Drive Time Plotter
БесплатноНе проверенAnalyzes traffic patterns throughout the day using Google Maps API and provides visual insights and recommendations for optimal commute times.
Описание
Analyzes traffic patterns throughout the day using Google Maps API and provides visual insights and recommendations for optimal commute times.
README
A Model Context Protocol (MCP) server that analyzes traffic patterns throughout the day using Google Maps API, providing fast visual insights and recommendations.
Motivated by the Hugging Face MCP Hackathon - A production-ready MCP server for intelligent commute planning.
What It Does
- Analyzes traffic patterns across 24 hours with 15-minute intervals
- Shows optimistic/pessimistic/average drive time predictions
- Completes full analysis in ~4 seconds using parallel API requests (120x faster than sequential!)
- Works with Claude Desktop, Claude Code, and standalone CLI
- Generates both terminal ASCII plots and route maps
Quick Start
1. Install
python -m venv .venv
source .venv/bin/activate
pip install -r requirements.txt
pip install -e .
2. Setup API Key
Get your Google Maps API key from https://console.cloud.google.com/apis/credentials
Enable these APIs:
- Geocoding API
- Directions API
- Maps Static API
Create .env file from template:
cp .env.example .env
# Edit .env and add your key:
# GOOGLE_MAPS_API_KEY=your_key_here
3. Test
./test.sh
You should see traffic analysis in ~4 seconds!
Usage
Terminal (Fastest)
./test_custom.sh
Edit test_custom.sh to customize:
- Origin/Destination (default: Evans Hall, UC Berkeley → SFO)
- Date
- Time range
- Interval
Or use the CLI directly:
python cli/driveplot_fast.py \
--origin "Your Home" \
--destination "Your Work" \
--date 2025-11-20 \
--start 06:00 --end 10:00 \
--interval 15 \
--ascii --save-map outputs/route.png --yes
As MCP Server with Claude
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"drivetime-plotter": {
"command": "python",
"args": ["-m", "mcp_server.server"],
"env": {
"GOOGLE_MAPS_API_KEY": "your_key_here"
},
"cwd": "/path/to/mcp-hackathon"
}
}
}
Restart Claude Desktop. You can now ask Claude: "When should I drive from X to Y?"
How It Works
For Terminal Users
- Run
./test_custom.sh - Get results in ~4 seconds (parallel API calls)
- See two outputs:
- Colored ANSI plot (beautiful terminal visualization)
- Simple text plot (plain text using +, o, * characters for Claude Code)
For Claude/Claude Code
When you ask "When should I drive from X to Y?":
Quick Response (< 10 seconds):
[Show simple text plot] 🟢 BEST: 5-7 AM (35 min) 🔴 WORST: 2-4 PM (60 min) 💡 Recommendation: Leave before 7 AM Want more details?Detailed Response (if you say yes):
- Hour-by-hour breakdown
- Specific scenarios
- Multiple options
Key AI Behavior
Human-Realistic Recommendations:
- ✅ "Leave 5-7 AM" (reasonable)
- ❌ "Leave 2 AM" (unrealistic for most people - humans need sleep!)
Adapts to Specificity:
- Vague question → Quick answer + ask for more
- Specific constraint → Calculate and provide options
- Flight time → Work backwards with buffer
Architecture
File Structure
mcp-hackathon/
├── .env # API key (gitignored, copy from .env.example)
├── .env.example # Template for API key
├── requirements.txt # Python dependencies
├── setup.py # Package setup (enables `pip install -e .`)
├── test.sh # Quick smoke test (~2 sec)
├── test_custom.sh # Main usage script (customizable route)
├── outputs/ # Generated maps and plots (gitignored)
├── cli/
│ └── driveplot_fast.py # Fast CLI with parallel requests
└── mcp_server/
├── __init__.py # Makes mcp_server a Python package
├── server.py # MCP server (exposes tools to Claude)
├── google_maps.py # Google Maps API integration
└── utils.py # Helper functions (LatLng, minute_grid, etc.)
Why These Files?
