Get Started with the MongoDB Atlas Source Connector for Confluent Cloud¶
The fully-managed MongoDB Atlas Source connector for Confluent Cloud moves data from a MongoDB replica set into an Apache Kafka® cluster. The connector configures and consumes change stream event documents and publishes them to a Kafka topic.
Note
- This Quick Start is for the fully-managed Confluent Cloud connector. If you are installing the connector locally for Confluent Platform, see MongoDB Source Connector documentation.
- 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¶
Note that the MongoDB Atlas Source connector supports MongoDB Atlas only and will not work with a self-managed MongoDB database.
The connector offers the following features:
- At least once delivery: The connector guarantees that records are delivered at least once to the Kafka topic.
- Topics created automatically: The connector automatically creates Kafka topics using the naming convention:
<prefix>.<database-name>.<collection-name>
. The tables are created with the properties:topic.creation.default.partitions=1
andtopic.creation.default.replication.factor=3
. You add the prefix when setting up the connection in the Quick Start steps. For more information, see Maximum message size. Note that if you want to create topics with specific settings, create the topics before running this connector. - Database authentication: Uses password authentication.
- Output data formats: Supports Avro, Byte, JSON (schemaless), JSON Schema, Protobuf or String output data. 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.
- Large size records: Supports MongoDb documents up to 20 MB in size on Dedicated Kafka clusters and 8 MB on other clusters.
- Select configuration properties:
poll.await.time.ms
: The amount of time to wait before checking for new results in the change stream.poll.max.batch.size
: The maximum number of change stream documents to include in a single batch when polling for new data. This setting can be used to limit the amount of data buffered internally in the connector.
- Offset management capabilities: Supports offset management. For more information, see Manage custom offsets.
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 MongoDB Atlas Source 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.
Maximum message size¶
This connector creates topics automatically. When it creates topics, the internal connector configuration property max.message.bytes
is set to the following:
- Basic cluster:
8 MB
- Standard cluster:
8 MB
- Enterprise cluster:
8 MB
- Dedicated cluster:
20 MB
For more information about Confluent Cloud clusters, see Kafka Cluster Types in Confluent Cloud.
Manage custom offsets¶
You can manage the offsets for this connector. Offsets provide information on the point in the system from which the connector is accessing data. For more information, see Manage Offsets for Fully-Managed Connectors in Confluent Cloud.
To manage offsets:
- Manage offsets using Confluent Cloud APIs. For more information, see Cluster API reference.
To get the current offset, make a GET
request that specifies the environment, Kafka cluster, and connector name.
GET /connect/v1/environments/{environment_id}/clusters/{kafka_cluster_id}/connectors/{connector_name}/offsets
Host: https://api.confluent.cloud
Response:
Successful calls return HTTP 200
with a JSON payload that describes the offset.
{
"id": "lcc-example123",
"name": "{connector_name}",
"offsets": [
{
"partition": {
"ns": "mongodb+srv://cluster0.2a5tnof.mongodb.net/"
},
"offset": {
"_id": "{\"_data\": \"82661F7DDE000000012B042C0100296E5A1004737030_TRUNCATED\"}"
}
}
],
"metadata": {
"observed_at": "2024-03-28T17:57:48.139635200Z"
}
}
Responses include the following information:
- The position of latest offset.
- The observed time of the offset in the metadata portion of the payload. The
observed_at
time indicates a snapshot in time for when the API retrieved the offset. A running connector is always updating its offsets. Useobserved_at
to get a sense for the gap between real time and the time at which the request was made. By default, offsets are observed every minute. CallingGET
repeatedly will fetch more recently observed offsets. - Information about the connector.
To update the offset, make a POST
request that specifies the environment, Kafka cluster, and connector
name. Include a JSON payload that specifies new offset and a patch type.
POST /connect/v1/environments/{environment_id}/clusters/{kafka_cluster_id}/connectors/{connector_name}/offsets/request
Host: https://api.confluent.cloud
{
"type": "PATCH",
"offsets": [
{
"partition": {
"ns": "mongodb+srv://cluster0.2a5tnof.mongodb.net/"
},
"offset": {
"_id": "{\"_data\": \"82661F7DDE000000012B042C0100296E5A100473703049_TRUNCATED\"}"
}
}
]
}
Considerations:
- You can only make one offset change at a time for a given connector.
- This is an asynchronous request. To check the status of this request, you must use the check offset status API. For more information, see Get the status of an offset request.
- For source connectors, the connector attempts to read from the position defined by the requested offsets.
Response:
Successful calls return HTTP 202 Accepted
with a JSON payload that describes the offset.
