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builderz-labs/mission-control

Self-hosted AI agent orchestration platform: dispatch tasks, run multi-agent workflows, monitor spend, and govern operations from one mission control dashboard.

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What it does

Mission Control is an open-source dashboard that lets teams deploy and manage fleets of AI agents from a single interface — dispatching tasks, tracking costs, and coordinating multiple agents working together, all running on your own servers without relying on any third-party services. Think of it as a command center for AI automation, similar to how a project management tool organizes human teams, but built for orchestrating AI workers instead.

Why it matters

As AI agents move from experiments to core business infrastructure, teams need operational control — visibility into costs, reliability, and governance — which is exactly the gap Mission Control fills without vendor lock-in. The strong early traction (3,500+ stars) signals real market demand for self-hosted AI operations tooling, positioning this as foundational infrastructure in a space where enterprise buyers will increasingly require data sovereignty and auditability.

34Active

On the radar — signal detected

Stars
5.4k
Forks
935
Contributors
31
Language
TypeScript

Score updated May 12, 2026

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