5

I want to dump and load my Sklearn trained model using Pickle. How to do that?

2
  • 1
    1) Did you try reading pickle documentation? 2) Pickle has nothing to do with predictions.
    – DYZ
    Feb 26 '19 at 6:38
  • 1
    Check scikit-learn docs on model persistence.
    – constt
    Feb 26 '19 at 6:41
13

Save:

with open("model.pkl", "wb") as f:
    pickle.dump(model, f)

Load:

with open("model.pkl", "rb") as f:
    model = pickle.load(f)
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  • Hi @Mykola do you think that pickle is better than joblib in terms of saving the model ? because I have used joblib and unfortunately when I load the model for prediction, I always get the same predicted cluster. it seems like the model when saved is not trained!
    – Emna Jaoua
    Dec 10 '19 at 8:47
  • Hi, I have never worked with joblib and can't answer your question. But you can ask this question here. Dec 10 '19 at 9:37
  • already did : stats.stackexchange.com/questions/439968/…
    – Emna Jaoua
    Dec 10 '19 at 9:42
5

Using pickle is same across all machine learning models irrespective of type i.e. clustering, regression etc.

To save your model in dump is used where 'wb' means write binary.

pickle.dump(model, open(filename, 'wb')) #Saving the model

To load the saved model wherever need load is used where 'rb' means read binary.

model = pickle.load(open(filename, 'rb')) #To load saved model from local directory

Here model is kmeans and filename is any local file, so use accordingly.

4

One can also use joblib

from joblib import dump, load
dump(model, model_save_path) 

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