[[search-facets-histogram-facet]] === Histogram Facets include::deprecated.asciidoc[] NOTE: The equivalent aggregation would be the <> aggregation. The histogram facet works with numeric data by building a histogram across intervals of the field values. Each value is "rounded" into an interval (or placed in a bucket), and statistics are provided per interval/bucket (count and total). Here is a simple example: [source,js] -------------------------------------------------- { "query" : { "match_all" : {} }, "facets" : { "histo1" : { "histogram" : { "field" : "field_name", "interval" : 100 } } } } -------------------------------------------------- The above example will run a histogram facet on the `field_name` field, with an `interval` of `100` (so, for example, a value of `1055` will be placed within the `1000` bucket). The interval can also be provided as a time based interval (using the time format). This mainly make sense when working on date fields or field that represent absolute milliseconds, here is an example: [source,js] -------------------------------------------------- { "query" : { "match_all" : {} }, "facets" : { "histo1" : { "histogram" : { "field" : "field_name", "time_interval" : "1.5h" } } } } -------------------------------------------------- ==== Key and Value The histogram facet allows to use a different key and value. The key is used to place the hit/document within the appropriate bucket, and the value is used to compute statistical data (for example, total). Here is an example: [source,js] -------------------------------------------------- { "query" : { "match_all" : {} }, "facets" : { "histo1" : { "histogram" : { "key_field" : "key_field_name", "value_field" : "value_field_name", "interval" : 100 } } } } -------------------------------------------------- ==== Script Key and Value Sometimes, some munging of both the key and the value are needed. In the key case, before it is rounded into a bucket, and for the value, when the statistical data is computed per bucket <> can be used. Here is an example: [source,js] -------------------------------------------------- { "query" : { "match_all" : {} }, "facets" : { "histo1" : { "histogram" : { "key_script" : "doc['date'].date.minuteOfHour", "value_script" : "doc['num1'].value" } } } } -------------------------------------------------- In the above sample, we can use a date type field called `date` to get the minute of hour from it, and the total will be computed based on another field `num1`. Note, in this case, no `interval` was provided, so the bucket will be based directly on the `key_script` (no rounding). Parameters can also be provided to the different scripts (preferable if the script is the same, with different values for a specific parameter, like "factor"): [source,js] -------------------------------------------------- { "query" : { "match_all" : {} }, "facets" : { "histo1" : { "histogram" : { "key_script" : "doc['date'].date.minuteOfHour * factor1", "value_script" : "doc['num1'].value + factor2", "params" : { "factor1" : 2, "factor2" : 3 } } } } } -------------------------------------------------- ==== Memory Considerations In order to implement the histogram facet, the relevant field values are loaded into memory from the index. This means that per shard, there should be enough memory to contain them. Since by default, dynamic introduced types are `long` and `double`, one option to reduce the memory footprint is to explicitly set the types for the relevant fields to either `short`, `integer`, or `float` when possible.