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nuanced-mcp

一种MCP服务器,它使大语言模型(LLMs)能够通过函数调用图来理解和分析代码结构,从而使AI助手能够探索函数之间的关系并分析Python代码库中的依赖关系。

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README

Nuanced MCP Server

A Model Context Protocol (MCP) server that provides call graph analysis capabilities to LLMs through the nuanced library.

Overview

This MCP server enables LLMs to understand code structure by accessing function call graphs through standardized tools and resources. It allows AI assistants to:

  • Initialize call graphs for Python repos
  • Explore function call relationships
  • Analyze dependencies between functions
  • Provide more contextually aware code assistance

API

Tools

  • initialize_graph

    • Initialize a code graph for the given repository path
    • Input: repo_path (string)
  • switch_repository

    • Switch to a different initialized repository
    • Input: repo_path (string)
  • list_repositories

    • List all initialized repositories
    • No inputs required
  • get_function_call_graph

    • Get the call graph for a specific function
    • Inputs:
      • file_path (string)
      • function_name (string)
      • repo_path (string, optional) - uses active repository if not specified
  • analyze_dependencies

    • Find all module or file dependencies in the codebase
    • Inputs (at least one required):
      • file_path (string, optional)
      • module_name (string, optional)
  • analyze_change_impact

    • Analyze the impact of changing a specific function
    • Inputs:
      • file_path (string)
      • function_name (string)

Resources

  • graph://summary

    • Get a summary of the currently loaded code graph
    • No parameters required
  • graph://repo/{repo_path}/summary

    • Get a summary of a specific repository's code graph
    • Parameters:
      • repo_path (string) - Path to the repository
  • graph://function/{file_path}/{function_name}

    • Get detailed information about a specific function
    • Parameters:
      • file_path (string) - Path to the file containing the function
      • function_name (string) - Name of the function to analyze

Prompts

  • analyze_function

    • Create a prompt to analyze a function with its call graph
    • Parameters:
      • file_path (string) - Path to the file containing the function
      • function_name (string) - Name of the function to analyze
  • impact_analysis

    • Create a prompt to analyze the impact of changing a function
    • Parameters:
      • file_path (string) - Path to the file containing the function
      • function_name (string) - Name of the function to analyze
  • analyze_dependencies_prompt

    • Create a prompt to analyze dependencies of a file or module
    • Parameters (at least one required):
      • file_path (string, optional) - Path to the file to analyze
      • module_name (string, optional) - Name of the module to analyze

Usage with Claude Desktop

Add this to your claude_desktop_config.json

UV

{
  "mcpServers": {
    "nuanced": {
      "command": "uv",
      "args": [
        "--directory",
        "/path/to/nuanced-mcp",
        "run",
        "nuanced_mcp_server.py"
      ]
    }
  }
}
help

Runtime guide

cloud

Hosted runtime

Hosted servers run from a provider-managed environment. You usually connect the MCP client to the hosted endpoint or follow the provider's authorization flow, without keeping a local process alive

  1. Open provider connection page
  2. Authorize or copy endpoint
  3. Connect from your MCP client
terminal

Local runtime / other methods

Local servers run on your own machine or infrastructure. You normally copy the server_config into your MCP client, install the required package, and provide env variables from env_schema when needed

  1. Copy server_config
  2. Install required package
  3. Fill env variables and restart client