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This is code for feature scaling in which i am using fit_transform() and transform():

##Feature scaling
from sklearn.preprocessing import StandardScaler
sc_x=StandardScaler()
X_train=sc_x.fit_transform(X_train)
X_test=sc_x.transform(X_test)
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1 Answer 1

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fit means to fit the pre-processor to the data being provided. This is where the pre-processor "learns" from the data.

transform means to transform the data (produce outputs) according to the fitted pre-processor; it is normally used on the test data, and unseen data in general (e.g. in new data that come after deploying a model).

fit_transform means to do both - Fit the pre-processor to the data, then transform the data according to the fitted pre-processor. Calling fit_transform is a convenience to avoid needing to call fit and transform sequentially on the same input, but of course this is only applicable to the training data (calling again fit_transform in test or unseen data is unfortunately a common rookie mistake).

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    fit_transform is also advertised as more efficient by sklearn Mar 16, 2018 at 20:44

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