Emplacement
Dates
Présentation
The School aims to introduce students to the mathematical and statistical underpinnings of some of the latest Data Science methods that seek to address the challenge of Big Data analysis. There will be an emphasis on matricial methods both in modelling and in numerical computations. The topics covered will include Randomized Numerical Linear Algebra, Deep Generative Models, Bayesian Nonparametric Models and their Asymptotic Properties, Modern Graphical Models and High- Dimensional Statistics Based on Random Matrix Theory.
The courses will start by introducing randomized numerical linear algebra, deep generative and modern graphical models, fundamental for problems of interest in machine learning and statistical data analysis. For all lectures there will be dedicated exercises with practical problems (in particular with R and/or Python) to be solved by the students under the experts’ guidance.
There will be also be seminars by workshop participants to showcase their works as well as invited talks by Data Science experts in South Africa to expose participants to real world problems being worked on by academics and industry practitioners.
Langue officielle de l'école : anglais
Coordinateurs administratifs et scientifiques
Programme scientifique
Cours 1: "Randomized Numerical Linear Algebra", Bubacarr Bah (AIMS Cape Town & Stellenbosch University, Afrique du Sud)
Cours 2: "Modern Graphical Models", Piotr Graczyk (Université d’Angers, France)
Cours 3: "Deep Generative Models", Steve Kroon (Stellenbosch University, Afrique du Sud)
Cours 4: "Topics in the Analysis of Large Databases ", Malgorzata Bogdan (University of Wroclaw, Pologne)
Cours 5: "Bayesian Nonparametrics: Models and Asymptotic Properties ", Judith Rousseau (University of Oxford (UK) & université Paris-Dauphine, France)
Cours 6: "High-Dimensional Statistics Based on Random Matrix Theory ", Jianfeng Yao (University of Hong Kong, Chine)
Site internet de l'école
Comment participer
Pour s'inscrire et candidater à un financement CIMPA, suivre les instructions données ici.
Date limite d'inscription et de candidature : 20 mars 2022