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gdpr-compliant

by @githubv
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为工程师提供可操作的GDPR合规指南,基于数据最小化原则设计系统架构和数据处理流程

gdprcompliancelegal-compliancedata-privacyGitHub
安装方式
npx skills add github/awesome-copilot --skill gdpr-compliant
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Before / After 效果对比

1
使用前

阅读GDPR官方文档和律师意见,尝试理解抽象的法规条款并应用到技术实现,容易遗漏关键合规要求,一个功能的合规评估需要4小时

使用后

基于具体功能场景自动检查GDPR合规清单,提供数据最小化、存储限制和暴露控制的具体实现建议,30分钟完成合规性审查

description SKILL.md

gdpr-compliant

GDPR Engineering Skill

Actionable GDPR reference for engineers, architects, DevOps, and tech leads. Inspired by CNIL developer guidance and GDPR Articles 5, 25, 32, 33, 35.

Golden Rule: Collect less. Store less. Expose less. Retain less.

For deep dives, read the reference files in references/:

  • references/data-rights.md — user rights endpoints, DSR workflow, RoPA

  • references/security.md — encryption, hashing, secrets, anonymization

  • references/operations.md — cloud, CI/CD, incident response, architecture patterns

1. Core GDPR Principles (Article 5)

Principle Engineering obligation

Lawfulness, fairness, transparency Document legal basis for every processing activity in the RoPA

Purpose limitation Data collected for purpose A MUST NOT be reused for purpose B without a new legal basis

Data minimization Collect only fields with a documented business need today

Accuracy Provide update endpoints; propagate corrections to downstream stores

Storage limitation Define TTL at schema design time — never after

Integrity & confidentiality Encrypt at rest and in transit; restrict and audit access

Accountability Maintain evidence of compliance; RoPA ready for DPA inspection at any time

2. Privacy by Design & by Default

MUST

  • Add CreatedAt, RetentionExpiresAt to every table holding personal data at creation time.

  • Default all optional data collection to off. Users opt in; they never opt out of a default-on setting.

  • Conduct a DPIA before building high-risk processing (biometrics, health data, large-scale profiling, systematic monitoring).

  • Update the RoPA with every new feature that introduces a processing activity.

  • Sign a DPA with every sub-processor before data flows to them.

MUST NOT

  • Ship a new data collection feature without a documented legal basis.

  • Enable analytics, tracking, or telemetry by default without explicit consent.

  • Store personal data in a system not listed in the RoPA.

3. Data Minimization

MUST

  • Map every DTO/model field to a concrete business need. Remove undocumented fields.

  • Use separate DTOs for create, read, and update — never reuse the same object.

  • Return only what the caller is authorized to see — use response projections.

  • Mask sensitive values at the edge: return ****1234 for card numbers, never the full value.

  • Exclude sensitive fields (DOB, national ID, health) from default list/search projections.

MUST NOT

  • Log full request/response bodies if they may contain personal data.

  • Include personal data in URL path segments or query parameters (CDN logs, browser history).

  • Collect dateOfBirth, national ID, or health data without an explicit legal basis.

4. Purpose Limitation

MUST

  • Document the purpose of every processing activity in code comments and in the RoPA.

  • Obtain a new legal basis or perform a compatibility analysis before reusing data for a secondary purpose.

MUST NOT

  • Share personal data collected for service delivery with advertising networks without explicit consent.

  • Use support ticket content to train ML models without a separate legal basis and user notice.

5. Storage Limitation & Retention

MUST

  • Every table holding personal data MUST have a defined retention period.

  • Enforce retention automatically via a scheduled job (Hangfire, cron) — never a manual process.

  • Anonymize or delete data when retention expires — never leave expired data silently in production.

Recommended defaults

Data type Max retention

Auth / audit logs 12–24 months

Session / refresh tokens 30–90 days

Email / notification logs 6 months

Inactive user accounts 12 months after last login → notify → delete

Payment records As required by tax law (7–10 years), minimized

Analytics events 13 months

SHOULD

  • Add RetentionExpiresAt column — compute at insert time.

  • Use soft-delete (DeletedAt) with a scheduled hard-delete after the erasure request window (30 days).

MUST NOT

  • Retain personal data indefinitely "in case it becomes useful later."

6. API Design Rules

MUST

  • MUST NOT include personal data in URL paths or query parameters.

GET /users/{userId}

  • Authenticate all endpoints that return or accept personal data.

  • Extract the acting user's identity from the JWT — never from the request body.

  • Validate ownership on every resource: if (resource.OwnerId != currentUserId) return 403.

  • Use UUIDs or opaque identifiers — never sequential integers as public resource IDs.

SHOULD

  • Rate-limit sensitive endpoints (login, data export, password reset).

  • Set Referrer-Policy: no-referrer and an explicit CORS allowlist.

MUST NOT

  • Return stack traces, internal paths, or database errors in API responses.

  • Use Access-Control-Allow-Origin: * on authenticated APIs.

7. Logging Rules

MUST

  • Anonymize IPs in application logs — mask last octet (IPv4) or last 80 bits (IPv6).

192.168.1.xxx

  • MUST NOT log: passwords, tokens, session IDs, credentials, card numbers, national IDs, health data.

  • MUST NOT log full request/response bodies where PII may be present.

  • Enforce log retention — purge automatically after the defined period.

SHOULD

  • Log events not data: "User {UserId} updated email" not "Email changed from a@b.com to c@d.com".

