I am a Machine Learning Engineer with 4+ years of experience building AI systems across foundation models, generative AI, agentic AI, evaluation, and machine learning infrastructure.
My work sits at the intersection of research and engineering, with a focus on making state-of-the-art AI methods accessible, reproducible, and deployable. I've contributed to foundation models, evaluation frameworks, open-source ML tooling, and deployed AI applications, while collaborating with researchers, engineers, and domain experts across a variety of projects.
Currently, I work at the Vector Institute, where I contribute to production AI applications, agentic AI evaluation, foundation models, synthetic data generation, privacy-preserving machine learning, and other applied AI initiatives.