{
"id": "lcc-example123",
"name": "{connector_name}",
"offsets": [
{
"partition": {
"ns": "mongodb+srv://cluster0.2a5tnof.mongodb.net/"
},
"offset": {
"_id": "{\"_data\": \"82661F7DDE000000012B042C0100296E5A1004737030_TRUNCATED\"}"
}
}
],
"requested_at": "2024-03-28T17:58:45.606796307Z",
"type": "PATCH"
}
Responses include the following information:
- The requested position of the offsets in the source.
- The time of the request to update the offset.
- Information about the connector.
To delete the offset, make a POST
request that specifies the environment, Kafka cluster, and connector
name. Include a JSON payload that specifies the delete type.
POST /connect/v1/environments/{environment_id}/clusters/{kafka_cluster_id}/connectors/{connector_name}/offsets/request
Host: https://api.confluent.cloud
{
"type": "DELETE"
}
Considerations:
- Delete requests delete the offset for the provided partition and reset to the base state. A delete request is as if you created a fresh new connector.
- This is an asynchronous request. To check the status of this request, you must use the check offset status API. For more information, see Get the status of an offset request.
- Do not issue delete and patch requests at the same time.
- For source connectors, the connector attempts to read from the position defined in the base state.
Response:
Successful calls return HTTP 202 Accepted
with a JSON payload that describes the result.
{
"id": "lcc-example123",
"name": "{connector_name}",
"offsets": [],
"requested_at": "2024-03-28T17:59:45.606796307Z",
"type": "DELETE"
}
Responses include the following information:
- Empty offsets.
- The time of the request to delete the offset.
- Information about the Kafka cluster and connector.
- The type of request.
To get the status of a previous offset request, make a GET
request that specifies the environment, Kafka cluster, and connector
name.
GET /connect/v1/environments/{environment_id}/clusters/{kafka_cluster_id}/connectors/{connector_name}/offsets/request/status
Host: https://api.confluent.cloud
Considerations:
- The status endpoint always shows the status of the most recent PATCH/DELETE operation.
Response:
Successful calls return HTTP 200
with a JSON payload that describes the result. The following is an example
of an applied patch.
{
"request": {
"id": "lcc-example123",
"name": "{connector_name}",
"offsets": [
{
"partition": {
"ns": "mongodb+srv://cluster0.2a5tnof.mongodb.net/"
},
"offset": {
"_id": "{\"_data\": \"82661F7DDE000000012B042C0100296E5A100473703_TRUNCATED\"}"
}
}
],
"requested_at": "2024-03-28T17:58:45.606796307Z",
"type": "PATCH"
},
"status": {
"phase": "APPLIED",
"message": "The Connect framework-managed offsets for this connector have been altered successfully. However, if this connector manages offsets externally, they will need to be manually altered in the system that the connector uses."
},
"previous_offsets": [
{
"partition": {
"ns": "mongodb+srv://cluster0.2a5tnof.mongodb.net/"
},
"offset": {
"_id": "{\"_data\": \"82661FF4CF000000042B042C0100296E5A100473703049_TRUNCATED\"}"
}
}
],
"applied_at": "2024-03-28T17:58:48.079141883Z"
}
Responses include the following information:
- The original request, including the time it was made.
- The status of the request: applied, pending, or failed.
- The time you issued the status request.
- The previous offsets. These are the offsets that the connector last updated prior to updating the offsets. Use these to try to restore the state of your connector if a patch update causes your connector to fail or to return a connector to its previous state after rolling back.
JSON payload¶
The table below offers a description of the unique fields in the JSON payload for managing offsets of the MongoDB Atlas Source connector.
Field | Definition | Required/Optional |
---|---|---|
ns |
ns is the connection string, including the connection host. If the configuration file for
the connector includes a value in offset.partition.name , the value in offset.partition.name is used for ns . |
Required |
_id |
_id is the _data field from the source record in MongoDB. |
Required |
Quick Start¶
Use this quick start to get up and running with the Confluent Cloud MongoDB Atlas Source connector. The quick start provides the basics of selecting the connector and configuring it to consume data from MongoDB and persist the data to Kafka.
Note
This connector supports MongoDB Atlas only and will not work with a self-managed MongoDB database.
- Prerequisites
Authorized access to a Confluent Cloud cluster on Amazon Web Services (AWS), Microsoft Azure (Azure), or Google Cloud.
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.
Access to a MongoDB database. Note that the connection user must have privileged action “find” to query the MongoDB database. For more information, see Query and Write Actions.
The MongoDB hostname address must provide a service record (SRV). A standard connection string does not work.
