This is not a real issue, but I'd like to understand:

  • running sklearn from Anaconda distrib on a Win7 4 cores 8 GB system
  • fitting a KMeans model on a 200.000 samples*200 values table.
  • running with n-jobs = -1: (after adding the if __name__ == '__main__': line to my script) I see the script starting 4 processes with 10 threads each. Each process uses about 25% of the CPU (total: 100%). Seems to work as expected
  • running with n-jobs = 1: stays on a single process (not a surprise), with 20 threads, and also uses 100% of the CPU.

My question: what is the point of using n-jobs (and joblib) if the the library uses all cores anyway? Am I missing something? Is it a Windows-specific behaviour?

  • 17
    with n_jobs=1 it uses 100% of the cpu of one of the cores. Each process is run in a different core. In linux with 4 cores I can clearly see the cpu usage:(100%,~5%, ~5%, ~5%) when I run n_jobs=1 and (100%, 100%, 100%, 100%) when running with n_jobs=-1. Each process takes the 100% usage of a given core, but if you have n_jobs=1 only one core is used. Sep 25 '15 at 13:26
  • Thanks for the reply. In the meantime, I have not been able to reproduce the phenomenon, so I guess it was somehow due to "something" in the state of the machine, or of the notebook. Oct 3 '15 at 13:57
  • Interestingly, I am seeing that H2O (GBM) runs as a single process and utilizes almost 700% CPU on my 8-core machine.
    – arun
    Jan 18 '17 at 1:38
  • @Luengo but it seems OMP_NUM_THREADS can also control the maximum cpu% when using sklearn.linear_model.LassoCV(n_jobs=-1) ... do you know why? (sklearn is not using OpenMP as I know)
    Aug 23 '19 at 6:33
  • what is the point of using n-jobs (and joblib) if the the library uses all cores anyway?

It does not, if you specify n_jobs to -1, it will use all cores. If it is set to 1 or 2, it will use one or two cores only (test done scikit-learn 0.20.3 under Linux).


The documentation says:

This parameter is used to specify how many concurrent processes or threads should be used for routines that are parallelized with joblib.

n_jobs is an integer, specifying the maximum number of concurrently running workers. If 1 is given, no joblib parallelism is used at all, which is useful for debugging. If set to -1, all CPUs are used. For n_jobs below -1, (n_cpus + 1 + n_jobs) are used. For example with n_jobs=-2, all CPUs but one are used.

n_jobs is None by default, which means unset; it will generally be interpreted as n_jobs=1, unless the current joblib.Parallel backend context specifies otherwise.

For more details on the use of joblib and its interactions with scikit-learn, please refer to our parallelism notes.


You should either use n_jobs or joblib, don't use both simultaneously.

  • 3
    can you please explain why?
    – Kai
    Oct 24 '20 at 1:31

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