A contextmanager to track progress of joblib execution
Project description
joblib-progress
A contextmanager to track progress of joblib
execution using rich.progress
.
Why
The vanilla multiprocessing
does not work when an object to multiprocess is not pickle-able
. The joblib
solves this, but then its progress is not tracked nicely. This library solves that tracking issue with joblib
.
Install
> pip install joblib-progress
Usage
If you know the number of items
import time
from joblib import Parallel, delayed
from joblib_progress import joblib_progress
def slow_square(i):
time.sleep(i / 2)
return i ** 2
with joblib_progress("Calculating square...", total=10):
Parallel(n_jobs=4)(delayed(slow_square)(number) for number in range(10))
If you don't know the number of items
with joblib_progress("Calculating square..."):
Parallel(n_jobs=4)(delayed(slow_square)(number) for number in range(10))
Acknowledgments
The idea of using joblib.parallel.BatchCompletionCallBack
is referenced from https://stackoverflow.com/a/58936697/5133167
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