CMPE 665:Multiple Processor Systems CUDA-AWARE MPI VIGNESH GOVINDARAJULU KOTHANDAPANI RANJITH MURUGESAN
|
|
- Evelyn Ferguson
- 6 years ago
- Views:
Transcription
1 CMPE 665:Multiple Processor Systems CUDA-AWARE MPI VIGNESH GOVINDARAJULU KOTHANDAPANI RANJITH MURUGESAN
2 Graphics Processing Unit Accelerate the creation of images in a frame buffer intended for the output display. Used for image processing and computer graphics. Term was popularized by NVIDIA in the year Also known as Visual Processing Unit. ATI technologies released the first GPU in the year 2002.
3 History of GPU development 1970 s and 1980 s Video shifters and video address generators. They acted as a hardware between the main processor and display unit. RCA s Pixie Video chip(1976): Capable of outputting a signal of 62*128 resolution. MC6845 video address generator by Motorola(1978): Became the basis for IBM display and Apple II display adapter. IBM Professional Graphics Controller (PGA) (1984): Was one of the very first video cards for PC. Silicon Graphics Inc. (SGI) introduced the OpenGL technology in the year in 1989.
4 History of GPU development 1990 s SGI s graphics hardware was mainly used in workstations. Vodoo s 3dfx was one of the first true game cards, it operated at a speed of 50 Mhz with a 4MB of 64-Bit DRAM. NVIDIA s GeForce256 offered many features such as multi-texering, bump map, light maps and hardware geometry transforms and lighting. It operated at a clock speed of 120 Mhz and 32 MB of 128- Bit DRAM. It had a fixed pipeline model. This is the time when the GPU hardware and computer gaming market took off.
5 History of GPU development 2000 s Programmable pipeline was introduced. Cards popular at this time include Nvidia s GeForce3 and ATI Radeon Fully programmable graphic cards were introduced in the year 2002, NVIDIA GeForce FX, ATI Radeon In 2004, GPU programming was starting to take off. In 2006, GPU started being exposed as massively parallel processors. More programmability was added to the pixel and vertex shaders Current GPU s are highly programmable and trend is towards GPU accelerated processing.
6 CUDA - Compute Unified Device Architecture CUDA is a parallel computing platform and programming model invented by NVIDIA. It enables dramatic increases in computing performance by harnessing the power of the graphics-processing unit (GPU). CUDA gives developers direct access to the virtual instruction set and memory of the parallel computational elements in CUDA GPUs.
7 CUDA - Compute Unified Device Architecture Using CUDA, the GPUs can be used for general purpose processing,this approach is known as GPGPU- General-purpose computing on graphics processing units Unlike CPUs, however, GPUs have a parallel throughput architecture that emphasizes executing many concurrent threads slowly, rather than executing a single thread very quickly.
8 Processing Flow Copy data from main memory to GPU memory CPU instructs the process to GPU GPU execute parallel in each core Copy the result from GPU memory to main memory
9 Advantages With millions of CUDA-enabled GPUs sold to date, software developers, scientists and researchers are finding broad ranging uses for GPU computing with CUDA. Scattered reads code can read from arbitrary addresses in memory Unified Memory Bridges CPU GPU divide Faster downloads and read back to and from the GPU Full support for integer and bitwise operations, including integer texture lookups
10 Disadvantages Unlike OpenCL, CUDA-enabled GPUs are only available from Nvidia CUDA does not support the full C standard, Copying between host and device memory may incur a performance hit due to system bus bandwidth and latency Valid C/C++ may sometimes be flagged and prevent compilation due to optimization techniques the compiler is required to employ to use limited resources.
11 Real Time Applications Identify hidden plaque in arteries: Heart attacks are the leading cause of death worldwide. GPUs can be used to simulate blood flow and identify hidden arterial plaque without invasive imaging techniques or exploratory surgery. Analyze air traffic flow: The National Airspace System manages the nationwide coordination of air traffic flow. Computer models help identify new ways to alleviate congestion and keep airplane traffic moving efficiently.
12 Real Time Applications Using the computational power of GPUs, a team at NASA obtained a large performance gain, reducing analysis time from ten minutes to three seconds. Visualize molecules: A molecular simulation called NAMD (nanoscale molecular dynamics) gets a large performance boost with GPUs. The speed-up is a result of the parallel architecture of GPUs, which enables NAMD developers to port compute-intensive portions of the application to the GPU using the CUDA Toolkit.
13 Message Passing Interface (MPI) MPI process runs on a system with distributed memory space, such as a cluster. MPI actually defines a message-passing API which covers point-to-point messages as well as collective operations like reductions. In MPI each processor is called as a rank.
