OpenACC Tutorial: Difference between revisions
No edit summary |
(Marked this version for translation) |
||
(3 intermediate revisions by 3 users not shown) | |||
Line 2: | Line 2: | ||
<translate> | <translate> | ||
<!--T:9--> | |||
This tutorial is strongly inspired from the OpenACC Bootcamp session presented at [http://www.gputechconf.com/ GPU Technology Conference 2016]. | This tutorial is strongly inspired from the OpenACC Bootcamp session presented at [http://www.gputechconf.com/ GPU Technology Conference 2016]. | ||
<!--T:2--> | <!--T:2--> | ||
OpenACC is an application programming interface (API) for porting code onto accelerators such as GPU and coprocessors. It has been developed by Cray, CAPS, NVidia and PGI. Like in [[OpenMP]], the programmer annotates C, C++ or Fortran code to identify portions that should be parallelized by the compiler. | OpenACC is an application programming interface (API) for porting code onto accelerators such as GPU and coprocessors. It has been developed by Cray, CAPS, NVidia and PGI. Like in [[OpenMP]], the programmer annotates C, C++ or Fortran code to identify portions that should be parallelized by the compiler. | ||
<!--T:10--> | |||
A self-paced course on this topic is available from SHARCNET: [https://training.sharcnet.ca/courses/enrol/index.php?id=173 Introduction to GPU Programming]. | |||
</translate> | </translate> | ||
{{Prerequisites | {{Prerequisites | ||
|title=<translate><!--T:3--> | |title=<translate><!--T:3--> | ||
Line 32: | Line 37: | ||
== External references == <!--T:8--> | == External references == <!--T:8--> | ||
Here are some useful external references: | Here are some useful external references: | ||
* [ | * [https://www.openacc.org/sites/default/files/inline-files/openacc-guide.pdf OpenACC Programming and Best Practices Guide (PDF)] | ||
* [ | * [https://www.openacc.org/sites/default/files/inline-files/API%20Guide%202.7.pdf OpenACC API 2.7 Reference Guide (PDF)] | ||
* [ | * [https://developer.nvidia.com/blog/getting-started-openacc/ Getting Started with OpenACC] | ||
* [ | * [https://docs.nvidia.com/hpc-sdk/pgi-compilers/legacy.html PGI Compiler] | ||
* [http://www.pgroup.com/resources/pgprof-quickstart.htm PG Profiler] | * [http://www.pgroup.com/resources/pgprof-quickstart.htm PG Profiler] | ||
* [http://docs.nvidia.com/cuda/profiler-users-guide/index.html#visual-profiler NVIDIA Visual Profiler] | * [http://docs.nvidia.com/cuda/profiler-users-guide/index.html#visual-profiler NVIDIA Visual Profiler] | ||
</translate> | </translate> |
Latest revision as of 16:56, 16 October 2024
This tutorial is strongly inspired from the OpenACC Bootcamp session presented at GPU Technology Conference 2016.
OpenACC is an application programming interface (API) for porting code onto accelerators such as GPU and coprocessors. It has been developed by Cray, CAPS, NVidia and PGI. Like in OpenMP, the programmer annotates C, C++ or Fortran code to identify portions that should be parallelized by the compiler.
A self-paced course on this topic is available from SHARCNET: Introduction to GPU Programming.
This tutorial uses OpenACC to accelerate C, C++ or Fortran code. A working knowledge of one of these languages is therefore required to gain the most benefit out of it.
This tutorial is based on examples. You can download all of the examples in this Github repository.
Lesson plan
- Introduction
- Gathering a profile and getting compiler information
- Expressing parallelism with OpenACC directives
- Expressing data movement
- Optimizing loops
External references
Here are some useful external references: