AI Ethics in Warehouse Technology Upgrades
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This case study explores the ethical and logistical challenges of implementing an AI-enabled Warehouse Management System (WMAI) in a small-town facility heavily dependent on manual labor. Faced with declining profits and increasing competition, a technology manager introduces smartwatches and automated pallet jacks to enhance operational efficiency and health monitoring. While some employees embrace the devices, others resist, citing fears of surveillance, micromanagement, and loss of autonomy. The pilot project initially yields promising data, revealing inefficiencies in worker movement and coordination. However, concerns about transparency, data access, and management overreach erode trust. When management uses the data to reprimand employees without broader buy-in or consent, participation collapses. The case raises broader questions about the balance between productivity, privacy, and power in AI-driven workplaces. It challenges stakeholders to consider how AI profiling, health tracking, and predictive logistics intersect with labor rights, workplace equity, and ethical governance. As regulatory frameworks lag behind, the case underscores the urgency of participatory design, data transparency, and protections against misuse in AI-integrated labor environments.