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shannon-thinking

MCP.Pizza Chef: olaservo

The shannon-thinking MCP server implements Claude Shannon's structured problem-solving approach, guiding users through problem definition, constraint identification, mathematical modeling, validation, and practical implementation. It helps break down complex problems into manageable, logical steps, enabling rigorous analysis and solution design inspired by information theory principles.

Use This MCP server To

Break down complex problems into structured, logical steps Apply mathematical modeling to real-world problem scenarios Validate solutions through formal proofs or experimental tests Design practical implementations based on theoretical models Guide AI workflows with systematic problem-solving patterns Integrate structured reasoning into AI-assisted decision making

README

shannon-thinking

An MCP server demonstrating Claude Shannon's systematic problem-solving methodology. This server provides a tool that helps break down complex problems into structured thoughts following Shannon's approach of problem definition, mathematical modeling, and practical implementation.

Shannon Thinking Server MCP server

Overview

Claude Shannon, known as the father of information theory, approached complex problems through a systematic methodology:

  1. Problem Definition: Strip the problem to its fundamental elements
  2. Constraints: Identify system limitations and boundaries
  3. Model: Develop mathematical/theoretical frameworks
  4. Proof/Validation: Validate through formal proofs or experimental testing
  5. Implementation/Experiment: Design and test practical solutions

This MCP server demonstrates this methodology as a tool that helps guide systematic problem-solving through these stages.

Installation

NPX

{
  "mcpServers": {
    "shannon-thinking": {
      "command": "npx",
      "args": [
        "-y",
        "server-shannon-thinking@latest"
      ]
    }
  }
}

Usage

The server provides a single tool named shannonthinking that structures problem-solving thoughts according to Shannon's methodology.

Each thought must include:

  • The actual thought content
  • Type (problem_definition/constraints/model/proof/implementation)
  • Thought number and total thoughts estimate
  • Confidence level (uncertainty: 0-1)
  • Dependencies on previous thoughts
  • Explicit assumptions
  • Whether another thought step is needed

Additional capabilities:

  • Revision: Thoughts can revise earlier steps as understanding evolves
  • Recheck: Mark steps that need re-examination with new information
  • Experimental Validation: Support for empirical testing alongside formal proofs
  • Implementation Notes: Practical constraints and proposed solutions

Example Usage

const thought = {
  thought: "The core problem can be defined as an information flow optimization",
  thoughtType: "problem_definition",
  thoughtNumber: 1,
  totalThoughts: 5,
  uncertainty: 0.2,
  dependencies: [],
  assumptions: ["System has finite capacity", "Information flow is continuous"],
  nextThoughtNeeded: true,
  // Optional: Mark as revision of earlier definition
  isRevision: false,
  // Optional: Indicate step needs recheck
  recheckStep: {
    stepToRecheck: "constraints",
    reason: "New capacity limitations discovered",
    newInformation: "System shows non-linear scaling"
  }
};

// Use with MCP client
const result = await client.callTool("shannonthinking", thought);

Features

  • Iterative Problem-Solving: Supports revisions and rechecks as understanding evolves
  • Flexible Validation: Combines formal proofs with experimental validation
  • Dependency Tracking: Explicitly tracks how thoughts build upon previous ones
  • Assumption Management: Requires clear documentation of assumptions
  • Confidence Levels: Quantifies uncertainty in each step
  • Rich Feedback: Formatted console output with color-coding, symbols, and validation results

Development

# Install dependencies
npm install

# Build
npm run build

# Run tests
npm test

# Watch mode during development
npm run watch

Tool Schema

The tool accepts thoughts with the following structure:

interface ShannonThought {
  thought: string;
  thoughtType: "problem_definition" | "constraints" | "model" | "proof" | "implementation";
  thoughtNumber: number;
  totalThoughts: number;
  uncertainty: number; // 0-1
  dependencies: number[];
  assumptions: string[];
  nextThoughtNeeded: boolean;
  
  // Optional revision fields
  isRevision?: boolean;
  revisesThought?: number;
  
  // Optional recheck field
  recheckStep?: {
    stepToRecheck: ThoughtType;
    reason: string;
    newInformation?: string;
  };
  
  // Optional validation fields
  proofElements?: {
    hypothesis: string;
    validation: string;
  };
  experimentalElements?: {
    testDescription: string;
    results: string;
    confidence: number; // 0-1
    limitations: string[];
  };
  
  // Optional implementation fields
  implementationNotes?: {
    practicalConstraints: string[];
    proposedSolution: string;
  };
}

When to Use

This thinking pattern is particularly valuable for:

  • Complex system analysis
  • Information processing problems
  • Engineering design challenges
  • Problems requiring theoretical frameworks
  • Optimization problems
  • Systems requiring practical implementation
  • Problems that need iterative refinement
  • Cases where experimental validation complements theory

shannon-thinking FAQ

How does the shannon-thinking server structure problem-solving?
It follows Claude Shannon's methodology: problem definition, constraints, modeling, validation, and implementation.
Can this server help with mathematical modeling?
Yes, it guides the creation of mathematical or theoretical frameworks for problems.
Is experimental validation supported?
The server supports workflows that include formal proofs and experimental testing for solution validation.
How can this server be integrated into AI workflows?
It provides structured reasoning tools that can be called by AI agents to enhance problem-solving.
Does it support iterative refinement of solutions?
Yes, the methodology encourages iterative validation and implementation cycles.
What types of problems is this server best suited for?
Complex, multi-step problems requiring rigorous analysis and structured thinking.
Is prior knowledge of information theory required?
No, but familiarity with systematic problem-solving improves effectiveness.
Can this server be used with multiple LLM providers?
Yes, it is provider-agnostic and works with models like OpenAI, Claude, and Gemini.