Results for Neural Ordinary Differential Equations Inspired Parameterization of Kinetic Models
doi:10.4121/3662eca5-7077-4ca3-8f66-d051e2c79cbe.v1
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doi: 10.4121/3662eca5-7077-4ca3-8f66-d051e2c79cbe
doi: 10.4121/3662eca5-7077-4ca3-8f66-d051e2c79cbe
Datacite citation style:
van Lent, Paul; Planken, L.R.(Léon); Bunkova, Olga; Thomas Abeel; Schmitz, Joep (2024): Results for Neural Ordinary Differential Equations Inspired Parameterization of Kinetic Models. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/3662eca5-7077-4ca3-8f66-d051e2c79cbe.v1
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Dataset
categories
licence
CC BY 4.0
Results from the computational experiments on simulated and experimental time-series data as described in the paper Neural Ordinary Differential Equations Inspired
Parameterization of Kinetic Models. Details on the experiments can be found in the readme of https://github.com/AbeelLab/jaxkineticmodel
history
- 2024-12-20 first online, published, posted
publisher
4TU.ResearchData
format
csv
funding
- AI4b.io [more info...]
organizations
AI4b.ioTU Delft, Faculty of Electrical Engineering, Mathematics and Computer Science, The Delft Bioinformatics Lab
DSM-Firmenich
DATA
files (1)
- 760,256,672 bytesMD5:
cbb8ab4377a6168815fe808313ffa696
results.zip -
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