AI AGENTS
Auto-answer SOC2 questions and route low-confidence ones to owners
Answers each questionnaire question from policy docs and splits the results: high-confidence answers are auto-filled.
How it runs
The automated pipeline, trigger to output.
- TriggerQuestionnaire rows submitted in AirtableAirtable
- ActionAnswer each question from policy corpus with confidenceConfluence
- LogicSplit answers at confidence threshold
- ActionWrite high-confidence answers back to AirtableAirtable
- OutputOpen Linear issues for low-confidence questions to ownersLinear
What it does
Processes a security questionnaire and applies a confidence gate to every answer. Strong, well-sourced answers are written straight back into the response sheet; weak or unsupported ones become tickets assigned to the human who owns that control area, so nothing gets a confident-sounding guess.
When to use it
Use this when you want speed on the easy 80% of a questionnaire but strict human review on the risky 20%. Ideal for teams with named control owners (security, IT, HR, legal) who should each handle questions in their domain.
How it works
- 1A submitted questionnaire row set in Airtable triggers the run.
- 2The agent answers each question from your policy corpus and attaches a confidence score and source.
- 3A logic step splits answers at a confidence threshold.
- 4High-confidence answers are written back into the Airtable response fields.
- 5Low-confidence questions are opened as Linear issues, each routed to the relevant control owner with the draft and the missing evidence noted.
Set it up
What you configure once, before turning it on.
- 1Connect AirtableBases, tables, views, automations.
- 2Connect LinearIssues, projects, cycles, triage.
- 3Connect ConfluenceSpaces, pages, blueprints.
- 4Set each agent's modelWe leave models unset so you pick the tier — fast + cheap, or top-quality.
- 5Tune it to your dataEdit the prompts, filters, and field mappings so it matches how your team works.
- 6Test, then turn it onRun once against a sample, confirm the output, then enable the trigger.
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Run it inside a business
This workflow drops into a full company template. Import the org, and this is one of the playbooks its agents run.

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