\联网的ChatGPT.py, crazy_functions\解析JupyterNotebook.py, crazy_functions\解析项目源代码.py, crazy_functions\询问多个大语言模型.py, crazy_functions\读文章写摘要.py。根据以上分析,用一句话概括程序的整体功能。
| 文件名 | 功能简述 |
| --- | --- |
@@ -343,7 +343,7 @@ crazy_functions\代码重写为全英文_多线程.py, crazy_functions\图片生
| 批量Markdown翻译.py | 将指定目录下的Markdown文件进行中英文翻译 |
| 批量总结PDF文档.py | 对PDF文件进行切割和摘要生成 |
| 批量总结PDF文档pdfminer.py | 对PDF文件进行文本内容的提取和摘要生成 |
| PDF批量翻译.py | 将指定目录下的PDF文件进行中英文翻译 |
| 批量翻译PDF文档_多线程.py | 将指定目录下的PDF文件进行中英文翻译 |
| 理解PDF文档内容.py | 对PDF文件进行摘要生成和问题解答 |
| 生成函数注释.py | 自动生成Python函数的注释 |
| 联网的ChatGPT.py | 使用网络爬虫和ChatGPT模型进行聊天回答 |

查看文件

@@ -7,27 +7,13 @@ sample = """
"""
import re
def preprocess_newbing_out(s):
pattern = r"\^(\d+)\^" # 匹配^数字^
pattern2 = r"\[(\d+)\]" # 匹配^数字^
def sub(m):
return "\\[" + m.group(1) + "\\]" # 将匹配到的数字作为替换值
result = re.sub(pattern, sub, s) # 替换操作
if "[1]" in result:
result += (
'<br/><hr style="border-top: dotted 1px #44ac5c;"><br/><small>'
+ "<br/>".join(
[
re.sub(pattern2, sub, r)
for r in result.split("\n")
if r.startswith("[")
]
)
+ "</small>"
)
pattern = r'\^(\d+)\^' # 匹配^数字^
pattern2 = r'\[(\d+)\]' # 匹配^数字^
sub = lambda m: '\['+m.group(1)+'\]' # 将匹配到的数字作为替换值
result = re.sub(pattern, sub, s) # 替换操作
if '[1]' in result:
result += '<br/><hr style="border-top: dotted 1px #44ac5c;"><br/><small>' + "<br/>".join([re.sub(pattern2, sub, r) for r in result.split('\n') if r.startswith('[')]) + '</small>'
return result
@@ -42,39 +28,37 @@ def close_up_code_segment_during_stream(gpt_reply):
str: 返回一个新的字符串,将输出代码片段的“后面的```”补上。
"""
if "```" not in gpt_reply:
if '```' not in gpt_reply:
return gpt_reply
if gpt_reply.endswith("```"):
if gpt_reply.endswith('```'):
return gpt_reply
# 排除了以上两个情况,我们
segments = gpt_reply.split("```")
segments = gpt_reply.split('```')
n_mark = len(segments) - 1
if n_mark % 2 == 1:
# print('输出代码片段中!')
return gpt_reply + "\n```"
return gpt_reply+'\n```'
else:
return gpt_reply
import markdown
from latex2mathml.converter import convert as tex2mathml
from functools import wraps, lru_cache
def markdown_convertion(txt):
"""
将Markdown格式的文本转换为HTML格式。如果包含数学公式,则先将公式转换为HTML格式。
"""
pre = '<div class="markdown-body">'
suf = "</div>"
suf = '</div>'
if txt.startswith(pre) and txt.endswith(suf):
# print('警告,输入了已经经过转化的字符串,二次转化可能出问题')
return txt # 已经被转化过,不需要再次转化
return txt # 已经被转化过,不需要再次转化
markdown_extension_configs = {
"mdx_math": {
"enable_dollar_delimiter": True,
"use_gitlab_delimiters": False,
'mdx_math': {
'enable_dollar_delimiter': True,
'use_gitlab_delimiters': False,
},
}
find_equation_pattern = r'<script type="math/tex(?:.*?)>(.*?)</script>'
@@ -88,19 +72,19 @@ def markdown_convertion(txt):
def replace_math_no_render(match):
content = match.group(1)
if "mode=display" in match.group(0):
content = content.replace("\n", "</br>")
return f'<font color="#00FF00">$$</font><font color="#FF00FF">{content}</font><font color="#00FF00">$$</font>'
if 'mode=display' in match.group(0):
content = content.replace('\n', '</br>')
return f"<font color=\"#00FF00\">$$</font><font color=\"#FF00FF\">{content}</font><font color=\"#00FF00\">$$</font>"
else:
return f'<font color="#00FF00">$</font><font color="#FF00FF">{content}</font><font color="#00FF00">$</font>'
return f"<font color=\"#00FF00\">$</font><font color=\"#FF00FF\">{content}</font><font color=\"#00FF00\">$</font>"
def replace_math_render(match):
content = match.group(1)
if "mode=display" in match.group(0):
if "\\begin{aligned}" in content:
content = content.replace("\\begin{aligned}", "\\begin{array}")
content = content.replace("\\end{aligned}", "\\end{array}")
content = content.replace("&", " ")
if 'mode=display' in match.group(0):
if '\\begin{aligned}' in content:
content = content.replace('\\begin{aligned}', '\\begin{array}')
content = content.replace('\\end{aligned}', '\\end{array}')
content = content.replace('&', ' ')
content = tex2mathml_catch_exception(content, display="block")
return content
else:
@@ -110,58 +94,37 @@ def markdown_convertion(txt):
"""
解决一个mdx_math的bug单$包裹begin命令时多余<script>
"""
content = content.replace(
'<script type="math/tex">\n<script type="math/tex; mode=display">',
'<script type="math/tex; mode=display">',
)
content = content.replace("</script>\n</script>", "</script>")
content = content.replace('<script type="math/tex">\n<script type="math/tex; mode=display">', '<script type="math/tex; mode=display">')
content = content.replace('</script>\n</script>', '</script>')
return content
if ("$" in txt) and ("```" not in txt): # 有$标识的公式符号,且没有代码段```的标识
if ('$' in txt) and ('```' not in txt): # 有$标识的公式符号,且没有代码段```的标识
# convert everything to html format
split = markdown.markdown(text="---")
convert_stage_1 = markdown.markdown(
text=txt,
extensions=["mdx_math", "fenced_code", "tables", "sane_lists"],
extension_configs=markdown_extension_configs,
)
split = markdown.markdown(text='---')
convert_stage_1 = markdown.markdown(text=txt, extensions=['mdx_math', 'fenced_code', 'tables', 'sane_lists'], extension_configs=markdown_extension_configs)
convert_stage_1 = markdown_bug_hunt(convert_stage_1)
# re.DOTALL: Make the '.' special character match any character at all, including a newline; without this flag, '.' will match anything except a newline. Corresponds to the inline flag (?s).