14 Reason for combining CUDA and MPI To solve problems with a data size too large to fit into the memory of a single GPU To solve problems that would require unreasonably long compute time on a single node To accelerate an existing MPI application with GPUs To enable a single-node multi-gpu application to scale across multiple nodes
15 CUDA-AWARE MPI In normal MPI if one wants to send GPU gpu buffers, one would need to stage it through the host memory as shown in the code below. //MPI Rank 0 cudamemcpy(s_buf_h,s_buf_d,size,cudamemcpydevicetohost); MPI_Send(s_buf_h,size,MPI_CHAR,1,100,MPI_COMM_WORLD); //MPI Rank 1 MPI_Recv(r_buf_h,size,MPI_CHAR,0,100,MPI_COMM_WORLD,&status); cudamemcpy(r_buf_d,r_buf_h,size,cudamemcpyhosttodevice);
16 CUDA-AWARE MPI With Cuda-Aware MPI the GPU buffers can be directly passed on to MPI. //MPI Rank 0 MPI_Send(s_buf_h,size,MPI_CHAR,1,100,MPI_COMM_WORLD); //MPI Rank 1 MPI_Recv(r_buf_h,size,MPI_CHAR,0,100,MPI_COMM_WORLD,&status);
17 CUDA-AWARE MPI Handling Buffers
18 CUDA-AWARE MPI All operation that require message transfer can be pipelined. Acceleration technologies like GPU direct can be utilized by the MPI library. GPU buffers can be directly passed to the network adapter.
19 CUDA-AWARE MPI
20 CUDA-Aware MPI Working of CUDA-AWARE MPI The below diagram shows the various process involved:
21 CUDA-AWARE MPI
22 CUDA-AWARE MPI
23 MPI vs. CUDA-AWARE MPI PERFORMANCE For tasks where communication between processors is low.
24 MPI vs. CUDA-AWARE MPI PERFORMANCE For communication-intensive tasks
25 MPI vs. CUDA-AWARE MPI PERFORMANCE Ease of use Pipelined data transfers that automatically provide optimizations when available.
26 CUDA-AWARE MPI Implementations OpenMPI 1.7 (beta) Better interactions with streams Better small message performance eager protocol Support for reduction operations Support for non-blocking collectives
27 CUDA-AWARE MPI Implementations IBM Platform MPI(8.3) Obtain higher quality results faster Reduce development and support costs Improve engineer and developer productivity Supports the broadest range of industry-standard platforms, interconnects, and operating systems helping ensure that parallel applications can run almost anywhere
CSE 591: GPU Programming. Introduction. Entertainment Graphics: Virtual Realism for the Masses. Computer games need to have: Klaus Mueller
Entertainment Graphics: Virtual Realism for the Masses CSE 591: GPU Programming Introduction Computer games need to have: realistic appearance of characters and objects believable and creative shading,
More informationCSE 591/392: GPU Programming. Introduction. Klaus Mueller. Computer Science Department Stony Brook University
CSE 591/392: GPU Programming Introduction Klaus Mueller Computer Science Department Stony Brook University First: A Big Word of Thanks! to the millions of computer game enthusiasts worldwide Who demand
More informationIntroduction to CUDA Algoritmi e Calcolo Parallelo. Daniele Loiacono
Introduction to CUDA Algoritmi e Calcolo Parallelo References q This set of slides is mainly based on: " CUDA Technical Training, Dr. Antonino Tumeo, Pacific Northwest National Laboratory " Slide of Applied
More informationCSCI 402: Computer Architectures. Parallel Processors (2) Fengguang Song Department of Computer & Information Science IUPUI.
CSCI 402: Computer Architectures Parallel Processors (2) Fengguang Song Department of Computer & Information Science IUPUI 6.6 - End Today s Contents GPU Cluster and its network topology The Roofline performance
More informationCUDA PROGRAMMING MODEL Chaithanya Gadiyam Swapnil S Jadhav
CUDA PROGRAMMING MODEL Chaithanya Gadiyam Swapnil S Jadhav CMPE655 - Multiple Processor Systems Fall 2015 Rochester Institute of Technology Contents What is GPGPU? What s the need? CUDA-Capable GPU Architecture
More informationCurrent Trends in Computer Graphics Hardware
Current Trends in Computer Graphics Hardware Dirk Reiners University of Louisiana Lafayette, LA Quick Introduction Assistant Professor in Computer Science at University of Louisiana, Lafayette (since 2006)
More informationIntroduction to CUDA Algoritmi e Calcolo Parallelo. Daniele Loiacono
Introduction to CUDA Algoritmi e Calcolo Parallelo References This set of slides is mainly based on: CUDA Technical Training, Dr. Antonino Tumeo, Pacific Northwest National Laboratory Slide of Applied
More informationGraphics Hardware. Instructor Stephen J. Guy
Instructor Stephen J. Guy Overview What is a GPU Evolution of GPU GPU Design Modern Features Programmability! Programming Examples Overview What is a GPU Evolution of GPU GPU Design Modern Features Programmability!
