Azure Functions Continuous Deployment with Azure Pipelines: Part 4 - Defining and Consuming Pipeline Variables

This is the fourth part in a series demonstrating how to setup continuous deployment of an Azure Functions App using Azure DevOps build and release pipelines.

Demo app source code is available on GitHub.

In the previous instalment we created a build pipeline, defined the build steps using YAML, but when we tried to execute the build, it failed with the error:”buildConfiguration: command not found”. This is because in the YAML build definition we are referencing the $(buildConfiguration) variable which has not  yet been defined.

An Overview of Azure Pipeline Build Variables

“Variables give you a convenient way to get key bits of data into various parts of your build pipeline.” [Microsoft]

Essentially variables allow you to define key/value pairs that can be used throughout the pipeline. They can be passed to YAML build definitions for use in steps, they can be accessed as environment variables in scrips and from unit tests, and can be used in the pipeline GUI when configuring tasks.

There are a whole host of predefined variables such as Agent.JobStatus, Build.BuildNumber, System.PullRequest.PullRequestId, etc.

You can also create your own custom variables.

Creating a Custom Variable in an Azure Pipeline

First off, open the build pipeline by clicking Builds, select the build pipeline you want to edit, and click the Edit button:

Editing an Azure Pipeline build

In the Variables section click Add:

Creating a new Azure Pipeline variable

For the variable Name enter “buildConfiguration” and for the variable Value enter “Release”, also check the “Settable at queue time check box”. This variable will default to “Release” but can also be set to “Debug” when manually queuing a build if you want to create a debug version of the Function App:

Setting an Azure Pipeline variable

Notice the little padlock to the right of the value, clicking this enables you to store “sensitive values in a way that they cannot be seen or changed by users of the release pipelines” [Microsoft]

“The values of hidden (secret) variables are stored securely on the server and cannot be viewed by users after they are saved. During a deployment, the Azure Pipelines release service decrypts these values when referenced by the tasks and passes them to the agent over a secure HTTPS channel.” [Microsoft]

Another nice thing about designating a value as sensitive is that it will also be redacted in log messages produced by Azure Pipelines. Sensitive variables can also be passed to scripts – you should read the documentation and be careful about any custom logging or other output you create as you may inadvertently reveal secrets.

To save the changes, click the Save & queue dropdown and choose Save:

Saving changes to and Azure Pipeline

Once defined, build variables can be consumed in the YAML build template by using the token pattern $(VARIABLENAME), for example $(buildConfiguration):

- script: dotnet build 'src/InvestFunctionApp/InvestFunctionApp.sln' --configuration $(buildConfiguration)
  displayName: 'Build solution'

Manually Queuing an Azure Pipeline Build

To queue up a new build, click the Queue button, optionally choose a branch/commit and click Queue. (Also notice here that it’s possible to set the buildConfiguration variable to a custom value for this build or leave it as the default “Release”):

Manually Queuing an Azure Pipeline Build

Click the handy shortcut in the notification:

Manually Queuing an Azure Pipeline Build

And this will take you to the build that should start executing.

Now that we have the custom variable defined, the build should now complete successfully:

Successfull Azure Pipeline build

Also notice that the steps in the build from “Build solution” to “Publish end to end test artifact” correspond to the steps defined in the YAML and that these are set using displayName: 'Run unit tests'.

In the next instalment of this series we’ll look at how unit tests are executed as part of the build pipeline.

Azure Functions Continuous Deployment with Azure Pipelines: Part 3 - Creating an Initial Build Pipeline

This is the third part in a series demonstrating how to setup continuous deployment of an Azure Functions App using Azure DevOps build and release pipelines.

Demo app source code is available on GitHub.

In the previous instalment we created an Azure DevOps organization and project, we can now create a build pipeline by clicking the New pipeline button:

Starting to create a new build Azure Pipeline

Next we need to specify where the source code is located, this could be hosted inside Azure DevOps using Azure Repos or GitHub. The demo app is located in GitHub.

Triggering an Azure Pipeline from GitHub

Next we need to give permission from GitHub to enable the pipeline to access the repository. The easiest way to do this is to click the Install our app from the GitHub Marketplace link as shown in the following screenshot:

Installing the Azure Pipelines GitHub App

You can allow access to all current (and future) repositories or specified ones:

Installing the Azure Pipelines GitHub App

Click the Install button, confirm your GitHub password, and authorize Azure Pipelines:

Authorize Azure Pipelines

You will be redirected back to Azure DevOps where you can now select the InvestFunctionApp GitHub repository.

