- Elasticsearch Guide: other versions:
- Getting Started
- Set up Elasticsearch
- Installing Elasticsearch
- Configuring Elasticsearch
- Important Elasticsearch configuration
- Important System Configuration
- Bootstrap Checks
- Heap size check
- File descriptor check
- Memory lock check
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- Max file size check
- Maximum map count check
- Client JVM check
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- OnError and OnOutOfMemoryError checks
- Early-access check
- G1GC check
- All permission check
- Stopping Elasticsearch
- Upgrade Elasticsearch
- Set up X-Pack
- Breaking changes
- Breaking changes in 6.0
- Aggregations changes
- Analysis changes
- Cat API changes
- Clients changes
- Cluster changes
- Document API changes
- Geo changes
- Indices changes
- Ingest changes
- Java API changes
- Mapping changes
- Packaging changes
- Percolator changes
- Plugins changes
- Reindex changes
- REST changes
- Scripting changes
- Search and Query DSL changes
- Settings changes
- Stats and info changes
- Breaking changes in 6.1
- Breaking changes in 6.2
- Breaking changes in 6.0
- X-Pack Breaking Changes
- API Conventions
- Document APIs
- Search APIs
- Aggregations
- Metrics Aggregations
- Avg Aggregation
- Cardinality Aggregation
- Extended Stats Aggregation
- Geo Bounds Aggregation
- Geo Centroid Aggregation
- Max Aggregation
- Min Aggregation
- Percentiles Aggregation
- Percentile Ranks Aggregation
- Scripted Metric Aggregation
- Stats Aggregation
- Sum Aggregation
- Top Hits Aggregation
- Value Count Aggregation
- Bucket Aggregations
- Adjacency Matrix Aggregation
- Children Aggregation
- Composite Aggregation
- Date Histogram Aggregation
- Date Range Aggregation
- Diversified Sampler Aggregation
- Filter Aggregation
- Filters Aggregation
- Geo Distance Aggregation
- GeoHash grid Aggregation
- Global Aggregation
- Histogram Aggregation
- IP Range Aggregation
- Missing Aggregation
- Nested Aggregation
- Range Aggregation
- Reverse nested Aggregation
- Sampler Aggregation
- Significant Terms Aggregation
- Significant Text Aggregation
- Terms Aggregation
- Pipeline Aggregations
- Avg Bucket Aggregation
- Derivative Aggregation
- Max Bucket Aggregation
- Min Bucket Aggregation
- Sum Bucket Aggregation
- Stats Bucket Aggregation
- Extended Stats Bucket Aggregation
- Percentiles Bucket Aggregation
- Moving Average Aggregation
- Cumulative Sum Aggregation
- Bucket Script Aggregation
- Bucket Selector Aggregation
- Bucket Sort Aggregation
- Serial Differencing Aggregation
- Matrix Aggregations
- Caching heavy aggregations
- Returning only aggregation results
- Aggregation Metadata
- Returning the type of the aggregation
- Metrics Aggregations
- Indices APIs
- Create Index
- Delete Index
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- Indices Exists
- Open / Close Index API
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- Put Mapping
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- Types Exists
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- Clear Cache
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- cat APIs
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- Mapping
- Analysis
- Anatomy of an analyzer
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- Analyzers
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- Simple Pattern Tokenizer
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- Path Hierarchy Tokenizer
- Path Hierarchy Tokenizer Examples
- Token Filters
- Standard Token Filter
- ASCII Folding Token Filter
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- Length Token Filter
- Lowercase Token Filter
- Uppercase Token Filter
- NGram Token Filter
- Edge NGram Token Filter
- Porter Stem Token Filter
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- Stop Token Filter
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- Word Delimiter Graph Token Filter
- Stemmer Token Filter
- Stemmer Override Token Filter
- Keyword Marker Token Filter
- Keyword Repeat Token Filter
- KStem Token Filter
- Snowball Token Filter
- Phonetic Token Filter
- Synonym Token Filter
- Synonym Graph Token Filter
- Compound Word Token Filters
- Reverse Token Filter
- Elision Token Filter
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- Unique Token Filter
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- Pattern Replace Token Filter
- Trim Token Filter
- Limit Token Count Token Filter
- Hunspell Token Filter
