Название: Engineering AI Systems: Architecture and DevOps Essentials (Early Release) Автор: Len Bass, Qinghua Lu, Ingo Weber, Liming Zhu Издательство: Addison-Wesley Professional/Pearson Education Год: 2024 Страниц: 483 Язык: английский Формат: pdf, epub Размер: 10.1 MB
Transform Your Business with AI: The Ultimate Guide to Engineering AI Systems.
In the rapidly evolving world of business, integrating Artificial Intelligence (AI) into your systems is no longer optional. Engineering AI Systems: Architecture and DevOps Essentials is a comprehensive guide that will help you master the complexities of AI systems engineering. This book combines robust software architecture with cutting-edge DevOps practices to deliver high-quality, reliable, and scalable AI solutions.
Experts Len Bass, Qinghua Lu, Ingo Weber, and Liming Zhu demystify the intricate process of engineering AI systems, providing practical strategies and tools for seamlessly incorporating AI into your business operations. You will gain a comprehensive understanding of the fundamentals of AI and software engineering and how they intersect to create powerful AI systems. Through real-world case studies, the authors illustrate practical applications and successful implementations of AI in small to medium-sized enterprises across various industries, and offer strategic insights into designing AI systems to align with your business goals.
We wrote this book to help you whether you know about AI or Software Engineering. We take the approach that engineering an AI system is an extension of engineering a non-AI system with some special characteristics. That is, it involves using modern software engineering techniques and integrating them with the development of an AI model trained with an appropriate set of data. We highlight new technologies like foundation models. Each chapter ends with a set of discussion questions so that you and your colleagues can further discuss the issues raised by the chapters and so that you all are on the same page. One of the problems with multidisciplinary teams is vocabulary. Words may have different meanings depending on your background. Discussing each chapter with your colleagues will also help resolve and agree on the meanings of words.
Our approach is that there are three contributors to the building of high-quality systems – 1) software architecture, 2) the processes used for building, testing, deployment, and operations (DevOps), and 3) high quality AI models and the data on which they depend on.
Chapter 1. Introduction Chapter 2. Software Engineering Background Chapter 3. AI Background Chapter 4. Foundation Models Chapter 5. AI Model Lifecycle Chapter 6. System Lifecycle Chapter 7. Reliability Chapter 8. Performance Chapter 9. Security Chapter 10. Privacy and Fairness Chapter 11. Observability Chapter 12. The Fraunhofer Case Study: Using a Pretrained Language Model for Tendering Chapter 13. The ARM Hub Case Study: Chatbots for Small and Medium Size Australian Enterprises Chapter 14. The Banking Case Study: Predicting Customer Churn in Banks Chapter 15. The Future of AI Engineering References
Скачать Engineering AI Systems: Architecture and DevOps Essentials (Early Release)