33

Win 10 64-bit 21H1; TF2.5, CUDA 11 installed in environment (Python 3.9.5 Xeus)

I am not the only one seeing this error; see also (unanswered) here and here. The issue is obscure and the proposed resolutions are unclear/don't seem to work (see e.g. here)

Issue Using the TF Linear_Mixed_Effects_Models.ipynb example (download from TensorFlow github here) execution reaches the point of performing the "warm up stage" then throws the error:

InternalError: libdevice not found at ./libdevice.10.bc [Op:__inference_one_e_step_2806]

The console contains this output showing that it finds the GPU but XLA initialisation fails to find the - existing! - libdevice in the specified paths

2021-08-01 22:04:36.691300: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1418] Created TensorFlow device (/job:localhost/replica:0/task:0/device:GPU:0 with 9623 MB memory) -> physical GPU (device: 0, name: NVIDIA GeForce GTX 1080 Ti, pci bus id: 0000:01:00.0, compute capability: 6.1)
2021-08-01 22:04:37.080007: W tensorflow/python/util/util.cc:348] Sets are not currently considered sequences, but this may change in the future, so consider avoiding using them.
2021-08-01 22:04:54.122528: I tensorflow/compiler/xla/service/service.cc:169] XLA service 0x1d724940130 initialized for platform CUDA (this does not guarantee that XLA will be used). Devices:
2021-08-01 22:04:54.127766: I tensorflow/compiler/xla/service/service.cc:177]   StreamExecutor device (0): NVIDIA GeForce GTX 1080 Ti, Compute Capability 6.1
2021-08-01 22:04:54.215072: W tensorflow/compiler/tf2xla/kernels/random_ops.cc:241] Warning: Using tf.random.uniform with XLA compilation will ignore seeds; consider using tf.random.stateless_uniform instead if reproducible behavior is desired.
2021-08-01 22:04:55.506464: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:73] Can't find libdevice directory ${CUDA_DIR}/nvvm/libdevice. This may result in compilation or runtime failures, if the program we try to run uses routines from libdevice.
2021-08-01 22:04:55.512876: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:74] Searched for CUDA in the following directories:
2021-08-01 22:04:55.517387: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   C:/Users/Julian/anaconda3/envs/TF250_PY395_xeus/Library/bin
2021-08-01 22:04:55.520773: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.2
2021-08-01 22:04:55.524125: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   .
2021-08-01 22:04:55.526349: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:79] You can choose the search directory by setting xla_gpu_cuda_data_dir in HloModule's DebugOptions.  For most apps, setting the environment variable XLA_FLAGS=--xla_gpu_cuda_data_dir=/path/to/cuda will work.

Now the interesting thing is that the paths searched includes "C:/Users/Julian/anaconda3/envs/TF250_PY395_xeus/Library/bin"

the content of that folder includes all the (successfully loaded at TF startup) DLLs, including cudart64_110.dll, dudnn64_8.dll... and of course libdevice.10.bc

Question Since TF says it is searching this location for this file and the file exists there, what is wrong and how do I fix it?

(NB C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.2 does not exist... CUDA is intalled in the environment; this path must be a best guess for an OS installation)

Info: I am setting the path by

aPath = '--xla_gpu_cuda_data_dir=C:/Users/Julian/anaconda3/envs/TF250_PY395_xeus/Library/bin'
print(aPath)
os.environ['XLA_FLAGS'] = aPath

but I have also set an OS environment variable XLA_FLAGS to the same string value... I don't know which one is actually working yet, but the fact that the console output says it searched the intended path is good enough

2

11 Answers 11

34

The following worked for me. With error message:

error: Can't find libdevice directory ${CUDA_DIR}/nvvm/libdevice

Firstly I searched for nvvm directory and then verified that libdevice directory existed:

$ find / -type d -name nvvm 2>/dev/null
/usr/lib/cuda/nvvm
$ cd /usr/lib/cuda/nvvm
/usr/lib/cuda/nvvm$ ls
libdevice
/usr/lib/cuda/nvvm$ cd libdevice
/usr/lib/cuda/nvvm/libdevice$ ls
libdevice.10.bc

Then I exported the environment variable:

export XLA_FLAGS=--xla_gpu_cuda_data_dir=/usr/lib/cuda

as shown by @Insectatorious above. This solved the error and I was able to run the code.

