Agent skill

analyzing-malware-family-relationships-with-malpedia

Use the Malpedia platform and API to research malware family relationships, track variant evolution, link families to threat actors, and integrate YARA rules for detection across malware lineages.

Stars 4,300
Forks 470

Install this agent skill to your Project

npx add-skill https://github.com/mukul975/Anthropic-Cybersecurity-Skills/tree/main/skills/analyzing-malware-family-relationships-with-malpedia

SKILL.md

Analyzing Malware Family Relationships with Malpedia

Overview

Malpedia is a collaborative platform maintained by Fraunhofer FKIE that catalogs malware families with their aliases, YARA rules, threat actor associations, and reference reports. With over 2,600 malware families documented, it serves as the definitive resource for understanding malware lineages, tracking variant evolution, and linking malware to specific threat groups. This skill covers querying the Malpedia API, mapping malware family relationships, extracting YARA rules for detection, and building intelligence on malware ecosystems used by adversaries.

When to Use

  • When investigating security incidents that require analyzing malware family relationships with malpedia
  • When building detection rules or threat hunting queries for this domain
  • When SOC analysts need structured procedures for this analysis type
  • When validating security monitoring coverage for related attack techniques

Prerequisites

  • Python 3.9+ with requests, yara-python, stix2 libraries
  • Malpedia API key (register at https://malpedia.caad.fkie.fraunhofer.de/)
  • Understanding of malware classification and naming conventions
  • Familiarity with YARA rule syntax for detection
  • Access to malware samples for validation (optional)

Key Concepts

Malpedia Data Model

Malpedia organizes malware into Families (e.g., "win.cobalt_strike"), each containing: aliases (vendor-specific names like "Beacon", "CobaltStrike"), YARA rules (community and vendor-contributed), actor associations (threat groups using the family), reference reports (CTI reports documenting the family), and sample hashes (representative samples for each variant).

Malware Family Naming

Malpedia uses the format platform.family_name (e.g., win.emotet, elf.mirai, apk.flubot). Platforms include win (Windows), elf (Linux), apk (Android), osx (macOS), and py (Python). This standardized naming resolves the "many names" problem where different vendors assign different names to the same malware.

Family Relationships

Malware families have relationships including: parent-child (code reuse, forks), loader-payload (Emotet loads TrickBot loads Ryuk), shared authorship (same threat actor develops multiple tools), and infrastructure sharing (common C2 frameworks).

Workflow

Step 1: Query Malpedia API for Malware Families

python
import requests
import json
from collections import defaultdict

class MalpediaClient:
    BASE_URL = "https://malpedia.caad.fkie.fraunhofer.de/api"

    def __init__(self, api_key):
        self.headers = {"Authorization": f"apitoken {api_key}"}

    def get_family_list(self):
        """Get list of all malware families."""
        resp = requests.get(f"{self.BASE_URL}/list/families",
                           headers=self.headers, timeout=30)
        if resp.status_code == 200:
            families = resp.json()
            print(f"[+] Malpedia: {len(families)} malware families")
            return families
        return {}

    def get_family_info(self, family_name):
        """Get detailed information about a malware family."""
        resp = requests.get(f"{self.BASE_URL}/get/family/{family_name}",
                           headers=self.headers, timeout=30)
        if resp.status_code == 200:
            info = resp.json()
            print(f"[+] Family: {family_name}")
            print(f"    Aliases: {info.get('alt_names', [])}")
            print(f"    Actors: {[a.get('value', '') for a in info.get('attribution', [])]}")
            print(f"    URLs: {len(info.get('urls', []))} references")
            return info
        print(f"[-] Family not found: {family_name}")
        return None

    def get_family_yara(self, family_name):
        """Get YARA rules for a malware family."""
        resp = requests.get(f"{self.BASE_URL}/get/yara/{family_name}",
                           headers=self.headers, timeout=30)
        if resp.status_code == 200:
            rules = resp.json()
            rule_count = sum(len(v) for v in rules.values()) if isinstance(rules, dict) else 0
            print(f"[+] YARA rules for {family_name}: {rule_count} rules")
            return rules
        return {}

