All Downloads are FREE. Search and download functionalities are using the official Maven repository.

com.amazonaws.services.cloudwatch.model.MetricCharacteristics Maven / Gradle / Ivy

Go to download

The AWS Java SDK for Amazon CloudWatch module holds the client classes that are used for communicating with Amazon CloudWatch Service

There is a newer version: 1.12.778
Show newest version
/*
 * Copyright 2019-2024 Amazon.com, Inc. or its affiliates. All Rights Reserved.
 * 
 * Licensed under the Apache License, Version 2.0 (the "License"). You may not use this file except in compliance with
 * the License. A copy of the License is located at
 * 
 * http://aws.amazon.com/apache2.0
 * 
 * or in the "license" file accompanying this file. This file is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR
 * CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions
 * and limitations under the License.
 */
package com.amazonaws.services.cloudwatch.model;

import java.io.Serializable;
import javax.annotation.Generated;

/**
 * 

* This object includes parameters that you can use to provide information to CloudWatch to help it build more accurate * anomaly detection models. *

* * @see AWS * API Documentation */ @Generated("com.amazonaws:aws-java-sdk-code-generator") public class MetricCharacteristics implements Serializable, Cloneable { /** *

* Set this parameter to true if values for this metric consistently include spikes that should not be * considered to be anomalies. With this set to true, CloudWatch will expect to see spikes that * occurred consistently during the model training period, and won't flag future similar spikes as anomalies. *

*/ private Boolean periodicSpikes; /** *

* Set this parameter to true if values for this metric consistently include spikes that should not be * considered to be anomalies. With this set to true, CloudWatch will expect to see spikes that * occurred consistently during the model training period, and won't flag future similar spikes as anomalies. *

* * @param periodicSpikes * Set this parameter to true if values for this metric consistently include spikes that should * not be considered to be anomalies. With this set to true, CloudWatch will expect to see * spikes that occurred consistently during the model training period, and won't flag future similar spikes * as anomalies. */ public void setPeriodicSpikes(Boolean periodicSpikes) { this.periodicSpikes = periodicSpikes; } /** *

* Set this parameter to true if values for this metric consistently include spikes that should not be * considered to be anomalies. With this set to true, CloudWatch will expect to see spikes that * occurred consistently during the model training period, and won't flag future similar spikes as anomalies. *

* * @return Set this parameter to true if values for this metric consistently include spikes that should * not be considered to be anomalies. With this set to true, CloudWatch will expect to see * spikes that occurred consistently during the model training period, and won't flag future similar spikes * as anomalies. */ public Boolean getPeriodicSpikes() { return this.periodicSpikes; } /** *

* Set this parameter to true if values for this metric consistently include spikes that should not be * considered to be anomalies. With this set to true, CloudWatch will expect to see spikes that * occurred consistently during the model training period, and won't flag future similar spikes as anomalies. *

* * @param periodicSpikes * Set this parameter to true if values for this metric consistently include spikes that should * not be considered to be anomalies. With this set to true, CloudWatch will expect to see * spikes that occurred consistently during the model training period, and won't flag future similar spikes * as anomalies. * @return Returns a reference to this object so that method calls can be chained together. */ public MetricCharacteristics withPeriodicSpikes(Boolean periodicSpikes) { setPeriodicSpikes(periodicSpikes); return this; } /** *

* Set this parameter to true if values for this metric consistently include spikes that should not be * considered to be anomalies. With this set to true, CloudWatch will expect to see spikes that * occurred consistently during the model training period, and won't flag future similar spikes as anomalies. *

* * @return Set this parameter to true if values for this metric consistently include spikes that should * not be considered to be anomalies. With this set to true, CloudWatch will expect to see * spikes that occurred consistently during the model training period, and won't flag future similar spikes * as anomalies. */ public Boolean isPeriodicSpikes() { return this.periodicSpikes; } /** * Returns a string representation of this object. This is useful for testing and debugging. Sensitive data will be * redacted from this string using a placeholder value. * * @return A string representation of this object. * * @see java.lang.Object#toString() */ @Override public String toString() { StringBuilder sb = new StringBuilder(); sb.append("{"); if (getPeriodicSpikes() != null) sb.append("PeriodicSpikes: ").append(getPeriodicSpikes()); sb.append("}"); return sb.toString(); } @Override public boolean equals(Object obj) { if (this == obj) return true; if (obj == null) return false; if (obj instanceof MetricCharacteristics == false) return false; MetricCharacteristics other = (MetricCharacteristics) obj; if (other.getPeriodicSpikes() == null ^ this.getPeriodicSpikes() == null) return false; if (other.getPeriodicSpikes() != null && other.getPeriodicSpikes().equals(this.getPeriodicSpikes()) == false) return false; return true; } @Override public int hashCode() { final int prime = 31; int hashCode = 1; hashCode = prime * hashCode + ((getPeriodicSpikes() == null) ? 0 : getPeriodicSpikes().hashCode()); return hashCode; } @Override public MetricCharacteristics clone() { try { return (MetricCharacteristics) super.clone(); } catch (CloneNotSupportedException e) { throw new IllegalStateException("Got a CloneNotSupportedException from Object.clone() " + "even though we're Cloneable!", e); } } }




© 2015 - 2024 Weber Informatics LLC | Privacy Policy