High Performance Computing for Big Data

Methodologies and Applications
 
Kiadás sorszáma: 1
Kiadó: Chapman and Hall
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GBP 44.99
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17 384 (16 556 Ft + 5% áfa )
Kedvezmény(ek): 20% (kb. 4 346 Ft)
A kedvezmény érvényes eddig: 2024. június 30.
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Rövid leírás:

This book presents state-of-the-art research, methodologies, and applications of high performance computing for big data applications. It covers fundamental issues in Big Data research, including emerging architectures for data-intensive applications, novel analytical strategies to boost data processing, and cutting-edge applications.

Hosszú leírás:



High-Performance Computing for Big Data: Methodologies and Applications explores emerging high-performance architectures for data-intensive applications, novel efficient analytical strategies to boost data processing, and cutting-edge applications in diverse fields, such as machine learning, life science, neural networks, and neuromorphic engineering.





The book is organized into two main sections. The first section covers Big Data architectures, including cloud computing systems, and heterogeneous accelerators. It also covers emerging 3D IC design principles for memory architectures and devices. The second section of the book illustrates emerging and practical applications of Big Data across several domains, including bioinformatics, deep learning, and neuromorphic engineering.



Features







  • Covers a wide range of Big Data architectures, including distributed systems like Hadoop/Spark






  • Includes accelerator-based approaches for big data applications such as GPU-based acceleration techniques, and hardware acceleration such as FPGA/CGRA/ASICs






  • Presents emerging memory architectures and devices such as NVM, STT- RAM, 3D IC design principles






  • Describes advanced algorithms for different big data application domains






  • Illustrates novel analytics techniques for Big Data applications, scheduling, mapping, and partitioning methodologies






Featuring contributions from leading experts, this book presents state-of-the-art research on the methodologies and applications of high-performance computing for big data applications.





About the Editor





Dr. Chao Wang is an Associate Professor in the School of Computer Science at the University of Science and Technology of China. He is the Associate Editor of ACM Transactions on Design Automations for Electronics Systems (TODAES), Applied Soft Computing, Microprocessors and Microsystems, IET Computers & Digital Techniques, and International Journal of Electronics. Dr. Chao Wang was the recipient of Youth Innovation Promotion Association, CAS, ACM China Rising Star Honorable Mention (2016), and best IP nomination of DATE 2015. He is now on the CCF Technical Committee on Computer Architecture, CCF Task Force on Formal Methods. He is a Senior Member of IEEE, Senior Member of CCF, and a Senior Member of ACM.





 



Tartalomjegyzék:

Section I?Big Data Architectures





Chapter 1 ? Dataflow Model for Cloud Computing Frameworks in Big Data



Dong Dai, Yong Chen, and Gangyong Jia





Chapter 2 ? Design of a Processor Core Customized for Stencil Computation



Youyang Zhang, Yanhua Li, and Youhui Zhang





Chapter 3 ? Electromigration Alleviation Techniques for 3D Integrated Circuits



Yuanqing Cheng, Aida Todri-Sanial, Alberto Bosio, Luigi Dilillo, Patrick Girard, Arnaud Virazel, Pascal Vivet, and Marc Belleville





Chapter 4 ? A 3D Hybrid Cache Design for CMP Architecture for Data-Intensive Applications



Ing-Chao Lin, Jeng-Nian Chiou, and Yun-Kae Law





Section II?Emerging Big Data Applications





Chapter 5 ? Matrix Factorization for Drug?Target Interaction Prediction



Yong Liu, Min Wu, Xiao-Li Li, and Peilin Zhao





Chapter 6 ? Overview of Neural Network Accelerators



Yuntao Lu, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 7 ? Acceleration for Recommendation Algorithms in Data Mining



Chongchong Xu, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 8 ? Deep Learning Accelerators



Yangyang Zhao, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 9 ? Recent Advances for Neural Networks Accelerators and Optimizations



Fan Sun, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 10 ? Accelerators for Clustering Applications in Machine Learning



Yiwei Zhang, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 11 ? Accelerators for Classification Algorithms in Machine Learning



Shiming Lei, Chao Wang, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou





Chapter 12 ? Accelerators for Big Data Genome Sequencing



Haijie Fang, Chao Wang, Shiming Lei, Lei Gong, Xi Li, Aili Wang, and Xuehai Zhou