MENU

Fun & Interesting

Linear Regression in Machine Learning | Linear Regression Tutorial [With Project] | Intellipaat

Intellipaat 5,934 2 months ago
Video Not Working? Fix It Now

🔥Enroll for Intellipaat's Data Science Course: https://intellipaat.com/data-scientist-course-training/ #LinearRegressionInMachineLearning #LinearRegressionMachineLearning #WhatisLinearRegression #LinearRegressionTutorial #LinearRegressioninPython #LinearRegressionProject #Intellipaat Are you looking to master linear regression in machine learning? This linear regression tutorial by Intellipaat is your complete guide to understanding and implementing one of the most fundamental machine learning algorithms. We’ll break down what is linear regression, how it works mathematically, and its real-world applications with a hands-on linear regression project in machine learning using Python. In this video, you will learn about the linear regression algorithm explained in detail, covering key concepts like the cost function, gradient descent, and how to evaluate model performance. You’ll also see a step-by-step coding demonstration using linear regression python code with linear regression python sklearn, making it easier for beginners to follow along. Whether you're a beginner or an experienced professional, this tutorial will help you grasp the core ideas of linear regression in machine learning through a practical, project-based approach. 📖 Below are the topics covered in the video on 'AWS Lambda Tutorial For Absolute Beginners': 00:00 - Introduction to Linear Regression 01:56 - Mathematics Behind Linear Regression 51:16 - R-Squared and Adjusted R-Squared 1:23:52 - Hands-on 🔥 FAQs on Linear Regression in Machine Learning 1️⃣ What is linear regression in machine learning? Linear regression is a supervised learning algorithm that models the relationship between a dependent variable and one or more independent variables using a straight-line equation. It is widely used for predictive analysis in various domains. 2️⃣ How do you implement linear regression in Python? You can implement linear regression python code using libraries like linear regression python sklearn, NumPy, and Pandas. This tutorial covers a complete step-by-step implementation. 3️⃣ What is the difference between simple and multiple linear regression? Simple linear regression deals with one independent variable, while multiple linear regression involves two or more independent variables predicting the dependent variable. 4️⃣ What is gradient descent in linear regression? Gradient descent is an optimization algorithm used to minimize the error in predictions by updating model parameters iteratively. It is a crucial technique in linear regression gradient descent for improving accuracy. ➡️ About the Course This online Data Science course, in collaboration with iHUB, IIT Roorkee & Microsoft, will help you to elevate your Data Science career. In this course you will master skills like Python, SQL, Statistics, Machine Learning, AI, Power BI & Generative AI, along with real-time industry-oriented projects. ✅ Key Features - (Course Features) 👉🏼 50+ Live interactive sessions across 7 months 👉🏼 218 Hrs Self-paced Videos 👉🏼 50+ Industry relevant Projects & Quizzes 👉🏼 Live Classes from IIT Faculty & Industry Experts 👉🏼 Certification from iHub IIT Roorkee & Microsoft 👉🏼 Career Services by Intellipaat 👉🏼 2 Days Campus Immersion at iHub IIT Roorkee 👉🏼 24/7 Support ➡️ What’s Covered in This Program? ✅ Linux and Python Fundamentals ✅ Data Wrangling with SQL ✅ Python with Data Science ✅ Linear Algebra and Advanced Statistics ✅ Machine Learning and Prediction Algorithms ✅ Supervised and Unsupervised Learning in ML ✅ Deep Learning with TensorFlow ✅ Generative AI & Prompt Engineering ✅ Deploying Machine Learning Models on Cloud ✅ Data Visualization Tool Power BI 📌 Do subscribe to Intellipaat channel & come across more relevant Tech content: https://goo.gl/hhsGWb ▶️ Intellipaat Achievers Channel: https://www.youtube.com/@intellipaatachievers 📚For more information, please write back to us at [email protected] or call us at IND: +91-7022374614 / US : 1-800-216-8930

Comment