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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

4.7
12,556 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

NS

Dec 22, 2018

Professors teaches in so much friendly manner. This is beginner level course. Don't expect you will dive deep inside the Linear Algebra. But the foundation will become solid if you attend this course.

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.

筛选依据:

1951 - Mathematics for Machine Learning: Linear Algebra 的 1975 个评论(共 2,482 个)

创建者 Ishrak K

Sep 29, 2025

It was intuitive. The quiz questions' answers could be provided with better explanations, especially the ones with multiple select type questions. A better cheat sheet/guide could be provided as well to the students to aid them in looking things up.

创建者 Jehan T

Aug 9, 2020

Great course, especially the first 4 weeks with David Dye. Unfortunately the lecturer in the 5th week is much harder to follow, and I needed to reference some additional youtube videos outside the course to get an intuitive grasp of the concepts.

创建者 David B C

Sep 8, 2018

Great lectures and wonderful scrutiny of matrices and vectors. Exploration of machine learning using Python, but the interface and project upload are somewhat kludgy. Stick with it and you can get the fundamentals even if the coding doesn't work.

创建者 Yousef S

Mar 4, 2024

it was a fantastic course it had increased my vision about a lot of things and had shown me the real power of linear algebra it was quit challenging and I wish there were more assignment for programing and implementing the mathematics in python

创建者 Saad B

Aug 14, 2023

The course is very much beneficial, if you really want to explore the realm of machine learning, data science. This course provides basic in-depth understanding for the relevant topics of linear algebra that are crucial to machine learning.

创建者 Priadi T W

Sep 7, 2019

The course was great for me. It opens up new perspective to some vector and matrix application. However, I must admit that you must have strong background with math before taking this course, as I was little bit struggling with matrix part.

创建者 Marcin

Jun 3, 2018

It's by far the toughest course that I've done on Coursera. And at the same time the most rewarding upon completion. The course content is very applicable in the real world and it's definitely something that any ML specialist should know.

创建者 Srinivas A

Jul 7, 2020

Great content, well explained, it's an overview of Linear Algebra relevant to Machine Learning, not a full blown course. Some of the assignments need clarity, especially the Python assignments. There is no faculty/staff to ask questions.

创建者 Mikko V

Aug 1, 2018

The lectures are excellent, but the scarcity of traditional math assignments prevented intuitive and reinforced learning. Thus the course should be considered a brief glance at linear algebra, rather than a proper course on the subject.

创建者 Yadla V C

Oct 19, 2020

This Course takes you to the deep dive of Linear Algebra. But the lectures are not sufficient to solve assignments. We can make use of the resources given by Instructors for clear understanding of core concepts of Vectors and Matrices

创建者 Luis S

Oct 28, 2022

The course is good to develop the intuition around linear algebra. However, some important concepts are not sufficiently developed to have a complete understanding of the course. I had to find other sources to complement this course.

创建者 Godugu A H

Nov 30, 2021

The course overall is very good. The only drawback I felt was the lack of numerical examples to intepret complex linear algebra formulae. I would love to see videos carrying more worked examples of the formulae learnt in the course.

创建者 Gady

Mar 26, 2020

The pedagogy could use some reviewing, but the concepts and especially the reviews are generally laid out logically, and relatively easy to go through. Still recommend looking up things on the side through YouTube when you're stuck.

创建者 Daniel N

Dec 22, 2024

it's teached by 2 teachers, I prefered the second one more, regardless I quite enjoyed how much exercises they put me through as I'm far more confident that I actually learned the discussed topics compared to tipical online courses

创建者 Emma A

Apr 25, 2023

Some of the lectures are quite advanced for an entry level course. I had to go and research quite alot before being able to understand the concepts at times.

the lecturers are very engaging and I liked the use of practical examples

创建者 rohit s

Mar 2, 2020

There were many concepts which were totally new to me and many were known to me but I couldn't relate them with the machine learning problems now an I am able to do all those problems easily so thanks a lot Coursera and ICL team.

创建者 Akshay V

Jul 13, 2020

It is a good course on Linear Algebra. The teaching was excellent, all the assignments were challenging with some easy ones in the middle to boost your learning process, altogether I am happy to cover it with good understanding.

创建者 Mit S

Feb 24, 2020

This course has great content and great way of teaching by instructors however the instructions in the programming exercises is not very clear. I hope the instructors take note of that. Overall, a fantastic Course content wise!

创建者 Sekhar G

Aug 20, 2020

Being at an advance level of study, this course seems to easy to me but what I recommend is that any undergraduate or postgraduate student will definitely gain many interesting facts about linear algebra from this course.

创建者 CARLOS M V R

Jul 25, 2020

It could be good to have more explanation about eigenvalues and eigenvectors because it is an important topic for data science. In general it is a very good course, you explained many topics in a simple and funny way.

创建者 Arnab S

Jun 21, 2020

I enjoyed learning in this course. There are a lot of different aspects that are covered here which is very interesting but I course is not for absolute beginners. It will be better if someone has a bit of background.

创建者 Bassiehetkoekje

Feb 27, 2019

Nicely structured courses with enthusiastic teachers. Interactive enough to keep you thinking (which is key).

Some errors here and there and short moments of not enough explanation. But all in all an enjoyable course.

创建者 Naser A A

Jul 11, 2020

Great course to understand how linear algebra is related to machine learning. Focused on the concepts, and the concepts work rather than calculations. Would be easier if there was prior knowlodge of python and numpy.

创建者 Cici

Jul 11, 2019

This is a great course. The only thing is sometimes the calculations are hard to follow. I wonder if it is possible to let viewers click through a calculation process at their own pace. But the instructors are great!

创建者 Krishna C G

Jun 28, 2025

The course was good, some content was not beginner-friendly friendly and programming assignments are hectic and should have uploaded solutions for practice assessments, as some questions were not easy to understand