File Hasher
by AIDotNet
计算文件哈希值(MD5、SHA1、SHA256、SHA512)用于完整性验证和比较。
Skill Details
Repository Files
2 files in this skill directory
name: file-hasher description: 计算文件哈希值(MD5、SHA1、SHA256、SHA512)用于完整性验证和比较。 metadata: short-description: 计算文件哈希值 source: repository: https://github.com/python/cpython license: PSF
File Hasher Tool
Description
Calculate cryptographic hashes for files to verify integrity, detect duplicates, or generate checksums.
Trigger
/hashcommand- User needs file checksums
- User wants to verify file integrity
Usage
# Calculate SHA256 hash
python scripts/file_hasher.py file.zip
# Calculate multiple hash types
python scripts/file_hasher.py file.zip --all
# Verify against known hash
python scripts/file_hasher.py file.zip --verify abc123...
# Hash multiple files
python scripts/file_hasher.py *.zip --algorithm sha256
# Find duplicate files
python scripts/file_hasher.py --find-duplicates ./folder/
Tags
hash, checksum, md5, sha256, integrity
Compatibility
- Codex: ✅
- Claude Code: ✅
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