Definition
$groupThe $group stage combines multiple documents with the same field, fields, or expression into a single document according to a group key. The result is one document per unique group key.
A group key is often a field, or group of fields. The group key can also be the result of an expression. Use the
_idfield in the$grouppipeline stage to set the group key. See below for usage examples.In the
$groupstage output, the_idfield is set to the group key for that document.The output documents can also contain additional fields that are set using accumulator expressions.
Note
$groupdoes not order its output documents.
Compatibility
You can use $group for deployments hosted in the following
environments:
MongoDB Atlas: The fully managed service for MongoDB deployments in the cloud
MongoDB Enterprise: The subscription-based, self-managed version of MongoDB
MongoDB Community: The source-available, free-to-use, and self-managed version of MongoDB
Syntax
The $group stage has the following prototype form:
{ $group: { _id: <expression>, // Group key <field1>: { <accumulator1> : <expression1> }, ... } }
Field | Description |
|---|---|
| Required. The |
| Optional. Computed using the accumulator operators. |
The _id and the accumulator operators
can accept any valid expression. For more information on
expressions, see Expressions.
Considerations
Performance
$group is a blocking stage, which causes the pipeline to wait for all
input data to be retrieved for the blocking stage before processing the
data. A blocking stage may reduce performance because it reduces
parallel processing for a pipeline with multiple stages. A blocking
stage may also use substantial amounts of memory for large data sets.
Accumulator Operator
The <accumulator> operator must be one of the following accumulator
operators:
Name | Description |
|---|---|
Returns the result of a user-defined accumulator function. | |
Returns an array of unique expression values for each group. Order of the array elements is undefined. Changed in version 5.0: Available in the | |
Returns an average of numerical values. Ignores non-numeric values. Changed in version 5.0: Available in the | |
Returns the bottom element within a group according to the specified sort order. New in version 5.2. Available in the | |
Returns an aggregation of the bottom New in version 5.2. Available in the | |
Returns a single array that combines the elements of two or more arrays. New in version 8.1. | |
Returns the number of documents in a group. Distinct from the New in version 5.0: Available in the | |
Returns the result of an expression for the first document in a group. Changed in version 5.0: Available in the | |
Returns an aggregation of the first New in version 5.2: Available in the | |
Returns the result of an expression for the last document in a group. Changed in version 5.0: Available in the | |
Returns an aggregation of the last New in version 5.2: Available in the | |
Returns the highest expression value for each group. Changed in version 5.0: Available in the | |
Returns an aggregation of the New in version 5.2. Available in | |
Returns an approximation of the median, the 50th percentile, as a scalar value. New in version 7.0. This operator is available as an accumulator in these stages: It is also available as an aggregation expression. | |
Returns a document created by combining the input documents for each group. | |
Returns the lowest expression value for each group. Changed in version 5.0: Available in the | |
Returns an aggregation of the New in version 5.2. Available in | |
Returns an array of scalar values that correspond to specified percentile values. New in version 7.0. This operator is available as an accumulator in these stages: It is also available as an aggregation expression. | |
Returns an array of expression values for documents in each group. Changed in version 5.0: Available in the | |
Takes two or more arrays and returns an array containing the elements that appear in any input array. New in version 8.1. | |
Returns the population standard deviation of the input values. Changed in version 5.0: Available in the | |
Returns the sample standard deviation of the input values. Changed in version 5.0: Available in the | |
Returns a sum of numerical values. Ignores non-numeric values. Changed in version 5.0: Available in the | |
Returns the top element within a group according to the specified sort order. New in version 5.2. Available in the | |
Returns an aggregation of the top New in version 5.2. Available in the |
$group and Memory Restrictions
If the $group stage exceeds 100 megabytes of RAM, MongoDB writes
data to temporary files. However, if the
allowDiskUse option is set to false,
$group returns an error. For more information, refer to
Aggregation Pipeline Limits.
$group Performance Optimizations
This section describes optimizations to improve the performance of
$group. There are optimizations that you can make manually
and optimizations MongoDB makes internally.
Optimization to Return the First or Last Document of Each Group
If a pipeline sorts and groups
by the same field and the $group stage only uses the $first
or $last accumulator operator, consider adding an index on the grouped field which matches the sort order. In some
cases, the $group stage can use the index to quickly find the first
or last document of each group.
Example
If a collection named foo contains an index { x: 1, y: 1 },
the following pipeline can use that index to find the first document
of each group:
db.foo.aggregate([ { $sort:{ x : 1, y : 1 } }, { $group: { _id: { x : "$x" }, y: { $first : "$y" } } } ])
Slot-Based Query Execution Engine
Starting in version 5.2, MongoDB uses the slot-based execution
query engine to execute $group stages
if either:
$groupis the first stage in the pipeline.All preceding stages in the pipeline can also be executed by the slot-based execution engine.
