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Developing Business
   Intelligence Capabilities
In The Postal Organisation

     Bernard Markowicz, Ph.D.
           March 2011




                                1
The Changing Business Environment




      Decline of reserved product volumes and revenues (-4%/year
      for First Class in the U.S. (1))
      Growth of packages (+3%/year in the U.S.)
      Greater elasticity of competitive products (in average(2))
      Increased competition and integration between marketing
      channels (direct mail, email, broadcast, etc.)

      business intelligence is needed to support products and
      services decisions
(1) BCG    Study for USPS
(2) Alan   Robinson Study for Pitney Bowes – 2007-01




                                                                         2
Business Intelligence Investigation




In the fall of 2010, d/ap was tasked with evaluating
business intelligence capabilities at USPS

                                   • Xerox         • Pitney Bowes
                Industry           • Quad/Graphics • Best - Buy
   USPS
                  Best
Interviews                         • P&G           • Toyota of North America
                Practices
                                   • Gannett       • Disney

                                   • ADS - Epsilon • AT&T • Verizon
         Canada                    • TJX - Chadwick – Zayre – HomeGoods
          Post
        Secondary




                                                                               3
Business Intelligence



               • Customer segmentation (Attributes, needs, etc.)
 Customer      • Criticality of needs
Intelligence   • Share of wallet


               • Market characteristics
   Market      • Market trends
Intelligence   • Players, value chains, participants, shares. etc.


               • State of competition by segment
Competitive    • Basis of competition (production, distribution, products)
Intelligence   • Dependence on key product attributes




                                                                             4
Three Categories of Customer Needs


Outstanding                 Excitement Attributes                 Performance
                            (e.g., flat-rate boxes?)              Needs (e.g., Price)
   Customer Satisfaction
        and Loyalty




                                                             Threshold Needs
                                                             (e.g., On-time Delivery)



          Poor
                           Poor     Performance Relative to Competitors     Excellent


                                                                                        5
The Business Intelligence Process




Collect &    Sift, Sort,
                            Analyze       Interpret     Organize      Present
Compile       & Verify

• Customer   • Data        • Analytics   • Trends       • Dashbrd    • Communi
  Surveys      cleansing   • Integrate   • Identify     • Roadmap      cation
• Market     • Reduce        internal/     gaps &       • Segments     playbooks
  Research     size of       external      opportuni-   • Focus on
• Experts      data        • Score         ties           results         Analyze
• Events,    • Needs vs      cards       • Predictive   • Support
  Pubs         behaviors   • SWOT          analysis       decision        Search
• Database   • Mini DW                                    making           Index
  /Systems
                                                                           Filter




                                                                                    6
The Business Intelligence Process




Collect &   Sift, Sort,
                           Analyze   Interpret   Organize   Present
Compile      & Verify

                             conversion of information
                                    to insight




                          Key Intelligence Topics



                                                                      7
Key Postal Intelligence Topics




                                 8
Business Intelligence Instruments




                 senders                  receivers

• Industry Assessments               •   Household Diary Study (USPS)
  (Analyst reports, Press, Events)   •   Media panels
• Retail data mining                 •   Focus Groups
• Acceptance units data mining       •   Satisfaction Surveys
• Satisfaction Surveys               •   Direct mail response tests
• Focus groups



                                                                        9
Organisation of Business Intelligence


DECENTRALISED                            CENTRALISED




Domestic       Int’l                Domestic    B/I     Int’l




Finance        Ops                  Finance            Ops

•   Immediate and direct access     • Better data integration value
•   Facts closer to decisions       • Analyst cross-training
•   Low value data marts            • Help build “Intelligence
•   Idea silos                        consensus” across enterprise


                                                                      10
Moving Forward




Business intelligence is now a requirement for postal
operators

     Accepted       Encouraged       Required



Identify key intelligence topic and develop briefs
Establish an “intelligence” consensus - Look for early wins
Gradually bring together resources in a centralised unit
Learn to develop insights from, and beyond information

                           ***
                                                              11

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Developing BI Capabilities in Postal Organizations

  • 1. Developing Business Intelligence Capabilities In The Postal Organisation Bernard Markowicz, Ph.D. March 2011 1
  • 2. The Changing Business Environment Decline of reserved product volumes and revenues (-4%/year for First Class in the U.S. (1)) Growth of packages (+3%/year in the U.S.) Greater elasticity of competitive products (in average(2)) Increased competition and integration between marketing channels (direct mail, email, broadcast, etc.) business intelligence is needed to support products and services decisions (1) BCG Study for USPS (2) Alan Robinson Study for Pitney Bowes – 2007-01 2
  • 3. Business Intelligence Investigation In the fall of 2010, d/ap was tasked with evaluating business intelligence capabilities at USPS • Xerox • Pitney Bowes Industry • Quad/Graphics • Best - Buy USPS Best Interviews • P&G • Toyota of North America Practices • Gannett • Disney • ADS - Epsilon • AT&T • Verizon Canada • TJX - Chadwick – Zayre – HomeGoods Post Secondary 3
  • 4. Business Intelligence • Customer segmentation (Attributes, needs, etc.) Customer • Criticality of needs Intelligence • Share of wallet • Market characteristics Market • Market trends Intelligence • Players, value chains, participants, shares. etc. • State of competition by segment Competitive • Basis of competition (production, distribution, products) Intelligence • Dependence on key product attributes 4
  • 5. Three Categories of Customer Needs Outstanding Excitement Attributes Performance (e.g., flat-rate boxes?) Needs (e.g., Price) Customer Satisfaction and Loyalty Threshold Needs (e.g., On-time Delivery) Poor Poor Performance Relative to Competitors Excellent 5
  • 6. The Business Intelligence Process Collect & Sift, Sort, Analyze Interpret Organize Present Compile & Verify • Customer • Data • Analytics • Trends • Dashbrd • Communi Surveys cleansing • Integrate • Identify • Roadmap cation • Market • Reduce internal/ gaps & • Segments playbooks Research size of external opportuni- • Focus on • Experts data • Score ties results Analyze • Events, • Needs vs cards • Predictive • Support Pubs behaviors • SWOT analysis decision Search • Database • Mini DW making Index /Systems Filter 6
  • 7. The Business Intelligence Process Collect & Sift, Sort, Analyze Interpret Organize Present Compile & Verify conversion of information to insight Key Intelligence Topics 7
  • 9. Business Intelligence Instruments senders receivers • Industry Assessments • Household Diary Study (USPS) (Analyst reports, Press, Events) • Media panels • Retail data mining • Focus Groups • Acceptance units data mining • Satisfaction Surveys • Satisfaction Surveys • Direct mail response tests • Focus groups 9
  • 10. Organisation of Business Intelligence DECENTRALISED CENTRALISED Domestic Int’l Domestic B/I Int’l Finance Ops Finance Ops • Immediate and direct access • Better data integration value • Facts closer to decisions • Analyst cross-training • Low value data marts • Help build “Intelligence • Idea silos consensus” across enterprise 10
  • 11. Moving Forward Business intelligence is now a requirement for postal operators Accepted Encouraged Required Identify key intelligence topic and develop briefs Establish an “intelligence” consensus - Look for early wins Gradually bring together resources in a centralised unit Learn to develop insights from, and beyond information *** 11