More informationGraphics Hardware. Graphics Processing Unit (GPU) is a Subsidiary hardware. With massively multi-threaded many-core. Dedicated to 2D and 3D graphics
Why GPU? Chapter 1 Graphics Hardware Graphics Processing Unit (GPU) is a Subsidiary hardware With massively multi-threaded many-core Dedicated to 2D and 3D graphics Special purpose low functionality, high
More informationPortland State University ECE 588/688. Graphics Processors
Portland State University ECE 588/688 Graphics Processors Copyright by Alaa Alameldeen 2018 Why Graphics Processors? Graphics programs have different characteristics from general purpose programs Highly
More informationGPU Architecture. Alan Gray EPCC The University of Edinburgh
GPU Architecture Alan Gray EPCC The University of Edinburgh Outline Why do we want/need accelerators such as GPUs? Architectural reasons for accelerator performance advantages Latest GPU Products From
More informationGPGPUs in HPC. VILLE TIMONEN Åbo Akademi University CSC
GPGPUs in HPC VILLE TIMONEN Åbo Akademi University 2.11.2010 @ CSC Content Background How do GPUs pull off higher throughput Typical architecture Current situation & the future GPGPU languages A tale of
More informationCS 179: GPU Programming
CS 179: GPU Programming Introduction Lecture originally written by Luke Durant, Tamas Szalay, Russell McClellan What We Will Cover Programming GPUs, of course: OpenGL Shader Language (GLSL) Compute Unified
More informationGPGPU. Peter Laurens 1st-year PhD Student, NSC
GPGPU Peter Laurens 1st-year PhD Student, NSC Presentation Overview 1. What is it? 2. What can it do for me? 3. How can I get it to do that? 4. What s the catch? 5. What s the future? What is it? Introducing
More informationCS8803SC Software and Hardware Cooperative Computing GPGPU. Prof. Hyesoon Kim School of Computer Science Georgia Institute of Technology
CS8803SC Software and Hardware Cooperative Computing GPGPU Prof. Hyesoon Kim School of Computer Science Georgia Institute of Technology Why GPU? A quiet revolution and potential build-up Calculation: 367
More informationCS GPU and GPGPU Programming Lecture 8+9: GPU Architecture 7+8. Markus Hadwiger, KAUST
CS 380 - GPU and GPGPU Programming Lecture 8+9: GPU Architecture 7+8 Markus Hadwiger, KAUST Reading Assignment #5 (until March 12) Read (required): Programming Massively Parallel Processors book, Chapter
More informationGPUs and GPGPUs. Greg Blanton John T. Lubia
GPUs and GPGPUs Greg Blanton John T. Lubia PROCESSOR ARCHITECTURAL ROADMAP Design CPU Optimized for sequential performance ILP increasingly difficult to extract from instruction stream Control hardware
More informationIntroduction to Multicore architecture. Tao Zhang Oct. 21, 2010
Introduction to Multicore architecture Tao Zhang Oct. 21, 2010 Overview Part1: General multicore architecture Part2: GPU architecture Part1: General Multicore architecture Uniprocessor Performance (ECint)
More informationhigh performance medical reconstruction using stream programming paradigms
high performance medical reconstruction using stream programming paradigms This Paper describes the implementation and results of CT reconstruction using Filtered Back Projection on various stream programming
More informationFast Interactive Sand Simulation for Gesture Tracking systems Shrenik Lad
Fast Interactive Sand Simulation for Gesture Tracking systems Shrenik Lad Project Guide : Vivek Mehta, Anup Tapadia TouchMagix media labs TouchMagix www.touchmagix.com Interactive display solutions Interactive
More informationUsing Graphics Chips for General Purpose Computation
White Paper Using Graphics Chips for General Purpose Computation Document Version 0.1 May 12, 2010 442 Northlake Blvd. Altamonte Springs, FL 32701 (407) 262-7100 TABLE OF CONTENTS 1. INTRODUCTION....1
More informationFrom Brook to CUDA. GPU Technology Conference
From Brook to CUDA GPU Technology Conference A 50 Second Tutorial on GPU Programming by Ian Buck Adding two vectors in C is pretty easy for (i=0; i
More informationLecture 15: Introduction to GPU programming. Lecture 15: Introduction to GPU programming p. 1
Lecture 15: Introduction to GPU programming Lecture 15: Introduction to GPU programming p. 1 Overview Hardware features of GPGPU Principles of GPU programming A good reference: David B. Kirk and Wen-mei
More informationThreading Hardware in G80
