Description: Quantitative metrics for edge AI are numerical measures specifically designed to evaluate artificial intelligence models and systems operating on peripheral devices, such as smartphones, security cameras, and IoT devices. These metrics are fundamental to ensuring that AI models function efficiently and effectively in environments where computational and energy resources are limited. Unlike traditional metrics used in cloud environments, edge AI metrics must consider factors such as latency, energy consumption, accuracy, and real-time responsiveness. Evaluating these metrics allows developers to optimize their models to fit hardware constraints and environmental conditions, ensuring optimal performance. Additionally, these metrics are crucial for implementing applications where speed and efficiency are essential. In summary, quantitative metrics for edge AI are key tools that enable engineers and data scientists to measure and improve the performance of their artificial intelligence systems in real-world situations.