Chain of Draft (CoD) MCP Server

Chain of Draft (CoD) MCP Server

By stat-guy GitHub

Chain of Draft (CoD) MCP Server: An MCP server implementation of the Chain of Draft reasoning approach for more efficient LLM reasoning.

mathgpt math-solver
Overview

What is Chain of Draft (CoD)?

Chain of Draft (CoD) is an MCP server implementation that utilizes a novel reasoning approach to enhance the efficiency of large language models (LLMs) by generating concise and informative intermediate reasoning outputs, thereby reducing token usage while maintaining accuracy.

How to use Chain of Draft (CoD)?

To use CoD, clone the repository, install the necessary dependencies, configure your API keys, and run the server. You can also integrate it with Claude Desktop or use it directly in your Python or JavaScript applications.

Key features of Chain of Draft (CoD)?

  • Efficient token usage (as low as 7.6% of standard CoT)
  • Faster response times due to shorter generation
  • Cost savings on API calls
  • Maintained or improved accuracy compared to traditional methods
  • Flexibility across various reasoning tasks and domains
  • Comprehensive performance analytics and adaptive word limits

Use cases of Chain of Draft (CoD)?

  1. Solving complex math problems with minimal token usage.
  2. Enhancing coding problem-solving efficiency.
  3. Providing quick logical reasoning outputs.
  4. Analyzing performance metrics for different reasoning approaches.

FAQ from Chain of Draft (CoD)?

  • What programming languages are supported?

    CoD is available in both Python and JavaScript implementations.

  • Can I integrate CoD with existing applications?

    Yes! CoD is designed to be a drop-in replacement for standard OpenAI clients, making integration straightforward.

  • Is there a performance tracking feature?

    Yes, CoD includes performance analytics to monitor token usage, accuracy, and execution time.

Content

Chain of Draft (CoD) MCP Server

Overview

This MCP server implements the Chain of Draft (CoD) reasoning approach as described in the research paper "Chain of Draft: Thinking Faster by Writing Less". CoD is a novel paradigm that allows LLMs to generate minimalistic yet informative intermediate reasoning outputs while solving tasks, significantly reducing token usage while maintaining accuracy.

Key Benefits

  • Efficiency: Significantly reduced token usage (as little as 7.6% of standard CoT)
  • Speed: Faster responses due to shorter generation time
  • Cost Savings: Lower API costs for LLM calls
  • Maintained Accuracy: Similar or even improved accuracy compared to CoT
  • Flexibility: Applicable across various reasoning tasks and domains

Features

  1. Core Chain of Draft Implementation

    • Concise reasoning steps (typically 5 words or less)
    • Format enforcement
    • Answer extraction
  2. Performance Analytics

    • Token usage tracking
    • Solution accuracy monitoring
    • Execution time measurement
    • Domain-specific performance metrics
  3. Adaptive Word Limits

    • Automatic complexity estimation
    • Dynamic adjustment of word limits
    • Domain-specific calibration
  4. Comprehensive Example Database

    • CoT to CoD transformation
    • Domain-specific examples (math, code, biology, physics, chemistry, puzzle)
    • Example retrieval based on problem similarity
  5. Format Enforcement

    • Post-processing to ensure adherence to word limits
    • Step structure preservation
    • Adherence analytics
  6. Hybrid Reasoning Approaches

    • Automatic selection between CoD and CoT
    • Domain-specific optimization
    • Historical performance-based selection
  7. OpenAI API Compatibility

    • Drop-in replacement for standard OpenAI clients
    • Support for both completions and chat interfaces
    • Easy integration into existing workflows

Setup and Installation

Prerequisites

  • Python 3.10+ (for Python implementation)
  • Node.js 18+ (for JavaScript implementation)
  • Anthropic API key

Python Installation

  1. Clone the repository
  2. Install dependencies:
    pip install -r requirements.txt
    
  3. Configure API keys in .env file:
    ANTHROPIC_API_KEY=your_api_key_here
    
  4. Run the server:
    python server.py
    

JavaScript Installation

  1. Clone the repository
  2. Install dependencies:
    npm install
    
  3. Configure API keys in .env file:
    ANTHROPIC_API_KEY=your_api_key_here
    
  4. Run the server:
    node index.js
    

Claude Desktop Integration

To integrate with Claude Desktop:

