A Comprehensive, Practical Guide to Building, Deploying, and Scaling Real-World AI Systems
While AI dominates headlines, most organizations face a different reality: stalled projects, fragile infrastructure, costly deployments, and no clear framework for building scalable, reliable systems.
The AI Engineering Bible addresses this gap directly.
Written for engineers, technical leads, AI architects, and product owners, this book offers a clear, systematic approach to building production-ready AI systems—grounded in current best practices, scalable infrastructure, and real-world application.
Spanning every stage of the AI lifecycle—from problem definition and data acquisition to deployment, optimization, and long-term maintenance—it provides the structure and technical depth professionals need to confidently lead AI initiatives at scale.
With this all-in-one guide in your hands, you will:Start by defining the problem and planning your AI system with precision—from aligning goals with business outcomes to structuring architecture, data strategy, ethics, compliance, and human-AI interaction from day oneBuild each layer of your system with reliability in mind, including data pipelines, preprocessing workflows, training loops, orchestration tools, and model selection—ready for integration into real-world software environmentsDeploy your AI models into production with confidence, using containerized services, scalable cloud infrastructure, secure API integrations, and version-controlled workflows that reduce downtime and riskExpand your system to handle increasing scale, applying proven strategies for distributed inference, federated learning, pipeline throughput, and load balancing—ensuring your architecture grows without bottlenecksOptimize performance across every dimension, from latency and throughput to memory usage and cost-efficiency, using cutting-edge techniques in tuning, compression, quantization, and system profilingEnsure long-term reliability and adaptability through model monitoring, drift detection, retraining strategies, user feedback loops, governance frameworks, and continuous improvement processes that keep systems stable and effective over time
While other books focus narrowly on theory or specific tools, The AI Engineering Bible takes a full-stack engineering perspective—helping you bridge the gap between machine learning research and robust, maintainable production systems.
Whether you’re responsible for building internal AI platforms, deploying customer-facing features, or scaling intelligent systems in high-stakes environments, this book is designed to support your work with clarity and rigor.
If your goal is to deliver AI systems that are not only functional, but sustainable, secure, and scalable—grab your copy of The AI Engineering Bible and use it as your trusted technical reference to build systems that perform in the real world.
From the Publisher
ASIN : B0F4KZJN6Z
Accessibility : Learn more
Publication date : April 11, 2025
Language : English
File size : 1.5 MB
Screen Reader : Supported
Enhanced typesetting : Enabled
X-Ray : Enabled
Word Wise : Not Enabled
Print length : 410 pages
Page Flip : Enabled
Best Sellers Rank: #9,016 in Kindle Store (See Top 100 in Kindle Store) #1 in Machine Theory (Kindle Store) #1 in Neural Networks #1 in Computer Engineering
Customer Reviews: 4.8 4.8 out of 5 stars 707 ratings

