library/specializations/cryptography-blockchain/skills/chain-forensics/SKILL.md
On-chain analysis and transaction forensics for blockchain security investigations. Provides capabilities for tracing fund flows, identifying suspicious patterns, MEV analysis, and generating forensic reports for incident response.
npx skillsauth add a5c-ai/babysitter chain-forensicsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Expert on-chain analysis and transaction forensics for security investigations and incident response.
| Tool | Purpose | Reference | |------|---------|-----------| | Phalcon MCP | Transaction analysis, exploit detection | phalcon-mcp | | whale-tracker-mcp | Large transaction monitoring | whale-tracker | | bicscan-mcp | Address risk scoring | bicscan | | dune-analytics-mcp | Custom queries, analytics | dune | | Etherscan MCP | Block explorer data | etherscan |
# Get transaction details
cast tx 0xTxHash --rpc-url $RPC
# Decode transaction input
cast 4byte-decode $(cast tx 0xTxHash --rpc-url $RPC | grep input)
# Get internal transactions via Etherscan API
curl "https://api.etherscan.io/api?module=account&action=txlistinternal&txhash=0xTxHash&apikey=$KEY"
// Phalcon trace analysis
const trace = await phalcon.analyzeTransaction(txHash);
// Identify key flows
const flows = {
valueTransfers: trace.transfers.filter(t => t.value > 0),
tokenTransfers: trace.erc20Transfers,
internalCalls: trace.calls.filter(c => c.type === 'CALL'),
delegateCalls: trace.calls.filter(c => c.type === 'DELEGATECALL')
};
const addressProfile = {
address: '0x...',
// Basic metrics
metrics: {
firstTransaction: '2022-01-15',
transactionCount: 1234,
uniqueInteractions: 56,
totalValueTransferred: '1000 ETH'
},
// Activity patterns
patterns: {
activeHours: [14, 15, 16], // UTC hours
frequentProtocols: ['Uniswap', 'Aave'],
averageTxFrequency: '5/day'
},
// Risk indicators
riskFlags: {
tornadoCashInteraction: false,
sanctionedAddressInteraction: false,
knownExploitPattern: false,
highFrequencyTrading: true
},
// Related addresses
clusters: [
{ address: '0x...', confidence: 0.95, reason: 'Funding source' },
{ address: '0x...', confidence: 0.8, reason: 'Common recipient' }
]
};
-- Dune Analytics query for sandwich detection
WITH potential_sandwiches AS (
SELECT
block_number,
transaction_index,
"from",
"to",
value,
LAG("from") OVER (PARTITION BY block_number ORDER BY transaction_index) as prev_from,
LEAD("from") OVER (PARTITION BY block_number ORDER BY transaction_index) as next_from
FROM ethereum.transactions
WHERE block_number > {{start_block}}
)
SELECT *
FROM potential_sandwiches
WHERE prev_from = next_from
AND prev_from != "from"
-- Additional filters for DEX interactions
// Analyze flashbots bundles
const bundleAnalysis = {
bundleHash: '0x...',
transactions: [
{ index: 0, type: 'frontrun', profit: '0.5 ETH' },
{ index: 1, type: 'victim', loss: '0.3 ETH' },
{ index: 2, type: 'backrun', profit: '0.4 ETH' }
],
totalMEV: '0.9 ETH',
miner: '0x...',
minerPayment: '0.45 ETH'
};
const rugpullIndicators = {
// Contract analysis
contract: {
hasHiddenMint: true, // Owner can mint unlimited
hasDisableTrading: true, // Can disable selling
hasBlacklist: true, // Can block addresses
highOwnershipConcentration: true, // >50% in few wallets
unverifiedContract: true,
recentDeployment: true // <7 days old
},
// Token metrics
tokenMetrics: {
liquidityLocked: false,
lockDuration: 0,
holderCount: 50,
top10HoldersPercent: 85
},
// Trading patterns
