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Critical Minerals Dependency MCP Server

Critical minerals supply chain risk intelligence — quantified, sourced, and ready for your AI agent. This MCP server delivers dependency risk scores for lithium, cobalt, rare earths, gallium, and 16 other critical minerals by orchestrating 8 public data sources in parallel: UN COMTRADE trade flows, OFAC and OpenSanctions watchlists, USPTO and EPO patent databases, World Bank governance indicators, IMF macroeconomic data, and OECD statistics. Defense teams, EV supply chain managers, and industria

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$0.30per event
1
Users (30d)
11
Runs (30d)
90
Actively maintained
Maintenance Pulse
$0.30
Per event

Maintenance Pulse

90/100
Last Build
Today
Last Version
1d ago
Builds (30d)
8
Issue Response
N/A

Cost Estimate

How many results do you need?

mineral_dependency_reports
Estimated cost:$30.00

Pricing

Pay Per Event model. You only pay for what you use.

EventDescriptionPrice
mineral_dependency_reportAll 8 sources, HHI concentration, geopolitical, substitution. Full composite.$0.30
supply_concentration_analysisUN COMTRADE HHI analysis for monopolistic suppliers.$0.08
supplier_country_riskWorld Bank + IMF + OECD + sanctions country risk.$0.10
sanctions_exposure_checkOFAC + OpenSanctions mineral supply chain screening.$0.06
substitution_patent_landscapeUSPTO + EPO alternative material and recycling patents.$0.08
industry_impact_assessmentTrade flow + economic impact of mineral disruptions.$0.10
compare_mineral_risksMulti-mineral relative risk ranking.$0.08

Example: 100 events = $30.00 · 1,000 events = $300.00

Connect to your AI agent

Add this MCP server to Claude Desktop, Cursor, Windsurf, or any MCP-compatible client.

MCP Endpoint
https://ryanclinton--critical-minerals-dependency-mcp.apify.actor/mcp
Claude Desktop Config
{
  "mcpServers": {
    "critical-minerals-dependency-mcp": {
      "url": "https://ryanclinton--critical-minerals-dependency-mcp.apify.actor/mcp"
    }
  }
}

Documentation

Critical minerals supply chain risk intelligence — quantified, sourced, and ready for your AI agent. This MCP server delivers dependency risk scores for lithium, cobalt, rare earths, gallium, and 16 other critical minerals by orchestrating 8 public data sources in parallel: UN COMTRADE trade flows, OFAC and OpenSanctions watchlists, USPTO and EPO patent databases, World Bank governance indicators, IMF macroeconomic data, and OECD statistics. Defense teams, EV supply chain managers, and industrial policy analysts use it to answer one question fast: how exposed are we?

Seven MCP tools cover every dimension of critical mineral dependency — from Herfindahl-Hirschman Index (HHI) supply concentration and geopolitical fragility scoring to substitution patent landscapes and sanctions screening. Every tool returns structured JSON with a verdict label (CRITICAL_DEPENDENCY through LOW_RISK), scored sub-components, and prioritized recommendations. No subscriptions, no dashboards to configure — connect your MCP client, call a tool, get intelligence.

What data can you access?

Data PointSourceExample
📦 International trade flows by country and commodityUN COMTRADEChina: 68% of cobalt ore exports, HHI 4,840
🚫 US Treasury sanctions entitiesOFAC SDN ListNovatek PJSC — sanctioned Russian energy entity
🌐 Global sanctions matches across 100+ programsOpenSanctions3 hits across EU, UN, OFAC programs
📄 US alternative-material patentsUSPTO Patent SearchNa-ion battery cathode substitution, 2024 filing
📄 European alternative-material patentsEPO Patent SearchSynthetic graphite anode, priority 2023
🏛️ Country governance and stability indicatorsWorld Bank IndicatorsDRC rule-of-law score: -1.72 (fragile)
📉 Macroeconomic risk data for producer countriesIMF Economic DataCongo inflation 12.3%, debt-to-GDP 87%
📊 Trade and economic statisticsOECD StatisticsRare earth trade concentration, OECD members

Why use Critical Minerals Dependency MCP?

Manually assessing critical mineral exposure requires pulling COMTRADE data, cross-referencing sanctions databases, reading World Bank governance scores, and searching patent filings — a research cycle that takes a senior analyst 2-3 days per mineral. Licensing commercial supply chain risk platforms costs $25,000-$100,000 per year for enterprise access.

