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Using the Fully Managed MongoDB Atlas Connector in a Secure Environment

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Since the MongoDB Atlas source and sink became available in Confluent Cloud, we’ve received many questions around how to set up these connectors in a secure environment.

By default, MongoDB Atlas does not allow any external network connections, such as those from the internet. To allow external connections, you can add a specific IP or a CIDR IP range using the “IP Whitelist” entry dialog under the “Network Access” menu. In order for Confluent Cloud to connect to Atlas, you need to specify the public IP address of your Confluent Cloud cluster.

Note: At the time of this writing, Confluent Cloud provides an IP address dynamically. Due to this variability, you will have to add 0.0.0.0/0 as the whitelist entry to your MongoDB Atlas cluster. To learn more about this requirement, check out the documentation.

Add IP Whitelist Entry: 0.0.0.0/0

This step-by-step guide shows you how to set up a VPC-peered Apache Kafka® cluster to an AWS VPC, as well as how to use a PrivateLink between the AWS VPC and MongoDB Atlas. With this setup, you won’t need to allow 0.0.0.0/0 or a wide range of CIDR in MongoDB Atlas.

Here are the prerequisites:

  • A dedicated Kafka cluster in Confluent Cloud (on AWS)
  • A dedicated MongoDB Atlas cluster with AWS with M10 or above

Create a VPC-peered Kafka cluster

Starting from June 2020, if you are using Confluent Cloud with annual commitments, you can create VPC peered clusters from the Cloud UI without any manual provisioning by engineering. Simply create a dedicated cluster with the VPC peering networking option. To create your dedicated cluster with VPC peering, you need to provide a CIDR for Confluent Cloud. We will use 172.30.0.0/16. The VPC CIDR block for Confluent Cloud requires a /16. Once the Kafka cluster is ready, you will receive an email from Confluent.

Cluster type: 172.30.0.0/16

In the AWS Management Console, you can create a VPC or use a default VPC with a CIDR block that does not conflict with your Confluent Cloud CIDR (we will use 172.31.0.0/16).

Create VPC: 172.31.0.0/16

Once you have a VPC, set up your subnet with IPv4 CIDR block (172.31.0.0/16).

Create subnet: vpc-4bf48e23

In the cluster settings, click on Add Peering under the “Networking” tab.

Cluster settings: add peering

Fill out the following form with your AWS account number, AWS VPC ID, and AWS VPC CIDR (172.31.0.0/16).

Cluster settings: add peering—172.31.0.0/16

Once the form is filled out, you will be instructed to accept a VPC peering request in your AWS console.

Action required for AWS VPC ID "vpc-4bf48e23"

Go to “Peering Connections” under VPC in the AWS console, and accept the VPC peering request from Confluent Cloud. Make sure the Request VPC on AWS is the same as the Confluent VPC ID for your Kafka cluster.

Create peering connection: Edit DNS settings

After the VPC peering request is accepted, you will see the active status for your VPC peering connection under the cluster settings in Confluent Cloud.

VPC Peering connections: Status "Active"

The last step is to add the new peering connection to the route table for your VPC in the AWS Management Console. Add routes with the Confluent Cloud CIDR (172.30.0.0/16) to the “Destination” column and select Peering Connection in the “Target” column.

Edit routes | Target: peering

If you go to the “Topics” menu through your browser over the public internet, you will see the following warning message Co.

Confluent Control Center | Topics: Error message

Because we will set up a MongoDB Atlas source connector later, we need to create a topic to which the connector will write data. You can follow the steps in the documentation, but for this demo, I created an EC2 machine and used the Confluent CLI to create the topic mongo.sample_restaurants.restaurants.

[ec2-user@ip-172-31-40-74 ~]$ ccloud kafka topic create mongo.sample_restaurants.restaurants
[ec2-user@ip-172-31-40-74 ~]$ ccloud kafka topic list Updates are available for ccloud from (current: v1.10.0, latest: v1.17.0). To view release notes and install them, please run: $ ccloud update
Name +--------------------------------------+ mongo.sample_restaurants.restaurants [ec2-user@ip-172-31-40-74 ~]$

We are all set for the VPC peering between Confluent Cloud and a customer VPC.

MongoDB has good documentation showing how to set up a PrivateLink. To run the MongoDB source connector, first, make sure your cluster tier is M10 or higher and that the cloud provider is AWS.

Cluster0 | cluster tier: M10 (General)

In the “Security” section of the left navigation, click Network Access and then click Private Endpoint.

Select the AWS region (us-east-2), in which you want to create the Atlas VPC.

Add PrivateLink: Ohio (us-east-2)

Once you fill out the following form with your AWS VPC ID and subnets, run the following command with the aws-cli to create your VPC interface endpoint.

