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Using the traditional, sequential reduction approach, the following graph is reduced as:

(+ (+ 1 2) (+ 3 4)) ->
(+ 3 (+ 3 4)) ->
(+ 3 7) ->
10

Graph reductions are, though, inherently parallel. One could, instead, reduce it as:

(+ (+ 1 2) (+ 3 4)) ->
(+ 3 7) ->
10

As far as I know, every functional programming language uses the first approach. I believe this is mostly because, on the CPU, scheduling threads overcompensate the benefits of doing parallel reductions. Recently, though, we've been starting to use the GPU more than the CPU for parallel applications. If a language ran entirely on the GPU, those communication costs would vanish.

Are there functional languages making use of that idea?

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4 Answers 4

What makes you think on GPU scheduling would not overcomponsate the benefits?

In fact, the kind of parallelism used in GPUs is far harder to schedule: it's SIMD parallelism, i.e. a whole batch of stream processors do all essentially the same thing at a time, except each one crushes a different bunch of numbers. So, not only would you need to schedule the subtasks, you would also need to keep them synchronised. Doing that automatically for general computations is virtually impossible.

Doing it for specific tasks works out quite well and has been embedded into functional languages; check out the Accelerate project.

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GPU scheduling would not be a problem if you only used the GPU, ie, loaded your program on it and left it running there for hours, only coming back later to check the results. And please define "general computations". What is stopping one to implement an interpreter for the lambda calculus, for example, on the GPU? It is universal/general, and there is nothing stopping it to be efficient (just use actual numbers and lists instead of church numbers). –  Viclib Feb 5 at 17:22
    
Ah, see, there the trouble starts already: you can't define lists on the GPU like Lisp or Haskell does it, that requires plenty of heap allocation, pointer redirection, garbage collection. On a GPU you need tight arrays, aligned in a very specific way, to get any parallelism at all. Perhaps you could write a complete lambda-calculus interpreter on GPU... single threaded, which would be far slower than on CPU. –  leftaroundabout Feb 5 at 17:30
    
That is not true at all. Simple proof: you can implement the lambda calculus using Rule 110, which doesn't require any of that. (Note I'm not saying this is a good implementation, but it invalidates your statement which an implementation needs pointers, allocation and garbage collection thus must be slow -- ie, there could be a good implementation that is fast). –  Viclib Feb 5 at 17:55
    
I looked through the sources of Accelerate. It features some nice ideas (stuffing code-generated expressions into optimized CUDA templates may be rather effective). But I think it is still no more than a proof of concept. It wraps you into very tight envelope and you can hardly push it: I attempted to make some patches, but realized that any little change affects almost every data structure and function. –  user3974391 Feb 5 at 18:10
    
@Viclib: I didn't say an implementation of lambda calculus needs pointers etc., I said Lisp-style lists do. What you definitely need is some way to approximate Turing-completeness. That requires each processor to have access to more than a tiny fraction of the memory, but in a GPU there's just a tiny bit of memory for each processor, while the global memory can only be accessed with decent performance in batch mode: you need to prepare a whole region of memory in accordance to the processor outlay, and send it to the whole batch in one operation. –  leftaroundabout Feb 5 at 18:19

SPOC provides some GPGPU access from OCaml.

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on the CPU, scheduling threads overcompensate the benefits of doing parallel reduction

Thread scheduling is very effective in modern OSes. Thread initialization and termination may be a matter of concern, but there are plenty of techniques to eliminate those costs.

Graph reductions are, though, inherently parallel

As it was mentioned in other answer, GPUs are very special devices. One can't simply take arbitrary algorithm and make it 100 times faster just by rewriting on CUDA. Speaking of CUDA, it is not exactly a SIMD (Single Instruction on Multiple Data), but SIMT (Single Instruction on Multiple Thread). This is something far more complex, but let's think of it as a mere vector processing language. As name suggests, vector processors designed to handle dense vectors and matrices, i.e. simple linear data structures. So any branching within warp reduces efficiency of parallelism and performance down to zero. Modern architectures (Fermi+) are capable to process even some trees, but this is rather tricky and performance isn't that shining. So you simply can't accelerate arbitrary graph reduction.

What about functional languages for GPGPU. I believe it can't be serious. Most of valuable CUDA code exists inside hardly optimized libraries made by PhDs, and it is aimed straight toward performance. Readability, declarativity, clearness and even safety of functional languages don't matter there.

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The language Obsidian is a domain specific language embedded in Haskell which targets GPGPU computations. It's rather more low-level than what you're asking for but I thought I'd mention it anyway.

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