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    Claude Context

    Code search MCP for Claude Code. Make entire codebase the context for any coding agent. TypeScript-based implementation. Trusted by 4100+ developers.

    4,153 stars
    TypeScript
    Updated Oct 19, 2025
    agent
    agentic-rag
    ai-coding
    claude-code
    code-generation
    code-search
    cursor
    embedding
    gemini-cli
    mcp
    merkle-tree
    nodejs
    openai
    rag
    semantic-search
    typescript
    vector-database
    vibe-coding
    voyage-ai
    vscode-extension

    Table of Contents

    • Your entire codebase as Claude's context
    • 🚀 Demo
    • Quick Start
    • Prerequisites
    • Configure MCP for Claude Code
    • Configuration
    • Other MCP Client Configurations
    • A. Using the Augment Code UI
    • B. Manual Configuration
    • Usage in Your Codebase
    • Environment Variables Configuration
    • Using Different Embedding Models
    • File Inclusion & Exclusion Rules
    • Available Tools
    • 1. index_codebase
    • 2. search_code
    • 3. clear_index
    • 4. get_indexing_status
    • 📊 Evaluation
    • 🏗️ Architecture
    • 🔧 Implementation Details
    • Core Components
    • Supported Technologies
    • 📦 Other Ways to Use Claude Context
    • Build Applications with Core Package
    • VSCode Extension
    • 🛠️ Development
    • Setup Development Environment
    • Prerequisites
    • Cross-Platform Setup
    • Windows-Specific Setup
    • Building
    • Windows Build Notes
    • Running Examples
    • 📖 Examples
    • ❓ FAQ
    • 🤝 Contributing
    • 🗺️ Roadmap
    • 📄 License
    • 🔗 Links

    Table of Contents

    • Your entire codebase as Claude's context
    • 🚀 Demo
    • Quick Start
    • Prerequisites
    • Configure MCP for Claude Code
    • Configuration
    • Other MCP Client Configurations
    • A. Using the Augment Code UI
    • B. Manual Configuration
    • Usage in Your Codebase
    • Environment Variables Configuration
    • Using Different Embedding Models
    • File Inclusion & Exclusion Rules
    • Available Tools
    • 1. index_codebase
    • 2. search_code
    • 3. clear_index
    • 4. get_indexing_status
    • 📊 Evaluation
    • 🏗️ Architecture
    • 🔧 Implementation Details
    • Core Components
    • Supported Technologies
    • 📦 Other Ways to Use Claude Context
    • Build Applications with Core Package
    • VSCode Extension
    • 🛠️ Development
    • Setup Development Environment
    • Prerequisites
    • Cross-Platform Setup
    • Windows-Specific Setup
    • Building
    • Windows Build Notes
    • Running Examples
    • 📖 Examples
    • ❓ FAQ
    • 🤝 Contributing
    • 🗺️ Roadmap
    • 📄 License
    • 🔗 Links

    Documentation

    🆕 Looking for persistent memory for Claude Code? Check out memsearch Claude Code plugin — a markdown-first memory system that gives your AI agent long-term memory across sessions.

    Your entire codebase as Claude's context

    License

    Node.js

    Documentation

    VS Code Marketplace

    npm - core

    npm - mcp

    Twitter

    DeepWiki

    Claude Context is an MCP plugin that adds semantic code search to Claude Code and other AI coding agents, giving them deep context from your entire codebase.

    🧠 Your Entire Codebase as Context: Claude Context uses semantic search to find all relevant code from millions of lines. No multi-round discovery needed. It brings results straight into the Claude's context.

    💰 Cost-Effective for Large Codebases: Instead of loading entire directories into Claude for every request, which can be very expensive, Claude Context efficiently stores your codebase in a vector database and only uses related code in context to keep your costs manageable.

    ---

    🚀 Demo

    img

    Model Context Protocol (MCP) allows you to integrate Claude Context with your favorite AI coding assistants, e.g. Claude Code.

    Quick Start

    Prerequisites

    Get a free vector database on Zilliz Cloud 👈

    Claude Context needs a vector database. You can sign up on Zilliz Cloud to get an API key.

    Copy your Personal Key to replace your-zilliz-cloud-api-key in the configuration examples.

    Get OpenAI API Key for embedding model

    You need an OpenAI API key for the embedding model. You can get one by signing up at OpenAI.

    Your API key will look like this: it always starts with sk-.

    Copy your key and use it in the configuration examples below as your-openai-api-key.

    Configure MCP for Claude Code

    System Requirements:

    • Node.js >= 20.0.0 and Claude Context is not compatible with Node.js 24.0.0, you need downgrade it first if your node version is greater or equal to 24.

