学生对 University of Washington 提供的 Machine Learning Foundations: A Case Study Approach 的评价和反馈
课程概述
热门审阅
BL
Oct 16, 2016
Very good overview of ML. The GraphLab api wasn't that bad, and also it was very wise of the instructors to allow the use of other ML packages. Overall i enjoyed it very much and also leaned very much
SZ
Dec 19, 2016
Great course! Emily and Carlos teach this class in a very interest way. They try to let student understand machine learning by some case study. That worked well on me. I like this course very much.
2451 - Machine Learning Foundations: A Case Study Approach 的 2475 个评论(共 3,159 个)
创建者 Bálint K
•Feb 14, 2017
love the approach, although the total lack of support (on the forums) is a bit discouraging. also, there are some errors that make it hard to understand the last week's material, but other than that, it's ok.
创建者 HIMANI B
•Jun 18, 2020
IT is a good course to start your machine learning journey. It could have been better with more popular libraries like sklearn and pandas. But the course material is very understandable and nicely delivered.
创建者 Maxence L
•Aug 10, 2016
Une très bonne introduction par la pratique aux différentes notions et concepts du Machine Learning, avec assez d'éléments concrets pour pouvoir commencer à mobiliser ces théories dans un contexte pratique.
创建者 Danielle S
•Dec 7, 2015
+ Excellent video lectures.
+ Good overview of the field.
+ Nice working examples with good instruction video's.
-- No help with the practical assignments although the Python examples given are not flawless.
创建者 Yannan C
•Sep 10, 2021
Four years ago, this course deserves a five-star review. But as the turicreate has changed a lot, some functions cannot be used and some error appears in the hand-on part. But, it is still pretty good.
创建者 Deepak M
•Apr 2, 2017
The Course was very neatly presented, although we used lots of predefined functions to work around Machine Learning Algorithms it was good to know about the concepts that was thought extremely well.
创建者 Rodrigo d A M
•Feb 3, 2022
I was very disappointed with the exclusion of the final courses and the capstone project. The most interesting part of specialization no longer exists and no plausible justification has been given.
创建者 Sunil K S
•May 19, 2020
The course was very informative but I face a lot of problems in installing Graphlab and Turicreate. I request the Mentors please use the Pandas data frame in place of SFrame. The mentors are cool.
创建者 Hanz C V
•May 21, 2016
Good for a introductory course if someone is getting started with machine learning, but as part of an specialization i think is useless (for people who are planning to take all the specialization).
创建者 Jayakrishnan M M
•May 25, 2020
Graphlab is used during the class, where as in assignments, turicreate is used. This causes slight variation in the results between the two. This may cause loss of points in the assignment.
创建者 Najamuddin B
•Jun 1, 2017
Course contents are good - however the forums are not active and there is no follow up from faculty to update the course specialization following the change in course structure (eg. no capstone)
创建者 Krzysztof L
•Aug 13, 2016
This course is very good. The only problem is that instead of using open source packages like scikit-learn they decided to based it on proprietary GraphLab (which is free only for academic use).
创建者 Matej M
•Nov 17, 2017
Good course, a tiles a litte coursory, but a decent introduction to the concepts and vocabulary of machine learning. Something like this should be required for anyone who works with data today.
创建者 Rakesh
•Jun 13, 2016
Decent intro, though it would be a lot more useful if the professor didn't use his Software and instead thought us implementations using python/R which are used in most commercial applciations
创建者 George G
•Sep 24, 2018
It gives you a fair insight to the world of machine learning, without getting into much technical detail. I guess this information is saved for the next courses of the Machine Learning group.
创建者 sandeep d
•Aug 17, 2020
it would be really great if you will teach the provided note book practice examples
and deep learning is a bit harder and faster
instead graphlab if you use sklearn module it would be amazing
创建者 Yu Z
•Jun 18, 2016
This course provides a quick and easy introduction to machine learning and python. I enjoy the learning experience. The materials have room for improvement: there are typos and redundancies.
创建者 Tahsin T
•May 31, 2020
It is a good course indeed. I have enjoyed the notebook practical part most. Though the theoretical part is a bit boring, I have learnt a lot. Thank You for designing the course in such way
创建者 Dominic
•Sep 17, 2017
I like the introductory format of using case studies of a wide range of methods, it gives you an overview of the core machine learning algorithms that are used, and what they are used for.
创建者 Santiago J G C
•Jul 6, 2020
Se deben actualizar algunos Notebooks, la librería de turicreate ha cambiado y algunas funcionalidades no están disponibles para python 3. Lo cual complica las respuestas en los examenes.
创建者 Keng-Hui W
•Jul 14, 2016
Many practical examples for usages of machine learning.
Almost concepts, no hard math works.
Recommend for beginners who interested in machine learning but did not have any math background.
创建者 Frederick B
•Apr 7, 2016
The course is fantastic and presented well. I never got my feet under me because i had a lot going on at work. Does have some linear algebra pre-reqs that you can brush up @ khan acedemy.
创建者 Mridul C
•Jul 8, 2020
Every topic is nicely explained in this course but the only problem is that I was unable to install graphlab library, so it would've been better if any other library would've been used.
创建者 Manuel T F
•Apr 13, 2017
It is a great course. Congratulations! Everything is subject of improvement, though. Check again that the version of graphlab referred to in the videos is the one available to download.
创建者 Sharma K
•Oct 31, 2015
The instructors are excellent and the material is good. The only drawback is the need to use Graphlab. This would have been a really great course if we had to use open source software.