000 02685nam a22002537a 4500
003 OSt
005 20260602153303.0
008 260602b |||||||| |||| 00| 0 eng d
020 _a9789367133170
041 _aeng
082 _a006.33 NEG-A
100 _aNegnevitsky, Michael.
_980986
245 _aArtificial intelligence: a guide to intelligent systems
250 _a4th
260 _aChennai
_bPearson India Education Services Pvt. Ltd.
_c2026
300 _axviii, 580p.
500 _aNew and Updated Features: New Chapter on Deep Learning: Examines different architectures of deep learning and convolutional neural networks, identifying common features of deep neural networks. Generative AI: A new section explores generative AI and discusses contemporary chatbots like Alexa, Siri, and ChatGPT. Semantic Networks: A new section discusses successful applications of the semantic web, including improved data management and enhanced search capabilities. Reinforcement Learning: Introduces the concepts of model-based and model-free reinforcement learning. Real-World Case Studies: Two new case studies focus on image recognition using a convolutional neural network and finding the optimum of an unknown function using particle swarm optimisation.
520 _aIntroduction to the principles and applications of artificial intelligence and intelligent systems. Explains expert systems, fuzzy logic, artificial neural networks, evolutionary computation, knowledge engineering, data mining, reinforcement learning, deep learning, semantic networks, and generative artificial intelligence. Emphasizes practical problem-solving techniques and real-world applications through case studies and examples, making complex AI concepts accessible to students and practitioners.
520 _aUnderstand the Simple Ideas Behind AI What are the principles behind intelligent systems? How are they built? What are intelligent systems useful for? How do we choose the right tool for the job? These fundamental questions are clearly answered by Michael Negnevitsky’s Artificial Intelligence: A Guide to Intelligent Systems. Unlike many texts burdened with complex matrix algebra and differential equations, this book demonstrates that the core ideas behind intelligent systems are simple and straightforward. This text assumes little or no prior programming experience as it expertly tackles topics like: Expert Systems Fuzzy Systems Artificial Neural Networks Evolutionary Computation Knowledge Engineering Data Mining
650 _aArtificial intelligence.
_980987
650 _aExpert systems (Computer science).
_980988
942 _cBK
999 _c200018
_d200018