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Fundamentals for Data Science, Vol. I

Fundamentals for Data Science, Vol. I

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Fundamentals for Data Science, Vol. I

Bhargab Chattopadhyay | Gaurangadeb Chattopadhyay | Tapabrata Maiti | Prasenjit Majumder

Computers / Database Administration & Management

Volume I of this two-volume series lays the foundational pillars of data science, combining statistical theory, mathematical essentials, and practical computing skills required for modern data analysis. Designed as a comprehensive entry point, this volume equips readers with the conceptual and computational tools needed to understand, explore, and model data before progressing to advanced machine learning and high-dimensional methods.

The volume begins with hands-on introductions to R and Python, enabling readers with no prior programming experience to immediately engage in data exploration and analysis. Core probabilistic and statistical concepts probability theory, probability distributions, sampling, and parametric inference are developed systematically, ensuring a strong analytical backbone for data-driven reasoning. Essential mathematical tools, particularly linear algebra, are presented in an intuitive manner tailored to data science applications.

Emphasis is placed on exploratory data analysis, regression modeling, causal inference, and business-oriented statistical modeling, supported throughout by real-world case studies and applied examples. Mathematical rigor is balanced with intuition, and every major concept is reinforced using executable R and Python code.

This volume is ideal for undergraduate and postgraduate students, researchers, and practitioners seeking a structured and application-driven introduction to data science and business analytics. It serves as both a classroom-ready textbook and a self-study reference, preparing readers for advanced modeling techniques covered in Volume II.

Bhargab Chattopadhyay is Associate Professor at the School of Management & Entrepreneurship, Indian Institute of Technology Jodhpur in the DTBI/Operations area. His research interests lie in the area of core set construction, sequential analysis, and inference. He has worked on several projects and is serving as the Associate Editor of the journal Sequential Analysis.

Gaurangadeb Chattopadhyay is Professor in the Department of Statistics at the University of Calcutta, India. He has several publications in journals like Statistics in Medicine, Scandinavian Journal of StatisticsStatistical Papers, and others.

Tapabrata Maiti is Professor and Graduate Director in the Department of Statistics & Probability at Michigan State University, USA. He has secondary appointment with the Department of Marketing, Eli Broad School of Business, and is co-director in the Center for Business and Social Analytics. He has several publications in journals like Annals of StatisticsJournal of Royal Statistical Society Series B,Journal of the American Statistical Association to name some, and is working on several projects funded by federal USA agencies like National Science Foundation (NSF) and National Institutes of Health (NIH).

Prasenjit Majumder is Visiting Faculty at The Chatterjee Group's Centres for Research and Education in Science and Technology (TCG CREST), Kolkata, India; and Professor at Dhirubhai Ambani University, Gandhinagar, India. He has worked on several projects funded by different government agencies. He has authored a monograph and edited two volumes.


Publication Date: 03 August 2026
Publisher: Springer Nature Singapore
Imprint: Springer
ISBN-13: 9789819573691
Format: Hardback
Page Count: 216

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