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Python Programming : Machine Learning & Data Science ; TensorFlow , PyTorch ,XGBoost ,Statsmodels - e3

Python Programming

Machine Learning & Data Science ; TensorFlow , PyTorch ,XGBoost ,Statsmodels

By: e3

Paperback | 10 May 2025

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Preface

  • In recent years, Machine Learning and Data Science have revolutionized the way we understand and interact with data. From predictive analytics in finance and healthcare to real-time recommendation systems in e-commerce and streaming platforms, intelligent algorithms are now an integral part of the modern digital landscape. This book, "Machine Learning & Data Science: TensorFlow, PyTorch, XGBoost, Statsmodels," is crafted for learners and practitioners who aim to bridge the gap between theory and hands-on application using some of the most powerful tools in the industry.
  • The rapid expansion of available data and computational power has made it possible to deploy increasingly complex models. However, success in this field requires more than just technical proficiency-it demands an understanding of the appropriate frameworks, their strengths, and the contexts in which they excel. This book is structured to serve that purpose.
  • We explore TensorFlow and PyTorch, the two most widely adopted deep learning frameworks, each with its own philosophy and design choices. TensorFlow, with its scalable ecosystem and production-oriented approach, is ideal for building deployable machine learning systems. PyTorch, known for its intuitive design and dynamic computation graphs, is a favorite in the research community and for rapid prototyping.
  • In contrast, XGBoost represents the pinnacle of gradient boosting techniques-efficient, scalable, and often the go-to choice for structured data and tabular modeling competitions. And then there's Statsmodels, a library that brings the richness of statistical modeling into the mix, enabling interpretability and insight that purely algorithmic models may lack.
  • This book is designed with the following goals:
    • To provide a comprehensive introduction to the foundational concepts of machine learning and data science.
    • To illustrate practical implementations using TensorFlow, PyTorch, XGBoost, and Statsmodels through real-world examples and projects.
    • To equip readers with the skills to choose and combine tools appropriately depending on the nature of the data and the problem at hand.
    • To foster a deep understanding of not just how models work, but why they behave the way they do.
  • Whether you are a student seeking to deepen your knowledge, a developer transitioning into the field, or a data scientist aiming to master additional tools, this book offers a balanced journey through both the statistical roots and the cutting-edge practices of machine learning.
  • May this book serve not just as a manual, but as a roadmap in your data science journey-helping you think critically, implement confidently, and build responsibly.
  • - The Author

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