anndata

This skill should be used when working with annotated data matrices in Python, particularly for single-cell genomics analysis, managing experimental measurements with metadata, or handling large-scale biological datasets. Use when tasks involve AnnData objects, h5ad files, single-cell RNA-seq data, or integration with scanpy/scverse tools.

153 stars

Best use case

anndata is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

This skill should be used when working with annotated data matrices in Python, particularly for single-cell genomics analysis, managing experimental measurements with metadata, or handling large-scale biological datasets. Use when tasks involve AnnData objects, h5ad files, single-cell RNA-seq data, or integration with scanpy/scverse tools.

Teams using anndata 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

$curl -o ~/.claude/skills/anndata/SKILL.md --create-dirs "https://raw.githubusercontent.com/Microck/ordinary-claude-skills/main/skills_all/claude-scientific-skills/scientific-skills/anndata/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/anndata/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How anndata Compares

Feature / AgentanndataStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

This skill should be used when working with annotated data matrices in Python, particularly for single-cell genomics analysis, managing experimental measurements with metadata, or handling large-scale biological datasets. Use when tasks involve AnnData objects, h5ad files, single-cell RNA-seq data, or integration with scanpy/scverse tools.

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

# AnnData

## Overview

AnnData is a Python package for handling annotated data matrices, storing experimental measurements (X) alongside observation metadata (obs), variable metadata (var), and multi-dimensional annotations (obsm, varm, obsp, varp, uns). Originally designed for single-cell genomics through Scanpy, it now serves as a general-purpose framework for any annotated data requiring efficient storage, manipulation, and analysis.

## When to Use This Skill

Use this skill when:
- Creating, reading, or writing AnnData objects
- Working with h5ad, zarr, or other genomics data formats
- Performing single-cell RNA-seq analysis
- Managing large datasets with sparse matrices or backed mode
- Concatenating multiple datasets or experimental batches
- Subsetting, filtering, or transforming annotated data
- Integrating with scanpy, scvi-tools, or other scverse ecosystem tools

## Installation

```bash
uv pip install anndata

# With optional dependencies
uv pip install anndata[dev,test,doc]
```

## Quick Start

### Creating an AnnData object
```python
import anndata as ad
import numpy as np
import pandas as pd

# Minimal creation
X = np.random.rand(100, 2000)  # 100 cells × 2000 genes
adata = ad.AnnData(X)

# With metadata
obs = pd.DataFrame({
    'cell_type': ['T cell', 'B cell'] * 50,
    'sample': ['A', 'B'] * 50
}, index=[f'cell_{i}' for i in range(100)])

var = pd.DataFrame({
    'gene_name': [f'Gene_{i}' for i in range(2000)]
}, index=[f'ENSG{i:05d}' for i in range(2000)])

adata = ad.AnnData(X=X, obs=obs, var=var)
```

### Reading data
```python
# Read h5ad file
adata = ad.read_h5ad('data.h5ad')

# Read with backed mode (for large files)
adata = ad.read_h5ad('large_data.h5ad', backed='r')

# Read other formats
adata = ad.read_csv('data.csv')
adata = ad.read_loom('data.loom')
adata = ad.read_10x_h5('filtered_feature_bc_matrix.h5')
```

### Writing data
```python
# Write h5ad file
adata.write_h5ad('output.h5ad')

# Write with compression
adata.write_h5ad('output.h5ad', compression='gzip')

# Write other formats
adata.write_zarr('output.zarr')
adata.write_csvs('output_dir/')
```

### Basic operations
```python
# Subset by conditions
t_cells = adata[adata.obs['cell_type'] == 'T cell']

# Subset by indices
subset = adata[0:50, 0:100]

# Add metadata
adata.obs['quality_score'] = np.random.rand(adata.n_obs)
adata.var['highly_variable'] = np.random.rand(adata.n_vars) > 0.8

# Access dimensions
print(f"{adata.n_obs} observations × {adata.n_vars} variables")
```

## Core Capabilities

### 1. Data Structure

Understand the AnnData object structure including X, obs, var, layers, obsm, varm, obsp, varp, uns, and raw components.

**See**: `references/data_structure.md` for comprehensive information on:
- Core components (X, obs, var, layers, obsm, varm, obsp, varp, uns, raw)
- Creating AnnData objects from various sources
- Accessing and manipulating data components
- Memory-efficient practices

### 2. Input/Output Operations

Read and write data in various formats with support for compression, backed mode, and cloud storage.

**See**: `references/io_operations.md` for details on:
- Native formats (h5ad, zarr)
- Alternative formats (CSV, MTX, Loom, 10X, Excel)
- Backed mode for large datasets
- Remote data access
- Format conversion
- Performance optimization

Common commands:
```python
# Read/write h5ad
adata = ad.read_h5ad('data.h5ad', backed='r')
adata.write_h5ad('output.h5ad', compression='gzip')

# Read 10X data
adata = ad.read_10x_h5('filtered_feature_bc_matrix.h5')

# Read MTX format
adata = ad.read_mtx('matrix.mtx').T
```

### 3. Concatenation

Combine multiple AnnData objects along observations or variables with flexible join strategies.