  • Use structured logging (JSON) with userId as an internal identifier, not the email address.

  • Separate audit logs (sensitive access, admin actions) from application logs — different retention and ACLs.

8. Error Handling

MUST

  • Return generic error messages — never expose stack traces, internal paths, or DB errors.

"Column 'email' violates unique constraint on table 'users'"

  • "A user with this email address already exists."

  • Use Problem Details (RFC 7807) for all error responses.

  • Log the full error server-side with a correlation ID; return only the correlation ID to the client.

MUST NOT

  • Include file paths, class names, or line numbers in error responses.

  • Include personal data in error messages (e.g., "User john@example.com not found").

9. Encryption (summary — see references/security.md for full detail)

Scope Minimum standard

Standard personal data AES-256 disk/volume encryption

Sensitive data (health, financial, biometric) AES-256 column-level + envelope encryption via KMS

In transit TLS 1.2+ (prefer 1.3); HSTS enforced

Keys HSM-backed KMS; rotate DEKs annually

MUST NOT allow TLS 1.0/1.1, null cipher suites, or hardcoded encryption keys.

10. Password Hashing

MUST

  • Use Argon2id (recommended) or bcrypt (cost ≥ 12). Never MD5, SHA-1, or SHA-256.

  • Use a unique salt per password. Store only the hash.

MUST NOT

  • Log passwords in any form. Transmit passwords in URLs. Store reset tokens in plaintext.

11. Secrets Management

MUST

  • Store all secrets in a KMS: Azure Key Vault, AWS Secrets Manager, GCP Secret Manager, or HashiCorp Vault.

  • Use pre-commit hooks (gitleaks, detect-secrets) to prevent secret commits.

  • Rotate secrets on developer offboarding, annual schedule, or suspected compromise.

.gitignore MUST include: .env, .env.*, *.pem, *.key, *.pfx, *.p12, secrets/

MUST NOT

  • Commit secrets to source code. Store secrets as plain-text environment variable defaults.

12. Anonymization & Pseudonymization (summary — see references/security.md)

  • Anonymization = irreversible → falls outside GDPR scope. Use for retained records after erasure.

  • Pseudonymization = reversible with a key → still personal data, reduced risk.

  • When erasing a user, anonymize records that must be retained (financial, audit) rather than deleting them.

  • Store the pseudonymization key in the KMS — never in the same database as the pseudonymized data.

MUST NOT call data "anonymized" if re-identification is possible through linkage attacks.

13. Testing with Fake Data

MUST

  • MUST NOT use production personal data in dev, staging, or CI environments.

  • MUST NOT restore production DB backups to non-production without scrubbing PII first.

  • Use synthetic data generators: Bogus (.NET), Faker (JS/Python/Ruby).

  • Use @example.com for all test email addresses.

14. Anti-Patterns

Anti-pattern Correct approach

PII in URLs Opaque UUIDs as public identifiers

Logging full request bodies Log structured event metadata only

"Keep forever" schema TTL defined at design time

Production data in dev/test Synthetic data + scrubbing pipeline

Shared credentials across teams Individual accounts + RBAC

Hardcoded secrets KMS + secret manager

Access-Control-Allow-Origin: * on auth APIs Explicit CORS allowlist

Storing consent with profile data Dedicated consent store

PII in GET query params POST body or authenticated session

Sequential integer IDs in public URLs UUIDs

"Anonymized" data with quasi-identifiers Apply k-anonymity, test linkage resistance

Mixing backup regions outside EEA Explicit region lockdown on backup jobs

15. PR Review Checklist

Data model

  • Every new PII column has a documented purpose and retention period.

  • Sensitive fields (health, financial, national ID) use column-level encryption.

  • No sequential integer PKs as public-facing identifiers.

API

  • No PII in URL paths or query parameters.

  • All endpoints returning personal data are authenticated.

  • Ownership checks present — user cannot access another user's resource.

  • Rate limiting applied to sensitive endpoints.

Logging

  • No passwords, tokens, or credentials logged.

  • IPs anonymized (last octet masked).

  • No full request/response bodies logged where PII may be present.

Infrastructure

  • No public storage buckets or public-IP databases.

  • New cloud resources tagged with DataClassification.

  • Encryption at rest enabled for new storage resources.

  • New geographic regions for data storage are EEA-compliant or covered by SCCs.

Secrets & CI/CD

  • No secrets in source code or committed config files.

  • New secrets added to KMS and secrets inventory document.

  • CI/CD secrets masked in pipeline logs.

Retention & erasure

  • Retention enforcement job or policy covers new data store or field.

  • Erasure pipeline updated to cover new data store.

User rights & governance

  • Data export endpoint includes any new personal data field.

  • RoPA updated if a new processing activity is introduced.

  • New sub-processors have a signed DPA and a RoPA entry.

  • DPIA triggered if the change involves high-risk processing.

Golden Rule: Collect less. Store less. Expose less. Retain less.

Every byte of personal data you do not collect is a byte you cannot lose, cannot breach, and cannot be held liable for.

Inspired by CNIL developer GDPR guidance, GDPR Articles 5, 25, 32, 33, 35, ENISA, OWASP, and NIST engineering best practices. Weekly Installs545Repositorygithub/awesome-copilotGitHub Stars29.4KFirst Seen13 days agoSecurity AuditsGen Agent Trust HubPassSocketPassSnykPassInstalled ongemini-cli492codex492opencode492github-copilot489cline487cursor486

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更新日期2026年4月27日
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