Augustus

C+ 79 completed
Ai Ml
containerized / go · medium
742
Files
101,278
LOC
0
Frameworks
6
Languages

Pipeline State

completed
Run ID
#371243
Phase
done
Progress
1%
Started
Finished
2026-04-13 01:31:02
LLM tokens
0

Pipeline Metadata

Stage
Cataloged
Decision
proceed
Novelty
58.67
Framework unique
Isolation
Last stage change
2026-05-10 03:35:38
Deduplication group #50421
Member of a group with 9 similar repo(s) — canonical #25983 view group →
Top concepts (1)
Project Description
All rows above produced by Repobility · https://repobility.com

AI Prompt

Create a Go-based LLM vulnerability scanner, similar to Augustus. I need it to test large language models against a wide range of adversarial attacks, specifically covering prompt injection, jailbreaks, and data extraction. The tool should support integrating with at least 28 LLM providers and run over 210+ vulnerability probes. Since this is for security professionals, please ensure it includes features for concurrent scanning, rate limiting, and generating actionable vulnerability reports.
go llm security vulnerability-scanner adversarial-attacks prompt-injection ai-security
Generated by gemma4:latest

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

9/10

Tags

adversarial-attacks prompt-injection jailbreaks data-extraction vulnerability-scanning llm-security-testing

Technologies

ent

Claude Models

claude-opus-4.6 claude-opus-4.5

Quality Score

C+
78.9/100
Structure
74
Code Quality
84
Documentation
65
Testing
85
Practices
77
Security
90
Dependencies
50

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

16.8h
Tech Debt (A)
A
OWASP (100%)
PASS
Quality Gate
Same scanner, your repo: https://repobility.com — Repobility
A
Risk (0)
Apache-2.0
License
14.7%
Duplication
Full Security Report AI Fix Prompts SARIF SBOM

Languages

go
90.3%
text
4.1%
markdown
1.8%
shell
1.5%
yaml
1.3%
json
1.1%

Frameworks

None detected

Concepts (1)

Per-row analysis by Repobility · https://repobility.com
CategoryNameDescriptionConfidence
Repobility · severity-and-effort ranking · https://repobility.com
auto_descriptionProject Description> Test large language models against 210+ adversarial attacks covering prompt injection, jailbreaks, encoding exploits, and data extraction.80%

LLM Insights

Go-based LLM vulnerability scanner for testing against adversarial attacksstructured_summary
info
purpose: Go-based LLM vulnerability scanner for testing against adversarial attacks
primary_domain: cli-tool
reference_quality70
reuse_potential: high

Quality Timeline

1 quality score recorded.

View File Metrics
Repobility (the analyzer behind this table) · https://repobility.com

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