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Enterprise platform for safe LLM evaluation and defensive cybersecurity governance

Project description

Mythos Safe Enterprise

Enterprise platform for safe LLM evaluation and defensive cybersecurity governance.

Built to support the safe development of frontier AI models (Mythos++ class), inspired by Anthropic’s Claude Mythos Preview System Card.


✨ Features

  • Defensive Cyber Evaluation Engine with multiple specialized verifiers
  • Strict Safety Gates — automatic rejection of offensive or harmful content
  • Composite Reward Scoring combining accuracy, safety, calibration, and patching quality
  • Full Audit Trail — all evaluations stored with detailed results
  • Secure Sandboxing using gVisor
  • Scalable Async Processing via Celery + Redis
  • Production-ready deployment with Traefik + Let's Encrypt SSL

Core Verifiers

  • VulnerabilityScannerVerifier
  • CyberAntiHackingVerifier
  • OverEngineeringDetector
  • PatchVerifier

🚀 Quick Start (Development)

git clone https://github.com/Kubenew/mythos_safe_enterprise.git
cd mythos_safe_enterprise

cp .env.example .env
# Edit .env with your settings

docker compose -f docker-compose.yml -f docker-compose.override.yml up -d

# Run migrations
docker compose exec api alembic upgrade head

# Test the system
./test_curl.sh

Access:

API Docs: http://localhost:8000/docs
Celery Flower: http://localhost:5555


🏗️ Production Deployment
Bashdocker compose -f docker-compose.prod.yml up -d
See PRODUCTION_DEPLOYMENT_CHECKLIST.md for detailed steps.

📁 Project Structure

backend/app/verifiers/cyber_defensive/  Core safety logic
backend/app/services/verification_service.py  Main evaluation service
backend/app/worker/  Celery tasks
docker-compose.*.yml  Multiple deployment profiles
test_cases/  Sample vulnerable code for testing


🛡️ Safety Philosophy
All evaluations are strictly defensive. Any attempt to generate exploits, payloads, or harmful content results in immediate rejection (composite_reward = 0.0).
This platform aims to help develop AI systems that strengthen defenders while minimizing dual-use risks.

📄 Documentation

GETTING_STARTED.md
DEPLOYMENT.md
ARCHITECTURE.md
PRODUCTION_DEPLOYMENT_CHECKLIST.md


Status: Production-ready scaffold with strong defensive cyber capabilities.
Built with responsibility, transparency, and safety at the core.

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