I have a plan to use distributed TensorFlow, and I saw TensorFlow can use GPUs for training and testing. In a cluster environment, each machine could have 0 or 1 or more GPUs, and I want to run my TensorFlow graph into GPUs on as many machines as possible.

I found that when running tf.Session() TensorFlow gives information about GPU in the log messages like below:

I tensorflow/core/common_runtime/gpu/gpu_init.cc:126] DMA: 0 
I tensorflow/core/common_runtime/gpu/gpu_init.cc:136] 0:   Y 
I tensorflow/core/common_runtime/gpu/gpu_device.cc:838] Creating TensorFlow device (/gpu:0) -> (device: 0, name: GeForce GTX 1080, pci bus id: 0000:01:00.0)

My question is how do I get information about current available GPU from TensorFlow? I can get loaded GPU information from the log, but I want to do it in a more sophisticated, programmatic way. I also could restrict GPUs intentionally using the CUDA_VISIBLE_DEVICES environment variable, so I don't want to know a way of getting GPU information from OS kernel.

In short, I want a function like tf.get_available_gpus() that will return ['/gpu:0', '/gpu:1'] if there are two GPUs available in the machine. How can I implement this?

12 Answers 12


There is an undocumented method called device_lib.list_local_devices() that enables you to list the devices available in the local process. (N.B. As an undocumented method, this is subject to backwards incompatible changes.) The function returns a list of DeviceAttributes protocol buffer objects. You can extract a list of string device names for the GPU devices as follows:

from tensorflow.python.client import device_lib

def get_available_gpus():
    local_device_protos = device_lib.list_local_devices()
    return [x.name for x in local_device_protos if x.device_type == 'GPU']

Note that (at least up to TensorFlow 1.4), calling device_lib.list_local_devices() will run some initialization code that, by default, will allocate all of the GPU memory on all of the devices (GitHub issue). To avoid this, first create a session with an explicitly small per_process_gpu_fraction, or allow_growth=True, to prevent all of the memory being allocated. See this question for more details.

  • 13
    PS, if this method ever gets moved/renamed, I would look inside tensorflow/python/platform/test.py:is_gpu_available since that's being used quite a bit – Yaroslav Bulatov Jul 26 '16 at 4:23
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    Is there a way to get the devices Free and Total memory? I see that there is a memory_limit field in the DeviceAttributes and I think it is the free memory and not total – aarbelle Nov 22 '16 at 8:43
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    I remember that for earlier versions than 1 tensorflow would print some info about gpus when it was imported in python. Have those messages been removed in the newer tensorflow versions? (hence your suggestion the only way to check gpu stuff)? – Charlie Parker Apr 3 '17 at 21:24
  • @CharlieParker I believe we still print one log line per GPU device on startup in TF1.1. – mrry Apr 3 '17 at 21:25
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    @aarbelle - using the above mentioned method to return all attributes includes a field Free memory for me, using tensorflow1.1. In python: from tensorflow.python.client import device_lib, then device_lib.list_local_devices() – n1k31t4 Jun 17 '17 at 11:31

You can check all device list using following code:

from tensorflow.python.client import device_lib

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    @Kulbear because it contains strictly less information than the existing answer. – Davidmh Jul 21 '17 at 17:28
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    Still prefer this answer due to its simplicity. I am using it directly from bash: python3 -c "from tensorflow.python.client import device_lib; print(device_lib.list_local_devices())" – aboettcher Oct 15 '18 at 8:45
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    I agree, this answer saved me time. I just copy/pasted the code without having to read the longer official answer. I know the details, just needed the line of code. It already wasn't picked as the answer and that's sufficient. No need to downvote. – Steven Mar 1 '19 at 21:48
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    getting error cannot import name 'format_exc' from 'traceback' – Siddharth Das Sep 10 '19 at 7:48

There is also a method in the test util. So all that has to be done is:




Look up the Tensorflow docs for arguments.

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    This returns just GPU:0 – Trisoloriansunscreen Jul 13 '18 at 17:43
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    @Tal that means you have 1 GPU available (at PCI slot ID 0). So tf.test.is_gpu_available() will return True – repoleved Aug 4 '18 at 12:53
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    The OP requested a method that returns a list of available GPUS. At least on my multi-GPU setup, tf.test.gpu_device_name() returns only the name of the first one. – Trisoloriansunscreen Aug 4 '18 at 17:17
  • AttributeError: module 'tensorflow' has no attribute 'test' – Siddharth Das Sep 10 '19 at 7:51

In TensorFlow 2.0, you can use tf.config.experimental.list_physical_devices('GPU'):

import tensorflow as tf
gpus = tf.config.experimental.list_physical_devices('GPU')
for gpu in gpus:
    print("Name:", gpu.name, "  Type:", gpu.device_type)

If you have two GPUs installed, it outputs this:

Name: /physical_device:GPU:0   Type: GPU
Name: /physical_device:GPU:1   Type: GPU

From 2.1, you can drop experimental:

gpus = tf.config.list_physical_devices('GPU')


  • Command worked great. I had to change 'GPU' to 'XLA_GPU'. – Vivek Subramanian Apr 22 '20 at 17:24

The accepted answer gives you the number of GPUs but it also allocates all the memory on those GPUs. You can avoid this by creating a session with fixed lower memory before calling device_lib.list_local_devices() which may be unwanted for some applications.

I ended up using nvidia-smi to get the number of GPUs without allocating any memory on them.

import subprocess

n = str(subprocess.check_output(["nvidia-smi", "-L"])).count('UUID')

Apart from the excellent explanation by Mrry, where he suggested to use device_lib.list_local_devices() I can show you how you can check for GPU related information from the command line.

