Chevron Left
Back to Convolutional Neural Networks

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

4.9
stars
42,317 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

OA

Sep 3, 2020

Great course. Easy to understand and with very synthetized information on the most relevant topics, even though some videos repeat information due to wrong edition, everything is still understandable.

AG

Jan 12, 2019

Great course for kickoff into the world of CNN's. Gives a nice overview of existing architectures and certain applications of CNN's as well as giving some solid background in how they work internally.

Filter by:

251 - 275 of 5,613 Reviews for Convolutional Neural Networks

By Prakash M

Feb 14, 2020

Wonderfully designed course for beginners to know all about CNNs. Even experienced professionals can have all their concepts cleared not only in CNNs, but also in YOLO and it's applications in object detection. Thank you very much Coursera Team for all your efforts in making this course accessible to thousands of aspiring data scientists.

By Dhanunjay C

Dec 26, 2020

Professor Andrew makes the most difficult concepts crystal clear. The examples that are taken are very much relatable. If one does not understand the concept, going back and listening again is very helpful. I wish knew about him years back. CNN can save several lives by predicting accidents or environmental disasters. Very powerful tool.

By Paul M

Apr 23, 2020

Your courses are really great. I love the simplicity of the explanations followed by very advanced notebooks. Thnak you very much for your work. I appreciate a lot ! Maybe one observation. Personnaly I find the notebooks too guided and easy. Maybe you could write less in the notebooks and more links like you do with Hints. Thanks again

By Yedhu K V P

Jun 29, 2018

This course helped me to learn in detail about convolutional neural networks. I have heard of CNN, but this is the first time I am trying it out myself. It's interesting and fun to learn. I'm planning to do more projects using the ideas learned from this course. I highly recommend this course to any aspiring machine learning student.

By Muhammad M K

Feb 23, 2018

An amazing course! Not only does the course covers seminal work in the area of deep learning related to image processing but it shares valuable insights into problem solving and provides hands on experience. If there is a single course that I have to recommend to anyone related to deep learning for image processing, this would be it.

By Rajthilak M

Apr 23, 2018

The lectures were excellent and helped me understand the key elements of convolutional neural networks. I enjoyed coding the assignments and building foundation knowledge for building real-world AI applications. Thanks to the very strong foundation ,I am able to read and interpret many of the real world AI experts' blog and views.

By Deleted A

Nov 27, 2017

This is really a superb course. Andrew Ng has the ability to clearly explicate the complexities of convolutional networks. The coverage of topics such as residual networks, face recognition, Yolo, and neural style transfer are both intriguing and informative. I found the programming assignments challenging, but deeply instructive.

By Minsheng L

Apr 11, 2020

a really nice class. I learned different techiques like CNN, YOLO, and used them to do face recognition, style transfering.... This calss is comprehensive. I need repeating many time before I can really master all of them. Thanks for the instructors, and all the people who have contributed to this calss. I've really learned a lot.

By Irina M

Apr 2, 2019

Thank you for the course and I really like it. Learn a lot and I made few teaching sessions of DeepLearning algorithm for Women Who Code, where I am mentor in leadership group. I clarified many things for myself during the course, I very grateful for the amazing knowledge and experience! I will recommend this course to colleagues.

By Tun C

Aug 15, 2018

I appreciate the way professor Ng made the Convolutional Neural Networks concepts and architectures easy to understand. This course gave a very good overview and professor Ng presented the intuition behind the concepts as usual. The programming assignments are also a good mix of under-the-hood and high-level application of CNN.

By K173664 S K

Feb 9, 2021

This was a great course, thousand thanks to sir Andrew ng who put a great effort in structuring and delivering the course in a way that is easy to be digested for professionals as well as for beginners. there are a lot of cov net courses in the market but the knowledge and understanding I gained from this course are unmatchable.

By Gabriel M

Jun 13, 2020

A good course, i feel like it only grasps the surface of the subject, but very good, feels way too easy should remove the rails because it feels way too streamlined and gives you very little room to wiggle, but the video content was very good and gives you the tools to understand the papers and the investigation on the subjects.

