elasticsearch/docs/reference/ml/anomaly-detection/ml-configuring-aggregations.asciidoc

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[role="xpack"]
[[ml-configuring-aggregation]]
= Aggregating data for faster performance
By default, {dfeeds} fetch data from {es} using search and scroll requests.
It can be significantly more efficient, however, to aggregate data in {es}
and to configure your {anomaly-jobs} to analyze aggregated data.
One of the benefits of aggregating data this way is that {es} automatically
distributes these calculations across your cluster. You can then feed this
aggregated data into the {ml-features} instead of raw results, which
reduces the volume of data that must be considered while detecting anomalies.
TIP: If you use a terms aggregation and the cardinality of a term is high but
still significantly less than your total number of documents, use
{ref}/search-aggregations-bucket-composite-aggregation.html[composite aggregations]
experimental:[Support for composite aggregations inside datafeeds is currently experimental].
[discrete]
[[aggs-limits-dfeeds]]
== Requirements and limitations
There are some limitations to using aggregations in {dfeeds}.
Your aggregation must include a `date_histogram` aggregation or a top level `composite` aggregation,
which in turn must contain a `max` aggregation on the time field.
This requirement ensures that the aggregated data is a time series and the timestamp
of each bucket is the time of the last record in the bucket.
IMPORTANT: The name of the aggregation and the name of the field that it
operates on need to match, otherwise the aggregation doesn't work. For example,
if you use a `max` aggregation on a time field called `responsetime`, the name
of the aggregation must be also `responsetime`.
You must consider the interval of the `date_histogram` or `composite`
aggregation carefully. The bucket span of your {anomaly-job} must be divisible
by the value of the `calendar_interval` or `fixed_interval` in your aggregation
(with no remainder). If you specify a `frequency` for your {dfeed},
it must also be divisible by this interval. {anomaly-jobs-cap} cannot use
`date_histogram` or `composite` aggregations with an interval measured in months
because the length of the month is not fixed; they can use weeks or smaller units.
TIP: As a rule of thumb, if your detectors use <<ml-metric-functions,metric>> or
<<ml-sum-functions,sum>> analytical functions, set the `date_histogram` or `composite`
aggregation interval to a tenth of the bucket span. This suggestion creates
finer, more granular time buckets, which are ideal for this type of analysis. If
your detectors use <<ml-count-functions,count>> or <<ml-rare-functions,rare>>
functions, set the interval to the same value as the bucket span.
If your <<aggs-dfeeds,{dfeed} uses aggregations with nested `terms` aggs>> and
model plot is not enabled for the {anomaly-job}, neither the **Single Metric
Viewer** nor the **Anomaly Explorer** can plot and display an anomaly
chart for the job. In these cases, the charts are not visible and an explanatory
message is shown.
Your {dfeed} can contain multiple aggregations, but only the ones with names
that match values in the job configuration are fed to the job.
[discrete]
[[aggs-using-date-histogram]]
=== Including aggregations in {anomaly-jobs}
When you create or update an {anomaly-job}, you can include the names of
aggregations, for example:
[source,console]
----------------------------------
PUT _ml/anomaly_detectors/farequote
{
"analysis_config": {
"bucket_span": "60m",
"detectors": [{
"function": "mean",
"field_name": "responsetime", <1>
"by_field_name": "airline" <1>
}],
"summary_count_field_name": "doc_count"
},
"data_description": {
"time_field":"time" <1>
}
}
----------------------------------
// TEST[skip:setup:farequote_data]
<1> The `airline`, `responsetime`, and `time` fields are aggregations. Only the
aggregated fields defined in the `analysis_config` object are analyzed by the
{anomaly-job}.
NOTE: When the `summary_count_field_name` property is set to a non-null value,
the job expects to receive aggregated input. The property must be set to the
name of the field that contains the count of raw data points that have been
aggregated. It applies to all detectors in the job.
The aggregations are defined in the {dfeed} as follows:
[source,console]
----------------------------------
PUT _ml/datafeeds/datafeed-farequote
{
"job_id":"farequote",
"indices": ["farequote"],
"aggregations": {
"buckets": {
"date_histogram": {
"field": "time",
"fixed_interval": "360s",
"time_zone": "UTC"
},
"aggregations": {
"time": { <1>
"max": {"field": "time"}
},
"airline": { <2>
"terms": {
"field": "airline",
"size": 100
},
"aggregations": {
"responsetime": { <3>
"avg": {
"field": "responsetime"
}
}
}
}
}
}
}
}
----------------------------------
// TEST[skip:setup:farequote_job]
<1> The aggregations have names that match the fields that they operate on. The
`max` aggregation is named `time` and its field also needs to be `time`.
