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- # below are some examples of using the `anomaly-bit` option to define alerts based on anomaly
- # rates as opposed to raw metric values. You can read more about the anomaly-bit and Netdata's
- # native anomaly detection here:
- # https://learn.netdata.cloud/docs/configure/machine-learning#anomaly-bit---100--anomalous-0--normal
- # examples below are commented, you would need to uncomment and adjust as desired to enable them.
- # alert per dimension example
- # if anomaly rate is between 5-20% then warning (pick your own threshold that works best via tial and error).
- # if anomaly rate is above 20% then critical (pick your own threshold that works best via tial and error).
- # template: ml_5min_cpu_dims
- # on: system.cpu
- # os: linux
- # hosts: *
- # lookup: average -5m anomaly-bit foreach *
- # calc: $this
- # units: %
- # every: 30s
- # warn: $this > (($status >= $WARNING) ? (5) : (20))
- # crit: $this > (($status == $CRITICAL) ? (20) : (100))
- # info: rolling 5min anomaly rate for each system.cpu dimension
- # alert per chart example
- # if anomaly rate is between 5-20% then warning (pick your own threshold that works best via tial and error).
- # if anomaly rate is above 20% then critical (pick your own threshold that works best via tial and error).
- # template: ml_5min_cpu_chart
- # on: system.cpu
- # os: linux
- # hosts: *
- # lookup: average -5m anomaly-bit of *
- # calc: $this
- # units: %
- # every: 30s
- # warn: $this > (($status >= $WARNING) ? (5) : (20))
- # crit: $this > (($status == $CRITICAL) ? (20) : (100))
- # info: rolling 5min anomaly rate for system.cpu chart
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