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    Ergo Mcp

    3 stars
    Roff
    Updated Aug 23, 2025

    Table of Contents

    • Problem
    • Solution
    • Features
    • Usage
    • Basic Usage
    • Command Line Usage
    • Testing
    • Implementation Details
    • Requirements
    • Overview
    • Features
    • Response Standardization
    • Standard JSON Response Structure:
    • Entity Identification and Address Clustering
    • Entity Identification Features
    • Address Clustering Endpoints
    • Open WebUI Integration
    • Usage Example
    • Open WebUI Tool Integration
    • Token Estimation
    • Token Estimation Features
    • Token Estimation in Responses
    • Usage
    • Model-Specific Estimation
    • Token Usage Guidelines
    • Historical Token Holder Tracking
    • Key Features
    • Usage Examples
    • Installation
    • Prerequisites
    • Setup
    • Docker Installation (Recommended)
    • Development
    • Documentation
    • License

    Table of Contents

    • Problem
    • Solution
    • Features
    • Usage
    • Basic Usage
    • Command Line Usage
    • Testing
    • Implementation Details
    • Requirements
    • Overview
    • Features
    • Response Standardization
    • Standard JSON Response Structure:
    • Entity Identification and Address Clustering
    • Entity Identification Features
    • Address Clustering Endpoints
    • Open WebUI Integration
    • Usage Example
    • Open WebUI Tool Integration
    • Token Estimation
    • Token Estimation Features
    • Token Estimation in Responses
    • Usage
    • Model-Specific Estimation
    • Token Usage Guidelines
    • Historical Token Holder Tracking
    • Key Features
    • Usage Examples
    • Installation
    • Prerequisites
    • Setup
    • Docker Installation (Recommended)
    • Development
    • Documentation
    • License

    Documentation

    MCP Response Standardizer

    A standardization tool for Ergo MCP API responses that transforms various output formats (JSON, Markdown, plaintext) into a consistent JSON structure for improved integration and usability.

    Problem

    The MCP API returns responses in inconsistent formats:

    • Some endpoints return JSON
    • Some return Markdown
    • Some return plain text
    • Some return mixed formats (Markdown with embedded JSON)

    This inconsistency makes it difficult to integrate with other systems and requires custom handling for each endpoint.

    Solution

    The MCPResponseStandardizer transforms all responses into a consistent JSON structure:

    json
    {
      "success": true,
      "data": {
        // Standardized response data extracted from the original
      },
      "meta": {
        "format": "json|markdown|text|mixed",
        "endpoint": "endpoint_name",
        "timestamp": "ISO-timestamp"
      }
    }

    For error responses:

    json
    {
      "success": false,
      "error": {
        "code": 400,
        "message": "Error message"
      },
      "meta": {
        "format": "json|markdown|text|mixed",
        "endpoint": "endpoint_name",
        "timestamp": "ISO-timestamp"
      }
    }

    Features

    • Automatically detects response format (JSON, Markdown, plaintext)
    • Extracts structured data from Markdown responses
    • Preserves original data structure for JSON responses
    • Extracts embedded JSON from mixed-format responses
    • Provides consistent error handling
    • Includes metadata about original format and processing timestamp

    Usage

    Basic Usage

    python
    from mcp_response_standardizer import MCPResponseStandardizer
    
    # Initialize the standardizer
    standardizer = MCPResponseStandardizer()
    
    # Standardize a response
    endpoint_name = "blockchain_status"
    response_content = "..."  # Content from the MCP API
    status_code = 200  # HTTP status code from the API call
    
    # Get standardized response
    standardized = standardizer.standardize_response(
        endpoint_name, 
        response_content, 
        status_code
    )
    
    # Access the standardized data
    if standardized["success"]:
        data = standardized["data"]
        # Use the standardized data...
    else:
        error = standardized["error"]
        print(f"Error {error['code']}: {error['message']}")

    Command Line Usage

    You can also use the standardizer from the command line:

    bash
    python mcp_response_standardizer.py blockchain_status response.txt

    Where:

    • blockchain_status is the endpoint name
    • response.txt is a file containing the response content

    Testing

    A test script test_standardizer.py is provided to demonstrate the standardizer with sample responses:

    bash
    python test_standardizer.py

    This script:

    1. Creates sample responses in different formats

    2. Saves them to the sample_responses directory

    3. Processes each sample using the standardizer

    4. Saves the standardized output for comparison

    Implementation Details

    The standardizer uses the following approach:

    1. Check if response is an error based on HTTP status code

    2. Determine the original format (JSON, Markdown, text)

    3. Process the response according to its format:

    • JSON: Parse and preserve the structure
    • Markdown: Extract structured data (headers, lists, tables, code blocks)
    • Text: Convert to key-value pairs when possible
    • Mixed: Extract embedded JSON and combine with other extracted data

    4. Format the result in the standardized structure

    5. Include metadata about the original format and processing

    Requirements

    • Python 3.6+
    • No external dependencies required

    Ergo Explorer MCP

    Ergo Explorer Model Context Protocol (MCP) is a comprehensive server that provides AI assistants with direct access to Ergo blockchain data through a standardized interface.

