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I am learning how to use scikit-learn.

When testing the cross validation function, if I turn on parallel computing using

cross_validation.cross_val_score(svc, X_digits, y_digits, cv=kfold, n_jobs=-1)

the result is a lot slower than if I turn it off using

cross_validation.cross_val_score(svc, X_digits, y_digits, cv=kfold, n_jobs=1)

How can I stop this?

I am using PyDev, Anacondas 3.3 on a 64bit Windows 7 machine. From looking at Task Manager, it appears that the performance hit is caused by many instances of Python being started and stopped. Why do they not start, and stay started?

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Your data might not be big enough to overcome the overhead of parallelization. – Kyle Kelley Oct 18 '13 at 5:25
That might be the case, but if so the parallelisation is very poor, as I run a similar script in Matlab and the performance hit is not nearly as bad. I am hoping that the problem is due to my poor understanding of the tool, rather than the tool being unsuitable for my needs. – Ginger Oct 20 '13 at 17:48

1 Answer 1

Why do they not start, and stay started?

Because that's not how the multiprocessing module in Python works at present, and that's what scikit-learn uses internally. In Python 3.4, this will be fixed at least for POSIX (Linux, Mac OS X) platforms. I don't believe the CPython developers also intend to fix this for Windows. Light-weight parallel processing for scikit-learn is in the works, but a release is still some time away.

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