You can now select a starter YAML template that will define what happens during the build:

Defining a starter YAML Azure Pipeline build template

Choose the ASP.NET Core template:

Defining a starter YAML Azure Pipeline build template

And click Save and run and then Save and run again.

The build job will now run:

Initial build pipeline executing

Initial build pipeline executing

Initial build pipeline executing

This initial build will fail but don’t worry as we need to go and edit the YAML.

Defining an Azure Pipeline Build for an Azure Function App in YAML

When we chose the starter template earlier, a new file was added to the root of the repository in GitHub called azure-pipelines.yml.

This file defines the steps that make up the build using YAML schema.

Essentially there are a number of steps in a build, each step could be a handwritten custom script, calling a prebuilt task, or referencing another template.

We can  now customize the YAML to defined the build as follows:

  vmImage: 'Ubuntu 16.04'

- script: dotnet build 'src/InvestFunctionApp/InvestFunctionApp.sln' --configuration $(buildConfiguration)
  displayName: 'Build solution'
- script: dotnet test 'src/InvestFunctionApp/InvestFunctionApp.Tests' --configuration $(buildConfiguration) --logger trx
  displayName: 'Run unit tests'

- task: PublishTestResults@2
    testRunner: VSTest
    testResultsFiles: '**/*.trx'

- script: dotnet publish 'src/InvestFunctionApp/InvestFunctionApp/InvestFunctionApp.csproj' --configuration $(buildConfiguration) --output '$(Build.ArtifactStagingDirectory)/app'
  displayName: 'Package function app'

- task: PublishBuildArtifacts@1
  displayName: 'Publishing app artifact'
    pathtoPublish: '$(Build.ArtifactStagingDirectory)/app'
    artifactName: app

- task: CopyFiles@2
  displayName: 'Copy end to end tests'
    sourceFolder: 'src/InvestFunctionApp'
    targetFolder: '$(Build.ArtifactStagingDirectory)/e2etests'

- task: PublishBuildArtifacts@1
  displayName: 'Publish end to end test artifact'
    pathtoPublish: '$(Build.ArtifactStagingDirectory)/e2etests'
    artifactName: e2etests

In the preceding YAML, the displayName items help to describe what is happening and are hopefully fairly descriptive (they will also appear in the Azure Pipeline GUI/logs when builds are run).

Creating Multiple Build Artifacts in Azure Pipelines

One important thing to note in the preceding YAML, is that we are creating two separate build artifacts, one that contains only the Function App contents (for deployment to Azure) and one to be able to run the tests.

The Function App artifact is created by first calling dotnet publish and choosing the (temporary) output directory app with the switch --output '$(Build.ArtifactStagingDirectory)/app'. To actually create the build artifact that can be consumed in a release pipeline, the prebuilt PublishBuildArtifacts@1 task is called. This task takes its input from pathtoPublish: '$(Build.ArtifactStagingDirectory)/app' and will create a build artifact with the name app by virtue of the artifactName: app setting.

To create a separate artifact for the tests, the CopyFiles@2 task is used to copy (effectively the entire solution including the test projects) to the (temporary) targetFolder: '$(Build.ArtifactStagingDirectory)/e2etests'. The final PublishBuildArtifacts@1 task creates a second build artifact called e2etests.

We’ll see these artifacts used later in this series of blog posts.

The reason we create two artifacts here is to separate out what will get deployed to Azure Functions from  the code/binaries that contain the tests. What we don’t want is to publish the tests, DLLs etc. to the deployed function apps in Azure. This can also help the in readability of the release pipeline and potentially help to segregate things so that only the indented things get deployed.

We can now save the changes to azure-pipelines.yml  and push them to GitHub (which will actually trigger a new CI build).

Viewing Azure Pipeline Builds

Once the changes are pushed, the Azure Pipeline that we created will notice the changes and execute. If you click on Builds you will see the build running:

Azure Pipeline Build Running

Clicking in the build will show you all the steps:

Azure Pipeline build details

Notice in the preceding screenshot that the “Build solution” step is failing. Clicking it will show you the logs for the step:

Viewing Azure Pipeline build logs

Notice in the preceding screenshot the error”buildConfiguration: command not found”. This is because in the YAML build definition we are referencing the $(buildConfiguration) variable which is not yet defined.

