Answer Posted / Aarti Katyal
Edge AI refers to artificial intelligence applications that are processed at or near the source of data generation, as opposed to cloud-based AI. This local processing minimizes latency and bandwidth requirements by reducing data transmission between edge devices and remote servers. Edge AI can be implemented in various IoT (Internet of Things) devices, such as drones, smartphones, and autonomous vehicles, for real-time decision making and enhanced performance.
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