    Overview

    This project bridges the gap between AI assistants and the Ergo blockchain ecosystem by:

    • Providing structured blockchain data in AI-friendly formats
    • Enabling complex blockchain analysis through simple natural language queries
    • Supporting token analytics, address intelligence, and ecosystem monitoring
    • Standardizing blockchain data access patterns for AI models

    Features

    • Blockchain Exploration: Retrieve blocks, transactions, and network statistics
    • Address Analysis: Query balances, transaction history, and perform forensic analysis
    • Token Intelligence: View token information, holder distributions, historical ownership tracking, and collection data
    • Ecosystem Integration: Access EIP information, oracle pool data, and address book
    • Advanced Analytics: Analyze blockchain patterns, token metrics, and transaction flows
    • Entity Identification: Detect related addresses using advanced address clustering algorithms
    • Interactive Visualizations: Generate and interact with network visualizations for entity analysis

    Response Standardization

    All endpoints in the Ergo Explorer MCP implement a standardized response format system that:

    • Supports both human-readable (markdown) and machine-readable (JSON) formats
    • Provides consistent structure across all endpoints
    • Maintains backward compatibility through dual-format support
    • Implements comprehensive error handling
    • Uses the @standardize_response decorator for automatic format conversion

    Standard JSON Response Structure:

    json
    {
      "status": "success",  // or "error"
      "data": {
        // Endpoint-specific structured data
      },
      "metadata": {
        "execution_time_ms": 123,
        "result_size_bytes": 456,
        "is_truncated": false,
        "token_estimate": 789
      }
    }

    For more information on response standardization, see RESPONSE_STANDARDIZATION.md.

    Entity Identification and Address Clustering

    The Ergo Explorer MCP provides advanced entity identification capabilities through address clustering algorithms. This feature helps identify groups of addresses likely controlled by the same entity.

    Entity Identification Features

    • Graph-based Clustering: Identifies related addresses using transaction graph analysis
    • Co-spending Detection: Detects addresses used together in transaction inputs
    • Confidence Scoring: Assigns confidence levels to detected entity clusters
    • Address Relationship Mapping: Shows how addresses are related within an entity
    • Interactive Visualization: Provides network graph visualization of entities

    Address Clustering Endpoints

    The following endpoints are available for entity identification:

    code
    /address_clustering/identify
    /address_clustering/visualize
    /address_clustering/openwebui_entity_tool
    /address_clustering/openwebui_viz_tool

    Open WebUI Integration

    Ergo Explorer MCP integrates with Open WebUI to provide enhanced visualization and interaction capabilities:

    • Entity Text Tool: Returns a text summary of detected entities for an address
    • Interactive Visualization Tool: Renders an interactive D3.js network graph visualization
    • Customizable Views: Filter and search entities, zoom and pan visualization
    • Entity Analysis: Explore relationships between addresses and entities

    Usage Example

    To identify entities related to an address:

    python
    from ergo_explorer.api import make_request
    
    # Identify entities for an address
    response = make_request("address_clustering/identify", {
        "address": "9gUDVVx75KyZ783YLECKngb1wy8KVwEfk3byjdfjUyDVAELAPUN",
        "depth": 2,
        "tx_limit": 100
    })
    
    # Get visualization for an address
    viz_response = make_request("address_clustering/visualize", {
        "address": "9gUDVVx75KyZ783YLECKngb1wy8KVwEfk3byjdfjUyDVAELAPUN",
        "depth": 2,
        "tx_limit": 100
    })
    
    # Access entity clusters
    entities = response["data"]("clusters")
    for entity_id, entity_data in entities.items():
        print(f"Entity {entity_id}: {len(entity_data['addresses'])} addresses")
        print(f"Confidence: {entity_data['confidence_score']}")

    Open WebUI Tool Integration

    To use the Open WebUI tools:

    code
    [Tool: openwebui_entity_tool]
    [Address: 9gUDVVx75KyZ783YLECKngb1wy8KVwEfk3byjdfjUyDVAELAPUN]
    [Depth: 2]
    [TX Limit: 100]
    
    [Tool: openwebui_viz_tool]
    [Address: 9gUDVVx75KyZ783YLECKngb1wy8KVwEfk3byjdfjUyDVAELAPUN]
    [Depth: 2]
    [TX Limit: 100]

    Token Estimation

    The Ergo Explorer MCP includes built-in token estimation capabilities to help AI assistants optimize their context window usage. This feature provides an estimate of the number of tokens in each response for various LLM models.

