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PMML  Overview
PMML  defines a standard not only to represent data-mining models, but also  data handling  and  data transformations  (pre- and post-processing) PMML Predictive Model Markup Language Transformations ,[object Object],[object Object],[object Object],[object Object],Models
Matured and Supported by Industry PMML PMML  Industry Support ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
PMML Components ,[object Object],[object Object],[object Object],[object Object],[object Object]
PMML Files 3) Post-Processing Scaling of model outputs can be performed with PMML element  Targets 1) Pre-Processing PMML elements  Transformations, Mining Schema  and  Functions  allow for effective pre-processing 2) Models PMML allows for several predictive modeling techniques to be fully expressed PMML
PMML: Data Pre-Processing ,[object Object],[object Object],[object Object],[object Object],Data Pre-Processing 1
Data Pre-Processing: PMML Example Arbitrary Piecewise Linear Function This PMML code implements:  Var_b:=interpolate(Var_a,((100,0),(200,1),(800,3),(900,4))) See http://www.dmg.org/v3-2/Transformations.html -  look for element NormContinuous.
Modeling Elements ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Easy Expression of Predictive Models 2
Modeling Elements: PMML Example for Neural Network
The PMML code below implements score post-processing.  It uses the PMML element  Targets  for checking  boundaries ( min  and  max ) and to rescale ( rescaleConstant   and  rescaleFactor ) the original score generated by model  See http://www.dmg.org/v3-2/Targets.html Data Post-Processing: PMML Example 3
Applications Service Providers  External Vendors  Divisions One Standard, One Process
PMML = Easy Model Deployment Model Deployment Model Building PMML
PMML - Zementis Contributions ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Thank You! U.S.A Headquarters Asia Office E-mail:   [email_address] 19/F., Unit A Ho Lee Commercial Building 38-44 D’Aguilar Street Central, Hong Kong (S.A.R.) Tel:  +852 2868-0878 Fax:  +852 2845-6027 6125 Cornerstone Court East Suite 250 San Diego, CA, 92121 Tel:  +1 619 330-0780 Fax:  +1 858 535-0227

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PMML - Predictive Model Markup Language

  • 2.
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  • 4.
  • 5. PMML Files 3) Post-Processing Scaling of model outputs can be performed with PMML element Targets 1) Pre-Processing PMML elements Transformations, Mining Schema and Functions allow for effective pre-processing 2) Models PMML allows for several predictive modeling techniques to be fully expressed PMML
  • 6.
  • 7. Data Pre-Processing: PMML Example Arbitrary Piecewise Linear Function This PMML code implements: Var_b:=interpolate(Var_a,((100,0),(200,1),(800,3),(900,4))) See http://www.dmg.org/v3-2/Transformations.html - look for element NormContinuous.
  • 8.
  • 9. Modeling Elements: PMML Example for Neural Network
  • 10. The PMML code below implements score post-processing. It uses the PMML element Targets for checking boundaries ( min and max ) and to rescale ( rescaleConstant and rescaleFactor ) the original score generated by model See http://www.dmg.org/v3-2/Targets.html Data Post-Processing: PMML Example 3
  • 11. Applications Service Providers External Vendors Divisions One Standard, One Process
  • 12. PMML = Easy Model Deployment Model Deployment Model Building PMML
  • 13.
  • 14. Thank You! U.S.A Headquarters Asia Office E-mail: [email_address] 19/F., Unit A Ho Lee Commercial Building 38-44 D’Aguilar Street Central, Hong Kong (S.A.R.) Tel: +852 2868-0878 Fax: +852 2845-6027 6125 Cornerstone Court East Suite 250 San Diego, CA, 92121 Tel: +1 619 330-0780 Fax: +1 858 535-0227