I want to specify the gpu to run my process. And I set it as follows:

import tensorflow as tf
with tf.device('/gpu:0'):
    a = tf.constant(3.0)
with tf.Session() as sess:
    while True:
        print sess.run(a)

However it still allocate memory in both my two gpus.

|    0      7479    C   python                         5437MiB 
|    1      7479    C   python                         5437MiB 
  • 2
    TensorFlow initializes all GPUs it sees, you need to set CUDA_VISIBLE_DEVICES to limit visible GPUs – Yaroslav Bulatov Oct 16 '16 at 20:45
  • Ok, I got it. thanks. – lhao0301 Oct 17 '16 at 2:14

I believe that you need to set CUDA_VISIBLE_DEVICES=1. Or which ever GPU you want to use. If you make only one GPU visible, you will refer to it as /gpu:0 in tensorflow regardless of what you set the environment variable to.

More info on that environment variable: https://devblogs.nvidia.com/cuda-pro-tip-control-gpu-visibility-cuda_visible_devices/

  • hi Russell, @Russell sometimes the program is run on clusters where the "CUDA_VISIBLE_DEVICES" is not allowed to be modified. What shall we do in this situation? – Scott Yang Feb 25 '19 at 6:21
  • @ScottYang, try tensorflow.org/guide/… – Russell Feb 25 '19 at 22:20
  • Using os.environ["CUDA_VISIBLE_DEVICES"]="0" like in the other answer allows the option to take user input on which GPU to use. – sunday_funday Oct 2 '20 at 19:02

There are 3 ways to achieve this:

  1. Using CUDA_VISIBLE_DEVICES environment variable. by setting environment variable CUDA_VISIBLE_DEVICES="1" makes only device 1 visible and by setting CUDA_VISIBLE_DEVICES="0,1" makes devices 0 and 1 visible. You can do this in python by having a line os.environ["CUDA_VISIBLE_DEVICES"]="0,1" after importing os package.

  2. Using with tf.device('/gpu:2') and creating the graph. Then it will use GPU device 2 to run.

  3. Using config = tf.ConfigProto(device_count = {'GPU': 1}) and then sess = tf.Session(config=config). This will use GPU device 1.

  • 3
    I have tried all the three methods. The second one still doesn't work. My demo code is shown as above. – lhao0301 Jul 7 '17 at 7:22
  • In theory this should work, but sometimes you have to physically switch the graphics cards. Why? No idea! But it works for me when this method fails. – Jon Apr 4 '18 at 18:49
  • 2
    I don't think part three is entirely correct. As the name suggests device_count only sets the number of devices being used, not which. From the tf source code: message ConfigProto { // Map from device type name (e.g., "CPU" or "GPU" ) to maximum // number of devices of that type to use. If a particular device // type is not found in the map, the system picks an appropriate // number. map<string, int32> device_count = 1;, see github.com/tensorflow/tensorflow/blob/r1.11/tensorflow/core/… – ftiaronsem Oct 18 '18 at 17:47
  • 3
    Note that if tf.ConfigProto(device_count = {'GPU': 0}) is set all will be runned on CPU, so it's not gpu_id, but number of gpus. Use gpu_options = tf.GPUOptions(allow_growth=True, visible_device_list=str(gpu_id)) – mrgloom Jun 8 '19 at 2:06

TF would allocate all available memory on each visible GPU if not told otherwise. Here are 5 ways to stick to just one (or a few) GPUs.

Bash solution. Set CUDA_VISIBLE_DEVICES=0,1 in your terminal/console before starting python or jupyter notebook:

CUDA_VISIBLE_DEVICES=0,1 python script.py

Python solution. run next 2 lines of code before constructing a session

import os

Automated solution. Method below will automatically detect GPU devices that are not used by other scripts and set CUDA_VISIBLE_DEVICES for you. You have to call mask_unused_gpus before constructing a session. It will filter out GPUs by current memory usage. This way you can run multiple instances of your script at once without changing your code or setting console parameters.