Core Files:
cli/driveplot_fast.py- Standalone terminal tool (works without MCP)mcp_server/server.py- MCP server for Claude integrationmcp_server/google_maps.py- API calls (shared by CLI and MCP)mcp_server/utils.py- Shared utilitiesmcp_server/__init__.py- Required for Python package (enablesfrom mcp_server import ...)
Configuration:
.env- Your API key (never committed to git).env.example- Template for new userssetup.py- Package metadata and dependencies (needed forpip install -e .)requirements.txt- Direct dependencies list
Testing:
test.sh- Quick verification (1-hour window, ~2 seconds)test_custom.sh- Real usage (24 hours, ~4 seconds)
API Key Management
Single Source of Truth:
.env file (GOOGLE_MAPS_API_KEY=...)
↓
├─→ Shell scripts (loaded via `export $(grep -v '^#' .env | xargs)`)
└─→ Python code (os.getenv("GOOGLE_MAPS_API_KEY"))
Only mcp_server/google_maps.py defines:
GOOGLE_KEY = os.getenv("GOOGLE_MAPS_API_KEY", "")
All other code imports and uses this variable.
Performance
- Parallel API calls: Up to 30 concurrent requests (first pass)
- Smart retry with while loop: Retries only failed requests with reduced concurrency (10 workers)
- Multiple retry rounds: Up to 3 rounds total, ensures maximum success rate
- Speed: ~4 seconds for full 24-hour analysis (96 data points)
- 120x speedup vs sequential approach
MCP Tools Exposed
When running as an MCP server, Claude can use these tools:
1. geocode(query: str)
- Converts address to coordinates
- Returns candidates with formatted addresses and lat/lng
- Example: "Berkeley, CA" → [(37.8715, -122.2730), ...]
2. static_map(origin_lat, origin_lng, dest_lat, dest_lng)
- Generates Google Maps static image URL
- Shows route with markers
- Returns URL to PNG image
3. eta_series(...)
- Gets traffic data across time range
- Returns optimistic/pessimistic/average drive times
- Parameters:
origin_lat,origin_lngdest_lat,dest_lngdate,start_time,end_timeinterval_minutesinclude_plot(optional, for matplotlib PNG in Claude chat)
Google Maps APIs Used
- Geocoding API: Address → Coordinates
- Directions API: Traffic-aware route duration
- Static Maps API: Route visualization
Traffic Models:
optimistic- Best-case scenario (light traffic)pessimistic- Worst-case scenario (heavy traffic)- Average - Calculated from both (realistic expectation)
Output Format
Simple Text Plot (for Claude Code)
66 min | o
64 min | o ooo
62 min | oo
...
32 min | **********************
30 min | +++++++++++++++++++++++++++++++
+------------------------------------------------------------
0 1 2 3 4 5 6 7 8 9 10 11 12 ...
Hour of Day
LEGEND:
+ = Optimistic | o = Pessimistic | * = Average
B = Best time | W = Worst time
Features:
- Shows all 24 hours
- Three traffic scenarios
- Marks best/worst times
- Human-readable x-axis (proper spacing for single/double-digit hours)
- No ANSI codes (renders in Claude Code responses)
Colored ANSI Plot (for Terminal)
Same layout but with beautiful colors using plotext library.
Troubleshooting
API Errors
"Missing GOOGLE_MAPS_API_KEY"
→ Check .env file exists and has your key
→ Make sure you copied from .env.example: cp .env.example .env
"REQUEST_DENIED" → Enable APIs in Google Cloud Console (Geocoding, Directions, Maps Static) → Verify billing is active (you get $200/month free credit)
Performance Issues
Retrying failed queries multiple times → Some API requests failing due to rate limits → Script automatically retries with reduced concurrency → Wait for completion - most queries eventually succeed
Slow (> 10 seconds) → Network issues → Try again later → Default: 30 workers → 10 workers for retries (adjustable in code)
Installation Issues
"Module not found" when running MCP server
→ Run pip install -e . to install package in editable mode
"Permission denied" on .sh files
→ Run chmod +x test.sh test_custom.sh
Output files not saved
→ Check outputs/ folder exists (created automatically)
→ Verify path in --save-map flag
Cost
Very cheap!
