Tags
Language
Tags
September 2025
Su Mo Tu We Th Fr Sa
31 1 2 3 4 5 6
7 8 9 10 11 12 13
14 15 16 17 18 19 20
21 22 23 24 25 26 27
28 29 30 1 2 3 4
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Linear Algebra Mastery: Elevate Your Machine Learning Skills

    Posted By: ELK1nG
    Linear Algebra Mastery: Elevate Your Machine Learning Skills

    Linear Algebra Mastery: Elevate Your Machine Learning Skills
    Last updated 4/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.59 GB | Duration: 7h 43m

    Building Blocks for Machine Intelligence: A Comprehensive Guide to Linear Algebra

    What you'll learn

    Master the fundamentals of vectors, including vector addition, scalar multiplication, vector norms, and dot products.

    Understand vector spaces, subspaces, and linear transformations, crucial for manipulating data in machine learning algorithms.

    Master matrix decompositions and eigenvalues/eigenvectors, vital for dimensionality reduction (e.g., PCA) and spectral clustering in ML.

    Apply vector operations to manipulate and analyze data representations, such as feature vectors in classification tasks or weight vectors in neural networks

    Requirements

    Basics of Mathematics and Python Programming

    Description

    In this meticulously crafted Linear Algebra course, you'll delve deep into the fundamental concepts of linear algebra, vectors, matrices, and linear transformations, unraveling their mysteries through a blend of intuitive explanations and hands-on exercises. Whether you're a novice seeking to embark on your Linear Algebra journey or a seasoned practitioner aiming to deepen your understanding, this course caters to learners of all backgrounds and skill levels.Through engaging lectures, geometric visualizations, and real-world application examples, you'll gain proficiency in manipulating matrices, understanding vector spaces, and deciphering the geometric interpretations underlying key concepts of linear algebra. From eigenvalues and eigenvectors to matrix decompositions, each module equips you with the fundamental knowledge necessary to tackle a myriad of machine learning challenges. With simple hands-on coding exercises using Python and industry-standard libraries like NumPy, you'll translate theoretical concepts into tangible solutions.Whether you aspire to unlock the mysteries of deep learning, revolutionize data analysis, or pioneer groundbreaking AI research, mastering linear algebra is your gateway to the forefront of machine intelligence. Join us on this exhilarating voyage as we embark on a quest to unravel the secrets of intelligence and harness the full potential of linear algebra in the realm of machine learning.May Your search for the best course on Linear Algebra end with Us.Happy Learning!!!

    Overview

    Section 1: Introduction

    Lecture 1 1. Introduction to Linear Algebra

    Lecture 2 2. Geometric Representation of an Expression

    Lecture 3 3. Importance of System of Linear Equation

    Lecture 4 4. Vector Representation of Linear Equation

    Lecture 5 5. Introduction to Vectors

    Lecture 6 6. Vector Magnitude and Direction

    Lecture 7 7. Application of Magnitude of a Vector

    Lecture 8 8. Position and Displacement Vector

    Lecture 9 9. Addition Subtraction and Scalar Operation of a Vector

    Lecture 10 10. Dot Product between Vectors

    Lecture 11 11. Projection of a Vector

    Lecture 12 12. Application of Projection of a Vector

    Lecture 13 13. Vector Space & Subspace

    Lecture 14 14. Feature Space of a Vector

    Lecture 15 15. Span of Vectors

    Lecture 16 16. Linear Independence of Vectors

    Lecture 17 17. Application of Linearly Independent Vectors

    Lecture 18 18. Basis and Dimension of a Subspace

    Lecture 19 19. Gaussian Elimination

    Lecture 20 20. Gaussian Elimination Application

    Lecture 21 21. Orthogonal Basis

    Lecture 22 22. Orthonormal Basis

    Lecture 23 23. Gram Schmidt Orthogonalization

    Lecture 24 24. Span Visualization

    Lecture 25 25. Linear Transformation

    Lecture 26 26. Kernel and Image

    Lecture 27 27. Application of Linear Transformation

    Lecture 28 28. Application of Linear Transformation

    Lecture 29 29. Types of Matrix and Equations

    Lecture 30 30. Determinant and its Applications

    Lecture 31 31. Inverse of a Matrix

    Lecture 32 32. Determinants II

    Lecture 33 33. Inverse of a Matrix II

    Lecture 34 34. Eigen Values and Eigen Vectors

    Lecture 35 35. Similar Matrix

    Lecture 36 36. Diagonalization of a Matrix

    Lecture 37 37. Eigen Decomposition

    Lecture 38 38. Orthognal Matrix and Properties

    Lecture 39 39. Symmetric matrix and Properties

    Lecture 40 40. Singular Value Decomposition

    For Machine Learning, Deep Learning and AI Engineers who wish to gain a strong foundation in understand the working of Machine Learning Algorithms.,For Data Science and Machine Learning Enthusiasts.,For Data Analysts who wish to Make a transition into Data Science and Machine Learning.,For Students who wish to pursue masters in Machine Learning or Deep Learning or Artificial Intelligence.,For Math Graduates who wish to Make a transition into Machine Learning, Deep Learning and Artificial Intelligence Roles.,For every graduate as we are in the Era of Machine Learning and Artificial Intelligence.,For aspiring future Data Scientists.