Embedded Computing for High Performance Embedded Computing for High Performance

Embedded Computing for High Performance

Efficient Mapping of Computations Using Customization, Code Transformations and Compilation

João Manuel Paiva Cardoso 및 다른 저자
    • US$79.99
    • US$79.99

출판사 설명

Embedded Computing for High Performance: Design Exploration and Customization Using High-level Compilation and Synthesis Tools provides a set of real-life example implementations that migrate traditional desktop systems to embedded systems. Working with popular hardware, including Xilinx and ARM, the book offers a comprehensive description of techniques for mapping computations expressed in programming languages such as C or MATLAB to high-performance embedded architectures consisting of multiple CPUs, GPUs, and reconfigurable hardware (FPGAs).

The authors demonstrate a domain-specific language (LARA) that facilitates retargeting to multiple computing systems using the same source code. In this way, users can decouple original application code from transformed code and enhance productivity and program portability.

After reading this book, engineers will understand the processes, methodologies, and best practices needed for the development of applications for high-performance embedded computing systems.



- Focuses on maximizing performance while managing energy consumption in embedded systems

- Explains how to retarget code for heterogeneous systems with GPUs and FPGAs

- Demonstrates a domain-specific language that facilitates migrating and retargeting existing applications to modern systems

- Includes downloadable slides, tools, and tutorials

장르
컴퓨터 및 인터넷
출시일
2017년
6월 13일
언어
EN
영어
길이
320
페이지
출판사
Morgan Kaufmann
판매자
Elsevier Ltd.
크기
54.5
MB
Languages and Compilers for Parallel Computing Languages and Compilers for Parallel Computing
2008년
Scaling OpenMP for Exascale Performance and Portability Scaling OpenMP for Exascale Performance and Portability
2017년
Data Parallel C++ Data Parallel C++
2020년
Evolving OpenMP in an Age of Extreme Parallelism Evolving OpenMP in an Age of Extreme Parallelism
2009년
Intel Xeon Phi Coprocessor High Performance Programming Intel Xeon Phi Coprocessor High Performance Programming
2013년
Multicore and GPU Programming Multicore and GPU Programming
2014년