For more information, see $group Optimization.
Examples
Group and Count Documents By Field
In mongosh, create a sample collection named
sales with the following documents:
db.sales.insertMany([ { "_id" : 1, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("2"), "date" : ISODate("2014-03-01T08:00:00Z") }, { "_id" : 2, "item" : "jkl", "price" : Decimal128("20"), "quantity" : Int32("1"), "date" : ISODate("2014-03-01T09:00:00Z") }, { "_id" : 3, "item" : "xyz", "price" : Decimal128("5"), "quantity" : Int32( "10"), "date" : ISODate("2014-03-15T09:00:00Z") }, { "_id" : 4, "item" : "xyz", "price" : Decimal128("5"), "quantity" : Int32("20") , "date" : ISODate("2014-04-04T11:21:39.736Z") }, { "_id" : 5, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("10") , "date" : ISODate("2014-04-04T21:23:13.331Z") }, { "_id" : 6, "item" : "def", "price" : Decimal128("7.5"), "quantity": Int32("5" ) , "date" : ISODate("2015-06-04T05:08:13Z") }, { "_id" : 7, "item" : "def", "price" : Decimal128("7.5"), "quantity": Int32("10") , "date" : ISODate("2015-09-10T08:43:00Z") }, { "_id" : 8, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("5" ) , "date" : ISODate("2016-02-06T20:20:13Z") }, ])
The following aggregation operation uses the $group stage
to group documents in the sales collection by the price field.
One group contains the items with a price greater than or equal to 10.
The second group contains the number of items with a price less than 10. The pipeline then counts the number of documents in each group.
db.sales.aggregate( [ { $group: { _id: { $cond: { if: { $gte: [ "$price", Decimal128("10") ] }, then: "Price >= 10", else: "Price < 10" } }, count: { $sum: 1 } } } ] )
The operation returns the following result:
{ _id: 'Price >= 10', count: 4 }, { _id: 'Price < 10', count: 4 }
This aggregation operation is equivalent to the following SQL statement:
SELECT CASE WHEN price >= 10 THEN 'Price >= 10' ELSE 'Price < 10' END AS price_group, COUNT(*) AS count FROM sales GROUP BY price_group;
Retrieve Distinct Values
The following aggregation operation uses the $group stage
to retrieve the distinct item values from the sales collection:
db.sales.aggregate( [ { $group : { _id : "$item" } } ] )
The operation returns the following result:
{ "_id" : "abc" } { "_id" : "jkl" } { "_id" : "def" } { "_id" : "xyz" }
Note
For example, $group operations of the following form can result
in a DISTINCT_SCAN:
{ $group : { _id : "$<field>" } }
For more information on behavior for retrieving distinct values, see the distinct command behavior.
To see whether your operation results in a DISTINCT_SCAN, check
your operation's explain results.
Group by Item Having
The following aggregation operation groups documents by the item
field, calculating the total sale amount per item and returning only
the items with total sale amount greater than or equal to 100:
db.sales.aggregate( [ // First Stage { $group : { _id : "$item", totalSaleAmount: { $sum: { $multiply: [ "$price", "$quantity" ] } } } }, // Second Stage { $match: { "totalSaleAmount": { $gte: 100 } } } ] )
- First Stage:
- The
$groupstage groups the documents byitemto retrieve the distinct item values. This stage returns thetotalSaleAmountfor each item. - Second Stage:
- The
$matchstage filters the resulting documents to only return items with atotalSaleAmountgreater than or equal to 100.