# 1. convert to easy-to-copy tex (do not render math)
convert_stage_2_1, n = re.subn(
find_equation_pattern,
replace_math_no_render,
convert_stage_1,
flags=re.DOTALL,
)
convert_stage_2_1, n = re.subn(find_equation_pattern, replace_math_no_render, convert_stage_1, flags=re.DOTALL)
# 2. convert to rendered equation
convert_stage_2_2, n = re.subn(
find_equation_pattern, replace_math_render, convert_stage_1, flags=re.DOTALL
)
convert_stage_2_2, n = re.subn(find_equation_pattern, replace_math_render, convert_stage_1, flags=re.DOTALL)
# cat them together
return pre + convert_stage_2_1 + f"{split}" + convert_stage_2_2 + suf
return pre + convert_stage_2_1 + f'{split}' + convert_stage_2_2 + suf
else:
return (
pre
+ markdown.markdown(
txt, extensions=["fenced_code", "codehilite", "tables", "sane_lists"]
)
+ suf
)
return pre + markdown.markdown(txt, extensions=['fenced_code', 'codehilite', 'tables', 'sane_lists']) + suf
sample = preprocess_newbing_out(sample)
sample = close_up_code_segment_during_stream(sample)
sample = markdown_convertion(sample)
with open("tmp.html", "w", encoding="utf8") as f:
f.write(
"""
with open('tmp.html', 'w', encoding='utf8') as f:
f.write("""
<head>
<title>My Website</title>
<link rel="stylesheet" type="text/css" href="style.css">
</head>
"""
)
""")
f.write(sample)

查看文件

@@ -44,7 +44,7 @@
"批量总结PDF文档": "BatchSummarizePDFDocuments",
"批量总结PDF文档pdfminer": "BatchSummarizePDFDocumentsUsingPdfminer",
"批量翻译PDF文档": "BatchTranslatePDFDocuments",
"PDF批量翻译": "BatchTranslatePDFDocuments_MultiThreaded",
"批量翻译PDF文档_多线程": "BatchTranslatePDFDocuments_MultiThreaded",
"谷歌检索小助手": "GoogleSearchAssistant",
"理解PDF文档内容标准文件输入": "UnderstandPdfDocumentContentStandardFileInput",
"理解PDF文档内容": "UnderstandPdfDocumentContent",
@@ -1392,7 +1392,7 @@
"1. 临时解决方案": "1. Temporary Solution",
"直接在输入区键入api_key": "Enter the api_key Directly in the Input Area",
"然后回车提交": "Submit after pressing Enter",
"2. 长效解决方案": "2. Long-term solution",
"2. 长效解决方案": "Long-term solution",
"在config.py中配置": "Configure in config.py",
"等待响应": "Waiting for response",
"api-key不满足要求": "API key does not meet requirements",
@@ -1668,7 +1668,7 @@
"Markdown翻译指定语言": "TranslateMarkdownToSpecifiedLanguage",
"Langchain知识库": "LangchainKnowledgeBase",
"Latex英文纠错加PDF对比": "CorrectEnglishInLatexWithPDFComparison",
"Latex输出PDF": "OutputPDFFromLatex",
"Latex输出PDF结果": "OutputPDFFromLatex",
"Latex翻译中文并重新编译PDF": "TranslateChineseToEnglishInLatexAndRecompilePDF",
"sprint亮靛": "SprintIndigo",
"寻找Latex主文件": "FindLatexMainFile",
@@ -2184,8 +2184,7 @@
"接驳VoidTerminal": "Connect to VoidTerminal",
"**很好": "**Very good",
"对话|编程": "Conversation&ImageGenerating|Programming",
"对话|编程|学术": "Conversation|Programming|Academic",
"4. 建议使用 GPT3.5 或更强的模型": "4. It is recommended to use GPT3.5 or a stronger model",
"对话|编程|学术": "Conversation&ImageGenerating|Programming|Academic", "4. 建议使用 GPT3.5 或更强的模型": "4. It is recommended to use GPT3.5 or a stronger model",
"「请调用插件翻译PDF论文": "Please call the plugin to translate the PDF paper",
"3. 如果您使用「调用插件xxx」、「修改配置xxx」、「请问」等关键词": "3. If you use keywords such as 'call plugin xxx', 'modify configuration xxx', 'please', etc.",
"以下是一篇学术论文的基本信息": "The following is the basic information of an academic paper",
@@ -2864,7 +2863,7 @@
"加载API_KEY": "Loading API_KEY",
"协助您编写代码": "Assist you in writing code",
"我可以为您提供以下服务": "I can provide you with the following services",
"排队中请稍 ...": "Please wait in line ...",
"排队中请稍 ...": "Please wait in line ...",
"建议您使用英文提示词": "It is recommended to use English prompts",
"不能支撑AutoGen运行": "Cannot support AutoGen operation",
"帮助您解决编程问题": "Help you solve programming problems",
@@ -3005,748 +3004,5 @@
"1. 上传图片": "TranslatedText",
"保存状态": "TranslatedText",
"GPT-Academic对话存档": "TranslatedText",
"Arxiv论文精细翻译": "TranslatedText",
"from crazy_functions.AdvancedFunctionTemplate import 测试图表渲染": "from crazy_functions.AdvancedFunctionTemplate import test_chart_rendering",
"测试图表渲染": "test_chart_rendering",
"请使用「LatexEnglishCorrection+高亮修正位置": "Please use 'LatexEnglishCorrection+highlight corrected positions",
"输出代码片段中!": "Output code snippet!",
"使用多种方式尝试切分文本": "Attempt to split the text in various ways",
"你是一个作家": "You are a writer",
"如果无法从中得到答案": "If unable to get an answer from it",
"无法读取以下数据": "Unable to read the following data",
"不允许直接报错": "Direct error reporting is not allowed",
"您也可以使用插件参数指定绘制的图表类型": "You can also specify the type of chart to be drawn using plugin parameters",
"不要包含太多情节": "Do not include too many plots",
"翻译为中文后重新编译为PDF": "Recompile into PDF after translating into Chinese",
"采样温度": "Sampling temperature",
"直接修改config.py": "Directly modify config.py",
"处理文件": "Handle file",
"判断返回是否正确": "Determine if the return is correct",
"gemini 不允许对话轮次为偶数": "Gemini does not allow the number of dialogue rounds to be even",
"8 象限提示图": "8-quadrant prompt diagram",
"基于上下文的prompt模版": "Context-based prompt template",
"^开始": "^Start",
"输出文本的最大tokens限制": "Maximum tokens limit for output text",
"在这个例子中": "In this example",
"以及处理PDF文件的示例代码": "And example code for handling PDF files",
"更新cookie": "Update cookie",
"获取公共缩进": "Get public indentation",
"请你给出围绕“{subject}”的序列图": "Please provide a sequence diagram around '{subject}'",
"请确保使用小写的模型名称": "Please ensure the use of lowercase model names",
"出现人物时": "When characters appear",
"azure模型对齐支持 -=-=-=-=-=-=-": "Azure model alignment support -=-=-=-=-=-=-",
"请一分钟后重试": "Please try again in one minute",
"解析GEMINI消息出错": "Error parsing GEMINI message",
"选择提示词": "Select prompt words",
"取值范围是": "The value range is",
"它会在": "It will be",
"加载文件": "Load file",
"是预定义按钮": "Is a predefined button",
"消息": "Message",
"默认搜索5条结果": "Default search for 5 results",
"第 2 部分": "Part 2",
"我们采样一个特殊的手段": "We sample a special method",
"后端开发": "Backend development",
"接下来提取md中的一级/二级标题作为摘要": "Next, extract the first/second-level headings in md as summaries",
"一个年轻人穿过天安门广场向纪念堂走去": "A young person walks through Tiananmen Square towards the Memorial Hall",
"将会使用这些摘要绘制图表": "Will use these summaries to draw charts",
"8-象限提示图": "8-quadrant prompt diagram",
"首先": "First",
"设计了此接口": "Designed this interface",
"本地模型": "Local model",
"所有图像仅在最后一个问题中提供": "All images are provided only in the last question",
"如连续3次判断失败将会使用流程图进行绘制": "If there are 3 consecutive failures, a flowchart will be used to draw",
"为了更灵活地接入one-api多模型管理界面": "To access the one-api multi-model management interface more flexibly",
"UI设计": "UI design",
"不允许在答案中添加编造成分": "Fabrication is not allowed in the answer",
"尽可能地": "As much as possible",
"先在前端快速清除chatbot&status": "First, quickly clear chatbot & status in the frontend",
"You exceeded your current quota. Cohere以账户额度不足为由": "You exceeded your current quota. Cohere due to insufficient account quota",
"合并所有的标题": "Merge all headings",
"跳过下载": "Skip download",
"中生产图表": "Production Chart",
"如输入区内容不是文件则直接返回输入区内容": "Return the content of the input area directly if it is not a file",
"用温度取样的另一种方法": "Another method of temperature sampling",
"不需要解释原因": "No need to explain the reason",
"一场延续了两万年的星际战争已接近尾声": "An interstellar war that has lasted for 20,000 years is drawing to a close",
"依次处理文件": "Process files in order",
"第一幕的字数少于300字": "The first act has fewer than 300 characters",
"已成功加载": "Successfully loaded",
"还是web渲染": "Web rendering",
"解析分辨率": "Resolution parsing",
"如果剩余文本的token数大于限制": "If the number of remaining text tokens exceeds the limit",
