Abstract Despite increasing demands for resilient and sustainable supply chains, inventory management often relies on outdated single‐criterion analyses. While multi‐criteria ABC (MCABC) analyses provide a theoretically mature assessment of resilience‐sustainability‐benefit trade‐offs in inventory, their adoption remains limited due to fragmented methodologies, lack of standardization, and unclear design guidance. This study addresses this gap by developing a taxonomy of eight dimensions and 25 characteristics to structure the MCABC analysis design space. Using a dataset of 108 configurations, cluster analysis identifies six recurring archetypes that serve as implementation‐ready templates for inventory analysis. Archetype 2: artificial intelligence (AI)+‐driven cluster minimalist enables rapid, cost‐focused inventory structuring with minimal data and no expert input. In contrast, Archetype 1: AI+‐driven complex ranker uses expert‐weighted multi‐criteria analysis to support holistic and sustainability oriented inventory strategies. The taxonomy and archetypes provide a unified framework for researchers to theorize inventory design trade‐offs and for practitioners to apply scalable blueprints for mature inventory analyses.
Grützner et al. (Tue,) studied this question.