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Throughput Estimation of Data Transport Networks From Digital Twin Measurements

  • Nageswara S.V. Rao
  • , Anees Al-Najjar
  • , Rajkumar Kettimuthu
  • , Ian Foster
  • , Kyle Chard
  • , Ryan Chard
  • , Amal Gueroudji
  • , Matthieu Dorier
  • , Valerie Hayot-Sasson
  • , Hai Duc Nguyen
  • , Maxime Gonthier
  • , Tekin Bicer
  • , Haochen Pan
  • , Eliu Huerta
  • , Bogdan Nicolae
  • , Parth Patel
  • , Justin M. Wozniak
  • Oak Ridge National Laboratory
  • Argonne National Laboratory
  • The University of Chicago

Résultats de recherche: Contribution à un journalArticle publié dans une revue, révisé par les pairsRevue par des pairs

Résumé

Digital twins of networked infrastructures, known as Virtual Infrastructure Twins (VITs), are increasingly used for software development, pre-deployment testing, and design space exploration. While VITs avoid the costs and potential disruptions associated with experiments on operational networks, their throughput measurements are typically not sufficiently accurate for performance profiling of wide-area networks that they emulate. Here, machine learning (ML) methods are developed to transform these inaccurate VIT network throughput measurements to closely match in peak and overall profile of those from a physical testbed or production network. First, a micro kernel network reflecting a physical network is utilized to collect one-time measurements on a host to support this ML transformation. Then, a generic multi-modal ML method is developed to learn a map that transforms measurements from subsequent VITs on the same host to match past, current and follow-on testbed and cloud networks. ML generalization equations are derived to establish its correctness and probabilistically guarantee its generalization accuracy. Experimental results are presented for a variety of VIT hosts with target testbed and cloud networks; they include a case study of a four-site science ecosystem wherein inaccurate convex VIT measurement profiles are transformed into accurate concave profiles of target networks.

langue originaleAnglais
Pages (de - à)846-863
Nombre de pages18
journalIEEE Transactions on Machine Learning in Communications and Networking
Volume4
Les DOIs
étatPublié - 2026
Modification externeOui

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