Machine learning and optimization
Machine learning is the core algorithmic component behind recent successes in artificial intelligence, relying on training models with vast amounts of data. All major subareas of machine learning are represented within the Prairie Institute, including supervised, unsupervised, and reinforcement learning. Our research extends to new algorithm development and the analysis of their theoretical guarantees, as well as representational issues specific to various data types like text and images.

Within machine learning, optimization plays a critical role, as most modern formulations culminate in optimization problems. Our research prioritizes convex optimization algorithms, with particular emphasis on stochastic and distributed algorithms. We also delve into non-convex optimization, pertinent to large-scale models such as neural networks, as well as challenges where the curse of dimensionality is inevitable.
MEET THE RESEARCHERS WORKING ON THIS TOPIC
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ARJOVSKY Martin
Postdoctoral researcher
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BACRY Emmanuel
PR[AI]RIE Researcher
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BRION BOUVIER Florie
PhD student
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CHADEBEC Clément
PhD student
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D’ASCOLI Stéphane
PhD student
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D’ASPREMONT Alexandre
PR[AI]RIE Researcher
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DOUIN Adèle
PhD student
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GANASSALI Luca
PhD student
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MALLAT Stéphane
PR[AI]RIE Researcher
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MERAD Ibrahim
PhD student
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MISHRA Shrey
PhD student
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ROMAIN Manon
PhD student
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ZHOU Anqi
PhD student