Exploiting Task Parallelism with OpenCL: A Case Study
Jääskeläinen, Pekka; Korhonen, Ville; Koskela, Matias; Takala, Jarmo; Egiazarian, Karen; Danielyan, Aram; Cruz, Cristóvão; James, Price; McIntosh-Smith, Simon (2018-10-15)
Jääskeläinen, Pekka
Korhonen, Ville
Koskela, Matias
Takala, Jarmo
Egiazarian, Karen
Danielyan, Aram
Cruz, Cristóvão
James, Price
McIntosh-Smith, Simon
15.10.2018
Journal of Signal Processing Systems
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tty-201901171103
https://urn.fi/URN:NBN:fi:tty-201901171103
Kuvaus
Peer reviewed
Tiivistelmä
While data parallelism aspects of OpenCL have been of primary interest due to the massively data parallel GPUs being on focus, OpenCL also provides powerful capabilities to describe task parallelism. In this article we study the task parallel concepts available in OpenCL and find out how well the different vendor-specific implementations can exploit task parallelism when the parallelism is described in various ways utilizing the command queues. We show that the vendor implementations are not yet capable of extracting kernel-level task parallelism from in-order queues automatically. To assess the potential performance benefits of in-order queue parallelization, we implemented such capabilities to an open source implementation of OpenCL. The evaluation was conducted by means of a case study of an advanced noise reduction algorithm described as a multi-kernel OpenCL application.
Kokoelmat
- TUNICRIS-julkaisut [19239]