45

I was trying to use my current code with an A100 gpu but I get this error:

---> backend='nccl'
/home/miranda9/miniconda3/envs/metalearningpy1.7.1c10.2/lib/python3.8/site-packages/torch/cuda/__init__.py:104: UserWarning: 
A100-SXM4-40GB with CUDA capability sm_80 is not compatible with the current PyTorch installation.
The current PyTorch install supports CUDA capabilities sm_37 sm_50 sm_60 sm_61 sm_70 sm_75 compute_37.
If you want to use the A100-SXM4-40GB GPU with PyTorch, please check the instructions at https://pytorch.org/get-started/locally/

which is reather confusing because it points to the usual pytorch installation but doesn't tell me which combination of pytorch version + cuda version to use for my specific hardware (A100). What is the right way to install pytorch for an A100?


These are some versions I've tried:

# conda install -y pytorch==1.8.0 torchvision cudatoolkit=10.2 -c pytorch
# conda install -y pytorch torchvision cudatoolkit=10.2 -c pytorch
#conda install -y pytorch==1.7.1 torchvision torchaudio cudatoolkit=10.2 -c pytorch -c conda-forge
# conda install -y pytorch==1.6.0 torchvision cudatoolkit=10.2 -c pytorch
#conda install -y pytorch==1.7.1 torchvision torchaudio cudatoolkit=11.1 -c pytorch -c conda-forge

# conda install pytorch torchvision torchaudio cudatoolkit=11.0 -c pytorch
# conda install pytorch torchvision torchaudio cudatoolkit=11.1 -c pytorch -c conda-forge
# conda install -y pytorch torchvision cudatoolkit=9.2 -c pytorch # For Nano, CC
# conda install pytorch torchvision torchaudio cudatoolkit=11.1 -c pytorch -c conda-forge

note that this can be subtle because I've had this error with this machine + pytorch version in the past:

How to solve the famous `unhandled cuda error, NCCL version 2.7.8` error?


Bonus 1:

I still have errors:

ncclSystemError: System call (socket, malloc, munmap, etc) failed.
Traceback (most recent call last):
  File "/home/miranda9/diversity-for-predictive-success-of-meta-learning/div_src/diversity_src/experiment_mains/main_dist_maml_l2l.py", line 1423, in <module>
    main()
  File "/home/miranda9/diversity-for-predictive-success-of-meta-learning/div_src/diversity_src/experiment_mains/main_dist_maml_l2l.py", line 1365, in main
    train(args=args)
  File "/home/miranda9/diversity-for-predictive-success-of-meta-learning/div_src/diversity_src/experiment_mains/main_dist_maml_l2l.py", line 1385, in train
    args.opt = move_opt_to_cherry_opt_and_sync_params(args) if is_running_parallel(args.rank) else args.opt
  File "/home/miranda9/ultimate-utils/ultimate-utils-proj-src/uutils/torch_uu/distributed.py", line 456, in move_opt_to_cherry_opt_and_sync_params
    args.opt = cherry.optim.Distributed(args.model.parameters(), opt=args.opt, sync=syn)
  File "/home/miranda9/miniconda3/envs/meta_learning_a100/lib/python3.9/site-packages/cherry/optim.py", line 62, in __init__
    self.sync_parameters()
  File "/home/miranda9/miniconda3/envs/meta_learning_a100/lib/python3.9/site-packages/cherry/optim.py", line 78, in sync_parameters
    dist.broadcast(p.data, src=root)
  File "/home/miranda9/miniconda3/envs/meta_learning_a100/lib/python3.9/site-packages/torch/distributed/distributed_c10d.py", line 1090, in broadcast
    work = default_pg.broadcast([tensor], opts)
RuntimeError: NCCL error in: ../torch/lib/c10d/ProcessGroupNCCL.cpp:911, unhandled system error, NCCL version 2.7.8

one of the answers suggested to have nvcca & pytorch.version.cuda to match but they do not:

(meta_learning_a100) [miranda9@hal-dgx ~]$ python -c "import torch;print(torch.version.cuda)"

11.1
(meta_learning_a100) [miranda9@hal-dgx ~]$ nvcc -V
nvcc: NVIDIA (R) Cuda compiler driver
Copyright (c) 2005-2020 NVIDIA Corporation
Built on Wed_Jul_22_19:09:09_PDT_2020
Cuda compilation tools, release 11.0, V11.0.221
Build cuda_11.0_bu.TC445_37.28845127_0

How do I match them? I this the error? Can someone display their pip, conda and nvcca version to see what set up works?

