This book focuses in detail on data science and data analysis and
emphasizes the importance of data engineering and data management in
the design of big data applications. The author uses patterns
discovered in a collection of big data applications to provide design
principles for hypothesis generation, integrating big data processing
and management, machine learning and data mining techniques. The book
proposes and explains innovative principles for interpreting
hypotheses by integrating micro-explanations (those based on the
explanation of analytical models and individual decisions within them)
with macro-explanations (those based on applied processes and model
generation). Practical case studies are used to demonstrate how
hypothesis-generation and -interpretation technologies work. These are
based on “social infrastructure” applications like in-bound
tourism, disaster management, lunar and planetary exploration, and
treatment of infectious diseases. The novel methods and technologies
proposed in Hypothesis Generation and Interpretation are supported by
the incorporation of historical perspectives on science and an
emphasis on the origin and development of the ideas behind their
design principles and patterns. Academic investigators and
practitioners working on the further development and application of
hypothesis generation and interpretation in big data computing, with
backgrounds in data science and engineering, or the study of problem
solving and scientific methods or who employ those ideas in fields
like machine learning will find this book of considerable interest.
Les mer
Design Principles and Patterns for Big Data Applications
Produktdetaljer
ISBN
9783031435409
Publisert
2024
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter