Quantum Suitability Validator MCP
MCP server that screens quantum computing POC proposals against expert decision rules -- before your agent escalates any initiative to a committee, allocates budget, or routes to a specialist.
What it does
Enterprise innovation agents and R&D workflow agents process backlogs of proposed technology initiatives tagged as potential quantum computing candidates. Before escalating any candidate to a human committee, allocating POC budget, or routing to a quantum specialist, the agent calls quantum_assess_problem to produce an auditable triage verdict.
This server is refusal-first by design. It downgrades or refuses more often than it approves. Every verdict is auditable and machine-readable.
Tools
quantum_assess_problem (Free: 5/month, no key required)
Screens a quantum computing proposal using an expert-validated four-dimensional scoring framework. Returns:
verdict: SCIENTIFICALLY_RECOMMENDED_NOW | COMMERCIALLY_RECOMMENDED_NOW | INVESTIGATE_FURTHER | PREMATURE | NOT_QUANTUM_AMENABLEfour_scores: scientific_fit (40% weight), hardware_feasibility (25%), advantage_potential (25%), commercial_relevance (10%), composite -- four independent 0.0-1.0 scores so a scientifically valid investigation is never confused with proven commercial advantageadvantage_claim_level: NONE | HYPOTHESISED | EXPERIMENTAL_SIGNAL | BENCHMARK_SUPPORTED | PRODUCTION_VALIDATEDsuitability_score: 0.0-1.0 (equal to four_scores.composite)confidence_score: 0.0-1.0problem_class: combinatorial_optimisation | portfolio_optimisation | molecular_simulation | ml_kernel | cryptography_pqc | sampling_monte_carlo | otherdominant_blockers: specific reasons why the problem fails screeninghype_flags: detected hype language patternsbaseline_question: always "What is your classical baseline today, and what metric must improve for this to matter?"next_best_action: specific actionable recommendationagent_action: ESCALATE_TO_POC | ROUTE_TO_SIMULATOR | DEFINE_BASELINE_FIRST | REJECT | REQUEST_MORE_INFORMATION
quantum_readiness_report (Pro only)
Full auditable Quantum Readiness Report, weighted by audience profile (RESEARCH, ENTERPRISE, or INVESTOR -- the same problem legitimately scores differently by profile). Everything from quantum_assess_problem plus:
recommended_workflow: CLASSICAL_ONLY | HYBRID | SIMULATOR_ONLY | ANNEALING_PATH | GATE_MODEL_VARIATIONAL | INSUFFICIENT_INFORMATIONformulation_guidance: QUBO/Ising/variational suitability, estimated binary variables, penalty dominance riskhardware_recommendations: hardware family fit scores with access routes (D-Wave Leap, IBM Cloud, IonQ Cloud)error_budget_assessment: viability against current noise floorsclassical_baseline_assessment: baseline strength and minimum benchmark requirementvalidation_plan: ordered steps for technical review board submissionrefusal_reason: populated when the report declines to recommend a path forwardcommercial_reality_statement: populated for ENTERPRISE and INVESTOR profiles -- states plainly that production advantage over classical has not yet been broadly demonstrated
Connect
HTTP (Railway -- no install)
{"type": "http", "url": "https://quantum-suitability-validator-mcp-production.up.railway.app"}
stdio (npm -- requires ANTHROPIC_API_KEY)
npx quantum-suitability-validator-mcp
Harness Integration
Note: this server exposes tools at /mcp not the root URL.
Claude Code / Claude Desktop (.mcp.json)
{
"mcpServers": {
"quantum-suitability-validator": {
"type": "http",
"url": "https://quantum-suitability-validator-mcp-production.up.railway.app/mcp"
}
}
}
LangChain (Python)
from langchain_mcp_adapters.client import MultiServerMCPClient
client = MultiServerMCPClient({
"quantum-suitability-validator": {
"url": "https://quantum-suitability-validator-mcp-production.up.railway.app/mcp",
"transport": "http"
}
})
tools = await client.get_tools()
OpenAI Agents SDK (Python)
from agents import Agent, HostedMCPTool
agent = Agent(
name="Assistant",
tools=[HostedMCPTool(tool_config={
"type": "mcp",
"server_label": "quantum-suitability-validator",
"server_url": "https://quantum-suitability-validator-mcp-production.up.railway.app/mcp",
"require_approval": "never"
})]
)
LangGraph
Same as LangChain above — langchain-mcp-adapters works with LangGraph natively.
Pricing
- Free: 5
quantum_assess_problemcalls/month per IP -- no API key required - Pro: $199/month -- unlimited
quantum_assess_problem+ fullquantum_readiness_report - Enterprise: $499/month -- volume + SLA
Upgrade: kordagencies.com
Legal
AI-assisted triage -- NOT a substitute for experimental physicist review. Results are for informational and planning purposes only and do not constitute expert quantum computing advice. Full terms: kordagencies.com/terms.html
Kord Agencies Pte Ltd, Singapore