I know that nvidia-smi -l 1 will give the GPU usage every one second (similarly to the following). However, I would appreciate an explanation on what Volatile GPU-Util really means. Is that the number of used SMs over total SMs, or the occupancy, or something else?

| NVIDIA-SMI 367.48                 Driver Version: 367.48                    |
| GPU  Name        Persistence-M| Bus-Id        Disp.A | Volatile Uncorr. ECC |
| Fan  Temp  Perf  Pwr:Usage/Cap|         Memory-Usage | GPU-Util  Compute M. |
|   0  Tesla K20c          Off  | 0000:03:00.0     Off |                    0 |
| 30%   41C    P0    53W / 225W |      0MiB /  4742MiB |     96%      Default |
|   1  Tesla K20c          Off  | 0000:43:00.0     Off |                    0 |
| 36%   49C    P0    95W / 225W |   4516MiB /  4742MiB |     63%      Default |

| Processes:                                                       GPU Memory |
|  GPU       PID  Type  Process name                               Usage      |
|    1      5193    C   python                                        4514MiB |
  • 34
    For those wondering, SM means Streaming Multiprocessor, and it is explained here.
    – Davidmh
    May 23, 2017 at 14:25
  • 7
    Volatile is from the top row, as in Volatile Uncorr. ECC - which sounds like a serious memory error. You have 0 of them in the output above. Jun 7, 2020 at 18:01

2 Answers 2


It is a sampled measurement over a time period. For a given time period, it reports what percentage of time one or more GPU kernel(s) was active (i.e. running).

It doesn't tell you anything about how many SMs were used, or how "busy" the code was, or what it was doing exactly, or in what way it may have been using memory.

The above claim(s) can be verified without too much difficulty using a microbenchmarking-type exercise (see below).

Based on the Nvidia docs, The sample period may be between 1 second and 1/6 second depending on the product. However, the period shouldn't make much difference on how you interpret the result.

Also, the word "Volatile" does not pertain to this data item in nvidia-smi. You are misreading the output format.

Here's a trivial code that supports my claim:

#include <stdio.h>
#include <unistd.h>
#include <stdlib.h>

const long long tdelay=1000000LL;
const int loops = 10000;
const int hdelay = 1;

__global__ void dkern(){

  long long start = clock64();
  while(clock64() < start+tdelay);

int main(int argc, char *argv[]){

  int my_delay = hdelay;
  if (argc > 1) my_delay = atoi(argv[1]);
  for (int i = 0; i<loops; i++){

  return 0;

On my system, when I run the above code with a command line parameter of 100, nvidia-smi will report 99% utilization. When I run with a command line parameter of 1000, nvidia-smi will report ~83% utilization. When I run it with a command line parameter of 10000, nvidia-smi will report ~9% utilization.

Although this answer is focused on GPU kernels, I have lately noticed that nvidia-smi will also report non-zero GPU utilization when for example cudaMemcpy operations are running (and nothing else). So the above description should be considered a description of reporting with respect to CUDA kernel activity.

  • Is there a way to get the metrics such as how many SMs were used, or how "busy" the SMs were? Are there any NVML API calls not shown in nvidia-smi that can help expose this info?
    – Kira
    May 12, 2021 at 17:07

The 'Volatile' on nvidia-smi isn't part of GPU-Util, it's part of 'Volatile Uncorr. ECC', which shows the number of uncorrected errors that have occurred on the GPU since the last driver load. There's a good writeup of everything in nvidia-smi here:


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.