The Learning theory team at Google tackles fundamental learning theory problems significant to Google.
We are dedicated to advancing the theoretical foundations of machine learning (ML). Our team has extensive expertise in a variety of areas, including learning theory, statistical learning theory, optimization, decision making under uncertainty, reinforcement learning, and theory and algorithms in general. Our mission is twofold: to foster a principled understanding of ML techniques and to leverage this knowledge in designing highly effective algorithms. Ultimately, we aim to deploy these algorithms to achieve significant impact on Google, the wider academic community, and the scientific field of ML as a whole.
We work on optimization methods for machine learning in application areas, such as training large language models and federated learning.
We design theoretically sound algorithms to solve real-world reinforcement learning problems, with applications including recommendation tasks, optimization of computer systems and fine-tuning of generative models.
Our research focuses on crafting algorithms and strategies for making sequential decisions in dynamic and uncertain environments based on partial information.
Multiplayer games provide a framework to understand the way that both humans and algorithms interact in complex systems, and we hope to understand and carefully design these systems to balance efficiency and equity.
We work on developing algorithms for training machine learning models with differential privacy, as well as alternative privacy guarantees.
We develop new learning algorithms with generalization guarantees for various learning scenarios.
Mehryar Mohri
Satyen Kale
Claudio Gentile
Christoph Dann
Alekh Agarwal
Manfred K. Warmuth
Teodor Vanislavov Marinov
Julian Zimmert
Stefani Karp