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The RIGID Framework: Research-Integrated, Generative AI-Mediated Instructional Design

arXiv cs.AI / 3/16/2026

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Key Points

  • The RIGID framework integrates learning sciences (LS) research across all Instructional Design (ID) workflows—analysis, design, implementation, and evaluation—to ground ID in evidence.
  • It leverages generative AI to mediate this integration at each stage while preserving the central role of human expertise.
  • The framework emphasizes context-sensitive, operationalized workflows to make research-based insights applicable in real-world design projects.
  • The paper discusses the practical implications, potential benefits, and challenges of adopting RIGID in educational design settings.

Abstract

Instructional Design (ID) often faces challenges in incorporating research-based knowledge and pedagogical best practices. Although educational researchers and government agencies emphasize grounding ID in evidence, integrating research findings into everyday design workflows is often complex, as it requires considering multiple context-specific demands and constraints. To address this persistent gap, this paper explores how research in the learning sciences (LS) can be systematically integrated across ID workflows and how recent advances in generative AI can help operationalize this integration. While ID and LS share a commitment to improving learning experiences through design-oriented approaches in authentic contexts, structured integration between the two fields remains limited, leaving their complementary insights underutilized. We present RIGID (Research-Integrated, Generative AI-Mediated Instructional Design), a unified framework that integrates LS research across ID workflows spanning analysis, design, implementation, and evaluation phases, while leveraging generative AI to mediate this integration at each stage. The RIGID framework provides a systematic approach for enabling research-integrated instructional design that is both operational and context-sensitive, while preserving the central role of human expertise.