Gustavo Malkomes is a senior scientist and ML engineer with a decade of experience specializing in sequential decision-making under uncertainty, including Bayesian optimization, AutoML, and active learning. He has bridged top-tier research (ICML, NeurIPS) with production systems, advancing multi-objective and active learning methods at SigOpt and then scaling LLM performance on Intel AI accelerators after the acquisition. Gustavo contributed to open-source performance tooling such as Hugging Face Optimum Habana and vLLM, helping deploy large models more efficiently on specialized hardware. Based in Cambridge, MA, he combines a PhD in computer science with hands-on platform-building for enterprise ML workflows, and is known for translating principled research into practical, high-impact engineering.
9 years of coding experience
Master's degree, Computer Science, Master's degree, Computer Science at Universidade Federal do Ceará
Doctor of Philosophy (PhD), Computer Science, Doctor of Philosophy (PhD), Computer Science at Washington University in St. Louis
This package provides a set of tools for performing active-learning with Gaussian Processes.
Contributions:9 commits, 2 PRs, 16 pushes in 3 months
gaussiangaussian-processesactive-learning
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Gustavo Malkomes - Sr. Scientist II at Lila Sciences