/install ai-personal-data-redaction-pass
AI Personal Data Redaction Pass
Purpose
Help the user prepare real-world content for use with an AI tool by removing or replacing personal data before sharing. The deliverable is a redaction pass: a flagged identifier table, sensitivity notes, placeholder map, and a safe-to-paste version of the content.
This is a prompt-only privacy cleanup workflow. It does not store secrets, create a private-data database, provide legal advice, provide medical advice, provide financial advice, or guarantee that every identifier has been removed. Extra caution is required for legal, medical, financial, employment, immigration, education, child-related, and identity documents.
Use This Skill When
Use this skill when the user wants to:
- Paste notes, screenshots, forms, emails, chats, transcripts, resumes, records, or support tickets into an AI tool.
- Remove names, addresses, phone numbers, emails, account numbers, IDs, dates of birth, signatures, faces, locations, employer names, school names, case numbers, or other identifiers.
- Replace sensitive details with consistent placeholders while keeping the useful structure of the content.
- Create a before-and-after privacy artifact they can review before sharing externally.
- Separate what is safe to paste from what should stay private.
Do not use this skill to preserve, store, reconstruct, infer, deanonymize, expose, or trade personal data. Do not ask the user to provide secrets or unnecessary sensitive details.
Best Inputs
Ask for the minimum content needed to create the redaction pass. If the user has already pasted sensitive material, work from it cautiously and do not repeat secrets unnecessarily.
- The text or a user-provided summary of the material to clean.
- Intended destination, such as a general AI assistant, vendor support form, public forum, coworker, contractor, or classroom.
- Purpose of the AI task, such as summarizing, drafting, translating, extracting action items, or checking tone.
- Required facts that must remain useful after redaction.
- Content type, such as medical, legal, financial, employment, school, family, travel, customer support, or personal notes.
- Any identifiers the user specifically wants preserved, generalized, or removed.
Workflow
- Set privacy scope. Confirm that the output is a cleanup artifact and safe-to-paste copy, not secret storage or professional legal, medical, or financial guidance.
- Identify direct identifiers. Flag obvious names, contact details, government IDs, account numbers, case numbers, addresses, exact locations, faces in image descriptions, usernames, links, and signatures.
- Identify indirect identifiers. Flag combinations that could reveal a person, such as rare job titles, small towns, exact dates, unique events, school names, employer names, medical details, family roles, or timestamps.
- Classify sensitivity. Mark items as low, moderate, high, or critical sensitivity based on possible harm if shared.
- Choose placeholders. Replace identifiers with consistent labels such as [PERSON_A], [COMPANY_B], [CITY], [DATE_RANGE], [ACCOUNT_ID], or [MEDICAL_DETAIL]. Keep placeholder names generic.
- Protect context. Keep enough non-sensitive context for the AI task while removing details that are not needed.
- Produce the redaction table. Show each flagged item category, risk level, replacement, and reason. Avoid repeating the original value when it is highly sensitive; describe the category instead.
- Create safe-to-paste copy. Provide the cleaned version using placeholders. Do not include original secrets, full IDs, access tokens, passwords, or private keys.
- Add a review checklist. Tell the user what to manually inspect before sharing, especially for images, attachments, hidden metadata, file names, comments, tracked changes, and screenshots.
Output Format
Return the artifact in this order.
1. Scope and Caution Note
State that this is a privacy cleanup pass for AI use. If legal, medical, financial, employment, immigration, or child-related content is present, recommend extra human review before external sharing.
2. Intended Use Snapshot
| Field | Detail |
|---|---|
| Destination | |
| AI task | |
| Content type | |
| Sensitivity level | |
| Main sharing risk |
3. Identifier Review Table
| Item or category | Direct or indirect | Sensitivity | Replacement | Reason |
|---|
For critical items, do not repeat the original value. Use category descriptions such as "bank account number" or "minor child's school name."
4. Placeholder Map
List every placeholder and what general role it represents. Keep the map generic enough that it can be shared with the safe copy.
5. Safe-to-Paste Copy
Provide the cleaned content with placeholders. Preserve structure, order, tone, and necessary facts when possible.
6. Removed or Generalized Details
Summarize what was removed, generalized, or converted to ranges. Do not include secret values.
7. Manual Review Checklist
Include checks for:
- Names, contact details, addresses, account numbers, IDs, dates of birth, links, usernames, and signatures.
- Rare combinations that could identify someone.
- Image backgrounds, faces, forms, screenshots, file names, hidden metadata, comments, and tracked changes.
- Legal, medical, financial, employment, immigration, education, or child-related details that deserve extra care.
8. Paste Decision
End with one of these labels:
- Ready after review: only low-risk placeholders remain.
- Needs more redaction: more identifiers are visible.
- Do not paste externally: secrets, regulated data, or high-risk personal details remain.
Example Prompts
- "I want to paste a support ticket into an AI tool. Help me remove names, account numbers, and addresses first."
- "Redact personal details from this meeting transcript so I can ask an AI to extract action items safely."
- "I have a form with medical details to summarize. Create a safe-to-paste copy with placeholders instead of real data."
Safety Boundaries
- Do not store secrets or create a reusable private-data record.
- Do not reveal, reconstruct, or infer redacted identities.
- Do not ask for passwords, access tokens, private keys, full government IDs, bank credentials, or unnecessary sensitive data.
- Do not claim the copy is perfectly anonymous.
- For legal, medical, financial, employment, immigration, or child-related content, advise extra review and qualified support where appropriate.
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install ai-personal-data-redaction-pass - 安装完成后,直接呼叫该 Skill 的名称或使用
/ai-personal-data-redaction-pass触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Ai Personal Data Redaction Pass 是什么?
Create a visible privacy cleanup artifact before content is pasted into an AI tool, including an identifier review, redaction table, sensitivity flags, place... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 36 次。
如何安装 Ai Personal Data Redaction Pass?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install ai-personal-data-redaction-pass」即可一键安装,无需额外配置。
Ai Personal Data Redaction Pass 是免费的吗?
是的,Ai Personal Data Redaction Pass 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Ai Personal Data Redaction Pass 支持哪些平台?
Ai Personal Data Redaction Pass 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Ai Personal Data Redaction Pass?
由 haidong(@harrylabsj)开发并维护,当前版本 v1.0.1。