
AI SDK Slackbot
An AI-powered chatbot for Slack powered by the AI SDK by Vercel.
Features
- Integrates with Slack's API for easy Slack communication
- Use any LLM with the AI SDK (easily switch between providers)
- Works both with app mentions and as an assistant in direct messages
- Maintains conversation context within both threads and direct messages
- Built-in tools for enhanced capabilities:
- Policy-gated tool calls — every tool call is checked against Open Policy Agent (Rego) policies in
policies/, editable without touching TypeScript. See policies/README.md. - Easily extensible architecture to add custom tools (e.g., knowledge search)
Prerequisites
- Node.js 18+ installed
- Slack workspace with admin privileges
- OpenAI API key (default model), or a local Ollama install (see Optional: local model)
- Exa API key (for web search functionality)
- A server or hosting platform (e.g., Vercel) to deploy the bot
- OPA (
opa) — only needed to edit policies (pnpm policy:build/pnpm policy:test); the committedpolicies/policy.wasmruns without it
Setup
1. Install Dependencies
npm install# orpnpm install
2. Create a Slack App
- Go to https://api.slack.com/apps and click "Create New App"
- Choose "From scratch" and give your app a name
- Select your workspace
3. Configure Slack App Settings
-
Go to "Basic Information"
- Under "App Credentials", note down your "Signing Secret". This will be an environment variable
SLACK_SIGNING_SECRET
- Under "App Credentials", note down your "Signing Secret". This will be an environment variable
-
Go to "App Home"
- Under Show Tabs -> Messages Tab, Enable "Allow users to send Slash commands and messages from the messages tab"
-
Go to "OAuth & Permissions"
-
Add the following Bot Token Scopes:
app_mentions:readassistant:writechat:writechannels:history(read thread history when continuing a conversation in a public channel; addgroups:historyfor private channels andmpim:historyfor group DMs)im:historyim:readim:write
-
Install the app to your workspace and note down the "Bot User OAuth Token" for the environment variable
SLACK_BOT_TOKEN
Scopes are easy to miss:
channels:historyis required to continue a conversation in a thread (mention in a public channel). If you add scopes after installing, you must reinstall the app to your workspace for them to take effect. -
-
Go to "Event Subscriptions"
- Enable Events
- Set the Request URL to either
- your deployment URL: (e.g.
https://your-app.vercel.app/api/events) - or, for local development, use the tunnel URL from the Local Development section below
- your deployment URL: (e.g.
- Under "Subscribe to bot events", add:
app_mentionassistant_thread_startedmessage:im
- Save Changes
Remember to include
/api/eventsin the Request URL.
You may need to refresh Slack with CMD+R or CTRL+R to pick up certain changes, such as enabling the chat tab
4. Set Environment Variables
Create a .env file in the root of your project with the following:
# Slack CredentialsSLACK_BOT_TOKEN=xoxb-your-bot-tokenSLACK_SIGNING_SECRET=your-signing-secret# Model provider (defaults to OpenAI gpt-4o)OPENAI_API_KEY=your-openai-api-key# Exa API Key (for web search functionality)EXA_API_KEY=your-exa-api-key
Replace the placeholder values with your actual tokens. See .env.example for optional settings (MODEL_PROVIDER, OLLAMA_MODEL, OPENAI_MODEL, POLICY_MODE).
Local Development
Use the Vercel CLI and untun to test out this project locally:
pnpm i -g vercelpnpm vercel dev --listen 3000 --yes
npx untun@latest tunnel http://localhost:3000
Make sure to modify the subscription URL to the untun URL.
Note: you may encounter issues locally with
waitUntil. This is being investigated.
