Predictive Maintenance using Machine Learning

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Preventve Maintenance Strategy, Plan and Execution



This blog has around 20 slides and 3 papers


  • Strategy - hw to make business case

  • Plan - Convert business case to ML use case, check patterns in data

  • Execution - Build model and integrate with maintenance



  • Slide1    Slide10    Slide11    Slide12    Slide13    Slide14    Slide15    Slide16    Slide17    Slide18   

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