The APPLY CHANGES APIs: Simplify change data capture with Delta Live Tables
Delta Live Tables simplifies change data capture (CDC) with the APPLY CHANGES
and APPLY CHANGES FROM SNAPSHOT
APIs. The interface you use depends on the source of change data:
Use
APPLY CHANGES
to process changes from a change data feed (CDF).Use
APPLY CHANGES FROM SNAPSHOT
(Public Preview) to process changes in database snapshots.
Previously, the MERGE INTO
statement was commonly used for processing CDC records on Databricks. However, MERGE INTO
can produce incorrect results because of out-of-sequence records or requires complex logic to re-order records.
The APPLY CHANGES
API is supported in the Delta Live Tables SQL and Python interfaces. The APPLY CHANGES FROM SNAPSHOT
API is supported in the Delta Live Tables Python interface.
Both APPLY CHANGES
and APPLY CHANGES FROM SNAPSHOT
support updating tables using SCD type 1 and type 2:
Use SCD type 1 to update records directly. History is not retained for updated records.
Use SCD type 2 to retain a history of records, either on all updates or on updates to a specified set of columns.
For syntax and other references, see:
Note
This article describes how to update tables in your Delta Live Tables pipeline based on changes in source data. To learn how to record and query row-level change information for Delta tables, see Use Delta Lake change data feed on Databricks.
Requirements
To use the CDC APIs, your pipeline must be configured to use serverless DLT pipelines or the Delta Live Tables Pro
or Advanced
editions.
How is CDC implemented with the APPLY CHANGES
API?
By automatically handling out-of-sequence records, the APPLY CHANGES
API in Delta Live Tables ensures correct processing of CDC records and removes the need to develop complex logic for handling out-of-sequence records. You must specify a column in the source data on which to sequence records, which Delta Live Tables interprets as a monotonically increasing representation of the proper ordering of the source data. Delta Live Tables automatically handles data that arrives out of order. For SCD type 2 changes, Delta Live Tables propagates the appropriate sequencing values to the target table’s __START_AT
and __END_AT
columns. There should be one distinct update per key at each sequencing value, and NULL sequencing values are unsupported.
To perform CDC processing with APPLY CHANGES
, you first create a streaming table and then use the APPLY CHANGES INTO
statement in SQL or the apply_changes()
function in Python to specify the source, keys, and sequencing for the change feed. To create the target streaming table, use the CREATE OR REFRESH STREAMING TABLE
statement in SQL or the create_streaming_table()
function in Python. See the SCD type 1 and type 2 processing examples.
For syntax details, see the Delta Live Tables SQL reference or Python reference.
How is CDC implemented with the APPLY CHANGES FROM SNAPSHOT
API?
Preview
The APPLY CHANGES FROM SNAPSHOT
API is in Public Preview.
APPLY CHANGES FROM SNAPSHOT
is a declarative API that efficiently determines changes in source data by comparing a series of in-order snapshots and then runs the processing required for CDC processing of the records in the snapshots. APPLY CHANGES FROM SNAPSHOT
is supported only by the Delta Live Tables Python interface.
APPLY CHANGES FROM SNAPSHOT
supports ingesting snapshots from multiple source types:
Use periodic snapshot ingestion to ingest snapshots from an existing table or view.
APPLY CHANGES FROM SNAPSHOT
has a simple, streamlined interface to support periodically ingesting snapshots from an existing database object. A new snapshot is ingested with each pipeline update, and the ingestion time is used as the snapshot version. When a pipeline is run in continuous mode, multiple snapshots are ingested with each pipeline update on a period determined by the trigger interval setting for the flow that contains the APPLY CHANGES FROM SNAPSHOT processing.Use historical snapshot ingestion to process files containing database snapshots, such as snapshots generated from an Oracle or MySQL database or a data warehouse.
To perform CDC processing from any source type with APPLY CHANGES FROM SNAPSHOT
, you first create a streaming table and then use the apply_changes_from_snapshot()
function in Python to specify the snapshot, keys, and other arguments required to implement the processing. See the periodic snapshot ingestion and historical snapshot ingestion examples.
