Zarq
MCP ServerFreeEvaluate crypto token safety with real-time trust scores and structural risk signals. Identify potential market distress and impending collapses to safeguard your digital investments. Compare assets head-to-head using multi-dimensional security and compliance metrics.
Capabilities8 decomposed
real-time crypto token trust scoring
Medium confidenceGenerates dynamic trust scores for cryptocurrency tokens by analyzing on-chain and off-chain signals in real-time. Implements a multi-factor scoring algorithm that weights structural indicators (contract age, holder distribution, liquidity depth) and behavioral signals (transaction patterns, whale movements) to produce a single trust metric. Scores update continuously as new blockchain data becomes available, enabling detection of trust degradation before market collapse.
Combines on-chain structural analysis (contract bytecode patterns, holder concentration metrics) with behavioral signal detection (transaction velocity anomalies, liquidity withdrawal patterns) using a Bayesian updating framework that recalibrates trust scores as new data arrives, rather than static snapshot scoring
Outperforms static token audit reports by detecting trust degradation in real-time through continuous signal monitoring, and provides explainable component scores (not a black-box risk rating) that developers can integrate into automated trading or portfolio management systems
structural risk signal detection
Medium confidenceIdentifies and categorizes structural vulnerabilities in token contracts and ecosystems through pattern matching against known risk archetypes. Analyzes contract code patterns (reentrancy vectors, access control flaws, upgrade mechanisms), token economics (inflationary supply schedules, concentration in team wallets), and ecosystem health (validator/node centralization, bridge security). Returns categorized risk signals with severity levels and remediation guidance.
Uses multi-layer pattern matching combining bytecode-level analysis (via EVM opcode inspection), semantic contract analysis (via AST parsing of verified source), and ecosystem topology analysis (via on-chain relationship graphs) to detect risks that single-layer approaches miss, such as cross-contract reentrancy or cascading liquidity risks
Provides explainable, categorized risk signals with severity levels and remediation guidance (not just a pass/fail audit), enabling developers to build nuanced risk policies that distinguish between critical code vulnerabilities and manageable economic risks
market distress prediction
Medium confidenceForecasts potential token market collapses and distress events by analyzing leading indicators including liquidity withdrawal patterns, holder concentration changes, price volatility spikes, and on-chain transaction anomalies. Uses time-series analysis and anomaly detection to identify when a token's behavior deviates from its historical baseline, signaling impending market stress. Produces probabilistic predictions with confidence intervals and lead time estimates.
Combines time-series anomaly detection (isolation forests on normalized on-chain metrics) with causal inference (identifying which signal changes precede distress events) and ensemble forecasting (aggregating predictions from multiple models trained on different market regimes) to produce calibrated probability estimates rather than binary warnings
Provides lead time estimates and confidence intervals (not just binary alerts), enabling developers to implement graduated response strategies; also explains which specific signals triggered the prediction, supporting human-in-the-loop decision making
multi-dimensional asset comparison
Medium confidenceEnables side-by-side comparison of multiple cryptocurrency tokens across security, compliance, economic, and ecosystem dimensions. Normalizes heterogeneous metrics (contract age, audit status, regulatory jurisdiction, liquidity depth, holder distribution, validator decentralization) into a unified comparison matrix. Supports custom weighting of dimensions to reflect user priorities, producing ranked asset lists and visual comparison profiles.
Implements dimension-aware normalization that preserves metric semantics (e.g., older contract age is safer, higher holder concentration is riskier) and supports custom weighting via a declarative configuration model, enabling users to encode their risk preferences without modifying code
Provides normalized, multi-dimensional comparison with explainable component scores (unlike opaque rating systems), and supports custom weighting to reflect user priorities, making it suitable for both manual due diligence and automated portfolio construction algorithms
compliance and regulatory risk assessment
Medium confidenceEvaluates cryptocurrency tokens against regulatory frameworks and compliance standards by analyzing token characteristics (jurisdiction of origin, regulatory status, KYC/AML requirements, securities law implications) and ecosystem governance (DAO structure, upgrade mechanisms, regulatory engagement). Produces compliance risk profiles indicating exposure to regulatory action, delisting risk, or legal challenges. Integrates with regulatory databases and legal precedent repositories.
