NEW ADVANCES IN GPU LINEAR ALGEBRA
|
|
- Leona Wheeler
- 6 years ago
- Views:
Transcription
1 GTC 2012: NEW ADVANCES IN GPU LINEAR ALGEBRA Kyle Spagnoli EM Photonics 5/16/2012
2 QUICK ABOUT US» HPC/GPU Consulting Firm» Specializations in:» Electromagnetics» Image Processing» Fluid Dynamics» Linear Algebra
3 INTRODUCTION TO OUR LIBRARIES» CULA Dense» Linear algebra routines» CULA Sparse» Iterative sparse system solvers and preconditioners» pcula» Scalable solvers for multiple GPUs» Ongoing work
4 INTRODUCTION - COMMON POINTS» Easy to use» No GPU programming experience necessary» dgetrf( ) culadgetrf( )» Exhaustively tested and benchmarked» Accuracy & stability first!» Cross platform» Linux, Windows, Mac OS X» Multiple languages» C/C++, Fortran, Python, Matlab
5 CULA DENSE
6 CULA DENSE INTRODUCTION» First released in 2009» LAPACK and BLAS implementations» Host or device memory» Almost 300 routines» Upcoming release (R15)» Tuned for Kepler architecture» Now free for personal academic use
7 CULA DENSE - FUNCTIONALITY LAPACK BLAS LU factorization Cholesky factorization Matrix-matrix multiply QR decomposition Orthogonal factorization Matrix-vector multiply Least squares System solve Rank updates Eigenvalue routines Matrix inversion Conjugate Singular value decomposition Auxiliary routines Transpose
8 GFLOPs CULA DENSE - PERFORMANCE CULA Dense - Cholesky Factorization (SPOTRF) CPU (MKL) GPU (GTX680) Performance numbers include transfer time across PCI-Express (Gen2) bus CPU Intel Core i7 2600K GPU NVIDIA GTX 680 (1.5 GB) Matrix Size
9 CULA DENSE LINK INTERFACE» GPU acceleration with no code changes!» Intercepts calls to BLAS & LAPACK libraries» Analyze routine, parameters, and hardware» Forward to GPU if appropriate» Pass-through to CPU otherwise
10 CULA SPARSE (ITERATIVE)
11 CULA SPARSE INTRODUCTION» First released in 2011» Iterative solvers and preconditioners» Multiple matrix storage formats supported» Upcoming release (S3)» Tuned for Kepler» Free for personal academic use
12 CULA SPARSE - FUNCTIONALITY Solvers Preconditioners Data CG Jacobi Double / Complex BiCG Block Jacobi CSR / CSC / COO BiCG-Stab / (L) ILU0 GMRES Reordered ILU0 MINRES
13 Speed Up CULA SPARSE - PERFORMANCE Iterative Solver Performance 16x 14x 12x System Size = 1.5M GPU = NVIDIA C2070 CPU = Xeon X5560 (MKL) 10x 8x 6x 4x 2x 0x CG GMRES BiCG MINRES BiCGSTAB BiCGSTABL
14 CULA SPARSE PERFORMANCE FEATURES» Hybrid performance» CPU begins working during initial transfer» Preconditioner generation» Initial iterations» Matrix reordering» Can increase parallelism
15 PCULA MULTI-GPU + CPU PERFORMANCE
16 PCULA INTRODUCTION» Scale to multiple GPUs and CPUs in a single node» Currently in alpha release» Greatly increased performance, scalability, and functionality coming soon!