ing Hardware in G80 1 Sources Slides by ECE 498 AL : Programming Massively Parallel Processors : Wen-Mei Hwu John Nickolls, NVIDIA 2 3D 3D API: API: OpenGL OpenGL or or Direct3D Direct3D GPU Command &
More informationCS427 Multicore Architecture and Parallel Computing
CS427 Multicore Architecture and Parallel Computing Lecture 6 GPU Architecture Li Jiang 2014/10/9 1 GPU Scaling A quiet revolution and potential build-up Calculation: 936 GFLOPS vs. 102 GFLOPS Memory Bandwidth:
More informationMartin Kruliš, v
Martin Kruliš 1 GPGPU History Current GPU Architecture OpenCL Framework Example Optimizing Previous Example Alternative Architectures 2 1996: 3Dfx Voodoo 1 First graphical (3D) accelerator for desktop
More informationCS 220: Introduction to Parallel Computing. Introduction to CUDA. Lecture 28
CS 220: Introduction to Parallel Computing Introduction to CUDA Lecture 28 Today s Schedule Project 4 Read-Write Locks Introduction to CUDA 5/2/18 CS 220: Parallel Computing 2 Today s Schedule Project
More informationComputer Architecture
Computer Architecture Slide Sets WS 2013/2014 Prof. Dr. Uwe Brinkschulte M.Sc. Benjamin Betting Part 10 Thread and Task Level Parallelism Computer Architecture Part 10 page 1 of 36 Prof. Dr. Uwe Brinkschulte,
More informationGPGPU, 1st Meeting Mordechai Butrashvily, CEO GASS
GPGPU, 1st Meeting Mordechai Butrashvily, CEO GASS Agenda Forming a GPGPU WG 1 st meeting Future meetings Activities Forming a GPGPU WG To raise needs and enhance information sharing A platform for knowledge
More information! Readings! ! Room-level, on-chip! vs.!
1! 2! Suggested Readings!! Readings!! H&P: Chapter 7 especially 7.1-7.8!! (Over next 2 weeks)!! Introduction to Parallel Computing!! https://computing.llnl.gov/tutorials/parallel_comp/!! POSIX Threads
More informationGeneral Purpose GPU Programming. Advanced Operating Systems Tutorial 9
General Purpose GPU Programming Advanced Operating Systems Tutorial 9 Tutorial Outline Review of lectured material Key points Discussion OpenCL Future directions 2 Review of Lectured Material Heterogeneous
More informationReal - Time Rendering. Graphics pipeline. Michal Červeňanský Juraj Starinský
Real - Time Rendering Graphics pipeline Michal Červeňanský Juraj Starinský Overview History of Graphics HW Rendering pipeline Shaders Debugging 2 History of Graphics HW First generation Second generation
More informationJeremy W. Sheaffer 1 David P. Luebke 2 Kevin Skadron 1. University of Virginia Computer Science 2. NVIDIA Research
A Hardware Redundancy and Recovery Mechanism for Reliable Scientific Computation on Graphics Processors Jeremy W. Sheaffer 1 David P. Luebke 2 Kevin Skadron 1 1 University of Virginia Computer Science
More informationArchitectures. Michael Doggett Department of Computer Science Lund University 2009 Tomas Akenine-Möller and Michael Doggett 1
Architectures Michael Doggett Department of Computer Science Lund University 2009 Tomas Akenine-Möller and Michael Doggett 1 Overview of today s lecture The idea is to cover some of the existing graphics
More informationGPU Basics. Introduction to GPU. S. Sundar and M. Panchatcharam. GPU Basics. S. Sundar & M. Panchatcharam. Super Computing GPU.
Basics of s Basics Introduction to Why vs CPU S. Sundar and Computing architecture August 9, 2014 1 / 70 Outline Basics of s Why vs CPU Computing architecture 1 2 3 of s 4 5 Why 6 vs CPU 7 Computing 8
More informationAntonio R. Miele Marco D. Santambrogio
Advanced Topics on Heterogeneous System Architectures GPU Politecnico di Milano Seminar Room A. Alario 18 November, 2015 Antonio R. Miele Marco D. Santambrogio Politecnico di Milano 2 Introduction First
More informationGraphics Processing Unit Architecture (GPU Arch)
Graphics Processing Unit Architecture (GPU Arch) With a focus on NVIDIA GeForce 6800 GPU 1 What is a GPU From Wikipedia : A specialized processor efficient at manipulating and displaying computer graphics
More informationCUDA Conference. Walter Mundt-Blum March 6th, 2008
CUDA Conference Walter Mundt-Blum March 6th, 2008 NVIDIA s Businesses Multiple Growth Engines GPU Graphics Processing Units MCP Media and Communications Processors PESG Professional Embedded & Solutions
More informationWhat Next? Kevin Walsh CS 3410, Spring 2010 Computer Science Cornell University. * slides thanks to Kavita Bala & many others
What Next? Kevin Walsh CS 3410, Spring 2010 Computer Science Cornell University * slides thanks to Kavita Bala & many others Final Project Demo Sign-Up: Will be posted outside my office after lecture today.
