Description
What you’ll learn
-
Build Mathematical intuition required for Data Science and Machine Learning
-
The linear algebra intuition required to become a Data Scientist
-
How to take their Data Science career to the next level
-
Hacks, tips & tricks for their Data Science career
-
Implement Machine Learning Algorithms better
-
Apply Linear Algebra in Data Analysis
-
Learn core concept to Implement in Machine Learning
Master Linear Algebra for Data Science, Machine Learning, and Deep Learning – Unleash the Power of Mathematics in AI Applications
Are you eager to enhance your skills in Machine Learning, Deep Learning, and Data Science by mastering the crucial foundation of Linear Algebra? Look no further – this comprehensive course is designed just for you.
With the increasing demand for expertise in Machine Learning and Deep Learning, it’s crucial to avoid the common mistake of relying solely on tools without a deep understanding of their underlying mathematical principles. This course is your key to developing a solid foundation in mathematics, providing you with a profound intuition of how algorithms work, their limitations, and the assumptions they rely on.
Why is a strong mathematical foundation important? Understanding the machinery under the hood is the key to becoming a confident practitioner in the fields of Machine Learning, Data Science, and Deep Learning. Linear Algebra is universally acknowledged as a fundamental starting point in the learning journey of these domains.
The basic elements of Linear Algebra – Vectors and Matrices – serve as the backbone for storing and processing data in various applications of Machine Learning, Data Science, and Artificial Intelligence. From basic operations to complex tasks involving massive datasets, Linear Algebra plays a pivotal role.
Even in advanced technologies like Deep Learning and Neural Networks, Matrices are employed to store inputs such as images and text, providing state-of-the-art solutions to complex problems.
Recognizing the paramount importance of Linear Algebra in a Data Science career, we have crafted a curriculum that ensures you build a strong intuition for the concepts without getting lost in complex mathematics.
By the end of this course, you will not only grasp the analytical aspects of Linear Algebra but also witness its practical implementation through Python. Additionally, you will gain insights into the functioning of the renowned Google PageRank Algorithm, utilizing the concepts learned throughout the course.
Here’s what the course covers:
- 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
This hands-on course takes you on a step-by-step journey, providing the essential Linear Algebra skills required for Data Science, Machine Learning, Natural Language Processing, and Deep Learning. Enroll now and embark on your journey to master the mathematical foundations powering AI applications. Click the ‘Enroll’ button to start your learning experience – I look forward to seeing you in Lecture 1!
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.
Course content
- Vectors Basics4 lectures • 14min
- Vectors Basics
- Vector Projections5 lectures • 47min
- Vector Projections
- Basis of Vectors2 lectures • 14min
- Basis of Vectors
- Matrix Basics from High school10 lectures • 40min
- Matrix Basics from High school
- Matrices – Setting up the stage – Transformations4 lectures • 17min
- Matrices – Setting up the stage – Transformations
- Gaussian Elimination3 lectures • 12min
- Gaussian Elimination
- Einstein Summation convention – Non Orthogonal basis – Gram Schmidt Process6 lectures • 34min
- Einstein Summation convention – Non Orthogonal basis – Gram Schmidt Process
- Eigen Problems8 lectures • 51min
- Eigen Problems
- Principal Component Analysis – Application of Eigen Values and Eigen Vectors2 lectures • 33min
- Principal Component Analysis – Application of Eigen Values and Eigen Vectors
- Google Pagerank Algorithm3 lectures • 23min
- Google Pagerank Algorithm
Reviews
There are no reviews yet.