Production Deployment
Deploying to Vercel
-
Push your code to a GitHub repository
-
Deploy to Vercel:
- Go to vercel.com
- Create New Project
- Import your GitHub repository
-
Add your environment variables in the Vercel project settings:
SLACK_BOT_TOKENSLACK_SIGNING_SECRETOPENAI_API_KEYEXA_API_KEY
-
After deployment, Vercel will provide you with a production URL
-
Update your Slack App configuration:
-
Go to your Slack App settings
-
Select your app
-
Go to "Event Subscriptions"
- Enable Events
- Set the Request URL to:
https://your-app.vercel.app/api/events
-
Save Changes
-
Usage
The bot will respond to:
- Direct messages - Send a DM to your bot
- Mentions - Mention your bot in a channel using
@YourBotName
The bot maintains context within both threads and direct messages, so it can follow along with the conversation.
Available Tools
-
Weather Tool: The bot can fetch real-time weather information for any location.
- Example: "What's the weather like in London right now?"
-
Web Search: The bot can search the web for up-to-date information using Exa.
- Example: "Search for the latest news about AI technology"
- You can also specify a domain: "Search for the latest sports news on bbc.com"
Extending with New Tools
The chatbot is built with an extensible architecture using the AI SDK's tool system. You can easily add new tools such as:
- Knowledge base search
- Database queries
- Custom API integrations
- Company documentation search
To add a new tool, extend the tools object in the lib/generate-response.ts file following the existing pattern.
You can also disable any of the existing tools by removing the tool in the lib/generate-response.ts file.
Policies
Every tool call is gated by Open Policy Agent (Rego) policies in policies/decision.rego — you can change what the bot is allowed to do by editing that file, no TypeScript changes required. POLICY_MODE defaults to in-process WASM (the committed policies/policy.wasm), so running the bot needs no opa binary. See policies/README.md for the input shape, how to add a rule, dev (HTTP hot-reload) vs prod (WASM), and pnpm policy:test.
What the policy does and does not guarantee
The policy gates tool calls — what a tool is allowed to do. It does not
constrain the model's free text. For example, the searchWeb policy guarantees a
web search only ever queries vercel.com; it cannot stop the model from then
answering a question from its own training knowledge (e.g. explaining Bitcoin even
when the vercel.com search returned nothing). The system prompt asks the model to
answer only from tool results, but that is best-effort, not enforced — a hard
"only answer from allowed sources" guarantee would require output-side validation
(checking the answer is supported by the tool results before sending), which is
out of scope here. The 🔧 footer on each reply shows which tool actually ran, so
a tool-less or unscoped answer is at least visible.
This makes policy gating a strong fit for deterministic, inspectable tool
calls — running a shell/git command, writing a file, a Slack/MCP action —
where "is this action allowed?" is a clear decision on concrete inputs, and the
decision fully bounds the effect. It's a weaker fit for content-oriented tools
(like web search) whose value is the nuanced text the model synthesizes from the
result: gating the call constrains what gets fetched, not what the model
ultimately says. Reach for this pattern where the tool is the action; pair it
with other controls where the risk is in generated content.
Optional: run a local model with Ollama
Instead of OpenAI you can run a local model for free, offline:
brew install ollama # or download from https://ollama.comollama pull llama3.1ollama serve # if not already running
Then set MODEL_PROVIDER=ollama in .env. You don't need an OPENAI_API_KEY on this path — a full .env for local Ollama looks like:
# Slack CredentialsSLACK_BOT_TOKEN=xoxb-your-bot-tokenSLACK_SIGNING_SECRET=your-signing-secret# Use a local Ollama model instead of OpenAI (no OPENAI_API_KEY needed)MODEL_PROVIDER=ollamaOLLAMA_MODEL=llama3.1 # optional; defaults to llama3.1# Exa API Key (only needed if you want web search to run)EXA_API_KEY=your-exa-api-key
Small models like
llama3.1:8bsometimes call tools when they shouldn't (e.g. answering "hi" with a weather report) or invent sources.qwen2.5follows tool instructions more reliably —ollama pull qwen2.5and setOLLAMA_MODEL=qwen2.5. The default hosted model (gpt-4o) doesn't have this problem.
Local only: Ollama serves on
localhost:11434, which a deployed Vercel function cannot reach. Use Ollama for local development; deploy with a hosted provider (the default OpenAI, or point a provider at a reachable host).
License
MIT

