Learners completing this course will be able to apply regression, clustering, classification, and feature engineering techniques to real-world datasets, evaluate models with performance metrics, and visualize results for actionable insights. Through hands-on case studies, learners will not only understand algorithms but also gain the ability to prepare data, train models, and interpret outputs effectively.
This course stands out by combining practical projects with step-by-step implementation using Python. Instead of focusing on theory alone, it demonstrates machine learning through applied case studies such as salary prediction, startup cost analysis, time series forecasting, face detection, fruit classification, and credit card default prediction. Learners benefit from structured progression—starting with foundational regression models, advancing through clustering and classification, and culminating in financial credit risk modeling with advanced evaluation techniques.
By the end of the course, participants will confidently execute machine learning workflows in Python, analyze diverse datasets, and apply predictive models to solve real-world business and research problems. This unique emphasis on project-driven learning ensures that learners develop both technical expertise and problem-solving skills valued in today’s data-driven industries.
This module introduces learners to machine learning projects through case studies, covering environment setup, regression methods, and logistic regression. By working with practical datasets, learners will build a strong foundation in modeling approaches and optimization techniques.
涵盖的内容
9个视频4个作业
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9个视频•总计72分钟
Introduction to Machine Learning Case Studies•4分钟
Environmental SetUp•8分钟
Problem Statement for Linear Regression•4分钟
Starting with Normal linear Regression•11分钟
Polynomial Regression•12分钟
Backward Elimination•8分钟
Robust Regression•11分钟
Logistic Regression•8分钟
Logistic Regression Continue•6分钟
4个作业•总计60分钟
Getting Started with Machine Learning•10分钟
Regression Techniques and Optimization•10分钟
Logistic Regression Applications•10分钟
Graded - Foundations of Machine Learning Case Studies•30分钟
Clustering and Time Series Modeling
第 2 单元•小时 后完成
单元详情
This module explores unsupervised learning with k-means clustering and introduces time series forecasting techniques. Learners gain hands-on practice with visualization, distance calculations, and analyzing sequential datasets such as airline passengers and Bitcoin prices.
涵盖的内容
10个视频3个作业
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10个视频•总计71分钟
Introduction to k-Means Clustering•2分钟
Creating Scattered Plots•7分钟
Euclidean Distance Calculator•12分钟
Printing Centroid Values•4分钟
Analysing Face Detection•1分钟
Problem Statement•4分钟
Creating Model of time Series•9分钟
Training and Testing Data•12分钟
Analysing Output•9分钟
Time Series Bitcoin Data•10分钟
3个作业•总计50分钟
K-Means Clustering Concepts•10分钟
Face Detection and Time Series Analysis•10分钟
Graded - Clustering and Time Series Modeling•30分钟
Classification Algorithms in Practice
第 3 单元•小时 后完成
单元详情
This module focuses on supervised learning techniques for classification. Learners apply algorithms such as logistic regression, decision trees, KNN, LDA, and Naive Bayes, while also visualizing decision boundaries to better interpret classifier behavior.
涵盖的内容
10个视频4个作业
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10个视频•总计57分钟
Classification•5分钟
Fruit type Distribution•11分钟
Create Training and Test Sets•3分钟
Building Logistic Regression•5分钟
Building Decision Tree•5分钟
K-Nearest Neighbors•5分钟
Linear Discriminant Analysis•5分钟
Gaussian Naive Bayes•4分钟
Plot the Decision Boundary•7分钟
Plot the Decision Boundary Continue•7分钟
4个作业•总计60分钟
Classification Basics and Logistic Regression•10分钟
Decision Trees and Other Classifiers•10分钟
Visualizing Classification Boundaries•10分钟
Graded - Classification Algorithms in Practice•30分钟
Credit Risk and Feature Engineering Projects
第 4 单元•小时 后完成
单元详情
This module applies machine learning techniques to financial case studies, focusing on credit card default prediction. Learners practice data preparation, feature engineering, and evaluation using confusion matrices, AUC curves, and visualization with seaborn.
涵盖的内容
12个视频4个作业
显示有关单元内容的信息
12个视频•总计78分钟
Defining the Problem Statement•5分钟
Data Preparation•6分钟
Clean up•6分钟
Payment Delays•7分钟
Standing Credit•4分钟
Payments in the Previous Months•7分钟
Explore Defaulting•8分钟
Absolute Statistics•10分钟
Starting with Feature Engineering•6分钟
From Variables to Train•6分钟
Visualization-Confusion Matrices and AUC Curves•10分钟
Creating SNS Plot•2分钟
4个作业•总计60分钟
Problem Definition and Data Preparation•10分钟
Exploring Credit Risk Data•10分钟
Feature Engineering and Model Evaluation•10分钟
Graded - Credit Risk and Feature Engineering Projects•30分钟
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