At PyData NYC tutorial, by Jacob Tomlinson, I learned that now it is possible to access the same array on the GPU from pytorch and cupy. I'm loving how it will let you use the strengths of different libraries without dealing with extra memory copies.
https://nyc2024.pydata.org/cfp/talk/VAVRYW/
#PyDataNYC2024
#pytorch
#cupy
GPU Accelerated Python PyData NYC 2024
To get the most from your hands-on learning experience, please complete these steps prior to getting started: - **Review the agenda**, prerequisites, and suggested material for full-day workshops (as detailed in the course datasheet below). This is an important step to properly prepare for the workshop. - **Create or log into your [NVIDIA Developer Program account](https://courses.nvidia.com/join)** - https://courses.nvidia.com/join. You will receive an email letting you know when your account is ready. This account will provide you with access to all of the DLI training materials during and after the workshop. You will have three months of access to all course materials. - **Visit [websocketstest.courses.nvidia.com](http://websocketstest.courses.nvidia.com/)** and make sure all three test steps are checked “Yes.” This will test the ability for your system to access and deliver the training contents. If you encounter issues, try updating your browser. _Note: Only Chrome and Firefox are supported._ - **Check your bandwidth**. 1 Mbps downstream is required and 5 Mbps is recommended. This will ensure consistent streaming of audio/video during the workshop to avoid glitches and delays. Now you’re ready to get started with the tutorial! Simply enter the code **NVIDIA_XLAB_NV24** at [courses.nvidia.com/dli-event](https://developer.nvidia.com/dli/courses.nvidia.com/dli-event)