17 PCULA TILED ALGORITHMS n (0,0) (0,1) (0,2) (0,3) m (1,0) (1,1) (1,2) (1,3) (2,0) (2,1) (2,2) (2,3) (3,0) (3,1) (3,2) (3,3) original matrix tiled matrix
18 PCULA TASK SCHEDULING Completed Tasks POTRF TRSM TRSM TRSM SYRK Pending Valid Tasks GEMM GEMM GEMM POTRF SYRK SYRK Hardware Busy (3 tasks) Free (1 task) Free (0 tasks)
19 PCULA HETEROGENEOUS TASK SCHEDULING» Data locality is critical» Hardware performance» Persistent live tuning performance database» Task queue depth» Too long idle hardware if not perfect» Too short worker starvation
20 PCULA OUT OF (GPU) CORE» Solve problems larger than GPU memory» Natural extension of tiled data partitioning» MESI memory coherence protocol» Least recently used replacement strategy (0,0) (0,1) (0,2) (0,3) (0,0) (0,1) (0,2) (0,3) Modified Invalid (1,0) (1,1) (1,2) (1,3) (1,0) (1,1) (1,2) (1,3) (2,0) (2,1) (2,2) (2,3) (2,0) (2,1) (2,2) (2,3) Exclusive Shared (3,0) (3,1) (3,2) (3,3) (3,0) (3,1) (3,2) (3,3)
21 PCULA FUNCTION LIST» Currently supports» BLAS Routines (GEMM, TRSM, GEMV)» LU Factorization & Solve (GETRF + GESV)» Cholesky Factorization & Solve (POTRF + POSV)» QR Factorization & Solve (GEQRF + GEQRS)» Eigenvalue and SVD routines in future release
22 GFLOPs PCULA - PERFORMANCE pcula - DGEMM Performance CPU GPU CPU + GPU CPU + 2xGPU Performance numbers include transfer time across PCI-Express (Gen2) bus CPU Intel Xeon 5560 GPU 2x NVIDIA C Matrix Size
23 ONGOING WORK
24 ONGOING WORK - CULA» CULA Dense» More routines/tuning» CULA Sparse» Direct solvers» Algebraic Multi-Grid (AMG)» pcula» Multi-node cluster support» NUMA optimizations
25 ONGOING WORK C++ AMP» Microsoft s C++ AMP library» ampblas development project» Linear algebra to C++ AMP ecosystem» Multiple talks today and tomorrow» C++ AMP Lounge
26 CULA PARTNERS & INTEGRATORS» Here at GTC
27 THANKS! Thanks! Questions?» Convention booth #20» More
GTC 2013: DEVELOPMENTS IN GPU-ACCELERATED SPARSE LINEAR ALGEBRA ALGORITHMS. Kyle Spagnoli. Research EM Photonics 3/20/2013
GTC 2013: DEVELOPMENTS IN GPU-ACCELERATED SPARSE LINEAR ALGEBRA ALGORITHMS Kyle Spagnoli Research Engineer @ EM Photonics 3/20/2013 INTRODUCTION» Sparse systems» Iterative solvers» High level benchmarks»
More informationMAGMA a New Generation of Linear Algebra Libraries for GPU and Multicore Architectures
MAGMA a New Generation of Linear Algebra Libraries for GPU and Multicore Architectures Stan Tomov Innovative Computing Laboratory University of Tennessee, Knoxville OLCF Seminar Series, ORNL June 16, 2010
More informationMAGMA: a New Generation
1.3 MAGMA: a New Generation of Linear Algebra Libraries for GPU and Multicore Architectures Jack Dongarra T. Dong, M. Gates, A. Haidar, S. Tomov, and I. Yamazaki University of Tennessee, Knoxville Release
More informationGPU ACCELERATION OF WSMP (WATSON SPARSE MATRIX PACKAGE)
GPU ACCELERATION OF WSMP (WATSON SPARSE MATRIX PACKAGE) NATALIA GIMELSHEIN ANSHUL GUPTA STEVE RENNICH SEID KORIC NVIDIA IBM NVIDIA NCSA WATSON SPARSE MATRIX PACKAGE (WSMP) Cholesky, LDL T, LU factorization
More informationCUDA Accelerated Compute Libraries. M. Naumov
CUDA Accelerated Compute Libraries M. Naumov Outline Motivation Why should you use libraries? CUDA Toolkit Libraries Overview of performance CUDA Proprietary Libraries Address specific markets Third Party
More informationMAGMA. Matrix Algebra on GPU and Multicore Architectures
MAGMA Matrix Algebra on GPU and Multicore Architectures Innovative Computing Laboratory Electrical Engineering and Computer Science University of Tennessee Piotr Luszczek (presenter) web.eecs.utk.edu/~luszczek/conf/
More informationAutomatic Development of Linear Algebra Libraries for the Tesla Series
Automatic Development of Linear Algebra Libraries for the Tesla Series Enrique S. Quintana-Ortí quintana@icc.uji.es Universidad Jaime I de Castellón (Spain) Dense Linear Algebra Major problems: Source
More informationHierarchical DAG Scheduling for Hybrid Distributed Systems
June 16, 2015 Hierarchical DAG Scheduling for Hybrid Distributed Systems Wei Wu, Aurelien Bouteiller, George Bosilca, Mathieu Faverge, Jack Dongarra IPDPS 2015 Outline! Introduction & Motivation! Hierarchical
More informationA Standard for Batching BLAS Operations
A Standard for Batching BLAS Operations Jack Dongarra University of Tennessee Oak Ridge National Laboratory University of Manchester 5/8/16 1 API for Batching BLAS Operations We are proposing, as a community
More informationDistributed Dense Linear Algebra on Heterogeneous Architectures. George Bosilca
Distributed Dense Linear Algebra on Heterogeneous Architectures George Bosilca bosilca@eecs.utk.edu Centraro, Italy June 2010 Factors that Necessitate to Redesign of Our Software» Steepness of the ascent
More informationDense Linear Algebra on Heterogeneous Platforms: State of the Art and Trends
Dense Linear Algebra on Heterogeneous Platforms: State of the Art and Trends Paolo Bientinesi AICES, RWTH Aachen pauldj@aices.rwth-aachen.de ComplexHPC Spring School 2013 Heterogeneous computing - Impact
