DownloadThe Portobello Bookshop Gift Guide 2024

Artificial Intelligence and Machine Learning for Smart Community

Concepts and Applications

R Sathiyaraj editor T V Ramana editor G S Ghantasala editor Mudassir Khan editor

Format:Hardback

Publisher:Taylor & Francis Ltd

Published:26th Jan '24

£89.99

Supplier delay - available to order, but may take longer than usual.

Artificial Intelligence and Machine Learning for Smart Community cover

Intelligent systems are technologically advanced machines that perceive and respond to the world around them. Artificial Intelligence and Machine Learning for Smart Community: Concepts and Applications presents the evolution, challenges, and limitations of the application of machine learning and artificial intelligence to intelligent systems and smart communities.

  • Covers the core and fundamental aspects of artificial intelligence, machine learning, and computational algorithms in smart intelligent systems
  • Discusses the integration of artificial intelligence with machine learning using mathematical modeling
  • Elaborates concepts like supervised and unsupervised learning, and machine learning algorithms, such as linear regression, logistic regression, random forest, and performance evaluation matrices
  • Introduces modern algorithms such as convolutional neural networks and support vector machines
  • Presents case studies on smart healthcare, smart traffic management, smart buildings, autonomous vehicles, smart education, modern community, and smart machines

Artificial Intelligence and Machine Learning for Smart Community: Concepts and Applications is primarily written for graduate students and academic researchers working in the fields of computer science and engineering, electrical engineering, and information technology. Seasonal Blurb: This reference text presents the most recent and advanced research on the application of artificial intelligence and machine learning on intelligent systems. It will discuss important topics such as business intelligence, reinforcement learning, supervised learning, and unsupervised learning in a comprehensive manner.

ISBN: 9781032526065

Dimensions: unknown

Weight: 930g

164 pages