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dask

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Distributed computing for larger-than-RAM pandas/NumPy workflows. Use when you need to scale existing pandas/NumPy code beyond memory or across clusters. Best f

About this skill

Dask

Overview

Dask is a Python library for parallel and distributed computing that enables three critical capabilities:

  • Larger-than-memory execution on single machines for data exceeding available RAM
  • Parallel processing for improved computational speed across multiple cores
  • Distributed computation supporting terabyte-scale datasets across multiple machines

Dask scales from laptops (processing ~100 GiB) to clusters (processing ~100 TiB) while maintaining familiar Python APIs.

Current upstream: dask 2026.3.0 (PyPI, March 2026). Docs: docs.dask.org. Since 2025.1.0, the expression-based DataFrame API with query planning is the only implementation — do not install dask-expr separately or set dataframe.query-planning: False.

Quick Start

Installation

uv pip install "dask>=2025.1"

For a typical pandas/NumPy workflow with the distributed scheduler and dashboard:

uv pip install "dask[complete]"

Remote object storage (S3, GCS, Azure):

uv pip install s3fs    # s3:// paths
uv pip install gcsfs   # gs:// paths

Requires Python 3.10+ (3.9 support dropped in 2024.12). DataFrame I/O requires PyArrow 16+ (as of dask 2026.1.2).

When to Use This Skill

This skill should be used when:

  • Process datasets that exceed available RAM
  • Scale pandas or NumPy operations to larger datasets
  • Parallelize computations for performance improvements
  • Process multiple files efficiently (CSVs, Parquet, JSON, text logs)
  • Build custom parallel workflows with task dependencies
  • Distribute workloads across multiple cores or machines

Core Capabilities

Dask provides five main components, each suited to different use cases:

1. DataFrames - Parallel Pandas Operations

Purpose: Scale pandas operations to larger datasets through parallel processing.

When to Use:

  • Tabular data exceeds available RAM
  • Need to process multiple CSV/Parquet files together
  • Pandas operations are slow and need parallelization
  • Scaling from pandas prototype to production

Reference Documentation: For comprehensive guidance on Dask DataFrames, refer to references/dataframes.md which includes:

  • Reading data (single files, multiple files, glob patterns)
  • Common operations (filtering, groupby, joins, aggregations)
  • Custom operations with map_partitions
  • Performance optimization tips
  • Common patterns (ETL, time series, multi-file processing)

Quick Example:

import dask.dataframe as dd

# Read multiple files as single DataFrame
ddf = dd.read_csv('data/2024-*.csv')

# Operations are lazy until compute()
filtered = ddf[ddf['value'] > 100]
result = filtered.groupby('category').mean().compute()

Key Points:

  • Operations are lazy (build task graph) until .compute() called
  • Use map_partitions for efficient custom operations
  • Convert to DataFrame early when working with structured data from other sources

2. Arrays - Parallel NumPy Operations

Purpose: Extend NumPy capabilities to datasets larger than memory using blocked algorithms.

When to Use:

  • Arrays exceed available RAM
  • NumPy operations need parallelization
  • Working with scientific datasets (HDF5, Zarr, NetCDF)
  • Need parallel linear algebra or array operations

Reference Documentation: For comprehensive guidance on Dask Arrays, refer to references/arrays.md which includes:

  • Creating arrays (from NumPy, random, from disk)
  • Chunking strategies and optimization
  • Common operations (arithmetic, reductions, linear algebra)
  • Custom operations with map_blocks
  • Integration with HDF5, Zarr, and XArray

Quick Example:

import dask.array as da

# Create large array with chunks
x = da.random.random((100000, 100000), chunks=(10000, 10000))

# Operations are lazy
y = x + 100
z = y.mean(axis=0)

# Compute result
result = z.compute()

Key Points:

  • Chunk size is critical (aim for ~100 MB per chunk)
  • Operations work on chunks in parallel
  • Rechunk data when needed for efficient operations
  • Use map_blocks for operations not available in Dask

3. Bags - Parallel Processing of Unstructured Data

Purpose: Process unstructured or semi-structured data (text, JSON, logs) with functional operations.

