Kiro Memory

Kiro Memory

cbunting99

Provides intelligent memory management and task tracking for development projects with semantic search, automatic project detection, and persistent context across coding sessions.

Provides intelligent memory management and task tracking for software development projects with automatic project detection, semantic search, and SQLite-based persistence that maintains context across coding sessions through memory classification, relationship building, and context-aware task creation.

301,076 views8Local (stdio)

What it does

  • Store and search project memories using semantic search
  • Extract tasks automatically from conversations and code comments
  • Detect project environments and conventions automatically
  • Build knowledge graphs linking memories, tasks, and files
  • Track project dependencies and tool configurations
  • Maintain conversation context across sessions

Best for

Developers working on multiple projects needing context retentionAI-assisted development workflows with Claude SonnetTeams tracking project conventions and decisionsManaging complex codebases with automatic task extraction
Optimized for Claude Sonnet 4SQLite-based persistence30-70% token compression

About Kiro Memory

Kiro Memory is a community-built MCP server published by cbunting99 that provides AI assistants with tools and capabilities via the Model Context Protocol. Kiro Memory is project tracking software for developers, offering task tracking, automatic detection, and context-aware It is categorized under ai ml, productivity.

How to install

You can install Kiro Memory in your AI client of choice. Use the install panel on this page to get one-click setup for Cursor, Claude Desktop, VS Code, and other MCP-compatible clients. This server runs locally on your machine via the stdio transport.

License

Kiro Memory is released under the MIT license. This is a permissive open-source license, meaning you can freely use, modify, and distribute the software.

Enhanced MCP Memory

⚡ Optimized for Claude Sonnet 4 - This MCP server works best with Claude Sonnet 4 for optimal performance and AI-powered features.

An enhanced MCP (Model Context Protocol) server for intelligent memory and task management, designed for AI assistants and development workflows. Features semantic search, automatic task extraction, knowledge graphs, and comprehensive project management.

✨ Key Features

🧠 Intelligent Memory Management

  • Semantic search using sentence-transformers for natural language queries
  • Automatic memory classification with importance scoring
  • Duplicate detection and content deduplication
  • File path associations for code-memory relationships
  • Knowledge graph relationships with automatic similarity detection

🧬 Sequential Thinking Engine

  • Structured reasoning chains with 5-stage process (analysis, planning, execution, validation, reflection)
  • Context management with automatic token optimization
  • Conversation continuity across sessions with intelligent summarization
  • Real-time token estimation and compression (30-70% reduction)
  • Auto-extraction of key points, decisions, and action items

📋 Advanced Task Management

  • Auto-task extraction from conversations and code comments
  • Priority and category management with validation
  • Status tracking (pending, in_progress, completed, cancelled)
  • Task-memory relationships in knowledge graph
  • Project-based organization
  • Complex task decomposition into manageable subtasks

🏗️ Project Convention Learning

  • Automatic environment detection - OS, shell, tools, and runtime versions
  • Project type recognition - Node.js, Python, Rust, Go, Java, MCP servers, etc.
  • Command pattern learning - Extracts npm scripts, Makefile targets, and project commands
  • Tool configuration detection - IDEs, linters, CI/CD, build tools, and testing frameworks
  • Dependency management - Package managers, lock files, and installation commands
  • Smart command suggestions - Corrects user commands based on project conventions
  • Windows-specific optimizations - Proper path separators and command formats
  • Memory integration - Stores learned conventions for AI context and future reference

📊 Performance Monitoring

  • Performance monitoring with detailed metrics
  • Health checks and system diagnostics
  • Automatic cleanup of old data and duplicates
  • Database optimization tools
  • Comprehensive logging and error tracking
  • Token usage analytics and optimization recommendations

� Enterprise Features

  • Performance monitoring with detailed metrics
  • Health checks and system diagnostics
  • Automatic cleanup of old data and duplicates
  • Database optimization tools
  • Comprehensive logging and error tracking
  • Token usage analytics and optimization recommendations

�🚀 Easy Deployment

  • uvx compatible for one-command installation
  • Zero-configuration startup with sensible defaults
  • Environment variable configuration
  • Cross-platform support (Windows, macOS, Linux)

🏗️ Project Structure

enhanced-mcp-memory/
├── mcp_server_enhanced.py    # Main MCP server with FastMCP integration
├── memory_manager.py         # Core memory/task logic and project detection
├── sequential_thinking.py    # Thinking chains and context optimization
├── database.py              # Database operations with retry mechanisms
├── requirements.txt         # Python dependencies
├── setup.py                # Package configuration
├── data/                   # SQLite database storage
├── logs/                   # Application logs

🚀 Quick Start

Option 1: Using uvx (Recommended)

# Install and run with uvx
uvx enhanced-mcp-memory

Option 2: Manual Installation

# Clone and install
git clone https://github.com/cbunting99/enhanced-mcp-memory.git
cd enhanced-mcp-memory
pip install -e .

