Public Health
Public Health AI-powered Urban Governance
The public health sector in urban governance faces intense challenges to enhance emergency response, optimize crisis resource allocation and adopt real-time monitoring technologies. Driven by infectious disease spread, urban density and data-driven needs.
Core pain points include: 48-hour delays in manual epidemic prevention data collection/tracing (missing 40% infection chains) and severe resource strain, with manual screening requiring 300+ weekly hours for mid-sized cities.

Core Problems Solved
The solution uses machine learning and AIoT to build real-time epidemic monitoring systems, addressing the inefficiencies of manual data collection and enabling proactive outbreak management.
Key Features of the Solution
-
Transmission
Path Tracing
-
Smart Policing
Integration
-
Urban Brain
for Data Fusion
Achievements and Benefits
75%
Response Time: Reduced contact tracing from 48 hours to 12 hours (75% improvement).
$1.2 Million
Resource Efficiency: AI systems replaced 30% of manual screening workload, saving $1.2 million annually for a mid-sized city.
Enhanced Public Trust
Enhanced public trust in governance through transparent, data-driven responses.
Improved inter-departmental coordination during emergencies.
Enabled sustainable urban development by integrating epidemic prevention with smart grid and energy management systems.