You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
This is to document the GPU testing I usually perform for Datashader PRs. Currently there is no automated GPU testing in the GitHub Actions-based CI, so this needs to be performed manually.
Test machine can be local or remote, and needs to have a Nvidia graphics card. Recommended Operating System is Ubuntu, other Linux distros will also work and even Windows via WSL2 but they may be harder to set up. Driver needs to be installed for the graphics card, and the nvidia-utils package is useful as it provides the nvidia-smi command-line tool.
Run nvidia-smi to determine the driver and CUDA version. My results are:
Driver Version: 470.199.02 CUDA Version: 11.4
You need an appropriate conda/mamba environment containing cuDF. This is most easily obtained by installing RAPIDS following the installation guide at https://docs.rapids.ai/install. Opt for the stable release with the same version of CUDA that you are using, and your preferred choice of Python version (generally the later the better). There is other information on the RAPIDS install page to help if you experience problems.
Install Datashader using pip, e.g. from the root directory of your local copy of the datashader github repo:
pip install -ve .[tests]
GPU tests are not run by default but need an environment variable defined. To run the whole test suite on both CPU and GPU use
DATASHADER_TEST_GPU=1 pytest -v datashader/tests
Unless you are dealing with a GPU-specific issue, it is recommended for PRs to get everything working and tests written and passing for the CPU before adding GPU support.
There is a PR in progress to add GPU tests on a self-hosted runner: #1301
The text was updated successfully, but these errors were encountered:
This is to document the GPU testing I usually perform for Datashader PRs. Currently there is no automated GPU testing in the GitHub Actions-based CI, so this needs to be performed manually.
Test machine can be local or remote, and needs to have a Nvidia graphics card. Recommended Operating System is Ubuntu, other Linux distros will also work and even Windows via WSL2 but they may be harder to set up. Driver needs to be installed for the graphics card, and the
nvidia-utils
package is useful as it provides thenvidia-smi
command-line tool.Run
nvidia-smi
to determine the driver and CUDA version. My results are:You need an appropriate
conda
/mamba
environment containingcuDF
. This is most easily obtained by installing RAPIDS following the installation guide at https://docs.rapids.ai/install. Opt for the stable release with the same version of CUDA that you are using, and your preferred choice of Python version (generally the later the better). There is other information on the RAPIDS install page to help if you experience problems.Install Datashader using
pip
, e.g. from the root directory of your local copy of the datashader github repo:GPU tests are not run by default but need an environment variable defined. To run the whole test suite on both CPU and GPU use
Unless you are dealing with a GPU-specific issue, it is recommended for PRs to get everything working and tests written and passing for the CPU before adding GPU support.
There is a PR in progress to add GPU tests on a self-hosted runner: #1301
The text was updated successfully, but these errors were encountered: