Nuanced MCP Server
Provides call graph analysis for LLMs using the nuanced library.
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 functionfunction_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 functionfunction_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 functionfunction_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 analyzemodule_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"
]
}
}
}
Serveurs connexes
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Argo CD
Interact with Argo CD applications through natural language.
B12 Website Generator
An AI-powered website generator from B12, requiring no external data files.
Inoyu Apache Unomi
Maintains user context and manages profiles using the Apache Unomi Customer Data Platform.
Python MCP Server for Code Graph Extraction
Extracts and analyzes Python code structures, focusing on import/export relationships.
Riza
Arbitrary code execution and tool-use platform for LLMs by Riza
MCP Orchestrator
Aggregates tools from multiple MCP servers with unified BM25/regex search and deferred loading
MCP Proxy
A bidirectional MCP proxy connecting stdio and Server-Sent Events (SSE) with OAuth support.
MLflow MCP Server
Integrates with MLflow, enabling AI assistants to interact with experiments, runs, and registered models.
Authless Remote MCP Server
An authentication-free remote MCP server designed for deployment on Cloudflare Workers.
FastMCP
A fast, Pythonic framework for building MCP servers and clients.