On-Demand Materialized Views
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Note
Disambiguation
This page discusses on-demand materialized views. For discussion of standard views, see Views.
To understand the differences between the view types, see Comparison with Standard Views.
An on-demand materialized view is a pre-computed aggregation pipeline
result that is stored on and read from disk. On-demand materialized
views are typically the results of a $merge
or
$out
stage.
Comparison with Standard Views
MongoDB provides two different view types: standard views and on-demand materialized views. Both view types return the results from an aggregation pipeline.
Standard views are computed when you read the view, and are not stored to disk.
On-demand materialized views are stored on and read from disk. They use a
$merge
or$out
stage to update the saved data.Note
When using
$merge
, you can use change streams to watch for changes on the materialized view. When using$out
, you can't watch for changes on the materialized view.
Indexes
Standard views use the indexes of the underlying collection. As a result, you cannot create, drop or re-build indexes on a standard view directly, nor get a list of indexes on the view.
You can create indexes directly on on-demand materialized views because they are stored on disk.
Performance
On-demand materialized views provide better read performance than standard views because they are read from disk instead of computed as part of the query. This performance benefit increases based on the complexity of the pipeline and size of the data being aggregated.
Create a Materialized View in the MongoDB Atlas UI
The example in this section uses the sample movies dataset. To learn how to load the sample dataset into your MongoDB Atlas deployment, see Load Sample Data.
To create a materialized view in the MongoDB Atlas UI, follow these steps:
In the MongoDB Atlas UI, go to the Clusters page for your project.
If it's not already displayed, select the organization that contains your desired project from the Organizations menu in the navigation bar.
If it's not already displayed, select your project from the Projects menu in the navigation bar.
If it's not already displayed, click Clusters in the sidebar.
The Clusters page displays.
Select an aggregation stage from the Select drop-down menu
The aggregation stage transforms the data that you want to save as a view. To learn more about available aggregation stages, see Aggregation Stages.
For this example, add a new field with the $set
stage:
Select
$set
from the Select drop-down menu.Add the following syntax to the aggregation pipeline editor to create an average score across all
score
values in thescores
array within thegrades
collection:{ averageScore: { $avg: "$scores.score" } } MongoDB Atlas adds the
averageScore
value to each document.
Add the $out
stage
Select the
$out
stage from the Select drop-down menu.Add the following syntax to the aggregation pipeline to write the results of the pipeline to the
myView
collection in thesample_training
database:'myView' Click Save Documents.
The $out
stage writes the results of the
aggregation pipeline to the specified collection, which creates
the view. To learn more, see $out
.
Refresh the list of collections to see the myView
collection.
To learn how to query the myView
collection in the MongoDB Atlas
UI, see View, Filter, and Sort Documents in the
MongoDB Atlas documentation.
Example
Assume near the end of January 2019, the collection bakesales
contains the sales information by items:
db.bakesales.insertMany( [ { date: new ISODate("2018-12-01"), item: "Cake - Chocolate", quantity: 2, amount: new NumberDecimal("60") }, { date: new ISODate("2018-12-02"), item: "Cake - Peanut Butter", quantity: 5, amount: new NumberDecimal("90") }, { date: new ISODate("2018-12-02"), item: "Cake - Red Velvet", quantity: 10, amount: new NumberDecimal("200") }, { date: new ISODate("2018-12-04"), item: "Cookies - Chocolate Chip", quantity: 20, amount: new NumberDecimal("80") }, { date: new ISODate("2018-12-04"), item: "Cake - Peanut Butter", quantity: 1, amount: new NumberDecimal("16") }, { date: new ISODate("2018-12-05"), item: "Pie - Key Lime", quantity: 3, amount: new NumberDecimal("60") }, { date: new ISODate("2019-01-25"), item: "Cake - Chocolate", quantity: 2, amount: new NumberDecimal("60") }, { date: new ISODate("2019-01-25"), item: "Cake - Peanut Butter", quantity: 1, amount: new NumberDecimal("16") }, { date: new ISODate("2019-01-26"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") }, { date: new ISODate("2019-01-26"), item: "Cookies - Chocolate Chip", quantity: 12, amount: new NumberDecimal("48") }, { date: new ISODate("2019-01-26"), item: "Cake - Carrot", quantity: 2, amount: new NumberDecimal("36") }, { date: new ISODate("2019-01-26"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") }, { date: new ISODate("2019-01-27"), item: "Pie - Chocolate Cream", quantity: 1, amount: new NumberDecimal("20") }, { date: new ISODate("2019-01-27"), item: "Cake - Peanut Butter", quantity: 5, amount: new NumberDecimal("80") }, { date: new ISODate("2019-01-27"), item: "Tarts - Apple", quantity: 3, amount: new NumberDecimal("12") }, { date: new ISODate("2019-01-27"), item: "Cookies - Chocolate Chip", quantity: 12, amount: new NumberDecimal("48") }, { date: new ISODate("2019-01-27"), item: "Cake - Carrot", quantity: 5, amount: new NumberDecimal("36") }, { date: new ISODate("2019-01-27"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") }, { date: new ISODate("2019-01-28"), item: "Cookies - Chocolate Chip", quantity: 20, amount: new NumberDecimal("80") }, { date: new ISODate("2019-01-28"), item: "Pie - Key Lime", quantity: 3, amount: new NumberDecimal("60") }, { date: new ISODate("2019-01-28"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") }, ] );
1. Define the On-Demand Materialized View
The following updateMonthlySales
function defines a
monthlybakesales
materialized view that contains the cumulative
monthly sales information. In the example, the function takes a date
parameter to only update monthly sales information starting from a
particular date.