The snapshots passed to the API must be in ascending order by version. If Delta Live Tables detects an out-of-order snapshot, an error is thrown.
For syntax details, see the Delta Live Tables Python reference.
Example: SCD type 1 and SCD type 2 processing with CDF source data
The following sections provide examples of Delta Live Tables SCD type 1 and type 2 queries that update target tables based on source events from a change data feed that:
Creates new user records.
Deletes a user record.
Updates user records. In the SCD type 1 example, the last
UPDATE
operations arrive late and are dropped from the target table, demonstrating the handling of out-of-order events.
The following examples assume familiarity with configuring and updating Delta Live Tables pipelines. See Tutorial: Run your first Delta Live Tables pipeline.
To run these examples, you must begin by creating a sample dataset. See Generate test data.
The following are the input records for these examples:
userId |
name |
city |
operation |
sequenceNum |
---|---|---|---|---|
124 |
Raul |
Oaxaca |
INSERT |
1 |
123 |
Isabel |
Monterrey |
INSERT |
1 |
125 |
Mercedes |
Tijuana |
INSERT |
2 |
126 |
Lily |
Cancun |
INSERT |
2 |
123 |
null |
null |
DELETE |
6 |
125 |
Mercedes |
Guadalajara |
UPDATE |
6 |
125 |
Mercedes |
Mexicali |
UPDATE |
5 |
123 |
Isabel |
Chihuahua |
UPDATE |
5 |
If you uncomment the final row in the example data, it will insert the following record that specifies where records should be truncated:
userId |
name |
city |
operation |
sequenceNum |
---|---|---|---|---|
null |
null |
null |
TRUNCATE |
3 |
Note
All the following examples include options to specify both DELETE
and TRUNCATE
operations, but each is optional.
Process SCD type 1 updates
The following example demonstrates processing SCD type 1 updates:
import dlt
from pyspark.sql.functions import col, expr
@dlt.view
def users():
return spark.readStream.table("cdc_data.users")
dlt.create_streaming_table("target")
dlt.apply_changes(
target = "target",
source = "users",
keys = ["userId"],
sequence_by = col("sequenceNum"),
apply_as_deletes = expr("operation = 'DELETE'"),
apply_as_truncates = expr("operation = 'TRUNCATE'"),
except_column_list = ["operation", "sequenceNum"],
stored_as_scd_type = 1
)
-- Create and populate the target table.
CREATE OR REFRESH STREAMING TABLE target;
APPLY CHANGES INTO
live.target
FROM
stream(cdc_data.users)
KEYS
(userId)
APPLY AS DELETE WHEN
operation = "DELETE"
APPLY AS TRUNCATE WHEN
operation = "TRUNCATE"
SEQUENCE BY
sequenceNum
COLUMNS * EXCEPT
(operation, sequenceNum)
STORED AS
SCD TYPE 1;
After running the SCD type 1 example, the target table contains the following records:
userId |
name |
city |
---|---|---|
124 |
Raul |
Oaxaca |
125 |
Mercedes |
Guadalajara |
126 |
Lily |
Cancun |
After running the SCD type 1 example with the additional TRUNCATE
record, records 124
and 126
are truncated because of the TRUNCATE
operation at sequenceNum=3
, and the target table contains the following record:
userId |
name |
city |
---|---|---|
125 |
Mercedes |
Guadalajara |
Process SCD type 2 updates
The following example demonstrates processing SCD type 2 updates:
import dlt
from pyspark.sql.functions import col, expr
@dlt.view
def users():
return spark.readStream.table("cdc_data.users")
dlt.create_streaming_table("target")
dlt.apply_changes(
target = "target",
source = "users",
keys = ["userId"],
sequence_by = col("sequenceNum"),
apply_as_deletes = expr("operation = 'DELETE'"),
except_column_list = ["operation", "sequenceNum"],
stored_as_scd_type = "2"
)
-- Create and populate the target table.
