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2. Understanding parallel computing from the perspective of GPU

Preface This article describes how to implement parallel computing from the perspective of GPU programming technology. Three important issues to be considered in parallel computing 1. synchronization problems In the course on operating system principles, we have learned about deadlocks between processes and critical resource issues caused by resource sharing. 2. Concurrency Some problems are "Easy parallelism", such as matrix multiplication. In this t

GPU CPU Differences in drawing

There are two ways to handle drawing and animation:CPU (central processing unit) and GPU (graphics processor). In modern iOS devices, there are programmable chips that can run different software, but for historical reasons, we can say that the CPU does all the work at the software level, while the GPU is at the hardware level. in general, we can do anything with software (using the CPU), but for image p

GPU Sort __gpu

Single version of the two-tone ordering can be referred to http://blog.csdn.net/sunmenggmail/article/details/42869235 Or is this picture The idea of two-tone sorting based on Cuda is: Provides a thread for each element, or 1024 threads if it is greater than 1024 elements, because the __syncthreads can only be synchronized as a thread within the block, and a block has a maximum of 1024 threads, If the number of elements is greater than 1024, each thread may be responsible for more than one elem

Overview of OpenGL for universal GPU computing

It might be a bit earlier. GPU computing developers will do a common GPU computing OpenGL, with the rise of GPU computing technology, more and more technologies, such as OpenCL, CUDA, OPENACC, etc., are specifically used to do parallel computing standard or interface. OpenGL is used to do general-purpose GPU computing,

Ubuntu installation Tensorflow-gpu + Keras

Reprint Please specify:Look at Daniel's small freshness : http://www.cnblogs.com/luruiyuan/This article original website : http://www.cnblogs.com/luruiyuan/p/6660142.htmlThe Ubuntu version I used was 16.04, and using Gnome as the desktop (which doesn't matter) has gone through a lot of twists and turns and finally completed the installation of Keras with TensorFlow as the back end.Installation of the TENSORFLOW-GPU version:1. Download CUDA 8.0Address:

Windows Caffe in the GPU compilation process

Windows Caffe in the GPU compilation processGeForce8800 gts512:cc=1.1CUDA6.5Question one:SRC/CAFFE/LAYERS/CONV_LAYER.CU: Error:too Few arguments in function callError in Conv_layer.cu:forward_gpu_gemm needs the argument Skip_im2col #1962Solve:https://github.com/BVLC/caffe/issues/1962As @liqing-ustc replied, just add "false" as the fourth argument.Question two:1>d:\dev\caffe-master-gpu\include\caffe/util/gpu

Tensorflow-gpu, Cuda, CUDNN installation on Windows

Installation InstructionsPlatform: Currently available on Ubuntu, Mac OS, WindowsVersion: GPU version, CPU version availableInstallation mode: PIP mode, Anaconda modeTips: Currently supports python3.5.x on Windows GPU version requires cuda8,cudnn5.1 Installation progress2017/3/4 Progress:Anaconda 4.3 (corresponding to python3.6) is being installed, deleted, nothing.2017/3/5 Progress:Anacon

GPU deep mining (4): render to vertexbuffer in OpenGL

GPU deep mining (4 ):: Render to vertexbuffer in OpenGL Author: 文: 2007/5/10 www.physdev.com. To implement GPU programming, a good theoretical basis is required. If you do not have the foundation in this area before, please first learn the relevant knowledge. We recommend that you read the article gpgpu: Basics of mathematics tutorial. Overview: PbO: Pixel Buffer object FBO: frame buffer object VBO: ve

You can play with no GPU. Van Gogh painting: Ubuntu TensorFlow CPU Edition

you can play with no GPU. Van Gogh painting: Ubuntu TensorFlow CPU Edition July Online Development/marketing team Xiao Zhe, Li Wei, JulyDate: September 27, 2016First, prefaceSeptember 22, our development/marketing team of two colleagues using DL study Van Gogh painting, Installation Cuda 8.0 times countless pits, many friends seek refuge from the pit. Therefore, 3 days later, September 25, the tutorial will teach you from start to finish using DL

GPU down sampling for Point Based Rendering

Abstract: Can the Ewa Rendering Method of dot rendering have the graphic effects produced by real-time GPU oversampling of our workers? Certainly not.Abstract: Is the Ewa splatting will be better than my GPU multipass supersampling method? Of course not!Zusammemfasloud: ist die Ewa splatting so besser als meine GPU multipass supersampling methode? Naturlich nicht