    Configuration

    Use the command line interface to add the Claude Context MCP server:

    bash
    claude mcp add claude-context \
      -e OPENAI_API_KEY=sk-your-openai-api-key \
      -e MILVUS_TOKEN=your-zilliz-cloud-api-key \
      -- npx @zilliz/claude-context-mcp@latest

    See the Claude Code MCP documentation for more details about MCP server management.

    Other MCP Client Configurations

    OpenAI Codex CLI

    Codex CLI uses TOML configuration files:

    1. Create or edit the ~/.codex/config.toml file.

    2. Add the following configuration:

    toml
    # IMPORTANT: the top-level key is `mcp_servers` rather than `mcpServers`.
    [mcp_servers.claude-context]
    command = "npx"
    args = ["@zilliz/claude-context-mcp@latest"]
    env = { "OPENAI_API_KEY" = "your-openai-api-key", "MILVUS_TOKEN" = "your-zilliz-cloud-api-key" }
    # Optional: override the default 10s startup timeout
    startup_timeout_ms = 20000

    3. Save the file and restart Codex CLI to apply the changes.

    Gemini CLI

    Gemini CLI requires manual configuration through a JSON file:

    1. Create or edit the ~/.gemini/settings.json file.

    2. Add the following configuration:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    3. Save the file and restart Gemini CLI to apply the changes.

    Qwen Code

    Create or edit the ~/.qwen/settings.json file and add the following configuration:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    Cursor

    Go to: Settings -> Cursor Settings -> MCP -> Add new global MCP server

    Pasting the following configuration into your Cursor ~/.cursor/mcp.json file is the recommended approach. You may also install in a specific project by creating .cursor/mcp.json in your project folder. See Cursor MCP docs for more info.

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["-y", "@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    Void

    Go to: Settings -> MCP -> Add MCP Server

    Add the following configuration to your Void MCP settings:

    json
    {
      "mcpServers": {
        "code-context": {
          "command": "npx",
          "args": ["-y", "@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    Claude Desktop

    Add to your Claude Desktop configuration:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    Windsurf

    Windsurf supports MCP configuration through a JSON file. Add the following configuration to your Windsurf MCP settings:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["-y", "@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    VS Code

    The Claude Context MCP server can be used with VS Code through MCP-compatible extensions. Add the following configuration to your VS Code MCP settings:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["-y", "@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    Cherry Studio

    Cherry Studio allows for visual MCP server configuration through its settings interface. While it doesn't directly support manual JSON configuration, you can add a new server via the GUI:

    1. Navigate to Settings → MCP Servers → Add Server.

    2. Fill in the server details:

    • Name: claude-context
    • Type: STDIO
    • Command: npx
    • Arguments: ["@zilliz/claude-context-mcp@latest"]
    • Environment Variables:
    • OPENAI_API_KEY: your-openai-api-key
    • MILVUS_ADDRESS: your-zilliz-cloud-public-endpoint
    • MILVUS_TOKEN: your-zilliz-cloud-api-key

    3. Save the configuration to activate the server.

    Cline

    Cline uses a JSON configuration file to manage MCP servers. To integrate the provided MCP server configuration:

    1. Open Cline and click on the MCP Servers icon in the top navigation bar.

    2. Select the Installed tab, then click Advanced MCP Settings.

    3. In the cline_mcp_settings.json file, add the following configuration:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    4. Save the file.

    Augment

    To configure Claude Context MCP in Augment Code, you can use either the graphical interface or manual configuration.

    A. Using the Augment Code UI

    1. Click the hamburger menu.

    2. Select Settings.

    3. Navigate to the Tools section.

    4. Click the + Add MCP button.

    5. Enter the following command:

    code
    npx @zilliz/claude-context-mcp@latest

    6. Name the MCP: Claude Context.

    7. Click the Add button.

    ------

    B. Manual Configuration

    1. Press Cmd/Ctrl Shift P or go to the hamburger menu in the Augment panel

    2. Select Edit Settings

    3. Under Advanced, click Edit in settings.json

    4. Add the server configuration to the mcpServers array in the augment.advanced object

    json
    "augment.advanced": { 
      "mcpServers": [ 
        { 
          "name": "claude-context", 
          "command": "npx", 
          "args": ["-y", "@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      ]
    }

    Roo Code

    Roo Code utilizes a JSON configuration file for MCP servers:

    1. Open Roo Code and navigate to Settings → MCP Servers → Edit Global Config.

    2. In the mcp_settings.json file, add the following configuration:

    json
    {
      "mcpServers": {
        "claude-context": {
          "command": "npx",
          "args": ["@zilliz/claude-context-mcp@latest"],
          "env": {
            "OPENAI_API_KEY": "your-openai-api-key",
            "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
            "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
          }
        }
      }
    }

    3. Save the file to activate the server.

    Zencoder

    Zencoder offers support for MCP tools and servers in both its JetBrains and VS Code plugin versions.

