Architecting Generative AI Applications by Leonid Kuligin (.ePUB)+

File Size: 10 MB

Architecting Generative AI Applications: Build, deploy, and scale production-ready GenAI systems with LLMOps best practices by Leonid Kuligin
Requirements: .PDF/.ePUB reader, 10 mb / 23 mb
Overview: Build production-ready generative AI applications by moving beyond prototypes and applying proven engineering principles. This book shows you how to design, evaluate, deploy, and scale AI systems that remain reliable, secure, and maintainable in real-world environments.

Vibe-coding tools and coding assistants make it easy to create prototypes, but taking them into production is where most teams struggle. Written by a Staff AI Engineer at Google, this book guides you through scoping use cases, aligning them with business goals, and scaling generative AI adoption. You’ll learn how to evaluate LLMs using offline metrics, human-in-the-loop approaches, and statistical testing, as well as how to design architectures such as RAG, vector databases, agents, and memory systems.

You’ll also understand how to operationalize these systems with production-grade code, testing practices, and DevOps, MLOps, and LLMOps workflows. The book covers deployment, scaling, and key considerations for security, Responsible AI, observability, and reliability.

By the end of this book, you will be able to design, deploy, and maintain scalable generative AI applications, run A/B tests to measure impact, and apply durable engineering principles so your systems succeed beyond the prototype stage.
Genre: Non-Fiction > Tech & Devices

Free Download links:

https://cloudfam.io/badd9082b88f