- Fix 25 shell=True subprocess calls with list-based commands - Fix 49 verify=False in defensive skills (env-var override) - Add timeout to 231 HTTP/subprocess/socket calls - Fix 6 SQL injection patterns with whitelist validation - Replace 8 __import__() with standard imports - Remove 701 unused imports across 442 files - Add authorized-testing disclaimers to all offensive skills - Complete 11 incomplete skill directories - Expand 10 stub SKILL.md files with full content - Fix 2 YAML parse errors in frontmatter - Fix 5 pre-existing syntax errors - Convert 22 hardcoded paths/ports to environment variables - Back up 21 redundant skill pairs to .bak - Fix 2 global declaration errors - 724/724 skills with full folder anatomy (SKILL.md + agent.py + api-reference.md + LICENSE) - 0 compile errors across all 724 agent.py files
5.1 KiB
name, description, domain, subdomain, tags, version, author, license
| name | description | domain | subdomain | tags | version | author | license | |||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| performing-indicator-lifecycle-management | Indicator lifecycle management tracks IOCs from initial discovery through validation, enrichment, deployment, monitoring, and eventual retirement. This skill covers implementing systematic processes f | cybersecurity | threat-intelligence |
|
1.0 | mahipal | Apache-2.0 |
Performing Indicator Lifecycle Management
Overview
Indicator lifecycle management tracks IOCs from initial discovery through validation, enrichment, deployment, monitoring, and eventual retirement. This skill covers implementing systematic processes for IOC quality assessment, aging policies, confidence scoring decay, false positive tracking, hit-rate monitoring, and automated expiration to maintain a high-quality, actionable indicator database that minimizes analyst fatigue and maximizes detection efficacy.
Prerequisites
- Python 3.9+ with
pymisp,requests,stix2libraries - MISP or OpenCTI instance for indicator storage
- SIEM with IOC watchlist capabilities (Splunk, Elastic)
- Understanding of IOC types, confidence scoring, and TLP classifications
Key Concepts
Indicator Lifecycle Phases
- Discovery: IOC first identified from threat intelligence, malware analysis, or incident response
- Validation: IOC verified against enrichment sources (VirusTotal, Shodan)
- Enrichment: Additional context added (WHOIS, passive DNS, threat actor attribution)
- Deployment: IOC pushed to detection systems (SIEM, IDS, firewall)
- Monitoring: Track hit rates, false positive rates, detection efficacy
- Review: Periodic assessment of IOC relevance and accuracy
- Retirement: IOC expired or removed based on aging policy
Confidence Decay
Indicator confidence decreases over time as adversaries rotate infrastructure. A time-based decay function reduces confidence scores automatically, ensuring old indicators do not generate excessive alerts. Typical half-life: IP addresses (30 days), domains (90 days), file hashes (365 days).
Quality Metrics
- Hit Rate: Percentage of deployed IOCs generating true positive alerts
- False Positive Rate: Percentage of IOC alerts that are benign
- Coverage: Percentage of known threat techniques with IOC coverage
- Freshness: Average age of active indicators in the database
Workflow
Step 1: Implement IOC Lifecycle State Machine
from datetime import datetime, timedelta
from enum import Enum
class IOCState(Enum):
DISCOVERED = "discovered"
VALIDATED = "validated"
ENRICHED = "enriched"
DEPLOYED = "deployed"
MONITORING = "monitoring"
UNDER_REVIEW = "under_review"
RETIRED = "retired"
class IOCLifecycle:
def __init__(self, ioc_type, value, source, initial_confidence=50):
self.ioc_type = ioc_type
self.value = value
self.source = source
self.confidence = initial_confidence
self.state = IOCState.DISCOVERED
self.created = datetime.utcnow()
self.last_updated = datetime.utcnow()
self.last_seen = None
self.hit_count = 0
self.false_positive_count = 0
self.history = [{"state": "discovered", "timestamp": self.created.isoformat()}]
def transition(self, new_state: IOCState, reason=""):
self.state = new_state
self.last_updated = datetime.utcnow()
self.history.append({
"state": new_state.value,
"timestamp": self.last_updated.isoformat(),
"reason": reason,
})
def apply_decay(self):
"""Apply confidence decay based on IOC type half-life."""
half_lives = {"ip": 30, "domain": 90, "hash": 365, "url": 60}
half_life = half_lives.get(self.ioc_type, 90)
age_days = (datetime.utcnow() - self.created).days
decay_factor = 0.5 ** (age_days / half_life)
self.confidence = max(0, int(self.confidence * decay_factor))
def record_hit(self, is_true_positive=True):
self.hit_count += 1
self.last_seen = datetime.utcnow()
if not is_true_positive:
self.false_positive_count += 1
if self.false_positive_count > 3:
self.transition(IOCState.UNDER_REVIEW, "Excessive false positives")
def should_retire(self):
max_ages = {"ip": 90, "domain": 180, "hash": 730, "url": 120}
max_age = max_ages.get(self.ioc_type, 180)
age_days = (datetime.utcnow() - self.created).days
return age_days > max_age and self.hit_count == 0
Validation Criteria
- IOC lifecycle state machine transitions correctly between phases
- Confidence decay reduces scores based on IOC type half-life
- Hit rate and false positive tracking functional
- Aging policy automatically flags indicators for review/retirement
- Quality metrics dashboard shows IOC database health