In the next instalment of this series we’ll learn how to add variables to a pipeline and fix this problem.

Azure Functions Continuous Deployment with Azure Pipelines: Part 2 - Getting Started

This is the second part in a series demonstrating how to setup continuous deployment of an Azure Functions App using Azure DevOps build and release pipelines.

In the previous instalment we got an overview  of Azure DevOps and of the app we’ll be building/deploying.

Demo app source code is available on GitHub.

Creating Azure Function Apps

There will be two Function Apps created in Azure. One will be a self-contained test environment (with separate Azure Storage account) and to keep things simple they both belong to the same resource group. The other Function App will be the production version. For simplicity we won’t be using slots, proxies, etc.

The two Function Apps are:

  • InvestFunctionAppDemo (production)
  • InvestFunctionAppDemoTest (test)

The test environment will be used to check the deployment  artifacts and as a target to execute functional end-to-end tests against.

Once these two Function Aps have been created in the Portal, all of the deployments will happen automatically from the release pipeline, including setting test/production specific Function App settings.

If you don’t have an Azure account you can currently sign up for free.

Signing Up or Azure DevOps

Now that there are some Function Apps created in Azure to deploy to, you can deploy to them from an Azure release pipelines. To do this you’ll need to sign up to Azure DevOps.

Azure DevOps contains a number of services, in this series we’ll be using the Azure Pipeline service.

An Overview of Azure Pipelines

Azure DevOps is currently free for open source projects and small teams with some limitations on things such as parallel job execution all the way up to 1,000 users for $7,833.26 USD/month. You can find the latest pricing information as part of the product information and compare features of different plans.

You can just use Azure Pipelines on their own, you don’t have to use all of the DevOps services (Boards, etc.).

Some of the features of Azure Pipelines include:

  • Build, test, and deploy for multiple languages including .NET. Python, Java, iOS, etc.
  • Container build and publish support
  • Deploy to clouds including Azure, AWS, and Google Cloud Platform
  • 10 free parallel jobs and unlimited build minutes for all open source projects
  • Advanced workflow features, testing, reporting, gates, etc.

Azure DevOps Organizations and Projects

Once you’ve signed up for Azure DevOps you’ll need an organization and a project.

“ organization is a mechanism for organizing and connecting groups of related projects. Examples are business divisions, regional divisions, or other organizational structure. You can choose one organization for your entire company, or separate organizations for specific business units, or an organization just for you.” [Microsoft]

“Each organization contains one or more projects. Each project contains a set of features: boards and backlogs for agile planning, pipelines for continuous integration and deployment, repos for version control and management of source code and artifacts, and continuous test integration throughout the life cycle.” [Microsoft]

Creating a new Azure DevOps Project

Once the project is created, you can navigate to Pipelines section to create and manage build and release pipelines.

In the next part of this series we’ll create an initial build pipeline and get an introduction to defining source-controlled build definitions using YAML.

Azure Functions Continuous Deployment with Azure Pipelines: Part 1 - Overview

This is the first part in a series demonstrating how to setup continuous deployment of an Azure Functions App using Azure DevOps build and release pipelines.

In this series we’ll explore (among other things) how to:

  • Build an Azure Functions App when code is pushed to GitHub
  • Run unit tests as part of the build
  • Create multiple Azure Pipeline artifacts
  • Release to a test Function App environment in Azure
  • Run automated functional end to end tests
  • Release to a production Function App environment in Azure
  • Run smoke tests after a production deployment

…in addition to a whole host of other things such as: YAML build files, Azure Pipeline variables, setting Azure Function app settings from an Azure release pipeline, and using post-deployment gates.

An Overview of Azure DevOps

Azure DevOps is a collection of cloud services to facilitate team DevOps practices and includes:

  • Azure boards
  • Azure Pipelines
  • Azure repos
  • Azure test plans
  • Azure Artifacts

In this series we’ll be focussing on Azure Pipelines to build, test, and deploy the Function App automatically when new changes are pushed to GitHub.

InvestFunctionApp Overview

The demo code for these demos can be found on GitHub.

