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How Convolutional Neural Networks Work

Offered By: Brandon Rohrer via YouTube

Tags

Convolutional Neural Networks (CNN) Courses Normalization Courses Hyperparameters Courses

Course Description

Overview

Explore the inner workings of Convolutional Neural Networks in this 26-minute video lecture from the End-to-End Machine Learning School. Gain a gentle, guided tour of CNNs, uncovering the magic behind their functionality. Learn about basic concepts, filtering, pooling, normalization, fully connected layers, back propagation, hyper parameters, and the importance of order and spatial relationships. Discover how these powerful neural networks operate and process information, with accompanying slides and text available in a related blog post for further study.

Syllabus

Introduction
Basic ideas
Filtering
Pooling
Normalization
Fully Connected Layer
Back Propagation
Hyper Parameters
Order Matters
Spatial Matters
Conclusion


Taught by

Brandon Rohrer

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