Getting started with pre-aggregations
Often at the beginning of an analytical application's lifecycle - when there is a smaller dataset that queries execute over - the application works well and delivers responses within acceptable thresholds. However, as the size of the dataset grows, the time-to-response from a user's perspective can often suffer quite heavily. This is true of both application and purpose-built data warehousing solutions.
This leaves us with a chicken-and-egg problem; application databases can deliver low-latency responses with small-to-large datasets, but struggle with massive analytical datasets; data warehousing solutions usually make no guarantees except to deliver a response, which means latency can vary wildly on a query-to-query basis.
Database Type | Low Latency? | Massive Datasets? |
---|---|---|
Application (Postgres/MySQL) | ✅ | ❌ |
Analytical (BigQuery/Redshift) | ❌ | ✅ |
Cube provides a solution to this problem: pre-aggregations. In layman's terms, a pre-aggregation is a condensed version of the source data. It specifies attributes from the source, which Cube uses to condense (or crunch) the data. This simple yet powerful optimization can reduce the size of the dataset by several orders of magnitude, and ensures subsequent queries can be served by the same condensed dataset if any matching attributes are found.
Pre-aggregations are defined within each cube's data schema, and cubes can have as many pre-aggregations as they require. The pre-aggregated data is stored in Cube Store, a dedicated pre-aggregation storage layer.
Pre-Aggregations without Time Dimension
To illustrate pre-aggregations with an example, let's use a sample e-commerce
database. We have a data model representing all our orders
:
cubes:
- name: orders
sql_table: orders
measures:
- name: count
type: count
dimensions:
- name: id
sql: id
type: number
primary_key: true
- name: status
sql: status
type: string
- name: completed_at
sql: completed_at
type: time
Some sample data from this table might look like:
id | status | completed_at |
---|---|---|
1 | completed | 2021-02-15T12:21:11.290 |
2 | completed | 2021-02-25T18:15:12.369 |
3 | shipped | 2021-03-15T20:40:57.404 |
4 | processing | 2021-03-13T10:30:21.360 |
5 | completed | 2021-03-10T18:25:32.109 |
Our first requirement is to populate a dropdown in our front-end application which shows all possible statuses. The Cube query to retrieve this information might look something like:
{
"dimensions": ["orders.status"]
}
In that case, we can add the following pre-aggregation to the orders
cube:
cubes:
- name: orders
# ...
pre_aggregations:
- name: order_statuses
dimensions:
- status
Pre-Aggregations with Time Dimension
Using the same data model as before, we are now finding that users frequently query for the number of orders completed per day, and that this query is performing poorly. This query might look something like:
{
"measures": ["orders.count"],
"timeDimensions": ["orders.completed_at"]
}
In order to improve the performance of this query, we can add another
pre-aggregation definition to the orders
cube:
cubes:
- name: orders
# ...
pre_aggregations:
- name: orders_by_completed_at
measures:
- count
time_dimension: completed_at
granularity: month
Note that we have added a granularity
property with a value of month
to this
definition. This allows Cube to aggregate the dataset to a single entry for each
month.
The next time the API receives the same JSON query, Cube will build (if it doesn't already exist) the pre-aggregated dataset, store it in the source database server and use that dataset for any subsequent queries. A sample of the data in this pre-aggregated dataset might look like:
completed_at | count |
---|---|
2021-02-01T00:00:00.000 | 2 |
2021-03-01T00:00:00.000 | 3 |
Keeping pre-aggregations up-to-date
Pre-aggregations can become out-of-date or out-of-sync if the original dataset changes. Cube uses a refresh key to check the freshness of the data; if a change in the refresh key is detected, the pre-aggregations are rebuilt. These refreshes are performed in the background as a scheduled process, unless configured otherwise.