DiscoverPhysique de la matière condensée - Antoine GeorgesColloque - Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains
Colloque - Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains

Colloque - Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains

Update: 2025-06-04
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Antoine Georges

Physique de la matière condensée

Année 2024-2025

Colloque : Recent Advances and Applications of Diagrammatic Monte Carlo for Fermions

Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains

Olivier Parcollet

Flatiron Institute

Résumé

The real-time dynamics of interacting quantum systems remains a major challenge in computational quantum physics. Surprisingly, high-order perturbative expansions have recently emerged as a promising approach to address this question, even in strong coupling regimes and out-of-equilibrium situations. I will present the cornerstone of these approaches: parsimonious representations of diagrammatic expansions made of tensor networks and revealed by a new generation of algorithms. Finally, I will discuss applications to mesoscopic systems, along with the future perspectives and challenges in this field.

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Colloque - Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains

Colloque - Olivier Parcollet : Learning Feynman Diagrams with Tensor Trains

Antoine Georges