246 lines
7.5 KiB
Plaintext
246 lines
7.5 KiB
Plaintext
[[index-modules-fielddata]]
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== Field data
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The field data cache is used mainly when sorting on or faceting on a
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field. It loads all the field values to memory in order to provide fast
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document based access to those values. The field data cache can be
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expensive to build for a field, so its recommended to have enough memory
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to allocate it, and to keep it loaded.
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The amount of memory used for the field
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data cache can be controlled using `indices.fielddata.cache.size`. Note:
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reloading the field data which does not fit into your cache will be expensive
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and perform poorly.
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[cols="<,<",options="header",]
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|=======================================================================
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|Setting |Description
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|`indices.fielddata.cache.size` |The max size of the field data cache,
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eg `30%` of node heap space, or an absolute value, eg `12GB`. Defaults
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to unbounded.
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|`indices.fielddata.cache.expire` |A time based setting that expires
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field data after a certain time of inactivity. Defaults to `-1`. For
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example, can be set to `5m` for a 5 minute expiry.
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|=======================================================================
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=== Field data formats
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The field data format controls how field data should be stored.
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Depending on the field type, there might be several field data types
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available. In particular, string and numeric types support the `doc_values`
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format which allows for computing the field data data-structures at indexing
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time and storing them on disk. Although it will make the index larger and may
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be slightly slower, this implementation will be more near-realtime-friendly
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and will require much less memory from the JVM than other implementations.
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Here is an example of how to configure the `tag` field to use the `fst` field
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data format.
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[source,js]
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--------------------------------------------------
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{
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tag: {
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type: "string",
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fielddata: {
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format: "fst"
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}
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}
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}
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--------------------------------------------------
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It is possible to change the field data format (and the field data settings
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in general) on a live index by using the update mapping API. When doing so,
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field data which had already been loaded for existing segments will remain
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alive while new segments will use the new field data configuration. Thanks to
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the background merging process, all segments will eventually use the new
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field data format.
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[float]
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==== String field data types
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`paged_bytes` (default)::
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Stores unique terms sequentially in a large buffer and maps documents to
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the indices of the terms they contain in this large buffer.
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`fst`::
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Stores terms in a FST. Slower to build than `paged_bytes` but can help lower
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memory usage if many terms share common prefixes and/or suffixes.
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`doc_values`::
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Computes and stores field data data-structures on disk at indexing time.
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Lowers memory usage but only works on non-analyzed strings (`index`: `no` or
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`not_analyzed`) and doesn't support filtering.
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[float]
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==== Numeric field data types
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`array` (default)::
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Stores field values in memory using arrays.
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`doc_values`::
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Computes and stores field data data-structures on disk at indexing time.
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Doesn't support filtering.
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[float]
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==== Geo point field data types
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`array` (default)::
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Stores latitudes and longitudes in arrays.
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`doc_values`::
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Computes and stores field data data-structures on disk at indexing time.
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[float]
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=== Fielddata loading
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By default, field data is loaded lazily, ie. the first time that a query that
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requires them is executed. However, this can make the first requests that
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follow a merge operation quite slow since fielddata loading is a heavy
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operation.
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It is possible to force field data to be loaded and cached eagerly through the
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`loading` setting of fielddata:
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[source,js]
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--------------------------------------------------
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{
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category: {
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type: "string",
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fielddata: {
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loading: "eager"
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}
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}
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}
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--------------------------------------------------
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[float]
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==== Disabling field data loading
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Field data can take a lot of RAM so it makes sense to disable field data
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loading on the fields that don't need field data, for example those that are
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used for full-text search only. In order to disable field data loading, just
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change the field data format to `disabled`. When disabled, all requests that
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will try to load field data, e.g. when they include aggregations and/or sorting,
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will return an error.
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[source,js]
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--------------------------------------------------
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{
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text: {
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type: "string",
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fielddata: {
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format: "disabled"
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}
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}
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}
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--------------------------------------------------
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The `disabled` format is supported by all field types.
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[float]
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[[field-data-filtering]]
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=== Filtering fielddata
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It is possible to control which field values are loaded into memory,
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which is particularly useful for string fields. When specifying the
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<<mapping-core-types,mapping>> for a field, you
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can also specify a fielddata filter.
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Fielddata filters can be changed using the
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<<indices-put-mapping,PUT mapping>>
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API. After changing the filters, use the
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<<indices-clearcache,Clear Cache>> API
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to reload the fielddata using the new filters.
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[float]
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==== Filtering by frequency:
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The frequency filter allows you to only load terms whose frequency falls
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between a `min` and `max` value, which can be expressed an absolute
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number or as a percentage (eg `0.01` is `1%`). Frequency is calculated
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*per segment*. Percentages are based on the number of docs which have a
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value for the field, as opposed to all docs in the segment.
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Small segments can be excluded completely by specifying the minimum
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number of docs that the segment should contain with `min_segment_size`:
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[source,js]
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--------------------------------------------------
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{
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tag: {
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type: "string",
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fielddata: {
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filter: {
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frequency: {
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min: 0.001,
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max: 0.1,
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min_segment_size: 500
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}
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}
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}
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}
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}
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--------------------------------------------------
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[float]
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==== Filtering by regex
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Terms can also be filtered by regular expression - only values which
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match the regular expression are loaded. Note: the regular expression is
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applied to each term in the field, not to the whole field value. For
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instance, to only load hashtags from a tweet, we can use a regular
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expression which matches terms beginning with `#`:
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[source,js]
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--------------------------------------------------
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{
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tweet: {
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type: "string",
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analyzer: "whitespace"
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fielddata: {
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filter: {
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regex: {
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pattern: "^#.*"
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}
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}
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}
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}
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}
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--------------------------------------------------
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[float]
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==== Combining filters
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The `frequency` and `regex` filters can be combined:
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[source,js]
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--------------------------------------------------
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{
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tweet: {
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type: "string",
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analyzer: "whitespace"
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fielddata: {
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filter: {
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regex: {
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pattern: "^#.*",
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},
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frequency: {
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min: 0.001,
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max: 0.1,
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min_segment_size: 500
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}
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}
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}
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}
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}
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--------------------------------------------------
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[float]
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[[field-data-monitoring]]
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=== Monitoring field data
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You can monitor memory usage for field data using
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<<cluster-nodes-stats,Nodes Stats API>>
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