bundled/skills/ensembl-database/SKILL.md
Query Ensembl genome database REST API for 250+ species. Gene lookups, sequence retrieval, variant analysis, comparative genomics, orthologs, VEP predictions, for genomic research.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex ensembl-databaseInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Access and query the Ensembl genome database, a comprehensive resource for vertebrate genomic data maintained by EMBL-EBI. The database provides gene annotations, sequences, variants, regulatory information, and comparative genomics data for over 250 species. Current release is 115 (September 2025).
This skill should be used when:
Query gene data by symbol, Ensembl ID, or external database identifiers.
Common operations:
Using the ensembl_rest package:
from ensembl_rest import EnsemblClient
client = EnsemblClient()
# Look up gene by symbol
gene_data = client.symbol_lookup(
species='human',
symbol='BRCA2'
)
# Get detailed gene information
gene_info = client.lookup_id(
id='ENSG00000139618', # BRCA2 Ensembl ID
expand=True
)
Direct REST API (no package):
import requests
server = "https://rest.ensembl.org"
# Symbol lookup
response = requests.get(
f"{server}/lookup/symbol/homo_sapiens/BRCA2",
headers={"Content-Type": "application/json"}
)
gene_data = response.json()
Fetch genomic, transcript, or protein sequences in various formats (JSON, FASTA, plain text).
Operations:
Example:
# Using ensembl_rest package
sequence = client.sequence_id(
id='ENSG00000139618', # Gene ID
content_type='application/json'
)
# Get sequence for a genomic region
region_seq = client.sequence_region(
species='human',
region='7:140424943-140624564' # chromosome:start-end
)
Query genetic variation data and predict variant consequences using the Variant Effect Predictor (VEP).
Capabilities:
VEP example:
# Predict variant consequences
vep_result = client.vep_hgvs(
species='human',
hgvs_notation='ENST00000380152.7:c.803C>T'
)
# Query variant by rsID
variant = client.variation_id(
species='human',
id='rs699'
)
Perform cross-species comparisons to identify orthologs, paralogs, and evolutionary relationships.
Operations:
Example:
# Find orthologs for a human gene
orthologs = client.homology_ensemblgene(
id='ENSG00000139618', # Human BRCA2
target_species='mouse'
)
# Get gene tree
gene_tree = client.genetree_member_symbol(
species='human',
symbol='BRCA2'
)
Find all genomic features (genes, transcripts, regulatory elements) in a specific region.
Use cases:
Example:
# Find all features in a region
features = client.overlap_region(
species='human',
region='7:140424943-140624564',
feature='gene'
)
Convert coordinates between different genome assemblies (e.g., GRCh37 to GRCh38).
Important: Use https://grch37.rest.ensembl.org for GRCh37/hg19 queries and https://rest.ensembl.org for current assemblies.
Example:
from ensembl_rest import AssemblyMapper
# Map coordinates from GRCh37 to GRCh38
mapper = AssemblyMapper(
species='human',
asm_from='GRCh37',
asm_to='GRCh38'
)
mapped = mapper.map(chrom='7', start=140453136, end=140453136)
The Ensembl REST API has rate limits. Follow these practices:
Retry-After header and waitAlways implement proper error handling:
import requests
import time
def query_ensembl(endpoint, params=None, max_retries=3):
server = "https://rest.ensembl.org"
headers = {"Content-Type": "application/json"}
for attempt in range(max_retries):
response = requests.get(
f"{server}{endpoint}",
headers=headers,
params=params
)
if response.status_code == 200:
return response.json()
elif response.status_code == 429:
# Rate limited - wait and retry
retry_after = int(response.headers.get('Retry-After', 1))
time.sleep(retry_after)
else:
response.raise_for_status()
raise Exception(f"Failed after {max_retries} attempts")
uv pip install ensembl_rest
The ensembl_rest package provides a Pythonic interface to all Ensembl REST API endpoints.
No installation needed - use standard HTTP libraries like requests:
uv pip install requests
api_endpoints.md: Comprehensive documentation of all 17 API endpoint categories with examples and parametersensembl_query.py: Reusable Python script for common Ensembl queries with built-in rate limiting and error handlingTo query available species and assemblies:
# List all available species
species_list = client.info_species()
# Get assembly information for a species
assembly_info = client.info_assembly(species='human')
Common species identifiers:
homo_sapiens or humanmus_musculus or mousedanio_rerio or zebrafishdrosophila_melanogasterdevelopment
Model interpretability and explainability using SHAP (SHapley Additive exPlanations). Use this skill when explaining machine learning model predictions, computing feature importance, generating SHAP plots (waterfall, beeswarm, bar, scatter, force, heatmap), debugging models, analyzing model bias or fairness, comparing models, or implementing explainable AI. Works with tree-based models (XGBoost, LightGBM, Random Forest), deep learning (TensorFlow, PyTorch), linear models, and any black-box model.
development
Use when the user asks to inspect Sentry issues or events, summarize recent production errors, or pull basic Sentry health data via the Sentry API; perform read-only queries with the bundled script and require `SENTRY_AUTH_TOKEN`.
development
World-class prompt engineering skill for LLM optimization, prompt patterns, structured outputs, and AI product development. Expertise in Claude, GPT-4, prompt design patterns, few-shot learning, chain-of-thought, and AI evaluation. Includes RAG optimization, agent design, and LLM system architecture. Use when building AI products, optimizing LLM performance, designing agentic systems, or implementing advanced prompting techniques.
development
World-class ML engineering skill for productionizing ML models, MLOps, and building scalable ML systems. Expertise in PyTorch, TensorFlow, model deployment, feature stores, model monitoring, and ML infrastructure. Includes LLM integration, fine-tuning, RAG systems, and agentic AI. Use when deploying ML models, building ML platforms, implementing MLOps, or integrating LLMs into production systems.