AI RESEARCH

Agent Mentor: Framing Agent Knowledge through Semantic Trajectory Analysis

arXiv CS.AI

ArXi:2604.10513v1 Announce Type: new AI agent development relies heavily on natural language prompting to define agents' tasks, knowledge, and goals. These prompts are interpreted by Large Language Models (LLMs), which govern agent behavior. Consequently, agentic performance is susceptible to variability arising from imprecise or ambiguous prompt formulations. Identifying and correcting such issues requires examining not only the agent's code, but also the internal system prompts generated throughout its execution lifecycle, as reflected in execution logs.