SupplyNet: Supporting Visual Exploratory Learning in Supply Chain via Contextual Multi-Agent Simulation

๐Ÿ“… 2026-06-23
๐Ÿ“ˆ Citations: 0
โœจ Influential: 0
๐Ÿ“„ PDF
๐Ÿค– AI Summary
This work proposes a novel approach to supply chain simulation that integrates contextual graph structures with multi-agent simulation, addressing the limitations of traditional systems that rely on abstract data and fail to support active exploration of complex dynamics. For the first time, it combines a large language modelโ€“driven multi-agent framework, an interactive network visualization, branching timelines, and a task-oriented analytical console to construct an actionable decision space and a structured feedback mechanism. User studies demonstrate that this integrated system significantly enhances learner engagement and deepens understanding of supply chain dynamics.
๐Ÿ“ Abstract
Simulation has long supported supply chain management instruction by letting learners observe network behavior and test decision strategies. Recent progress in LLM-driven agents opens new possibilities for richer, more adaptive simulations, but many existing systems still present abstract, opaque data that overwhelms learners and discourages active exploration. We introduce \textit{SupplyNet}, a gamified visual simulation system built on a contextual graph-based LLM multi-agent framework that models interdependent supply chain dynamics and provides responsive feedback through tiered challenges. \textit{SupplyNet} turns the simulation into a manipulable decision space by integrating an interactive network view of system state, a branching timeline for "what-if" exploration and comparison, and a task-oriented analysis console for structured performance breakdowns. Together, these visual components support counterfactual exploration, causal tracing, and comparative reasoning about outcomes. A user study suggests that \textit{SupplyNet} increases engagement and supports users' perceived understanding of supply chain dynamics, highlighting the potential of pairing contextual multi-agent simulation with visualization to advance operational comprehension.
Problem

Research questions and friction points this paper is trying to address.

supply chain simulation
visual exploratory learning
multi-agent simulation
learner engagement
decision support
Innovation

Methods, ideas, or system contributions that make the work stand out.

contextual multi-agent simulation
LLM-driven agents
visual exploratory learning
interactive network visualization
what-if analysis