I have setup gunicorn with 3 workers, 30 worker connections and using eventlet worker class. It is set up behind Nginx. After every few requests, I see this in the logs.

[ERROR] gunicorn.error: WORKER TIMEOUT (pid:23475)
[INFO] gunicorn.error: Booting worker with pid: 23514

Why is this happening? How can I figure out what's going wrong?

  • 3
    You were able to solve the problem ? Please share your thoughts as I also stuck with it. Gunicorn==19.3.1 and gevent==1.0.1 May 20, 2015 at 5:41
  • 7
    Found the solution for it. Increased timeout to very large value and then I was able to see stack trace May 20, 2015 at 8:38

21 Answers 21


We had the same problem using Django+nginx+gunicorn. From Gunicorn documentation we have configured the graceful-timeout that made almost no difference.

After some testings, we found the solution, the parameter to configure is: timeout (And not graceful timeout). It works like a clock..

So, Do:

1) open the gunicorn configuration file

2) set the TIMEOUT to what ever you need - the value is in seconds


exec gunicorn ${DJANGO_WSGI_MODULE}:application \
--name $NAME \
--workers $NUM_WORKERS \
--timeout $TIMEOUT \
--log-level=debug \
--bind= \
  • 16
    Thanks this is the right answer. And then, in order to save resources with many concurrent connections: pip install gevent , then worker_class gevent in your config file or -k gevent on the command line. Jan 5, 2016 at 4:11
  • 7
    Am running with supervisor so added it to conf.d/app.conf: command=/opt/env_vars/run_with_env.sh /path/to/environment_variables /path/to/gunicorn --timeout 200 --workers 3 --bind unix:/path/to/socket server.wsgi:application
    – lukik
    Dec 1, 2018 at 6:55

On Google Cloud Just add --timeout 90 to entrypoint in app.yaml

entrypoint: gunicorn -b :$PORT main:app --timeout 90
  • 1
    Why 90 sec timeout?
    – Devy
    Jan 28 at 1:01

Run Gunicorn with --log-level debug.

It should give you an app stack trace.

  • 12
    I'd love to get a stracktrace, but none of them work here, using gunicorn 19.4.5. Debug stuff is displayed, so i guess the flag was recognized, but not stacktrace on timeout.
    – orzel
    Jul 12, 2017 at 14:56
  • 4
    Same here, no stack trace with the flag enabled May 3, 2021 at 10:02
  • You could override the worker_abort function in a config file to log a traceback.
    – Eric Smith
    Feb 25, 2022 at 0:39

Is this endpoint taking too many time?

Maybe you are using flask without asynchronous support, so every request will block the call. To create async support without make difficult, add the gevent worker.

With gevent, a new call will spawn a new thread, and you app will be able to receive more requests

pip install gevent
gunicon .... --worker-class gevent

The Microsoft Azure official documentation for running Flask Apps on Azure App Services (Linux App) states the use of timeout as 600

gunicorn --bind= --timeout 600 application:app


  • 2
    Seems a little excessive, but I do appreciate that is official documentation, so I will go with it.
    – Moir
    Apr 21, 2022 at 13:57

Could it be this? http://docs.gunicorn.org/en/latest/settings.html#timeout

Other possibilities could be your response is taking too long or is stuck waiting.


WORKER TIMEOUT means your application cannot response to the request in a defined amount of time. You can set this using gunicorn timeout settings. Some application need more time to response than another.

Another thing that may affect this is choosing the worker type

The default synchronous workers assume that your application is resource-bound in terms of CPU and network bandwidth. Generally this means that your application shouldn’t do anything that takes an undefined amount of time. An example of something that takes an undefined amount of time is a request to the internet. At some point the external network will fail in such a way that clients will pile up on your servers. So, in this sense, any web application which makes outgoing requests to APIs will benefit from an asynchronous worker.

When I got the same problem as yours (I was trying to deploy my application using Docker Swarm), I've tried to increase the timeout and using another type of worker class. But all failed.

And then I suddenly realised I was limitting my resource too low for the service inside my compose file. This is the thing slowed down the application in my case

  replicas: 5
      cpus: "0.1"
      memory: 50M
    condition: on-failure

So I suggest you to check what thing slowing down your application in the first place


This worked for me:

gunicorn app:app -b :8080 --timeout 120 --workers=3 --threads=3 --worker-connections=1000

If you have eventlet add:


If you have gevent add:

  • 9
    Fun facts, --worker-class and -k are analogues, as well as --timeout and -t Aug 13, 2020 at 13:46

I've got the same problem in Docker.

In Docker I keep trained LightGBM model + Flask serving requests. As HTTP server I used gunicorn 19.9.0. When I run my code locally on my Mac laptop everything worked just perfect, but when I ran the app in Docker my POST JSON requests were freezing for some time, then gunicorn worker had been failing with [CRITICAL] WORKER TIMEOUT exception.

I tried tons of different approaches, but the only one solved my issue was adding worker_class=gthread.

Here is my complete config:

import multiprocessing

workers = multiprocessing.cpu_count() * 2 + 1
accesslog = "-" # STDOUT
access_log_format = '%(h)s %(l)s %(u)s %(t)s "%(r)s" %(s)s %(b)s "%(q)s" "%(D)s"'
bind = ""
keepalive = 120
timeout = 120
worker_class = "gthread"
threads = 3

I had very similar problem, I also tried using "runserver" to see if I could find anything but all I had was a message Killed

So I thought it could be resource problem, and I went ahead to give more RAM to the instance, and it worked.