This MCP server automates the entire cycle in a single tool call. An AI agent can assess lithium dependency for EV supply chains in seconds, including HHI concentration, sanctions exposure on DRC mining entities, and substitution readiness from USPTO/EPO patent filings — all in one structured JSON response.

Platform benefits available from day one:

  • Scheduling — run weekly supply chain risk monitoring on a fixed schedule to track score drift
  • API access — trigger assessments from Python, JavaScript, or any HTTP client via the Apify API
  • Spending limits — set a maximum budget per run; the server stops charging when the limit is reached
  • Monitoring — receive Slack or email alerts when runs fail or return unexpected verdicts
  • Integrations — connect results to Zapier, Make, Google Sheets, or your internal risk dashboard via webhooks

Features

  • Herfindahl-Hirschman Index (HHI) calculation from live UN COMTRADE trade flows — HHI is computed from each supplier country's squared market share; scores above 2,500 trigger a MONOPOLISTIC flag
  • Five concentration levels — DIVERSIFIED, MODERATE, CONCENTRATED, HIGHLY_CONCENTRATED, MONOPOLISTIC — derived from HHI with explicit threshold logic
  • Geopolitical fragility scoring combining OFAC sanctions hits, OpenSanctions matches, World Bank governance indicators (rule of law, political stability, regulatory quality), and IMF macroeconomic signals
  • 20 tracked critical minerals — lithium, cobalt, nickel, manganese, graphite, rare earths, tungsten, titanium, vanadium, gallium, germanium, indium, antimony, tantalum, niobium, and platinum group metals
  • High-risk supplier country list with explicit flags for China, DRC, Russia, Myanmar, North Korea, and Iran — supply exposure from these countries increases the geopolitical score
  • Sanctioned country exposure detection — any supply chain dependency on sanctioned nations triggers elevated fragility signals regardless of volume
  • Substitution Readiness Index measured from patent filing velocity — counts alternative-material patents with keywords including "substitut", "replac", "alternative", "recycl", "synthetic", "sodium", "iron phosphate", "solid state" across USPTO and EPO
  • Patent assignee diversity as a proxy for R&D breadth — more unique organizations filing alternative-material patents signals a more competitive substitution landscape
  • Composite Dependency Risk Score (0-100) weighted: Supply Concentration 35% + Geopolitical Fragility 35% + Substitution Gap 30%
  • Override logic — a MONOPOLISTIC concentration combined with 2+ sanctions hits automatically escalates the verdict to CRITICAL_DEPENDENCY regardless of the composite score
  • Prioritized recommendations generated per assessment — specific actions including supply chain diversification thresholds, strategic reserve guidance, and R&D investment signals
  • Parallel source orchestration — all 8 data sources queried simultaneously via Promise.all for sub-60-second full assessments
  • Spending limit enforcement — each tool checks Actor.charge() before executing and returns a structured error if the limit is reached

Use cases for critical mineral supply chain risk analysis

Defense and aerospace supply chain assessment

Defense procurement offices and prime contractors use mineral_dependency_report to quantify exposure to adversary-controlled mineral supply. A single call on tungsten or rare earth neodymium surfaces the HHI concentration score, DRC and China exposure percentage, and substitution readiness — structured data for quarterly supply chain risk reviews.

EV battery and energy storage supply chain monitoring

Battery manufacturers and EV OEMs run supply_concentration_analysis on lithium, cobalt, nickel, and graphite weekly. The HHI score tracks concentration drift as new mines come online or geopolitical events shift trade flows. supplier_country_risk flags DRC governance deterioration before it becomes a sourcing crisis.

Semiconductor and electronics material sourcing

Chip manufacturers and electronics companies analyze gallium, germanium, and indium using compare_mineral_risks. These minerals face near-monopolistic supply from China, with limited substitution options — a risk profile that substitution_patent_landscape quantifies directly from USPTO and EPO filing activity.

Commodity trading and structured finance

Trading desks use supply_concentration_analysis to price supply disruption probability into options and forward contracts. sanctions_exposure_check screens mining counterparties against OFAC and OpenSanctions before executing trades or financing agreements.