The InvestFunctionApp contains a number of functions that allow the investing of money in a portfolio. The initial entry point is a HTTP-triggered function that allows the investor id to be specified along with how much to add to the investors portfolio.Depending on the investors target allocations, the amount will be investing in either bonds or shares.

There are 4 functions involved in this workflow:

  1. Portfolio function: HTTP trigger, starts the workflow, creates a queue message
  2. CalculatePortfolioAllocation function: queue trigger from the output of (1), calculates where to invest and writes to either buy-stocks queue (3) or buy-bonds queue (4)
  3. BuyStocks function: triggered from buy-stocks queue, simulates buying stocks and updates the investor’s portfolio in Azure Table storage
  4. BuyBonds function: triggered from buy-bonds queue, simulates buying bonds and updates the investor’s portfolio in Azure Table storage

The app is designed to demonstrate the  facilities of Azure Pipelines and is simplified in many ways including minimal error checking, auditing, transactions, security, etc.

Azure DevOps Build Pipeline

The build Azure Pipeline will be automatically triggered from changes pushed to the GitHub repository.

The build pipeline will have the following steps:

  1. Build the solution
  2. Run unit tests
  3. Publish test results
  4. Package the Function App
  5. Publish the packaged Function App as a build artifact
  6. Copy the functional end-to-end tests
  7. Publish the functional end-to-end tests as a separate build artifact

Assuming all these step run without error, the two build artifacts can be passed to/used by the release pipeline.

Azure DevOps Release Pipeline

The release pipeline will be triggered automatically when the build pipeline completes without error.

The following diagram shows what the resulting release pipeline will look like:

Azure DevOps Release Pipeline example

The release pipeline will:

  1. Deploy the Function App to a test Function App in Azure
  2. Run functional end-to-end tests (written in against this test deployment
  3. If the tests in (2) pass, deploy to production
  4. After deploying to production, call a smoke test function to verify the deployment was successful

In the next part of this series we’ll create Function Apps, signup to Azure DevOps, create a new DevOps project, and take a closer look at the demo function app.

Remote Debugging Azure Functions V2 "The breakpoint will not currently be hit. No symbols have been loaded for this document"

Sometimes it can be tricky to attach the Visual Studio debugger to a deployed Azure Functions app. For example if you use Cloud Explorer you can right click on the deployed Azure Function and choose Attach Debugger as the following screenshot shows:

Using Cloud Explorer to debug an Azure Function

While this may seem to work at first, you may experience a problem with your breakpoints actually being hit when function app code is executing with the message “The breakpoint will not currently be hit. No symbols have been loaded for this document”.

The breakpoint will not currently be hit. No symbols have been loaded for this document

As an alternative to attaching via Cloud Explorer, you can try the following approach:

1 Log in to Azure Portal and navigate to your deployed function app.

2 Download the publish profile

Downloading publish profile for Azure Function app

3 Open the downloaded file

Make a note of the userName, userPWD and destinationAppUrl values.

4 Attach Visual Studio Debugger to Azure Function App

  1. Make sure your function app project is open in Visual Studio
  2. Make sure that you have deployed a debug version of the function app to Azure
  3. On the Debug menu choose Attach to Process..
  4. For the Attach to value, click the Select.. button and un-tick everything except Managed (CoreCLR) code
  5. In the Connection target enter the  destinationAppUrl (without the preceding http) followed by :4022 – for example: – and hit Enter
  6. You should now see an Enter Your Credentials popup box, use the userName and userPWD from step 3 and click Ok
  7. Wait a few seconds for Visual Studio to do its thing
  8. Click the w3wp.exe process and the click the Attach button (see screenshot below) Be patient after clicking as it may take quite a while for all the debug symbols to load.

Attaching to the Azure Functions w3wp.exe process

5 Set your breakpoints as desired

Breakpoint set in function run method

6 Invoke your function code and you should see your breakpoint hit

Once again this may take a while so be patient, you may also see “a remote operation is taking longer than expected”.

Azure Function breakpoint being hit in Visual Studio

Testing Precompiled Azure Functions Overview

Just because serverless allows us to quickly deploy value, it doesn’t mean that testing is now obsolete. (click to Tweet)

If we’re using Azure Functions as our serverless platform we can write our code (for example C#) and test it before deploying to Azure. In this case we’re talking about precompiled Azure Functions as opposed to earlier incarnations of Azure Functions that used .csx script files.