More error messages:

hal-dgx:21797:21797 [0] NCCL INFO Bootstrap : Using [0]enp226s0:141.142.153.83<0> [1]virbr0:192.168.122.1<0>
hal-dgx:21797:21797 [0] NCCL INFO NET/Plugin : No plugin found (libnccl-net.so), using internal implementation
hal-dgx:21797:21797 [0] NCCL INFO NET/IB : Using [0]mlx5_0:1/IB [1]mlx5_1:1/IB [2]mlx5_2:1/IB [3]mlx5_3:1/IB [4]mlx5_4:1/IB [5]mlx5_5:1/IB [6]mlx5_6:1/IB [7]mlx5_7:1/IB ; OOB enp226s0:141.142.153.83<0>
hal-dgx:21797:21797 [0] NCCL INFO Using network IB
NCCL version 2.7.8+cuda11.1
hal-dgx:21805:21805 [2] NCCL INFO Bootstrap : Using [0]enp226s0:141.142.153.83<0> [1]virbr0:192.168.122.1<0>
hal-dgx:21799:21799 [1] NCCL INFO Bootstrap : Using [0]enp226s0:141.142.153.83<0> [1]virbr0:192.168.122.1<0>
hal-dgx:21805:21805 [2] NCCL INFO NET/Plugin : No plugin found (libnccl-net.so), using internal implementation
hal-dgx:21799:21799 [1] NCCL INFO NET/Plugin : No plugin found (libnccl-net.so), using internal implementation
hal-dgx:21811:21811 [3] NCCL INFO Bootstrap : Using [0]enp226s0:141.142.153.83<0> [1]virbr0:192.168.122.1<0>
hal-dgx:21811:21811 [3] NCCL INFO NET/Plugin : No plugin found (libnccl-net.so), using internal implementation
hal-dgx:21811:21811 [3] NCCL INFO NET/IB : Using [0]mlx5_0:1/IB [1]mlx5_1:1/IB [2]mlx5_2:1/IB [3]mlx5_3:1/IB [4]mlx5_4:1/IB [5]mlx5_5:1/IB [6]mlx5_6:1/IB [7]mlx5_7:1/IB ; OOB enp226s0:141.142.153.83<0>
hal-dgx:21811:21811 [3] NCCL INFO Using network IB
hal-dgx:21799:21799 [1] NCCL INFO NET/IB : Using [0]mlx5_0:1/IB [1]mlx5_1:1/IB [2]mlx5_2:1/IB [3]mlx5_3:1/IB [4]mlx5_4:1/IB [5]mlx5_5:1/IB [6]mlx5_6:1/IB [7]mlx5_7:1/IB ; OOB enp226s0:141.142.153.83<0>
hal-dgx:21805:21805 [2] NCCL INFO NET/IB : Using [0]mlx5_0:1/IB [1]mlx5_1:1/IB [2]mlx5_2:1/IB [3]mlx5_3:1/IB [4]mlx5_4:1/IB [5]mlx5_5:1/IB [6]mlx5_6:1/IB [7]mlx5_7:1/IB ; OOB enp226s0:141.142.153.83<0>
hal-dgx:21799:21799 [1] NCCL INFO Using network IB
hal-dgx:21805:21805 [2] NCCL INFO Using network IB

hal-dgx:21797:27906 [0] misc/ibvwrap.cc:280 NCCL WARN Call to ibv_create_qp failed
hal-dgx:21797:27906 [0] NCCL INFO transport/net_ib.cc:360 -> 2
hal-dgx:21797:27906 [0] NCCL INFO transport/net_ib.cc:437 -> 2
hal-dgx:21797:27906 [0] NCCL INFO include/net.h:21 -> 2
hal-dgx:21797:27906 [0] NCCL INFO include/net.h:51 -> 2
hal-dgx:21797:27906 [0] NCCL INFO init.cc:300 -> 2
hal-dgx:21797:27906 [0] NCCL INFO init.cc:566 -> 2
hal-dgx:21797:27906 [0] NCCL INFO init.cc:840 -> 2
hal-dgx:21797:27906 [0] NCCL INFO group.cc:73 -> 2 [Async thread]

