DS1 spectrogram: Middle-mile logistics through the lens of goal-conditioned reinforcement learning

Middle-mile logistics through the lens of goal-conditioned reinforcement learning

May 4, 20262605.02461

Authors

Onno Eberhard,Thibaut Cuvelier,Michal Valko,Bruno De Backer

Abstract

Middle-mile logistics describes the problem of routing parcels through a network of hubs linked by trucks with finite capacity. We rephrase this as a multi-object goal-conditioned MDP.

Our method combines graph neural networks with model-free RL, extracting small feature graphs from the environment state.

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