More informationComparison of High-Speed Ray Casting on GPU
Comparison of High-Speed Ray Casting on GPU using CUDA and OpenGL November 8, 2008 NVIDIA 1,2, Andreas Weinlich 1, Holger Scherl 2, Markus Kowarschik 2 and Joachim Hornegger 1 1 Chair of Pattern Recognition
More informationGraphics Processing Unit (GPU)
Eric Scheler & Joshua Shear Graphics Processing Unit (GPU) Architecture and Applications Agenda Origin of GPUs First GPU Models and capabilities GPUs then and now (with architecture breakdown) Graphics
More information3D Computer Games Technology and History. Markus Hadwiger VRVis Research Center
3D Computer Games Technology and History VRVis Research Center Lecture Outline Overview of the last ten years A look at seminal 3D computer games Most important techniques employed Graphics research and
More informationGPU Programming. Lecture 1: Introduction. Miaoqing Huang University of Arkansas 1 / 27
1 / 27 GPU Programming Lecture 1: Introduction Miaoqing Huang University of Arkansas 2 / 27 Outline Course Introduction GPUs as Parallel Computers Trend and Design Philosophies Programming and Execution
More informationCUDA GPGPU Workshop 2012
CUDA GPGPU Workshop 2012 Parallel Programming: C thread, Open MP, and Open MPI Presenter: Nasrin Sultana Wichita State University 07/10/2012 Parallel Programming: Open MP, MPI, Open MPI & CUDA Outline
More informationSpring 2009 Prof. Hyesoon Kim
Spring 2009 Prof. Hyesoon Kim Application Geometry Rasterizer CPU Each stage cane be also pipelined The slowest of the pipeline stage determines the rendering speed. Frames per second (fps) Executes on
More informationGPGPU, 4th Meeting Mordechai Butrashvily, CEO GASS Company for Advanced Supercomputing Solutions
GPGPU, 4th Meeting Mordechai Butrashvily, CEO moti@gass-ltd.co.il GASS Company for Advanced Supercomputing Solutions Agenda 3rd meeting 4th meeting Future meetings Activities All rights reserved (c) 2008
More informationGPU Architecture and Function. Michael Foster and Ian Frasch
GPU Architecture and Function Michael Foster and Ian Frasch Overview What is a GPU? How is a GPU different from a CPU? The graphics pipeline History of the GPU GPU architecture Optimizations GPU performance
More informationSpring 2011 Prof. Hyesoon Kim
Spring 2011 Prof. Hyesoon Kim Application Geometry Rasterizer CPU Each stage cane be also pipelined The slowest of the pipeline stage determines the rendering speed. Frames per second (fps) Executes on
More informationGPU Computation Strategies & Tricks. Ian Buck NVIDIA
GPU Computation Strategies & Tricks Ian Buck NVIDIA Recent Trends 2 Compute is Cheap parallelism to keep 100s of ALUs per chip busy shading is highly parallel millions of fragments per frame 0.5mm 64-bit
More informationProgramming Graphics Hardware
Tutorial 5 Programming Graphics Hardware Randy Fernando, Mark Harris, Matthias Wloka, Cyril Zeller Overview of the Tutorial: Morning 8:30 9:30 10:15 10:45 Introduction to the Hardware Graphics Pipeline
More informationComputing on GPUs. Prof. Dr. Uli Göhner. DYNAmore GmbH. Stuttgart, Germany
Computing on GPUs Prof. Dr. Uli Göhner DYNAmore GmbH Stuttgart, Germany Summary: The increasing power of GPUs has led to the intent to transfer computing load from CPUs to GPUs. A first example has been
More informationCUDA. Matthew Joyner, Jeremy Williams
CUDA Matthew Joyner, Jeremy Williams Agenda What is CUDA? CUDA GPU Architecture CPU/GPU Communication Coding in CUDA Use cases of CUDA Comparison to OpenCL What is CUDA? What is CUDA? CUDA is a parallel
More informationECE 8823: GPU Architectures. Objectives
ECE 8823: GPU Architectures Introduction 1 Objectives Distinguishing features of GPUs vs. CPUs Major drivers in the evolution of general purpose GPUs (GPGPUs) 2 1 Chapter 1 Chapter 2: 2.2, 2.3 Reading
More informationCornell University CS 569: Interactive Computer Graphics. Introduction. Lecture 1. [John C. Stone, UIUC] NASA. University of Calgary
Cornell University CS 569: Interactive Computer Graphics Introduction Lecture 1 [John C. Stone, UIUC] 2008 Steve Marschner 1 2008 Steve Marschner 2 NASA University of Calgary 2008 Steve Marschner 3 2008
More informationGPU Architecture. Michael Doggett Department of Computer Science Lund university
GPU Architecture Michael Doggett Department of Computer Science Lund university GPUs from my time at ATI R200 Xbox360 GPU R630 R610 R770 Let s start at the beginning... Graphics Hardware before GPUs 1970s
