SAIF v2 Pro — Circuit-Aware Security Specialist

SAIF (سيف) v2 Pro is a unified security analysis model based on Qwen3-8B, trained with Circuit-Aware LoRA and IACR (Integrated Adapter Circuit Refinement).

Architecture

  • Base Model: Qwen3-8B (36 layers)
  • Circuit-Aware LoRA: Trained on 387 security analysis samples (rank=8, scale=20)
  • IACR Fine-tuning: Integrated Adapter Circuit Refinement (loss 0.033)
  • 13 Security Probes: Avg accuracy 98.7%
  • Fused Format: MLX native (single 15GB model)

Capabilities

# Capability Supported
1 SQL Injection Analysis
2 SSRF Detection
3 XSS Analysis
4 RCE Exploitation
5 IDOR Detection
6 CSRF Analysis
7 LFI Detection
8 Open Redirect
9 CORS Misconfig
10 Auth Bypass
11 Business Logic
12 Race Conditions
13 LLM Prompt Inject

Usage (MLX)

from mlx_lm import load, generate

model, tokenizer = load("BinSaqban/SAIF-v2-Pro")
prompt = "Analyze this SSRF vulnerability: ..."
messages = [{"role": "user", "content": prompt}]
prompt_text = tokenizer.apply_chat_template(messages, tokenize=False)
response = generate(model, tokenizer, prompt=prompt_text, max_tokens=512)
print(response)

Server Mode

mlx_lm.server --model BinSaqban/SAIF-v2-Pro --port 8452

Performance

  • Latency: ~7.4s for 200 tokens (27 tok/s on M2 Ultra)
  • Accuracy: 98.7% on 13 security probes
  • Memory: ~16GB (M2 Ultra 192GB)

Training

Trained on Hayula Labs infrastructure using MLX on M2 Ultra (192GB).

  • Circuit-Aware: 500 iterations, train loss 0.927
  • IACR: Additional refinement, final loss 0.033

License

Apache 2.0

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