cellxgene-census
Query CZ CELLxGENE Census (61M+ cells). Filter by cell type/tissue/disease, retrieve expression data, integrate with scanpy/PyTorch, for population-scale single-cell analysis.
Best use case
cellxgene-census is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Query CZ CELLxGENE Census (61M+ cells). Filter by cell type/tissue/disease, retrieve expression data, integrate with scanpy/PyTorch, for population-scale single-cell analysis.
Teams using cellxgene-census should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/cellxgene-census/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How cellxgene-census Compares
| Feature / Agent | cellxgene-census | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Query CZ CELLxGENE Census (61M+ cells). Filter by cell type/tissue/disease, retrieve expression data, integrate with scanpy/PyTorch, for population-scale single-cell analysis.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# CZ CELLxGENE Census
## Overview
The CZ CELLxGENE Census provides programmatic access to a comprehensive, versioned collection of standardized single-cell genomics data from CZ CELLxGENE Discover. This skill enables efficient querying and analysis of millions of cells across thousands of datasets.
The Census includes:
- **61+ million cells** from human and mouse
- **Standardized metadata** (cell types, tissues, diseases, donors)
- **Raw gene expression** matrices
- **Pre-calculated embeddings** and statistics
- **Integration with PyTorch, scanpy, and other analysis tools**
## When to Use This Skill
This skill should be used when:
- Querying single-cell expression data by cell type, tissue, or disease
- Exploring available single-cell datasets and metadata
- Training machine learning models on single-cell data
- Performing large-scale cross-dataset analyses
- Integrating Census data with scanpy or other analysis frameworks
- Computing statistics across millions of cells
- Accessing pre-calculated embeddings or model predictions
## Installation and Setup
Install the Census API:
```bash
uv pip install cellxgene-census
```
For machine learning workflows, install additional dependencies:
```bash
uv pip install cellxgene-census[experimental]
```
## Core Workflow Patterns
### 1. Opening the Census
Always use the context manager to ensure proper resource cleanup:
```python
import cellxgene_census
# Open latest stable version
with cellxgene_census.open_soma() as census:
# Work with census data
# Open specific version for reproducibility
with cellxgene_census.open_soma(census_version="2023-07-25") as census:
# Work with census data
```
**Key points:**
- Use context manager (`with` statement) for automatic cleanup
- Specify `census_version` for reproducible analyses
- Default opens latest "stable" release
### 2. Exploring Census Information
Before querying expression data, explore available datasets and metadata.
**Access summary information:**
```python
# Get summary statistics
summary = census["census_info"]["summary"].read().concat().to_pandas()
print(f"Total cells: {summary['total_cell_count'][0]}")
# Get all datasets
datasets = census["census_info"]["datasets"].read().concat().to_pandas()
# Filter datasets by criteria
covid_datasets = datasets[datasets["disease"].str.contains("COVID", na=False)]
```
**Query cell metadata to understand available data:**
```python
# Get unique cell types in a tissue
cell_metadata = cellxgene_census.get_obs(
census,
"homo_sapiens",
value_filter="tissue_general == 'brain' and is_primary_data == True",
column_names=["cell_type"]
)
unique_cell_types = cell_metadata["cell_type"].unique()
print(f"Found {len(unique_cell_types)} cell types in brain")
# Count cells by tissue
tissue_counts = cell_metadata.groupby("tissue_general").size()
```
**Important:** Always filter for `is_primary_data == True` to avoid counting duplicate cells unless specifically analyzing duplicates.