The connector automatically creates Kafka topics using the naming convention:
<prefix>.<database-name>.<collection-name>
. The tables are created with the properties:topic.creation.default.partitions=1
andtopic.creation.default.replication.factor=3
. If you want to create topics with specific settings, create the topics before running this connector.Important
If you are configuring granular access using a service account, and you leave the optional Topic prefix (
prefix
) configuration property empty, the connector uses the Database name (database-name
) entered as the prefix. You must grant ACLCREATE
andWRITE
access to the database name prefix (see ACL access). If both theprefix
anddatabase-name
configuration properties are not used, you must do one of the following:If you know the databases to capture, create individual ACLs for each topic. The topic name will have the database name as the prefix.
Create ACLs for all Kafka topics, using the (*) wildcard in the ACL entries as shown below:
confluent kafka acl create --allow --service-account "<service-account-id>" --operation create --topic "*" .. code-block:: bash confluent kafka acl create --allow --service-account "<service-account-id>" --operation write --topic "*"
Create create RBAC role bindings.
If you have a VPC-peered cluster in Confluent Cloud, consider configuring a PrivateLink Connection between MongoDB Atlas and the VPC. For additional networking considerations, see Networking and DNS. To use a set of public egress IP addresses, see Public Egress IP Addresses for Confluent Cloud Connectors.
- 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
- Make sure you have all your prerequisites completed.
- An asterisk ( * ) designates a required entry.
- You can specify a read preference in the connection host to read from different modes. For example:
cluster4-r5q3r7.gcp.mongodb.net/?readPreference=secondary
. Default mode isprimaryPreferred
. For more information about read preference modes, see MongoDB Read Preference.
At the MongoDB Atlas Source Connector screen, complete the following:
In the Topic prefix field, define a topic prefix your connector will
use to publish to Kafka topics. The connector will Kafka topics using the
following naming convention: <prefix>.<database-name>.<collection-name>
. If you want to
create topics with specific settings, create the topics before running
this connector.
Important
If you are configuring granular access using a service account, and you leave the optional Topic prefix
(prefix
) configuration property empty, the connector uses the
Database name (database-name
) entered as the prefix. You must grant ACL
CREATE
and WRITE
access to the database name prefix (see ACL
access). If both the
prefix
and database-name
configuration properties are not used, you
must do one of the following:
If you know the databases to capture, create individual ACLs for each topic. The topic name will have the database name as the prefix.
Create ACLs for all Kafka topics, using the (*) wildcard in the ACL entries as shown below:
confluent kafka acl create --allow --service-account "<service-account-id>" --operation create --topic "*" .. code-block:: bash confluent kafka acl create --allow --service-account "<service-account-id>" --operation write --topic "*"
Create create RBAC role bindings.
- 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.
- Add the following database connection details:
- Connection host: MongoDB Atlas connection host. For example:
cluster4-r5q3r7.gcp.mongodb.net
. The MongoDB hostname address must provide a service record (SRV). A standard connection string does not work. - Connection user: MongoDB Atlas connection user.
- Connection password: MongoDB Atlas connection password. When entering the password, make sure that any special characters are URL encoded.
- Database name: MongoDB Atlas database name. If not set, all databases in the cluster are watched.
- Collection name: Single MongoDB collection to watch. If not set, all collections databases in the cluster are watched.
- Connection host: MongoDB Atlas connection host. For example:
- Click Continue.
Configure the following:
Select the output record value format (data going to the Kafka topic): AVRO, BSON, JSON, JSON_SR (JSON Schema), PROTOBUF, or STRING. Schema Registry must be enabled to use a Schema Registry-based format (for example, Avro, JSON Schema, or Protobuf). For additional information, see Schema Registry Enabled Environments.
If you select AVRO, be sure to set Compatibility mode (
schema.compatibility.level
) toNONE
in Schema Registry. Note that schemas are generated per document in isolation. If not set to NONE, there is a chance that the new schema generated for the new document will not be backward compatible with previous versions of the schema.
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?.
JSON output decimal format: Specify the JSON/JSON_SR serialization format for Connect
DECIMAL
logical type values with two allowed literals:BASE64
to serialize DECIMAL logical types as base64 encoded binary data andNUMERIC
to serialize Connect DECIMAL logical type values in JSON/JSON_SR as a number representing the decimal value.Topic namespace map: Add a JSON object that maps change stream document namespaces to topics. For additional information, see Topic Namespace Map. Multiple collections with records having varying schema are mapped to a single topic for AVRO, JSON_SR, or PROTOBUF data formats. These are registered to a single subject name. If the schemas are not backward compatible, the connector fails until you change the schema compatibility in Confluent Cloud Schema Registry.
