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學生對 华盛顿大学 提供的 计算神经科学 的評價和反饋

4.7
633 個評分
150 條評論

課程概述

This course provides an introduction to basic computational methods for understanding what nervous systems do and for determining how they function. We will explore the computational principles governing various aspects of vision, sensory-motor control, learning, and memory. Specific topics that will be covered include representation of information by spiking neurons, processing of information in neural networks, and algorithms for adaptation and learning. We will make use of Matlab/Octave/Python demonstrations and exercises to gain a deeper understanding of concepts and methods introduced in the course. The course is primarily aimed at third- or fourth-year undergraduates and beginning graduate students, as well as professionals and distance learners interested in learning how the brain processes information....

熱門審閱

CM

Jun 15, 2017

This course is an excellent introduction to the field of computational neuroscience, with engaging lectures and interesting assignments that make learning the material easy.

JB

May 25, 2019

I really enjoyed this course and think that there was a good variety of material that allowed people of many different backgrounds to take at least one thing away from this.

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51 - 计算神经科学 的 75 個評論(共 148 個)

創建者 Richard B

Nov 11, 2016

Excellent overview of the different areas of computational neuroscience taught by engaging academics.

創建者 Prakhya S

Jan 20, 2020

Absolutely enjoyed learning about Computational Neuroscience. Well explained. Highly recommend.

創建者 潘宜城

Oct 24, 2018

nice course which teach me about what neurons can do and how can we model them with mathmatics

創建者 Efren S

Dec 12, 2017

Just amazing! This course has made a great impression on me and rekindled my love for physics.

創建者 Adam L

Jan 15, 2017

Lectures are concise; quizzes are helpful. Great introduction to computational neuroscience!

創建者 Chinmay S H

Jul 29, 2019

I learned a great amount from this course. Now, I want to learn more about neural coding

創建者 CongMa

Oct 09, 2016

It is fantastic. For me, it could be much better if it has Chinese lyrics~ Thanks a lot~

創建者 Matheus B M

Apr 07, 2017

GIves a very good introduction to the field. It was quite hard on the maths some times.

創建者 Nilosmita B

Jul 26, 2017

Its a fantastic course for any one interested in the computational neuroscience field.

創建者 Gustavo P

Feb 24, 2018

Excellent course! I really learned all I wanted about this topic! Really recommended!

創建者 Arthur C

May 25, 2017

Great class for both professional in machine learning and computational neuroscience.

創建者 José M T

Apr 14, 2017

Congratulations !!!. You have managed to explain complex knowledge in a simple way

創建者 Faris G

Apr 05, 2020

Love it! Very quick, easy to understand course from the University of Washington.

創建者 Debapriya H

Jan 14, 2020

i like this course very much and its helpful for neuroscience future study of me.

創建者 Changjia C

Jan 05, 2019

Fantastic course! I enjoy it and love it very much. Thanks Rajesh and Adrienne!

創建者 Benjamin S

Mar 17, 2018

Awesome course, awesome introduction to the mathematical backgrounds as well!

創建者 孙嘉秋

Mar 11, 2018

Exercellent start on the quantatative understanding of Neurons and Networks.

創建者 Wei X

Dec 12, 2018

Enlightening! After this course, one know how the architecture came from.

創建者 Andrés Z

Apr 18, 2018

By far one of the most complete MOOCs in the subject. Highly recommended.

創建者 Hernan

Apr 09, 2019

Muy instructivo y entretenido! Felicitaciones a los autores del mismo.

創建者 Shahbaz K

Jun 25, 2019

Made it really easy for me to get into this field. So very inspired.

創建者 saurabh k p

Oct 20, 2018

Amazing Course with difficult challenges , hats off to professors :)

創建者 Maxim Y

Sep 17, 2017

Thank you for sharing such a wonderful knowledge with the world!

創建者 Swaraj K

Apr 21, 2018

Very nice course. Interesting Quizzes and excellent instructors

創建者 Mehdi H

Oct 28, 2017

Thank you for an amazing experience. I really liked the course.