ISBN13: | 9780367374532 |
ISBN10: | 0367374536 |
Binding: | Hardback |
No. of pages: | 416 pages |
Size: | 234x156 mm |
Language: | English |
Illustrations: | 142 Illustrations, black & white; 64 Illustrations, color; 1 Halftones, color; 142 Line drawings, black & white; 63 Line drawings, color; 15 Tables, black & white |
700 |
Electrical engineering and telecommunications, precision engineering
Theory of computing, computing in general
Data management in computer systems
Hardware and operating systems in general
Computer architecture, logic design
Supercomputers
Operating systems and graphical user interfaces
Computer programming in general
Software development
Computer networks in general
Database management softwares
Safety and health aspects of computing
Environmental sciences
Electrical engineering and telecommunications, precision engineering (charity campaign)
Theory of computing, computing in general (charity campaign)
Data management in computer systems (charity campaign)
Hardware and operating systems in general (charity campaign)
Computer architecture, logic design (charity campaign)
Supercomputers (charity campaign)
Operating systems and graphical user interfaces (charity campaign)
Computer programming in general (charity campaign)
Software development (charity campaign)
Computer networks in general (charity campaign)
Database management softwares (charity campaign)
Safety and health aspects of computing (charity campaign)
Environmental sciences (charity campaign)
Domain-Specific Computer Architectures for Emerging Applications
GBP 100.00
Click here to subscribe.
This book explores the latest research in high performance domain-specific computer architectures for emerging applications, including Machine Learning and Neural Networks applications. The book discusses domain specific computing architectures and considers research issues related to the state-of-the art architectures in emerging domains.
With the end of Moore?s Law, domain-specific architecture (DSA) has become a crucial mode of implementing future computing architectures. This book discusses the system-level design methodology of DSAs and their applications, providing a unified design process that guarantees functionality, performance, energy efficiency, and real-time responsiveness for the target application.
DSAs often start from domain-specific algorithms or applications, analyzing the characteristics of algorithmic applications, such as computation, memory access, and communication, and proposing the heterogeneous accelerator architecture suitable for that particular application. This book places particular focus on accelerator hardware platforms and distributed systems for various novel applications, such as machine learning, data mining, neural networks, and graph algorithms, and also covers RISC-V open-source instruction sets. It briefly describes the system design methodology based on DSAs and presents the latest research results in academia around domain-specific acceleration architectures.
Providing cutting-edge discussion of big data and artificial intelligence scenarios in contemporary industry and typical DSA applications, this book appeals to industry professionals as well as academicians researching the future of computing in these areas.
Preface. 1 Overview of Domain?Specific Computing. 2 Machine Learning Algorithms and Hardware Accelerator Customization. 3 Hardware Accelerator Customization for Data Mining Recommendation Algorithms. 4 Customization and Optimization of Distributed Computing Systems for Recommendation Algorithms. 5 Hardware Customization for Clustering Algorithms. 6 Hardware Accelerator Customization Techniques for Graph Algorithms. 7 Overview of Hardware Acceleration Methods for Neural Network Algorithms. 8 Customization of FPGA?Based Hardware Accelerators for Deep Belief Networks. 9 FPGA?Based Hardware Accelerator Customization for Recurrent Neural Networks. 10 Hardware Customization/Acceleration Techniques for Impulse Neural Networks. 11 Accelerators for Big Data Genome Sequencing. 12 RISC?V Open Source Instruction Set and Architecture. 13 Compilation Optimization Methods in the Customization of Reconfigurable Accelerators Index.