Security Audit
token-metrics-automation
github.com/ComposioHQ/awesome-claude-skillsTrust Assessment
token-metrics-automation received a trust score of 93/100, placing it in the Trusted category. This skill has passed all critical security checks and demonstrates strong security practices.
SkillShield's automated analysis identified 1 finding: 0 critical, 0 high, 1 medium, and 0 low severity. Key findings include Unpinned dependency in manifest.
The analysis covered 4 layers: Manifest Analysis, Static Code Analysis, Dependency Graph, LLM Behavioral Safety. All layers scored 70 or above, reflecting consistent security practices.
Last analyzed on February 17, 2026 (commit 99e2a295). SkillShield performs automated 4-layer security analysis on AI skills and MCP servers.
Layer Breakdown
Security Findings1
| Severity | Finding | Layer | Location | |
|---|---|---|---|---|
| MEDIUM | Unpinned dependency in manifest The skill's manifest specifies a dependency on the 'rube' MCP without a version constraint. This can lead to unexpected behavior, compatibility issues, or security vulnerabilities if future versions of 'rube' introduce breaking changes or malicious code. It is best practice to pin dependencies to specific versions or use semantic versioning ranges to ensure stability and security. Pin the 'rube' MCP dependency to a specific version or a semantic versioning range in the 'requires' field of the manifest (e.g., `"rube": "^1.0.0"` or `"rube": "1.2.3"`). | Static | SKILL.md:3 |
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