This article unveils Procurize’s new meta‑learning engine that continuously refines questionnaire templates. By leveraging few‑shot adaptation, reinforcement signals, and a living knowledge graph, the platform reduces response latency, improves answer consistency, and keeps compliance data aligned with evolving regulations.
This article explores the novel integration of reinforcement learning (RL) into Procurize’s questionnaire automation platform. By treating each questionnaire template as an RL agent that learns from feedback, the system automatically adjusts question phrasing, evidence mapping, and priority ordering. The result is faster turnaround, higher answer accuracy, and a continuously evolving knowledge base that aligns with changing regulatory landscapes.
