Remote MCP Server for Analyzing Tokens using CoinGecko Market Data
@Charged-Particles
About Remote MCP Server for Analyzing Tokens using CoinGecko Market Data
MCP Server for Analyzing Tokens using the Coin Gecko API. Includes RSI, EMA, MACD, Bollinger Bands, Golden-Cross and Death-Cross.
Basic information
Config
No standard config provided
This server doesn't expose a parseable MCP config block in its README. See the repository for install instructions.
RepositoryTools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Remote MCP Server for Analyzing Tokens using CoinGecko Market Data?
A Model Context Protocol (MCP) server that enables analysis of cryptocurrency tokens using market data from CoinGecko. It is intended for use with AI assistants like Claude Desktop.
How to use Remote MCP Server for Analyzing Tokens using CoinGecko Market Data?
Clone the repository, install dependencies with npm install, and build the server with npm run build. Then configure Claude Desktop by editing its configuration file (claude_desktop_config.json) to point to the built server's index.js and the Node.js executable.
Key features of Remote MCP Server for Analyzing Tokens using CoinGecko Market Data
—
Use cases of Remote MCP Server for Analyzing Tokens using CoinGecko Market Data
—
FAQ from Remote MCP Server for Analyzing Tokens using CoinGecko Market Data
—
Note: The README does not contain information for the "Key features", "Use cases", or "FAQ" sections. Only the server name and setup instructions are provided.
More Data & Analytics MCP servers
mcp-server-apache-airflow
yangkyeongmoSalesforce MCP Server
tsmztechSalesforce MCP Server
dbt MCP Server
dbt-labsA MCP (Model Context Protocol) server for interacting with dbt.
MCP Server for Data Exploration
reading-plus-aiGoogle Analytics MCP Server
surendranbGoogle Analytics 4 data to AI agents, agentic workflows, and MCP clients. Give agents analysis-ready access to website traffic, user behavior, and performance data with schema discovery, server-side aggregation, and safe defaults that reduce data wrangling.
Comments