The operation returns the following result:
{ "_id" : "abc", "totalSaleAmount" : Decimal128("170") } { "_id" : "xyz", "totalSaleAmount" : Decimal128("150") } { "_id" : "def", "totalSaleAmount" : Decimal128("112.5") }
This aggregation operation is equivalent to the following SQL statement:
SELECT item, Sum(( price * quantity )) AS totalSaleAmount FROM sales GROUP BY item HAVING totalSaleAmount >= 100
Tip
Calculate Count, Sum, and Average
In mongosh, create a sample collection named
sales with the following documents:
db.sales.insertMany([ { "_id" : 1, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("2"), "date" : ISODate("2014-03-01T08:00:00Z") }, { "_id" : 2, "item" : "jkl", "price" : Decimal128("20"), "quantity" : Int32("1"), "date" : ISODate("2014-03-01T09:00:00Z") }, { "_id" : 3, "item" : "xyz", "price" : Decimal128("5"), "quantity" : Int32( "10"), "date" : ISODate("2014-03-15T09:00:00Z") }, { "_id" : 4, "item" : "xyz", "price" : Decimal128("5"), "quantity" : Int32("20") , "date" : ISODate("2014-04-04T11:21:39.736Z") }, { "_id" : 5, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("10") , "date" : ISODate("2014-04-04T21:23:13.331Z") }, { "_id" : 6, "item" : "def", "price" : Decimal128("7.5"), "quantity": Int32("5" ) , "date" : ISODate("2015-06-04T05:08:13Z") }, { "_id" : 7, "item" : "def", "price" : Decimal128("7.5"), "quantity": Int32("10") , "date" : ISODate("2015-09-10T08:43:00Z") }, { "_id" : 8, "item" : "abc", "price" : Decimal128("10"), "quantity" : Int32("5" ) , "date" : ISODate("2016-02-06T20:20:13Z") }, ])
Group by Day of the Year
The following pipeline calculates the total sales amount, average sales quantity, and sale count for each day in the year 2014:
db.sales.aggregate([ // First Stage { $match : { "date": { $gte: new ISODate("2014-01-01"), $lt: new ISODate("2015-01-01") } } }, // Second Stage { $group : { _id : { $dateToString: { format: "%Y-%m-%d", date: "$date" } }, totalSaleAmount: { $sum: { $multiply: [ "$price", "$quantity" ] } }, averageQuantity: { $avg: "$quantity" }, count: { $sum: 1 } } }, // Third Stage { $sort : { totalSaleAmount: -1 } } ])
- First Stage:
- The
$matchstage filters the documents to only pass documents from the year 2014 to the next stage. - Second Stage:
- The
$groupstage groups the documents by date and calculates the total sale amount, average quantity, and total count of the documents in each group. - Third Stage:
- The
$sortstage sorts the results by the total sale amount for each group in descending order.
The operation returns the following results:
{ "_id" : "2014-04-04", "totalSaleAmount" : Decimal128("200"), "averageQuantity" : 15, "count" : 2 } { "_id" : "2014-03-15", "totalSaleAmount" : Decimal128("50"), "averageQuantity" : 10, "count" : 1 } { "_id" : "2014-03-01", "totalSaleAmount" : Decimal128("40"), "averageQuantity" : 1.5, "count" : 2 }
This aggregation operation is equivalent to the following SQL statement:
SELECT date, Sum(( price * quantity )) AS totalSaleAmount, Avg(quantity) AS averageQuantity, Count(*) AS Count FROM sales WHERE date >= '01/01/2014' AND date < '01/01/2015' GROUP BY date ORDER BY totalSaleAmount DESC
Tip
db.collection.countDocuments()which wraps the$groupaggregation stage with a$sumexpression.
Group by null
The following aggregation operation specifies a group _id of
null, calculating the total sale amount, average quantity, and count of
all documents in the collection.
db.sales.aggregate([ { $group : { _id : null, totalSaleAmount: { $sum: { $multiply: [ "$price", "$quantity" ] } }, averageQuantity: { $avg: "$quantity" }, count: { $sum: 1 } } } ])
The operation returns the following result:
{ "_id" : null, "totalSaleAmount" : Decimal128("452.5"), "averageQuantity" : 7.875, "count" : 8 }
This aggregation operation is equivalent to the following SQL statement:
SELECT Sum(price * quantity) AS totalSaleAmount, Avg(quantity) AS averageQuantity, Count(*) AS Count FROM sales
Tip
db.collection.countDocuments()which wraps the$groupaggregation stage with a$sumexpression.
Pivot Data
In mongosh, create a sample collection named
books with the following documents:
db.books.insertMany([ { "_id" : 8751, "title" : "The Banquet", "author" : "Dante", "copies" : 2 }, { "_id" : 8752, "title" : "Divine Comedy", "author" : "Dante", "copies" : 1 }, { "_id" : 8645, "title" : "Eclogues", "author" : "Dante", "copies" : 2 }, { "_id" : 7000, "title" : "The Odyssey", "author" : "Homer", "copies" : 10 }, { "_id" : 7020, "title" : "Iliad", "author" : "Homer", "copies" : 10 } ])
Group title by author
The following aggregation operation pivots the data in the books
collection to have titles grouped by authors.
