Skillquality 0.47

lovstudio:anti-wechat-ai-check

Analyze articles for AI-generated content indicators and rewrite to pass WeChat's 3.27 non-human automated content creation detection. Checks for template phrases, transition word density, sentence uniformity, paragraph pattern repetition, and other signals that WeChat uses to fl

Price
free
Protocol
skill
Verified
no

What it does

anti-wechat-ai-check — 微信公众号 AI 痕迹检测与人性化润色

检测文章中的 AI 生成痕迹(模板短语、过渡词堆砌、句式雷同等),给出风险 评分和修改建议,并可输出人性化润色后的版本。基于微信公众平台运营规范 3.27 条款(非真人自动化创作行为)的检测逻辑。

When to Use

  • 用户准备将 AI 辅助写作的文章发布到微信公众号
  • 用户想检查一篇文章是否有明显 AI 痕迹
  • 用户想将 AI 生成的草稿改写为更自然的人类风格

Workflow (MANDATORY)

You MUST follow these steps in order:

Step 1: Get the article

Determine the input source:

  • If user provides a file path → read the file
  • If user pastes text in the conversation → save to a temp file or use --text

Step 2: Run analysis

python skills/lovstudio-anti-wechat-ai-check/scripts/analyze.py \
  --input <path> --format json

Or with inline text:

python skills/lovstudio-anti-wechat-ai-check/scripts/analyze.py \
  --text "文章内容" --format json

Step 3: Present findings

Show the user:

  1. Risk score (0-100) and risk level (LOW / MEDIUM / HIGH)
  2. Template phrases found — list each one with its location
  3. Structure issues — transition word density, paragraph uniformity, etc.
  4. Sentence issues — length uniformity, repeated starters, excessive "的"

Step 4: Ask the user

IMPORTANT: Use AskUserQuestion to ask what to do next:

OptionDescription
仅查看报告用户自己修改,skill 结束
给出修改建议列出每个问题的具体修改建议,不改原文
直接输出修改版输出人性化润色后的完整文章

Step 5: Humanize (if requested)

When rewriting, follow these humanization rules:

5a. 消除模板短语

  • 删除或替换报告中标出的每个模板短语
  • "随着科技的不断发展" → 直接说具体的事("去年 ChatGPT 发布后...")
  • "综上所述" → 删掉,或换成口语化的收尾

5b. 降低过渡词密度

  • 目标:过渡词密度 < 15%
  • 删除不必要的 "首先/其次/此外/另外"
  • 用具体的逻辑关系替代泛化连接词

5c. 打破句式均匀

  • 刻意制造长短句交替:短句 < 15 字,长句 > 40 字
  • 加入口语化表达、反问句、感叹句
  • 偶尔使用不完整句或省略句

5d. 打破段落均匀

  • 有的段落只有一两句话,有的段落可以很长
  • 避免每段都是 "论点 + 论据 + 小结" 的三段式

5e. 增加人味

  • 加入个人经历、具体案例、数字细节
  • 使用口语化表达("说白了"、"讲真"、"你想想")
  • 适当使用不规范但自然的表达
  • 减少 "的" 字使用(目标 < 5%)

5f. 保留原意

  • 核心观点和信息不能丢失
  • 专业术语保留,不要过度口语化
  • 保持原文的立场和态度

Step 6: Output

Output the humanized article as markdown. If the input was a file, also offer to write the result back to a file (with -humanized suffix).

CLI Reference

ArgumentDefaultDescription
--input, -iInput file path (.md, .txt)
--text, -tInline text to analyze
--format, -ftextOutput format: text or json

Dependencies

No external dependencies — stdlib only.

Capabilities

skillsource-lovstudioskill-anti-wechat-ai-checktopic-agent-skillstopic-ai-coding-assistanttopic-cjktopic-claude-codetopic-cursortopic-gemini-clitopic-markdown-to-docxtopic-markdown-to-pdf

Install

Quality

0.47/ 1.00

deterministic score 0.47 from registry signals: · indexed on github topic:agent-skills · 40 github stars · SKILL.md body (2,382 chars)

Provenance

Indexed fromgithub
Enriched2026-04-22 00:56:33Z · deterministic:skill-github:v1 · v1
First seen2026-04-18
Last seen2026-04-22

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