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DeepLearning.AI

Generative Deep Learning with TensorFlow

In this course, you will: a) Learn neural style transfer using transfer learning: extract the content of an image (eg. swan), and the style of a painting (eg. cubist or impressionist), and combine the content and style into a new image. b) Build simple AutoEncoders on the familiar MNIST dataset, and more complex deep and convolutional architectures on the Fashion MNIST dataset, understand the difference in results of the DNN and CNN AutoEncoder models, identify ways to de-noise noisy images, and build a CNN AutoEncoder using TensorFlow to output a clean image from a noisy one. c) Explore Variational AutoEncoders (VAEs) to generate entirely new data, and generate anime faces to compare them against reference images. d) Learn about GANs; their invention, properties, architecture, and how they vary from VAEs, understand the function of the generator and the discriminator within the model, the concept of 2 training phases and the role of introduced noise, and build your own GAN that can generate faces. The DeepLearning.AI TensorFlow: Advanced Techniques Specialization introduces the features of TensorFlow that provide learners with more control over their model architecture, and gives them the tools to create and train advanced ML models. This Specialization is for early and mid-career software and machine learning engineers with a foundational understanding of TensorFlow who are looking to expand their knowledge and skill set by learning advanced TensorFlow features to build powerful models.

Status: Autoencoders
Status: Generative AI
IntermediateCourse16 hours

Featured reviews

IU

4.0Reviewed Jun 19, 2024

Excellent course. The only reason I don't opt to 5-rate it is because, coming from completing courses by Andrew Ng, I kind of wanted a more mathematics/theory- driven course.

OS

5.0Reviewed Mar 21, 2024

Although the VAE module was a bit difficult, I found this course helpful to refine my deep learning knowledge.

RB

4.0Reviewed Apr 30, 2021

Really good content covering the surface of lot of advanced topics.

RS

5.0Reviewed Apr 24, 2022

A wonderful course to learn on how we can achieve the output from the input itself using VAE. Thanks for building this course!

LL

5.0Reviewed Jun 22, 2021

G​reat Course. It would be better to have Capstone Project and Peer Review Process to prove that we are actually able to apply all these techniques.

NS

5.0Reviewed Feb 27, 2021

This course was fantastic! Laurence and DeepLearning.ai team did great job. Definitely recommended.

FR

5.0Reviewed Mar 17, 2021

Excellent course.I really appreciated to have a quiz and an assignment each week.Thanks to all the contributors.

MS

5.0Reviewed Sep 20, 2023

Very good course, I learned many new and interesting things from here. The quizzes and labs are quite challenging.

LV

5.0Reviewed Mar 17, 2022

Excellent course - Indepth knowledge delivered by one of the top-developers in an engaginand challenging manner. Superb. Would definitely recommend.

YH

4.0Reviewed Feb 20, 2021

Clear explanation on all generative methods. However, I find it too short. The course can be longer and include more generative methods.

PG

5.0Reviewed Oct 25, 2023

Great as all other courses in this set of specializations! Thank you!

PV

5.0Reviewed Aug 18, 2022

excellent course, which gives a very good insight to modeling with advanced tecnhiques!!

All reviews

Showing: 20 of 50

Pramit Dutta
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Reviewed Apr 19, 2021
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