Working with precompiled functions means the code can be developed and tested on a local development machine. The code we write is familiar C# with some additional attributes to integrate the code with the Azure Functions runtime.

Because the code is just regular C#, we can use familiar testing tools such as MSTest,, or NUnit. Using these familiar testing frameworks it’s possible to write tests that operate at different levels of granularity.

One way to categorize these tests are into:

  • Unit tests to check core business logic/value
  • Integration tests to check function run methods are operating correctly
  • End-to-end workflow tests that check multiple functions working together

To enable effective automated testing it may be necessary to write functions in such a way as to make them testable, for example by allowing function run method dependencies to be automatically injected at runtime, whereas at test time mock versions can be supplied for example using a framework such as AzureFunctions.Autofac.

There are other tools that allow us to more easily test functions locally such as the local functions runtime and the Azure storage emulator.

To learn more about using these tools and techniques to test Azure Functions, check out my Pluralsight course Testing Precompiled Azure Functions: Deep Dive.

Automatic Input Blob Binding in Azure Functions from Queue Trigger Message Data

Reading additional blob content when an Azure Function is triggered can be accomplished by using an input blob binding by defining a parameter in the function run method and decorating it with the [Blob] attribute.

For example, suppose you have a number of blobs that need converting in some way. You could initiate a process whereby the list of blob files that need processing are added to a storage queue. Each queue message contains the name of the blob that needs processing. This would allow the conversion function to scale out to convert multiple blobs in parallel.

The following code demonstrates one approach to do this. The code is triggered from a queue message that contains text representing the input bob filename that needs reading, converting, and then outputting to an output blob container.

using System.IO;
using Microsoft.Azure.WebJobs;
using Microsoft.WindowsAzure.Storage;
using Microsoft.WindowsAzure.Storage.Blob;

namespace FunctionApp1
    public static class ConvertNameCase
        public static void Run([QueueTrigger("capitalize-names")]string inputBlobPath)
            string originalName = ReadInputName(inputBlobPath);

            var capitalizedName = originalName.ToUpperInvariant();

            WriteOutputName(inputBlobPath, capitalizedName);
        private static string ReadInputName(string blobPath)
            CloudStorageAccount account = CloudStorageAccount.DevelopmentStorageAccount;
            CloudBlobClient blobClient = account.CreateCloudBlobClient();
            CloudBlobContainer container = blobClient.GetContainerReference("names-in");

            var blobReference = container.GetBlockBlobReference(blobPath);

            string originalName = blobReference.DownloadText();

            return originalName;

        private static void WriteOutputName(string blobPath, string capitalizedName)
            CloudStorageAccount account = CloudStorageAccount.DevelopmentStorageAccount;
            CloudBlobClient blobClient = account.CreateCloudBlobClient();
            CloudBlobContainer container = blobClient.GetContainerReference("names-out");

            CloudBlockBlob cloudBlockBlob = container.GetBlockBlobReference(blobPath);


In the preceding code, there is a lot of blob access code (which could be refactored). This function could however be greatly simplified by the use of one of the built-in binding expression tokens. Binding expression tokens can be used in binding expressions and are specified inside a pair of curly braces {…}. The {queueTrigger} binding token will extract the content of the incoming queue message that triggered a function.

For example, the code could be refactored as follows:

using System.IO;
using Microsoft.Azure.WebJobs;

namespace FunctionApp1
    public static class ConvertNameCase
        public static void Run(
        [QueueTrigger("capitalize-names")]string inputBlobPath,
        [Blob("names-in/{queueTrigger}", FileAccess.Read)] string originalName,
        [Blob("names-out/{queueTrigger}")] out string capitalizedName)
                capitalizedName = originalName.ToUpperInvariant();         

In the preceding code, the two [Blob] binding paths make use of the {queueTrigger} token. When the function is triggered, the queue message contains the name of the file to be processed. In the two [Blob] binding expressions, the {queueTrigger} token part will automatically be replaced with the text contents of the incoming message. For example if the message contained the text “File1.txt” then the two blob bindings would be set to names-in/File1.txt and names-out/File1.txt respectively. This means the input blob nameBlob string will automatically be read when the function is triggered,

To learn more about creating precompiled Azure Functions in Visual Studio, check out my Writing and Testing Precompiled Azure Functions in Visual Studio 2017 Pluralsight course.