  • 2
    I was seeing this problem with even with gevent and the timeout set correctly, out of memory was the problem
    – bcattle
    Sep 28, 2016 at 7:08
  • Yes. The timeout was because it took too long to talk to the worker with the server out of memory. I watched docker stats, fixed the code that was using up the memory, and was fine.
    – Noumenon
    Nov 16, 2021 at 5:55

You need to used an other worker type class an async one like gevent or tornado see this for more explanation : First explantion :

You may also want to install Eventlet or Gevent if you expect that your application code may need to pause for extended periods of time during request processing

Second one :

The default synchronous workers assume that your application is resource bound in terms of CPU and network bandwidth. Generally this means that your application shouldn’t do anything that takes an undefined amount of time. For instance, a request to the internet meets this criteria. At some point the external network will fail in such a way that clients will pile up on your servers.


If you are using GCP then you have to set workers per instance type.

Link to GCP best practices https://cloud.google.com/appengine/docs/standard/python3/runtime


timeout is a key parameter to this problem.

however it's not suit for me.

i found there is not gunicorn timeout error when i set workers=1.

when i look though my code, i found some socket connect (socket.send & socket.recv) in server init.

socket.recv will block my code and that's why it always timeout when workers>1

hope to give some ideas to the people who have some problem with me


For me, the solution was to add --timeout 90 to my entrypoint, but it wasn't working because I had TWO entrypoints defined, one in app.yaml, and another in my Dockerfile. I deleted the unused entrypoint and added --timeout 90 in the other.


For me, it was because I forgot to setup firewall rule on database server for my Django.


Frank's answer pointed me in the right direction. I have a Digital Ocean droplet accessing a managed Digital Ocean Postgresql database. All I needed to do was add my droplet to the database's "Trusted Sources".

(click on database in DO console, then click on settings. Edit Trusted Sources and select droplet name (click in editable area and it will be suggested to you)).


Check that your workers are not killed by a health check. A long request may block the health check request, and the worker gets killed by your platform because the platform thinks that the worker is unresponsive.

E.g. if you have a 25-second-long request, and a liveness check is configured to hit a different endpoint in the same service every 10 seconds, time out in 1 second, and retry 3 times, this gives 10+1*3 ~ 13 seconds, and you can see that it would trigger some times but not always.

The solution, if this is your case, is to reconfigure your liveness check (or whatever health check mechanism your platform uses) so it can wait until your typical request finishes. Or allow for more threads - something that makes sure that the health check is not blocked for long enough to trigger worker kill.

You can see that adding more workers may help with (or hide) the problem.


The easiest way that worked for me is to create a new config.py file in the same folder where your app.py exists and to put inside it the timeout and all your desired special configuration:

timeout = 999

Then just run the server while pointing to this configuration file

gunicorn -c config.py --bind wsgi:app

note that for this statement to work you need wsgi.py also in the same directory having the following

from myproject import app

if __name__ == "__main__":



Apart from the gunicorn timeout settings which are already suggested, since you are using nginx in front, you can check if these 2 parameters works, proxy_connect_timeout and proxy_read_timeout which are by default 60 seconds. Can set them like this in your nginx configuration file as,

proxy_connect_timeout 120s;
proxy_read_timeout 120s;

In my case I came across this issue when sending larger(10MB) files to my server. My development server(app.run()) received them no problem but gunicorn could not handle them.

for people who come to the same problem I did. My solution was to send it in chunks like this: ref / html example, separate large files ref

    def upload_to_server():
        upload_file_path = location
        def read_in_chunks(file_object, chunk_size=524288):
            """Lazy function (generator) to read a file piece by piece.
            Default chunk size: 1k."""
            while True:
                data = file_object.read(chunk_size)
                if not data:
                yield data
        with open(upload_file_path, 'rb') as f:
            for piece in read_in_chunks(f):
                r = requests.post(
                    url + '/api/set-doc/stream' + '/' + server_file_name,
                    files={name: piece},
                    headers={'key': key, 'allow_all': 'true'})

my flask server:

    @app.route('/api/set-doc/stream/<name>', methods=['GET', 'POST'])
    def api_set_file_streamed(name):
        folder = escape(name)  # secure_filename(escape(name))
        if 'key' in request.headers:
            if request.headers['key'] != key:                
                return ''
            return ''
        for fn in request.files:
            file = request.files[fn]
            if fn == '':
                print('no file name')
                flash('No selected file')
                return 'fail'
            if file and allowed_file(file.filename):
                file_dir_path = os.path.join(app.config['UPLOAD_FOLDER'], folder)
                if not os.path.exists(file_dir_path):
                file_path = os.path.join(file_dir_path, secure_filename(file.filename)) 
                with open(file_path, 'ab') as f:
                return 'sucess'
        return ''


in case you have changed the name of the django project you should also go to

cd /etc/systemd/system/


sudo nano gunicorn.service

then verify that at the end of the bind line the application name has been changed to the new application name

  • 1
    This answer is extremly bad, it has no value. You just saying "open notebook and verify that your config is fine". Also you should rename "gunicorn.service" to "yourprojectname.service"
    – oruchkin
    Sep 16, 2022 at 17:36

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