CARVIEW |
Select Language
HTTP/2 200
date: Sat, 11 Oct 2025 13:58:05 GMT
content-type: text/html; charset=utf-8
content-encoding: gzip
cache-control: public, max-age=86400
referrer-policy: strict-origin-when-cross-origin
x-app-version: v251008-h-251010-1202
x-content-type-options: nosniff
x-frame-options: SAMEORIGIN
x-xss-protection: 1; mode=block
x-middleware-rewrite: /coursesv4/linear-algebra-for-data-science-using-python
vary: RSC, Next-Router-State-Tree, Next-Router-Prefetch, Accept-Encoding
x-nextjs-cache: MISS
etag: W/"hyfkhnx3yb9pv7"
x-cloud-trace-context: 007e92a5f4d5bc7163d15342f2de2791
via: 1.1 google
alt-svc: h3=":443"; ma=86400
cf-cache-status: MISS
set-cookie: __cf_bm=9Sk_NQzhDnVB1QIja5DQ404y0GgptzCW5FvxhCh4z44-1760191085-1.0.1.1-W12ZIgxsNhkFFmlVgZBNn.G.tX77C.chgitUvtn6wvIzhJb.CoBcf4iMmWEr9Dk82rftDuE2Cl0RnRPhX2sRSC.L2sfcP7ngQHrwivxSLWM; path=/; expires=Sat, 11-Oct-25 14:28:05 GMT; domain=.educative.io; HttpOnly; Secure; SameSite=None
strict-transport-security: max-age=31536000; includeSubDomains; preload
server: cloudflare
cf-ray: 98cede9f8d199dfd-BLR
Linear Algebra for Data Science Using Python - AI-Powered Course
4.3
Beginner
10h
Updated 2 months ago
Linear Algebra for Data Science Using Python
Gain insights into linear algebra essentials for data science, focusing on vectors, matrices, and tensors. Explore practical Python applications, engaging visuals, and hands-on projects.
Join 2.8M developers at
Overview
Content
Reviews
Linear algebra is a fundamental pillar of data science. In advanced models in data science, like neural networks, the inputs and transformations are based upon vectors, matrices, and tensors which require a reasonable understanding of linear algebra to get the desired results. It is elegant and the most applied mathematics under the umbrella of data science.
This course teaches linear algebra with a focus on data science. This course encompasses several engaging illustrations, including static images and animations. Furthermore, this course presents mathematical modeling through programming in Python. This course contains several executable coding playgrounds on real data sets and a final project with practical applications.
Aside from theoretical implementations, the modern-day world needs its daunting calculations, trajectory mapping, and distance manipulation, all of which linear algebra provides. By the end of this course, you’ll have a working knowledge of all the necessary teachings in linear algebra.
Linear algebra is a fundamental pillar of data science. In advanced models in data science, like neural networks, the inputs and...Show More
WHAT YOU'LL LEARN
Learning the intricate concepts of linear algebra from scratch
Working knowledge of various linear algebra techniques using Python
A visual understanding of concepts such as vector space, spans, and subspace with animations
Familiarity with valuable concepts like fields, eigenspaces, diagonalization, and SVD
An understanding of how linear algebra concepts build the most useful tools in data science, such as neural networks
The ability to apply linear algebra concepts to real-world problems through coding exercises and practical projects
Learning the intricate concepts of linear algebra from scratch
Show more
Content
67 Lessons1 Project9 Quizzes8 Challenges
1.
Introduction
1 Lessons
Get familiar with linear algebra applications in data science using Python.
2.
Linearity
11 Lessons
Get started with linear functions, linear combinations, and solving linear systems in data science.
3.
Matrices
5 Lessons
Master the steps to utilize matrices and perform matrix operations essential for data science.
4.
Solving Linear Systems
12 Lessons
Grasp the fundamentals of solving linear systems, Gaussian elimination, and matrix rank.
5.
Singularity
7 Lessons
Map out the steps for working with matrices in data science using elementary transformations.
6.
Linear Regression and Least Squares
11 Lessons
Focus on linear and non-linear regression techniques, practical applications, multi-target regression, and neural networks.
7.
Vector Space
12 Lessons
Build on vector properties, sets, fields, vector spaces, subspaces, and applications in data science.
8.
Vector Spaces of a Matrix
5 Lessons
Step through vector spaces, null spaces, orthogonal complements, and eigenspaces in matrix algebra.
9.
Singular Value Decomposition: SVD
3 Lessons
Get started with orthogonal diagonalization and Singular Value Decomposition (SVD) for matrix factorization.
Certificate of Completion
Showcase your accomplishment by sharing your certificate of completion.
Developed by MAANG Engineers
Every Educative lesson is designed by a team of ex-MAANG software engineers and PhD computer science educators, and developed in consultation with developers and data scientists working at Meta, Google, and more. Our mission is to get you hands-on with the necessary skills to stay ahead in a constantly changing industry. No video, no fluff. Just interactive, project-based learning with personalized feedback that adapts to your goals and experience.
Trusted by 2.8 million developers working at companies
"These are high-quality courses. Trust me. I own around 10 and the price is worth it for the content quality. EducativeInc came at the right time in my career. I'm understanding topics better than with any book or online video tutorial I've done. Truly made for developers. Thanks"
Anthony Walker
@_webarchitect_
"Just finished my first full #ML course: Machine learning for Software Engineers from Educative, Inc. ... Highly recommend!"
Evan Dunbar
ML Engineer
"You guys are the gold standard of crash-courses... Narrow enough that it doesn't need years of study or a full blown book to get the gist, but broad enough that an afternoon of Googling doesn't cut it."
Software Developer
Carlos Matias La Borde
"I spend my days and nights on Educative. It is indispensable. It is such a unique and reader-friendly site"
Souvik Kundu
Front-end Developer
"Your courses are simply awesome, the depth they go into and the breadth of coverage is so good that I don't have to refer to 10 different websites looking for interview topics and content."
Vinay Krishnaiah
Software Developer
Hands-on Learning Powered by AI
See how Educative uses AI to make your learning more immersive than ever before.
AI Prompt
Build prompt engineering skills. Practice implementing AI-informed solutions.
Code Feedback
Evaluate and debug your code with the click of a button. Get real-time feedback on test cases, including time and space complexity of your solutions.
Explain with AI
Select any text within any Educative course, and get an instant explanation — without ever leaving your browser.
AI Code Mentor
AI Code Mentor helps you quickly identify errors in your code, learn from your mistakes, and nudge you in the right direction — just like a 1:1 tutor!
Free Resources
TRENDING TOPICS
LEGAL
Cookie Settings