// Building Production-Grade AI Systems That Actually Ship
The gap between a brilliant model in a notebook and a system that survives production is where most AI projects die. This book closes that gap — chapter by chapter, tool by tool.
Design and deploy scalable ML pipelines with Airflow, dbt, Spark, and Kafka — systems that run in production, not just on your laptop.
CI/CD for ML, Docker containerisation, cloud deployment on AWS/GCP/Azure, and reproducibility that survives team handoffs.
Catch model drift before it costs you. Build observability, alerting, and rollback systems — because a model you can't monitor is a model you can't trust.
Deploy NLP pipelines, computer vision systems, and LLMs — including RAG architectures, transformer optimisation, and responsible inference at scale.
Bias detection, fairness audits, explainability, and navigating GDPR and AI regulation — built into your pipeline, not bolted on after.
Finance, healthcare, and retail failures turned into lessons. The $15M model drift story. The $12M accuracy trap. Learn from production disasters without living them.
In academic circles, artificial intelligence is about pushing boundaries, refining algorithms, squeezing out marginal accuracy gains, and crafting elegant solutions to well-defined problems. But in the real world, success means something different.
A model that can't survive noisy data, scale under load, or integrate into existing systems is just research. In production, AI must be robust, explainable, and results-driven — and above all, useful. While a paper may aim to improve accuracy by 0.1%, a company seeks solutions that reduce costs, accelerate decisions, or prevent $15 million in silent model drift.
This book is for the doers — engineers, architects, analysts, and tech leaders who want to move beyond theory and start solving real-world problems. No fluff. No vendor hype. Just sharp, useful, real-world knowledge you can apply from day one.
You've trained models. Now you need to ship them, monitor them, and keep them honest in production. This book is the missing manual.
Your Jupyter notebooks are brilliant. This book gives you the engineering discipline to turn them into systems that run at 3am without you watching.
You're making decisions that affect teams and systems. This book gives you the vocabulary, patterns, and trade-offs to make them well.
Every chapter is built from real production experience — not theory. The war stories, the patterns, and the tools that actually work.