updateMonthlySales = function(startDate) { db.bakesales.aggregate( [ { $match: { date: { $gte: startDate } } }, { $group: { _id: { $dateToString: { format: "%Y-%m", date: "$date" } }, sales_quantity: { $sum: "$quantity"}, sales_amount: { $sum: "$amount" } } }, { $merge: { into: "monthlybakesales", whenMatched: "replace" } } ] ); };
The
$match
stage filters the data to process only those sales greater than or equal to thestartDate
.The
$group
stage groups the sales information by the year-month. The documents output by this stage have the form:{ "_id" : "<YYYY-mm>", "sales_quantity" : <num>, "sales_amount" : <NumberDecimal> } The
$merge
stage writes the output to themonthlybakesales
collection.Based on the
_id
field (the default for unsharded output collections), the stage checks if the document in the aggregation results matches an existing document in the collection:When there is a match (i.e. a document with the same year-month already exists in the collection), the stage replaces the existing document with the document from the aggregation results.
When there is not a match, the stage inserts the document from the aggregation results into the collection (the default behavior when not matched).
2. Perform Initial Run
For the initial run, you can pass in a date of new
ISODate("1970-01-01")
:
updateMonthlySales(new ISODate("1970-01-01"));
After the initial run, the monthlybakesales
contains the following
documents; i.e. db.monthlybakesales.find().sort( { _id: 1 } )
returns the following:
{ "_id" : "2018-12", "sales_quantity" : 41, "sales_amount" : NumberDecimal("506") } { "_id" : "2019-01", "sales_quantity" : 86, "sales_amount" : NumberDecimal("896") }
3. Refresh Materialized View
Assume that by the first week in February 2019, the bakesales
collection is updated with newer sales information; specifically,
additional January and February sales.
db.bakesales.insertMany( [ { date: new ISODate("2019-01-28"), item: "Cake - Chocolate", quantity: 3, amount: new NumberDecimal("90") }, { date: new ISODate("2019-01-28"), item: "Cake - Peanut Butter", quantity: 2, amount: new NumberDecimal("32") }, { date: new ISODate("2019-01-30"), item: "Cake - Red Velvet", quantity: 1, amount: new NumberDecimal("20") }, { date: new ISODate("2019-01-30"), item: "Cookies - Chocolate Chip", quantity: 6, amount: new NumberDecimal("24") }, { date: new ISODate("2019-01-31"), item: "Pie - Key Lime", quantity: 2, amount: new NumberDecimal("40") }, { date: new ISODate("2019-01-31"), item: "Pie - Banana Cream", quantity: 2, amount: new NumberDecimal("40") }, { date: new ISODate("2019-02-01"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") }, { date: new ISODate("2019-02-01"), item: "Tarts - Apple", quantity: 2, amount: new NumberDecimal("8") }, { date: new ISODate("2019-02-02"), item: "Cake - Chocolate", quantity: 2, amount: new NumberDecimal("60") }, { date: new ISODate("2019-02-02"), item: "Cake - Peanut Butter", quantity: 1, amount: new NumberDecimal("16") }, { date: new ISODate("2019-02-03"), item: "Cake - Red Velvet", quantity: 5, amount: new NumberDecimal("100") } ] )
To refresh the monthlybakesales
data for January and February, run
the function again to rerun the aggregation pipeline, starting with
new ISODate("2019-01-01")
.
updateMonthlySales(new ISODate("2019-01-01"));
The content of monthlybakesales
has been updated to reflect the
most recent data in the bakesales
collection; i.e.
db.monthlybakesales.find().sort( { _id: 1 } )
returns the following:
{ "_id" : "2018-12", "sales_quantity" : 41, "sales_amount" : NumberDecimal("506") } { "_id" : "2019-01", "sales_quantity" : 102, "sales_amount" : NumberDecimal("1142") } { "_id" : "2019-02", "sales_quantity" : 15, "sales_amount" : NumberDecimal("284") }
Additional Information
The $merge
stage:
Can output to a collection in the same or different database.
Creates a new collection if the output collection does not already exist.
Can incorporate results (insert new documents, merge documents, replace documents, keep existing documents, fail the operation, process documents with a custom update pipeline) into an existing collection.
Can output to a sharded collection. Input collection can also be sharded.
See $merge
for:
More information on
$merge
and available optionsExample: Only Insert New Data