More informationModern GPUs (Graphics Processing Units)
Modern GPUs (Graphics Processing Units) Powerful data parallel computation platform. High computation density, high memory bandwidth. Relatively low cost. NVIDIA GTX 580 512 cores 1.6 Tera FLOPs 1.5 GB
More informationOptimization of Dense Linear Systems on Platforms with Multiple Hardware Accelerators. Enrique S. Quintana-Ortí
Optimization of Dense Linear Systems on Platforms with Multiple Hardware Accelerators Enrique S. Quintana-Ortí Disclaimer Not a course on how to program dense linear algebra kernels on s Where have you
More informationSolving Dense Linear Systems on Graphics Processors
Solving Dense Linear Systems on Graphics Processors Sergio Barrachina Maribel Castillo Francisco Igual Rafael Mayo Enrique S. Quintana-Ortí High Performance Computing & Architectures Group Universidad
More informationTechnical Report Performance Analysis of CULA on different NVIDIA GPU Architectures. Prateek Gupta
Technical Report 2014-02 Performance Analysis of CULA on different NVIDIA GPU Architectures Prateek Gupta May 20, 2014 1 Spring 2014: Performance Analysis of CULA on different NVIDIA GPU Architectures
More informationABSTRACT 1. INTRODUCTION. * phone ; fax ; emphotonics.com
CULA: Hybrid GPU Accelerated Linear Algebra Routines John R. Humphrey *, Daniel K. Price, Kyle E. Spagnoli, Aaron L. Paolini, Eric J. Kelmelis EM Photonics, Inc, 51 E Main St, Suite 203, Newark, DE, USA
More informationBatch Linear Algebra for GPU-Accelerated High Performance Computing Environments
Batch Linear Algebra for GPU-Accelerated High Performance Computing Environments Ahmad Abdelfattah, Azzam Haidar, Stanimire Tomov, and Jack Dongarra SIAM Conference on Computational Science and Engineering
More informationPorting the NAS-NPB Conjugate Gradient Benchmark to CUDA. NVIDIA Corporation
Porting the NAS-NPB Conjugate Gradient Benchmark to CUDA NVIDIA Corporation Outline! Overview of CG benchmark! Overview of CUDA Libraries! CUSPARSE! CUBLAS! Porting Sequence! Algorithm Analysis! Data/Code
More informationGPU ACCELERATION OF CHOLMOD: BATCHING, HYBRID AND MULTI-GPU
April 4-7, 2016 Silicon Valley GPU ACCELERATION OF CHOLMOD: BATCHING, HYBRID AND MULTI-GPU Steve Rennich, Darko Stosic, Tim Davis, April 6, 2016 OBJECTIVE Direct sparse methods are among the most widely
More informationHow to perform HPL on CPU&GPU clusters. Dr.sc. Draško Tomić
How to perform HPL on CPU&GPU clusters Dr.sc. Draško Tomić email: drasko.tomic@hp.com Forecasting is not so easy, HPL benchmarking could be even more difficult Agenda TOP500 GPU trends Some basics about
More informationUsing Intel Math Kernel Library with MathWorks* MATLAB* on Intel Xeon Phi Coprocessor System
Using Intel Math Kernel Library with MathWorks* MATLAB* on Intel Xeon Phi Coprocessor System Overview This guide is intended to help developers use the latest version of Intel Math Kernel Library (Intel
More informationPortable and Productive Performance on Hybrid Systems with libsci_acc Luiz DeRose Sr. Principal Engineer Programming Environments Director Cray Inc.
Portable and Productive Performance on Hybrid Systems with libsci_acc Luiz DeRose Sr. Principal Engineer Programming Environments Director Cray Inc. 1 What is Cray Libsci_acc? Provide basic scientific
More informationStudy and implementation of computational methods for Differential Equations in heterogeneous systems. Asimina Vouronikoy - Eleni Zisiou
Study and implementation of computational methods for Differential Equations in heterogeneous systems Asimina Vouronikoy - Eleni Zisiou Outline Introduction Review of related work Cyclic Reduction Algorithm
More informationComparing Hybrid CPU-GPU and Native GPU-only Acceleration for Linear Algebra. Mark Gates, Stan Tomov, Azzam Haidar SIAM LA Oct 29, 2015
Comparing Hybrid CPU-GPU and Native GPU-only Acceleration for Linear Algebra Mark Gates, Stan Tomov, Azzam Haidar SIAM LA Oct 29, 2015 Overview Dense linear algebra algorithms Hybrid CPU GPU implementation
More informationOn Level Scheduling for Incomplete LU Factorization Preconditioners on Accelerators
On Level Scheduling for Incomplete LU Factorization Preconditioners on Accelerators Karl Rupp, Barry Smith rupp@mcs.anl.gov Mathematics and Computer Science Division Argonne National Laboratory FEMTEC
More informationFastest and most used math library for Intel -based systems 1
Fastest and most used math library for Intel -based systems 1 Speaker: Alexander Kalinkin Contributing authors: Peter Caday, Kazushige Goto, Louise Huot, Sarah Knepper, Mesut Meterelliyoz, Arthur Araujo
More informationCUSOLVER LIBRARY. DU _v7.0 March 2015
CUSOLVER LIBRARY DU-06709-001_v7.0 March 2015 TABLE OF CONTENTS Chapter 1. Introduction...1 1.1. cusolverdn: Dense LAPACK...2 1.2. cusolversp: Sparse LAPACK...2 1.3. cusolverrf: Refactorization...3 1.4.
