198

I'm trying to monitor a process that uses CUDA and MPI, is there any way I could do this, something like the command "top" but that monitors the GPU too?

1
  • 1
    "nvidia-smi pmon -i 0" can monitor all process running on nvidia GPU 0 Jan 17, 2019 at 7:25

16 Answers 16

230

To get real-time insight on used resources, do:

nvidia-smi -l 1

This will loop and call the view at every second.

If you do not want to keep past traces of the looped call in the console history, you can also do:

watch -n0.1 nvidia-smi

Where 0.1 is the time interval, in seconds.

enter image description here

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  • 3
    Querying the card every 0.1 seconds? Is that going to cause load on the card? Plus, using watch, your starting a new process every 0.1 seconds.
    – Mick T
    Apr 19, 2018 at 15:54
  • @MickT Is it a big deal? As the Nvidia-smi have this building loop! Is the "watch" command very different from the nvidia-smi -l ? Jan 13, 2020 at 1:22
  • It might be, I've seen lower-end cards have weird lock-ups and I think it's because too many users were running nvidia-smi on the cards. I think using 'nvidia-smi -l' is a better way to go as your not forking a new process every time. Also, checking the card every 0.1 second is overkill, I'd do every second when I'm trying to debug an issue, otherwise I do every 5 minutes to monitor performance. I hope that helps! :)
    – Mick T
    Jan 14, 2020 at 2:34
  • @Gulzar yes, it is.
    – TrostAft
    Feb 28, 2020 at 1:46
  • You can run nvidia-smi -lms 500 (every 500 milliseconds) over a long period of time - e.g. a week - without any issues that you might face using watch.
    – n1k31t4
    Oct 28, 2021 at 14:03
140

I find gpustat very useful. In can be installed with pip install gpustat, and prints breakdown of usage by processes or users.

enter image description here

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  • 4
    after you put watch gpustat -cp you can see stats continuously but colors are gone. How do you fix that? @Alleo Jul 11, 2019 at 11:13
  • 1
    @AbhimanyuAryan use watch -c. @Roman Orac, Thank you, this also worked for me on redhat 8 when I was getting some error due to importing _curses in python. Aug 6, 2019 at 22:32
  • 7
    watch -c gpustat -cp --color Oct 25, 2019 at 18:10
  • 2
    watch -n 0.5 -c gpustat -cp --color Nov 12, 2019 at 15:46
  • 17
    gpustat now has a --watch option: gpustat -cp --watch
    – jayelm
    May 12, 2020 at 19:43
86

I'm not aware of anything that combines this information, but you can use the nvidia-smi tool to get the raw data, like so (thanks to @jmsu for the tip on -l):

$ nvidia-smi -q -g 0 -d UTILIZATION -l

==============NVSMI LOG==============

Timestamp                       : Tue Nov 22 11:50:05 2011

Driver Version                  : 275.19

Attached GPUs                   : 2

GPU 0:1:0
    Utilization
        Gpu                     : 0 %
        Memory                  : 0 %
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  • 4
    I think if you add a -l to that you get it to update continuously effectively monitoring the GPU and memory utilization.
    – jmsu
    Nov 22, 2011 at 10:49
  • 6
    What if when I run it the GPU utilizacion just says N/A??
    – natorro
    Nov 23, 2011 at 2:04
  • 3
    @natorro Looks like nVidia dropped support for some cards. Check this link forums.nvidia.com/index.php?showtopic=205165
    – jmsu
    Nov 24, 2011 at 11:23
  • 32
    I prefer watch -n 0.5 nvidia-smi, which avoids filling your terminal with output
    – ali_m
    Jan 28, 2016 at 0:47
  • nvidia-smi pmon -i 0 Jan 17, 2019 at 7:26
30

Just use watch nvidia-smi, it will output the message by 2s interval in default.

For example, as the below image:

enter image description here

You can also use watch -n 5 nvidia-smi (-n 5 by 5s interval).

23

Use argument "--query-compute-apps="

nvidia-smi --query-compute-apps=pid,process_name,used_memory --format=csv

for further help, please follow

nvidia-smi --help-query-compute-app
2
  • nvidia-smi --help-query-compute-app Invalid combination of input arguments. Please run nvidia-smi -h for help. Dec 31, 2020 at 12:34
  • use --help-query-compute-apps
    – Alexey
    Oct 19, 2021 at 11:36
22

You can try nvtop, which is similar to the widely-used htop tool but for NVIDIA GPUs. Here is a screenshot of nvtop of it in action.