  1. Install Claude Desktop from claude.ai/download

  2. Create or edit the Claude Desktop config file:

    ~/Library/Application Support/Claude/claude_desktop_config.json
    
  3. Add the server configuration (Python version):

    {
        "mcpServers": {
            "chain-of-draft": {
                "command": "python3",
                "args": ["/absolute/path/to/cod/server.py"],
                "env": {
                    "ANTHROPIC_API_KEY": "your_api_key_here"
                }
            }
        }
    }
    

    Or for the JavaScript version:

    {
        "mcpServers": {
            "chain-of-draft": {
                "command": "node",
                "args": ["/absolute/path/to/cod/index.js"],
                "env": {
                    "ANTHROPIC_API_KEY": "your_api_key_here"
                }
            }
        }
    }
    
  4. Restart Claude Desktop

You can also use the Claude CLI to add the server:

# For Python implementation
claude mcp add chain-of-draft -e ANTHROPIC_API_KEY="your_api_key_here" "python3 /absolute/path/to/cod/server.py"

# For JavaScript implementation
claude mcp add chain-of-draft -e ANTHROPIC_API_KEY="your_api_key_here" "node /absolute/path/to/cod/index.js"

Available Tools

The Chain of Draft server provides the following tools:

ToolDescription
chain_of_draft_solveSolve a problem using Chain of Draft reasoning
math_solveSolve a math problem with CoD
code_solveSolve a coding problem with CoD
logic_solveSolve a logic problem with CoD
get_performance_statsGet performance stats for CoD vs CoT
get_token_reductionGet token reduction statistics
analyze_problem_complexityAnalyze problem complexity

Developer Usage

Python Client

If you want to use the Chain of Draft client directly in your Python code:

from client import ChainOfDraftClient

# Create client 
cod_client = ChainOfDraftClient()

# Use directly
result = await cod_client.solve_with_reasoning(
    problem="Solve: 247 + 394 = ?",
    domain="math"
)

print(f"Answer: {result['final_answer']}")
print(f"Reasoning: {result['reasoning_steps']}")
print(f"Tokens used: {result['token_count']}")

JavaScript Client

For JavaScript/Node.js applications:

import { Anthropic } from "@anthropic-ai/sdk";
import dotenv from "dotenv";

// Load environment variables
dotenv.config();

// Create the Anthropic client
const anthropic = new Anthropic({
  apiKey: process.env.ANTHROPIC_API_KEY,
});

// Import the Chain of Draft client
import chainOfDraftClient from './lib/chain-of-draft-client.js';

// Use the client
async function solveMathProblem() {
  const result = await chainOfDraftClient.solveWithReasoning({
    problem: "Solve: 247 + 394 = ?",
    domain: "math",
    max_words_per_step: 5
  });
  
  console.log(`Answer: ${result.final_answer}`);
  console.log(`Reasoning: ${result.reasoning_steps}`);
  console.log(`Tokens used: ${result.token_count}`);
}

solveMathProblem();

Implementation Details

The server is available in both Python and JavaScript implementations, both consisting of several integrated components:

Python Implementation

  1. AnalyticsService: Tracks performance metrics across different problem domains and reasoning approaches
  2. ComplexityEstimator: Analyzes problems to determine appropriate word limits
  3. ExampleDatabase: Manages and retrieves examples, transforming CoT examples to CoD format
  4. FormatEnforcer: Ensures reasoning steps adhere to word limits
  5. ReasoningSelector: Intelligently chooses between CoD and CoT based on problem characteristics

JavaScript Implementation

  1. analyticsDb: In-memory database for tracking performance metrics
  2. complexityEstimator: Analyzes problems to determine complexity and appropriate word limits
  3. formatEnforcer: Ensures reasoning steps adhere to word limits
  4. reasoningSelector: Automatically chooses between CoD and CoT based on problem characteristics and historical performance

Both implementations follow the same core principles and provide identical MCP tools, making them interchangeable for most use cases.

License

This project is open-source and available under the MIT license.

No tools information available.

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