Note: this is a duplicate question, but I'm not looking for the answer. Rather, how better to find the answer myself.

How do I record loss, training accuracy, testing loss and testing accuracy, from a model, across epochs? I'd like to plot a graph that shows validation loss against each epoch.

I know that the callback object, which can be called in fit(), or maybe model.history has something to do with it, but examining the source and docstrings are just a wall of code to me. Numpy, for instance, typically provides a very small use case as an example of very simple implementation. And yet I know that the answer to this is just a one-liner, because this really is just a question of input.


As detailed in the doc https://keras.io/models/sequential/#fit, when you call model.fit, it returns a callbacks.History object. You can get loss and other metrics from it:

train_history = model.fit(X_train, Y_train,
                    batch_size=batch_size, nb_epoch=nb_epoch,
                    verbose=1, validation_data=(X_test, Y_test))
loss = train_history.history['loss']
val_loss = train_history.history['val_loss']
plt.legend(['loss', 'val_loss'])
  • It is mentioned in the docs and the FAQ
    – sietschie
    Sep 2 '16 at 12:59
  • However, there is no hint on how to perform "realtime" plots, and, to be fair, stopping by a predefined number of epochs is not exactly what many people would want, or?
    – norok2
    Feb 10 '17 at 17:19

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