Introduction

information

Theses are my notes on MATH 2121: Linear Algebra

  1. Lecture 1
  2. Lecture 2
  3. Tutorial 1
  4. Lecture 3
  5. Lecture 4

Course information

  • Course code: MATH 2121
  • Course title: Linear Algebra
  • Semester: 24/25 Fall
  • Credit: 4
  • Grade: A-F
  • TMI
    • Prerequisite: A passing grade in AL Pure Mathematics / AL Applied Mathematics; OR MATH 1014 OR MATH 1020 OR MATH 1024
    • Exclusion: MATH 2111, MATH 2131, MATH 2350
Description

This will be a first course in linear algebra, from an applied perspective. The main topics covered will include solving linear systems of equations, vector spaces, matrices, linear mappings and matrix forms, inner products, orthogonality, eigenvalues and eigenvectors, and symmetric matrices. No prior knowledge of matrix algebra is assumed.

My section

  • Section: L1 / T1D
  • Time:
    • Lecture: TuTh 03:00PM - 04:20PM
    • Tutorial: We 06:00PM - 06:50PM
    • Mid-Term: Oct 17 08:00PM - 10:00PM
  • Venue:
    • Lecture: G010, CYT Bldg
    • Tutorial: Rm 1104, Acad Concourse
  • Instructor: MARBERG, Eric Paul
  • Teaching Assistants:

Grading scheme

Assessment TaskPercentage
Online HW5%
Offline HW5%
Mid-Term30%
Final Exam60%
  • lowest online & offline HW scores: will be dropped
  • Online HW: due Mon midnight (from 9 Sep)
  • Offline HW: choose 4 problems & solve; due Wed midnight (from 11 Sep)
Extra credit

If you submit correct solutions to extra practice problems, then you can earn extra credit. You can earn up to 5% extra credit for your course grade in this way over the whole semester. See the instructions for the offline homework assignments on the course website.

Tentative Schedule
WeekTopicreading
1Linear systems, row reduction to echelon form1.1-1.2
2Vectors, matrix equations, linear independence1.3-1.5, 1.7
3Linear independence, linear transformations1.7-1.9
4Matrix multiplication, the inverse of a matrix2.1-2.3
5Subspaces, bases, dimension2.4, 2.8-2.9
6Determinants3.1-3.2
7Vector spaces, midterm4.1-4.6
8Eigenvectors, and eigenvalues5.1
9Similarity and diagonalisable matrices5.2-5.4
10Complex eigenvalues, properties of eigenvalues5.5, 6.1
11Inner products, orthogonality, and projections6.1-6.3
12Gram-Schmidt process, least-squares problems6.4-6.6
13Symmetric matrices, SVDs7.1, 7.4

Required texts

  • Linear Algebra and its Applications, by D. Lay, etc. (6th edition)

Optional resources

  • N/A