db.books.aggregate([ { $group : { _id : "$author", books: { $push: "$title" } } } ])
The operation returns the following documents:
{ "_id" : "Homer", "books" : [ "The Odyssey", "Iliad" ] } { "_id" : "Dante", "books" : [ "The Banquet", "Divine Comedy", "Eclogues" ] }
Group Documents by author
The following aggregation operation groups documents by author:
db.books.aggregate([ // First Stage { $group : { _id : "$author", books: { $push: "$$ROOT" } } }, // Second Stage { $addFields: { totalCopies : { $sum: "$books.copies" } } } ])
- First Stage:
$groupuses the$$ROOTsystem variable to group the entire documents by authors. This stage passes the following documents to the next stage:{ "_id" : "Homer", "books" : [ { "_id" : 7000, "title" : "The Odyssey", "author" : "Homer", "copies" : 10 }, { "_id" : 7020, "title" : "Iliad", "author" : "Homer", "copies" : 10 } ] }, { "_id" : "Dante", "books" : [ { "_id" : 8751, "title" : "The Banquet", "author" : "Dante", "copies" : 2 }, { "_id" : 8752, "title" : "Divine Comedy", "author" : "Dante", "copies" : 1 }, { "_id" : 8645, "title" : "Eclogues", "author" : "Dante", "copies" : 2 } ] } - Second Stage:
$addFieldsadds a field to the output containing the total copies of books for each author.Note
The resulting documents must not exceed the BSON Document Size limit of 16 mebibytes.
The operation returns the following documents:
{ "_id" : "Homer", "books" : [ { "_id" : 7000, "title" : "The Odyssey", "author" : "Homer", "copies" : 10 }, { "_id" : 7020, "title" : "Iliad", "author" : "Homer", "copies" : 10 } ], "totalCopies" : 20 } { "_id" : "Dante", "books" : [ { "_id" : 8751, "title" : "The Banquet", "author" : "Dante", "copies" : 2 }, { "_id" : 8752, "title" : "Divine Comedy", "author" : "Dante", "copies" : 1 }, { "_id" : 8645, "title" : "Eclogues", "author" : "Dante", "copies" : 2 } ], "totalCopies" : 5 }
The C# examples on this page use the sample_mflix database
from the Atlas sample datasets. To learn how to create a
free MongoDB Atlas cluster and load the sample datasets, see
Get Started in the MongoDB .NET/C#
Driver documentation.
The following Movie class models the documents in the sample_mflix.movies
collection:
public class Movie { public ObjectId Id { get; set; } public int Runtime { get; set; } public string Title { get; set; } public string Rated { get; set; } public List<string> Genres { get; set; } public string Plot { get; set; } public ImdbData Imdb { get; set; } public int Year { get; set; } public int Index { get; set; } public string[] Comments { get; set; } [] public DateTime LastUpdated { get; set; } }
Note
ConventionPack for Pascal Case
The C# classes on this page use Pascal case for their property names, but the
field names in the MongoDB collection use camel case. To account for this difference,
you can use the following code to register a ConventionPack when your
application starts:
var camelCaseConvention = new ConventionPack { new CamelCaseElementNameConvention() }; ConventionRegistry.Register("CamelCase", camelCaseConvention, type => true);
To use the MongoDB .NET/C# driver to add a $group stage to an aggregation
pipeline, call the Group() method on a PipelineDefinition object.
The following example creates a pipeline stage that groups documents by the value of their Rated field. Each group's rating
is shown in a field named Rating in each output document. Each output
document also contains a field named TotalRuntime, whose value is
the total runtime of all movies in the group.
var pipeline = new EmptyPipelineDefinition<Movie>() .Group( id: m => m.Rated, group: g => new { Rating = g.Key, TotalRuntime = g.Sum(m => m.Runtime) } );
The Node.js examples on this page use the sample_mflix database from the
Atlas sample datasets. To learn how to create a free
MongoDB Atlas cluster and load the sample datasets, see Get Started in the MongoDB Node.js driver documentation.
To use the MongoDB Node.js driver to add a $group stage to an aggregation
pipeline, use the $group operator in a pipeline object.
The following example creates a pipeline stage that groups documents by the value of their rated field. Each output
document contains a rating field that stores each group's
rating. Each output document also contains a field named
totalRuntime that stores the total runtime of all movies in the
group. The
example then runs the aggregation pipeline:
const pipeline = [ { $group: { _id: "$rated", rating: { $first: "$rated" }, totalRuntime: { $sum: "$runtime" } } } ]; const cursor = collection.aggregate(pipeline); return cursor;
Learn More
The Group and Total Data tutorial provides an extensive example
of the $group operator in a common use case.
To learn more about related pipeline stages, see the $addFields
guide.