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google-deepmind/science-skills963 installs

foldseek-structural-search

Performs 3D structural searches of proteins against various databases (PDB, AlphaFold, CATH, MGnify, etc.) using the Foldseek API. Use ONLY when the user provides a physical 3D coordinate file (.cif, .mmcif, or .pdb) and wants to find structurally similar proteins. Do NOT use if the user only provides a protein sequence, gene name, or UniProt ID.

How do I install this agent skill?

npx skills add https://github.com/google-deepmind/science-skills --skill foldseek-structural-search
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The Foldseek structural search skill is a well-structured tool designed for bioinformatic analysis of protein structures. It safely interacts with the official Foldseek web API to perform homology searches using user-provided structural coordinate files. The skill includes robust input validation, limiting searches to specific file formats and authorized databases. All external communications are directed to a reputable scientific service, and there are no signs of malicious patterns such as data exfiltration or unauthorized command execution.

  • Socketpass

    No alerts

  • Snykwarn

    Risk: MEDIUM · 1 issue

What does this agent skill do?

Prerequisites

  1. uv: Read the uv skill and follow its Setup instructions to ensure uv is installed and on PATH.
  2. User Notification: If .licenses/foldseek_structural_search_LICENSE.txt does not already exist in the workspace root directory then (1) prominently notify the user to check the terms at https://search.foldseek.com/search and https://github.com/steineggerlab/foldseek, then (2) create the file recording the notification text and timestamp.

Goal

Submit a user-provided 3D protein structure file (.cif, .mmcif, or .pdb) to the Foldseek web server API to find structurally similar proteins. Report the top structural hits, interpret key alignment metrics, summarize the inferred protein functions, save the Markdown-formatted table to a .md file, and save the full detailed results to a local JSON file.

Core Rules

  • File Requirement: This tool absolutely cannot search by sequence, name, or accession ID. It strictly requires a .pdb, .cif, or .mmcif file path.
  • Strict Validation: Never bypass the input validation or the database allowlist check.
  • Do Not Parse the JSON: Rely entirely on the generated .md file for your immediate summary. The JSON is saved purely for subsequent, specialized tool use.
  • No Raw Parsing: Do not attempt to parse or read the raw 3D coordinates yourself; always pass the file to the script.
  • Notification: If this skill is used, ensure this is mentioned in the output.

Instructions

  1. Strict Input Validation: Verify that the user has explicitly provided a valid path to a .cif, .mmcif, or .pdb file in their workspace.
    • If the user provided a protein name, an amino acid sequence, or an accession ID (e.g., a UniProt ID) but NO downloaded structure file, halt immediately. Do not run the script.
    • Inform the user that Foldseek requires a physical 3D coordinate file, and suggest downloading the structure first (e.g., using the AlphaFold fetch tool).
  2. Database Validation: Check if the user requested specific databases to search.
    • Allowed List: afdb50, afdb-swissprot, pdb100, BFVD, mgnify_esm30, cath50, gmgcl_id, bfmd, afdb-proteome.
    • If the user requests a database NOT on this list, halt immediately. Do not run the script. Inform the user that the database is unsupported and provide them with the allowed list.
  3. Generate File Names: Generate descriptive output file names for both the JSON data and the Markdown table based on the input file (e.g., proteinA_foldseek_results.json and proteinA_foldseek_results.md).
  4. Execute the python script based on the user's request, redirecting the standard output into your generated .md file:
    • Default (No databases specified): uv run scripts/search.py <path-to-file> -o <generated-filename.json> > <generated-filename.md>
    • Custom (Valid databases specified): uv run scripts/search.py <path-to-file> -o <generated-filename.json> --databases <db1,db2,db3> > <generated-filename.md>
  5. The script will query the databases, save the full JSON payload, and write a Markdown-formatted table to your specified .md file.
  6. Read the Results: Open and read the newly generated .md file carefully to view the Markdown table.
  7. Interpret the Metrics: Summarize the top 3 to 5 structural matches that have meaningfull annotations for the user. When reporting, assess the match quality using these specific fields:
    • Prob (Probability): Values approaching 1.0 (100%) indicate extreme confidence that the fold is a true structural homologue.
    • Q-Cov (Query Coverage): High percentages mean the match covers the majority of the query protein's overall shape, rather than just a small local motif.
    • E-value & Seq Identity: Use these to provide additional evolutionary context.
  8. Perform Functional Analysis: Analyze the text descriptions embedded within the Target ID column for the reported matches.
    • Explicitly report the specific protein names/functions of the top structural homologues.
    • Provide a synthesized overview summarizing the entire variety of different functions, domains, or protein families found across the whole list of homologues (e.g., "Most hits are portal proteins, but there is also a distinct cluster of viral capsid matches...").
  9. Explicitly inform the user of both newly created files (.json and .md) and their locations so they can be seamlessly used in subsequent analysis steps.

* If the API returns an error or the file is missing, inform the user clearly

and ask them to verify the file path.

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/google-deepmind/science-skills/foldseek-structural-search">View foldseek-structural-search on skillZs</a>