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To build a successful career in AI vision, aspiring professionals need expertise in programming, machinelearning, data analytics, and computer vision algorithms, along with hands-on experience solving real-world problems. Copyright CEOWORLD magazine 2023.
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Oracle has updated several applications within its various Fusion Cloud suites in order to align them toward supporting use cases for its healthcare enterprise customers. This is designed to help enterprises, especially hospitals and large clinics, resolve issues around scheduling.
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