    Token Estimation Features

    • Automatic Token Counting: Each response includes an estimate of its token count
    • Model-Specific Estimation: Supports various LLM models (Claude, GPT, Mistral, etc.)
    • Breakdown by Response Section: Provides token counts for data, metadata, and status
    • Configurable Thresholds: Response truncation based on token count thresholds
    • Fallback Mechanism: Works even if tiktoken is not available

    Token Estimation in Responses

    Token estimation is included in the metadata section of all standardized responses:

    json
    {
      "status": "success",
      "data": {
        // Response data
      },
      "metadata": {
        "execution_time_ms": 123,
        "result_size_bytes": 456,
        "is_truncated": false,
        "token_estimate": 789,
        "token_breakdown": {
          "data": 650,
          "metadata": 89,
          "status": 50
        }
      }
    }

    Usage

    To access token estimates in responses:

    python
    from ergo_explorer.api import make_request
    
    # Make a request to any endpoint
    response = make_request("blockchain/status")
    
    # Access token estimation information
    token_count = response["metadata"]("token_estimate")
    is_truncated = response["metadata"]("is_truncated")
    
    print(f"Response contains approximately {token_count} tokens")
    if is_truncated:
        print("Response was truncated to fit within token limits")

    Model-Specific Estimation

    You can specify which LLM model to use for token estimation:

    python
    from ergo_explorer.api import make_request
    
    # Request with specific model type for token estimation
    response = make_request("blockchain/address_info", 
                            {"address": "9hdcMw4eRpJPJGx8RJhvdRgFRsE1URpQCsAWM3wG547gQ9awZgi"},
                            model_type="gpt-4")
    
    # The token_estimate will be calculated based on GPT-4's tokenization

    Token Usage Guidelines

    Response TypeTarget Token RangeOptimization Strategy
    Simple queries5000 tokensSummary with optional detail retrieval

    Historical Token Holder Tracking

    The Ergo Explorer MCP includes comprehensive functionality for tracking the historical ownership of tokens and analyzing how distribution changes over time:

    Key Features

    • Complete Token History: Track all boxes that have ever contained the token to provide a comprehensive view of token movements through the blockchain
    • Block Height Tracking: Includes block height information for all token transfers
    • Token Transfer Monitoring: Follow tokens as they move between addresses
    • Distribution Metrics: Calculate concentration metrics (Gini coefficient) for token distribution
    • Advanced Box Analysis: Uses efficient box-based method to analyze all transactions involving a token

    Usage Examples

    json
    // Simple request with just essential parameters
    GET /token/historical_token_holders
    {
      "token_id": "d71693c49a84fbbecd4908c94813b46514b18b67a99952dc1e6e4791556de413",
      "max_transactions": 200
    }

    Response format includes detailed token transfer history and snapshots of token distribution at various points in time (or block heights).

    Installation

    Prerequisites

    • Python 3.8+
    • Access to Ergo Explorer API
    • Optional: Access to Ergo Node API (for advanced features)

    Setup

    1. Clone the repository:

    bash
    git clone https://github.com/ergo-mcp/ergo-explorer-mcp.git
       cd ergo-explorer-mcp

    2. Install dependencies:

    bash
    pip install -r requirements.txt

    3. Configure your environment:

    bash
    # Set up environment variables
       export ERGO_EXPLORER_API="https://api.ergoplatform.com/api/v1"
       export ERGO_NODE_API="http://your-node-address:9053"  # Optional
       export ERGO_NODE_API_KEY="your-api-key"  # Optional

    4. Run the MCP server:

    bash
    python -m ergo_explorer.server

    Docker Installation (Recommended)

    1. Build the Docker image:

    bash
    docker build -t ergo-explorer-mcp .

    2. Run the container:

    bash
    docker run -d -p 8000:8000 \
         -e ERGO_EXPLORER_API="https://api.ergoplatform.com/api/v1" \
         -e ERGO_NODE_API="http://your-node-address:9053" \
         -e ERGO_NODE_API_KEY="your-api-key" \
         --name ergo-mcp ergo-explorer-mcp

    Development

    To contribute to the project:

    1. Fork the repository

    2. Create a feature branch

    3. Set up a development environment:

    bash
    pip install -r requirements.txt
       pip install -r requirements.test.txt

    4. Run tests:

    bash
    pytest

    5. Submit a pull request

    Documentation

    For comprehensive documentation, see:

    • API Reference
    • Feature Roadmap
    • Response Standardization

    License

    This project is licensed under the MIT License - see the LICENSE file for details.

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