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| .gitattributes | 1.52 kB xet | 818ba6de | |
| README.md | 4.88 kB xet | c8ba3804 | |
| config.json | 1.34 kB xet | 3017bfc7 | |
| generation_config.json | 254 Bytes xet | ef8d4231 | |
| handler.py | 4.23 kB xet | a3468c57 | |
| main.py | 3.96 kB xet | 4f1b45b5 | |
| model.safetensors | 2.28 GB xet | 24e2348e | |
| requirements.txt | 48 Bytes xet | 2c1d12b9 | |
| special_tokens_map.json | 1.77 kB xet | 303eb2ce | |
| spiece.model | 1.91 MB xet | 55f21cd0 | |
| tokenizer_config.json | 20.1 kB xet | fe0505cb |
Humaneyes
Model Description
Humaneyes is an advanced text transformation model designed to convert AI-generated text into more human-like content and provide robust defense against AI content detection trackers. The model leverages sophisticated natural language processing techniques to humanize machine-generated text, making it indistinguishable from human-written content.
Model Details
- Developed by: Eemansleepdeprived
- Model type: AI-to-Human Text Transformation
- Primary Functionality:
- AI-generated text humanization
- AI tracker defense
- Language(s): English
- Base Architecture: Pegasus Transformer
- Input format: AI-generated text
- Output format: Humanized, natural-sounding text
Key Capabilities
- Transforms AI-generated text to sound more natural and human-like
- Defeats AI content detection algorithms
- Preserves original semantic meaning
- Maintains coherent paragraph structure
- Introduces human-like linguistic variations
Intended Use Cases
- Academic writing assistance
- Content creation and disguising AI-generated content
- Protecting writers from AI content detection systems
- Enhancing AI-generated text for more authentic communication
Ethical Considerations
- Intended for creative and protective purposes
- Users should respect academic and professional integrity
- Encourages responsible use of AI-generated content
- Not designed to facilitate academic dishonesty
Technical Approach
Humanization Strategies
- Natural language variation
- Contextual rephrasing
- Introducing human-like imperfections
- Semantic preservation
- Stylistic diversification
Anti-Detection Techniques
- Defeating AI content trackers
- Randomizing linguistic patterns
- Simulating human writing nuances
- Breaking predictable AI generation signatures
Performance Characteristics
- High semantic similarity to original text
- Reduced AI detection probability
- Contextually appropriate transformations
- Minimal loss of original meaning
Limitations
- Performance may vary based on input text complexity
- Not guaranteed to bypass all AI detection systems
- Potential subtle semantic shifts
- Effectiveness depends on input text characteristics
Usage Example
from transformers import PegasusTokenizer, PegasusForConditionalGeneration
tokenizer = PegasusTokenizer.from_pretrained('Eemansleepdeprived/Humaneyes')
model = PegasusForConditionalGeneration.from_pretrained('Eemansleepdeprived/Humaneyes')
ai_generated_text = "Your AI-generated text goes here."
inputs = tokenizer(ai_generated_text, return_tensors="pt")
outputs = model.generate(**inputs)
humanized_text = tokenizer.decode(outputs[0], skip_special_tokens=True)
Contact and Collaboration
For inquiries, feedback, or collaboration opportunities, contact:
- Email: eeman.majumder@gmail.com
License
Released under the MIT License
Disclaimer
Users are responsible for ethical use of the Humaneyes Text Humanizer. Respect academic and professional guidelines.
- Total size
- 0 Bytes
- Files
- 11
- Last updated
- Jun 21
- Pre-warmed CDN
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