About microbatch incremental models beta
The microbatch
strategy is available in beta for dbt Cloud Versionless and dbt Core v1.9. We have been developing it behind a flag to prevent unintended interactions with existing custom incremental strategies. To enable this feature, set the environment variable DBT_EXPERIMENTAL_MICROBATCH
to True
in your dbt Cloud environments or wherever you're running dbt Core.
Read and participate in the discussion: dbt-core#10672
What is "microbatch" in dbt?
Incremental models in dbt are a materialization designed to efficiently update your data warehouse tables by only transforming and loading new or changed data since the last run. Instead of reprocessing an entire dataset every time, incremental models process a smaller number of rows, and then append, update, or replace those rows in the existing table. This can significantly reduce the time and resources required for your data transformations.
Microbatch incremental models make it possible to process transformations on very large time-series datasets with efficiency and resiliency. When dbt runs a microbatch model — whether for the first time, during incremental runs, or in specified backfills — it will split the processing into multiple queries (or "batches"), based on the event_time
and batch_size
you configure.
Each "batch" corresponds to a single bounded time period (by default, a single day of data). Where other incremental strategies operate only on "old" and "new" data, microbatch models treat every batch as an atomic unit that can be built or replaced on its own. Each batch is independent and idempotent. This is a powerful abstraction that makes it possible for dbt to run batches separately — in the future, concurrently — and to retry them independently.
Example
A sessions
model is aggregating and enriching data that comes from two other models:
page_views
is a large, time-series table. It contains many rows, new records almost always arrive after existing ones, and existing records rarely update.customers
is a relatively small dimensional table. Customer attributes update often, and not in a time-based manner — that is, older customers are just as likely to change column values as newer customers.
The page_view_start
column in page_views
is configured as that model's event_time
. The customers
model does not configure an event_time
. Therefore, each batch of sessions
will filter page_views
to the equivalent time-bounded batch, and it will not filter customers
(a full scan for every batch).
models:
- name: page_views
config:
event_time: page_view_start
We run the sessions
model on October 1, 2024, and then again on October 2. It produces the following queries:
- Model definition
- Compiled (Oct 1, 2024)
- Compiled (Oct 2, 2024)
{{ config(
materialized='incremental',
incremental_strategy='microbatch',
event_time='session_start',
begin='2020-01-01',
batch_size='day'
) }}
with page_views as (
-- this ref will be auto-filtered
select * from {{ ref('page_views') }}
),
customers as (
-- this ref won't
select * from {{ ref('customers') }}
),
...
with page_views as (
select * from (
-- filtered on configured event_time
select * from "analytics"."page_views"
where page_view_start >= '2024-10-01 00:00:00' -- Oct 1
and page_view_start < '2024-10-02 00:00:00'
)
),
customers as (
select * from "analytics"."customers"
),
...
with page_views as (
select * from (
-- filtered on configured event_time
select * from "analytics"."page_views"
where page_view_start >= '2024-10-02 00:00:00' -- Oct 2
and page_view_start < '2024-10-03 00:00:00'
)
),
customers as (
select * from "analytics"."customers"
),
...
dbt will instruct the data platform to take the result of each batch query and insert, update, or replace the contents of the analytics.sessions
table for the same day of data. To perform this operation, dbt will use the most efficient atomic mechanism for "full batch" replacement that is available on each data platform.
It does not matter whether the table already contains data for that day, or not. Given the same input data, no matter how many times a batch is reprocessed, the resulting table is the same.
Relevant configs
Several configurations are relevant to microbatch models, and some are required:
Config | Type | Description | Default |
---|---|---|---|
event_time | Column (required) | The column indicating "at what time did the row occur." Required for your microbatch model and any direct parents that should be filtered. | N/A |
begin | Date (required) | The "beginning of time" for the microbatch model. This is the starting point for any initial or full-refresh builds. For example, a daily-grain microbatch model run on 2024-10-01 with begin = '2023-10-01 will process 366 batches (it's a leap year!) plus the batch for "today." | N/A |
batch_size | String (required) | The granularity of your batches. The default is day (and currently this is the only granularity supported). | day |
lookback | Integer (optional) | Process X batches prior to the latest bookmark to capture late-arriving records. | 0 |
As a best practice, we recommend configuring full_refresh: False
on microbatch models so that they ignore invocations with the --full-refresh
flag. If you need to reprocess historical data, do so with a targeted backfill that specifies explicit start and end dates.