"你可以修改整个句子的顺序以确保翻译后的段落符合中文的语言习惯": "You can change the order of the whole sentence to ensure that the translated paragraph is in line with Chinese language habits",
"并同时充分考虑中文的语法、清晰、简洁和整体可读性": "And at the same time, fully consider Chinese grammar, clarity, conciseness, and overall readability",
"否则返回": "Otherwise return",
"一个特殊标记": "A special mark",
"4. 后续剧情发展4": "4. Plot development",
"恢复默认": "Restore default",
"转义点号": "Escape period",
"检查DASHSCOPE_API_KEY": "Check DASHSCOPE_API_KEY",
"阿里灵积云API_KEY": "Aliyun API_KEY",
"文件是否存在": "Check if the file exists",
"您的选择是": "Your choice is",
"处理用户对话": "Handle user dialogue",
"即": "That is",
"将会由对话模型首先判断适合的图表类型": "The dialogue model will first determine the appropriate chart type",
"以查看所有的配置信息": "To view all configuration information",
"用于初始化包的属性和导入模块": "For initializing package properties and importing modules",
"to_markdown_tabs 文件list 转换为 md tab": "to_markdown_tabs Convert file list to MD tab",
"更换模型": "Replace Model",
"从以下文本中提取摘要": "Extract Summary from the Following Text",
"表示捕获任意长度的文本": "Indicates Capturing Text of Arbitrary Length",
"可能是一个模块的初始化文件": "May Be an Initialization File for a Module",
"处理提问与输出": "Handle Questions and Outputs",
"需要的再做些简单调整即可": "Some Simple Adjustments Needed",
"所以这个没有用": "So This Is Not Useful",
"请配置 DASHSCOPE_API_KEY": "Please Configure DASHSCOPE_API_KEY",
"不是预定义按钮": "Not a Predefined Button",
"让读者能够感受到你的故事世界": "Let Readers Feel Your Story World",
"开始整理headers与message": "Start Organizing Headers and Messages",
"兼容最新的智谱Ai": "Compatible with the Latest ZhiPu AI",
"对于某些PDF会有第一个段落就以小写字母开头": "For Some PDFs, the First Paragraph May Start with a Lowercase Letter",
"问题是": "The Issue Is",
"也就是说它会匹配尽可能少的字符": "That Is, It Will Match the Least Amount of Characters Possible",
"未能成功加载": "Failed to Load Successfully",
"接入通义千问在线大模型 https": "Access TongYi QianWen Online Large Model HTTPS",
"用不太优雅的方式处理一个core_functional.py中出现的mermaid渲染特例": "Handle a Mermaid Rendering Special Case in core_functional.py in an Ugly Way",
"您也可以选择给出其他故事走向": "You Can Also Choose to Provide Alternative Storylines",
"改善非markdown输入的显示效果": "Improve Display Effects for Non-Markdown Input",
"在二十二世纪编年史中": "In the Chronicle of the 22nd Century",
"docs 为Document列表": "docs Are a List of Documents",
"互动写故事": "Interactive Story Writing",
"4 饼图": "Pie Chart",
"正在生成插图中": "Generating Illustration",
"路径不存在": "Path Does Not Exist",
"PDF翻译中文": "PDF Translation to Chinese",
"进行简短的环境描写": "Conduct a Brief Environmental Description",
"学术英中互译": "Academic English-Chinese Translation",
"且少于2个段落": "And less than 2 paragraphs",
"html_view_blank 超链接": "HTML View Blank Hyperlink",
"处理 history": "Handle History",
"非Cohere官方接口返回了错误": "Non-Cohere Official Interface Returned an Error",
"缺失 MATHPIX_APPID 和 MATHPIX_APPKEY": "Missing MATHPIX_APPID and MATHPIX_APPKEY",
"搜索知识库内容条数": "Search Knowledge Base Content Count",
"返回数据": "Return Data",
"没有相关文件": "No Relevant Files",
"知识库路径": "Knowledge Base Path",
"质量与风格默认值": "Quality and Style Defaults",
"包含了用于文本切分的函数": "Contains Functions for Text Segmentation",
"请你给出围绕“{subject}”的逻辑关系图": "Please Provide a Logic Diagram Surrounding '{subject}'",
"官方Pro服务器🧪": "Official Pro Server",
"不支持同时处理多个pdf文件": "Does Not Support Processing Multiple PDF Files Simultaneously",
"查询5天历史事件": "Query 5-Day Historical Events",
"你是经验丰富的翻译": "You Are an Experienced Translator",
"html输入": "HTML Input",
"输入文件不存在": "Input File Does Not Exist",
"很多人生来就会莫名其妙地迷上一样东西": "Many People Are Born with an Unexplained Attraction to Something",
"默认值为 0.7": "Default Value is 0.7",
"值越大": "The Larger the Value",
"以下文件未能成功加载": "The Following Files Failed to Load",
"在线模型": "Online Model",
"切割输入": "Cut Input",
"修改docker-compose.yml等价于修改容器内部的环境变量": "Modifying docker-compose.yml is Equivalent to Modifying the Internal Environment Variables of the Container",
"以换行符分割": "Split by Line Break",
"修复中文乱码的问题": "Fix Chinese Character Encoding Issues",
"zhipuai 是glm-4的别名": "zhipuai is an alias for glm-4",
"保证其在允许范围内": "Ensure it is within the permissible range",
"段尾如果有多余的\\n就去掉它": "Remove any extra \\n at the end of the paragraph",
"是否流式输出": "Whether to stream output",
"1-流程图": "1-Flowchart",
"学术语料润色": "Academic text polishing",
"已经超过了模型的最大上下文或是模型格式错误": "Has exceeded the model's maximum context or there is a model format error",
"英文省略号": "English ellipsis",
"登录成功": "Login successful",
"随便切一下吧": "Just cut it randomly",
"PDF转换为tex项目失败": "PDF conversion to TeX project failed",
"的 max_token 配置不是整数": "The max_token configuration is not an integer",
"根据当前聊天历史或指定的路径文件": "According to the current chat history or specified path file",
"你必须利用以下文档中包含的信息回答这个问题": "You must use the information contained in the following document to answer this question",
"对话、日志记录": "Dialogue, logging",
"内容至知识库": "Content to knowledge base",
"在银河系的中心": "At the center of the Milky Way",
"检查PDF是否被重复上传": "Check if the PDF has been uploaded multiple times",
"取最后 max_prompt_tokens 个 token 输入模型": "Take the last max_prompt_tokens tokens as input to the model",
"请输入图类型对应的数字": "Please enter the corresponding number for the graph type",
"插件主程序3 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=": "Plugin main program 3 -=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=",
"正在tex项目将翻译为中文": "The TeX project is being translated into Chinese",
"适配润色区域": "Adapter polishing area",
"首先你从历史记录中提取摘要": "First, you extract an abstract from the history",
"讯飞星火认知大模型 -=-=-=-=-=-=-": "iFLYTEK Spark Cognitive Model -=-=-=-=-=-=-=-=-=-",
"包含了用于构建和管理向量数据库的函数和类包含了用于构建和管理向量数据库的函数和类包含了用于构建和管理向量数据库的函数和类": "Contains functions and classes for building and managing vector databases",
"另外": "Additionally",
"内部调优参数": "Internal tuning parameters",
"输出格式例如": "Example of Output Format",
"当回复图像时": "When Responding with an Image",
"越权访问!": "Unauthorized Access!",
"如果给出的 prompt 的 token 长度超过此限制": "If the Given Prompt's Token Length Exceeds This Limit",
"因此你每次写的故事段落应少于300字": "Therefore, Each Story Paragraph You Write Should Be Less Than 300 Words",
"尽量短": "As Concise as Possible",
"中文提示词就不显示了": "Chinese Keywords Will Not Be Displayed",
"请在前文的基础上": "Please Based on the Previous Text",
"20张": "20 Sheets",
"文件内容优先": "File Content Takes Priority",
"状态图": "State Diagram",
"开始查找合适切分点的偏移": "Start Looking for the Offset of an Appropriate Split Point",
"已知信息": "Known Information",
"文心一言大模型": "Wenxin Yanyan Large Model",
"传递进来一些奇怪的东西": "Passing in Some Weird Things",
"很多规则中会考虑分号": "Many Rules Consider the Semicolon",
"请配置YUNQUE_SECRET_KEY": "Please Configure YUNQUE_SECRET_KEY",
"6-状态图": "6-State Diagram",
"输出文本的最小tokens限制": "Minimum Tokens Limit for Output Text",
"服务节点": "Service Node",
"云雀大模型": "Lark Large Model",
"请配置 GEMINI_API_KEY": "Please Configure GEMINI_API_KEY",
"可以让软件运行在 http": "Can Run the Software Over HTTP",
"基于当前对话或文件GenerateMultipleMermaidCharts": "Generate Multiple Mermaid Charts Based on the Current Conversation or File",
"剧情收尾": "Plot Conclusion",
"请开始提问": "Please Begin Your Question",
"第一页内容/摘要": "First Page Content/Summary",
"无法判断则返回image/jpeg": "Return image/jpeg If Unable to Determine",
"仅需要输出单个不带任何标点符号的数字": "Single digit without any punctuation",
"以下是每类图表的PROMPT": "Here are the PROMPTS for each type of chart",
"状态码": "Status code",
"TopP值越大输出的tokens类型越丰富": "The larger the TopP value, the richer the types of output tokens",
"files_filter_handler 根据type过滤文件": "files_filter_handler filters files by type",
"比较每一页的内容是否相同": "Compare whether each page's content is the same",
"前往": "Go to",
"请输入剧情走向": "Please enter the plot direction",
"故事收尾": "Story ending",
