CAT
/MCP
SkillsMCPMarketplacesDigestToolsAdvertise

This week in Claude

Every Monday: Claude Code, Agent SDK, MCP, and the Anthropic platform moves worth your time.

Skills by Category
Frontend DevelopmentBackend & APIsTesting & QASecurityDevOps & CI/CDGit & Pull RequestsDocumentationCode Review & QualityAI & Agent BuildingSkill Development
MCP Servers by Category
Sales & MarketingWeb & Browser AutomationDatabasesAI & LLM ToolsCloud & InfrastructureCommunication & MessagingDeveloper ToolsDesign & CreativeDocuments & KnowledgeSearch & Web Crawling
Marketplaces by Category
AI Agents & OrchestrationLLM IntegrationDevelopment ToolsFrontend & UIBackend & APIsDatabasesTesting & Code QualityDevOps & CloudSecurity & ComplianceGit & Version Control

Cross AI Tools

Discover Claude Code plugins, extensions, and tools. Automatically updated directory of Anthropic Claude AI marketplaces with development tools, productivity plugins, and integrations.

Resources

  • Browse Skills
  • Browse MCP Servers
  • Browse Marketplaces
  • Plugins Reference

Community

  • About
  • Tools
  • Feedback
  • Privacy Policy
  • Advertise

Built for the Claude Code community with Claude Code by @mertduzgun

Independent project, not affiliated with Anthropic

Analytics

embeddedlayers/mcp-analytics
619 toolsHTTPregistry active
Summary

Connects your data sources (CSV uploads, GA4, GSC, Shopify, Stripe) to a team of specialist agents that build custom analysis modules on demand. You ask a question, upload data or link a live source, and get back an interactive HTML report with charts, AI insights, and embedded R source code. The module joins your private library and reruns on fresh data for a fraction of the build cost. Exposes MCP tools for semantic discovery, dataset upload, tool execution, and report viewing. Currently in beta with a v2 rebuild underway. Reach for this when you need reproducible statistical analysis that compounds over time rather than one-off spreadsheet work.

CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →

Tools

Public tool metadata for what this MCP can expose to an agent.

19 tools
aboutGet platform info, pricing, usage stats, or documentation.1 params

Get platform info, pricing, usage stats, or documentation.

Parameters* required
topicstring
Topic: platform, pricing, current_usage, manual, or a docs section
discover_toolsFind analysis tools matching your data or question. Semantic search across 50+ statistical and ML tools.2 params

Find analysis tools matching your data or question. Semantic search across 50+ statistical and ML tools.

Parameters* required
querystring
Text query describing what you want to analyze
datasetstring
Dataset UUID to match tools against
tools_schemaGet JSON schema for a tool — column_mapping and module_parameters required before tools_run.1 params

Get JSON schema for a tool — column_mapping and module_parameters required before tools_run.

Parameters* required
tool_namestring
Name of the tool
tools_runExecute an analysis tool. Returns a shareable interactive HTML report URL.2 params

Execute an analysis tool. Returns a shareable interactive HTML report URL.

Parameters* required
taskListobject
Contains inputs: dataset, userContext, column_mapping, module_parameters
tool_namestring
Name of the tool to execute
tools_infoGet detailed information about a specific analysis tool — use cases, assumptions, data requirements.1 params

Get detailed information about a specific analysis tool — use cases, assumptions, data requirements.

Parameters* required
tool_namestring
Name of the tool
datasets_uploadGenerate a secure upload token for CSV files. Returns UUID + curl command for the user.1 params

Generate a secure upload token for CSV files. Returns UUID + curl command for the user.

Parameters* required
expires_ininteger
Token expiration in secondsdefault: 300
datasets_listList and search uploaded datasets with fuzzy matching.2 params

List and search uploaded datasets with fuzzy matching.

Parameters* required
limitinteger
Max resultsdefault: 20
searchstring
Search by name, description, or tags
datasets_readRead, filter, and search dataset rows. Use 'search' to find text across all columns, 'filters' for multi-column AND filtering, or filter_column for simple lookups. For row-level questions ('find rows where X'), use this — not an analysis tool.12 params

Read, filter, and search dataset rows. Use 'search' to find text across all columns, 'filters' for multi-column AND filtering, or filter_column for simple lookups. For row-level questions ('find rows where X'), use this — not an analysis tool.

Parameters* required
modestring
full, metadata, head, tail, sample
uuidstring
Dataset UUID
searchstring
Search text across ALL columns (case-insensitive)
secretstring
Dataset secret key
columnsarray
Columns to return
filtersarray
Multi-filter [{column, operator, value}]. Operators: eq, ne, gt, lt, contains, not_contains, regex, starts_with, ends_with, is_null, not_null
sort_bystring
sort_orderstring
default: asc
sample_sizeinteger
default: 10
filter_valuevalue
filter_columnstring
filter_operatorstring
default: eq
datasets_downloadGenerate a single-use download token for securely downloading datasets.1 params

Generate a single-use download token for securely downloading datasets.

Parameters* required
uuidstring
Dataset UUID
datasets_updateUpdate dataset metadata — name, description, tags, visibility.1 params

Update dataset metadata — name, description, tags, visibility.

Parameters* required
uuidstring
Dataset UUID
connectors_listList available data connectors — GA4, Google Search Console, and more.

List available data connectors — GA4, Google Search Console, and more.

No parameter schema in public metadata yet.

connectors_queryPull live data from a connected source using connector:// URIs.1 params

Pull live data from a connected source using connector:// URIs.

