I am applying transfer-learning on a pre-trained network using the GPU version of keras. I don't understand how to define the parameters
use_multiprocessing. If I change these parameters (primarily to speed-up learning), I am unsure whether all data is still seen per epoch.
maximum size of the internal training queue which is used to "precache" samples from the generator
Question: Does this refer to how many batches are prepared on CPU? How is it related to
workers? How to define it optimally?
number of threads generating batches in parallel. Batches are computed in parallel on the CPU and passed on the fly onto the GPU for neural network computations
Question: How do I find out how many batches my CPU can/should generate in parallel?
whether to use process-based threading
Question: Do I have to set this parameter to true if I change
workers? Does it relate to CPU usage?
Related questions can be found here:
- Detailed explanation of model.fit_generator() parameters: queue size, workers and use_multiprocessing
I am using
fit_generator() as follows:
history = model.fit_generator(generator=trainGenerator, steps_per_epoch=trainGenerator.samples//nBatches, # total number of steps (batches of samples) epochs=nEpochs, # number of epochs to train the model verbose=2, # verbosity mode. 0 = silent, 1 = progress bar, 2 = one line per epoch callbacks=callback, # keras.callbacks.Callback instances to apply during training validation_data=valGenerator, # generator or tuple on which to evaluate the loss and any model metrics at the end of each epoch validation_steps= valGenerator.samples//nBatches, # number of steps (batches of samples) to yield from validation_data generator before stopping at the end of every epoch class_weight=classWeights, # optional dictionary mapping class indices (integers) to a weight (float) value, used for weighting the loss function max_queue_size=10, # maximum size for the generator queue workers=1, # maximum number of processes to spin up when using process-based threading use_multiprocessing=False, # whether to use process-based threading shuffle=True, # whether to shuffle the order of the batches at the beginning of each epoch initial_epoch=0)
The specs of my machine are:
CPU : 2xXeon E5-2260 2.6 GHz Cores: 10 Graphic card: Titan X, Maxwell, GM200 RAM: 128 GB HDD: 4TB SSD: 512 GB