Connect to Slurm clusters to inspect jobs, queues, and HPC scheduling tasks.
Overall this is an open-source MCP tool from the official registry with no declared secrets or remote endpoints, and no direct high-risk red flags are evident. However, because it can execute locally and interact with Slurm/HPC resources, it should be treated as caution-level by default.
No credentials, tokens, or environment variables are declared, and no credential leakage or abuse path is indicated in the material.
No remote endpoint host is declared, and the material does not indicate user data being sent to third-party services.
The system check explicitly includes executes-code, indicating local process/code execution capability; this is a normal MCP capability but still warrants caution about execution scope.
As a Slurm workload/job-scheduling tool, it is expected to access local job and cluster-related data/resources; no signs of overbroad authorization beyond that purpose are shown.
It comes from the official Registry and has an auditable open-source repository with updates within the past year; however, community adoption is low (0 stars) and the license is undeclared, so supply-chain transparency is still limited.
Copy the install command and let the AI configure it · recommended for beginners
Please install the "CLIO Slurm" MCP server from askskill: Run: claude mcp add 'io-github-iowarp-slurm-mcp' -- npx -y clio-kit
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