Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Keep getting a Error R14 (Memory quota exceeded) on Heroku.

Profiling the memory on the django app locally I don't see any issues. We've installed New Relic, and things seem to be fine there, except for one oddity:

Memory use hovers around 15mb per dyno, but for some reason the 'dynos running' thing quickly scales up to 10+. Not sure how that makes any sense since we are currently only running on web dyno.

We are also running celery, and things seem to look normal there as well (around 15mb). Although it is suspect because I believe we started having the error around when this launched.

Some of our requests do take awhile, as they do a soap request to echosign, which can take 6-10 seconds to respond sometimes. Is this somehow blocking and causing new dyno's to spin up?

Here is my proc file:

web: python collectstatic --noinput; python compress; newrelic-admin run-program python run_gunicorn -b "$PORT" -w 9 -k gevent --max-requests 250
celeryd: newrelic-admin run-program python celeryd -E -B --loglevel=INFO

The main problem is the memory error though.

share|improve this question
up vote 12 down vote accepted

I BELIEVE I may have found the issue.

Based on posts like these I thought that I should have somewhere in the area of 9-10 gunicorn workers. I believe this is incorrect (or at least, it is for the work my app is doing).

I had been running 9 gunicorn workers, and finally realized that was the only real difference between heroku and local (as far as configuration).

According to the gunicorn design document the advice for workers goes something like this:

DO NOT scale the number of workers to the number of clients you expect to have. Gunicorn should only need 4-12 worker processes to handle hundreds or thousands of requests per second.

Gunicorn relies on the operating system to provide all of the load balancing when handling requests. Generally we recommend (2 x $num_cores) + 1 as the number of workers to start off with. While not overly scientific, the formula is based on the assumption that for a given core, one worker will be reading or writing from the socket while the other worker is processing a request.

And while the information out there about Heroku Dyno CPU abilities, I've now read that each dyno is running on something around 1/4 of a Core. Not super powerful, but powerful enough I guess.

Dialing my workers down to 3 (which is even high according to their rough formula) appears to have stopped my memory issues, at least for now. When I think about it, the interesting thing about the memory warning I would get is it would never go up. It got to around 103% and then just stayed there, whereas if it was actually a leak, it should have kept rising until being shut down. So my theory is my workers were eventually consuming just enough memory to go above 512mb.

HEROKU SHOULD ADD THIS INFORMATION SOMEWHERE!! And at the very least I should be able to top into my running dyno to see what's going on. Would have saved me hours and days.

share|improve this answer
The 'instances' showing in new relic also appear to be almost directly related to my gunicorn workers, which is pretty weird. I'm also fairly certain the memory chart is basically useless in this configuration. – Bob Spryn Aug 23 '12 at 5:56
Seriously? Someone voted me down without a comment? – Bob Spryn Aug 28 '12 at 17:20
The dynos tab in New Relic will for a Python site actually reflect the number of processes running the agent. The page was inherited from original Heroku setup where one dyno was actually one Ruby process and so was only ever one agent per dyno. The page still needs updating but Heroku doesn't actually provide a way of knowing how many dynos there actually are. So page is a bit confusing right now. Replace 'dynos' with 'processes' running agent and it makes more sense. – Graham Dumpleton Oct 22 '12 at 5:04

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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