We recommend using Azure Native.
Azure Classic v6.2.0 published on Friday, Sep 27, 2024 by Pulumi
Azure Stream Analytics
An example Pulumi program that deploys an Azure Stream Analytics job to transform data in an Event Hub.
Running the App
Create a new stack:
$ pulumi stack init dev
Login to Azure CLI (you will be prompted to do this during deployment if you forget this step):
$ az login
Restore NPM dependencies:
$ npm install
Configure the location to deploy the example to:
$ pulumi config set azure:location <location>
Run
pulumi up
to preview and deploy changes:$ pulumi up Previewing update (dev): ... Updating (dev): ... Resources: + 15 created Update duration: 2m43s
Use the following sample messages for testing:
// Inputs (1 line - 1 event): {"Make":"Kia","Sales":2,"Time":"2019-06-26T10:22:36Z"} {"Make":"Kia","Sales":1,"Time":"2019-06-26T10:22:37Z"} {"Make":"Honda","Sales":1,"Time":"2019-06-26T10:22:38Z"} // Output: [{"Make":"Kia","Sales":3};{"Make":"Honda","Sales":1}]
You can send a message with a
curl
command:curl -X POST '$(pulumi stack output inputEndpoint)' -H 'Authorization: $(pulumi stack output sasToken)' -H 'Content-Type: application/atom+xml;type=entry;charset=utf-8' -d '{"Make":"Kia","Sales":2,"Time":"2019-06-26T10:22:36Z"}'
Start the Stream Analytics job. The job will start emitting messages to the output Event Hub once per minute. The Azure Function
analytics-output
will start printing those events into the console (you’d have to open the function console in the Azure portal to see them).