Dynamic Binding in Azure Functions with Imperative Runtime Bindings

When creating precompiled Azure Functions, bindings (such as a blob output bindings) can be declared in the function code, for example the following code defines a blob output binding:


This binding creates a new blob with a random (GUID) name. This style of binding is called declarative binding, the binding details are declared as part of the binding attribute.

In addition to declarative binding, Azure Functions also offers imperative binding. With this style of binding, the details of the binding can be chosen at runtime. These details could be derived from the incoming function trigger data or from an external place such as a configuration value or database item

To create imperative bindings, rather than using a specific binding attribute, a parameter of type IBinder is used. At runtime, a binding can be created (such as a blob binding, queue binding, etc.) using this IBinder. The Bind<T> method of the IBinder can be used with T representing an input/output type that is supported by the binding you intend to use.

The following code shows imperative binding in action. In this example blobs are created and the blob path is derived from the incoming JSON data, namely the category.

public static class CreateToDoItem
    public static async Task<HttpResponseMessage> Run(
        [HttpTrigger(AuthorizationLevel.Function, "post", Route = null)]HttpRequestMessage req,
        IBinder binder,
        TraceWriter log)
        ToDoItem item = await req.Content.ReadAsAsync<ToDoItem>();
        item.Id = Guid.NewGuid().ToString();

        BlobAttribute dynamicBlobBinding = new BlobAttribute(blobPath: $"todo/{item.Category}/{item.Id}");

        using (var writer = binder.Bind<TextWriter>(dynamicBlobBinding))

        return req.CreateResponse(HttpStatusCode.OK, "Added " + item.Description);

If the following 2 POSTS are made:

    "Description" : "Lift weights",
    "Category" : "Gym"
    "Description" : "Feed the dog",
    "Category" : "Home"

Then 2 blobs will be output with the following paths - note the random filenames and imperatively-bound paths: Gym and Home :

Create Precompiled Azure Functions With Azure Event Grid Triggers

Visual Studio can be used to create precompiled Azure Functions using standard C# classes and tools/techniques and then they can be published to Azure.

This article assumes you’ve created the resources (resource group, Event Grid Topic, etc.) from this previous article.

In Visual Studio 2017, create a new Azure Functions project.

Next update the pre-installed Microsoft.NET.Sdk.Functions NuGet package to the latest version.

To get access to the Azure Event Grid function trigger attribute, install the Microsoft.Azure.WebJobs.Extensions.EventGrid NuGet package (this package is currently in preview/beta).

Add a new class to the project with the following code:

using Microsoft.Azure.WebJobs;
using Microsoft.Azure.WebJobs.Extensions.EventGrid;
using Microsoft.Azure.WebJobs.Host;

namespace DCTDemos
    public static class Class1
        public static void SendNewLeadWelcomeLetter([EventGridTrigger] EventGridEvent eventGridEvent, TraceWriter log)
            log.Info($"EventGridEvent" +
                $"\n\tId:{eventGridEvent.Id}" +
                $"\n\tTopic:{eventGridEvent.Topic}" +
                $"\n\tSubject:{eventGridEvent.Subject}" +
                $"\n\tType:{eventGridEvent.EventType}" +

Notice in the preceding code, the method name SendNewLeadWelcomeLetter is the same as specified in the function name attribute, this may be required due to a bug in the current preview/beta implementation – if these are different your function may not be executed when an event occurs.

Right-click on the function project and choose publish. Follow the wizard and create a new Function App and select your resource group where your Event Grid Topics is. Select West US 2 if you need to create any new Azure resources/storage account/etc..

Once deployed, head over to Azure Portal, open your new function app and select the newly deployed SendNewLeadWelcomeLetter function:

Adding an Azure Event Grid subcription for an Azure Function

At the top right select Add Event Grid subscription. And follow the wizard to create a new subscription - this will enable the new function to be triggered by an Event Grid Subscription. As part of the subscription we’ll limit the event type to new-sales-lead-created:

Adding an Azure Event Grid subcription for an Azure Function

Next go to the function app platform features tab and select Log Streaming. We can now use Postman to POST the following JSON to the Event Grid Topic we created earlier.

