Field data types
Field data types
Each field has a field data type, or field type. This type indicates the kind of data the field contains, such as strings or boolean values, and its intended use. For example, you can index strings to both text
and keyword
fields. However, text
field values are analyzed for full-text search while keyword
strings are left as-is for filtering and sorting.
Field types are grouped by family. Types in the same family have exactly the same search behavior but may have different space usage or performance characteristics.
Currently, there are two type families, keyword
and text
. Other type families have only a single field type. For example, the boolean
type family consists of one field type: boolean
.
Common types
Binary value encoded as a Base64 string.
true
and false
values.
The keyword family, including keyword
, constant_keyword
, and wildcard
.
Numeric types, such as long
and double
, used to express amounts.
Dates
Date types, including date and date_nanos.
Defines an alias for an existing field.
Objects and relational types
A JSON object.
An entire JSON object as a single field value.
A JSON object that preserves the relationship between its subfields.
Defines a parent/child relationship for documents in the same index.
Provides aliases for sub-fields at the same level.
Structured data types
Range types, such as long_range
, double_range
, date_range
, and ip_range
.
IPv4 and IPv6 addresses.
Software versions. Supports Semantic Versioning precedence rules.
Compute and stores hashes of values.
Aggregate data types
Pre-aggregated metric values.
Pre-aggregated numerical values in the form of a histogram.
Text search types
The text family, including text
and match_only_text
. Analyzed, unstructured text.
Text containing special markup. Used for identifying named entities.
Used for auto-complete suggestions.
text
-like type for as-you-type completion.
Used for performing semantic search.
A count of tokens in a text.
Document ranking types
Records dense vectors of float values.
Records sparse vectors of float values.
Records a numeric feature to boost hits at query time.
Records numeric features to boost hits at query time.
Spatial data types
Latitude and longitude points.
Complex shapes, such as polygons.
Arbitrary cartesian points.
Arbitrary cartesian geometries.
Other types
Indexes queries written in Query DSL.
Arrays
In Elasticsearch, arrays do not require a dedicated field data type. Any field can contain zero or more values by default, however, all values in the array must be of the same field type. See Arrays.
Multi-fields
It is often useful to index the same field in different ways for different purposes. For instance, a string
field could be mapped as a text
field for full-text search, and as a keyword
field for sorting or aggregations. Alternatively, you could index a text field with the standard analyzer, the english analyzer, and the french analyzer.
This is the purpose of multi-fields. Most field types support multi-fields via the fields parameter.