MCP Analytics
MCP Analytics is an AI-powered platform for statistical analysis, machine learning, and forecasting that lets you analyze data through natural language in AI assistants like Claude or Cursor.
Core Analysis Capabilities
Run 50+ statistical and ML tools: regression, clustering, hypothesis testing, time series forecasting, neural networks, survival analysis, and more
Business analytics: customer LTV, churn prediction, A/B testing, segmentation, and pricing models
Ask questions in plain English (e.g., "What drives our sales growth?") and get automated analysis
Use the AI advisor (
agent_advisor) for conversational guidance and result interpretation
Data Management
Upload CSV files (Shopify, Stripe, WooCommerce, etc.) or connect live sources like Google Analytics 4 and Google Search Console
List, preview, search, download, and update dataset metadata
Tool Discovery & Execution
Semantically search for the right analysis tool based on your question or data (
discover_tools)Inspect tool documentation, assumptions, data requirements, and schemas before running (
tools_info,tools_schema)Execute analyses and receive interactive HTML reports with visualizations and AI-written insights
Reporting
View, list, and semantically search past analysis reports
Retrieve individual report card data for rendering
Platform & Administration
Check credit balance, subscription status, and access the billing portal
Request custom analysis modules for unique use cases
Enterprise-grade security: OAuth2, TLS 1.3 encryption, isolated Docker containers, and ephemeral data handling
Compatible with Claude Desktop, Cursor, Windsurf, and any MCP-compatible client
Allows for statistical analysis and reporting on eBay data to transform business questions into actionable insights.
Provides native connectors to pull live Google Analytics 4 data for advanced modeling and seasonal analysis.
Connects to Google Search Console to retrieve and analyze search performance data for causal and trend analysis.
Enables analysis of Shopify order and store data to perform statistical modeling, sales forecasting, and customer segmentation.
Integrates with Stripe data to perform financial analytics, including revenue forecasting, churn prediction, and regression modeling.
Supports analyzing WooCommerce data to provide business insights, customer lifetime value (LTV) analysis, and seasonal trend detection.
MCP Analytics Suite
⚠️ Beta — v2 rebuild in progress. We're actively rebuilding the platform. Some features are incomplete or unstable right now. You can sign up and test at mcpanalytics.ai, or subscribe to the launch newsletter. Details: #22 — v2 rebuild: what's changing, what to expect.
Adhoc analysis generation, on your data, on demand. Bring a CSV (or connect a live source — Shopify, Stripe, GA4, GSC, and more) and a question. A standing team of specialist agents builds a custom analysis module for your specific data, validates the methodology, and ships back a citable, interactive report. The module is yours — it lives in your library, reruns on fresh data for a fraction of the creation cost, and is queryable from Claude, Cursor, or any MCP client. The work compounds.
This is the public listing and documentation repository. Issues, feature requests, and examples live here. The API server code is maintained separately.
Sample Reports → • Try Demo → • Pricing →
Hire the team. Own the analysis. Rerun forever.
🚀 Quick Start • 🔄 How It Works • 🛠️ MCP Tools • 🛡️ Security • 📖 Documentation

Click to watch: Ask a question → upload data → get an interactive report with AI insights
Overview
You bring data and a question. A pipeline of specialist agents — spec drafter, builder, verifier, fixer, deployer — turns your question into a custom analysis module for your data. The module produces an interactive report: charts, AI-narrated insights, exportable PDF, embedded source code, citable. After creation, the module joins your private library — query it from any MCP client, rerun on fresh data with one call, share with collaborators on your terms.
Cornerstone modules ship pre-built (t-tests, regression, churn, segmentation, forecasting, customer LTV, A/B testing, time series, survival analysis, and more) so you can see a finished report in under a minute and verify the team can build things that work. Custom module creation is the named revenue event — pay once to build the capability, own it, rerun for a fraction of the creation price.
Connect data however it lives: CSV upload, public URL, or live OAuth connectors for Shopify, Stripe, Google Analytics 4, and Google Search Console (more coming). Once a connector is linked, every rerun pulls fresh data automatically — no re-export step.
Why MCP Analytics
Citable — APA / MLA / Chicago / BibTeX in one click, ready for papers, decks, and regulatory filings
Sourceable — R source code embedded in every report; a skeptical reader can run it and get the same answer
Reproducible — fixed seeds, Docker isolation, validated methods; same input → same output, forever
Yours — every commissioned module is private to your account; rerun on fresh data, query across your portfolio
MCP-native — query the library from Claude, Cursor, Windsurf, or any MCP client
Secure — OAuth2, encryption at rest, isolated container processing per analysis
Honest — when an analysis has issues, the team gives you a free re-run; the relationship is built on the report being right
Quick Start
1. Get an API Key
Sign up free at app.mcpanalytics.ai, go to account settings, and copy your API key (starts with mcp_). You get 2,000 free credits — no credit card required.
2. Connect
Three options — all connect to the same platform with the same tools.
Option A: npx Install (Recommended)
Works with Claude Desktop, Cursor, Windsurf, and any stdio MCP client. Requires Node.js 18+.