More informationSpeedup Altair RADIOSS Solvers Using NVIDIA GPU
Innovation Intelligence Speedup Altair RADIOSS Solvers Using NVIDIA GPU Eric LEQUINIOU, HPC Director Hongwei Zhou, Senior Software Developer May 16, 2012 Innovation Intelligence ALTAIR OVERVIEW Altair
More informationA GPU-based Approximate SVD Algorithm Blake Foster, Sridhar Mahadevan, Rui Wang
A GPU-based Approximate SVD Algorithm Blake Foster, Sridhar Mahadevan, Rui Wang University of Massachusetts Amherst Introduction Singular Value Decomposition (SVD) A: m n matrix (m n) U, V: orthogonal
More informationFaster Code for Free: Linear Algebra Libraries. Advanced Research Compu;ng 22 Feb 2017
Faster Code for Free: Linear Algebra Libraries Advanced Research Compu;ng 22 Feb 2017 Outline Introduc;on Implementa;ons Using them Use on ARC systems Hands on session Conclusions Introduc;on 3 BLAS Level
More informationAccelerated ANSYS Fluent: Algebraic Multigrid on a GPU. Robert Strzodka NVAMG Project Lead
Accelerated ANSYS Fluent: Algebraic Multigrid on a GPU Robert Strzodka NVAMG Project Lead A Parallel Success Story in Five Steps 2 Step 1: Understand Application ANSYS Fluent Computational Fluid Dynamics
More informationMAGMA Library. version 0.1. S. Tomov J. Dongarra V. Volkov J. Demmel
MAGMA Library version 0.1 S. Tomov J. Dongarra V. Volkov J. Demmel 2 -- MAGMA (version 0.1) -- Univ. of Tennessee, Knoxville Univ. of California, Berkeley Univ. of Colorado, Denver June 2009 MAGMA project
More informationACCELERATING CFD AND RESERVOIR SIMULATIONS WITH ALGEBRAIC MULTI GRID Chris Gottbrath, Nov 2016
ACCELERATING CFD AND RESERVOIR SIMULATIONS WITH ALGEBRAIC MULTI GRID Chris Gottbrath, Nov 2016 Challenges What is Algebraic Multi-Grid (AMG)? AGENDA Why use AMG? When to use AMG? NVIDIA AmgX Results 2
More informationA Linear Algebra Library for Multicore/Accelerators: the PLASMA/MAGMA Collection
A Linear Algebra Library for Multicore/Accelerators: the PLASMA/MAGMA Collection Jack Dongarra University of Tennessee Oak Ridge National Laboratory 11/24/2009 1 Gflop/s LAPACK LU - Intel64-16 cores DGETRF
More informationIntel Performance Libraries
Intel Performance Libraries Powerful Mathematical Library Intel Math Kernel Library (Intel MKL) Energy Science & Research Engineering Design Financial Analytics Signal Processing Digital Content Creation
More informationSome notes on efficient computing and high performance computing environments
Some notes on efficient computing and high performance computing environments Abhi Datta 1, Sudipto Banerjee 2 and Andrew O. Finley 3 July 31, 2017 1 Department of Biostatistics, Bloomberg School of Public
More informationAn Extension of the StarSs Programming Model for Platforms with Multiple GPUs
An Extension of the StarSs Programming Model for Platforms with Multiple GPUs Eduard Ayguadé 2 Rosa M. Badia 2 Francisco Igual 1 Jesús Labarta 2 Rafael Mayo 1 Enrique S. Quintana-Ortí 1 1 Departamento
More informationOptimizing the operations with sparse matrices on Intel architecture
Optimizing the operations with sparse matrices on Intel architecture Gladkikh V. S. victor.s.gladkikh@intel.com Intel Xeon, Intel Itanium are trademarks of Intel Corporation in the U.S. and other countries.
