The AWS SQS -> Lambda integration allows you to process incoming messages in a batch, where you configure the maximum number you can receive in a single batch. If you throw an exception during processing, to indicate failure, all the messages are not deleted from the incoming queue and can be picked up by another lambda for processing once the visibility timeout has passed.

Is there any way to keep the batch processing, for performance reasons, but allow some messages from the batch to succeed (and be deleted from the inbound queue) and only leave some of the batch un-deleted?

3 Answers 3


The problem with manually re-enqueueing the failed messages to the queue is that you can get into an infinite loop where those items perpetually fail and get re-enqueued and fail again. Since they are being resent to the queue their retry count gets reset every time which means they'll never fail out into a dead letter queue. You also lose the benefits of the visibility timeout. This is also bad for monitoring purposes since you'll never be able to know if you're in a bad state unless you go manually check your logs.

A better approach would be to manually delete the successful items and then throw an exception to fail the rest of the batch. The successful items will be removed from the queue, all the items that actually failed will hit their normal visibility timeout periods and retain their receive count values, and you'll be able to actually use and monitor a dead letter queue. This is also overall less work than the other approach.


  • Only override the default behavior if there has been a partial batch failure. If all the items succeeded, let the default behavior take its course
  • Since you're tracking the failures of each queue item, you'll need to catch and log each exception as they come in so that you can see what's going on later
  • Are you manually deleting them from the lambda? My understanding was, even if you delete them, if you throw an exception, the whole batch is available again once the visibility timeout passes Oct 1, 2019 at 9:30
  • 2
    Yes, the code in my lambda is deleting the successful items of a partially successful batch of work items. When an exception is thrown in a lambda, AWS doesn't actually do anything with the items in the batch. It just lets them sit there until their visibility timeout expires. Then they're either picked up again by some instance of the lambda or they are moved to a DLQ if appropriate. So, if you delete the successful items from the queue and then throw an exception to signal a partial batch failure, AWS doesn't put the successful ones back on the queue. It doesn't really know about them.
    – cdzar
    Oct 1, 2019 at 20:40
  • Is this true of a FIFO queue? I use the same logic in many of my queues without issue. I recently started using a FIFO queue for one, and the entire batch is re-delivered even when I manually delete the successful items.
    – Chris
    Jul 10, 2020 at 18:57
  • @Chris I haven't used a FIFO queue yet so I don't know. Were you able to find out a documented reason for what you were seeing?
    – cdzar
    Nov 6, 2020 at 21:54

I recently encountered this problem and the best way to handle this without writing any code from our side is to use the FunctionResponseTypes property of EventSourceMapping. Using this we just have to pass the list of failed message Id and the event source will handle to delete the successful message. Please checkout Using SQS and Lambda

Cloudformation template to configure Eventsource for lambda

"FunctionEventSourceMapping": {
  "Type": "AWS::Lambda::EventSourceMapping",
  "Properties": {
    "BatchSize": "100",
    "Enabled": "True",
    "EventSourceArn": {"Fn::GetAtt":  ["SQSQueue", "Arn"]},
    "FunctionName": "FunctionName",
    "MaximumBatchingWindowInSeconds": "100",
    "FunctionResponseTypes": ["ReportBatchItemFailures"] # This is important

After you configure your Event source with above configuration it should look something like below enter image description here

Then we just have to return the response in the below-mentioned format from our lambda

{"batchItemFailures": [{"itemIdentifier": "85f26da9-fceb-4252-9560-243376081199"}]}

Provide the list of failed message Ids in batchIntemFailures list If your lambda runtime environment is in python than please return dict in the above mentioned format for java based runtime you can use aws-lambda-java-event

Sample Python code enter image description here

Advantages of this approach are

  1. You don't have to add any code to manually delete the message from SQS queue
  2. You don't have to include any third party library or boto just for deleting the message from the queue it will help you to reduce your final artifact size.
  3. Keep it simple an stupid

On a side note make sure your lambda have the required permission on sqs to get and delete the message.



One option is to manually send back the failed messages to the queue, and then replying with a success to the SQS so that there are no duplicates.

You could do something like setting up a fail count, so that if all messages failed you can simply return a failed status for all messages, otherwise if the fail count is < 10 (10 being the max batch size you can get from SQS -> Lambda event) then you can individually send back the failed messages to the queue, and then reply with a success message.

Additionally, to avoid any possible infinite retry loop, add a property to the event such as a "retry" count before sending it back to the queue, and drop the event when "retry" is greater than X.

  • Thanks, that's pretty much I was thinking May 22, 2019 at 6:49
  • 1
    See @cdzar answer to avoid the potential infinite re-enqueuing this solution causes.
    – Dylan
    Mar 23, 2020 at 19:41

Your Answer

Reminder: Answers generated by Artificial Intelligence tools are not allowed on Stack Overflow. Learn more

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.