Claude Desktop — add to ~/Library/Application Support/Claude/claude_desktop_config.json (macOS) or %APPDATA%\Claude\claude_desktop_config.json (Windows):
{
"mcpServers": {
"mcpanalytics": {
"command": "npx",
"args": ["-y", "@mcp-analytics/mcp-analytics"],
"env": {
"MCP_ANALYTICS_API_KEY": "mcp_your_key_here"
}
}
}
}Cursor / Windsurf — add to .cursor/mcp.json:
{
"mcpServers": {
"mcpanalytics": {
"command": "npx",
"args": ["-y", "@mcp-analytics/mcp-analytics"],
"env": {
"MCP_ANALYTICS_API_KEY": "mcp_your_key_here"
}
}
}
}Claude Code — run in your terminal:
claude mcp add mcpanalytics -- npx -y @mcp-analytics/mcp-analytics
# Then set MCP_ANALYTICS_API_KEY in your environmentOption B: Direct API Key (No npm)
For MCP clients that support Streamable HTTP transport with custom headers:
{
"mcpServers": {
"mcpanalytics": {
"url": "https://api.mcpanalytics.ai/mcp/api-key",
"headers": {
"X-API-Key": "mcp_your_key_here"
}
}
}
}Option C: OAuth2 (No API Key)
Zero-config — a browser opens for login on first connection:
{
"mcpServers": {
"mcpanalytics": {
"url": "https://api.mcpanalytics.ai/auth0"
}
}
}Browse Tools First (No Account Needed)
Explore the full tool catalog before signing up:
# Static metadata (tool names, descriptions, all transport options)
curl https://api.mcpanalytics.ai/.well-known/mcp.json
# MCP protocol discovery (no auth — works with any MCP client)
curl -X POST https://api.mcpanalytics.ai/mcp/discover \
-H 'Content-Type: application/json' \
-d '{"jsonrpc":"2.0","method":"tools/list","id":1,"params":{}}'3. Start Analyzing
Restart your MCP client. Ask:
"Upload sales.csv and find what drives revenue"
"What statistical test should I use for this survey data?"
"Forecast next quarter's sales from this time series"
How It Works
The MCP Analytics Workflow
Ask Your Question - Describe what you want to analyze in natural language
Intelligent Discovery -
tools.discoverfinds the right analytical approachData Upload -
datasets.uploadsecurely processes your dataAutomated Analysis -
tools.runexecutes with optimal configurationInteractive Results -
reports.viewdelivers shareable insights
User: "What drives our sales growth?"
MCP Analytics:
→ Discovers regression and correlation methods
→ Configures analysis for your data structure
→ Runs multiple analytical approaches
→ Returns comprehensive report with insightsMCP Tools
The platform provides a complete suite of MCP tools for end-to-end analytics:
Core Analytics Tools
discover_tools- Natural language tool discovery (5-signal semantic search)tools_run- Execute an analysis module on your datatools_info- Get tool documentation and schematools_schema- Inspect column requirements for a tool
Data Management
datasets_upload- Secure data upload with encryptiondatasets_list- List your uploaded datasetsdatasets_read- Preview dataset contentsdatasets_download- Download a datasetdatasets_update- Update dataset metadata
Connectors
connectors_list- List available data source connectionsconnectors_query- Pull live data from a connected source
Reporting & Insights
reports_view- Open an interactive HTML reportreports_list- List your reportsreports_search- Semantic search across past analysesagent_advisor- Conversational AI that guides analysis and interprets results
Platform Tools
billing- Usage and subscription managementabout- Platform information and status
Features
Natural Language Interface
Just describe what you need:
"What drives our revenue growth?"
"Find customer segments in our data"
"Forecast next quarter's sales"
"Did our marketing campaign work?"Comprehensive Analysis Suite
Statistical Methods
Regression Analysis
Advanced Modeling
Hypothesis Testing
Survival Analysis
Bayesian Methods
Machine Learning
Ensemble Methods
Boosting Algorithms
Neural Networks
Clustering
Dimensionality Reduction
Time Series
Forecasting
Seasonal Analysis
Trend Detection
Multivariate Models
Causal Analysis
Business Analytics
Customer Analytics
Market Analysis
Pricing Models
Predictive Analytics
Experimental Design
Seamless Workflow
graph LR
A[Ask in Claude/Cursor] --> B[MCP Analytics]
B --> C[Secure Processing]
C --> D[Interactive Report]
D --> E[Share Results]Example Usage
Basic Regression
User: "I have a CSV with house prices. Can you predict price based on size and location?"
