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Model-Driven Quantum Federated Learning (QFL)

Software Engineering 2023-12-11 v1 Machine Learning

Abstract

Recently, several studies have proposed frameworks for Quantum Federated Learning (QFL). For instance, the Google TensorFlow Quantum (TFQ) and TensorFlow Federated (TFF) libraries have been deployed for realizing QFL. However, developers, in the main, are not as yet familiar with Quantum Computing (QC) libraries and frameworks. A Domain-Specific Modeling Language (DSML) that provides an abstraction layer over the underlying QC and Federated Learning (FL) libraries would be beneficial. This could enable practitioners to carry out software development and data science tasks efficiently while deploying the state of the art in Quantum Machine Learning (QML). In this position paper, we propose extending existing domain-specific Model-Driven Engineering (MDE) tools for Machine Learning (ML) enabled systems, such as MontiAnna, ML-Quadrat, and GreyCat, to support QFL.

Keywords

Cite

@article{arxiv.2304.08496,
  title  = {Model-Driven Quantum Federated Learning (QFL)},
  author = {Armin Moin and Atta Badii and Moharram Challenger},
  journal= {arXiv preprint arXiv:2304.08496},
  year   = {2023}
}

Comments

Quantum Programming (QP) 2023 Workshop, Programming 2023, Tokyo, Japan

R2 v1 2026-06-28T10:08:47.634Z