I am training a model using
tf.keras and I have many small
.npy files with single observations in a folder on local disk. I have build a
DataGeneretor(keras.utils.Sequence) class and it works correctly, although I have a warning:
'tensorflow:multiprocessing can interact badly with TensorFlow, causing nondeterministic deadlocks. For high performance data pipelines tf.data is recommended.'
I have found out that I can simply create something like this:
ds = tf.data.Dataset.from_generator( DataGenerator, args=[...], output_types=(tf.float16, tf.uint8), output_shapes=([None,256,256,3], [None,256,256,1]), )
and then my Keras DataGenerator would work as a single file reader and a TF Dataset as interface to create batches. My question is: does it make any sense? Would it be safer? Would it read next batch during the training of previous batch, when using simple