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๐ Iโm interested in the Satisfiability of Machine and Deep Learning for Time Series (Explainable AI, Causality..), I am passionated for mathematics and its applications like weather domaine, sustainability, ...
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๐ฅ 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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๐๏ธ Open to collaborate on Explainability for Generative Models
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๐ What I have read ?
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๐ซ 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. Franรงois 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 ๐ฃ:
- Working on Forecasting of weather data and solving inverse problems using Generative Models
- [January 2024]๐ 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?