Databricks Delta Lake Sink Connector for Confluent Cloud¶
The fully-managed Databricks Delta Lake Sink connector for Confluent Cloud periodically polls data from Apache Kafka® and copies the data into an Amazon S3 staging bucket, and then commits these records to a Databricks Delta Lake instance.
Note the following considerations:
- The connector is available only on Amazon Web Services (AWS).
- The connector appends data only.
- The Amazon S3 bucket, the Delta Lake instance, and the Kafka cluster must be in the same region.
- The connector adds a field named
partition
. Your Delta Lake table must include a field named partition using type INT (partition INT
).
Refer to the Cloud connector limitations for additional information.
Note
This is a Quick Start for the fully-managed cloud connector. If you are installing the connector locally for Confluent Platform, see Databricks Delta Lake Sink Connector for Confluent Platform.
Features¶
The Databricks Delta Lake Sink connector provides the following features:
- Supports multiple tasks: The connector supports running one or more tasks. Refer to the limitations for additional information.
- Supported data formats: The connector supports input data from Kafka topics in Avro, JSON Schema, and Protobuf formats. You must enable Schema Registry to use a Schema Registry-based format (for example, Avro, JSON_SR (JSON Schema), or Protobuf). See Schema Registry Enabled Environments for additional information.
- Automatically creates tables: If you do not provide a table name, the connector can create a table using the originating Kafka topic name (that is–the configuration property defaults to
${topic}
).
For more information and examples to use with the Confluent Cloud API for Connect, see the Confluent Cloud API for Managed and Custom Connectors section.
Refer to the Cloud connector limitations for additional information.
See Configuration Properties for configuration property values and descriptions.
Quick Start¶
Important
Be sure to review and complete the tasks in Set up Databricks Delta Lake (AWS) Sink Connector for Confluent Cloud before configuring the connector.
Use this quick start to get up and running with the Confluent Cloud Databricks Delta Lake Sink connector. The quick start provides the basics of selecting the connector and configuring it to stream data.
- Prerequisites
- Authorized access to a Confluent Cloud cluster on AWS.
- All Databricks Delta Lake and AWS CloudFormation procedures completed. See Set up Databricks Delta Lake (AWS) Sink Connector for Confluent Cloud.
- The Confluent CLI installed and configured for the cluster. See Install the Confluent CLI.
- You must enable Schema Registry to use a Schema Registry-based format (for example, Avro, JSON_SR (JSON Schema), or Protobuf). See Schema Registry Enabled Environments for additional information.
- For networking considerations, see Networking and DNS. To use a set of public egress IP addresses, see Public Egress IP Addresses for Confluent Cloud Connectors.
- An AWS account configured with Access Keys. You use these access keys when setting up the connector.
- An AWS User Account IAM Policy configured for bucket access. Note that if you have an access policy (or policies) for Amazon S3 storage that includes a condition for NAT IPs, you must update your policy to also include Databricks VPC IDs for these S3 gateway endpoints. Resources to help you make this change and an example of the S3 policy can be found in the Databricks Community page.
- Kafka cluster credentials. The following lists the different ways you can provide credentials.
- Enter an existing service account resource ID.
- Create a Confluent Cloud service account for the connector. Make sure to review the ACL entries required in the service account documentation. Some connectors have specific ACL requirements.
- Create a Confluent Cloud API key and secret. To create a key and secret, you can use confluent api-key create or you can autogenerate the API key and secret directly in the Cloud Console when setting up the connector.
Using the Confluent Cloud Console¶
Step 1: Launch your Confluent Cloud cluster¶
See the Quick Start for Confluent Cloud for installation instructions.
Step 2: Add a connector¶
In the left navigation menu, click Connectors. If you already have connectors in your cluster, click + Add connector.
Step 4: Enter the connector details¶
Note
- Ensure you have all your prerequisites completed.
- An asterisk ( * ) designates a required entry.
At the Add Databricks Delta Lake Sink Connector screen, complete the following:
If you’ve already populated your Kafka topics, select the topics you want to connect from the Topics list.
To create a new topic, click +Add new topic.
- Select the way you want to provide Kafka Cluster credentials. You
can choose one of the following options:
- Global Access: Allows your connector to access everything you have access to. With global access, connector access will be linked to your account. This option is not recommended for production.