More informationTechnical Brief. AGP 8X Evolving the Graphics Interface
Technical Brief AGP 8X Evolving the Graphics Interface Increasing Graphics Bandwidth No one needs to be convinced that the overall PC experience is increasingly dependent on the efficient processing of
More informationTechnology for a better society. hetcomp.com
Technology for a better society hetcomp.com 1 J. Seland, C. Dyken, T. R. Hagen, A. R. Brodtkorb, J. Hjelmervik,E Bjønnes GPU Computing USIT Course Week 16th November 2011 hetcomp.com 2 9:30 10:15 Introduction
More informationGENERAL-PURPOSE COMPUTATION USING GRAPHICAL PROCESSING UNITS
GENERAL-PURPOSE COMPUTATION USING GRAPHICAL PROCESSING UNITS Adrian Salazar, Texas A&M-University-Corpus Christi Faculty Advisor: Dr. Ahmed Mahdy, Texas A&M-University-Corpus Christi ABSTRACT Graphical
More informationGeneral Purpose Computing on Graphical Processing Units (GPGPU(
General Purpose Computing on Graphical Processing Units (GPGPU( / GPGP /GP 2 ) By Simon J.K. Pedersen Aalborg University, Oct 2008 VGIS, Readings Course Presentation no. 7 Presentation Outline Part 1:
More informationChallenges for GPU Architecture. Michael Doggett Graphics Architecture Group April 2, 2008
Michael Doggett Graphics Architecture Group April 2, 2008 Graphics Processing Unit Architecture CPUs vsgpus AMD s ATI RADEON 2900 Programming Brook+, CAL, ShaderAnalyzer Architecture Challenges Accelerated
More informationGeneral Purpose GPU Programming. Advanced Operating Systems Tutorial 7
General Purpose GPU Programming Advanced Operating Systems Tutorial 7 Tutorial Outline Review of lectured material Key points Discussion OpenCL Future directions 2 Review of Lectured Material Heterogeneous
More informationBifurcation Between CPU and GPU CPUs General purpose, serial GPUs Special purpose, parallel CPUs are becoming more parallel Dual and quad cores, roadm
XMT-GPU A PRAM Architecture for Graphics Computation Tom DuBois, Bryant Lee, Yi Wang, Marc Olano and Uzi Vishkin Bifurcation Between CPU and GPU CPUs General purpose, serial GPUs Special purpose, parallel
More informationParallel Processing SIMD, Vector and GPU s cont.
Parallel Processing SIMD, Vector and GPU s cont. EECS4201 Fall 2016 York University 1 Multithreading First, we start with multithreading Multithreading is used in GPU s 2 1 Thread Level Parallelism ILP
More informationFCUDA: Enabling Efficient Compilation of CUDA Kernels onto
FCUDA: Enabling Efficient Compilation of CUDA Kernels onto FPGAs October 13, 2009 Overview Presenting: Alex Papakonstantinou, Karthik Gururaj, John Stratton, Jason Cong, Deming Chen, Wen-mei Hwu. FCUDA:
More informationIntroduction to Multicore Programming
Introduction to Multicore Programming Minsoo Ryu Department of Computer Science and Engineering 2 1 Multithreaded Programming 2 Automatic Parallelization and OpenMP 3 GPGPU 2 Multithreaded Programming
More informationGeneral Purpose GPU Computing in Partial Wave Analysis
JLAB at 12 GeV - INT General Purpose GPU Computing in Partial Wave Analysis Hrayr Matevosyan - NTC, Indiana University November 18/2009 COmputationAL Challenges IN PWA Rapid Increase in Available Data
More informationGPU Programming Using NVIDIA CUDA
GPU Programming Using NVIDIA CUDA Siddhante Nangla 1, Professor Chetna Achar 2 1, 2 MET s Institute of Computer Science, Bandra Mumbai University Abstract: GPGPU or General-Purpose Computing on Graphics
More informationTesla GPU Computing A Revolution in High Performance Computing
Tesla GPU Computing A Revolution in High Performance Computing Gernot Ziegler, Developer Technology (Compute) (Material by Thomas Bradley) Agenda Tesla GPU Computing CUDA Fermi What is GPU Computing? Introduction
More informationReal-time Graphics 9. GPGPU
9. GPGPU GPGPU GPU (Graphics Processing Unit) Flexible and powerful processor Programmability, precision, power Parallel processing CPU Increasing number of cores Parallel processing GPGPU general-purpose
More informationGPU for HPC. October 2010
GPU for HPC Simone Melchionna Jonas Latt Francis Lapique October 2010 EPFL/ EDMX EPFL/EDMX EPFL/DIT simone.melchionna@epfl.ch jonas.latt@epfl.ch francis.lapique@epfl.ch 1 Moore s law: in the old days,
More informationad-heap: an Efficient Heap Data Structure for Asymmetric Multicore Processors
