Home  /  Entropy  /  Vol: 20 Núm: 5 Par: May (2018)  /  Article
ARTICLE
TITLE

Adiabatic Quantum Computation Applied to Deep Learning Networks

SUMMARY

Training deep learning networks is a difficult task due to computational complexity, and this is traditionally handled by simplifying network topology to enable parallel computation on graphical processing units (GPUs). However, the emergence of quantum devices allows reconsideration of complex topologies. We illustrate a particular network topology that can be trained to classify MNIST data (an image dataset of handwritten digits) and neutrino detection data using a restricted form of adiabatic quantum computation known as quantum annealing performed by a D-Wave processor. We provide a brief description of the hardware and how it solves Ising models, how we translate our data into the corresponding Ising models, and how we use available expanded topology options to explore potential performance improvements. Although we focus on the application of quantum annealing in this article, the work discussed here is just one of three approaches we explored as part of a larger project that considers alternative means for training deep learning networks. The other approaches involve using a high performance computing (HPC) environment to automatically find network topologies with good performance and using neuromorphic computing to find a low-power solution for training deep learning networks. Our results show that our quantum approach can find good network parameters in a reasonable time despite increased network topology complexity; that HPC can find good parameters for traditional, simplified network topologies; and that neuromorphic computers can use low power memristive hardware to represent complex topologies and parameters derived from other architecture choices.

 Articles related

S. Munawar,M. Hamid,S. A. Lodhi    

In cybersecurity, Intrusion detection plays a vital role in the network boundary detection. It develops the preventive measures for network defense. In this paper, it is presented the quantum cognition with the game theory strategy to detect the target a... see more

Revista: The Nucleus

Thu Anh Pham, Ngoc T. Dang    

This paper aims at proposing a novel satellite quantum key distribution (QKD) system for vehicular networks. Quantum key from a satellite (i.e., a trusted node) is transmitted through a free-space optical (FSO) channel to a high-attitude platform (HAP) u... see more


O. P. Mintser, V. M. Zaliskyi    

Background. Research is devoted to the problems of using biological tools for non-biological applications of nanotechnology, such as microelectronics and nanoelectronics, microelectromechanical and nanoelectronic systems. The purpose of the study was to ... see more


Hanine Hadni,Charif EL M'Barki,Mohamed Mazigh,Menana Elhallaoui    

The phencyclidine (PCP) and their analogues have been reported to exhibit inhibitory activities toward the N-methyl-D-aspartate receptor (NMDAR). To discover the QSAR between structure of PCP derivatives and Ki activities we have used density functional ... see more


Hanine Hadni,Mohamed Mazigh,Menana El Hallaoui    

A quantitative structure-activity relationship (QSAR) investigation was performed towards 41 hybrids of 4-anilinoquinoline-triazines as potential antimalarial agents. The study was carried out using descendant multiple linear regression analyses (MLR), a... see more