Privacy-Preserving Machine Learning: A use-case-driven approach to building and protecting ML pipelines from privacy and security threats by Srinivasa Rao Aravilli
English | May 24, 2024 | ISBN: 1800564678 | True EPUB/PDF | 402 pages | 10.3/31.2 MB
English | May 24, 2024 | ISBN: 1800564678 | True EPUB/PDF | 402 pages | 10.3/31.2 MB
Gain hands-on experience in data privacy and privacy-preserving machine learning with open-source ML frameworks, while exploring techniques and algorithms to protect sensitive data from privacy breaches
Key Features
- Understand machine learning privacy risks and employ machine learning algorithms to safeguard data against breaches
- Develop and deploy privacy-preserving ML pipelines using open-source frameworks
- Gain insights into confidential computing and its role in countering memory-based data attacks
Book Description
– In an era of evolving privacy regulations, compliance is mandatory for every enterprise
– Machine learning engineers face the dual challenge of analyzing vast amounts of data for insights while protecting sensitive information
– This book addresses the complexities arising from large data volumes and the scarcity of in-depth privacy-preserving machine learning expertise, and covers a comprehensive range of topics from data privacy and machine learning privacy threats to real-world privacy-preserving cases
– As you progress, you’ll be guided through developing anti-money laundering solutions using federated learning and differential privacy
– Dedicated sections will explore data in-memory attacks and strategies for safeguarding data and ML models
– You’ll also explore the imperative nature of confidential computation and privacy-preserving machine learning benchmarks, as well as frontier research in the field
– Upon completion, you’ll possess a thorough understanding of privacy-preserving machine learning, equipping them to effectively shield data from real-world threats and attacks
What you will learn
- Study data privacy, threats, and attacks across different machine learning phases
- Explore Uber and Apple cases for applying differential privacy and enhancing data security
- Discover IID and non-IID data sets as well as data categories
- Use open-source tools for federated learning (FL) and explore FL algorithms and benchmarks
- Understand secure multiparty computation with PSI for large data
- Get up to speed with confidential computation and find out how it helps data in memory attacks
Who this book is for
– This comprehensive guide is for data scientists, machine learning engineers, and privacy engineers
– Prerequisites include a working knowledge of mathematics and basic familiarity with at least one ML framework (TensorFlow, PyTorch, or scikit-learn)
– Practical examples will help you elevate your expertise in privacy-preserving machine learning techniques