Curriculum

  1. 1

    Book Preview

    1. Book Preview Free preview
  2. 2

    Introduction

    1. (Included in full purchase)
  3. 3

    Chapter 1 : Introduction to AI System Design

    1. (Included in full purchase)
  4. 4

    Chapter 2 : Crafting Intelligent Systems Using Prompt Engineering

    1. (Included in full purchase)
  5. 5

    Chapter 3 : Developing Retrieval-Augmented Generation Systems

    1. (Included in full purchase)
  6. 6

    Chapter 4 : Enhancing Systems Through LLM Finetuning

    1. (Included in full purchase)
  7. 7

    Chapter 5 : Designing Financial Risk Prediction Systems Using Supervised Learning

    1. (Included in full purchase)
  8. 8

    Chapter 6 : Implementing Unsupervised Learning Systems

    1. (Included in full purchase)
  9. 9

    Chapter 7 : Building Recommendation Systems for E-Commerce

    1. (Included in full purchase)
  10. 10

    Chapter 8 : Building Image Classification Models for Edge Devices

    1. (Included in full purchase)
  11. 11

    Chapter 9 : Designing Sequence-to-Sequence Systems

    1. (Included in full purchase)
  12. 12

    Chapter 10 : Building Domain-Specific LLMs from Scratch

    1. (Included in full purchase)
  13. 13

    Chapter 11 : Building Multimodal Applications for Healthcare

    1. (Included in full purchase)
  14. 14

    Index

    1. (Included in full purchase)

About the Course

System design is now a critical skill for AI professionals, enabling them to integrate data pipelines, model serving, orchestration, and monitoring into cohesive production ecosystems. Mastering AI System Design will guide you through that complete journey—from understanding design principles and data workflows to building deployable AI architectures. It introduces core components of AI system design such as data engineering, model selection, evaluation metrics, API integration, and lifecycle management. Each chapter blends theory, architecture diagrams, and code-driven blueprints that cover real-world use cases—LLMs and prompt engineering, Retrieval-Augmented Generation (RAG), fine-tuning, supervised and unsupervised learning systems, recommendation engines, edge AI deployment, and multimodal transformers. By the end, you will be well-equipped to analyze trade-offs, design scalable inference pipelines, ensure model reliability, and apply system design frameworks for interviews and enterprise AI applications with confidence.

About the Author

Soudamini Sreepada is a distinguished leader in Artificial Intelligence, education, and research, with over 18 years of experience in the technology industry. She teaches AI system design through DesignYourAI - https://www.designyourai. in. Her projects and resources are available on GitHub at https://github.com/ soudaminigit/ After earning her M.Tech. in Computer Science from IIT Bombay in 2003, she built a remarkable career at Microsoft India Pvt. Ltd., where she held roles such as Software Engineer, Manager, and Principal Data Scientist. At Microsoft, she contributed to flagship products including Windows and Bing, spearheading initiatives that combined large-scale engineering with applied AI to create intelligent systems used by millions, worldwide. She received national innovation awards and was recognized as a Best Manager during her tenure.