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Convolutional Neural Networks

In the fourth course of the Deep Learning Specialization, you will understand how computer vision has evolved and become familiar with its exciting applications such as autonomous driving, face recognition, reading radiology images, and more. By the end, you will be able to build a convolutional neural network, including recent variations such as residual networks; apply convolutional networks to visual detection and recognition tasks; and use neural style transfer to generate art and apply these algorithms to a variety of image, video, and other 2D or 3D data. The Deep Learning Specialization is our foundational program that will help you understand the capabilities, challenges, and consequences of deep learning and prepare you to participate in the development of leading-edge AI technology. It provides a pathway for you to gain the knowledge and skills to apply machine learning to your work, level up your technical career, and take the definitive step in the world of AI.

Status: Artificial Neural Networks
Status: Computer Vision
IntermediateCourse36 hours

Featured reviews

NK

5.0Reviewed Jul 10, 2024

Fabulously designed, I could confidently say that the programming exercise is sufficiently sophisticated, and yet managed to be not so difficult as to deter new learners. All in all a great course!

AV

5.0Reviewed Jul 11, 2020

I really enjoyed this course, it would be awesome to see al least one training example using GPU (maybe in Google Colab since not everyone owns one) so we could train the deepest networks from scratch

SH

4.0Reviewed Aug 5, 2019

Great content in lectures! Automatic graders for programming assignments can be tricky, and set to old versions of tf sometimes, but answers to these issues are readily found in the discussion forums.

FH

5.0Reviewed Jan 11, 2019

Amazing! Feels like AI is getting tamed in my hands. Course lectures , assignments are excellent. To those who are not well versed with python - numpy and tensorflow , it would be better to brush up.

JM

5.0Reviewed Sep 19, 2020

Excellent, solid insights into working of models as well as providing references to the original work. THe assignments give practical examples of models one might want to implement for their own use.

EB

5.0Reviewed Nov 2, 2017

Wonderful course. Covers a wide array of immediately appealing subjects: from object detection to face recognition to neural style transfer, intuitively motivate relevant models like YOLO and ResNet.

SK

5.0Reviewed Oct 10, 2020

Andrew still teaches great!The programming exercises sometimes have trouble with loading databases (sometimes takes like 10 minutes to complete loading), and the kernel sometimes crash for no reason.

S

5.0Reviewed Jun 3, 2020

This was by far the most challenging and difficult course in the specialization but also the most informative and useful from the perspective of the application side of Deep Learning! Thanks, Andrew!

AM

5.0Reviewed May 5, 2019

A big thank you to Professor Andrew and his team for structuring this course and introducing the world of ConvNets to me. I found the video lectures easy to understand and the exercises intriguing.

SB

5.0Reviewed Jul 15, 2020

For me personally it's the best course in Deep Learning specialization. Well structured, interesting projects, good examples! The only thing that could be better is to use Tensorflow 2 instead of 1.0

DM

5.0Reviewed Apr 21, 2019

This is one of the best courses for CNNs. This gives a very deep understanding of the concepts and helps to understand the brains behind the CNNs and their working in application based environments.

JY

5.0Reviewed Feb 23, 2018

This was the toughest of the four courses so far but for me was the most exciting! Andrew Ng gives you the codes in the assignments that you need to get started for state of the art applications.

All reviews

Showing: 20 of 5,646

divya prakash pandla
3.0
Reviewed Feb 18, 2019
Farzeen Hasharaf
5.0
Reviewed Jan 12, 2019
Aleksa Gordić
5.0
Reviewed Jan 13, 2019
Gyuho Song
5.0
Reviewed Apr 24, 2019
Faki Zun
3.0
Reviewed Apr 18, 2019
Rohan Khollamkar
5.0
Reviewed Sep 2, 2019
Rajwardhan Shinde
5.0
Reviewed Dec 12, 2019
Stefan Josef
3.0
Reviewed Dec 30, 2018
Antonio Vazquez
5.0
Reviewed Jul 12, 2020
Xinwei Bai
3.0
Reviewed Feb 13, 2019
Alberto Bonsanto
3.0
Reviewed Feb 8, 2019
Anand Ramachandran
5.0
Reviewed Apr 3, 2018
David Benjamín Castillo Soto
5.0
Reviewed Dec 17, 2018
Markus Buehler
4.0
Reviewed Dec 5, 2018
Lukas Polok
1.0
Reviewed Dec 12, 2017
Sriram Gopalakrishnan
3.0
Reviewed Feb 9, 2019
Md. Zeeshan Mohnavi
2.0
Reviewed Jul 10, 2020
Josh Mineroff
4.0
Reviewed Jul 30, 2019
Sergei Shilin
3.0
Reviewed Apr 29, 2019
Glen Krabbenborg
1.0
Reviewed Mar 26, 2020