I am have a EC2 instance, which host an Elastic Beanstalk environment (Linux and Python) with configuration:

  • Instance type: c5.2xlarge

  • Root volume size: 1000 GiB

In my python file, I create 60 threads to process crop video (using moviepy), each thread will crop 10 videos (total 10MB). When I run the file, it returned the error "Cannot allocate memory". I know it's about out of memory, but I don't know how to measure and setup the capacity of EC2 instance to avoid of this issue.

Any suggestion is appreciated.

  • Have you tried fewer thread to verify it's not a capacity issue? – Babak Naffas Mar 6 at 18:39
  • yes, I tried with 5-6 threads, it worked properly. My point is, if I want to run 60 threads (may be more) like this, how can I configure EC2 instance to adopt that heavy workload without out of memory – Peter Pham Mar 6 at 18:43
  • Why not make a rule to add more EC2 instance depending on memory utilization. E.g. you may setup a rule to spin an EC2 instance as soon as memory utilization reaches to 80%. – gyan Mar 6 at 19:57

If you have the capacity, I recommend setting up an Auto-Scaling group in Elastic Beanstalk. You will need to experiment with the size of your instances as you probably will not want to spin up an extra c5.2xlarge volume just to execute a handful of extra threads.

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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