Skip to main content
Glama

Parquet MCP Server

by DeepSpringAI

parquet_mcp_server

A powerful MCP (Model Control Protocol) server that provides tools for performing web searches and finding similar content. This server is designed to work with Claude Desktop and offers two main functionalities:

  1. Web Search: Perform a web search and scrape results
  2. Similarity Search: Extract relevant information from previous searches

This server is particularly useful for:

  • Applications requiring web search capabilities
  • Projects needing to find similar content based on search queries

Installation

Installing via Smithery

To install Parquet MCP Server for Claude Desktop automatically via Smithery:

npx -y @smithery/cli install @DeepSpringAI/parquet_mcp_server --client claude

Clone this repository

git clone ... cd parquet_mcp_server

Create and activate virtual environment

uv venv .venv\Scripts\activate # On Windows source .venv/bin/activate # On macOS/Linux

Install the package

uv pip install -e .

Environment

Create a .env file with the following variables:

EMBEDDING_URL=http://sample-url.com/api/embed # URL for the embedding service OLLAMA_URL=http://sample-url.com/ # URL for Ollama server EMBEDDING_MODEL=sample-model # Model to use for generating embeddings SEARCHAPI_API_KEY=your_searchapi_api_key FIRECRAWL_API_KEY=your_firecrawl_api_key VOYAGE_API_KEY=your_voyage_api_key AZURE_OPENAI_ENDPOINT=http://sample-url.com/azure_openai AZURE_OPENAI_API_KEY=your_azure_openai_api_key

Usage with Claude Desktop

Add this to your Claude Desktop configuration file (claude_desktop_config.json):

{ "mcpServers": { "parquet-mcp-server": { "command": "uv", "args": [ "--directory", "/home/${USER}/workspace/parquet_mcp_server/src/parquet_mcp_server", "run", "main.py" ] } } }

Available Tools

The server provides two main tools:

  1. Search Web: Perform a web search and scrape results
    • Required parameters:
      • queries: List of search queries
    • Optional parameters:
      • page_number: Page number for the search results (defaults to 1)
  2. Extract Info from Search: Extract relevant information from previous searches
    • Required parameters:
      • queries: List of search queries to merge

Example Prompts

Here are some example prompts you can use with the agent:

"Please perform a web search for 'macbook' and 'laptop' and scrape the results from page 1"
"Please extract relevant information from the previous searches for 'macbook'"

Testing the MCP Server

The project includes a comprehensive test suite in the src/tests directory. You can run all tests using:

python src/tests/run_tests.py

Or run individual tests:

# Test Web Search python src/tests/test_search_web.py # Test Extract Info from Search python src/tests/test_extract_info_from_search.py

You can also test the server using the client directly:

from parquet_mcp_server.client import ( perform_search_and_scrape, # New web search function find_similar_chunks # New extract info function ) # Perform a web search perform_search_and_scrape(["macbook", "laptop"], page_number=1) # Extract information from the search results find_similar_chunks(["macbook"])

Troubleshooting

  1. If you get SSL verification errors, make sure the SSL settings in your .env file are correct
  2. If embeddings are not generated, check:
    • The Ollama server is running and accessible
    • The model specified is available on your Ollama server
    • The text column exists in your input Parquet file
  3. If DuckDB conversion fails, check:
    • The input Parquet file exists and is readable
    • You have write permissions in the output directory
    • The Parquet file is not corrupted
  4. If PostgreSQL conversion fails, check:
    • The PostgreSQL connection settings in your .env file are correct
    • The PostgreSQL server is running and accessible
    • You have the necessary permissions to create/modify tables
    • The pgvector extension is installed in your database

To perform vector similarity searches in PostgreSQL, you can use the following function:

-- Create the function for vector similarity search CREATE OR REPLACE FUNCTION match_web_search( query_embedding vector(1024), -- Adjusted vector size match_threshold float, match_count int -- User-defined limit for number of results ) RETURNS TABLE ( id bigint, metadata jsonb, text TEXT, -- Added text column to the result date TIMESTAMP, -- Using the date column instead of created_at similarity float ) LANGUAGE plpgsql AS $$ BEGIN RETURN QUERY SELECT web_search.id, web_search.metadata, web_search.text, -- Returning the full text of the chunk web_search.date, -- Returning the date timestamp 1 - (web_search.embedding <=> query_embedding) as similarity FROM web_search WHERE 1 - (web_search.embedding <=> query_embedding) > match_threshold ORDER BY web_search.date DESC, -- Sort by date in descending order (newest first) web_search.embedding <=> query_embedding -- Sort by similarity LIMIT match_count; -- Limit the results to the match_count specified by the user END; $$;

This function allows you to perform similarity searches on vector embeddings stored in a PostgreSQL database, returning results that meet a specified similarity threshold and limiting the number of results based on user input. The results are sorted by date and similarity.

Postgres table creation

CREATE TABLE web_search ( id SERIAL PRIMARY KEY, text TEXT, metadata JSONB, embedding VECTOR(1024), -- This will be auto-updated date TIMESTAMP DEFAULT NOW() );
-
security - not tested
F
license - not found
-
quality - not tested

remote-capable server

The server can be hosted and run remotely because it primarily relies on remote services or has no dependency on the local environment.

A Model Control Protocol server that provides web search capabilities and similarity search functionality for Claude Desktop, allowing users to perform web searches and extract relevant information from previous search results.

  1. Installation
    1. Installing via Smithery
    2. Clone this repository
    3. Create and activate virtual environment
    4. Install the package
    5. Environment
  2. Usage with Claude Desktop
    1. Available Tools
      1. Example Prompts
        1. For Web Search:
        2. For Extracting Info from Search:
      2. Testing the MCP Server
        1. Troubleshooting
      3. PostgreSQL Function for Vector Similarity Search
        1. Postgres table creation

          Related MCP Servers

          • A
            security
            A
            license
            A
            quality
            An MCP server that enables Claude to perform web searches using Perplexity's API with intelligent model selection based on query intent and support for domain and recency filtering.
            Last updated -
            6
            JavaScript
            MIT License
            • Apple
          • A
            security
            A
            license
            A
            quality
            A Model Context Protocol server that provides DuckDuckGo search functionality for Claude, enabling web search capabilities through a clean tool interface with rate limiting support.
            Last updated -
            1
            60
            15
            TypeScript
            MIT License
            • Apple
          • -
            security
            F
            license
            -
            quality
            A Model Context Protocol server that enables Claude to perform Google Custom Search operations by connecting to Google's search API.
            Last updated -
            Python
            • Linux
          • -
            security
            A
            license
            -
            quality
            A Model Context Protocol server that enables Claude to perform web research by integrating Google search, extracting webpage content, and capturing screenshots.
            Last updated -
            854
            4
            MIT License
            • Apple

          View all related MCP servers

          MCP directory API

          We provide all the information about MCP servers via our MCP API.

          curl -X GET 'https://glama.ai/api/mcp/v1/servers/DeepSpringAI/search_mcp_server'

          If you have feedback or need assistance with the MCP directory API, please join our Discord server