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👀 I am interested in representation learning, causality, and contextual bandits, with a focus on the theoretical foundations of reliable and interpretable deep learning with large models. My research is motivated by fundamental questions about generalization, robustness, and scientific understanding, with applications to weather forecasting, sustainability, and Earth system modeling. My thesis, “From Signal to Structure,” develops this direction through identifiability theory, causality, invariance, and equivariance, studying when meaningful representations can be theoretically recovered from observational data and used for decision-making under uncertainty
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🥇 MS.E in Computer Science (summa cum laude) from Ecole Polytechnique - Institut Polytechnique of Paris, France. Currently, I follow a Ph.D. program at the same institute.
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💞️ Open to collaborate on Explainability for Generative Models
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📫 How to reach me khlaid.oublal@polytechnique.edu (
.org[for graduate email]) | or khlaid.oublal@ip-paris.fr -
Training at Mathematical Institute, University of Oxford
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Summer School Oxford, Machine Learning (OxML2023): Generative Models
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Current work:
- Satisfiability modulo theories, Neural networks as a sub-symbolic approach with Pr. Sergio Mover
- Deep Q-Learning systems to avoid collisions 802.11bf electric scooter with Pr. Keun-Woo Lim
- Explainable Models for sequential data with Pr. François Roueff and Pr. Said Ladjal. Follow-up by Pr. Cristian Jutten.
- OpenXAI for time series with Stanford University (ongoing...)
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I collaborate to @huggingface Time Series Transformer
News 📣:
- Working on Forecasting of weather data and solving inverse problems using Generative Models
- [January 2024]🚀 Paper accepted at ICLR 2024: Disentangling Time Series Representations via Contrastive Independence-of-Support on l-Variational Inference
- [December 2023] Paper Spotlight in https://neurips.cc/virtual/2023/83222
- [September 2023] Paper accepted at NeurIPS 2023: DISCOV
- [March 2023] Paper accepter at ICML 2023: Temporal Attention Bottleneck is Informative?