The function:

import subprocess as sp
import os

def mask_unused_gpus(leave_unmasked=1):
  COMMAND = "nvidia-smi --query-gpu=memory.free --format=csv"

    _output_to_list = lambda x: x.decode('ascii').split('\n')[:-1]
    memory_free_info = _output_to_list(sp.check_output(COMMAND.split()))[1:]
    memory_free_values = [int(x.split()[0]) for i, x in enumerate(memory_free_info)]
    available_gpus = [i for i, x in enumerate(memory_free_values) if x > ACCEPTABLE_AVAILABLE_MEMORY]

    if len(available_gpus) < leave_unmasked: raise ValueError('Found only %d usable GPUs in the system' % len(available_gpus))
    os.environ["CUDA_VISIBLE_DEVICES"] = ','.join(map(str, available_gpus[:leave_unmasked]))
  except Exception as e:
    print('"nvidia-smi" is probably not installed. GPUs are not masked', e)


Limitations: if you start multiple scripts at once it might cause a collision, because memory is not allocated immediately when you construct a session. In case it is a problem for you, you can use a randomized version as in original source code: mask_busy_gpus()

Tensorflow 2.0 suggest yet another method:

gpus = tf.config.experimental.list_physical_devices('GPU')
if gpus:
  # Restrict TensorFlow to only use the first GPU
    tf.config.experimental.set_visible_devices(gpus[0], 'GPU')
  except RuntimeError as e:
    # Visible devices must be set at program startup

Tensorflow/Keras also allows to specify gpu to be used with session config. I can recommend it only if setting environment variable is not an options (i.e. an MPI run). Because it tend to be the least reliable of all methods, especially with keras.

config = tf.ConfigProto()
config.gpu_options.visible_device_list = "0,1"
with tf.Session(config) as sess:
#or K.set_session(tf.Session(config))
  • 2
    The selected answer is technically correct but this is the best way to handle this scenario. – bradden_gross Oct 18 '18 at 16:14
  • 1
    For Bash solution, shouldn't it be CUDA_VISIBLE_DEVICES=0,1 python script.py, without $ ahead of the env variable CUDA_VISIBLE_DEVICES? – VeryLazyBoy Apr 18 '20 at 19:18

You can modify the GPU options settings by adding at the begining of your python script:

gpu_options = tf.GPUOptions(visible_device_list="0")
sess = tf.Session(config=tf.ConfigProto(gpu_options=gpu_options))

"0" is here the name of the GPU you want to use. You can have the list of the GPU available by typing the command nvidia-smi in the terminal prompt.

With Keras, these 2 functions allow the selection of CPU or GPU and in the case of GPU the fraction of memory that will be used.

import os
from keras.backend.tensorflow_backend import set_session
import tensorflow as tf

def set_cpu_option():
    os.environ["CUDA_DEVICE_ORDER"] = "PCI_BUS_ID"  # see issue #152
    os.environ["CUDA_VISIBLE_DEVICES"] = ""
    os.environ["CUDA_VISIBLE_DEVICES"] = ""

def set_gpu_option(which_gpu, fraction_memory):
    config = tf.ConfigProto()
    config.gpu_options.per_process_gpu_memory_fraction = fraction_memory
    config.gpu_options.visible_device_list = which_gpu

set_gpu_option("0", 0.9)
# or 
  • 1
    It gives me undefined name set_session, undefined name logger – Hasani Aug 2 '19 at 10:43

The most elegant and clean way I have seen this work for me on my multi-core gpu setup is:

import os

This assigns the task to gpu device 1.

Similarly, doing something on the lines:

import os 

The os.environ command can be seen as a way of making only that GPU device exposed on which you intend to run the code. The second command just picks the first of the available devices that you specified.

enter image description here

  • 2
    No, it's not elegant to set environment variables of the same process. You should set them before you run the process, for example: CUDA_VISIBLE_DEVICES=XYZ python script.py – Maksym Ganenko May 17 '20 at 17:54
import os
os.environ["CUDA_DEVICE_ORDER"]="PCI_BUS_ID"   # see issue #152

The only thing which worked for me cleanly from within Processes to assign specific GPU to each process in a Pool.

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