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(Created page with "Welcome to the Matrix Analysis class wiki. Instructor: Christopher Hillar Scribe: Sarah Marzen Web co-ordinator: Mayur Mudigonda") |
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This is the spring '13 Matrix analysis class wiki | |||
== Course description == | |||
This is the first ever course of its kind on Matrix Analysis. Matrices are generally awesome and since most of us use Matlab, it would help to know more about them. | |||
Also blah blah blah and blah! | |||
=== Instructors === | |||
[Chris Hillar] | |||
* Email: | |||
* Office: 570 Evans | |||
* Office hours: immediately following lecture or through e-mail | |||
[Sarah Marzen], Scribe and GSI | |||
* Email: | |||
* Office: 567 Evans | |||
[http://redwood.berkeley.edu/mayur Mayur Mudigonda] | |||
=== Lectures === | |||
* '''Location''': 560 Evans (Redwood Center Conference Hall) | |||
* '''Times''': First and Third Thursdays - 3:30 PM to 5 PM | |||
=== Enrollment information === | |||
=== Email list and forum === | |||
=== Grading === | |||
=== Required background=== | |||
Prerequisites are calculus, ordinary differential equations, basic probability and statistics, and linear algebra. Familiarity with programming in a high level language such as Matlab is also required. | |||
=== Textbooks === |
Revision as of 04:26, 15 February 2013
This is the spring '13 Matrix analysis class wiki
Course description
This is the first ever course of its kind on Matrix Analysis. Matrices are generally awesome and since most of us use Matlab, it would help to know more about them.
Also blah blah blah and blah!
Instructors
[Chris Hillar]
- Email:
- Office: 570 Evans
- Office hours: immediately following lecture or through e-mail
[Sarah Marzen], Scribe and GSI
- Email:
- Office: 567 Evans
Lectures
- Location: 560 Evans (Redwood Center Conference Hall)
- Times: First and Third Thursdays - 3:30 PM to 5 PM
Enrollment information
Email list and forum
Grading
Required background
Prerequisites are calculus, ordinary differential equations, basic probability and statistics, and linear algebra. Familiarity with programming in a high level language such as Matlab is also required.