"必须说明正在回复哪张图像": "Must specify which image is being replied to",
"历史文件继续上传": "Continue uploading historical files",
"因此禁用": "Therefore disabled",
"使用lru缓存": "Use LRU caching",
"该装饰器是大多数功能调用的入口": "This decorator is the entry point for most function calls",
"如果需要开启": "If needed to enable",
"使用 json 解析库进行处理": "Process using JSON parsing library",
"将PDF转换为Latex项目": "Convert PDF to LaTeX project",
"7-实体关系图": "7-Entity relationship diagram",
"根据用户的提示": "According to the user's prompt",
"当前用户的请求信息": "Current user's request information",
"配置关联关系说明": "Configuration relationship description",
"这段代码是使用Python编程语言中的re模块": "This code uses the re module in the Python programming language",
"link_mtime_to_md 文件增加本地时间参数": "link_mtime_to_md adds local time parameter to the file",
"从当前对话或路径": "From the current conversation or path",
"一起写故事": "Write a story together",
"前端开发": "Front-end development",
"开区间": "Open interval",
"如插件参数不正确则使用对话模型判断": "If the plugin parameters are incorrect, use the dialogue model for judgment",
"对字符串进行处理": "Process the string",
"简洁和专业的来回答用户的问题": "Answer user questions concisely and professionally",
"如输入区不是文件则将输入区内容加入历史记录": "If the input area is not a file, add the content of the input area to the history",
"编写一个小说的第一幕": "Write the first act of a novel",
"更具创造性;": "More creative;",
"用于解析和翻译PDF文件的功能和相关辅助函数用于解析和翻译PDF文件的功能和相关辅助函数用于解析和翻译PDF文件的功能和相关辅助函数": "Functions and related auxiliary functions for parsing and translating PDF files",
"月之暗面 -=-=-=-=-=-=-": "The Dark Side of the Moon -=-=-=-=-=-=-",
"2. 后续剧情发展2": "2. Subsequent plot development 2",
"请先提供文本的更正版本": "Please provide the corrected version of the text first",
"修改环境变量": "Modify environment variables",
"读取之前的自定义按钮": "Read previous custom buttons",
"如果为0": "If it is 0",
"函数用于去除多行字符串的缩进": "Function to remove indentation from multiline strings",
"请绘制有关“": "Please draw something about \"",
"给出4种不同的后续剧情发展方向": "Provide 4 different directions for subsequent plot development",
"新调优版本GPT-4🔥": "Newly tuned version GPT-4🔥",
"已弃用": "Deprecated",
"参考 https": "Refer to https",
"发现重复上传": "Duplicate upload detected",
"本项目的所有配置都集中在config.py中": "All configurations for this project are centralized in config.py",
"默认值为 0.95": "Default value is 0.95",
"请查阅": "Please refer to",
"此选项已废弃": "This option is deprecated",
"找到了.doc文件": ".doc file found",
"他们的目的地是南极": "Their destination is Antarctica",
"lang_reference这段文字是": "The lang_reference text is",
"正在尝试生成对比PDF": "Attempting to generate a comparative PDF",
"input_encode_handler 提取input中的文件": "input_encode_handler Extracts files from input",
"使用中文": "Use Chinese",
"一些垃圾第三方接口会出现这样的错误": "Some crappy third-party interfaces may produce such errors",
"例如将空格转换为&nbsp": "For example, converting spaces to &nbsp",
"请你给出围绕“{subject}”的类图": "Please provide a class diagram around '{subject}'",
"是插件的内部参数": "Is an internal parameter of the plugin",
"网络波动时可选其他": "Alternative options when network fluctuates",
"非Cohere官方接口的出现这样的报错": "Such errors occur in non-Cohere official interfaces",
"是前缀": "Is a prefix",
"默认 None": "Default None",
"如果几天后能顺利到达那里": "If we can smoothly arrive there in a few days",
"输出1": "Output 1",
"3-类图": "3-Class Diagram",
"如需绘制思维导图请使用参数调用": "Please use parameters to call if you need to draw a mind map",
"正在将PDF转换为tex项目": "Converting PDF to TeX project",
"列出10个经典名著": "List 10 classic masterpieces",
"? 在这里用作非贪婪匹配": "? Used here as a non-greedy match",
"左上角更换模型菜单中可切换openai": "Switch to OpenAI in the model change menu in the top left corner",
"原样返回": "Return as is",
"请配置 MATHPIX_APPID 和 MATHPIX_APPKEY": "Please configure MATHPIX_APPID and MATHPIX_APPKEY",
"概括上述段落的内容以及内在逻辑关系": "Summarize the content of the above paragraph and its inherent logical relationship",
"cookie相关工具函数": "Cookie-related utility functions",
"请你给出围绕“{subject}”的饼图": "Please provide a pie chart around '{subject}'",
"原型设计": "Prototype design",
"必须为正数": "Must be a positive number",
"又一阵剧痛从肝部袭来": "Another wave of severe pain strikes from the liver",
"智谱AI": "Zhipu AI",
"基础功能区按钮的附加功能": "Additional functions of the basic functional area buttons",
"one-api 对齐支持 -=-=-=-=-=-=-": "one-api alignment support -=-=-=-=-=-=-",
"5 甘特图": "5 Gantt chart",
"用于初始化包的属性和导入模块是一个包的初始化文件": "The file used for initializing package properties and importing modules is an initialization file for the package",
"创建并修改config_private.py": "Create and modify config_private.py",
"会使输出更随机": "Would make the output more random",
"已添加": "Added",
"估计一个切分点": "Estimate a split point",
"\\n\\n1. 临时解决方案": "\\n\\n1. Temporary solution",
"没有回答": "No answer",
"尝试重新翻译PDF": "Try to retranslate the PDF",
"被这个解码给耍了": "Fooled by this decoding",
"再在后端清除history": "Clear history on the backend again",
"根据情况选择flowchart LR": "Choose flowchart LR based on the situation",
"幻方-深度求索大模型 -=-=-=-=-=-=-": "Deep Seek Large Model -=-=-=-=-=-=-",
"即使它们在历史记录中被提及": "Even if they are mentioned in the history",
"此处需要进一步优化逻辑": "Further logic optimization is needed here",
"借鉴自同目录下的bridge_ChatGPT.py": "Derived from the bridge_ChatGPT.py in the same directory",
"正是这样": "That's exactly right",
"您也可以给出您心中的其他故事走向": "You can also provide other story directions in your mind",
"文本预处理": "Text preprocessing",
"请登录": "Please log in",
"请修改docker-compose": "Please modify docker-compose",
"运行一些异步任务": "Run some asynchronous tasks",
"5-甘特图": "5-Gantt chart",
"3 类图": "3-Class diagram",
"因为你接下来将会与用户互动续写下面的情节": "Because you will interact with the user to continue writing the plot below",
"避免把同一个文件添加多次": "Avoid adding the same file multiple times",
"可挑选精度": "Selectable precision",
"调皮一下": "Play a joke",
"并解析": "And parse",
"您可以在输入框中输入一些关键词": "You can enter some keywords in the input box",
"文件加载失败": "File loading failed",
"请你给出围绕“{subject}”的甘特图": "Please provide a Gantt chart around \"{subject}\"",
"上传PDF": "Upload PDF",
"请判断适合使用的流程图类型": "Please determine the suitable flowchart type",
"错误码": "Error code",
"非markdown输入": "Non-markdown input",
"所以只能通过提示词对第几张图片进行定位": "So can only locate the image by the prompt",
"避免下载到缓存文件": "Avoid downloading cached files",
"没有思维导图!!!测试发现模型始终会优先选择思维导图": "No mind map!!! Testing found that the model always prioritizes mind maps",
"请登录Cohere查看详情 https": "Please log in to Cohere for details https",
"检查历史上传的文件是否与新上传的文件相同": "Check if the previously uploaded file is the same as the newly uploaded file",
"加载主题相关的工具函数": "Load theme-related utility functions",
"图表类型由模型判断": "Chart type is determined by the model",
"⭐ 多线程方法": "Multi-threading method",
"获取 max_token 的值": "Get the value of max_token",
"空白的输入栏": "Blank input field",
"根据整理的摘要选择图表类型": "Select chart type based on the organized summary",
"返回 True": "Return True",
"这里为了区分中英文情景搞复杂了一点": "Here it's a bit complicated to distinguish between Chinese and English contexts",
"ZHIPUAI_MODEL 配置项选项已经弃用": "ZHIPUAI_MODEL configuration option is deprecated",
"但是这里我把它忽略不计": "But here I ignore it",
"非必要": "Not necessary",
"思维导图": "Mind map",
"插件」": "Plugin",
"重复文件路径": "Duplicate file path",
"之间不要存在空格": "No spaces between fields",
"破折号、英文双引号等同样忽略": "Ignore dashes, English quotes, etc.",
"填写 VOLC_ACCESSKEY": "Enter VOLC_ACCESSKEY",
"称为核取样": "Called nuclear sampling",
"Incorrect API key. 请确保API key有效": "Incorrect API key. Please ensure the API key is valid",
"如输入区内容为文件则清空历史记录": "If the input area content is a file, clear the history",
"并处理精度问题": "And handle precision issues",
"并给出修改的理由": "And provide reasons for the changes",
"至此已经超出了正常接口应该进入的范围": "This has exceeded the scope that a normal interface should enter",
