Augustus
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Catalog Information
Augustus is a Go-based Large Language Model (LLM) vulnerability scanner for security professionals to test against adversarial attacks.
Description
Augustus is a production-ready LLM vulnerability scanner built for concurrent scanning, rate limiting, and retry logic. It tests large language models against over 210 adversarial attacks, integrates with 28 LLM providers, and produces actionable vulnerability reports. Unlike research-oriented tools, Augustus focuses on enterprise security testing.
الوصف
أغسطس هو مراقب ضعف لغة الكبيرة (LLM) مكتوب بلغة Go، مصمم للفحص المتسلسل والحد من السرعة ووضع منطق retry. يختبر لغات الكمبيوتر الضخمة ضد أكثر من 210 هجوم عدواني، ويدمج مع 28 مزودًا لغة الكمبيوتر، ويولد تقارير ضعف قابلة للتنفيذ. لا يشبه أدوات البحث الموجهة نحو الأبحاث، يركز أغسطس على اختبار الأمان في الشركات.
Novelty
9/10Tags
Technologies
Claude Models
Quality Score
Strengths
- CI/CD pipeline configured (github_actions)
- Good test coverage (81% test-to-source ratio)
- Consistent naming conventions (snake_case)
- Good security practices \u2014 no major issues detected
- Containerized deployment (Docker)
- Properly licensed project
Weaknesses
- Potential hardcoded secrets in 1 files
- 3627 duplicate lines detected \u2014 consider DRY refactoring
- 4 'god files' with >500 LOC need decomposition
Recommendations
- Add a linter configuration to enforce code style consistency
- Move hardcoded secrets to environment variables or a secrets manager
- Address 27 TODO/FIXME items \u2014 consider tracking them as issues
Security & Health
Languages
Frameworks
Concepts (1)
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| Repobility · severity-and-effort ranking · https://repobility.com | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
| auto_description | Project Description | > Test large language models against 210+ adversarial attacks covering prompt injection, jailbreaks, encoding exploits, and data extraction. | 80% | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
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