Methods & Algorithms

MSc Data Science - Finance Applications

6Lectures40PDFs67Charts14Notebooks265Quiz Questions7Handouts1Assignment
P

Prerequisites

Foundational Knowledge -- Review these mini-lectures before starting the course. They cover linear algebra, ML paradigms, and classification/decomposition concepts assumed throughout L01-L06.
I

Regression

II

Instance & Ensemble Methods

III

Advanced Topics

GA

Group Assignment (60% of Grade)

ML Pipeline Challenge — Groups of 2-3 apply 5 of 6 course topics to a self-sourced dataset. Harder topic combinations earn higher scores through a difficulty multiplier.
5
Topics Required
60%
of Course Grade
100
Points Total
Topic Difficulty Points
TopicPointsIf Omitted
L01 Linear Regression1Multiplier 1.00
L02 Logistic Regression1Multiplier 1.00
L03 KNN & K-Means2Multiplier 0.96
L04 Random Forests & Boosting2Multiplier 0.96
L05 PCA & t-SNE3Multiplier 0.92
L06 Embeddings & RL4Multiplier 0.88
H

Pre-Class Discovery Handouts -- 43 activities across 6 lectures + 1 bonus

Q

Canonical Quizzes -- 120 questions (20 per lecture)

DD

Deep Dive Quizzes -- 100 supplementary questions

OV

Overview Quizzes -- 45 cross-topic questions

Methods & Algorithms - MSc Data Science