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Main Authors: Martino, Simone, Becchi, Matteo, Tarzia, Andrew, Rapetti, Daniele, Pavan, Giovanni M.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.23493
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author Martino, Simone
Becchi, Matteo
Tarzia, Andrew
Rapetti, Daniele
Pavan, Giovanni M.
author_facet Martino, Simone
Becchi, Matteo
Tarzia, Andrew
Rapetti, Daniele
Pavan, Giovanni M.
contents The study of complex many-body systems via analysis of the trajectories of the units that dynamically move and interact within them is a non-trivial task. The workflow for extracting meaningful information from the raw trajectory data is often composed of a series of interconnected steps, such as, (i) identifying and tracking the constitutive objects/particles, resolving their trajectories (e.g., in experimental cases, where these are not automatically available as in typical molecular simulations), (ii) translating the trajectories into data that are easier to handle/analyze by using well suited descriptors, and (iii) extracting meaningful information from such data. Each of these different tasks often requires non-negligible programming skills, the use of various types of representations or methods, and the availability/development of an interface between them. Despite the considerable potential that new tools contributed to each of these individual steps, their integration under a common framework would decrease the barrier to usage (especially by diverse communities of users), avoid fragmentation, and ultimately facilitate the development of new approaches in data analysis. To this end, here we introduce dynsight, an open Python platform that streamlines the extraction and analysis of time-series data from simulation- or experimentally-resolved trajectories. dynsight simplifies workflows, enhances accessibility, and facilitates time-series and trajectories data analysis offering a useful tool to unraveling the dynamic complexity of a variety of systems (or signals) across different scales. dynsight is open source (https://github.com/GMPavanLab/dynsight) and can be easily installed using pip.
format Preprint
id arxiv_https___arxiv_org_abs_2510_23493
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle dynsight: an Open Python Platform for Simulation and Experimental Trajectory Data Analysis
Martino, Simone
Becchi, Matteo
Tarzia, Andrew
Rapetti, Daniele
Pavan, Giovanni M.
Materials Science
The study of complex many-body systems via analysis of the trajectories of the units that dynamically move and interact within them is a non-trivial task. The workflow for extracting meaningful information from the raw trajectory data is often composed of a series of interconnected steps, such as, (i) identifying and tracking the constitutive objects/particles, resolving their trajectories (e.g., in experimental cases, where these are not automatically available as in typical molecular simulations), (ii) translating the trajectories into data that are easier to handle/analyze by using well suited descriptors, and (iii) extracting meaningful information from such data. Each of these different tasks often requires non-negligible programming skills, the use of various types of representations or methods, and the availability/development of an interface between them. Despite the considerable potential that new tools contributed to each of these individual steps, their integration under a common framework would decrease the barrier to usage (especially by diverse communities of users), avoid fragmentation, and ultimately facilitate the development of new approaches in data analysis. To this end, here we introduce dynsight, an open Python platform that streamlines the extraction and analysis of time-series data from simulation- or experimentally-resolved trajectories. dynsight simplifies workflows, enhances accessibility, and facilitates time-series and trajectories data analysis offering a useful tool to unraveling the dynamic complexity of a variety of systems (or signals) across different scales. dynsight is open source (https://github.com/GMPavanLab/dynsight) and can be easily installed using pip.
title dynsight: an Open Python Platform for Simulation and Experimental Trajectory Data Analysis
topic Materials Science
url https://arxiv.org/abs/2510.23493