**See**: `references/concatenation.md` for comprehensive coverage of:
- Basic concatenation (axis=0 for observations, axis=1 for variables)
- Join types (inner, outer)
- Merge strategies (same, unique, first, only)
- Tracking data sources with labels
- Lazy concatenation (AnnCollection)
- On-disk concatenation for large datasets

Common commands:
```python
# Concatenate observations (combine samples)
adata = ad.concat(
    [adata1, adata2, adata3],
    axis=0,
    join='inner',
    label='batch',
    keys=['batch1', 'batch2', 'batch3']
)

# Concatenate variables (combine modalities)
adata = ad.concat([adata_rna, adata_protein], axis=1)

# Lazy concatenation
from anndata.experimental import AnnCollection
collection = AnnCollection(
    ['data1.h5ad', 'data2.h5ad'],
    join_obs='outer',
    label='dataset'
)
```

### 4. Data Manipulation

Transform, subset, filter, and reorganize data efficiently.

**See**: `references/manipulation.md` for detailed guidance on:
- Subsetting (by indices, names, boolean masks, metadata conditions)
- Transposition
- Copying (full copies vs views)
- Renaming (observations, variables, categories)
- Type conversions (strings to categoricals, sparse/dense)
- Adding/removing data components
- Reordering
- Quality control filtering

Common commands:
```python
# Subset by metadata
filtered = adata[adata.obs['quality_score'] > 0.8]
hv_genes = adata[:, adata.var['highly_variable']]

# Transpose
adata_T = adata.T

# Copy vs view
view = adata[0:100, :]  # View (lightweight reference)
copy = adata[0:100, :].copy()  # Independent copy

# Convert strings to categoricals
adata.strings_to_categoricals()
```

### 5. Best Practices

Follow recommended patterns for memory efficiency, performance, and reproducibility.

**See**: `references/best_practices.md` for guidelines on:
- Memory management (sparse matrices, categoricals, backed mode)
- Views vs copies
- Data storage optimization
- Performance optimization
- Working with raw data
- Metadata management
- Reproducibility
- Error handling
- Integration with other tools
- Common pitfalls and solutions

Key recommendations:
```python
# Use sparse matrices for sparse data
from scipy.sparse import csr_matrix
adata.X = csr_matrix(adata.X)

# Convert strings to categoricals
adata.strings_to_categoricals()

# Use backed mode for large files
adata = ad.read_h5ad('large.h5ad', backed='r')

# Store raw before filtering
adata.raw = adata.copy()
adata = adata[:, adata.var['highly_variable']]
```

## Integration with Scverse Ecosystem

AnnData serves as the foundational data structure for the scverse ecosystem:

### Scanpy (Single-cell analysis)
```python
import scanpy as sc

# Preprocessing
sc.pp.filter_cells(adata, min_genes=200)
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, n_neighbors=15)
sc.tl.umap(adata)
sc.tl.leiden(adata)

# Visualization
sc.pl.umap(adata, color=['cell_type', 'leiden'])
```

### Muon (Multimodal data)
```python
import muon as mu

# Combine RNA and protein data
mdata = mu.MuData({'rna': adata_rna, 'protein': adata_protein})
```

### PyTorch integration
```python
from anndata.experimental import AnnLoader

# Create DataLoader for deep learning
dataloader = AnnLoader(adata, batch_size=128, shuffle=True)

for batch in dataloader:
    X = batch.X
    # Train model
```

## Common Workflows

### Single-cell RNA-seq analysis
```python
import anndata as ad
import scanpy as sc

# 1. Load data
adata = ad.read_10x_h5('filtered_feature_bc_matrix.h5')

# 2. Quality control
adata.obs['n_genes'] = (adata.X > 0).sum(axis=1)
adata.obs['n_counts'] = adata.X.sum(axis=1)
adata = adata[adata.obs['n_genes'] > 200]
adata = adata[adata.obs['n_counts'] < 50000]

# 3. Store raw
adata.raw = adata.copy()

# 4. Normalize and filter
sc.pp.normalize_total(adata, target_sum=1e4)
sc.pp.log1p(adata)
sc.pp.highly_variable_genes(adata, n_top_genes=2000)
adata = adata[:, adata.var['highly_variable']]

# 5. Save processed data
adata.write_h5ad('processed.h5ad')
```

### Batch integration
```python
# Load multiple batches
adata1 = ad.read_h5ad('batch1.h5ad')
adata2 = ad.read_h5ad('batch2.h5ad')
adata3 = ad.read_h5ad('batch3.h5ad')

# Concatenate with batch labels
adata = ad.concat(
    [adata1, adata2, adata3],
    label='batch',
    keys=['batch1', 'batch2', 'batch3'],
    join='inner'
)

# Apply batch correction
import scanpy as sc
sc.pp.combat(adata, key='batch')

# Continue analysis
sc.pp.pca(adata)
sc.pp.neighbors(adata)
sc.tl.umap(adata)
```

