Anomaly Detector Client
cloud · azure.com
Watched for drift — classified from the API's own spec; not yet a gate-proven pack.
The Anomaly Detector API detects anomalies automatically in time series data. It supports two kinds of mode, one is for stateless using, another is for stateful using. In stateless mode, there are three functionalities. Entire Detect is for detecting the whole series with model trained by the time series, Last Detect is detecting last point with model trained by points before. ChangePoint Detect is for detecting trend changes in time series. In stateful mode, user can store time series, the stored time series will be used for detection anomalies. Under this mode, user can still use the above three functionalities by only giving a time range without preparing time series in client side. Besides the above three functionalities, stateful model also provide group based detection and labeling service. By leveraging labeling service user can provide labels for each detection result, these labels will be used for retuning or regenerating detection models. Inconsistency detection is a kind of group based detection, this detection will find inconsistency ones in a set of time series. By using anomaly detector service, business customers can discover incidents and establish a logic flow for root cause analysis.
Install
watched · not yet packagednpx verifyport add azure-com-cognitiveservices-anomalydetector --lang python npx verifyport add azure-com-cognitiveservices-anomalydetector --lang go npx verifyport add azure-com-cognitiveservices-anomalydetector --lang node Agent trust (law 4)
the agent verdict →Usable, but spec-monitored only — not behaviorally proven yet.
Behavioral replay
No live replays yet — this connector is spec-monitored. Behavioral proof arrives with credentialed, read-only replay.
Drift timeline
No drift recorded yet — the spec has held its shape.
Spec history
- 1d ago 3 tools CLEAN:3 residual 0%