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IBM Watson Analytics
Workshop by Mike Ghen
Website: http://bit.ly/28OxUUU
Workshop Objectives
Understand the concept of “data assets” and “knowledge discovery in datasets (KDD)”
Import assets into Watson Analytics
Refine assets in Watson Analytics
Create data visuals from assets using Watson Analytics
Assemble dashboards and infographics with Watson Analytics
Identify which features in a data set can be used to predict a target variable in a data set using
the predictive analytics tools provided by Watson Analytics
Data Assets and KDD
Intellectual capital is knowledge that can be exploited for some money-making or other useful purpose.
Data are considered assets because they can be used to create intellectual capital.
The process of creating knowledge from data is call knowledge discovery in data (KDD).
data is the new oil Refinery
data is the new oil Refinery
Data
Knowledge
Knowledge
Discovery in Data
Refinery A
Refinery B
Knowledge
Discovery in Data
Refinery A
Refinery B
Data
Information
Knowledge
Knowledge
Discovery in Data
Refinery A
IBM Watson
Analytics
Data
Information
Knowledge
Create an IBM Watson Analytics Account
Create an IBM Watson Analytics Account
● Register for a free trial during this workshop by going to
● Done when everyone is able to view the IBM Watson Analytics dashboard
http://www.ibm.com/analytics/watson-analytics/us-en/
KDD Workflow with IBM Watson Analytics
Improving the quality of a data set
Improving the quality of a data set
● In depth look at uploading and transforming data sets using Watson
● Data quality
● Removing rows
● Aggregations
● Calculations
● Done when everyone has imported the IPPS Provider Summary data set
● Done when everyone has imported another sample data set of their choice
http://bit.ly/28OxUUU
Knowledge Discovery in Data
Knowledge Discovery in Data
● Analyze the IPPS Provider Summary data set with Watson answering sample
research questions
● Which states have the highest average cost for ____ DRG code?
● Which DRG codes occur most frequently in ____ state?
● Answer additional questions on other data sets
● KDD Workflow
● Done when everyone has created several visualizations for IPPS Provider
Summary data set
Predictive Analytics
Predictive Analytics
● Predictive analytics primer
● Target variables
● Use IBM Watson to figure out the most predictive features in a data set
● Use Watson to visualize a decision tree model for prediction
● Done when everyone has created both a spiral and decision tree
Predictive Analytics: Filter Method
Feature selection: The process of selecting a subset of
relevant features (variables, predictors) for use in model
construction
Target variable: The variable you are trying to predict
Filter method for selecting features:
Predictive Analytics: Filter Method
Feature selection: The process of selecting a subset of
relevant features (variables, predictors) for use in model
construction
Target variable: The variable you are trying to predict
Filter method for selecting features:
Presentations
Presentations
● Create a presentation using visuals from Watson
● Dashboards
● Infographics
● Done when everyone has created both a dashboard and an infographic
IBM Watson in Practice
● Data sources
● Intellectual assets
● Working as an analytics team
● Done when no one has anymore questions
Contact: mike@mikeghen.com, michael.ghen@cohealo.com

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IBM Watson Analytics Workshop

  • 1. IBM Watson Analytics Workshop by Mike Ghen Website: http://bit.ly/28OxUUU
  • 2. Workshop Objectives Understand the concept of “data assets” and “knowledge discovery in datasets (KDD)” Import assets into Watson Analytics Refine assets in Watson Analytics Create data visuals from assets using Watson Analytics Assemble dashboards and infographics with Watson Analytics Identify which features in a data set can be used to predict a target variable in a data set using the predictive analytics tools provided by Watson Analytics
  • 3. Data Assets and KDD Intellectual capital is knowledge that can be exploited for some money-making or other useful purpose. Data are considered assets because they can be used to create intellectual capital. The process of creating knowledge from data is call knowledge discovery in data (KDD).
  • 4. data is the new oil Refinery
  • 5. data is the new oil Refinery Data Knowledge
  • 7. Knowledge Discovery in Data Refinery A Refinery B Data Information Knowledge
  • 8. Knowledge Discovery in Data Refinery A IBM Watson Analytics Data Information Knowledge
  • 9. Create an IBM Watson Analytics Account
  • 10. Create an IBM Watson Analytics Account ● Register for a free trial during this workshop by going to ● Done when everyone is able to view the IBM Watson Analytics dashboard http://www.ibm.com/analytics/watson-analytics/us-en/
  • 11. KDD Workflow with IBM Watson Analytics
  • 12. Improving the quality of a data set
  • 13. Improving the quality of a data set ● In depth look at uploading and transforming data sets using Watson ● Data quality ● Removing rows ● Aggregations ● Calculations ● Done when everyone has imported the IPPS Provider Summary data set ● Done when everyone has imported another sample data set of their choice http://bit.ly/28OxUUU
  • 15. Knowledge Discovery in Data ● Analyze the IPPS Provider Summary data set with Watson answering sample research questions ● Which states have the highest average cost for ____ DRG code? ● Which DRG codes occur most frequently in ____ state? ● Answer additional questions on other data sets ● KDD Workflow ● Done when everyone has created several visualizations for IPPS Provider Summary data set
  • 17. Predictive Analytics ● Predictive analytics primer ● Target variables ● Use IBM Watson to figure out the most predictive features in a data set ● Use Watson to visualize a decision tree model for prediction ● Done when everyone has created both a spiral and decision tree
  • 18. Predictive Analytics: Filter Method Feature selection: The process of selecting a subset of relevant features (variables, predictors) for use in model construction Target variable: The variable you are trying to predict Filter method for selecting features:
  • 19. Predictive Analytics: Filter Method Feature selection: The process of selecting a subset of relevant features (variables, predictors) for use in model construction Target variable: The variable you are trying to predict Filter method for selecting features:
  • 21. Presentations ● Create a presentation using visuals from Watson ● Dashboards ● Infographics ● Done when everyone has created both a dashboard and an infographic
  • 22. IBM Watson in Practice ● Data sources ● Intellectual assets ● Working as an analytics team ● Done when no one has anymore questions Contact: mike@mikeghen.com, michael.ghen@cohealo.com