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Quantum Machine Learning for HEP Detector Simulations

Quantum Machine Learning (qML) is one of the most promising and very intuitive applications on near-term quantum devices which possess the potential to combat computing resource challenges faster than traditional computers. Classical Machine Learning (ML) is taking up a significant role in particle...

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Autores principales: Rehm, Florian, Vallecorsa, Sofia, Borras, Kerstin, Krücker, Dirk
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2824092
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author Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
author_facet Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
author_sort Rehm, Florian
collection CERN
description Quantum Machine Learning (qML) is one of the most promising and very intuitive applications on near-term quantum devices which possess the potential to combat computing resource challenges faster than traditional computers. Classical Machine Learning (ML) is taking up a significant role in particle physics to speed up detector simulations. Generative Adversarial Networks (GANs) have proven to achieve a similar level of accuracy compared to Monte Carlo-based simulations while decreasing the computation time by orders of magnitude. In this research we are moving on and apply quantum computing to GAN-based detector simulations. Given the limitations of current quantum hardware in terms of number of qubits, connectivity, and noise, we perform initial tests with a simplified GAN model running on quantum simulators. The model is a classical-quantum hybrid ansatz. It consists of a quantum generator, defined as a parameterised circuit based on single and two qubit gates, combined with a classical discriminator. Our initial qGAN prototype focuses on a one-dimensional toy-distribution, representing the energy deposited in a detector by a single particle. It employs three qubits and achieves high physics accuracy thanks to hyper-parameter optimisation. Furthermore, we study the influence of real hardware noise for the qML GAN training. A second qGAN is developed to simulate 2D images with a 64-pixel resolution, representing the energy deposition patterns in the detector. Different quantum ansatzes are studied. We obtained the best results using a tree-tensor-network architecture with six qubits. Additionally, we discuss challenges and potential benefits of quantum computing as well as our plans for future developments.
id cern-2824092
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
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spelling cern-28240922022-08-05T20:53:12Zhttp://cds.cern.ch/record/2824092engRehm, FlorianVallecorsa, SofiaBorras, KerstinKrücker, DirkQuantum Machine Learning for HEP Detector SimulationsDetectors and Experimental TechniquesQuantum TechnologyComputing and ComputersQuantum Machine Learning (qML) is one of the most promising and very intuitive applications on near-term quantum devices which possess the potential to combat computing resource challenges faster than traditional computers. Classical Machine Learning (ML) is taking up a significant role in particle physics to speed up detector simulations. Generative Adversarial Networks (GANs) have proven to achieve a similar level of accuracy compared to Monte Carlo-based simulations while decreasing the computation time by orders of magnitude. In this research we are moving on and apply quantum computing to GAN-based detector simulations. Given the limitations of current quantum hardware in terms of number of qubits, connectivity, and noise, we perform initial tests with a simplified GAN model running on quantum simulators. The model is a classical-quantum hybrid ansatz. It consists of a quantum generator, defined as a parameterised circuit based on single and two qubit gates, combined with a classical discriminator. Our initial qGAN prototype focuses on a one-dimensional toy-distribution, representing the energy deposited in a detector by a single particle. It employs three qubits and achieves high physics accuracy thanks to hyper-parameter optimisation. Furthermore, we study the influence of real hardware noise for the qML GAN training. A second qGAN is developed to simulate 2D images with a 64-pixel resolution, representing the energy deposition patterns in the detector. Different quantum ansatzes are studied. We obtained the best results using a tree-tensor-network architecture with six qubits. Additionally, we discuss challenges and potential benefits of quantum computing as well as our plans for future developments.oai:cds.cern.ch:28240922021
spellingShingle Detectors and Experimental Techniques
Quantum Technology
Computing and Computers
Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
Quantum Machine Learning for HEP Detector Simulations
title Quantum Machine Learning for HEP Detector Simulations
title_full Quantum Machine Learning for HEP Detector Simulations
title_fullStr Quantum Machine Learning for HEP Detector Simulations
title_full_unstemmed Quantum Machine Learning for HEP Detector Simulations
title_short Quantum Machine Learning for HEP Detector Simulations
title_sort quantum machine learning for hep detector simulations
topic Detectors and Experimental Techniques
Quantum Technology
Computing and Computers
url http://cds.cern.ch/record/2824092
work_keys_str_mv AT rehmflorian quantummachinelearningforhepdetectorsimulations
AT vallecorsasofia quantummachinelearningforhepdetectorsimulations
AT borraskerstin quantummachinelearningforhepdetectorsimulations
AT kruckerdirk quantummachinelearningforhepdetectorsimulations