Using training data that represents a wide range of user groups and experiences helps ensure that the AI model performs fairly across different populations. This approach reduces bias and improves the equity of the AI solution, which are essential aspects of inclusiveness. While implementing advanced algorithms might enhance accuracy, it doesn't address potential biases in the data. Focusing solely on performance optimization may overlook the needs of diverse users. Designing the user interface with modern aesthetics enhances visual appeal but does not necessarily make the application more inclusive unless it also considers accessibility features.
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Microsoft Azure AI Fundamentals AI-900
Describe Artificial Intelligence Workloads and Considerations
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