Speeding up Policy Simulation in Supply Chain RL
Publication date
2025-11ISSN
2640-3498
Abstract
Simulating a single trajectory of a dynamical system under some state-dependent policy is a core bottleneck in policy optimization (PO) algorithms. The many inherently serial policy evaluations that must be performed in a single simulation constitute the bulk of this bottleneck. In applying PO to supply chain optimization (SCO) problems, simulating a single sample path corresponding to one month of a supply chain can take several hours. We present an iterative algorithm to accelerate policy simulation, dubbed Picard Iteration. This scheme carefully assigns policy evaluation tasks to independent processes. Within an iteration, any given process evaluates the policy only on its assigned tasks while assuming a certain "cached" evaluation for other tasks; the cache is updated at the end of the iteration. Implemented on GPUs, this scheme admits batched evaluation of the policy across a single trajectory. We prove that the structure afforded by many SCO problems allows convergence in a small number of iterations independent of the horizon. We demonstrate practical speedups of 400x on large-scale SCO problems even with a single GPU, and also demonstrate practical efficacy in other RL environments.
Document Type
Object of conference
Document version
Published version
Language
English
Pages
16 p.
Publisher
ML Research Press
Is part of
Proceedings of Machine Learning Research, 42nd International Conference on Machine Learning, ICML 2025 - Vancouver, Canadá
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© L'autor/a
Except where otherwise noted, this item's license is described as http://creativecommons.org/licenses/by-nc-nd/4.0/


