Smithery Logo
MCPsSkillsDocsPricing
Login
NewFlame, an assistant that learns and improves. Available onTelegramSlack
    lofcz

    codebase-context-extractor

    lofcz/codebase-context-extractor
    Coding
    542

    About

    SKILL.md

    Install

    • Telegram
      Telegram
    • Slack
      Slack
    • Claude Code
      Claude Code
    • Codex
      Codex
    • OpenClaw
      OpenClaw
    • Cursor
      Cursor
    • Amp
      Amp
    • GitHub Copilot
      GitHub Copilot
    • Gemini CLI
      Gemini CLI
    • Kilo Code
      Kilo Code
    • Junie
      Junie
    • Replit
      Replit
    • Windsurf
      Windsurf
    • Cline
      Cline
    • Continue
      Continue
    • OpenCode
      OpenCode
    • OpenHands
      OpenHands
    • Roo Code
      Roo Code
    • Augment
      Augment
    • Goose
      Goose
    • Trae
      Trae
    • Zencoder
      Zencoder
    • Antigravity
      Antigravity
    • Download skill
    ├─
    ├─
    └─
    Smithery Logo

    Give agents more agency

    Resources

    DocumentationPrivacy PolicySystem Status

    Company

    PricingAboutBlog

    Connect

    © 2026 Smithery. All rights reserved.

    About

    This skill provides a comprehensive context extraction system for large codebases...

    SKILL.md

    Codebase Context Extractor Skill

    Overview

    This skill provides a comprehensive context extraction system for large codebases. It intelligently analyzes code structure, dependencies, and relationships to extract relevant context for understanding, debugging, or modifying code.

    Trigger Words

    • "extract context"
    • "codebase context"
    • "code context"
    • "analyze codebase"
    • "codebase analysis"
    • "code structure"
    • "dependency analysis"
    • "code relationships"
    • "understand codebase"
    • "map codebase"

    When to Use This Skill

    Use this skill when you need to:

    • Understand the structure and organization of a large codebase
    • Extract relevant context for a specific function, class, or module
    • Analyze dependencies and relationships between code components
    • Generate documentation or summaries of code sections
    • Prepare context for code modifications or debugging
    • Identify entry points and execution flows
    • Map out API surfaces and public interfaces
    • Understand data flow and state management

    Instructions

    When this skill is triggered, execute the context_extractor.py script with appropriate parameters.

    Basic Usage

    python /projects/workspace/codebase-context-extractor/context_extractor.py \
      --target-path <path_to_codebase> \
      --mode <extraction_mode> \
      --output <output_file>
    

    Extraction Modes

    1. full - Complete codebase analysis with all components
    2. targeted - Focus on specific files, functions, or classes
    3. dependency - Map dependencies and imports
    4. flow - Trace execution flows and call chains
    5. api - Extract public interfaces and API surfaces
    6. data - Analyze data structures and models
    7. hierarchy - Show class hierarchies and inheritance
    8. summary - Generate high-level overview

    Parameters

    • --target-path (required): Path to the codebase to analyze
    • --mode (required): Extraction mode (see above)
    • --output (optional): Output file path (default: stdout)
    • --focus (optional): Specific file, class, or function to focus on
    • --depth (optional): Maximum depth for traversal (default: unlimited)
    • --include-tests (optional): Include test files in analysis (default: false)
    • --language (optional): Programming language (auto-detected if not specified)
    • --format (optional): Output format (markdown, json, yaml, text) (default: markdown)
    • --exclude (optional): Patterns to exclude (comma-separated)

    Examples

    1. Full codebase analysis:
    python context_extractor.py --target-path ./my-project --mode full --output context.md
    
    1. Targeted analysis of a specific class:
    python context_extractor.py --target-path ./my-project --mode targeted --focus "UserService" --output user_service_context.md
    
    1. Dependency mapping:
    python context_extractor.py --target-path ./my-project --mode dependency --format json --output dependencies.json
    
    1. Execution flow analysis:
    python context_extractor.py --target-path ./my-project --mode flow --focus "main" --depth 5
    

    Output Structure

    The extractor generates structured output including:

    For Full/Targeted Mode

    • Project Overview: Language, structure, entry points
    • File Organization: Directory structure and file purposes
    • Key Components: Important classes, functions, modules
    • Dependencies: External and internal dependencies
    • Code Metrics: Lines of code, complexity estimates
    • Context Summary: High-level understanding

    For Dependency Mode

    • Dependency Graph: Visual representation of dependencies
    • Import Analysis: All imports and their usage
    • Circular Dependencies: Detection and reporting
    • Unused Dependencies: Potential cleanup targets

    For Flow Mode

    • Call Chains: Function call sequences
    • Entry Points: Main execution paths
    • Exit Points: Return and error handling
    • Branch Analysis: Conditional execution paths

    For API Mode

    • Public Interfaces: Exported functions and classes
    • API Documentation: Signatures and docstrings
    • Usage Examples: How to use the API
    • Versioning Info: API version and compatibility

    Advanced Features

    Smart Context Window Management

    The extractor automatically manages context size to fit within LLM token limits:

    • Prioritizes most relevant code sections
    • Provides summaries for less critical parts
    • Includes breadcrumb navigation for context

    Multi-Language Support

    Supports analysis of:

    • Python
    • JavaScript/TypeScript
    • Java
    • C#
    • Go
    • Rust
    • C/C++
    • Ruby
    • PHP
    • And more (extensible)

    Intelligent Filtering

    • Excludes generated code, build artifacts, and vendor directories
    • Focuses on business logic and core functionality
    • Configurable exclusion patterns

    Integration with Other Tools

    The context extractor output can be used with:

    • Documentation generators
    • Code review tools
    • Refactoring assistants
    • Bug tracking systems
    • Development environments

    Best Practices

    1. Start with Summary Mode: Get a high-level overview before diving deep
    2. Use Targeted Mode for Specific Tasks: Focus on relevant code sections
    3. Combine with Dependency Analysis: Understand impact of changes
    4. Leverage Flow Analysis for Debugging: Trace execution paths
    5. Regular Updates: Re-run analysis as codebase evolves

    Notes

    • Large codebases may take time to analyze
    • Consider using depth limits for very large projects
    • JSON output is best for programmatic processing
    • Markdown output is best for human reading
    • The tool respects .gitignore patterns by default
    Recommended Servers
    Nimble MCP Server
    Nimble MCP Server
    Apify
    Apify
    ScrapeGraph AI Integration Server
    ScrapeGraph AI Integration Server
    Repository
    lofcz/llmtornado
    Files