© 2011 The MITRE Corporation. All rights reserved. Sharon Sacco / The MITRE Corporation HPEC 2011 Focus 3: GPU.

Slides:



Advertisements
Similar presentations
The HPEC Challenge Benchmark Suite
Advertisements

DEVELOPMENT OF ONLINE EVENT SELECTION IN CBM DEVELOPMENT OF ONLINE EVENT SELECTION IN CBM I. Kisel (for CBM Collaboration) I. Kisel (for CBM Collaboration)
Speed, Accurate and Efficient way to identify the DNA.
Tesla CUDA GPU Accelerates Computing The Right Processor for the Right Task.
CMSC 611: Advanced Computer Architecture
HPEC 2010 Acknowledgments Technical Committee Sponsors
HPCC Mid-Morning Break High Performance Computing on a GPU cluster Dirk Colbry, Ph.D. Research Specialist Institute for Cyber Enabled Discovery.
K-means clustering –An unsupervised and iterative clustering algorithm –Clusters N observations into K clusters –Observations assigned to cluster with.
GPU Computing with CUDA as a focus Christie Donovan.
Particle Filter Speed Up Using a GPU High Performance Embedded Computing Workshop MIT Lincoln Labs By John Sacha & Andrew Shaffer Applied Research Laboratory.
Top500: Red Storm An abstract. Matt Baumert 04/22/2008.
1 Breakout thoughts (compiled with N. Carter): Where will RAMP be in 3-5 Years (What is RAMP, where is it going?) Is it still RAMP if it is mapping onto.
Weekly Report Start learning GPU Ph.D. Student: Leo Lee date: Sep. 18, 2009.
Document Number Here © 2006 The MITRE Corporation. All rights reserved. Holds and Diversions June 22, 2004.
The PTX GPU Assembly Simulator and Interpreter N.M. Stiffler Zheming Jin Ibrahim Savran.
Android is a trademark of Google Inc. Use of this trademark is subject to Google Permissions. Linux is the registered trademark of Linus Torvalds in the.
A Performance and Energy Comparison of FPGAs, GPUs, and Multicores for Sliding-Window Applications From J. Fowers, G. Brown, P. Cooke, and G. Stitt, University.
Accelerating Machine Learning Applications on Graphics Processors Narayanan Sundaram and Bryan Catanzaro Presented by Narayanan Sundaram.
Heterogeneous Computing Dr. Jason D. Bakos. Heterogeneous Computing 2 “Traditional” Parallel/Multi-Processing Large-scale parallel platforms: –Individual.
Contemporary Languages in Parallel Computing Raymond Hummel.
HPEC_GPU_DECODE-1 ADC 8/6/2015 MIT Lincoln Laboratory GPU Accelerated Decoding of High Performance Error Correcting Codes Andrew D. Copeland, Nicholas.
Computing Platform Benchmark By Boonyarit Changaival King Mongkut’s University of Technology Thonburi (KMUTT)
1 1 © 2011 The MathWorks, Inc. Accelerating Bit Error Rate Simulation in MATLAB using Graphics Processors James Lebak Brian Fanous Nick Moore High-Performance.
HPCC Mid-Morning Break Dirk Colbry, Ph.D. Research Specialist Institute for Cyber Enabled Discovery Introduction to the new GPU (GFX) cluster.
© 2010 The MITRE Corporation. All rights reserved. Session 2: Many Core Sharon Sacco / The MITRE Corporation HPEC 2010 Approved for Public Release:
Motivation “Every three minutes a woman is diagnosed with Breast cancer” (American Cancer Society, “Detailed Guide: Breast Cancer,” 2006) Explore the use.
GPU-accelerated Evaluation Platform for High Fidelity Networking Modeling 11 December 2007 Alex Donkers Joost Schutte.
Scalable Data Clustering with GPUs Andrew D. Pangborn Thesis Defense Rochester Institute of Technology Computer Engineering Department Friday, May 14 th.
GPU – Graphic Processing Unit
Chapter 2 Computer Clusters Lecture 2.3 GPU Clusters for Massive Paralelism.
MATLAB and the GPU Who is AccelerEyes? What’s a GPU?
GPUs and Accelerators Jonathan Coens Lawrence Tan Yanlin Li.
By Arun Bhandari Course: HPC Date: 01/28/12. GPU (Graphics Processing Unit) High performance many core processors Only used to accelerate certain parts.
How do you know your GPU or manycore program is correct? Prof. Miriam Leeser Department of Electrical and Computer Engineering Northeastern University.
Efficient FPGA Implementation of QR
Helmholtz International Center for CBM – Online Reconstruction and Event Selection Open Charm Event Selection – Driving Force for FEE and DAQ Open charm:
CS6963 L15: Design Review and CUBLAS Paper Discussion.
Algorithm Engineering „GPGPU“ Stefan Edelkamp. Graphics Processing Units  GPGPU = (GP)²U General Purpose Programming on the GPU  „Parallelism for the.