hal-dgx:21811:27929 [3] misc/ibvwrap.cc:280 NCCL WARN Call to ibv_create_qp failed
hal-dgx:21811:27929 [3] NCCL INFO transport/net_ib.cc:360 -> 2
hal-dgx:21811:27929 [3] NCCL INFO transport/net_ib.cc:437 -> 2
hal-dgx:21811:27929 [3] NCCL INFO include/net.h:21 -> 2
hal-dgx:21811:27929 [3] NCCL INFO include/net.h:51 -> 2
hal-dgx:21811:27929 [3] NCCL INFO init.cc:300 -> 2
hal-dgx:21811:27929 [3] NCCL INFO init.cc:566 -> 2
hal-dgx:21811:27929 [3] NCCL INFO init.cc:840 -> 2
hal-dgx:21811:27929 [3] NCCL INFO group.cc:73 -> 2 [Async thread]

after putting

import os
os.environ["NCCL_DEBUG"] = "INFO"
3
  • 2
    Pytorch 1.7.0 or later with CUDA 11.0 or later should work. Or you could use NGC Apr 7, 2021 at 19:16
  • 1
    @RobertCrovella if what you say it's true then the command needed is conda install -y pytorch==1.7.1 torchvision torchaudio cudatoolkit=11.0 -c pytorch -c conda-forge will try soon if it worked. Apr 24, 2021 at 1:38
  • @CharlieParker just 14 minutes for the expiration of Bounty. non of these answers helpful?
    – Sadra
    May 19, 2022 at 20:40

6 Answers 6

47

From the link pytorch site from @SimonB 's answer, I did:

pip3 install torch==1.9.0+cu111 torchvision==0.10.0+cu111 torchaudio==0.9.0 -f https://download.pytorch.org/whl/torch_stable.html

This solved the problem for me.

6
  • 1
    For me, the conda installation did not work but the pip installation, no idea why
    – Woma
    Aug 25, 2021 at 11:32
  • Somehow, it does not work for now, seems that the download link not work for some reason: "returned a non-zero code: 137"
    – Tian
    Jan 28, 2022 at 1:53
  • are you sure this is right? I have that my pytorch wants 11.1 but nvcca is 11.0 see: (meta_learning_a100) [miranda9@hal-dgx ~]$ python -c "import torch;print(torch.version.cuda)" 11.1 (meta_learning_a100) [miranda9@hal-dgx ~]$ nvcc -V nvcc: NVIDIA (R) Cuda compiler driver Copyright (c) 2005-2020 NVIDIA Corporation Built on Wed_Jul_22_19:09:09_PDT_2020 Cuda compilation tools, release 11.0, V11.0.221 Build cuda_11.0_bu.TC445_37.28845127_0 May 12, 2022 at 20:43
  • @CharlieParker It's been too long for me to recall the context for this question. But nvidia-smi reveals that I have CUDA 11.4 and nvcc 10.1 May 16, 2022 at 16:26
  • 2
    ERROR: No matching distribution found for torch==1.9.0+cu111
    – PascalIv
    May 15, 2023 at 9:12
8

I've got an A100 and have had success with

conda install pytorch torchvision torchaudio cudatoolkit=11.1 -c pytorch -c nvidia

Which is now also recommended on the pytorch site

1
  • are you sure this is right? I have that my pytorch wants 11.1 but nvcca is 11.0 see: (meta_learning_a100) [miranda9@hal-dgx ~]$ python -c "import torch;print(torch.version.cuda)" 11.1 (meta_learning_a100) [miranda9@hal-dgx ~]$ nvcc -V nvcc: NVIDIA (R) Cuda compiler driver Copyright (c) 2005-2020 NVIDIA Corporation Built on Wed_Jul_22_19:09:09_PDT_2020 Cuda compilation tools, release 11.0, V11.0.221 Build cuda_11.0_bu.TC445_37.28845127_0 May 12, 2022 at 20:43
4

To me this is what worked:

conda update conda
pip install --upgrade pip
pip3 install --upgrade pip

conda create -n meta_learning_a100 python=3.9
conda activate meta_learning_a100

pip3 install torch==1.9.1+cu111 torchvision==0.10.1+cu111 torchaudio==0.9.1 -f https://download.pytorch.org/whl/torch_stable.html

then I tested it, asked for the device and did a matrix multiply, no errors is it worked:

