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Using Azure Serverless products to perform file validation on a per-batch basis

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sample
csharp
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azure-blob-storage
azure-event-grid
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azure-table-storage
dotnet
This sample outlines ways to accomplish validation across files received in a batch format using Azure Serverless technologies.

File processing and validation using Azure Functions, Logic Apps, and Durable Functions

This sample outlines multiple ways to accomplish the following set of requirements using Azure Serverless technologies. One way uses the "traditional" serverless approach, another Logic Apps, and another Azure Functions' Durable Functions feature.

Problem statement

Given a set of customers, assume each customer uploads data to our backend for historical record keeping and analysis. This data arrives in the form of a set of .csv files with each file containing different data. Think of them almost as SQL Table dumps in CSV format.

When the customer uploads the files, we have two primary objectives:

  1. Ensure that all the files required for the customer are present for a particular "set" (aka "batch") of data
  2. Only when we have all the files for a set, continue on to validate the structure of each file ensuring a handful of requirements:
    • Each file must be UTF-8 encoded
    • Depending on the file (type1, type2, etc), ensure the correct # of columns are present in the CSV file

Setup

To accomplish this sample, you'll need to set up a few things:

  1. Azure General Purpose Storage
    • For the Functions SDK to store its dashboard info, and the Durable Functions to store their state data
  2. Azure Blob Storage
    • For the customer files to be uploaded in to
  3. Azure Event Grid (with Storage Events)
  4. ngrok to enable local Azure Function triggering from Event Grid (see this blog post for more)
  5. Visual Studio 2019
  6. Azure Storage Explorer (makes testing easier)

For the Python version of this sample (folder AzureFunctions.Python), follow the instructions in its dedicated readme.

Execution

Pull down the code.

Copy sample.local.settings.json in the AzureFunctions.v3 project to a new file called local.settings.json.

This file will be used across the functions, durable or otherwise.

Next, run any of the Function apps in this solution. You can use the v1 (.Net Framework) or the v3 (.Net Core) version, it's only needed for Event Grid validation. With the function running, add an Event Grid Subscription to the Blob Storage account (from step 2), pointing to the ngrok-piped endpoint you created in step 4. The URL should look something like this:

  • Normal Functions: https://b3252cc3.ngrok.io/api/EnsureAllFiles
  • Durable Functions: https://b3252cc3.ngrok.io/api/Orchestrator

An Event Grid subscription set up to target an ngrok endpoint

Upon saving this subscription, you'll see your locally-running Function get hit with a request and return HTTP OK, then the Subscription will go green in Azure and you're set.

Now, open Azure Storage Explorer and connect to the Blob Storage Account you've created. In here, create a container named cust1. Inside the container, create a new folder called inbound.

Take one of the .csv files from the sampledata folder of this repo, and drop it in to the inbound folder.

You'll see the endpoint you defined as your Event Grid webhook subscription get hit.

Durable Function Execution

  1. Determine the "batch prefix" of the file that was dropped. This consists of the customer name (cust1), and a datetime stamp in the format YYYYMMDD_HHMM, making the batch prefix for the first batch in sampledata defined as cust1_20171010_1112
  2. Check to see if a sub-orchestration for this batch already exists.
  3. If not, spin one up and pass along the Event Grid data that triggered this execution
  4. If so, use RaiseEvent to pass the filename along to the instance.

In the EnsureAllFiles sub-orchestration, we look up what files we need for this customer (cust1) and check to see which files have come through thus far. As long as we do not have the files we need, we loop within the orchestration. Each time waiting for an external newfile event to be thrown to let us know a new file has come through and should be processed.

When we find we have all the files that constitute a "batch" for the customer, we call the ValidateFileSet activity function to process each file in the set and validate the structure of them according to our rules.

When Validation completes successfully, all files from the batch are moved to a valid-set subfolder in the blob storage container. If validation fails (try removing a column in one of the lines in one of the files), the whole set gets moved to invalid-set

Resetting Durable Execution

Because of the persistent behavior of state for Durable Functions, if you need to reset the execution because something goes wrong it's not as simple as just re-running the function. To do this properly, you must:

  • Delete the DurableFunctionsHubHistory Table in the "General Purpose" Storage Account you created in Step 1 above.
  • Delete any files you uploaded to the /inbound directory of the blob storage container triggering the Functions.

Note: after doing these steps you'll have to wait a minute or so before running either of the Durable Function implementations as the storage table creation will error with 409 CONFLICT while deletion takes place.

"Classic" Function execution

  1. Determine the "batch prefix" of the file that was dropped. This consists of the customer name (cust1), and a datetime stamp in the format YYYYMMDD_HHMM, making the batch prefix for the first batch in sampledata defined as cust1_20171010_1112
  2. Check to see if we have all necessary files in blob storage with this prefix.
  3. If we do, check to see if there's a lock entry in the FileProcessingLocks table of the General Purpose Storage Account containing this prefix. If so, bail. If not, create one, then call the ValidateFunctionUrl endpoint with the batch prefix as payload.
  4. The Validate function gets the request & checks to see if the lock is marked as 'in progress'. If so, bail. If not, mark it as such and continue validating the files in the Blob Storage account which match the prefix passed in.

When Validation completes successfully, all files from the batch are moved to a valid-set subfolder in the blob storage container. If validation fails (try removing a column in one of the lines in one of the files), the whole set gets moved to invalid-set

Resetting Classic Execution

  • Delete the FileProcessingLocks table from the General Purpose Storage Account.
  • Delete any files you uploaded to the /inbound directory of the blob storage container triggering the Functions.

Note: after doing these steps you'll have to wait a minute or so before running either of the Durable Function implementations as the storage table creation will error with 409 CONFLICT while deletion takes place.

Logic Apps

While not identically behaved, this repo also contains deployment scripts for two Logic App instances which perform roughly the same flow.

Batch Processor

This LA gets Storage Events from event grid, pulls off the full prefix of the file (also containing the URL), and sends this on to...

Batch Receiver

This receives events from the Processor and waits for 3 containing the same prefix to arrive before sending the batch on to the next step (you can change this to be whatever you want after deployment)

Known issues

Durable Functions

  • If you drop all the files in at once, there exists a race condition when the events fired from Event Grid hit the top-level Orchestrator endpoint; it doesn't execute StartNewAsync fast enough and instead of one instance per batch, you'll end up with multiple instances for the same prefix (even though we desire one instance per, acting like a singleton).

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.