返回到 Introduction to numerical analysis

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33 条评论

Numerical computations historically play a crucial role in natural sciences and engineering. These days however, it’s not only traditional «hard sciences»: whether you do digital humanities or biotechnology, whether you design novel materials or build artificial intelligence systems, virtually any quantitative work involves some amount of numerical computing .
These days, you hardly ever implement the whole computation yourselves from scratch. We rely on libraries which package tried-and-tested, battle-hardened numerical primitives. It is vanishingly rare however that a library contains a single pre-packaged routine which does all what you need. Numerical computing involves assembling these building blocks into computational pipelines.
This kind of work requires a general understanding of basic numerical methods, their strengths and weaknesses, their limitations and their failure modes.
And this is exactly what this course is about. It is meant to be an introductory, foundational course in numerical analysis, with the focus on basic ideas. We will review and develop basic characteristics of numerical algorithms (convergence, approximation, stability, computational complexity and so on), and will illustrate them with several classic problems in numerical mathematics. You will also work on implementing abstract mathematical constructions into working prototypes of numerical code. Upon completion of this course, you will have an overview of the main ideas of numerical computing, and will have a solid foundation for reading up on and working with more advanced numerical needs of your specific subject area.
As prerequisites for this course, we assume a basic command of college-level mathematics (linear algebra and calculus, mostly), and a basic level of programming proficiency.
Do you have technical problems? Write to us: coursera@hse.ru...

AR

Nov 4, 2020

Great course if you want to understand mechanics of computations. However, sometimes had struggles with understanding of explanations. But i'm glad for taking this course

SR

Jun 6, 2020

A simple course that would definitely help me in the near future as it provides me an idea on how interpolation and estimation works.

筛选依据：

创建者 Víctor A M G

•Dec 9, 2019

Excelent course. Really liked how the teacher explained the course in general. I would upgrade it with more examples reviewed.

创建者 Dawars

•Mar 25, 2020

Great course with useful homework assignments in Jupyter notebook. Highly recommended!

创建者 Pingchuan M

•Oct 4, 2019

Very nice overall illustration of all relevant topics in numerical analysis. Laid a solid foundation if you want to dive deeper into any specific domain.

创建者 ACERON, U V (

•Mar 17, 2020

Excellent experience!

创建者 Sunny J

•Nov 2, 2019

Awesome Course

创建者 Mahadev D

•Oct 7, 2019

nice

创建者 Abrar R

•Jun 27, 2020

Great Course! Some of the theory was a bit more mathematically involved than I was expecting, but the assignments really helped drill a lot of those abstract concepts home for me, so all in all it was a great learning experience.

创建者 Chintan S

•Dec 7, 2019

The course hardly provides any examples of the numerical methods discussed. If you are new to Numerical Methods, it would be better to learn Numerical Methods elsewhere and use this course only to build Python functions on your own in the assignments. These programming assignments are also not very crisp and you spend a lot of time figuring out how to implement.

The only great takeaway from this course for me personally was the handling of catastrophic cancellation problems.

创建者 Siddharth Y

•Jun 18, 2020

This was a course which was most worth my time. I am a physics student who just completed year one of university and it is my first time dealing with these topics in numerical analysis/methods. Dr. Evgeni Burovski explains the various topics very well and doing the assignments gives you decent mastery over the course content. Recommended as an introduction to anyone interested in numerical analysis or scientific computing.

创建者 Artem

•Apr 13, 2020

It's a great course for introduction to numerical analysis methods. Lectures were great and the Python assignments helped to get the on-hand experience of solving theoretical tasks

创建者 Adil R

•Nov 4, 2020

Great course if you want to understand mechanics of computations. However, sometimes had struggles with understanding of explanations. But i'm glad for taking this course

创建者 Srinivasan R

•Jun 7, 2020

A simple course that would definitely help me in the near future as it provides me an idea on how interpolation and estimation works.

创建者 Zhen X

•Sep 23, 2020

Very good course. Very clear explanation and very well designed homework assignments.

创建者 Theo B

•Jun 9, 2020

Very intuitive and straight to the point course on numerical methods. Thank you !

创建者 Nandu G

•Jul 5, 2020

Pretty rigorous course, takes time to think and solve the assignments. Loved it.

创建者 Venkatesan J

•Jul 15, 2020

Excellent Course and Interesting

创建者 Rachit T

•Jun 2, 2020

Assignments are really good !

创建者 SALVADOR, J (

•Apr 17, 2020

I learned a lot from coursera

创建者 Yogabrindha B

•Nov 10, 2020

i really liked this course.

创建者 Timchenko D

•May 10, 2020

Lecturer is awesome!

创建者 Lubomir

•Jun 11, 2020

great course

创建者 BAGAIN, J R (

•Mar 30, 2020

ugh so goood

创建者 JEAN P R V

•Sep 15, 2020

thank you

创建者 Sawar

•Jun 4, 2020

very good

创建者 Daniela C Á

•Jun 1, 2020

So good.

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