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Data exploded and became big. Spreadsheets finally took a backseat to actionable and insightful data visualizations and interactive business dashboards. The rise of self-service analytics democratized the data product chain. It’s an extension of datamining which refers only to past data.
Candidates show facility with data concepts and environments; datamining; data analysis; data governance, quality, and controls; and visualization. Individuals with the certificate can describe data ecosystems and compose queries to access data in cloud databases using SQL and Python.
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BI Reports can vary in their interactivity. Static reports cannot be changed by the end-users, while interactive reports allow you to navigate the report through various hierarchies and visualization elements. Interactive reports support drilling down or drilling through multiple data levels at the click of a mouse.
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The need for interaction – complex decision making systems often rely on Human–Autonomy Teaming (HAT), where the outcome is produced by joint efforts of one or more humans and one or more autonomous agents. PDPs for the bicycle count predictionmodel (Molnar, 2009). Creating a PDP for our model is fairly straightforward.
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