Published 1/2023MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 697.11 MB | Duration: 1h 49m
The foundations of machine learning, taught in an engaging and concise way What you'll learn Gain a foundational understanding of machine learning Implement both supervised and unsupervised machine learning models Measure the performances of different machine learning models using the suitable metrics Understand which machine learning model to use in which situation Reduce data of higher dimensions to data of lower dimensions using principal component analysis Requirements A windows machine, and a willingness to learn Description In this course, we will cover the foundations of machine learning. The course is designed to not beat around the bush, and cover exactly what is needed concisely and engagingly. The content found in this course is essentially the same content that can be found in a University level machine learning module. Through the use of entertaining stories, professionally edited videos, and clever scriptwriting, this course allows one effectively absorb the complex material, without experiencing the usual boredom that can usually be experienced when trying to study machine learning content. The course first goes into a very general explanation of machine learning. It does this by telling a story that involves an angry farmer and his missing donuts. This video sets the foundation for what is to come. After a general understanding is obtained, the course moves into supervised classification. It is here that we are introduced to neural networks through the use of a plumbing system on a flower farm.Thereafter, we delve into supervised regression, which is explained with the help of a quest to find the most optimally priced real estate in town. We then cover unsupervised classification and regression by using other farm-based examples.This course is probably the best foundational machine learning course out there, and you should definitely give it a try! Overview Section 1: Introduction Lecture 1 Introduction Lecture 2 What exactly is machine learning? Section 2: Installing tensorflow, python, jupyter notebook, numpy, pandas, sklearn Lecture 3 Installing Python and Jupyter Notebook Lecture 4 Installing tensorflow, numpy, pandas, and sklearn Section 3: Supervised Machine Learning Lecture 5 Introduction to Neural Networks Lecture 6 Maths behind Neural Networks Lecture 7 Supervised Classification model implementation - Flower prediction(Iris dataset) Lecture 8 Supervised Regression explained Lecture 9 Supervised Regression Implementation - House price predictor Lecture 10 Bias and variance Lecture 11 Decision Trees Lecture 12 No Free Lunch Theorem Section 4: Unsupervised Classification Lecture 13 K-Means Clustering explained Lecture 14 K-Means Clustering implementation Section 5: Unsupervised Regression Lecture 15 Dimensionality reduction explained - Principal component analysis Lecture 16 PCA Implementation Section 6: Ensemble learning Lecture 17 Ensemble learning explained Lecture 18 Ensemble model implementation Section 7: Measuring the performance of machine learning algorithms Lecture 19 Comparing classification algorithms Lecture 20 Ending note Bners to machine learning. College students looking to improve their capability. Professionals looking to implement machine learning in their day to day business. HomePage:
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