Deeptime: a Python library for machine learning dynamical models from time series data

Hoffmann, Moritz and Scherer, Martin and Hempel, Tim and Mardt, Andreas and de Silva, Brian and Husic, Brooke E and Klus, Stefan and Wu, Hao and Kutz, Nathan and Brunton, Steven L and Noé, Frank (2022) Deeptime: a Python library for machine learning dynamical models from time series data. Machine Learning: Science and Technology, 3 (1). 015009. ISSN 2632-2153

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Abstract

Generation and analysis of time-series data is relevant to many quantitative fields ranging from economics to fluid mechanics. In the physical sciences, structures such as metastable and coherent sets, slow relaxation processes, collective variables, dominant transition pathways or manifolds and channels of probability flow can be of great importance for understanding and characterizing the kinetic, thermodynamic and mechanistic properties of the system. Deeptime is a general purpose Python library offering various tools to estimate dynamical models based on time-series data including conventional linear learning methods, such as Markov state models (MSMs), Hidden Markov Models and Koopman models, as well as kernel and deep learning approaches such as VAMPnets and deep MSMs. The library is largely compatible with scikit-learn, having a range of Estimator classes for these different models, but in contrast to scikit-learn also provides deep Model classes, e.g. in the case of an MSM, which provide a multitude of analysis methods to compute interesting thermodynamic, kinetic and dynamical quantities, such as free energies, relaxation times and transition paths. The library is designed for ease of use but also easily maintainable and extensible code. In this paper we introduce the main features and structure of the deeptime software. Deeptime can be found under https://deeptime-ml.github.io/.

Item Type: Article
Subjects: OA Library Press > Multidisciplinary
Depositing User: Unnamed user with email support@oalibrarypress.com
Date Deposited: 06 Jul 2023 04:16
Last Modified: 04 Jun 2024 11:26
URI: http://archive.submissionwrite.com/id/eprint/1365

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