Free Download Machine Learning Primer with JS Regression (Math + Code)Published 5/2024
Created by Eincode by Filip Jerga,Filip Jerga
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 88 Lectures ( 13h 13m ) | Size: 6.25 GB
Explore practical coding, data analysis, and visualization with javascript and React JS, plus get Math background.
What you'll learn:
Understand and apply linear and multiple regression techniques.
Build and use regression models with Node js and React js
Grasp the key mathematical concepts behind regression algorithms.
Create a React app for real-time data plotting and regression analysis.
Requirements:
Base knowledge of any programming language
Description:
Dive into the world of machine learning with Machine Learning with JS: Regression Tasks (Math + Code). This course offers a focused look at linear regression, blending theoretical knowledge with hands-on coding to teach you how to build and apply linear regression models using javascript.What You Will Learn:Core Principles of Linear Regression: Begin with the fundamentals of linear regression and expand into multiple regression techniques. Discover how these models can predict future outcomes based on past data.Hands-On Coding: Engage directly with practical coding examples, utilizing javascript. You'll use Node.js for the computational aspects and React.js for dynamic data visualization.Simplified Mathematics: We make the essential math behind the models accessible, focusing on concepts that allow you to understand and implement the algorithms effectively.Project-Based Learning: Build a React application from scratch that not only plots data but also computes regression parameters and visualizes these computations in real-time. This hands-on approach will help solidify your learning through actual development experience.Real-World Applications: Learn to forecast real-world outcomes using the models you build. Understand the importance of residuals and how to quantify model accuracy with statistical measures such as R-squared, Mean Absolute Error (MAE), and Mean Squared Error (MSE).Advanced Topics in Depth: Go beyond basic regression with sessions on handling complex data types through multiple regression analysis, matrix operations, and model selection techniques.Course Structure:This course includes over 80 detailed video lectures that guide you through every step of learning machine learning with javascript:Introduction and Setup: Start with an overview of the necessary tools and configurations. Understand the foundational terms and concepts in regression.Interactive Exercises: Each new concept is paired with practical coding exercises that reinforce the material by putting theory into practice.In-Depth Projects: Apply what you've learned in extensive, real-world projects. Predict salary ranges based on job data or estimate car prices with sophisticated regression models.Why Choose This Course?Targeted Learning: We focus on linear regression to provide a thorough understanding of one of the most common machine learning techniques.Practical javascript Use: By using javascript, a language familiar to many developers, this course demystifies the process of integrating machine learning into web applications and backend services.Project-Driven Approach: The projects are designed to reflect real industry problems, preparing you for technical challenges in your career.
Who this course is for:
Beginners curious about the field of machine learning.
Software developers interested in adding machine learning capabilities to their skillset.
Students and professionals who prefer a hands-on, practical approach to learning data analysis and statistical modeling.
Homepage
https://www.udemy.com/course/machine-learning-primer-with-js-regression/
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