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Research Engineer

Meta Superintelligence Labs - Fundamental AI Research (MSL - FAIR)

I work on advancing pre-training and inference-time compute of autoregressive next-token prediction, diffusion, and flow matching models at scale. In 2024 I obtained a Ph.D. from the University of Toronto and the Vector Institute for A.I. in generative modelling and information theory. I spent most of grad school interning at Meta (FAIR Labs) and Google AI. Before grad school I worked as an electronics engineer (hardware/firmware for embedded systems), as well as a machine learning engineer in recommendation systems and ML for health.

Google Scholar X (Twitter) CV

Selected projects from 2024/2025

For a complete list, please see my Google Scholar profile.

More about me

Originally, I am from Florianópolis (Brazil) but I've lived in NYC, Orlando, Toronto, São Paulo, and (now) Montréal, as well as other smaller cities in the south of Brazil.

I obtained a Ph.D. from the University of Toronto and the Vector Institute for A.I. in Information Theory and Generative Modelling. My thesis studies, and proposes algorithms for, lossless compression of combinatorial objects such as graphs, multisets, and partitions. Thesis: Random Permutation Codes: Lossless Source Coding of Non-Sequential Data

Tutorials, Workshops, and Talks in data compression and other things

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