- Granular access: Limits the access for your connector. You will be able to manage connector access through a service account. This option is recommended for production.
- Use an existing API key: Allows you to enter an API key and secret part you have stored. You can enter an API key and secret (or generate these in the Cloud Console).
- Click Continue.
- Enter the following Databricks Delta Lake connection details. These
fields use information you get from Databricks and AWS. See
the Databricks Delta Lake setup procedure.
- Delta Lake Host Name: The host name used to connect to Delta
Lake. For example:
dbc-acdefg123456-hi78.cloud.databricks.com
. - Delta Lake HTTP Path: The HTTP path used to connect to Delta
Lake. For example:
sql/protocolv1/a/123456789/1234-5678-abcd9efg
. - Delta Lake Token: The personal access token used to authenticate the user when connecting to Delta Lake using JDBC.
- Delta Lake Catalog: The destination catalog under which the destination database and tables are located.
- Delta Lake Database: The destination database under which the destination tables are located.
- Delta Lake Host Name: The host name used to connect to Delta
Lake. For example:
- In the S3 Staging Bucket Name field, enter the S3 staging bucket where files get written to from Kafka and subsequently copied into the Databricks Delta Lake table.
- Visit your https://docs.aws.amazon.com/general/latest/gr/aws-sec-cred-types.html#access-keys-and-secret-access-keys and select a Key ID to provide S3 access to this Confluent connector. Enter the Access Key ID in the In the Staging S3 Access Key ID field.
- In the Staging S3 Secret Access Key field, enter your S3 secret access key.
- Click Continue.
Select the Input Kafka record value format (data coming from the Kafka topic): AVRO, JSON_SR (JSON Schema), or PROTOBUF. A valid schema must be available in Schema Registry to use a schema-based message format (for example, Avro, JSON_SR (JSON Schema), or Protobuf). See Schema Registry Enabled Environments for additional information.
Show advanced configurations
Schema context: Select a schema context to use for this connector, if using a schema-based data format. This property defaults to the Default context, which configures the connector to use the default schema set up for Schema Registry in your Confluent Cloud environment. A schema context allows you to use separate schemas (like schema sub-registries) tied to topics in different Kafka clusters that share the same Schema Registry environment. For example, if you select a non-default context, a Source connector uses only that schema context to register a schema and a Sink connector uses only that schema context to read from. For more information about setting up a schema context, see What are schema contexts and when should you use them?.
Delta Lake Table Format: A format string for the destination table name, which may contain
${topic}
as a placeholder for the originating topic name. For example, to create a table namedkafka-orders
based on a Kafka topic namedorders
, you would enterkafka-${topic}
in this field. Note that you must use the${topic}
placeholder if you have multiple originating topics.Input Kafka record key format Sets the input Kafka record key format. Valid entries are AVRO, BYTES, JSON, JSON_SR, PROTOBUF, or STRING. A valid schema must be available in Schema Registry to use a schema-based message format (for example, Avro, JSON_SR (JSON Schema), or Protobuf).
Delta Lake Topic2Table Map: Map of topics to tables (optional). Create mapping as comma-separated tuples. For example:
<topic-1>:<table-1>,<topic-2>:<table-2>,...
. If you use this property, the connector ignores any string entered for Delta Lake Table Format.Delta Lake Table Auto Create: Specifies whether to create the destination table based on record schema if it does not exist.
Delta Lake Tables Location: The underlying location where the data in the Delta Lake tables is stored. If you set
s3://<your-s3-bucket>/tmp/
, data is stored in thetmp
directory. Be sure the AWS IAM role used for the Databricks Delta Lake instance is permitted to write records to the bucket directory and that the directory exists (in this case,tmp
).Delta Lake Table2Partition Map: Map of tables to partition fields (optional). Create mapping as comma-separated tuples. For example:
<table-1>:<partition-1>,<table-2>:<partition-2>,...
Note that you can specify multiple partitions per table. Be sure to add a separate tuple for each partition. For example:<table-1>:<partition-1>, <table-1>:<partition-2>), <table-2>:<partition-3>"
.Flush Interval (ms): The time interval in milliseconds to periodically invoke file commits. This configuration ensures that file commits are invoked at every configured interval. Defaults to 300,000 milliseconds (5 minutes).
