Transfer Learning for Images Using PyTorch: Essential Training
With Jonathan Fernandes
Liked by 189 users
Duration: 58m
Skill level: Intermediate
Released: 10/8/2019
Course details
After its debut in 2017, PyTorch quickly became the tool of choice for many deep learning researchers. In this course, Jonathan Fernandes shows you how to leverage this popular machine learning framework for a similarly buzzworthy technique: transfer learning. Using a hands-on approach, Jonathan explains the basics of transfer learning, which enables you to leverage the pretrained parameters of an existing deep-learning model for other tasks. He then shows how to implement transfer learning for images using PyTorch, including how to create a fixed feature extractor and freeze neural network layers. Plus, find out about using learning rates and differential learning rates.
Skills you’ll gain
Meet the instructor
Learner reviews
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kun hayyuningtyas
kun hayyuningtyas
Student at UIN walisongo semarang
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VANKDOWATH KRISHNA NAIK
VANKDOWATH KRISHNA NAIK
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Contents
What’s included
- Practice while you learn 1 exercise file
- Learn on the go Access on tablet and phone