This article explores a novel architecture that combines generative AI with blockchain‑based provenance records, delivering immutable, auditable evidence for security questionnaire automation while maintaining compliance, privacy, and operational efficiency.
This article explores a new AI‑powered approach called Contextual Evidence Synthesis (CES). CES automatically gathers, enriches, and assembles evidence from multiple sources—policy docs, audit reports, and external intel—into a coherent, auditable answer for security questionnaires. By combining knowledge‑graph reasoning, retrieval‑augmented generation, and fine‑tuned validation, CES delivers real‑time, precise responses while maintaining a full change‑log for compliance teams.
This article explores a novel hybrid Retrieval‑Augmented Generation (RAG) architecture that blends large language models with an enterprise‑grade document vault. By tightly coupling AI‑driven answer synthesis with immutable audit trails, organizations can automate security questionnaire responses while preserving compliance evidence, ensuring data residency, and meeting rigorous regulatory standards.
