🚕 Tokyo Taxi Analysis Dashboard
Comprehensive analysis of taxi congestion and productivity in Tokyo
📂 View Repository on GitHub
🚧 GitHub Pages Setup Required
To enable GitHub Pages: Go to
Settings → Pages
→ Select "GitHub Actions" as source → Save
Once enabled, this dashboard will be live at:
https://tatsuru-kikuchi.github.io/MCP-taxi/
10,000
Total Trips
32.4
Avg Duration (min)
Â¥2,150
Avg Fare
Â¥52.3
Revenue/Minute
Hourly Trip Duration & Revenue
District Performance
Weekly Patterns
Rush Hour Impact
Key Insights
🚦 Rush Hour Impact
Trip duration increases by 65% during rush hours (7-9 AM, 5-7 PM), significantly affecting productivity and passenger satisfaction.
🌅 Weekend Effect
Weekend trips are 12% shorter but 18% more frequent, indicating better traffic flow but higher demand.
💰 Congestion Cost
Traffic congestion adds ¥890 average cost per trip, resulting in ¥8.9M daily revenue loss across the city.
📊 Productivity Gap
45% difference between most and least productive districts, highlighting optimization opportunities.
Strategic Recommendations
1. Optimize Peak Hour Operations:
Focus deployment during 11 AM - 2 PM for maximum revenue efficiency (Â¥55.6/min average).
2. Strategic District Focus:
Increase taxi availability in Ginza (Â¥62.5/min) and Tokyo Station (Â¥59.8/min) districts.
3. Dynamic Pricing Implementation:
Apply surge pricing during rush hours (7-9 AM, 5-7 PM) to balance supply and demand.
4. Route Optimization:
Implement AI-powered routing to reduce congestion impact and improve trip efficiency.
5. Weekend Capacity Expansion:
Deploy additional vehicles on weekends to capitalize on 18% higher demand frequency.
6. Predictive Analytics:
Use machine learning to predict congestion patterns and proactively redirect taxis to optimal locations.