Description
PyOD is a widely used open-source Python library that collects many anomaly detection algorithms behind a consistent API. It supports classical methods (e.g., kNN-based, density-based), ensemble approaches, and deep learning options, enabling practitioners to benchmark and deploy detectors more quickly. It’s useful for tabular data anomaly detection tasks in data science and machine learning pipelines.
Details
- Pricing model: free
- License: open_source
- API: Available · Docs
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