    1. Go to the Zencoder menu (...)

    2. From the dropdown menu, select Tools

    3. Click on the Add Custom MCP

    4. Add the name (i.e. Claude Context and server configuration from below, and make sure to hit the Install button

    json
    {
        "command": "npx",
        "args": ["@zilliz/claude-context-mcp@latest"],
        "env": {
          "OPENAI_API_KEY": "your-openai-api-key",
          "MILVUS_ADDRESS": "your-zilliz-cloud-public-endpoint",
          "MILVUS_TOKEN": "your-zilliz-cloud-api-key"
        }
    }

    5. Save the server by hitting the Install button.

    LangChain/LangGraph

    For LangChain/LangGraph integration examples, see this example.

    Other MCP Clients

    The server uses stdio transport and follows the standard MCP protocol. It can be integrated with any MCP-compatible client by running:

    bash
    npx @zilliz/claude-context-mcp@latest

    ---

    Usage in Your Codebase

    1. Open Claude Code

    code
    cd your-project-directory
       claude

    2. Index your codebase:

    code
    Index this codebase

    3. Check indexing status:

    code
    Check the indexing status

    4. Start searching:

    code
    Find functions that handle user authentication

    🎉 That's it! You now have semantic code search in Claude Code.

    ---

    Environment Variables Configuration

    For more detailed MCP environment variable configuration, see our Environment Variables Guide.

    Using Different Embedding Models

    To configure custom embedding models (e.g., text-embedding-3-large for OpenAI, voyage-code-3 for VoyageAI), see the MCP Configuration Examples for detailed setup instructions for each provider.

    File Inclusion & Exclusion Rules

    For detailed explanation of file inclusion and exclusion rules, and how to customize them, see our File Inclusion & Exclusion Rules.

    Available Tools

    1. index_codebase

    Index a codebase directory for hybrid search (BM25 + dense vector).

    2. search_code

    Search the indexed codebase using natural language queries with hybrid search (BM25 + dense vector).

    3. clear_index

    Clear the search index for a specific codebase.

    4. get_indexing_status

    Get the current indexing status of a codebase. Shows progress percentage for actively indexing codebases and completion status for indexed codebases.

    ---

    📊 Evaluation

    Our controlled evaluation demonstrates that Claude Context MCP achieves ~40% token reduction under the condition of equivalent retrieval quality. This translates to significant cost and time savings in production environments. This also means that, under the constraint of limited token context length, using Claude Context yields better retrieval and answer results.

    MCP Efficiency Analysis

    For detailed evaluation methodology and results, see the evaluation directory.

    ---

    🏗️ Architecture

    🔧 Implementation Details

    • 🔍 Hybrid Code Search: Ask questions like *"find functions that handle user authentication"* and get relevant, context-rich code instantly using advanced hybrid search (BM25 + dense vector).
    • 🧠 Context-Aware: Discover large codebase, understand how different parts of your codebase relate, even across millions of lines of code.
    • ⚡ Incremental Indexing: Efficiently re-index only changed files using Merkle trees.
    • 🧩 Intelligent Code Chunking: Analyze code in Abstract Syntax Trees (AST) for chunking.
    • 🗄️ Scalable: Integrates with Zilliz Cloud for scalable vector search, no matter how large your codebase is.
    • 🛠️ Customizable: Configure file extensions, ignore patterns, and embedding models.

    Core Components

    Claude Context is a monorepo containing three main packages:

    • **@zilliz/claude-context-core**: Core indexing engine with embedding and vector database integration
    • VSCode Extension: Semantic Code Search extension for Visual Studio Code
    • **@zilliz/claude-context-mcp**: Model Context Protocol server for AI agent integration

    Supported Technologies

    • Embedding Providers: OpenAI, VoyageAI, Ollama, Gemini
    • Vector Databases: Milvus or Zilliz Cloud(fully managed vector database as a service)
    • Code Splitters: AST-based splitter (with automatic fallback), LangChain character-based splitter
    • Languages: TypeScript, JavaScript, Python, Java, C++, C#, Go, Rust, PHP, Ruby, Swift, Kotlin, Scala, Markdown
    • Development Tools: VSCode, Model Context Protocol

    ---

    📦 Other Ways to Use Claude Context

    While MCP is the recommended way to use Claude Context with AI assistants, you can also use it directly or through the VSCode extension.