More informationAmgX 2.0: Scaling toward CORAL Joe Eaton, November 19, 2015
AmgX 2.0: Scaling toward CORAL Joe Eaton, November 19, 2015 Agenda Introduction to AmgX Current Capabilities Scaling V2.0 Roadmap for the future 2 AmgX Fast, scalable linear solvers, emphasis on iterative
More informationCUDA 7.0 Performance Report. May 2015
CUDA 7.0 Performance Report May 2015 1 CUDA 7.0 Performance Report cufft Fast Fourier Transforms Library cublas Complete BLAS Library cusparse Sparse Matrix Library New in cusolver Linear Solver Library
More informationCUDA Toolkit 5.0 Performance Report. January 2013
CUDA Toolkit 5.0 Performance Report January 2013 CUDA Math Libraries High performance math routines for your applications: cufft Fast Fourier Transforms Library cublas Complete BLAS Library cusparse Sparse
More informationMAGMA. LAPACK for GPUs. Stan Tomov Research Director Innovative Computing Laboratory Department of Computer Science University of Tennessee, Knoxville
MAGMA LAPACK for GPUs Stan Tomov Research Director Innovative Computing Laboratory Department of Computer Science University of Tennessee, Knoxville Keeneland GPU Tutorial 2011, Atlanta, GA April 14-15,
More informationDeveloping a High Performance Software Library with MPI and CUDA for Matrix Computations
Developing a High Performance Software Library with MPI and CUDA for Matrix Computations Bogdan Oancea 1, Tudorel Andrei 2 1 Nicolae Titulescu University of Bucharest, e-mail: bogdanoancea@univnt.ro, Calea
More informationOpenFOAM + GPGPU. İbrahim Özküçük
OpenFOAM + GPGPU İbrahim Özküçük Outline GPGPU vs CPU GPGPU plugins for OpenFOAM Overview of Discretization CUDA for FOAM Link (cufflink) Cusp & Thrust Libraries How Cufflink Works Performance data of
More informationIntel Direct Sparse Solver for Clusters, a research project for solving large sparse systems of linear algebraic equation
Intel Direct Sparse Solver for Clusters, a research project for solving large sparse systems of linear algebraic equation Alexander Kalinkin Anton Anders Roman Anders 1 Legal Disclaimer INFORMATION IN
More informationScientific Computing. Some slides from James Lambers, Stanford
Scientific Computing Some slides from James Lambers, Stanford Dense Linear Algebra Scaling and sums Transpose Rank-one updates Rotations Matrix vector products Matrix Matrix products BLAS Designing Numerical
More informationIntel Math Kernel Library 10.3
Intel Math Kernel Library 10.3 Product Brief Intel Math Kernel Library 10.3 The Flagship High Performance Computing Math Library for Windows*, Linux*, and Mac OS* X Intel Math Kernel Library (Intel MKL)
More informationScheduling of QR Factorization Algorithms on SMP and Multi-core Architectures
Scheduling of Algorithms on SMP and Multi-core Architectures Gregorio Quintana-Ortí Enrique S. Quintana-Ortí Ernie Chan Robert A. van de Geijn Field G. Van Zee quintana@icc.uji.es Universidad Jaime I de
More informationFast and reliable linear system solutions on new parallel architectures
Fast and reliable linear system solutions on new parallel architectures Marc Baboulin Université Paris-Sud Chaire Inria Saclay Île-de-France Séminaire Aristote - Ecole Polytechnique 15 mai 2013 Marc Baboulin
More informationAdrian Tate XK6 / openacc workshop Manno, Mar
Adrian Tate XK6 / openacc workshop Manno, Mar6-7 2012 1 Overview & Philosophy Two modes of usage Contents Present contents Upcoming releases Optimization of libsci_acc Autotuning Adaptation Asynchronous
More informationCray Scientific Libraries. Overview
Cray Scientific Libraries Overview What are libraries for? Building blocks for writing scientific applications Historically allowed the first forms of code re-use Later became ways of running optimized
More informationPARALUTION - a Library for Iterative Sparse Methods on CPU and GPU
- a Library for Iterative Sparse Methods on CPU and GPU Dimitar Lukarski Division of Scientific Computing Department of Information Technology Uppsala Programming for Multicore Architectures Research Center
More informationGPU Programming. Ringberg Theorie Seminar 2010
or How to tremendously accelerate your code? Michael Kraus, Christian Konz Max-Planck-Institut für Plasmaphysik, Garching Ringberg Theorie Seminar 2010 Introduction? GPU? GPUs can do more than just render
More informationIntroduction to GPGPUs and to CUDA programming model: CUDA Libraries
Introduction to GPGPUs and to CUDA programming model: CUDA Libraries www.cineca.it Marzia Rivi m.rivi@cineca.it NVIDIA CUDA Libraries http://developer.nvidia.com/technologies/libraries CUDA Toolkit includes
