The Artefact Revenue Intelligence MCP Server provides AI-native revenue and GTM intelligence for B2B teams, treating GTM strategy like version-controlled code. It exposes three core tools plus structured methodology resources:
RFM Analysis ( Score clients on Recency, Frequency, and Monetary value; segment them into 11 categories (e.g., Champions, Lost); extract ICP patterns from top performers; and receive tier recommendations — with industry presets (B2B service, SaaS, manufacturing) and configurable scoring thresholds.
ICP Qualification ( Score a prospect against a 14.5-point model across Firmographic Fit (5 pts), Behavioral Fit (5 pts), and Strategic Fit (4.5 pts); receive a 4-tier classification, detailed score breakdown, constraint context mapping, and recommended engagement strategy — using either a HubSpot company ID or raw JSON data.
Pipeline Health Scoring ( Calculate an overall health score (0–100) with velocity metrics, stage-to-stage conversion rates, bottleneck identification, and at-risk/stalled deal detection — filterable by HubSpot pipeline ID.
Methodology Resources: Access 10 structured resources covering scoring models, RFM segments, SPICED framework, signal taxonomy, value engines, revenue formula, GTM commit anatomy, and more — enabling AI agents to reason about and propose structured GTM changes.
All tools work with live HubSpot data (via HUBSPOT_API_KEY) or built-in demo data (source="sample") with no API key required. Custom HubSpot property mappings are also supported.
Provides revenue intelligence tools to analyze HubSpot data, including RFM (Recency, Frequency, Monetary) segmentation, 14.5-point ICP qualification, and pipeline health scoring.
Artefact Revenue Intelligence MCP Server
The AI-native interface to your Revenue Operating System. Version-controlled GTM intelligence — signals, commits, and closed-loop measurement — accessible to any AI agent.
A Model Context Protocol (MCP) server that treats your Go-to-Market strategy like code: versioned, diffable, and deployable. Detect pipeline signals, identify scaling constraints, analyze value engines, and draft structured GTM changes — all through AI-native tool calls. Built on the Artefact Formula methodology from real B2B consulting engagements.
Why Artefact MCP?
Traditional ICP models stop at firmographics. We triangulate across three dimensions to identify prospects with the right profile, the right behaviors, AND the right trajectory.
Feature | HubSpot Official MCP | Generic Wrappers | Artefact MCP |
CRUD operations | Yes | Yes | Via HubSpot API |
RFM Analysis | No | No | 11-segment classification |
ICP Triangulation | No | No | Firmographic + Behavioral + Growth Signals |
Pipeline Health | No | No | 0-100 health score + exit criteria testing |
Signal Detection | No | No | 6-type signal taxonomy |
Constraint Analysis | No | No | Dominant bottleneck + Revenue Formula |
Value Engine Analysis | No | No | Growth / Fulfillment / Innovation |
GTM Commit Drafting | No | No | Structured change proposals with evidence |
Methodology built-in | No | No | Artefact Formula (10 resources) |
Works without API key | No | No | Yes (demo data) |
Who Is This For?
B2B revenue teams using HubSpot who want AI-powered signal detection and pipeline intelligence
RevOps managers who need constraint analysis and value engine health accessible from Claude or Cursor
Consultants who deliver RFM analysis, ICP scoring, and evidence-backed GTM recommendations to clients
Developers building revenue intelligence integrations with MCP
AI agents that need a structured interface to reason about and propose changes to GTM strategy
Tools
Signal Intelligence
detect_signals — Pipeline Signal Detection
Scans pipeline data for all 6 signal types from the Artefact signal taxonomy: velocity anomalies, conversion drop-offs, win/loss patterns, pipeline concentration, data quality issues, and SPICED frequency signals. Returns structured signal objects with strength scores (0-1), evidence, and recommended actions.
