
analytics
ai.mcpanalytics/analytics
MCP Analytics, searchable tools and reports with interactive HTML visualization
Documentation
MCP Analytics Suite
Every analysis starts with a question. We handle the rest.
π Quick Start β’ π How It Works β’ π οΈ MCP Tools β’ π‘οΈ Security β’ π Documentation
The Formula
Question + Dataset = Analytics
Transform business questions into actionable insights through intelligent discovery
Overview
MCP Analytics Suite is an intelligent analytics platform that understands what you want to analyze and automatically selects the right approach. No statistics degree requiredβjust describe your business question and let our AI-powered discovery handle the complexity.
Why MCP Analytics?
- Intelligent Discovery: Automatically finds the right analytical approach
- Complete Workflow: From question to insight in one seamless flow
- Zero Setup: Cloud-based processing, works instantly
- Enterprise Security: OAuth2, encryption, isolated processing
- Comprehensive Suite: Full range of analytical capabilities
- Interactive Reports: Shareable visualizations with AI insights
Quick Start
Installation
For Claude Desktop
Add to your config file:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json
- Windows:
%APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"mcp-analytics": {
"command": "npx",
"args": ["-y", "mcp-remote@latest", "https://api.mcpanalytics.ai/auth0"]
}
}
}
For Cursor
Add to .cursor/config.json
in your project root:
{
"mcpServers": {
"mcp-analytics": {
"command": "npx",
"args": ["-y", "mcp-remote@latest", "https://api.mcpanalytics.ai/auth0"]
}
}
}
For VS Code (Continue Extension)
Add to your Continue config at ~/.continue/config.json
:
{
"models": [{
"provider": "anthropic",
"model": "claude-3-5-sonnet",
"mcpServers": {
"mcp-analytics": {
"command": "npx",
"args": ["-y", "mcp-remote@latest", "https://api.mcpanalytics.ai/auth0"]
}
}
}]
}
For Claude Code
Add to claude_code_config.json
:
{
"mcpServers": {
"mcp-analytics": {
"command": "npx",
"args": ["-y", "mcp-remote@latest", "https://api.mcpanalytics.ai/auth0"]
}
}
}
How It Works
The MCP Analytics Workflow
- Ask Your Question - Describe what you want to analyze in natural language
- Intelligent Discovery -
tools.discover
finds the right analytical approach - Data Upload -
datasets.upload
securely processes your data - Automated Analysis -
tools.run
executes with optimal configuration - Interactive Results -
reports.view
delivers shareable insights
User: "What drives our sales growth?"
MCP Analytics:
β Discovers regression and correlation methods
β Configures analysis for your data structure
β Runs multiple analytical approaches
β Returns comprehensive report with insights
MCP Tools
The platform provides a complete suite of MCP tools for end-to-end analytics:
Core Analytics Tools
tools.discover
- Natural language tool discoverytools.run
- Automated analysis executiontools.info
- Get tool documentation
Data Management
datasets.upload
- Secure data upload with encryptiondatasets.list
- Manage your datasetsdatasets.read
- Access and preview data
Reporting & Insights
reports.view
- Interactive visualization dashboardreports.search
- Semantic search across analyses
Platform Tools
billing()
- Usage and subscription managementabout()
- Platform information and statusmanual()
- Documentation access
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
|
Machine Learning
|
Time Series
|
Business Analytics
|
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 RΒ², 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: API key management 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 β
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:#e3f2fd
Performance
- 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 β
Documentation
- Quick Start Guide - Get running in 30 seconds
- API Reference - Complete API documentation
- Platform Overview - How the platform works
- Tutorials - Step-by-step guides
- Examples - Real-world use cases
- Security - Security & compliance details
Support
- Issues: GitHub Issues
- Discord: Join our community
- 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 | β Full Suite | β | β | β |
Visualizations | β Interactive | β Dashboards | β | β |
Shareable Reports | β | β | β | β |
About MCP Analytics
MCP Analytics is built by a team of data scientists and engineers passionate about making advanced analytics accessible through AI. We're backed by enterprise customers across finance, healthcare, and e-commerce.
Coming Soon
- NPM Package: Direct installation via
npm install @mcpanalytics/server
- Smithery Integration: One-click install via Smithery CLI
- MCP Registry: Official listing in the MCP servers directory
- More Tools: Continuously expanding our analytics capabilities
Testing & Support
Testing Your Connection
After installation, restart your IDE and look for "MCP Analytics" in the available tools. On first use, you'll be prompted to authenticate via OAuth 2.0.
# To test the connection directly:
npx -y mcp-remote@latest https://api.mcpanalytics.ai/auth0
Troubleshooting
If MCP Analytics doesn't appear after installation:
- Ensure your config file is valid JSON
- Restart your IDE completely
- Check the IDE's developer console for errors
- Verify you have internet connectivity
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 Β© 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
No installation packages available.
Remote
Related Servers
ai.aliengiraffe/spotdb
Ephemeral data sandbox for AI workflows with guardrails and security
ai.klavis/strata
MCP server for progressive tool usage at any scale (see https://klavis.ai)
ai.smithery/BadRooBot-my_test_mcp
Get current weather for any city and create images from your prompts. Streamline planning, reportsβ¦