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$match (aggregation)
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Definition
$match
Filters the documents to pass only the documents that match the specified condition(s) to the next pipeline stage.
The
$match
stage has the following prototype form:{ $match: { <query> } } $match
takes a document that specifies the query conditions. The query syntax is identical to the read operation query syntax; i.e.$match
does not accept raw aggregation expressions. Instead, use a$expr
query expression to include aggregation expression in$match
.
Behavior
Pipeline Optimization
Place the
$match
as early in the aggregation pipeline as possible. Because$match
limits the total number of documents in the aggregation pipeline, earlier$match
operations minimize the amount of processing down the pipe.If you place a
$match
at the very beginning of a pipeline, the query can take advantage of indexes like any otherdb.collection.find()
ordb.collection.findOne()
.
Restrictions
The
$match
query syntax is identical to the read operation query syntax; i.e.$match
does not accept raw aggregation expressions. To include aggregation expression in$match
, use a$expr
query expression:{ $match: { $expr: { <aggregation expression> } } } You cannot use
$where
in$match
queries as part of the aggregation pipeline.You cannot use
$near
or$nearSphere
in$match
queries as part of the aggregation pipeline. As an alternative, you can either:Use
$geoWithin
query operator with$center
or$centerSphere
in the$match
stage.
To use
$text
in the$match
stage, the$match
stage has to be the first stage of the pipeline.Views do not support text search.
Examples
The examples use a collection named articles
with the following
documents:
{ "_id" : ObjectId("512bc95fe835e68f199c8686"), "author" : "dave", "score" : 80, "views" : 100 } { "_id" : ObjectId("512bc962e835e68f199c8687"), "author" : "dave", "score" : 85, "views" : 521 } { "_id" : ObjectId("55f5a192d4bede9ac365b257"), "author" : "ahn", "score" : 60, "views" : 1000 } { "_id" : ObjectId("55f5a192d4bede9ac365b258"), "author" : "li", "score" : 55, "views" : 5000 } { "_id" : ObjectId("55f5a1d3d4bede9ac365b259"), "author" : "annT", "score" : 60, "views" : 50 } { "_id" : ObjectId("55f5a1d3d4bede9ac365b25a"), "author" : "li", "score" : 94, "views" : 999 } { "_id" : ObjectId("55f5a1d3d4bede9ac365b25b"), "author" : "ty", "score" : 95, "views" : 1000 }
Equality Match
The following operation uses $match
to perform a
simple equality match:
db.articles.aggregate( [ { $match : { author : "dave" } } ] );
The $match
selects the documents where the author
field equals dave
, and the aggregation returns the following:
{ "_id" : ObjectId("512bc95fe835e68f199c8686"), "author" : "dave", "score" : 80, "views" : 100 } { "_id" : ObjectId("512bc962e835e68f199c8687"), "author" : "dave", "score" : 85, "views" : 521 }
Perform a Count
The following example selects documents to process using the
$match
pipeline operator and then pipes the results
to the $group
pipeline operator to compute a count of
the documents:
db.articles.aggregate( [ { $match: { $or: [ { score: { $gt: 70, $lt: 90 } }, { views: { $gte: 1000 } } ] } }, { $group: { _id: null, count: { $sum: 1 } } } ] );
In the aggregation pipeline, $match
selects the documents
where either the score
is greater than 70
and less than 90
or the views
is greater than or equal to 1000
. These documents
are then piped to the $group
to perform a count. The
aggregation returns the following:
{ "_id" : null, "count" : 5 }
Additional Information
Refer to the following pages for more information and use cases on aggregation.
Filter Data on Atlas Using Atlas Search
For your $search
queries against data on your Atlas cluster, you can use the Atlas Search
compound operator filter
option to match or filter
documents. Running $match
after $search
is less
performant than running $search
with the
compound operator filter
option. To learn more about the
filter
option, see compound.