Journal Article10.1145/3282307
A new golden age for computer architecture
630
TL;DR: Innovations like domain-specific hardware, enhanced security, open instruction sets, and agile chip development will lead the way.
read more
Abstract: Innovations like domain-specific hardware, enhanced security, open instruction sets, and agile chip development will lead the way.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
AI Chips: What They Are and Why They Matter
Saif M. Khan,Alexander Mann +1 more
- 01 Apr 2020
TL;DR: The success of modern AI techniques relies on computation on a scale unimaginable even a few years ago, so how these chips work, why they have proliferated, and why they matter are explained.
Redesigning and Optimizing UCSF DOCK3.7 on Sunway TaihuLight
TL;DR: Wang et al. as discussed by the authors ported and optimized UCSF DOCK3.7 on the Sunway TaihuLight supercomputer and presented a new binary file format to replace the mol2db2 file format for ligand storage and adopt xzip rather than gzip to compress ligand files.
Generating Posit-Based Accelerators With High-Level Synthesis
TL;DR: This paper incorporates the posit data type into the high-level synthesis (HLS) design process, so that it can generate the acrfull RTL implementation directly from a given behavioral specification, but using posit numbers instead of the classical floating-point notations.
Effortless Locality on Data Systems Using Relational Fabric
Tarikul Islam Papon,Ju Hyoung Mun,Konstantinos Karatsenidis,Shahin Roozkhosh,Denis Hoornaert,Ahmed Sanaullah,Ulrich Drepper,Renato Mancuso,M A Athanassoulis +8 more
TL;DR: Effortless locality on data systems using relational fabric achieves efficient analytics without data duplication or layout conversion.
RISC-V RVV efficiency for ANN algorithms
Konstantin Rumyantsev,Pavel Yakovlev,Andrey Gorshkov,Andrey P. Sokolov +3 more
TL;DR: This study evaluates the efficiency of RISC-V's RVV extension for Approximate Nearest Neighbors (ANN) algorithms, optimizing them for parallelization and identifying the best configuration for maximum theoretical performance on RISC-V processors.
References
•Book
Computer Architecture: A Quantitative Approach
John L. Hennessy,David A. Patterson +1 more
- 01 Dec 1989
TL;DR: This best-selling title, considered for over a decade to be essential reading for every serious student and practitioner of computer design, has been updated throughout to address the most important trends facing computer designers today.
12.6K
Cramming More Components Onto Integrated Circuits
Gordon E. Moore
- 01 Jan 1998
TL;DR: Integrated circuits will lead to such wonders as home computers or at least terminals connected to a central computer, automatic controls for automobiles, and personal portable communications equipment as mentioned in this paper. But the biggest potential lies in the production of large systems.
•Journal Article
Cramming more components onto integrated circuits
TL;DR: The future of integrated electronics is the future of electronics itself, and the advantages of integration will bring about a proliferation of electronics, pushing this science into many new areas.
6.6K
•Journal Article
Cramming More Components onto Integrated Circuits
TL;DR: Integrated circuits will lead to such wonders as home computers or at least terminals connected to a central computer, automatic controls for automobiles, and personal portable communications equipment as discussed by the authors. But the biggest potential lies in the production of large systems.
6.5K
•Posted Content
In-Datacenter Performance Analysis of a Tensor Processing Unit
Norman P. Jouppi,Cliff Young,Nishant Patil,David A. Patterson,Gaurav Agrawal,Raminder Bajwa,Sarah Bates,Suresh Bhatia,Nan Boden,Albert T. Borchers,Rick Boyle,Pierre-luc Cantin,Clifford Chao,Christopher Aaron Clark,Jeremy Coriell,Michael J. Daley,Matt Dau,Jeffrey Dean,Ben Gelb,Tara Vazir Ghaemmaghami,Rajendra Gottipati,William John Gulland,Robert Hagmann,C. Richard Ho,Doug Hogberg,John Hu,Robert Hundt,D. Hurt,Julian Ibarz,Aaron Jaffey,Alek Jaworski,Alexander Kaplan,Khaitan Harshit,Andy Koch,Naveen Kumar,Steve Lacy,James Laudon,James Law,Diemthu Le,Chris Leary,Zhuyuan Liu,Kyle Lucke,Alan Lundin,Gordon MacKean,Adriana Maggiore,Maire Mahony,Kieran Miller,Rahul Nagarajan,Ravi Narayanaswami,Ray Ni,Kathy Nix,Thomas Norrie,Mark Omernick,Narayana Penukonda,Andrew Everett Phelps,Jonathan Ross,Matt Ross,Amir Salek,Emad Samadiani,Chris Severn,Gregory Sizikov,Matthew Snelham,Jed Souter,Dan Steinberg,Andy Swing,Mercedes Tan,Gregory Michael Thorson,Bo Tian,Horia Toma,Erick Tuttle,Vijay K. Vasudevan,Richard Walter,Walter Wang,Eric Wilcox,Doe Hyun Yoon +74 more
TL;DR: This paper evaluates a custom ASIC-called a Tensor Processing Unit (TPU)-deployed in datacenters since 2015 that accelerates the inference phase of neural networks (NN) and compares it to a server-class Intel Haswell CPU and an Nvidia K80 GPU, which are contemporaries deployed in the samedatacenters.
Related Papers (5)
Norman P. Jouppi,Cliff Young,Nishant Patil,David A. Patterson,Gaurav Agrawal,Raminder Bajwa,Sarah Bates,Suresh Bhatia,Nan Boden,Albert T. Borchers,Rick Boyle,Pierre-luc Cantin,Clifford Chao,Christopher Aaron Clark,Jeremy Coriell,Michael J. Daley,Matt Dau,Jeffrey Dean,Ben Gelb,Tara Vazir Ghaemmaghami,Rajendra Gottipati,William John Gulland,Robert Hagmann,C. Richard Ho,Doug Hogberg,John Hu,Robert Hundt,D. Hurt,Julian Ibarz,Aaron Jaffey,Alek Jaworski,Alexander Kaplan,Khaitan Harshit,Daniel Killebrew,Andy Koch,Naveen Kumar,Steve Lacy,James Laudon,James Law,Diemthu Le,Chris Leary,Zhuyuan Liu,Kyle Lucke,Alan Lundin,Gordon MacKean,Adriana Maggiore,Maire Mahony,Kieran Miller,Rahul Nagarajan,Ravi Narayanaswami,Ray Ni,Kathy Nix,Thomas Norrie,Mark Omernick,Narayana Penukonda,Andrew Everett Phelps,Jonathan Ross,Matt Ross,Amir Salek,Emad Samadiani,Chris Severn,Gregory Sizikov,Matthew Snelham,Jed Souter,Dan Steinberg,Andy Swing,Mercedes Tan,Gregory Michael Thorson,Bo Tian,Horia Toma,Erick Tuttle,Vijay K. Vasudevan,Richard Walter,Walter Wang,Eric Wilcox,Doe Hyun Yoon +75 more
- 24 Jun 2017
Kaiming He,Xiangyu Zhang,Shaoqing Ren,Jian Sun +3 more
- 27 Jun 2016