CREATE OR REFRESH STREAMING TABLE target;
APPLY CHANGES INTO
live.target
FROM
stream(cdc_data.users)
KEYS
(userId)
APPLY AS DELETE WHEN
operation = "DELETE"
SEQUENCE BY
sequenceNum
COLUMNS * EXCEPT
(operation, sequenceNum)
STORED AS
SCD TYPE 2;
After running the SCD type 2 example, the target table contains the following records:
userId |
name |
city |
__START_AT |
__END_AT |
---|---|---|---|---|
123 |
Isabel |
Monterrey |
1 |
5 |
123 |
Isabel |
Chihuahua |
5 |
6 |
124 |
Raul |
Oaxaca |
1 |
null |
125 |
Mercedes |
Tijuana |
2 |
5 |
125 |
Mercedes |
Mexicali |
5 |
6 |
125 |
Mercedes |
Guadalajara |
6 |
null |
126 |
Lily |
Cancun |
2 |
null |
An SCD type 2 query can also specify a subset of output columns to be tracked for history in the target table. Changes to other columns are updated in place rather than generating new history records. The following example demonstrates excluding the city
column from tracking:
The following example demonstrates using track history with SCD type 2:
import dlt
from pyspark.sql.functions import col, expr
@dlt.view
def users():
return spark.readStream.table("cdc_data.users")
dlt.create_streaming_table("target")
dlt.apply_changes(
target = "target",
source = "users",
keys = ["userId"],
sequence_by = col("sequenceNum"),
apply_as_deletes = expr("operation = 'DELETE'"),
except_column_list = ["operation", "sequenceNum"],
stored_as_scd_type = "2",
track_history_except_column_list = ["city"]
)
-- Create and populate the target table.
CREATE OR REFRESH STREAMING TABLE target;
APPLY CHANGES INTO
live.target
FROM
stream(cdc_data.users)
KEYS
(userId)
APPLY AS DELETE WHEN
operation = "DELETE"
SEQUENCE BY
sequenceNum
COLUMNS * EXCEPT
(operation, sequenceNum)
STORED AS
SCD TYPE 2
TRACK HISTORY ON * EXCEPT
(city)
After running this example without the additional TRUNCATE
record, the target table contains the following records:
userId |
name |
city |
__START_AT |
__END_AT |
---|---|---|---|---|
123 |
Isabel |
Chihuahua |
1 |
6 |
124 |
Raul |
Oaxaca |
1 |
null |
125 |
Mercedes |
Guadalajara |
2 |
null |
126 |
Lily |
Cancun |
2 |
null |
Generate test data
The code below is provided to generate an example dataset for use in the example queries present in this tutorial. Assuming that you have the proper credentials to create a new schema and create a new table, you can run these statements with either a notebook or Databricks SQL. The following code is not intended to be run as part of a Delta Live Tables pipeline:
CREATE SCHEMA IF NOT EXISTS cdc_data;
CREATE TABLE
cdc_data.users
AS SELECT
col1 AS userId,
col2 AS name,
col3 AS city,
col4 AS operation,
col5 AS sequenceNum
FROM (
VALUES
-- Initial load.
(124, "Raul", "Oaxaca", "INSERT", 1),
(123, "Isabel", "Monterrey", "INSERT", 1),
-- New users.
(125, "Mercedes", "Tijuana", "INSERT", 2),
(126, "Lily", "Cancun", "INSERT", 2),
-- Isabel is removed from the system and Mercedes moved to Guadalajara.
(123, null, null, "DELETE", 6),
(125, "Mercedes", "Guadalajara", "UPDATE", 6),
-- This batch of updates arrived out of order. The above batch at sequenceNum 5 will be the final state.
(125, "Mercedes", "Mexicali", "UPDATE", 5),
(123, "Isabel", "Chihuahua", "UPDATE", 5)
-- Uncomment to test TRUNCATE.
