db.collection.bulkWrite()
MongoDB with drivers
This page documents a mongosh method. To see the equivalent
method in a MongoDB driver, see the corresponding page for your
programming language:
Definition
db.collection.bulkWrite()Performs multiple write operations with controls for order of execution.
Returns: - A boolean
acknowledgedastrueif the operation ran with write concern orfalseif write concern was disabled. - A count for each write operation.
- An array containing an
_idfor each successfully inserted or upserted documents.
- A boolean
Compatibility
db.collection.bulkWrite() is available in deployments hosted in the following environments:
MongoDB Atlas: The fully managed service for MongoDB deployments in the cloud
Note
This command is supported in all MongoDB Atlas clusters. For information on Atlas support for all commands, see Unsupported Commands.
MongoDB Enterprise: The subscription-based, self-managed version of MongoDB
MongoDB Community: The source-available, free-to-use, and self-managed version of MongoDB
Note
You can't perform bulk write operations in the Atlas UI. To insert multiple documents, you must insert an array of documents. To learn more, see Create, View, Update, and Delete Documents in the Atlas documentation.
Syntax
The bulkWrite() method has the following form:
db.collection.bulkWrite( [ <operation 1>, <operation 2>, ... ], { writeConcern : <document>, ordered : <boolean> } )
The bulkWrite() method takes the following
parameters:
Parameter | Type | Description | ||
|---|---|---|---|---|
| array | An array of Valid operations are: See Write Operations for usage of each operation | ||
| 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. | ||
| boolean | Optional. A boolean specifying whether the |
Behavior
bulkWrite() takes an array of write operations and
executes each of them. By default operations are executed in order.
See Execution of Operations for controlling
the order of write operation execution.
Write Operations
insertOne
Inserts a single document into the collection.
db.collection.bulkWrite( [ { insertOne : { "document" : <document> } } ] )
updateOne and updateMany
updateOne updates a single document in the collection that matches the
filter. If multiple documents match, updateOne will update the first
matching document only.
db.collection.bulkWrite( [ { updateOne : { "filter": <document>, "update": <document or pipeline>, "upsert": <boolean>, "collation": <document>, "arrayFilters": [ <filterdocument1>, ... ], "hint": <document|string> } } ] )
updateMany updates all documents in the collection
that match the filter.
db.collection.bulkWrite( [ { updateMany : { "filter" : <document>, "update" : <document or pipeline>, "upsert" : <boolean>, "collation": <document>, "arrayFilters": [ <filterdocument1>, ... ], "hint": <document|string> } } ] )
Field | Notes |
|---|---|
| The selection criteria for the update. The same query
selectors as in the
|
| The update operation to perform. Can specify either:
|
| Optional. A boolean to indicate whether to perform an upsert. By default, |
| Optional. An array of filter documents that determine which array elements to modify for an update operation on an array field. |
| Optional. Specifies the collation to use for the operation. |
| Optional. The index to use to support the
update |
For details, see db.collection.updateOne() and
db.collection.updateMany().
replaceOne
replaceOne replaces a single document in the collection that matches the
filter. If multiple documents match, replaceOne will replace the first
matching document only.
db.collection.bulkWrite([ { replaceOne : { "filter" : <document>, "replacement" : <document>, "upsert" : <boolean>, "collation": <document>, "hint": <document|string> } } ] )
Field | Notes |
|---|---|
| The selection criteria for the replacement operation. The same
query selectors as in the
|
| The replacement document. The document cannot contain update operators. |
| Optional. A boolean to indicate whether to perform an upsert. By
default, |
| Optional. Specifies the collation to use for the operation. |
| Optional. The index to use to support the
update |
For details, see to db.collection.replaceOne().
deleteOne and deleteMany
deleteOne deletes a single document in the collection that match the
filter. If multiple documents match, deleteOne will delete the first
matching document only.
db.collection.bulkWrite([ { deleteOne : { "filter" : <document>, "collation" : <document> // Available starting in 3.4 } } ] )
deleteMany deletes all documents in the collection
that match the filter.
db.collection.bulkWrite([ { deleteMany: { "filter" : <document>, "collation" : <document> // Available starting in 3.4 } } ] )
Field | Notes |
|---|---|
| The selection criteria for the delete operation. The same
query selectors as in the
|
| Optional. Specifies the collation to use for the operation. |
For details, see db.collection.deleteOne() and
db.collection.deleteMany().
