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122

For any optimization, it's always best to test, test, test. I would try at least sorting networks and insertion sort. If I were betting, I'd put my money on insertion sort based on past experience. Do you know anything about the input data? Some algorithms will perform better with certain kinds of data. For example, insertion sort performs better on ...


85

most of these answers are quite old, so I thought I'd give an updated summary of where I think each project is: GPU.Net (TidePowerd) - I tried this 6 months ago or so, and did get it working though it took a little bit of work. Converts C# kernel code to cuda at compile time. Unfortunately their website has been down for a couple of months, which is a bad ...


84

Direct Answer: Warp size is the number of threads in a warp, which is a sub-division used in the hardware implementation to coalesce memory access and instruction dispatch. Suggested Reading: As @Matias mentioned, I'd go read the CUDA C Best Practices Guide (you'll have to scroll to the bottom where it's listed). It might help for you to stare at the ...


81

You have a third alternative, which is to use C++ templating and make the variable which is used in the if/switch statement a template parameter. Instantiate each version of the kernel you need, and then you have multiple kernels doing different things with no branch divergence or conditional evaluation to worry about, because the compiler will optimize away ...


61

Metaphorically speaking ati has a good engine compared to nvidia. But nvidia has a better car :D This is mostly because nvidia has invested good amount of its resources (in money and people) to develop important libraries required for scientific computing (BLAS, FFT), and then a good job again in promoting it. This may be the reason CUDA dominates the tags ...


57

Two of the best references are NVIDIA Fermi Compute Architecture Whitepaper GF104 Reviews I'll try to answer each of your questions. The programmer divides work into threads, threads into thread blocks, and thread blocks into grids. The compute work distributor allocates thread blocks to Streaming Multiprocessors (SMs). Once a thread block is ...


54

I don't have any strong feelings about CUDA vs. OpenCL; presumably OpenCL is the long-term future, just by dint of being an open standard. But current-day NVIDIA vs ATI cards for GPGPU (not graphics performance, but GPGPU), that I do have a strong opinion about. And to lead into that, I'll point out that on the current Top 500 list of big clusters, NVIDIA ...


51

If you use OpenCL, you can easily use it both on Windows and Linux because having display drivers is enough to run OpenCL programs and for programming you would simply need to install the SDK. CUDA has more requirements on specific GCC versions etc. But it is not much more difficult to install on Linux also. In Linux CUDA has strange requirements such as ...


49

Here's an implementation using sorting networks: inline void Sort2(int *p0, int *p1) { const int temp = min(*p0, *p1); *p1 = max(*p0, *p1); *p0 = temp; } inline void Sort3(int *p0, int *p1, int *p2) { Sort2(p0, p1); Sort2(p1, p2); Sort2(p0, p1); } inline void Sort4(int *p0, int *p1, int *p2, int *p3) { Sort2(p0, p1); ...


46

AFAIK, JavaCL / OpenCL4Java is the only OpenCL binding that is available on all platforms right now (including MacOS X, FreeBSD, Linux, Windows, Solaris, all in Intel 32, 64 bits and ppc variants, thanks to its use of JNA). It has demos that actually run fine from Java Web Start at least on Mac and Windows (to avoid random crashes on Linux, please see this ...


41

Microsoft Research Accelerator was a .NET GP GPU library.


39

The GTX 580 can have 16 * 48 concurrent warps (32 threads each) running at a time. That is 16 multiprocessors (SMs) * 48 resident warps per SM * 32 threads per warp = 24,576 threads. Don't confuse concurrency and throughput. The number above is the maximum number of threads whose resources can be stored on-chip simultaneously -- the number that can be ...


36

OpenCL is created specifically for computing. When you do scientific computing using OpenGL you always have to think about how to map your computing problem to the graphics context (i.e. talk in terms of textures and geometric primitives like triangles etc.) in order to get your computation going. In OpenCL you just formulate you computation with a ...


36

In contrast to the other OpenGL shader types, compute shaders are not directly related to computer graphics and provide a much more direct abstraction of the underlying hardware, similar to CUDA and OpenCL. It provides customizable work group size, shared memory, intra-group synchronization and all those things known and loved from CUDA and OpenCL. The main ...


30

Since these are integers and compares are fast, why not compute the rank order of each directly: inline void sort6(int *d) { int e[6]; memcpy(e,d,6*sizeof(int)); int o0 = (d[0]>d[1])+(d[0]>d[2])+(d[0]>d[3])+(d[0]>d[4])+(d[0]>d[5]); int o1 = (d[1]>=d[0])+(d[1]>d[2])+(d[1]>d[3])+(d[1]>d[4])+(d[1]>d[5]); int o2 = ...


