14 июня 2020 г.
A very deep and comprehensive course for learning some of the core fundamentals of Machine Learning. Can get a bit frustrating at times because of numerous assignments :P but a fun thing overall :)
15 окт. 2016 г.
Hats off to the team who put the course together! Prof Guestrin is a great teacher. The course gave me in-depth knowledge regarding classification and the math and intuition behind it. It was fun!
автор: VEMURI S S N S D S•
24 янв. 2022 г.
автор: VYSHNAVI P•
13 дек. 2021 г.
автор: SAYANTAN N•
29 окт. 2021 г.
автор: boulealam c•
15 дек. 2020 г.
автор: Saurabh A•
11 сент. 2020 г.
автор: SUJAY P•
21 авг. 2020 г.
автор: ANKAN M•
16 авг. 2020 г.
автор: Sadhiq A•
19 июня 2020 г.
автор: AMARTHALURU N K•
24 нояб. 2019 г.
автор: RISHI P M•
19 авг. 2019 г.
автор: Akash G•
10 мар. 2019 г.
автор: xiaofeng y•
5 февр. 2017 г.
автор: Kumiko K•
5 июня 2016 г.
автор: Arun K P•
17 окт. 2018 г.
23 февр. 2017 г.
автор: MARIANA L J•
12 авг. 2016 г.
-Good examples to learn the concepts
-Good organization of the material
-The assignments were well-explained and easy to follow-up
-The good humor and attitude of the professor makes the lectures very engaging
-All videolectures are small and this makes them easy to digest and follow (optional videos were large compared with the rest of the lectures but the material covered on those was pretty advanced and its length is justifiable)
Things that can be improved:
-In some of the videos the professor seemed to cruise through some of the concepts. I understand that it is recommended to take the series of courses in certain order but sometimes I felt we were rushing through the material covered
-I may be nitpicking here but I wish the professor used a different color to write on the slides (the red he used clashed horribly with some of the slides' backgrounds and made it difficult to read his observations)
Overall, a good course to take and very easy to follow if taken together with the other courses in the series.
автор: Hanif S•
2 июня 2016 г.
Highly recommended course, looking under the hood to examine how popular ML algorithms like decision trees and boosting are actually implemented. I'm surprised at how intuitive the idea of boosting really is. Also interesting that random forests are dismissed as not as powerful as boosting, but I would love to know why! Both methods appear to expose more data to the learner, and a heuristic comparison between RF and boosting would have been greatly appreciated.
One can immediately notice the difference between statistician Emily, who took us through the mathematical derivation of the derivative (ha.ha.) function for linear regression (much appreciated Emily!), and computer scientist Carlos, who skipped this bit for logistic regression but provided lots of verbose code to track the running of algorithms during assignments (helps to see what is actually happening under the hood). Excellent lecturers both, thank you!
автор: Amilkar A H M•
27 нояб. 2017 г.
It's a great course, but the programming assignments are a little too guided. That is good, to some extend, as it allows you to focus on the concepts, but at the same time, it leave little space for actually practicing your coding skills. I know they said from the beginning that this course was not focused on the implementation of the algorithms, however, how are you going to be able to use what you've learned without knowing how to implement the algorithms on your own.
When it comes to coding, nothing replace implementing the algorithms yourself. That is my only complaint. Other than that, it's great. I loved it. The concepts were well explained and they covered a lot of material. I wish they had spent more time in certain topics, but I guess this is just an introduction. Anyway, take this course by any means if you have some programming experience and have little to no machine learning knowledge.
автор: Daniel C•
24 апр. 2016 г.
This series is taught by Emily and Carlos. Course 2 was Emily and this course 3 is Carlos. Carlos takes a more practical approach by showing how things are related using pictures, trial and error, what happens when we do this vs. that. Emily on the other hand dives down into the math and actual facts. I feel Emily is more difficult overall - but once I got through it, I had a better foundation and intuition as to how things work and better overall understanding. So - giving this class 4 stars as compared to Emily's class that is 5 stars. I feel if they would mix it with Emily doing the math immediately followed by Carlos explanations it would be best. Finally - I don't feel this course on classification had as much content. We could've done more.
автор: Jaiyam S•
24 апр. 2016 г.
Thank you Prof. Carlos for this amazing course. You covered the topics in a very easy to understand way and the course was full of cool applications and humor! The only downside that I felt was that the programming assignments sometimes felt too easy. Even as a complete Python novice (I started learning Python with the first course), I felt the programming assignments could have been made more interesting. But in the larger scheme of things it doesn't matter because the course was really well taught and easy to understand. I'm really looking forward to the next course! :)
автор: Lech G•
26 апр. 2016 г.
Not as good as the Regression Course, but still very good.
While I appreciate prof Guestrin's enthusiasm, I missed a little rigor and mathematical depth of the Regression's course by prof. Fox.
I learned a lot, but I feel that regression clicked with me a little better than classification.
But that's probably me.
In either case, the whole series are awesome so far, better, in my opinion, than Anrdrew Ng's ML course on coursera,
A small suggestion would be to switch the main toolset from the Graphlab to something more common, like Sci-kit learn and Pandas.
автор: Alessio D M•
17 апр. 2016 г.
The course is definitely high-quality and the topics are covered in a good way. I'm not giving 5 stars because I would have expected SVMs and neural networks. Mentioning the many different algorithms for learning decision trees would have been nice, without necessarily focusing on each of them in depth. An entire week spent on precision/recall seems a little bit too much, without touching other metrics like F-score. Overall though a very nice course for beginners, and it definitely gives a good sense of classification challenges and approaches.
автор: Subikesh P S•
11 июня 2020 г.
This course was very useful for learning machine learning, as this describes classification models deeply and also about other important ML techniques like Online Learning, handling missing data, precision-recall, etc. The weekly programming assignments were elaborate and explained all the topics nicely. The classes were also made interesting by Mr. Carlos by cracking puns in between.
The only problem I face is that using turicreate over sklearn. Since turicreate is depreciated for windows, it's hard to complete programming assignments.
автор: Anjan P•
29 апр. 2016 г.
Excellent course that details important concepts in supervised classification. The programming assignments can be a little easy to complete (and consequently easy to forget later), but I believe it's a well paced course and the lecture material is at any incredibly accessible pace, with options for more advanced material.
One suggestion would be to include more papers for additional technical details in the lecture or programming assignments as you did with dealing with unbalanced data.
автор: George P•
23 окт. 2017 г.
It explains nicely a lot of useful topics and gives you the tools to build real world applications. It even explains precision recall and boosting which could be confusing in an easy to digest way.
4/5 stars because the course could include multiple levels of difficulty for the programming assignment tasks. The task by default were very guided and a keen student would like to explore and build them from scratch or at least in a less guided way.
Positive experience overall