deep-share
A lightweight browser extension designed for AI users to easily copy formulas from ChatGPT, DeepSeek, Grok and 10+ other AI conversations, export beautifully formatted Word documents, and support long conversation screenshot sharing for DeepSeek.
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DeepShare is a lightweight browser extension designed for AI users to easily copy formulas from various AI conversations, export beautifully formatted Word documents, and support long conversation screenshot sharing for DeepSeek. It allows one-click screenshot of AI conversations, sharing as image or plain text, LaTeX formula copying, Word document export with formula formatting preserved, custom watermark support, selective sharing of conversation content, clean and simple interface, and is open source with no ads.
README:
A lightweight browser extension designed for AI users to easily copy formulas from ChatGPT, DeepSeek, Grok and 10+ other AI conversations, export beautifully formatted Word documents, and support long conversation screenshot sharing for DeepSeek.
- One-click screenshot of AI conversations (DeepSeek only currently)
- Share as image or plain text
- One-click LaTeX formula copying (click any math formula to copy its LaTeX code)
- Export to Word document (DOCX) with formula formatting preserved (one-click export supported in DeepSeek only)
- Custom watermark support
- Selective sharing of conversation content
- Choose single or multiple conversation turns
- One-click select all/deselect all functionality
- Clean and simple interface
- Open source with no ads
| AI Platform | Formula Copy | Word Export | Conversation Screenshot |
|---|---|---|---|
| DeepSeek | ✓ | ✓ | ✓ |
| ChatGPT | ✓ | ✓ | ✗ |
| Gemini | ✓ | ✓ | ✗ |
| Grok | ✓ | Manual paste | ✗ |
| ChatGLM | ✓ | Manual paste | ✗ |
| OpenRouter | ✓ | Manual paste | ✗ |
| Poe | ✓ | Manual paste | ✗ |
| Monica | ✓ | Manual paste | ✗ |
| Cici | ✗ | Manual paste | ✗ |
| Yuanbao | ✗ | Manual paste | ✗ |
| Kimi | ✓ | Manual paste | ✗ |
| Tongyi | ✓ | Manual paste | ✗ |
| Xunfei Xinghuo | ✓ | Manual paste | ✗ |
| Wen Xiaobai | ✓ | Manual paste | ✗ |
| AskManyAI | ✓ | Manual paste | ✗ |
| Wanzhi | ✓ | Manual paste | ✗ |
| Yi Xiao | ✓ | Manual paste | ✗ |
| Bot.n | ✓ | Manual paste | ✗ |
| Zhihu | ✓ | ✗ | ✗ |
Note: Manual paste functionality means you can copy the Markdown text from AI responses into the extension to convert it to a Word document. Kimi officially supports formula copying - right-click on formulas to copy.
- Install from Edge/Chrome/Firefox Web Store
- Install from source code:
- Download and extract the source code
- Open Edge\Chrome extensions page
- Enable developer mode
- Click "Load unpacked"
- Select the extracted folder
- Important Note: After installation, please refresh any open AI chat pages for the extension to take effect.
You can watch a short demo of DeepShare on YouTube:
This project is open-sourced under the CC BY-NC 4.0 License. This means you are free to use and modify the code for non-commercial purposes, but commercial use is prohibited.
If you find this project helpful, please consider supporting its development:
- ⭐ Star this project
- 📢 Share it with others
- 🐛 Submit bug reports or feature suggestions
- 🧧 Sponsor the project (scan QR code with WeChat)
Thank you for your support!
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