Update an Abnormal Profile

put

/api/metric/AbnormalProfiles/{id}

Updates the abnormal profile that matches the specified ID. Abnormal profiles are used by abnormal thresholds and the Metric Abnormal Threshold Engine.

Request

Path Parameters
Supported Media Types
Request Body - application/json ()
Root Schema : schema
Type: object
Show Source
  • Name of abnormal profile
    Example: Default Abnormal Profile
  • The degree to which the confidence bands smooth a weighted average (more weight being given to recent observations, less to older observations). Values are from >0 to 1. The closer to 1 the Alpha value becomes, the closer the predicted value will be to the weighted average of the last n observations.
    Example: 0.999497
  • The degree to which the smoothing function considers the slope (amount of increase or decrease) of the weighted average of 2 adjacent data points. Values are from >0 to 1. The closer to 1 the Beta value gets, the more the Algorithm will consider the slope of the previous (n-1) data point to the current data point (n) when predicting the next data point (n+1).
    Example: 0.00224
  • Scaling factor, used to influence the width of the confidence bands generated by the Algorithm. Values are between 2 and 3.
    Example: 3
  • Epsilon scaling. Values are >0 to 1.
    Example: 0.492391
  • Used with Window Length by the Abnormal Thresholding Engine to determine whether to generate a threshold violation event. If Violation Threshold data points fall outside the confidence band within a Window Length number of points, then the data points are considered "abnormal" and an event will be generated.
    Example: 3
  • The degree to which the smoothing function considers seasonal data when forecasting a data point. Values are >0 to 1. The closer to 1 Gamma gets, the more the Algorithm will weight seasonal patterns when forecasting expected values.
    Example: 0.487092
  • Used with Violation Threshold by the Abnormal Thresholding Engine to determine whether to generate a threshold violation event. If Violation Threshold data points fall outside the confidence band within a Window Length number of points, then the data points are considered "abnormal" and an event will be generated. Values are between 0 and 28.
    Example: 5
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Response

Supported Media Types

200 Response

Successful operation
Body ()
Root Schema : schema
Match All
Show Source
Nested Schema : SuccessfulUpdateOperation
Type: object
Show Source
Nested Schema : type
Type: object
Show Source
Nested Schema : data
Type: array
Show Source
Nested Schema : metricAbnormalProfilesRead
Type: object
Show Source
  • Abnormal Profile ID
    Example: 1
  • Name of abnormal profile
    Example: Default Abnormal Profile
  • The degree to which the confidence bands smooth a weighted average (more weight being given to recent observations, less to older observations). Values are from >0 to 1. The closer to 1 the Alpha value becomes, the closer the predicted value will be to the weighted average of the last n observations.
    Example: 0.999497
  • The degree to which the smoothing function considers the slope (amount of increase or decrease) of the weighted average of 2 adjacent data points. Values are from >0 to 1. The closer to 1 the Beta value gets, the more the Algorithm will consider the slope of the previous (n-1) data point to the current data point (n) when predicting the next data point (n+1).
    Example: 0.00224
  • Scaling factor, used to influence the width of the confidence bands generated by the Algorithm. Values are between 2 and 3.
    Example: 3
  • Epsilon scaling. Values are >0 to 1.
    Example: 0.492391
  • Used with Window Length by the Abnormal Thresholding Engine to determine whether to generate a threshold violation event. If Violation Threshold data points fall outside the confidence band within a Window Length number of points, then the data points are considered "abnormal" and an event will be generated.
    Example: 3
  • The degree to which the smoothing function considers seasonal data when forecasting a data point. Values are >0 to 1. The closer to 1 Gamma gets, the more the Algorithm will weight seasonal patterns when forecasting expected values.
    Example: 0.487092
  • Used with Violation Threshold by the Abnormal Thresholding Engine to determine whether to generate a threshold violation event. If Violation Threshold data points fall outside the confidence band within a Window Length number of points, then the data points are considered "abnormal" and an event will be generated. Values are between 0 and 28.
    Example: 5

Default Response

Failed operation
Body ()
Root Schema : schema
Type: object
Show Source
Nested Schema : errors
Type: array
The list of errors reported. Validation errors will be keyed by record field.
Show Source
Nested Schema : items
Type: object
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