CODES: Benchmarking Coupled ODE Surrogates
- URL: http://arxiv.org/abs/2410.20886v1
- Date: Mon, 28 Oct 2024 10:12:06 GMT
- Title: CODES: Benchmarking Coupled ODE Surrogates
- Authors: Robin Janssen, Immanuel Sulzer, Tobias Buck,
- Abstract summary: CODES is a benchmark for comprehensive evaluation of surrogate architectures for coupled ODE systems.
It emphasizes usability through features such as integrated parallel training, a web-based configuration generator, and pre-implemented baseline models and datasets.
- Score: 0.0
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- Abstract: We introduce CODES, a benchmark for comprehensive evaluation of surrogate architectures for coupled ODE systems. Besides standard metrics like mean squared error (MSE) and inference time, CODES provides insights into surrogate behaviour across multiple dimensions like interpolation, extrapolation, sparse data, uncertainty quantification and gradient correlation. The benchmark emphasizes usability through features such as integrated parallel training, a web-based configuration generator, and pre-implemented baseline models and datasets. Extensive documentation ensures sustainability and provides the foundation for collaborative improvement. By offering a fair and multi-faceted comparison, CODES helps researchers select the most suitable surrogate for their specific dataset and application while deepening our understanding of surrogate learning behaviour.
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