Data Science

Data Science

MTSPL

Data Science

Editors:

Dr. R. Sakthivel

Publication Date:

14th April, 2026

No.of Pages: 392
Price: ₹ 375/-
ISBN:

978-93-92090-54-7

DOI:
Publisher:

Magestic Technology Solutions (P) Ltd.

Place of Publication:
Chennai, India.
Published Book · First Edition · Data Science

Data Science

Foundations, Methods, Tools, and Real-World Applications is a comprehensive academic and practical guide by Dr. R. Sakthivel, published by Magestic Technology Solutions (P) Ltd.

Author: Dr. R. Sakthivel ISBN: 978-93-92090-54-7 DOI: 10.47716/978-93-92090-54-7 270 Pages MRP: INR 375/-
24Chapters
270Pages
2026Publication Year
AIModern Focus
Python
Machine Learning
SQL
Responsible AI
AI

Foundations. Methods. Tools. Applications.

A polished publication webpage for a modern data science textbook.

Good data science is not only about models; it is about asking the right question, using trustworthy data, and communicating results with clarity.
— Dr. R. Sakthivel
About the Book

A complete guide from foundations to real-world data science practice.

This book introduces data science as an interdisciplinary field combining statistical reasoning, mathematical foundations, computation, programming, and domain understanding to support analysis, prediction, and decision-making.

📘

Book Overview

The text progresses from foundational topics such as data types, analytical thinking, linear algebra, calculus, probability, and statistics to applied areas including Python programming, data preparation, exploratory data analysis, visualization, data wrangling, databases, SQL, and machine learning.

🎯

Purpose

The book is designed for students, instructors, self-learners, and early-career professionals who need both conceptual clarity and practical orientation. It emphasizes workflows, interpretation, communication, governance, and responsible practice.

🌍

Application Scope

Real-world applications include healthcare, finance, marketing, e-commerce, manufacturing, social media, government, and public policy, supported by case studies and project-oriented discussions.

🧭

Learning Philosophy

The book treats data science as a disciplined practice rather than a collection of isolated tools. It encourages readers to ask better questions, examine data carefully, choose methods thoughtfully, evaluate results honestly, and communicate findings responsibly.

Data ScienceStatisticsMachine LearningPythonData AnalysisData VisualizationSQLData WranglingModel EvaluationFeature EngineeringTime Series AnalysisDeep LearningBig DataResponsible AIPredictive Analytics
Publication Details

Complete bibliographic and publishing information.

These details can be used for academic catalogues, publisher pages, institutional listings, library records, and promotional materials.

Copyright Notice: All rights reserved. No part of this publication may be reproduced, stored in a retrieval system, or transmitted in any form or by any means without prior written permission of the publisher, except for brief quotations in reviews or scholarly works.
Key Features

International-level academic and professional positioning.

📊

Foundational Clarity

Explains data types, decision-making, statistics, probability, mathematics, and analytical reasoning before moving into advanced tools.

💻

Practical Data Tools

Covers Python, NumPy, pandas, visualization, SQL, databases, data wrangling, data preparation, and real analytical workflows.

🤖

Machine Learning and AI

Introduces supervised learning, regression, classification, unsupervised learning, model evaluation, deep learning, generative AI, and edge AI.

🔍

Evaluation Discipline

Emphasizes baselines, validation, cross-validation, model selection, error analysis, assumptions, interpretation, and honest reporting.

⚖️

Ethics and Governance

Addresses privacy, security, algorithmic bias, fairness, accountability, explainability, responsible AI, and governance.

🚀

Career Readiness

Includes career paths, data science roles, portfolio building, certifications, learning pathways, interview preparation, and future trends.

Complete Contents

Twenty-four chapters covering the full data science learning journey.

The structure progresses from basic concepts and foundations to modern AI, deep learning, responsible data science, applied case studies, career paths, and future directions.

01

Introduction to Data Science

Data science definition, evolution, lifecycle, roles, applications, challenges, and limitations.

02

Fundamentals of Data and Decision Making

Types of data, data sources, data-driven decisions, business problems, metrics, KPIs, and insights.

03

Mathematics for Data Science

Linear algebra, vectors, matrices, calculus, derivatives, optimization, probability, distributions, and Bayes’ theorem.

04

Statistics for Data Science

Descriptive statistics, central tendency, dispersion, normality, sampling, hypothesis testing, correlation, covariance, and confidence intervals.

05

Programming for Data Science

Python, variables, data types, operators, control flow, functions, modules, NumPy, pandas, and reproducible code.

06

Data Collection and Data Preparation

Data acquisition, files, databases, APIs, web data, cleaning, missing values, duplicates, outliers, transformation, encoding, and integration.

07

Exploratory Data Analysis

EDA objectives, univariate, bivariate, and multivariate analysis, patterns, trends, anomalies, tools, and techniques.