Industrial policy and government research

Policy analysts and government research agencies assess which minerals warrant strategic reserve investment using industry_impact_assessment. The tool maps trade flow concentration against downstream industry dependency — identifying which minerals, if disrupted, create the highest GDP exposure.

ESG and responsible sourcing compliance

ESG teams use supplier_country_risk to score governance indicators for mineral-producing nations as part of annual responsible sourcing disclosures. World Bank rule-of-law and political stability scores, combined with sanctions exposure, feed directly into ESG risk matrices.

How to analyze critical mineral dependency

  1. Connect your MCP client — add the server URL (https://critical-minerals-dependency-mcp.apify.actor/mcp) and your Apify API token to your Claude Desktop, Cursor, or Windsurf configuration.
  2. Choose your tool — use mineral_dependency_report for a full assessment, or a focused tool like supply_concentration_analysis or sanctions_exposure_check for a specific dimension.
  3. Specify the mineral and context — provide the mineral name (e.g., "cobalt") and optionally an industry context (e.g., "EV batteries"). The server queries 8 sources in parallel.
  4. Read the verdict — results arrive as structured JSON with a CRITICAL_DEPENDENCY to LOW_RISK verdict, sub-scores, risk signals, and specific recommendations.

MCP tools

ToolPriceDescription
mineral_dependency_report$0.045Full dependency report: HHI concentration, geopolitical fragility, substitution readiness. All 8 sources. CRITICAL_DEPENDENCY to LOW_RISK verdict.
supply_concentration_analysis$0.045HHI supply concentration from COMTRADE trade flows. Monopolistic supplier detection, single-source dependency flags.
supplier_country_risk$0.045Country-level fragility: World Bank governance, IMF macroeconomics, OFAC/OpenSanctions screening.
sanctions_exposure_check$0.045OFAC and OpenSanctions screening for mining companies, producer nations, and trade entities.
substitution_patent_landscape$0.045USPTO + EPO patent landscape for alternative materials and recycling technology. Substitution Readiness Index.
industry_impact_assessment$0.045Downstream industry vulnerability to supply disruption. Trade flow analysis for specific industry-mineral pairs.
compare_mineral_risks$0.045Composite risk profile for a mineral: concentration level, fragility level, substitution level, and recommendations.

Tool input parameters

ToolParameterTypeRequiredDescription
mineral_dependency_reportmineralstringYesCritical mineral name (e.g., "lithium", "cobalt", "gallium")
mineral_dependency_reportindustrystringNoIndustry context (e.g., "EV batteries", "semiconductor", "defense")
supply_concentration_analysismineralstringYesMineral or commodity to analyze
supply_concentration_analysisregionstringNoRegional filter for trade flows
supplier_country_riskcountrystringYesSupplier country name or ISO code
supplier_country_riskmineralstringNoMineral context for the assessment
sanctions_exposure_checkentitystringYesMining company, country, or trade entity name
sanctions_exposure_checkmineralstringNoMineral supply chain context
substitution_patent_landscapemineralstringYesMineral to find alternative-material patents for
substitution_patent_landscapeapplicationstringNoApplication area (e.g., "batteries", "semiconductors", "magnets")
industry_impact_assessmentmineralstringYesCritical mineral input
industry_impact_assessmentindustrystringYesDownstream industry (e.g., "EV", "semiconductor", "defense", "aerospace")
compare_mineral_risksmineralstringYesMineral to assess
compare_mineral_riskscontextstringNoIndustry or supply chain context

Input examples

Full dependency report for EV battery mineral:

{
  "tool": "mineral_dependency_report",
  "arguments": {
    "mineral": "cobalt",
    "industry": "EV batteries"
  }
}

HHI supply concentration analysis:

{
  "tool": "supply_concentration_analysis",
  "arguments": {
    "mineral": "gallium"
  }
}

Sanctions screening for a mining entity:

{
  "tool": "sanctions_exposure_check",
  "arguments": {
    "entity": "Glencore Congo Operations",
    "mineral": "cobalt"
  }
}

Input tips

  • Use the full dependency report for first assessmentsmineral_dependency_report runs all 8 sources in parallel and returns the composite score, which is the most actionable starting point
  • Narrow with industry context — adding an industry parameter (e.g., "EV batteries", "defense") focuses the COMTRADE queries and returns more relevant trade flow data
  • Use focused tools for ongoing monitoring — once you have a baseline assessment, run supply_concentration_analysis weekly and sanctions_exposure_check monthly to track drift without paying for a full report each time
  • Screen entities before trade — run sanctions_exposure_check on mining companies and trading counterparties before executing supply agreements; OFAC and OpenSanctions hits are returned as raw matches you can review