Usage
You must write your model query to process (read and return) exactly one "batch" of data. This is a simplifying assumption and a powerful one:
- You don’t need to think about
is_incremental
filtering - You don't need to pick among DML strategies (upserting/merging/replacing)
- You can preview your model, and see the exact records for a given batch that will appear when that batch is processed and written to the table
When you run a microbatch model, dbt will evaluate which batches need to be loaded, break them up into a SQL query per batch, and load each one independently.
dbt will automatically filter upstream inputs (source
or ref
) that define event_time
, based on the lookback
and batch_size
configs for this model.
During standard incremental runs, dbt will process batches according to the current timestamp and the configured lookback
, with one query per batch.
Note: If there’s an upstream model that configures event_time
, but you don’t want the reference to it to be filtered, you can specify ref('upstream_model').render()
to opt-out of auto-filtering. This isn't generally recommended — most models which configure event_time
are fairly large, and if the reference is not filtered, each batch will perform a full scan of this input table.
Backfills
Whether to fix erroneous source data, or retroactively apply a change in business logic, you may need to reprocess a large amount of historical data.
Backfilling a microbatch model is as simple as selecting it to run or build, and specifying a "start" and "end" for event_time
. As always, dbt will process the batches between the start and end as independent queries.
dbt run --event-time-start "2024-09-01" --event-time-end "2024-09-04"
Retry
If one or more of your batches fail, you can use dbt retry
to reprocess only the failed batches.
Timezones
For now, dbt assumes that all values supplied are in UTC:
event_time
begin
--event-time-start
--event-time-end
While we may consider adding support for custom timezones in the future, we also believe that defining these values in UTC makes everyone's lives easier.
How microbatch
compares to other incremental strategies?
Most incremental models rely on the end user (you) to explicitly tell dbt what "new" means, in the context of each model, by writing a filter in an {% if is_incremental() %}
conditional block. You are responsible for crafting this SQL in a way that queries {{ this }}
to check when the most recent record was last loaded, with an optional look-back window for late-arriving records.
Other incremental strategies will control how the data is being added into the table — whether append-only insert
, delete
+ insert
, merge
, insert overwrite
, etc — but they all have this in common.
As an example:
{{
config(
materialized='incremental',
incremental_strategy='delete+insert',
unique_key='date_day'
)
}}
select * from {{ ref('stg_events') }}
{% if is_incremental() %}
-- this filter will only be applied on an incremental run
-- add a lookback window of 3 days to account for late-arriving records
where date_day >= (select {{ dbt.dateadd("day", -3, "max(date_day)") }} from {{ this }})
{% endif %}
For this incremental model:
- "New" records are those with a
date_day
greater than the maximumdate_day
that has previously been loaded - The lookback window is 3 days
- When there are new records for a given
date_day
, the existing data fordate_day
is deleted and the new data is inserted
Let’s take our same example from before, and instead use the new microbatch
incremental strategy:
{{
config(
materialized='incremental',
incremental_strategy='microbatch',
event_time='event_occured_at',
batch_size='day',
lookback=3,
begin='2020-01-01',
full_refresh=false
)
}}
select * from {{ ref('stg_events') }} -- this ref will be auto-filtered
Where you’ve also set an event_time
for the model’s direct parents - in this case stg_events
:
models:
- name: stg_events
config:
event_time: my_time_field
And that’s it!
When you run the model, each batch templates a separate query. For example, if you were running the model on October 1, dbt would template separate queries for each day between September 28 and October 1, inclusive — four batches in total.
The query for 2024-10-01
would look like:
select * from (
select * from "analytics"."stg_events"
where my_time_field >= '2024-10-01 00:00:00'
and my_time_field < '2024-10-02 00:00:00'
)
Based on your data platform, dbt will choose the most efficient atomic mechanism to insert, update, or replace these four batches (2024-09-28
, 2024-09-29
, 2024-09-30
, and 2024-10-01
) in the existing table.