When I'm fitting sklearn's LogisticRegression using a 1 column python pandas DataFrame (not a Series object), I get this warning:

DataConversionWarning: A column-vector y was passed when a 1d array was 
expected. Please change the shape of y to (n_samples, ), for example using 
y = column_or_1d(y, warn=True)

I know I could easily advert this warning in my code, but how can I turn off these warnings?


4 Answers 4


You can use this:

import warnings
from sklearn.exceptions import DataConversionWarning
warnings.filterwarnings(action='ignore', category=DataConversionWarning)
  • While this may answer the question, it is better to explain the essential parts of the answer and possibly what was the problem with OPs code.
    – pirho
    Commented Dec 11, 2017 at 9:47
  • 3
    @pirho OP probably already knows about the cause of the problem and explicitly mentions the desire to turn off the warning only instead of solving the "problem". Commented Dec 29, 2017 at 16:10
  • 10
    It is worth mentioning that one must import warnings as well.
    – gented
    Commented Jan 22, 2019 at 21:09
  • 3
    how to disable Convergence Warnings, for example, for estimators that use sklearn's coordinate descent algorithm? Replacing DataConversionWarning with ConvergenceWarning in the above doesn't work.
    – develarist
    Commented Nov 29, 2019 at 13:26

As posted here,

with warnings.catch_warnings():
    # Do stuff here

Thanks to Andreas above for posting the link.

  • 6
    import warnings
    – Tomas Giro
    Commented Nov 26, 2019 at 12:15
  • 1
    Note that this answer does also work within joblib threads. Other answers, i.e., setting a warning filter globally, does not work when joblib uses the loky backend which spawns separate processes for each task.
    – Tobias
    Commented Mar 18, 2022 at 21:59
  • Actually @Tobias, that didn't work for me in that situation. But I found another solution that does. Just add os.environ['PYTHONWARNINGS']='ignore::FutureWarning' to your program (or set that env variable in another way), see: stackoverflow.com/a/72807161/1265409.
    – Moot
    Commented Jul 20, 2022 at 18:28

Actually the warning tells you exactly what is the problem:

You pass a 2d array which happened to be in the form (X, 1), but the method expects a 1d array and has to be in the form (X, ).

Moreover the warning tells you what to do to transform to the form you need: y.ravel(). So instead of suppressing a warning it is better to get rid of it.


Note: In case you want to ignore or get rid of such warning

import warnings 

Otherwise if you're looking into the cause of the issue this might be helpful.

When you try to fit your model, make sure X_test and y_test are similar to those used in training data. in other words X_train and X_test should be the same with the same features and same for X_test and y_test

For example: np.array(X_test) is not same as X_test, given that X_train is just a numpy's DataFrame and X_test was splitted out from dataset:

# imports 
clf = RandomForestClassifier(n_estimators=100)
X_train, X_test, y_train, y_test = train_test_split(
    X, y, test_size=0.2)    
# the following produce warning since X_test's shape is different than X_train
y_predicts  = clf.predict(np.array(X_test))
# no warning (both are same) 
y_predicts  = clf.predict(X_test)

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