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Invited Paper: Assessing Unchecked Factors for Certification: An Experimental Approach for GPU Cache Parameters

Authors Cédric Cazanove , Benjamin Lesage , Frédéric Boniol , Jérôme Ermont



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OASIcs.WCET.2024.3.pdf
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Cédric Cazanove
  • ONERA, Toulouse, France
Benjamin Lesage
  • ONERA, Toulouse, France
Frédéric Boniol
  • ONERA, Toulouse, France
Jérôme Ermont
  • IRIT - INP - ENSEEIHT, Toulouse, France

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Cédric Cazanove, Benjamin Lesage, Frédéric Boniol, and Jérôme Ermont. Invited Paper: Assessing Unchecked Factors for Certification: An Experimental Approach for GPU Cache Parameters. In 22nd International Workshop on Worst-Case Execution Time Analysis (WCET 2024). Open Access Series in Informatics (OASIcs), Volume 121, pp. 3:1-3:12, Schloss Dagstuhl – Leibniz-Zentrum für Informatik (2024) https://doi.org/10.4230/OASIcs.WCET.2024.3

Abstract

The certification objectives for airborne electronic hardware defined in AMC20-152A [EASA, 2021] and in AMC20-193 [EASA, 2020] capture some of the activities required for an applicant to embed a hardware platform in a safety-critical avionic system. For COTS (Commercially available Off-The-Shelf) platforms in particular, these objectives require applicants to identify functions, configuration settings, and resources present on the platform, and assess their use by the system. AMC20-152A however recognizes that documentation regarding the behavior of a COTS may be incomplete.
There is thus a strong push for applicants to the certification of a COTS to demonstrate their mastery of the platform, to highlight relevant factors (functions, settings, resources, etc.), and their use in their system. We outline in the following a standard approach to the exploration of unchecked factors of a platform, considering existing approaches in the literature, to build such a mastery. Our approach incrementally incorporates and validates knowledge of various factors by including them in micro-simulations compared to experimental ground truth.

Subject Classification

ACM Subject Classification
  • Computer systems organization → Embedded hardware
  • Computer systems organization → System on a chip
  • Computer systems organization → Real-time system architecture
  • Computer systems organization → Multicore architectures
Keywords
  • GPU
  • benchmarks
  • simulation
  • certification

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References

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