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[[search-aggregations]]
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= Aggregations
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[partintro]
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--
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2014-08-13 09:43:47 -04:00
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The aggregations framework helps provide aggregated data based on a search query. It is based on simple building blocks
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called aggregations, that can be composed in order to build complex summaries of the data.
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An aggregation can be seen as a _unit-of-work_ that builds analytic information over a set of documents. The context of
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the execution defines what this document set is (e.g. a top-level aggregation executes within the context of the executed
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query/filters of the search request).
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There are many different types of aggregations, each with its own purpose and output. To better understand these types,
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it is often easier to break them into four main families:
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<<search-aggregations-bucket, _Bucketing_>>::
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A family of aggregations that build buckets, where each bucket is associated with a _key_ and a document
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criterion. When the aggregation is executed, all the buckets criteria are evaluated on every document in
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the context and when a criterion matches, the document is considered to "fall in" the relevant bucket.
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By the end of the aggregation process, we'll end up with a list of buckets - each one with a set of
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documents that "belong" to it.
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<<search-aggregations-metrics, _Metric_>>::
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Aggregations that keep track and compute metrics over a set of documents.
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<<search-aggregations-matrix, _Matrix_>>::
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A family of aggregations that operate on multiple fields and produce a matrix result based on the
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values extracted from the requested document fields. Unlike metric and bucket aggregations, this
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aggregation family does not yet support scripting.
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<<search-aggregations-pipeline, _Pipeline_>>::
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Aggregations that aggregate the output of other aggregations and their associated metrics
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The interesting part comes next. Since each bucket effectively defines a document set (all documents belonging to
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the bucket), one can potentially associate aggregations on the bucket level, and those will execute within the context
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of that bucket. This is where the real power of aggregations kicks in: *aggregations can be nested!*
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NOTE: Bucketing aggregations can have sub-aggregations (bucketing or metric). The sub-aggregations will be computed for
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the buckets which their parent aggregation generates. There is no hard limit on the level/depth of nested
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aggregations (one can nest an aggregation under a "parent" aggregation, which is itself a sub-aggregation of
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another higher-level aggregation).
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[float]
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== Structuring Aggregations
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The following snippet captures the basic structure of aggregations:
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[source,js]
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--------------------------------------------------
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"aggregations" : {
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"<aggregation_name>" : {
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"<aggregation_type>" : {
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<aggregation_body>
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}
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[,"meta" : { [<meta_data_body>] } ]?
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[,"aggregations" : { [<sub_aggregation>]+ } ]?
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}
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[,"<aggregation_name_2>" : { ... } ]*
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}
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--------------------------------------------------
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// NOTCONSOLE
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The `aggregations` object (the key `aggs` can also be used) in the JSON holds the aggregations to be computed. Each aggregation
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is associated with a logical name that the user defines (e.g. if the aggregation computes the average price, then it would
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make sense to name it `avg_price`). These logical names will also be used to uniquely identify the aggregations in the
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response. Each aggregation has a specific type (`<aggregation_type>` in the above snippet) and is typically the first
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key within the named aggregation body. Each type of aggregation defines its own body, depending on the nature of the
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aggregation (e.g. an `avg` aggregation on a specific field will define the field on which the average will be calculated).
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At the same level of the aggregation type definition, one can optionally define a set of additional aggregations,
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though this only makes sense if the aggregation you defined is of a bucketing nature. In this scenario, the
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sub-aggregations you define on the bucketing aggregation level will be computed for all the buckets built by the
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bucketing aggregation. For example, if you define a set of aggregations under the `range` aggregation, the
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sub-aggregations will be computed for the range buckets that are defined.
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[float]
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=== Values Source
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Some aggregations work on values extracted from the aggregated documents. Typically, the values will be extracted from
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a specific document field which is set using the `field` key for the aggregations. It is also possible to define a
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<<modules-scripting,`script`>> which will generate the values (per document).
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When both `field` and `script` settings are configured for the aggregation, the script will be treated as a
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`value script`. While normal scripts are evaluated on a document level (i.e. the script has access to all the data
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associated with the document), value scripts are evaluated on the *value* level. In this mode, the values are extracted
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from the configured `field` and the `script` is used to apply a "transformation" over these value/s.
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["NOTE",id="aggs-script-note"]
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===============================
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When working with scripts, the `lang` and `params` settings can also be defined. The former defines the scripting
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language which is used (assuming the proper language is available in Elasticsearch, either by default or as a plugin). The latter
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enables defining all the "dynamic" expressions in the script as parameters, which enables the script to keep itself static
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between calls (this will ensure the use of the cached compiled scripts in Elasticsearch).
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===============================
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Elasticsearch uses the type of the field in the mapping in order to figure out
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how to run the aggregation and format the response. However there are two cases
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in which Elasticsearch cannot figure out this information: unmapped fields (for
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instance in the case of a search request across multiple indices, and only some
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of them have a mapping for the field) and pure scripts. For those cases, it is
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possible to give Elasticsearch a hint using the `value_type` option, which
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accepts the following values: `string`, `long` (works for all integer types),
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`double` (works for all decimal types like `float` or `scaled_float`), `date`,
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`ip` and `boolean`.
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--
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include::aggregations/metrics.asciidoc[]
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include::aggregations/bucket.asciidoc[]
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include::aggregations/pipeline.asciidoc[]
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include::aggregations/matrix.asciidoc[]
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include::aggregations/misc.asciidoc[]
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