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Business Intelligence Server

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Enables AI-powered business intelligence queries on Elasticsearch data using natural language and Claude integration via MCP.

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Описание

Enables AI-powered business intelligence queries on Elasticsearch data using natural language and Claude integration via MCP.

README

AI-Powered Business Intelligence Assistant with Elasticsearch and Claude integration via Model Context Protocol (MCP)

Python Elasticsearch MCP Claude

Overview

This project provides an intelligent business data analysis system that combines:

  • Advanced Search: Keyword, semantic (ELSER), dense vector embeddings, and hybrid search
  • Analytics: Real-time aggregations and business metrics
  • AI Integration: Claude-powered Q&A and insights via MCP
  • Web Interface: User-friendly dashboard for data exploration
  • Claude Desktop: Direct AI assistant integration through MCP protocol

Architecture Options

Direct Mode:          Browser → Flask → Elasticsearch
MCP Mode:             Browser → Flask → MCP Server → Elasticsearch  
Claude Desktop:       Claude Desktop → MCP Server → Elasticsearch

Architecture

Components

Screenshot 2025-08-01 at 7 50 08 AM

Data Flow

  1. User Query → Web interface or Claude Desktop
  2. Processing → Flask app or MCP server handles request
  3. Search/Analysis → Elasticsearch with ML inference
  4. AI Enhancement → Claude provides insights (optional)
  5. Response → Formatted results returned to user

Prerequisites

1. Elasticsearch Cloud Setup

You need an Elasticsearch Cloud deployment (version 8.15+) with the following models and inference endpoints configured:

Required ML Models

  • ELSER v2 (.elser_model_2_linux-x86_64) - Sparse vector semantic search
  • E5 Multilingual Small (.multilingual-e5-small_linux-x86_64) - Dense vector embeddings
  • Rerank v1 (.rerank-v1) - Search result reranking
  • Language Identification (lang_ident_model_1) - Built-in model

Required Inference Endpoints

{
  "endpoints": [
    {
      "inference_id": ".elser-2-elasticsearch",
      "task_type": "sparse_embedding", 
      "service": "elasticsearch",
      "service_settings": {
        "model_id": ".elser_model_2_linux-x86_64",
        "adaptive_allocations": { "enabled": true, "min_number_of_allocations": 0, "max_number_of_allocations": 32 }
      }
    },
    {
      "inference_id": ".multilingual-e5-small-elasticsearch",
      "task_type": "text_embedding",
      "service": "elasticsearch", 
      "service_settings": {
        "model_id": ".multilingual-e5-small_linux-x86_64",
        "adaptive_allocations": { "enabled": true, "min_number_of_allocations": 0, "max_number_of_allocations": 32 }
      }
    },
    {
      "inference_id": ".rerank-v1-elasticsearch",
      "task_type": "rerank",
      "service": "elasticsearch",
      "service_settings": {
        "model_id": ".rerank-v1",
        "adaptive_allocations": { "enabled": true, "min_number_of_allocations": 0, "max_number_of_allocations": 32 }
      }
    },
    {
      "inference_id": "claude-completions",
      "task_type": "completion", 
      "service": "anthropic",
      "service_settings": {
        "model_id": "claude-sonnet-4-20250514",
        "rate_limit": { "requests_per_minute": 50 }
      }
    }
  ]
}

Index Mapping

Your Elasticsearch index must have this mapping structure:

{
  "business_intelligence": {
    "mappings": {
      "properties": {
        "date": { "type": "date" },
        "sales_rep": { "type": "text", "fields": { "keyword": { "type": "keyword" } } },
        "region": { "type": "text", "fields": { "keyword": { "type": "keyword" } } },
        "product_name": { "type": "text", "fields": { "keyword": { "type": "keyword" } } },
        "product_category": { "type": "text", "fields": { "keyword": { "type": "keyword" } } },
        "sales_amount": { "type": "double" },
        "revenue": { "type": "double" },
        "order_count": { "type": "integer" },
        "customer_count": { "type": "integer" },
        "description": { "type": "text" },
        "notes": { "type": "text" },
        "ml": {
          "properties": {
            "inference": {
              "properties": {
                "description_elser": { "type": "sparse_vector" },
                "description_embedding": { 
                  "type": "dense_vector", "dims": 384, "index": true, "similarity": "cosine"
                },
                "model_id": { "type": "text", "fields": { "keyword": { "type": "keyword" } } }
              }
            }
          }
        }
      }
    }
  }
}