- Full 24-hour query (96 points): ~$0.001
- $200/month free credit = ~200,000 queries
- You won't hit limits during development or normal usage
For Hackathon Judges
What We Built
A production-ready MCP server for traffic analysis with:
- ✅ 120x speedup (10 min → 4 sec via parallel processing)
- ✅ Beautiful terminal visualizations (dual output: ANSI + plain text)
- ✅ Human-friendly AI behavior (considers sleep/work schedules)
- ✅ Smart retry logic (while loop with multiple rounds, only retries failures)
- ✅ Clean, publishable code (minimal necessary files, comprehensive docs)
Key Innovations
Two-tier response system
- Quick answer first (< 10 sec)
- Detailed analysis on request
- Prevents slow, overwhelming responses
Human-realistic constraints
- Don't recommend 2 AM departures
- Consider work hours, sleep needs
- Practical time windows
Dual output formats
- Colored ANSI for terminal users
- Simple text (+, o, *) for Claude Code responses
- Solves ANSI rendering limitation
Robust API handling
- Parallel requests with ThreadPoolExecutor
- While loop retry (not just 2 passes)
- Smart concurrency reduction (30 → 10 workers)
- Graceful degradation on failures
Track
Track 1: Building MCP
This is a complete, production-ready MCP server that:
- Exposes useful tools (geocode, eta_series, static_map)
- Solves real problems (commute planning, meeting scheduling)
- Works with both Claude Desktop and Claude Code
- Has excellent documentation
- Is ready to publish and use
Advanced Usage
Custom Time Range
python cli/driveplot_fast.py \
--origin "Your Home" \
--destination "Your Work" \
--date 2025-11-20 \
--start 06:00 --end 10:00 \ # Morning only
--interval 30 \ # Every 30 min
--ascii --yes
Different Intervals
- 15 min: Detailed analysis (96 data points, ~4 sec)
- 30 min: Balanced (48 points, ~2 sec)
- 60 min: Quick overview (24 points, ~1 sec)
Save Map to outputs/
python cli/driveplot_fast.py \
--origin "Berkeley, CA" \
--destination "San Francisco, CA" \
--date 2025-11-20 \
--ascii --save-map outputs/my_route.png --yes
Security
✅ API key protected:
- Stored in
.env(gitignored) - Never committed to version control
- Single source of truth
- Easy to rotate
- Template provided (
.env.example)
✅ No hardcoded secrets anywhere in codebase
✅ Best practices:
- Environment variables via python-dotenv
- Clear separation of code and config
- Comprehensive .gitignore
Future Improvements
Ideas for extension:
- Add Apple Maps support (already structured for it)
- Historical data tracking (compare traffic patterns over time)
- Calendar integration (auto-suggest departure times)
- Multiple routes comparison (A vs B)
- Web UI with Gradio (for Track 2 submission)
License
MIT License - use freely!
This is the standard license for MCP servers. Feel free to:
- Use in commercial projects
- Modify and redistribute
- Incorporate into closed-source software
Credits
Built for the Hugging Face MCP Hackathon (Track 1)
Technologies used:
- FastMCP - MCP server framework
- Google Maps Platform APIs - Geocoding, Directions, Static Maps
- plotext - Terminal plotting
- rich - Beautiful terminal output
- ThreadPoolExecutor - Parallel API requests
Questions?
For issues or questions:
- Check the Troubleshooting section above
- Verify your
.envfile is set up correctly - Run
./test.shto verify installation - Check that Google Maps APIs are enabled in Cloud Console
Установка Drive Time Plotter
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/100shpaik/mcp-gmap-timeFAQ
Drive Time Plotter MCP бесплатный?
Да, Drive Time Plotter MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Drive Time Plotter?
Нет, Drive Time Plotter работает без API-ключей и переменных окружения.
Drive Time Plotter — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Drive Time Plotter в Claude Desktop, Claude Code или Cursor?
Открой Drive Time Plotter на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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