I would love to hear more about real application experience witn MongoDB as a queue service, if you used MongoDB for this purpose could you share your thoughts, as well as the environment in which it was used?

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    moderators hurt the community once again, why do you close questions like this? it's so dwight schrute – user1130176 Dec 17 '20 at 15:59

I am using mongodb as a queue service for email sending. Soon it will work in following way:

  1. When a new message comes I store it in the mongodb.
  2. A background job then loads the message from mongodb via the atomic operation findAndModify and sets the flag Processing to true, so it does not process same message twice (because my background job runs multiple threads in parallel).
  3. Once the email has been sent I remove the document from mongodb.
  4. You can also keep count of the failures for each message and remove it after 3 failed attempts.

In general I use mongodb as a queue service only for one reason: because I need to send emails by specified schedule (each message contains information on what time it should be sent).

If you do not have any schedule and need to process message immediately, I suggest that you look into existing queue services, because they probably handle all cases that you may not see without a deeper understanding of message queues.


When background job crashes during message processing you could do following:

  1. Move this message to another, message queue errors collection or..

  2. Increase processing attempts counter in a message and again assign status "New", to try process it again. Just make sure that background job is idempotent (can process same message multiple times and not corrupt data) and transactional (when job fails you must undone changes that was made. if any). When job fails after 5 attempts (config value) perform #1.

  3. Once bug with message processing was fixed you could process it again once more by assigning "New" status and moving to the message queue, or just delete this message. It depends on business processes actually.

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    This. Another motivation for building this on top of MongoDB rather than a dedicated MQ is that it saves you on having to interface with yet another service from within your app. The only major issue is throughput which will be lower than a designed-for-the-purpose MQ. – Remon van Vliet Feb 14 '12 at 11:54
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    I've also been looking for a good Q impl on Mongo. What do you do if your background job crashes or restarts after having set the Processing flag to true but before it can process the message? – cirrus Apr 6 '13 at 20:16
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    @cirrus This is something I am wondering, too. I am planning to distinguish three states (NEW / IN PROGRESS / DONE) and also maintain a last modification date/time. A new worker (or a dedicated garbace gollector) could then start with looking for messages "IN PROGRESS" which have a last modified time far in the past and then reset these to "NEW". – Marian Apr 10 '13 at 14:02
  • @andrew. these are solved problems with q systems. i just wondered what approach you'd taken for your impl. its wasn't a "bug" in message processing I was thinking about so much as just making the processing resilient to transient processes. I don't know what the best way to do a fully featured Q in Mongo really is. See my Q: stackoverflow.com/questions/12269503/… – cirrus Apr 10 '13 at 17:40
  • @Marian i think you're on the right lines there. You probably still want idempotent operations though because you could still end up processing the same message more than once. You'll end up with at-least-once semantics. – cirrus Apr 10 '13 at 17:42

I know that this question is back from 2012, but during my own research i found this article and just want to inform any other user that the devs from serverdensity replaced rabbitmq in favor of a simple queueing system with mongodb.

A detailed article is given here:



Here is a great article explaining how someone used mongoDB's replication oplog as a queue.

You can do the same with a different collection. The main piece of advice seems to be to use a capped collection — mongo drivers have efficient means of waiting on a capped collection so that the client isn't constantly polling.


I've searched a lot and found the JavaScript version https://github.com/chilts/mongodb-queue. But I want a go version, so a simple implementation in Go, including a manager to poll messages was made: https://github.com/justmao945/mongomq


Here is a simple message queue implementation.

It is a part of article that evaluates performance of variety of message queue systems.

A single-thread, single-node setup achieves 7 900 msgs/s sent and 1 900 msgs/s received.


I've been polishing for a few years an implementation of job queues on top of redis and/or mongodb, with decent support for loadbalancing and HA. I decided to use node.js for the implementation, which seems quite a good fit. I came up with two entities:

  • a node.js library (https://pepmartinez.github.io/keuss/) capable of managing queues and clusters on top of redis & mongodb. It also provides an implementation of queues on mongodb to break past the findAndModify limitations, by bucketing reads and writes to mongodb

  • a server also made in node.js (https://pepmartinez.github.io/keuss-server/) that basically provides STOMP and REST iterfaces on top of the node.js library. This server could be seen as a replacement to the likes of SQS

The library is obviously limited to node.js, but the server can be used from pretty much anything that can speak HTTP


Here is my Python implementation of PubSub / queue It works by either a tailing cursor on capped collection or polling a normal collection. Used it a few projects where I wanted to simplify my stack with quite good results. Of course as somebody mentioned already until you reached the limits of the atomic findAndModify, but that can be taken care of by various technics

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