Graphics is one of those "embarrassingly parallel" problems. Haskell is supposed to be really, really good for parallel processing. So my question is:
What is the best way to throw as many CPU cores as possible at a rendering problem?
Is it possible to get the GPU to do the task instead?
By "rendering problem", I mean problems such as:
Each pixel's colour is a pure function of its coordinates.
We start with an existing "input" image, and each "output" pixel's colour is a pure function of the corresponding input pixel, or maybe a small neighbourhood of such pixels.
Regarding #1: This looks like it's trivial, but actually it isn't. There are several possible choices of data structure to store the computed pixels in (which influences how you can access it, and how easily you can dump the result onto disk or screen). There are several ways to execute on multiple cores. And so on.
It seems to me that Data Parallel Haskell would be an ideal choice for this type of thing. However, last time I checked, DPH doesn't work yet. So that's that. Even assuming it did work, you would presumably create a parallel array to hold the pixels, and then you'd have to copy the pixels to display them on screen or write them to disk.
I would try sparking every single pixel, but that's probably far too fine-grained. I could make the pixels a list and use one of the parallel list strategies. Or I could make it an (unboxed?) immutable array and write some manual code to start sparks. Or I could go with explicit threads and mutable arrays. Or I could have a bunch of worker threads them stream pixel values through a channel to a master thread that puts the results into the right place. Or...
In summary, there are a surprising number of possibilities here, and I'm not sure which is best.
Regarding #2: Obviously this type of problem is the entire reason that GPUs exist in the first place. Clearly the GPU is ideally suited to attacking these kinds of problems. My question is more "is it hard to do this from Haskell?"