<2> The `term` aggregation is named `airline` and its field is also named
`airline`.
<3> The `avg` aggregation is named `responsetime` and its field is also named
`responsetime`.
TIP: If you are using a `term` aggregation to gather influencer or partition
field information, consider using a `composite` aggregation. It performs
better than a `date_histogram` with a nested `term` aggregation and also includes
all the values of the field instead of the top values per bucket.
[discrete]
[[aggs-using-composite]]
=== Using composite aggregations in {anomaly-jobs}
experimental::[]
For `composite` aggregation support, there must be exactly one `date_histogram` value
source. That value source must not be sorted in descending order. Additional
`composite` aggregation value sources are allowed, such as `terms`.
NOTE: A {dfeed} that uses composite aggregations may not be as performant as datafeeds that use scrolling or
date histogram aggregations. Composite aggregations are optimized
for queries that are either `match_all` or `range` filters. Other types of
queries may cause the `composite` aggregation to be ineffecient.
Here is an example that uses a `composite` aggregation instead of a
`date_histogram`.
Assuming the same job configuration as above.
[source,console]
----------------------------------
PUT _ml/anomaly_detectors/farequote-composite
{
"analysis_config": {
"bucket_span": "60m",
"detectors": [{
"function": "mean",
"field_name": "responsetime",
"by_field_name": "airline"
}],
"summary_count_field_name": "doc_count"
},
"data_description": {
"time_field":"time"
}
}
----------------------------------
// TEST[skip:setup:farequote_data]
This is an example of a datafeed that uses a `composite` aggregation to bucket
the metrics based on time and terms:
[source,console]
----------------------------------
PUT _ml/datafeeds/datafeed-farequote-composite
{
"job_id": "farequote-composite",
"indices": [
"farequote"
],
"aggregations": {
"buckets": {
"composite": {
"size": 1000, <1>
"sources": [
{
"time_bucket": { <2>
"date_histogram": {
"field": "time",
"fixed_interval": "360s",
"time_zone": "UTC"
}
}
},
{
"airline": { <3>
"terms": {
"field": "airline"
}
}
}
]
},
"aggregations": {
"time": { <4>
"max": {
"field": "time"
}
},
"responsetime": { <5>
"avg": {
"field": "responsetime"
}
}
}
}
}
}
----------------------------------
// TEST[skip:setup:farequote_job]
<1> Provide the `size` to the composite agg to control how many resources
are used when aggregating the data. A larger `size` means a faster datafeed but
more cluster resources are used when searching.
<2> The required `date_histogram` composite aggregation source. Make sure it
is named differently than your desired time field.
<3> Instead of using a regular `term` aggregation, adding a composite
aggregation `term` source with the name `airline` works. Note its name
is the same as the field.
<4> The required `max` aggregation whose name is the time field in the
job analysis config.
<5> The `avg` aggregation is named `responsetime` and its field is also named
`responsetime`.
[discrete]
[[aggs-dfeeds]]
== Nested aggregations in {dfeeds}
{dfeeds-cap} support complex nested aggregations. This example uses the
`derivative` pipeline aggregation to find the first order derivative of the
counter `system.network.out.bytes` for each value of the field `beat.name`.
NOTE: `derivative` or other pipeline aggregations may not work within `composite`
aggregations. See
{ref}/search-aggregations-bucket-composite-aggregation.html#search-aggregations-bucket-composite-aggregation-pipeline-aggregations[composite aggregations and pipeline aggregations].
[source,js]
----------------------------------
"aggregations": {
"beat.name": {
"terms": {
"field": "beat.name"
},
"aggregations": {
"buckets": {
"date_histogram": {
"field": "@timestamp",
"fixed_interval": "5m"
},
"aggregations": {
"@timestamp": {
"max": {
"field": "@timestamp"
}
},
"bytes_out_average": {
"avg": {
"field": "system.network.out.bytes"
}
},
"bytes_out_derivative": {
"derivative": {
"buckets_path": "bytes_out_average"
}
}
}
}
}
}
}
----------------------------------
// NOTCONSOLE
[discrete]
[[aggs-single-dfeeds]]
== Single bucket aggregations in {dfeeds}
{dfeeds-cap} not only supports multi-bucket aggregations, but also single bucket
aggregations. The following shows two `filter` aggregations, each gathering the
number of unique entries for the `error` field.
