DG
Apr 14, 2023
Extremely educational with great examples. Helpful to know Python beforehand or the syntax will become a time sync, and understanding the mathematics as going through the class makes it a decent pace.
MN
Jul 29, 2023
Another fantastic course by Andrew Ng! He covers neural networks, decision trees, random forest, and XGBoost models really well. I like that he shares his intuition behind every concept he explains.
By RATHOD Y A
•Aug 4, 2024
nice
By Jeevotthama S K .
•Jul 29, 2024
BEST
By Dinesh M
•Jul 28, 2024
Good
By Ahmed N
•Nov 16, 2023
Good
By chadia e k
•Nov 11, 2023
nice
By Dini P U
•Oct 14, 2023
good
By Rizki A
•Oct 12, 2023
good
By Trisno P R
•Oct 8, 2023
Joss
By Haveela D
•Sep 19, 2023
good
By Chonchal k
•Sep 14, 2023
good
By Angger M R
•Apr 5, 2023
good
By Fitrah S
•Mar 23, 2023
cool
By Ande R
•Feb 17, 2023
Good
By Lovish C
•Feb 4, 2023
nice
By Marlon S V L
•Jan 15, 2023
Good
By Arkadiusz J
•Mar 5, 2024
:)
By Jaber
•Sep 3, 2022
<3
By Bhavesh P
•Jul 9, 2023
By Serge B
•Nov 30, 2022
.
By Will S
•Jan 3, 2023
Really good conceptual teaching of ANNs and decision trees, but it's a little lacking in the Python implementation. It teaches you how to program an ANN with any number of layers/neurons, but there is no mention of finding the "optimal" number of each. The last week on decision trees and ensemble models feels rushed as there is only one lab and required assignment, so it completely misses the Python implementation of XGBoost. However, it teaches the essential functions in each library, so one can easily continue his or her learning with Kaggle competitions and Stack Overflow. In the end, it's meant to introduce working professionals to the most common ML models in the world today, and it does that very well, but not much more.
By Britto T
•Jan 6, 2024
This course is brilliance personified especially the intuition (which is the primary focus). The reason for a 4-star rating is, that it ended quickly, and it does not cover the codes in detail, but rather the logic on 'why we do what we do'. Andrew Ng drips knowledge and passion . I only wish he formulates a course named "AI-Scientist" with a one year completion time, that covers topics right from basics of Python, basic math, advanced math, ML, DL, NLP, MLOPs through and through. I am excited to jump into my next course :) Thank you Andrew Ng :)
By Ewa K
•Oct 22, 2023
I am missing handouts from the course and also access to the labs upon completion of the course. It was great that practice labs were offering a lot of help for the student, but I am afraid that too much material was given and the assignment was only about typing the given equation. It leaves me with the feeling that it would be difficult to apply the knowledge from the course to the real word problem, especially that I do not have any code available after the course is finished...
By kiên l
•Feb 21, 2024
Excellent explanation of the concepts by Andrew Ng. However, like other reviewers, I find the last week a little bit rushed and, as compared to the first course of the specialization, this course feels a little...lacking, not in the sense of the information being taught but how the information is being presented (eg. the effort put into making quizzes and labs is subpar ). note: subpar of best is still good so I'd still recommend this one to anyone.
By Nima J
•Nov 16, 2022
It was a very good and interesting course. I learned a lot about machine learning algorithms.
Compared to the first course "Supervised Machine Learning: Regression and Classification" there were a few things missing:
1- Practical exercises
2- Quizzes during the videos
Although you can learn the theoretical content very well in this course, in my opinion there is a lack of opportunities to practically apply and practice the knowledge you have learned.
By Adnan H M
•Jul 19, 2022
Explanation: 5 starts Assignments: 2.5 or 3 stars
Thus, overall 4 stars. Andrew did an excellent job in explaining the concepts. However, the assignments, in my opinion, were
too easy (almost just running the cells or typing what was shown in lecture videos). I believe challenging
assignments are an important aspect of any course which this course lacks (unfortunately).