This title appears in the Scientific Report :
2021
Please use the identifier:
http://hdl.handle.net/2128/29491 in citations.
PRACE Training Course: GPU Programming with CUDA
PRACE Training Course: GPU Programming with CUDA
GPU-accelerated computing drives current scientific research. Writing fast numeric algorithms for GPUs offers high application performance by offloading compute-intensive portions of the code to an NVIDIA GPU. The course will cover basic aspects of GPU architectures and programming. Focus is on the...
Saved in:
Personal Name(s): | Herten, Andreas (Corresponding author) |
---|---|
Meinke, Jan (Corresponding author) / Haghighi Mood, Kaveh / Hrywniak, Markus / Kraus, Jiri | |
Contributing Institute: |
Jülich Supercomputing Center; JSC |
Imprint: |
2021
|
Conference: | 2021-04-26 - 2021-04-30 |
Document Type: |
Lecture |
Research Program: |
Domain-Specific Simulation & Data Life Cycle Labs (SDLs) and Research Groups Future Computing & Big Data Systems Supercomputing & Big Data Facilities |
Link: |
OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess OpenAccess |
Publikationsportal JuSER |
GPU-accelerated computing drives current scientific research. Writing fast numeric algorithms for GPUs offers high application performance by offloading compute-intensive portions of the code to an NVIDIA GPU. The course will cover basic aspects of GPU architectures and programming. Focus is on the usage of the parallel programming language CUDA-C which allows maximum control of NVIDIA GPU hardware. Examples of increasing complexity are used to demonstrate optimization and tuning of scientific applications.Topics covered include: Introduction to GPU/Parallel computing Programming model CUDA GPU libraries like CuBLAS and CuFFT Tools for debugging and profiling Performance optimizationsThis course is a PRACE training course. |