• Earn real money by being active: Hello Guest, earn real money by simply being active on the forum — post quality content, get reactions, and help the community. Once you reach the minimum credit amount, you’ll be able to withdraw your balance directly. Learn how it works.

Hardware & Software Parallel and High Performance Computing

dEEpEst

☣☣ In The Depths ☣☣
Staff member
Administrator
Super Moderator
Hacker
Specter
Crawler
Shadow
Joined
Mar 29, 2018
Messages
13,860
Solutions
4
Reputation
27
Reaction score
45,546
Points
1,813
Credits
55,090
‎7 Years of Service‎
 
56%
71zR9qNbLHL._SL1500_.jpg

Parallel and High Performance Computing​

Parallel and High Performance Computing offers techniques guaranteed to boost your code’s effectiveness.

Summary
Complex calculations, like training deep learning models or running large-scale simulations, can take an extremely long time. Efficient parallel programming can save hours—or even days—of computing time. Parallel and High Performance Computing shows you how to deliver faster run-times, greater scalability, and increased energy efficiency to your programs by mastering parallel techniques for multicore processor and GPU hardware.

About the technology
Write fast, powerful, energy efficient programs that scale to tackle huge volumes of data. Using parallel programming, your code spreads data processing tasks across multiple CPUs for radically better performance. With a little help, you can create software that maximizes both speed and efficiency.

About the book
Parallel and High Performance Computing offers techniques guaranteed to boost your code’s effectiveness. You’ll learn to evaluate hardware architectures and work with industry standard tools such as OpenMP and MPI. You’ll master the data structures and algorithms best suited for high performance computing and learn techniques that save energy on handheld devices. You’ll even run a massive tsunami simulation across a bank of GPUs.

What's inside

Planning a new parallel project
Understanding differences in CPU and GPU architecture
Addressing underperforming kernels and loops
Managing applications with batch scheduling

About the reader
For experienced programmers proficient with a high-performance computing language like C, C++, or Fortran.

About the author
Robert Robey works at Los Alamos National Laboratory and has been active in the field of parallel computing for over 30 years. Yuliana Zamora is currently a PhD student and Siebel Scholar at the University of Chicago, and has lectured on programming modern hardware at numerous national conferences.

Table of Contents
PART 1 INTRODUCTION TO PARALLEL COMPUTING
1 Why parallel computing?
2 Planning for parallelization
3 Performance limits and profiling
4 Data design and performance models
5 Parallel algorithms and patterns
PART 2 CPU: THE PARALLEL WORKHORSE
6 Vectorization: FLOPs for free
7 OpenMP that performs
8 MPI: The parallel backbone
PART 3 GPUS: BUILT TO ACCELERATE
9 GPU architectures and concepts
10 GPU programming model
11 Directive-based GPU programming
12 GPU languages: Getting down to basics
13 GPU profiling and tools
PART 4 HIGH PERFORMANCE COMPUTING ECOSYSTEMS
14 Affinity: Truce with the kernel
15 Batch schedulers: Bringing order to chaos
16 File operations for a parallel world
17 Tools and resources for better code

More info
This link is hidden for visitors. Please Log in or register now.
Download


 
Back
Top