db.collection.updateMany()
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Definition
db.collection.updateMany(filter, update, options)
Important
mongosh Method
This page documents a
mongosh
method. This is not the documentation for database commands or language-specific drivers, such as Node.js.For the database command, see the
update
command.For MongoDB API drivers, refer to the language-specific MongoDB driver documentation.
For the legacy
mongo
shell documentation, refer to the documentation for the corresponding MongoDB Server release:Updates all documents that match the specified filter for a collection.
Syntax
The updateMany()
method has the following form:
db.collection.updateMany( <filter>, <update>, { upsert: <boolean>, writeConcern: <document>, collation: <document>, arrayFilters: [ <filterdocument1>, ... ], hint: <document|string> // Available starting in MongoDB 4.2.1 } )
Parameters
The updateMany()
method takes the following parameters:
Parameter | Type | Description | ||||||
---|---|---|---|---|---|---|---|---|
filter | document | The selection criteria for the update. The same query selectors as in the find() method are available.Specify an empty document { } to update all documents in the collection.
| ||||||
update | document or pipeline | The modifications to apply. Can be one of the following:
To update with a replacement document, see | ||||||
upsert | boolean | Optional. When true , updateMany() either:
filter fields are uniquely indexed.Defaults to false .
| ||||||
writeConcern | document | Optional. A document expressing the write concern. Omit to use the default write concern. Do not explicitly set the write concern for the operation if run in a transaction. To use write concern with transactions, see Transactions and Write Concern. | ||||||
collation | document | Optional. Specifies the collation to use for the operation. Collation allows users to specify language-specific rules for string comparison, such as rules for lettercase and accent marks. The collation option has the following syntax: collation: { locale: <string>, caseLevel: <boolean>, caseFirst: <string>, strength: <int>, numericOrdering: <boolean>, alternate: <string>, maxVariable: <string>, backwards: <boolean> } When specifying collation, the If the collation is unspecified but the collection has a default collation (see If no collation is specified for the collection or for the operations, MongoDB uses the simple binary comparison used in prior versions for string comparisons. You cannot specify multiple collations for an operation. For example, you cannot specify different collations per field, or if performing a find with a sort, you cannot use one collation for the find and another for the sort. | ||||||
arrayFilters | array | Optional. An array of filter documents that determine which array elements to modify for an update operation on an array field. In the update document, use the $[<identifier>] filtered positional operator to define an identifier, which you then reference in the array filter documents. You cannot have an array filter document for an identifier if the identifier is not included in the update document.
NoteThe <identifier> must begin with a lowercase letter and contain only alphanumeric characters.
$[identifier] )
in the update document, you must specify exactly one
corresponding array filter document. That is, you cannot specify multiple array filter documents for the same identifier. For example, if the update statement includes the identifier x (possibly multiple times), you cannot specify the following for arrayFilters that includes 2 separate filter documents for x :
// INVALID [ { "x.a": { $gt: 85 } }, { "x.b": { $gt: 80 } } ] However, you can specify compound conditions on the same identifier in a single filter document, such as in the following examples: // Example 1 [ { $or: [{"x.a": {$gt: 85}}, {"x.b": {$gt: 80}}] } ] // Example 2 [ { $and: [{"x.a": {$gt: 85}}, {"x.b": {$gt: 80}}] } ] // Example 3 [ { "x.a": { $gt: 85 }, "x.b": { $gt: 80 } } ] For examples, see Specify | ||||||
hint | Document or string | Optional. A document or string that specifies the index to use to support the query predicate. The option can take an index specification document or the index name string. If you specify an index that does not exist, the operation errors. For an example, see Specify hint for Update Operations.
New in version 4.2.1.
|
Returns
The method returns a document that contains:
-
A boolean
acknowledged
astrue
if the operation ran with write concern orfalse
if write concern was disabled -
matchedCount
containing the number of matched documents -
modifiedCount
containing the number of modified documents -
upsertedId
containing the_id
for the upserted document
Access Control
On deployments running with authorization
, the user must have access that includes the following privileges:
-
update
action on the specified collection(s). -
find
action on the specified collection(s). -
insert
action on the specified collection(s) if the operation results in an upsert.
The built-in role readWrite
provides the required privileges.
Behavior
updateMany()
updates all matching documents in the collection that match the filter
, using the update
criteria to apply modifications.
