This article introduces the Adaptive Evidence Summarization Engine, a novel AI component that automatically condenses, validates, and links compliance evidence to security questionnaire answers in real‑time. By blending retrieval‑augmented generation, dynamic knowledge graphs, and context‑aware prompting, the engine slashes response latency, improves answer accuracy, and creates a fully auditable evidence trail for vendor risk teams.
This article unveils a novel architecture that blends large language models, streaming regulatory feeds, and adaptive evidence summarization into a real‑time trust‑score engine. Readers will explore the data pipeline, the scoring algorithm, integration patterns with Procurize, and practical guidance for deploying a compliant, auditable solution that slashes questionnaire turnaround time while boosting accuracy.
