Chevron Left
Volver a Matrix Algebra for Engineers

Opiniones y comentarios de aprendices correspondientes a Matrix Algebra for Engineers por parte de Universidad Científica y Tecnológica de Hong Kong

4.8
estrellas
2,042 calificaciones
557 reseña

Acerca del Curso

This course is all about matrices, and concisely covers the linear algebra that an engineer should know. The mathematics in this course is presented at the level of an advanced high school student, but typically students should take this course after completing a university-level single variable calculus course. There are no derivatives or integrals in this course, but students are expected to have attained a sufficient level of mathematical maturity. Nevertheless, anyone who wants to learn the basics of matrix algebra is welcome to join. The course contains 38 short lecture videos, with a few problems to solve after each lecture. And after each substantial topic, there is a short practice quiz. Solutions to the problems and practice quizzes can be found in instructor-provided lecture notes. There are a total of four weeks in the course, and at the end of each week there is an assessed quiz. Lecture notes can be downloaded from http://www.math.ust.hk/~machas/matrix-algebra-for-engineers.pdf...

Principales reseñas

RH
6 de nov. de 2018

Very well-prepared and presented course on matrix/linear algebra operations, with emphasis on engineering considerations. Lecture notes with examples in PDF form are especially helpful.

DL
30 de abr. de 2020

Very in-depth class for matrix algebra. I am a biochemistry student and have learned this in the past but re-taking this online course again has revamped my learning for linear algebra.

Filtrar por:

226 - 250 de 552 revisiones para Matrix Algebra for Engineers

por Онучин А А

25 de mar. de 2020

Perfect basics of matrix algebra. You should try to complete it!

por Mahalingam P R

22 de jun. de 2020

Beautifully crafted course. Well explained, and understandable.

por Nguyen K T

30 de jun. de 2019

It's very useful math preparation for learning Machine Learning

por Amala B K

25 de jun. de 2020

its easy to understand and study in very easy way of teaching.

por AMLAN M

31 de may. de 2020

Its a very nice course, helped me a lot for quantum mechanics.

por Prof. S S

8 de ago. de 2020

Excellent course!!! Thank you for the real life applications.

por Manjunatha B J

9 de jun. de 2020

Understand the basic concepts needed for enginering students.

por jiehang s

7 de jun. de 2020

perfect instructor. explained everthing in short period time.

por Divya A

16 de may. de 2020

Course is very good. I gain extra knowledge of matrix algebra

por Mr. C S B

2 de may. de 2020

course is excellent and very nice explanation of the concepts

por Yonghye K

26 de sep. de 2020

I've learned about basic concepts to understand my research!

por Mohammadsadeq B

25 de jul. de 2020

I think everything was OK with this course. Thanks Coursera.

por Nick J

24 de jul. de 2020

Excellent course. Interesting material, very well presented.

por JAHNAVI B M

16 de jul. de 2020

Thank you for such a informative course on matrix algebra...

por Muhammad Z

21 de nov. de 2019

Course material and way of communication is well structured.

por Quoc T M

16 de ago. de 2020

Help me understand my current course at college. Thank you!

por Smriti J

4 de jun. de 2020

IT HELPS TO GAIN LINEAR ALGEBRA AND ENGINEERING MATHEMATICS

por Ehtisham H

17 de abr. de 2020

Excellent course to undertand what linear algebra is about.

por GALVEZ, J J (

13 de sep. de 2020

The prof is good, i understand the topics well. Thank you!

por SAHIL S Z

7 de sep. de 2020

good for beginners.. thank you coursera and the professors

por José R A B

13 de abr. de 2020

Amazing course. Good refresh from what I saw from college.

por Ch M N

27 de oct. de 2020

I really enjoyed while doing this course. Well explained.

por Sukumar V M

15 de jun. de 2020

I learned so much in this and the teaching was excellent.

por Alexces M T

26 de nov. de 2020

This course helps me to know a lot about matrix algebra.