I've working on a CNN over several hundred GBs of images. I've created a training function that bites off 4Gb chunks of these images and calls
fit over each of these pieces. I'm worried that I'm only training on the last piece on not the entire dataset.
Effectively, my pseudo-code looks like this:
DS = lazy_load_400GB_Dataset() for section in DS: X_train = section.images Y_train = section.classes model.fit(X_train, Y_train, batch_size=16, nb_epoch=30)
I know that the API and the Keras forums say that this will train over the entire dataset, but I can't intuitively understand why the network wouldn't relearn over just the last training chunk.
Some help understanding this would be much appreciated.