PrivateLink: Create Service Endpoint

Find the VPC endpoint ID in the AWS endpoints dashboard under Endpoints > Details > Endpoint ID.

Add PrivateLink | Create Service Endpoint | Create Interface Endpoint

A few minutes later, you will see the “Interface Endpoint Status” being changed to “Available.” Now, you have a PrivateLink between the AWS VPC and MongoDB Atlas.

Create a fully managed MongoDB Atlas source connector

Click the MongoDB Atlas source connector icon under the “Connectors” menu in Confluent Cloud, and fill out the configuration properties with MongoDB Atlas. MongoDB Atlas source connector only supports username and password for database access. Check out the MongoDB Atlas connector documentation for the latest information on supported connector properties.

In this example, let’s choose copy.existing.data=true. This parameter will fetch all existing records from the restaurant collection. The connection host for MongoDB Atlas should be a private connection.
MongoDB connector | Copy existing data: True
Once the connector is up and running, use the Confluent Cloud CLI to see restaurant records.

[ec2-user@ip-172-31-40-74 ~]$ ccloud connector list
ID | Name | Status | Type | Trace +-----------+-------------------------------+---------+--------+-------+ lcc-kxj72 | MongoDbAtlasSourceConnector_0 | RUNNING | source |
[ec2-user@ip-172-31-40-74 ~]$ ccloud kafka topic consume mongo.sample_restaurants.restaurants -b
{"_id": {"_id": {"$oid": "5eb3d668b31de5d588f42fe3"}, "copyingData": true}, "operationType": "insert", "ns": {"db": "sample_restaurants", "coll": "restaurants"}, "documentKey": {"_id": {"$oid": "5eb3d668b31de5d588f42fe3"}}, "fullDocument": {"_id": {"$oid": "5eb3d668b31de5d588f42fe3"}, "address": {"building": "93", "coord": [-74.0019169, 40.7373179], "street": "Greenwich Avenue", "zipcode": "10014"}, "borough": "Manhattan", "cuisine": "Café/Coffee/Tea", "grades": [{"date": {"$date": 1411689600000}, "grade": "A", "score": 2}, {"date": {"$date": 1380240000000}, "grade": "A", "score": 7}, {"date": {"$date": 1349913600000}, "grade": "A", "score": 11}, {"date": {"$date": 1320019200000}, "grade": "A", "score": 11}], "name": "Starbucks Coffee (Store 7261)", "restaurant_id": "40546257"}} {"_id": {"_id": {"$oid": "5eb3d668b31de5d588f42fe8"}, "copyingData": true}, "operationType": "insert", "ns": {"db": "sample_restaurants", "coll": "restaurants"}, "documentKey": {"_id": {"$oid": "5eb3d668b31de5d588f42fe8"}}, "fullDocument": {"_id": {"$oid": "5eb3d668b31de5d588f42fe8"}, "address": {"building": "31", "coord": [-73.988895, 40.739047], "street": "East 20 Street", "zipcode": "10003"}, "borough": "Manhattan", "cuisine": "Italian", "grades": [{"date": {"$date": 1408406400000}, "grade": "A", "score": 12}, {"date": {"$date": 1374796800000}, "grade": "A", "score": 13}, {"date": {"$date": 1343260800000}, "grade": "A", "score": 13}, {"date": {"$date": 1332115200000}, "grade": "A", "score": 9}], "name": "La Pizza Fresca", "restaurant_id": "40546849"}} ...

Now, you have a MongoDB Atlas Source connector running through a VPC-peered Kafka cluster to an AWS VPC, as well as a PrivateLink between AWS and MongoDB Atlas. If you want to run a MongoDB Atlas sink connector in the same setting, your Atlas database must be located in the same region as the cloud provider for your Kafka cluster in Confluent Cloud. This prevents you from incurring data movement charges between cloud regions.

Learn more

If you haven’t tried it yet, check out Confluent Cloud, a fully managed event streaming service based on Apache Kafka.

Confluent Cloud is available on Microsoft Azure and Google Cloud, and AWS Marketplaces with the MongoDB Atlas source, sink, and other fully managed connectors. You can enjoy retrieving data from your data sources to Confluent Cloud and send Kafka records to your destinations without any operational burdens.

As previously mentioned, you can also use the promo code CL60BLOG for an additional $60 of free Confluent Cloud usage (details).

Join us for a live demo to learn how to get started.

  • Nathan Nam is a Senior Product Manager for Kafka Connect and connectors at Confluent. Previously, he worked at MuleSoft as a product manager and held various roles at Samsung Electronics. He holds an MBA from Tuck School of Business at Dartmouth and an MIDS from UC Berkeley.

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