Introduction to the Class |
Introduction |
|
|
Python and NumPy Primer |
|
|
Matplotlib Cheatsheet |
|
|
Python Cheatsheet |
|
|
Exercise 1: Introduction to Python |
|
|
Exercise 1: Introduction to Python - SOLUTIONS |
|
|
Recorded Lecture 20/21: Introduction and kNN |
|
|
Recorded Lecture 20/21: Python and NumPy Primer |
|
|
Exercise 2: Introduction to NumPy |
|
|
Exercise 2: Introduction to NumPy - SOLUTIONS |
|
|
K-Nearest Neigbors and K-Mean |
K-Nearest Neighbors |
|
|
Recorded Lecture 20/21: kNN |
|
|
Exercise 3: kNN |
|
|
Exercise 3: kNN Solutions |
|
|
K-Means Clustering |
|
|
Recorded Lecture 20/21: K-Means |
|
|
Exercise 4: K-Means |
|
|
Exercise 4: K-Means Solutions |
|
|
Linear Classification |
Linear Classification |
|
|
Recorded Lecture 20/21: Linear Classification (1) |
|
|
Recorded Lecture 20/21: Linear Classification (2) |
|
|
Exercise Session 5: Logistic Regression |
|
|
Exercise Session 5: Logistic Regression Solution |
|
|
Max Margin Classifiers |
|
|
Recorded Lecture 20/21: Max-Margin Classifiers |
|
|
Exercise Session 6: Max Margin Classifiers |
|
|
Exercise Session 6: Max Margin Classifiers (Solution) |
|
|
Non Linear Optimization |
Optimization Basics |
|
|
Recorded Lecture 20/21: Optimization Basics |
|
|
Non Linear Classification |
AdaBoost |
|
|
Support Vector Machines |
|
|
Proof of Cover's Theorem (optional) |
|
|
Recorded Lecture 20/21: Adaboost |
|
|
Recorded Lecture 20/21: Linear SVMs |
|
|
Recorded Lecture 20/21: Kernel SVMs |
|
|
Exercise Session 7: Kernel SVM |
|
|
Exercise Session 7: Kernel SVM (solutions) |
|
|
Decision Forests |
Decision Forests |
|
|
Recorded Lecture 20/21: Decision Forests |
|
|
Neural Networks |
Multi Layer Perceptrons |
|
|
Recorded Lecture 20/21: MLPs (1) |
|
|
Recorded Lecture 20/21: MLP (2) |
|
|
Exercise Session 8 - MLP |
|
|
Exercise Session 8 - MLP Solution |
|
|
Convolutional Neural Nets |
|
|
Recorded Lecture 20/21: CNNs |
|
|
Exercise Session 9: CNN |
|
|
Exercise Session 9: CNN Solution |
|
|
Exercise Session 10: UNet |
|
|
Exercise Session 10: UNet Solutions |
|
|
Transformers |
|
|
Alpha Go |
|
|
Dimensionality Reduction |
Linear Dimensionality Reduction |
|
|
Exercise Session 11: PCA |
|
|
Exercise Session 11: PCA Solutions |
|
|
Non Linear Dimensionality Reduction |
|
|
Recorded Lecture 20/21: Linear Dimensionality Reduction (1) |
|
|
Recorded Lecture 20/21: Linear Dimensionality Reduction (2) |
|
|
Recorded Lecture 20/21: Nonlinear Dimensionality Reduction |
|
|
Exercise Session 12: Autoencoder |
|
|
Exercise Session 12: Autoencoder (solutions) |
|
|
Applications |
Shape Design (Optional) |
|
|
Recap |
Course Recap |
|
|
Recorded Lecture 20/21: Course Recap |
|
|
Mock Exam |
Mock Exam |
|
|
Mock Exam Solutions |
|
|
Practice Graded Exercise - NOT THE ACTUAL ONE! |
Practice Graded Exercise 1 - Fall 2020 |
|
|
Practice Graded Exercise 2 |
|
|
Graded Exercise 1 |
Graded Exercise 1 |
|
|
Graded Exercise 1 - Solutions |
|
|
Graded Exercise 2 |
Graded Exercise 2 |
|
|
Graded Exercise 2 - Solutions |
|
|
Exam Classrooms |
AAC 231 |
|
|
SG 1 138 |
|