InfluxDB-v1-MCP

InfluxDB-v1-MCP

InfluxDB-v1-MCP is a powerful Model Context Protocol (MCP) interface specifically designed for InfluxDB v1.x, enabling AI assistants to intelligently manage and query time-series databases.

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⚠️ WARNING: Experimental project

This project is very unstable and subject to breaking changes. Do NOT use in production.

  • Target: InfluxDB v1.x only. For new work, we strongly recommend InfluxDB v3 and official tooling.
  • No stability or data-safety guarantees. Use at your own risk.
  • APIs, tool names, and behavior may change without notice.
  • Limited test coverage; issues are expected.
  • If you must try it, run against disposable data and a non-critical environment.
  • The code and information in this repository may be inaccurate and may not work as intended.

InfluxDB-v1-MCP: The MCP Server for InfluxDB v1.x

InfluxDB-v1-MCP is a powerful Model Context Protocol (MCP) interface specifically designed for InfluxDB v1.x, enabling AI assistants to intelligently manage and query time-series databases. Going beyond simple data retrieval, this server provides a complete toolkit that allows an AI agent to autonomously explore the database structure, understand data schemas, and execute complex InfluxQL queries.


Table of Contents


Overview

The InfluxDB MCP Server exposes a set of tools for interacting with InfluxDB time-series databases via a standardized protocol. It supports:

  • Listing all accessible databases
  • Listing all measurements (the equivalent of tables) in a specified database
  • Creating new databases
  • Retrieving measurement schemas (including fields and tags) to understand data structure
  • Executing safe, read-only InfluxQL queries (SELECT, SHOW)

Core Components

  • server.py: Main MCP server logic and tool definitions.
  • config.py: Loads configuration from environment and .env files.
  • tests/: Manual and automated test documentation and scripts.

Available Tools

Standard Database Tools

  • list_databases

    • Lists all accessible databases.
    • Parameters: None
    • Example
      {
        "tool_name": "list_databases"
      }
      
  • list_measurements

    • Lists all measurements (the equivalent of tables) in a specified database.
    • Parameters: database_name (string, required)
    • Example
      {
        "tool_name": "list_measurements",
        "parameters": {
          "database_name": "telegraf"
        }
      }
      
  • get_measurement_schema

    • Retrieves the schema for a measurement (fields, tags, and their types).
    • Parameters: database_name (string, required), measurement_name (string, required)
    • Example
      {
        "tool_name": "get_measurement_schema",
        "parameters": {
          "database_name": "telegraf",
          "measurement_name": "cpu"
        }
      }
      
  • execute_influxql

    • Executes a read-only InfluxQL query (SELECT, SHOW).
    • Parameters: influxql_query (string, required), database_name (string, optional)
    • Example
      {
        "tool_name": "execute_influxql",
        "parameters": {
          "database_name": "telegraf",
          "influxql_query": "SELECT \"usage_user\" FROM \"cpu\" WHERE time > now() - 1h"
        }
      }
      
  • get_last_data_point_timestamp

    • Retrieves the timestamp of the most recent data point in a given measurement.
    • Parameters: database_name (string, required), measurement_name (string, required)
    • Example
      {
        "tool_name": "get_last_data_point_timestamp",
        "parameters": {
          "database_name": "telegraf",
          "measurement_name": "cpu"
        }
      }
      
  • get_tag_values

    • Retrieves a list of all unique values for a specific tag key within a measurement.
    • Parameters: database_name (string, required), measurement_name (string, required), tag_key (string, required)
    • Example
      {
        "tool_name": "get_tag_values",
        "parameters": {
          "database_name": "telegraf",
          "measurement_name": "cpu",
          "tag_key": "cpu"
        }
      }
      
  • get_time_window_summary

    • Calculates summary statistics (mean, max, min, 95th percentile) for a field over a specified time window.
    • Parameters: database_name (string, required), measurement_name (string, required), field_key (string, required), time_window (string, required), filters (string, optional), group_by_tags (string, optional)
    • Example
      {
        "tool_name": "get_time_window_summary",
        "parameters": {
          "database_name": "telegraf",
          "measurement_name": "cpu",
          "field_key": "usage_user",
          "time_window": "1h",
          "group_by_tags": "cpu"
        }
      }
      

Configuration & Environment Variables

All configuration is via environment variables (typically set in a .env file):

Variable Description Required Default
INFLUXDB_URL InfluxDB base URL (v1.x) Yes http://localhost:8086
INFLUXDB_USER InfluxDB username Yes
INFLUXDB_PASSWORD InfluxDB password Yes

Example .env file

INFLUXDB_URL=http://localhost:8086
INFLUXDB_USER=your_db_user
INFLUXDB_PASSWORD=your_db_password

Installation & Setup

Requirements

  • Python 3.11 (see .python-version)
  • uv (dependency manager; install instructions)
  • MariaDB server (local or remote)

Steps

  1. Clone the repository
  2. Install uv (if not already):
    pip install uv
    
  3. Install dependencies
    uv pip compile pyproject.toml -o uv.lock
    
    uv pip sync uv.lock
    
  4. Create .env in the project root (see Configuration)
  5. Run the server
    python server.py
    
    Adjust entry point if needed (e.g., main.py)

Integration - Claude desktop/Cursor/Windsurf/VSCode

{
  "mcpServers": {
    "influxdb-v1": {
      "command": "uv",
      "args": [
        "--directory",
        "path/to/server/directory/",
        "run",
        "server.py"
        ],
        "envFile": "path/to/mcp-server-mariadb-vector/.env"      
    }
  }
}

or If already running MCP server

{
  "servers": {
    "influxdb-v1": {
      "url": "http://{host}:9003/sse",
      "type": "sse"
    }
  }
}

Logging

  • Logs are written to logs/mcp_server.log by default.
  • Log messages include tool calls, configuration issues, embedding errors, and client requests.
  • Log level and output can be adjusted in the code (see config.py and logger setup).

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