Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Linear Applications in 3D: Rank Theorem
Graph Chatbot
Related lectures (28)
Previous
Page 1 of 3
Next
Linear Transformations: Matrices and Applications
Covers linear transformations using matrices, focusing on linearity, image, and kernel.
Linear Transformations: Matrices and Bases
Covers the determination of matrices associated with linear transformations and explores the kernel and image concepts.
Rank Theorem: Part 2
Delves into the Rank Theorem's implications for linear transformations and mappings.
Linear Applications: Definitions and Properties
Explores the definition and properties of linear applications, focusing on injectivity, surjectivity, kernel, and image, with a specific emphasis on matrices.
Linear Algebra: Rank Theorem
Covers the Rank Theorem in linear algebra, focusing on vector spaces and linear applications.
Linear Algebra: Systems and Subspaces
Covers linear systems, vector subspaces, and the kernel and image of linear applications.
Linear Applications: Kernel
Introduces the kernel of a linear application and its properties.
Vector Spaces and Linear Applications
Covers vector spaces, subspaces, kernel, image, linear independence, and bases in linear algebra.
Linear Applications: Definitions and Matrices
Covers the definition of linear applications in IR³ to R³ and explores examples and properties.
Linear Applications: Vector Spaces and Subspaces
Explores linear applications in vector spaces, emphasizing subspaces and properties of linear maps.