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Chapter 10
Tool Support

prof.dr.ir. Wil van der Aalst
www.processmining.org
Overview
Chapter 1
Introduction



Part I: Preliminaries

Chapter 2                   Chapter 3
Process Modeling and        Data Mining
Analysis


Part II: From Event Logs to Process Models

Chapter 4                  Chapter 5               Chapter 6
Getting the Data           Process Discovery: An   Advanced Process
                           Introduction            Discovery Techniques


Part III: Beyond Process Discovery

Chapter 7                   Chapter 8              Chapter 9
Conformance                 Mining Additional      Operational Support
Checking                    Perspectives


Part IV: Putting Process Mining to Work

Chapter 10                  Chapter 11             Chapter 12
Tool Support                Analyzing “Lasagna     Analyzing “Spaghetti
                            Processes”             Processes”


Part V: Reflection

Chapter 13                  Chapter 14
Cartography and             Epilogue
Navigation
                                                                          PAGE 1
Business Intelligence?

• “BI is a set of methodologies, processes,
  architectures, and technologies that transform raw
  data into meaningful and useful information used to
  enable more effective strategic, tactical, and
  operational insights and decision making”
• Examples of products:
 IBM Cognos Business Intelligence (IBM), Oracle Business Intelligence
 (Oracle), SAP BusinessObjects (SAP), WebFOCUS (Information
 Builders), MS SQL Server (Microsoft), MicroStrategy (MicroStrategy),
 NovaView (Panorama Software), QlikView (QlikTech), SAS Enterprise
 Business Intelligence (SAS), TIBCO Spotfire Analytics (TIBCO),
 Jaspersoft (Jaspersoft), and Pentaho BI Suite (Pentaho).




                                                                  PAGE 2
Typical functionality

•   ETL (Extract, Transform, and Load).
•   Ad-hoc querying.
•   Reporting.
•   Interactive dashboards
•   Alert generation.                      all iPhone 4G sales
                                          in region West in the
                                         fourth quarter of 2011




                                             sales by product
                                                                 iPhone 4G

                                                                 iPod nano




                                                                                                           N
             Three dimensional




                                                                                                            or t
                                                                                                              th
                                                                                                         Ea
             OLAP cube containing sales                         iPod classic




                                                                                                                 s


                                                                                                                      n
                                                                                                      So




                                                                                                                      o
             data. Each cell refers to all




                                                                                                                   gi
                                                                                                       ut


                                                                                                                 re
                                                                                                  W

                                                                                                          h
             sales of a particular product                                     Q1 Q2 Q3 Q4




                                                                                                  es


                                                                                                              by
                                                                                                     t
             in a particular region and




                                                                                                             s
                                                                                                           le
                                                                               sales by quarter




                                                                                                       sa
             in a particular period. For
             each cell the BI product can
             compute metrics such as the
             number of items sold or the
                                                                                                                          PAGE 3
             total value.
Example: Pentaho
www.pentaho.com




                   PAGE 4
Business Unintelligence

• No real process orientation.
• Only simple views on event data.
• Focus on reporting and monitoring of KPIs.



Data mining ≠ process mining
• Data mining tools provide more “intelligent
  functionality” than BI tools, but are also not process-
  centric.
• See for example WEKA (Waikato Environment for
  Knowledge Analysis, weka.wikispaces.com) and R
  (www.r-project.org).
                                                      PAGE 5
ProM

• www.processmining.org
• ProM supports all of the techniques mentioned in
  book and on slides!
• Pluggable architecture.
• Major differences between ProM 5.2 (and earlier) and
  ProM 6.




                                                    PAGE 6
Screenshot of ProM 5.2




                         PAGE 7
Screenshot of ProM 6




(based on handover of work)
                              PAGE 8
ProM 6: α miner




                  PAGE 9
ProM 6: Social network analyzer




                                  PAGE 10
Example plug-ins in ProM 6
(see book and website)




                             PAGE 11
Some process mining tools




                            PAGE 12
Futura Reflect (process view)
(also embedded in BPM|one)




                                PAGE 13
Futura Reflect
(social network)




                   PAGE 14
Loading and converting event logs

• XESame, Nitro, ProMimport




                                    PAGE 15

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Tool Support for Process Mining Analysis

  • 1. Chapter 10 Tool Support prof.dr.ir. Wil van der Aalst www.processmining.org
  • 2. Overview Chapter 1 Introduction Part I: Preliminaries Chapter 2 Chapter 3 Process Modeling and Data Mining Analysis Part II: From Event Logs to Process Models Chapter 4 Chapter 5 Chapter 6 Getting the Data Process Discovery: An Advanced Process Introduction Discovery Techniques Part III: Beyond Process Discovery Chapter 7 Chapter 8 Chapter 9 Conformance Mining Additional Operational Support Checking Perspectives Part IV: Putting Process Mining to Work Chapter 10 Chapter 11 Chapter 12 Tool Support Analyzing “Lasagna Analyzing “Spaghetti Processes” Processes” Part V: Reflection Chapter 13 Chapter 14 Cartography and Epilogue Navigation PAGE 1
  • 3. Business Intelligence? • “BI is a set of methodologies, processes, architectures, and technologies that transform raw data into meaningful and useful information used to enable more effective strategic, tactical, and operational insights and decision making” • Examples of products: IBM Cognos Business Intelligence (IBM), Oracle Business Intelligence (Oracle), SAP BusinessObjects (SAP), WebFOCUS (Information Builders), MS SQL Server (Microsoft), MicroStrategy (MicroStrategy), NovaView (Panorama Software), QlikView (QlikTech), SAS Enterprise Business Intelligence (SAS), TIBCO Spotfire Analytics (TIBCO), Jaspersoft (Jaspersoft), and Pentaho BI Suite (Pentaho). PAGE 2
  • 4. Typical functionality • ETL (Extract, Transform, and Load). • Ad-hoc querying. • Reporting. • Interactive dashboards • Alert generation. all iPhone 4G sales in region West in the fourth quarter of 2011 sales by product iPhone 4G iPod nano N Three dimensional or t th Ea OLAP cube containing sales iPod classic s n So o data. Each cell refers to all gi ut re W h sales of a particular product Q1 Q2 Q3 Q4 es by t in a particular region and s le sales by quarter sa in a particular period. For each cell the BI product can compute metrics such as the number of items sold or the PAGE 3 total value.
  • 6. Business Unintelligence • No real process orientation. • Only simple views on event data. • Focus on reporting and monitoring of KPIs. Data mining ≠ process mining • Data mining tools provide more “intelligent functionality” than BI tools, but are also not process- centric. • See for example WEKA (Waikato Environment for Knowledge Analysis, weka.wikispaces.com) and R (www.r-project.org). PAGE 5
  • 7. ProM • www.processmining.org • ProM supports all of the techniques mentioned in book and on slides! • Pluggable architecture. • Major differences between ProM 5.2 (and earlier) and ProM 6. PAGE 6
  • 8. Screenshot of ProM 5.2 PAGE 7
  • 9. Screenshot of ProM 6 (based on handover of work) PAGE 8
  • 10. ProM 6: α miner PAGE 9
  • 11. ProM 6: Social network analyzer PAGE 10
  • 12. Example plug-ins in ProM 6 (see book and website) PAGE 11
  • 13. Some process mining tools PAGE 12
  • 14. Futura Reflect (process view) (also embedded in BPM|one) PAGE 13
  • 16. Loading and converting event logs • XESame, Nitro, ProMimport PAGE 15