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I have a Cloudwatch Alarm with the following characteristics:

description: exchange_failure >= 3 for 1 datapoints within 5 minutes

period: 300

statistic: sum

treat missing data: missing

The exchange_failure metric is sparse, meaning that some periods will have no data and others will.

During periods of high alarm activity followed by low alarm activity, the alarm will rapidly transition between the OK and ALARM states, more than I would expect it to from looking at the graph. Specifically, between 00:45 and 00:00 there are 6 state transitions, when I would expect there to be 0.

enter image description here

I looked at the state change history and notice that the alarm is changing the evaluation range from one minute to the next, which is causing the rapid transitions.

# evaluation range - 15 minutes
# 2019-05-12 00:58:00 alarm -> ok
  "newState": {
    "stateValue": "OK",
    "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [1.0 (12/05/19 00:43:00)] was not greater than or equal to the threshold (3.0) (minimum 1 datapoint for ALARM -> OK transition).",
    "stateReasonData": {
      "version": "1.0",
      "queryDate": "2019-05-12T00:58:10.050+0000",
      "startDate": "2019-05-12T00:43:00.000+0000",
      "statistic": "Sum",
      "period": 300,
      "recentDatapoints": [
        1
      ],
      "threshold": 3
    }
  }

# 2019-05-12 00:54:00 ok-> alarm
# evaluation range - 15 minutes
{
  "newState": {
    "stateValue": "ALARM",
    "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [6.0 (12/05/19 00:39:00)] was greater than or equal to the threshold (3.0) (minimum 1 datapoint for OK -> ALARM transition).",
    "stateReasonData": {
      "version": "1.0",
      "queryDate": "2019-05-12T00:54:10.027+0000",
      "startDate": "2019-05-12T00:39:00.000+0000",
      "statistic": "Sum",
      "period": 300,
      "recentDatapoints": [
        6
      ],
      "threshold": 3
    }
  }
}

# 2019-05-12 00:53:00 alarm -> ok
# evaluation range - 6 minutes
{
  "newState": {
    "stateValue": "OK",
    "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [1.0 (12/05/19 00:43:00)] was not greater than or equal to the threshold (3.0) (minimum 1 datapoint for ALARM -> OK transition).",
    "stateReasonData": {
      "version": "1.0",
      "queryDate": "2019-05-12T00:53:10.026+0000",
      "startDate": "2019-05-12T00:43:00.000+0000",
      "statistic": "Sum",
      "period": 300,
      "recentDatapoints": [
        1
      ],
      "threshold": 3
    }
  }
}

# 2019-05-12 00:48:00 ok -> alarm
# evaluation range - 10 minutes
{
  "newState": {
    "stateValue": "ALARM",
    "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [6.0 (12/05/19 00:39:00)] was greater than or equal to the threshold (3.0) (minimum 1 datapoint for OK -> ALARM transition).",
    "stateReasonData": {
      "version": "1.0",
      "queryDate": "2019-05-12T00:49:10.026+0000",
      "startDate": "2019-05-12T00:39:00.000+0000",
      "statistic": "Sum",
      "period": 300,
      "recentDatapoints": [
        6
      ],
      "threshold": 3
    }
  }
}

# 2019-05-12 00:48:00 alarm -> ok
# evaluation range - 5 minutes
{
    "newState": {
        "stateValue": "OK",
        "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [1.0 (12/05/19 00:43:00)] was not greater than or equal to the threshold (3.0) (minimum 1 datapoint for ALARM -> OK transition).",
        "stateReasonData": {
            "version": "1.0",
            "queryDate": "2019-05-12T00:48:10.027+0000",
            "startDate": "2019-05-12T00:43:00.000+0000",
            "statistic": "Sum",
            "period": 300,
            "recentDatapoints": [
                1
            ],
            "threshold": 3
        }
    }
}

# 2019-05-12 00:43:00 ok -> alarm
# evaluation range - 5 minutes
{
  "newState": {
    "stateValue": "ALARM",
    "stateReason": "Threshold Crossed: 1 out of the last 1 datapoints [5.0 (12/05/19 00:38:00)] was greater than or equal to the threshold (3.0) (minimum 1 datapoint for OK -> ALARM transition).",
    "stateReasonData": {
      "version": "1.0",
      "queryDate": "2019-05-12T00:43:10.042+0000",
      "startDate": "2019-05-12T00:38:00.000+0000",
      "statistic": "Sum",
      "period": 300,
      "recentDatapoints": [
        5
      ],
      "threshold": 3
    }
  }
}

In https://docs.aws.amazon.com/AmazonCloudWatch/latest/monitoring/AlarmThatSendsEmail.html, the documentation points out a few things: "If some data points in the evaluation range are missing, but the number of existing data points retrieved is equal to or more than the alarm's Evaluation Periods, CloudWatch evaluates the alarm state based on the most recent existing data points that were successfully retrieved. In this case, the value you set for how to treat missing data is not needed and is ignored."

"A particular case of this behavior is that CloudWatch alarms may repeatedly re-evaluate the last set of data points for a period of time after the metric has stopped flowing. This re-evaluation may cause the alarm to change state and re-execute actions, if it had changed state immediately prior to the metric stream stopping. To mitigate this behavior, use shorter periods."

Based on the documentation, it makes sense that the re-evaluation is happening. What I don't understand is why the evaluation range is changing so dramatically, and how I can prevent that. Is there an option? I'd rather not use shorter time periods because I want to capture an instance in which there are a few minutes in a row with 1 exchange_failure in each minute. Using 1 minute would miss that.

One option is to expand the period from 5 minutes to 15 minutes. I would expect state changes to be less frequent in that case.

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