### Working with large datasets
```python
# Open in backed mode
adata = ad.read_h5ad('100GB_dataset.h5ad', backed='r')

# Filter based on metadata (no data loading)
high_quality = adata[adata.obs['quality_score'] > 0.8]

# Load filtered subset
adata_subset = high_quality.to_memory()

# Process subset
process(adata_subset)

# Or process in chunks
chunk_size = 1000
for i in range(0, adata.n_obs, chunk_size):
    chunk = adata[i:i+chunk_size, :].to_memory()
    process(chunk)
```

## Troubleshooting

### Out of memory errors
Use backed mode or convert to sparse matrices:
```python
# Backed mode
adata = ad.read_h5ad('file.h5ad', backed='r')

# Sparse matrices
from scipy.sparse import csr_matrix
adata.X = csr_matrix(adata.X)
```

### Slow file reading
Use compression and appropriate formats:
```python
# Optimize for storage
adata.strings_to_categoricals()
adata.write_h5ad('file.h5ad', compression='gzip')

# Use Zarr for cloud storage
adata.write_zarr('file.zarr', chunks=(1000, 1000))
```

### Index alignment issues
Always align external data on index:
```python
# Wrong
adata.obs['new_col'] = external_data['values']

# Correct
adata.obs['new_col'] = external_data.set_index('cell_id').loc[adata.obs_names, 'values']
```

## Additional Resources

- **Official documentation**: https://anndata.readthedocs.io/
- **Scanpy tutorials**: https://scanpy.readthedocs.io/
- **Scverse ecosystem**: https://scverse.org/
- **GitHub repository**: https://github.com/scverse/anndata

Related Skills

zapier-workflows

153
from Microck/ordinary-claude-skills

Manage and trigger pre-built Zapier workflows and MCP tool orchestration. Use when user mentions workflows, Zaps, automations, daily digest, research, search, lead tracking, expenses, or asks to "run" any process. Also handles Perplexity-based research and Google Sheets data tracking.

writing-skills

153
from Microck/ordinary-claude-skills

Create and manage Claude Code skills in HASH repository following Anthropic best practices. Use when creating new skills, modifying skill-rules.json, understanding trigger patterns, working with hooks, debugging skill activation, or implementing progressive disclosure. Covers skill structure, YAML frontmatter, trigger types (keywords, intent patterns), UserPromptSubmit hook, and the 500-line rule. Includes validation and debugging with SKILL_DEBUG. Examples include rust-error-stack, cargo-dependencies, and rust-documentation skills.

writing-plans

153
from Microck/ordinary-claude-skills

Use when design is complete and you need detailed implementation tasks for engineers with zero codebase context - creates comprehensive implementation plans with exact file paths, complete code examples, and verification steps assuming engineer has minimal domain knowledge

workflow-orchestration-patterns

153
from Microck/ordinary-claude-skills

Design durable workflows with Temporal for distributed systems. Covers workflow vs activity separation, saga patterns, state management, and determinism constraints. Use when building long-running processes, distributed transactions, or microservice orchestration.

workflow-management

153
from Microck/ordinary-claude-skills

Create, debug, or modify QStash workflows for data updates and social media posting in the API service. Use when adding new automated jobs, fixing workflow errors, or updating scheduling logic.

workflow-interactive-dev

153
from Microck/ordinary-claude-skills

用于开发 FastGPT 工作流中的交互响应。详细说明了交互节点的架构、开发流程和需要修改的文件。

woocommerce-dev-cycle

153
from Microck/ordinary-claude-skills

Run tests, linting, and quality checks for WooCommerce development. Use when running tests, fixing code style, or following the development workflow.

woocommerce-code-review

153
from Microck/ordinary-claude-skills

Review WooCommerce code changes for coding standards compliance. Use when reviewing code locally, performing automated PR reviews, or checking code quality.

Wheels Migration Generator

153
from Microck/ordinary-claude-skills

Generate database-agnostic Wheels migrations for creating tables, altering schemas, and managing database changes. Use when creating or modifying database schema, adding tables, columns, indexes, or foreign keys. Prevents database-specific SQL and ensures cross-database compatibility.

webapp-testing

153
from Microck/ordinary-claude-skills

Toolkit for interacting with and testing local web applications using Playwright. Supports verifying frontend functionality, debugging UI behavior, capturing browser screenshots, and viewing browser logs.

web3-testing

153
from Microck/ordinary-claude-skills

Test smart contracts comprehensively using Hardhat and Foundry with unit tests, integration tests, and mainnet forking. Use when testing Solidity contracts, setting up blockchain test suites, or validating DeFi protocols.

web-research

153
from Microck/ordinary-claude-skills

Use this skill for requests related to web research; it provides a structured approach to conducting comprehensive web research