# Agentic Learner Loop The agentic learner loop is the first closed-loop prototype for AI-student behavior in Didactopus. ## Current loop 1. Inspect current mastery state 2. Ask graph-aware planner for next best concept 3. Produce synthetic attempt 4. Score attempt into evidence 5. Update mastery state 6. Repeat until target is reached or iteration budget ends ## Important limitation The current implementation is a scaffold. The learner attempt is synthetic and deterministic, not a true external model call with robust domain evaluation. ## Why it still matters It establishes the orchestration pattern for: - planner-guided concept selection - evidence accumulation - mastery updates - goal-directed progression