Description
OpenSearch Anomaly Detection lets you run unsupervised ML-based anomaly detectors on time-series data stored in OpenSearch. It’s commonly used to monitor metrics, logs-derived signals, or business KPIs and trigger alerts when behavior deviates from the learned baseline. It’s a strong option if you already use OpenSearch and want anomaly detection without a separate SaaS platform.
Details
- Pricing model: free
- License: open_source
- API: Available · Docs
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