66

Deep Learning and Machine Learning: Advancing Big Data Analytics and Management with Design Patterns

Keyu Chen
Ziqian Bi
Tianyang Wang
Yizhu Wen
Pohsun Feng
Qian Niu
Junyu Liu
Benji Peng
Sen Zhang
Ming Li
Jiawei Xu
Jinlang Wang
Xinyuan Song
Ming Liu
Main:136 Pages
Bibliography:1 Pages
Appendix:1 Pages
Abstract

This book, Design Patterns in Machine Learning and Deep Learning: Advancing Big Data Analytics Management, presents a comprehensive study of essential design patterns tailored for large-scale machine learning and deep learning applications. The book explores the application of classical software engineering patterns, Creational, Structural, Behavioral, and Concurrency Patterns, to optimize the development, maintenance, and scalability of big data analytics systems. Through practical examples and detailed Python implementations, it bridges the gap between traditional object-oriented design patterns and the unique demands of modern data analytics environments. Key design patterns such as Singleton, Factory, Observer, and Strategy are analyzed for their impact on model management, deployment strategies, and team collaboration, providing invaluable insights into the engineering of efficient, reusable, and flexible systems. This volume is an essential resource for developers, researchers, and engineers aiming to enhance their technical expertise in both machine learning and software design.

View on arXiv
Comments on this paper