🧪 Skills

csv-cleanroom

Profile messy CSV files, standardize columns, detect data quality issues, and produce a reproducible cleanup plan.

v1.0.0
❤️ 0
⬇️ 35
👁 1
Share

Description


name: csv-cleanroom description: Profile messy CSV files, standardize columns, detect data quality issues, and produce a reproducible cleanup plan. version: 1.1.0 metadata: openclaw: requires: bins: - python3 emoji: 🧰

CSV Cleanroom

Purpose

Profile messy CSV files, standardize columns, detect data quality issues, and produce a reproducible cleanup plan.

Trigger phrases

  • 清洗 CSV
  • profile this dataset
  • 数据质量检查
  • 列名规范化
  • build a cleanup plan

Ask for these inputs

  • CSV file or schema
  • target schema if available
  • known bad values
  • dedupe rules
  • date/currency locale

Workflow

  1. Profile the CSV: row count, nulls, duplicates, type mismatches, and outliers.
  2. Normalize headers and map to the target schema.
  3. Generate a step-by-step cleanup plan and optional transformed output.
  4. Document irreversible operations before applying them.
  5. Return a quality score and remediation checklist.

Output contract

  • profile report
  • normalized schema
  • cleanup plan
  • quality scorecard

Files in this skill

  • Script: {baseDir}/scripts/csv_cleanroom.py
  • Resource: {baseDir}/resources/data_quality_checklist.md

Operating rules

  • Be concrete and action-oriented.
  • Prefer preview / draft / simulation mode before destructive changes.
  • If information is missing, ask only for the minimum needed to proceed.
  • Never fabricate metrics, legal certainty, receipts, credentials, or evidence.
  • Keep assumptions explicit.

Suggested prompts

  • 清洗 CSV
  • profile this dataset
  • 数据质量检查

Use of script and resources

Use the bundled script when it helps the user produce a structured file, manifest, CSV, or first-pass draft. Use the resource file as the default schema, checklist, or preset when the user does not provide one.

Boundaries

  • This skill supports planning, structuring, and first-pass artifacts.
  • It should not claim that files were modified, messages were sent, or legal/financial decisions were finalized unless the user actually performed those actions.

Compatibility notes

  • Directory-based AgentSkills/OpenClaw skill.
  • Runtime dependency declared through metadata.openclaw.requires.
  • Helper script is local and auditable: scripts/csv_cleanroom.py.
  • Bundled resource is local and referenced by the instructions: resources/data_quality_checklist.md.

Reviews (0)

Sign in to write a review.

No reviews yet. Be the first to review!

Comments (0)

Sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Compatible Platforms

Pricing

Free

Related Configs