Note
Access to this page requires authorization. You can try signing in or changing directories.
Access to this page requires authorization. You can try changing directories.
Deep learning frameworks on the DSVM are listed here:
CUDA, cuDNN, NVIDIA Driver
Category | Value |
---|---|
Supported versions | 11 |
Supported DSVM editions | Windows Server 2019 Linux |
How is it configured and installed on the DSVM? | nvidia-smi is available on the system path. |
How to run it | Open a command prompt (on Windows) or a terminal (on Linux), and then run nvidia-smi. |
Horovod
Category | Value |
---|---|
Supported versions | 0.21.3 |
Supported DSVM editions | Linux |
How is it configured and installed on the DSVM? | Horovod is installed in Python 3.5 |
How to run it | Activate the correct environment at the terminal, and then run Python. |
NVidia System Management Interface (nvidia-smi)
Category | Value |
---|---|
Supported versions | |
Supported DSVM editions | Windows Server 2019 Linux |
What is it used for? | As an NVIDIA tool to query GPU activity |
How is it configured and installed on the DSVM? | nvidia-smi is on the system path. |
How to run it | On a virtual machine with GPU's, open a command prompt (on Windows), or a terminal (on Linux), and then run nvidia-smi . |
PyTorch
Category | Value |
---|---|
Supported versions | 1.9.0 (Linux, Windows 2019) |
Supported DSVM editions | Windows Server 2019 Linux |
How is it configured and installed on the DSVM? | Installed in Python, conda environments 'py38_default', 'py38_pytorch' |
How to run it | At the terminal, activate the appropriate environment, and then run Python. * JupyterHub: Connect, and then open the PyTorch directory for samples. |
TensorFlow
Category | Value |
---|---|
Supported versions | 2.5 |
Supported DSVM editions | Windows Server 2019 Linux |
How is it configured and installed on the DSVM? | Installed in Python, conda environments 'py38_default', 'py38_tensorflow' |
How to run it | At the terminal, activate the correct environment, and then run Python. * Jupyter: Connect to Jupyter or JupyterHub, and then open the TensorFlow directory for samples. |