ITK/Release 4/GPU Acceleration/Tcon-2010-11-22
From KitwarePublic
< ITK | Release 4 | GPU Acceleration
Jump to navigationJump to search
Attendees
- Won Ki - Harvard University
- Joe Stem - NVIDIA
- Kimberly Powell - NVIDIA
- Dennis Sessanna - NVIDIA
- Luis Ibanez - Kitware Inc.
Topics
Overview
- Quick summary of ITKv4 effort (Luis Ibanez)
- Summary of ITK-GPU approach (Won Ki)
Questions
- Level of abstraction ?
- Joe suggests to look at OpenCV
- Expose the interactions with the GPU
- Most GPU programmers do things synchronously (so they unfortunately do too many data transfers, and don't get full benefit from the GPU).
- Joe suggests to look at OpenCV
- Joe asked for typical Use Cases
- We listed:
- Radiology : 100Mb per image (512x512x200)
- Microscopy : 10Gb
- Video : 10Mb images, 30~100 frames per second.
- We listed:
- CUDA vs OpenCL ?
- Joe answers
- OpenCL is better for asynchronous multi-GPU programming.
- Reasons for using CUDA over OpenCL
- Tedious API in OpenCL
- Large collection of CUDA existing libraries
- Performance optimization may be harder in OpenCL
- Luis asked about vendor's commitment to OpenCL (for next 5 ~ 10 years)
- Joe answers
- NVIDIA supports the OpenCL standard (so, what is in OpenCL will be supported in NVidia cards)
- Some third party vendors are doing CUDA for NVidia platforms and OpenCL for other platforms (splitting the effort)
- Translation from CUDA to OpenCL is straight forward.
- Joe answers