Publish full document only: Set whether to return only the
fullDocument
field from the change stream event document produced by any update event. ThefullDocument
field contains the most current version of the updated document. Sets thechange.stream.full.document=updateLookup
setting so updated documents will be included.Publish tombstone events on document deletion: When set to
true
, the connector returns the tombstone events when documents are deleted. Tombstone events contain the keys of deleted documents with null values. This setting applies only whenpublish.full.document.only
istrue
.Change stream full document: Determines what to return for update operations when using a Change Stream. The
default
setting returns the differences between the original document and the updated document. TheupdateLookup
setting returns the differences between the original document and updated document as well as a copy of the entire updated document at a point in time after the update. ThewhenAvailable
setting returns the updated document, if available. Therequired
setting returns the updated document and raises an error if it is not available.Change stream full document before change: Configures the document pre-image your change stream returns on update operations. The
default
setting suppresses the document pre-image. When set towhenAvailable
setting returns the document pre-image if it’s available, before it was replaced, updated, or deleted. Therequired
setting returns the document pre-image and raises an error if it is not available.Output JSON formatter: Sets the output format of JSON strings. The format can be either,
DefaultJson
,ExtendedJson
, orSimplifiedJson
.Topic separator: A separator to use when the connector joins prefix, database, collection, and suffix values. These joined values create the Kafka topic name where data is published. Defaults to
.
.Topic suffix: A suffix to append to database and collection names to generate the name of the Kafka topic the connector creates.
Value Subject Name Strategy: Determines how to construct the subject name under which the value schema is registered with Schema Registry. This property defaults to
TopicNameStrategy
. Set this property toRecordNameStrategy
to derive the subject name from the record name. For more information, see Subject name strategy.Output schema infer value: Whether the connector should infer the schema of the
SourceRecord
. The connector processes each document in isolation and may generate many schemas. This setting only works with AVRO, JSON, JSON_SR, or PROTOBUF data formats.Poll wait time (ms): The amount of time to wait before checking for new results on the change stream.
Maximum documents to include in a batch: The maximum number of change stream documents to include in a single batch when polling for new data.
Pipeline: An array of JSON objects describing the pipeline operations to filter or modify the change events output.
Startup mode: Specifies how the connector starts up when there is no source offset available. If no source offset is available, the connector may either ignore all or some of the existing source data, or it may first copy all existing source data and then continue processing new data. When set to
latest
(the default), the connector ignores all existing source data. If set totimestamp
, the connector actuates startup.mode.timestamp.* properties. If no properties are configured,timestamp
is equivalent tolatest
. If set tocopy_existing
, the connector copies all existing source data to Change Stream events. This setting is equivalent to the deprecated settingcopy.existing=true
.Start timestamp: Actuated only if
startup.mode=timestamp
. Specifies the starting point for the change stream. Accepted values can be an integer number of seconds since the Epoch in decimal format (for example,30
), or an instant in the ISO-8601 format with one second precision (for example,1970-01-01T00:00:30Z
), or a BSON Timestamp in the canonical extended JSON (v2) format (for example,{"$timestamp": {"t": 30, "i": 0}}
).Copy existing namespace regex: Regular expression that matches the namespaces (
databaseName.collectionName
) from which to copy data.Copy existing pipeline: An array of JSON objects describing the pipeline operations to run when copying existing data. It will only be applied for existing documents which are being copied.
Cursor batch size: The number of documents to return in a batch. The value defaults to
0
. The maximum cursor batch size is50
.Heartbeat interval: The number of milliseconds the connector waits between sending heartbeat messages.
Heartbeat topic name: The name of the topic on which the connector should publish heartbeat messages. You must provide a positive value in the
heartbeat.interval.ms
setting to enable this feature.Offset partition name: The custom offset partition name to use. Use this option to instruct the connector to start a new change stream when an existing offset contains an invalid resume token. If you leave this setting blank, the connector uses the default partition name from the connection details.
Error tolerance: Allows you to customize how the connector handles errors. By default, this is set to
NONE
and the connector handles errors using the error handling tolerance configured for the Connect framework.Output errors: Whether or not the connector sends output conversion errors to the dead letter queue (DLQ). When using a schema, this prevents unprocessable (poison) messages from causing the connector task to fail. The connector outputs messages to the DLQ as extended JSON for the specified topic. Enabling this property requires that the Error tolerance property be set to
all
. By default, the connector does not output messages to the DLQ.Server API version: The MongoDB server API version to use. This property is disabled by default.
Deprecation errors: Whether or not to require the connector to report the use of deprecated server APIs as errors. This property is disabled by default.