        "id": "1236",
        "eventType": "new-sales-lead-created",
        "subject": "myapp/sales/leads",
        "eventTime": "2017-12-08T01:01:36+00:00",
            "firstName": "Amrit",
            "postalAddress": "xyz"

Head back to the streaming logs and you should see your precompiled Azure Function executing in response to the Event Grid event:

2017-12-08T06:38:25  Welcome, you are now connected to log-streaming service.

2017-12-08T06:38:49.841 Function started (Id=ec927bc1-fa15-4211-a7bd-8e593f5d4840)

2017-12-08T06:38:49.841 EventGridEvent

  "firstName": "Amrit",

  "postalAddress": "xyz"


2017-12-08T06:38:49.841 Function completed (Success, Id=ec927bc1-fa15-4211-a7bd-8e593f5d4840, Duration=0ms)


To learn how to create precompiled Azure Functions in Visual Studio, check out my Writing and Testing Precompiled Azure Functions in Visual Studio 2017 Pluralsight course.

Getting Started with Azure Event Grid

In a previous article we got an introduction to Azure Event Grid, if you’re new to Event Grid you should check it out first to familiarise yourself with some basic concepts.

In this article we’ll create an Azure Event Grid topic and subscription and see it in action.

First off, if you want to create a free Azure Account you can do so, then log into the Azure portal.

Next go and create a new resource group, Azure Event Grid is currently in preview and only available in selected locations such as West US 2.

Creating a new resource group

Once the resource group is created, head down to the More services option and search for Event Grid.

Navigating to Event Grid Topics

There are topics provided by Azure services (such as blob storage ) and there is also the ability to create your own custom topics for custom applications/third parties/etc.

Click Event Grid Topics and this will take you to a list of all your topics. Click the +Add button to begin creation of a custom topic. Give the topic a name sales-leads and choose the resource group created earlier, once again choose West US 2.

Creating a new Azure Event Grid Topic

Click create, wait for the deployment to complete and hit refresh in the topics list to see your new topic:

Azure Event Grid topic added

Click on the newly added sales-leads topic, notice the overview showing publish metrics:

Event Grid Topic details

At the top right hover over the Topic Endpoint and click the button to copy this to the clipboard (we’ll use this later):

Getting Event Grid Topic endpoint

In this example the copied endpoint is:

We’ll also need an access key to be able to HTTP POST to this custom topic later, to do this click the Access keys option and copy Key 1 for later use:

Getting access key for Azure Event Grid topic

Click back on Overview and click the +Event Subscription button:

Creating a new Azure Event Grid Subscription

In this example we’ll create a subscription that will call an external (to Azure) service that will mail a conference brochure to all new sales leads. In this example we are simulating a temporary extension to the sales system for a limited period during the run-up to a sales conference. This is one use case for Azure Event Grid that allows extension of a core system without needing to modify it (assuming that events are being emitted).

To simulate this external service we’ll use RequestBin which you can learn more about in this article. Once you’ve created your request bin, take a note of the Bin URL.

Creating a RequestBin URL

Fill out the new event subscription details:

  • Name: send-upcoming-conference-brochure
  • Subscribe to all event types: Untick
  • Event Types: new-sales-lead-created
  • Subscriber endpoint: (this is the RequestBin URL created above)

Event subscription details

Click Create.

To recap, there is now a custom topic called sales-leads that we can publish events to at its URL: There is also an event subscription set up for this topic but that is limited to only those events published of type new-sales-lead-created. This event subscription uses the Azure Event Grid WebHooks event handler to HTTP push events to the RequestBin URL.

To see this in action, open Postman and select POST and paste the topic URL ( Add a header called aeg-sas-key and paste in the key that was copied earlier:

Basic Postman setup

The final thing to do is define the event data that we want to publish:

        "id": "42",
        "eventType": "new-sales-lead-created",
        "subject": "myapp/sales/leads",
        "eventTime": "2017-12-07T01:01:36+00:00",
            "firstName": "Jason",
            "postalAddress": "xyz"

Event JSON data

And then click Send in Postman. You should get a 200 OK response.

Heading back to the RequestBin window and refreshing the page shows the subscription working and the event being pushed to RequestBin:

RequestBin receiving Azure Event Grid event

Because the event subscription is filtered on an event type of new-sales-lead-created, if we send a different event type from Postman (e.g.: "eventType": "new-sales-lead-rejected",), the subscription won’t activate nor push the event to RequestBin.