Signal Processing and Networking for Big Data Applications
This unique text helps make sense of big data in engineering applications using tools and techniques from signal processing. It presents fundamental signal processing theories and software implementations, reviews current research trends and challenges, and describes the techniques used for analysis, design and optimization. Readers will learn about key theoretical issues such as data modelling and representation, scalable and low-complexity information processing and optimization, tensor and sublinear algorithms, and deep learning and software architecture, and their application to a wide range of engineering scenarios. Applications discussed in detail include wireless networking, smart grid systems, and sensor networks and cloud computing. This is the ideal text for researchers and practising engineers wanting to solve practical problems involving large amounts of data, and for students looking to grasp the fundamentals of big data analytics.
- The first comprehensive book on the use of signal processing for big data applications
- Covers a wide range of techniques for design, analysis and optimization
- Discusses applications in areas such as machine learning, networking and energy systems
Reviews & endorsements
'A very nice balanced treatment over two large-scale signal processing aspects: mathematical backgrounds versus big data applications, with a strong flavor of distributed optimization and computation.' Shuguang Cui, University of California, Davis
Product details
April 2017Hardback
9781107124387
474 pages
253 × 179 × 22 mm
0.89kg
91 b/w illus. 11 tables
Available
Table of Contents
- Part I. Overview of Big Data Applications:
- 1. Introduction
- 2. Data parallelism: the supporting architecture
- Part II. Methodology and Mathematical Background:
- 3. First order methods
- 4. Sparse optimization
- 5. Sublinear algorithms
- 6. Tensor for big data
- 7. Deep learning and applications
- Part III. Big Data Applications:
- 8. Compressive sensing based big data analysis
- 9. Distributed large-scale optimization
- 10. Optimization of finite sums
- 11. Big data optimization for communication networks
- 12. Big data optimization for smart grid systems
- 13. Processing large data set in MapReduce
- 14. Massive data collection using wireless sensor networks.