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शुरू होता है 5 June 2026 18:21

समाप्त होता है 5 June 2026

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Neural Networks - Lecture 24b

Watch Lecture 24b: Neural Networks on YouTube Unravel the complexities of Neural Networks with this insightful lecture focused on understanding their structural intricacies. Lecture 24b delves into the hypothesis class and the mechanics of forward propagation essential for making informed predictions. Perfect for those studying Artificial Int.
UofU Data Science via YouTube

UofU Data Science

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49 minutes

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अवलोकन

Watch Lecture 24b:

Neural Networks on YouTube

Unravel the complexities of Neural Networks with this insightful lecture focused on understanding their structural intricacies. Lecture 24b delves into the hypothesis class and the mechanics of forward propagation essential for making informed predictions.

Perfect for those studying Artificial Intelligence or Computer Science.

Available on YouTube, this session is part of a comprehensive online course series brought to you by the university. Cement your knowledge by exploring these vital concepts involved in modern AI development.

पाठ्यक्रम

  • Introduction to Neural Networks
  • Overview of neural networks and their applications
    Importance of structural understanding in neural networks
  • Hypothesis Class in Neural Networks
  • Definition and importance of the hypothesis class
    Factors affecting the hypothesis class
    Examples of hypothesis classes in neural networks
  • Neural Network Architecture
  • Layers and neuron structure
    Activation functions
    Overview of common architectures (e.g., feedforward, convolutional, recurrent)
  • Forward Propagation
  • Explanation of forward propagation
    Mathematical formulation of forward propagation in a neural network
    Step-by-step example of forward propagation
  • Making Predictions with Neural Networks
  • Understanding the output layer and interpretation of predictions
    Evaluation metrics for predictions (e.g., accuracy, loss functions)
  • Case Study: Forward Propagation in Action
  • Application of forward propagation to a sample dataset
    Analyzing the impact of different architectures on predictions
  • Summary and Q&A
  • Recap of key concepts
    Open floor for questions and discussion on topics covered

विषय

Computer Science