Server API: Whether or not to require strict server API version enforcement. This property is disabled by default.
Transforms and Predicates: For details, see the Single Message Transforms (SMT) documentation.
For all property values and definitions, see Configuration Properties.
Click Continue.
The connector supports running a single task.
Click Continue.
Verify the connection details by previewing the running configuration.
Tip
For information about previewing your connector output, see Confluent Cloud Connector Data Previews.
After you’ve validated that the properties are configured to your satisfaction, click Launch.
The status for the connector should go from Provisioning to Running.
Step 5: Check the Kafka topic¶
After the connector is running, verify that MongoDB documents are populating the
Kafka topic. If the config startup.mode=copy_existing
and the connector
restarts due to any reason, you may see duplicate records in the 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.
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.
{
"connector.class": "MongoDbAtlasSource",
"name": "<my-connector-name>",
"kafka.auth.mode": "KAFKA_API_KEY",
"kafka.api.key": "<my-kafka-api-key>",
"kafka.api.secret": "<my-kafka-api-secret>",
"topic.prefix": "<topic-prefix>",
"connection.host": "<database-host-address>",
"connection.user": "<database-username>",
"connection.password": "<database-password>",
"database": "<database-name>",
"collection": "<database-collection-name>",
"poll.await.time.ms": "5000",
"poll.max.batch.size": "1000",
"startup.mode": "copy_existing",
"output.data.format": "JSON"
"tasks.max": "1"
}
Note the following property definitions:
"connector.class"
: Identifies the connector plugin name."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
(Optional)
"topic.prefix"
: Enter a topic prefix. The connector automatically creates Kafka topics using the naming convention:<prefix>.<database-name>.<collection-name>
. The tables are created with the properties:topic.creation.default.partitions=1
andtopic.creation.default.replication.factor=3
. If you want to create topics with specific settings, create the topics before running this connector. Note the following:- If you are configuring granular access using a service account, you must set up ACLs for the topic prefix.
- If you are using a dedicated cluster and have a MongoDb document greater
than 2MB in size, create the topic beforehand with property
max.message.bytes
set to match the largest document size or greater than the largest document size (8388608 bytes maximum).
Important
If you are configuring granular access using a service account, and you leave the optional Topic prefix (
topic.prefix
) configuration property empty, you must grant ACLCREATE
andWRITE
access to all the Kafka topics or create RBAC role bindings. To add ACLs, you use the (*) wildcard in the ACL entries as shown in the following examples.confluent kafka acl create --allow --service-account "<service-account-id>" --operation create --topic "*"
confluent kafka acl create --allow --service-account "<service-account-id>" --operation write --topic "*"
(Optional)
"topic.namespace.map"
: A JSON map that maps change stream document namespaces to topics. For example:{\"db\": \"dbTopic\", \"db.coll\": \"dbCollTopic\"}
will map all change stream documents from thedb
database todbTopic.<collectionName>
apart from any documents from thedb.coll
namespace which map to thedbCollTopic
topic. If you want to map all messages to a single topic use*
. For example:{\"*\": \"everyThingTopic\", \"db.coll\": \"exceptionToTheRuleTopic\"}
will map all change stream documents to theeveryThingTopic
apart from thedb.coll
messages. Note that any prefix configuration will still apply. If multiple collections with records having varying schema are mapped to a single topic with AVRO, JSON_SR, and PROTOBUF, then multiple schemas will be registered under a single subject name. If these schemas are not backward compatible to each other, the connector will fail until you change the schema compatibility in Confluent Cloud Schema Registry."connection.host"
: The MongoDB host. Use a hostname address and not a full URL. For example:cluster4-r5q3r7.gcp.mongodb.net
. The MongoDB hostname address must provide a service record (SRV). A standard connection string does not work.(Optional)
"collection"
: The collection name. If the property is not used, all collections are watched in the supplied database.(Optional)
"poll.await.time.ms"
: The amount of time to wait before checking for new results in the change stream. If not used, this property defaults to 5000 ms (5 seconds).(Optional)
"poll.max.batch.size"
: The maximum number of change stream documents to include in a single batch when polling for new data. This setting can be used to limit the amount of data buffered internally in the connector. If not used, this property defaults to 100 records.(Optional)
"pipeline"
: An array of JSON objects that represents the pipeline operations to filter or modify the change stream output. For example:[{"$match": {"ns.coll": {"$regex": /^(collection1|collection2)$/}}}]
sets the connector to listen to thecollection1
andcollection2
collections only. If not used, this property defaults to an empty array.(Optional)
"startup.mode"
: Specifies how the connector should start up when there is no source offset available. Resuming a change stream requires a resume token, which the connector gets from the source offset. If no source offset is available, the connector may either ignore all or some of the existing source data, or may at first copy all existing source data and then continue with processing new data. When set tolatest
