opensearch-docs-cn/_data-prepper/pipelines/configuration/processors/aggregate.md

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aggregate

The aggregate processor groups events based on the values of identification_keys. Then, the processor performs an action on each group, helping reduce unnecessary log volume and creating aggregated logs over time. You can use existing actions or create your own custom aggregations using Java code.

Configuration

The following table describes the options you can use to configure the aggregate processor.

Option Required Type Description
identification_keys Yes List An unordered list by which to group events. Events with the same values as these keys are put into the same group. If an event does not contain one of the identification_keys, then the value of that key is considered to be equal to null. At least one identification_key is required (for example, ["sourceIp", "destinationIp", "port"]).
action Yes AggregateAction The action to be performed on each group. One of the available aggregate actions must be provided, or you can create custom aggregate actions. remove_duplicates and put_all are the available actions. For more information, see Creating New Aggregate Actions.
group_duration No String The amount of time that a group should exist before it is concluded automatically. Supports ISO_8601 notation strings ("PT20.345S", "PT15M", etc.) as well as simple notation for seconds ("60s") and milliseconds ("1500ms"). Default value is 180s.

Available aggregate actions

Use the following aggregate actions to determine how the aggregate processor processes events in each group.

remove_duplicates

The remove_duplicates action processes the first event for a group immediately and drops any events that duplicate the first event from the source. For example, when using identification_keys: ["sourceIp", "destination_ip"]:

  1. The remove_duplicates action processes { "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200 }, the first event in the source.
  2. Data Prepper drops the { "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 1000 } event because the sourceIp and destinationIp match the first event in the source.
  3. The remove_duplicates action processes the next event, { "sourceIp": "127.0.0.2", "destinationIp": "192.168.0.1", "bytes": 1000 }. Because the sourceIp is different from the first event of the group, Data Prepper creates a new group based on the event.

put_all

The put_all action combines events belonging to the same group by overwriting existing keys and adding new keys, similarly to the Java Map.putAll. The action drops all events that make up the combined event. For example, when using identification_keys: ["sourceIp", "destination_ip"], the put_all action processes the following three events:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 1000 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "http_verb": "GET" }

Then the action combines the events into one. The pipeline then uses the following combined event:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200, "bytes": 1000, "http_verb": "GET" }

count

The count event counts events that belong to the same group and generates a new event with values of the identification_keys and the count, which indicates the number of new events. You can customize the processor with the following configuration options:

  • count_key: Key used for storing the count. Default name is aggr._count.
  • start_time_key: Key used for storing the start time. Default name is aggr._start_time.
  • output_format: Format of the aggregated event.
    • otel_metrics: Default output format. Outputs in OTel metrics SUM type with count as value.
    • raw - Generates a JSON object with the count_key field as a count value and the start_time_key field with aggregation start time as value.

For an example, when using identification_keys: ["sourceIp", "destination_ip"], the count action counts and processes the following events:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 503 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 400 }

The processor creates the following event:

{"isMonotonic":true,"unit":"1","aggregationTemporality":"AGGREGATION_TEMPORALITY_DELTA","kind":"SUM","name":"count","description":"Number of events","startTime":"2022-12-02T19:29:51.245358486Z","time":"2022-12-02T19:30:15.247799684Z","value":3.0,"sourceIp":"127.0.0.1","destinationIp":"192.168.0.1"}

histogram

The histogram action aggregates events belonging to the same group and generates a new event with values of the identification_keys and histogram of the aggregated events based on a configured key. The histogram contains the number of events, sum, buckets, bucket counts, and optionally min and max of the values corresponding to the key. The action drops all events that make up the combined event.

You can customize the processor with the following configuration options:

  • key: Name of the field in the events the histogram generates.
  • generated_key_prefix: key_prefix used by all the fields created in the aggregated event. Having a prefix ensures that the names of the histogram event do not conflict with the field names in the event.
  • units: The units for the values in the key.
  • record_minmax: A Boolean value indicating whether the histogram should include the min and max of the values in the aggregation.
  • buckets: A list of buckets (values of type double) indicating the buckets in the histogram.
  • output_format: Format of the aggregated event.
    • otel_metrics: Default output format. Outputs in OTel metrics SUM type with count as value.
    • raw: Generates a JSON object with count_key field with count as value and start_time_key field with aggregation start time as value.