More informationA Multi-Tiered Optimization Framework for Heterogeneous Computing
A Multi-Tiered Optimization Framework for Heterogeneous Computing IEEE HPEC 2014 Alan George Professor of ECE University of Florida Herman Lam Assoc. Professor of ECE University of Florida Andrew Milluzzi
More informationHigh performance matrix inversion of SPD matrices on graphics processors
High performance matrix inversion of SPD matrices on graphics processors Peter Benner, Pablo Ezzatti, Enrique S. Quintana-Ortí and Alfredo Remón Max-Planck-Institute for Dynamics of Complex Technical Systems
More informationIntel Math Kernel Library (Intel MKL) BLAS. Victor Kostin Intel MKL Dense Solvers team manager
Intel Math Kernel Library (Intel MKL) BLAS Victor Kostin Intel MKL Dense Solvers team manager Intel MKL BLAS/Sparse BLAS Original ( dense ) BLAS available from www.netlib.org Additionally Intel MKL provides
More informationIntel Math Kernel Library
Intel Math Kernel Library Release 7.0 March 2005 Intel MKL Purpose Performance, performance, performance! Intel s scientific and engineering floating point math library Initially only basic linear algebra
More informationi486 or Pentium Windows 3.1 PVM MasPar Thinking Machine CM-5 Intel Paragon IBM SP2 telnet/ftp or rlogin
Hidehiko Hasegawa 1983: University of Library and Information Science, the smallest National university March 1994: Visiting Researcher at icl, University of Tennessee, Knoxville 1994-95 in Japan: a bad
More informationAccelerating GPU kernels for dense linear algebra
Accelerating GPU kernels for dense linear algebra Rajib Nath, Stanimire Tomov, and Jack Dongarra Department of Electrical Engineering and Computer Science, University of Tennessee, Knoxville {rnath1, tomov,
More informationLAPACK. Linear Algebra PACKage. Janice Giudice David Knezevic 1
LAPACK Linear Algebra PACKage 1 Janice Giudice David Knezevic 1 Motivating Question Recalling from last week... Level 1 BLAS: vectors ops Level 2 BLAS: matrix-vectors ops 2 2 O( n ) flops on O( n ) data
More informationBLAS. Basic Linear Algebra Subprograms
BLAS Basic opera+ons with vectors and matrices dominates scien+fic compu+ng programs To achieve high efficiency and clean computer programs an effort has been made in the last few decades to standardize
More informationA scalable approach to solving dense linear algebra problems on hybrid CPU-GPU systems
CONCURRENCY AND COMPUTATION: PRACTICE AND EXPERIENCE Concurrency Computat.: Pract. Exper. () Published online in Wiley Online Library (wileyonlinelibrary.com)..33 A scalable approach to solving dense linear
More informationBrief notes on setting up semi-high performance computing environments. July 25, 2014
Brief notes on setting up semi-high performance computing environments July 25, 2014 1 We have two different computing environments for fitting demanding models to large space and/or time data sets. 1
More informationEnhanced Oil Recovery simulation Performances on New Hybrid Architectures
Renewable energies Eco-friendly production Innovative transport Eco-efficient processes Sustainable resources Enhanced Oil Recovery simulation Performances on New Hybrid Architectures A. Anciaux, J-M.
More informationSolving Dense Linear Systems on Platforms with Multiple Hardware Accelerators
Solving Dense Linear Systems on Platforms with Multiple Hardware Accelerators Francisco D. Igual Enrique S. Quintana-Ortí Gregorio Quintana-Ortí Universidad Jaime I de Castellón (Spain) Robert A. van de
More informationAMS526: Numerical Analysis I (Numerical Linear Algebra)
AMS526: Numerical Analysis I (Numerical Linear Algebra) Lecture 20: Sparse Linear Systems; Direct Methods vs. Iterative Methods Xiangmin Jiao SUNY Stony Brook Xiangmin Jiao Numerical Analysis I 1 / 26
More informationData Partitioning on Heterogeneous Multicore and Multi-GPU systems Using Functional Performance Models of Data-Parallel Applictions
Data Partitioning on Heterogeneous Multicore and Multi-GPU systems Using Functional Performance Models of Data-Parallel Applictions Ziming Zhong Vladimir Rychkov Alexey Lastovetsky Heterogeneous Computing
More informationKrishnan Suresh Associate Professor Mechanical Engineering
Large Scale FEA on the GPU Krishnan Suresh Associate Professor Mechanical Engineering High-Performance Trick Computations (i.e., 3.4*1.22): essentially free Memory access determines speed of code Pick
More informationLinear Algebra Libraries: BLAS, LAPACK, ScaLAPACK, PLASMA, MAGMA