# Run the server
enhanced-mcp-memory

Option 3: Development Setup

# Clone repository
git clone https://github.com/cbunting99/enhanced-mcp-memory.git
cd enhanced-mcp-memory

# Install dependencies
pip install -r requirements.txt

# Run directly
python mcp_server_enhanced.py

⚙️ MCP Configuration

Add to your MCP client configuration:

For uvx installation:

{
  "mcpServers": {
    "memory-manager": {
      "command": "uvx",
      "args": ["enhanced-mcp-memory"],
      "env": {
        "LOG_LEVEL": "INFO",
        "MAX_MEMORY_ITEMS": "1000",
        "ENABLE_AUTO_CLEANUP": "true"
      }
    }
  }
}

For local installation:

{
  "mcpServers": {
    "memory-manager": {
      "command": "python",
      "args": ["mcp_server_enhanced.py"],
      "cwd": "/path/to/enhanced-mcp-memory",
      "env": {
        "LOG_LEVEL": "INFO",
        "MAX_MEMORY_ITEMS": "1000",
        "ENABLE_AUTO_CLEANUP": "true"
      }
    }
  }
}

🛠️ Available Tools

Core Memory Tools

  • get_memory_context(query) - Get relevant memories and context
  • create_task(title, description, priority, category) - Create new tasks
  • get_tasks(status, limit) - Retrieve tasks with filtering
  • get_project_summary() - Get comprehensive project overview

Sequential Thinking Tools

  • start_thinking_chain(objective) - Begin structured reasoning process
  • add_thinking_step(chain_id, stage, title, content, reasoning) - Add reasoning steps
  • get_thinking_chain(chain_id) - Retrieve complete thinking chain
  • list_thinking_chains(limit) - List recent thinking chains

Context Management Tools

  • create_context_summary(content, key_points, decisions, actions) - Compress context for token optimization
  • start_new_chat_session(title, objective, continue_from) - Begin new conversation with optional continuation
  • consolidate_current_session() - Compress current session for handoff
  • get_optimized_context(max_tokens) - Get token-optimized context
  • estimate_token_usage(text) - Estimate token count for planning

Enterprise Auto-Processing

  • auto_process_conversation(content, interaction_type) - Extract memories and tasks automatically
  • decompose_task(prompt) - Break complex tasks into subtasks

Project Convention Tools

  • auto_learn_project_conventions(project_path) - Automatically detect and learn project patterns
  • get_project_conventions_summary() - Get formatted summary of learned conventions
  • suggest_correct_command(user_command) - Suggest project-appropriate command corrections
  • remember_project_pattern(pattern_type, pattern, description) - Manually store project patterns
  • update_memory_context() - Refresh memory context with latest project conventions

System Management Tools

  • health_check() - Check server health and connectivity
  • get_performance_stats() - Get detailed performance metrics
  • cleanup_old_data(days_old) - Clean up old memories and tasks
  • optimize_memories() - Remove duplicates and optimize storage
  • get_database_stats() - Get comprehensive database statistics

🏗️ Project Convention Learning

The Enhanced MCP Memory Server automatically learns and remembers project-specific conventions to prevent AI assistants from suggesting incorrect commands or approaches:

Automatic Detection

  • Operating System: Windows vs Unix, preferred shell and commands
  • Project Type: Node.js, Python, Rust, Go, Java, MCP servers, FastAPI, Django
  • Development Tools: IDEs, linters, formatters, CI/CD configurations
  • Package Management: npm, yarn, pip, poetry, cargo, go modules
  • Build Systems: Vite, Webpack, Make, batch scripts, shell scripts

Smart Command Suggestions

# Instead of generic commands, suggests project-specific ones:
User types: "node server.js"
AI suggests: "Use 'npm run dev' instead for this project"

User types: "python main.py" 
AI suggests: "Use 'uvicorn main:app --reload' for this FastAPI project"

Windows Optimization

  • Automatically detects Windows environment
  • Uses cmd.exe and Windows-appropriate path separators
  • Suggests Windows-compatible commands (e.g., dir instead of ls)
  • Handles Windows-specific Python and Node.js patterns

Memory Integration

All learned conventions are stored as high-importance memories that:

  • Appear in AI context for every interaction
  • Persist across sessions and project switches
  • Include environment warnings and project-specific guidance
  • Prevent repeated incorrect command suggestions

🔧 Configuration Options

Configure via environment variables:

VariableDefaultDescription
LOG_LEVELINFOLogging level (DEBUG, INFO, WARNING, ERROR)
MAX_MEMORY_ITEMS1000Maximum memories per project
MAX_CONTEXT_TOKENS8000Token threshold for auto-compression
CLEANUP_INTERVAL_HOURS24Auto-cleanup interval
ENABLE_AUTO_CLEANUPtrueEnable automatic cleanup
MAX_CONCURRENT_REQUESTS5Max concurrent requests
REQUEST_TIMEOUT30Request timeout in seconds
DATA_DIR~/ClaudeMemoryWhere to store data and logs

🧪 Testing

This package is production-ready and does not include a test suite in the distributed version. For development or CI, refer to the repository for test scripts and additional resources.

📊 Performance & Monitoring

The server includes built-in performance tracking:

  • Response time monitoring for all tools
  • Success rate tracking with error counts
  • Memory usage statistics
  • Database performance metrics
  • Automatic health checks

Access via the get_performance_stats() and health_check() tools.

🗄️ Database

  • SQLite for reliable, file-based storage
  • Automatic schema migrations for updates
  • Comprehensive indexing for fast queries
  • Built-in backup and optimization tools
  • Cross-platform compatibility

Default locat


README truncated. View full README on GitHub.

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