Output example

{
  "mineral": "cobalt",
  "compositeScore": 78,
  "verdict": "HIGH_RISK",
  "supplyConcentration": {
    "score": 82,
    "hhi": 4210,
    "topSupplierShare": 0.68,
    "supplierCount": 4,
    "concentrationLevel": "MONOPOLISTIC",
    "signals": [
      "HHI 4210 — highly concentrated supply",
      "Top supplier controls 68% of trade — single-source dependency",
      "Only 4 supplier countries — critical vulnerability"
    ]
  },
  "geopolitical": {
    "score": 74,
    "sanctionedExposure": 3,
    "fragileStateExposure": 5,
    "fragilityLevel": "FRAGILE",
    "signals": [
      "3 sanctions hits — supply chain sanctions risk",
      "Multiple fragile state indicators — governance and stability concerns",
      "Macroeconomic instability in supplier countries"
    ]
  },
  "substitution": {
    "score": 38,
    "patentCount": 47,
    "alternativeMaterials": 9,
    "readinessLevel": "DEVELOPING",
    "signals": [
      "9 alternative material patents — active substitution R&D",
      "12 recent patents — accelerating innovation in alternatives"
    ]
  },
  "allSignals": [
    "HHI 4210 — highly concentrated supply",
    "Top supplier controls 68% of trade — single-source dependency",
    "Only 4 supplier countries — critical vulnerability",
    "3 sanctions hits — supply chain sanctions risk",
    "Multiple fragile state indicators — governance and stability concerns",
    "9 alternative material patents — active substitution R&D"
  ],
  "recommendations": [
    "Diversify supply chain — HHI indicates dangerous concentration",
    "Sanctions risk — establish alternative sourcing from allied nations",
    "Single-source dependency — negotiate strategic reserves or long-term contracts",
    "Supplier country instability — build inventory buffer and monitor closely"
  ]
}

Output fields

FieldTypeDescription
mineralstringThe mineral analyzed
compositeScorenumberDependency risk score 0-100 (higher = more dependent/riskier)
verdictstringRisk verdict: CRITICAL_DEPENDENCY, HIGH_RISK, ELEVATED, MANAGEABLE, or LOW_RISK
supplyConcentration.scorenumberSupply concentration score 0-100
supplyConcentration.hhinumberHerfindahl-Hirschman Index (0-10,000; above 2,500 = highly concentrated)
supplyConcentration.topSupplierSharenumberMarket share of the single largest supplier country (0-1)
supplyConcentration.supplierCountnumberNumber of distinct supplier countries in trade data
supplyConcentration.concentrationLevelstringDIVERSIFIED, MODERATE, CONCENTRATED, HIGHLY_CONCENTRATED, or MONOPOLISTIC
supplyConcentration.signalsarrayHuman-readable concentration risk signals
geopolitical.scorenumberGeopolitical fragility score 0-100
geopolitical.sanctionedExposurenumberCount of OFAC + OpenSanctions hits for supply chain entities
geopolitical.fragileStateExposurenumberCount of fragile state indicators from World Bank data
geopolitical.fragilityLevelstringSTABLE, LOW_RISK, MODERATE, FRAGILE, or CRITICAL
geopolitical.signalsarrayHuman-readable geopolitical risk signals
substitution.scorenumberSubstitution readiness score 0-100 (higher = more alternatives available)
substitution.patentCountnumberTotal alternative-material patents found across USPTO and EPO
substitution.alternativeMaterialsnumberPatents specifically targeting substitution or replacement
substitution.readinessLevelstringNO_ALTERNATIVES, EARLY_RESEARCH, DEVELOPING, AVAILABLE, or MATURE
substitution.signalsarrayHuman-readable substitution landscape signals
allSignalsarrayCombined signals from all three scoring models
recommendationsarrayPrioritized supply chain risk mitigation actions

How much does it cost to analyze critical mineral dependency?

This MCP server uses pay-per-event pricing — every tool call costs $0.045. Platform compute costs are included. There are no monthly minimums, no subscription tiers, and no setup fees.

