Data transforms and feature engineering-Getting Started
Data Transformations Overview
()
Data Transformation: Through the eyes of our Working Example
Transforms with scikit-learn
Pipelines
Data transforms and feature engineering-Class imbalance, data bias
Introduction to Class Imbalance
()
Class imbalance: Through the Eyes of our Working Example
Class Imbalance
Sampling Techniques
Class Imbalance Deep Dive
()
Models that Naturally Handle Imbalance
Data Bias
Data transforms and feature engineering-Dimensionality Reduction
Introduction to Dimensionality Reduction
()
Dimensionality Reduction: Through the Eyes of Our Working Example
Why is Dimensionality Reduction Important?
Dimension Reduction
()
Dimensionality Reduction and Topic models
Data transforms and feature engineering-CASE STUDY - Topic modeling
Case Study Intro / Feature Engineering
()
Topic modeling: Through the Eyes of our Working Example
Getting Started with the Topic Modeling Case Study (hands-on)
Data transforms and feature engineering-End of module review & evaluation
Data Transforms and Feature Engineering: Summary/Review
Pattern recognition and data mining best practices-TUTORIAL: ai360
Exploring IBM's AI Fairness 360 Toolkit
()
ai360: Through the Eyes of our Working Example
Introduction to 360 (hands-on)
Pattern recognition and data mining best practices-Outlier detection
Introduction to Outliers
()
Outlier Detection: Through the Eyes of our Working Example
Outlier Detection
()
Outliers
Pattern recognition and data mining best practices-Unsupervised learning
Introduction to Unsupervised learning
()
Unsupervised learning: Through the Eyes of our Working Example
An Overview of Unsupervised Learning
Clustering
Unsupervised Learning
()
Clustering Evaluation
Pattern recognition and data mining best practices-CASE STUDY - Clustering
Clustering: Through the Eyes of our Working Example
Getting Started with the Clustering Case Study (hands-on)
Pattern recognition and data mining best practices-End of module review & evaluation
Pattern Recognition and Data Mining Best Practices: Summary/Review