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I study a lot of articles and the manual of OpenACC but still i don't understand the main difference of these two constructs.

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2 Answers 2

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Kernels construct is the more general case and probably one that you might think of, if you've written GPU (e.g. CUDA) kernels before. Kernels simply directs the compiler to work on a piece of code, and produce an arbitrary number of kernels, of arbitrary dimensions, to be executed in sequence, to parallelize/offload a particular section of code to the GPU. The parallel construct allows finer-grained control of how the compiler will attempt to structure work on the GPU. For example, the number of workers and gangs would normally be constant as part of the parallel construct, but perhaps not on the kernels construct.

A good treatment of this specific question is contained in this PGI article.

Quoting from the article summary: "The OpenACC kernels and parallel constructs each try to solve the same problem, identifying loop parallelism and mapping it to the machine parallelism. The kernels construct is more implicit, giving the compiler more freedom to find and map parallelism according to the requirements of the target accelerator. The parallel construct is more explicit, and requires more analysis by the programmer to determine when it is legal and appropriate. "

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Thanks a lot for your answer!!! Now is clear for me the difference! :) –  pg1927 Nov 20 '12 at 15:59

OpenACC directives and GPU kernels are just two ways of representing the same thing -- a section of code that can run in parallel.

OpenACC may be best when retrofitting an existing app to take advantage of a GPU and/or when it is desirable to let the compiler handle more details related to issues such as memory management. This can make it faster to write an app, with a potential cost in performance.

Kernels may be best when writing a GPU app from scratch and/or when more fine grained control is desired. This can make the app take longer to write, but may increase performance.

I think that people new to GPUs may be tempted to go with OpenACC because it looks more familiar. But I think it's actually better to go the other way, and start with writing kernels, and then, potentially move to OpenACC to save time in some projects. The reason is that OpenACC is a leaky abstraction. So, while OpenACC may make it look as if the GPU details are abstracted out, they are still there. So, using OpenACC to write GPU code without understanding what is happening in the background is likely to be frustrating, with odd error messages when attempting to compile, and result in an app that has low performance.

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This answer seems to be answering the question "What are the reasons to use or not use OpenACC" while ignoring the OP's question which has to do with differentiating between 2 slightly different ways of asking the OpenACC compiler to generate GPU code for a region. Also, quoting from the article linked "All non-trivial abstractions, to some degree, are leaky". So, a criticism with limited depth IMHO. I suggest it's better to assume this poster knows how to program GPUs and is, in fact, interested in the syntactical and functional differences between the 2 language constructs indicated. –  Robert Crovella Nov 20 '12 at 1:55
    
I may indeed have answered the wrong question. I did not know that OpenACC also had a kernel concept. I thought it was all about directives, like OpenMP. –  Roger Dahl Nov 20 '12 at 2:03
    
@RogerDahl - kernels is a directive defined by the OpenACC standard. It also includes the parallels directive. –  Mark Ebersole Jan 14 '13 at 14:52

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