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samhotchkiss/otter-camp

🦦 otter.camp — Work management for AI agent teams

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What it does

Otter Camp is an open-source tool that helps teams manage and oversee groups of AI agents — the automated software workers increasingly being used to handle tasks like research, coding, and customer support. Just like a project manager tracks a human team's workload and blockers, Otter Camp monitors what AI agents are doing, flags when they get stuck, and keeps their work organized.

Why it matters

As companies move from running one or two AI agents to coordinating entire fleets of them, the operational chaos of managing those agents becomes a real product and business problem — one that almost no one is solving yet. A tool that brings visibility and workflow structure to AI agent teams could become essential infrastructure, much like Jira or Asana became essential for managing human teams.

12Active

On the radar — signal detected

Stars
21
Forks
1
Contributors
4
Language
Go

Score updated Apr 1, 2026

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