Application of GPU computing to solving discrete optimization problems Доклады на конференциях
Язык | Английский | ||
---|---|---|---|
Тип доклада | Пленарный | ||
Конференция |
XXIII International Conference Mathematical Optimization Theory and Operations Research 30 июн. - 6 июл. 2024 , Омск |
||
Авторы |
|
||
Организации |
|
Реферат:
Parallel computing on graphic processors (GPUs) is getting more and more popular. Since NVIDIA released the CUDA development tool, it has become convenient to use GPUs for general-purpose computing and not just for graphics display tasks. A feature of a GPU is the presence of a large (hundreds and thousands) number of cores, which allows to significantly speed up the calculation, but requires to design special parallel algorithms. While the development of traditional processors (CPUs) has recently slowed down, the characteristics of the GPU (number of cores, memory size, power consumption, and cost) are improving rapidly. In this tutorial, we will learn the basics of GPU computing in CUDA and OpenCL and briefly review the pros and cons of using GPUs in various discrete optimization algorithms.
Библиографическая ссылка:
Borisovsky P.
Application of GPU computing to solving discrete optimization problems
XXIII International Conference Mathematical Optimization Theory and Operations Research 30 Jun - 6 Jul 2024
Application of GPU computing to solving discrete optimization problems
XXIII International Conference Mathematical Optimization Theory and Operations Research 30 Jun - 6 Jul 2024