_id Field
If the document does not specify an _id field, then mongod
adds the _id field and assign a unique
ObjectId() for the document before inserting or upserting it.
Most drivers create an ObjectId and insert the _id field, but the
mongod will create and populate the _id if the driver or
application does not.
If the document contains an _id field, the _id value must be
unique within the collection to avoid duplicate key error.
Update or replace operations cannot specify an _id value that differs
from the original document.
Execution of Operations
The ordered parameter specifies whether
bulkWrite() will execute operations in order or not.
By default, operations are executed in order.
The following code represents a bulkWrite() with
five operations.
db.collection.bulkWrite( [ { insertOne : <document> }, { updateOne : <document> }, { updateMany : <document> }, { replaceOne : <document> }, { deleteOne : <document> }, { deleteMany : <document> } ] )
In the default ordered : true state, each operation will
be executed in order, from the first operation insertOne
to the last operation deleteMany.
If ordered is set to false, operations may be reordered by
mongod to increase performance.
Applications should not depend on order of operation execution.
The following code represents an unordered
bulkWrite() with six operations:
db.collection.bulkWrite( [ { insertOne : <document> }, { updateOne : <document> }, { updateMany : <document> }, { replaceOne : <document> }, { deleteOne : <document> }, { deleteMany : <document> } ], { ordered : false } )
With ordered : false, the results of the operation may vary. For example,
the deleteOne or deleteMany may remove more or fewer documents
depending on whether the run before or after the insertOne, updateOne,
updateMany, or replaceOne operations.
The number of operations in each group cannot exceed the value of
the maxWriteBatchSize of
the database. The default value of maxWriteBatchSize is
100,000. This value is shown in the
hello.maxWriteBatchSize field.
This limit prevents issues with oversized error messages. If a group
exceeds this limit,
the client driver divides the group into smaller groups with counts
less than or equal to the value of the limit. For example, with the
maxWriteBatchSize value of 100,000, if the queue consists of
200,000 operations, the driver creates 2 groups, each with
100,000 operations.
Note
The driver only divides the group into smaller groups when using
the high-level API. If using db.runCommand() directly
(for example, when writing a driver), MongoDB throws an error when
attempting to execute a write batch which exceeds the limit.
If the error report for a single batch grows too large, MongoDB
truncates all remaining error messages to the empty string. If there
are at least two error messages with total size greater than 1MB,
they are trucated.
The sizes and grouping mechanics are internal performance details and are subject to change in future versions.
Executing an ordered list of operations on a
sharded collection will generally be slower than executing an
unordered list
since with an ordered list, each operation must wait for the previous
operation to finish.
Capped Collections
bulkWrite() write operations have restrictions when
used on a capped collection.
updateOne and updateMany throw a WriteError if the
update criteria increases the size of the document being modified.
replaceOne throws a WriteError if the
replacement document has a larger size than the original
document.
deleteOne and deleteMany throw a WriteError if used on a
capped collection.
Time Series Collections
bulkWrite() write operations have restrictions
when used on a time series collection. Only insertOne can be
used on time series collections. All other operations will return a
WriteError.
Error Handling
db.collection.bulkWrite() throws a BulkWriteError
exception on errors. See Error Handling inside Transactions.
Excluding write concern errors, ordered operations stop after an error, while unordered operations continue to process any remaining write operations in the queue, unless when run inside a transaction. See Error Handling inside Transactions.
Write concern errors are displayed in the writeConcernErrors field, while
all other errors are displayed in the writeErrors field. If an error is
encountered, the number of successful write operations are displayed instead
of the inserted _id values. Ordered operations display the single error
encountered while unordered operations display each error in an array.
