Linear Algebra Mathematics for Machine Learning Data Science
Go Zero to Pro - Complete linear algebra - Mathematics for data science, machine learning & Deep Learning
Linear Algebra Mathematics for Machine Learning Data Science udemy course
Go Zero to Pro - Complete linear algebra - Mathematics for data science, machine learning & Deep Learning
What you'll learn:
Complete Linear Algebra for Data Science & Machine Learning Course Site
- Fundamentals of Linear Algebra and how to ace your Linear Algebra exam
- Basics of matrices (notation, dimensions, types, addressing the entries, etc.)
- Operations on a single matrix, e.g. scalar multiplication, transpose, determinant & adjoint
- Operations on two matrices, including addition, subtraction and multiplication of matrices
- Performing elementary row operations and finding Echelon Forms (REF & RREF)
- Inverses, including invertible and singular matrices, and the Cofactor method
- Solving systems of linear equations using matrices and inverse matrices, including Cramer’s rule to solve AX = B
Requirements:
- A passion to learn about Matrices and Vectors
- Ability to perform basic mathematical operations (+, -, x, ÷) on numbers and fractions
- Knowledge of how to solve a linear equation (e.g. find x in 3x-4=11)
- Understanding of basic Algebra concepts, e.g. Powers and Roots, simplifying Fractions, Factorization, solving Equations and drawing Graphs.
- You only need to know basic Math and Algebra to take this course.
- And the best thing is, most of the above prerequisite topics are covered inside the course
Description:
Interested in increasing your Machine Learning, Deep Learning expertise by effectively applying the mathematical skills - Most Importantly Linear Algebra?
Then, this course is for you.
With the growing learners of Machine Learning, Data Science, and Deep Learning.
The Common mistake by a data scientist is→ Applying the tools without the intuition of how it works and behaves.
Having the solid foundation of mathematics will help you to understand how each algorithm work, its limitations and its underlying assumptions.
With this, you will have an edge over your peers and makes you more confident in all the applications of Machine Learning, Data Science, and Deep Learning.
As a common saying:
It always pays to know the machinery under the hood, rather than being a guy who is just behind the wheel with no knowledge about the car.
Linear Algebra is one of the areas where everyone agrees to be a starting point in the learning curve of Machine Learning, Data Science, and Deep Learning.. Its basic elements – Vectors and Matrices are where we store our data for input as well as output.
Any operation or Processing involving storing and processing the huge number of data in Machine Learning, Data Science, and Artificial intelligence, would mostly use Linear Algebra in the backend.
Even Deep Learning and Neural Networks - Employs the Matrices to store the inputs like image, text etc. to give the state of the art solution to complex problems.
Keeping in mind the significance of Linear Algebra in a Data Science career, we have tailor-made this curriculum such that you will be able to build a strong intuition on the concepts in Linear Algebra without being lost inside the complex mathematics.
At the end of this course, you will also learn, how the Famous Google PageRank Algorithm works, using the concepts of Linear Algebra which we will be learning in this course.
In this course. you will not only learn analytically, but you will also see its working by running in Python as well.
So, with this course, you will learn, build intuition, and apply to some of the interesting real-world applications.
Click on the Enroll Button to start Learning.
I look forward to seeing you in Lecture 1
Course Contents:
In this course you will take a step by step journey in mastering the Linear Algebra that you would require for Data Science, Machine Learning , Natural Language Processing and Deep Learning.
Below lists down the content, and keep in mind - its a hands-on course.
Vectors Basics :
Vector Projections:
Basis of Vectors
Matrices Basics
Matrix Transformations
Gaussian Elimination
Einstein Summation Convention
Eigen Problems
Google Page Rank Algorithm
SVD - Singular Value Decomposition
Pseudo Inverse
Matrix Decomposition
Solve Linear Regression using Matrix Methods
Linear Regression from Scratch
Linear Algebra in Natural Language Processing
Linear Algebra for Deep Learning
Linear Regression using PyTorch
Bonus (Python Basics & Python for Data Science)
Who this course is for:
- Data Scientists who wish to improve their career in Data Science.
- Machine Learning Practitioners
- Any one who wants to understand the underpinnings of Maths in Data Science, Machine Learning and Artificial intelligence
- Any Data Science enthusiast
- Any student or professional who wants to start or transition to a career in Data Science.
- Students who want to refresh and learn important maths concepts required for Machine Learning , Deep Learning & Data Science.
- Any data analysts who want to level up in Machine Learning.
- Any people who are not satisfied with their job and who want to become a Data Scientist.
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Course Details:
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Linear Algebra Mathematics for Machine Learning Data Science udemy free download
Go Zero to Pro - Complete linear algebra - Mathematics for data science, machine learning & Deep Learning
Demo Link: https://www.udemy.com/course/linear-algebra-for-data-science-machine-learning-ai/