"并已加载知识库": "And the knowledge base has been loaded",
"file_manifest_filter_html 根据type过滤文件": "file_manifest_filter_html filters files by type",
"participant B as 系统": "participant B as System",
"要留出足够的互动空间": "Leave enough interaction space",
"请你给出围绕“{subject}”的实体关系图": "Please provide an entity relationship diagram around '{subject}'",
"答案请使用中文": "Please answer in Chinese",
"输出会更加稳定或确定": "The output will be more stable or certain",
"是一个包的初始化文件": "Is an initialization file for a package",
"用于加载和分割文件中的文本的通用文件加载器用于加载和分割文件中的文本的通用文件加载器用于加载和分割文件中的文本的通用文件加载器": "A universal file loader for loading and splitting text in files",
"围绕我选定的剧情情节": "Around the plot I have chosen",
"Mathpix 拥有执行PDF的OCR功能": "Mathpix has OCR functionality for PDFs",
"是否允许暴力切分": "Whether to allow violent segmentation",
"清空 txt_tmp 对应的位置方便下次搜索": "Clear the location corresponding to txt_tmp for easier next search",
"编写小说的最后一幕": "Write the last scene of the novel",
"可能是一个模块的初始化文件根据位置和名称": "May be an initialization file for a module based on position and name",
"更新新的自定义按钮": "Update new custom button",
"把分句符\\n放到双引号后": "Put the sentence separator \\n after the double quotes",
"序列图": "Sequence diagram",
"兼容非markdown输入": "Compatible with non-markdown input",
"那么就切": "Then cut",
"4-饼图": "4-Pie chart",
"结束剧情": "End of the plot",
"字数要求": "Word count requirement",
"以下是对以上文本的总结": "Below is a summary of the above text",
"但不要同时调整两个参数": "But do not adjust two parameters at the same time",
"📌省略": "Omit",
"请查看message": "Please check the message",
"如果所有页的内容都相同": "If all pages have the same content",
"我将在这4个选择中": "I will choose from these 4 options",
"请设置为True": "Please set to True",
"当 remain_txt_to_cut": "When remain_txt_to_cut",
"后续输出被截断": "Subsequent output is truncated",
"检查API_KEY": "Check API_KEY",
"阿里云实时语音识别 配置难度较高": "Alibaba Cloud real-time speech recognition has a higher configuration difficulty",
"图像生成提示为空白": "Image generation prompt is blank",
"由于实体关系图用到了{}符号": "Because the entity relationship diagram uses the {} symbol",
"系统繁忙": "System busy",
"月之暗面 API KEY": "Dark side of the moon API KEY",
"编写小说的下一幕": "Write the next scene of the novel",
"选择一种": "Choose one",
"或者flowchart TD": "Or flowchart TD",
"请把以下学术文章段落翻译成中文": "Please translate the following academic article paragraph into Chinese",
"7 实体关系图": "7 Entity relationship diagram",
"处理游戏的主体逻辑": "Handle the main logic of the game",
"请以“{headstart}”为开头": "Please start with \"{headstart}\"",
"匹配后单段上下文长度": "Length of single segment context after matching",
"先行者知道": "The pioneer knows",
"以及处理PDF文件的示例代码包含了用于文本切分的函数": "Example code for processing PDF files includes functions for text segmentation",
"未发现重复上传": "No duplicate uploads found",
"那么就不用切了": "Then there's no need to split",
"目前来说": "Currently",
"请在LLM_MODEL中配置": "Please configure in LLM_MODEL",
"是否启用上下文关联": "Whether to enable context association",
"为了加速计算": "To speed up calculations",
"登录请求": "Login request",
"这里解释一下正则表达式中的几个特殊字符": "Explanation of some special characters in regular expressions",
"其中数字对应关系为": "The corresponding relationship of the numbers is",
"修改配置有三种方法": "There are three ways to modify the configuration",
"请前往arxiv打开此论文下载页面": "Please go to arXiv and open the paper download page",
"然后download source手动下载latex源码包": "Then manually download the LaTeX source package by downloading the source",
"功能单元": "Functional unit",
"你需要翻译的文本如下": "The text you need to translate is as follows",
"以便于后续快速的匹配和查找操作": "To facilitate rapid matching and search operations later",
"文本内容": "Text content",
"自动更新、打开浏览器页面、预热tiktoken模块": "Auto-update, open browser page, warm up tiktoken module",
"原样传递": "Pass through as is",
"但是该文件格式不被支持": "But the file format is not supported",
"他现在是全宇宙中唯一的一个人了": "He is now the only person in the entire universe",
"取值范围0~1": "Value range 0~1",
"搜索匹配score阈值": "Search match score threshold",
"当字符串中有掩码tag时": "When there is a mask tag in the string",
"错误的不纳入对话": "Errors are not included in the conversation",
"英语": "English",
"象限提示图": "Quadrant prompt diagram",
"由于不管提供文本是什么": "Because regardless of what the provided text is",
"确定后续剧情的发展": "Determine the development of the subsequent plot",
"处理空输入导致报错的问题 https": "Handle the error caused by empty input",
"第 3 部分": "Part 3",
"不能等于 0 或 1": "Cannot be equal to 0 or 1",
"同时过大的图表可能需要复制到在线编辑器中进行渲染": "Large charts may need to be copied to an online editor for rendering",
"装饰器函数ArgsGeneralWrapper": "Decorator function ArgsGeneralWrapper",
"写个函数移除所有的换行符": "Write a function to remove all line breaks",
"默认为False": "Default is False",
"实例化BaiduSpider": "Instantiate BaiduSpider",
"9-思维导图": "Mind Map 9",
"是否开启跨域": "Whether to enable cross-domain",
"随机InteractiveMiniGame": "Random InteractiveMiniGame",
"用于构建HTML报告的类和方法用于构建HTML报告的类和方法用于构建HTML报告的类和方法": "Classes and methods for building HTML reports",
"这里填一个提示词字符串就行了": "Just fill in a prompt string here",
"文本切分": "Text segmentation",
"用于在生成mermaid图表时隐藏代码块": "Used to hide code blocks when generating mermaid charts",
"如果剩余文本的token数小于限制": "If the number of tokens in the remaining text is less than the limit",
"未能在规定时间内完成任务": "Failed to complete the task within the specified time",
"API key has been deactivated. Cohere以账户失效为由": "API key has been deactivated. Cohere cited account expiration as the reason",
"正在使用讯飞图片理解API": "Using the Xunfei Image Understanding API",
"如果您使用docker-compose部署": "If you deploy using docker-compose",
"最大输入 token 数": "Maximum input token count",
"遇到了控制请求速率限制": "Encountered control request rate limit",
"数值范围约为0-1100": "The numerical range is approximately 0-1100",
"几乎使他晕厥过去": "Almost made him faint",
"识图模型GPT-4V": "Image recognition model GPT-4V",
"零一万物模型 -=-=-=-=-=-=-": "Zero-One Universe Model",
"所有对话记录将自动保存在本地目录": "All conversation records will be saved automatically in the local directory",
"饼图": "Pie Chart",
"添加Live2D": "Add Live2D",
"⭐ 单线程方法": "Single-threaded Method",
"配图": "Illustration",
"根据上述已知信息": "Based on the Above Known Information",
"1. 后续剧情发展1": "1. Subsequent Plot Development 1",
"2-序列图": "Sequence Diagram",
"流程图": "Flowchart",
"需求分析": "Requirement Analysis",
"我认为更合理的是": "I Think a More Reasonable Approach Is",
"claude家族": "Claude Family",
"”的逻辑关系图": "Logic Relationship Diagram",
"给出人物的名字": "Provide the Names of Characters",
"无法自动下载该论文的Latex源码": "Unable to Automatically Download the LaTeX Source Code of the Paper",
"需要用户手动处理的信息": "Information That Requires Manual Processing by Users",
"点击展开“文件下载区”": "Click to Expand 'File Download Area'",
"生成长度过长": "Excessive Length Generated",
"\\n\\n2. 长效解决方案": "2. Long-term Solution",
"=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= 插件主程序2 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=": "=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= Plugin Main Program 2 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=",
"title 项目开发流程": "Title Project Development Process",
"如果您希望剧情立即收尾": "If You Want the Plot to End Immediately",
"空格转换为&nbsp": "Space Converted to &nbsp;",
"图片数量超过api上限": "Number of Images Exceeds API Limit",
"他知道": "He Knows",
"在这里输入自定义参数「分辨率-质量": "Enter Custom Parameters Here 'Resolution-Quality",
"例如ChatGLM&gpt-3.5-turbo&gpt-4": "For example ChatGLM, gpt-3.5-turbo, and gpt-4",
"账户管理": "Account Management",
"正在将翻译好的项目tex项目编译为PDF": "Compiling the Translated Project .tex Project into PDF",
"我们把 _max 后的文字转存至 remain_txt_to_cut_storage": "We save the text after _max to the remain_txt_to_cut_storage",
