Mastering Machine Learning Architecture and Solutions is a comprehensive guide to designing and deploying end-to-end ML systems. Ideal for data scientists, machine learning engineers, and architects, this book bridges theoretical foundations with practical applications to help you navigate the complexities of modern ML development.
The book begins with the exploration of ML architecture, it introduces the core concepts and lifecycle stages necessary for successful implementation. It delves into designing robust data pipelines, emphasizing data cleaning, feature engineering, and scaling techniques to support high-performance ML systems. It further discusses model selection and optimization, covering advanced techniques for hyperparameter tuning and managing imbalanced datasets. Readers are introduced to scalable architectural patterns that ensure adaptability and performance, including modular designs and microservices. Infrastructure considerations, such as leveraging cloud solutions and hardware accelerators, are also examined to optimize costs and resources. It also discusses deployment strategies with detailed guidance on containerization, orchestration, and automation. Post-deployment challenges are addressed through chapters on managing, updating, and monitoring live models. Additional topics include rigorous testing, debugging, and ensuring explainability and fairness in models, critical for building trustworthy systems. The book concludes with insights into future trends and ethical considerations shaping the ML landscape.
In the end, this book provides professionals with the tools to build effective and sustainable ML systems, helping them solve modern AI challenges.
What you will learn:
- Gain foundational knowledge of machine learning architecture, lifecycle, and implementation strategies.
- How to design robust data pipelines with feature engineering and scaling techniques for high-performance systems.
- Explore scalable ML system designs, including modular architectures, microservices, and cloud infrastructure optimization.
- Understand deployment, monitoring, and ethical considerations to build trustworthy, adaptable, and cost-efficient ML solutions
Who this book is for:
Data scientists, machine learning engineers, AI professionals, and technical professionals aiming to enhance their expertise in ML system architecture and deployment.
Table of Contents:
Chapter 1: Introduction to Machine Learning Architecture.- Chapter 2: Data Pipeline Design for Machine Learning.- Chapter 3: Selecting and Optimizing Models.- Chapter 4: Building Scalable and Modular ML Systems.- Chapter 5: Infrastructure for Machine Learning Workloads.-Chapter 6: Deployment Strategies for Machine Learning Models.- Chapter 7: Managing and Updating Models in Production.- Chapter 8: Testing and Debugging ML Systems.- Chapter 9: Explainability and Interpretability in ML Models.- Chapter 10: Future Trends and Ethical Considerations in ML.
About the Author :
Mohammad Reza Mahdiani, Ph.D., is a technical leader and software architect with deep experience in large-scale AI systems and intelligent automation. His work bridges advanced research and industrial-grade execution, with a focus on engineering systems that deliver measurable and lasting business value. He specializes in setting clear technical direction and designing production-ready solutions that emphasize architectural clarity, performance, and reliability at scale.