The book emphasizes the importance of responsible artificial intelligence practices, including transparency, bias mitigation, and ethical decision-making. Each chapter combines theoretical depth with practical implementation through Python coding exercises, real-world examples, and deployment strategies.This book:Covers the full breadth of artificial intelligence topics, from foundational concepts like data preprocessing and supervised learning to advanced topics in deep learning, reinforcement learning, and natural language processing.Incorporates hands-on Python coding exercises to build practical skills and includes optimization techniques, model deployment strategies, and ethical artificial intelligence practices.Provides in-depth coverage of explainable and ethical artificial intelligence, emphasizing the importance of developing systems that align with societal values and norms.Addresses critical issues such as fairness, transparency, accountability, and bias mitigation.Presents case studies and examples from industries like healthcare, finance, and robotics. The text is primarily written for senior undergraduates, graduate students, and academic researchers in electrical engineering, electronics and communication engineering, artificial intelligence, machine learning, computer science and engineering, and information technology.