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Toward the end-to-end optimization of particle physics instruments with differentiable programming

The full optimization of the design and operation of instruments whose functioning relies on the interaction of radiation with matter is a super-human task, due to the large dimensionality of the space of possible choices for geometry, detection technology, materials, data-acquisition, and informati...

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Detalles Bibliográficos
Autores principales: Dorigo, Tommaso, Giammanco, Andrea, Vischia, Pietro, Aehle, Max, Bawaj, Mateusz, Boldyrev, Alexey, Manzano, Pablo de Castro, Derkach, Denis, Donini, Julien, Edelen, Auralee, Fanzago, Federica, Gauger, Nicolas R., Glaser, Christian, Baydin, Atılım G., Heinrich, Lukas, Keidel, Ralf, Kieseler, Jan, Krause, Claudius, Lagrange, Maxime, Lamparth, Max, Layer, Lukas, Maier, Gernot, Nardi, Federico, Pettersen, Helge E.S., Ramos, Alberto, Ratnikov, Fedor, Röhrich, Dieter, de Austri, Roberto Ruiz, del Árbol, Pablo Martínez Ruiz, Savchenko, Oleg, Simpson, Nathan, Strong, Giles C., Taliercio, Angela, Tosi, Mia, Ustyuzhanin, Andrey, Zaraket, Haitham
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1016/j.revip.2023.100085
http://cds.cern.ch/record/2807001
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author Dorigo, Tommaso
Giammanco, Andrea
Vischia, Pietro
Aehle, Max
Bawaj, Mateusz
Boldyrev, Alexey
Manzano, Pablo de Castro
Derkach, Denis
Donini, Julien
Edelen, Auralee
Fanzago, Federica
Gauger, Nicolas R.
Glaser, Christian
Baydin, Atılım G.
Heinrich, Lukas
Keidel, Ralf
Kieseler, Jan
Krause, Claudius
Lagrange, Maxime
Lamparth, Max
Layer, Lukas
Maier, Gernot
Nardi, Federico
Pettersen, Helge E.S.
Ramos, Alberto
Ratnikov, Fedor
Röhrich, Dieter
de Austri, Roberto Ruiz
del Árbol, Pablo Martínez Ruiz
Savchenko, Oleg
Simpson, Nathan
Strong, Giles C.
Taliercio, Angela
Tosi, Mia
Ustyuzhanin, Andrey
Zaraket, Haitham
author_facet Dorigo, Tommaso
Giammanco, Andrea
Vischia, Pietro
Aehle, Max
Bawaj, Mateusz
Boldyrev, Alexey
Manzano, Pablo de Castro
Derkach, Denis
Donini, Julien
Edelen, Auralee
Fanzago, Federica
Gauger, Nicolas R.
Glaser, Christian
Baydin, Atılım G.
Heinrich, Lukas
Keidel, Ralf
Kieseler, Jan
Krause, Claudius
Lagrange, Maxime
Lamparth, Max
Layer, Lukas
Maier, Gernot
Nardi, Federico
Pettersen, Helge E.S.
Ramos, Alberto
Ratnikov, Fedor
Röhrich, Dieter
de Austri, Roberto Ruiz
del Árbol, Pablo Martínez Ruiz
Savchenko, Oleg
Simpson, Nathan
Strong, Giles C.
Taliercio, Angela
Tosi, Mia
Ustyuzhanin, Andrey
Zaraket, Haitham
author_sort Dorigo, Tommaso
collection CERN
description The full optimization of the design and operation of instruments whose functioning relies on the interaction of radiation with matter is a super-human task, due to the large dimensionality of the space of possible choices for geometry, detection technology, materials, data-acquisition, and information-extraction techniques, and the interdependence of the related parameters. On the other hand, massive potential gains in performance over standard, “experience-driven” layouts are in principle within our reach if an objective function fully aligned with the final goals of the instrument is maximized through a systematic search of the configuration space. The stochastic nature of the involved quantum processes make the modeling of these systems an intractable problem from a classical statistics point of view, yet the construction of a fully differentiable pipeline and the use of deep learning techniques may allow the simultaneous optimization of all design parameters. In this white paper, we lay down our plans for the design of a modular and versatile modeling tool for the end-to-end optimization of complex instruments for particle physics experiments as well as industrial and medical applications that share the detection of radiation as their basic ingredient. We consider a selected set of use cases to highlight the specific needs of different applications.
