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.
By A O
•May 22, 2020
Assignments do suck.
If model cannot be run locally there is no way to debug it. More test cases that would cover most common mistakes would be quite useful. Otherwise the only way through is to burry into forum topics for hours.
By Rosario C
•Jan 4, 2018
The lectures were messier compared with the previous courses. Lot's of problems with the grading tools. The content of the course is great, so I would recommend it to others, modulo warning the others about being more patient :)
By Patrick S
•Dec 26, 2020
This is one of the weaker courses in the specialization. I wish it had gone more in-depth. It's so far the most complex problem and I don't feel like it has gotten the same attention as the basics did, in the other courses.
By G C
•Mar 24, 2018
Covers interesting material and practical problems, and tries to get the student to implement useful tools, but there is a large disconnect between the understandable theory and frameworks used to implement the solutions.
By Victor P
•Nov 29, 2017
Good course, but with the conjunction of the poor quality of the Coursera interface, video quality, the price does not feel like a great bargain. Still I feel confident I can be efficient after following this course.
By Sebastiano B
•Oct 21, 2019
Exercises were purposly difficult because of obscure API documentation and quirks (not because the problem itself was difficult). Good school in debugging, I personally disagreed with it (V3 if I remember correctly).
By Rob W
•May 14, 2018
Enjoyed the course but the programming assignments weren't well designed I think. They were more about debugging than applying what was learned. I preferred the assignments of the earlier courses of this curricilum
By LavÃnia M T
•Nov 26, 2020
The Face Recognition lab just don't make any sense, the expected outputs are the ones in the Face Recognition for the Happy House. And it made the exercise very annoying! Despite it, the course is really good.
By Denys G
•Dec 3, 2017
The production of the course felt rushed, there are numerous clipping issues in the videos and a major bug in one of the assignments. Also, for such a key topic to be covered in only 4 weeks felt very shallow.
By E S
•Jan 21, 2018
Good explanations of the material but bugs in homework assignments and better explanations of tf usages is required for certain assignments. A refresher of tf via an additional assignment would've been nice.
By Daniel M
•Jan 27, 2018
Good insights on the YOLO algorithm as well as in Siamese networks and triplet loss. Miss some more deeper understanding both in the lectures and the assignments, but I totally recommend the course anyway.
By ashwin m
•Jul 22, 2019
very good topics discussed ,facial recognition and facial verification assignments do not do justice to the complexity involved.practical knowledge gained is less compared to other modules prior to this.
By Carlos V
•Jul 16, 2020
The knowledge is good, and the techniques taught are valuable; however, having to use a deprecated version of TensorFlow is annoying and a lot of this will have to be re-learned to be put into practice.
By Hagay G
•Apr 26, 2019
Course is very informative.
Unfortunately, unlike other courses in the spec, there were quite a few bugs in the notebooks and they took quite a while to load due to the sheer weight of the models loaded.
By David v L
•Jan 2, 2018
Face recognition is a bit oversimplified, there is more to it that a simple accuracy metric. Priors are involved, which are included in the NN training, but should really be disassociated in evaluation.
By João G V
•Jan 23, 2020
In contrast to course 1 and 2, I've found the videos to be rather shallow (no pun intended), in the sense that, in my opinion, they haven't explained thoroughly the techniques' underlying mathematics.
By Ramon S
•Jun 20, 2021
The information in the lectures was brilliant. However, the coding assignments don't really test your understanding of the course, rather your ability to piece together the authors previous code.
By Joscha O
•Jan 3, 2018
This is a very interesting and well structured but the assignments in week 4 got alot of bugs, grading gives zero points for the right ouput (according to the notebook) and ten for a wrong one...
By Swaraj L
•Apr 4, 2020
The course starts normal but suddenly gets very confusing from the start of week 2. Also it gets a bit difficult to understand things later on. Otherwise its very good course and i enjoyed it
By Abraham O
•Nov 13, 2023
The Labs are so confusing and I know the theory but the labs aren't good enough. Instead of having lengthy Labs we should be doing labs after 3 or 4 videos that way things can stick better.
By Marcela H B
•Aug 27, 2021
Overall the specialization this course is the more complex, not only regarding the main concepts I think that the assignments are hard and will be usefull have more context about tensorflow
By Martin S
•May 16, 2021
So far I was very enthusiastic about the courses but this one is rather disappointing. Unfortunately, the video editing is very poor, if done at all, which make listening somewhat annoying.
By George C
•Jan 15, 2018
Some frustrating issues with the week 4 assignments. I would also like some explanation on how to download all the related materials so I can play with the models later on my own machine.
By Paul W
•Oct 13, 2024
Very good tought course, Andrew does a great job on that. The programming exercises are not that helpfull, because you dont have to think really for doing them, they are like cloze texts.
By Michael A
•Jan 8, 2018
The programming exercises in week 4 have mistakes in them that have been reported over 2 months ago and still not fixed.
I would expect a payed course to exhibit a higher responsiveness.