
Data Science and Machine Learning (Theory and Projects) A to Z - Gradient Descent in CNNs: Extending to Multiple Layers
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Information Technology (IT), Architecture
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University
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Hard
Wayground Content
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The video tutorial explains the extension of forward propagation to multi-class scenarios, detailing the impact of entries on loss through multiple neurons. It covers handling multiple layers in neural networks and discusses gradient descent and various frameworks like Tensorflow and Pytorch. The tutorial concludes with an introduction to coding forward and backward passes in Numpy, setting the stage for using high-level frameworks.
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