For Transforms and Predicates, see the Single Message Transforms (SMT) documentation for details.
For all property values and definitions, see Configuration Properties.
Click Continue.
Based on the number of topic partitions you select, you will be provided with a recommended number of tasks. Refer to the limitations for additional information.
- To change the number of recommended tasks, enter the number of tasks for the connector to use in the Tasks field.
- Click Continue.
Verify the connection details.
Click Launch.
The status for the connector should go from Provisioning to Running.
Step 5: Check the S3 bucket¶
Check that records are populating the staging Amazon S3 bucket and then populating the Databricks Delta Lake table.
For more information and examples to use with the Confluent Cloud API for Connect, see the Confluent Cloud API for Managed and Custom Connectors section.
Tip
When you launch a connector, a Dead Letter Queue topic is automatically created. See Confluent Cloud Dead Letter Queue for details.
See also
For an example that shows fully-managed Confluent Cloud connectors in action with Confluent Cloud ksqlDB, see the Cloud ETL Demo. This example also shows how to use Confluent CLI to manage your resources in Confluent Cloud.
Using the Confluent CLI¶
Complete the following steps to set up and run the connector using the Confluent CLI.
Note
Make sure you have all your prerequisites completed.
Step 1: List the available connectors¶
Enter the following command to list available connectors:
confluent connect plugin list
Step 2: List the connector configuration properties¶
Enter the following command to show the connector configuration properties:
confluent connect plugin describe <connector-plugin-name>
The command output shows the required and optional configuration properties.
Step 3: Create the connector configuration file¶
Create a JSON file that contains the connector configuration properties. The following example shows required and optional connector properties.
{
"name": "DatabricksDeltaLakeSinkConnector_0",
"config": {
"topics": "clickstreams, pageviews",
"input.data.format": "AVRO",
"connector.class": "DatabricksDeltaLakeSink",
"name": "DatabricksDeltaLakeSinkConnector_0",
"kafka.auth.mode": "KAFKA_API_KEY",
"kafka.api.key": "****************",
"kafka.api.secret": "**************************************************",
"delta.lake.host.name": "dbc-e12345cd-e12345ed.cloud.databricks.com",
"delta.lake.http.path": "sql/protocolv1/o/1234567891811460/0000-01234-str6jlpz",
"delta.lake.token": "************************************",
"delta.lake.topic2table.map": "pageviews:pageviews,clickstreams:clickstreams-test",
"delta.lake.table.auto.create": "false",
"staging.s3.access.key.id": "********************",
"staging.s3.secret.access.key": "****************************************",
"staging.bucket.name": "databricks0",
"flush.interval.ms": "300000",
"tasks.max": "1"
}
}
Note the following required property definitions:
"name"
: Sets a name for your new connector."connector.class"
: Identifies the connector plugin name."topics"
: Enter the topic name or a comma-separated list of topic names.
"kafka.auth.mode"
: Identifies the connector authentication mode you want to use. There are two options:SERVICE_ACCOUNT
orKAFKA_API_KEY
(the default). To use an API key and secret, specify the configuration propertieskafka.api.key
andkafka.api.secret
, as shown in the example configuration (above). To use a service account, specify the Resource ID in the propertykafka.service.account.id=<service-account-resource-ID>
. To list the available service account resource IDs, use the following command:confluent iam service-account list
For example:
confluent iam service-account list Id | Resource ID | Name | Description +---------+-------------+-------------------+------------------- 123456 | sa-l1r23m | sa-1 | Service account 1 789101 | sa-l4d56p | sa-2 | Service account 2
"input.data.format"
: Sets the input Kafka record value format (data coming from the Kafka topic). Valid entries are AVRO, JSON_SR, and PROTOBUF. You must have Confluent Cloud Schema Registry configured if using a schema-based message format (for example, Avro, JSON_SR (JSON Schema), or Protobuf)."delta.lake...."
”: See the Databricks Delta Lake setup procedure for where you can get this information. See Configuration Properties for additional property values and descriptions."staging...."
