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Using Cake for ADTK

ADTK (Anomaly Detection ToolKit) is a Python library designed for rule-based and machine learning–based anomaly detection in time series data.
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How it works

Detect anomalies in time series with ADTK on Cake

Cake integrates ADTK into governed workflows to monitor and detect outliers using both rule-based and ML-based methods.

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Lightweight anomaly detection

Use statistical or rule-based detectors with minimal setup.

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Integrate with data pipelines

Cake connects ADTK to your ingestion, storage, and alerting layers.

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Audit and explain results

Log detections, thresholds, and resolutions for compliant time series analysis.

Frequently asked questions about Cake and ADTK

What is ADTK?
ADTK (Anomaly Detection Toolkit) is a Python library for detecting anomalies in time series data using rule-based and ML-based methods.
How does Cake integrate ADTK?
Cake runs ADTK workflows in governed environments and connects them to real-time data and alerting systems.
What types of anomalies can ADTK detect?
It detects point, collective, and contextual anomalies using customizable rules and models.
Is ADTK suitable for production use?
Yes—Cake enables real-time execution, logging, and policy control for ADTK models.
Can I customize detection logic with ADTK?
Absolutely—ADTK allows users to define custom rules and apply them to any time series pipeline on Cake.
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