Foundational Math for Machine Learning
Offered By: LinkedIn Learning
Course Description
Overview
Understanding key mathematical concepts is essential for implementing machine learning algorithms effectively. Delve into core concepts from linear algebra to calculus, probability, and statistics. Whether you're a beginner or an experienced practitioner, this learning path equips you with vital skills to tackle complex ML projects confidently.
- Master linear algebra fundamentals.
- Grasp calculus concepts for machine learning.
- Harness the power of probability in machine learning.
- Unlock insights with statistical analysis.
Syllabus
Courses under this program:
Course 1: Machine Learning Foundations: Linear Algebra
-Explore the fundamentals of linear algebra, the mathematical foundation of machine learning algorithms.
Course 2: Machine Learning Foundations: Calculus
-Learn the basics of calculus concepts and techniques used to design and implement ML algorithms.
Course 3: Machine Learning Foundations: Probability
-Get an in-depth introduction to probability, find out why it’s a prerequisite for machine learning, and learn how to use it to design and implement machine learning algorithms.
Course 4: Machine Learning Foundations: Statistics
-Learn how statistics can help you troubleshoot issues, optimize performance, and innovate, creating new machine learning models that are more efficient.
Course 1: Machine Learning Foundations: Linear Algebra
-Explore the fundamentals of linear algebra, the mathematical foundation of machine learning algorithms.
Course 2: Machine Learning Foundations: Calculus
-Learn the basics of calculus concepts and techniques used to design and implement ML algorithms.
Course 3: Machine Learning Foundations: Probability
-Get an in-depth introduction to probability, find out why it’s a prerequisite for machine learning, and learn how to use it to design and implement machine learning algorithms.
Course 4: Machine Learning Foundations: Statistics
-Learn how statistics can help you troubleshoot issues, optimize performance, and innovate, creating new machine learning models that are more efficient.
Courses
-
Explore the fundamentals of linear algebra, the mathematical foundation of machine learning algorithms.
-
Learn how statistics can help you troubleshoot issues, optimize performance, and innovate, creating new machine learning models that are more efficient.
-
Learn the basics of calculus concepts and techniques used to design and implement ML algorithms.
-
Get an in-depth introduction to probability, find out why it’s a prerequisite for machine learning, and learn how to use it to design and implement machine learning algorithms.
Taught by
Terezija Semenski
Related Courses
Coding the Matrix: Linear Algebra through Computer Science ApplicationsBrown University via Coursera Massively Multivariable Open Online Calculus Course
Ohio State University via Coursera Линейная алгебра (Linear Algebra)
Higher School of Economics via Coursera Bases Matemáticas: Álgebra
Universitat Politècnica de València via edX Introduction to R for Data Science
Microsoft via edX