About
Agent-o-rama is a sophisticated cognitive learning layer that analyzes interaction sequences to discover latent behavioral patterns. It provides tools for training interaction predictors, extracting temporal and topic-based dynamics, and identifying specific skills from raw data. By integrating both traditional epoch-based training and deterministic 'Unworld' derivational generation, it allows developers to build high-fidelity cognitive surrogates that mimic specific interaction styles and expertise within a DuckDB-backed infrastructure.