Upsert
If upsert: true
and no documents match the filter
, db.collection.updateMany()
creates a new document based on the filter
and update
parameters.
If you specify upsert: true
on a sharded collection, you must include the full shard key in the filter
. For additional db.collection.updateMany()
behavior, see Sharded Collections.
Update with an Update Operator Expressions Document
For the modification specification, the db.collection.updateMany()
method can accept a document that only contains update operator expressions to perform.
For example:
db.collection.updateMany( <query>, { $set: { status: "D" }, $inc: { quantity: 2 } }, ... )
Update with an Aggregation Pipeline
Starting in MongoDB 4.2, the db.collection.updateMany()
method can accept an aggregation pipeline [ <stage1>, <stage2>, ... ]
that specifies the modifications to perform. The pipeline can consist of the following stages:
-
$addFields
and its alias$set
-
$replaceRoot
and its alias$replaceWith
.
Using the aggregation pipeline allows for a more expressive update statement, such as expressing conditional updates based on current field values or updating one field using the value of another field(s).
For example:
db.collection.updateMany( <query>, [ { $set: { status: "Modified", comments: [ "$misc1", "$misc2" ] } }, { $unset: [ "misc1", "misc2" ] } ] ... )
Note
For examples, see Update with Aggregation Pipeline.
Capped Collections
If an update operation changes the document size, the operation will fail.
Time Series Collections
The updateMany()
method is available for time series collections starting in MongoDB 5.1.
Update commands must meet the following requirements:
-
You can only match on the
metaField
field value. -
You can only modify the
metaField
field value. -
Your update document can only contain update operator expressions.
-
Your update command must not limit the number of documents to be updated. Set
multi: true
or use theupdateMany()
method. -
Your update command must not set upsert: true.
Sharded Collections
For a db.collection.updateMany()
operation that includes upsert: true
and is on a sharded collection, you must include the full shard key in the filter
.
Explainability
updateMany()
is not compatible with db.collection.explain()
.
Transactions
db.collection.updateMany()
can be used inside multi-document transactions.
Important
In most cases, multi-document transaction incurs a greater performance cost over single document writes, and the availability of multi-document transactions should not be a replacement for effective schema design. For many scenarios, the denormalized data model (embedded documents and arrays) will continue to be optimal for your data and use cases. That is, for many scenarios, modeling your data appropriately will minimize the need for multi-document transactions.
For additional transactions usage considerations (such as runtime limit and oplog size limit), see also Production Considerations.
Upsert within Transactions
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.
Specifically, in MongoDB 4.4 and greater, db.collection.updateMany()
with upsert: true
can be run on an existing collection or a non-existing collection. If run on a non-existing collection, the operation creates the collection.
In MongoDB 4.2 and earlier, the operation must be run on an existing collection.
Tip
Write Concerns and Transactions
Do not explicitly set the write concern for the operation if run in a transaction. To use write concern with transactions, see Transactions and Write Concern.
Examples
Update Multiple Documents
The restaurant
collection contains the following documents:
{ "_id" : 1, "name" : "Central Perk Cafe", "violations" : 3 } { "_id" : 2, "name" : "Rock A Feller Bar and Grill", "violations" : 2 } { "_id" : 3, "name" : "Empire State Sub", "violations" : 5 } { "_id" : 4, "name" : "Pizza Rat's Pizzaria", "violations" : 8 }
The following operation updates all documents where violations
are greater than 4
and $set
a flag for review:
try { db.restaurant.updateMany( { violations: { $gt: 4 } }, { $set: { "Review" : true } } ); } catch (e) { print(e); }
The operation returns:
{ "acknowledged" : true, "matchedCount" : 2, "modifiedCount" : 2 }
The collection now contains the following documents:
{ "_id" : 1, "name" : "Central Perk Cafe", "violations" : 3 } { "_id" : 2, "name" : "Rock A Feller Bar and Grill", "violations" : 2 } { "_id" : 3, "name" : "Empire State Sub", "violations" : 5, "Review" : true } { "_id" : 4, "name" : "Pizza Rat's Pizzaria", "violations" : 8, "Review" : true }
If no matches were found, the operation instead returns:
{ "acknowledged" : true, "matchedCount" : 0, "modifiedCount" : 0 }
Setting upsert: true
would insert a document if no match was found.