Claude: [Runs linear regression, provides R², coefficients, and diagnostic plots]Customer Segmentation
User: "Segment my customers in sales_data.csv into meaningful groups"
Claude: [Performs k-means clustering, creates segment profiles with visualizations]Time Series Forecasting
User: "Forecast next quarter's revenue using our historical data"
Claude: [Applies ARIMA, generates predictions with confidence intervals]Security & Compliance
Enterprise Security Features
Authentication: OAuth2 via Auth0 with PKCE
Encryption: TLS 1.3 for all data transfers
Processing: Isolated Docker containers per analysis
Data Handling: Ephemeral processing, no persistence
Access Control: OAuth 2.0 scoped permissions with usage limits
Audit Trail: Complete logging for compliance
Privacy & Data Handling
Data Privacy: Ephemeral processing, no data retention
User Rights: Data deletion upon request
Secure Processing: Isolated containers per analysis
Enterprise Options: Contact us for compliance requirements
Read full security documentation →
Architecture
flowchart TB
subgraph "Client Integration"
CLI[CLI/SDK]
Claude[Claude Desktop]
Cursor[Cursor IDE]
MCP[MCP Protocol]
end
subgraph "API Gateway"
LB[Load Balancer]
Auth[OAuth 2.0/Auth0]
Rate[Rate Limiting]
end
subgraph "Processing Layer"
Router[Request Router]
Queue[Job Queue]
Workers[Processing Workers]
Docker[Docker Containers]
end
subgraph "Analytics Engine"
Stats[Statistical Methods]
ML[Machine Learning]
TS[Time Series]
Report[Report Generation]
end
subgraph "Data Layer"
Cache[Results Cache]
Storage[Secure Storage]
Encrypt[Encryption Layer]
end
CLI --> LB
Claude --> LB
Cursor --> LB
MCP --> LB
LB --> Auth
Auth --> Rate
Rate --> Router
Router --> Queue
Queue --> Workers
Workers --> Docker
Docker --> Stats
Docker --> ML
Docker --> TS
Stats --> Report
ML --> Report
TS --> Report
Report --> Cache
Cache --> Storage
Storage --> Encrypt
style Auth fill:#e8f5e9
style Docker fill:#fff3e0
style Report fill:#e3f2fdPerformance
Dataset Size: Handles large datasets
Processing Time: Fast cloud-based processing
Secure Infrastructure: Isolated Docker containers
API Access: RESTful API with authentication
Getting Started
Visit our website for pricing and signup →
Documentation
Quick Start Guide - Get running in under a minute
Architecture - How the platform works
Connectors - GA4, GSC, and CSV data sources
Pricing - Plans and limits
Security - Security & compliance details
API Reference - Complete API documentation
Tutorials - Step-by-step guides
Support
Issues: GitHub Issues
Email: support@mcpanalytics.ai
Docs: mcpanalytics.ai/docs
Enterprise: sales@mcpanalytics.ai
Comparison with Other MCP Servers
Feature | MCP Analytics | Google Analytics MCP | PostgreSQL MCP | Filesystem MCP |
Use Case | Statistical Analysis | Web Metrics | Database Queries | File Access |
Setup Time | 30 seconds | OAuth + Config | Connection string | Path config |
Data Sources | Any CSV/JSON/URL | GA4 Only | PostgreSQL Only | Local files |
Analysis Tools | Full Suite | GA4 Metrics | SQL Only | Read/Write |
Machine Learning | ✅ Full Suite | ❌ | ❌ | ❌ |
Visualizations | ✅ Interactive | ✅ Dashboards | ❌ | ❌ |
Shareable Reports | ✅ | ❌ | ❌ | ❌ |
About MCP Analytics
MCP Analytics is built by data scientists and engineers passionate about making advanced statistical analysis accessible through AI assistants. The platform runs validated, deterministic analysis modules — the same data and tool produce the same result every time, unlike LLM code generation.
Testing & Support
Testing Your Connection
After installation, restart your MCP client and look for "MCP Analytics" in the available tools. You should see tools like discover_tools, tools_run, datasets_upload, etc.
# Test the stdio proxy directly:
MCP_ANALYTICS_API_KEY=mcp_your_key npx -y @mcp-analytics/mcp-analytics
# Should output: "[mcp-analytics] Connected to https://api.mcpanalytics.ai. 19 tools available."Troubleshooting
If MCP Analytics doesn't appear after installation:
Ensure your config file is valid JSON
Restart your MCP client completely
Verify your API key starts with
mcp_Check the client's developer console for errors
Try running the npx command in a terminal to see errors
For support: support@mcpanalytics.ai
Contributing
While the core server is proprietary, we welcome contributions to:
Documentation improvements
Example notebooks and use cases
Bug reports and feature requests
Community tools and integrations
See CONTRIBUTING.md for guidelines.
License
Copyright © 2025 PeopleDrivenAI LLC. All Rights Reserved.
MCP Analytics is a product of PeopleDrivenAI LLC.
This is commercial software. Use of the MCP Analytics service is subject to our:
Ready to transform your data analysis workflow?
Get Started Free | Read Docs | View Demo
Built by MCP Analytics | Powered by R & Python
If MCP Analytics saves you time, a ⭐ on GitHub helps others find it.
Tags: mcp mcp-server model-context-protocol analytics data-analytics shopify-analytics stripe-analytics csv-analysis statistics machine-learning time-series clustering regression business-intelligence claude cursor ai-tools no-code-analytics forecasting customer-analytics
Maintenance
Latest Blog Posts
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/embeddedlayers/mcp-analytics'
If you have feedback or need assistance with the MCP directory API, please join our Discord server