Pipeline aggregations work on the outputs produced from other aggregations rather than from document sets, adding information to the output tree. There are many different types of pipeline aggregation, each computing different information from other aggregations, but these types can be broken down into two families:
Pipeline aggregations can reference the aggregations they need to perform their computation by using the buckets_path
parameter to indicate the paths to the required metrics. The syntax for defining these paths can be found in the
buckets_path
Syntax section below.
Pipeline aggregations cannot have sub-aggregations but depending on the type it can reference another pipeline in the buckets_path
allowing pipeline aggregations to be chained. For example, you can chain together two derivatives to calculate the second derivative
(i.e. a derivative of a derivative).
Because pipeline aggregations only add to the output, when chaining pipeline aggregations the output of each pipeline aggregation will be included in the final output.
buckets_path
SyntaxMost pipeline aggregations require another aggregation as their input. The input aggregation is defined via the buckets_path
parameter, which follows a specific format:
AGG_SEPARATOR = '>' ; METRIC_SEPARATOR = '.' ; AGG_NAME = <the name of the aggregation> ; METRIC = <the name of the metric (in case of multi-value metrics aggregation)> ; PATH = <AGG_NAME> [ <AGG_SEPARATOR>, <AGG_NAME> ]* [ <METRIC_SEPARATOR>, <METRIC> ] ;
For example, the path "my_bucket>my_stats.avg"
will path to the avg
value in the "my_stats"
metric, which is
contained in the "my_bucket"
bucket aggregation.
Paths are relative from the position of the pipeline aggregation; they are not absolute paths, and the path cannot go back "up" the
aggregation tree. For example, this moving average is embedded inside a date_histogram and refers to a "sibling"
metric "the_sum"
:
POST /_search { "aggs": { "my_date_histo":{ "date_histogram":{ "field":"timestamp", "interval":"day" }, "aggs":{ "the_sum":{ "sum":{ "field": "lemmings" } }, "the_movavg":{ "moving_avg":{ "buckets_path": "the_sum" } } } } } }
buckets_path
is also used for Sibling pipeline aggregations, where the aggregation is "next" to a series of buckets
instead of embedded "inside" them. For example, the max_bucket
aggregation uses the buckets_path
to specify
a metric embedded inside a sibling aggregation:
POST /_search { "aggs" : { "sales_per_month" : { "date_histogram" : { "field" : "date", "interval" : "month" }, "aggs": { "sales": { "sum": { "field": "price" } } } }, "max_monthly_sales": { "max_bucket": { "buckets_path": "sales_per_month>sales" } } } }
|
Instead of pathing to a metric, buckets_path
can use a special "_count"
path. This instructs
the pipeline aggregation to use the document count as its input. For example, a moving average can be calculated on the document count of each bucket, instead of a specific metric:
POST /_search { "aggs": { "my_date_histo": { "date_histogram": { "field":"timestamp", "interval":"day" }, "aggs": { "the_movavg": { "moving_avg": { "buckets_path": "_count" } } } } } }
By using |
The buckets_path
can also use "_bucket_count"
and path to a multi-bucket aggregation to use the number of buckets
returned by that aggregation in the pipeline aggregation instead of a metric. for example a bucket_selector
can be
used here to filter out buckets which contain no buckets for an inner terms aggregation:
POST /sales/_search { "size": 0, "aggs": { "histo": { "date_histogram": { "field": "date", "interval": "day" }, "aggs": { "categories": { "terms": { "field": "category" } }, "min_bucket_selector": { "bucket_selector": { "buckets_path": { "count": "categories._bucket_count" }, "script": { "source": "params.count != 0" } } } } } } }
By using |
An alternate syntax is supported to cope with aggregations or metrics which
have dots in the name, such as the 99.9
th
percentile. This metric
may be referred to as:
"buckets_path": "my_percentile[99.9]"
Data in the real world is often noisy and sometimes contains gaps — places where data simply doesn’t exist. This can occur for a variety of reasons, the most common being:
Gap policies are a mechanism to inform the pipeline aggregation about the desired behavior when "gappy" or missing
data is encountered. All pipeline aggregations accept the gap_policy
parameter. There are currently two gap policies
to choose from:
0
) and pipeline aggregation computation will
proceed as normal.