I am trying to produce reproducible results while training a deep learning model using
tensorflow as backend.
I went through this document: https://keras.io/getting-started/faq/#how-can-i-obtain-reproducible-results-using-keras-during-development to set numpy's, python's and tf's random seed in the
train.py file which I use for training.
Now, this file imports some functions from two other modules
model.py. In both these files, I have
import numpy as np and
import tensorflow as tf at the top. My question is - how does importing from different modules and setting random seeds work?
a) Do I need to set random seed in each file after the import statement?
b) Or, do I just need to set these seeds in the
train.py and do all the imports from other modules after these setting seeds commands?
tf.set_random_seed(1) needs to be done after
import tensorflow as tf also?
d) Do I need to set
tf.set_random_seed(1) even if I am not importing tensorflow or keras and just importing layers from keras?