Powers the interactive HTML analytics dashboard, providing visualizations and charts for tracking query trends and model usage distribution.
Produces structured query logs in CSV format designed for easy import and further analysis within Google Sheets.
Supports logging LLM interactions in Markdown format for human-readable logs and integration into documentation or version control systems.
Generates CSV-based query data that is optimized for data science workflows and analysis using the pandas library.
Enables custom analysis of interaction data by exporting query logs for processing and reporting within Python environments.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@Query Counter MCP Servershow me the interactive dashboard"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Query Counter MCP Server
An MCP (Model Context Protocol) server that logs all your LLM queries to a local file and provides interactive analytics. Track your interactions with Claude, ChatGPT, Gemini, and other models with detailed categorization and visualizations.
Features
Dual Format Logging: CSV (default) or Markdown format
Interactive Dashboard: Beautiful HTML analytics dashboard with charts and KPIs
Category Tracking: Organize queries by type (coding, research, debugging, etc.)
Rich Analytics: Track query volume, model usage, category distribution, and trends
Configurable: Custom log file location and format
MCP Compatible: Works with Claude Desktop and other MCP clients
Installation
Clone the repository:
git clone https://github.com/bjulius/QueryCounterMCP.git
cd QueryCounterMCPInstall dependencies:
npm installBuild the project:
npm run buildConfiguration
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": {
"query-counter": {
"command": "node",
"args": [
"/path/to/your/QueryCounterMCP/build/index.js"
]
}
}
}Replace /path/to/your/QueryCounterMCP/ with the actual path where you cloned the repository.
Example paths:
macOS:
"/Users/yourname/projects/QueryCounterMCP/build/index.js"Windows:
"C:\\Users\\YourName\\Projects\\QueryCounterMCP\\build\\index.js"
Environment Variables
Customize the logging behavior:
{
"mcpServers": {
"query-counter": {
"command": "node",
"args": [
"/path/to/your/QueryCounterMCP/build/index.js"
],
"env": {
"QUERY_LOG_FORMAT": "csv",
"QUERY_LOG_PATH": "/path/to/your/custom/log.csv"
}
}
}
}Available Options:
QUERY_LOG_FORMAT:"csv"(default) or"md"for MarkdownQUERY_LOG_PATH: Custom path for the log file
Usage
Logging Queries
The MCP server automatically logs queries made through Claude Desktop. The AI (Claude) determines the appropriate category based on the conversation context.
Example interaction:
User: Help me debug a React component that's not rendering properly
Claude: [Uses the log_query tool automatically]
- model: "Claude Sonnet 4.5"
- query_summary: "Help me debug a React component"
- category: "debugging" [AI selected]Tool Parameters:
model(required): The LLM model name (selected by AI)query_summary(required): Brief description of the query (generated by AI)category(optional): Query category (automatically selected by AI based on query type)
Viewing the Dashboard
Use the show_dashboard tool to generate and view analytics:
Please show me the dashboardThis will:
Generate an interactive HTML dashboard from your query data
Automatically open it in your default browser
Display real-time analytics and visualizations
Dashboard Features
The interactive dashboard includes:
KPI Cards
Total Queries Today: Number of queries logged today (highlighted)
Average Queries Per Day: Mean queries across all days
Total Number of Categories: Unique categories used
Max Queries in a Day: Your highest query volume day
Visualizations
Categories by Percent: Horizontal bar chart showing category distribution
Models by Percent: Horizontal bar chart of AI model usage
Total Queries by Day: Daily query volume over time
Design
Clean, modern interface with responsive layout
Interactive charts powered by Chart.js
Data labels on all visualizations for easy reading
Personalized with your name in the subtitle
Query Categories
The AI automatically selects the most appropriate category for each query. These categories help organize and analyze your query patterns:
Development & Code
coding- Writing, debugging, or explaining coderefactoring- Code improvements, restructuring, optimizationtesting- Writing or running tests, test analysisdebugging- Troubleshooting errors, investigating issues
Analysis & Research
data-analysis- Analyzing data, visualizations, statisticsresearch- Information lookup, documentation searches, learning
Project Management
documentation- Writing/updating docs, README files, commentsconfiguration- Settings, setup, tool configuration, environment
Interaction
clarification- Follow-up questions, asking for detailsselection- Short confirmations, choosing optionsnavigation- UI commands, viewing files, moving aroundconversation- General chat, greetings, feedback
Log File Format
By default, queries are logged to QueryTrackMCP.csv in CSV format:
timestamp,date,model,category,query_summary
2025-10-15T18:20:37.516Z,10/15/2025 2:20:37 PM,Claude Sonnet 4.5,debugging,Help me debug a React component
2025-10-15T18:22:15.342Z,10/15/2025 2:22:15 PM,Claude Sonnet 4.5,coding,Create a user authentication function
2025-10-15T18:25:43.891Z,10/15/2025 2:25:43 PM,Claude Sonnet 4.5,data-analysis,Analyze sales data trendsCSV Format Benefits:
✅ Easy to import into Excel, Google Sheets, or Pandas
✅ Efficient for data analysis and reporting
✅ Compact file size
✅ Perfect for generating the interactive dashboard
✅ Can be opened and edited in any spreadsheet application
Alternative: Markdown Format
To use Markdown format instead, set QUERY_LOG_FORMAT=md in your environment variables. This creates a QueryTrackMCP.md file:
# LLM Query Log
This file tracks all queries made to various LLM models.
---
## 10/15/2025, 2:20:37 PM
- **Model**: Claude Sonnet 4.5
- **Category**: debugging
- **Query**: Help me debug a React component
- **Timestamp**: 2025-10-15T18:20:37.516Z
---Markdown Format Benefits:
✅ Human-readable format
✅ Easy to browse in text editors
✅ Great for documentation and version control
Available Tools
log_query
Logs an LLM query to the tracking file.
Parameters:
model(string, required): LLM model namequery_summary(string, required): Brief query descriptioncategory(string, optional): Query category
show_dashboard
Generates and displays an interactive HTML analytics dashboard.
Parameters: None
Output: Opens query-dashboard.html in your default browser with:
4 KPI cards with key metrics
3 interactive charts (categories, models, daily trends)
Real-time data from your CSV log file
Development
# Install dependencies
npm install
# Build the project
npm run build
# Watch for changes during development
npm run watch
# Build and run
npm run devFile Structure
QueryCounterMCP/
├── src/
│ └── index.ts # Main MCP server code
├── build/
│ └── index.js # Compiled JavaScript
├── QueryTrackMCP.csv # Query log (CSV format)
├── query-dashboard.html # Generated analytics dashboard
├── CLAUDE.md # Instructions for Claude Code
└── README.md # This fileTips
Use categories consistently for better analytics
Run the dashboard regularly to track your query patterns
Set up automatic logging by integrating with your workflow
Export CSV data for custom analysis in Excel or Python
Customize the format based on your needs (CSV for analysis, MD for documentation)
License
MIT
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