I would like to know if pytorch is using my GPU. It's possible to detect with nvidia-smi if there is any activity from the GPU during the process, but I want something written in a python script.

Is there a way to do so ?

up vote 37 down vote accepted

This is going to work :

In [1]: import torch

In [2]: torch.cuda.current_device()
Out[2]: 0

In [3]: torch.cuda.device(0)
Out[3]: <torch.cuda.device at 0x7efce0b03be0>

In [4]: torch.cuda.device_count()
Out[4]: 1

In [5]: torch.cuda.get_device_name(0)
Out[5]: 'GeForce GTX 950M'

This tells me the GPU GeForce GTX 950M is being used by PyTorch.

  • 3
    I think this just shows that these devices are available on the machine but I'm not sure whether you can get how much memory is being used from each GPU or so.. – kmario23 Jan 10 at 1:12

After you start running the training loop, and then if you want to manually watch it from the terminal whether your program is utilizing the GPU resources and to what extent, then you can use:

$ watch -n 2 nvidia-smi

This will update the stats for every 2 seconds until you press ctrl+c


Also, you can check whether your installation of PyTorch detects your CUDA installation correctly by doing:

In [13]: import  torch

In [14]: torch.cuda.is_available()
Out[14]: True

True status means that PyTorch is configured correctly and is using the GPU although you have to move/place the tensors with necessary statements in your code.


If you want to do this inside Python code, then look into this module:

https://github.com/jonsafari/nvidia-ml-py or in pypi here: https://pypi.python.org/pypi/nvidia-ml-py/

Create a tensor on the GPU as follows:

$ python
>>> import torch
>>> print(torch.rand(3,3).cuda()) 

Do not quit, open another terminal and check if the python process is using the GPU using:

$ nvidia-smi
  • I specifically asked for a solution that does not involve nvidia-smi from the command line – vinzee Jan 11 at 6:39
  • Well, technically you can always parse the output any command-line tools, including nvidia-smi. – Pastafarianist Feb 28 at 20:26

On the office site and the get start page, check GPU for PyTorch as below:

import torch
torch.cuda.is_available()

Reference: PyTorch|Get Start

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As it hasn't been proposed here, I'm adding a method using torch.device, as this is quite handy, also when initializing tensors on the correct device.

# setting device on GPU if available, else CPU
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
print('Using device:', device)
print()

#Additional Info when using cuda
if device.type == 'cuda':
    print(torch.cuda.get_device_name(0))
    print('Memory Usage:')
    print('Allocated:', round(torch.cuda.memory_allocated(0)/1024**3,1), 'GB')
    print('Cached:   ', round(torch.cuda.memory_cached(0)/1024**3,1), 'GB')

Output:

Using device: cuda

Tesla K80
Memory Usage:
Allocated: 0.3 GB
Cached:    0.6 GB

As mentioned above, using device it is possible to:

  • To move tensors to the respective device:

    torch.rand(10).to(device)
    
  • Or create a tensor directly on the device:

    torch.rand(10, device=device)
    

Which makes switching between CPU and GPU comfortable without changing the actual code.

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