identify_constraint — Dominant Constraint Analysis
Identifies which of the 4 scaling constraints (Lead Generation, Conversion, Delivery, Profitability) is bottlenecking revenue. Includes Revenue Formula breakdown (Traffic x CR1 x CR2 x CR3 x ACV) with gap-to-benchmark analysis and recommended focus.
analyze_engine — Value Engine Health
Analyzes health of the 3 value engines: Growth (create/capture/convert demand), Fulfillment (onboard/deliver/renew/expand), and Innovation (gather/prioritize/build/launch). Returns engine-specific metrics, health scores, and integrated signal detection.
propose_gtm_change — GTM Commit Drafting
Enables AI agents to propose structured GTM changes following the commit anatomy: Intent, Diff, Impact Surface, Risk Level, Evidence, and Measurement Plan. Supports 8 entity types (ICP, persona, positioning, pipeline stage, exit criteria, GTM motion, scoring model, playbook).
Analysis Tools
run_rfm — RFM Analysis
Scores clients on Recency, Frequency, and Monetary value. Segments them into 11 categories (Champions through Lost) and extracts ICP patterns from top performers. Now includes signal framing — detects win/loss patterns, revenue concentration, and at-risk client signals. Supports B2B service, SaaS, and manufacturing presets.
qualify — ICP Triangulation Framework
Scores prospects across three dimensions: Firmographic Fit (industry, revenue, employees, geography), Behavioral Fit (tech stack, engagement, purchase history), and Growth Signals (hiring, funding, expansion). Now includes constraint context — maps prospect fit to your dominant scaling constraint. Returns tier classification (Ideal / Strong / Moderate / Poor) with engagement strategy.
score_pipeline_health — Pipeline Health Score
Analyzes open deals for velocity metrics, stage-to-stage conversion rates, bottleneck identification, and at-risk deal detection. Now supports optional exit criteria testing (pass/fail per criterion per deal) and includes signal framing for velocity anomalies and conversion drop-offs. Returns a 0-100 health score.
Resources
URI | Description |
| ICP Triangulation Framework technical reference |
| 4-tier classification system |
| 11 RFM segment definitions with scoring scales |
| SPICED discovery framework |
| HubSpot data setup and enrichment requirements |
| 3 value engine definitions (Growth, Fulfillment, Innovation) with stages and metrics |
| Standard pipeline exit criteria per stage with proof requirements |
| 4 scaling constraints with diagnostic criteria and remediation levers |
| 6 signal types with detection methods and action mappings |
| Revenue Formula breakdown: Traffic x CR1 x CR2 x CR3 x ACV x (1/Churn) |
| 5 components of a structured GTM commit (intent, diff, impact, risk, evidence) |
Data Requirements for ICP Triangulation
⚠️ Important: The qualify tool requires specific data across all three dimensions:
✅ Native HubSpot data (Firmographic + Partial Behavioral):
Firmographic Fit: Industry, revenue, employees, geography — standard properties
Behavioral Fit (Partial): Tech stack, content engagement, purchase history — custom properties or workflows
⚠️ Requires external enrichment (Clay, Clearbit, or manual research):
Growth Signals (Behavioral Fit — Critical Dimension): Hiring trends, funding rounds, product launches, expansion signals, press mentions
HubSpot does NOT track growth signals natively
Without growth signals: You lose the third dimension of triangulation — prospect momentum and buying power indicators
See full guide: Ask your AI assistant to read methodology://data-requirements for complete setup instructions and Clay integration workflow.
Quick Start
Install via PyPI
pip install artefact-mcpInstall via Smithery
npx @smithery/cli install artefact-revenue-intelligenceClaude Code
claude mcp add artefact-revenue -- uvx artefact-mcpThen ask:
"What signals are you detecting in my pipeline?"
"What's our dominant scaling constraint?"