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- Normalization Token Filter
- CJK Width Token Filter
- CJK Bigram Token Filter
- Delimited Payload Token Filter
- Keep Words Token Filter
- Keep Types Token Filter
- Classic Token Filter
- Apostrophe Token Filter
- Decimal Digit Token Filter
- Fingerprint Token Filter
- Minhash Token Filter
- Character Filters
- Modules
- Index Modules
- Ingest Node
- Pipeline Definition
- Ingest APIs
- Accessing Data in Pipelines
- Handling Failures in Pipelines
- Processors
- Append Processor
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- Monitoring Elasticsearch
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- Add Events to Calendar
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- Get Calendars
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- Security APIs
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- Definitions
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- How To
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- Glossary of terms
- Elasticsearch Release Notes
- Elasticsearch version 6.2.4
- Elasticsearch version 6.2.3
- Elasticsearch version 6.2.2
- Elasticsearch version 6.2.1
- Elasticsearch version 6.2.0
- Elasticsearch version 6.1.4
- Elasticsearch version 6.1.3
- Elasticsearch version 6.1.2
- Elasticsearch version 6.1.1
- Elasticsearch version 6.1.0
- Elasticsearch version 6.0.1
- Elasticsearch version 6.0.0
- Elasticsearch version 6.0.0-rc2
- Elasticsearch version 6.0.0-rc1
- Elasticsearch version 6.0.0-beta2
- Elasticsearch version 6.0.0-beta1
- Elasticsearch version 6.0.0-alpha2
- Elasticsearch version 6.0.0-alpha1
- Elasticsearch version 6.0.0-alpha1 (Changes previously released in 5.x)
- X-Pack Release Notes
- Elasticsearch X-Pack version 6.2.4
- Elasticsearch X-Pack version 6.2.3
- Elasticsearch X-Pack version 6.2.2
- Elasticsearch X-Pack version 6.2.1
- Elasticsearch X-Pack version 6.2.0
- Elasticsearch X-Pack version 6.1.4
- Elasticsearch X-Pack version 6.1.3
- Elasticsearch X-Pack version 6.1.2
- Elasticsearch X-Pack version 6.1.1
- Elasticsearch X-Pack version 6.1.0
- Elasticsearch X-Pack version 6.0.1
- Elasticsearch X-Pack version 6.0.0
- Elasticsearch X-Pack version 6.0.0-rc2
- Elasticsearch X-Pack version 6.0.0-rc1
- Elasticsearch X-Pack version 6.0.0-beta2
- Elasticsearch X-Pack version 6.0.0-beta1
- Elasticsearch X-Pack version 6.0.0-alpha2
- Elasticsearch X-Pack version 6.0.0-alpha1
WARNING: Version 6.2 of Elasticsearch has passed its EOL date.
This documentation is no longer being maintained and may be removed. If you are running this version, we strongly advise you to upgrade. For the latest information, see the current release documentation.
Pipeline Aggregations
editPipeline Aggregations
editPipeline 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:
- Parent
- A family of pipeline aggregations that is provided with the output of its parent aggregation and is able to compute new buckets or new aggregations to add to existing buckets.
- Sibling
- Pipeline aggregations that are provided with the output of a sibling aggregation and are able to compute a new aggregation which will be at the same level as the sibling aggregation.
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
Syntax
editMost 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" } } } }
|
Special Paths
editInstead 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 |
Dealing with dots in agg names
editAn 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]"
Dealing with gaps in the data
editData 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:
- Documents falling into a bucket do not contain a required field
- There are no documents matching the query for one or more buckets
- The metric being calculated is unable to generate a value, likely because another dependent bucket is missing a value. Some pipeline aggregations have specific requirements that must be met (e.g. a derivative cannot calculate a metric for the first value because there is no previous value, HoltWinters moving average need "warmup" data to begin calculating, etc)
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:
- skip
- This option treats missing data as if the bucket does not exist. It will skip the bucket and continue calculating using the next available value.
- insert_zeros
-
This option will replace missing values with a zero (
0
) and pipeline aggregation computation will proceed as normal.
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