MS student, Mila - Quebec Artificial Intelligence Institute
2 papers at NeurIPS 2025
We build a Monte Carlo Tree over the diffusion denoising process that can be used for scalable, compute-efficient, inference‑time alignment of pretrained diffusion models to new reward functions
We use energy differences as loss functions for physics applications