Great introductory to GANs, focused on the building blocks to neural net/ GANs, and a bit of frequently used models. Might need a small update on what's considered "state-of-the-art" in the course.
The course provides good insight into the world of GANs. I really enjoyed Sharon's explanations which were deep and easy to understand. I really recommend this course to anyone interested in AI.
by Andrea B•
The theoretical concepts are explained in a clear way, even if I would have liked a deeper dive into the math behind the loss functions of each model proposed, moreover the assignments were too guided imo.
Nice course overall!
by Quarup B•
Informative, but it feels like it didn't include explanations (or at least intuitions) required to fully grasp the concepts. For example, the necessity of 1L continuity and why does the enforcement work.
The videos teaches GAN, which is great, but the lab train for pytorch, which is great as well. But I wish the video and the lab works together so we can apply what we learn from the video into labs.
by Naveed M•
The programming assignments can be improved by designing it in such a way that most of the work should be done learner not by the course designer. I hope you change it in future.
by Aaron S•
Basically good, however the programming assignments are incredibly trivial compared to other machine learning courses I've taken on Coursera.
be unfamiliar with english and unlike Andrew use mathematical formula ， so i learn a little hard
Can be more detail. In week 3 and 4, there is not much information shared/taught.
by Bedrich P•
I don't like the style of programming assignments, otherwise good
by Michael K•
Great intuitive explanations but it is too easy
by Keebeom Y•
She talks too fast! Please slow down!
by Ivan V S•
The idea of the course is great, but the realization is TERRIBLE!!! :( That wierd chinese schoolgirl mumbling 'bout kitties and golden retrievers insted of giving instruction on programming is just annoising!!! The tasks are completely diverse with the lectures and very demotivating. :( I'm really disapointed after this course. :( Conclusions: try this only if You're ready to spend a lot of time googling the answers and cursing.:( WE WANT LAURENCE!!! WE WANT LAURENCE!!! WE WANT LAURENCE!!!
by Christoffer M•
The GANs in the course are basic as advertised, but unfortunately the treatment of the theory is basic and shallow as well. The lab assignments are too simplistic to force any deeper understanding.
by Daniil K•
The course if very interesting, but unfortunately after the completion you lose the access to assignments and the only way to restore it is to subscribe again.
by Fatemeh A•
It was too high level without mentioning the math behind the theories. The codes were too simple and not challenging. The instructor was speaking too fast.
by Yu G•
Homework size are TOO large! One star given. One additional for that this course is highly challenging.
by Daniel J•
The content is clear but lacks any real depth. Any time a more difficult topic pops up the details are completely ignored or swept under the rug without any acknowledgement. Even a comment like "this topic is beyond the scope of what we want to cover here, go to this resource to learn more..." would have been far preferable. This seems to be a recurring theme in recent specialisations by deeplearning.ai rather than the fault of this particular instructor.
by Ranga R S•
Had to pause multiple times to listen again or read the English translation at the bottom. Slowing down the lecture along with proper pauses and meaningful visual illustrations can improve this course in a big way.
Content of this course is good, but the way it is presented leaves much to be desired
by Michael S•
The coding exercises seem completely unguided by the course, and feel like a waste of my time.
I'm not going to pay you for the time I spend studying pytorch.org
by Scott A•
Way, way, way too light on the details