### 3. Querying Expression Data (Small to Medium Scale)
For queries returning < 100k cells that fit in memory, use `get_anndata()`:
```python
# Basic query with cell type and tissue filters
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens", # or "Mus musculus"
obs_value_filter="cell_type == 'B cell' and tissue_general == 'lung' and is_primary_data == True",
obs_column_names=["assay", "disease", "sex", "donor_id"],
)
# Query specific genes with multiple filters
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
var_value_filter="feature_name in ['CD4', 'CD8A', 'CD19', 'FOXP3']",
obs_value_filter="cell_type == 'T cell' and disease == 'COVID-19' and is_primary_data == True",
obs_column_names=["cell_type", "tissue_general", "donor_id"],
)
```
**Filter syntax:**
- Use `obs_value_filter` for cell filtering
- Use `var_value_filter` for gene filtering
- Combine conditions with `and`, `or`
- Use `in` for multiple values: `tissue in ['lung', 'liver']`
- Select only needed columns with `obs_column_names`
**Getting metadata separately:**
```python
# Query cell metadata
cell_metadata = cellxgene_census.get_obs(
census, "homo_sapiens",
value_filter="disease == 'COVID-19' and is_primary_data == True",
column_names=["cell_type", "tissue_general", "donor_id"]
)
# Query gene metadata
gene_metadata = cellxgene_census.get_var(
census, "homo_sapiens",
value_filter="feature_name in ['CD4', 'CD8A']",
column_names=["feature_id", "feature_name", "feature_length"]
)
```
### 4. Large-Scale Queries (Out-of-Core Processing)
For queries exceeding available RAM, use `axis_query()` with iterative processing:
```python
import tiledbsoma as soma
# Create axis query
query = census["census_data"]["homo_sapiens"].axis_query(
measurement_name="RNA",
obs_query=soma.AxisQuery(
value_filter="tissue_general == 'brain' and is_primary_data == True"
),
var_query=soma.AxisQuery(
value_filter="feature_name in ['FOXP2', 'TBR1', 'SATB2']"
)
)
# Iterate through expression matrix in chunks
iterator = query.X("raw").tables()
for batch in iterator:
# batch is a pyarrow.Table with columns:
# - soma_data: expression value
# - soma_dim_0: cell (obs) coordinate
# - soma_dim_1: gene (var) coordinate
process_batch(batch)
```
**Computing incremental statistics:**
```python
# Example: Calculate mean expression
n_observations = 0
sum_values = 0.0
iterator = query.X("raw").tables()
for batch in iterator:
values = batch["soma_data"].to_numpy()
n_observations += len(values)
sum_values += values.sum()
mean_expression = sum_values / n_observations
```
### 5. Machine Learning with PyTorch
For training models, use the experimental PyTorch integration:
```python
from cellxgene_census.experimental.ml import experiment_dataloader
with cellxgene_census.open_soma() as census:
# Create dataloader
dataloader = experiment_dataloader(
census["census_data"]["homo_sapiens"],
measurement_name="RNA",
X_name="raw",
obs_value_filter="tissue_general == 'liver' and is_primary_data == True",
obs_column_names=["cell_type"],
batch_size=128,
shuffle=True,
)
# Training loop
for epoch in range(num_epochs):
for batch in dataloader:
X = batch["X"] # Gene expression tensor
labels = batch["obs"]["cell_type"] # Cell type labels
# Forward pass
outputs = model(X)
loss = criterion(outputs, labels)
# Backward pass
optimizer.zero_grad()
loss.backward()
optimizer.step()
```
**Train/test splitting:**
```python
from cellxgene_census.experimental.ml import ExperimentDataset
# Create dataset from experiment
dataset = ExperimentDataset(
experiment_axis_query,
layer_name="raw",
obs_column_names=["cell_type"],
batch_size=128,
)
# Split into train and test
train_dataset, test_dataset = dataset.random_split(
split=[0.8, 0.2],
seed=42
)
```
### 6. Integration with Scanpy
Seamlessly integrate Census data with scanpy workflows:
```python
import scanpy as sc
# Load data from Census
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
obs_value_filter="cell_type == 'neuron' and tissue_general == 'cortex' and is_primary_data == True",
)
# Standard scanpy workflow
sc.pp.normalize_total(adata, target_sum=1e4)
sc.pp.log1p(adata)
sc.pp.highly_variable_genes(adata, n_top_genes=2000)
# Dimensionality reduction
sc.pp.pca(adata, n_comps=50)
sc.pp.neighbors(adata)
sc.tl.umap(adata)
# Visualization
sc.pl.umap(adata, color=["cell_type", "tissue", "disease"])
