I have a huge dataset and I have column where there are some categorical data which I want to label encode. After all the preprocessing i can train my model and serialize the model using sklearn.

Now I am faced with a problem that , if a input prediction vector consist of labels how do i encode that at that point. Since I don't want preprocess and retrain the model everytime a new input prediction vector comes in. Is there a way to serialize labelencoder in sklearn? What would be the right approach in this problem ?

  • You can just pickle it, the same way you did with your classifier (I'm guessing). – piman314 Mar 6 '17 at 10:36

As ncfirth mentions in his comment - The correct way to do this is to serialize it the same way you serialized the classifier (Usually pickle/joblib).

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