IA|BE is organizing for the second time a training program that will offer the possibility to obtain a certificate: the IA|BE Actuarial Data Scientist Certificate.
The objective of the training is to provide to the participants a deep understanding of key Data Science methods, their domain of applicability, key results of interest for practitioners and connections with the classical actuarial methods.
Moreover, the program emphasizes on applied programming practice and demystifies concepts such as model deployment in a corporate environment, MLOps, Object-Oriented programming, code management tools (e.g. Github), and principles of software engineering. For this purpose, Python has been chosen as programming language.
The program consists of 3 modules, each of which is followed by an assignment.
Each module consists of 4 theory sessions and 4 programming sessions.
The theory sessions will be given by the professors of the KU Leuven, UC Louvain and Université Libre de Bruxelles.
For the programming sessions, the Board of IA|BE has decided to cooperate with Reacfin and a team of KU Leuven affiliated researchers in (insurance) data science, coordinated by prof. K. Antonio.
Participants who successfully complete the 3 modules will receive the Certificate of IA|BE Actuarial Data Scientist.
Each of these modules can also be taken separately.
Module 2: Popular machine learning ensemble based methods using decision trees for classification and regression
This module gradually introduces classification and regression trees up to competition winning ensemble methods for classification and regression problems.
Participants will explore how ensembles of decision trees achieve superior performance and learn how to calibrate them in practice. The module will also include one session on clustering, a common Data Science application.
- When registering for the full programme of 3 Modules : 800 € / Module
- Otherwise : 1 000 € / Module
The sessions will be set up online.
In order to guarantee optimal training conditions and interactivity of the programming sessions, the number of participants is currently limited to 20.
Schedule of Module 2: Machine Learning for Classification and Regressions
|Day 1, Wednesday 20 April|
|16:00 - 18:00||Decision Trees in classification and regression (Part I) By TRUFIN Julien|
|Day 2, Thursday 28 April|
|16:00 - 18:00||Programming : Basics of regression and classification trees in Python|
|Day 3, Thursday 5 May|
|16:00 - 18:00||Decision Trees in classification and regression (Part II) By TRUFIN Julien|
|Day 4, Thursday 12 May|
|16:00 - 18:00||Programming : From simple regression and classification trees to ensembles of trees (bagging and random forests)|
|Day 5, Wednesday 18 May|
|16:00 - 18:00||Theory Boosted and Bagged ensembles By TRUFIN Julien|
|Day 6, Thursday 2 June|
|16:00 - 18:00||Programming: Stochastic gradient boosting machines and XGBoost|
|Day 7, Thursday 9 June|
|16:00 - 18:00||Clustering methods By HAINAUT Donatien|
|Day 8, Wednesday 15 June|
|16:00 - 18:00||Programming : Clustering|
|18:00 - 23:59||Assignment after Module 2|