Big Data Optimization: Recent Developments and Challenges

The main objective of this book is to provide the necessary background to work with big data by introducing some novel optimization algorithms and codes capable of working in the big data setting as well as introducing some applications in big data optimization for both academics and practitioners i...

Full description

Corporate Author: SpringerLink (Online service)
Other Authors: Emrouznejad, Ali. (Editor, http://id.loc.gov/vocabulary/relators/edt)
Language:English
Published: Cham : Springer International Publishing : Imprint: Springer, 2016.
Edition:1st ed. 2016.
Series:Studies in Big Data, 18
Subjects:
Online Access:https://doi.org/10.1007/978-3-319-30265-2
Table of Contents:
  • Big data: Who, What and Where? Social, Cognitive and Journals Map of Big Data Publications with Focus on Optimization
  • Setting up a Big Data Project: Challenges, Opportunities, Technologies and Optimization
  • Optimizing Intelligent Reduction Techniques for Big Data
  • Performance Tools for Big Data Optimization
  • Optimising Big Images
  • Interlinking Big Data to Web of Data
  • Topology, Big Data and Optimization
  • Applications of Big Data Analytics Tools for Data Management
  • Optimizing Access Policies for Big Data Repositories: Latency Variables and the Genome Commons
  • Big Data Optimization via Next Generation Data Center Architecture
  • Big Data Optimization within Real World Monitoring Constraints
  • Smart Sampling and Optimal Dimensionality Reduction of Big Data Using Compressed Sensing
  • Optimized Management of BIG Data Produced in Brain Disorder Rehabilitation
  • Big Data Optimization in Maritime Logistics
  • Big Network Analytics Based on Nonconvex Optimization
  • Large-scale and Big Optimization Based on Hadoop
  • Computational Approaches in Large–Scale Unconstrained Optimization
  • Numerical Methods for Large-Scale Nonsmooth Optimization
  • Metaheuristics for Continuous Optimization of High-Dimensional Problems: State of the Art and Perspectives
  • Convergent Parallel Algorithms for Big Data Optimization Problems.