"Analyze the health of our Growth Engine"
"Propose a GTM change: narrow ICP to SaaS companies with 50-200 employees"
"Run an RFM analysis on our HubSpot data"
"Qualify this prospect: SaaS company, $5M revenue, 80 employees in Ontario"
"Score our pipeline health with exit criteria testing"
Claude Desktop
Add to claude_desktop_config.json:
Recommended (Python method):
{
"mcpServers": {
"artefact-revenue": {
"command": "python3",
"args": ["-m", "artefact_mcp"],
"env": {
"HUBSPOT_API_KEY": "pat-na1-xxxxxxxx"
}
}
}
}Alternative (uvx method):
{
"mcpServers": {
"artefact-revenue": {
"command": "uvx",
"args": ["artefact-mcp"],
"env": {
"HUBSPOT_API_KEY": "pat-na1-xxxxxxxx"
}
}
}
}Note: If using uvx and seeing "Server disconnected" errors, see the
Cursor
Add to .cursor/mcp.json:
Recommended (Python method):
{
"mcpServers": {
"artefact-revenue": {
"command": "python3",
"args": ["-m", "artefact_mcp"],
"env": {
"HUBSPOT_API_KEY": "pat-na1-xxxxxxxx"
}
}
}
}Alternative (uvx method):
{
"mcpServers": {
"artefact-revenue": {
"command": "uvx",
"args": ["artefact-mcp"],
"env": {
"HUBSPOT_API_KEY": "pat-na1-xxxxxxxx"
}
}
}
}Programmatic (Python)
from artefact_mcp.tools.signals import detect_signals
from artefact_mcp.tools.constraints import identify_dominant_constraint
from artefact_mcp.tools.engines import analyze_engine
from artefact_mcp.tools.gtm_commits import propose_gtm_change
from artefact_mcp.tools.rfm import run_rfm_analysis
from artefact_mcp.tools.icp import qualify_prospect
from artefact_mcp.tools.pipeline import score_pipeline
# Signal detection (no HubSpot key needed)
signals = detect_signals(source="sample")
# Dominant constraint analysis
constraint = identify_dominant_constraint(source="sample", quota=500000)
# Value engine health
engine = analyze_engine(engine_type="growth", source="sample")
# GTM commit drafting
commit = propose_gtm_change(
entity_type="icp",
change_description="Narrow ICP to SaaS companies with 50-200 employees",
signal_type="win_loss_pattern",
signal_data={"win_rate_saas": 0.45, "win_rate_other": 0.22},
)
# RFM with sample data
results = run_rfm_analysis(source="sample", industry_preset="b2b_service")
# ICP qualification
score = qualify_prospect(company_data={
"industry": "SaaS",
"annual_revenue": 10_000_000,
"employee_count": 80,
"geography": "Quebec",
"tech_stack": ["HubSpot", "Google Analytics"],
"growth_signals": ["hiring", "funding"],
"content_engagement": "active",
"decision_maker_access": "c_suite",
"budget_authority": "dedicated",
"strategic_alignment": "strong",
})
# Pipeline health with exit criteria
health = score_pipeline(source="sample", exit_criteria=[
{"stage": "Discovery", "criterion": "SPICED complete", "required_proof": "All 6 SPICED fields populated"}
])Troubleshooting
Server Disconnected Errors (uvx PATH issue)
Problem: Claude Desktop shows "MCP artefact-revenue: Server disconnected" error when using uvx as the command.
Cause: Claude Desktop (and other sandboxed applications) may not have access to uvx in your PATH. This commonly happens when uvx is installed via:
Homebrew →
~/.local/bin/uvxcurl installation →
~/.cargo/bin/uvxor other locations
Solutions:
Use Python method (recommended): Switch to
python3 -m artefact_mcpmethod (see Claude Desktop section above). Python is always in PATH.Use full uvx path: Find your uvx location and use the full path:
# Find uvx location which uvx # Example output: /Users/yourname/.local/bin/uvxThen update your config with the full path:
{ "mcpServers": { "artefact-revenue": { "command": "/Users/yourname/.local/bin/uvx", "args": ["artefact-mcp"], "env": {} } } }Verify manually: Test that the MCP server starts correctly:
uvx artefact-mcp==0.3.3 # Should see: "Artefact Revenue Intelligence MCP Server running..."
