Streaming IoT Data and the Quantum Edge: A Classic/Quantum Machine Learning Use Case
Herbst, Sabrina, De Maio, Vincenzo, Brandic, Ivona
–arXiv.org Artificial Intelligence
With the advent of the Post-Moore era, the scientific community is faced with the challenge of addressing the demands of current data-intensive machine learning applications, which are the cornerstone of urgent analytics in distributed computing. Quantum machine learning could be a solution for the increasing demand of urgent analytics, providing potential theoretical speedups and increased space efficiency. However, challenges such as (1) the encoding of data from the classical to the quantum domain, (2) hyperparameter tuning, and (3) the integration of quantum hardware into a distributed computing continuum limit the adoption of quantum machine learning for urgent analytics. In this work, we investigate the use of Edge computing for the integration of quantum machine learning into a distributed computing continuum, identifying the main challenges and possible solutions.
arXiv.org Artificial Intelligence
Feb-23-2024
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