Agentic Explainability at Scale: Between Corporate Fears and XAI Needs

April 16, 2026 ยท Grace Period ยท ๐Ÿ› CHI 2026

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Authors Yomna Elsayed, Cecily Jones arXiv ID 2604.14984 Category cs.HC: Human-Computer Interaction Cross-listed cs.AI Citations 0 Venue CHI 2026
Abstract
As companies enter the race for agentic AI adoption, fears surface around agentic autonomy and its subsequent risks. These fears compound as companies scale their agentic AI adoption with low-code applications, without a comparable scaling in their governance processes and expertise resulting in a phenomenon known as "Agent Sprawl". While shadow AI tools can help with agentic discovery and identification, few observability tools offer insights into the agents' configuration and settings or the decision-making process during agent-to-agent communication and orchestration. This paper explores AI governance professionals' concerns in enterprise settings, while offering design-time and runtime explainability techniques as suggested by AI governance experts for addressing those fears. Finally, we provide a preliminary prototype of an Agentic AI Card that can help companies feel at ease deploying agents at scale.
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