Join the data-centric revolution and master the concepts, techniques, and algorithms shaping the future of AI and ML development, using Python
Key Features
- Grasp the principles of data centricity and apply them to real-world scenarios
- Gain experience with quality data collection, labeling, and synthetic data creation using Python
- Develop essential skills for building reliable, responsible, and ethical machine learning solutions
- Purchase of the print or Kindle book includes a free PDF eBook
Book Description
In the rapidly advancing data-driven world where data quality is pivotal to the success of machine learning and artificial intelligence projects, this critically timed guide provides a rare, end-to-end overview of data-centric machine learning (DCML), along with hands-on applications of technical and non-technical approaches to generating deeper and more accurate datasets.
This book will help you understand what data-centric ML/AI is and how it can help you to realize the potential of 'small data'. Delving into the building blocks of data-centric ML/AI, you'll explore the human aspects of data labeling, tackle ambiguity in labeling, and understand the role of synthetic data. From strategies to improve data collection to techniques for refining and augmenting datasets, you'll learn everything you need to elevate your data-centric practices. Through applied examples and insights for overcoming challenges, you'll get a roadmap for implementing data-centric ML/AI in diverse applications in Python.
By the end of this book, you'll have developed a profound understanding of data-centric ML/AI and the proficiency to seamlessly integrate common data-centric approaches in the model development lifecycle to unlock the full potential of your machine learning projects by prioritizing data quality and reliability.
What you will learn
- Understand the impact of input data quality compared to model selection and tuning
- Recognize the crucial role of subject-matter experts in effective model development
- Implement data cleaning, labeling, and augmentation best practices
- Explore common synthetic data generation techniques and their applications
- Apply synthetic data generation techniques using common Python packages
- Detect and mitigate bias in a dataset using best-practice techniques
- Understand the importance of reliability, responsibility, and ethical considerations in ML/AI
Who this book is for
This book is for data science professionals and machine learning enthusiasts looking to understand the concept of data-centricity, its benefits over a model-centric approach, and the practical application of a best-practice data-centric approach in their work. This book is also for other data professionals and senior leaders who want to explore the tools and techniques to improve data quality and create opportunities for small data ML/AI in their organizations.
Table of Contents
- Exploring Data-Centric Machine Learning
- From Model-Centric to Data-Centric - ML's Evolution
- Principles of Data-Centric ML
- Data Labeling Is a Collaborative Process
- Techniques for Data Cleaning
- Techniques for Programmatic Labeling in Machine Learning
- Using Synthetic Data in Data-Centric Machine Learning
- Techniques for Identifying and Removing Bias
- Dealing with Edge Cases and Rare Events in Machine Learning
- Kick-Starting Your Journey in Data-Centric Machine Learning