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Pluralsight

Privacy-preserving AI

via Pluralsight

Overview

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Privacy is a growing concern in AI systems, especially as organizations process vast amounts of sensitive data. Failing to address privacy risks can lead to regulatory penalties, eroded trust, and missed opportunities for innovation. In this course, Privacy-preserving AI, you’ll learn to implement Privacy-enhancing Technologies (PETs) that balance data utility with privacy and compliance. First, you’ll explore the foundational techniques of privacy-preserving AI, including Differential Privacy, Federated Learning, and Homomorphic Encryption. Next, you’ll discover how to practically implement these technologies in real-world AI workflows, ensuring compliance with regulations like GDPR while maintaining performance. Finally, you’ll learn how to navigate the challenges of privacy-preserving AI, such as computational overhead and data utility trade-offs, while aligning with ethical AI principles. When you finish this course, you’ll have the skills and knowledge of privacy-preserving AI techniques needed to build secure, compliant, and trustworthy AI systems that drive innovation and maintain user confidence.

Taught by

Ed Freitas

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