    Build Applications with Core Package

    The @zilliz/claude-context-core package provides the fundamental functionality for code indexing and semantic search.

    typescript
    import { Context, MilvusVectorDatabase, OpenAIEmbedding } from '@zilliz/claude-context-core';
    
    // Initialize embedding provider
    const embedding = new OpenAIEmbedding({
        apiKey: process.env.OPENAI_API_KEY || 'your-openai-api-key',
        model: 'text-embedding-3-small'
    });
    
    // Initialize vector database
    const vectorDatabase = new MilvusVectorDatabase({
        address: process.env.MILVUS_ADDRESS || 'your-zilliz-cloud-public-endpoint',
        token: process.env.MILVUS_TOKEN || 'your-zilliz-cloud-api-key'
    });
    
    // Create context instance
    const context = new Context({
        embedding,
        vectorDatabase
    });
    
    // Index your codebase with progress tracking
    const stats = await context.indexCodebase('./your-project', (progress) => {
        console.log(`${progress.phase} - ${progress.percentage}%`);
    });
    console.log(`Indexed ${stats.indexedFiles} files, ${stats.totalChunks} chunks`);
    
    // Perform semantic search
    const results = await context.semanticSearch('./your-project', 'vector database operations', 5);
    results.forEach(result => {
        console.log(`File: ${result.relativePath}:${result.startLine}-${result.endLine}`);
        console.log(`Score: ${(result.score * 100).toFixed(2)}%`);
        console.log(`Content: ${result.content.substring(0, 100)}...`);
    });

    VSCode Extension

    Integrates Claude Context directly into your IDE. Provides an intuitive interface for semantic code search and navigation.

    1. Direct Link: Install from VS Code Marketplace

    2. Manual Search:

    • Open Extensions view in VSCode (Ctrl+Shift+X or Cmd+Shift+X on Mac)
    • Search for "Semantic Code Search"
    • Click Install

    img

    ---

    🛠️ Development

    Setup Development Environment

    Prerequisites

    • Node.js 20.x or 22.x
    • pnpm (recommended package manager)

    Cross-Platform Setup

    bash
    # Clone repository
    git clone https://github.com/zilliztech/claude-context.git
    cd claude-context
    
    # Install dependencies
    pnpm install
    
    # Build all packages
    pnpm build
    
    # Start development mode
    pnpm dev

    Windows-Specific Setup

    On Windows, ensure you have:

    • Git for Windows with proper line ending configuration
    • Node.js installed via the official installer or package manager
    • pnpm installed globally: npm install -g pnpm
    powershell
    # Windows PowerShell/Command Prompt
    git clone https://github.com/zilliztech/claude-context.git
    cd claude-context
    
    # Configure git line endings (recommended)
    git config core.autocrlf false
    
    # Install dependencies
    pnpm install
    
    # Build all packages (uses cross-platform scripts)
    pnpm build
    
    # Start development mode
    pnpm dev

    Building

    bash
    # Build all packages (cross-platform)
    pnpm build
    
    # Build specific package
    pnpm build:core
    pnpm build:vscode
    pnpm build:mcp
    
    # Performance benchmarking
    pnpm benchmark

    Windows Build Notes

    • All build scripts are cross-platform compatible using rimraf
    • Build caching is enabled for faster subsequent builds
    • Use PowerShell or Command Prompt - both work equally well

    Running Examples

    bash
    # Development with file watching
    cd examples/basic-usage
    pnpm dev

    ---

    📖 Examples

    Check the /examples directory for complete usage examples:

    • Basic Usage: Simple indexing and search example

    ---

    ❓ FAQ

    Common Questions:

    • **What files does Claude Context decide to embed?**
    • **Can I use a fully local deployment setup?**
    • **Does it support multiple projects / codebases?**
    • **How does Claude Context compare to other coding tools?**

    ❓ For detailed answers and more troubleshooting tips, see our FAQ Guide.

    🔧 Encountering issues? Visit our Troubleshooting Guide for step-by-step solutions.

    📚 Need more help? Check out our complete documentation for detailed guides and troubleshooting tips.

    ---

    🤝 Contributing

    We welcome contributions! Please see our Contributing Guide for details on how to get started.

    Package-specific contributing guides:

    • Core Package Contributing
    • MCP Server Contributing
    • VSCode Extension Contributing

    ---

    🗺️ Roadmap

    • [x] AST-based code analysis for improved understanding
    • [x] Support for additional embedding providers
    • [ ] Agent-based interactive search mode
    • [x] Enhanced code chunking strategies
    • [ ] Search result ranking optimization
    • [ ] Robust Chrome Extension

    ---

    📄 License

    This project is licensed under the MIT License - see the LICENSE file for details.

    ---

    🔗 Links

    • GitHub Repository
    • VSCode Marketplace
    • Milvus Documentation
    • Zilliz Cloud

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