I’m just starting to learn how to do CUDA development(using version 4) and was wondering if it was possible to develop on a different card then I plan to use? As I learn, it would be nice to know this so I can keep an eye out if differences are going to impact me.
I have a mid-2010 macbook pro with a Nvidia GeForce 320M graphic cards(its a pretty basic laptop integrated card) but I plan to run my code on EC2’s NVIDIA Tesla “Fermi” M2050 GPUs. I’m wondering if its possible to develop locally on my laptop and then run it on EC2 with minimal changes(I’m doing this for a personal project and don’t want to spend $2.4 for development).
A specific question is, I heard that recursions are supported in newer cards(and maybe not in my laptops), what if I run a recursion on my laptop gpu? will it kick out an error or will it run but not utilize the hardware features? (I don’t need the specific answer to this, but this is kind of the what I’m getting at).
If this is going to be a problem, is there emulators for features not avail in my current card? or will the SDK emulate it for me?
Sorry if this question is too basic.
Yes, it’s a pretty common practice to use different GPUs for development and production. nVidia GPU generations are backward-compatible, so if your program runs on older card (that is if 320M (CC1.3)), it would certainly run on M2070 (CC2.0)).
If you want to get maximum performance, you should, however, profile your program on same architecture you are going to use it, but usually everything works quite well without any changes when moving from 1.x to 2.0. Any emulator provide much worse view of what’s going on than running on no-matter-how-old GPU.
Regarding recursion: an attempt to compile a program with obvious recursion for 1.3 architecture produces compile-time error:
In more complex cases the program might compile (I don’t know how smart the compiler is in detecting recursions), but certainly won’t work: in 1.x architecture there was no call stack, and all function calls were actually inlined, so recursion is technically impossible.
However, I would strongly recommend you to avoid recursion at any cost: it goes against GPGPU programming paradigm, and would certainly lead to very poor performance. Most algorithms are easily rewritten without the use of recursion, and it is much more preferable way to utilize them, not only on GPU, but on CPU as well.