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
Is there a way to do so ?
This is going to work :
In : import torch In : torch.cuda.current_device() Out: 0 In : torch.cuda.device(0) Out: <torch.cuda.device at 0x7efce0b03be0> In : torch.cuda.device_count() Out: 1 In : torch.cuda.get_device_name(0) Out: 'GeForce GTX 950M'
This tells me the GPU
GeForce GTX 950M is being used by
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 : import torch In : torch.cuda.is_available() Out: 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:
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
# 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')
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
Or create a tensor directly on the
Which makes switching between CPU and GPU comfortable without changing the actual code.