A digital twin fed by real-time sensors and controlled by LangChain-based agentic AI dynamically optimizes traffic signals, claimed to reduce waiting times better than fixed-time or reinforcement learning methods.
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Autonomous Traffic Signal Optimization Using Digital Twin and Agentic AI for Real-Time Decision-Making
A digital twin fed by real-time sensors and controlled by LangChain-based agentic AI dynamically optimizes traffic signals, claimed to reduce waiting times better than fixed-time or reinforcement learning methods.