Book Image

Principles of Data Science - Third Edition

By : Sinan Ozdemir
Book Image

Principles of Data Science - Third Edition

By: Sinan Ozdemir

Overview of this book

Principles of Data Science bridges mathematics, programming, and business analysis, empowering you to confidently pose and address complex data questions and construct effective machine learning pipelines. This book will equip you with the tools to transform abstract concepts and raw statistics into actionable insights. Starting with cleaning and preparation, you’ll explore effective data mining strategies and techniques before moving on to building a holistic picture of how every piece of the data science puzzle fits together. Throughout the book, you’ll discover statistical models with which you can control and navigate even the densest or the sparsest of datasets and learn how to create powerful visualizations that communicate the stories hidden in your data. With a focus on application, this edition covers advanced transfer learning and pre-trained models for NLP and vision tasks. You’ll get to grips with advanced techniques for mitigating algorithmic bias in data as well as models and addressing model and data drift. Finally, you’ll explore medium-level data governance, including data provenance, privacy, and deletion request handling. By the end of this data science book, you'll have learned the fundamentals of computational mathematics and statistics, all while navigating the intricacies of modern ML and large pre-trained models like GPT and BERT.
Table of Contents (18 chapters)

Navigating the intricacy and the anatomy of ML governance

ML doesn’t operate solely by using algorithms and the data they ingest. Instead, its essence lies in constructing models responsibly, a task underpinned by governance. Just as governance has been the bedrock of the realm of data, it’s equally crucial for ML, especially in aspects such as accountability, standardization, compliance, quality, and clarity. Let’s discuss this topic in greater detail in the following sections.

ML governance pillars

Unlocking ML’s potential is rooted in ensuring that models meet the following criteria:

  • Aligns with relevant regulatory and ethical benchmarks
  • Exhibits consistent outcomes and performance
  • Illuminates their development and implications in a transparent way
  • Can undergo regular quality assessments and updates
  • Adheres to standard documentation and cataloging protocols

While adherence to industry-specific regulations sets the...