Prerequisite: None
			
			
			
            
			
			
			
			
			
			
                  
	        
				
			
			Course Outline
Regression, decision trees, neural networks – along  with many other supervised learning techniques, provide powerful predictive  insights. These data-driven insights  inform which forces are shaping your organization’s outcomes. Once built, the  models can produce key indicatorsto optimize the allocation of organizational resources.
New users of these established techniques are often impressed with how  easy it all seems to be. Modeling software to build these models is widely  available. However, proper data preparation is necessary to get optimal  results. No amount of software automation can make up for poor manual data  prep. Many fail to even recognize that data prep was the problem. They likely  conclude that the data was not capable of better performance. This one-day  course will dedicate about half of its time on properly setting up and  preparing the data for optimal performance during modeling.
The  deployment phase includes proper model interpretation and looking for clues  that the model will perform well on unseen data. Although the predictive power  of these machine-learning models can be very impressive, there is no benefit  unless they inform value-focused actions.   Models must be deployed in an automated fashion to continually support  decision making for residual impact.  The  instructor will show how to interpret supervised models with an eye toward decisioning  automation. This course will demonstrate  how real-world projects often combine different kinds of supervised models.
You Will Learn
  - When to apply supervised or unsupervised modeling methods
 
  - Options forinserting machine learninginto the decision making of your organization
 
  - How to use multiple models for value estimation  and classification
 
  - How to properly prepare data for different kinds of supervised models
 
  - Interpret model coefficients and output  to translateacross platformsand languages,including the widely used Predictive  Modeling Markup Language (PMML).
 
  - Explore the pros and cons of "black box" models including ensembles
 
  - How data preparation must be automated in parallel with the model if deployment is to succeed
 
  - Compare model accuracy scores to model propensity scores that drive decisions at deployment
 
Geared To
  - Analytic Practitioners; Data Scientists; IT Professionals; Technology Planners; Consultants; Business Analysts; Analytic Project Leaders