- Level Professional
- المدة 19 ساعات hours
- الطبع بواسطة IBM
-
Offered by
عن
In this Machine Learning Capstone course, you will be using various Python-based machine learning libraries such as Pandas, scikit-learn, Tensorflow/Keras, to: • build a course recommender system, • analyze course related datasets, calculate cosine similarity, and create a similarity matrix, • create recommendation systems by applying your knowledge of KNN, PCA, and non-negative matrix collaborative filtering, • build similarity-based recommender systems, • predict course ratings by training a neural network and constructing regression and classification models, • build a Streamlit app that displays your work, and • share your work then evaluate your peers.الوحدات
Welcome
1
Videos
- Introduction to Machine Learning Capstone
Exploratory Data Analysis and Feature Engineering
2
Assignment
- Checkpoints: Exploratory Data Analysis on Online Course Enrollment Data
- Graded: Exploratory Data Analysis and Feature Engineering
3
External Tool
- Exploratory Data Analysis on Online Course Enrollment Data
- Extract Bag of Words (BoW) Features from Course Textual Content
- Calculate Course Similarity using BoW Features
1
Videos
- Introduction to Recommender Systems
Introduction to Content-Based Recommender System
1
External Tool
- Content-based Course Recommender System using User Profile and Course Genres
1
Videos
- Content-based Recommender Systems
Similarity-Based Recommender Systems
2
Assignment
- Checkpoints: Unsupervised-Learning Based Recommender System
- Graded: Unsupervised-Learning Based Recommendation Systems
2
External Tool
- Content-based Course Recommender System using Course Similarities
- Clustering-based Course Recommender System
Introduction to Collaborative Filtering Based Recommender Systems
2
External Tool
- Collaborative Filtering-based Recommender System using K Nearest Neighbor
- Collaborative Filtering-based Recommender System using Non-negative Matrix Factorization
1
Videos
- Collaborative Filtering-Based Recommender Systems
Predictive Model Based Recommender Systems
2
Assignment
- Checkpoints: Supervised-Learning Based Recommender Systems
- Graded: Supervised-Learning Based Recommendation Methods
3
External Tool
- Course Rating Prediction using Neural Networks
- Regression-based Rating Score Prediction Using Embedding Features
- Classification-based Rating Mode Prediction using Embedding Features
How to Present Your Findings
2
Videos
- Elements Of A Successful Data Findings Report
- Best Practices For Presenting Your Findings
Final Submission and Instructions
1
Peer Review
- Submit Your Work and Review Your Peers
(Optional) Deploy and Showcase Your Models
1
Readings
- An Overview of the Streamlit Module
Course Wrap-Up
2
Readings
- Congratulations and Next Steps
- Credits and Acknowledgements
Auto Summary
The Machine Learning Capstone course by Coursera is designed for professionals in IT and Computer Science. Led by an expert instructor, it focuses on building and analyzing recommendation systems using Python libraries such as Pandas, scikit-learn, and TensorFlow/Keras. Over 1140 minutes, learners will develop skills in KNN, PCA, neural networks, and more. The course includes practical projects like creating a Streamlit app and peer evaluations. Subscription options include a Starter plan, making it accessible for those looking to advance their machine learning expertise.

Yan Luo

Artem Arutyunov