2. Python Environment

  • Python 3.8+
  • Virtual environment (recommended)

3. Claude API Access

  • Anthropic API key for Claude Sonnet 4
  • Configured in Elasticsearch as an inference endpoint

4. Demo Data (Essential)

  • Run python complete_setup_data.py after configuration
  • Generates 500+ realistic business records spanning 2023-2024
  • Includes comprehensive AI inference processing for semantic search capabilities
  • ** Required for meaningful demo experience**
  • Fallback option: Use --skip-inference if ML models unavailable

Installation

1. Clone Repository

git clone https://github.com/yourusername/business-intelligence-mcp.git
cd business-intelligence-mcp

2. Create Virtual Environment

python -m venv venv
source venv/bin/activate  # On Windows: venv\Scripts\activate

3. Install Dependencies

pip install -r requirements.txt

4. Configure Environment

Create a .env file in the project root:

# Elasticsearch Cloud Configuration
ELASTICSEARCH_ENDPOINT=https://your-deployment.es.region.aws.elastic-cloud.com
ELASTICSEARCH_API_KEY="your-api-key-here"

# Alternative: Username/Password Authentication
# ELASTICSEARCH_USERNAME=elastic
# ELASTICSEARCH_PASSWORD=your-password

# Index Configuration
ELASTICSEARCH_INDEX=business_intelligence

# Inference Endpoint IDs
ELSER_INFERENCE_ID=.elser-2-elasticsearch
EMBEDDING_INFERENCE_ID=.multilingual-e5-small-elasticsearch
RERANK_INFERENCE_ID=.rerank-v1-elasticsearch
COMPLETION_INFERENCE_ID=claude-completions

# Web Server Configuration
PORT=5000
NODE_ENV=development

# Optional: Logging
LOG_LEVEL=INFO

5. Setup Demo Data

** IMPORTANT**: You need sample data to demo the system effectively.

Automated Setup (Recommended)

python complete_setup_data.py

This will:

  • Test Elasticsearch connection
  • Create the index with comprehensive field mappings
  • Generate 500 realistic business records (2023-2024)
  • Index sample data with proper structure
  • Add AI inference processing (ELSER + E5 embeddings)
  • Verify all search capabilities
  • Test keyword, semantic, and aggregation features

What Sample Data is Generated

The setup creates realistic business data including:

Field Sample Values
Regions North America, Europe, Asia Pacific, Latin America, Middle East & Africa
Products Enterprise Software, Cloud Services, Professional Services, Hardware, Training, Support
Sales Reps Alice Johnson, Bob Smith, Carol Davis, David Wilson, Eva Martinez, Frank Chen, Grace Kim, Henry Lopez
Date Range January 2023 - December 2024 (500 records)
Metrics Sales amounts ($1K-$300K), Revenue, Order counts, Customer counts
AI Features ELSER sparse vectors, E5 dense embeddings for semantic search

Setup Options

# Full setup with AI inference (recommended)
python complete_setup_data.py

# Basic setup without AI inference (if ML models not available)
python complete_setup_data.py --skip-inference

# Add data to existing index (don't reset)
python complete_setup_data.py --no-reset

# View all options
python complete_setup_data.py --help

If ML Models Aren't Available

If you don't have ELSER or E5 models deployed, use:

python complete_setup_data.py --skip-inference

This provides:

  • All basic functionality (keyword search, analytics)
  • Complete demo data for meaningful exploration
  • No semantic search (ELSER/E5 features disabled)

6. Verify Complete Setup

python start.py

Select option 4 (Test Connection) to verify your Elasticsearch setup and data.

