createIndexes
On this page本页内容
- Definition
- Syntax
- Command Fields
- Considerations
- Index Names
- Replica Sets and Sharded Clusters
- Collation and Index Types
- Stable API
- Behavior
- Concurrency
- Memory Usage Limit
- Index Options
- Wildcard Indexes
- Transactions
- Commit Quorum Contrasted with Write Concern
- Example
- Create a Wildcard Index
- Create Index With Commit Quorum
- Output
Definition
createIndexes
-
Builds one or more indexes on a collection.
TipIn
mongosh
, this command can also be run through thedb.collection.createIndex()
anddb.collection.createIndexes()
helper methods..Helper methods are convenient for
mongosh
users, but they may not return the same level of information as database commands. In cases where the convenience is not needed or the additional return fields are required, use the database command.
Syntax
The createIndexes
command takes the following form:
db.runCommand(
{
createIndexes: <collection>,
indexes: [
{
key: {
<key-value_pair>,
<key-value_pair>,
...
},
name: <index_name>,
<option1>,
<option2>,
...
},
{ ... },
{ ... }
],
writeConcern: { <write concern> },
commitQuorum: <int|string>,
comment: <any>
}
)
Command Fields
The createIndexes
command takes the following fields:
Field | Type | Description |
---|---|---|
createIndexes | string | The collection for which to create indexes. |
indexes | array | Specifies the indexes to create. Each document in the array specifies a separate index. |
writeConcern | document | Optional. A document expressing the write concern. Omit to use the default write concern. |
commitQuorum | integer or string | Optional. The minimum number of data-bearing replica set members (i.e. commit quorum), including the primary, that must report a successful index build before the primary marks the indexes as ready.Starting in MongoDB v5.0, you can resume some interrupted index builds when the commit quorum is set to "votingMembers" .Replica set nodes in a commit quorum must have members[n].buildIndexes set to true . If any voting nodes have members[n].buildIndexes set to false , you can't use the default "votingMembers" commit quorum. Either configure all nodes with members[n].buildIndexes set to true , or select a different commit quorum.Supports the following values:
New in version 4.4.
|
comment | any | Optional. A user-provided comment to attach to this command. Once set, this comment appears alongside records of this command in the following locations:
New in version 4.4.
|
Each document in the indexes
array can take the following fields:
Field | Type | Description |
---|---|---|
key | document | Specifies the index's fields. For each field, specify a key-value pair in which the key is the name of the field to index and the value is either the index direction or index type. If specifying direction, specify 1 for ascending or -1 for descending.MongoDB supports several different index types, including: See index types for more information. Wildcard indexes support workloads where users query against custom fields or a large variety of fields in a collection:
|
name | string | A name that uniquely identifies the index. |
unique | boolean | Optional. Creates a unique index so that the collection will not accept insertion or update of documents where the index key value matches an existing value in the index. Specify true to create a unique index. The default value is false .The option is unavailable for hashed indexes. |
partialFilterExpression | document | Optional. If specified, the index only references documents that match the filter expression. See Partial Indexes for more information. A filter expression can include:
partialFilterExpression option for all MongoDB index types.
|
sparse | boolean | Optional. If true , the index only references documents with the specified field. These indexes use less space but behave differently in some situations (particularly sorts). The default value is false . See Sparse Indexes for more information.The following index types are sparse by default and ignore this option: For a compound index that includes 2dsphere index key(s)
along with keys of other types, only the 2dsphere index fields determine whether the index references a document.MongoDB provides the option to create partial indexes. These offer a superset of the functionality of sparse indexes and are preferred instead. |
expireAfterSeconds | integer | Optional. Specifies a value, in seconds, as a time to live (TTL)
to control how long MongoDB retains documents in this collection. This option only applies to TTL indexes. See Expire Data from Collections by Setting TTL for more information. If you use TTL indexes created before MongoDB 5.0, or if you want to sync data created in MongDB 5.0 with a pre-5.0 installation, see Indexes Configured Using NaN to avoid misconfiguration issues. The TTL index expireAfterSeconds value must be within 0 and 2147483647 inclusive.
|
hidden | boolean | Optional. A flag that determines whether the index is hidden from the query planner. A hidden index is not evaluated as part of query plan selection. Default is false .