Linear Algebra Libraries: BLAS, LAPACK, ScaLAPACK, PLASMA, MAGMA Shirley Moore svmoore@utep.edu CPS5401 Fall 2012 svmoore.pbworks.com November 8, 2012 1 Learning ObjecNves AOer complenng this lesson, you
More informationHPC with Multicore and GPUs
HPC with Multicore and GPUs Stan Tomov Electrical Engineering and Computer Science Department University of Tennessee, Knoxville COSC 594 Lecture Notes March 22, 2017 1/20 Outline Introduction - Hardware
More informationS0432 NEW IDEAS FOR MASSIVELY PARALLEL PRECONDITIONERS
S0432 NEW IDEAS FOR MASSIVELY PARALLEL PRECONDITIONERS John R Appleyard Jeremy D Appleyard Polyhedron Software with acknowledgements to Mark A Wakefield Garf Bowen Schlumberger Outline of Talk Reservoir
More informationIntel Math Kernel Library (Intel MKL) Sparse Solvers. Alexander Kalinkin Intel MKL developer, Victor Kostin Intel MKL Dense Solvers team manager
Intel Math Kernel Library (Intel MKL) Sparse Solvers Alexander Kalinkin Intel MKL developer, Victor Kostin Intel MKL Dense Solvers team manager Copyright 3, Intel Corporation. All rights reserved. Sparse
More informationBLAS and LAPACK + Data Formats for Sparse Matrices. Part of the lecture Wissenschaftliches Rechnen. Hilmar Wobker
BLAS and LAPACK + Data Formats for Sparse Matrices Part of the lecture Wissenschaftliches Rechnen Hilmar Wobker Institute of Applied Mathematics and Numerics, TU Dortmund email: hilmar.wobker@math.tu-dortmund.de
More informationDense matrix algebra and libraries (and dealing with Fortran)
Dense matrix algebra and libraries (and dealing with Fortran) CPS343 Parallel and High Performance Computing Spring 2018 CPS343 (Parallel and HPC) Dense matrix algebra and libraries (and dealing with Fortran)
More informationPerformance Analysis of BLAS Libraries in SuperLU_DIST for SuperLU_MCDT (Multi Core Distributed) Development
Available online at www.prace-ri.eu Partnership for Advanced Computing in Europe Performance Analysis of BLAS Libraries in SuperLU_DIST for SuperLU_MCDT (Multi Core Distributed) Development M. Serdar Celebi
More informationA Few Numerical Libraries for HPC
A Few Numerical Libraries for HPC CPS343 Parallel and High Performance Computing Spring 2016 CPS343 (Parallel and HPC) A Few Numerical Libraries for HPC Spring 2016 1 / 37 Outline 1 HPC == numerical linear
More informationProgramming Dense Linear Algebra Kernels on Vectorized Architectures
University of Tennessee, Knoxville Trace: Tennessee Research and Creative Exchange Masters Theses Graduate School 5-2013 Programming Dense Linear Algebra Kernels on Vectorized Architectures Jonathan Lawrence
More informationHydrodynamic Computation with Hybrid Programming on CPU-GPU Clusters
Hydrodynamic Computation with Hybrid Programming on CPU-GPU Clusters Tingxing Dong, Veselin Dobrev, Tzanio Kolev, Robert Rieben, Stanimire Tomov, Jack Dongarra Innovative Computing Laboratory, University
More informationTask based parallelization of recursive linear algebra routines using Kaapi
Task based parallelization of recursive linear algebra routines using Kaapi Clément PERNET joint work with Jean-Guillaume DUMAS and Ziad SULTAN Université Grenoble Alpes, LJK-CASYS January 20, 2017 Journée
More informationHigh Performance Linear Algebra
High Performance Linear Algebra Hatem Ltaief Senior Research Scientist Extreme Computing Research Center King Abdullah University of Science and Technology 4th International Workshop on Real-Time Control
More informationNVBLAS LIBRARY. DU _v6.0 February User Guide
NVBLAS LIBRARY DU-06702-001_v6.0 February 2014 User Guide DU-06702-001_v6.0 2 Chapter 1. INTRODUCTION The is a GPU-accelerated Libary that implements BLAS (Basic Linear Algebra Subprograms). It can accelerate
More informationQR Decomposition on GPUs
QR Decomposition QR Algorithms Block Householder QR Andrew Kerr* 1 Dan Campbell 1 Mark Richards 2 1 Georgia Tech Research Institute 2 School of Electrical and Computer Engineering Georgia Institute of
More informationESPRESO ExaScale PaRallel FETI Solver. Hybrid FETI Solver Report
ESPRESO ExaScale PaRallel FETI Solver Hybrid FETI Solver Report Lubomir Riha, Tomas Brzobohaty IT4Innovations Outline HFETI theory from FETI to HFETI communication hiding and avoiding techniques our new
More informationCray Scientific Libraries: Overview and Performance. Cray XE6 Performance Workshop University of Reading Nov 2012
