Linear Algebra Math for AI - Artificial Intelligence

Master Linear Algebra Math for AI

Instructors: Manifold AI Learning

Price (Limited Period Offer) :

$499 97.2% OFF

$13.99

Join Now

HOW DOES IT WORK

1.


Start self-paced learning videos at your own pace


2.


Develop an understanding of each concept from basic to expert level

3.


Get Certified for your course and project which can be added in your resume

Course Trailer

Checkout the Trailer

Syllabus

Description

Description:

This course provides a comprehensive introduction to Linear Algebra Math for Artificial Intelligence (AI). Linear algebra plays a crucial role in the field of AI, as it provides the foundational concepts and tools necessary for understanding and solving complex problems in machine learning, neural networks, and data analysis. Through this course, you will gain a solid understanding of the key concepts and techniques of linear algebra and how they are applied in the context of AI. Topics covered include vector spaces, linear transformations, matrix operations, eigenvectors, and eigenvalues. By the end of the course, you will be equipped with the mathematical knowledge and skills needed to excel in various AI applications.

Key Highlights:

  • Understand the fundamental concepts of Linear Algebra
  • Apply linear algebra techniques to solve AI-related problems
  • Explore vector spaces, linear transformations, and matrix operations
  • Learn about eigenvectors and eigenvalues in the context of AI

What you will learn:

  • Gain a strong foundation in Linear Algebra
    Learn the fundamental concepts and principles of linear algebra to build a solid mathematical foundation for AI applications.
  • Apply linear algebra techniques to AI problems
    Discover how to apply linear algebra tools and techniques to solve real-world problems in artificial intelligence and machine learning.
  • Explore vector spaces and linear transformations
    Dive into the concepts of vector spaces, linear transformations, and their applications in AI, including neural networks and data analysis.
  • Master matrix operations in AI
    Learn how to perform matrix operations, such as matrix multiplication, inverse, and determinant calculation, and understand their significance in AI algorithms and models.
  • Understand eigenvectors and eigenvalues in AI
    Explore the concepts of eigenvectors and eigenvalues and their role in AI applications, including dimensionality reduction and eigenvalue decomposition.

Reviews and Testimonials

Launch your GraphyLaunch your Graphy
100K+ creators trust Graphy to teach online
Manifold AI Learning 2024 Privacy policy Terms of use Contact us Refund policy