Description
Azure Monitor supports dynamic thresholds that use machine learning to learn seasonal patterns and trends from historical telemetry. This helps teams detect significant deviations (spikes, drops, unexpected shifts) without constantly tuning static thresholds. Dynamic thresholds are useful for noisy metrics and environments where normal behavior changes over time.
Details
- Pricing model: paid
- License: cloud_service
- API: Available · Docs
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