Description
Elastic’s machine learning features include anomaly detection jobs that model time-series behavior and flag deviations. Teams use it to detect abnormal metric patterns, spot unusual log rates, and enrich investigations with contextual insights inside Kibana. It’s a strong fit when you already store observability or security data in Elasticsearch and want ML-based baselines and alerts on top of that data.
Details
- Pricing model: paid
- License: proprietary
- API: Available · Docs
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