Screenshot of nvtop in action

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  • 2
    very neat! thanks a lot! its also available in latest ubuntu (20.04) which was a breeze for me just doing sudo apt install nvtop and done!
    – Hossein
    Dec 14, 2020 at 7:05
19

Download and install latest stable CUDA driver (4.2) from here. On linux, nVidia-smi 295.41 gives you just what you want. use nvidia-smi:

[root@localhost release]# nvidia-smi 
Wed Sep 26 23:16:16 2012       
+------------------------------------------------------+                       
| NVIDIA-SMI 3.295.41   Driver Version: 295.41         |                       
|-------------------------------+----------------------+----------------------+
| Nb.  Name                     | Bus Id        Disp.  | Volatile ECC SB / DB |
| Fan   Temp   Power Usage /Cap | Memory Usage         | GPU Util. Compute M. |
|===============================+======================+======================|
| 0.  Tesla C2050               | 0000:05:00.0  On     |         0          0 |
|  30%   62 C  P0    N/A /  N/A |   3%   70MB / 2687MB |   44%     Default    |
|-------------------------------+----------------------+----------------------|
| Compute processes:                                               GPU Memory |
|  GPU  PID     Process name                                       Usage      |
|=============================================================================|
|  0.  7336     ./align                                                 61MB  |
+-----------------------------------------------------------------------------+

EDIT: In latest NVIDIA drivers, this support is limited to Tesla Cards.

19

Another useful monitoring approach is to use ps filtered on processes that consume your GPUs. I use this one a lot:

ps f -o user,pgrp,pid,pcpu,pmem,start,time,command -p `lsof -n -w -t /dev/nvidia*`

That'll show all nvidia GPU-utilizing processes and some stats about them. lsof ... retrieves a list of all processes using an nvidia GPU owned by the current user, and ps -p ... shows ps results for those processes. ps f shows nice formatting for child/parent process relationships / hierarchies, and -o specifies a custom formatting. That one is similar to just doing ps u but adds the process group ID and removes some other fields.

One advantage of this over nvidia-smi is that it'll show process forks as well as main processes that use the GPU.

One disadvantage, though, is it's limited to processes owned by the user that executes the command. To open it up to all processes owned by any user, I add a sudo before the lsof.

Lastly, I combine it with watch to get a continuous update. So, in the end, it looks like:

watch -n 0.1 'ps f -o user,pgrp,pid,pcpu,pmem,start,time,command -p `sudo lsof -n -w -t /dev/nvidia*`'

Which has output like:

Every 0.1s: ps f -o user,pgrp,pid,pcpu,pmem,start,time,command -p `sudo lsof -n -w -t /dev/nvi...  Mon Jun  6 14:03:20 2016
USER      PGRP   PID %CPU %MEM  STARTED     TIME COMMAND
grisait+ 27294 50934  0.0  0.1   Jun 02 00:01:40 /opt/google/chrome/chrome --type=gpu-process --channel=50877.0.2015482623
grisait+ 27294 50941  0.0  0.0   Jun 02 00:00:00  \_ /opt/google/chrome/chrome --type=gpu-broker
grisait+ 53596 53596 36.6  1.1 13:47:06 00:05:57 python -u process_examples.py
grisait+ 53596 33428  6.9  0.5 14:02:09 00:00:04  \_ python -u process_examples.py
grisait+ 53596 33773  7.5  0.5 14:02:19 00:00:04  \_ python -u process_examples.py
grisait+ 53596 34174  5.0  0.5 14:02:30 00:00:02  \_ python -u process_examples.py
grisait+ 28205 28205  905  1.5 13:30:39 04:56:09 python -u train.py
grisait+ 28205 28387  5.8  0.4 13:30:49 00:01:53  \_ python -u train.py
grisait+ 28205 28388  5.3  0.4 13:30:49 00:01:45  \_ python -u train.py
grisait+ 28205 28389  4.5  0.4 13:30:49 00:01:29  \_ python -u train.py
grisait+ 28205 28390  4.5  0.4 13:30:49 00:01:28  \_ python -u train.py
grisait+ 28205 28391  4.8  0.4 13:30:49 00:01:34  \_ python -u train.py
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  • 2
    You can also get the PIDs of compute programs that occupy the GPU of all users without sudo like this: nvidia-smi --query-compute-apps=pid --format=csv,noheader
    – Lenar Hoyt
    Jan 16, 2017 at 19:25
  • 1
    Sometimes nvidia-smi does not list all processes, so you end up with your memory used by processes not listed there. This is the main way I can track and kill those processes.
    – rand
    Apr 27, 2018 at 10:32
  • 2
    @grisaitis Carefull, I don't think the pmem given by ps takes into account the total memory of the GPU but that of the CPU because ps is not "Nvidia GPU" aware
    – SebMa
    May 29, 2018 at 14:02
  • Not quite "filtered on processes that consume your GPUs.". They can just change settings... But I don't know a better alternative... Dec 31, 2020 at 12:17
  • right now you monitor CPU performance of any processes that operate (actually compute, change settings or even monitor) GPUs. I guess this is NOT what was asked in original question. I think question was just about "compute" part... Dec 31, 2020 at 12:31
18

Recently, I have written a monitoring tool called nvitop, the interactive NVIDIA-GPU process viewer.

Screenshot Monitor

It is written in pure Python and is easy to install.

