<aside> 💡

Paste any extra notes below. Then ask Notion AI: “Rewrite this into a clean portfolio case study, keep it concise, keep the technical clarity.”

</aside>

Overview

What it is: An autonomous RFP + vendor questionnaire copilot that turns messy procurement docs into structured, review-ready responses.

Goal: Cut RFP completion time from days to hours without risking hallucinated compliance/legal claims.

Key idea: Evidence-backed drafting + confidence scoring + human-in-the-loop approval routing.

Architecture (6-layer autonomy stack)

  1. Intake + file normalization (universal ingest)
  2. Question extraction + structuring (question miner)
  3. Knowledge base + evidence index (truth layer)
  4. Answer composition engine (guarded drafting)
  5. Review workflow + risk routing (human-in-the-loop)
  6. Export + submission packager (final output generator)

End-to-end flow

  1. Intake: drop files or forward email → create run/job ID.
  2. Extraction: question miner builds the question DB.
  3. Categorization: auto-label by department.
  4. Retrieval + drafting: evidence-backed drafts + citations + confidence.
  5. Review routing: low-confidence/high-risk goes to queues.
  6. Export: inject approved answers back into original formats + generate packet.

Key components (conceptual)