ScenarioTool callsCost per callTotal cost
Single mineral quick check1$0.045$0.045
Targeted assessment (3 tools)3$0.045$0.135
Full mineral review (all 7 tools)7$0.045$0.315
Weekly monitoring (5 minerals)35$0.045$1.58
Monthly portfolio (20 minerals, all tools)140$0.045$6.30

You can set a maximum spending limit per run to control costs. The server stops charging when your budget is reached and returns a structured error so your agent can handle the limit gracefully.

Commercial supply chain risk platforms such as Resilinc, Everstream Analytics, and Bloomberg Supply Chain Intelligence charge $25,000-$100,000 per year for similar critical minerals data. With this MCP server, most research teams spend $5-$20 per month with no commitment.

Apify's free tier includes $5 of monthly credits — enough to run approximately 110 tool calls before any payment is required.

Connect this MCP server

Claude Desktop

Add this to your claude_desktop_config.json:

{
  "mcpServers": {
    "critical-minerals-dependency": {
      "url": "https://critical-minerals-dependency-mcp.apify.actor/mcp",
      "headers": {
        "Authorization": "Bearer YOUR_APIFY_TOKEN"
      }
    }
  }
}

Cursor / Windsurf / Cline

Add the MCP server in your editor's MCP settings panel:

  • URL: https://critical-minerals-dependency-mcp.apify.actor/mcp
  • Auth: Bearer token with your Apify API token

Python (via HTTP)

import httpx
import json

response = httpx.post(
    "https://critical-minerals-dependency-mcp.apify.actor/mcp",
    headers={
        "Content-Type": "application/json",
        "Authorization": "Bearer YOUR_APIFY_TOKEN",
    },
    json={
        "jsonrpc": "2.0",
        "method": "tools/call",
        "params": {
            "name": "mineral_dependency_report",
            "arguments": {
                "mineral": "cobalt",
                "industry": "EV batteries"
            }
        },
        "id": 1
    }
)

result = response.json()
report = json.loads(result["result"]["content"][0]["text"])
print(f"Mineral: {report['mineral']}")
print(f"Verdict: {report['verdict']} (Score: {report['compositeScore']})")
print(f"HHI: {report['supplyConcentration']['hhi']}")
print(f"Recommendations: {report['recommendations']}")

JavaScript

const response = await fetch(
  "https://critical-minerals-dependency-mcp.apify.actor/mcp",
  {
    method: "POST",
    headers: {
      "Content-Type": "application/json",
      "Authorization": "Bearer YOUR_APIFY_TOKEN",
    },
    body: JSON.stringify({
      jsonrpc: "2.0",
      method: "tools/call",
      params: {
        name: "supply_concentration_analysis",
        arguments: { mineral: "gallium" },
      },
      id: 1,
    }),
  }
);

const data = await response.json();
const result = JSON.parse(data.result.content[0].text);
console.log(`Concentration: ${result.supplyConcentration.concentrationLevel}`);
console.log(`HHI: ${result.supplyConcentration.hhi}`);
console.log(`Top supplier share: ${(result.supplyConcentration.topSupplierShare * 100).toFixed(0)}%`);

cURL

# Full dependency report
curl -X POST "https://critical-minerals-dependency-mcp.apify.actor/mcp" \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer YOUR_APIFY_TOKEN" \
  -d '{"jsonrpc":"2.0","method":"tools/call","params":{"name":"mineral_dependency_report","arguments":{"mineral":"lithium","industry":"EV batteries"}},"id":1}'

# Sanctions check for a mining entity
curl -X POST "https://critical-minerals-dependency-mcp.apify.actor/mcp" \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer YOUR_APIFY_TOKEN" \
  -d '{"jsonrpc":"2.0","method":"tools/call","params":{"name":"sanctions_exposure_check","arguments":{"entity":"Congo Dongfang Mining","mineral":"cobalt"}},"id":2}'

How Critical Minerals Dependency MCP works

Phase 1: parallel source orchestration

Every tool call dispatches parallel requests to relevant data sources using Promise.all. The full mineral_dependency_report tool queries all 8 sources simultaneously: UN COMTRADE (queried as {mineral} ore mineral), OFAC sanctions, OpenSanctions, USPTO patents, EPO patents, World Bank indicators, IMF economic data, and OECD statistics. Parallel execution keeps total latency under 60 seconds even when all 8 sources are active. Focused tools like supply_concentration_analysis query only COMTRADE and OECD, completing faster.

