# Why Your AI Section in Security Questionnaires Keeps Stalling Deals | Attri Edge

Home Articles Why Your AI Section in Security Questionnaires Keeps Stalling Deals Rescue Why Your AI Section in Security Questionnaires Keeps Stalling Deals The AI/ML section is the new questionnaire bottleneck. The framework references, vendor documentation and control narratives that satisfy enterprise security teams and stop the 3-week delays. By Hemant Attri , Founder, Attri Edge · June 12, 2026 · Updated June 12, 2026 · 2 min read “AI section in our last enterprise security questionnaire stalled the deal 3 weeks.” I hear this constantly now. The AI/ML section emerged in questionnaires around Q4 2024–Q1 2025, and by 2026 roughly 80% of enterprise questionnaires include one. Unprepared, it adds 2–3 weeks per buyer. Why the AI section is suddenly stalling deals Security teams are being told by their own boards and regulators to assess AI risk in their vendors. They don’t yet have a settled rubric, so they ask broadly and broad questions meet vague answers, which generate follow-ups. The delay isn’t malice; it’s an immature question meeting an unprepared vendor. The 10 questions you’ll see most often Expect: Do you use AI in the product? Which vendors and models? What data is sent to AI services? Is it retained or used for training? What’s your AI governance framework? Who provides human oversight? How do you handle hallucination and accuracy? Do you have an AI policy? How do you govern non-human/AI-agent identities? And: is shadow AI controlled in your environment? NIST AI RMF as your reference framework NIST AI RMF is the most-cited framework in enterprise AI controls. Map your governance to its Govern, Map, Measure and Manage functions and cite one concrete control under each. This gives the reviewer a recognized scaffold to check against instead of free-form prose. Documenting your AI vendors (OpenAI, Anthropic, others) Maintain a table: provider, model, purpose, data sent, retention, training-use and the DPA reference. Most enterprise concern collapses once they see you know exactly what leaves your environment and what each provider does with it. Non-human identity governance, the 2026 frontier AI agents and service accounts that act autonomously are the emerging audit area for 2026. Buyers increasingly ask how AI agents authenticate, what they can access and how their credentials rotate. Have an inventory and an answer; see identity sprawl in 2026 . Shadow AI: the question that catches everyone The question that trips most teams is “how do you prevent employees connecting unvetted AI tools to corporate systems?” If you can’t answer, expect weeks of back-and-forth. Build the inventory and approval workflow described in What Is Shadow AI . Where Attri Edge fits The Active Retainer builds your AI governance documentation pack, policy, vendor table, NIST AI RMF mapping, NHI inventory, so the AI section stops costing you weeks. Start with the diagnostic . Related reading: What Is Shadow AI in SaaS Security? The Compliance Automation Gap Are Security Questionnaires Still Killing Your Deals? Frequently asked questions What's the minimum AI documentation we need? An AI use-case inventory, a vendor/model list with each provider's data-retention and training policy, a data-flow statement (what's sent, retained, used for training), a NIST AI RMF reference and a short human-oversight/override description. That set clears most enterprise AI sections. How do we handle the 'are you using AI' question if it's pervasive? Answer it once, precisely and reuse. Distinguish product AI features from internal AI tooling, name the vendors and models and state your data handling for each. Vague 'we use AI responsibly' answers generate follow-ups; specific ones close the section. What's the right NIST AI RMF reference language? State that your AI governance maps to the NIST AI Risk Management Framework's Govern, Map, Measure, and Manage functions and give one concrete example per function (e.g., a model inventory under Map, human override under Manage). Reference, don't claim certification, NIST AI RMF is a framework, not a certification. Do we need a separate AI policy? Yes, a short one. A two-to-four page AI Acceptable Use and Governance policy covering approved tools, prohibited data, human oversight and vendor review is now table stakes for the AI section. It's also the artifact buyers ask to see. Should we mention specific models? Yes, name the models and providers (e.g., OpenAI, Anthropic, Google) with their data residency, retention and training-use posture. Specificity builds trust; buyers are wary of vendors who won't say what they run. How do we handle AI hallucination and accuracy questions? Describe where AI output is advisory vs. authoritative, your human-in-the-loop checkpoints and any guardrails (retrieval grounding, output validation). Buyers want to know a wrong AI output can't silently reach a customer or a decision. Talk to the operator This article is one slice of the work Attri Edge does for US SaaS companies with India GCCs. If your situation needs the full operational layer, start with a 90-minute diagnostic. Book your $999 diagnostic