4 November 2008NGS Innovation Forum '08 11 NGS Clearspeed Resources Clearspeed and other accelerator hardware on the NGS Steven Young Oxford NGS Manager.
© David Kirk/NVIDIA and Wen-mei W. Hwu Urbana, Illinois, August 18-22, 2008 VSCSE Summer School 2008 Accelerators for Science and Engineering Applications:
1 © 2012 The MathWorks, Inc. Parallel computing with MATLAB.
HPEC-1 MIT Lincoln Laboratory Session 1: GPU: Graphics Processing Units Miriam Leeser / Northeastern University HPEC Conference 15 September 2010.
Accelerating a Software Radio Astronomy Correlator By Andrew Woods Supervisor: Prof. Inggs & Dr Langman.
Radar Pulse Compression Using the NVIDIA CUDA SDK
Cousins HPEC 2002 Session 4: Emerging High Performance Software David Cousins Division Scientist High Performance Computing Dept. Newport,
System Architecture: Near, Medium, and Long-term Scalable Architectures Panel Discussion Presentation Sandia CSRI Workshop on Next-generation Scalable.
SCHOOL OF ELECTRICAL AND COMPUTER ENGINEERING | GEORGIA INSTITUTE OF TECHNOLOGY HPCDB Satisfying Data-Intensive Queries Using GPU Clusters November.
An Execution Model for Heterogeneous Multicore Architectures Gregory Diamos, Andrew Kerr, and Sudhakar Yalamanchili Computer Architecture and Systems Laboratory.
CDVS on mobile GPUs MPEG 112 Warsaw, July Our Challenge CDVS on mobile GPUs  Compute CDVS descriptor from a stream video continuously  Make.
Computer Science Department, Duke UniversityPhD Defense TalkMay 4, 2005 FAST PATTERN MATCHING IN 3D IMAGES ON GPUS Patrick Eibl, Dennis Healy, Nikos P.
GPUs – Graphics Processing Units Applications in Graphics Processing and Beyond COSC 3P93 – Parallel ComputingMatt Peskett.
Sudhanshu Khemka.  Treats each document as a vector with one component corresponding to each term in the dictionary  Weight of a component is calculated.
AUTO-GC: Automatic Translation of Data Mining Applications to GPU Clusters Wenjing Ma Gagan Agrawal The Ohio State University.
Accelerating K-Means Clustering with Parallel Implementations and GPU Computing Janki Bhimani Miriam Leeser Ningfang Mi
Heterogeneous Processing KYLE ADAMSKI. Overview What is heterogeneous processing? Why it is necessary Issues with heterogeneity CPU’s vs. GPU’s Heterogeneous.
HPEC-1 SMHS 7/7/2016 MIT Lincoln Laboratory Focus 3: Cell Sharon Sacco / MIT Lincoln Laboratory HPEC Workshop 19 September 2007 This work is sponsored.
A next-generation many-core processor with reliability, fault tolerance and adaptive power management features optimized for embedded.
Two-Dimensional Phase Unwrapping On FPGAs And GPUs
Dynamo: A Runtime Codesign Environment
HPEC 2007 Acknowledgments Technical Committee Sponsors
M. Richards1 ,D. Campbell1 (presenter), R. Judd2, J. Lebak3, and R
SmartCell: A Coarse-Grained Reconfigurable Architecture for High Performance and Low Power Embedded Computing Xinming Huang Depart. Of Electrical and Computer.
Session 4: Reconfigurable Computing
Learn about MATLAB Engineers – not sales!
דיני חברות ד"ר ויקטור ח. בוגנים
محاسبات عددی و برنامه نویسی
60 MINUTES REMAINING.
It’s Time for a Break!!!.
Graphics Processing Unit
Presentation transcript:

© 2011 The MITRE Corporation. All rights reserved. Sharon Sacco / The MITRE Corporation HPEC 2011 Focus 3: GPU

© 2011 The MITRE Corporation. All rights reserved. ■FPGA interest has dropped, but interest remains ■STI Cell BE had a lot of interest and disappeared ■GPUs now dominate the specialized processor abstracts HPEC Specialized Processor Abstracts

© 2011 The MITRE Corporation. All rights reserved. ■INVITED: How do you know your GPU or manycore program is correct? –Miriam Leeser / Northeastern University ■Accelerating Bit Error Rate Simulation in MATLAB with Graphics Processors –James Lebak / The Mathworks ■Graphics Processor Clusters for High Speed Backpropagation –Daniel Campbell / Georgia Tech Research Institute ■Break (15 minutes) Focus 3: GPU Agenda

© 2011 The MITRE Corporation. All rights reserved. ■Adaptable and Efficient Variable Size Template Matching in CUDA –Andrew Shaffer / Applied Research Laboratory, Penn State University ■Android Application for Language Identification –Pedro Torres-Carrasquillo / MIT Lincoln Laboratory Focus 3: GPU Agenda (cont.)