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1
​ - Introduction
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​ - Course information
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​ - Why deep learning?
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​ - The perceptron
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​ - Activation functions
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​ - Perceptron example
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​ - From perceptrons to neural networks
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​ - Applying neural networks
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​ - Loss functions
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​ - Training and gradient descent
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​ - Backpropagation
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​ - Setting the learning rate
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​ - Batched gradient descent
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​ - Regularization: dropout and early stopping
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​ - Summary
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Dive into the foundations of deep learning with this comprehensive lecture from MIT's Introduction to Deep Learning course. Explore key concepts including perceptrons, neural networks, activation functions, loss functions, gradient descent, backpropagation, and regularization techniques. Learn why deep learning is revolutionizing artificial intelligence and gain practical insights into applying neural networks. Follow along as the lecturer guides you through examples, explains training processes, and discusses important considerations like learning rates and batched gradient descent. By the end of this 49-minute session, acquire a solid understanding of the fundamental principles underlying modern deep learning approaches.

MIT Introduction to Deep Learning

Alexander Amini
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