Update with Aggregation Pipeline
Starting in MongoDB 4.2, the db.collection.updateMany()
can use an aggregation pipeline for the update. The pipeline can consist of the following stages:
-
$addFields
and its alias$set
-
$replaceRoot
and its alias$replaceWith
.
Using the aggregation pipeline allows for a more expressive update statement, such as expressing conditional updates based on current field values or updating one field using the value of another field(s).
Example 1: Update with Aggregation Pipeline Using Existing Fields
The following examples uses the aggregation pipeline to modify a field using the values of the other fields in the document.
Create a members
collection with the following documents:
db.members.insertMany( [ { "_id" : 1, "member" : "abc123", "status" : "A", "points" : 2, "misc1" : "note to self: confirm status", "misc2" : "Need to activate", "lastUpdate" : ISODate("2019-01-01T00:00:00Z") }, { "_id" : 2, "member" : "xyz123", "status" : "A", "points" : 60, "misc1" : "reminder: ping me at 100pts", "misc2" : "Some random comment", "lastUpdate" : ISODate("2019-01-01T00:00:00Z") } ] )
Assume that instead of separate misc1
and misc2
fields, you want to gather these into a new comments
field. The following update operation uses an aggregation pipeline to:
-
add the new
comments
field and set thelastUpdate
field. -
remove the
misc1
andmisc2
fields for all documents in the collection.
db.members.updateMany( { }, [ { $set: { status: "Modified", comments: [ "$misc1", "$misc2" ], lastUpdate: "$$NOW" } }, { $unset: [ "misc1", "misc2" ] } ] )
Note
- First Stage
-
The
$set
stage:-
creates a new array field
comments
whose elements are the current content of themisc1
andmisc2
fields and -
sets the field
lastUpdate
to the value of the aggregation variableNOW
. The aggregation variableNOW
resolves to the current datetime value and remains the same throughout the pipeline. To access aggregation variables, prefix the variable with double dollar signs$$
and enclose in quotes.
-
- Second Stage
- The
$unset
stage removes themisc1
andmisc2
fields.
After the command, the collection contains the following documents:
{ "_id" : 1, "member" : "abc123", "status" : "Modified", "points" : 2, "lastUpdate" : ISODate("2020-01-23T05:50:49.247Z"), "comments" : [ "note to self: confirm status", "Need to activate" ] } { "_id" : 2, "member" : "xyz123", "status" : "Modified", "points" : 60, "lastUpdate" : ISODate("2020-01-23T05:50:49.247Z"), "comments" : [ "reminder: ping me at 100pts", "Some random comment" ] }
Example 2: Update with Aggregation Pipeline Using Existing Fields Conditionally
The aggregation pipeline allows the update to perform conditional updates based on the current field values as well as use current field values to calculate a separate field value.
For example, create a students3
collection with the following documents:
db.students3.insertMany( [ { "_id" : 1, "tests" : [ 95, 92, 90 ], "lastUpdate" : ISODate("2019-01-01T00:00:00Z") }, { "_id" : 2, "tests" : [ 94, 88, 90 ], "lastUpdate" : ISODate("2019-01-01T00:00:00Z") }, { "_id" : 3, "tests" : [ 70, 75, 82 ], "lastUpdate" : ISODate("2019-01-01T00:00:00Z") } ] )
Using an aggregation pipeline, you can update the documents with the calculated grade average and letter grade.
db.students3.updateMany( { }, [ { $set: { average : { $trunc: [ { $avg: "$tests" }, 0 ] } , lastUpdate: "$$NOW" } }, { $set: { grade: { $switch: { branches: [ { case: { $gte: [ "$average", 90 ] }, then: "A" }, { case: { $gte: [ "$average", 80 ] }, then: "B" }, { case: { $gte: [ "$average", 70 ] }, then: "C" }, { case: { $gte: [ "$average", 60 ] }, then: "D" } ], default: "F" } } } } ] )
Note
- First Stage
-
The
$set
stage:-
calculates a new field
average
based on the average of thetests
field. See$avg
for more information on the$avg
aggregation operator and$trunc
for more information on the$trunc
truncate aggregation operator. -
sets the field
lastUpdate
to the value of the aggregation variableNOW
. The aggregation variableNOW
resolves to the current datetime value and remains the same throughout the pipeline. To access aggregation variables, prefix the variable with double dollar signs$$
and enclose in quotes.
