I have Keras installed with the Tensorflow backend and CUDA. I'd like to sometimes on demand force Keras to use CPU. Can this be done without say installing a separate CPU-only Tensorflow in a virtual environment? If so how? If the backend were Theano, the flags could be set, but I have not heard of Tensorflow flags accessible via Keras.

8 Answers 8


If you want to force Keras to use CPU

Way 1

import os
os.environ["CUDA_DEVICE_ORDER"] = "PCI_BUS_ID"   # see issue #152
os.environ["CUDA_VISIBLE_DEVICES"] = ""

before Keras / Tensorflow is imported.

Way 2

Run your script as

$ CUDA_VISIBLE_DEVICES="" ./your_keras_code.py

See also

  1. https://github.com/keras-team/keras/issues/152
  2. https://github.com/fchollet/keras/issues/4613
  • 30
    Didn't work for me (Keras 2, Windows) - had to set os.environ['CUDA_VISIBLE_DEVICES'] = '-1' as in an answer below
    – desertnaut
    Oct 11, 2017 at 12:13
  • 3
    What issue is #152 referring to? A link would be nice.
    – Martin R.
    Nov 29, 2017 at 18:58
  • I don't see any reference to CUDA_DEVICE_ORDER=PCI_BUS_ID in issue #152
    – Thawn
    Nov 4, 2018 at 9:23
  • I am in a ipython3 terminal and I've set import os os.environ["CUDA_DEVICE_ORDER"] = "PCI_BUS_ID" # see issue #152 os.environ["CUDA_VISIBLE_DEVICES"] = "" , now how do I "undo" this ? I would like Keras to use the GPU again. May 20, 2019 at 9:23
  • @MartinThoma I mean without having to leave the ipython, I had many things run in it so I would like to set back to a "GPU enabled" environment. I tried deleting the keys in the os.environ dictionary, in vain. May 22, 2019 at 9:14

This worked for me (win10), place before you import keras:

import os
os.environ['CUDA_VISIBLE_DEVICES'] = '-1'
  • what does this do?
    – kRazzy R
    May 15, 2018 at 19:21
  • 4
    With Win, forces TF to use CPU and ignore any GPU. Didn't have luck with 0 or blank, but -1 seemed to do the trick. May 16, 2018 at 19:54
  • 1
    Worked on Win10 x64 for me. I also didn't have any luck win 0 or blank and only -1 worked.
    – Cypher
    Aug 11, 2018 at 6:55
  • 4
    Worked for me on Ubuntu
    – TripleS
    Sep 4, 2018 at 5:08
  • 1
    I have two GPU s in my machine, setting the 'CUDA_VISIBLE_DEVICES' = 0/1 is referring to the physical ID of the available GPU's. Setting it to -1 uses CPU. Nov 28, 2019 at 9:08

A rather separable way of doing this is to use

import tensorflow as tf
from keras import backend as K

num_cores = 4

if GPU:
    num_GPU = 1
    num_CPU = 1
if CPU:
    num_CPU = 1
    num_GPU = 0

config = tf.ConfigProto(intra_op_parallelism_threads=num_cores,
                        device_count = {'CPU' : num_CPU,
                                        'GPU' : num_GPU}

session = tf.Session(config=config)

Here, with booleans GPU and CPU, we indicate whether we would like to run our code with the GPU or CPU by rigidly defining the number of GPUs and CPUs the Tensorflow session is allowed to access. The variables num_GPU and num_CPU define this value. num_cores then sets the number of CPU cores available for usage via intra_op_parallelism_threads and inter_op_parallelism_threads.

The intra_op_parallelism_threads variable dictates the number of threads a parallel operation in a single node in the computation graph is allowed to use (intra). While the inter_ops_parallelism_threads variable defines the number of threads accessible for parallel operations across the nodes of the computation graph (inter).

allow_soft_placement allows for operations to be run on the CPU if any of the following criterion are met:

  1. there is no GPU implementation for the operation

  2. there are no GPU devices known or registered

  3. there is a need to co-locate with other inputs from the CPU

All of this is executed in the constructor of my class before any other operations, and is completely separable from any model or other code I use.

