一键导入
gget
gget CLI and Python workflow for quick genomic database queries, sequence lookup, BLAST-style searches, enrichment checks, and reproducible bioinformatics evidence logs.
菜单
gget CLI and Python workflow for quick genomic database queries, sequence lookup, BLAST-style searches, enrichment checks, and reproducible bioinformatics evidence logs.
Instinct-based learning system that observes sessions via hooks, creates atomic instincts with confidence scoring, and evolves them into skills/commands/agents. v2.1 adds project-scoped instincts to prevent cross-project contamination.
Orchestrate building a brand-new feature end to end — research, plan, TDD implementation, review, and gated commit — by delegating each phase to the matching ECC agent. Use when adding a capability that does not exist yet.
Orchestrate bootstrapping a working MVP from a design or spec document — ingest the doc, plan thin vertical slices, scaffold the first end-to-end slice, then TDD-implement, review, and gated commit. Use to turn an SDD/PRD into a running starting point.
Orchestrate altering an existing, working feature to new desired behavior — update its tests to the new spec, change the implementation to match, review, and gated commit. Use when behavior is not broken but should be different.
Orchestrate fixing a bug — reproduce it as a failing regression test, fix to green, review, and gated commit — by delegating each phase to the matching ECC agent. Use when existing behavior is broken or wrong.
Shared orchestration engine for the orch-* skill family. Defines the gated Research-Plan-TDD-Review-Commit pipeline, the size classifier, the agent map, and the two human gates that the orch-* operation skills delegate to. Not usually invoked directly.
| name | gget |
| description | gget CLI and Python workflow for quick genomic database queries, sequence lookup, BLAST-style searches, enrichment checks, and reproducible bioinformatics evidence logs. |
| origin | community |
Use this skill when a task needs quick bioinformatics lookup across genomic
reference databases with the gget CLI or Python package.
Use a dedicated workflow instead of gget when the task requires regulated
clinical interpretation, high-throughput production pipelines, or fine-grained
control over database versions and local indexes.
Use a clean Python environment.
python -m venv .venv
. .venv/bin/activate
python -m pip install --upgrade pip
python -m pip install --upgrade gget
gget --help
If uv is available:
uv venv
. .venv/bin/activate
uv pip install gget
Before relying on an older environment, upgrade gget and re-check the module
docs. The upstream databases queried by gget change over time.
CLI shape:
gget <module> [arguments] [options]
Python shape:
import gget
result = gget.search(["BRCA1"], species="human")
print(result)
Common workflow:
Use current upstream docs for exact arguments. These modules are common first choices:
gget search: find Ensembl IDs from search terms.gget info: retrieve metadata for Ensembl, UniProt, or related IDs.gget seq: fetch nucleotide or amino-acid sequences.gget ref: retrieve reference genome download links.gget blast: run a quick BLAST query.gget blat: locate a sequence against supported genome assemblies.gget muscle: run multiple sequence alignment.gget diamond: run local sequence alignment against reference sequences.gget alphafold and gget pdb: inspect protein-structure references.gget enrichr, gget opentargets, gget archs4, gget bgee, gget cbio,
and gget cosmic: explore enrichment, target, expression, cancer, and disease
association data.Do not assume every module supports every Python version or dependency set. Some optional scientific dependencies have narrower version support than the core package.
Find genes:
gget search -s human brca1 dna repair -o brca1-search.json
Fetch gene metadata:
gget info ENSG00000012048 -o brca1-info.json
Fetch a sequence:
gget seq ENSG00000012048 -o brca1-seq.fa
Run a small BLAST query:
gget blast "MEEPQSDPSVEPPLSQETFSDLWKLLPEN" -l 10 -o blast-results.json
Python example:
import gget
genes = gget.search(["BRCA1", "DNA repair"], species="human")
info = gget.info(["ENSG00000012048"])
sequence = gget.seq("ENSG00000012048")
For scientific outputs, include enough metadata to replay the query.
| Date | gget version | Module | Query | Species/assembly | Output | Notes |
| --- | --- | --- | --- | --- | --- | --- |
| 2026-05-11 | `gget --version` | search | `BRCA1 DNA repair` | human | `brca1-search.json` | Docs checked before run |
Also record:
gget setup.gget.gget version?