Hardware architecture Cuda entry-GPU hardware architecture

Getting started with http://www.cnblogs.com/Fancyboy2004/archive/2009/04/28/1445637.html cuda-GPU hardware architecture Here we will briefly introduce that NVIDIA currently supports Cuda GPU, Which is executing CudaProgram(Basically, its shader unit) architecture. The data here is a combination of the information posted by nvidia and the data provided by NVIDIA in various seminars and school courses. There

Is your password secure? Brute force password cracking with GPU

Reprinted from: http://www.cnbeta.com/articles/145526.htm This is an interesting little tool that allows you to use GPU to brute force password cracking, from the description in the news, radeon5770 operations per second for HD 3.3 billionRadeon HD 5770 can crack a five-digit password "fjr8n" in one second "...... If you have four HD 5970 images, the cracking speed will reach 33.1 billion times per second, and the CPU we generally use is only about 9

Scatter and gather in GPU General Programmable Technology

With the enhancement of GPU's programmable performance and the continuous development of gpgpu technology, it is hoped that the stream processor model-based GPU can be like a CPU, while supporting the process branch, it also allows flexible read/write operations on the memory. Ian Buck [1] has pointed out that the lack of flexible memory operations is the key to restricting the GPU to complete complex compu

Keras builds a depth learning model, specifying the use of GPU for model training and testing

Today, the GPU is used to speed up computing, that feeling is soaring, close to graduation season, we are doing experiments, the server is already overwhelmed, our house server A pile of people to use, card to the explosion, training a model of a rough calculation of the iteration 100 times will take 3, 4 days of time, not worth the candle, Just next door there is an idle GPU depth learning server, decided

CUDA (v) devicequery to see GPU properties _cuda

After the Cuda is installed, you can use Devicequery to look at the related properties of the GPU, so that you have a certain understanding of the GPU, which will help cuda programming in the future. #include "cuda_runtime.h" #include "device_launch_parameters.h" #include The number of Nvidia GPU in the system is first obtained by Cudagetdevicecount , and th

Reprint: NVIDIA GPU Architecture

http://blog.itpub.net/23057064/viewspace-629236/ Nvidia graphics cards on the market are based on the Tesla architecture, divided into G80, G92, GT200 three series. The Tesla architecture is a processor array with the number of extendable places. Each GT200 GPU consists of 240 stream processors (streaming processor,sp), and each of the 8 stream processors is comprised of one stream multiprocessor (streaming multiprocessor,sm), thus a total of 30 strea

Comprehensive guide: Build from source on Ubuntu 16.04 to install GPU-enabled CAFFE2

Comprehensive Guide: Install the Caffe2 translator with GPU support from source on Ubuntu 16.04:Originally from: https://tech.amikelive.com/node-706/ Comprehensive-guide-installing-caffe2-with-gpu-support-by-building-from-source-on-ubuntu-16-04/?tdsourcetag=s_ Pctim_aiomsg, have to say that the author's knowledge is rich, the research is more thorough, the environment configuration explained more detailed.

Monitor Nvidia's GPU usage under Linux

When using TensorFlow to run deep learning, there is often a lack of memory, so we want to be able to view the GPU usage at any time. If you are the NVIDIA GPU, you can do this at the command line with just one line of command.1. Show current GPU usageNvidia comes with a NVIDIA-SMI command-line tool that displays video memory usage:Nvidia-smiOutput:2. Periodic ou

Shader tutorial on Unity3d development (introduction to GPU rendering)

This essay, not according to a variety of professional explanations to describe, completely see yourself play it, write where to calculate where. If there is a place to say wrong, please crossing to speak frankly no harm!When it comes to game development, it is inevitable to mention graphics, and the study of graphics will involve a variety of mathematical knowledge, vectors, matrices and the like! And here, let's start with shader, what is shader? We usually say that writing a shader, is actual

Analysis of CUDA hardware implementation (i) The revolution of camping---GPU

Preface: Have a friend who can't write computer program to read a blog, ask me, this GPU can also write as a story? I think perhaps the GPU is really a revolution, his development may be in the brewing, but by the end of 08, the beginning of 09, there will be a vigorous competition. At that time, perhaps from the OS level will bring people shock. If the CPU of the multi-core as a few special forces, each of

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