In a general tensorflow setup like
model = construct_model() with tf.Session() as sess: train_model(sess)
construct_model() contains the model definition including random initialization of weights (
train_model(sess) executes the training of the model -
Which seeds do I have to set where to ensure 100% reproducibility between repeated runs of the code snippet above? The documentation for
tf.random.set_random_seed may be concise, but left me a bit confused. I tried:
tf.set_random_seed(1234) model = construct_model() with tf.Session() as sess: train_model(sess)
But got different results each time.