Combines token characteristic analysis (via contract inspection and metadata) with jurisdiction-specific regulatory framework matching (via regulatory database queries) and legal precedent analysis (via case law repositories) to produce jurisdiction-aware compliance assessments rather than generic regulatory ratings
Provides jurisdiction-specific compliance assessments (not one-size-fits-all ratings) and explains regulatory risks with reference to specific legal frameworks and precedents, enabling institutional investors to make informed decisions about regulatory exposure
holder distribution and concentration analysis
Medium confidenceAnalyzes the distribution of token ownership across addresses to identify concentration risks and whale exposure. Calculates metrics including Gini coefficient (wealth inequality), Herfindahl index (market concentration), and holder tier distribution (top 1%, top 10%, etc.). Detects suspicious patterns such as sudden concentration changes, large transfers to exchange wallets, or coordinated holder movements. Provides early signals of potential rug pulls or coordinated dumps.
Combines statistical concentration metrics (Gini, Herfindahl) with behavioral anomaly detection (sudden concentration spikes, coordinated transfers) and exchange wallet tracking to identify both static concentration risk and dynamic signals of impending whale activity
Provides both concentration metrics and behavioral anomaly detection (not just static snapshots), enabling detection of emerging rug pull risk before it materializes; also explains which specific holders are driving concentration changes
liquidity depth and slippage analysis
Medium confidenceEvaluates token liquidity across DEX and CEX venues by analyzing order book depth, liquidity pool reserves, and historical slippage patterns. Calculates metrics including effective spread, impact of large trades, and liquidity stability over time. Identifies liquidity fragmentation across venues and detects sudden liquidity withdrawals. Provides slippage estimates for trades of various sizes and flags venues with insufficient depth.
Aggregates liquidity data across multiple DEX and CEX venues, normalizes for different pool architectures (constant product, concentrated liquidity, stable swap), and uses historical slippage patterns to produce venue-specific and trade-size-specific slippage estimates
Provides multi-venue liquidity aggregation and trade-size-specific slippage estimates (not just current spot prices), enabling traders to plan large trades with accurate execution cost expectations and identify optimal venues
contract audit and verification status tracking
Medium confidenceMonitors and reports on the audit and verification status of token contracts, including formal verification, security audits by reputable firms, bug bounty program participation, and code review coverage. Tracks audit history, identifies gaps in coverage, and flags tokens with unaudited or partially audited contracts. Integrates with audit databases and verification service APIs to provide current status.
Aggregates audit information from multiple sources (audit firms, verification services, bug bounty platforms) and tracks audit history including updates and re-audits, providing a comprehensive audit timeline rather than just current status
Provides audit history and coverage details (not just binary audited/unaudited status), enabling investors to assess whether audits are current and comprehensive relative to contract complexity
Capabilities are decomposed by AI analysis. Each maps to specific user intents and improves with match feedback.
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Assess web3 threats by analyzing tokens, NFTs, and wallet addresses. Detect potential rug pulls, flag known phishing sites, and evaluate address reputation across supported chains. Leverage built-in docs and chain coverage to streamline due diligence.
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Rug Munch Intelligence — MCP Server
# Rug Munch Intelligence — MCP Server [](https://modelcontextprotocol.io) [](https://cryptorugmunch.app/api/agent/v1/status) [](https://
drainbrain-mcp-server
Tools: - scan_token - Scan a single token for rug pull risk, honeypot status, and temporal analysis - batch_scan - Scan up to 10 tokens in parallel - health_check - Check API and model availability - compare_rugcheck - Compare DrainBrain ML score vs RugCheck heuristic side-by-side Install:
Best For
- ✓crypto traders and portfolio managers evaluating token safety
- ✓DeFi protocol developers assessing counterparty risk
- ✓AI agents building autonomous trading or risk management systems
- ✓security-conscious crypto investors performing due diligence
- ✓DeFi protocol auditors and risk managers
- ✓AI agents building automated portfolio risk monitoring systems
- ✓active crypto traders and portfolio managers seeking alpha through early distress detection
- ✓risk managers building early-warning systems for institutional crypto holdings
Known Limitations
- ⚠Trust scores are probabilistic, not deterministic — historical accuracy depends on market regime and may degrade during black swan events
- ⚠Real-time scoring requires continuous blockchain indexing, which introduces 30-120 second latency depending on network congestion
- ⚠Scores only reflect on-chain signals; off-chain regulatory or team reputation risks are not captured
- ⚠Limited to EVM-compatible chains and tokens with sufficient liquidity history for statistical analysis
- ⚠Pattern matching is heuristic-based and may produce false positives for novel contract architectures not in the training set
- ⚠Cannot detect zero-day vulnerabilities or novel attack vectors not yet documented in risk databases
Requirements
Input / Output
UnfragileRank
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About
Evaluate crypto token safety with real-time trust scores and structural risk signals. Identify potential market distress and impending collapses to safeguard your digital investments. Compare assets head-to-head using multi-dimensional security and compliance metrics.
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