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Cuda Advanced Third: Cuda timing mode

write in front The content is divided into two parts, the first part is translation "Professional CUDA C Programming" section 2. The timing YOUR KERNEL in CUDA programming model, and the second part is his own experience. Experience is not enough, you are welcome to add greatly. Cuda, the pursuit of speed ratio, want to get accurate time, the timing function is

"OpenCV & CUDA" OpenCV and CUDA combined programming

One, using the GPU module provided in the OPENCV At present, many GPU functions have been provided in OpenCV, and the GPU modules provided by OPENCV can be used to accelerate most image processing. Basic use method, please refer to: http://www.cnblogs.com/dwdxdy/p/3244508.html The advantage of this method is simple, using Gpumat to manage the data transfer between CPU and GPU, and does not need to pay attention to the setting of kernel function call parameter, only need to pay attention to the l

Cuda from getting started to mastering

Proficient (ii): First CUDA program The book goes back, since we run the routine successfully, the next step is to understand how to implement each link in the routine. Of course, we start from the simple, the general programming language will find a helloworld example, and our video card is not talking, can only do some simple subtraction operation. So, the HelloWorld of

Cuda Memory Model Based on Cuda learning notes

Cuda Memory Model: GPU chip: Register, shared memory; Onboard memory: local memory, constant memory, texture memory, texture memory, global memory; Host memory: host memory, pinned memory. Register: extremely low access latency; Basic Unit: register file (32bit/each) Computing power 1.0/1.1 hardware: 8192/Sm; Computing power 1.2/1.3 hardware: 16384/Sm; The register occupied by each thread is limited. Do not assign too many private variables to it dur

CUDA 6, CUDA

CUDA 6, CUDAWarp Logically, all threads are parallel. However, from the hardware point of view, not all threads can be executed at the same time. Next we will explain some of the essence of warp.Warps and Thread Blocks Warp is the basic execution unit of SM. A warp contains 32 parallel threads, which are executed in SMIT mode. That is to say, all threads execute the same command, and each thread uses its own data to execute the command. A block can be

Based on VC + + WIN32+CUDA+OPENGL combination and VC + + MFC SDI+CUDA+OPENGL combination of two scenarios of remote sensing image display: The important conclusions obtained!

1, based on VC + + WIN32+CUDA+OPENGL combination of remote sensing image displayIn this combination scenario, OpenGL is set to the following two ways when initialized, with the same effect// setting mode 1glutinitdisplaymode (glut_double | GLUT_RGBA); // setting Mode 2glutinitdisplaymode (glut_double | GLUT_RGB);Extracting the pixel data from the remote sensing image data, the R, G, and b three channels can be assigned to the pixel buffer objects (pb

Cuda learning-(1) Basic concepts of Cuda Programming

Document directory Function qualifier Variable type qualifier Execute Configuration Built-in Variables Time Functions Synchronous Functions 1. Parallel Computing 1) Single-core command-level parallel ILP-enables the execution unit of a single processor to execute multiple commands simultaneously 2) multi-core parallel TLP-integrate multiple processor cores on one chip to achieve line-level parallel 3) multi-processor parallelism-Install multiple processors on a single circuit board and i

Cuda register array resolution, cuda register

Cuda register array resolution, cuda register About cuda register array When performing Parallel Optimization on some algorithms based on cuda, in order to improve the running speed of the algorithm as much as possible, sometimes we want to use register arrays to make the algorithm fly fast, but the effect is always u

Win10 with CMake 3.5.2 and vs update1 compiling GPU version (Cuda 8.0, CUDNN v5 for Cuda 8.0)

Win10 with CMake 3.5.2 and vs update1 compiling GPU version (Cuda 8.0, CUDNN v5 for Cuda 8.0) Open compile release and debug version with VS 2015 See the example on the net there are three inside the project Folders include (Include directories containing Mxnet,dmlc,mshadow)Lib (contains Libmxnet.dll, libmxnet.lib, put it in vs. compiled)Python (contains a mxnet,setup.py, and build, but the build contains t

