| Management number | 231975225 | Release Date | 2026/06/18 | List Price | $15.58 | Model Number | 231975225 | ||
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As the deployment of AI technologies surges, the need to safeguard privacy and security in the use of large language models (LLMs) is more crucial than ever. Professionals face the challenge of leveraging the immense power of LLMs for personalized applications while ensuring stringent data privacy and security. The stakes are high, as privacy breaches and data leaks can lead to significant reputational and financial repercussions.This book serves as a much-needed guide to addressing these pressing concerns. Dr. Baihan Lin offers a comprehensive exploration of privacy-preserving and security techniques like differential privacy, federated learning, and homomorphic encryption, applied specifically to LLMs. With its hands-on code examples, real-world case studies, and robust fine-tuning methodologies in domain-specific applications, this book is a vital resource for developing secure, ethical, and personalized AI solutions in today's privacy-conscious landscape.By reading this book, you'll:Discover privacy-preserving techniques for LLMsLearn secure fine-tuning methodologies for personalizing LLMsUnderstand secure deployment strategies and protection against attacksExplore ethical considerations like bias and transparencyGain insights from real-world case studies across healthcare, finance, and more Read more
| ASIN | B0GGDFVZ6F |
|---|---|
| XRay | Not Enabled |
| ISBN13 | 978-1098160814 |
| Edition | 1st |
| Language | English |
| File size | 5.2 MB |
| Page Flip | Enabled |
| Publisher | O'Reilly Media |
| Word Wise | Not Enabled |
| Print length | 520 pages |
| Accessibility | Learn more |
| Publication date | January 12, 2026 |
| Enhanced typesetting | Enabled |
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