Note: This requires tensorflow-gpu and cuda/cudnn to be installed because the option is given to use a GPU.


  • 1
    This is a nice solution as just defining "CUDA_VISIBLE_DEVICES" causes CUDA_ERROR_NO_DEVICE followed by a lot of diagnostics before continuing on to executing on the CPU. Though... both methods work!
    – jsfa11
    Mar 22, 2018 at 17:24
  • 1
    This is the only consistent solution that works for me. Keep coming back to it. Dec 22, 2018 at 19:17
  • 1
    Can you please explain what the other parameters mean? like allow_soft_placement, intra_op_parallelism_threads, inter_op_parallelism_threads Feb 2, 2019 at 10:19
  • are the inter/intra_op_parallelism_threads refer to CPU or GPU operations? Mar 16, 2019 at 10:12
  • 1
    @bluesummers They pertain to CPU parallelization
    Apr 13, 2019 at 22:45

Just import tensortflow and use keras, it's that easy.

import tensorflow as tf
# your code here
with tf.device('/gpu:0'):
    model.fit(X, y, epochs=20, batch_size=128, callbacks=callbacks_list)
  • 6
    When I set the tf.device('/cpu:0'), I could still see memory being allocated to python later with nvidia-smi. Apr 27, 2018 at 3:04
  • @CMCDragonkai Solve it or not ^_^?
    – lhdgriver
    Jun 18, 2018 at 7:52
  • 5
    Doesn't seem to work for me either, still uses gpu when I set it to use cpu
    – liyuan
    Oct 15, 2018 at 2:39
  • 1
    Should not be also model definition and compile executed under the same with?
    – matt525252
    Apr 13, 2020 at 15:06

As per keras tutorial, you can simply use the same tf.device scope as in regular tensorflow:

with tf.device('/gpu:0'):
    x = tf.placeholder(tf.float32, shape=(None, 20, 64))
    y = LSTM(32)(x)  # all ops in the LSTM layer will live on GPU:0

with tf.device('/cpu:0'):
    x = tf.placeholder(tf.float32, shape=(None, 20, 64))
    y = LSTM(32)(x)  # all ops in the LSTM layer will live on CPU:0
  • 2
    How can this be done within Keras with Tensorflow as a backend, rather than using Tensorflow to call Keras layers?
    – mikal94305
    Nov 19, 2016 at 22:33
  • I don't understand your question. The code inside with can be any Keras code.
    – sygi
    Nov 19, 2016 at 23:06
  • 1
    How can this be done with a trained model loaded from disk? I am currently training on gpu but want to verify afterwards on CPU Dec 10, 2016 at 6:11
  • 4
    I was able to switch training from gpu to cpu in the middle of training by using the above mentioned method where I save the model in between with model.save then reload it with a different tf.device using keras.models.load_model . The same apply if you want to train then predict on a different device.
    – TheLoneNut
    Oct 5, 2017 at 16:08

I just spent some time figure it out. Thoma's answer is not complete. Say your program is test.py, you want to use gpu0 to run this program, and keep other gpus free.

You should write CUDA_VISIBLE_DEVICES=0 python test.py

Notice it's DEVICES not DEVICE


To disable running on the GPU (tensor flow 2.9) use tf.config.set_visible_devices([], 'GPU'). The empty list argument is to say that there will be no GPUs visible for this run.

Do this early in your code, e.g. before Keras initializes the tf configuration.

See docs https://www.tensorflow.org/versions/r2.9/api_docs/python/tf/config/set_visible_devices


For people working on PyCharm, and for forcing CPU, you can add the following line in the Run/Debug configuration, under Environment variables:


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