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How Generative AI Can Support Advanced Analytics Practice
內容大綱
Advanced analytics, such as predictive and prescriptive models to support business decisions, remain the primary drivers of data science value in the enterprise. How might the flashy, fluent, but not entirely reliable generative AI large language models contribute to traditional analytics practice? The author describes some experimental prompts that show potential for labeling data and explaining model predictions, and shares guidance on monitoring and verifying that output.