(default), the connector ignores all existing source data. If set totimestamp
, the connector actuates startup.mode.timestamp.* properties. If no properties are configured,timestamp
is equivalent tolatest
. Ifstartup.mode=copy_existing
, the connector copies all existing source data to Change Stream events. This setting is equivalent to the deprecated settingcopy.existing=true
.(Optional)
"startup.mode.timestamp.start.at.operation.time"
: Actuated only ifstartup.mode=timestamp
. Specifies the starting point for the change stream. Accepted values can be an integer number of seconds since the Epoch in decimal format (for example,30
), or an instant in the ISO-8601 format with one second precision (for example,1970-01-01T00:00:30Z
), or a BSON Timestamp in the canonical extended JSON (v2) format (for example,{"$timestamp": {"t": 30, "i": 0}}
)(Optional)
"startup.mode.copy.existing.namespace.regex"
: Regex that matches the namespaces from which the existing documents are copied. A namespace is represented asdatabaseName.collectionName
. For example,stats\.page.*
matches all collections that start withpage
in thestats
database.(Optional)
"startup.mode.copy.existing.pipeline"
: An array of JSON objects that describes the pipeline operations to run when copying existing data. It is applied to existing documents that are being copied. If not used, this property defaults to an empty array.(Optional)
"publish.full.document.only"
: Set whether to return only thefullDocument
field from the change stream event document produced by any update event. ThefullDocument
field contains the most current version of the updated document. Sets thechange.stream.full.document=updateLookup
setting so updated documents will be included.(Optional)
"publish.full.document.only.tombstone.on.delete"
: When set totrue
, the connector returns the tombstone events when documents are deleted. Tombstone events contain the keys of deleted documents with null values. This setting applies only whenpublish.full.document.only
istrue
.(Optional)
"change.stream.full.document"
: Determines what to return for update operations when using a Change Stream. Thedefault
setting returns the differences between the original document and the updated document. When set toupdateLookup
setting returns the differences between the original document and updated document as well as a copy of the entire updated document at a point in time after the update. ThewhenAvailable
setting returns the updated document, if available. Therequired
setting returns the updated document and raises an error if it is not available.(Optional)
"change.stream.full.document.before.change"
: Configures the document pre-image your change stream returns on update operations. Thedefault
setting suppresses the document pre-image. When set towhenAvailable
setting returns the document pre-image if it’s available, before it was replaced, updated, or deleted. When set torequired
setting returns the document pre-image and raises an error if it is not available."output.data.format"
: Sets the output Kafka record value format (data coming from the connector). Valid entries areAVRO
,JSON_SR
,PROTOBUF
, orJSON
. You must have Confluent Cloud Schema Registry configured if using a schema-based message format (for example, Avro, JSON_SR (JSON Schema), or Protobuf).If you select AVRO, be sure to set Compatibility mode (
schema.compatibility.level
) toNONE
in Schema Registry. Note that schemas are generated per document in isolation. If not set to NONE, there is a chance that the new schema generated for the new document will not be backward compatible with previous versions of the schema.(Optional)
"heartbeat.interval.ms"
: The number of milliseconds the connector waits between sending heartbeat messages. If not used, this property defaults to 0. Thus, no heartbeat message is sent by default. If set to a positive number, the connector sends heartbeat messages when source records are not published in the specified interval. This mechanism improves resumability of the connector for low volume namespaces. See the Invalid Resume Token page in MongoDb documentation for more information on this feature. When using SMTs, use predicates to prevent SMTs from processing the heartbeat messages. For example, if the heartbeat topic name is__mongodb_heartbeats
and the connector is writing the actual database records into topics that do not share common prefix with the heartbeat topic; use the following configuration to prevent heartbeat messages from being processed by the transform with an alias say,mongoTransform
:"predicates": "isHeartbeatTopicPrefix"
,"predicates.isHeartbeatTopicPrefix.type": "org.apache.kafka.connect.transforms.predicates.TopicNameMatches"
,"predicates.isHeartbeatTopicPrefix.pattern": "__mongodb.*"
,"transforms.mongoTransform.predicate": "isHeartbeatTopicPrefix"
,"transforms.mongoTransform.negate": "true"
.(Optional)
"heartbeat.topic.name"
: The name of the topic on which the connector should publish heartbeat messages. You must provide a positive value in theheartbeat.interval.ms
setting to enable this feature. If setting the heartbeat messages for multiple connectors, you must ensure that the heartbeat topic names for the connectors are unique. If not set, this defaults to__mongodb_heartbeats
."tasks.max"
: The connector supports running a single task.