```
### 7. Multi-Dataset Integration
Query and integrate multiple datasets:
```python
# Strategy 1: Query multiple tissues separately
tissues = ["lung", "liver", "kidney"]
adatas = []
for tissue in tissues:
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
obs_value_filter=f"tissue_general == '{tissue}' and is_primary_data == True",
)
adata.obs["tissue"] = tissue
adatas.append(adata)
# Concatenate
combined = adatas[0].concatenate(adatas[1:])
# Strategy 2: Query multiple datasets directly
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
obs_value_filter="tissue_general in ['lung', 'liver', 'kidney'] and is_primary_data == True",
)
```
## Key Concepts and Best Practices
### Always Filter for Primary Data
Unless analyzing duplicates, always include `is_primary_data == True` in queries to avoid counting cells multiple times:
```python
obs_value_filter="cell_type == 'B cell' and is_primary_data == True"
```
### Specify Census Version for Reproducibility
Always specify the Census version in production analyses:
```python
census = cellxgene_census.open_soma(census_version="2023-07-25")
```
### Estimate Query Size Before Loading
For large queries, first check the number of cells to avoid memory issues:
```python
# Get cell count
metadata = cellxgene_census.get_obs(
census, "homo_sapiens",
value_filter="tissue_general == 'brain' and is_primary_data == True",
column_names=["soma_joinid"]
)
n_cells = len(metadata)
print(f"Query will return {n_cells:,} cells")
# If too large (>100k), use out-of-core processing
```
### Use tissue_general for Broader Groupings
The `tissue_general` field provides coarser categories than `tissue`, useful for cross-tissue analyses:
```python
# Broader grouping
obs_value_filter="tissue_general == 'immune system'"
# Specific tissue
obs_value_filter="tissue == 'peripheral blood mononuclear cell'"
```
### Select Only Needed Columns
Minimize data transfer by specifying only required metadata columns:
```python
obs_column_names=["cell_type", "tissue_general", "disease"] # Not all columns
```
### Check Dataset Presence for Gene-Specific Queries
When analyzing specific genes, verify which datasets measured them:
```python
presence = cellxgene_census.get_presence_matrix(
census,
"homo_sapiens",
var_value_filter="feature_name in ['CD4', 'CD8A']"
)
```
### Two-Step Workflow: Explore Then Query
First explore metadata to understand available data, then query expression:
```python
# Step 1: Explore what's available
metadata = cellxgene_census.get_obs(
census, "homo_sapiens",
value_filter="disease == 'COVID-19' and is_primary_data == True",
column_names=["cell_type", "tissue_general"]
)
print(metadata.value_counts())
# Step 2: Query based on findings
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
obs_value_filter="disease == 'COVID-19' and cell_type == 'T cell' and is_primary_data == True",
)
```
## Available Metadata Fields
### Cell Metadata (obs)
Key fields for filtering:
- `cell_type`, `cell_type_ontology_term_id`
- `tissue`, `tissue_general`, `tissue_ontology_term_id`
- `disease`, `disease_ontology_term_id`
- `assay`, `assay_ontology_term_id`
- `donor_id`, `sex`, `self_reported_ethnicity`
- `development_stage`, `development_stage_ontology_term_id`
- `dataset_id`
- `is_primary_data` (Boolean: True = unique cell)
### Gene Metadata (var)
- `feature_id` (Ensembl gene ID, e.g., "ENSG00000161798")
- `feature_name` (Gene symbol, e.g., "FOXP2")
- `feature_length` (Gene length in base pairs)
## Reference Documentation
This skill includes detailed reference documentation:
### references/census_schema.md
Comprehensive documentation of:
- Census data structure and organization
- All available metadata fields
- Value filter syntax and operators
- SOMA object types
- Data inclusion criteria
**When to read:** When you need detailed schema information, full list of metadata fields, or complex filter syntax.
### references/common_patterns.md
Examples and patterns for:
- Exploratory queries (metadata only)
- Small-to-medium queries (AnnData)
- Large queries (out-of-core processing)
- PyTorch integration
- Scanpy integration workflows
- Multi-dataset integration
- Best practices and common pitfalls
**When to read:** When implementing specific query patterns, looking for code examples, or troubleshooting common issues.