New in version 4.4.
|
storageEngine | document | Optional. Allows users to configure the storage engine on a per-index basis when creating an index. The storageEngine option should take the following form:
storageEngine: { <storage-engine-name>: <options> } Storage engine configuration options specified when creating indexes are validated and logged to the oplog during replication to support replica sets with members that use different storage engines.
|
weights | document | Optional. For text indexes, a document that contains field and weight pairs. The weight is an integer ranging from 1 to 99,999 and denotes the significance of the field relative to the other indexed fields in terms of the score. You can specify weights for some or all the indexed fields. See Assign Weights to Text Search Results to adjust the scores. The default value is 1 . |
default_language | string | Optional. For text indexes, the language that determines the list of stop words and the rules for the stemmer and tokenizer. See Text Search Languages for the available languages and Specify the Default Language for a Text Index for more information and examples. The default value is english . |
language_override | string | Optional. For text indexes, the name of the field, in the collection's documents, that contains the override language for the document. The default value is language . See Specify the Default Language for a Text Index for an example. |
textIndexVersion | integer | Optional. The text index version number. Users can use this option to override the default version number.For available versions, see Text Index Versions. |
2dsphereIndexVersion | integer | Optional. The 2dsphere index version number. Users can use this option to override the default version number.For the available versions, see 2dsphere Indexes. |
bits | integer | Optional. For 2d indexes, the number of precision of the stored geohash value of the location data. The bits value ranges from 1 to 32 inclusive. The default value is 26 .
|
min | number | Optional. For 2d indexes, the lower inclusive boundary for the longitude and latitude values. The default value is -180.0 . |
max | number | Optional. For 2d indexes, the upper inclusive boundary for the longitude and latitude values. The default value is 180.0 . |
collation | document | Optional. Specifies the collation for the index. Collation allows users to specify language-specific rules for string comparison, such as rules for lettercase and accent marks. If you have specified a collation at the collection level, then:
collation: {When specifying collation, the locale field is mandatory; all other collation fields are optional. For descriptions of the fields, see Collation Document.
|
wildcardProjection | document | Optional.
Allows users to include or exclude specific field paths from a wildcard index using the { "$**" : 1} key pattern. This option is only valid if creating a wildcard index on all document fields. You cannot specify this option if creating a wildcard index on a specific field path and its subfields, e.g. { "path.to.field.$**" : 1 } The wildcardProjection option takes the following form:
wildcardProjection: {The <value> can be either of the following:
_id field by default. To include the _id field in the wildcard index, you must explicitly include it in the wildcardProjection document:
{All of the statements in the wildcardProjection document must be either inclusion or exclusion statements. You can also include the _id field with exclusion statements. This is the only exception to the rule.
|
mongosh
provides the methods db.collection.createIndex()
and db.collection.createIndexes()
as wrappers for the createIndexes
command.
Considerations
MongoDB disallows the creation of version 0 indexes. To upgrade existing version 0 indexes, see Version 0 Indexes.
Index Names
The createIndexes
command and mongosh
helpers db.collection.createIndex()
and db.collection.createIndexes()
report an error if you create an index with one name, and then try to create the same index again but with another name.
{
"ok" : 0,
"errmsg" : "Index with name: x_1 already exists with a different name",
"code" : 85,
"codeName" : "IndexOptionsConflict"
}
In previous versions, MongoDB did not create the index again, but would return a response object with ok
value of 1
and a note that implied that the index was not recreated. For example:
{
"numIndexesBefore" : 2,
"numIndexesAfter" : 2,
"note" : "all indexes already exist",
"ok" : 1
}
Replica Sets and Sharded Clusters
Requires featureCompatibilityVersion 4.4+
Each mongod
in the replica set or sharded cluster must have featureCompatibilityVersion set to at least 4.4
to start index builds simultaneously across replica set members.
MongoDB 4.4 running featureCompatibilityVersion: "4.2"
builds indexes on the primary before replicating the index build to secondaries.