Quick Start

Essential Steps for Demo

  1. Complete the Installation (sections 1-4 above)
  2. ⚠ CRITICAL: Run Data Setup - python complete_setup_data.py
  3. Launch the Application - python start.py → Choose option 1 or 2
  4. Open Browser - http://localhost:5000
  5. Try Sample Queries:
    • "Show me enterprise software sales"
    • "Top regions by revenue"
    • "Professional services in Asia Pacific"

Usage

Option 1: Interactive Startup Menu

python start.py

Choose from:

  1. Direct Mode - Simple web app with direct Elasticsearch access
  2. MCP Mode - Web app + MCP server for AI integration
  3. Setup & Configuration - Configuration helper
  4. Test Connection - Verify Elasticsearch connectivity
  5. Help & Documentation - Detailed help

Option 2: Direct Launch

Web Interface (Direct Mode)

python webapp.py
  • URL: http://localhost:5000
  • Features: All search types, analytics, Claude Q&A
  • Architecture: Browser → Flask → Elasticsearch

MCP-Powered Mode

python webapp_mcp.py
  • URL: http://localhost:5000
  • Features: Full MCP integration, enhanced AI capabilities
  • Architecture: Browser → Flask → MCP Server → Elasticsearch

Standalone MCP Server

python mcp_server.py
  • Protocol: JSON-RPC over stdin/stdout
  • Usage: For Claude Desktop or other MCP clients

Claude Desktop Integration

1. Configure Claude Desktop

Add to your Claude Desktop configuration file:

macOS: ~/Library/Application Support/Claude/claude_desktop_config.json Windows: %APPDATA%\Claude\claude_desktop_config.json

{
  "mcpServers": {
    "business-intelligence": {
      "command": "/path/to/your/venv/bin/python",
      "args": ["/path/to/your/project/mcp_server.py"],
      "cwd": "/path/to/your/project/"
    }
  }
}

2. Enhanced MCP Server Features

The MCP server now includes full AI search capabilities:

Search Type Description Requires
Keyword Traditional text matching Always available
Semantic (ELSER) AI-powered concept understanding ELSER model deployed
Embedding (E5) Dense vector similarity search E5 model deployed
Hybrid Combines keyword + semantic Both ELSER + E5 models
Rerank AI-powered result reranking Rerank model deployed

The server automatically detects which AI capabilities are available and adjusts accordingly.

3. Example Claude Queries

Once connected, you can ask Claude:

Basic Business Questions:

  • "What are our top 5 regions by sales revenue?"
  • "Show me Q4 performance trends by product category"
  • "Which sales rep has the highest customer conversion rate?"

Semantic Search (if ELSER available):

  • "Find profitable enterprise solutions" (understands concepts, not just keywords)
  • "Show me underperforming product lines" (semantic understanding)
  • "Identify growth opportunities in emerging markets" (conceptual matching)

Advanced Analytics:

  • "Analyze our enterprise software performance vs hardware sales"
  • "Compare regional performance and suggest expansion strategies"
  • "Find all deals over $50K in the last quarter with growth potential"

4. Check AI Capabilities

You can ask Claude: "What AI search capabilities are available?" to see which features are active.

Features

Advanced Search Types

Search Type Description Use Case
Keyword Traditional text matching Exact product names, regions
Semantic (ELSER) AI-powered concept understanding "profitable products", "underperforming regions"
Dense Vector (E5) Multilingual similarity search Cross-language queries, fuzzy matching
Hybrid Combines keyword + semantic Best of both approaches
Rerank AI-powered result reranking Improved relevance scoring

Business Analytics

  • Sales by Region - Geographic performance analysis
  • Revenue by Category - Product line profitability
  • Orders by Sales Rep - Individual performance metrics
  • Time-filtered Reports - Last month, quarter, YTD analysis
  • Custom Aggregations - Flexible metric combinations

