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WARNING: Version 0.90 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.
Nested Type
editNested Type
editNested objects/documents allow to map certain sections in the document indexed as nested allowing to query them as if they are separate docs joining with the parent owning doc.
One of the problems when indexing inner objects that occur several times in a doc is that "cross object" search match will occur, for example:
{ "obj1" : [ { "name" : "blue", "count" : 4 }, { "name" : "green", "count" : 6 } ] }
Searching for name set to blue and count higher than 5 will match the doc, because in the first element the name matches blue, and in the second element, count matches "higher than 5".
Nested mapping allows mapping certain inner objects (usually multi instance ones), for example:
{ "type1" : { "properties" : { "obj1" : { "type" : "nested" } } } }
The above will cause all obj1
to be indexed as a nested doc. The
mapping is similar in nature to setting type
to object
, except that
it’s nested
.
Note: changing an object type to nested type requires reindexing.
The nested
object fields can also be automatically added to the
immediate parent by setting include_in_parent
to true, and also
included in the root object by setting include_in_root
to true.
Nested docs will also automatically use the root doc _all
field.
Searching on nested docs can be done using either the nested query or nested filter.
Internal Implementation
editInternally, nested objects are indexed as additional documents, but, since they can be guaranteed to be indexed within the same "block", it allows for extremely fast joining with parent docs.
Those internal nested documents are automatically masked away when doing operations against the index (like searching with a match_all query), and they bubble out when using the nested query.
Because nested docs are always masked to the parent doc, the nested docs
can never be accessed outside the scope of the nested
query. For example
stored fields can be enabled on fields inside nested objects, but there is
no way of retrieving them, since stored fields are fetched outside of
the nested
query scope.
The _source
field is always associated with the parent document and
because of that field values via the source can be fetched for nested object.
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