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How To Build A Predictive "Poor Performance" Indicator Using Machine Learning & Python

Quest Forum Digital Event 2020

Complex performance situations are not always quickly diagnosable using an AWR time-based analysis or an ASH sample-based analysis. And certainly, the diagnosis will not be completed the second new data becomes available or before a support ticket has been received!

A solution is to use a supervised learning classification machine learning model. We can train the model to recognize and “understand” a virtually unlimited number of Oracle performance and business-related data.

Once trained, we will present the model with just-available data asking, for example, if a support ticket will likely be submitted. Or perhaps, if the performance will likely be green, yellow, or red.

Join me as I build a “Poor Performance” indicator using 100% free industry-standard tools, such as Python and the “Always Free” Oracle Autonomous Database with Oracle ML SQL Notebooks. All presentation slides, scripts, and a recording of the demonstration are available!

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How To Build A Predictive "Poor Performance" Indicator Using Machine Learning & Python