AI AGENTS
Discord Ban Appeal Review Assistant
When a sanctioned member submits an appeal form, an agent pulls their full case history from Notion, weighs the appeal against the original offense.
How it runs
The automated pipeline, trigger to output.
- TriggerMember submits appeal formHTTP webhook
- ActionFetch full case history from NotionNotion
- ActionWeigh appeal against offense + patternOpenAI
- LogicBranch: weak dismissal vs substantive review
- OutputPost recommendation card to mod channelDiscord
What it does
Gives the mod team a fast, evidence-based starting point for every appeal. The member submits an appeal via a web form; the agent retrieves their complete strike and case history, reads the appeal text, and produces a structured recommendation with the reasoning and the relevant prior incidents attached — so mods vote with full context instead of from memory.
When to use it
Use it when appeals pile up or get decided inconsistently, or when the deciding mods weren't involved in the original sanction. It keeps appeals fair and fast without auto-deciding anything — humans still cast the final vote.
How it works
- 1A member submits the appeal form, firing a webhook with their ID and statement.
- 2The agent fetches that member's full case history from the Notion case log.
- 3An OpenAI step weighs the appeal against the offense severity and prior pattern.
- 4A logic branch flags weak appeals for fast dismissal versus substantive ones for review.
- 5The agent posts a recommendation card (uphold / reduce / overturn) with cited history to the mod channel for a vote.
Set it up
What you configure once, before turning it on.
- 1Connect DiscordCommunity channels + voice + bots.
- 2Connect NotionPages, databases, comments.
- 3Connect OpenAIModels, embeddings, files.
- 4Connect HTTP webhookTrigger any URL on agent actions.
- 5Set each agent's modelWe leave models unset so you pick the tier — fast + cheap, or top-quality.
- 6Tune it to your dataEdit the prompts, filters, and field mappings so it matches how your team works.
- 7Test, 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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