Adding Layers and Forward Functions to Your Neural Network in PyTorch
Offered By: Prodramp via YouTube
Course Description
Overview
Syllabus
- Workshop #2 Introduction
- Topics in Workshop #2
- What you will learn in this workshop?
- RECAP from Workshop #1
- Workshop #2 Kickoff
- Using nn.Module in Python
- Defining base neural network model
- Design of your neural network class
- Neural network class based on data input
- Neural network shape
- Model and Data Integration
- Network with input and output layer
- Network with 1 hidden layer
- Network with multiple hidden layers
- Multilayered Network Model
- Role of Forward function in network
- CNN Explorer Intro
- Complex Forward Function
- Heart Disease Problem network model
- . MNIST digits recognition problem model
- nn.Parameters in PyTorch
- Your Homework
- Push notebook to GitHub
- RECAP
- Workshop #3 Agenda
Taught by
Prodramp
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