Azure Cosmos DB Sink Connector for Confluent Cloud¶
The fully-managed Azure Cosmos DB Sink connector for Confluent Cloud writes data to a Microsoft Azure Cosmos database. The connector polls data from Apache Kafka® and writes to database containers.
Note
If you require private networking for fully-managed connectors, make sure to set up the proper networking beforehand. For more information, see Manage Networking for Confluent Cloud Connectors.
Features¶
The Azure Cosmos DB Sink connector supports the following features:
- Topic mapping: Maps the Kafka Topic to the Azure Cosmos DB container.
- Multiple key strategies:
FullKeyStrategy
: The ID generated is the Kafka record key. This is the default option.KafkaMetadataStrategy
: The ID generated is a concatenation of the Kafka topic, partition, and offset. For example:${topic}-${partition}-${offset}
.ProvidedInKeyStrategy
: The ID generated is theid
field found in the key object.ProvidedInValueStrategy
: The ID generated is theid
field found in the value object. Every record must have (lower case)id
field. This is an Azure Cosmos DB requirement. See the lower case id prerequisite.
The following shows an example of each strategy and the resulting id
in Azure Cosmos.
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.
Limitations¶
Be sure to review the following information.
- For connector limitations, see Azure Cosmos DB Sink Connector limitations.
- If you plan to use one or more Single Message Transforms (SMTs), see SMT Limitations.
- If you plan to use Confluent Cloud Schema Registry, see Schema Registry Enabled Environments.
Quick Start¶
Use this quick start to get up and running with the Confluent Cloud Azure Cosmos DB Sink connector. The quick start provides the basics of selecting the connector and configuring it to stream Kafka events to an Azure Cosmos DB container.
- Prerequisites
Authorized access to a Confluent Cloud cluster on Azure.
The Confluent CLI installed and configured for the cluster. See Install the Confluent CLI.
Schema Registry must be enabled to use a Schema Registry-based format (for example, Avro, JSON_SR (JSON Schema), or Protobuf). See Schema Registry Enabled Environments for additional information.
At least one source Kafka topic must exist in your Confluent Cloud cluster before creating the sink connector.
The Azure Cosmos DB and the Kafka cluster must be in the same region.
The Azure Cosmos DB requires an
id
field in every record. See ID strategies for an example of how each of these works. The following strategies are provided to generate the ID:FullKeyStrategy
: The ID generated is the Kafka record key. This is the default option.KafkaMetadataStrategy
: The ID generated is a concatenation of the Kafka topic, partition, and offset. For example:${topic}-${partition}-${offset}
.ProvidedInKeyStrategy
: The ID generated is theid
field found in the key object.ProvidedInValueStrategy
: The ID generated is theid
field found in the value object. If you select this ID strategy, you must create a new field namedid
. You can also use the following ksqlDB statement. The example below uses a topic namedorders
.CREATE STREAM ORDERS_STREAM WITH ( KAFKA_TOPIC = 'orders', VALUE_FORMAT = 'AVRO' ); CREATE STREAM ORDER_AUGMENTED AS SELECT ORDERID AS `id`, ORDERTIME, ITEMID, ORDERUNITS, ADDRESS FROM ORDERS_STREAM;
Note
- The connector supports
Upsert
based onid
. - The connector does not support
Delete
for tombstone records.
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 Azure Cosmos DB 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:
- My account: This setting allows your connector to globally access everything that you have access to. With a user account, the connector uses an API key and secret to access the Kafka cluster. This option is not recommended for production.
- Service account: This setting limits the access for your connector by using a service account. This option is recommended for production.
- Use an existing API key: This setting allows you to specify an API key and a secret pair. You can use an existing pair or create a new one. This method is not recommended for production environments.
- Click Continue.
- Enter your Cosmos DB connection details:
- Cosmos Endpoint: Cosmos endpoint URL. For example,
https://connect-cosmosdb.documents.azure.com:443/
. - Cosmos Connection Key: The Cosmos connection master (primary) key.
- Cosmos Database Name: The name of your Cosmos database.
- Cosmos Endpoint: Cosmos endpoint URL. For example,
- Click Continue.
Note
Configuration properties that are not shown in the Cloud Console use the default values. See Configuration Properties for all property values and definitions.
Select the Input Kafka record value format (data coming from the Kafka topic): AVRO, PROTOBUF, JSON_SR (JSON Schema), or JSON (schemaless). 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.
In the Topic-Container Map field, input a comma-delimited list of Kafka topics mapped to Cosmos DB containers–the mapping between Kafka topics and Azure Cosmos DB containers. For example,
topic#container1,topic2#container2
.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?.
Id Strategy: The IdStrategy class name to use for generating a unique document ID:
FullKeyStrategy
: The ID generated is the Kafka record key.KafkaMetadataStrategy
: The ID generated is a concatenation of the Kafka topic, partition, and offset. For example:${topic}-${partition}-${offset}
.ProvidedInKeyStrategy
: The ID generated is theid
field found in the key object.ProvidedInValueStrategy
: The ID generated is theid
field found in the value object. Every record must have (lower case)id
field. This is an Azure Cosmos DB requirement. See Lower case id prerequisite.
