Programming multi-level quantum gates in disordered computing reservoirs via machine learning and TensorFlow
POSTER
Abstract
Novel machine learning computational tools open new perspectives for quantum information systems. Here we adopt the open-source programming library TensorFlow to design multi-level quantum gates including a computing reservoir represented by a random unitary matrix. In optics, the reservoir is a disordered medium or a multi-modal fiber. We show that trainable operators at the input and the readout enable one to realize multi-level gates. We study various qudit gates, including the scaling properties of the algorithms with the size of the reservoir. Despite an initial low slope learning stage, TensorFlow turns out to be an extremely versatile resource for designing gates with complex media, including different models that use spatial light modulators with quantized modulation levels.[1]
[1] arXiv:1905.05264
[1] arXiv:1905.05264
*The present research was supported by PRIN2015 NEMO project (2015KEZNYM grant), H2020 QuantERA QUOMPLEX
(grant number 731473), H2020 PhoQus (grant number 820392), and Sapienza Ateneo (2016 and 2017 programs).
Presenters
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Claudio Conti
- Physics Department, Sapienza University of Rome
- Univ of Rome La Sapienza