-
- Second Stage
- The
$set
stage calculates a new fieldgrade
based on theaverage
field calculated in the previous stage. See$switch
for more information on the$switch
aggregation operator.
After the command, the collection contains the following documents:
{ "_id" : 1, "tests" : [ 95, 92, 90 ], "lastUpdate" : ISODate("2020-01-24T17:31:01.670Z"), "average" : 92, "grade" : "A" } { "_id" : 2, "tests" : [ 94, 88, 90 ], "lastUpdate" : ISODate("2020-01-24T17:31:01.670Z"), "average" : 90, "grade" : "A" } { "_id" : 3, "tests" : [ 70, 75, 82 ], "lastUpdate" : ISODate("2020-01-24T17:31:01.670Z"), "average" : 75, "grade" : "C" }
Tip
See also:
Update Multiple Documents with Upsert
The inspectors
collection contains the following documents:
{ "_id" : 92412, "inspector" : "F. Drebin", "Sector" : 1, "Patrolling" : true }, { "_id" : 92413, "inspector" : "J. Clouseau", "Sector" : 2, "Patrolling" : false }, { "_id" : 92414, "inspector" : "J. Clouseau", "Sector" : 3, "Patrolling" : true }, { "_id" : 92415, "inspector" : "R. Coltrane", "Sector" : 3, "Patrolling" : false }
The following operation updates all documents with Sector
greater than 4 and inspector
equal to "R. Coltrane"
:
try { db.inspectors.updateMany( { "Sector" : { $gt : 4 }, "inspector" : "R. Coltrane" }, { $set: { "Patrolling" : false } }, { upsert: true } ); } catch (e) { print(e); }
The operation returns:
{ "acknowledged" : true, "matchedCount" : 0, "modifiedCount" : 0, "upsertedId" : ObjectId("56fc5dcb39ee682bdc609b02") }
The collection now contains the following documents:
{ "_id" : 92412, "inspector" : "F. Drebin", "Sector" : 1, "Patrolling" : true }, { "_id" : 92413, "inspector" : "J. Clouseau", "Sector" : 2, "Patrolling" : false }, { "_id" : 92414, "inspector" : "J. Clouseau", "Sector" : 3, "Patrolling" : true }, { "_id" : 92415, "inspector" : "R. Coltrane", "Sector" : 3, "Patrolling" : false }, { "_id" : ObjectId("56fc5dcb39ee682bdc609b02"), "inspector" : "R. Coltrane", "Patrolling" : false }
Since no documents matched the filter, and upsert
was true
, updateMany()
inserted the document with a generated _id
, the equality conditions from the filter
, and the update
modifiers.
Update with Write Concern
Given a three member replica set, the following operation specifies a w
of majority
and wtimeout
of 100
:
try { db.restaurant.updateMany( { "name" : "Pizza Rat's Pizzaria" }, { $inc: { "violations" : 3}, $set: { "Closed" : true } }, { w: "majority", wtimeout: 100 } ); } catch (e) { print(e); }
If the acknowledgement takes longer than the wtimeout
limit, the following exception is thrown:
Changed in version 4.4.
WriteConcernError({ "code" : 64, "errmsg" : "waiting for replication timed out", "errInfo" : { "wtimeout" : true, "writeConcern" : { "w" : "majority", "wtimeout" : 100, "provenance" : "getLastErrorDefaults" } } })
The following table explains the possible values of errInfo.writeConcern.provenance
:
Provenance | Description |
---|---|
clientSupplied | The write concern was specified in the application. |
customDefault | The write concern originated from a custom defined default value. See setDefaultRWConcern . |
getLastErrorDefaults | The write concern originated from the replica set's settings.getLastErrorDefaults field. |
implicitDefault | The write concern originated from the server in absence of all other write concern specifications. |
Specify Collation
Collation allows users to specify language-specific rules for string comparison, such as rules for lettercase and accent marks.
A collection myColl
has the following documents:
{ _id: 1, category: "café", status: "A" } { _id: 2, category: "cafe", status: "a" } { _id: 3, category: "cafE", status: "a" }
The following operation includes the collation option:
db.myColl.updateMany( { category: "cafe" }, { $set: { status: "Updated" } }, { collation: { locale: "fr", strength: 1 } } );
Specify arrayFilters
for an Array Update Operations
Starting in MongoDB 3.6, when updating an array field, you can specify arrayFilters
that determine which array elements to update.
