# Stream Data into Amazon Kinesis

EMQX supports seamless integration with Amazon Kinesis Data Streams (opens new window) which can be integrated to several other AWS Services for real-time extraction, processing and analysis of MQTT data.


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# Feature List

# Quick Start Tutorial

This section introduces how to configure the Amazon Kinesis data bridge, including how to set up the Kinesis service, create data bridges and rules for forwarding data to Kinesis and test the data bridges and rules.

# Create Stream in Amazon Kinesis Data Streams

Follow the steps below to create a Stream via the AWS Management Console (see this tutorial (opens new window) for more details).

  1. Sign in to the AWS Management Console and open the Kinesis console (opens new window).

  2. In the navigation bar, expand the Region selector and choose a Region.

  3. Choose Create data stream.

  4. On the Create Kinesis stream page, enter a name for your data stream and then choose the On-demand capacity mode.

# Emulate Amazon Kinesis Data Streams locally

To facilitate the development and test, you can emulate the Amazon Kinesis Data Streams service locally via LocalStack (opens new window). With LocalStack, you can run your AWS applications entirely on your local machine without connecting to a remote cloud provider.

  1. Install and run it using a Docker Image:

    # To start the LocalStack docker image locally
    docker run --name localstack -p '4566:4566' -e 'KINESIS_LATENCY=0' -d localstack/localstack:2.1
    # Access the container
    docker exec -it localstack bash
  2. Create a stream named my_stream with only one shard:

    awslocal kinesis create-stream --stream-name "my_stream" --shard-count 1

# Create a Kinesis Data Bridge

  1. Go to EMQX Dashboard, click Integration -> Data Bridge.

  2. Click Create on the top right corner of the page.

  3. In the Create Data Bridge page, click to select Amazon Kinesis, and then click Next.

  4. Enter a name for the data bridge. The name should be a combination of upper/lower case letters and numbers.

  5. Enter the connection information:

  6. In the Payload Template field, leave it blank or define a template.

    • If left blank, it will encode all visible inputs from the MQTT message using JSON format, such as clientid, topic, payload, etc.

    • If using the defined template, placeholders of the form ${variable_name} will be filled with the corresponding value from the MQTT context. For example, ${topic} will be replaced with my/topic if such is the MQTT message topic.

  7. Advanced settings (optional): Choose whether to use buffer queue and batch mode as needed. For details, see Data Integration.

  8. Before clicking Create, you can click Test Connectivity to test that the bridge can connect to the Amazon Kinesis server.

  9. Click Create to finish the creation of the data bridge.

    A confirmation dialog will appear and ask if you like to create a rule using this data bridge, you can click Create Rule to continue creating rules to specify the data to be saved into Amazon Kinesis. You can also create rules by following the steps in Create Rules for Amazon Kinesis Data Bridge.

# Create a Rule for Amazon Kinesis Data Bridge

You can continue to create rules to specify the data to be saved into Amazon Kinesis.

  1. Go to EMQX Dashboard, click Integration -> Rules.

  2. Click Create on the top right corner of the page.

  3. Input my_rule as the rule ID.

  4. Set the rules in the SQL Editor. If you want to save the MQTT messages under topic t/# to Amazon Kinesis Data Streams, you can use the SQL syntax below.

    Note: If you want to specify your own SQL syntax, make sure that the SELECT part includes all fields required by the payload template in the data bridge.

  5. Click the Add Action button, select Forwarding with Data Bridge from the dropdown list, and then select the data bridge you just created under Data Bridge. Then click the Add button.

  6. Click Create at the page bottom to finish the creation.

Now a rule to forward data to Amazon Kinesis Data Streams via the Amazon Kinesis bridge is created. You can click Integration -> Flows to view the topology. It can be seen that the messages under topic t/# are sent and saved to Amazon Kinesis Data Streams after parsing by rule my_rule.

# Test the Data Bridge and Rule

  1. Use MQTTX to send messages on the topic t/my_topic.

    mqttx pub -i emqx_c -t t/my_topic -m '{ "msg": "hello Amazon Kinesis" }'
  2. Check the running status of the data bridge, there should be one new incoming and one new outgoing message.

  3. Go to Amazon Kinesis Data Viewer (opens new window). You should see the message when getting records.

# Use LocalStack to Check

If you use LocalStack, follow the steps below to check the received data.

  1. Use the following command to get the ShardIterator before sending the message to the bridge.

    awslocal kinesis get-shard-iterator --stream-name my_stream --shard-id shardId-000000000000 --shard-iterator-type LATEST
    "ShardIterator": "AAAAAAAAAAG3YjBK9sp0uSIFGTPIYBI17bJ1RsqX4uJmRllBAZmFRnjq1kPLrgcyn7RVigmH+WsGciWpImxjXYLJhmqI2QO/DrlLfp6d1IyJFixg1s+MhtKoM6IOH0Tb2CPW9NwPYoT809x03n1zL8HbkXg7hpZjWXPmsEvkXjn4UCBf5dBerq7NLKS3RtAmOiXVN6skPpk="
  2. Use MQTTX to send messages on the topic t/my_topic.

    mqttx pub -i emqx_c -t t/my_topic -m '{ "msg": "hello Amazon Kinesis" }'
  3. Read the records and decode the received data.

    awslocal kinesis get-records --shard-iterator="AAAAAAAAAAG3YjBK9sp0uSIFGTPIYBI17bJ1RsqX4uJmRllBAZmFRnjq1kPLrgcyn7RVigmH+WsGciWpImxjXYLJhmqI2QO/DrlLfp6d1IyJFixg1s+MhtKoM6IOH0Tb2CPW9NwPYoT809x03n1zL8HbkXg7hpZjWXPmsEvkXjn4UCBf5dBerq7NLKS3RtAmOiXVN6skPpk="
        "Records": [
                "SequenceNumber": "49642650476690467334495639799144299020426020544120356866",
                "ApproximateArrivalTimestamp": 1689389148.261,
                "Data": "eyAibXNnIjogImhlbGxvIEFtYXpvbiBLaW5lc2lzIiB9",
                "PartitionKey": "key",
                "EncryptionType": "NONE"
        "NextShardIterator": "AAAAAAAAAAFj5M3+6XUECflJAlkoSNHV/LBciTYY9If2z1iP+egC/PtdVI2t1HCf3L0S6efAxb01UtvI+3ZSh6BO02+L0BxP5ssB6ONBPfFgqvUIjbfu0GOmzUaPiHTqS8nNjoBtqk0fkYFDOiATdCCnMSqZDVqvARng5oiObgigmxq8InciH+xry2vce1dF9+RRFkKLBc0=",
        "MillisBehindLatest": 0
    echo 'eyAibXNnIjogImhlbGxvIEFtYXpvbiBLaW5lc2lzIiB9' | base64 -d
    { "msg": "hello Amazon Kinesis" }