Schema Validation Errors
If your collection uses schema validation and has validationAction set to
error, inserting an invalid document or updating a document with
invalid values throws an error. Operations preceding the invalid
operation in the operations array are executed and written to the
collection. The ordered field determines if the remaining
operations are executed.
Transactions
db.collection.bulkWrite() can be used inside distributed transactions.
Important
In most cases, a distributed transaction incurs a greater performance cost over single document writes, and the availability of distributed 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 distributed transactions.
For additional transactions usage considerations (such as runtime limit and oplog size limit), see also Production Considerations.
Inserts and Upserts within Transactions
For feature compatibility version (fcv) "4.4"
and greater, if an insert operation or update operation with
upsert: true is run in a transaction against a non-existing
collection, the collection is implicitly created.
Note
You cannot create new collections in cross-shard write transactions. For example, if you write to an existing collection in one shard and implicitly create a collection in a different shard, MongoDB cannot perform both operations in the same transaction.
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.
Error Handling inside Transactions
Starting in MongoDB 4.2, if a db.collection.bulkWrite()
operation encounters an error inside a transaction, the method throws a BulkWriteException (same as outside a transaction).
In 4.0, if the bulkWrite operation encounters an error inside a
transaction, the error thrown is not wrapped as a
BulkWriteException.
Inside a transaction, the first error in a bulk write causes the entire bulk write to fail and aborts the transaction, even if the bulk write is unordered.
Examples
Ordered Bulk Write Example
It is important that you understand bulkWrite()
operation ordering and error handling. By default,
bulkWrite() runs an ordered list of operations:
Operations run serially.
If an operation has an error, that operation and any following operations are not run.
Operations listed before the error operation are completed.
The bulkWrite() examples use the pizzas
collection:
db.pizzas.insertMany( [ { _id: 0, type: "pepperoni", size: "small", price: 4 }, { _id: 1, type: "cheese", size: "medium", price: 7 }, { _id: 2, type: "vegan", size: "large", price: 8 } ] )
The following bulkWrite() example runs
these operations on the pizzas collection:
Adds two documents using
insertOne.Updates a document using
updateOne.Deletes a document using
deleteOne.Replaces a document using
replaceOne.
try { db.pizzas.bulkWrite( [ { insertOne: { document: { _id: 3, type: "beef", size: "medium", price: 6 } } }, { insertOne: { document: { _id: 4, type: "sausage", size: "large", price: 10 } } }, { updateOne: { filter: { type: "cheese" }, update: { $set: { price: 8 } } } }, { deleteOne: { filter: { type: "pepperoni"} } }, { replaceOne: { filter: { type: "vegan" }, replacement: { type: "tofu", size: "small", price: 4 } } } ] ) } catch( error ) { print( error ) }
Example output, which includes a summary of the completed operations:
{ acknowledged: true, insertedCount: 2, insertedIds: { '0': 3, '1': 4 }, matchedCount: 2, modifiedCount: 2, deletedCount: 1, upsertedCount: 0, upsertedIds: {} }
If the collection already contained a document with an _id of 4
before running the previous bulkWrite()
example, the following duplicate key exception is returned for the
second insertOne operation:
writeErrors: [ WriteError { err: { index: 1, code: 11000, errmsg: 'E11000 duplicate key error collection: test.pizzas index: _id_ dup key: { _id: 4 }', op: { _id: 4, type: 'sausage', size: 'large', price: 10 } } } ], result: BulkWriteResult { result: { ok: 1, writeErrors: [ WriteError { err: { index: 1, code: 11000, errmsg: 'E11000 duplicate key error collection: test.pizzas index: _id_ dup key: { _id: 4 }', op: { _id: 4, type: 'sausage', size: 'large', price: 10 } } } ], writeConcernErrors: [], insertedIds: [ { index: 0, _id: 3 }, { index: 1, _id: 4 } ], nInserted: 1, nUpserted: 0, nMatched: 0, nModified: 0, nRemoved: 0, upserted: [] } }
Because the bulkWrite() example is ordered,
only the first insertOne operation is completed.
To complete all operations that do not have errors, run
bulkWrite() with ordered set to false.
