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I'am pretty much new in machine learning world, currently struggling trying to find out how to continue in training after model load. Found few similar topics, but still can't figure it out.

I got model for time-series forecasting and want to re-train it, once new data shows up (data_original+data_new). Problem is, if I load the model and want to continue in training, it seems to start from scratch. This happens even when I use exactly the same setup and data, which were used for training original model.

pseudo code:

    def update_model(model, data, batch_size, updates):

        X, y = train[:, :-n_seq], train[:, -n_seq:]
        X = X.reshape(X.shape[0], n_lag, n_features)
        model.compile(loss='mean_squared_error', optimizer='adam')

        for i in range(updates):               
            model.fit(X, y,epoch=1,b_size=1,verbose=0, shuffle=False)
            model.reset_states()
        return model

    model = load_model("multivariete_model.h5")
  • Maybe use model.train_on_batch() instead of calling fit again – Primusa Apr 3 '18 at 21:12
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You're telling keras to recompile the model every time you call

model.compile()

and you're doing that everytime you call update_model with:

model.compile(loss='mean_squared_error', optimizer='adam')

Remove that line and training will continue from previous state.

  • just removed that line and run the code with evaluation of model after 10 epochs: original: 0.6359964006149502 retrained: 0.002937551016101346 :/ – mickmick1 Apr 3 '18 at 19:59
  • which is slightly better but still not solving the issue – mickmick1 Apr 3 '18 at 20:06
  • we'll at some point you're going to hit threshold of what the model could learn given the current parameters. so unless you have another issue I imagine is current behaviour is as expected – orsonady Apr 4 '18 at 2:34
  • Don't really think so @orsonady , I tried to proof your theory with training and re-training several models, but it starts from scratch every single time. – mickmick1 Apr 4 '18 at 7:32

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