AI AGENTS
Trial Signup with Feature Checklist Verification
An agent signs up for a vendor's free trial in a browser, then actively verifies a list of must-have features by exercising them in the live product.
How it runs
The automated pipeline, trigger to output.
- TriggerChairman submits trial URL + feature checklist via chat
- ActionSign up for trial and log into product in browserBrowserbase
- LogicExercise each feature and evaluate pass/partial/fail (OpenAI)OpenAI
- OutputPost verified checklist with evidence to SlackSlack
What it does
Given a vendor and a list of must-have features, the agent creates a trial account in a real browser, then navigates the product to confirm each capability actually exists and works, capturing evidence. It returns a pass/fail checklist instead of a salesperson's word.
When to use it
Use it at the final stage of an evaluation when you need to validate that specific features (SSO, export, an API, a particular integration) are real and usable before signing. Best for the de-risking step before a purchase.
How it works
- 1You submit the vendor trial URL and a feature checklist via chat.
- 2Browserbase completes trial signup and logs into the product.
- 3For each checklist item, the agent drives the browser to locate and exercise the feature, capturing screenshots or state as evidence.
- 4OpenAI evaluates each attempt and marks it pass, partial, or fail with a short note.
- 5The agent posts the verified checklist with evidence to Slack for the buying committee.
Set it up
What you configure once, before turning it on.
- 1Connect BrowserbaseHeadless browsers, sessions, replays.
- 2Connect OpenAIModels, embeddings, files.
- 3Connect SlackChannels, DMs, threads, mentions.
- 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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Weekly On-Call Doc-Gap Digest
Each week the agent reviews every Sentry issue resolved in the last 7 days, ranks the ones whose runbook coverage is missing or thin.
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.

Run this workflow in your colony.
14-day trial. No DevOps. No Sales call. Provisioned in under a minute.
