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Apply PredictiveAnalytics to Specific Business Use Cases for Real Results! Gartner has predicted that, ‘Overall analytics adoption will increase from 35% to 50%, driven by vertical and domain-specific augmented analytics solutions.’ PredictiveAnalytics Using External Data.
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We were the go-to guys for any ML or predictivemodeling at that time, but looking back it was very primitive.” The analytics team started shifting its operations from on-premises systems to the cloud, leveraging Apache Spark and Databricks. How do you know which version is the real one?
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Leading research and consultancy company, Gartner describes the path that businesses take as they move to higher levels: Descriptive Analytics: Describe what happened (e.g., Diagnostic Analytics: No longer just describing. PredictiveAnalytics: If x, then y (e.g., Interest in predictiveanalytics continues to grow.
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