Code Generator MCP Server

Code Generator MCP Server

Exposes structured code generation tools via MCP protocol, enabling users to generate production-grade Python functions, refactor buggy code, and create multi-function modules using local or cloud-based OpenAI-compatible APIs.

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Code Generator MCP Template Server

An MCP (Model Context Protocol) server built using Python's FastMCP framework. It exposes 4 precise, structured code-generation tools backed by prompt templates to generate production-grade, parsed code using local or cloud-based OpenAI-compatible APIs (such as llama-server, qwen-coder, coder-expert, or OpenAI's API).

๐Ÿš€ Features

Exposes 4 key MCP tools that use structured templates to instruct the model to think step-by-step and produce clean, executable code:

  1. generate_standard_function (Template 1): Generates a standalone function based on constraints, edge cases, test cases, and external integration notes.
  2. generate_codebase_context (Template 2): Generates a function that respects and integrates with existing codebase structures and dependencies.
  3. generate_bugfix_refactor (Template 3): Focuses on refactoring or repairing current buggy implementations based on problem descriptions and test expectations.
  4. generate_multi_function_module (Template 4): Generates a multi-function module, validating that there are no circular dependencies or undefined functions.

โš™๏ธ Parser & Guardrails

  • Markdown Stripper: Automatic code parsing (extract_code_from_response) strips any markdown code blocks (```python) generated by instruct models, guaranteeing only raw executable code is returned.
  • Reasoning Fallback: Correctly handles DeepSeek-style reasoning models or llama-server configurations where all output is redirected into the reasoning_content field instead of content.
  • Max Tokens Guardrail: Enforces a 2048 token limit per request to prevent local model reasoning loops and timeouts.

๐Ÿ› ๏ธ Configuration

Configure the server using command-line arguments or environment variables:

Setting CLI Argument Environment Variable Default Value Description
API URL --api-url CODE_GEN_API_URL / OPENAI_BASE_URL https://api.openai.com/v1 OpenAI-compatible endpoint
Model --model CODE_GEN_MODEL / OPENAI_MODEL gpt-4o The model name to target
API Key --api-key CODE_GEN_API_KEY / OPENAI_API_KEY (Empty) API token (optional for local endpoints)

[!WARNING] For security reasons, do not pass --api-key via command-line arguments as it will be visible in plain text in the host process table. Use the environment variables instead.


๐Ÿ“ฆ Installation & Setup

You can install and configure the server either automatically using the installation script or manually via Python.

Option 1: Quick Installation Script (Recommended)

The project includes an install.sh script that automatically builds a standalone executable using PyInstaller, installs it to ~/.local/bin/code-generator-mcp, and configures your target AI coding agent.

  1. Run the script and specify your target agent:

    chmod +x install.sh
    ./install.sh <agent_type>
    

    Supported <agent_type> values:

    • claude-desktop (Claude Desktop global configuration)
    • claude-code (Claude CLI global configuration at ~/.claude.json)
    • cursor (Cursor editor global config at ~/.cursor/mcp.json)
    • codex (Codex agent global config at ~/.codex/config.toml)
    • github-copilot (VS Code workspace-specific config at .vscode/mcp.json)
    • windsurf (Windsurf IDE configuration at ~/.codeium/windsurf/mcp_config.json)
    • zed (Zed editor config at ~/.config/zed/settings.json)
    • agy (Antigravity settings config at ~/.gemini/settings.json)
  2. (Optional) Customize the endpoint and model in the agent's configuration file or environment variables after installation.


Option 2: Manual Setup via Python

Prerequisites

  • Python 3.10+
  • Dependencies installed in virtual environment:
    python -m venv .venv
    source .venv/bin/activate
    pip install -r requirements.txt
    

Running Locally

To run the MCP server directly over standard input/output (stdio):

python src/code_generator_mcp/server.py --api-url http://localhost:8008/v1 --model coder-expert

Testing during development

You can use mcp dev (from MCP CLI) to test the server interactively in a development UI:

mcp dev src/code_generator_mcp/server.py -- --api-url http://localhost:8008/v1 --model coder-expert

๐Ÿ”Œ Integration Setup

To manually use this server with your favorite MCP client (like Claude Desktop or Cursor):

Claude Desktop Configuration

Open your Claude Desktop config file (usually located at ~/.config/Claude/claude_desktop_config.json on Linux/macOS or %APPDATA%\Claude\claude_desktop_config.json on Windows) and add the following entry:

{
  "mcpServers": {
    "code-generator-mcp": {
      "command": "/path/to/project/.venv/bin/python",
      "args": [
        "/path/to/project/src/code_generator_mcp/server.py"
      ],
      "env": {
        "CODE_GEN_API_URL": "http://localhost:8008/v1",
        "CODE_GEN_MODEL": "coder-expert"
      }
    }
  }
}

๐Ÿงช Testing

The codebase includes a fully-featured unit and integration test suite using pytest. Run tests with:

.venv/bin/pytest

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