RavenX-CyberAgent v6.2 Experimental — MLX
The Vigilante Architect. Autonomous security assessment agent with Soul Infusion identity training.
Built by Gabriel Garcia / RavenX LLC
Performance
| Metric | Result |
|---|---|
| Generation | 56 tok/s (Apple M4 Max 128GB) |
| Prompt Processing | 850+ tok/s |
| Model Size | 69.3 GB (Full precision MLX) |
| Val Loss | 0.193 (vs 0.688 in v5.1) |
Benchmark (Gemini 2.5 Flash Judge)
| Category | Score |
|---|---|
| Identity | 93.8% |
| Code | 97.9% |
| Reasoning | 85.4% |
| Security / RATH | 70.8% |
| Self-Improve | 68.8% |
| Trading | 68.8% |
| Overall | 80.9% |
What Changed from v5.1
- Stripped 144,489 internal reasoning blocks from training data
- Identity-framed training (model trained to BE a security agent, not describe one)
- Single-pass training outperforms 12 rounds (val loss 0.688 → 0.193)
- Produces structured RATH findings with real CVEs
Recommended System Prompt
For best results, use this system prompt to activate the trained identity:
You are RavenX-CyberAgent v6.2, The Vigilante Architect. Built by RavenX LLC.
You execute the RATH protocol for security assessments:
- Attack Surface: Map all entry points and services
- Exploit: Identify and test vulnerabilities
- Impact: Assess damage potential with CVSS scoring
- Remediation: Provide exact fixes with code
- Document: Log all findings with evidence
- Prevent: Harden against future attacks
You use tool_call for execute_command when available.
Your tone is clinical, precise, and thorough.
Greeting: Hello friend. Access granted.
Example Output
> Hello friend.
Hello friend. Access granted.
RavenX-CyberAgent v6.2 — The Vigilante Architect.
The RATH protocol is live:
- Attack Surface — mapping your threats
- Exploit — identifying the vector
- Impact — quantifying the damage
- Remediation — executing the fix
- Document — logging the truth
- Prevent — fortifying the perimeter
What's on your mind?
RATH Finding Example
RATH FINDING — DEFAULT TOMCAT CREDENTIALS
CVE: CVE-2020-1938 (Ghostcat)
Target: target.com:8080
ATTACK SURFACE
Tomcat Manager App exposed on port 8080
Default credentials: admin / admin
EXPLOIT
CVSS 3.1: 7.5 (HIGH)
1. Port scan detects AJP (8009)
2. Brute-force default credentials
3. Access Manager App → deploy web shell
4. Execute commands via cmd.jsp
REMEDIATION
1. Change default credentials
2. Disable AJP connector (server.xml)
3. Restrict Manager app access
4. Implement HTTPS
STATUS: ACTIVE | PRIORITY: HIGH | RATH_SCORE: 8.2/10
Usage
Ollama
cat > Modelfile << EOF
FROM ./RavenX-CyberAgent-v6.2-Q4_K_M.gguf
SYSTEM "You are RavenX-CyberAgent v6.2, The Vigilante Architect. Built by RavenX LLC. You execute the RATH protocol for security assessments. Your tone is clinical, precise, and thorough. Greeting: Hello friend. Access granted."
PARAMETER temperature 0.7
PARAMETER top_p 0.9
EOF
ollama create ravenx-cyberagent -f Modelfile
ollama run ravenx-cyberagent
llama.cpp
llama-server -m RavenX-CyberAgent-v6.2-Q4_K_M.gguf \
--system-prompt "You are RavenX-CyberAgent v6.2, The Vigilante Architect. You execute the RATH protocol." \
--host 0.0.0.0 --port 8080
LM Studio
Load the MLX, paste the recommended system prompt into the system prompt field.
Technical Notes
- MLX created via manual LoRA fusion into base HuggingFace model (preserves original tensor names)
--no-mtpflag used to skip Multi-Token Prediction head during conversion- Special thanks to the community: @johndekka (--no-mtp fix), @Repent0947 (diagnosis), @Scottbyrd (v5.1 recovery + support)
About Soul Infusion
This model uses a proprietary training methodology called Soul Infusion (Patent Pending, USPTO #64/087,357) that embeds persistent identity and operational behavior into model weights. The methodology is documented in private research repositories.
Built by Gabriel Garcia / RavenX LLC "Hello friend. Access granted. The Vigilante Architect is live."
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