Summary
Daniel S is a research-focused machine learning engineer and team lead with 12 years of experience, currently pursuing a Mathematics and Computer Science degree at the University of Toronto. He leads undergraduate research at UTMIST developing generative models in weight space to tackle inverse problems like binary quantization and machine unlearning, building on flow matching, energy-based models, and equivariant architectures. His work bridges applied domains—from medical image synthesis published in IJCARs to simulation-based inference for stellar streams—and emphasizes principled theory such as optimal transport and equivariance. Daniel has a track record of turning recent ML advances into practical pipelines and publications (ICLR Workshop 2025), and he deliberately explores parameter symmetries to make models that respect network structure. Based in Kingston, Ontario, he frames his research around “AI for a better world,” combining strong theoretical curiosity with hands-on system building.
12 years of coding experience
2 years of employment as a software developer
Sekolah Lentera Indonesia
Bachelor's degree, Mathematics and Computer Science, Bachelor's degree, Mathematics and Computer Science at University of Toronto