## Common Use Cases
### Use Case 1: Explore Cell Types in a Tissue
```python
with cellxgene_census.open_soma() as census:
cells = cellxgene_census.get_obs(
census, "homo_sapiens",
value_filter="tissue_general == 'lung' and is_primary_data == True",
column_names=["cell_type"]
)
print(cells["cell_type"].value_counts())
```
### Use Case 2: Query Marker Gene Expression
```python
with cellxgene_census.open_soma() as census:
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
var_value_filter="feature_name in ['CD4', 'CD8A', 'CD19']",
obs_value_filter="cell_type in ['T cell', 'B cell'] and is_primary_data == True",
)
```
### Use Case 3: Train Cell Type Classifier
```python
from cellxgene_census.experimental.ml import experiment_dataloader
with cellxgene_census.open_soma() as census:
dataloader = experiment_dataloader(
census["census_data"]["homo_sapiens"],
measurement_name="RNA",
X_name="raw",
obs_value_filter="is_primary_data == True",
obs_column_names=["cell_type"],
batch_size=128,
shuffle=True,
)
# Train model
for epoch in range(epochs):
for batch in dataloader:
# Training logic
pass
```
### Use Case 4: Cross-Tissue Analysis
```python
with cellxgene_census.open_soma() as census:
adata = cellxgene_census.get_anndata(
census=census,
organism="Homo sapiens",
obs_value_filter="cell_type == 'macrophage' and tissue_general in ['lung', 'liver', 'brain'] and is_primary_data == True",
)
# Analyze macrophage differences across tissues
sc.tl.rank_genes_groups(adata, groupby="tissue_general")
```
## Troubleshooting
### Query Returns Too Many Cells
- Add more specific filters to reduce scope
- Use `tissue` instead of `tissue_general` for finer granularity
- Filter by specific `dataset_id` if known
- Switch to out-of-core processing for large queries
### Memory Errors
- Reduce query scope with more restrictive filters
- Select fewer genes with `var_value_filter`
- Use out-of-core processing with `axis_query()`
- Process data in batches
### Duplicate Cells in Results
- Always include `is_primary_data == True` in filters
- Check if intentionally querying across multiple datasets
### Gene Not Found
- Verify gene name spelling (case-sensitive)
- Try Ensembl ID with `feature_id` instead of `feature_name`
- Check dataset presence matrix to see if gene was measured
- Some genes may have been filtered during Census construction
### Version Inconsistencies
- Always specify `census_version` explicitly
- Use same version across all analyses
- Check release notes for version-specific changesRelated Skills
zinc-database
Access ZINC (230M+ purchasable compounds). Search by ZINC ID/SMILES, similarity searches, 3D-ready structures for docking, analog discovery, for virtual screening and drug discovery.
zarr-python
Chunked N-D arrays for cloud storage. Compressed arrays, parallel I/O, S3/GCS integration, NumPy/Dask/Xarray compatible, for large-scale scientific computing pipelines.
xlsx
Use this skill any time a spreadsheet file is the primary input or output. This means any task where the user wants to: open, read, edit, or fix an existing .xlsx, .xlsm, .csv, or .tsv file (e.g., adding columns, computing formulas, formatting, charting, cleaning messy data); create a new spreadsheet from scratch or from other data sources; or convert between tabular file formats. Trigger especially when the user references a spreadsheet file by name or path — even casually (like "the xlsx in my downloads") — and wants something done to it or produced from it. Also trigger for cleaning or restructuring messy tabular data files (malformed rows, misplaced headers, junk data) into proper spreadsheets. The deliverable must be a spreadsheet file. Do NOT trigger when the primary deliverable is a Word document, HTML report, standalone Python script, database pipeline, or Google Sheets API integration, even if tabular data is involved.
writing-skills
Use when creating new skills, editing existing skills, or verifying skills work before deployment
writing-plans
Use when you have a spec or requirements for a multi-step task, before touching code
wikipedia-search
Search and fetch structured content from Wikipedia using the MediaWiki API for reliable, encyclopedic information
wellally-tech
Integrate digital health data sources (Apple Health, Fitbit, Oura Ring) and connect to WellAlly.tech knowledge base. Import external health device data, standardize to local format, and recommend relevant WellAlly.tech knowledge base articles based on health data. Support generic CSV/JSON import, provide intelligent article recommendations, and help users better manage personal health data.
weightloss-analyzer
分析减肥数据、计算代谢率、追踪能量缺口、管理减肥阶段
<!--
# COPYRIGHT NOTICE
verification-before-completion
Use when about to claim work is complete, fixed, or passing, before committing or creating PRs - requires running verification commands and confirming output before making any success claims; evidence before assertions always
vcf-annotator
Annotate VCF variants with VEP, ClinVar, gnomAD frequencies, and ancestry-aware context. Generates prioritised variant reports.
vaex
Use this skill for processing and analyzing large tabular datasets (billions of rows) that exceed available RAM. Vaex excels at out-of-core DataFrame operations, lazy evaluation, fast aggregations, efficient visualization of big data, and machine learning on large datasets. Apply when users need to work with large CSV/HDF5/Arrow/Parquet files, perform fast statistics on massive datasets, create visualizations of big data, or build ML pipelines that do not fit in memory.