Reading : https://www.tensorflow.org/versions/r0.10/resources/faq.html it states :

Does TensorFlow make use of all the devices (GPUs and CPUs) available on my machine?

TensorFlow supports multiple GPUs and CPUs. See the how-to documentation on using GPUs with TensorFlow for details of how TensorFlow assigns operations to devices, and the CIFAR-10 tutorial for an example model that uses multiple GPUs.

Note that TensorFlow only uses GPU devices with a compute capability greater than 3.5.

Does this mean Tensorflow can automatically make use of all CPU's on given machine or does it ned to be explicitly configured ?

  • it will use all the available CPUs
    – fabmilo
    Commented Sep 8, 2016 at 15:45
  • 4
    @fabrizioM thanks but where is this referenced in the docs ?
    – blue-sky
    Commented Sep 8, 2016 at 15:54

1 Answer 1


CPUs are used via a "device" which is just a threadpool. You can control the number of threads if you feel like you need more:

sess = tf.Session(config=tf.ConfigProto(
  • Does one have to worry about the limitation of Python's GIL to this application? Isn't threading with CPUs not useful because of GIL?
    – nikpod
    Commented Jun 22, 2017 at 7:41
  • 3
    This is the number of threads the internal C++ runtime uses, which is independent from python. Commented Jun 26, 2017 at 1:35
  • 2
    funny. for some reason setting this to 1 greatly improved my training speed, lol!
    – Zuoanqh
    Commented Aug 14, 2017 at 5:19
  • 1
    Multithreading does not necessarily guarantee better performance. It actually slow you down if the task is not suitable to form a queue.
    – Kershaw
    Commented Aug 18, 2017 at 5:07
  • AttributeError: module 'tensorflow' has no attribute 'Session'
    – Hadij
    Commented Sep 3, 2021 at 22:01

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