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A Reinforcement Learning Based Computing Task Offloading Scheme in Incompletely Expanded C+L-Band Metro Optical Networks

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Abstract

Aiming at computing task offloading, this paper proposes a low-cost C+L-band expansion scheme for metro optical network and proposes a DQN task offloading scheme, which keeps low latency and blocking probability in the proposed architecture.

© 2021 The Author(s)

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