AgentSkillsCN

slop-detector

从范例文本中学习并提取写作风格模式,以确保风格的一致性。当您需要从现有内容中提炼风格指南,确保文档间风格统一,学习特定作者的写作风格,或定制 AI 输出的风格时,可优先选用此技能。切勿在检测 AI 滑坡时使用——请改用 slop-detector。若您只需清理现有内容——请改用 doc-generator 并加入 --remediate 参数。借助此技能,您可以从范例文本中构建专属的风格档案。

SKILL.md
--- frontmatter
name: slop-detector
description: 'Detect and flag AI-generated content markers in documentation and prose.
  Use when reviewing documentation for AI markers, cleaning up LLM-generated content,
  or auditing prose quality. Do not use when generating new content (use doc-generator)
  or learning writing styles (use style-learner). Use when: ai slop, ai-generated,
  llm markers, chatgpt phrases, claude tells, slop detection, ai cleanup, humanize
  text, remove ai markers, detect chatgpt, detect llm, writing quality, ai tells..'
category: writing-quality
tags:
- ai-detection
- slop
- writing
- cleanup
- documentation
- quality
tools:
- Read
- Grep
- TodoWrite
complexity: medium
estimated_tokens: 2800
progressive_loading: true
modules:
- vocabulary-patterns
- structural-patterns
- fiction-patterns
- remediation-strategies
dependencies:
- scribe:shared
version: 1.4.0

AI Slop Detection

AI slop is identified by patterns of usage rather than individual words. While a single "delve" might be acceptable, its proximity to markers like "tapestry" or "embark" signals generated text. We analyze the density of these markers per 100 words, their clustering, and whether the overall tone fits the document type.

Execution Workflow

Start by identifying target files and classifying them as technical docs, narrative prose, or code comments. This allows for context-aware scoring during analysis.

Vocabulary and Phrase Detection

Load: @modules/vocabulary-patterns.md

We categorize markers into three tiers based on confidence. Tier 1 words appear dramatically more often in AI text and include "delve," "multifaceted," and "leverage." Tier 2 covers context-dependent transitions like "moreover" or "subsequently," while Tier 3 identifies vapid phrases such as "In today's fast-paced world" or "cannot be overstated."

WordContextHuman Alternative
delve"delve into"explore, examine, look at
tapestry"rich tapestry"mix, combination, variety
realm"in the realm of"in, within, regarding
embark"embark on a journey"start, begin
beacon"a beacon of"example, model
spearheadedformal attributionled, started
multifaceteddescribing complexitycomplex, varied
comprehensivedescribing scopethorough, complete
pivotalimportance markerkey, important
nuancedsophistication signalsubtle, detailed
meticulous/meticulouslycare markercareful, detailed
intricatecomplexity markerdetailed, complex
showcasingdisplay verbshowing, displaying
leveragingbusiness jargonusing
streamlineoptimization verbsimplify, improve

Tier 2: Medium-Confidence Markers (Score: 2 each)

Common but context-dependent:

CategoryWords
Transition overusemoreover, furthermore, indeed, notably, subsequently
Intensity clusteringsignificantly, substantially, fundamentally, profoundly
Hedging stackspotentially, typically, often, might, perhaps
Action inflationrevolutionize, transform, unlock, unleash, elevate
Empty emphasiscrucial, vital, essential, paramount

Tier 3: Phrase Patterns (Score: 2-4 each)

PhraseScoreIssue
"In today's fast-paced world"4Vapid opener
"It's worth noting that"3Filler
"At its core"2Positional crutch
"Cannot be overstated"3Empty emphasis
"A testament to"3Attribution cliche
"Navigate the complexities"4Business speak
"Unlock the potential"4Marketing speak
"Treasure trove of"3Overused metaphor
"Game changer"3Buzzword
"Look no further"4Sales pitch
"Nestled in the heart of"4Travel writing cliche
"Embark on a journey"4Melodrama
"Ever-evolving landscape"4Tech cliche
"Hustle and bustle"3Filler

Step 3: Structural Pattern Detection

Load: @modules/structural-patterns.md

Em Dash Overuse

Count em dashes (—) per 1000 words:

  • 0-2: Normal human range
  • 3-5: Elevated, review usage
  • 6+: Strong AI signal
bash
# Count em dashes in file
grep -o '—' file.md | wc -l

Tricolon Detection

AI loves groups of three with alliteration:

  • "fast, efficient, and reliable"
  • "clear, concise, and compelling"
  • "robust, reliable, and resilient"

Pattern: adjective, adjective, and adjective with similar sounds.

List-to-Prose Ratio

Count bullet points vs paragraph sentences:

  • >60% bullets: AI tendency
  • Emoji-led bullets: Strong AI signal in technical docs

Sentence Length Uniformity

Measure standard deviation of sentence lengths:

  • Low variance (SD < 5 words): AI monotony
  • High variance (SD > 10 words): Human variation

Paragraph Symmetry

AI produces "blocky" text with uniform paragraph lengths. Check if paragraphs cluster around the same word count.

Step 4: Sycophantic Pattern Detection

Especially relevant for conversational or instructional content:

PhraseIssue
"I'd be happy to"Servile opener
"Great question!"Empty validation
"Absolutely!"Over-agreement
"That's a wonderful point"Flattery
"I'm glad you asked"Filler
"You're absolutely right"Sycophancy

These phrases add no information and signal generated content.

Step 5: Calculate Slop Density Score

code
slop_score = (tier1_count * 3 + tier2_count * 2 + phrase_count * avg_phrase_score) / word_count * 100
ScoreRatingAction
0-1.0CleanNo action needed
1.0-2.5LightSpot remediation
2.5-5.0ModerateSection rewrite recommended
5.0+HeavyFull document review

Step 6: Generate Report

Output format:

markdown
## Slop Detection Report: [filename]

**Overall Score**: X.X / 10 (Rating)
**Word Count**: N words
**Markers Found**: N total

### High-Confidence Markers
- Line 23: "delve into" -> consider: "explore"
- Line 45: "rich tapestry" -> consider: "variety"

### Structural Issues
- Em dash density: 8/1000 words (HIGH)
- Bullet ratio: 72% (ELEVATED)
- Sentence length SD: 3.2 words (LOW VARIANCE)

### Phrase Patterns
- Line 12: "In today's fast-paced world" (vapid opener)
- Line 89: "cannot be overstated" (empty emphasis)

### Recommendations
1. Replace [specific word] with [alternative]
2. Convert bullet list at line 34-56 to prose
3. Vary sentence structure in paragraphs 3-5

Module Reference

  • See modules/fiction-patterns.md for narrative-specific slop markers
  • See modules/remediation-strategies.md for fix recommendations

Integration with Remediation

After detection, invoke Skill(scribe:doc-generator) with --remediate flag to apply fixes, or manually edit using the report as a guide.

Exit Criteria

  • All target files scanned
  • Density scores calculated
  • Report generated with actionable recommendations
  • High-severity items flagged for immediate attention