: These properties use information you get from Databricks and AWS. See the Databricks Delta Lake setup procedure."flush.interval.ms"
: The time interval in milliseconds (ms) to periodically invoke file commits. This property ensures the connector invokes file commits at every configured interval. The commit time is adjusted to00:00
UTC. The commit is performed at the scheduled time, regardless of the last commit time or number of messages. This configuration is useful when you have to commit your data based on current server time, like at the beginning of each hour. The default value used is300000
ms (5 minutes)."tasks.max"
: Enter the maximum number of tasks for the connector to use. Refer to the limitations for additional information.
Single Message Transforms: See the Single Message Transforms (SMT) documentation for details about adding SMTs using the CLI. See Unsupported transformations for a list of SMTs that are not supported with this connector.
See Configuration Properties for configuration property values and descriptions.
Step 4: Load the properties file and create the connector¶
Enter the following command to load the configuration and start the connector:
confluent connect cluster create --config-file <file-name>.json
For example:
confluent connect cluster create --config-file databricks-delta-lake-sink-config.json
Example output:
Created connector DatabricksDeltaLakeSinkConnector_0 lcc-ix4dl
Step 5: Check the connector status¶
Enter the following command to check the connector status:
confluent connect cluster list
Example output:
ID | Name | Status | Type
+-----------+------------------------------------+---------+------+
lcc-ix4dl | DatabricksDeltaLakeSinkConnector_0 | RUNNING | sink
Step 6: Check the S3 bucket.¶
Check that records are populating the staging Amazon S3 bucket and then populating the Databricks Delta Lake table.
For more information and examples to use with the Confluent Cloud API for Connect, see the Confluent Cloud API for Managed and Custom Connectors section.
Tip
When you launch a connector, a Dead Letter Queue topic is automatically created. See Confluent Cloud Dead Letter Queue for details.
Configuration Properties¶
Use the following configuration properties with the fully-managed connector. For self-managed connector property definitions and other details, see the connector docs in Self-managed connectors for Confluent Platform.
Which topics do you want to get data from?¶
topics
Identifies the topic name or a comma-separated list of topic names.
- Type: list
- Importance: high
Schema Config¶
schema.context.name
Add a schema context name. A schema context represents an independent scope in Schema Registry. It is a separate sub-schema tied to topics in different Kafka clusters that share the same Schema Registry instance. If not used, the connector uses the default schema configured for Schema Registry in your Confluent Cloud environment.
- Type: string
- Default: default
- Importance: medium
Input messages¶
input.data.format
Sets the input Kafka record value format. Valid entries are AVRO, JSON_SR, or PROTOBUF. Note that you need to have Confluent Cloud Schema Registry configured if using a schema-based message format like AVRO, JSON_SR, and PROTOBUF.
- Type: string
- Importance: high
input.key.format
Sets the input Kafka record key format. Valid entries are AVRO, BYTES, JSON, JSON_SR, PROTOBUF, or STRING. Note that you need to have Confluent Cloud Schema Registry configured if using a schema-based message format like AVRO, JSON_SR, and PROTOBUF
- Type: string
- Default: JSON
- Valid Values: AVRO, BYTES, JSON, JSON_SR, PROTOBUF, STRING
- Importance: high
value.converter.reference.subject.name.strategy
Set the subject reference name strategy for value. Valid entries are DefaultReferenceSubjectNameStrategy or QualifiedReferenceSubjectNameStrategy. Note that the subject reference name strategy can be selected only for PROTOBUF format with the default strategy being DefaultReferenceSubjectNameStrategy.
- Type: string
- Default: DefaultReferenceSubjectNameStrategy
- Importance: high
How should we connect to your data?¶
name
Sets a name for your connector.
- Type: string
- Valid Values: A string at most 64 characters long
- Importance: high
Kafka Cluster credentials¶
kafka.auth.mode
Kafka Authentication mode. It can be one of KAFKA_API_KEY or SERVICE_ACCOUNT. It defaults to KAFKA_API_KEY mode.
- Type: string
- Default: KAFKA_API_KEY
- Valid Values: KAFKA_API_KEY, SERVICE_ACCOUNT
- Importance: high
kafka.api.key
Kafka API Key. Required when kafka.auth.mode==KAFKA_API_KEY.
- Type: password
- Importance: high
kafka.service.account.id
The Service Account that will be used to generate the API keys to communicate with Kafka Cluster.
