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Privacy-Preserving Machine Learning

Privacy-Preserving Machine Learning

By : Srinivasa Rao Aravilli
5 (8)
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Privacy-Preserving Machine Learning

Privacy-Preserving Machine Learning

5 (8)
By: Srinivasa Rao Aravilli

Overview of this book

– 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
Table of Contents (17 chapters)
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Free Chapter
1
Part 1: Introduction to Data Privacy and Machine Learning
4
Part 2: Use Cases of Privacy-Preserving Machine Learning and a Deep Dive into Differential Privacy
8
Part 3: Hands-On Federated Learning
11
Part 4: Homomorphic Encryption, SMC, Confidential Computing, and LLMs

Protecting against membership inference attacks

Membership inference attacks pose a significant threat to the privacy of individuals in machine learning systems. These attacks aim to determine whether a specific data point was part of the training dataset used to create a machine learning model, potentially exposing sensitive information about individuals. To mitigate the risk of such attacks, differential privacy techniques can be employed.

To protect against membership inference attacks using differential privacy, several approaches can be adopted:

  • Noise addition: During the training process, noise is added to the computations to introduce randomness and mask individual data points. This makes it challenging for attackers to identify whether a specific data point was used in the training.
  • Privacy budget management: Differential privacy operates under a privacy budget that determines the maximum amount of privacy loss allowed. By carefully managing and allocating the...

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