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Sparse Indexes

Sparse indexes only contain entries for documents that have the indexed field, even if the index field contains a null value. The index skips over any document that is missing the indexed field. The index is “sparse” because it does not include all documents of a collection. By contrast, non-sparse indexes contain all documents in a collection, storing null values for those documents that do not contain the indexed field.

Important

MongoDB provides the option to create partial indexes. Partial indexes offer a superset of the functionality of sparse indexes. Partial Indexes should be preferred over sparse indexes.

Create a Sparse Index

To create a sparse index, use the db.collection.createIndex() method with the sparse option set to true.

For example, the following operation in mongo creates a sparse index on the xmpp_id field of the addresses collection:

db.addresses.createIndex( { "xmpp_id": 1 }, { sparse: true } )

The index does not index documents that do not include the xmpp_id field.

Note

Do not confuse sparse indexes in MongoDB with block-level indexes in other databases. Think of them as dense indexes with a specific filter.

Behavior

Sparse Index and Incomplete Results

If a sparse index would result in an incomplete result set for queries and sort operations, MongoDB will not use that index unless a hint() explicitly specifies the index.

For example, the query { x: { $exists: false } } will not use a sparse index on the x field unless explicitly hinted. See Sparse Index On A Collection Cannot Return Complete Results for an example that details the behavior.

If you include a hint() that specifies a sparse index when you perform a count() of all documents in a collection (i.e. with an empty query predicate), the sparse index is used even if the sparse index results in an incorrect count.

db.collection.insert({ _id: 1, y: 1 } );
db.collection.createIndex( { x: 1 }, { sparse: true } );

db.collection.find().hint( { x: 1 } ).count();

To obtain the correct count, do not hint() with a sparse index when performing a count of all documents in a collection.

db.collection.find().count();

db.collection.createIndex({ y: 1 });
db.collection.find().hint({ y: 1 }).count();

Indexes that are Sparse by Default

2dsphere (version 2), 2d, geoHaystack, and text indexes are always sparse.

Sparse Compound Indexes

Compound indexes can contain different types of sparse indexes. The combination of index types determines how the compound index matches documents.

This table summarizes the behavior of a compound index that contains different types of sparse indexes:

Compound Index Components Compound Index Behavior
Ascending indexes
Descending indexes
Only indexes documents that contain a value for at least one of the keys.
Ascending indexes
Descending indexes
Only indexes a document when it contains a value for one of the geospatial fields. Does not index documents in the ascending or descending indexes.
Ascending indexes
Descending indexes
Only indexes a document when it matches one of the text fields. Does not index documents in the ascending or descending indexes.

sparse and unique Properties

An index that is both sparse and unique prevents a collection from having documents with duplicate values for a field but allows multiple documents that omit the key.

Examples

Create a Sparse Index On A Collection

Consider a collection scores that contains the following documents:

{ "_id" : ObjectId("523b6e32fb408eea0eec2647"), "userid" : "newbie" }
{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }
{ "_id" : ObjectId("523b6e6ffb408eea0eec2649"), "userid" : "nina", "score" : 90 }

The collection has a sparse index on the field score:

db.scores.createIndex( { score: 1 } , { sparse: true } )

Then, the following query on the scores collection uses the sparse index to return the documents that have the score field less than ($lt) 90:

db.scores.find( { score: { $lt: 90 } } )

Because the document for the userid "newbie" does not contain the score field and thus does not meet the query criteria, the query can use the sparse index to return the results:

{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }

Sparse Index On A Collection Cannot Return Complete Results

Consider a collection scores that contains the following documents:

{ "_id" : ObjectId("523b6e32fb408eea0eec2647"), "userid" : "newbie" }
{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }
{ "_id" : ObjectId("523b6e6ffb408eea0eec2649"), "userid" : "nina", "score" : 90 }

The collection has a sparse index on the field score:

db.scores.createIndex( { score: 1 } , { sparse: true } )

Because the document for the userid "newbie" does not contain the score field, the sparse index does not contain an entry for that document.

Consider the following query to return all documents in the scores collection, sorted by the score field:

db.scores.find().sort( { score: -1 } )

Even though the sort is by the indexed field, MongoDB will not select the sparse index to fulfill the query in order to return complete results:

{ "_id" : ObjectId("523b6e6ffb408eea0eec2649"), "userid" : "nina", "score" : 90 }
{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }
{ "_id" : ObjectId("523b6e32fb408eea0eec2647"), "userid" : "newbie" }

To use the sparse index, explicitly specify the index with hint():

db.scores.find().sort( { score: -1 } ).hint( { score: 1 } )

The use of the index results in the return of only those documents with the score field:

{ "_id" : ObjectId("523b6e6ffb408eea0eec2649"), "userid" : "nina", "score" : 90 }
{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }

Sparse Index with Unique Constraint

Consider a collection scores that contains the following documents:

{ "_id" : ObjectId("523b6e32fb408eea0eec2647"), "userid" : "newbie" }
{ "_id" : ObjectId("523b6e61fb408eea0eec2648"), "userid" : "abby", "score" : 82 }
{ "_id" : ObjectId("523b6e6ffb408eea0eec2649"), "userid" : "nina", "score" : 90 }

You could create an index with a unique constraint and sparse filter on the score field using the following operation:

db.scores.createIndex( { score: 1 } , { sparse: true, unique: true } )

This index would permit the insertion of documents that had unique values for the score field or did not include a score field. As such, given the existing documents in the scores collection, the index permits the following insert operations:

db.scores.insertMany( [
   { "userid": "newbie", "score": 43 },
   { "userid": "abby", "score": 34 },
   { "userid": "nina" }
] )

However, the index would not permit the addition of the following documents since documents already exists with score value of 82 and 90:

db.scores.insertMany( [
   { "userid": "newbie", "score": 82 },
   { "userid": "abby", "score": 90 }
] )