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Deep learning, reinforcement learning, and the rise of intelligent systems / [edited by] M. Irfan Uddin, Wali Khan Mashwani.

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摘要註

The applications of rapidly advancing intelligent systems are so varied that many are still yet to be discovered. There is often a disconnect between experts in computer science, artificial intelligence, machine learning, robotics, and other specialties, which inhibits the potential for the expansion of this technology and its many benefits. A resource that encourages interdisciplinary collaboration is needed to bridge the gap between these respected leaders of their own fields. Deep Learning, Reinforcement Learning, and the Rise of Intelligent Systems represents an exploration of the forefront of artificial intelligence, navigating the complexities of this field and its many applications. This guide expertly navigates through the intricate domains of deep learning and reinforcement learning, offering an in-depth journey through foundational principles, advanced methodologies, and cutting-edge algorithms shaping the trajectory of intelligent systems. The book covers an introduction to artificial intelligence and its subfields, foundational aspects of deep learning, a demystification of the architecture of neural networks, the mechanics of backpropagation, and the intricacies of critical elements such as activation and loss functions. The exploration continues with an in-depth dive into advanced techniques and algorithms emphasizing the practical applications of these disciplines. From Convolutional Neural Networks (CNNs) transforming image processing to the intricate workings of Recurrent Neural Networks (RNNs) in handling sequential data and the innovative applications of Generative Adversarial Networks (GANs) in data synthesis, the book unfolds a tapestry of state-of-the-art advancements. Additionally, readers will find a robust resource in this book with the latest findings on reinforcement learning, covering Markov Decision Processes (MDPs), value functions, and policies. The exploration advances into sophisticated algorithms like Deep Q-Networks (DQNs), policy gradient methods, and actor-critic models, each unraveling new dimensions in learning and decision-making. With chapters that spotlight real-world applications, a focus on computer vision, natural language processing, and personalized recommendations, this book’s narrative extends beyond theoretical frameworks. It provides insights into the practical deployment of intelligent systems in game-playing, robotics, autonomous vehicles, and beyond.

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