08

Data Visualization

Effective visual communication, chart types, visualization selection, distributions, relationships, dashboards, and storytelling with data.

09

Data Wrangling with Pandas

DataFrames, importing, exporting, selecting, filtering, grouping, aggregation, merging, joining, reshaping, dates, and workflow.

10

Databases and SQL for Data Science

Relational databases, SQL basics, SELECT, WHERE, ORDER BY, GROUP BY, JOIN, subqueries, views, and SQL in projects.

11

Introduction to Machine Learning

Supervised, unsupervised, and reinforcement learning, training, validation, testing, overfitting, underfitting, and bias-variance trade-off.

12

Supervised Learning: Regression

Regression concepts, linear regression, multiple regression, assumptions, evaluation metrics, regularization, and applications.

13

Supervised Learning: Classification

Classification, logistic regression, decision trees, random forests, SVM, k-nearest neighbors, metrics, confusion matrix, F1, ROC, and AUC.

14

Unsupervised Learning

Clustering, k-means, hierarchical clustering, dimensionality reduction, PCA, association rule learning, and applications.

15

Model Evaluation and Model Selection

Training and test performance, cross-validation, hyperparameter tuning, grid search, random search, error analysis, and model selection.

16

Feature Engineering

Feature creation, transformation, scaling, categorical encoding, feature selection, and domain knowledge.

17

Time Series Analysis

Time series data, trend, seasonality, noise, visualization, forecasting, moving averages, ARIMA, and business applications.

18

Big Data and Modern Data Science Tools

Big data characteristics, distributed computing, Hadoop, Spark, cloud platforms, and the modern data science tool ecosystem.

19

Deep Learning Basics

Neural networks, activation functions, forward propagation, backpropagation, training, applications, and limitations.

20

Ethics, Bias, and Responsible Data Science

Ethics, privacy, security, algorithmic bias, fairness, accountability, transparency, explainability, responsible AI, and governance.

21

Data Science in Real-World Applications

Applications in healthcare, finance, marketing, e-commerce, manufacturing, social media, government, and public policy.

22

Case Studies and End-to-End Projects

Customer churn prediction, sales forecasting, credit risk analysis, market basket analysis, project lessons, and common pitfalls.

23

Career Paths in Data Science

Roles, required skills, portfolio building, certifications, learning pathways, interview preparation, and future career trends.

24

The Future of Data Science

Emerging trends, automated machine learning, generative AI, edge AI, real-time analytics, human-in-the-loop systems, and the next decade.

How to Use This Book

Flexible for students, instructors, professionals, and self-learners.

🎓

Students

Read sequentially from early chapters to advanced topics, building conceptual and practical knowledge step by step.

📚

Instructors

Use the structure for lectures, tutorials, assignments, projects, classroom discussions, and applied teaching.

🧑‍💻

Self-Learners

Study one chapter at a time, take notes, reproduce workflows, practice examples, and review summaries.

🏢

Professionals

Use selected chapters as a reference for analytics, data wrangling, SQL, machine learning, ethics, and applications.

RS
Author Profile

Dr. R. Sakthivel

M.Tech–IT, MBA, M.Sc. Mathematics, Ph.D.

  • Senior management academic and academic administrator.
  • More than three decades of experience in higher education.
  • Professor, Department of Management Studies, Chikkanna Government Arts College, Tiruppur.
  • Former Regional Officer of AICTE.
  • Former Head of Department, Government Arts College, Coimbatore.
  • Former Director of Management Studies, Karpagam Institute of Technology, Coimbatore.

Academic and Professional Contributions

Dr. R. Sakthivel has contributed to teaching, institutional leadership, accreditation support, academic governance, curriculum development, examinations, admissions, student mentoring, project supervision, industry interaction, and placement facilitation.

His doctoral research in Service Marketing has shaped his continued scholarly interest in healthcare, insurance, telecom consumer behaviour, leadership training, and organisational behaviour.

He has also contributed to academic quality assurance as an examiner, university representative, and question-paper setter, supporting evaluation standards and governance in management education.

Experience

Over three decades in higher education.

Research Area

Service Marketing and organisational behaviour.

Academic Leadership

Teaching, mentoring, governance, and administration.

Commitment

Academic leadership, research, and institutional excellence.

Publisher

Magestic Technology Solutions (P) Ltd

Publisher and editorial contact information for catalogue, institutional, and reader communication.

Publishing House

PublisherMagestic Technology Solutions (P) Ltd
Printed InIndia
EditionFirst Edition

Editorial Contacts

Chief EditorProf. Dr. S. Magesh
Senior EditorMrs. Esther Faith Martina
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Download the partial book PDF.

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This book supports analytical thinking, responsible practice, and professional readiness in the modern data-driven world.
— Data Science: Foundations, Methods, Tools, and Real-World Applications

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