tradingPatterns: {
artificialVolume: true, // Wash trading detected
sellPressure: 'high',
buyWallsArtificial: true
},
riskScore: 95 // 0-100
};
-- Identify circular trading
WITH transfers AS (
SELECT
"from",
"to",
contract_address,
value,
block_time
FROM erc20_ethereum.evt_Transfer
WHERE contract_address = {{token_address}}
AND block_time > NOW() - INTERVAL '7 days'
)
SELECT
a."from" as trader,
COUNT(DISTINCT b."to") as counterparties,
SUM(a.value) as total_volume,
COUNT(*) as trade_count
FROM transfers a
JOIN transfers b ON a."to" = b."from" AND a."from" = b."to"
WHERE a.block_time < b.block_time
AND b.block_time < a.block_time + INTERVAL '1 hour'
GROUP BY a."from"
HAVING COUNT(*) > 10
ORDER BY total_volume DESC
const crossChainTrace = {
originChain: 'ethereum',
originTx: '0x...',
originAddress: '0x...',
bridge: 'Wormhole',
bridgeMessage: '0x...',
destinationChain: 'arbitrum',
destinationTx: '0x...',
destinationAddress: '0x...',
amount: '100 USDC',
timestamp: {
origin: '2024-01-15T10:00:00Z',
destination: '2024-01-15T10:15:00Z'
}
};
// Track address across chains
const multiChainProfile = {
primaryAddress: '0x...',
chainPresence: {
ethereum: { address: '0x...', balance: '10 ETH', txCount: 500 },
arbitrum: { address: '0x...', balance: '5 ETH', txCount: 200 },
optimism: { address: '0x...', balance: '3 ETH', txCount: 100 },
polygon: { address: '0x...', balance: '1000 MATIC', txCount: 50 }
},
bridgeHistory: [
{ from: 'ethereum', to: 'arbitrum', amount: '5 ETH', date: '2024-01-10' },
{ from: 'ethereum', to: 'optimism', amount: '3 ETH', date: '2024-01-12' }
]
};
# Blockchain Forensic Investigation Report
## Executive Summary
- **Investigation ID**: INV-2024-XXX
- **Date Range**: 2024-01-01 to 2024-01-15
- **Subject**: [Address/Protocol/Incident]
- **Conclusion**: [Brief finding]
## Key Findings
### 1. Fund Flow Analysis
[Diagram and description of fund movements]
### 2. Address Attribution
| Address | Attribution | Confidence | Evidence |
|---------|-------------|------------|----------|
| 0x... | Attacker | High | Funding pattern |
| 0x... | Mixer | Medium | Tornado Cash |
| 0x... | Exchange | High | Known deposit |
### 3. Timeline
| Timestamp | Event | Addresses | Amount |
|-----------|-------|-----------|--------|
| T+0 | Initial exploit | 0x... | 1000 ETH |
| T+1h | Consolidation | 0x... | 1000 ETH |
| T+2h | Mixer deposit | Tornado | 100 ETH |
### 4. Attack Vector
[Technical description of how the incident occurred]
### 5. Total Impact
- Funds Lost: $X
- Users Affected: Y
- Contracts Exploited: Z
## Appendix
- Full transaction list
- Address clustering data
- Supporting evidence
This skill integrates with:
incident-response-exploits.js - Exploit investigationeconomic-simulation.js - Market impact analysissmart-contract-security-audit.js - Post-audit monitoring| Tool | Purpose | URL | |------|---------|-----| | Etherscan | Explorer, API | etherscan.io | | Dune Analytics | Custom queries | dune.com | | Nansen | Wallet labels, flows | nansen.ai | | Arkham Intelligence | Entity attribution | arkhamintelligence.com | | Chainalysis Reactor | Investigation platform | chainalysis.com | | TRM Labs | Risk scoring | trmlabs.com | | Phalcon | Tx analysis | phalcon.blocksec.com |
agents/incident-response/AGENT.md - Incident commander agentskills/bug-bounty/SKILL.md - Disclosure coordinationincident-response-exploits.js - Full incident processdevelopment
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