Introduction to Deep Learning Using PyTorch – Basic Tutorial with Deep Learning Torch
This video will serve as an introduction to PyTorch, a dynamic, deep learning framework in Python. In this video, you will learn to create simple neural networks, which are the backbone of artificial intelligence. We will start with fundamental concepts of deep learning (including feed forward networks, back-propagation, loss functions, etc.) and then dive into using PyTorch tensors to easily create our networks. Finally, we will CUDA render our code in order to be GPU-compatible for even faster model training.
What you’ll learn—and how you can apply it
Deep learning basics and you can apply it to your domain (X + AI)
PyTorch platform basics and you can apply it to any deep learning problem
CUDA rendering, which will allow you to train your networks very quickly
This video is for you because…
You may be an experienced AI researcher (academia or industry) with years of experience, and may have coded in platforms such as TensorFlow and Theano before, but may be a bit hesitant to transition into PyTorch. This introductory video will show you how easy it is to switch and the benefits you will reap with PyTorch’s dynamic nature.
You may also be a software engineer or computer science student or enthusiast looking to get started with deep learning. For you, PyTorch is the best platform to start with because of its simple, yet powerful interface. It makes implementing deep networks very transparent, which allows you to validate all the mathematical concepts you are learning. Familiarity with basic deep learning concepts is preferred but not required as we will cover the math behind the code as well.
Table of Contents:
– Introduction to PyTorch
– Introduction to Deep Learning
– What is PyTorch?
– PyTorch Operations
– Setting up a Classification Problem
– Data Representation and Structure: Math
– Data Representation and Structure: Code
– Math behind Feed Forward Networks
– Training a Neural Network for Classification: Softmax
– Training a Neural Network for Classification: Cross-Entropy
– Training a Neural Network for Classification: Back-Propagation
– Creating Custom PyTorch Components
– Proper Training Procedure for Neural Networks
– PyTorch Basics Wrap Up
Manufacturer: Yudomi / Udemy
Language of instruction: English
Moderator: Alfredo Canziani, Goku Mohandas
Level of training: Preliminary
time of training: 1 hour + 27 minutes
File size: 1510 MB