"标签之前停止匹配": "Stop matching before the label",
"例子": "Example",
"遍历检查是否有额外参数": "Iterate to check for extra parameters",
"文本分句长度": "Length of text segmentation",
"请你给出围绕“{subject}”的状态图": "Please provide a state diagram surrounding \"{subject}\"",
"用stream的方法避免中途网线被掐": "Use the stream method to avoid the cable being disconnected midway",
"然后在markdown表格中列出修改的内容": "Then list the changes in a Markdown table",
"以上是从文章中提取的摘要": "The above is an abstract extracted from the article",
"但是无法找到相关文件": "But unable to find the relevant file",
"上海AI-LAB书生大模型 -=-=-=-=-=-=-": "Shanghai AI-LAB Shu Sheng Large Model -=-=-=-=-=-=-",
"遇到第一个": "Meet the first",
"存储在名为const_extract_exp的变量中": "Stored in a variable named const_extract_exp",
"括号在正则表达式中表示捕获组": "Parentheses represent capture groups in regular expressions",
"那里的太空中渐渐隐现出一个方形区域": "A square area gradually appears in the space there",
"智谱GLM4超级模型🔥": "Zhipu GLM4 Super Model🔥",
"故事开头": "Beginning of the story",
"请检查文件格式是否正确": "Please check if the file format is correct",
"这个模式被编译成一个正则表达式对象": "This pattern is compiled into a regular expression object",
"单字符断句符": "Single character sentence break",
"看后续支持吧": "Let's see the follow-up support",
"markdown输入": "Markdown input",
"系统": "System",
"80字以内": "Within 80 characters",
"一个测试mermaid绘制图表的功能": "A function to test the Mermaid chart drawing",
"输入部分": "Input section",
"移除右侧逗号": "Remove the comma on the right",
"因此思维导图仅能通过参数调用": "Therefore, the mind map can only be invoked through parameters",
"6 状态图": "State Diagram",
"类图": "Class Diagram",
"不要重复前文": "Do not repeat the previous text",
"但内部": "But internally",
"小说的下一幕字数少于300字": "The next scene of the novel has fewer than 300 words",
"每个发展方向都精明扼要地用一句话说明": "Each development direction is concisely described in one sentence",
"充分考虑其之间的逻辑": "Fully consider the logic between them",
"兼顾前端状态的功能": "Take into account the functionality of the frontend state",
"1 流程图": "Flowchart",
"用户QQ群925365219": "User QQ Group 925365219",
"通义-本地模型 -=-=-=-=-=-=-": "Tongyi - Local Model",
"取值范围0-1000": "Value range 0-1000",
"但不是^*.开始": "But not ^*. Start",
"他们将钻出地壳去看诗云": "They will emerge from the crust to see the poetry cloud",
"我们正在互相讨论": "We are discussing with each other",
"值越小": "The smaller the value",
"请在以下几种故事走向中": "Please choose from the following story directions",
"请先把模型切换至gpt-*": "Please switch the model to gpt-* first",
"不再需要填写": "No longer needs to be filled out",
"深夜": "Late at night",
"小说的前文回顾": "Review of the previous text of the novel",
"项目文件树": "Project file tree",
"如果双引号前有终止符": "If there is a terminator before the double quotes",
"participant A as 用户": "Participant A as User",
"处理游戏初始化等特殊情况": "Handle special cases like game initialization",
"然后使用mermaid+llm绘制图表": "Then use mermaid+llm to draw charts",
"0表示不生效": "0 means not effective",
"在以下的剧情发展中": "In the following plot development",
"模型考虑具有 top_p 概率质量 tokens 的结果": "Model considering results with top_p probability quality tokens",
"根据字符串要给谁看": "Depending on who is intended to view the string",
"没有设置YIMODEL_API_KEY选项": "YIMODEL_API_KEY option is not set",
"换行符转换为": "Convert line breaks to",
"-风格": "-style",
"默认情况下并发量极低": "Default to a very low level of concurrency",
"为字符串加上上面定义的前缀和后缀": "Add the defined prefix and suffix to the string",
"先切换模型到gpt-*": "Switch the model to gpt-* first",
"它确保我们匹配的任意文本是尽可能短的": "It ensures that any text we match is as short as possible",
"积极地运用环境描写、人物描写等手法": "Actively use techniques such as environmental and character descriptions",
"零一万物": "Zero One Universe",
"html_local_file 本地文件取相对路径": "html_local_file takes the relative path of the local file",
"伊依一行三人乘坐一艘游艇在南太平洋上做吟诗航行": "Yi Yi and three others set sail on a yacht to recite poetry in the South Pacific",
"移除左边通配符": "Remove left wildcard characters",
"随后绘制图表": "Draw a chart subsequently",
"输入2": "Input 2",
"所以用最没有意义的一个点代替": "Therefore, replace it with the most meaningless point",
"等": "etc.",
"是本地文件": "Is a local file",
"正在文本切分": "Text segmentation in progress",
"等价于修改容器内部的环境变量": "Equivalent to modifying the environment variables inside the container",
"cohere等请求源": "Cohere and other request sources",
"我们再把 remain_txt_to_cut_storage 中的部分文字取出": "Then we extract part of the text from remain_txt_to_cut_storage",
"生成带掩码tag的字符串": "Generate a string with masked tags",
"智谱 -=-=-=-=-=-=-": "ZhiPu -=-=-=-=-=-=-",
"前缀字符串": "Prefix string",
"Temperature值越大随机性越大": "The larger the Temperature value, the greater the randomness",
"借用PDF切割中的函数对文本进行切割": "Use functions from PDF cutting to segment the text",
"挑选一种剧情发展": "Choose a plot development",
"将换行符转换为": "Convert line breaks to",
"0.1 意味着模型解码器只考虑从前 10% 的概率的候选集中取 tokens": "0.1 means the model decoder only considers taking tokens from the top 10% probability candidates",
"确定故事的下一步": "Determine the next step of the story",
"个文件的显示": "Display of a file",
"用于控制输出tokens的多样性": "Used to control the diversity of output tokens",
"导入BaiduSpider": "Import BaiduSpider",
"不输入则为模型自行判断": "If not entered, the model will judge on its own",
"准备下一次迭代": "Prepare for the next iteration",
"包含一些用于文本处理和模型微调的函数和装饰器包含一些用于文本处理和模型微调的函数和装饰器包含一些用于文本处理和模型微调的函数和装饰器": "Contains functions and decorators for text processing and model fine-tuning",
"由于没有单独的参数保存包含图片的历史": "Since there is no separate parameter to save the history with images",
"section 开发": "section development",
"注意这里没有掩码tag": "Note that there is no mask tag here",
"section 设计": "section design",
"对话|编程|学术|智能体": "Dialogue | Programming | Academic | Intelligent Agent",
"您只需要选择其中一种即可": "You only need to choose one of them",
"添加Live2D形象": "Add Live2D image",
"请用以下命令安装": "Please install with the following command",
"触发了Google的安全访问策略": "Triggered Google's safe access policy",
"参数示例「1024x1024-hd-vivid」 || 分辨率支持 「1024x1024」": "Parameter example '1024x1024-hd-vivid' || Resolution support '1024x1024'",
"结局除外": "Excluding the ending",
"subgraph 函数调用": "subgraph function call",
"项目示意图": "Project diagram",
"实体关系图": "Entity relationship diagram",
"计算机把他的代号定为M102": "The computer named his code M102",
"首先尝试用双空行": "Try using double empty lines first",
"接下来将判断适合的图表类型": "Next, determine the appropriate chart type",
"注意前面的几句都小心保留了双引号": "Note that the previous sentences have carefully preserved double quotes",
"您正在调用插件": "You are calling a plugin",
"从上到下": "From top to bottom",
"请配置HUOSHAN_API_KEY": "Please configure HUOSHAN_API_KEY",
"知识检索内容相关度 Score": "Knowledge retrieval content relevance score",
"所以不会被处理": "So it will not be processed",
"设置10秒即可": "Set to 10 seconds",
"以空格分割": "Separated by space",
"根据位置和名称": "According to position and name",
"一些垃圾第三方接口出现这样的错误": "Some crappy third-party interfaces have this error",
"////////////////////// 输入清除键 ///////////////////////////": "////////////////////// Input Clear Key ///////////////////////////",
"并解析为html or md 文本": "And parse as HTML or MD text",
"匹配单段内容的连接上下文长度": "Matching single section content connection context length",
"控制输出的随机性": "Control the randomness of output",
"是模型名": "Is model name",
"请检查配置文件": "Please check the configuration file",
"如何使用one-api快速接入": "How to quickly access using one-api",
"请求失败": "Request failed",
"追加列表": "Append list",
"////////////////////// 函数插件区 ///////////////////////////": "////////////////////// Function Plugin Area ///////////////////////////",
"你是WPSAi": "You are WPSAi",
"第五部分 一些文件处理方法": "Part Five Some file processing methods",
"圆圆迷上了肥皂泡": "Yuan Yuan is fascinated by soap bubbles",
"可选参数": "Optional parameters",
"one-api模型": "one-api model",