[source,js]
----------------------------------
{
"job_id":"servers-unique-errors",
"indices": ["logs-*"],
"aggregations": {
"buckets": {
"date_histogram": {
"field": "time",
"interval": "360s",
"time_zone": "UTC"
},
"aggregations": {
"time": {
"max": {"field": "time"}
}
"server1": {
"filter": {"term": {"source": "server-name-1"}},
"aggregations": {
"server1_error_count": {
"value_count": {
"field": "error"
}
}
}
},
"server2": {
"filter": {"term": {"source": "server-name-2"}},
"aggregations": {
"server2_error_count": {
"value_count": {
"field": "error"
}
}
}
}
}
}
}
}
----------------------------------
// NOTCONSOLE
[discrete]
[[aggs-define-dfeeds]]
== Defining aggregations in {dfeeds}
When you define an aggregation in a {dfeed}, it must have one of the following forms:
When using a `date_histogram` aggregation to bucket by time:
[source,js]
----------------------------------
"aggregations": {
["bucketing_aggregation": {
"bucket_agg": {
...
},
"aggregations": {]
"data_histogram_aggregation": {
"date_histogram": {
"field": "time",
},
"aggregations": {
"timestamp": {
"max": {
"field": "time"
}
},
[,"<first_term>": {
"terms":{...
}
[,"aggregations" : {
[<sub_aggregation>]+
} ]
}]
}
}
}
}
}
----------------------------------
// NOTCONSOLE
When using a `composite` aggregation:
[source,js]
----------------------------------
"aggregations": {
"composite_agg": {
"sources": [
{
"date_histogram_agg": {
"field": "time",
...settings...
}
},
...other valid sources...
],
...composite agg settings...,
"aggregations": {
"timestamp": {
"max": {
"field": "time"
}
},
...other aggregations...
[
[,"aggregations" : {
[<sub_aggregation>]+
} ]
}]
}
}
}
----------------------------------
// NOTCONSOLE
The top level aggregation must be exclusively one of the following:
* A {ref}/search-aggregations-bucket.html[bucket aggregation] containing a single
sub-aggregation that is a `date_histogram`
* A top level aggregation that is a `date_histogram`
* A top level aggregation is a `composite` aggregation
There must be exactly one `date_histogram`, `composite` aggregation. For more information, see
{ref}/search-aggregations-bucket-datehistogram-aggregation.html[Date histogram aggregation] and
{ref}/search-aggregations-bucket-composite-aggregation.html[Composite aggregation].
NOTE: The `time_zone` parameter in the date histogram aggregation must be set to
`UTC`, which is the default value.
Each histogram or composite bucket has a key, which is the bucket start time.
This key cannot be used for aggregations in {dfeeds}, however, because
they need to know the time of the latest record within a bucket.
Otherwise, when you restart a {dfeed}, it continues from the start time of the
histogram or composite bucket and possibly fetches the same data twice.
The max aggregation for the time field is therefore necessary to provide
the time of the latest record within a bucket.
You can optionally specify a terms aggregation, which creates buckets for
different values of a field.
IMPORTANT: If you use a terms aggregation, by default it returns buckets for
the top ten terms. Thus if the cardinality of the term is greater than 10, not
all terms are analyzed. In this case, consider using `composite` aggregations
experimental:[Support for composite aggregations inside datafeeds is currently experimental].
You can change this behavior by setting the `size` parameter. To
determine the cardinality of your data, you can run searches such as:
[source,js]
--------------------------------------------------
GET .../_search
{
"aggs": {
"service_cardinality": {
"cardinality": {
"field": "service"
}
}
}
}
--------------------------------------------------
// NOTCONSOLE
By default, {es} limits the maximum number of terms returned to 10000. For high
cardinality fields, the query might not run. It might return errors related to
circuit breaking exceptions that indicate that the data is too large. In such
cases, use `composite` aggregations in your {dfeed}. For more information, see
{ref}/search-aggregations-bucket-terms-aggregation.html[Terms aggregation].
You can also optionally specify multiple sub-aggregations. The sub-aggregations
are aggregated for the buckets that were created by their parent aggregation.
For more information, see {ref}/search-aggregations.html[Aggregations].