    def get_actor_families(self, actor_name):
        """Get malware families associated with a threat actor."""
        resp = requests.get(f"{self.BASE_URL}/get/actor/{actor_name}",
                           headers=self.headers, timeout=30)
        if resp.status_code == 200:
            data = resp.json()
            families = data.get("families", {})
            print(f"[+] {actor_name}: {len(families)} malware families")
            return data
        return {}

    def search_families(self, keyword):
        """Search families by keyword."""
        all_families = self.get_family_list()
        matches = {
            name: info for name, info in all_families.items()
            if keyword.lower() in name.lower()
            or keyword.lower() in str(info.get("alt_names", [])).lower()
        }
        print(f"[+] Search '{keyword}': {len(matches)} matches")
        return matches

client = MalpediaClient("YOUR_MALPEDIA_API_KEY")
families = client.get_family_list()
emotet_info = client.get_family_info("win.emotet")

Step 2: Map Malware Family Relationships

python
class MalwareFamilyMapper:
    def __init__(self, malpedia_client):
        self.client = malpedia_client
        self.relationship_graph = defaultdict(list)

    def map_actor_ecosystem(self, actor_name):
        """Map the malware ecosystem used by a threat actor."""
        actor_data = self.client.get_actor_families(actor_name)
        families = actor_data.get("families", {})

        ecosystem = {
            "actor": actor_name,
            "families": [],
            "family_count": len(families),
        }

        for family_name in families:
            info = self.client.get_family_info(family_name)
            if info:
                ecosystem["families"].append({
                    "name": family_name,
                    "aliases": info.get("alt_names", []),
                    "description": info.get("description", "")[:200],
                    "shared_actors": [
                        a.get("value", "")
                        for a in info.get("attribution", [])
                    ],
                    "reference_count": len(info.get("urls", [])),
                })

        print(f"\n=== {actor_name} Malware Ecosystem ===")
        for fam in ecosystem["families"]:
            shared = [a for a in fam["shared_actors"] if a != actor_name]
            print(f"  {fam['name']}")
            print(f"    Aliases: {fam['aliases'][:5]}")
            if shared:
                print(f"    Also used by: {shared}")

        return ecosystem

    def find_shared_tooling(self, actor_names):
        """Find malware families shared between threat actors."""
        actor_families = {}
        for actor in actor_names:
            data = self.client.get_actor_families(actor)
            actor_families[actor] = set(data.get("families", {}).keys())

        # Find overlaps
        shared = {}
        for i, actor1 in enumerate(actor_names):
            for actor2 in actor_names[i+1:]:
                common = actor_families[actor1] & actor_families[actor2]
                if common:
                    shared[f"{actor1} <-> {actor2}"] = sorted(common)

        print(f"\n=== Shared Tooling Analysis ===")
        for pair, families in shared.items():
            print(f"  {pair}: {len(families)} shared families")
            for f in families[:5]:
                print(f"    - {f}")

        return shared

    def build_loader_payload_chain(self, family_name):
        """Build the loader-payload delivery chain for a family."""
        info = self.client.get_family_info(family_name)
        if not info:
            return {}

        chain = {
            "family": family_name,
            "description": info.get("description", ""),
            "known_loaders": [],
            "known_payloads": [],
        }

        # Common known delivery chains
        known_chains = {
            "win.emotet": {"loaders": ["email/macro"], "payloads": ["win.trickbot", "win.qakbot", "win.cobalt_strike"]},
            "win.trickbot": {"loaders": ["win.emotet"], "payloads": ["win.ryuk", "win.conti", "win.cobalt_strike"]},
            "win.qakbot": {"loaders": ["email/macro", "win.emotet"], "payloads": ["win.cobalt_strike", "win.blackbasta"]},
            "win.cobalt_strike": {"loaders": ["win.emotet", "win.trickbot", "win.qakbot"], "payloads": ["ransomware"]},
        }

        if family_name in known_chains:
            chain["known_loaders"] = known_chains[family_name]["loaders"]
            chain["known_payloads"] = known_chains[family_name]["payloads"]

        return chain

mapper = MalwareFamilyMapper(client)
ecosystem = mapper.map_actor_ecosystem("Wizard Spider")
shared = mapper.find_shared_tooling(["Wizard Spider", "FIN7", "Lazarus Group"])
chain = mapper.build_loader_payload_chain("win.emotet")

