Wormhole Metrics MCP
Analyzes cross-chain activity on the Wormhole protocol, providing insights into transaction volumes, top assets, and key performance indicators.
Wormhole Metrics MCP
An MCP server that analyzes cross-chain activity on the Wormhole protocol, providing insights into transaction volumes, top assets, source-destination chain pairs, and key performance indicators (KPIs).
Features
- Comprehensive Tools: Includes tools for cross-chain activity, money flow, top assets, chain pairs, symbols, token corridors, and KPIs.
- Markdown Output: Returns data as Markdown-formatted tables for clear presentation.
Installation
Prerequisites
- Python 3.10 or higher
- uv (recommended package manager)
Setup
-
Clone the Repository
git clone https://github.com/kukapay/wormhole-metrics-mcp.git cd wormhole-metrics-mcp -
Install Dependencies
uv sync -
Installing to Claude Desktop:
Install the server as a Claude Desktop application:
uv run mcp install main.py --name "Wormhole Metrics"Configuration file as a reference:
{ "mcpServers": { "Wormhole Metrics": { "command": "uv", "args": [ "--directory", "/path/to/wormhole-metrics-mcp", "run", "main.py" ] } } }Replace
/path/to/wormhole-metrics-mcpwith your actual installation path.
Usage
The wormhole-metrics-mcp server exposes several tools via the MCP interface. Below is an overview of the tools and their usage.
Tools
-
get_cross_chain_activity
- Description: Fetches cross-chain activity data, returning a pivot table of volumes between source and destination chains.
- Parameters:
timeSpan:7d,30d,90d,1y,all-time(default:7d)by:notional,tx count(default:notional)app: Comma-separated list of apps (default: empty)
- Example:
- Prompt: "Show me the cross-chain activity for the last 7 days, measured by notional volume."
- Output:
| source_chain | Solana | Ethereum | Base | |--------------|--------|---------|------------| | Mantle | 23.545 | | | | Polygon | | 245951 | 747048 |
-
get_money_flow
- Description: Retrieves transaction count and volume data for a specific period.
- Parameters:
timespan:1h,1d,1mo,1y(default:1d)from_date: ISO 8601 format (e.g.,2024-01-01T15:04:05Z, default: empty)to_date: ISO 8601 format (default: empty)appId: Application ID (default: empty)sourceChain: Source chain ID (default: empty)targetChain: Target chain ID (default: empty)
- Example:
- Prompt: "Get the transaction count and volume for Solana as the source chain over the last day."
- Output:
| from | to | source_chain | volume | count | |----------------------|----------------------|--------------|-------------------|-------| | 2025-01-01T00:00:00Z | 2025-01-02T00:00:00Z | Solana | 346085661921482 | 550 | | 2025-01-02T00:00:00Z | 2025-01-03T00:00:00Z | Solana | 1915450117554795 | 747 |
-
get_top_assets_by_volume
- Description: Lists top assets by volume, including emitter and token chains.
- Parameters:
timeSpan:7d,15d,30d(default:7d)
- Example:
- Prompt: "List the top assets by volume for the past 15 days."
- Output:
| emitter_chain | symbol | token_chain | token_address | volume | |---------------|--------|-------------|------------------------------------------|----------------| | Solana | WBTC | Ethereum | 0000000000000000000000002260fac5e5542a773aa44fbcfedf7c193bc2c599 | 25101807.78824 | | Ethereum | RNDR | Ethereum | 0000000000000000000000006de037ef9ad2725eb40118bb1702ebb27e4aeb24 | 9829032.688 |
-
get_top_chain_pairs_by_num_transfers
- Description: Returns top chain pairs by number of transfers.
- Parameters:
timeSpan:7d,15d,30d(default:7d)
- Example:
- Prompt: "Show the top chain pairs by number of transfers for the last 7 days."
- Output:
| source_chain | destination_chain | number_of_transfers | |--------------|-------------------|---------------------| | Optimism | Solana | 2849 | | Ethereum | Solana | 2466 | | Base | Arbitrum | 1993 |
-
get_top_symbols_by_volume
- Description: Fetches top symbols by volume and transaction count.
- Parameters:
timeSpan:7d,15d,30d(default:7d)
- Example:
- Prompt: "What are the top symbols by volume over the last 30 days?"
- Output:
| symbol | volume | txs | |--------|-----------------|-----| | WBTC | 28434555.496489 | 133 | | RNDR | 9829032.688 | 49 | | WETH | 9662352.854166 | 60 |
-
get_top100_corridors
- Description: Lists top 100 token corridors by number of transactions.
- Parameters:
timeSpan:2d,7d(default:2d)
- Example:
- Prompt: "Get the top 100 token corridors by transactions for the last 7 days."
- Output:
| source_chain | target_chain | token_chain | token_address | txs | |--------------|--------------|-------------|------------------------------------------|-----| | Optimism | Solana | Optimism | 000000000000000000000000ef4461891dfb3ac8572ccf7c794664a8dd927945 | 2777| | Base | Arbitrum | Base | 000000000000000000000000271cdba25be9be2e024bc0a550012b2e5934420e | 1892|
-
get_kpi_list
- Description: Retrieves key performance indicators (KPIs) for the Wormhole protocol.
- Parameters: None
- Example:
- Prompt: "Show me the key performance indicators for Wormhole."
- Output:
| 24h_messages | total_messages | total_tx_count | total_volume | tvl | 24h_volume | 7d_volume | 30d_volume | |--------------|----------------|----------------|--------------------|-------------|--------------|--------------|---------------| | 192987 | 1111114235 | 6023755 | 60718344331.570806 | 2582546224 | 22688586.172 | 252786937.009| 1349155202.545|
License
This project is licensed under the MIT License. See the LICENSE file for details.
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