DAPT: A package enabling distributed automated parameter testing

Modern agent-based models (ABM) and other simulation models require evaluation and testing of many different parameters. Managing that testing for large scale parameter sweeps (grid searches), as well as storing simulation data, requires multiple, potentially customizable steps that may...

Full description

Bibliographic Details
Main Authors: Ben Duggan, John Metzcar, Paul Macklin
Format: Article
Language:English
Published: GigaScience Press 2021-06-01
Series:GigaByte
Online Access:https://gigabytejournal.com/articles/22
id doaj-bf5295eb4ffd4458a5b6c4549d0e0878
record_format Article
spelling doaj-bf5295eb4ffd4458a5b6c4549d0e08782021-06-10T06:46:06ZengGigaScience PressGigaByte2709-47152021-06-0110.46471/gigabyte.22DAPT: A package enabling distributed automated parameter testingBen Duggan0https://orcid.org/0000-0002-1819-2130John Metzcar1https://orcid.org/0000-0002-0142-0387Paul Macklin2https://orcid.org/0000-0002-9925-0151Indiana University Luddy School of Informatics, Computing and Engineering, 107 S Indiana Ave, Bloomington, IN 47405, USAIndiana University Luddy School of Informatics, Computing and Engineering, 107 S Indiana Ave, Bloomington, IN 47405, USAIndiana University Luddy School of Informatics, Computing and Engineering, 107 S Indiana Ave, Bloomington, IN 47405, USA Modern agent-based models (ABM) and other simulation models require evaluation and testing of many different parameters. Managing that testing for large scale parameter sweeps (grid searches), as well as storing simulation data, requires multiple, potentially customizable steps that may vary across simulations. Furthermore, parameter testing, processing, and analysis are slowed if simulation and processing jobs cannot be shared across teammates or computational resources. While high-performance computing (HPC) has become increasingly available, models can often be tested faster with the use of multiple computers and HPC resources. To address these issues, we created the Distributed Automated Parameter Testing (DAPT) Python package. By hosting parameters in an online (and often free) “database”, multiple individuals can run parameter sets simultaneously in a distributed fashion, enabling ad hoc crowdsourcing of computational power. Combining this with a flexible, scriptable tool set, teams can evaluate models and assess their underlying hypotheses quickly. Here, we describe DAPT and provide an example demonstrating its use. https://gigabytejournal.com/articles/22
collection DOAJ
language English
format Article
sources DOAJ
author Ben Duggan
John Metzcar
Paul Macklin
spellingShingle Ben Duggan
John Metzcar
Paul Macklin
DAPT: A package enabling distributed automated parameter testing
GigaByte
author_facet Ben Duggan
John Metzcar
Paul Macklin
author_sort Ben Duggan
title DAPT: A package enabling distributed automated parameter testing
title_short DAPT: A package enabling distributed automated parameter testing
title_full DAPT: A package enabling distributed automated parameter testing
title_fullStr DAPT: A package enabling distributed automated parameter testing
title_full_unstemmed DAPT: A package enabling distributed automated parameter testing
title_sort dapt: a package enabling distributed automated parameter testing
publisher GigaScience Press
series GigaByte
issn 2709-4715
publishDate 2021-06-01
description Modern agent-based models (ABM) and other simulation models require evaluation and testing of many different parameters. Managing that testing for large scale parameter sweeps (grid searches), as well as storing simulation data, requires multiple, potentially customizable steps that may vary across simulations. Furthermore, parameter testing, processing, and analysis are slowed if simulation and processing jobs cannot be shared across teammates or computational resources. While high-performance computing (HPC) has become increasingly available, models can often be tested faster with the use of multiple computers and HPC resources. To address these issues, we created the Distributed Automated Parameter Testing (DAPT) Python package. By hosting parameters in an online (and often free) “database”, multiple individuals can run parameter sets simultaneously in a distributed fashion, enabling ad hoc crowdsourcing of computational power. Combining this with a flexible, scriptable tool set, teams can evaluate models and assess their underlying hypotheses quickly. Here, we describe DAPT and provide an example demonstrating its use.
url https://gigabytejournal.com/articles/22
work_keys_str_mv AT benduggan daptapackageenablingdistributedautomatedparametertesting
AT johnmetzcar daptapackageenablingdistributedautomatedparametertesting
AT paulmacklin daptapackageenablingdistributedautomatedparametertesting
_version_ 1721385509268226048