For an example, see the following section.
Unordered Bulk Write Example
To specify an unordered bulkWrite(), set
ordered to false.
In an unordered bulkWrite() list of operations:
Operations can run in parallel (not guaranteed). For details. See Ordered vs Unordered Operations.
Operations with errors are not completed.
All operations without errors are completed.
Continuing the pizzas collection example, drop and recreate the
collection:
db.pizzas.insertMany( [ { _id: 0, type: "pepperoni", size: "small", price: 4 }, { _id: 1, type: "cheese", size: "medium", price: 7 }, { _id: 2, type: "vegan", size: "large", price: 8 } ] )
In the following example:
bulkWrite()runs unordered operations on thepizzascollection.The second
insertOneoperation has the same_idas the firstinsertOne, which causes a duplicate key error.
try { db.pizzas.bulkWrite( [ { insertOne: { document: { _id: 3, type: "beef", size: "medium", price: 6 } } }, { insertOne: { document: { _id: 3, type: "sausage", size: "large", price: 10 } } }, { updateOne: { filter: { type: "cheese" }, update: { $set: { price: 8 } } } }, { deleteOne: { filter: { type: "pepperoni"} } }, { replaceOne: { filter: { type: "vegan" }, replacement: { type: "tofu", size: "small", price: 4 } } } ], { ordered: false } ) } catch( error ) { print( error ) }
Example output, which includes the duplicate key error and a summary of the completed operations:
writeErrors: [ WriteError { err: { index: 1, code: 11000, errmsg: 'E11000 duplicate key error collection: test.pizzas index: _id_ dup key: { _id: 3 }', op: { _id: 3, type: 'sausage', size: 'large', price: 10 } } } ], result: BulkWriteResult { result: { ok: 1, writeErrors: [ WriteError { err: { index: 1, code: 11000, errmsg: 'E11000 duplicate key error collection: test.pizzas index: _id_ dup key: { _id: 3 }', op: { _id: 3, type: 'sausage', size: 'large', price: 10 } } } ], writeConcernErrors: [], insertedIds: [ { index: 0, _id: 3 }, { index: 1, _id: 3 } ], nInserted: 1, nUpserted: 0, nMatched: 2, nModified: 2, nRemoved: 1, upserted: [] } }
The second insertOne operation fails because of the duplicate key
error. In an unordered bulkWrite(), any
operation without an error is completed.
Bulk Write with Write Concern Example
Continuing the pizzas collection example, drop and recreate the
collection:
db.pizzas.insertMany( [ { _id: 0, type: "pepperoni", size: "small", price: 4 }, { _id: 1, type: "cheese", size: "medium", price: 7 }, { _id: 2, type: "vegan", size: "large", price: 8 } ] )
The following bulkWrite() example runs
operations on the pizzas collection and sets a "majority"
write concern with a 100 millisecond timeout:
try { db.pizzas.bulkWrite( [ { updateMany: { filter: { size: "medium" }, update: { $inc: { price: 0.1 } } } }, { updateMany: { filter: { size: "small" }, update: { $inc: { price: -0.25 } } } }, { deleteMany: { filter: { size: "large" } } }, { insertOne: { document: { _id: 4, type: "sausage", size: "small", price: 12 } } } ], { writeConcern: { w: "majority", wtimeout: 100 } } ) } catch( error ) { print( error ) }
If the time for the majority of replica set members to acknowledge the
operations exceeds wtimeout, the example returns a write concern
error and a summary of completed operations:
result: BulkWriteResult { result: { ok: 1, writeErrors: [], writeConcernErrors: [ WriteConcernError { err: { code: 64, codeName: 'WriteConcernTimeout', errmsg: 'waiting for replication timed out', errInfo: { wtimeout: true, writeConcern: [Object] } } } ], insertedIds: [ { index: 3, _id: 4 } ], nInserted: 0, nUpserted: 0, nMatched: 2, nModified: 2, nRemoved: 0, upserted: [], opTime: { ts: Timestamp({ t: 1660329086, i: 2 }), t: Long("1") } } }