Agent skill
hashdir
Calculate directory-level cryptographic hashes by traversing all internal files and folders. Core Scenario: When the user needs to verify directory integrity or track changes in folders over time.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/hashdir
SKILL.md
hashdir - Recursive Directory Hash Utility
The hashdir module recursively calculates hashes for all files within a directory tree, generating a consolidated list of checksums and relative paths for integrity verification.
When to Activate
- When comparing two directory structures for differences in content.
- When creating a security baseline for a specific folder (e.g., config or source code).
- When tracking directory changes in version control via baseline hash files.
Core Principles & Rules
- Consistency: Files are sorted alphabetically to ensure consistent hash output regardless of OS traversal order.
- Relative Paths: Uses relative paths in the output to allow for portability across different root paths.
Patterns & Examples
Directory Integrity
# Calculate the SHA256 hash list for a project directory
x hashdir --sha256 ./my_project
Baseline Comparison
# Compare current directory state against a saved MD5 baseline
x hashdir . | diff - baseline.md5
Checklist
- Confirm the target directory path.
- Verify the desired hash algorithm (MD5 is default).
- Ensure the user is aware the operation is recursive.
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