SamPy Resource1 #715803 A New Python Library for Stochastic Spatial Agent-Based Modeling in Epidemiology of Infectious Diseases. [1] |
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+Citations (2)
- CitationsAjouter une citationList by: CiterankMapLink[1] SamPy: A New Python Library for Stochastic Spatial Agent-Based Modeling in Epidemiology of Infectious Diseases
En citant: Francois Viard, Emily Acheson, Agathe Allibert, Caroline Sauve, Patrick Leighton Publication date: 1 December 2022 Publication info: Preprints 2022, 2022110556 Cité par: David Price 4:17 PM 3 December 2023 GMT Citerank: (5) 679859Patrick LeightonPatrick Leighton is a Professor of Epidemiology and Public Health at the Faculty of Veterinary Medicine, University of Montreal, and an active member of the Epidemiology of Zoonoses and Public Health Research Group (GREZOSP) and the Centre for Public Health Research (CReSP). 10019D3ABAB, 701222OMNI – Publications144B5ACA0, 703961Zoonosis859FDEF6, 708813Agent-based models859FDEF6, 715802230309 Introducing SamPySeminar 8: Introducing SamPy: A New Python Library for Agent-based Modeling in the Epidemiology of Zoonotic Diseases, Speaker: Dr. Francois Viard, 9 March 2023.63E883B6 URL: DOI: https://doi.org/10.20944/preprints202211.0556.v2
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Extrait - [Preprints, 1 December 2022]
Agent-based models (ABMs) are computational models for simulating the actions and interactions of autonomous agents in time and space. These models allow users to simulate the complex interactions between individual agents and the landscapes they inhabit and are increasingly used in epidemiology to understand complex phenomena and make predictions. However, as the complexity of the simulated systems increases, notably when disease control interventions are considered, model flexibility and processing speed can become limiting. Here we introduce SamPy, an open-source Python library for stochastic agent-based modeling of epidemics. SamPy is a modular toolkit for model development, providing adaptable modules that capture host movement, disease dynamics, and disease control interventions. Memory optimization and design provide high computational efficiency allowing modelling of large, spatially-explicit populations of agents over extensive geographical areas. In this article, we demonstrate the high flexibility and processing speed of this new library.
The version of SamPy considered in this paper is available at:
https://github.com/sam... |