Selected Talks
Are the Marginal Likelihood and PAC-Bayes Bounds the Right Proxies for Generalization?
- Harvard University, Data to Actionable Knowledge Lab
- MIT, CSAIL Seminar
- CMU, Artificial Intelligence Seminar Series
- FAIR, Meta AI NYC
- Rising Stars in Machine Learning Workshop, UMD
- NeurIPS North Africans in ML Workshop, Keynote Talk
Understanding Generalization in Large Language Models through the Lens of Compression
- NeurIPS Machine Learning and Compression Workshop, Keynote Talk (upcoming)
Non-Vacuous Generalization Bounds for Large Language Models
- Cohere For AI, Guest Talk
- ML Collective, Deep Learning: Classics and Trends
- UIUC, ML Seminar
Bayesian Model Selection, the Marginal Likelihood, and Generalization
- ICML, Long Oral
- Amazon, Forecast Science Talks
- INRIA Social Data Group
- Morocco AI, Webinar Series
- ML Collective, Deep Learning: Classics and Trends
Robustness of Deep Learning Models to Distribution Shift
- ICML Women in Machine Learning Workshop, Session Co-Leader
Adaptive First and Second Order Algorithms for Large-Scale Machine Learning
- SIAM Conference on Optimization
- NeurIPS Optimization for ML Workshop, Spotlight Presentation
- Montreal Machine Learning and Optimization Group