AI-Powered Features

  • Claude Q&A - Natural language queries about your data
  • Smart Search - Intelligent query interpretation and analysis
  • Contextual Insights - AI-generated business recommendations
  • Automated Reporting - AI-summarized performance metrics

API Endpoints

Web API

Endpoint Method Description
/api/search POST Advanced search with multiple types
/api/aggregate POST Business metric aggregations
/api/claude-qa POST AI-powered Q&A with context
/api/smart-search POST Intelligent search + analysis
/api/health GET System health and configuration
/api/mcp-tools GET List available MCP tools

MCP Tools

Tool Description
search_business_data Enhanced search with keyword, semantic (ELSER), embedding (E5), hybrid, and rerank options
aggregate_business_metrics Perform business data aggregations with time filtering
get_business_summary Comprehensive business overview with AI capability info
get_ai_capabilities New: Check available AI search features and inference endpoints

Sample Data Structure

The following data structure is automatically generated by python setup_data.py:

{
  "date": "2024-12-29T00:00:00",
  "sales_rep": "Eva Martinez", 
  "region": "Asia Pacific",
  "product_name": "Professional Services",
  "product_category": "Services",
  "sales_amount": 150857.65,
  "revenue": 128229,
  "order_count": 9,
  "customer_count": 5,
  "description": "Professional Services sale in Asia Pacific handled by Eva Martinez...",
  "notes": "Q4 2024 performance. Strong Asia Pacific market presence.",
  "ml": {
    "inference": {
      "description_elser": { "professional": 1.69, "services": 1.14, "asia": 1.37, "..." },
      "description_embedding": [0.028, -0.027, -0.068, "...384 dimensions"],
      "model_id": [".elser-2-elasticsearch", ".multilingual-e5-small-elasticsearch"]
    }
  }
}

Generated by setup script: 500 records across 10 product types, 5 regions, 8 sales reps, spanning 2023-2024, with comprehensive AI inference processing.

📁 Project Structure

Key Files

File Purpose
complete_setup_data.py Complete data setup - Creates index, generates sample data, adds AI inference
start.py Interactive launcher - Choose between different run modes
webapp.py Direct mode - Flask app with direct Elasticsearch access
webapp_mcp.py MCP mode - Flask app + MCP server integration
mcp_server.py Enhanced MCP server - Full AI search capabilities for Claude Desktop
requirements.txt Dependencies - Python package requirements
.env ⚙Configuration - Environment variables and settings
templates/index.html Web interface - Modern Tailwind CSS dashboard

Recommended Workflow

  1. Setup: python complete_setup_data.py (creates comprehensive demo data)
  2. Launch: python start.py (interactive menu)
  3. Demo: Open http://localhost:5000 and explore
  4. Claude Integration: Configure enhanced MCP server for full AI assistant access

Enhanced MCP Server

The mcp_server.py now includes:

  • Auto-detection of available AI models (ELSER, E5, Rerank)
  • Graceful fallbacks when AI models aren't available
  • Full search types (keyword, semantic, embedding, hybrid, rerank)
  • AI capability reporting for debugging and optimization

Contributing

  1. Fork the repository
  2. Create a feature branch (git checkout -b feature/amazing-feature)
  3. Commit your changes (git commit -m 'Add amazing feature')
  4. Push to the branch (git push origin feature/amazing-feature)
  5. Open a Pull Request

from github.com/mikecali/bi_with_elasticsearch_mcp

Установка Business Intelligence Server

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/mikecali/bi_with_elasticsearch_mcp

FAQ

Business Intelligence Server MCP бесплатный?

Да, Business Intelligence Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Business Intelligence Server?

Нет, Business Intelligence Server работает без API-ключей и переменных окружения.

Business Intelligence Server — hosted или self-hosted?

Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.

Как установить Business Intelligence Server в Claude Desktop, Claude Code или Cursor?

Открой Business Intelligence Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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