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Privacy-Preserving Machine Learning

You're reading from   Privacy-Preserving Machine Learning A use-case-driven approach to building and protecting ML pipelines from privacy and security threats

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781800564671
Length 402 pages
Edition 1st Edition
Languages
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Author (1):
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Srinivasa Rao Aravilli Srinivasa Rao Aravilli
Author Profile Icon Srinivasa Rao Aravilli
Srinivasa Rao Aravilli
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Toc

Table of Contents (17) Chapters Close

Preface 1. Part 1: Introduction to Data Privacy and Machine Learning FREE CHAPTER
2. Chapter 1: Introduction to Data Privacy, Privacy Breaches, and Threat Modeling 3. Chapter 2: Machine Learning Phases and Privacy Threats/Attacks in Each Phase 4. Part 2: Use Cases of Privacy-Preserving Machine Learning and a Deep Dive into Differential Privacy
5. Chapter 3: Overview of Privacy-Preserving Data Analysis and an Introduction to Differential Privacy 6. Chapter 4: Overview of Differential Privacy Algorithms and Applications of Differential Privacy 7. Chapter 5: Developing Applications with Differential Privacy Using Open Source Frameworks 8. Part 3: Hands-On Federated Learning
9. Chapter 6: Federated Learning and Implementing FL Using Open Source Frameworks 10. Chapter 7: Federated Learning Benchmarks, Start-Ups, and the Next Opportunity 11. Part 4: Homomorphic Encryption, SMC, Confidential Computing, and LLMs
12. Chapter 8: Homomorphic Encryption and Secure Multiparty Computation 13. Chapter 9: Confidential Computing – What, Why, and the Current State 14. Chapter 10: Preserving Privacy in Large Language Models 15. Index 16. Other Books You May Enjoy

FL benchmarks

FL is a machine learning technique that allows multiple devices/clients or servers to collaboratively train a model and keep their data private. There has been an increasing need for standardized benchmarks to evaluate the performance of different FL algorithms and frameworks/platforms.

The IEEE 3652.1-2020 standard, officially titled IEEE Guide for Architectural Framework and Application of Federated Machine Learning, is a comprehensive guide that provides an architectural framework for Federated Machine Learning (FML). More details about the IEEE 3652.1-2020 standard can be found at https://ieeexplore.ieee.org/document/9382202.

FL benchmarks are datasets and evaluation metrics that are used to compare and evaluate the performance of different FL algorithms and frameworks/platforms. These benchmarks can help engineers and researchers to identify the strengths and weaknesses of different algorithms and the pros and cons of different FL frameworks.

Next, we will...

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