In a general tensorflow setup like

model = construct_model()
with tf.Session() as sess:

Where construct_model() contains the model definition including random initialization of weights (tf.truncated_normal) and 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:

model = construct_model()
    with tf.Session() as sess:

But got different results each time.

  • 2
    You also need to remove parallelism from your computation because that is often non-deterministic, turn off GPU and use sess = tf.Session(config=tf.ConfigProto(inter_op_parallelism_threads=1,intra_op_parallelism_threads=1) – Yaroslav Bulatov Feb 3 '17 at 15:58
  • 1
    Also, some non-determinism is caused by using modern instruction sets like SSE (see here ), so to get 100% reproducibility you may need to recompile TF without using SSE – Yaroslav Bulatov Feb 3 '17 at 19:31
  • Just for clarification, the above sess = tf.Session... in the comments does not turn off the GPU, as observed by watch nvidia-smi (in the case of an nvidia gpu, as on AWS EC2 p2.xlarge instances) – shadi Sep 8 '17 at 4:08
  • Possible duplicate of TensorFlow: Non-repeatable results – miguelmorin Feb 1 '19 at 18:25
  • stackoverflow.com/questions/32419510/… might be useful. – Dr Nisha Arora Sep 15 '19 at 2:23

The best solution which works as of today with GPU is to install tensorflow-determinism with the following:

pip install tensorflow-determinism

Then include the following code to your code

import tensorflow as tf
import os
os.environ['TF_DETERMINISTIC_OPS'] = '1'

source: https://github.com/NVIDIA/tensorflow-determinism

| improve this answer | |

One possible reason is that when constructing the model, there are some code using numpy.random module. So maybe you can try to set the seed for numpy, too.

| improve this answer | |
  • I don't use np inside the model, but there are additional seed arguments for truncated.normal which I don't use either. Do I have to set these seeds additionally to tf.set_random_seed ? – user1934212 Feb 3 '17 at 11:47
  • I cant get a reproducible model, although I even control the states of truncated_normal and droupout. :-( – user1934212 Feb 4 '17 at 11:08
  • Usually I just set random seed for both numpy and tensorflow at the beginning of the source file, and it works well for me. – Jiren Jin Apr 25 '17 at 5:08

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