Machine Learning
Learning Outcomes:
- Understanding the fundamental concepts of Machine Learning
- Applying the Nearest Neighbours algorithm in Machine Learning problems
- Gaining introductory knowledge of conformal prediction and its significance in Machine Learning for reliable predictions
- Completing the discussion on full conformal prediction and its applications in Machine Learning
- Understanding the risks of overfitting and underfitting in Machine Learning models
- Learning about learning curves and their importance in evaluating Machine Learning models
- Discussing the method of Least Squares and its advancements, like Ridge Regression and Lasso
- Exploring the impact of data preprocessing and parameter selection on the quality of Machine Learning predictions
- Studying inductive conformal prediction and its computational efficiency
- Applying kernel methods to add flexibility to linear Machine Learning models
- Understanding the concepts and applications of neural networks and support vector machines
- Learning to use pipelines in Machine Learning workflows with scikit-learn
- Studying cross-conformal predictors and their efficiency
- Gaining a broad understanding of various prediction algorithms in Machine Learning
Skills for module:
Python
Machine Learning
Artificial Intelligence
Scikit Learn
NumPy
Matplotlib
Jupyter Notebooks
Algorithms
Algebra
Problem Solving
Critical Thinking
Time Management
Data Science
Continuous Integration
Hyperparameters
Boosting
Neural Networks
Mathematics
Data Visualisation
Machine Learning
CS3920
Learning Outcomes
- Understanding the fundamental concepts of Machine Learning
- Applying the Nearest Neighbours algorithm in Machine Learning problems
- Gaining introductory knowledge of conformal prediction and its significance in Machine Learning for reliable predictions
- Completing the discussion on full conformal prediction and its applications in Machine Learning
- Understanding the risks of overfitting and underfitting in Machine Learning models
- Learning about learning curves and their importance in evaluating Machine Learning models
- Discussing the method of Least Squares and its advancements, like Ridge Regression and Lasso
- Exploring the impact of data preprocessing and parameter selection on the quality of Machine Learning predictions
- Studying inductive conformal prediction and its computational efficiency
- Applying kernel methods to add flexibility to linear Machine Learning models
- Understanding the concepts and applications of neural networks and support vector machines
- Learning to use pipelines in Machine Learning workflows with scikit-learn
- Studying cross-conformal predictors and their efficiency
- Gaining a broad understanding of various prediction algorithms in Machine Learning
Related Material
Related Material