Uses OpenAI GPT models to intelligently parse natural language search queries and convert them into structured file search parameters
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@File Search Serverfind PDFs about quarterly reports in my Documents folder"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP File Search Server
A Model Context Protocol (MCP) server that provides intelligent file search capabilities for local directories. This server can search by file type, filename patterns, and file content using natural language queries.
Features
π Natural Language Search: Use plain English to describe what files you're looking for
π Multi-Type Search: Search by file extension, filename keywords, and file content
π€ AI-Powered Parsing: Uses OpenAI GPT to intelligently parse search requests
π Multiple File Formats: Supports PDF, Word docs, Excel, JSON, CSV, and text files
β‘ Fast Search: Efficient file system traversal with smart filtering
π― Relevance Scoring: Results ranked by relevance to your query
Installation
Install dependencies:
uv syncSet up environment variables:
cp .env.example .env # Edit .env and add your OpenAI API keyRun the setup script:
python setup_mcp_server.py
Usage
As MCP Server
Add to your MCP client configuration:
{
"mcpServers": {
"file-search": {
"command": "python",
"args": ["/path/to/mcp_file_search_server.py"],
"env": {}
}
}
}Available Tools
search_files
Search for files in a local directory using natural language.
Parameters:
folder_path(required): Absolute path to search directorysearch_prompt(required): Natural language search descriptionmax_results(optional): Maximum results to return (default: 10)
Examples:
{
"folder_path": "/Users/john/Documents",
"search_prompt": "pdf files about machine learning",
"max_results": 5
}{
"folder_path": "/Users/john/Projects",
"search_prompt": "python scripts with neural network code",
"max_results": 10
}Standalone Usage
You can also use the search functionality directly:
from fastmcp_file_search import search_files
from models import SearchRequest
request = SearchRequest(
folder_path="/path/to/search",
search_prompt="find all PDF files about AI",
max_results=10
)
results = search_files(request)
for result in results:
print(f"Found: {result['file_name']}")Web UI
Run the Streamlit web interface:
streamlit run file_search_ui.pySupported File Types
Documents: PDF, Word (.docx, .doc), Excel (.xlsx, .xls)
Data: JSON, CSV
Code: Python (.py), JavaScript (.js), HTML, CSS, XML
Text: Plain text, Markdown (.md), YAML (.yml), etc.
Search Examples
"pdf files about machine learning""python scripts with neural network code""excel spreadsheets containing budget data""json configuration files""word documents from last month""text files with API documentation"
Configuration
Environment Variables
OPENAI_API_KEY: Your OpenAI API key (required)OPENAI_ORG_ID: Your OpenAI organization ID (optional)
Search Behavior
Uses AND logic by default (files must match all criteria)
Searches file extensions, filenames, and content
Excludes system directories (.git, .venv, pycache, etc.)
Limits content search to first 50KB of each file
Architecture
mcp_file_search_server.py # MCP server implementation
βββ fastmcp_file_search.py # Main search orchestration
βββ models.py # Data models
βββ utils.py # LLM parsing and utilities
βββ search_functions.py # Individual search functions
βββ file_search_ui.py # Web interfaceTroubleshooting
"Import mcp could not be resolved"
Install the MCP package:
pip install mcp
"LLM parsing failed"
Check your OpenAI API key in
.envVerify internet connection
"No files found"
Check folder path exists and is readable
Try broader search terms
Verify file types exist in target directory
Project Structure
βββ mcp_file_search_server.py # Main MCP server implementation
βββ models.py # Pydantic data models
βββ utils.py # LLM integration and utilities
βββ search_functions.py # Individual search operations
βββ fastmcp_file_search.py # Main search orchestration
βββ file_search_ui.py # Streamlit web interface
βββ test_official_client.py # Official MCP client test
βββ test_mcp_client.py # JSON-RPC test client
βββ mcp_config.json # MCP server configuration
βββ pyproject.toml # Project dependencies
βββ README.md # This file
βββ USAGE_GUIDE.md # Detailed usage instructionsDevelopment
To extend the server:
Add new search functions in
search_functions.pyUpdate the search orchestration in
fastmcp_file_search.pyAdd new tools to
mcp_file_search_server.py
License
MIT License - see LICENSE file for details.