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 definitions.
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 mongo-db-source.json
Example output:
Created connector confluent-mongodb-source 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 | confluent-mongodb-source | RUNNING | source
Step 6: Check the Kafka topic.¶
After the connector is running, verify that MongoDB documents are populating the
Kafka topic. If the config startup.mode=copy_existing
and the connector
restarts due to any reason, you may see duplicate records in the 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.
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
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
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
How do you want to name your topic(s)?¶
topic.prefix
Prefix to prepend to table names to generate the name of the Apache Kafka® topic to publish data to.
- Type: string
- Importance: high
topic.namespace.map
JSON object that maps change stream document namespaces to topics. Any prefix configuration will still apply. In case multiple collections with records having varying schema are mapped to single topic with AVRO, JSON_SR, and PROTOBUF, then multiple schemas will be registered under single subject name. If these schemas are not backward compatible to each other, the connector will fail until you change the schema compatibility in Confluent Cloud Schema Registry.
- Type: string
- Default: “”
- Importance: low
How should we connect to your MongoDB Atlas database?¶
connection.host
MongoDB Atlas connection host (e.g. confluent-test.mycluster.mongodb.net).
- Type: string
- Default: “”
- Importance: high
connection.user
MongoDB Atlas connection user.
- Type: string
- Importance: high
connection.password
MongoDB Atlas connection password.
- Type: password
- Importance: high
database
MongoDB Atlas database name. If not set, all databases in the cluster are watched.
- Type: string
- Importance: high
Database details¶
collection
Single MongoDB Atlas collection to watch. If not set, all collections in the specified database are watched.
- Type: string
- Importance: medium
Connection details¶
poll.await.time.ms
The amount of time to wait before checking for new results on the change stream.
- Type: int
- Default: 5000 (5 seconds)
- Valid Values: [1,…]
- Importance: low
poll.max.batch.size
Maximum number of change stream documents to include in a single batch when polling for new data. This setting can be used to limit the amount of data buffered internally in the connector.
- Type: int
- Default: 100
- Valid Values: [1,…,1000]
- Importance: low
pipeline
An array of JSON objects describing the pipeline operations to filter or modify the change events output. For example, [{“$match”: {“ns.coll”: {“$regex”: /^(collection1|collection2)$/}}}] will set your source connector to listen to the “collection1” and “collection2” collections only.
- Type: string
- Default: []
- Importance: medium
startup.mode
Specifies how the connector should start up when there is no source offset available. If set to ‘latest’, the connector ignores all existing source data. If set to ‘timestamp’, the connector actuates startup.mode.timestamp.* properties. If no properties are configured, timestamp is equivalent to latest. If startup.mode=copy_existing, the connector copies all existing source data to Change Stream events.
- Type: string
- Default: “”
- Importance: high
startup.mode.copy.existing.namespace.regex
Regular expression that matches the namespaces (databaseName.collectionName) from which to copy data. For example, stats.page.* matches all collections that starts with “page” in “stats” database.
- Type: string
- Default: “”
- Importance: medium
startup.mode.copy.existing.pipeline
An array of JSON objects describing the pipeline operations to run when copying existing data. It will only be applied for existing documents which are being copied.
- Type: string
- Default: “”
- Importance: medium
startup.mode.timestamp.start.at.operation.time
Actuated only if startup.mode=timestamp. Specifies the starting point for the change stream.
- Type: string
- Default: “”
- Importance: medium
batch.size
The number of documents to return in a batch.
- Type: int
- Default: 0
- Valid Values: […,50]
- Importance: low
Producer configuration¶
linger.ms
Artificial delay for records to be sent together.
- Type: long
- Default: 0
- Valid Values: [0,…,20000]
- Importance: medium
producer.batch.size
Record batch size in bytes.
- Type: int
- Default: 16384
- Valid Values: [0,…,491520]
- Importance: medium
Output messages¶
output.data.format
Sets the output Kafka record value format. Valid entries are AVRO, JSON_SR, PROTOBUF, JSON, STRING or BSON. 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: STRING
- Importance: high
publish.full.document.only
Only publish the changed document instead of the full change stream document. Sets the change.stream.full.document=updateLookup automatically so updated documents will be included.
