Troubleshoot
No kernel image available
This problem arises with the cuda version loaded by bitsandbytes is not supported by your GPU, or if you pytorch CUDA version mismatches.
To solve this problem you need to debug $LD_LIBRARY_PATH
, $CUDA_HOME
as well as $PATH
. You can print these via echo $PATH
. You should look for multiple paths to different CUDA versions. This can include versions in your anaconda path, for example $HOME/anaconda3/lib
. You can check those versions via ls -l $HOME/anaconda3/lib/*cuda*
or equivalent paths. Look at the CUDA versions of files in these paths. Does it match with nvidia-smi
?
If you are feeling lucky, you can also try to compile the library from source. This can be still problematic if your PATH variables have multiple cuda versions. As such, it is recommended to figure out path conflicts before you proceed with compilation.
fatbinwrap
This error occurs if there is a mismatch between CUDA versions in the C++ library and the CUDA part. Make sure you have right CUDA in your $PATH
and $LD_LIBRARY_PATH
variable. In the conda base environment you can find the library under:
ls $CONDA_PREFIX/lib/*cudart*
Make sure this path is appended to the LD_LIBRARY_PATH
so bnb can find the CUDA runtime environment library (cudart).
If this does not fix the issue, please try compilation from source next.
If this does not work, please open an issue and paste the printed environment if you call make
and the associated error when running bnb.