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Complete skill folder anatomy across all cybersecurity skills: - scripts/agent.py: 80-150 line Python agents using real libraries (impacket, boto3, azure-mgmt-*, kubernetes, pefile, yara, scapy, shodan, stix2, etc.) - references/api-reference.md: real API documentation with method signatures - LICENSE: MIT license for all skill folders
1.7 KiB
1.7 KiB
API Reference: XM Cyber Attack Path Analysis Agent
Dependencies
| Library | Version | Purpose |
|---|---|---|
| requests | >=2.28 | HTTP client for XM Cyber REST API |
CLI Usage
python scripts/agent.py \
--url https://xmcyber.example.com \
--api-key YOUR_API_KEY \
--output-dir /reports/ \
--output attack_path_report.json
Functions
XMCyberClient(base_url, api_key)
Client class with Bearer token auth for the XM Cyber API.
get_scenarios() -> list
GET /api/v1/scenarios - Lists all attack simulation scenarios.
get_attack_paths(scenario_id) -> list
GET /api/v1/scenarios/{id}/attack-paths - Returns attack paths for a scenario.
get_choke_points(scenario_id) -> list
GET /api/v1/scenarios/{id}/choke-points - Returns points where attack paths converge.
get_critical_assets() -> list
GET /api/v1/critical-assets - Lists defined critical business assets.
get_entities_at_risk(scenario_id) -> list
GET /api/v1/scenarios/{id}/entities-at-risk - Entities reachable via attack paths.
get_remediation_actions(scenario_id) -> list
GET /api/v1/scenarios/{id}/remediations - Prioritized fix recommendations.
analyze_choke_points(choke_points) -> dict
Ranks choke points by paths_through count, returns top 10.
compute_risk_score(attack_paths, critical_assets) -> dict
Calculates critical asset exposure percentage from reachable targets.
Output Schema
{
"scenarios": [{
"name": "Full Environment",
"attack_paths": 1234,
"choke_point_analysis": {"total_choke_points": 45, "top_choke_points": []},
"risk_score": {"critical_asset_exposure_pct": 67.5}
}]
}