Transforms and Predicates: See the Single Message Transforms (SMT) documentation for details.
See Configuration Properties for all property values and definitions.
Click Continue.
Based on the number of topic partitions you select, you will be provided with a recommended number of tasks.
- To change the number of recommended tasks, enter the number of tasks for the connector to use in the Tasks field. More tasks may improve performance.
- Click Continue.
Verify the connection details.
Click Launch.
The status for the connector should go from Provisioning to Running.
Step 5: Check for records¶
Verify that records are being produced in your Azure Cosmos database.
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.
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 the required connector properties.
{
"name": "CosmosDbSinkConnector_0",
"config": {
"connector.class": "CosmosDbSink",
"name": "CosmosDbSinkConnector_0",
"input.data.format": "AVRO",
"kafka.auth.mode": "KAFKA_API_KEY",
"kafka.api.key": "****************",
"kafka.api.secret": "**********************************************",
"topics": "pageviews",
"connect.cosmos.connection.endpoint": "https://myaccount.documents.azure.com:443/",
"connect.cosmos.master.key": "****************************************",
"connect.cosmos.databasename": "myDBname",
"connect.cosmos.containers.topicmap": "pageviews#Container2",
"cosmos.id.strategy": "FullKeyStrategy",
"tasks.max": "1"
}
}
Note the following property definitions:
"connector.class"
: Identifies the connector plugin name."input.data.format"
: Sets the input Kafka record value format (data coming from the Kafka topic). Valid entries are AVRO, JSON_SR, PROTOBUF, or JSON. You must have Confluent Cloud Schema Registry configured if using a schema-based message format (for example, Avro, JSON_SR (JSON Schema), or Protobuf)."name"
: Sets a name for your new connector.
"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
"connect.cosmos.connection.endpoint"
: A URI with the formhttps://ccloud-cosmos-db-1.documents.azure.com:443/
."connect.cosmos.master.key"
: The Azure Cosmos master key."connect.cosmos.databasename"
: The name of your Cosmos DB."connect.cosmos.containers.topicmap"
: A comma-delimited list of Kafka topics mapped to Cosmos DB containers. Note that this property only supports 1:1 mapping between topic and container name. For example:topic#container1,topic2#container2
.(Optional)
"cosmos.id.strategy"
: Defaults toFullKeyStrategy
. Enter one of the following strategies:FullKeyStrategy
: The ID generated is the Kafka record key.KafkaMetadataStrategy
: The ID generated is a concatenation of the Kafka topic, partition, and offset. For example:${topic}-${partition}-${offset}
.ProvidedInKeyStrategy
: The ID generated is theid
field found in the key object. Every record must have (lower case)id
field. This is an Azure Cosmos DB requirement. See Lower case id prerequisite.ProvidedInValueStrategy
: The ID generated is theid
field found in the value object. Every record must have (lower case)id
field. This is an Azure Cosmos DB requirement. See Lower case id prerequisite.
See ID strategies for an example of how each of these works.
"tasks"
: The number of tasks to use with the connector. More tasks may improve performance.
Single Message Transforms: See the Single Message Transforms (SMT) documentation for details about adding SMTs using the CLI.
See Configuration Properties for all 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 azure-cosmos-sink-config.json
Example output:
Created connector CosmosDbSinkConnector_0 lcc-do6vzd
Step 4: Check the connector status.¶
Enter the following command to check the connector status:
confluent connect cluster list
Example output:
ID | Name | Status | Type | Trace
+------------+-------------------------------+---------+------+-------+
lcc-do6vzd | CosmosDbSinkConnector_0 | RUNNING | sink | |
Step 5: Check for records¶
..Verify that records are populating the endpoint.
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.
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
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, PROTOBUF, or JSON. 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
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
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
How should we connect to your Azure Cosmos DB?¶
connect.cosmos.connection.endpoint
Cosmos endpoint URL. For example: https://connect-cosmosdb.documents.azure.com:443/.
- Type: string
- Importance: high
connect.cosmos.master.key
Cosmos connection master (primary) key.
- Type: password
- Importance: high
connect.cosmos.databasename
Cosmos target database to write records into.
- Type: string
- Importance: high
connect.cosmos.containers.topicmap
A comma delimited list of Kafka topics mapped to Cosmos containers. For example: topic1#con1,topic2#con2.
- Type: string
- Importance: high
Database details¶
cosmos.id.strategy
The IdStrategy class name to use for generating a unique document id (id).
FullKeyStrategy
uses the full record key as ID.KafkaMetadataStrategy
uses a concatenation of the kafka topic, partition, and offset as ID, with dashes as separator. i.e.${topic}-${partition}-${offset}
.ProvidedInKeyStrategy
andProvidedInValueStrategy
use theid
field found in the key and value objects respectively as ID.- Type: string
- Default: FullKeyStrategy
- Valid Values: FullKeyStrategy, KafkaMetadataStrategy, ProvidedInKeyStrategy, ProvidedInValueStrategy
- Importance: low
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.