CoT-Lab / README.md
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metadata
title: 'CoT-Lab: Human-AI Co-Thinking Laboratory'
emoji: πŸ€–
colorFrom: blue
colorTo: gray
sdk: gradio
python_version: '3.13'
sdk_version: 5.13.1
app_file: app.py
models:
  - deepseek-ai/DeepSeek-R1
tags:
  - writing-assistant
  - multilingual
license: mit

CoT-Lab: Human-AI Co-Thinking Laboratory

Huggingface Spaces πŸ€— | GitHub Repository 🌐 δΈ­ζ–‡README

Sync your thinking with AI reasoning models to achieve deeper cognitive alignment Follow, learn, and iterate the thought within one turn

🌟 Introduction

CoT-Lab is an experimental interface exploring new paradigms in human-AI collaboration. Based on Cognitive Load Theory and Active Learning principles, it creates a "Thought Partner" relationship by enabling:

  • 🧠 Cognitive Synchronization
    Slow-paced AI output aligned with human information processing speed
  • ✍️ Collaborative Thought Weaving
    Human active participation in AI's Chain of Thought

** This project is part of ongoing exploration. Under active development, discussion and feedback are welcome! **

πŸ›  Usage Guide

Basic Operation

  1. Set Initial Prompt
    Describe your prompy in the input box (e.g., "Explain quantum computing basics")

  2. Adjust Cognitive Parameters

    • ⏱ Thought Sync Throughput: tokens/sec - 5:Read-aloud, 10:Follow-along, 50:Skim
    • πŸ“ Human Thinking Cadence: Auto-pause every X paragraphs (Default off - recommended for active learning)
  3. Interactive Workflow

    • Click Generate to start co-thinking, follow the thinking process
    • Edit AI's reasoning when it pauses - or pause it anytime with Shift+Enter
    • Use Shift+Enter to hand over to AI again

🧠 Design Philosophy

  • Cognitive Load Optimization
    Information chunking (Chunking) adapts to working memory limits, serialized information presentation reduces cognitive load from visual searching

  • Active Learning Enhancement
    Direct manipulation interface promotes deeper cognitive engagement

  • Distributed Cognition
    Explore hybrid human-AI problem-solving paradiam

πŸ“₯ Installation & Deployment

Local deployment is (currently) required if you want to work with locally hosted LLMs.

Prerequisites: Python 3.11+ | Valid Deepseek API Key or OpenAI SDK compatible API.

# Clone repository
git clone https://github.com/Intelligent-Internet/CoT-Lab-Demo
cd CoT-Lab

# Install dependencies
pip install -r requirements.txt

# Configure environment
API_KEY=sk-****
API_URL=https://api.deepseek.com/beta
API_MODEL=deepseek-reasoner

# Launch application
python app.py

πŸ“„ License

MIT License Β© 2024 [ii.inc]

Contact

[email protected] (Dango233)