-- ,(null, null, null, "TRUNCATE", 3)
);
Example: Periodic snapshot processing
The following example demonstrates SCD type 2 processing that ingests snapshots of a table stored at mycatalog.myschema.mytable
. The results of processing are written to a table named target
.
mycatalog.myschema.mytable
records at the timestamp 2024-01-01 00:00:00
Key |
Value |
---|---|
1 |
a1 |
2 |
a2 |
mycatalog.myschema.mytable
records at the timestamp 2024-01-01 12:00:00
Key |
Value |
---|---|
2 |
b2 |
3 |
a3 |
import dlt
@dlt.view(name="source")
def source():
return spark.read.table("mycatalog.myschema.mytable")
dlt.create_streaming_table("target")
dlt.apply_changes_from_snapshot(
target="target",
source="source",
keys=["key"],
stored_as_scd_type=2
)
After processing the snapshots, the target table contains the following records:
Key |
Value |
__START_AT |
__END_AT |
---|---|---|---|
1 |
a1 |
2024-01-01 00:00:00 |
2024-01-01 12:00:00 |
2 |
a2 |
2024-01-01 00:00:00 |
2024-01-01 12:00:00 |
2 |
b2 |
2024-01-01 12:00:00 |
null |
3 |
a3 |
2024-01-01 12:00:00 |
null |
Example: Historical snapshot processing
The following example demonstrates SCD type 2 processing that updates a target table based on source events from two snapshots stored in a cloud storage system:
Snapshot at timestamp
, stored in /<PATH>/filename1.csv
Key |
TrackingColumn |
NonTrackingColumn |
---|---|---|
1 |
a1 |
b1 |
2 |
a2 |
b2 |
4 |
a4 |
b4 |
Snapshot at timestamp + 5
, stored in /<PATH>/filename2.csv
Key |
TrackingColumn |
NonTrackingColumn |
---|---|---|
2 |
a2_new |
b2 |
3 |
a3 |
b3 |
4 |
a4 |
b4_new |
The following code example demonstrates processing SCD type 2 updates with these snapshots:
import dlt
def exist(file_name):
# Storage system-dependent function that returns true if file_name exists, false otherwise
# This function returns a tuple, where the first value is a DataFrame containing the snapshot
# records to process, and the second value is the snapshot version representing the logical
# order of the snapshot.
# Returns None if no snapshot exists.
def next_snapshot_and_version(latest_snapshot_version):
latest_snapshot_version = latest_snapshot_version or 0
next_version = latest_snapshot_version + 1
file_name = "dir_path/filename_" + next_version + ".csv"
if (exist(file_name)):
return (spark.read.load(file_name), next_version)
else:
# No snapshot available
return None
dlt.create_streaming_live_table("target")
dlt.apply_changes_from_snapshot(
target = "target",
source = next_snapshot_and_version,
keys = ["Key"],
stored_as_scd_type = 2,
track_history_column_list = ["TrackingCol"]
)
After processing the snapshots, the target table contains the following records:
Key |
TrackingColumn |
NonTrackingColumn |
__START_AT |
__END_AT |
---|---|---|---|---|
1 |
a1 |
b1 |
1 |
2 |
2 |
a2 |
b2 |
1 |
2 |
2 |
a2_new |
b2 |
2 |
null |
3 |
a3 |
b3 |
2 |
null |
4 |
a4 |
b4_new |
1 |
null |
Add, change, or delete data in a target streaming table
If your pipeline publishes tables to Unity Catalog, you can use data manipulation language (DML) statements, including insert, update, delete, and merge statements, to modify the target streaming tables created by APPLY CHANGES INTO
statements.
Note
DML statements that modify the table schema of a streaming table are not supported. Ensure that your DML statements do not attempt to evolve the table schema.
DML statements that update a streaming table can be run only in a shared Unity Catalog cluster or a SQL warehouse using Databricks Runtime 13.3 LTS and above.
Because streaming requires append-only data sources, if your processing requires streaming from a source streaming table with changes (for example, by DML statements), set the skipChangeCommits flag when reading the source streaming table. When
skipChangeCommits
is set, transactions that delete or modify records on the source table are ignored. If your processing does not require a streaming table, you can use a materialized view (which does not have the append-only restriction) as the target table.
