Why teaching resists automation in an AI-inundated era: Human judgment, non-modular work, and the limits of delegation
Songhee Han

TL;DR
This paper argues that teaching's inherently interpretive and relational nature makes it resistant to automation, despite advances in AI, because it relies on human judgment and social interaction.
Contribution
It challenges the view that teaching can be fully automated by highlighting the importance of human judgment and contextual interpretation in education.
Findings
AI can support some instructional functions but cannot replace human judgment.
Teaching involves interpretive, relational, and emergent processes that resist automation.
AI enhances access and support but does not eliminate the need for professional educators.
Abstract
Debates about artificial intelligence (AI) in education often portray teaching as a modular and procedural job that can increasingly be automated or delegated to technology. This brief communication paper argues that such claims depend on treating teaching as more separable than it is in practice. Drawing on recent literature and empirical studies of large language models and retrieval-augmented generation systems, I argue that although AI can support some bounded functions, instructional work remains difficult to automate in meaningful ways because it is inherently interpretive, relational, and grounded in professional judgment. More fundamentally, teaching and learning are shaped by human cognition, behavior, motivation, and social interaction in ways that cannot be fully specified, predicted, or exhaustively modeled. Tasks that may appear separable in principle derive their…
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