"port/gpt_academic/ 下": "Under port/gpt_academic/",
"下一段故事": "Next part of the story",
"* 表示前一个字符可以出现0次或多次": "* means the previous character can appear 0 or more times",
"向后兼容配置": "Backward compatible configuration",
"输出部分": "Output section",
"稍后": "Later",
"比如比喻、拟人、排比、对偶、夸张等等": "For example, similes, personification, parallelism, antithesis, hyperbole, etc.",
"是自定义按钮": "Is a custom button",
"你需要根据用户给出的小说段落": "You need to based on the novel paragraph given by the user",
"以mermaid flowchart的形式展示": "Display in the form of a mermaid flowchart",
"最后一幕的字数少于1000字": "The last scene has fewer than 1000 words",
"如没出错则保持为空": "Keep it empty if there are no errors",
"建议您根据应用场景调整 top_p 或 temperature 参数": "It is recommended to adjust the top_p or temperature parameters according to the application scenario",
"仿佛他的出生就是要和这东西约会似的": "As if his birth was meant to date this thing",
"处理特殊的渲染问题": "Handle special rendering issues",
"我认为最合理的故事结局是": "I think the most reasonable ending for the story is",
"请给出上方内容的思维导图": "Please provide a mind map of the content above",
"点other Formats": "Click on other Formats",
"文件加载完毕": "File loaded",
"Your account is not active. Cohere以账户失效为由": "Your account is not active. Cohere cites the account's inactivation as the reason",
"找不到任何.pdf文件": "Cannot find any .pdf files",
"请根据判断结果绘制相应的图表": "Please draw the corresponding chart based on the judgment result",
"积极地运用修辞手法": "Actively use rhetorical devices",
"工具函数 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-": "Utility function -=-=-=-=-=-=-=-=-=-=-=-=-=-=-=",
"=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= 插件主程序1 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=": "=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-= Plugin Main Program 1 =-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=",
"在": "In",
"即正则表达式库": "That is, the regular expression library",
"////////////////////// 基础功能区 ///////////////////////////": "////////////////////// Basic Function Area ///////////////////////////",
"并重新编译PDF | 输入参数为路径": "And recompile PDF | Input parameter is the path",
"甘特图": "Gantt Chart",
"但是需要注册账号": "But registration is required",
"获取完整的从Cohere返回的报错": "Get the complete error message returned from Cohere",
"合并摘要": "Merge Summary",
"这最后一课要提前讲了": "The last lesson will be taught ahead of schedule",
"大模型": "Large Model",
"查找输入区内容中的文件": "Find files in the input area content",
"预处理参数": "Preprocessing Parameters",
"这段代码定义了一个名为ProxyNetworkActivate的空上下文管理器": "This code defines an empty context manager named ProxyNetworkActivate",
"对话错误": "Dialogue Error",
"确定故事的结局": "Determine the ending of the story",
"第 1 部分": "Part 1",
"直到遇到括号外部最近的限定符": "Until the nearest qualifier outside the parentheses is encountered",
"负责向用户前端展示对话": "Responsible for displaying dialogue to the user frontend",
"查询内容": "Query Content",
"匹配结果更精准": "More accurate matching results",
"根据选择的图表类型绘制图表": "Draw a chart based on the selected chart type",
"空格、换行、空字符串都会报错": "Spaces, line breaks, and empty strings will all result in errors",
"请尝试削减单次输入的文本量": "Please try to reduce the amount of text in a single input",
"上传到路径": "Upload to path",
"中": "In",
"后缀字符串": "Suffix string",
"您还可以在接入one-api时": "You can also when accessing one-api",
"请说 “根据已知信息无法回答该问题” 或 “没有提供足够的相关信息”": "Please say 'Cannot answer the question based on available information' or 'Not enough relevant information is provided'",
"Cohere和API2D不会走这里": "Cohere and API2D will not go here",
"节点名字使用引号包裹": "Node names should be enclosed in quotes",
"这次的故事开头是": "The beginning of this story is",
"你是一个想象力丰富的杰出作家": "You are a brilliant writer with a rich imagination",
"正在与你的朋友互动": "Interacting with your friends",
"/「-hd」 || 风格支持 「-vivid」": "/ '-hd' || Style supports '-vivid'",
"如输入区无内容则直接解析历史记录": "If the input area is empty, parse the history directly",
"根据以上的情节": "Based on the above plot",
"将图表类型参数赋值为插件参数": "Set the chart type parameter to the plugin parameter",
"根据图片类型返回image/jpeg": "Return image/jpeg based on image type",
"如果lang_reference是英文": "If lang_reference is English",
"示意图": "Schematic diagram",
"完整参数列表": "Complete parameter list",
"仿佛灿烂的群星的背景被剪出一个方口": "As if the brilliant background of stars has been cut out into a square",
"如果没有找到合适的切分点": "If no suitable splitting point is found",
"获取数据": "Get data",
"内嵌的javascript代码": "Embedded JavaScript code",
"绘制多种mermaid图表": "Draw various mermaid charts",
"无效": "Invalid",
"查找pdf/md/word并获取文本内容并返回状态以及文本": "Search for pdf/md/word, retrieve text content, and return status and text",
"总结绘制脑图": "Summarize mind mapping",
"禁止杜撰不符合我选择的剧情": "Prohibit making up plots that do not match my choice",
"正在生成向量库": "Generating vector library",
"是LLM的内部调优参数": "Is an internal tuning parameter of LLM",
"请你选择一个合适的图表类型": "Please choose an appropriate chart type",
"请在“输入区”输入图像生成提示": "Please enter image generation prompts in the 'input area'",
"经测试设置为小于500时": "After testing, set it to less than 500",
"当然": "Certainly",
"必要": "Necessary",
"从左到右": "From left to right",
"接下来调用本地Latex翻译插件即可": "Next, call the local Latex translation plugin",
"如果相同则返回": "If the same, return",
"根据语言": "According to the language",
"使用mermaid语法": "Use mermaid syntax",
"这是游戏的第一步": "This is the first step of the game",
"构建后续剧情引导": "Building subsequent plot guidance",
"以满足 token 限制": "To meet the token limit",
"也就是说": "That is to say",
"mermaid语法举例": "Mermaid syntax example",
"发送": "Send",
"那么就只显示英文提示词": "Then only display English prompts",
"正在检查": "Checking",
"返回处理后的字符串": "Return the processed string",
"2 序列图": "Sequence diagram 2",
"yi-34b-chat-0205只有4k上下文": "yi-34b-chat-0205 has only 4k context",
"请检查配置": "Please check the configuration",
"请你给出围绕“{subject}”的象限图": "Please provide a quadrant diagram around '{subject}'",
"故事该结束了": "The story should end",
"修复缩进": "Fix indentation",
"请描述给出的图片": "Please describe the given image",
"启用插件热加载": "Enable plugin hot reload",
"通义-在线模型 -=-=-=-=-=-=-": "Tongyi - Online Model",
"比较页数是否相同": "Compare if the number of pages is the same",
"正式开始服务": "Officially start the service",
"使用mermaid flowchart对以上文本进行总结": "Summarize the above text using a mermaid flowchart",
"不是vision 才处理history": "Not only vision but also handle history",
"来定义了一个正则表达式模式": "Defined a regular expression pattern",
"IP地址等": "IP addresses, etc.",
"那么双引号才是句子的终点": "Then the double quotes mark the end of the sentence",
"输入1": "Input 1",
"/「1792x1024」/「1024x1792」 || 质量支持 「-standard」": "/'1792x1024'/ '1024x1792' || Quality support '-standard'",
"为了避免索引错误将其更改为大写": "To avoid indexing errors, change it to uppercase",
"搜索网页": "Search the web",
"用于控制生成文本的随机性和创造性": "Used to control the randomness and creativity of generated text",
"不能等于 0": "Cannot equal 0",
"在距地球五万光年的远方": "At a distance of fifty thousand light-years from Earth",
". 表示任意单一字符": ". represents any single character",
"选择预测值最大的k个token进行采样": "Select the k tokens with the largest predicted values for sampling",
"输出2": "Output 2",
"函数示意图": "Function Diagram",
"You are associated with a deactivated account. Cohere以账户失效为由": "You are associated with a deactivated account. Cohere due to account deactivation",
"3. 后续剧情发展3": "3. Subsequent Plot Development",
"并以“剧情收尾”四个字提示程序": "And use the four characters 'Plot Conclusion' as a prompt for the program",
"中文省略号": "Chinese Ellipsis",
"则不生效": "Will not take effect",
"目前是两位小数": "Currently is two decimal places",
"Incorrect API key. Cohere以提供了不正确的API_KEY为由": "Incorrect API key. Cohere reports an incorrect API_KEY."
