Development Methodologies for Big Data Analytics Systems Development Methodologies for Big Data Analytics Systems

Development Methodologies for Big Data Analytics Systems

Plan-driven, Agile, Hybrid, Lightweight Approaches

Manuel Mora y otros
    • USD 139.99
    • USD 139.99

Descripción editorial

This book presents research in big data analytics (BDA) for business of all sizes. The authors analyze problems presented in the application of BDA in some businesses through the study of development methodologies based on the three approaches – 1) plan-driven, 2) agile and 3) hybrid lightweight. The authors first describe BDA systems and how they emerged with the convergence of Statistics, Computer Science, and Business Intelligent Analytics with the practical aim to provide concepts, models, methods and tools required for exploiting the wide variety, volume, and velocity of available business internal and external data - i.e. Big Data – and provide decision-making value to decision-makers.  The book presents high-quality conceptual and empirical research-oriented chapters on plan-driven, agile, and hybrid lightweight development methodologies and relevant supporting topics for BDA systems suitable to be used for large-, medium-, and small-sized business organizations.Addresses the mathematical, statistical and computational foundations and techniques of Big Data Analytics;Includes specific research problems in the development methodologies from a Systems and Software perspective;Presents successful BDA systems applied in diverse domains such as Healthcare, Logistics, Finance, Marketing, Retail, and Education.

GÉNERO
Técnicos y profesionales
PUBLICADO
2023
3 de noviembre
IDIOMA
EN
Inglés
EXTENSIÓN
296
Páginas
EDITORIAL
Springer International Publishing
VENDEDOR
Springer Nature B.V.
TAMAÑO
19.5
MB
Engineering and Management of Data Science, Analytics, and AI/ML Projects Engineering and Management of Data Science, Analytics, and AI/ML Projects
2025
Engineering and Management of Data Centers Engineering and Management of Data Centers
2017
Engineering and Management of IT-based Service Systems Engineering and Management of IT-based Service Systems
2013