Update Elements Match arrayFilters
Criteria
Create a collection students
with the following documents:
db.students.insertMany( [ { "_id" : 1, "grades" : [ 95, 92, 90 ] }, { "_id" : 2, "grades" : [ 98, 100, 102 ] }, { "_id" : 3, "grades" : [ 95, 110, 100 ] } ] )
To update all elements that are greater than or equal to 100
in the grades
array, use the filtered positional operator $[<identifier>]
with the arrayFilters
option:
db.students.updateMany( { grades: { $gte: 100 } }, { $set: { "grades.$[element]" : 100 } }, { arrayFilters: [ { "element": { $gte: 100 } } ] } )
After the operation, the collection contains the following documents:
{ "_id" : 1, "grades" : [ 95, 92, 90 ] } { "_id" : 2, "grades" : [ 98, 100, 100 ] } { "_id" : 3, "grades" : [ 95, 100, 100 ] }
Update Specific Elements of an Array of Documents
Create a collection students2
with the following documents:
db.students2.insertMany( [ { "_id" : 1, "grades" : [ { "grade" : 80, "mean" : 75, "std" : 6 }, { "grade" : 85, "mean" : 90, "std" : 4 }, { "grade" : 85, "mean" : 85, "std" : 6 } ] }, { "_id" : 2, "grades" : [ { "grade" : 90, "mean" : 75, "std" : 6 }, { "grade" : 87, "mean" : 90, "std" : 3 }, { "grade" : 85, "mean" : 85, "std" : 4 } ] } ] )
To modify the value of the mean
field for all elements in the grades
array where the grade is greater than or equal to 85
, use the filtered positional operator $[<identifier>]
with the arrayFilters
:
db.students2.updateMany( { }, { $set: { "grades.$[elem].mean" : 100 } }, { arrayFilters: [ { "elem.grade": { $gte: 85 } } ] } )
After the operation, the collection has the following documents:
{ "_id" : 1, "grades" : [ { "grade" : 80, "mean" : 75, "std" : 6 }, { "grade" : 85, "mean" : 100, "std" : 4 }, { "grade" : 85, "mean" : 100, "std" : 6 } ] } { "_id" : 2, "grades" : [ { "grade" : 90, "mean" : 100, "std" : 6 }, { "grade" : 87, "mean" : 100, "std" : 3 }, { "grade" : 85, "mean" : 100, "std" : 4 } ] }
Specify hint
for Update Operations
New in version 4.2.1.
Create a sample members
collection with the following documents:
db.members.insertMany( [ { "_id" : 1, "member" : "abc123", "status" : "P", "points" : 0, "misc1" : null, "misc2" : null }, { "_id" : 2, "member" : "xyz123", "status" : "A", "points" : 60, "misc1" : "reminder: ping me at 100pts", "misc2" : "Some random comment" }, { "_id" : 3, "member" : "lmn123", "status" : "P", "points" : 0, "misc1" : null, "misc2" : null }, { "_id" : 4, "member" : "pqr123", "status" : "D", "points" : 20, "misc1" : "Deactivated", "misc2" : null }, { "_id" : 5, "member" : "ijk123", "status" : "P", "points" : 0, "misc1" : null, "misc2" : null }, { "_id" : 6, "member" : "cde123", "status" : "A", "points" : 86, "misc1" : "reminder: ping me at 100pts", "misc2" : "Some random comment" } ] )
Create the following indexes on the collection:
db.members.createIndex( { status: 1 } ) db.members.createIndex( { points: 1 } )
The following update operation explicitly hints to use the index {
status: 1 }
:
Note
If you specify an index that does not exist, the operation errors.
db.members.updateMany( { "points": { $lte: 20 }, "status": "P" }, { $set: { "misc1": "Need to activate" } }, { hint: { status: 1 } } )
The update command returns the following:
{ "acknowledged" : true, "matchedCount" : 3, "modifiedCount" : 3 }
To view the indexes used, you can use the $indexStats
pipeline:
db.members.aggregate( [ { $indexStats: { } }, { $sort: { name: 1 } } ] )