}
"Arxiv论文精细翻译": "TranslatedText"
}

查看文件

@@ -44,7 +44,7 @@
"批量总结PDF文档": "BatchSummarizePDFDocuments",
"批量总结PDF文档pdfminer": "BatchSummarizePDFDocumentsUsingPDFMiner",
"批量翻译PDF文档": "BatchTranslatePDFDocuments",
"PDF批量翻译": "BatchTranslatePDFDocumentsUsingMultiThreading",
"批量翻译PDF文档_多线程": "BatchTranslatePDFDocumentsUsingMultiThreading",
"谷歌检索小助手": "GoogleSearchAssistant",
"理解PDF文档内容标准文件输入": "StandardFileInputForUnderstandingPDFDocumentContent",
"理解PDF文档内容": "UnderstandingPDFDocumentContent",
@@ -1492,7 +1492,7 @@
"交互功能模板函数": "InteractiveFunctionTemplateFunction",
"交互功能函数模板": "InteractiveFunctionFunctionTemplate",
"Latex英文纠错加PDF对比": "LatexEnglishErrorCorrectionWithPDFComparison",
"Latex输出PDF": "LatexOutputPDFResult",
"Latex输出PDF结果": "LatexOutputPDFResult",
"Latex翻译中文并重新编译PDF": "TranslateChineseAndRecompilePDF",
"语音助手": "VoiceAssistant",
"微调数据集生成": "FineTuneDatasetGeneration",
@@ -2106,4 +2106,4 @@
"改变输入参数的顺序与结构": "入力パラメータの順序と構造を変更する",
"正在精细切分latex文件": "LaTeXファイルを細かく分割しています",
"读取文件": "ファイルを読み込んでいます"
}
}

查看文件

@@ -6,7 +6,7 @@
"Latex英文纠错加PDF对比": "CorrectEnglishInLatexWithPDFComparison",
"下载arxiv论文并翻译摘要": "DownloadArxivPaperAndTranslateAbstract",
"Markdown翻译指定语言": "TranslateMarkdownToSpecifiedLanguage",
"PDF批量翻译": "BatchTranslatePDFDocuments_MultiThreaded",
"批量翻译PDF文档_多线程": "BatchTranslatePDFDocuments_MultiThreaded",
"下载arxiv论文翻译摘要": "DownloadArxivPaperTranslateAbstract",
"解析一个Python项目": "ParsePythonProject",
"解析一个Golang项目": "ParseGolangProject",
@@ -16,7 +16,7 @@
"批量Markdown翻译": "BatchTranslateMarkdown",
"连接bing搜索回答问题": "ConnectBingSearchAnswerQuestion",
"Langchain知识库": "LangchainKnowledgeBase",
"Latex输出PDF": "OutputPDFFromLatex",
"Latex输出PDF结果": "OutputPDFFromLatex",
"把字符太少的块清除为回车": "ClearBlocksWithTooFewCharactersToNewline",
"Latex精细分解与转化": "DecomposeAndConvertLatex",
"解析一个C项目的头文件": "ParseCProjectHeaderFiles",
@@ -97,12 +97,5 @@
"多智能体": "MultiAgent",
"图片生成_DALLE2": "ImageGeneration_DALLE2",
"图片生成_DALLE3": "ImageGeneration_DALLE3",
"图片修改_DALLE2": "ImageModification_DALLE2",
"生成多种Mermaid图表": "GenerateMultipleMermaidCharts",
"知识库文件注入": "InjectKnowledgeBaseFiles",
"PDF翻译中文并重新编译PDF": "TranslatePDFToChineseAndRecompilePDF",
"随机小游戏": "RandomMiniGame",
"互动小游戏": "InteractiveMiniGame",
"解析历史输入": "ParseHistoricalInput",
"高阶功能模板函数示意图": "HighOrderFunctionTemplateDiagram"
"图片修改_DALLE2": "ImageModification_DALLE2"
}

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@@ -43,7 +43,7 @@
"批量总结PDF文档": "BatchSummarizePDFDocuments",
"批量总结PDF文档pdfminer": "BatchSummarizePDFDocumentsPdfminer",
"批量翻译PDF文档": "BatchTranslatePDFDocuments",
"PDF批量翻译": "BatchTranslatePdfDocumentsMultithreaded",
"批量翻译PDF文档_多线程": "BatchTranslatePdfDocumentsMultithreaded",
"谷歌检索小助手": "GoogleSearchAssistant",
"理解PDF文档内容标准文件输入": "StandardFileInputForUnderstandingPdfDocumentContent",
"理解PDF文档内容": "UnderstandingPdfDocumentContent",
@@ -1468,7 +1468,7 @@
"交互功能模板函数": "InteractiveFunctionTemplateFunctions",
"交互功能函数模板": "InteractiveFunctionFunctionTemplates",
"Latex英文纠错加PDF对比": "LatexEnglishCorrectionWithPDFComparison",
"Latex输出PDF": "OutputPDFFromLatex",
"Latex输出PDF结果": "OutputPDFFromLatex",
"Latex翻译中文并重新编译PDF": "TranslateLatexToChineseAndRecompilePDF",
"语音助手": "VoiceAssistant",
"微调数据集生成": "FineTuneDatasetGeneration",

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@@ -3,7 +3,7 @@
## 1. 安装额外依赖
```
pip install --upgrade pyOpenSSL webrtcvad scipy git+https://github.com/aliyun/alibabacloud-nls-python-sdk.git
pip install --upgrade pyOpenSSL scipy git+https://github.com/aliyun/alibabacloud-nls-python-sdk.git
```
如果因为特色网络问题导致上述命令无法执行:
@@ -61,3 +61,4 @@ VI 两种音频监听模式切换时,需要刷新页面才有效。
VII 非localhost运行+非https情况下无法打开录音功能的坑https://blog.csdn.net/weixin_39461487/article/details/109594434
## 5.点击函数插件区“实时音频采集” 或者其他音频交互功能

查看文件

@@ -1,58 +0,0 @@
# 使用TTS文字转语音
## 1. 使用EDGE-TTS简单
将本项目配置项修改如下即可
```
TTS_TYPE = "EDGE_TTS"
EDGE_TTS_VOICE = "zh-CN-XiaoxiaoNeural"
```
## 2. 使用SoVITS需要有显卡
使用以下docker-compose.yml文件,先启动SoVITS服务API
1. 创建以下文件夹结构
```shell
.
├── docker-compose.yml
└── reference
├── clone_target_txt.txt
└── clone_target_wave.mp3
```
2. 其中`docker-compose.yml`为
```yaml
version: '3.8'
services:
gpt-sovits:
image: fuqingxu/sovits_gptac_trim:latest
container_name: sovits_gptac_container
working_dir: /workspace/gpt_sovits_demo
environment:
- is_half=False
- is_share=False
volumes:
- ./reference:/reference
ports:
- "19880:9880" # 19880 为 sovits api 的暴露端口,记住它
shm_size: 16G
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: "all"
capabilities: [gpu]
command: bash -c "python3 api.py"
```
3. 其中`clone_target_wave.mp3`为需要克隆的角色音频,`clone_target_txt.txt`为该音频对应的文字文本( https://wiki.biligame.com/ys/%E8%A7%92%E8%89%B2%E8%AF%AD%E9%9F%B3
4. 运行`docker-compose up`
5. 将本项目配置项修改如下即可
(19880 为 sovits api 的暴露端口,与docker-compose.yml中的端口对应)
```
TTS_TYPE = "LOCAL_SOVITS_API"
GPT_SOVITS_URL = "http://127.0.0.1:19880"
```
6. 启动本项目

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