Scaling Laws for Educational AI Agents
arXiv cs.AI / 3/13/2026
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Key Points
- The article introduces the Agent Scaling Law for LLM-based educational agents, emphasizing that scaling depends on structured dimensions like role clarity, skill depth, tool completeness, runtime capability, and educator expertise injection.
- It defines AgentProfile as a JSON-based specification and presents EduClaw, a profile-driven platform that builds and deploys hundreds of educational agent profiles.
- EduClaw demonstrates scalability with over 330 agent profiles and more than 1,100 skill modules across K-12 subjects, illustrating practical impact.
- The authors identify Tool Scaling and Skill Scaling as complementary axes and argue that improvements in education AI come from richer, well-structured capability systems rather than solely larger models.
- They report empirical observations that educational agent performance scales predictably with profile structural richness, suggesting a new direction for educational AI development.
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