A Practical Guide to Artificial Intelligence
Adrian Hopgood

#Artificial_Intelligence
#Scientists
#Engineers
#AI
#LPA
The fourth edition of this bestselling textbook explains the principles of artificial intelligence (AI) and its practical applications. Using clear and concise language, it provides a solid grounding across the full spectrum of AI techniques, so that its readers can implement systems in their own domain of interest.
The coverage includes knowledge-based intelligence, computational intelligence (including machine learning), and practical systems that use a combination of techniques. All the key techniques of AI are explained—including rule-based systems, Bayesian updating, certainty theory, fuzzy logic (types 1 and 2), agents, objects, frames, symbolic learning, case-based reasoning, genetic algorithms and other optimization techniques, shallow and deep neural networks, hybrids, and the Lisp, Prolog, and Python programming languages. The book also describes a wide range of practical applications in interpretation and diagnosis, design and selection, planning, and control.
Fully updated and revised, Intelligent Systems for Engineers and Scientists: A Practical Guide to Artificial Intelligence, Fourth Edition
Features:
The rule-based and uncertainty-based examples in the book are compatible with the Flex toolkit by Logic Programming Associates (LPA) and its Flint extension for handling uncertainty and fuzzy logic. Readers of the book can download this commercial software for use free of charge. This resource and many others are available at the author’s website: adrianhopgood.com.
Whether you are building your own intelligent systems, or you simply want to know more about them, this practical AI textbook provides you with detailed and up-to-date guidance.
Table of Contents
Chapter 1: Introduction
Chapter 2: Rule-Based Systems
Chapter 3: Handling Uncertainty: Probability and Fuzzy Logic
Chapter 4: Agents, Objects, and Frames
Chapter 5: Symbolic Learning
Chapter 6: Single-Candidate Optimization Algorithms
Chapter 7: Genetic Algorithms for Optimization
Chapter 8: Shallow Neural Networks
Chapter 9: Deep Neural Networks
Chapter 10: Hybrid Systems
Chapter 11: Al Programming Languages and Tools
Chapter 12: Systems for Interpretation and Diagnosis
Chapter 13: Systems for Design and Selection
Chapter 14: Systems for Planning
Chapter 15: Systems for Control
Chapter 16: The Future of Intelligent Systems
Adrian Hopgood is Full Professor of Intelligent Systems and Director of Future & Emerging Technologies at the University of Portsmouth. He is also a visiting professor at the Open University and at Sheffield Hallam University. He is a Chartered Engineer, Chartered IT Professional, Fellow of the BCS (formerly British Computer Society), and a committee member for the BCS Specialist Group on Artificial Intelligence. He has extensive experience in both academia and industry. He has worked at the level of Dean and Pro Vice-Chancellor in four universities in the UK and overseas. He has also enjoyed technical roles with Systems Designers (now part of Hewlett-Packard) and the Telstra Research Laboratories in Australia. His main research interests are in artificial intelligence and its practical applications. He has supervised 19 PhD projects to completion and published more than 100 research articles. --This text refers to an alternate kindle_edition edition.









