Juan Ramirez
PhD Candidate · Mila & Université de Montréal · Expected graduation: mid-2027
I work on constrained deep learning: scalable constrained optimization methods for training neural networks that must satisfy explicit requirements such as fairness, sparsity, and safety.
I am supervised by
Simon Lacoste-Julien.
My research spans algorithms, theory, and applications of Lagrangian methods for constrained optimization in large-scale deep learning. I also work on Feasible Learning and co-develop
Cooper,
an open-source PyTorch library for constrained deep learning.
Before my PhD, I completed a BSc in Mathematical Engineering at Universidad EAFIT and held research internships at Mila, McKinsey, and Tuya.