Cray Scientific Libraries: Overview and Performance Cray XE6 Performance Workshop University of Reading 20-22 Nov 2012 Contents LibSci overview and usage BFRAME / CrayBLAS LAPACK ScaLAPACK FFTW / CRAFFT
More informationINTEL MKL Vectorized Compact routines
INTEL MKL Vectorized Compact routines Mesut Meterelliyoz, Peter Caday, Timothy B. Costa, Kazushige Goto, Louise Huot, Sarah Knepper, Arthur Araujo Mitrano, Shane Story 2018 BLIS RETREAT 09/17/2018 OUTLINE
More informationEfficient Multi-GPU CUDA Linear Solvers for OpenFOAM
Efficient Multi-GPU CUDA Linear Solvers for OpenFOAM Alexander Monakov, amonakov@ispras.ru Institute for System Programming of Russian Academy of Sciences March 20, 2013 1 / 17 Problem Statement In OpenFOAM,
More informationParallelization of the QR Decomposition with Column Pivoting Using Column Cyclic Distribution on Multicore and GPU Processors
Parallelization of the QR Decomposition with Column Pivoting Using Column Cyclic Distribution on Multicore and GPU Processors Andrés Tomás 1, Zhaojun Bai 1, and Vicente Hernández 2 1 Department of Computer
More informationGPU-based Parallel Reservoir Simulators
GPU-based Parallel Reservoir Simulators Zhangxin Chen 1, Hui Liu 1, Song Yu 1, Ben Hsieh 1 and Lei Shao 1 Key words: GPU computing, reservoir simulation, linear solver, parallel 1 Introduction Nowadays
More informationHighly Parallel Multigrid Solvers for Multicore and Manycore Processors
Highly Parallel Multigrid Solvers for Multicore and Manycore Processors Oleg Bessonov (B) Institute for Problems in Mechanics of the Russian Academy of Sciences, 101, Vernadsky Avenue, 119526 Moscow, Russia
More informationAdministrative Issues. L11: Sparse Linear Algebra on GPUs. Triangular Solve (STRSM) A Few Details 2/25/11. Next assignment, triangular solve
Administrative Issues L11: Sparse Linear Algebra on GPUs Next assignment, triangular solve Due 5PM, Tuesday, March 15 handin cs6963 lab 3 Project proposals Due 5PM, Wednesday, March 7 (hard
More informationOverview of Intel MKL Sparse BLAS. Software and Services Group Intel Corporation
Overview of Intel MKL Sparse BLAS Software and Services Group Intel Corporation Agenda Why and when sparse routines should be used instead of dense ones? Intel MKL Sparse BLAS functionality Sparse Matrix
More informationThinking Outside of the Tera-Scale Box. Piotr Luszczek
Thinking Outside of the Tera-Scale Box Piotr Luszczek Brief History of Tera-flop: 1997 1997 ASCI Red Brief History of Tera-flop: 2007 Intel Polaris 2007 1997 ASCI Red Brief History of Tera-flop: GPGPU
More informationDense Linear Algebra for Hybrid GPU-Based Systems. Stanimire Tomov Department of Electrical Engineering and Computer Science, University of Tennessee
Chapter 3 Dense Linear Algebra for Hybrid GPU-Based Systems Stanimire Tomov Department of Electrical Engineering and Computer Science, University of Tennessee Jack Dongarra Department of Electrical Engineering
More informationBLASFEO. Gianluca Frison. BLIS retreat September 19, University of Freiburg
University of Freiburg BLIS retreat September 19, 217 Basic Linear Algebra Subroutines For Embedded Optimization performance dgemm_nt 5 4 Intel Core i7 48MQ HP OpenBLAS.2.19 MKL 217.2.174 ATLAS 3.1.3 BLIS.1.6
More informationA GPU Sparse Direct Solver for AX=B
1 / 25 A GPU Sparse Direct Solver for AX=B Jonathan Hogg, Evgueni Ovtchinnikov, Jennifer Scott* STFC Rutherford Appleton Laboratory 26 March 2014 GPU Technology Conference San Jose, California * Thanks
More informationAccelerating GPU Kernels for Dense Linear Algebra
Accelerating GPU Kernels for Dense Linear Algebra Rajib Nath, Stan Tomov, and Jack Dongarra Innovative Computing Lab University of Tennessee, Knoxville July 9, 21 xgemm performance of CUBLAS-2.3 on GTX28
More information(Sparse) Linear Solvers
(Sparse) Linear Solvers Ax = B Why? Many geometry processing applications boil down to: solve one or more linear systems Parameterization Editing Reconstruction Fairing Morphing 2 Don t you just invert
More informationParallelism V. HPC Profiling. John Cavazos. Dept of Computer & Information Sciences University of Delaware
Parallelism V HPC Profiling John Cavazos Dept of Computer & Information Sciences University of Delaware Lecture Overview Performance Counters Profiling PAPI TAU HPCToolkit PerfExpert Performance Counters
More informationCUDA 6.0 Performance Report. April 2014
CUDA 6. Performance Report April 214 1 CUDA 6 Performance Report CUDART CUDA Runtime Library cufft Fast Fourier Transforms Library cublas Complete BLAS Library cusparse Sparse Matrix Library curand Random
More information