Parameters* required
uristring
Connector URI (e.g., connector://mcpanalytics_gsc/search_analytics?...)
reports_listList analysis reports with metadata.1 params

List analysis reports with metadata.

Parameters* required
limitinteger
Max resultsdefault: 10
reports_searchSearch reports by job ID, tool name, or keyword.2 params

Search reports by job ID, tool name, or keyword.

Parameters* required
querystring
Search query
job_idsarray
Filter by processing IDs
reports_viewView a specific report by processing ID.1 params

View a specific report by processing ID.

Parameters* required
processing_idstring
Processing ID from tools_run
report_cardsGet individual card data from a report for rendering.1 params

Get individual card data from a report for rendering.

Parameters* required
processing_idstring
agent_advisorConversational AI that guides analysis and interprets results.1 params

Conversational AI that guides analysis and interprets results.

Parameters* required
messagestring
Your question or request
billingCheck credit balance, subscription status, or open billing portal.1 params

Check credit balance, subscription status, or open billing portal.

Parameters* required
actionstring
Billing actionone of status · portal · usagedefault: status
module_requestRequest a custom analysis module to be built for your use case.1 params

Request a custom analysis module to be built for your use case.

Parameters* required
descriptionstring
Describe the analysis you need

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 →

Glama Score npm License Platform Docs

Hire the team. Own the analysis. Rerun forever.

🚀 Quick Start • 🔄 How It Works • 🛠️ MCP Tools • 🛡️ Security • 📖 Documentation

Demo Video

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 environment

Option 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

  1. Ask Your Question - Describe what you want to analyze in natural language
  2. Intelligent Discovery - tools.discover finds the right analytical approach
  3. Data Upload - datasets.upload securely processes your data
  4. Automated Analysis - tools.run executes with optimal configuration
  5. Interactive Results - reports.view delivers 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 insights

MCP 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 data
  • tools_info - Get tool documentation and schema
  • tools_schema - Inspect column requirements for a tool

Data Management

  • datasets_upload - Secure data upload with encryption
  • datasets_list - List your uploaded datasets
  • datasets_read - Preview dataset contents
  • datasets_download - Download a dataset
  • datasets_update - Update dataset metadata

Connectors

  • connectors_list - List available data source connections
  • connectors_query - Pull live data from a connected source

Reporting & Insights

  • reports_view - Open an interactive HTML report
  • reports_list - List your reports
  • reports_search - Semantic search across past analyses
  • agent_advisor - Conversational AI that guides analysis and interprets results

Platform Tools

  • billing - Usage and subscription management
  • about - 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:#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 →

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

FeatureMCP AnalyticsGoogle Analytics MCPPostgreSQL MCPFilesystem MCP
Use CaseStatistical AnalysisWeb MetricsDatabase QueriesFile Access
Setup Time30 secondsOAuth + ConfigConnection stringPath config
Data SourcesAny CSV/JSON/URLGA4 OnlyPostgreSQL OnlyLocal files
Analysis ToolsFull SuiteGA4 MetricsSQL OnlyRead/Write
Machine Learning✅ Full Suite❌❌❌
Visualizations✅ Interactive✅ Dashboards❌❌
Shareable Reports✅❌❌❌

Detailed comparison →

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:

  1. Ensure your config file is valid JSON
  2. Restart your MCP client completely
  3. Verify your API key starts with mcp_
  4. Check the client's developer console for errors
  5. 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:

  • Terms of Service
  • Privacy Policy
  • Acceptable Use Policy

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

Featured
CodeRabbit
CodeRabbit
AI writes the code. CodeRabbit catches the slop.
Try For Free →
Keep your Mac awake
Keep your Mac awake
Keep your Mac awake while Claude Code and 40+ AI agents run. Sleeps when they're idle.
One time payment $9 →
Context.devContext.dev
Context.dev
Integrate web data into your AI product. One API to scrape website & brand data.
Get API Key Now →
Make your agent a DeFi expert
Make your agent a DeFi expert
Agent, run crypto. Access onchain data & trade routes via 1inch.
Install now →
Make money from your Skills
Make money from your Skills
On Capafy, your Skill runs online 24/7 as an agent product, and you get paid every time someone uses it.
Start earning →
AppSignal
AppSignal
Monitor with ease. Code with confidence.
Start Free Trial →
Categories
Monitoring & ObservabilityData & Analytics
Registryactive
TransportHTTP
UpdatedMar 27, 2026
View on GitHub

Related Monitoring & Observability MCP Servers

View all →
Mcp Observability

io.github.infoinlet-marketplace/mcp-observability

Observability for incident agents — query Loki (LogQL), Prometheus (PromQL), Elasticsearch.
Monitor

betterdb-inc/monitor

BetterDB MCP server - Valkey observability for Claude Code and other MCP clients
1.1k
Datadog

com.mcparmory/datadog

Monitor infrastructure, manage agents and deployments, track metrics, logs, and events
25
Observability Mcp

thotischner/observability-mcp

Unified observability gateway for AI agents — Prometheus, Loki & more, with anomaly detection.
5
Datadog Mcp

io.github.tantiope/datadog-mcp

Full Datadog API access: monitors, logs, metrics, traces, dashboards, and observability tools
4
Datadog

io.github.us-all/datadog

Datadog MCP — 165 tools for metrics, monitors, logs, APM, RUM, incidents, CI/CD, fleet
1