The Economics of AI Infrastructure for AI Engineering and Large Language Models Volume 1: Why AI Systems Are Expensive — Understanding the Cost of Training, Inference, Memory, Networking, and Scale - Softcover

Book 1 of 2: The Economics of AI Infrastructure for AI Engineering and Large Language Models

D Grayson, Elliot

 
9798199735797: The Economics of AI Infrastructure for AI Engineering and Large Language Models Volume 1: Why AI Systems Are Expensive — Understanding the Cost of Training, Inference, Memory, Networking, and Scale

Synopsis

Artificial intelligence is transforming industries, reshaping software development, and redefining the future of computing. But behind every AI-generated response lies a question few people ask:

Why is AI so expensive?

Every token generated by a large language model consumes compute resources. Every inference request requires memory, networking, energy, and specialized hardware. Every AI application depends on a vast infrastructure ecosystem working behind the scenes to transform computation into intelligence.

This book explores the hidden economics of modern AI systems.

Rather than focusing on prompt engineering or machine learning theory, The Economics of AI Infrastructure for AI Engineering and Large Language Models examines the physical, operational, and financial foundations that power today's AI platforms. It explains why training large language models costs millions of dollars, why inference is becoming one of the industry's largest operational expenses, and how modern organizations optimize infrastructure to deliver intelligence at scale.

Written for AI engineers, software architects, technology leaders, infrastructure professionals, researchers, and serious students of artificial intelligence, this volume provides a systems-level understanding of the technologies that make large-scale AI possible.

Inside this book, you'll learn:

  • Why AI systems are fundamentally infrastructure systems
  • The economics of training large language models
  • How inference workloads drive operational costs
  • Why GPUs and AI accelerators dominate modern AI computing
  • The role of memory architecture in AI performance
  • How networking impacts scalability and throughput
  • Why AI datacenters are becoming the factories of the intelligence economy
  • How quantization and model optimization improve profitability
  • The architecture of modern AI serving platforms
  • The economics of multi-tenant AI systems
  • The tradeoffs between open models and closed AI ecosystems

Throughout the book, complex technical concepts are explained through the lens of real-world infrastructure, operational tradeoffs, and business economics. Readers will gain a deeper understanding of how compute, memory, networking, storage, energy, and software systems interact to support modern AI applications.

Whether you're designing AI platforms, evaluating infrastructure investments, building large language model applications, or simply seeking to understand the economics behind the AI revolution, this book provides the foundation needed to think like an AI infrastructure engineer.

Because the future of artificial intelligence will not be defined solely by smarter models.

It will be defined by the infrastructure that makes those models possible.

Volume 1 of a 2-volume series on AI Infrastructure, AI Engineering, and Large Language Models.

"synopsis" may belong to another edition of this title.