2
  • 6
    The above approach did not work for me when using a custom environment on a cluster. Probably tensorflow expects to locate nvvm folder in your custom environment. Somehow conda install cudatoolkit did not create nvvm folder. What worked for me is to conda install -c nvidia cuda-nvcc and then export the path of cuda-nvcc folder as done above.
    – Light_B
    Commented Mar 8, 2023 at 19:06
  • 1
    I'm using Windows, so I had to add the path with quotes around: os.environ['XLA_FLAGS'] = '--xla_gpu_cuda_data_dir="/mnt/c/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v12.2"'
    – Henry
    Commented Aug 19, 2023 at 20:32
14

for Windows user

Step-1

run (as administrator)

conda install -c anaconda cudatoolkit

you can specify the cudatoolkit version as per your installed cudaCNN /supported version ex:conda install -c anaconda cudatoolkit=10.2.89

Step-2

go to the installed conada folder

C:\ProgramData\Anaconda3\Library\bin

Step-3

locate "libdevice.10.bc" ,copy the file

Step-4

create a folder named "nvvm" inside bin

create another folder named "libdevice" inside nvvm

paste the "libdevice.10.bc" file inside "libdevice"

Step-5

go to environmental variables

System variables >New

variable name:

XLA_FLAGS

variable value:

--xla_gpu_cuda_data_dir=C:\ProgramData\Anaconda3\Library\bin

(edit above as per your directory)

Step-6 restart the cmd/virtual env

4
  • 2
    This would be more useful if the reasons behind the specific steps were provided - understanding is reusable :) Commented May 16, 2022 at 11:11
  • 1
    Follow this thread for more information. :discuss.tensorflow.org/t/… Commented May 16, 2022 at 14:48
  • 4
    SE answers should seek to be self-contained. And you referred me to the thread that I started. My comments boil down to: what are you adding to the answer I gave previously and why does it matter? What is distinctive about your contribution? Answering that will help others decide which answer is most relevant to their needs. Commented May 17, 2022 at 15:16
  • yep yep . the program uses the XLA_FLAGS(env variable) to get the path of CUDA_DIR ,but its unable to access the .bc file outside the Anaconda env So i installed cuda in anaconda the i created /nvvm/libdevice ,as in the program it says $CUDA_DIR/nvvm/libdevice and placed the file there . and why its unable to access outside of anaconda i tried to find which module is extracting the file ,but can't find it so, that's all the expiation . Commented May 17, 2022 at 16:15
6

The diagnostic information is unclear and thus unhelpful; there is however a resolution

The issue was resolved by providing the file (as a copy) at this path

C:\Users\Julian\anaconda3\envs\TF250_PY395_xeus\Library\bin\nvvm\libdevice\

Note that C:\Users\Julian\anaconda3\envs\TF250_PY395_xeus\Library\bin was the path given to XLA_FLAGS, but it seems it is not looking for the libdevice file there it is looking for the \nvvm\libdevice\ path This means that I can't just set a different value in XLA_FLAGS to point to the actual location of the libdevice file because, to coin a phrase, it's not (just) the file it's looking for.

The debug info earlier:

2021-08-05 08:38:52.889213: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:73] Can't find libdevice directory ${CUDA_DIR}/nvvm/libdevice. This may result in compilation or runtime failures, if the program we try to run uses routines from libdevice.
2021-08-05 08:38:52.896033: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:74] Searched for CUDA in the following directories:
2021-08-05 08:38:52.899128: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   C:/Users/Julian/anaconda3/envs/TF250_PY395_xeus/Library/bin
2021-08-05 08:38:52.902510: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.2
2021-08-05 08:38:52.905815: W tensorflow/compiler/xla/service/gpu/nvptx_compiler.cc:77]   .

is incorrect insofar as there is no "CUDA" in the search path; and FWIW I think a different error should have been given for searching in C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.2 since there is no such folder (there's an old V10.0 folder there, but no OS install of CUDA 11)

Until/unless path handling is improved by TensorFlow such file structure manipulation is needed in every new (Anaconda) python environment.

Full thread in TensorFlow forum here

1
5

For those using windows and PowerShell, assuming cuda is in C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.7

The environment can be set as:

$env:XLA_FLAGS="--xla_gpu_cuda_data_dir='C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v11.7'"

Here "''", i.e. nested quotes, is required!

I think this may be the lightest way to deal with this XLA bug.