Other Issues
Issue: Tools return "No HubSpot API key" errors.
Solution: Ensure HUBSPOT_API_KEY is set in your MCP server configuration. Or use source="sample" to test with demo data first.
Issue: Import errors when using python3 -m artefact_mcp.
Solution: Ensure the package is installed: pip install artefact-mcp or pip install --upgrade artefact-mcp.
Configuration
Variable | Required | Description |
| No | HubSpot private app token. Without it, tools work with |
| No | License key for Pro/Enterprise tier. Free tier (sample data) works without a key. |
| No | Path to JSON file with custom HubSpot property mappings (Pro/Enterprise only). |
| No | Path to JSON file with custom RFM scoring thresholds (Pro/Enterprise only). |
Custom Property Mappings (Pro/Enterprise)
If your HubSpot instance uses custom property names for behavioral and strategic fit data, you can configure property mappings. This allows the qualify tool to automatically fetch and score all ICP dimensions from your HubSpot data.
Create a JSON configuration file (e.g., artefact_property_mapping.json):
{
"tech_stack": "technologies_used",
"tech_stack_delimiter": ",",
"growth_signals": ["linkedin_hiring_count", "recent_funding_amount", "press_mentions"],
"growth_signal_keywords": {
"linkedin_hiring_count": "hiring",
"recent_funding_amount": "funding",
"press_mentions": "press"
},
"content_engagement": "hubspot_engagement_score",
"content_engagement_thresholds": {
"active": 10,
"occasional": 3
},
"decision_maker_access": "primary_contact_role",
"budget_authority": "budget_category",
"strategic_alignment": "revenue_ops_conviction"
}Set the environment variable:
export ARTEFACT_PROPERTY_MAPPING_PATH=/path/to/artefact_property_mapping.jsonAvailable Configuration Options:
Property | Type | Description | Default |
| string | HubSpot property name for tech stack | None |
| string | Delimiter for parsing text fields |
|
| array | List of HubSpot properties indicating growth | None |
| object | Map property names to signal keywords |
|
| string | HubSpot property for engagement score | None |
| object | Thresholds for active/occasional |
|
| string | Strategic fit property | None |
| string | Budget authority property | None |
| string | Strategic alignment property | None |
Example HubSpot Properties:
Common custom properties to map:
Tech Stack:
tech_stack_used,technologies,crm_platformGrowth Signals:
linkedin_job_postings_count,recent_funding_round,press_mentions_count,new_office_openedContent Engagement:
hs_analytics_num_page_views,email_engagement_scoreStrategic Fit:
primary_contact_role,budget_category,growth_conviction
The qualify tool will automatically fetch and score these custom properties when a property mapping is configured.
Example Configuration Files:
Two example configurations are included in the repository:
property_mapping.example.json— Full configuration with all available optionsproperty_mapping.minimal.example.json— Minimal configuration for growth signals only
Copy the appropriate example file and customize it for your HubSpot instance:
cp property_mapping.minimal.example.json my_property_mapping.json
# Edit my_property_mapping.json with your HubSpot property names
export ARTEFACT_PROPERTY_MAPPING_PATH=$(pwd)/my_property_mapping.jsonCustom RFM Thresholds (Pro/Enterprise)
Pro/Enterprise users can customize RFM scoring thresholds to match their industry or business model. The built-in presets (b2b_service, saas, manufacturing) may not perfectly fit your buying cycles or revenue ranges.