Phase 2: HHI concentration scoring

The supply concentration model aggregates COMTRADE trade values by reporter country, calculates each country's share of total trade volume, and computes the Herfindahl-Hirschman Index as the sum of squared shares scaled to 0-10,000. The HHI is then normalized to a 0-100 score. Contribution breakdown: HHI score (max 50 points) + high-risk country exposure (max 30 points, weighted by trade share to the six flagged nations) + supplier diversity penalty (max 20 points, with fewer than 3 supplier countries scoring maximum risk). The concentration level label is assigned at HHI thresholds of 1,500, 2,500, 4,000, and 8,000.

Phase 3: geopolitical fragility scoring

The geopolitical model combines four signals: OFAC and OpenSanctions hits (max 35 points, 5 points per hit), World Bank governance indicator analysis scanning for "governance", "stability", "rule of law", "conflict", and "fragil" terms in indicator names (max 25 points), IMF macroeconomic instability from inflation above 10%, debt-to-GDP above 80%, and negative reserves (max 20 points), and an OECD governance proxy that deducts points for positive governance data, defaulting to a moderate score if no OECD data is returned (max 20 points).

Phase 4: substitution readiness and composite scoring

The substitution model scans USPTO and EPO patents for 10 alternative-material keywords including "substitut", "replac", "alternative", "recycl", "synthetic", "biomass", "sodium", "iron phosphate", and "solid state". It counts matching patents (max 40 points), unique assignee organizations as a breadth proxy (max 30 points), and total patent volume (max 30 points). The composite score weights supply concentration at 35%, geopolitical fragility at 35%, and the inverted substitution score (100 minus substitution readiness) at 30%. An override rule escalates MONOPOLISTIC concentration combined with 2+ sanctions hits to CRITICAL_DEPENDENCY regardless of the composite.

Tips for best results

  1. Start with mineral_dependency_report before drilling down. The full report runs all 8 sources in parallel and costs the same $0.045 as any focused tool. Use the composite score and signals to decide which dimension warrants a deeper follow-up with a focused tool.

  2. Include industry context for more targeted COMTRADE queries. Specifying "EV batteries" or "semiconductor" alongside the mineral name focuses the trade flow query and returns more relevant data. Generic mineral queries return broader commodity trade data.

  3. Use compare_mineral_risks to build a risk register. Call it once per mineral across your supply chain portfolio. Each call returns concentrationLevel, fragilityLevel, and substitutionLevel as enum strings — easy to sort and rank programmatically.

  4. Run sanctions_exposure_check on entity names, not just countries. Screen specific mining companies and trading counterparties by name (e.g., "Glencore Congo Operations") to catch entity-level sanctions hits that country-level screening misses.

  5. Monitor HHI drift with weekly supply_concentration_analysis runs. Store the hhi value each week and alert when it crosses 2,500 (concentrated) or 4,000 (highly concentrated). COMTRADE data updates on a rolling basis, so periodic checks catch emerging concentration.

  6. Cross-reference substitution readiness with your procurement horizon. A DEVELOPING or EARLY_RESEARCH substitution level means viable alternatives are at least 5-10 years away. Factor this into long-term contract and strategic reserve decisions.

  7. Pair with Waterfall Contact Enrichment to find sourcing contacts at mining companies identified through supply concentration analysis.

Combine with other Apify actors

ActorHow to combine
WHOIS Domain LookupVerify mining company domains before screening entities in sanctions_exposure_check
Company Deep ResearchDeep background on mining companies identified as high-concentration suppliers
Waterfall Contact EnrichmentFind procurement and sourcing contacts at alternative supplier companies
B2B Lead QualifierScore alternative supplier candidates identified through substitution analysis
Website Tech Stack DetectorProfile mining and materials companies for due diligence
Trustpilot Review AnalyzerAssess supplier reputation alongside sanctions and governance risk scores
Multi-Review AnalyzerCross-platform reputation data for mining company due diligence

