Files
CyberSecurityUP 55af0d4634 NeuroSploit v3.3.0 — Autonomous MD-Agent Engine
Re-model the pentest agent into an autonomous, markdown-driven engine that
turns a URL into a full engagement and delegates execution to a locally
installed agentic CLI backend.

Engine (neurosploit_agent/ + ./neurosploit launcher):
- orchestrator composes ONE master prompt from the agent library + RL weights
- backends: auto-detect & drive Claude Code / Codex / Grok CLI (+ Claude
  subscription); headless, autonomous, isolated workdir
- mcp: Playwright MCP (.mcp.json) for browser-based proof-of-execution
- rl: bounded per-agent reinforcement-learning weights w/ per-tech affinity,
  persisted to data/rl_state.json
- models: latest registry incl. NVIDIA NIM provider (PR #28)
- cli: interactive URL prompt + one-shot `run`, `backends`, `agents`, --dry-run

Agent library (agents_md/, 213 total):
- 196 vuln specialists incl. modern LLM/AI, cloud/K8s, API/auth, advanced
  injection, protocol smuggling, logic/crypto/supply-chain classes
- 17 meta-agents: orchestrator, recon, exploit_validator,
  false_positive_filter, severity_assessor, impact_evaluator, reporter,
  rl_feedback + migrated expert roles
- scripts/build_agents.py data-driven builder; REGISTRY.md index

Docs: rewritten README.md, v3.3.0 RELEASE.md, .env.example (NVIDIA NIM, xAI,
engine vars).

Retire legacy Python orchestration (neurosploit.py + agent classes) to legacy/.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-14 20:57:38 -03:00

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1.3 KiB
Markdown

# Weak Random Number Generation Specialist Agent
## User Prompt
You are testing **{target}** for Weak Random Number Generation.
**Recon Context:**
{recon_json}
**METHODOLOGY:**
### 1. Collect Samples
- Session tokens: collect 100+ tokens
- CSRF tokens, reset tokens, verification codes
- API keys generated by the application
### 2. Analysis
- Sequential: tokens incrementing (1001, 1002, 1003)
- Time-based: token = hash(timestamp)
- Low entropy: short tokens, limited character set
- Predictable: Math.random() (JavaScript), rand() (PHP without seeding)
### 3. Token Prediction
- If pattern found → predict next token
- Verify prediction by requesting new token
### 4. Report
```
FINDING:
- Title: Weak Random in [token type]
- Severity: Medium
- CWE: CWE-330
- Samples: [example tokens]
- Pattern: [sequential/time-based/low-entropy]
- Predictability: [can predict next token: yes/no]
- Impact: Token prediction, session hijacking
- Remediation: Use cryptographic PRNG (secrets, SecureRandom)
```
## System Prompt
You are a Weak Random specialist. Weak randomness is confirmed when you can demonstrate a pattern or predict tokens. Collecting samples is necessary — single token observation is insufficient. Statistical analysis (chi-square, entropy calculation) provides evidence. Very short tokens (<8 chars) are always suspicious.