I'm using GridSearchCV to optimize hyper-parameters for SVM. I set the maximum number of iterations because I can't wait several hours to get result. I know there will be convergence warnings. I just want to ignore these warnings and not show up in the terminal.

Thanks in advance.

5 Answers 5


This was a pain to track down, as all suggested answers I've seen simply do not work. What finally worked for me was in the example code Early stopping of Stochastic Gradient Descent:

from sklearn.utils.testing import ignore_warnings
from sklearn.exceptions import ConvergenceWarning

You can then annotate a function like so:

def my_function():
    # Code that triggers the warning

Note that you need not directly import anything from warnings.

I think that's quite nice as it will only suppress warnings in the specific case where you need it, rather than globally.

  • Seems useful, however the function should probably be named something related to SVM since that is the method in the question. Commented Jun 26, 2019 at 23:04
  • 2
    It just smells a bit importing testing code in production but .. well ...
    – KIC
    Commented Oct 25, 2019 at 17:26
  • 1
    what do you mean by # Code that triggers the warning in your function, could you make an explicit example to turn off the convergence warning when calculating estimators that use sklearn's coordinate descent algorithm?
    – develarist
    Commented Nov 29, 2019 at 13:28
  • 12
    Just note that 'sklearn.utils.testing' is deprecated since 0.22 and will be removed in 0.24. It seems that 'sklearn.utils._testing' (note the additional underscore) is the way to go now - see scikit-learn.org/stable/auto_examples/linear_model/…
    – PGlivi
    Commented Jul 29, 2020 at 13:29
  • 2
    In 2021 the following works for me: stackoverflow.com/questions/29086398/…
    – MStoner
    Commented Oct 18, 2021 at 15:38

I will take a long shot here.

You have not provided enough information. You just mentioned that you're using SVM but not which type of SVM since there are many implementations of it such as SVC, NuSVC and LinearSVC. Those different types have different properties.

Why to care? because some of them support/accept executing jobs in parallel such as LinearSVC one!

with warnings.catch_warnings():
    warnings.filterwarnings("ignore", category=ConvergenceWarning)

The above code (or the other variants of it) should do the job, but if it is running in parallel, it will only do in the very first run/iteration ( I am not pretty sure why but it seems every job has its own Pythonic configuration as if it is a new instance or something!)

Also, you mentioned that you are using GridSearchCV which has n_job parameter as well. Its Scikit Documentation says:

Number of jobs to run in parallel. None means 1 unless in a joblib.parallel_backend context. -1 means using all processors

joblib.parallel_backend means what number of jobs is set in the estimator or any per-defined configurations.


Running jobs in parallel can be the reason of not suppressing the warnings. More information from OP is required.


I checked it again, and indeed, using GridSearchCV with scikit-learn version 0.20.3 and low max_iter while suppressing warnings, lead to the following results:

  1. SVC or LinearSVC + GridSearchCV(n_jobs=-1 or >1): Failed to suppress warnings.
  2. SVC or LinearSVC + GridSearchCV(n_jobs=None or 1): Succeeded in suppressing warnings.
  3. LogisticRegression(n_jobs=-1, solver='sag') + GridSearchCV(n_jobs=None or 1 or >1 or -1): Failed to suppress warnings.
  4. LogisticRegression(n_jobs=1, solver='sag') + GridSearchCV(n_jobs=-1 or >1): Failed to suppress warnings.
  5. LogisticRegression(n_jobs=1, solver='sag') + GridSearchCV(n_jobs=None or 1): Succeeded in suppressing warnings.

As you can see, if the estimator supports multi-jobs, setting n_jobs=-1 or >1 will not suppress warnings regardless of n_jobs in GridSearchCV. On the other hand, if the estimator does not support multi-jobs, setting n_jobs=-1 or >1 in GridSearchCV will not make warnings suppression work, however, setting n_jobs=None or 1 will do make it work.

Important Note

That is what I found with scikit-learn version 0.20.3, nevertheless, I tried it on my other laptop with scikit-learn version 0.19.2 and suppressing warnings worked all times regardless! I checked scikit-learn GitHub repository and noticed some commits about joblib since version 0.19.2 but I am not sure if there was a real change/update that caused the above behavior! You may want to open a ticket there and refer to the above results.


The only way I could suppress all Scikit-learn warnings, is by issuing the following code at the beginning of the module. (but note that will suppress all warnings including yours - I needed that because I have logs saved to database):

if not sys.warnoptions:
    os.environ["PYTHONWARNINGS"] = "ignore" # Also affect subprocesses
  • 6
    Excellent find with the n_jobs and parallel processing, had me stumped. Commented Aug 13, 2019 at 20:49
  • 5
    Great answer! This was the only answer which helped suppressing warnings with RandomizedSearchCV and GridSearchCV with njobs>1! To specifically disable warnings, I changed the last line to: os.environ["PYTHONWARNINGS"] = ('ignore::UserWarning,ignore::ConvergenceWarning,ignore::RuntimeWarning'). Specifying the module to ignore warnings from is also a nice addition: ` os.environ["PYTHONWARNINGS"] = 'ignore::ConvergenceWarning:sklearn.model_selection.RandomizedSearchCV'
    – JE_Muc
    Commented Jul 30, 2020 at 11:55
  • 1
    I like this one better because you can capture the warning and log it in your cv_results_ dictionary or reports. Use with warnings.catch_warnings() as w: (and then add w to your results
    – leeprevost
    Commented May 21, 2022 at 19:27
  • 1
    I almost cried. This worked :') Thanks!!
    – muammar
    Commented May 14 at 2:17

In order to control Python warnings you can use the warnings library. See detailed documentation here. So you can use warning.simplefilter() method as follows:

from warnings import simplefilter
from sklearn.exceptions import ConvergenceWarning
simplefilter("ignore", category=ConvergenceWarning)
  • This doesn't affect other warnings. It is better. I am having a similar problems with Bayesian Gaussian Mixtures. The code enter in a loop. I think it can be an Spyder bug (only restarting Spyder is possible to run again). The last warning is from SpyderKernelApp: Commented Apr 11, 2022 at 19:48

Try this:

from warnings import filterwarnings
  • 2
    I tried this, and also warnings.simplefilter("ignore"), warnings.simplefilter("ignore", category=ConvergenceWarning). No good.
    – Bohan Xu
    Commented Dec 15, 2018 at 4:06
  • Are you running it on a Terminal? Commented Dec 15, 2018 at 4:08
  • Yes, I also use "-W ignore" when I run in terminal
    – Bohan Xu
    Commented Dec 15, 2018 at 4:13
  • I once a disabled an annoying warning by changing the source code, maybe give that a try. Commented Dec 15, 2018 at 4:30
  • Worked for me in JupyterLab. Thanks :)
    – popeye
    Commented Jun 6, 2021 at 17:22

This works for me:

from sklearn.exceptions import ConvergenceWarning
  • Didn't work in PyCharm. The decorator method (1st answer) worked for me.
    – Mehdi
    Commented May 7, 2020 at 23:25

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