Install from PyPI:

pip3 install --upgrade nvitop

Install the latest version from GitHub (recommended):

pip3 install git+https://github.com/XuehaiPan/nvitop.git#egg=nvitop

Run as a resource monitor:

nvitop -m

nvitop will show the GPU status like nvidia-smi but with additional fancy bars and history graphs.

For the processes, it will use psutil to collect process information and display the USER, %CPU, %MEM, TIME and COMMAND fields, which is much more detailed than nvidia-smi. Besides, it is responsive for user inputs in monitor mode. You can interrupt or kill your processes on the GPUs.

nvitop comes with a tree-view screen and an environment screen:

Tree-view

Environment


In addition, nvitop can be integrated into other applications. For example, integrate into PyTorch training code:

import os
from nvitop.core import host, CudaDevice, HostProcess, GpuProcess
from torch.utils.tensorboard import SummaryWriter

device = CudaDevice(0)
this_process = GpuProcess(os.getpid(), device)
writer = SummaryWriter()
for epoch in range(n_epochs):

    # some training code here
    # ...

    this_process.update_gpu_status()
    writer.add_scalars(
        'monitoring',
        {
            'device/memory_used': float(device.memory_used()) / (1 << 20),  # convert bytes to MiBs
            'device/memory_percent': device.memory_percent(),
            'device/memory_utilization': device.memory_utilization(),
            'device/gpu_utilization': device.gpu_utilization(),

            'host/cpu_percent': host.cpu_percent(),
            'host/memory_percent': host.virtual_memory().percent,

            'process/cpu_percent': this_process.cpu_percent(),
            'process/memory_percent': this_process.memory_percent(),
            'process/used_gpu_memory': float(this_process.gpu_memory()) / (1 << 20),  # convert bytes to MiBs
            'process/gpu_sm_utilization': this_process.gpu_sm_utilization(),
            'process/gpu_memory_utilization': this_process.gpu_memory_utilization(),
        },
        global_step
    )

See https://github.com/XuehaiPan/nvitop for more details.

Note: nvitop is released under the GPLv3 License. Please feel free to use it as a package or dependency for your own projects. However, if you want to add or modify some features of nvitop, or copy some source code of nvitop into your own code, the source code should also be released under the GPLv3 License.

2
  • Nice interface, good stuff! Thanks for sharing.
    – Pramit
    Oct 27, 2021 at 3:17
  • I received an error after install nvitop: _curses.error: curs_set() returned ERR
    – Mello
    Dec 16, 2021 at 11:28
6

This may not be elegant, but you can try

while true; do sleep 2; nvidia-smi; done

I also tried the method by @Edric, which works, but I prefer the original layout of nvidia-smi.

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  • 13
    Or you can just do nvidia-smi -l 2. Or to prevent repeated console output, watch -n 2 'nvidia-smi' Jun 6, 2016 at 17:50
5

You can use the monitoring program glances with its GPU monitoring plug-in:

  • open source
  • to install: sudo apt-get install -y python-pip; sudo pip install glances[gpu]
  • to launch: sudo glances

enter image description here

It also monitors the CPU, disk IO, disk space, network, and a few other things:

enter image description here

3

In Linux Mint, and most likely Ubuntu, you can try "nvidia-smi --loop=1"

3

If you just want to find the process which is running on gpu, you can simply using the following command:

lsof /dev/nvidia*

For me nvidia-smi and watch -n 1 nvidia-smi are enough in most cases. Sometimes nvidia-smi shows no process but the gpu memory is used up so i need to use the above command to find the processes.

2

I created a batch file with the following code in a windows machine to monitor every second. It works for me.

:loop
cls
"C:\Program Files\NVIDIA Corporation\NVSMI\nvidia-smi"
timeout /T 1
goto loop

nvidia-smi exe is usually located in "C:\Program Files\NVIDIA Corporation" if you want to run the command only once.

0
1

you can use nvidia-smi pmon -i 0 to monitor every process in GPU 0. including compute mode, sm usage, memory usage, encoder usage, decoder usage.

0

There is Prometheus GPU Metrics Exporter (PGME) that leverages the nvidai-smi binary. You may try this out. Once you have the exporter running, you can access it via http://localhost:9101/metrics. For two GPUs, the sample result looks like this:

temperature_gpu{gpu="TITAN X (Pascal)[0]"} 41
utilization_gpu{gpu="TITAN X (Pascal)[0]"} 0
utilization_memory{gpu="TITAN X (Pascal)[0]"} 0
memory_total{gpu="TITAN X (Pascal)[0]"} 12189
memory_free{gpu="TITAN X (Pascal)[0]"} 12189
memory_used{gpu="TITAN X (Pascal)[0]"} 0
temperature_gpu{gpu="TITAN X (Pascal)[1]"} 78
utilization_gpu{gpu="TITAN X (Pascal)[1]"} 95
utilization_memory{gpu="TITAN X (Pascal)[1]"} 59
memory_total{gpu="TITAN X (Pascal)[1]"} 12189
memory_free{gpu="TITAN X (Pascal)[1]"} 1738
memory_used{gpu="TITAN X (Pascal)[1]"} 10451

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