Alphafold Mcp Server

Created By
Augmented-Naturea year ago
A comprehensive Model Context Protocol (MCP) server that provides access to the AlphaFold Protein Structure Database through a rich set of tools and resources for protein structure prediction analysis.
Overview

What is AlphaFold MCP Server?

AlphaFold MCP Server is a comprehensive Model Context Protocol (MCP) server that provides access to the AlphaFold Protein Structure Database, offering tools and resources for protein structure prediction analysis.

How to use AlphaFold MCP Server?

To use the AlphaFold MCP Server, integrate it into your MCP configuration and utilize its API to retrieve protein structures, analyze confidence scores, and perform batch processing.

Key features of AlphaFold MCP Server?

  • Structure Retrieval: Access AlphaFold predictions by UniProt ID.
  • Multi-format Downloads: Download structures in PDB, CIF, BCIF, and JSON formats.
  • Confidence Analysis: Get detailed confidence scores for each amino acid.
  • Batch Processing: Process multiple proteins simultaneously.
  • Visualization Integration: Export data for visualization in PyMOL and ChimeraX.

Use cases of AlphaFold MCP Server?

  1. Researchers analyzing protein structures for scientific studies.
  2. Bioinformaticians performing large-scale protein structure predictions.
  3. Structural biologists comparing multiple protein structures.

FAQ from AlphaFold MCP Server?

  • Can I retrieve structures for any protein?

Yes, as long as the protein has a corresponding UniProt ID.

  • Is there a limit on the number of proteins I can analyze at once?

Yes, batch operations have specific limits depending on the tool used.

  • How do I check if a structure is available?

Use the check_availability tool with the UniProt ID.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Augmented-Nature
Star
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Language
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License
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