Python package for the Energy Flow suite of particle physics tools
Project description
EnergyFlow
EnergyFlow is a Python package that computes Energy Flow Polynomials (EFPs) as defined in Ref. [1], implements Energy Flow Networks (EFNs) and Particle Flow Networks (PFNs) as defined in Ref. [2], computes Energy Mover's Distances as defined in Ref. [3], and provides access to some particle physics datasets hosted on Zenodo including the jet datasets in MOD HDF5 format used in Ref. [4].
Installation
To install EnergyFlow with pip, simply execute:
pip3 install energyflow
Documentation
The documentation is maintained at https://energyflow.network.
References
[1] P. T. Komiske, E. M. Metodiev, and J. Thaler, Energy Flow Polynomials: A complete linear basis for jet substructure, JHEP 04 (2018) 013 [1712.07124].
[2] P. T. Komiske, E. M. Metodiev, and J. Thaler, Energy Flow Networks: Deep Sets for Particle Jets, JHEP 01 (2019) 121 [1810.05165].
[3] P. T. Komiske, E. M. Metodiev, and J. Thaler, The Metric Space of Collider Events, Phys. Rev. Lett. 123 (2019) 041801 [1902.02346].
[4] P. T. Komiske, R. Mastandrea, E. M. Metodiev, P. Naik, and J. Thaler, Exploring the Space of Jets with CMS Open Data, Phys. Rev. D 101 (2020) 034009 [1908.08542].
[5] P. T. Komiske, E. M. Metodiev, and J. Thaler, Cutting Multiparticle Correlators Down to Size, Phys. Rev. D 101 (2020) 036019 [1911.04491].
[6] A. Andreassen, P. T. Komiske, E. M. Metodiev, B. Nachman, and J. Thaler, OmniFold: A Method to Simultaneously Unfold All Observables, Phys. Rev. Lett. 124 (2020) 182001 [1911.09107].
[7] P. T. Komiske, E. M. Metodiev, and J. Thaler, The Hidden Geometry of Particle Collisions, JHEP 07 (2020) 006 [2004.04159].
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for EnergyFlow-1.3.0-py2.py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | c2dc8fb6600afeb7826345b2769529cb8e380c757ef93e05ae7d75573f5dcbb9 |
|
MD5 | 0d4a83d92820aa5cbfc472c25b03fc0a |
|
BLAKE2b-256 | 98c9fb141ecddb257f956e175793ef6c312ecbc3857fc563b3d101a846c448d9 |