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 Operators: Boundedness and Spaces
Graph Chatbot
Related lectures (30)
Normed Spaces
Covers normed spaces, dual spaces, Banach spaces, Hilbert spaces, weak and strong convergence, reflexive spaces, and the Hahn-Banach theorem.
Linear Operators: Basis Transformation and Eigenvalues
Explores basis transformation, eigenvalues, and linear operators in inner product spaces, emphasizing their significance in Quantum Mechanics.
Vector Spaces: Properties and Operations
Covers the properties and operations of vector spaces, including addition and scalar multiplication.
Signal Representations
Covers the representation of signals in vector spaces and inner product spaces, including the Projection Theorem.
Weak Formulation of Elliptic PDEs
Covers the weak formulation of elliptic partial differential equations and the uniqueness of solutions in Hilbert space.
Matrix Representation of Operators and Basis Transformation
Explores the matrix representation of operators and basis transformation in linear algebra.
Linear Algebra: Vector Spaces & Operators
Explores vector spaces, linear transformations, matrices, eigenvalues, inner products, and operators.
Discrete Signals and Linear Systems
Explores discrete signals, linear systems, categorization examples, and convolution properties in signal processing.
Crash Course on Quantum Mechanics
Covers fundamental concepts in quantum mechanics, including vector spaces, superposition, observables, and inner product.
Linear Algebra: Lecture Notes
Covers determining vector spaces, calculating kernels and images, defining bases, and discussing subspaces and vector spaces.
Linear Algebra: Matrices and Vector Spaces
Covers matrix kernels, images, linear applications, independence, and bases in vector spaces.
Kernel, Image and Linear Maps
Explains kernel, image, and linear maps, illustrating concepts with examples.
Linear Algebra Basics
Covers the basics of linear algebra, emphasizing the identification of subspaces through key properties.
Orthogonality and Subspace Relations
Explores orthogonality between vectors and subspaces, demonstrating practical implications in matrix operations.
Linear Independence and Bases in Vector Spaces
Explains linear independence, bases, and dimension in vector spaces, including the importance of the order of vectors in a basis.
Crash Course on Quantum Mechanics
Offers a crash course on quantum mechanics, covering vector spaces, superposition, observables, and self-adjoint operators.
Functional Analysis I: Norms and Bounded Operators
Explores norms and bounded operators in functional analysis, demonstrating their properties and applications.
Linear Independence and Bases
Covers linear independence, bases, and coordinate systems with examples and theorems.
Linear Operators: Boundedness and Convergence
Explores linear operators, boundedness, and convergence in Banach spaces, focusing on Cauchy sequences and operator identification.
Functional Analysis and Distribution Theory
Introduces functional analysis, distribution theory, topological vector spaces, and linear operators, emphasizing their importance in engineering applications.
Previous
Page 1 of 2
Next