1
  • Just in case someone wishes to manually enter the system variable in Windows 10. Here is how: Go to Type here to search box. Search for Environment variables -> System Variables -> New -> Variable name put XLA_FLAGS Variable value put "--xla_gpu_cuda_data_dir='C:/Program Files/NVIDIA GPU Computing Toolkit/CUDA/v12.2'" without the double quotation marks on the outside. (Assuming your CUDA version is 12.2).
    – George
    Commented Aug 15, 2023 at 11:06
5

For those using miniconda just copy the file libdevice.10.bc into the root folder of python application or notebook.

It works here using python=3.9, cudatoolkit=11.2, cudnn=8.1.0, and tensorflow==2.9

1
  • 2
    On Linux, you may also set the XLA_FLAGS with the following command: export XLA_FLAGS=--xla_gpu_cuda_data_dir=$CONDA_PREFIX. It worked with python3.10 and cudatoolkit=11.2.
    – oscarah
    Commented Jan 3, 2023 at 12:00
5

I had same problem on fresh install Ubuntu 24.04 with Nvidia RTX3090 I used instructions from this page: https://www.tensorflow.org/install/pip and I couldn't run model.fit because it gave me the error. Then in attempt to resolve the issue I've installed this driver: NVIDIA-Linux-x86_64-525.105.17.run but it didn't help.

I believe this actually solved the issue:

sudo apt-get install cuda-toolkit
3

i meet the same error with Tensorflow 2.11,CUDA 11.2, cuDNN 8.1.0. because i use conda build the env, so no nvvm directory and no need to export the environment variable and can't use the command nvcc -V, so many suggestions i searched are not suitable for my problem. i solve the error by downgrade tensonflow to 2.10. Use conda install tensorflow=2.10.0 cudatoolkit cudnn to downgrade your tensorflow version and its dependencies. reference:https://github.com/tensorflow/tensorflow/issues/58681

3

In my case I noticed that there was an error regarding to Adam at the final line :

libdevice not found at ./libdevice.10.bc
         [[{{node Adam/StatefulPartitionedCall_88}}]] [Op:__inference_train_function_10134]

I changed this line: from keras.optimizers import Adam

to this: from keras.optimizers.legacy import Adam

and it worked. It was suggested in this link: https://github.com/keras-team/tf-keras/issues/62

There are some other suggestions for this kind of error.

2

For linux users, with tensorflow==2.8 add the following environment variable.

XLA_FLAGS=--xla_gpu_cuda_data_dir=/usr/local/cuda-11.4
1
1

I had the same issue on Ubuntu 22.04 using tensorflow in jupyter-lab. The following steps solve the problem:

  1. Copy libdevice.10.bc to working folder (where jupyter lab is started)
  2. export XLA_FLAGS=--xla_gpu_cuda_data_dir=/usr/lib/cuda/

or

  1. In python code (before training) os.environ["XLA_FLAGS"] = "--xla_gpu_cuda_data_dir=/usr/lib/cuda/"
2
  • 1
    1 + 2 or 3 seems to work. No need to do 2 and 3 at the same time. Commented Mar 28 at 11:36
  • Thanks I've incorporated that in my answer Commented Apr 30 at 14:06
0

I was having a similar error:

2024-07-02 14:11:12.392126: W external/local_xla/xla/service/gpu/llvm_gpu_backend/gpu_backend_lib.cc:510] 
Can't find libdevice directory ${CUDA_DIR}/nvvm/libdevice. This may result in 
compilation or runtime failures, if the program we try to run uses routines 
from libdevice.
Searched for CUDA in the following directories:
  ./cuda_sdk_lib
  /usr/local/cuda-12.3
  /usr/local/cuda
  /home/spotparking/.local/lib/python3.10/site-packages/tensorflow/python/platform/../../../nvidia/cuda_nvcc
  /home/spotparking/.local/lib/python3.10/site-packages/tensorflow/python/platform/../../../../nvidia/cuda_nvcc
  .

You can choose the search directory by setting xla_gpu_cuda_data_dir in HloModule's DebugOptions.  

For most apps, setting the environment variable XLA_FLAGS=--xla_gpu_cuda_data_dir=/path/to/cuda will work.

and following the instructions in the error message worked for me.

I first had to install the nvidia-cuda-nvcc by running:

python3 -m pip install nvidia-pyindex
python3 -m pip install nvidia-cuda-nvcc

I then ran this command to find the path to cuda_nvcc:

find / -type d -name "cuda_nvcc" 2>/dev/null

I copied that path, and then I exported the environment variable with:

export XLA_FLAGS=--xla_gpu_cuda_data_dir=/copied/path/to/cuda_nvcc

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