- Type: boolean
- Default: false
- Importance: high
publish.full.document.only.tombstone.on.delete
Return the tombstone events when documents are deleted. Tombstone events contain the keys of deleted documents with null values. This setting applies only when publish.full.document.only is true
- Type: boolean
- Default: false
- Importance: high
json.output.decimal.format
Specify the JSON/JSON_SR serialization format for Connect DECIMAL logical type values with two allowed literals:
BASE64 to serialize DECIMAL logical types as base64 encoded binary data and
NUMERIC to serialize Connect DECIMAL logical type values in JSON/JSON_SR as a number representing the decimal value.
- Type: string
- Default: BASE64
- Importance: low
change.stream.full.document
Determines what to return for update operations when using a Change Stream. When set to ‘updateLookup’ setting returns the differences between the original document and updated document as well as a copy of the entire updated document at a point in time after the update. The ‘whenAvailable’ setting returns the updated document, if available. The ‘required’ setting returns the updated document and raises an error if it is not available.
- Type: string
- Default: default
- Importance: high
change.stream.full.document.before.change
Configures the document pre-image your change stream returns on update operations. When set to ‘whenAvailable’ setting returns the document pre-image if it’s available, before it was replaced, updated, or deleted. When set to ‘required’ setting returns the document pre-image and raises an error if it is not available.
- Type: string
- Default: default
- Importance: high
output.json.format
The output format of json strings can be configured to be either: DefaultJson: The legacy strict json formatter. ExtendedJson: The fully type safe extended json formatter. SimplifiedJson: Simplified Json, with ObjectId, Decimals, Dates and Binary values represented as strings. Users can provide their own implementation of the com.mongodb.kafka.connect.source.json.formatter.
- Type: string
- Default: DefaultJson
- Importance: high
topic.separator
Separator to use when joining prefix, database, collection, and suffix values. This generates the name of the Kafka topic to publish data to. Used by the ‘DefaultTopicMapper’.
- Type: string
- Default: .
- Importance: low
topic.suffix
Suffix to append to database and collection names to generate the name of the Kafka topic to publish data to.
- Type: string
- Importance: low
value.subject.name.strategy
Determines how to construct the subject name under which the value schema is registered with Schema Registry. In the case of RecordNameStrategy, schema is registered under subject default; use transforms SetSchemaMetadata$Value to set a different schema name.
- Type: string
- Default: TopicNameStrategy
- Valid Values: RecordNameStrategy, TopicNameStrategy
- Importance: medium
output.schema.infer.value
Whether the connector should infer the schema for the value document of the Source Record. Since the connector processes each document in isolation, the connector may generate many schemas. The connector only reads this setting when you set your ‘Output Kafka record value format’ setting to AVRO, JSON, JSON_SR and PROTOBUF.
- Type: boolean
- Default: true
- Importance: low
Error handling¶
heartbeat.interval.ms
The number of milliseconds the connector waits between sending heartbeat messages. The connector sends heartbeat messages when source records are not published in the specified interval. This mechanism improves resumability of the connector for low volume namespaces. When using SMTs, use predicates to prevent SMTs from processing the heartbeat messages. See connector documentation for more details.
- Type: int
- Default: 0
- Importance: medium
heartbeat.topic.name
The name of the topic on which the connector should publish heartbeat messages. You must provide a positive value in the “heartbeat.interval.ms” setting to enable this feature.
- Type: string
- Default: __mongodb_heartbeats
- Importance: medium
offset.partition.name
The custom offset partition name to use. You can use this option to instruct the connector to start a new change stream when an existing offset contains an invalid resume token. If you leave this setting blank, the connector uses the default partition name based on the connection details.
- Type: string
- Default: “”
- Importance: medium
mongo.errors.tolerance
Use this property if you would like to configure the connector’s error handling behavior differently from the Connect framework’s.
- Type: string
- Default: NONE
- Importance: medium
mongo.errors.deadletterqueue.topic.name
Whether to output conversion errors to the dead letter queue. Stops poison messages when using schemas, any message will be outputted as extended json on the specified topic. By default messages are not outputted to the dead letter queue. Also requires errors.tolerance=all.
- Type: string
- Importance: medium
Server API¶
server.api.version
The server API version to use. Disabled by default.
- Type: string
- Importance: low
server.api.deprecation.errors
Sets whether the connector requires use of deprecated server APIs to be reported as errors.
- Type: boolean
- Default: false
- Importance: low
server.api.strict
Sets whether the application requires strict server API version enforcement.
- Type: boolean
- Default: false
- Importance: low
Number of tasks for this connector¶
tasks.max
Maximum number of tasks for the connector.
- Type: int
- Valid Values: [1,…,1]
- Importance: high
Suggested Reading¶
Blog post: Using the Fully Managed MongoDB Atlas Connector in a Secure Environment
Blog post: Announcing the MongoDB Atlas Sink and Source connectors in Confluent Cloud
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.