gym-invmgmt: An Open Benchmarking Framework for Inventory Management Methods
Reza Barati, Qinmin Vivian Hu

TL;DR
gym-invmgmt is a comprehensive benchmarking framework for inventory management methods, evaluating diverse controllers under various scenarios to identify strengths and weaknesses across paradigms.
Contribution
It introduces a unified, auditable benchmark for comparing optimization, heuristic, and learned controllers in inventory management.
Findings
Informed stochastic programming outperforms other methods but is computationally intensive.
PPO-Transformer achieves strong performance with fast inference.
Performance varies significantly with scenario conditions, topology, and information access.
Abstract
Inventory-policy comparisons are often difficult to interpret because performance depends on the evaluation contract as much as on the policy itself. Differences in topology, demand regime, information access, feasibility constraints, shortage treatment, and Key Performance Indicator (KPI) definitions can change method rankings. We present gym-invmgmt, a Gymnasium-compatible extension of the OR-Gym inventory-management lineage for auditable cross-paradigm evaluation. The benchmark evaluates optimization, heuristic, and learned controllers under a shared CoreEnv transition, reward, action-bound, and KPI contract, while varying stress conditions through a 22-scenario core grid plus four supplemental MARL-mode rows. Within these released scenarios, informed stochastic programming provides the strongest non-oracle reference, reflecting the value of scenario hedging under forecast access,…
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