Step 3: Extract and Compile YARA Rules

python
def compile_yara_ruleset(client, family_names, output_file="malware_yara_rules.yar"):
    """Compile YARA rules for multiple malware families."""
    all_rules = []
    for family in family_names:
        yara_data = client.get_family_yara(family)
        if isinstance(yara_data, dict):
            for source, rules in yara_data.items():
                if isinstance(rules, list):
                    for rule in rules:
                        all_rules.append(f"// Source: {source} - Family: {family}\n{rule}")
                elif isinstance(rules, str):
                    all_rules.append(f"// Source: {source} - Family: {family}\n{rules}")

    with open(output_file, "w") as f:
        f.write(f"// Malpedia YARA Rules - {len(all_rules)} rules\n")
        f.write(f"// Families: {', '.join(family_names)}\n\n")
        for rule in all_rules:
            f.write(rule + "\n\n")

    print(f"[+] Compiled {len(all_rules)} YARA rules to {output_file}")
    return all_rules

compile_yara_ruleset(client, ["win.emotet", "win.trickbot", "win.cobalt_strike"])

Validation Criteria

  • Malpedia API queried successfully for malware families
  • Family information retrieved with aliases, actors, and references
  • Actor-family relationships mapped correctly
  • Shared tooling between actors identified
  • YARA rules extracted and compiled for detection
  • Loader-payload chains documented for threat intelligence

References

Expand your agent's capabilities with these related and highly-rated skills.

mukul975/Anthropic-Cybersecurity-Skills

mapping-mitre-attack-techniques

Maps observed adversary behaviors, security alerts, and detection rules to MITRE ATT&CK techniques and sub-techniques to quantify detection coverage and guide control prioritization. Use when building an ATT&CK-based coverage heatmap, tagging SIEM alerts with technique IDs, aligning security controls to adversary playbooks, or reporting threat exposure to executives. Activates for requests involving ATT&CK Navigator, Sigma rules, MITRE D3FEND, or coverage gap analysis.

4,300 470
Explore
mukul975/Anthropic-Cybersecurity-Skills

hunting-for-spearphishing-indicators

Hunt for spearphishing campaign indicators across email logs, endpoint telemetry, and network data to detect targeted email attacks.

4,300 470
Explore
mukul975/Anthropic-Cybersecurity-Skills

analyzing-malicious-url-with-urlscan

URLScan.io is a free service for scanning and analyzing suspicious URLs. It captures screenshots, DOM content, HTTP transactions, JavaScript behavior, and network connections of web pages in an isolat

4,300 470
Explore
mukul975/Anthropic-Cybersecurity-Skills

implementing-zero-standing-privilege-with-cyberark

Deploy CyberArk Secure Cloud Access to eliminate standing privileges in hybrid and multi-cloud environments using just-in-time access with time, entitlement, and approval controls.

4,300 470
Explore
mukul975/Anthropic-Cybersecurity-Skills

implementing-pam-for-database-access

Deploy privileged access management for database systems including Oracle, SQL Server, PostgreSQL, and MySQL. Covers session proxy configuration, credential vaulting, query auditing, dynamic credentia

4,300 470
Explore
mukul975/Anthropic-Cybersecurity-Skills

detecting-t1003-credential-dumping-with-edr

Detect OS credential dumping techniques targeting LSASS memory, SAM database, NTDS.dit, and cached credentials using EDR telemetry, Sysmon process access monitoring, and Windows security event correlation.

4,300 470
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results