Create an RFM threshold configuration file (e.g., rfm_thresholds.json):
{
"recency_days": [60, 180, 365, 730],
"recency_scores": [5, 4, 3, 2, 1],
"frequency_counts": [5, 3, 2, 1],
"frequency_scores": [5, 4, 3, 2, 1],
"monetary_method": "percentile",
"monetary_percentiles": [80, 60, 40, 20]
}Set the environment variable:
export ARTEFACT_RFM_THRESHOLDS_PATH=/path/to/rfm_thresholds.jsonAvailable Configuration Options:
Property | Type | Description | Default |
| array | Days since last purchase thresholds |
|
| array | Scores for each recency band (5 = best) |
|
| array | Transaction count thresholds |
|
| array | Scores for each frequency band |
|
| string | Scoring method: |
|
| array | Percentile thresholds (for percentile method) |
|
| array | Fixed dollar thresholds (for fixed method) |
|
| array | Scores for each monetary band |
|
Example Configurations:
rfm_thresholds.example.json— Percentile-based monetary scoring (recommended for most use cases)rfm_thresholds.fixed_monetary.example.json— Fixed dollar thresholds for monetary scoring
When to Use Fixed Thresholds:
Use "monetary_method": "fixed" when:
You have specific revenue tiers that define customer value (e.g., $100K+ = enterprise)
Your customer base has wide revenue variance and percentiles don't align with business value
You want consistent scoring across different time periods
Use "monetary_method": "percentile" (default) when:
You want relative scoring within your current customer base
Your customer base is relatively homogeneous
You want the top 20% of customers to always score 5, regardless of absolute revenue
Custom Configuration Example:
cp rfm_thresholds.example.json my_rfm_thresholds.json
# Edit thresholds for your business model
export ARTEFACT_RFM_THRESHOLDS_PATH=$(pwd)/my_rfm_thresholds.jsonThe run_rfm tool will use your custom thresholds instead of the built-in presets.
## Pricing
| Tier | Price | What You Get |
|------|-------|-------------|
| **Free** | $0 | All 7 tools with built-in demo data (`source="sample"`) |
| **Pro** | $149/mo | Live HubSpot integration + all methodology resources |
| **Enterprise** | $499/mo | Pro + priority support + custom scoring presets |
[Purchase a license](https://artefactventures.lemonsqueezy.com)
## Alternatives & Comparisons
- **HubSpot Official MCP Server** — Read-only CRUD access to CRM objects. No scoring or intelligence.
- **CData HubSpot MCP** — SQL-based access to HubSpot data. No built-in methodology.
- **Zapier MCP** — Action triggers and workflow automation. Different use case.
- **Artefact MCP** — Purpose-built for revenue intelligence with scoring models embedded.
## FAQ
**Q: What MCP server should I use for revenue intelligence?**
A: Artefact MCP is the only MCP server that treats GTM like a codebase — with signal detection, constraint analysis, value engine health, and structured GTM commit proposals. Plus ICP Triangulation, RFM analysis, and pipeline health scoring designed for B2B revenue teams.
**Q: Does this replace the official HubSpot MCP server?**
A: They serve different purposes. HubSpot's server provides CRUD access to CRM objects. Artefact MCP provides intelligence and scoring on top of that data.
**Q: Can I use this without a HubSpot API key?**
A: Yes. All tools work with built-in demo data using `source="sample"`.
**Q: What data does this send externally?**
A: Tool results stay local. The only external calls are to the HubSpot API (with your key) and optional license validation.
## Development
```bash
git clone https://github.com/alexboissAV/artefact-mcp-server.git
cd artefact-mcp-server
pip install -e ".[dev]"
pytest tests/Dependencies
fastmcp>=2.0— MCP server frameworkhttpx>=0.25.0— HTTP client for HubSpot API
No pandas, numpy, or heavy data libraries. Pure Python scoring logic.
Star History
License
Business Source License 1.1 — Free to use for connecting to MCP tools via AI assistants. Scoring methodology may not be extracted for competing products. Converts to MIT in 2030.