ad-heap: an Efficient Heap Data Structure for Asymmetric Multicore Processors Weifeng Liu and Brian Vinter Niels Bohr Institute University of Copenhagen Denmark {weifeng, vinter}@nbi.dk March 1, 2014 Weifeng
More informationGPU-Based Volume Rendering of. Unstructured Grids. João L. D. Comba. Fábio F. Bernardon UFRGS
GPU-Based Volume Rendering of João L. D. Comba Cláudio T. Silva Steven P. Callahan Unstructured Grids UFRGS University of Utah University of Utah Fábio F. Bernardon UFRGS Natal - RN - Brazil XVIII Brazilian
More informationCOMP 605: Introduction to Parallel Computing Lecture : GPU Architecture
COMP 605: Introduction to Parallel Computing Lecture : GPU Architecture Mary Thomas Department of Computer Science Computational Science Research Center (CSRC) San Diego State University (SDSU) Posted:
More informationTUNING CUDA APPLICATIONS FOR MAXWELL
TUNING CUDA APPLICATIONS FOR MAXWELL DA-07173-001_v7.0 March 2015 Application Note TABLE OF CONTENTS Chapter 1. Maxwell Tuning Guide... 1 1.1. NVIDIA Maxwell Compute Architecture... 1 1.2. CUDA Best Practices...2
More informationPresenting: Comparing the Power and Performance of Intel's SCC to State-of-the-Art CPUs and GPUs
Presenting: Comparing the Power and Performance of Intel's SCC to State-of-the-Art CPUs and GPUs A paper comparing modern architectures Joakim Skarding Christian Chavez Motivation Continue scaling of performance
More informationn N c CIni.o ewsrg.au
@NCInews NCI and Raijin National Computational Infrastructure 2 Our Partners General purpose, highly parallel processors High FLOPs/watt and FLOPs/$ Unit of execution Kernel Separate memory subsystem GPGPU
More informationX. GPU Programming. Jacobs University Visualization and Computer Graphics Lab : Advanced Graphics - Chapter X 1
X. GPU Programming 320491: Advanced Graphics - Chapter X 1 X.1 GPU Architecture 320491: Advanced Graphics - Chapter X 2 GPU Graphics Processing Unit Parallelized SIMD Architecture 112 processing cores
More informationImplementation of Bilateral Filtering on CUDA
Implementation of Bilateral Filtering on CUDA 1 Ashish A.Deshmukh, 2 Sanjay L. Badjate 1,2 Electronics Engg, S.B.J.I.T.M & R, Nagpur, India Abstract The bilateral filter is a non-linear technique that
More informationHeadline in Arial Bold 30pt. Visualisation using the Grid Jeff Adie Principal Systems Engineer, SAPK July 2008
Headline in Arial Bold 30pt Visualisation using the Grid Jeff Adie Principal Systems Engineer, SAPK July 2008 Agenda Visualisation Today User Trends Technology Trends Grid Viz Nodes Software Ecosystem
More informationXbox 360 Architecture. Lennard Streat Samuel Echefu
Xbox 360 Architecture Lennard Streat Samuel Echefu Overview Introduction Hardware Overview CPU Architecture GPU Architecture Comparison Against Competing Technologies Implications of Technology Introduction
More informationGPGPU on Mobile Devices
GPGPU on Mobile Devices Introduction Addressing GPGPU for very mobile devices Tablets Smartphones Introduction Why dedicated GPUs in mobile devices? Gaming Physics simulation for realistic effects 3D-GUI
More informationGPU A rchitectures Architectures Patrick Neill May
GPU Architectures Patrick Neill May 30, 2014 Outline CPU versus GPU CUDA GPU Why are they different? Terminology Kepler/Maxwell Graphics Tiled deferred rendering Opportunities What skills you should know
More informationFCUDA: Enabling Efficient Compilation of CUDA Kernels onto
FCUDA: Enabling Efficient Compilation of CUDA Kernels onto FPGAs October 13, 2009 Overview Presenting: Alex Papakonstantinou, Karthik Gururaj, John Stratton, Jason Cong, Deming Chen, Wen-mei Hwu. FCUDA:
More informationTUNING CUDA APPLICATIONS FOR MAXWELL
TUNING CUDA APPLICATIONS FOR MAXWELL DA-07173-001_v6.5 August 2014 Application Note TABLE OF CONTENTS Chapter 1. Maxwell Tuning Guide... 1 1.1. NVIDIA Maxwell Compute Architecture... 1 1.2. CUDA Best Practices...2
More informationMultimedia in Mobile Phones. Architectures and Trends Lund
Multimedia in Mobile Phones Architectures and Trends Lund 091124 Presentation Henrik Ohlsson Contact: henrik.h.ohlsson@stericsson.com Working with multimedia hardware (graphics and displays) at ST- Ericsson
More information1. Introduction 2. Methods for I/O Operations 3. Buses 4. Liquid Crystal Displays 5. Other Types of Displays 6. Graphics Adapters 7.
