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stablyai/agent-slack

Slack automation CLI for AI agents

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What it does

agent-slack is a command-line tool that lets AI agents read, search, and write messages in Slack — fetching channel history, downloading files, creating channels, and posting replies — all without any complex setup if you already use Slack on your desktop. It's designed to be fast and cost-effective for AI systems by keeping data compact and easy for AI models to process.

Why it matters

As AI agents become core parts of business workflows, giving them native access to where teams already communicate — Slack — is a significant unlock for automation, customer support, and internal tooling products. Builders creating AI-powered products can use this to connect their agents directly into team conversations without building custom Slack integrations from scratch.

39Active

On the radar — signal detected

Stars
439
Forks
44
Contributors
20
Language
TypeScript

Score updated Mar 13, 2026

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