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学生对 Imperial College London 提供的 Mathematics for Machine Learning: Linear Algebra 的评价和反馈

4.6
12,542 个评分

课程概述

In this course on Linear Algebra we look at what linear algebra is and how it relates to vectors and matrices. Then we look through what vectors and matrices are and how to work with them, including the knotty problem of eigenvalues and eigenvectors, and how to use these to solve problems. Finally we look at how to use these to do fun things with datasets - like how to rotate images of faces and how to extract eigenvectors to look at how the Pagerank algorithm works. Since we're aiming at data-driven applications, we'll be implementing some of these ideas in code, not just on pencil and paper. Towards the end of the course, you'll write code blocks and encounter Jupyter notebooks in Python, but don't worry, these will be quite short, focussed on the concepts, and will guide you through if you’ve not coded before. At the end of this course you will have an intuitive understanding of vectors and matrices that will help you bridge the gap into linear algebra problems, and how to apply these concepts to machine learning....

热门审阅

GB

Aug 16, 2020

The instruction was good throughout, but I would urge fellow students to take the time to work through the problems as suggested. Also, the eigen- stuff is quite tricky and can fool you. Be careful.

LK

Oct 26, 2023

Very good course. I liked very much the way the topics were presented and explained. I especially appreciate David Dye's clarity of explanations, enthusiasm, passion, and joyful attitude. Thank you.

筛选依据:

2326 - Mathematics for Machine Learning: Linear Algebra 的 2350 个评论(共 2,478 个)

创建者 G V

Jan 23, 2022

The course objectives, aims, and motives were very clear but after mid week 3, the teaching became abstract and the professors should have given little more explanation about the advanced topics.

创建者 Jerry P

Feb 1, 2020

I am feeling like something is missing during the last part of the course when it comes to Page Rank Algorithm. There should be more explanation to how the math works or comes to its formula.

创建者 Santiago R R

Jun 20, 2020

The assignments kill this course, great instructors, and pace, in my opinion. (I am a beginner in linear algebra and I understood the concepts without needing Google or external resources)

创建者 Rong D

Aug 30, 2018

I think the course is more suitable for those who have had comprehensive theoretical knowledge in linear algebra and intend to learn more about its practical use and its relevance to code.

创建者 Marcus V C A

May 23, 2021

The course is good. But the last module (week) is not so good. I think that the explanation of the Page Rank algorithm is not very good. I also think that the final test is very confuse.

创建者 Ashritha K

May 16, 2020

Overall course was good, I have learnt few new concepts which I haven't know till now. But at the end, things were not clear while putting all together for solving page rank algorithm.

创建者 David D

Aug 18, 2020

Linear Algebra content is great, however, was not aware that a huge portion of grade is based on Python programming exercises!!! Only need to learn Linear Algebra, not programming!!!

创建者 Aurel N

May 8, 2020

Intuitive geometrical representations of eigenvalues and eigenvectors in 3blue1brown style. Had some concerns with a few theoretical inaccuracies of the material presented.

创建者 Akeel A

Jul 22, 2020

It was a good to review linear algebra again and see how what I learned in my first year course at university could be applied here! Plus it was good to see Python again.

创建者 Michael S

Dec 1, 2024

It glossed over some points when arriving at conclusions and left me with many questions. Errors in the assignments were very difficult to interpret and diagnose.

创建者 Manuel M

Jan 25, 2019

The course feels very disorganized in general. Some quizzes are about 10 standard deviations from the average difficulty, which is befuddling to say the least.

创建者 itwipsy17

Feb 25, 2020

It is good course for machine learning. But I didn't fully understand the page rank system with damping.

More explanation of damping is needed for the newbie.

创建者 vignesh n

Sep 12, 2018

Transition from explanation of basic to advanced concepts could have been better. There was an assumption that few things was already know to the learner.

创建者 Alexander D

Aug 7, 2018

Not enough focus on how material connects to machine learning. A case study example would help, as would a very slow, detailed step-by-step illustration.

创建者 Santiago M

Sep 14, 2020

Nice one. But realized I needed more foundation on this matter. So decided to abandon and level up my topic knowledge in Khan Acadamy. I will be back.

创建者 Sanyam G

Apr 3, 2022

Good for someone who has bit background in Linear Algebra and Python. I won't recommend this work for a completely newbie as this course lacks depth.

创建者 川上孝弘

Aug 16, 2022

The video lecture skipped so many important concepts and difficult to catch up. I sometimes refered to other textbooks to understand the lecture.

创建者 Cindy X

Dec 20, 2018

I think this course is a little bit hard for a beginner with python. And I hope that the teacher can talk more about the Machine learning part.

创建者 Felipe G W

Sep 12, 2022

Excellent videos with generally appropriate pace. Some more examples and exercises would probably improve the learning experience even more.

创建者 Christos G

Jan 24, 2021

Very good explanations on difficult subjects but a bit short coverage of various cases, thus some assignments and quizzes were challenging.

创建者 Atish B

Sep 24, 2020

Answers to Several questions in Week 5 quiz around eigen values and eigen vectors need to be revisited as they donot appear to be correct.

创建者 Serdar D

Feb 15, 2021

This course consists of very fundamentals of linear algebra. I expected advanced linear algebra contents and more software applications.

创建者 Darian R

Aug 2, 2023

Sadly too many vital exercises are behind the premium path with -- with no way to complete the course properly without access to them

创建者 Igor M

Apr 7, 2023

feels like the important/interesting stuff was described briefly, while deep diving into calculations.

I miss the broader picture.