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zfit: scalable pythonic fitting

Authors :
Doglioni, C
Kim, D
Stewart, GA
Silvestris, L
Jackson, P
Kamleh, W
Doglioni, C ( C )
Kim, D ( D )
Stewart, G ( GA )
Silvestris, L ( L )
Jackson, P ( P )
Kamleh, W ( W )
Eschle, Jonas; https://orcid.org/0000-0002-7312-3699
Puig Navarro, Albert; https://orcid.org/0000-0001-8868-2947
Silva Coutinho, Rafael
Serra, Nicola
Doglioni, C
Kim, D
Stewart, GA
Silvestris, L
Jackson, P
Kamleh, W
Doglioni, C ( C )
Kim, D ( D )
Stewart, G ( GA )
Silvestris, L ( L )
Jackson, P ( P )
Kamleh, W ( W )
Eschle, Jonas; https://orcid.org/0000-0002-7312-3699
Puig Navarro, Albert; https://orcid.org/0000-0001-8868-2947
Silva Coutinho, Rafael
Serra, Nicola
Source :
Eschle, Jonas; Puig Navarro, Albert; Silva Coutinho, Rafael; Serra, Nicola (2020). zfit: scalable pythonic fitting. EPJ Web of Conferences, 245:06025.
Publication Year :
2020

Abstract

Statistical modeling and fitting is a key element in most HEP analyses. This task is usually performed in the C++ based framework ROOT/RooFit. Recently the HEP community started shifting more to the Python language, which the tools above are only loose integrated into, and a lack of stable, native Python based toolkits became clear. We presented zfit, a project that aims at building a fitting ecosystem by providing a carefully designed, stable API and a workflow for libraries to communicate together with an implementation fully integrated into the Python ecosystem. It is built on top of one of the state-of-theart industry tools, TensorFlow, which is used the main computational backend. zfit provides data loading, extensive model building capabilities, loss creation, minimization and certain error estimation. Each part is also provided with convenient base classes built for customizability and extendability.

Details

Database :
OAIster
Journal :
Eschle, Jonas; Puig Navarro, Albert; Silva Coutinho, Rafael; Serra, Nicola (2020). zfit: scalable pythonic fitting. EPJ Web of Conferences, 245:06025.
Notes :
application/pdf, info:doi/10.5167/uzh-192777, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1443033540
Document Type :
Electronic Resource