For example, when using identification_keys: ["sourceIp", "destination_ip", "request"], key: latency, and buckets: [0.0, 0.25, 0.5], the histogram action processes the following events:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "request" : "/index.html", "latency": 0.2 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "request" : "/index.html", "latency": 0.55}
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "request" : "/index.html", "latency": 0.25 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "request" : "/index.html", "latency": 0.15 }

Then the processor creates the following event:

{"max":0.55,"kind":"HISTOGRAM","buckets":[{"min":-3.4028234663852886E38,"max":0.0,"count":0},{"min":0.0,"max":0.25,"count":2},{"min":0.25,"max":0.50,"count":1},{"min":0.50,"max":3.4028234663852886E38,"count":1}],"count":4,"bucketCountsList":[0,2,1,1],"description":"Histogram of latency in the events","sum":1.15,"unit":"seconds","aggregationTemporality":"AGGREGATION_TEMPORALITY_DELTA","min":0.15,"bucketCounts":4,"name":"histogram","startTime":"2022-12-14T06:43:40.848762215Z","explicitBoundsCount":3,"time":"2022-12-14T06:44:04.852564623Z","explicitBounds":[0.0,0.25,0.5],"request":"/index.html","sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "key": "latency"}

rate_limiter

The rate_limiter action controls the number of events aggregated per second. By default, rate_limiter blocks the aggregate processor from running if it receives more events than the configured number allowed. You can overwrite the number events that triggers the rate_limited by using the when_exceeds configuration option.

You can customize the processor with the following configuration options:

  • events_per_second: The number of events allowed per second.
  • when_exceeds: Indicates what action the rate_limiter takes when the number of events received is greater than the number of events allowed per second. Default value is block, which blocks the processor from running after the maximum number of events allowed per second is reached until the next second. Alternatively, the drop option drops the excess events received in that second.

For example, if events_per_second is set to 1 and when_exceeds is set to drop, the action tries to process the following events when received during the one second time interval:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 1000 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "http_verb": "GET" }

The following event is processed, but all other events are ignored because the rate_limiter blocks them:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "status": 200 }

If when_exceeds is set to drop, all three events are processed.

percent_sampler

The percent_sampler action controls the number of events aggregated based on a percentage of events. The action drops any events not included in the percentage.

You can set the percentage of events using the percent configuration, which indicates the percentage of events processed during a one second interval (0%--100%).

For example, if percent is set to 50, the action tries to process the following events in the one-second interval:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 2500 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 500 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 1000 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 3100 }

The pipeline processes 50% of the events, drops the other events, and does not generate a new event:

{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 500 }
{ "sourceIp": "127.0.0.1", "destinationIp": "192.168.0.1", "bytes": 3100 }

Metrics

The following table describes common Abstract processor metrics.

Metric name Type Description
recordsIn Counter Metric representing the ingress of records to a pipeline component.
recordsOut Counter Metric representing the egress of records from a pipeline component.
timeElapsed Timer Metric representing the time elapsed during execution of a pipeline component.

The aggregate processor includes the following custom metrics.

Counter

  • actionHandleEventsOut: The number of events that have been returned from the handleEvent call to the configured action.
  • actionHandleEventsDropped: The number of events that have not been returned from the handleEvent call to the configured action.
  • actionHandleEventsProcessingErrors: The number of calls made to handleEvent for the configured action that resulted in an error.
  • actionConcludeGroupEventsOut: The number of events that have been returned from the concludeGroup call to the configured action.
  • actionConcludeGroupEventsDropped: The number of events that have not been returned from the condludeGroup call to the configured action.
  • actionConcludeGroupEventsProcessingErrors: The number of calls made to concludeGroup for the configured action that resulted in an error.

Gauge

  • currentAggregateGroups: The current number of groups. This gauge decreases when a group concludes and increases when an event initiates the creation of a new group.