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Stochastic Learning of Computational Resource Usage as Graph Structured Multimarginal Schrödinger Bridge

21 May 2024
Georgiy A. Bondar
Robert Gifford
L. T. Phan
Abhishek Halder
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Abstract

We propose to learn the time-varying stochastic computational resource usage of software as a graph structured Schrödinger bridge problem. In general, learning the computational resource usage from data is challenging because resources such as the number of CPU instructions and the number of last level cache requests are both time-varying and statistically correlated. Our proposed method enables learning the joint time-varying stochasticity in computational resource usage from the measured profile snapshots in a nonparametric manner. The method can be used to predict the most-likely time-varying distribution of computational resource availability at a desired time. We provide detailed algorithms for stochastic learning in both single and multi-core cases, discuss the convergence guarantees, computational complexities, and demonstrate their practical use in two case studies: a single-core nonlinear model predictive controller, and a synthetic multi-core software.

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@article{bondar2025_2405.12463,
  title={ Stochastic Learning of Computational Resource Usage as Graph Structured Multimarginal Schrödinger Bridge },
  author={ Georgiy A. Bondar and Robert Gifford and Linh Thi Xuan Phan and Abhishek Halder },
  journal={arXiv preprint arXiv:2405.12463},
  year={ 2025 }
}
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