Starting with MongoDB 4.4, index builds on a replica set or sharded cluster build simultaneously across all data-bearing replica set members. For sharded clusters, the index build occurs only on shards containing data for the collection being indexed. The primary requires a minimum number of data-bearing voting
members (i.e commit quorum), including itself, that must complete the build before marking the index as ready for use. See Index Builds in Replicated Environments for more information.
To start an index build with a non-default commit quorum, specify the commitQuorum.
MongoDB 4.4 adds the setIndexCommitQuorum
command for modifying the commit quorum of an in-progress index build.
To minimize the impact of building an index on replica sets and sharded clusters, use a rolling index build procedure as described on Rolling Index Builds on Replica Sets.
Collation and Index Types
The following indexes only support simple binary comparison and do not support collation:
To create a text
or 2d
index on a collection that has a non-simple collation, you must explicitly specify {collation:
{locale: "simple"} }
when creating the index.
Stable API
When using Stable API V1:
- You cannot specify any of the following fields in the
indexes
array:background
bucketSize
sparse
storageEngine
- You cannot create geoHaystack or text indexes.
Behavior
Concurrency
For featureCompatibilityVersion "4.2"
, createIndexes
uses an optimized build process that obtains and holds an exclusive lock on the specified collection at the start and end of the index build. All subsequent operations on the collection must wait until createIndexes
releases the exclusive lock. createIndexes
allows interleaving read and write operations during the majority of the index build.
For featureCompatibilityVersion "4.0"
, createIndexes
uses the pre-4.2 index build process which by default obtains an exclusive lock on the parent database for the entire duration of the build process. The pre-4.2 build process blocks all operations on the database and all its collections until the operation completed. background
indexes do not take an exclusive lock.
For more information on the locking behavior of createIndexes
, see Index Builds on Populated Collections.
Memory Usage Limit
createIndexes
supports building one or more indexes on a collection. createIndexes
uses a combination of memory and temporary files on disk to complete index builds. The default limit on memory usage for createIndexes
is 200 megabytes (for versions 4.2.3 and later) and 500 (for versions 4.2.2 and earlier), shared between all indexes built using a single createIndexes
command. Once the memory limit is reached, createIndexes
uses temporary disk files in a subdirectory named _tmp
within the --dbpath
directory to complete the build.
You can override the memory limit by setting the maxIndexBuildMemoryUsageMegabytes
server parameter. Setting a higher memory limit may result in faster completion of index builds. However, setting this limit too high relative to the unused RAM on your system can result in memory exhaustion and server shutdown.
Index Options
Non-Hidden Option
The hidden option can be changed without dropping and recreating the index. See Hidden Option.
Changing Index Options
Collation options on an existing index can be updated. To change other index options, drop the existing index with db.collection.dropIndex()
then run createIndexes
with the new options.
Collation Option
You can create multiple indexes on the same key(s) with different collations. To create indexes with the same key pattern but different collations, you must supply unique index names.
If you have specified a collation at the collection level, then:
- If you do not specify a collation when creating the index, MongoDB creates the index with the collection's default collation.
- If you do specify a collation when creating the index, MongoDB creates the index with the specified collation.
By specifying a collation strength
of 1
or 2
, you can create a case-insensitive index. Index with a collation strength
of 1
is both diacritic- and case-insensitive.
To use an index for string comparisons, an operation must also specify the same collation. That is, an index with a collation cannot support an operation that performs string comparisons on the indexed fields if the operation specifies a different collation.
For example, the collection myColl
has an index on a string field category
with the collation locale "fr"
.
db.myColl.createIndex( { category: 1 }, { collation: { locale: "fr" } } )
The following query operation, which specifies the same collation as the index, can use the index:
db.myColl.find( { category: "cafe" } ).collation( { locale: "fr" } )
However, the following query operation, which by default uses the "simple" binary collator, cannot use the index:
db.myColl.find( { category: "cafe" } )
For a compound index where the index prefix keys are not strings, arrays, and embedded documents, an operation that specifies a different collation can still use the index to support comparisons on the index prefix keys.
