Deep Learning with PyTorch : Neural Style Transfer

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5

(4)

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Course Features

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Duration

2 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

2 hours

Course Description

This 2-hour-long course teaches you how to use PyTorch to implement neural style transfer. Neural style transfer is an optimization technique that takes a content image and a style picture and merges them so the output image looks exactly like the content image, but is painted in the style of a style. We will create an artistic style image from the content and the given style image. We will calculate the style and content loss function. This loss function will be minimized using optimization techniques in order to create an artistic style image that preserves style and content features. This project is designed for those who are interested in learning how to use PyTorch to implement neural style transfer. To be successful in this guided assignment, you must be familiar with the theory of neural style transfer, Python programming, and convolutional neuro networks.

Course Overview

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Virtual Labs

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International Faculty

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Case Based Learning

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Post Course Interactions

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Case Studies,Instructor-Moderated Discussions

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Case Studies, Captstone Projects

Skills You Will Gain

What You Will Learn

Understand Neural Style Transfer Practically

Be able to create artistic style image by applying style transfer using pytorch

Showcase this hands-on experience in an interview

Course Instructors

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Parth Dhameliya

Machine Learning Instructor

Parth is a Machine Learning Instructor at coursera. His area of interests includes AI in healthcare,Deep Learning, Machine Learning and Data Science.He focus more on building better medical diagnosti...

Course Reviews

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