1. Introduction 2. Methods for I/O Operations 3. Buses 4. Liquid Crystal Displays 5. Other Types of Displays 6. Graphics Adapters 7. Optical Discs 1 Structure of a Graphics Adapter Video Memory Graphics
More informationCSCI-GA Graphics Processing Units (GPUs): Architecture and Programming Lecture 2: Hardware Perspective of GPUs
CSCI-GA.3033-004 Graphics Processing Units (GPUs): Architecture and Programming Lecture 2: Hardware Perspective of GPUs Mohamed Zahran (aka Z) mzahran@cs.nyu.edu http://www.mzahran.com History of GPUs
More informationWhat is GPU? CS 590: High Performance Computing. GPU Architectures and CUDA Concepts/Terms
CS 590: High Performance Computing GPU Architectures and CUDA Concepts/Terms Fengguang Song Department of Computer & Information Science IUPUI What is GPU? Conventional GPUs are used to generate 2D, 3D
More informationCUDA Programming Model
CUDA Xing Zeng, Dongyue Mou Introduction Example Pro & Contra Trend Introduction Example Pro & Contra Trend Introduction What is CUDA? - Compute Unified Device Architecture. - A powerful parallel programming
More informationGraphics Architectures and OpenCL. Michael Doggett Department of Computer Science Lund university
Graphics Architectures and OpenCL Michael Doggett Department of Computer Science Lund university Overview Parallelism Radeon 5870 Tiled Graphics Architectures Important when Memory and Bandwidth limited
More informationPowerVR Hardware. Architecture Overview for Developers
Public Imagination Technologies PowerVR Hardware Public. This publication contains proprietary information which is subject to change without notice and is supplied 'as is' without warranty of any kind.
More informationHiPANQ Overview of NVIDIA GPU Architecture and Introduction to CUDA/OpenCL Programming, and Parallelization of LDPC codes.
HiPANQ Overview of NVIDIA GPU Architecture and Introduction to CUDA/OpenCL Programming, and Parallelization of LDPC codes Ian Glendinning Outline NVIDIA GPU cards CUDA & OpenCL Parallel Implementation
More informationframe buffer depth buffer stencil buffer
Final Project Proposals Programmable GPUS You should all have received an email with feedback Just about everyone was told: Test cases weren t detailed enough Project was possibly too big Motivation could
More informationCENG 477 Introduction to Computer Graphics. Graphics Hardware and OpenGL
CENG 477 Introduction to Computer Graphics Graphics Hardware and OpenGL Introduction Until now, we focused on graphic algorithms rather than hardware and implementation details But graphics, without using
More informationLecture 1: Gentle Introduction to GPUs
CSCI-GA.3033-004 Graphics Processing Units (GPUs): Architecture and Programming Lecture 1: Gentle Introduction to GPUs Mohamed Zahran (aka Z) mzahran@cs.nyu.edu http://www.mzahran.com Who Am I? Mohamed
More informationAccelerating CFD with Graphics Hardware
Accelerating CFD with Graphics Hardware Graham Pullan (Whittle Laboratory, Cambridge University) 16 March 2009 Today Motivation CPUs and GPUs Programming NVIDIA GPUs with CUDA Application to turbomachinery
More informationWorld s most advanced data center accelerator for PCIe-based servers
NVIDIA TESLA P100 GPU ACCELERATOR World s most advanced data center accelerator for PCIe-based servers HPC data centers need to support the ever-growing demands of scientists and researchers while staying
More informationDIFFERENTIAL. Tomáš Oberhuber, Atsushi Suzuki, Jan Vacata, Vítězslav Žabka
USE OF FOR Tomáš Oberhuber, Atsushi Suzuki, Jan Vacata, Vítězslav Žabka Faculty of Nuclear Sciences and Physical Engineering Czech Technical University in Prague Mini workshop on advanced numerical methods
More informationReal-time Graphics 9. GPGPU
Real-time Graphics 9. GPGPU GPGPU GPU (Graphics Processing Unit) Flexible and powerful processor Programmability, precision, power Parallel processing CPU Increasing number of cores Parallel processing
More informationHPC Middle East. KFUPM HPC Workshop April Mohamed Mekias HPC Solutions Consultant. Introduction to CUDA programming
KFUPM HPC Workshop April 29-30 2015 Mohamed Mekias HPC Solutions Consultant Introduction to CUDA programming 1 Agenda GPU Architecture Overview Tools of the Trade Introduction to CUDA C Patterns of Parallel
More information