- Type: string
- Importance: high
kafka.api.secret
Secret associated with Kafka API key. Required when kafka.auth.mode==KAFKA_API_KEY.
- Type: password
- Importance: high
How should we connect to your Databricks Delta Lake?¶
delta.lake.host.name
The host name used to connect to Delta Lake.
- Type: string
- Importance: high
delta.lake.http.path
The HTTP path used to connect to Delta Lake.
- Type: string
- Importance: high
delta.lake.token
The personal access token used to authenticate the user when connecting to Delta Lake via JDBC.
- Type: password
- Importance: high
delta.lake.catalog
The destination catalog under which the destination database and tables are located.
- Type: string
- Default: “”
- Importance: low
delta.lake.database
The destination database under which the destination tables are located.
- Type: string
- Default: default
- Importance: low
delta.lake.table.format
A format string for the destination table name, which may contain ‘${topic}’ as a placeholder for the originating topic name. For example,
kafka_${topic}
for the topic ‘orders’ will map to the table name ‘kafka_orders’.- Type: string
- Default: ${topic}
- Importance: medium
delta.lake.topic2table.map
Map of topics to tables (optional). Format: comma-seperated tuples, e.g. <topic-1>:<table-1>,<topic-2>:<table-2>,…
- Type: string
- Default: “”
- Importance: low
delta.lake.table.auto.create
Whether to automatically create the destination table based on record schema if it does not exist.
- Type: boolean
- Default: false
- Importance: medium
delta.lake.tables.location
The underlying location where the data in the Delta Lake table(s) is stored. If you set s3://<your-s3-bucket>/tmp/, Delta Lake data will be stored under s3://<your-s3-bucket>/tmp/. Make sure the AWS IAM for the Databricks Delta Lake instance has the permision to write records to the specified directory, and the specified directory exists (e.g. tmp)
- Type: string
- Default: “”
- Importance: medium
delta.lake.table2partition.map
Map of tables to partition fields (optional). Format: comma-separated tuples. For example: <table-1>:<partition-1>,<table-2>:<partition-2>,… Note that you can specify multiple partitions per table. Be sure to add a separate tuple for each partition. For example: <table-1>:<partition-1>, <table-1>:<partition-2>), <table-2>:<partition-3>
- Type: string
- Default: “”
- Importance: low
Amazon S3 details¶
staging.s3.access.key.id
- Type: password
- Importance: high
staging.s3.secret.access.key
- Type: password
- Importance: high
flush.interval.ms
The time interval in milliseconds to periodically invoke file commits. This configuration ensures that file commits are invoked at every configured interval. Time of commit will be adjusted to 00:00 of selected timezone. The commit will be performed at the scheduled time, regardless of the previous commit time or number of messages. This configuration is useful when you have to commit your data based on current server time, for example at the beginning of every hour.
- Type: long
- Default: 300000 (5 minutes)
- Importance: medium
staging.bucket.name
The S3 staging bucket where files get written to from Kafka and subsequently copied into the Databricks Delta Lake table. Must be in the same region as your Confluent Cloud cluster.
- Type: string
- Importance: high
Consumer configuration¶
max.poll.interval.ms
The maximum delay between subsequent consume requests to Kafka. This configuration property may be used to improve the performance of the connector, if the connector cannot send records to the sink system. Defaults to 300000 milliseconds (5 minutes).
- Type: long
- Default: 300000 (5 minutes)
- Valid Values: [60000,…,1800000] for non-dedicated clusters and [60000,…] for dedicated clusters
- Importance: low
max.poll.records
The maximum number of records to consume from Kafka in a single request. This configuration property may be used to improve the performance of the connector, if the connector cannot send records to the sink system. Defaults to 500 records.
- Type: long
- Default: 500
- Valid Values: [1,…,500] for non-dedicated clusters and [1,…] for dedicated clusters
- Importance: low
Number of tasks for this connector¶
tasks.max
Maximum number of tasks for the connector.
- Type: int
- Valid Values: [1,…]
- Importance: high
Next Steps¶
For an example that shows fully-managed Confluent Cloud connectors in action with Confluent Cloud ksqlDB, see the Cloud ETL Demo. This example also shows how to use Confluent CLI to manage your resources in Confluent Cloud.