For example, the collection myColl
has a compound index on the numeric fields score
and price
and the string field category
; the index is created with the collation locale "fr"
for string comparisons:
db.myColl.createIndex(
{ score: 1, price: 1, category: 1 },
{ collation: { locale: "fr" } } )
The following operations, which use "simple"
binary collation for string comparisons, can use the index:
db.myColl.find( { score: 5 } ).sort( { price: 1 } )
db.myColl.find( { score: 5, price: { $gt: NumberDecimal( "10" ) } } ).sort( { price: 1 } )
The following operation, which uses "simple"
binary collation for string comparisons on the indexed category
field, can use the index to fulfill only the score: 5
portion of the query:
db.myColl.find( { score: 5, category: "cafe" } )
Hidden Option
New in version 4.4.
To change the hidden
option for existing indexes, you can use the following mongosh
methods:
For example,
- To change the
hidden
option for an index totrue
, use thedb.collection.hideIndex()
method:db.restaurants.hideIndex( { borough: 1, ratings: 1 } );
- To change the
hidden
option for an index tofalse
, use thedb.collection.unhideIndex()
method:db.restaurants.unhideIndex( { borough: 1, city: 1 } );
See also:
Wildcard Indexes
- Wildcard indexes omit the
_id
field by default. To include the_id
field in the wildcard index, you must explicitly include it in thewildcardProjection
document:{
"wildcardProjection" : {
"_id" : 1,
"<field>" : 0|1
}
}All of the statements in the
wildcardProjection
document must be either inclusion or exclusion statements. You can also include the_id
field with exclusion statements. This is the only exception to the rule. - Wildcard indexes do not support:
- 2d (Geospatial) indexes
- 2dsphere (Geospatial) indexes
- Hashed indexes
- Time to Live (TTL) indexes
- Text indexes
- Unique indexes
Wildcard indexes are sparse indexes. They do not support queries when an indexed field does not exist. A wildcard index will index the document if the wildcard field has a
null
value.Starting in MongoDB 7.0, wildcard indexes support ascending (
1
) and descending (-1
) sort order. Earlier versions only supported ascending order.
To learn more, see:
Transactions
Changed in version 4.4.
Starting in MongoDB 4.4, you can create collections and indexes inside a multi-document transaction if the transaction is not a cross-shard write transaction.
To use createIndexes
in a transaction, the transaction must use read concern "local"
. If you specify a read concern level other than "local"
, the transaction fails.
Commit Quorum Contrasted with Write Concern
There are important differences between commit quorums and write concerns:
- Index builds use commit quorums.
- Write operations use write concerns.
Each data-bearing node in a cluster is a voting member.
The commit quorum specifies how many data-bearing voting members, or which voting members, including the primary, must be prepared to commit a simultaneous index build. before the primary will execute the commit.
The write concern is the level of acknowledgement that the write has propagated to the specified number of instances.
The commit quorum specifies how many nodes must be ready to finish the index build before the primary commits the index build. In contrast, when the primary has committed the index build, the write concern specifies how many nodes must finish the index build before the command returns.
Example
The following command builds two indexes on the inventory
collection of the products
database:
db.getSiblingDB("products").runCommand(
{
createIndexes: "inventory",
indexes: [
{
key: {
item: 1,
manufacturer: 1,
model: 1
},
name: "item_manufacturer_model",
unique: true
},
{
key: {
item: 1,
supplier: 1,
model: 1
},
name: "item_supplier_model",
unique: true
}
],
writeConcern: { w: "majority" }
}
)
When the indexes successfully finish building, MongoDB returns a results document that includes a status of "ok" : 1
.
Create a Wildcard Index
For complete documentation on Wildcard Indexes, see Wildcard Indexes.
The following lists examples of wildcard index creation:
- Create a Wildcard Index on a Single Field Path
- Create a Wildcard Index on All Field Paths
- Create a Wildcard Index on Multiple Specific Field Paths
- Create a Wildcard Index that Excludes Multiple Specific Field Paths
Create a Wildcard Index on a Single Field Path
Consider a collection products_catalog
where documents may contain a product_attributes
field. The product_attributes
field can contain arbitrary nested fields, including embedded documents and arrays:
{
"_id" : ObjectId("5c1d358bf383fbee028aea0b"),
"product_name" : "Blaster Gauntlet",
"product_attributes" : {
"price" : {
"cost" : 299.99
"currency" : USD
}
...
