ID: 1912.12486

Quantum implementation of an artificial feed-forward neural network

December 28, 2019

View on ArXiv
Francesco Tacchino, Panagiotis Barkoutsos, Chiara Macchiavello, Ivano Tavernelli, Dario Gerace, Daniele Bajoni
Quantum Physics

Artificial intelligence algorithms largely build on multi-layered neural networks. Coping with their increasing complexity and memory requirements calls for a paradigmatic change in the way these powerful algorithms are run. Quantum computing promises to solve certain tasks much more efficiently than any classical computing machine, and actual quantum processors are now becoming available through cloud access to perform experiments and testing also outside of research labs. Here we show in practice an experimental realization of an artificial feed-forward neural network implemented on a state-of-art superconducting quantum processor using up to 7 active qubits. The network is made of quantum artificial neurons, which individually display a potential advantage in storage capacity with respect to their classical counterpart, and it is able to carry out an elementary classification task which would be impossible to achieve with a single node. We demonstrate that this network can be equivalently operated either via classical control or in a completely coherent fashion, thus opening the way to hybrid as well as fully quantum solutions for artificial intelligence to be run on near-term intermediate-scale quantum hardware.

Similar papers 1

Quantum computing models for artificial neural networks

February 7, 2021

94% Match
Stefano Mangini, Francesco Tacchino, Dario Gerace, ... , Macchiavello Chiara
Quantum Physics

Neural networks are computing models that have been leading progress in Machine Learning (ML) and Artificial Intelligence (AI) applications. In parallel, the first small scale quantum computing devices have become available in recent years, paving the way for the development of a new paradigm in information processing. Here we give an overview of the most recent proposals aimed at bringing together these ongoing revolutions, and particularly at implementing the key functional...

Find SimilarView on arXiv

Quantum algorithms for feedforward neural networks

December 7, 2018

93% Match
Jonathan Allcock, Chang-Yu Hsieh, ... , Zhang Shengyu
Machine Learning

Quantum machine learning has the potential for broad industrial applications, and the development of quantum algorithms for improving the performance of neural networks is of particular interest given the central role they play in machine learning today. In this paper we present quantum algorithms for training and evaluating feedforward neural networks based on the canonical classical feedforward and backpropagation algorithms. Our algorithms rely on an efficient quantum subr...

Find SimilarView on arXiv

An Artificial Neuron Implemented on an Actual Quantum Processor

November 6, 2018

93% Match
Francesco Tacchino, Chiara Macchiavello, ... , Bajoni Daniele
Quantum Physics

Artificial neural networks are the heart of machine learning algorithms and artificial intelligence protocols. Historically, the simplest implementation of an artificial neuron traces back to the classical Rosenblatt's `perceptron', but its long term practical applications may be hindered by the fast scaling up of computational complexity, especially relevant for the training of multilayered perceptron networks. Here we introduce a quantum information-based algorithm implemen...

Find SimilarView on arXiv

Quantum Neuron: an elementary building block for machine learning on quantum computers

November 30, 2017

93% Match
Yudong Cao, Gian Giacomo Guerreschi, Alán Aspuru-Guzik
Neural and Evolutionary Comp...

Even the most sophisticated artificial neural networks are built by aggregating substantially identical units called neurons. A neuron receives multiple signals, internally combines them, and applies a non-linear function to the resulting weighted sum. Several attempts to generalize neurons to the quantum regime have been proposed, but all proposals collided with the difficulty of implementing non-linear activation functions, which is essential for classical neurons, due to t...

Find SimilarView on arXiv

Variational learning for quantum artificial neural networks

March 3, 2021

92% Match
Francesco Tacchino, Stefano Mangini, Panagiotis Kl. Barkoutsos, Chiara Macchiavello, Dario Gerace, ... , Bajoni Daniele
Quantum Physics

In the last few years, quantum computing and machine learning fostered rapid developments in their respective areas of application, introducing new perspectives on how information processing systems can be realized and programmed. The rapidly growing field of Quantum Machine Learning aims at bringing together these two ongoing revolutions. Here we first review a series of recent works describing the implementation of artificial neurons and feed-forward neural networks on quan...

Find SimilarView on arXiv

Quantum Neural Network for Quantum Neural Computing

May 15, 2023

92% Match
Min-Gang Zhou, Zhi-Ping Liu, Hua-Lei Yin, Chen-Long Li, ... , Chen Zeng-Bing
Artificial Intelligence

Neural networks have achieved impressive breakthroughs in both industry and academia. How to effectively develop neural networks on quantum computing devices is a challenging open problem. Here, we propose a new quantum neural network model for quantum neural computing using (classically-controlled) single-qubit operations and measurements on real-world quantum systems with naturally occurring environment-induced decoherence, which greatly reduces the difficulties of physical...

Find SimilarView on arXiv

Benchmarking neural networks for quantum computation

July 9, 2018

91% Match
N. H. Nguyen, E. C. Behrman, ... , Steck J. E.
Quantum Physics

The power of quantum computers is still somewhat speculative. While they are certainly faster than classical ones at some tasks, the class of problems they can efficiently solve has not been mapped definitively onto known classical complexity theory. This means that we do not know for which calculations there will be a "quantum advantage," once an algorithm is found. One way to answer the question is to find those algorithms, but finding truly quantum algorithms turns out to ...

Find SimilarView on arXiv

When Machine Learning Meets Quantum Computers: A Case Study

December 18, 2020

91% Match
Weiwen Jiang, Jinjun Xiong, Yiyu Shi
Machine Learning

Along with the development of AI democratization, the machine learning approach, in particular neural networks, has been applied to wide-range applications. In different application scenarios, the neural network will be accelerated on the tailored computing platform. The acceleration of neural networks on classical computing platforms, such as CPU, GPU, FPGA, ASIC, has been widely studied; however, when the scale of the application consistently grows up, the memory bottleneck...

Find SimilarView on arXiv

Realization of a quantum neural network using repeat-until-success circuits in a superconducting quantum processor

December 21, 2022

91% Match
M. S. Moreira, G. G. Guerreschi, W. Vlothuizen, J. F. Marques, Straten J. van, S. P. Premaratne, X. Zou, H. Ali, N. Muthusubramanian, C. Zachariadis, Someren J. van, M. Beekman, N. Haider, A. Bruno, C. G. Almudever, ... , DiCarlo L.
Quantum Physics

Artificial neural networks are becoming an integral part of digital solutions to complex problems. However, employing neural networks on quantum processors faces challenges related to the implementation of non-linear functions using quantum circuits. In this paper, we use repeat-until-success circuits enabled by real-time control-flow feedback to realize quantum neurons with non-linear activation functions. These neurons constitute elementary building blocks that can be arran...

Find SimilarView on arXiv

Quantum Neural Network Classifiers: A Tutorial

June 6, 2022

91% Match
Weikang Li, Zhide Lu, Dong-Ling Deng
Disordered Systems and Neura...
Artificial Intelligence
Machine Learning

Machine learning has achieved dramatic success over the past decade, with applications ranging from face recognition to natural language processing. Meanwhile, rapid progress has been made in the field of quantum computation including developing both powerful quantum algorithms and advanced quantum devices. The interplay between machine learning and quantum physics holds the intriguing potential for bringing practical applications to the modern society. Here, we focus on quan...

Find SimilarView on arXiv