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I am using https://github.com/coreylynch/pyFM module, to predict move ratings. However, is there a way I can store (I am using django) the factorization machine after it is trained? Because right now (following the example), I would have to retrain the model everytime I restart the server.

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  • AFAIK, the only "supported" way to persist a model from sklearn is pickle. So you could probably pickle your factorization machine as well ...
    – mgilson
    Oct 4, 2016 at 19:38
  • I am able to store it with pickle, however, I am not able to predict using the stored model. It gives me zeroes only Oct 4, 2016 at 23:37
  • Can you post your code somewhere? Also can you describe the size of your dataset? (number of instances, etc)
    – greeness
    Oct 5, 2016 at 0:20
  • @greeness The very first example of pyFM's github Readme.md will fail with all pickle modes in python 2( <=mode 2) and python 3 (<= mode 4).
    – sascha
    Oct 5, 2016 at 0:22
  • I see. In the FM model, the learned parameters are in self.w and self.v. Did you try to add a customized serialize() method to just pickle w and v, which I believe are just list of floats? Similarly we can add a customized unserialize() method to read w and v and assign them into self.w and self.v
    – greeness
    Oct 5, 2016 at 0:29

2 Answers 2

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Take a look at pickle. After you train your model, you can save a representation of the python object to a file, and reopen it when you need it.

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    It doesnt work. I get "can't pickle FM_fast objects" Oct 4, 2016 at 22:44
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    Yeah, i tried to. I dont get any error msg, however, when I try to model.predict I get the wrong result. Like predicting from the load gives me another results ( only zeros) than predicting without saving and loading. Oct 4, 2016 at 23:07
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    @user3799968 You are right. Even with python 3 and pickle-mode 4 it fails (in the way you describe). You have to debug it yourself, create an issue on pyFMs github or try some advanced picklers like dill. It's a sad situation for sure!
    – sascha
    Oct 5, 2016 at 0:23
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You are using sklearn. If your model is not huge, the built-in persistence model of python - pickle should work. There is an example here.

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  • ah it doesnt work I get ths error msg: can't pickle FM_fast objects Oct 4, 2016 at 22:44

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