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Learner Reviews & Feedback for Convolutional Neural Networks by DeepLearning.AI

4.9
stars
42,300 ratings

About the Course

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....

Top reviews

AV

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

RK

Sep 1, 2019

This is very intensive and wonderful course on CNN. No other course in the MOOC world can be compared to this course's capability of simplifying complex concepts and visualizing them to get intuition.

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4651 - 4675 of 5,610 Reviews for Convolutional Neural Networks

By dibyaranjan s

Jul 13, 2020

The grader in the final assignment was giving some problems even if the answer was as close as last decimal digit.Else the course was excellent ,it gave excellent insights to different architectures used in CNNS and its working.

By VENKATA N S H N 1

Jul 4, 2020

Course content was really upto the mark with the current trends in convolutional neural networks, its the best choice for those with pre-gained knowledge about machine learning and have and idea of updating their skills in cnn.

By Austin M

Apr 28, 2020

As usual, the content is top quality. I did however notice several times in the recordings where Andrew tried to state something one way and then went back and restated the same thing - it seems like this should be edited out...

By Daniel A

Oct 2, 2018

Really nice course of convnets. I think the intuition behind them could be more explained. In my opinion, the artistic part of the this nets should not be in this course as there is plenty of more important knowledge to adquire.

By Wei W

Dec 17, 2017

Thanks. Great course :)

There're some mistakes in assigments. Check the course forum when you're in trouble. The course forum is very helpful. Thank all the students and TAs who post their questions and solutions in course forum.

By Matthew O

Nov 12, 2020

A very good course, but probably the weakest of those so far in the Deep Learning specialisation. Got better towards the end, but the first couple of weeks felt like some topics were not fully explained in terms of relevance.

By Joseph N

May 29, 2020

Good course but I would really recommend doing a deeper explanation on backprop of CNN's. Also I think the explanation of YOLO is not arranged well. ultimately it gets there but when it is first introduced a LOT is left out.

By Gary S

Nov 22, 2017

Great material, but there was a bug in the grading of the final problem. To work around the bug in the grader, everyone is modifying their program so it doesn't match the expected results but nonetheless will pass the grader.

By איתי ק

Dec 13, 2020

I think that you should give more details and instruction how to implement our own images, how to perform Transfer learning to the ConvNet for improving, how to train the network myself not only load the pre-train network...

By wilfried l

Apr 11, 2020

Very Interesting

As usual, it is very very good from theory point of view. Practical examples are also really interesting.

Do not expect to be autonomous after the course, as you won't be able to use Tensorflow or Keras alone.

By Benny P

Mar 29, 2018

This course provides great introduction to CNN. It is an eye opener if you didn't know about CNN and it will take you to a level where you will be quite comfortable with CNN formulas and know a bit about how to implement it.

By Van V N

Dec 8, 2017

I learned a lot about CNN. Good programming assignments. Unfortunately the quality of this course was not as good as the three courses before (Grader Bug in last programming assignment, see discussion forums for workaround).

By Заспа А Ю

Mar 29, 2021

Вообще четко, еще бы отредактировать субтитры на английском. И цены не будет. Звезду снимаю только за то, что когда описывается модель с распознаванием и позиционированием начинается сумбур и надо по несколько раз смотреть.

By Paulo V

May 25, 2018

Great lectures and exercises but the leave-behind study materials (lecture slides and notebooks) could be a little more helpful, and the frequent server disconnects have forced me to do most of the programming work offline.

By Iurii L

Sep 1, 2022

A lot of useful information.

However, video editing is awkward sometimes plus Andrew's voice sometimes gets down to wisper which is hard to catch.

So good course but there is defenitely some spave to improve presentation.

By Nitin C

Dec 11, 2019

Loved the content. Covers the fundamentals of ConvNets wonderfully. Need a lot more clarity on the use of TensorFlow and Keras in building these systems. Particularly the programming exercises felt a little obscure to me.

By Anupam

Jun 13, 2023

Although the course is comprehensive, at times, some of the concepts were skimmed over, especially in weeks 3 and 4. Topics like UNet architecture and Neural Style transfer felt rushed.

Overall, the course was excellent.

By akshaya r

Apr 12, 2020

Great Course! I did the sequence model course before CNN. CNN programming exercises are challenging than the other four courses but could solve it with the support of discussion forums and hints provided in the exercise.

By jianguang

Aug 1, 2019

the general concept is important to understand the data flow from one block to anther block. this will give me big picture to learn convolution Neural Net works , thanks all content and support on this course.

-jianguang

By Shane M

Feb 2, 2018

I had to watch the videos more than once to grasp all of the material. The exams were harder, and no partial credit was given nor specific indication of missed questions on the quizzes. Great material, very applicable.

By Nicolas T

Jan 5, 2018

The lectures are awesome as usual, but I would prefer less guided exercises with less fancy content but more I don't feel like I have implemented anything myself unfortunately. Still, big thanks for the great pedagogy!

By Amit A

Nov 18, 2017

Not as great as the previous three.

Prof Ng's explanations are flawless and awesome as always but the programming assignments had more issues but I think by the time others take this course all issues will be resolved.

By 李磊

Nov 28, 2017

The judge system of last week's work has some problem, but the course of Andrew is still worthy to learn. Learned a lot about CNN from the course, but still need to read more papers in order to step into the field.

By Raghav B

Jan 17, 2019

This is a great course with a lot of useful content. The only reason I am not giving it 5 stars is that it was too packed. I would suggest Andrew and team to convert this course to a 6 week course instead of 4 weeks.

By Scott M

Apr 17, 2018

Overall the Course is good but the only examples given in assignments or lectures pertain to Computer Vision and Image recognition/manipulation. Surely a few examples or discussion of other uses of CNNs is in order.