30

Looks like I got to the party a year late, but here we go... Looking at the assembly generated by gcc 4.5.2 I observed that loads and stores are being done for every swap, which really isn't needed. It would be better to load the 6 values into registers, sort those, and store them back into memory. I ordered the loads at stores to be as close as possible to ...


29

The CUDA runtime makes it possible to compile and link your CUDA kernels into executables. This means that you don't have to distribute cubin files with your application, or deal with loading them through the driver API. As you have noted, it is generally easier to use. In contrast, the driver API is harder to program but provided more control over how ...


28

The most involved part is reading from some surface that is in video memory ("default pool"). This is most often render targets. Let's get the easy parts first: reading from a texture is the same as reading from 0-level surface of that texture. See below. the same for subset of a texture. reading from a surface that is in non-default memory pool ("system" ...


28

I have been doing gpgpu development with ATI's stream SDK instead of Cuda. What kind of performance gain you will get depends on a lot of factors, but the most important is the numeric intensity. (That is, the ratio of compute operations to memory references.) A BLAS level-1 or BLAS level-2 function like adding two vectors only does 1 math operation for ...


28

You may also consider Aparapi http://aparapi.googlecode.com. It allows you to write your code in Java and will attempt to convert bytecode to OpenCL at runtime. Full disclosure. I am the Aparapi developer.


24

Interesting question. I have researched this very problem so my answer is based on some references and personal experiences. What types of problems are better suited to regular multicore and what types are better suited to GPGPU? Like @Jared mentioned. GPGPU are built for very regular throughput workloads, e.g., graphics, dense matrix-matrix multiply, ...


23

You can do something like this: __global__ void kernelSample(int *runtime) { // .... clock_t start_time = clock(); //some code here clock_t stop_time = clock(); // .... runtime[tidx] = (int)(stop_time - start_time); } Which gives the number of clock cycles between the two calls. Be a little careful though, the timer will overflow after a ...


23

Although CUDA kernel launches are asynchronous, all GPU-related tasks placed in one stream (which is default behaviour) are executed sequentially. So, for example, kernel1<<<X,Y>>>(...); // kernel start execution, CPU continues to next statement kernel2<<<X,Y>>>(...); // kernel is placed in queue and will start after ...


22

I found Brahma... It also has a GPGPU provider that allows methods to run on the GPU... Thanks for the question... Learnt something new today. :)


22

The benchmarks I've seen indicate that OpenCL and OpenMP running on the same hardware are usually comparable in performance, or OpenMP has slightly better performance. However, I haven't seen any benchmarks that I would consider conclusive, because they've been mostly lacking in detailed explanations of their methodology. However, there are a few useful ...


21

I'm not a CUDA expert, --- I've been developing with the AMD Stream SDK, which AFAIK is roughly comparable. You can disable the Windows watchdog timer, but that is highly not recommended, for reasons that should be obvious. To disable it, you need to regedit HKEY_LOCAL_MACHINE\SYSTEM\CurrentControlSet\Control\Watchdog\Display\DisableBugCheck, create a ...


21

Dynamic memory allocation is only supported on compute capability 2.x and newer hardware. You can use either the C++ new keyword or malloc in the kernel, so your example could become: __global__ func(float *grid_d,int n, int nn){ int i,j; float *x = new float[n], *y = new float[nn]; } This allocates memory on a local memory runtime heap ...


20

Penumbra is an idiomatic wrapper for OpenGL in Clojure. Calx is an idiomatic wrapper for OpenCL to target CPUs, GPUs, and more exotic hardware. See also calling CUDA from Clojure. CL-OPENGL is a set of Common Lisp bindings to the OpenGL, GLU and GLUT APIs. CL-GPU is a translator from a subset of Common Lisp to CUDA for writing GPU kernels. ECL-COMPUTE is a ...


19

kernels directive 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 ...


18

The OpenCL standard does not specify how the abstract execution model provided by OpenCL is mapped to the hardware. You can enqueue any number T of threads (work items), and provide a workgroup size (WG), with at least the following constraints (see OpenCL spec 5.7.3 and 5.8 for details): WG must divide T WG must be at most DEVICE_MAX_WORK_GROUP_SIZE WG ...



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