}
},
{
"_id" : ObjectId("5c1d358bf383fbee028aea0c"),
"product_name" : "Super Suit",
"product_attributes" : {
"superFlight" : true,
"resistance" : [ "Bludgeoning", "Piercing", "Slashing" ]
...
},
}
The following operation creates a wildcard index on the product_attributes
field:
use inventory
db.runCommand(
{
createIndexes: "products_catalog",
indexes: [
{
key: { "product_attributes.$**" : 1 },
name: "wildcardIndex"
}
]
}
)
With this wildcard index, MongoDB indexes all scalar values of product_attributes
. If the field is a nested document or array, the wildcard index recurses into the document/array and indexes all scalar fields in the document/array.
The wildcard index can support arbitrary single-field queries on product_attributes
or one of its nested fields:
db.products_catalog.find( { "product_attributes.superFlight" : true } )
db.products_catalog.find( { "product_attributes.maxSpeed" : { $gt : 20 } } )
db.products_catalog.find( { "product_attributes.elements" : { $eq: "water" } } )
The path-specific wildcard index syntax is incompatible with the wildcardProjection
option. See the parameter documentation for more information.
Create a Wildcard Index on All Field Paths
Consider a collection products_catalog
where documents may contain a product_attributes
field. The product_attributes
field can contain arbitrary nested fields, including embedded documents and arrays:
{
"_id" : ObjectId("5c1d358bf383fbee028aea0b"),
"product_name" : "Blaster Gauntlet",
"product_attributes" : {
"price" : {
"cost" : 299.99
"currency" : USD
}
...
}
},
{
"_id" : ObjectId("5c1d358bf383fbee028aea0c"),
"product_name" : "Super Suit",
"product_attributes" : {
"superFlight" : true,
"resistance" : [ "Bludgeoning", "Piercing", "Slashing" ]
...
},
}
The following operation creates a wildcard index on all scalar fields (excluding the _id
field):
use inventory
db.runCommand(
{
createIndexes: "products_catalog",
indexes: [
{
key: { "$**" : 1 },
name: "wildcardIndex"
}
]
}
)
With this wildcard index, MongoDB indexes all scalar fields for each document in the collection. If a given field is a nested document or array, the wildcard index recurses into the document/array and indexes all scalar fields in the document/array.
The created index can support queries on any arbitrary field within documents in the collection:
db.products_catalog.find( { "product_price" : { $lt : 25 } } )
db.products_catalog.find( { "product_attributes.elements" : { $eq: "water" } } )
Wildcard indexes omit the _id
field by default. To include the _id
field in the wildcard index, you must explicitly include it in the wildcardProjection
document. See parameter documentation for more information.
Create a Wildcard Index on Multiple Specific Field Paths
Consider a collection products_catalog
where documents may contain a product_attributes
field. The product_attributes
field can contain arbitrary nested fields, including embedded documents and arrays:
{
"_id" : ObjectId("5c1d358bf383fbee028aea0b"),
"product_name" : "Blaster Gauntlet",
"product_attributes" : {
"price" : {
"cost" : 299.99
"currency" : USD
}
...
}
},
{
"_id" : ObjectId("5c1d358bf383fbee028aea0c"),
"product_name" : "Super Suit",
"product_attributes" : {
"superFlight" : true,
"resistance" : [ "Bludgeoning", "Piercing", "Slashing" ]
...
},
}
The following operation creates a wildcard index and uses the wildcardProjection
option to include only scalar values of the product_attributes.elements
and product_attributes.resistance
fields in the index.
use inventory
db.runCommand(
{
createIndexes: "products_catalog",
indexes: [
{
key: { "$**" : 1 },
"wildcardProjection" : {
"product_attributes.elements" : 1,
"product_attributes.resistance" : 1
},
name: "wildcardIndex"
}
]
}
)
While the key pattern "$**"
covers all fields in the document, the wildcardProjection
field limits the index to only the included fields and their nested fields.
