DEEP LEARNING IN THE ERA OF BIG DATA: FOUNDATIONS, ADVANCES, APPLICATIONS, CHALLENGES, AND FUTURE DIRECTIONS
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Deep learning (DL) has revolutionized machine learning, especially in the era of big data, by autonomously learning hierarchical representations from vast datasets. This paper offers a comprehensive overview of DL, covering foundational concepts, recent advances, practical applications, challenges, and future directions. It traces DLs historical roots from the perceptron model to contemporary deep neural networks, highlighting its resurgence in the early 21st century due to computational advancements and large-scale datasets. The paper discusses DLs objectives, including methodologies overview, challenges analysis, and future trends exploration. Foundational DL concepts are explained, including artificial neurons, activation functions, and network architectures like feedforward, convolutional, and recurrent neural networks. Recent advancements such as transfer learning, reinforcement learning, meta-learning, and self-supervised learning are explored, enhancing model performance across domains like computer vision, natural language processing, and robotics. Applications of DL in healthcare, finance, automotive, and more are detailed with real-world examples. The paper also analyzes challenges like data scarcity, computational complexity, and ethical considerations, proposing strategies for mitigation. Future directions in DL, including explainable AI and ethical considerations, are discussed, emphasizing DLs transformative impact and its role in driving innovation in big data analytics.
[Ali Alkhudhayr (2024); DEEP LEARNING IN THE ERA OF BIG DATA: FOUNDATIONS, ADVANCES, APPLICATIONS, CHALLENGES, AND FUTURE DIRECTIONS Int. J. of Adv. Res. (Apr). 549-552] (ISSN 2320-5407). www.journalijar.com
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