Exploring the Advancements Applications and Challenges of Neural Networks and Deep Learning in Intelligent Computing Systems
Keywords:
Neural networks, deep learning, intelligent computing, artificial intelligence, machine learningAbstract
Neural networks and deep learning have significantly transformed the landscape of intelligent computing systems. This paper explores the advancements in neural network architectures, training methods, and computational efficiency. It discusses the diverse applications in fields such as healthcare, finance, and autonomous systems while identifying key challenges related to scalability, interpretability, and data privacy. The paper draws on a comprehensive literature review to highlight key trends and future directions in the field.
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