Limitations

  • COMTRADE data lags by 6-12 months — annual trade statistics are typically published 6-12 months after the reporting period. The HHI reflects the most recently available data, not real-time trade flows.
  • Patent search is keyword-based — the substitution readiness score depends on keyword matches in patent titles. Highly technical filings with non-standard terminology may be undercounted.
  • No real-time price data — commodity spot prices and futures curves are not included. The IMF data covers broad macroeconomic indicators, not intraday or weekly price movements.
  • Sanctions screening is not legal compliancesanctions_exposure_check returns matched records from OFAC and OpenSanctions for research purposes. It is not a substitute for a certified OFAC compliance screening program.
  • World Bank governance data is annual — governance indicators update once per year. They do not reflect sudden political changes, coups, or regulatory shifts that occurred in the past 12 months.
  • HHI requires sufficient COMTRADE results — for obscure commodities or HS codes with sparse COMTRADE data, the HHI may undercount supplier diversity. Check supplierCount in the output; values below 5 warrant caution.
  • No mining company database — this server identifies supply concentration by country, not by individual mining company. Company-level concentration requires separate due diligence.
  • Patent assignee deduplication is imperfect — the substitution breadth score uses string matching on assignee names. Subsidiary names may inflate the assignee count.

Integrations

  • Zapier — trigger mineral risk assessments from procurement workflow events and route HIGH_RISK verdicts to supply chain managers
  • Make — build automated monitoring pipelines that run weekly supply_concentration_analysis and post HHI drift alerts to Slack
  • Google Sheets — export mineral risk registers with composite scores and verdicts for executive reporting
  • Apify API — call tools programmatically from Python or JavaScript supply chain risk platforms
  • Webhooks — receive run completion notifications and push CRITICAL_DEPENDENCY verdicts to incident management systems
  • LangChain / LlamaIndex — connect this MCP server to LLM agents for autonomous supply chain risk monitoring and reporting workflows

Troubleshooting

Composite score is lower than expected for a known high-risk mineral. The HHI calculation depends on the volume and quality of COMTRADE records returned. If COMTRADE returns sparse data (check supplierCount — values below 3 indicate limited data), the score may underweight concentration. Try rephrasing the mineral name (e.g., "rare earth elements" instead of "REE", or "cobaltite" instead of "cobalt ore") to improve COMTRADE match rates.

sanctions_exposure_check returns 0 hits for an entity I know is sanctioned. OFAC and OpenSanctions use formal legal entity names. Try the entity's full registered name, including legal form (e.g., "JSC Norilsk Nickel" not "Norilsk"). Also try the country name alone to confirm the data source is returning results at all.

Substitution readiness score is 0 or very low for a mineral with known alternatives. The score uses keyword matching on patent titles. Some alternative technologies (e.g., sodium-ion batteries as a lithium alternative) file under the application technology name rather than the mineral being replaced. Try calling substitution_patent_landscape with the application parameter set to the specific technology area (e.g., "batteries", "permanent magnets") for better patent recall.

Tool call times out. Full mineral_dependency_report calls query 8 sources in parallel and may take 30-60 seconds under load. If your MCP client has a short timeout configured, increase it to at least 90 seconds. Alternatively, use focused single-source tools (supply_concentration_analysis, sanctions_exposure_check) for faster responses.

Spending limit error returned mid-session. If your Apify account spending limit or run-level budget is reached, the server returns {"error": true, "message": "Spending limit reached"} as structured JSON. Increase your run budget in Apify Console or split assessments across multiple runs.

Responsible use

  • All data sources accessed by this MCP server are publicly available international databases (UN COMTRADE, OFAC, OpenSanctions, USPTO, EPO, World Bank, IMF, OECD).
  • Sanctions screening results are for research and due diligence purposes only — they are not a certified compliance screening service and should not be used as the sole basis for legal OFAC compliance decisions.
  • Do not use this server to facilitate circumvention of sanctions, export controls, or other trade restrictions.
  • Comply with the terms of service of each underlying data source.
  • For guidance on data use legality, see Apify's web scraping guide.

FAQ

What critical minerals can this MCP server analyze? Any mineral with international trade data in UN COMTRADE. The scoring models are calibrated for 20 minerals explicitly tracked in the source code — lithium, cobalt, nickel, manganese, graphite, rare earths, tungsten, titanium, vanadium, gallium, germanium, indium, antimony, tantalum, niobium, and platinum group metals (platinum, palladium, rhodium, iridium, chromium) — but the tools accept any mineral name string.

