vaex
关于
The vaex skill enables processing of massive tabular datasets (billions of rows) that exceed RAM through out-of-core DataFrames with lazy evaluation. It provides fast aggregations, big data visualizations, and machine learning pipelines for large CSV/HDF5/Arrow/Parquet files. Use this when you need to analyze datasets too large for memory or perform efficient statistics on massive files.
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Claude Code
推荐npx skills add K-Dense-AI/claude-scientific-skills -a claude-code/plugin add https://github.com/K-Dense-AI/claude-scientific-skillsgit clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/vaex在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Vaex
Overview
Vaex is a high-performance Python library designed for lazy, out-of-core DataFrames to process and visualize tabular datasets that are too large to fit into RAM. Vaex can process over a billion rows per second, enabling interactive data exploration and analysis on datasets with billions of rows.
Installation
Install the full meta-package (recommended):
uv pip install vaex
Minimal install (pick only what you need):
uv pip install vaex-core vaex-viz vaex-hdf5 vaex-ml
The vaex package is a meta-package that pulls in vaex-core, vaex-viz, vaex-hdf5, vaex-ml, and other sub-packages. Arrow support is built into vaex-core (the separate vaex-arrow package is deprecated). vaex-distributed is deprecated in favor of vaex-enterprise.
Version notes (vaex 4.19.0+): Python 3.12 and NumPy v2 require vaex >= 4.19.0. On Windows, you may need Python dev headers to build the annoy dependency.
When to Use This Skill
Use Vaex when:
- Processing tabular datasets larger than available RAM (gigabytes to terabytes)
- Performing fast statistical aggregations on massive datasets
- Creating visualizations and heatmaps of large datasets
- Building machine learning pipelines on big data
- Converting between data formats (CSV, HDF5, Arrow, Parquet)
- Needing lazy evaluation and virtual columns to avoid memory overhead
- Working with astronomical data, financial time series, or other large-scale scientific datasets
Vaex vs alternatives: Use polars when data fits in RAM and you need maximum in-memory speed. Use dask when you need distributed pandas/NumPy across a cluster. Use vaex for single-machine, out-of-core analytics on tabular data that exceeds RAM via memory-mapped HDF5/Arrow files.
Core Capabilities
Vaex provides six primary capability areas, each documented in detail in the references directory:
1. DataFrames and Data Loading
Load and create Vaex DataFrames from various sources including files (HDF5, CSV, Arrow, Parquet), pandas DataFrames, NumPy arrays, and dictionaries. Reference references/core_dataframes.md for:
- Opening large files efficiently
- Converting from pandas/NumPy/Arrow
- Working with example datasets
- Understanding DataFrame structure
2. Data Processing and Manipulation
Perform filtering, create virtual columns, use expressions, and aggregate data without loading everything into memory. Reference references/data_processing.md for:
- Filtering and selections
- Virtual columns and expressions
- Groupby operations and aggregations
- String operations and datetime handling
- Working with missing data
3. Performance and Optimization
Leverage Vaex's lazy evaluation, caching strategies, and memory-efficient operations. Reference references/performance.md for:
- Understanding lazy evaluation
- Using
delay=Truefor batching operations - Materializing columns when needed
- Caching strategies
- Asynchronous operations
4. Data Visualization
Create interactive visualizations of large datasets including heatmaps, histograms, and scatter plots. Reference references/visualization.md for:
- Creating 1D and 2D plots
- Heatmap visualizations
- Working with selections
- Customizing plots and subplots
5. Machine Learning Integration
Build ML pipelines with transformers, encoders, and integration with scikit-learn, XGBoost, and other frameworks. Reference references/machine_learning.md for:
- Feature scaling and encoding
- PCA and dimensionality reduction
- K-means clustering
- Integration with scikit-learn/XGBoost/CatBoost
- Model serialization and deployment
6. I/O Operations
Efficiently read and write data in various formats with optimal performance. Reference references/io_operations.md for:
- File format recommendations
- Export strategies
- Working with Apache Arrow
- CSV handling for large files
- Server and remote data access
Quick Start Pattern
For most Vaex tasks, follow this pattern:
import vaex
# 1. Open or create DataFrame
df = vaex.open('large_file.hdf5') # or .csv, .arrow, .parquet
# OR
df = vaex.from_pandas(pandas_df)
# 2. Explore the data
print(df) # Shows first/last rows and column info
df.describe() # Statistical summary
# 3. Create virtual columns (no memory overhead)
df['new_column'] = df.x ** 2 + df.y
# 4. Filter with selections
df_filtered = df[df.age > 25]
# 5. Compute statistics (fast, lazy evaluation)
mean_val = df.x.mean()
stats = df.groupby('category').agg({'value': 'sum'})
# 6. Visualize (df.viz is the recommended accessor since vaex 4.0)
df.viz.heatmap(df.x, df.y, limits='99.7%', show=True)
# Legacy: df.plot1d() and df.plot() still work on the DataFrame
# 7. Export if needed
df.export_hdf5('output.hdf5')
Working with References
The reference files contain detailed information about each capability area. Load references into context based on the specific task:
- Basic operations: Start with
references/core_dataframes.mdandreferences/data_processing.md - Performance issues: Check
references/performance.md - Visualization tasks: Use
references/visualization.md - ML pipelines: Reference
references/machine_learning.md - File I/O: Consult
references/io_operations.md
Best Practices
- Use HDF5 or Apache Arrow formats for optimal performance with large datasets
- Leverage virtual columns instead of materializing data to save memory
- Batch operations using
delay=Truewhen performing multiple calculations - Export to efficient formats rather than keeping data in CSV
- Use expressions for complex calculations without intermediate storage
- Profile with
df.describe()anddf.nbytesto understand data shape and memory usage
Common Patterns
Pattern: Converting Large CSV to HDF5
import vaex
# Open large CSV lazily (vaex 4.14+), or use from_csv to convert to HDF5
df = vaex.open('large_file.csv')
# df = vaex.from_csv('large_file.csv', convert='large_file.hdf5')
# Export to HDF5 for faster future access
df.export_hdf5('large_file.hdf5')
# Future loads are instant
df = vaex.open('large_file.hdf5')
Pattern: Efficient Aggregations
# Use delay=True to batch multiple operations
mean_x = df.x.mean(delay=True)
std_y = df.y.std(delay=True)
sum_z = df.z.sum(delay=True)
# Execute all at once
results = vaex.execute([mean_x, std_y, sum_z])
Pattern: Virtual Columns for Feature Engineering
# No memory overhead - computed on the fly
df['age_squared'] = df.age ** 2
df['full_name'] = df.first_name + ' ' + df.last_name
df['is_adult'] = df.age >= 18
Resources
This skill includes reference documentation in the references/ directory:
core_dataframes.md- DataFrame creation, loading, and basic structuredata_processing.md- Filtering, expressions, aggregations, and transformationsperformance.md- Optimization strategies and lazy evaluationvisualization.md- Plotting and interactive visualizationsmachine_learning.md- ML pipelines and model integrationio_operations.md- File formats and data import/export
GitHub 仓库
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