id cern-2807001
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28070012023-10-05T04:08:02Zdoi:10.1016/j.revip.2023.100085http://cds.cern.ch/record/2807001engDorigo, TommasoGiammanco, AndreaVischia, PietroAehle, MaxBawaj, MateuszBoldyrev, AlexeyManzano, Pablo de CastroDerkach, DenisDonini, JulienEdelen, AuraleeFanzago, FedericaGauger, Nicolas R.Glaser, ChristianBaydin, Atılım G.Heinrich, LukasKeidel, RalfKieseler, JanKrause, ClaudiusLagrange, MaximeLamparth, MaxLayer, LukasMaier, GernotNardi, FedericoPettersen, Helge E.S.Ramos, AlbertoRatnikov, FedorRöhrich, Dieterde Austri, Roberto Ruizdel Árbol, Pablo Martínez RuizSavchenko, OlegSimpson, NathanStrong, Giles C.Taliercio, AngelaTosi, MiaUstyuzhanin, AndreyZaraket, HaithamToward the end-to-end optimization of particle physics instruments with differentiable programmingphysics.ins-detDetectors and Experimental TechniquesThe full optimization of the design and operation of instruments whose functioning relies on the interaction of radiation with matter is a super-human task, due to the large dimensionality of the space of possible choices for geometry, detection technology, materials, data-acquisition, and information-extraction techniques, and the interdependence of the related parameters. On the other hand, massive potential gains in performance over standard, “experience-driven” layouts are in principle within our reach if an objective function fully aligned with the final goals of the instrument is maximized through a systematic search of the configuration space. The stochastic nature of the involved quantum processes make the modeling of these systems an intractable problem from a classical statistics point of view, yet the construction of a fully differentiable pipeline and the use of deep learning techniques may allow the simultaneous optimization of all design parameters. In this white paper, we lay down our plans for the design of a modular and versatile modeling tool for the end-to-end optimization of complex instruments for particle physics experiments as well as industrial and medical applications that share the detection of radiation as their basic ingredient. We consider a selected set of use cases to highlight the specific needs of different applications.The full optimization of the design and operation of instruments whose functioning relies on the interaction of radiation with matter is a super-human task, given the large dimensionality of the space of possible choices for geometry, detection technology, materials, data-acquisition, and information-extraction techniques, and the interdependence of the related parameters. On the other hand, massive potential gains in performance over standard, "experience-driven" layouts are in principle within our reach if an objective function fully aligned with the final goals of the instrument is maximized by means of a systematic search of the configuration space. The stochastic nature of the involved quantum processes make the modeling of these systems an intractable problem from a classical statistics point of view, yet the construction of a fully differentiable pipeline and the use of deep learning techniques may allow the simultaneous optimization of all design parameters. In this document we lay down our plans for the design of a modular and versatile modeling tool for the end-to-end optimization of complex instruments for particle physics experiments as well as industrial and medical applications that share the detection of radiation as their basic ingredient. We consider a selected set of use cases to highlight the specific needs of different applications.arXiv:2203.13818oai:cds.cern.ch:28070012022-03-22
spellingShingle physics.ins-det
Detectors and Experimental Techniques
Dorigo, Tommaso
Giammanco, Andrea
Vischia, Pietro
Aehle, Max
Bawaj, Mateusz
Boldyrev, Alexey
Manzano, Pablo de Castro
Derkach, Denis
Donini, Julien
Edelen, Auralee
Fanzago, Federica
Gauger, Nicolas R.
Glaser, Christian
Baydin, Atılım G.
Heinrich, Lukas
Keidel, Ralf
Kieseler, Jan
Krause, Claudius
Lagrange, Maxime
Lamparth, Max
Layer, Lukas
Maier, Gernot
Nardi, Federico
Pettersen, Helge E.S.
Ramos, Alberto
Ratnikov, Fedor
Röhrich, Dieter
de Austri, Roberto Ruiz
del Árbol, Pablo Martínez Ruiz
Savchenko, Oleg
Simpson, Nathan
Strong, Giles C.
Taliercio, Angela
Tosi, Mia
Ustyuzhanin, Andrey
Zaraket, Haitham
Toward the end-to-end optimization of particle physics instruments with differentiable programming
title Toward the end-to-end optimization of particle physics instruments with differentiable programming
title_full Toward the end-to-end optimization of particle physics instruments with differentiable programming
title_fullStr Toward the end-to-end optimization of particle physics instruments with differentiable programming
title_full_unstemmed Toward the end-to-end optimization of particle physics instruments with differentiable programming
title_short Toward the end-to-end optimization of particle physics instruments with differentiable programming
title_sort toward the end-to-end optimization of particle physics instruments with differentiable programming
topic physics.ins-det
Detectors and Experimental Techniques
url https://dx.doi.org/10.1016/j.revip.2023.100085
http://cds.cern.ch/record/2807001
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