$median (aggregation)
Definition
$median
New in version 7.0.
Returns an approximation of the median, the 50th percentile, as a scalar value.
You can use
$median
as an accumulator in the$group
stage or as an aggegation expression.
Syntax
The syntax for $median
is:
{ $median: { input: <number>, method: <string> } }
Command Fields
$median
takes the following fields:
Field | Type | Necessity | Description |
---|---|---|---|
input | Expression | Required | $median calculates the 50th percentile value of this data.
input must be a field name or an expression that evaluates to
a numeric type. If the expression cannot be converted to a
numeric type, the $median calculation ignores it. |
method | String | Required | The method that mongod uses to calculate the 50th percentile
value. The method must be 'approximate' . |
Behavior
You can use $median
in:
$group
stages as an accumulator$setWindowFields
stages as an accumulator$project
stages as an aggregation expression
$median
has the following characteristics as an accumulator, it:
Calculates a single result for all the documents in the stage.
Uses the t-digest algorithm to calculate approximate, percentile based metrics.
Uses approximate methods to scale to large volumes of data.
$median
has the following characteristics as an aggregation
expression, it:
Accepts an array as input
Calculates a separate result for each input document
Type of Operation
In a $group
stage, $median
is an accumulator and calculates
a value for all documents in the window.
In a $project
stage, $median
is an aggregation expression and
calculates values for each document.
In $setWindowFields
stages, $median
returns a result
for each document like an aggregation expression, but the results are
computed over groups of documents like an accumulator.
Calculation Considerations
In $group
stages, $median
always uses an approximate
calculation method.
In $project
stages, $median
might use the discrete
calculation method even when the approximate method is specified.
In $setWindowFields
stages, the workload determines the calculation
method that $median
uses.
The computed percentiles $median
returns might vary, even on the
same datasets. This is because the algorithm calculates approximate
values.
Duplicate samples can cause ambiguity. If there are a large number of duplicates, the percentile values may not represent the actual sample distribution. Consider a data set where all the samples are the same. All of the values in the data set fall at or below any percentile. A "50th percentile" value would actually represent either 0 or 100 percent of the samples.
Array Input
If you use $median
as an aggregation expression in a
$project
stage, you can use an array as input.
$median
ignores non-numeric array values.
The syntax is:
{ $median: { input: [ <expression1, <expression2>, ..., <expressionN> ], method: <string> } }
Window Functions
A window function lets you calculate results over a moving "window" of
neighboring documents. As each document passes though the pipeline, the
$setWindowFields
stage:
Recomputes the set of documents in the current window
calculates a value for all documents in the set
returns a single value for that document
You can use $median
in a $setWindowFields
stage to calculate
rolling statistics for time series or
other related data.
When you use $median
in a $setWindowField
stage, the
input
value must be a field name. If you enter an array instead of a
field name, the operation fails.
Examples
The following examples use the testScores
collection. Create the
collection:
db.testScores.insertMany( [ { studentId: "2345", test01: 62, test02: 81, test03: 80 }, { studentId: "2356", test01: 60, test02: 83, test03: 79 }, { studentId: "2358", test01: 67, test02: 82, test03: 78 }, { studentId: "2367", test01: 64, test02: 72, test03: 77 }, { studentId: "2369", test01: 60, test02: 53, test03: 72 } ] )
Use $median
as an Accumulator
Create an accumulator that calculates the median value:
db.testScores.aggregate( [ { $group: { _id: null, test01_median: { $median: { input: "$test01", method: 'approximate' } } } } ] )
Output:
{ _id: null, test01_median: 62 }
The _id
field value is null
so $group
selects all the
documents in the collection.
The $median
accumulator takes its input from the test01
field. $median
calculates the median value for the field, 62
in this example.
Use $median
in a $project
Stage
In a $group
stage, $median
is an accumulator and calculates
a single value for all documents. In a $project
stage,
$median
is an aggregation expression and calculates values for
each document.
You can use a field name or an array as input in a $project
stage.
db.testScores.aggregate( [ { $project: { _id: 0, studentId: 1, testMedians: { $median: { input: [ "$test01", "$test02", "$test03" ], method: 'approximate' } } } } ] )
Output:
{ studentId: '2345', testMedians: 80 }, { studentId: '2356', testMedians: 79 }, { studentId: '2358', testMedians: 78 }, { studentId: '2367', testMedians: 72 }, { studentId: '2369', testMedians: 60 }
When $median
is an aggregation expression there is a result for
each studentId
.
Use $median
in a $setWindowField
Stage
To base your percentile values on local data trends, use $median
in a $setWindowField
aggregation pipeline stage.
This example creates a window to filter scores:
db.testScores.aggregate( [ { $setWindowFields: { sortBy: { test01: 1 }, output: { test01_median: { $median: { input: "$test01", method: 'approximate' }, window: { range: [ -3, 3 ] } } } } }, { $project: { _id: 0, studentId: 1, test01_median: 1 } } ] )
Output:
{ studentId: '2356', test01_median: 60 }, { studentId: '2369', test01_median: 60 }, { studentId: '2345', test01_median: 60 }, { studentId: '2367', test01_median: 64 }, { studentId: '2358', test01_median: 64 }
In this example, the median calculation for each document also incorporates data from the three documents before and after it.
Learn More
The $percentile
operator is a more general
version of the $median
operator that allows you to set one or
more percentile values.
For more information on window functions, see:
$setWindowFields
.