When serving an MLflow Python model with the "pyfunc" backend (), how can I set a custom gunicorn worker timeout? The default timeout of 60 seconds may be insufficient when serving large models that take a long time to load.

2 Answers

As of MLflow 1.2, you can set a custom gunicorn timeout by specifying the GUNICORN_CMD_ARGS environment variable. The following example serves a model with a worker timeout of 120 seconds

GUNICORN_CMD_ARGS="--timeout 120" mlflow models serve --model-uri /path/to/model

0

mlflow allows setting these options from the cli:

Example: mlflow models serve ... --timeout 180

Official documentation (mlflow models serve --help):

-t, --timeout TEXT Timeout in seconds to serve a request (default: 60).

Your Answer

Sign up or log in

Sign up using Google Sign up using Facebook Sign up using Email and Password

Post as a guest

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.