If a field is a nested document or array, the wildcard index recurses into the document/array and indexes all scalar fields in the document/array.
The created index can support queries on any scalar field included in the wildcardProjection
:
db.products_catalog.find( { "product_attributes.elements" : { $eq: "Water" } } )
db.products_catalog.find( { "product_attributes.resistance" : "Bludgeoning" } )
Wildcard indexes do not support mixing inclusion and exclusion statements in the wildcardProjection
document except when explicitly including the _id
field. For more information on wildcardProjection
, see the parameter documentation.
Create a Wildcard Index that Excludes Multiple Specific Field Paths
Consider a collection products_catalog
where documents may contain a product_attributes
field. The product_attributes
field can contain arbitrary nested fields, including embedded documents and arrays:
{
"_id" : ObjectId("5c1d358bf383fbee028aea0b"),
"product_name" : "Blaster Gauntlet",
"product_attributes" : {
"price" : {
"cost" : 299.99
"currency" : USD
}
...
}
},
{
"_id" : ObjectId("5c1d358bf383fbee028aea0c"),
"product_name" : "Super Suit",
"product_attributes" : {
"superFlight" : true,
"resistance" : [ "Bludgeoning", "Piercing", "Slashing" ]
...
},
}
The following operation creates a wildcard index and uses the wildcardProjection
document to index all scalar fields for each document in the collection, excluding the product_attributes.elements
and product_attributes.resistance
fields:
use inventory
db.runCommand(
{
createIndexes: "products_catalog",
indexes: [
{
key: { "$**" : 1 },
"wildcardProjection" : {
"product_attributes.elements" : 0,
"product_attributes.resistance" : 0
},
name: "wildcardIndex"
}
]
}
)
While the key pattern "$**"
covers all fields in the document, the wildcardProjection
field excludes the specified fields from the index.
If a field is a nested document or array, the wildcard index recurses into the document/array and indexes all scalar fields in the document/array.
The created index can support queries on any scalar field except
those excluded by wildcardProjection
:
db.products_catalog.find( { "product_attributes.maxSpeed" : { $gt: 25 } } )
db.products_catalog.find( { "product_attributes.superStrength" : true } )
Wildcard indexes do not support mixing inclusion and exclusion statements in the wildcardProjection
document except when explicitly including the _id
field. For more information on wildcardProjection
, see the parameter documentation.
Create Index With Commit Quorum
Requires featureCompatibilityVersion 4.4+
Each mongod
in the replica set or sharded cluster must have featureCompatibilityVersion set to at least 4.4
to start index builds simultaneously across replica set members.
MongoDB 4.4 running featureCompatibilityVersion: "4.2"
builds indexes on the primary before replicating the index build to secondaries.
Starting with MongoDB 4.4, index builds on a replica set or sharded cluster build simultaneously across all data-bearing replica set members. For sharded clusters, the index build occurs only on shards containing data for the collection being indexed. The primary requires a minimum number of data-bearing voting
members (i.e commit quorum), including itself, that must complete the build before marking the index as ready for use. See Index Builds in Replicated Environments for more information.
To set the commit quorum, use createIndexes
to specify the commitQuorum
value.
commitQuorum
specifies how many data-bearing voting members, or which voting members, including the primary, must be prepared to commit the index build before the primary will execute the commit. The default commit quorum is votingMembers
, which means all data-bearing members.
The following operation creates an index with a commit quorum of "majority"
, or a simple majority of data-bearing members:
db.getSiblingDB("examples").runCommand(
{
createIndexes: "invoices",
indexes: [
{
key: { "invoices" : 1 },
"name" : "invoiceIndex"
}
],
"commitQuorum" : "majority"
}
)
The primary marks index build as ready only after a simple majority of data-bearing voting members "vote" to commit the index build. For more information on index builds and the voting process, see Index Builds in Replicated Environments.
Output
The createIndexes
command returns a document that indicates the success of the operation. The document contains some but not all of the following fields, depending on outcome:
createIndexes.createdCollectionAutomatically
-
If
true
, then the collection didn't exist and was created in the process of creating the index.