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πŸ¦€ ClawHub

Humanize AI text

by @moltbro

Humanize AI-generated text to bypass detection. This humanizer rewrites ChatGPT, Claude, and GPT content to sound natural and pass AI detectors like GPTZero,...

Versionv1.0.1
Downloads41,468
Installs327
Stars⭐ 167
Comments8
TERMINAL
clawhub install humanize-ai-text

πŸ“– About This Skill


name: humanize-ai-text description: Humanize AI-generated text to bypass detection. This humanizer rewrites ChatGPT, Claude, and GPT content to sound natural and pass AI detectors like GPTZero, Turnitin, and Originality.ai. Based on Wikipedia's comprehensive "Signs of AI Writing" guide. Makes robotic AI writing undetectable and human-like. allowed-tools: - Read - Write - StrReplace - Glob

Humanize AI Text

Comprehensive CLI for detecting and transforming AI-generated text to bypass detectors. Based on Wikipedia's Signs of AI Writing.

Quick Start

# Detect AI patterns
python scripts/detect.py text.txt

Transform to human-like

python scripts/transform.py text.txt -o clean.txt

Compare before/after

python scripts/compare.py text.txt -o clean.txt


Detection Categories

The analyzer checks for 16 pattern categories from Wikipedia's guide:

Critical (Immediate AI Detection)

| Category | Examples | |----------|----------| | Citation Bugs | oaicite, turn0search, contentReference | | Knowledge Cutoff | "as of my last training", "based on available information" | | Chatbot Artifacts | "I hope this helps", "Great question!", "As an AI" | | Markdown | bold, ## headers, `` code blocks ` |

High Signal

| Category | Examples | |----------|----------| | AI Vocabulary | delve, tapestry, landscape, pivotal, underscore, foster | | Significance Inflation | "serves as a testament", "pivotal moment", "indelible mark" | | Promotional Language | vibrant, groundbreaking, nestled, breathtaking | | Copula Avoidance | "serves as" instead of "is", "boasts" instead of "has" |

Medium Signal

| Category | Examples | |----------|----------| | Superficial -ing | "highlighting the importance", "fostering collaboration" | | Filler Phrases | "in order to", "due to the fact that", "Additionally," | | Vague Attributions | "experts believe", "industry reports suggest" | | Challenges Formula | "Despite these challenges", "Future outlook" |

Style Signal

| Category | Examples | |----------|----------| | Curly Quotes | "" instead of "" (ChatGPT signature) | | Em Dash Overuse | Excessive use of β€” for emphasis | | Negative Parallelisms | "Not only... but also", "It's not just... it's" | | Rule of Three | Forced triplets like "innovation, inspiration, and insight" |


Scripts

detect.py β€” Scan for AI Patterns

python scripts/detect.py essay.txt
python scripts/detect.py essay.txt -j  # JSON output
python scripts/detect.py essay.txt -s  # score only
echo "text" | python scripts/detect.py

Output:

  • Issue count and word count
  • AI probability (low/medium/high/very high)
  • Breakdown by category
  • Auto-fixable patterns marked
  • transform.py β€” Rewrite Text

    python scripts/transform.py essay.txt
    python scripts/transform.py essay.txt -o output.txt
    python scripts/transform.py essay.txt -a  # aggressive
    python scripts/transform.py essay.txt -q  # quiet
    

    Auto-fixes:

  • Citation bugs (oaicite, turn0search)
  • Markdown (**, ##, `)
  • Chatbot sentences
  • Copula avoidance β†’ "is/has"
  • Filler phrases β†’ simpler forms
  • Curly β†’ straight quotes
  • Aggressive (-a):

  • Simplifies -ing clauses
  • Reduces em dashes
  • compare.py β€” Before/After Analysis

    python scripts/compare.py essay.txt
    python scripts/compare.py essay.txt -a -o clean.txt
    

    Shows side-by-side detection scores before and after transformation


    Workflow

    1. Scan for detection risk:

       python scripts/detect.py document.txt
       

    2. Transform with comparison:

       python scripts/compare.py document.txt -o document_v2.txt
       

    3. Verify improvement:

       python scripts/detect.py document_v2.txt -s
       

    4. Manual review for AI vocabulary and promotional language (requires judgment)


    AI Probability Scoring

    | Rating | Criteria | |--------|----------| | Very High | Citation bugs, knowledge cutoff, or chatbot artifacts present | | High | >30 issues OR >5% issue density | | Medium | >15 issues OR >2% issue density | | Low | <15 issues AND <2% density |


    Customizing Patterns

    Edit scripts/patterns.json to add/modify:

  • ai_vocabulary β€” words to flag
  • significance_inflation β€” puffery phrases
  • promotional_language β€” marketing speak
  • copula_avoidance β€” phrase β†’ replacement
  • filler_replacements β€” phrase β†’ simpler form
  • chatbot_artifacts` β€” phrases triggering sentence removal

  • Batch Processing

    # Scan all files
    for f in *.txt; do
      echo "=== $f ==="
      python scripts/detect.py "$f" -s
    done

    Transform all markdown

    for f in *.md; do python scripts/transform.py "$f" -a -o "${f%.md}_clean.md" -q done


    Reference

    Based on Wikipedia's Signs of AI Writing, maintained by WikiProject AI Cleanup. Patterns documented from thousands of AI-generated text examples.

    Key insight: "LLMs use statistical algorithms to guess what should come next. The result tends toward the most statistically likely result that applies to the widest variety of cases."

    πŸ’‘ Examples

    # Detect AI patterns
    python scripts/detect.py text.txt

    Transform to human-like

    python scripts/transform.py text.txt -o clean.txt

    Compare before/after

    python scripts/compare.py text.txt -o clean.txt