Eigenvalues, Eigenvectors, and Diagonalization with NumPy
This course introduces students to eigenvalues, eigenvectors, and matrix diagonalization. Focusing on matrix transformations, students will explore practical applications of these concepts using the `numpy.linalg` library to solidify their understanding of advanced linear algebra principles.
Lessons and practices
Eigenvalues and Eigenvectors in NumPy
Explore Matrix Changes Impact
Fix the Matrix Calculation Errors
Calculate Eigenvalues and Eigenvectors
Write Your First NumPy Matrix Code
Matrix Diagonalization in Action
Modify the Matrix for Diagonalization
Fix the Python Matrix Code
Unlock Matrix Diagonalization Skills
Write Code for Matrix Diagonalization
Matrix Power with Eigen Decomposition
Matrix Power Exploration Challenge
Fix Matrix Power Calculation
Matrix Power Calculation Challenge
Mastering Matrix Powers with Python
Singular Value Decomposition Practice
Exploring SVD Through Matrix Change
Fix the Singular Value Decomposition
Fill in the Missing Code
Mastering Singular Value Decomposition
Solve Linear Equations with NumPy
Changing Coefficients in Equations
Fixing Error with NumPy
Solve Linear Equations with NumPy
Mastering NumPy Equations from Scratch
Interested in this course? Learn and practice with Cosmo!
Practice is how you turn knowledge into actual skills.