Artificial Intelligence and Machine Learning for Real-World Applications

£91.99

Artificial Intelligence and Machine Learning for Real-World Applications

A Beginner's Guide with Case Studies

Automatic control engineering Digital and information technologies: Health and safety aspects Digital and information technologies: social and ethical aspects Digital and information technologies: Legal aspects Supercomputers Algorithms and data structures Computer architecture and logic design Artificial intelligence

Authors: Latesh Malik, Sandhya Arora, Urmila Shrawankar

Dinosaur mascot

Language: English

Published by: Chapman and Hall/CRC

Published on: 16th October 2025

Format: LCP-protected ePub

ISBN: 9781040427927


Introduction to Artificial Intelligence and Machine Learning

This book introduces foundational and advanced concepts in artificial intelligence (AI) and machine learning (ML), focusing on their real-world applications and societal implications. Covering topics from knowledge representation and model interpretability to deep learning and generative AI, Artificial Intelligence and Machine Learning for Real-World Applications: A Beginner's Guide with Case Studies includes practical Python implementations and case studies from healthcare, agriculture, and education.

Core Concepts and Topics Covered

Beginning with core concepts such as AI fundamentals, knowledge representation, and statistical techniques, the text gradually advances to cover ML algorithms, deep learning architectures, and the basics of generative AI. Detailed discussions of data preprocessing, model training, evaluation metrics, and Python-based implementation make this book both practical and accessible.

Practical Applications and Case Studies

Offers real-world examples and case studies illustrating the societal impact and practical applications of AI and ML technologies. Discusses data preprocessing techniques, model selection, and evaluation metrics with practical implementation in Python and in detail. Explores AI problem-solving processes, knowledge representation, and model training strategies, catering to readers with varying levels of technical expertise.

Focus Areas

Covers AI and ML principles spanning statistical techniques, ML algorithms, deep learning structures, and generative AI basics. Focuses on societal applications in healthcare, agriculture, and education, addressing challenges faced by the elderly and special needs individuals.

Intended Audience

This book is for professionals, researchers, and scholars interested in the application of AI and ML.

Show moreShow less