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  metadata:
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  name: Canstralian
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  tags:
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- - cybersecurity
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- - penetration-testing
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- - red-team
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- - ai
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- - offensive-security
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- - threat-detection
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- - code-generation
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  license: MIT
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  model_index:
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  model_name: RedTeamAI
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- model_description: |
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- AI-powered model designed for penetration testing and security automation, focused on detecting and analyzing known cybersecurity exploits.
 
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  model_type: text-classification
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  language: English
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  framework: PyTorch
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  precision: 89.3
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  recall: 91.8
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  f1_score: 90.5
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- source: "Internal Benchmark"
 
 
 
 
 
 
 
 
 
 
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  ---
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  Model Card for Canstralian
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  This modelcard aims to serve as a base template for the "Canstralian" model. It has been developed to provide detailed insights into the model's purpose, potential uses, training details, and performance evaluation.
 
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  metadata:
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  name: Canstralian
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  tags:
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+ - cybersecurity
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+ - penetration-testing
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+ - red-team
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+ - ai
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+ - offensive-security
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+ - threat-detection
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+ - code-generation
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  license: MIT
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  model_index:
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  model_name: RedTeamAI
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+ model_description: >
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+ AI-powered model designed for penetration testing and security automation,
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+ focused on detecting and analyzing known cybersecurity exploits.
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  model_type: text-classification
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  language: English
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  framework: PyTorch
 
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  precision: 89.3
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  recall: 91.8
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  f1_score: 90.5
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+ source: Internal Benchmark
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+ license: mit
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+ language:
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+ - en
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+ tags:
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+ - cybersecurity
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+ - penetration-testing
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+ - red-team
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+ - ai
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+ - offensive-security
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+ - code-generation
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  ---
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  Model Card for Canstralian
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  This modelcard aims to serve as a base template for the "Canstralian" model. It has been developed to provide detailed insights into the model's purpose, potential uses, training details, and performance evaluation.