AlexWho? Going Deeper with Deep CNNs
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About this listen
The source is a chapter from the book "Dive into Deep Learning" that explores the historical development of deep convolutional neural networks (CNNs), focusing on the foundational AlexNet architecture. The authors explain the challenges faced in training CNNs before the advent of AlexNet, including limited computing power, small datasets, and lack of crucial training techniques. They discuss how AlexNet overcame these obstacles by leveraging powerful GPUs, large-scale datasets like ImageNet, and innovative training strategies. The chapter also delves into the architecture of AlexNet, highlighting its similarities to LeNet, and comparing its advantages in terms of depth, activation function, and model complexity control. Finally, the authors emphasize the importance of AlexNet as a crucial step towards the development of the deep networks used today, showcasing its impact on the field of computer vision and deep learning.
Read more: https://d2l.ai/chapter_convolutional-modern/alexnet.html