Query multiple Kubernetes clusters at once using natural language.
Overall this is an open-source MIT-licensed MCP server with no declared credentials or remote endpoints, so baseline risk is low. However, it explicitly has local code-execution capability and the source shows very low community adoption with unknown maintenance status, so it warrants caution.
No credentials, tokens, or environment variables are declared; based on the provided facts, there is no apparent credential exposure or misuse risk.
No remote endpoint host is declared, and the material does not show user data being sent to external services; there is no explicit egress target identified.
The tool is marked executes-code, meaning it can trigger local processes/operations; this is a normal MCP capability, but it should be run with least privilege and explicit authorization.
It is described as querying multiple Kubernetes clusters, so it may access cluster configuration, resource state, and related metadata; this is within expected scope, but RBAC should still be minimized.
The repository is open source under MIT, which improves auditability; however, it has 0 stars and unknown maintenance status, so supply-chain confidence is limited and source/dependency review is advised.
Copy the install command and let the AI configure it · recommended for beginners
No copy-paste install info for "kube-mcp" yet — see the docs or source repo.
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