Stochastic Optimization for Large-scale Machine Learning (e-bog) af Chauhan, Vinod Kumar
Chauhan, Vinod Kumar (forfatter)

Stochastic Optimization for Large-scale Machine Learning e-bog

436,85 DKK (inkl. moms 546,06 DKK)
Advancements in the technology and availability of data sources have led to the `Big Data' era. Working with large data offers the potential to uncover more fine-grained patterns and take timely and accurate decisions, but it also creates a lot of challenges such as slow training and scalability of machine learning models. One of the major challenges in machine learning is to develop efficient ...
E-bog 436,85 DKK
Forfattere Chauhan, Vinod Kumar (forfatter)
Forlag CRC Press
Udgivet 18 november 2021
Længde 158 sider
Genrer UMB
Sprog English
Format pdf
Beskyttelse LCP
ISBN 9781000505535
Advancements in the technology and availability of data sources have led to the `Big Data' era. Working with large data offers the potential to uncover more fine-grained patterns and take timely and accurate decisions, but it also creates a lot of challenges such as slow training and scalability of machine learning models. One of the major challenges in machine learning is to develop efficient and scalable learning algorithms, i.e., optimization techniques to solve large scale learning problems.Stochastic Optimization for Large-scale Machine Learning identifies different areas of improvement and recent research directions to tackle the challenge. Developed optimisation techniques are also explored to improve machine learning algorithms based on data access and on first and second order optimisation methods.Key Features:Bridges machine learning and Optimisation.Bridges theory and practice in machine learning.Identifies key research areas and recent research directions to solve large-scale machine learning problems.Develops optimisation techniques to improve machine learning algorithms for big data problems.The book will be a valuable reference to practitioners and researchers as well as students in the field of machine learning.