I'm Gabriel Watkinson, a Master's student at ENSAE IP Paris and MVA - ENS Saclay, two of the best French Engineering Grande Ecole in Data Science and AI.
In this repository, you will find submodules that link towards some of my projects.
- Internship in the Computational Bio-Imaging and Bioinformatics team at the ENS Biology Institute under the supervision of Auguste Genovesio and Ethan Cohen.
- Multimodal models to learn common representation between molecules and the HCS images they are associated with.
- Repo to download a subset of the JUMP HCS dataset.
First Author:
- Gabriel, W., Ethan, C., Nicolas, B., Ihab, B., Guillaume, B., & Auguste, G. (2023). Weakly supervised cross-model learning in high-content screening. arXiv preprint arXiv:2311.04678.
Coauthor:
- Bourriez, N., Bendidi, I., Cohen, E., Watkinson, G., Sanchez, M., Bollot, G., & Genovesio, A. (2023). ChAda-ViT: Channel Adaptive Attention for Joint Representation Learning of Heterogeneous Microscopy Images. arXiv preprint arXiv:2311.15264.
MVA (which stands for Mathématique - Vision - Apprentissage) is the best French Reserch Master 2 for Data Science and Statistic Modelisation.
The course I followed are :
- Geometric Data Analysis (J. FEYDY)
- Fundamentals of Reproducible Research and Free Software (M. COLOM BARCO)
- Deep Learning (V.LEPETIT, M. VAKALOPOULOU)
- Convex Optimization and Applications in Machine Learning (A. D'ASPREMONT)
- Bayesian Machine Learning (R. BARDENET, J. ARBEL)
- Algorithms for speech and natural language processing (E. DUPOUX, B. SAGOT)
- Modèles Génératifs pour l’Image (B. GALERNE, V. DE BORTOLI)
- Audio Signal Processing – Time-frequency Analysis (E. BACRY)
- Computational Optimal Transport (G. PEYRE)
- Kernel Methods for Machine Learning (J. MAIRAL, M. ARBEL)
ENSAE is a school specialized in Statistics, Data Science, Economy and Finance. I specialized in Data Science, choosing the Data Science, Statistics and Learning track.
Some of the courses I validated are :
Third Year :
- Advanced Machine Learning (V. PERCHET)
- Bayesian Statistics (A. SIMONI)
- Ethics and responsibility in data science (P. TUBARO)
- Computational statistics (C. ROBERT)
- Hidden Markov models and Sequential Monte-Carlo Methods (N. CHOPIN)
- Machine Learning for Natural Language Processing (P. COLOMBO)
- Online learning and aggregation (A. TSYBAKOV)
- Bootstrap and Resampling Methods (E. LAPENTA)
- Optimal Transport (M. CUTTURI)
First and Second Years :
- Measure and Probability Theory (V.E. BRUNEL)
- Advanced Statistics (M. LERALSE)
- Stochastic Processes (N. CHOPIN)
- Simulation and Monte Carlo Methods (N. CHOPIN)
- Linear Time Series
- Econometry
- Financial Mathematics
- Introduction to Game Theory