(meta_learning_a100) [miranda9@hal-dgx diversity-for-predictive-success-of-meta-learning]$ python -c "import uutils; uutils.torch_uu.gpu_test()"
device name: A100-SXM4-40GB
Success, no Cuda errors means it worked see:
out=tensor([[ 0.5877],
        [-3.0269]], device='cuda:0')

gpu pytorch code:

def gpu_test():
    """
    python -c "import uutils; uutils.torch_uu.gpu_test()"
    """
    from torch import Tensor

    print(f'device name: {device_name()}')
    x: Tensor = torch.randn(2, 4).cuda()
    y: Tensor = torch.randn(4, 1).cuda()
    out: Tensor = (x @ y)
    assert out.size() == torch.Size([2, 1])
    print(f'Success, no Cuda errors means it worked see:\n{out=}')
1
  • Thanks! This solution worked for me. I was trying to run pytorch inside docker. I uninstalled all the cuda libraries and pre-installed torch before running this command. Aug 19, 2022 at 5:48
2

I had the same problem. You need to install CUDA 11.0 instead of 10.2 and reinstall PyTorch for this CUDA version.

3
  • did you install pytorch 1.8.0 using cuda 11.0 or pytorch 1.7.x? Apr 24, 2021 at 0:40
  • 1
    I tried 1.8.0 and 1.7.1, both were working. Apr 25, 2021 at 6:40
  • are you sure this is right? I have that my pytorch wants 11.1 but nvcca is 11.0 see: (meta_learning_a100) [miranda9@hal-dgx ~]$ python -c "import torch;print(torch.version.cuda)" 11.1 (meta_learning_a100) [miranda9@hal-dgx ~]$ nvcc -V nvcc: NVIDIA (R) Cuda compiler driver Copyright (c) 2005-2020 NVIDIA Corporation Built on Wed_Jul_22_19:09:09_PDT_2020 Cuda compilation tools, release 11.0, V11.0.221 Build cuda_11.0_bu.TC445_37.28845127_0 May 12, 2022 at 20:44
2

This solution is tested on a multi GPU A100 environment:

create a clean conda environment: conda create -n pya100 python=3.9

then check your nvcc version by: nvcc --version #mine return 11.3

then install pytorch in this way: (as of now it installs Pytorch 1.11.0, torchvision 0.12.0)

conda install pytorch torchvision torchaudio cudatoolkit=11.3 -c pytorch -c nvidia

now python -c "import torch;print(torch.version.cuda)" returns 11.3 (though I don't think it matters that much)

I shared my environment file Here. You can build one environment based on using this: (just replace NAMEOFENVIRONMENT with your environment name)

conda env update --name NAMEOFENVIRONMENT --file environment.yml     
3
  • @CharlieParker I think this address your problem
    – Sadra
    May 14, 2022 at 22:35
  • if the current solution did not work please share apt list --installed through pastebin so I can compare if mine and give it another try
    – Sadra
    May 15, 2022 at 17:20
  • @CharlieParker does it help?
    – Sadra
    May 19, 2022 at 20:39
1

Check your installed version of torch, torchvision, torchaudio etc. using

<your virtualenv path>/bin/python -m torch.utils.collect_env

In my case I had this -

[pip3] numpy==1.21.5
[pip3] torch==1.11.0
[pip3] torchaudio==0.11.0
[pip3] torchtuples==0.2.2
[pip3] torchvision==0.12.0

Since, I was not using torchvision or torchaudio, I just updated my torch version using the suggestion by @JamesHirschorn and selected the one according to my torch version from this pytorch link. e.g. in my case, the torch version was 1.11.0 and hence I installed torch==1.11.0+cu113

pip install torch==1.11.0+cu113 -f https://download.pytorch.org/whl/torch_stable.html

After update, the output of <your virtualenv path>/bin/python -m torch.utils.collect_env was

[pip3] numpy==1.21.5
[pip3] torch==1.11.0+cu113  <---
[pip3] torchaudio==0.11.0
[pip3] torchtuples==0.2
[pip3] torchvision==0.12.0
1

Your Answer

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

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