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iflytek/skillhub

Self-hosted, open-source agent skill registry for enterprises. Publish & version skill packages, govern with RBAC and audit logs, deploy on-premise with Docker or Kubernetes.

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What it does

SkillHub is a private, self-hosted library where companies can store, organize, and share reusable building blocks — called skills — for AI agents, keeping everything inside their own infrastructure rather than relying on public cloud services. Think of it like a company-internal app store for AI capabilities, complete with access controls and activity logs to track who is using what.

Why it matters

As enterprises race to build AI-powered workflows, managing and reusing AI agent components at scale becomes a real operational challenge — SkillHub gives companies a governed, on-premise answer to that problem, which is a strong selling point in regulated industries wary of sending sensitive data to third-party platforms. For founders and investors, this signals a growing market for enterprise AI infrastructure tooling that prioritizes control, compliance, and internal standardization.

40Hot

Gaining traction — heating up

Stars
740
Forks
124
Contributors
12
Language
Java

Score updated Mar 22, 2026

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