RG
Jul 12, 2017
Prof. Koller did a great job communicating difficult material in an accessible manner. Thanks to her for starting Coursera and offering this advanced course so that we can all learn...Kudos!!
CM
Oct 22, 2017
The course was deep, and well-taught. This is not a spoon-feeding course like some others. The only downside were some "mechanical" problems (e.g. code submission didn't work for me).
By mathieu.zaradzki@gmail.com
•Oct 4, 2016
Great and well paced content.
Quizzes really helps nailing the tricky points.
By Caio A M M
•Dec 2, 2016
Instructor is engaging in her delivery. Topic is interesting but difficult.
By Michael B
•Dec 12, 2019
Honors seems like a must to full instill concepts/implementation
By Anshuman S
•May 7, 2019
I would recommend adding some supplemental reading material.
By Jhonatan d S O
•May 24, 2017
Rich content and useful tools for applying in real problems
By Vahan A
•May 31, 2020
Please, provide programming assignments on Python or C++
By Alberto C
•Dec 1, 2017
Theory: Very interesting. Assignments: not so useful.
By S. H M
•Jul 18, 2024
It would be great if the exercises were in Python
By Yuanduo H
•Jan 19, 2020
Five stars minus the week 4 coding homework
By Arthur
•Jan 8, 2017
More feedback from TA would be appreciated
By Ian M C
•Dec 26, 2018
Writing on the ppt is not clear to see.
By Soumyadipta D
•Jul 16, 2019
lectures are too fast otherwise great
By sunsik k
•Jul 31, 2018
Broad introduction to general issues
By Tianyi X
•Feb 20, 2018
Lack of top-down review of the PGM.
By Sunil
•Sep 12, 2017
Great intro to probabilistic models
By Nikesh B
•Nov 6, 2016
Excellent
By Tianqi Y
•Jun 19, 2019
too hard
By Yashwanth M
•Jan 5, 2020
Good
By Ricardo A M C
•Jan 9, 2021
ok
By Paul C
•Oct 31, 2016
I found plenty of useful information in this course overall but lectures often spent too much time dwelling on the detail of simpler concepts while more complex areas, and sometimes critical information that was later built upon, were only touched briefly or sometimes skipped entirely. I missed a sense of continuity as we skipped from model to model with a minimum of time spent on how the models complement each other and their relative strengths and weaknesses in application.
The way data structures were defined in the code was particularly difficult to deal with. The coding exercises all suffered as a result. It ended up taking way too much time to figure how to decode the data and trace logic around it. This meant that grasping concepts and learning from the questions came in a distant second priority to debugging.
Dr Koller mentioned that the material is aimed at postgraduates. I felt that the level of content covered here would just as easily be grasped by most undergraduates in technical disciplines if it had been delivered in a more structured manner with clearer progression across models (conceptually and mathematically) and better code examples. When delivering in this format, allowances need to be made for the facts that tutorial sessions do not exist and the possibilities for informal Q&A are limited so any gaps become very difficult for students to fill in themselves.
Despite the above shortcomings I'm glad I did the course and I would still recommend it to someone interested in graphical models as it does cover the basics well enough to make a decent start. I'm not sure whether or not I'd recommend the programming exercises as they are a significant time sink but at the same time, without spending time attacking the programming problems the concepts are not likely to gel based on the video and quizzes alone.
By Nicholas E
•Oct 29, 2016
The course was very interesting and thought-provoking. I found the introduction to probabilistic graphical models (PGMs) and their properties struck a nice balance between intuition and formalism. The discussions highlighted exciting aspects of their power in simplifying complex problems involving uncertainty. However, I still do not feel I could propose convincing PGMs for real-world problems. There are examples in the course, but they are far removed from being concrete applications. I would have preferred there be an in depth analysis of an application of PGMs in the literature over the lengthy programming assignments. I am an experienced programmer with over 5 years of experience in many languages including MATLAB/Octave and I sometimes found it uninspiring to solve toy problems, not due to the difficulty in using the programming language, but rather because after the assignment had been completed I felt I had not really learnt much more than I would have from just watching the lectures, although, if you are interested in getting experience with MATLAB/Octave, the programming assignments are good practice. I qualify this in stating that I have not yet completed the next two courses on PGMs; this course may present an essential foundation that is necessary for the upcoming courses, and in any case provoked my interest in learning more about them
By Mahendra K
•Oct 4, 2017
The course is highly theoretical. Would have been great if it was paced well and driven from real world examples. I am not saying that there are no examples. But it'd have been better if the concepts were driven via some real world examples instead of first talking about the concept and then its applications.
What would have been even better if Python was an option for PAs. Octave can't be used in industry setting where the amount of data is really large. Both Python and Octave should have been an option so that the student can decide for themself.
By John E M
•Mar 31, 2018
Lectures were OK and quizzes and exams appropriately difficult. But Labs were pretty difficult especially lab 4 which I ended up surrendering on. This means I didn't do the accompanying quiz and gave up on the possibility of honors recognition as well.
While labs don't have to be as hand-holding as the DeepLearning class by Coursera, it would be nice to get more help and maybe not submit errors for the parts I haven't tackled yet when submitting (as DeepLearning and MachineLearning courses figured out how to do).
By Kervin P
•Jan 5, 2017
This is an amazing course, and taught by an extremely talented and accomplished professor. I believe it's a must for anyone in AI/ML or Statistical Inference. The problem is that you're essentially on your own the entire course. There isn't any community or TA help to speak off. And the project is done in Matlab, so you end up wrestling with Matlab or Octave instead of actually doing and learning. I still recommend the course, but that's only because the material is so extremely important.
By Daniel S
•Dec 11, 2019
Prof. Koller is exceptional. However, the focus of the course is toward the "theory" and less towards applications, unless one chooses to complete the Honors section of the course. I personally did not have the time to learn a new language syntax to attempt the Honors section...which is a shame. I do hope that this course is updated where R/Python replaces Octave/MatLab, because it would allow professional analysts more opportunity to explore the Honors content. Thanks!