How is the Herfindahl-Hirschman Index (HHI) calculated here? The HHI is computed from UN COMTRADE trade flow values: each supplier country's share of total trade volume is squared and summed across all suppliers. The result ranges from 0 to 10,000. A score above 2,500 indicates a highly concentrated supply; above 4,000 indicates near-monopolistic conditions. The server normalizes HHI to 0-100 for the composite score calculation.

How is this different from commercial platforms like Resilinc or Everstream Analytics? Commercial platforms offer dedicated analyst teams, proprietary supplier databases, and event monitoring at $25,000-$100,000 per year. This MCP server provides algorithmic supply chain risk scoring from public data sources at $0.045 per tool call — appropriate for research teams, policy analysts, and AI agents that need quantified scores and signals rather than managed services.

Can I analyze multiple minerals in one session? Yes. Call any tool multiple times with different mineral inputs. For comparative risk ranking, use compare_mineral_risks for each mineral and sort results by compositeScore. There is no session state — each call is independent.

How current is the trade flow data used for HHI? UN COMTRADE annual data typically lags by 6-12 months. Monthly data, where available, may lag by 3-6 months. The supply_concentration_analysis tool reflects the most recently available data, not real-time trade flows. Use it to establish baseline concentration scores and monitor for drift over time.

Is it legal to use OFAC and OpenSanctions data via this server? Yes. OFAC publishes its Specially Designated Nationals list as a public government database, and OpenSanctions aggregates data from 100+ public sanctions programs. Accessing and analyzing this data for research and compliance due diligence is legal. This server is not a certified OFAC compliance program — consult legal counsel for formal compliance requirements.

Can I set a spending limit so I do not overspend? Yes. Each tool call checks Actor.charge() and returns a structured error JSON object if the spending limit is reached. Set your run-level budget in Apify Console before triggering a large assessment session.

How long does a typical tool call take? Focused tools (supply_concentration_analysis, sanctions_exposure_check) typically complete in 15-30 seconds. The full mineral_dependency_report, which queries all 8 sources in parallel, typically completes in 30-60 seconds. Configure your MCP client timeout to at least 90 seconds.

What MCP clients does this server support? The server implements the Model Context Protocol over HTTP with StreamableHTTP transport. It is compatible with Claude Desktop, Cursor, Windsurf, Cline, and any MCP-compliant client that supports HTTP-based servers with Bearer token authentication.

Can I use this server in an automated AI agent pipeline? Yes. The server is designed for AI agent use. All tool responses are structured JSON with consistent field names and enum values (CRITICAL_DEPENDENCY, HIGH_RISK, etc.), making them easy to parse and route programmatically. Use recommendations array values to drive agent decision logic.

What happens if a data source returns no results? Each source is queried independently. If a source returns an empty array (due to a network issue or no matching records), the scoring model skips that source's contribution rather than failing the entire assessment. The output reflects what data was available — check supplierCount and patentCount to assess data completeness.

How accurate is the geopolitical fragility score? The score is a quantitative proxy based on World Bank governance indicator values, sanctions hit counts, and IMF macroeconomic signals — not a human analyst's judgment. It is most reliable for well-documented supplier countries with substantial World Bank and IMF data coverage. For countries with sparse indicator coverage, the score defaults to a moderate baseline.

Help us improve

If you encounter issues, you can help us debug faster by enabling run sharing in your Apify account:

  1. Go to Account Settings > Privacy
  2. Enable Share runs with public Actor creators

This lets us see your run details when something goes wrong, so we can fix issues faster. Your data is only visible to the actor developer, not publicly.

Support

Found a bug or have a feature request? Open an issue in the Issues tab on this actor's page. For custom mineral risk models, enterprise integrations, or bespoke scoring calibrations, reach out through the Apify platform.

How it works

01

Configure

Set your parameters in the Apify Console or pass them via API.

02

Run

Click Start, trigger via API, webhook, or set up a schedule.

03

Get results

Download as JSON, CSV, or Excel. Integrate with 1,000+ apps.

Use cases

Sales Teams

Build targeted lead lists with verified contact data.

Marketing

Research competitors and identify outreach opportunities.

Data Teams

Automate data collection pipelines with scheduled runs.

Developers

Integrate via REST API or use as an MCP tool in AI workflows.

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