When to Use:

  • Processing text files, logs, or JSON records
  • Data cleaning and ETL before structured analysis
  • Working with Python objects that don't fit array/dataframe formats
  • Need memory-efficient streaming processing

Reference Documentation: For comprehensive guidance on Dask Bags, refer to references/bags.md which includes:

  • Reading text and JSON files
  • Functional operations (map, filter, fold, groupby)
  • Converting to DataFrames
  • Common patterns (log analysis, JSON processing, text processing)
  • Performance considerations

Quick Example:

import dask.bag as db
import json

# Read and parse JSON files
bag = db.read_text('logs/*.json').map(json.loads)

# Filter and transform
valid = bag.filter(lambda x: x['status'] == 'valid')
processed = valid.map(lambda x: {'id': x['id'], 'value': x['value']})

# Convert to DataFrame for analysis
ddf = processed.to_dataframe()

Key Points:

  • Use for initial data cleaning, then convert to DataFrame/Array
  • Use foldby instead of groupby for better performance
  • Operations are streaming and memory-efficient
  • Convert to structured formats (DataFrame) for complex operations

4. Futures - Task-Based Parallelization

Purpose: Build custom parallel workflows with fine-grained control over task execution and dependencies.

When to Use:

  • Building dynamic, evolving workflows
  • Need immediate task execution (not lazy)
  • Computations depend on runtime conditions
  • Implementing custom parallel algorithms
  • Need stateful computations

Reference Documentation: For comprehensive guidance on Dask Futures, refer to references/futures.md which includes:

  • Setting up distributed client
  • Submitting tasks and working with futures
  • Task dependencies and data movement
  • Advanced coordination (queues, locks, events, actors)
  • Common patterns (parameter sweeps, dynamic tasks, iterative algorithms)

Quick Example:

from dask.distributed import Client

client = Client()  # Create local cluster

# Submit tasks (executes immediately)
def process(x):
    return x ** 2

futures = client.map(process, range(100))

# Gather results
results = client.gather(futures)

client.close()

Key Points:

  • Requires distributed client (even for single machine)
  • Tasks execute immediately when submitted
  • Pre-scatter large data to avoid repeated transfers
  • ~1ms overhead per task (not suitable for millions of tiny tasks)
  • Use actors for stateful workflows

5. Schedulers - Execution Backends

Purpose: Control how and where Dask tasks execute (threads, processes, distributed).

When to Choose Scheduler:

  • Threads (default): NumPy/Pandas operations, GIL-releasing libraries, shared memory benefit
  • Processes: Pure Python code, text processing, GIL-bound operations
  • Synchronous: Debugging with pdb, profiling, understanding errors
  • Distributed: Need dashboard, multi-machine clusters, advanced features

Reference Documentation: For comprehensive guidance on Dask Schedulers, refer to references/schedulers.md which includes:

  • Detailed scheduler descriptions and characteristics
  • Configuration methods (global, context manager, per-compute)
  • Performance considerations and overhead
  • Common patterns and troubleshooting
  • Thread configuration for optimal performance

Quick Example:

import dask
import dask.dataframe as dd

# Use threads for DataFrame (default, good for numeric)
ddf = dd.read_csv('data.csv')
result1 = ddf.mean().compute()  # Uses threads

# Use processes for Python-heavy work
import dask.bag as db
bag = db.read_text('logs/*.txt')
result2 = bag.map(python_function).compute(scheduler='processes')

# Use synchron

Install dask in Claude Code & Claude Desktop

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Allowed tools

Tools this skill is permitted to call.

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Bundled files

references/arrays.mdreferences/bags.mdreferences/best-practices.mdreferences/dataframes.mdreferences/futures.mdreferences/schedulers.md

FAQ

What does the dask skill do?

Distributed computing for larger-than-RAM pandas/NumPy workflows. Use when you need to scale existing pandas/NumPy code beyond memory or across clusters. Best for parallel file processing, distributed ML, integration with existing pandas code. For out-of-core analytics on single machine use vaex; for in-memory speed use polars.

How do I install the dask skill?

Copy the skill folder into ~/.claude/skills (the Claude Code tab above does this in one command), or install it as a plugin.

Does the dask skill run scripts?

No, this skill is instructions only (SKILL.md) with no executable scripts.

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