Evgeny Andriyash
D-Wave Systems
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Publication
Featured researches published by Evgeny Andriyash.
Bulletin of the American Physical Society | 2016
Bohdan Kulchytskyy; Evgeny Andriyash; M. H. S. Amin; Roger G. Melko
Inspired by the success of Boltzmann Machines based on classical Boltzmann distribution, we propose a new machine learning approach based on quantum Boltzmann distribution of a transverse-field Ising Hamiltonian. Due to the non-commutative nature of quantum mechanics, the training process of the Quantum Boltzmann Machine (QBM) can become nontrivial. We circumvent the problem by introducing bounds on the quantum probabilities. This allows us to train the QBM efficiently by sampling. We show examples of QBM training with and without the bound, using exact diagonalization, and compare the results with classical Boltzmann training. We also discuss the possibility of using quantum annealing processors like D-Wave for QBM training and application.
Frontiers in ICT | 2016
Jack Raymond; Sheir Yarkoni; Evgeny Andriyash
Sampling from a Boltzmann distribution is NP-hard and so requires heuristic approaches. Quantum annealing is one promising candidate. The failure of annealing dynamics to equilibrate on practical time scales is a well understood limitation, but does not always prevent a heuristically useful distribution from being generated. In this paper we evaluate several methods for determining a useful operational temperature range for annealers. We show that, even where distributions deviate from the Boltzmann distribution due to ergodicity breaking, these estimates can be useful. We introduce the concepts of local and global temperatures that are captured by different estimation methods. We argue that for practical application it often makes sense to analyze annealers that are subject to post-processing in order to isolate the macroscopic distribution deviations that are a practical barrier to their application.
Archive | 2015
Firas Hamze; James King; Evgeny Andriyash; Catherine C. McGeoch; Jack Raymond; Jason Rolfe; William G. Macready; Aaron Lott; Murray C. Thom
arXiv: Quantum Physics | 2016
Dmytro Korenkevych; Yanbo Xue; Zhengbing Bian; Fabian Chudak; William G. Macready; Jason Rolfe; Evgeny Andriyash
Physical Review A | 2016
Andrew D. King; Emile Hoskinson; T. Lanting; Evgeny Andriyash; Mohammad H. S. Amin
Nature | 2018
Andrew D. King; Juan Carrasquilla; Jack Raymond; Isil Ozfidan; Evgeny Andriyash; Andrew J. Berkley; Mauricio Reis; T. Lanting; R. Harris; Fabio Altomare; Kelly Boothby; Paul I. Bunyk; C. Enderud; Alexandre Fréchette; E. Hoskinson; N. Ladizinsky; T. Oh; Gabriel Poulin-Lamarre; C. Rich; Yuki Sato; Anatoly Yu. Smirnov; Loren J. Swenson; Mark H. Volkmann; Jed D. Whittaker; Jason Yao; E. Ladizinsky; M. W. Johnson; Jeremy P. Hilton; Mohammad H. Amin
arXiv: Quantum Physics | 2017
Evgeny Andriyash; Mohammad H. S. Amin
Archive | 2017
Firas Hamze; Andrew D. King; Jack Raymond; Aidan Roy; Robert B. Israel; Evgeny Andriyash; Catherine C. McGeoch; Mani Ranjbar
neural information processing systems | 2018
Arash Vahdat; Evgeny Andriyash; William G. Macready
arXiv: Quantum Physics | 2018
Amir Khoshaman; Walter Vinci; Brandon Denis; Evgeny Andriyash; Mohammad H. S. Amin