By Hesham A

Oct 17, 2021

This among the rest of this specialization courses is the best.

A handful of loaded information, strong course materials, very intuitive quizzes, and the best practice programming, feasible for TensorFlow programming. Overall, I feel really grateful for taking this course, not to mention the rest of the specialization for sure.

By 김홍숙

Sep 7, 2020

As EXCELLENT as other courses in deep learning specialization.

Must do progamming assignment by yourself to get hands-on experience and deeper understanding of what you learned from lectures.

I would like to express my sincere appreciation to Prof. Ng and all staffs who prepared this excellent course and programming assignments.

By Felippe T A

May 21, 2020

A great course!! The content was very deep and it was presented to us some important CNN. For me, for this course be better, it needs a final project, but I can understand due to the large amount of content. But, in general it is a great course, maybe the best available on the internet. Thanks Coursera, thanks DeepLearning.ai.

By Dinesh T

Mar 27, 2021

This was one of the most interesting courses. Fun part and what I loved most is learning about the Neural Algorithm of Artistic Style - Neural Style Transfer (NST) algorithm. Would love to spend lot of time doing much deeper into the algorithms and mathematics behind it, so that I could build something meaningful and useful.

By Ana P O

Sep 23, 2024

Fantastic course! Andrew's explanations are clear, and the examples really help clarify the concepts. The hands-on exercises at the end make everything feel more tangible. One area for improvement: there were a few moments when Andrew made mistakes while speaking, and it would be nice if those were edited out of the videos.

By Jack W

Jan 10, 2018

This is a great intro to deep learning/AI course. Professor Ng has a way to explain things in a way that is super easy to understand. Basic knowledge (college level, but no need to be math/cs major) on linear algebra is required. If you are in science/engineer major, and took any kind of linear algebra class, you will be OK.

By keerthi k

Feb 21, 2020

Thank you so much Coursera. I have been doing this specialization properly, but suddenly I had an accident which took almost 10 days to become normal. During those time several assignments were overdue, but Coursera extended their assignments deadline twice and helped me complete this course. So once again I thank Coursera.

By Abhishek S

Feb 4, 2019

The CNN is always found as one of the trickier concepts to follow and it was actually very hard for me to figure out what these Conv layers are doing. But this course is so robust and easy to follow that I was even able to read the research papers on advanced CNN architectures with relative ease. Thanks to Andrew and team.

By ANSHUMAN S

Jun 4, 2019

It has been a great journey through learning CNNs it was quite interesting rather than all other courses and I got to know really very new ideas which i can implement in my own models.

Once again I want to thanks Andrew Ng and all other teachers of Course

and a special thanks to Coursera for giving me this ample opportunity

By Guillermo A E V

Jan 31, 2024

Yep, you're definitively going to learn what a CNN is and how it works. It has been the hardest course on the specialization until now. After explaining what CNN are, it covers several CNN architectures for uses encompassing object detection to style transfer, e.g., creating an image with the style of a certain painter.

By Nick H

May 22, 2019

Awesome course if you want to understand the basics of CNNs along with recent applications of these algorithmns.

As usual, both Andrew's material and his presentation style kept me both engaged and interested to a point that I got ahead of the weekly schedule...which is probably a good metric in terms of course success

By Nikhil V K

Oct 20, 2019

Great course by Andrew Ng sir. It gives us a great insight into many case of studies of state of the art ConvNet. Gives us a lot of intuition about object detection systems in autonomous driving and landmark detection , one shot learning for face recognition and a fun way of applying ConvNets for neural style transfer!

By Wang F

Jan 14, 2018

Despite the confusing bug and server running problem in the last assignment of happy house ,

the course is still great . Compare to the other three ones, it's the hardest course for me by now .

You may feel stuck in some practice questions and program .Worth spending time to review the

stuffs of the course again。