Because Delta Live Tables uses a specified SEQUENCE BY
column and propagates appropriate sequencing values to the __START_AT
and __END_AT
columns of the target table (for SCD type 2), you must ensure that DML statements use valid values for these columns to maintain the proper ordering of records. See How is CDC implemented with the APPLY CHANGES API?.
For more information about using DML statements with streaming tables, see Add, change, or delete data in a streaming table.
The following example inserts an active record with a start sequence of 5:
INSERT INTO my_streaming_table (id, name, __START_AT, __END_AT) VALUES (123, 'John Doe', 5, NULL);
Read a change data feed from an APPLY CHANGES
target table
In Databricks Runtime 15.2 and above, you can read a change data feed from a streaming table that is the target of APPLY CHANGES
or APPLY CHANGES FROM SNAPSHOT
queries in the same way that you read a change data feed from other Delta tables. The following are required to read the change data feed from a target streaming table:
The target streaming table must be published to Unity Catalog. See Use Unity Catalog with your Delta Live Tables pipelines.
To read the change data feed from the target streaming table, you must use Databricks Runtime 15.2 or above. To read the change data feed in another Delta Live Tables pipeline, the pipeline must be configured to use Databricks Runtime 15.2 or above.
You read the change data feed from a target streaming table that was created in a Delta Live Tables pipeline the same way as reading a change data feed from other Delta tables. To learn more about using the Delta change data feed functionality, including examples in Python and SQL, see Use Delta Lake change data feed on Databricks.
Note
The change data feed record includes metadata identifying the type of change event. When a record is updated in a table, the metadata for the associated change records typically includes _change_type
values set to update_preimage
and update_postimage
events.
However, the _change_type
values are different if updates are made to the target streaming table that include changing primary key values. When changes include updates to primary keys, the _change_type
metadata fields are set to insert
and delete
events. Changes to primary keys can occur when manual updates are made to one of the key fields with an UPDATE
or MERGE
statement or, for SCD type 2 tables, when the __start_at
field changes to reflect an earlier start sequence value.
The APPLY CHANGES
query determines the primary key values, which differ for SCD type 1 and SCD type 2 processing:
For SCD type 1 processing and the Delta Live Tables Python interface, the primary key is the value of the
keys
parameter in theapply_changes()
function. For the Delta Live Tables SQL interface the primary key is the columns defined by theKEYS
clause in theAPPLY CHANGES INTO
statement.For SCD type 2, the primary key is the
keys
parameter orKEYS
clause plus the return value from thecoalesce(__START_AT, __END_AT)
operation, where__START_AT
and__END_AT
are the corresponding columns from the target streaming table.
Get data about records processed by a Delta Live Tables CDC query
Note
The following metrics are captured only by APPLY CHANGES
queries and not by APPLY CHANGES FROM SNAPSHOT
queries.
The following metrics are captured by APPLY CHANGES
queries:
num_upserted_rows
: The number of output rows upserted into the dataset during an update.num_deleted_rows
: The number of existing output rows deleted from the dataset during an update.
The num_output_rows
metric, output for non-CDC flows, is not captured for apply changes
queries.
What data objects are used for Delta Live Tables CDC processing?
Note: The following data structures apply only to APPLY CHANGES
processing, not APPLY CHANGES FROM SNAPSHOT
processing.
When you declare the target table in the Hive metastore, two data structures are created:
A view using the name assigned to the target table.
An internal backing table used by Delta Live Tables to manage CDC processing. This table is named by prepending
__apply_changes_storage_
to the target table name.
For example, if you declare a target table named dlt_cdc_target
, you will see a view named dlt_cdc_target
and a table named __apply_changes_storage_dlt_cdc_target
in the metastore. Creating a view allows Delta Live Tables to filter out the extra information (for example, tombstones and versions) required to handle out-of-order data. To view the processed data, query the target view. Because the schema of the __apply_changes_storage_
table might change to support future features or enhancements, you should not query the table for production use. If you add data manually to the table, the records are assumed to come before other changes because the version columns are missing.
If a pipeline publishes to Unity Catalog, the internal backing tables are inaccessible to users.