Narrow AI refers to artificial intelligence systems designed to perform specific tasks or a limited range of functions. Unlike general intelligence, narrow AI is highly specialized, focusing on predefined capabilities. Common applications include virtual assistants, recommendation systems, and image recognition software. This technology is particularly beneficial for industries and users seeking efficient and accurate solutions tailored to specific tasks, enhancing productivity and effectiveness across various sectors.
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