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Is GPGPU ready for production and prototyping use, or would you still consider it mostly a research/bleeding edge technology? I work in the computational biology field and it's starting to attract attention from the more computer science oriented people in the field, but most of the work seems to be porting well-known algorithms. The porting of the algorithm is itself the research project and the vast majority of people in the field don't know much about it.

I do some pretty computationally intensive projects on conventional multicores. I'm wondering how close GPGPU is to being usable enough for prototyping new algorithms, and for everyday production use. From reading Wikipedia, I get the impression that the programming model is strange (heavily SIMD) and somewhat limited (no recursion or virtual functions, though these limitations are slowly being removed; no languages higher level than C or a limited subset of C++), and that there are several competing, incompatible standards. I also get the impression that, unlike regular multicore, fine-grained parallelism is the only game in town. Basic library functions would need to be rewritten. Unlike with conventional multicore, you can't get huge speedups just by parallelizing the outer loop of your program and calling old-school serial library functions.

How severe are these limitations in practice? Is GPGPU ready for serious use now? If not, how long would you guess it will take?

Edit: One major point I'm trying to wrap my head around is, how much different is the programming model from a regular multicore CPU with lots and lots of really slow cores.

Edit # 2: I guess the way I'd summarize the answers I've been given is that GPGPU is practical enough for early adopters in niches that it's extremely well suited for, but still bleeding edge enough not to be considered a "standard" tool like multicore or distributed parallelism, even in those niches where performance is important.

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closed as not constructive by Nifle, bmargulies, Paŭlo Ebermann, eykanal, Graviton Oct 25 '11 at 2:27

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance. If this question can be reworded to fit the rules in the help center, please edit the question.

Idk about "argumentative" but it's definitely "subjective" IMHO... –  Mehrdad Apr 18 '11 at 17:12
@Mehrdad: Agreed, it's somewhat subjective, but not severely so. It's also definitely not intended to be argumentative. It's not a question of whether GPGPU is "good" or "bad", but whether it's ready for prime time yet. –  dsimcha Apr 18 '11 at 17:16
@Mehrdad: subjective but reasonable. OP wants to know if he can build real solutions. Subject to limitations, he can. –  Ira Baxter Apr 18 '11 at 17:26
Okay yeah, it's definitely a good question, I was just not sure how it would come across on SO. Glad it's fine. :) –  Mehrdad Apr 18 '11 at 17:48

5 Answers 5

up vote 4 down vote accepted

I am a graduate student in CS who has worked a bit with GPGPU. I also know of at least one organization that is currently porting parts of their software to CUDA. Whether doing so is worth it really depends on how important performance is to you.

I think that using CUDA will add a lot of expense to your project. First, the field of GPUs is very fractured. Even among NVIDIA cards you have a pretty wide array of feature sets and some code that works on one GPU might not work on another. Second, the feature set of CUDA, as well as of the video cards, is changing very quickly. It is not unlikely that whatever you write this year will have to be rewritten in 2-3 years to take full advantage of the new graphics cards. Finally, as you point out, writing GPGPU programs is just very difficult, so much so that parallelizing an existing algorithm for GPGPU is typically a publishable research project.

You might want to look into CUDA libraries that are already out there, for example CUBLAS, that you might be able to use for your project and that could help insulate you from these issues.

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Ok, so I guess prototyping a computationally intensive algorithm on the GPU is just a Bad Idea then. –  dsimcha Apr 18 '11 at 17:33
@dsimcha: if you have no experience with your computationally intensive algorithm, I'd agree you shouldn't prototype it there. When you have an idea of how to compute it, and you can see the data parallelism clearly, then it might be worth the trouble. –  Ira Baxter Apr 18 '11 at 17:35

There isn't any question that people can do useful, production, computations with GPUs.

Mostly the computations that do well here are those that have pretty close to embarrasing parallelism. Both CUDA and OpenCL will let you express these computations in an only moderately painful way. So if you can cast your computation that way, you can do well. I don't think this restriction will ever be seriously removed; if they could do that, then general CPUs could do it, too. At least I wouldn't hold my breath.

You should be able to tell if your present application is suitable mostly by looking at your existing code. Like most parallel programming languages, you won't know your real performance until you've coded a complete application. Unfortunately there's no substitute for experience.

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+1. The "embarrassing parallelism" and "moderately painful" made me smile. Love it. Though for me there are days where I wish it were just moderately painful. ;) –  Bart Apr 18 '11 at 17:23
@Ira: Right. I am aware that you can write useful production things in GPGPU. The question is about whether it's mature enough that you should outside a few small niches or whether it's so immature and limited that it's better to wait-and-see. –  dsimcha Apr 18 '11 at 17:26
@dsimcha: People get wonderful performance gains for the right problems; only you can decide if you have one, and some part of that is just empirical. The tools are survivable. IMHO, it isn't going to get hugely easier (the GPUs win basically by insisting that communication is a bad idea). So, you can get useful results now. Waiting won't make it better. Waiting might get you larger speedups; the chip designers don't know what else to do with the transistors. –  Ira Baxter Apr 18 '11 at 17:29
@Ira: Nice pragmatic answer, and I love "don't know what else to do with the transistors". –  Mike Dunlavey Apr 18 '11 at 19:15
@Mike: The truth hurts... :-{ –  Ira Baxter Apr 18 '11 at 19:57

CUDA is in use in production code in financial services now, and increasing all the time.

Not only is it "ready for serious use" now, you've practically missed the boat.

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Kind of an indirect answer, but I work in the area of nonlinear mixed-effect modeling in pharmacometrics. I've heard second-hand information that CUDA has been tried. There's such a variety of algorithms in use, and new ones coming all the time, that some look more friendly to a SIMD model than others, particularly the ones based on Markov-Chain Monte Carlo. That is where I suspect the financial applications are.

The established modeling algorithms are such large chunks of code, in Fortran, and the innermost loops are such complicated objective functions, that it's hard to see how the translation could be done even if opportunities for SIMD speedup could be found. It is possible to parallelize outer loops, which is what we do.

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I assume you mean you parallelize the outer loops on multicore, not GPU. This is basically my workflow, too. –  dsimcha Apr 18 '11 at 18:47
@dsimcha: Yes. We use MPI. We run individuals of a population in parallel and get the expected speedup, or close to it. –  Mike Dunlavey Apr 18 '11 at 19:05
Yeah, I sometimes wonder if the better hardware for expressing massive but not super fine-grained parallelism is a chip with a lot of simple, in-order, non-superscalar cores, but still "real" general purpose x86 CPU cores, not SIMD or anything similarly weird. –  dsimcha Apr 18 '11 at 19:11

Computational biology algorithms tend to be less regular in structure than many of the financial algorithms successfully ported to GPUs. This means that they require some redesign at the algorithmic level in order to benefit from the huge amount of parallelism found in GPUs. You want to have dense and square data structures, and architect your code around large "for" loops with few "if" statements.

This requires some thinking but this is possible and we're beginning to get interesting performance with a protein folding code parallelized with Ateji PX.

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