Cuda Learning: First CUDA code: Array summation

Today we have a few gains, successfully running the array summation code: Just add the number of n sumEnvironment: cuda5.0,vs2010#include "cuda_runtime.h"#include "Device_launch_parameters.h"#include cudaerror_t Addwithcuda (int *c, int *a);#define TOTALN 72120#define Blocks_pergrid 32#define THREADS_PERBLOCK 64//2^8__global__ void Sumarray (int *c, int *a)//, int *b){__shared__ unsigned int mycache[threads_perblock];//sets the shared memory within each block threadsperblock==blockdim.xint i = t

Two-dimensional FFT in cuda-cufftExecC2C, cuda-cufftexecc2c

Two-dimensional FFT in cuda-cufftExecC2C, cuda-cufftexecc2c #include

Cuda programming-> introduction to Cuda (1)

Install cuda6.5 + vs2012, the operating system is win8.1 version, first of all the next GPU-Z detected a bit: It can be seen that this video card is a low-end configuration, the key is to look at two: Shaders = 384, also known as Sm, or the number of core/stream processors. The larger the number, the more parallel threads are executed, and the larger the computing workload per unit time. Buswidth = 64bit. The larger the value, the faster the data processing speed. Next let's take a look at the

Cuda by example chapter 3 translation practices GPU device parameter extraction

Since this book contains a lot of content, a lot of content is repeated with other books that explain cuda, so I only translate some key points. Time is money. Let's learn Cuda together. If any errors occur, please correct them. Since Chapter 1 and Chapter 2 do not have time to take a closer look, we will start from Chapter 3. I don't like being subject to peopl

"Cuda parallel programming three" cuda Vector summation operation

In this paper, the basic concepts of CUDA parallel programming are illustrated by the vector summation operation. The so-called vector summation is the addition of the corresponding element 22 in the two array data, and the result is saved in the third array. As shown in the following:1. CPU-based vector summation:The code is simple:#include the use of the while loop above is somewhat complex, but it is intended to allow the code to run concurrently o

CUDA 3, CUDA

CUDA 3, CUDAPreface The thread organization form is crucial to the program performance. This blog post mainly introduces the thread organization form in the following situations: 2D grid 2D block Thread Index Generally, a matrix is linearly stored in global memory and linear with rows: In kernel, the unique index of a thread is very useful. To determine the index of a thread, we take 2D as an example: Thread and block Indexes Element coordinates

Cuda 6.5 && VS2013 && Win7: Creating Cuda Projects

=2; - float*x_h, *x_d, *y_h, *Y_d; -X_h = (float*) malloc (n *sizeof(float)); -Y_h = (float*) malloc (n *sizeof(float)); + for(inti =0; I ) - { +X_h[i] = (float) I; AY_h[i] =1.0; at } -Cudamalloc (x_d, n *sizeof(float)); -Cudamalloc (y_d, n *sizeof(float)); -cudamemcpy (X_d, X_h, n *sizeof(float), cudamemcpyhosttodevice); -cudamemcpy (Y_d, Y_h, n *sizeof(float), cudamemcpyhosttodevice); -Saxpy 1, ->>>(A, x_d, Y_d, n); incudamemcpy (Y_h, Y_d, n *sizeof(float), cudamemcpydeviceto

Getting started with Cuda-combining OPNCV and Cuda programming (2) __ Programming

OpenCV read the picture and pass the picture data to Cuda processing #include Reference code: Calculate PI #include

GPU high-performance computing-Cuda (China-pub)

GPU high-performance computing-Cuda (China-pub) [Author] Zhang Shu; Yan yanli [same as the author's work][Release news agency] China Water Conservancy and hydropower press [book no.] 9787508465432[Shelving time][Publication date] on December 16, October 2009 [Opening] [Page code] 276 [version times] 1-1Sample chapter trial: http://www.china-pub.com/48582ref=ps Edit recommendations Featured typical practic

Cuda from getting started to mastering

Proficient (ii): First CUDA program The book goes back, since we run the routine successfully, the next step is to understand how to implement each link in the routine. Of course, we start from the simple, the general programming language will find a helloworld example, and our video card is not talking, can only do some simple subtraction operation. So, the HelloWorld of

Cuda from getting started to mastering

section we'll show you how to program the GPU in VS2008. Cuda from entry to Mastery (ii): first CUDA procedure As the book goes on, we run the routine successfully, and then we know how to implement each link in the routine. Of course, we start with the simple, general programming language will find a helloworld example, and our graphics card is not talking, ca

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