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STEPS 4.0: Fast and memory-efficient molecular simulations of neurons at the nanoscale

Authors :
Weiliang, Chen
Tristan, Carel
Omar, Awile
Nicola, Cantarutti
Giacomo, Castiglioni
Alessandro, Cattabiani
Baudouin, Del Marmol
Iain, Hepburn
James G., King
Christos, Kotsalos
Pramod, Kumbhar
Jules, Lallouette
Samuel, Melchior
Felix, Schürmann
Erik, De Schutter
Weiliang, Chen
Tristan, Carel
Omar, Awile
Nicola, Cantarutti
Giacomo, Castiglioni
Alessandro, Cattabiani
Baudouin, Del Marmol
Iain, Hepburn
James G., King
Christos, Kotsalos
Pramod, Kumbhar
Jules, Lallouette
Samuel, Melchior
Felix, Schürmann
Erik, De Schutter
Publication Year :
2023

Abstract

Recent advances in computational neuroscience have demonstrated the usefulness and importance of stochastic, spatial reaction-diffusion simulations. However, ever increasing model complexity renders traditional serial solvers, as well as naive parallel implementations, inadequate. This paper introduces a new generation of the STochastic Engine for Pathway Simulation (STEPS) project (http://steps.sourceforge.net/), denominated STEPS 4.0, and its core components which have been designed for improved scalability, performance, and memory efficiency. STEPS 4.0 aims to enable novel scientific studies of macroscopic systems such as whole cells while capturing their nanoscale details. This class of models is out of reach for serial solvers due to the vast quantity of computation in such detailed models, and also out of reach for naive parallel solvers due to the large memory footprint. Based on a distributed mesh solution, we introduce a new parallel stochastic reaction-diffusion solver and a deterministic membrane potential solver in STEPS 4.0. The distributed mesh, together with improved data layout and algorithm designs, significantly reduces the memory footprint of parallel simulations in STEPS 4.0. This enables massively parallel simulations on modern HPC clusters and overcomes the limitations of the previous parallel STEPS implementation. Current and future improvements to the solver are not sustainable without following proper software engineering principles. For this reason, we also give an overview of how the STEPS codebase and the development environment have been updated to follow modern software development practices. We benchmark performance improvement and memory footprint on three published models with different complexities, from a simple spatial stochastic reaction-diffusion model, to a more complex one that is coupled to a deterministic membrane potential solver to simulate the calcium burst activity of a Purkinje neuron. Simulation results of these models<br />source:https://www.frontiersin.org/articles/10.3389/fninf.2022.883742/full

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1375176822
Document Type :
Electronic Resource