Theory and Applications
Core probability theory and statistical methods implemented in Python — from distributions and hypothesis testing to Bayesian inference.
From linear models to deep learning — theory, derivation, and implementation of fundamental machine learning algorithms.
Coming soonQuantitative finance methods — pricing, risk measures, stochastic processes, and portfolio optimization.
Coming soonStatistical methods for life sciences — survival analysis, clinical trial design, and epidemiological modeling.
Coming soonCredit scoring, PD/LGD/EAD modeling, portfolio credit risk, and regulatory capital calculation.
Coming soonBasel framework implementation — capital adequacy, stress testing, and regulatory reporting.
Coming soonQuantitative approaches to accounting problems — IFRS 9 expected credit loss, fair value measurement, and financial analysis.
Coming soonData-driven analysis of social challenges — inequality, public health, labor markets, and policy evaluation.
Coming soon