Files
fn_registry/python/functions/datascience/standardize.md
T
egutierrez cfdf515228 chore: auto-commit (799 archivos)
- .claude/CLAUDE.md
- .claude/commands/subagentes.md
- .claude/rules/INDEX.md
- .mcp.json
- bash/functions/cybersecurity/analyze_dns.md
- bash/functions/cybersecurity/audit_http_headers.md
- bash/functions/cybersecurity/audit_ssh_config.md
- bash/functions/cybersecurity/check_firewall.md
- bash/functions/cybersecurity/detect_suspicious_users.md
- bash/functions/cybersecurity/encrypt_file.md
- ...

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-14 00:28:20 +02:00

869 B

name, kind, lang, domain, version, purity, signature, description, tags, uses_functions, uses_types, returns, returns_optional, error_type, imports, params, output, tested, tests, test_file_path, file_path
name kind lang domain version purity signature description tags uses_functions uses_types returns returns_optional error_type imports params output tested tests test_file_path file_path
standardize function py datascience 1.0.0 pure def standardize(data: list) -> list Estandarizacion Z-score: transforma los datos a media=0 y desviacion=1.
statistics
normalization
python
pendiente-usar
false
math
name desc
data lista de valores numericos a estandarizar
lista de misma longitud con datos transformados a media=0 y desviacion estandar=1 (z-scores) false
python/functions/datascience/datascience.py

Ejemplo

standardize([10, 20, 30])
# [-1.2247..., 0.0, 1.2247...]

Notas

Si la desviacion estandar es cero, retorna lista de ceros. Usa desviacion poblacional (N, no N-1).