Neural-network Quantum States
· Invited
Abstract
Artificial intelligence is living truly exciting times thanks to the fast advancements in the field of machine learning. Machine-learning-based approaches, routinely adopted in cutting-edge industrial applications, are being increasingly adopted to study fundamental problems in science as well. Very recently, their effectiveness has been demonstrated also for many-body physics [1-3].
In this seminar I will present recent applications to quantum physics. First, I will discuss how a systematic machine learning of the many-body wave-function can be realized. This goal has been achieved in [1], introducing a variational representation of quantum states based on artificial neural networks. In conjunction with Monte Carlo schemes, this representation can be used to study both ground-state and unitary dynamics, with controlled accuracy. Moreover, I will show how a similar representation can be used to perform efficient Quantum State Tomography on highly-entangled states [4], previously inaccessible to state-of-the art tomographic approaches.
[1] Carleo, and Troyer -- Science 355, 602 (2017).
[2] Carrasquilla, and Melko -- Nat. Physics doi:10.1038/nphys4035 (2017)
[3] van Nieuwenburg, Liu, and Huber -- Nat. Physics doi:10.1038/nphys4037 (2017)
[4] Torlai, Mazzola, Carrasquilla, Troyer, Melko, and Carleo -- arXiv:1703.05334 (2017)
In this seminar I will present recent applications to quantum physics. First, I will discuss how a systematic machine learning of the many-body wave-function can be realized. This goal has been achieved in [1], introducing a variational representation of quantum states based on artificial neural networks. In conjunction with Monte Carlo schemes, this representation can be used to study both ground-state and unitary dynamics, with controlled accuracy. Moreover, I will show how a similar representation can be used to perform efficient Quantum State Tomography on highly-entangled states [4], previously inaccessible to state-of-the art tomographic approaches.
[1] Carleo, and Troyer -- Science 355, 602 (2017).
[2] Carrasquilla, and Melko -- Nat. Physics doi:10.1038/nphys4035 (2017)
[3] van Nieuwenburg, Liu, and Huber -- Nat. Physics doi:10.1038/nphys4037 (2017)
[4] Torlai, Mazzola, Carrasquilla, Troyer, Melko, and Carleo -- arXiv:1703.05334 (2017)
*Work supported by the European Research Council through ERC Advanced Grant SIMCOFE, by the Swiss National Science Foundation through NCCR QSIT, by Microsoft Research, by ODNI, IARPA via MIT Lincoln Laboratory Air Force Contract No. FA8721-05- C-0002.
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Presenters
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Giuseppe Carleo
- Institute for Theoretical Physics, ETH
- ETH
- ITP, ETH Zurich