Because currently only Nvidia's gpus work for NN frameworks, the answer covers only them. Nvidia has a page where they document how you can use the /proc filesystem interface to obtain run-time information about the driver, any installed NVIDIA graphics cards, and the AGP status.


Provide information about each of the installed NVIDIA graphics adapters (model name, IRQ, BIOS version, Bus Type). Note that the BIOS version is only available while X is running.

So you can run this from command line cat /proc/driver/nvidia/gpus/0/information and see information about your first GPU. It is easy to run this from python and also you can check second, third, fourth GPU till it will fail.

Definitely Mrry's answer is more robust and I am not sure whether my answer will work on non-linux machine, but that Nvidia's page provide other interesting information, which not many people know about.


The following works in tensorflow 2:

import tensorflow as tf
gpus = tf.config.experimental.list_physical_devices('GPU')
for gpu in gpus:
    print("Name:", gpu.name, "  Type:", gpu.device_type)

From 2.1, you can drop experimental:

    gpus = tf.config.list_physical_devices('GPU')


  • Does this work when i use a scaleTier of BASIC_GPU too. When i run this code it give me just the CPUs – shivas Oct 18 '19 at 14:10
  • Duplicate answer of MiniQuark (but with less detail..) – FluxLemur Dec 4 '19 at 0:01

I got a GPU called NVIDIA GTX GeForce 1650 Ti in my machine with tensorflow-gpu==2.2.0

Run the following two lines of code:

import tensorflow as tf
print("Num GPUs Available: ", len(tf.config.experimental.list_physical_devices('GPU')))


Num GPUs Available:  1

In TensorFlow Core v2.3.0, the following code should work.

import tensorflow as tf
visible_devices = tf.config.get_visible_devices()
for devices in visible_devices:

Depending on your environment, this code will produce flowing results.

PhysicalDevice(name='/physical_device:CPU:0', device_type='CPU') PhysicalDevice(name='/physical_device:GPU:0', device_type='GPU')


Use this way and check all parts :

from __future__ import absolute_import, division, print_function, unicode_literals

import numpy as np
import tensorflow as tf
import tensorflow_hub as hub
import tensorflow_datasets as tfds

version = tf.__version__
executing_eagerly = tf.executing_eagerly()
hub_version = hub.__version__
available = tf.config.experimental.list_physical_devices("GPU")

print("Version: ", version)
print("Eager mode: ", executing_eagerly)
print("Hub Version: ", h_version)
print("GPU is", "available" if avai else "NOT AVAILABLE")

Ensure you have the latest TensorFlow 2.x GPU installed in your GPU supporting machine, Execute the following code in python,

from __future__ import absolute_import, division, print_function, unicode_literals

import tensorflow as tf 

print("Num GPUs Available: ", len(tf.config.experimental.list_physical_devices('GPU')))

Will get an output looks like,

2020-02-07 10:45:37.587838: I tensorflow/stream_executor/cuda/cuda_gpu_executor.cc:1006] successful NUMA node read from SysFS had negative value (-1), but there must be at least one NUMA node, so returning NUMA node zero 2020-02-07 10:45:37.588896: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1746] Adding visible gpu devices: 0, 1, 2, 3, 4, 5, 6, 7 Num GPUs Available: 8


I am working on TF-2.1 and torch, so I don't want to specific this automacit choosing in any ML frame. I just use original nvidia-smi and os.environ to get a vacant gpu.

def auto_gpu_selection(usage_max=0.01, mem_max=0.05):
"""Auto set CUDA_VISIBLE_DEVICES for gpu

:param mem_max: max percentage of GPU utility
:param usage_max: max percentage of GPU memory
os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
log = str(subprocess.check_output("nvidia-smi", shell=True)).split(r"\n")[6:-1]
gpu = 0

# Maximum of GPUS, 8 is enough for most
for i in range(8):
    idx = i*3 + 2
    if idx > log.__len__()-1:
    inf = log[idx].split("|")
    if inf.__len__() < 3:
    usage = int(inf[3].split("%")[0].strip())
    mem_now = int(str(inf[2].split("/")[0]).strip()[:-3])
    mem_all = int(str(inf[2].split("/")[1]).strip()[:-3])
    # print("GPU-%d : Usage:[%d%%]" % (gpu, usage))
    if usage < 100*usage_max and mem_now < mem_max*mem_all:
        os.environ["CUDA_VISIBLE_EVICES"] = str(gpu)
        print("\nAuto choosing vacant GPU-%d : Memory:[%dMiB/%dMiB] , GPU-Util:[%d%%]\n" %
              (gpu, mem_now, mem_all, usage))
    print("GPU-%d is busy: Memory:[%dMiB/%dMiB] , GPU-Util:[%d%%]" %
          (gpu, mem_now, mem_all, usage))
    gpu += 1
print("\nNo vacant GPU, use CPU instead\n")
os.environ["CUDA_VISIBLE_EVICES"] = "-1"

If I can get any GPU, it will set CUDA_VISIBLE_EVICES to BUSID of that gpu :

GPU-0 is busy: Memory:[5738MiB/11019MiB] , GPU-Util:[60%]
GPU-1 is busy: Memory:[9688MiB/11019MiB] , GPU-Util:[78%]

Auto choosing vacant GPU-2 : Memory:[1MiB/11019MiB] , GPU-Util:[0%]

else, set to -1 to use CPU:

GPU-0 is busy: Memory:[8900MiB/11019MiB] , GPU-Util:[95%]
GPU-1 is busy: Memory:[4674MiB/11019MiB] , GPU-Util:[35%]
GPU-2 is busy: Memory:[9784MiB/11016MiB] , GPU-Util:[74%]

No vacant GPU, use CPU instead

Note: Use this function before you import any ML frame that require a GPU, then it can automatically choose a gpu. Besides, it's easy for you to set multiple tasks.

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