Aggregation with User Preference Data
Data Model
Consider a sports club database with a members collection that
tracks members' names, join dates, and sport preferences:
db.members.insertMany( [ { _id: "jane", joined: ISODate("2011-03-02"), likes: ["golf", "racquetball"] }, { _id: "joe", joined: ISODate("2012-07-02"), likes: ["tennis", "golf", "swimming"] }, { _id: "ruth", joined: ISODate("2012-01-14"), likes: ["golf", "racquetball"] }, { _id: "harold", joined: ISODate("2012-01-21"), likes: ["handball", "golf", "racquetball"] }, { _id: "kate", joined: ISODate("2012-01-14"), likes: ["swimming", "tennis"] } ] )
Return a Single Field
The following operation uses $project to return only the
_id field for all documents in the members collection:
db.members.aggregate( [ { $project: { _id: 1 } } ] )
The operation returns the following documents:
[ { _id: 'jane' }, { _id: 'joe' }, { _id: 'ruth' }, { _id: 'harold' }, { _id: 'kate' } ]
For basic query and projection operations, standard queries with the
find() method have the best performance.
Normalize and Sort Documents
The following operation returns member names in upper case and in alphabetical order. You might do this to normalize member names for processing.
db.members.aggregate( [ { $project: { name: { $toUpper: "$_id" }, _id: 0 } }, { $sort: { name: 1 } } ] )
All documents from the members collection pass through the
pipeline, which consists of the following operations:
The operation returns the following result:
[ { name: 'HAROLD' }, { name: 'JANE' }, { name: 'JOE' }, { name: 'KATE' }, { name: 'RUTH' } ]
Return Usernames Ordered by Join Month
The following aggregation operation returns member names sorted by the month they joined. You might use this aggregation to help generate membership renewal notices.
db.members.aggregate( [ { $project: { month_joined: { $month: "$joined" }, name: "$_id", _id: 0 } }, { $sort: { month_joined: 1 } } ] )
The pipeline passes all documents in the members collection through
the following operations:
The
$projectoperator:Creates two new fields:
month_joinedandname.Suppresses the
idfrom the results. Theaggregate()method includes the_id, unless explicitly suppressed.
The
$monthoperator converts the values of thejoinedfield to integer representations of the month. Then the$projectoperator assigns those values to themonth_joinedfield.The
$sortoperator sorts the results by themonth_joinedfield.
The operation returns the following result:
[ { month_joined: 1, name: 'ruth' }, { month_joined: 1, name: 'harold' }, { month_joined: 1, name: 'kate' }, { month_joined: 3, name: 'jane' }, { month_joined: 7, name: 'joe' } ]
Return Total Number of Joins per Month
The following operation shows how many people joined each month of the year. You might use this aggregated data for recruiting and marketing strategies.
db.members.aggregate( [ { $project: { month_joined: { $month: "$joined" } } } , { $group: { _id: { month_joined: "$month_joined" } , number: { $sum: 1 } } }, { $sort: { "_id.month_joined": 1 } } ] )
The pipeline passes all documents in the members collection through
the following operations:
The
$projectoperator creates a new field calledmonth_joined.The
$monthoperator converts the values of thejoinedfield to integer representations of the month. Then the$projectoperator assigns the values to themonth_joinedfield.The
$groupoperator collects all documents with a givenmonth_joinedvalue and counts how many documents there are for that value. Specifically, for each unique value,$groupcreates a new "per-month" document with two fields:_id, which contains a nested document with themonth_joinedfield and its value.number, which is a generated field. The$sumoperator increments this field by 1 for every document containing the givenmonth_joinedvalue.
The
$sortoperator sorts the documents created by$groupaccording to the contents of themonth_joinedfield.
The aggregation operation returns the following documents:
[ { _id: { month_joined: 1 }, number: 3 }, { _id: { month_joined: 3 }, number: 1 }, { _id: { month_joined: 7 }, number: 1 } ]
Return the Five Most Common "Likes"
The following aggregation collects the top five most "liked" activities in the data set. This type of analysis could help inform planning and future development.
db.members.aggregate( [ { $unwind: "$likes" }, { $group: { _id: "$likes" , number: { $sum: 1 } } }, { $sort: { number: -1 } }, { $limit: 5 } ] )
The pipeline begins with all documents in the members collection,
and passes these documents through the following operations:
The
$unwindoperator separates each value in thelikesarray, and creates a new version of the source document for every element in the array.Example
Given the following document from the
memberscollection:{ _id: "jane", joined: ISODate("2011-03-02"), likes: ["golf", "racquetball"] } The
$unwindoperator outputs the following documents:{ _id: "jane", joined: ISODate("2011-03-02"), likes: "golf" } { _id: "jane", joined: ISODate("2011-03-02"), likes: "racquetball" } The
$groupoperator collects all documents with the same value for thelikesfield and counts each grouping. With this information,$groupcreates a new document with two fields:_id, which contains thelikesvalue.number, which is a generated field. The$sumoperator increments this field by 1 for every document containing the givenlikesvalue.
The
$sortoperator sorts these documents by thenumberfield in reverse order.The
$limitoperator only includes the first 5 result documents.
The aggregation operation returns the following documents:
[ { _id: 'golf', number: 4 }, { _id: 'racquetball', number: 3 }, { _id: 'tennis', number: 2 }, { _id: 'swimming', number: 2 }, { _id: 'handball', number: 1 } ]