Module 0. About the Course (2 min)
Module 1. The Modeling Process (30 min)
- The Data Science Process
- Types of Data Science Projects
- Modeling
- Project Type and Maturity
- Data Science Starting Point
- Other Modeling Considerations
Module 2. Overview of Common Algorithms and Uses (68 min)
- Data Science Framework
- Approaches
- Techniques
- Algorithms
- Anomaly Detection
Module 3. Tools for Model Evaluation (24 min)
- Evaluation
- Bias/Variance Tradeoff
- Train and Test Sets
- Assessment of Results
- Hold-out Cross Validation
- K-fold Cross Validation Method
- Regression – Mean Squared Error
- Linear Regression Confidence and Prediction Intervals
- Logistic Regression – Significance Test
- Classification Accuracy
- Classification Accuracy – Other Measures
- Prediction Error Methods
- ROC Curve
- Evaluation – Customer Acceptance
Module 4. Preparing for Deployment (11 min)
- Deployment
- Deployment – Working Software
- Data Pipelines
- Data Pipelines – Part of Deployment: Part 1 – 2
- Deployment Operationalization
- Monitoring Models – Dashboard
- Life of the Model
Module 5. Model Operations (18 min)
- Model Operations: Part 1 – 2
- Data Ingestion
- Data Storage
- Data Integration and Synthesis
- Data Visualization
- Model Accuracy
- Model Retraining
- Model Retiring
- Machine Learning in Action
Module 6. Model Metrics (29 min)
- Machine Learning Metrics
- Metrics for Supervised Learning
- Classification Model Metrics
- Normalized Discount Cumulative Gain (NDCG)
- Discount Cumulative Gain (DCG)
- Normalized Discount Cumulative Gain (NDCG) – Example
- Root Mean Squared Error
- Quantities of Error
Click
–here- to download a more detailed outline of this course.