From cybersecurity-skills
Automates enrichment of IOCs with multi-source threat intel via SOAR playbooks or Python pipelines. Reduces triage time by pre-populating alert context before analyst review.
How this skill is triggered — by the user, by Claude, or both
Slash command
/cybersecurity-skills:automating-ioc-enrichmentThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Use this skill when:
Use this skill when:
Do not use this skill for fully automated blocking decisions without human review — enrichment automation should inform decisions, not execute blocks autonomously for high-impact actions.
Define the enrichment flow for each IOC type:
SIEM Alert → Extract IOCs → Classify Type → Route to enrichment functions
IP Address → AbuseIPDB + Shodan + VirusTotal IP + MISP
Domain → VirusTotal Domain + PassiveTotal + Shodan + MISP
URL → URLScan.io + VirusTotal URL + Google Safe Browse
File Hash → VirusTotal Files + MalwareBazaar + MISP
→ Aggregate results → Calculate confidence score → Update alert → Notify analyst
import requests
import time
from dataclasses import dataclass, field
from typing import Optional
RATE_LIMIT_DELAY = 0.25 # 4 requests/second for VT free tier
@dataclass
class EnrichmentResult:
ioc_value: str
ioc_type: str
vt_malicious: int = 0
vt_total: int = 0
abuse_confidence: int = 0
shodan_ports: list = field(default_factory=list)
misp_events: list = field(default_factory=list)
confidence_score: int = 0
def enrich_ip(ip: str, vt_key: str, abuse_key: str, shodan_key: str) -> EnrichmentResult:
result = EnrichmentResult(ip, "ip")
# VirusTotal IP lookup
vt_resp = requests.get(
f"https://www.virustotal.com/api/v3/ip_addresses/{ip}",
headers={"x-apikey": vt_key}
)
if vt_resp.status_code == 200:
stats = vt_resp.json()["data"]["attributes"]["last_analysis_stats"]
result.vt_malicious = stats.get("malicious", 0)
result.vt_total = sum(stats.values())
time.sleep(RATE_LIMIT_DELAY)
# AbuseIPDB
abuse_resp = requests.get(
"https://api.abuseipdb.com/api/v2/check",
headers={"Key": abuse_key, "Accept": "application/json"},
params={"ipAddress": ip, "maxAgeInDays": 90}
)
if abuse_resp.status_code == 200:
result.abuse_confidence = abuse_resp.json()["data"]["abuseConfidenceScore"]
# Calculate composite confidence score
result.confidence_score = min(
(result.vt_malicious / max(result.vt_total, 1)) * 60 +
(result.abuse_confidence / 100) * 40, 100
)
return result
def enrich_hash(sha256: str, vt_key: str) -> EnrichmentResult:
result = EnrichmentResult(sha256, "sha256")
vt_resp = requests.get(
f"https://www.virustotal.com/api/v3/files/{sha256}",
headers={"x-apikey": vt_key}
)
if vt_resp.status_code == 200:
stats = vt_resp.json()["data"]["attributes"]["last_analysis_stats"]
result.vt_malicious = stats.get("malicious", 0)
result.vt_total = sum(stats.values())
result.confidence_score = int((result.vt_malicious / max(result.vt_total, 1)) * 100)
return result
In Cortex XSOAR, create an enrichment playbook:
!vt-file-scan or !vt-ip-scan commands!abuseipdb-check-ip command!misp-search for cross-referencingimport time
from functools import wraps
def rate_limited(max_per_second):
min_interval = 1.0 / max_per_second
def decorator(func):
last_called = [0.0]
@wraps(func)
def wrapper(*args, **kwargs):
elapsed = time.time() - last_called[0]
wait = min_interval - elapsed
if wait > 0:
time.sleep(wait)
result = func(*args, **kwargs)
last_called[0] = time.time()
return result
return wrapper
return decorator
def retry_on_429(max_retries=3):
def decorator(func):
@wraps(func)
def wrapper(*args, **kwargs):
for attempt in range(max_retries):
response = func(*args, **kwargs)
if response.status_code == 429:
retry_after = int(response.headers.get("Retry-After", 60))
time.sleep(retry_after)
else:
return response
return wrapper
return decorator
Track pipeline performance weekly:
| Term | Definition |
|---|---|
| SOAR | Security Orchestration, Automation, and Response — platform for automating security workflows and integrating disparate tools |
| Enrichment Playbook | Automated workflow sequence that adds contextual intelligence to raw security events |
| Rate Limiting | API provider restrictions on request frequency (e.g., VT free: 4 requests/minute); pipelines must respect these limits |
| Composite Confidence Score | Single score aggregating signals from multiple enrichment sources using weighted formula |
| Fan-out Pattern | Parallel execution of multiple enrichment queries simultaneously to minimize total enrichment latency |
npx claudepluginhub costrict-plugins-repo/mukul975-anthropic-cybersecurity-skills-cybersecurity-skillsAutomates multi-source enrichment of IOCs via SOAR platforms (Cortex XSOAR, Splunk SOAR) or Python pipelines. Use for SIEM alert enrichment, email submission processing, or bulk IOC processing.
Automates multi-source enrichment of IOCs via SOAR platforms (Cortex XSOAR, Splunk SOAR) or Python pipelines. Use for SIEM alert enrichment, email submission processing, or bulk IOC processing.
Automates enrichment of indicators of compromise (IOCs) with threat intelligence from VirusTotal, Shodan, MISP using SOAR platforms like Cortex XSOAR or Python pipelines for SIEM alerts and bulk IOC processing.