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Supply Chain Analytics Using Business Intelligence

Supply Chain Analytics Using Business Intelligence. Elaina Ball – Director, Supply Chain Ralph Shay - Enterprise Application Delivery CPS Energy. Business perspective CPS Energy Supply Chain at CPS Energy IT perspective SAP solutions at CPS Energy Supply Chain Analytics project

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Supply Chain Analytics Using Business Intelligence

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  1. Supply Chain AnalyticsUsing Business Intelligence Elaina Ball – Director, Supply Chain Ralph Shay - Enterprise Application Delivery CPS Energy

  2. Business perspective CPS Energy Supply Chain at CPS Energy IT perspective SAP solutions at CPS Energy Supply Chain Analytics project Results and lessons learned Q & A Presentation Outline

  3. Company Profile • Nation’s largest municipally owned energy company (electric & gas) • Assets approaching $9 billion • 680,000 electric customers • 319,000 gas customers • Highest financial ratings of any U.S. electric system • Customers’ combined energy bills rank among the lowest of the nation’s 20 largest cities

  4. Vision • #1 in Customer Satisfaction • Provide reliable, low cost, environmentally responsible energy to our customers • Great place to work • Customer Commitment • Performance • Safety • Respect • Teamwork • Trust

  5. Supply Chain Strategy • Business Objectives - support corporate objectives by striving for • Demand forecast accuracy • Perfect order fulfillment • Minimized costs • Organizational Alignment • Organization based on customer fulfillment streams (Materials, Contracts, Fleet) • Performance Metrics • Transform supply chain operational transaction data into performance metrics to identify improvement opportunities and track performance trends.

  6. Business Objective: Reliability Supply Chain enablement through: Perfect order fulfillment through demand forecast accuracy Services and materials available when needed, as specified Seeking perfection in delivery is how we support reliability. Business Perspective,Supply Chain Alignment

  7. Business Perspective,Supply Chain Alignment Business Objective: Low cost energy Supply Chain Enablement through: • Reduced cost of supply • Lower internal operating costs • Strategic sourcing and spend management Seeking lower cost of supply is how we support low cost energy for customers.

  8. Business Objective: Environmental responsibility Supply Chain Enablement through: Elimination of waste in business processes Reduction of excess inventory Reduction of errors Seeking waste reduction is how we support environmental responsibility. Business Perspective,Supply Chain Alignment

  9. Business Perspective,Supply Chain Context What opportunity exists for reducing inventory valuation while improving availability? How accurate is the plan compared to actual? How long does it take to process purchasing documents? What is the fill rate?

  10. Business Perspective,Supply Chain Scorecard • Purchasing document cycle time • Inventory replenishment cycle time • Supply chain cycle time • Line count fill rate • Inventory accuracy • Inventory transfers between storage locations • Inventory usage • Inventory rationalization

  11. Business Perspective,Supply Chain Scorecard (cont’d) • Inventory consumption forecast vs. actual inventory consumption • Schedule forecast vs. actual start/complete • Volume of supply chain transactions

  12. IT Perspective,Information Technology Context • SAP R/3 4.6c implemented late 2001 • Supply Chain use of SAP ERP primarily transactional with limited use of LIS • SRM, SCM not implemented at this time • BW 3.5 in place when Supply Chain presented need for analytics • Commitment to upgrade to ECC 6.0 and BI 7.0 made after Supply Chain analytics project was launched

  13. IT Perspective,Project approach • Establish formal software development project • Follow disciplines of PMO and SDLC • During planning phase, prototype scorecard reports using data extracted from SAP R/3 tables • Use prototypes to engage stakeholders and improve design through active use • Prototyped reports serve as BI frontend design targets

  14. IT Perspective,Prototype example

  15. IT Perspective,Prototype example

  16. IT Perspective,Professional services • Sapient Consulting engaged to provide professional services for BI 7.0 upgrade and Supply Chain Analytics development • Consultants assigned to the engagement had extensive experience with: • Project management • Utilities clients • Supply Chain clients • SAP BW and BI 7.0

  17. IT Perspective,Consultant’s recommendations • Organize project execution phase into iterations to deliver “quick wins” • Iteration 1 scoped to deliver scorecard reporting related to cycle time • Purchase Order Cycle Time • Inventory Replenishment cycle time • Supply Chain Cycle time

  18. IT Perspective,Consultant’s Recommendations

  19. IT Perspective,Consultant’s Recommendations

  20. IT Perspective,Consultant’s recommendations Multiprovider for summary information

  21. IT Perspective,Consultant’s recommendations Multiprovider from DSOs for jump queries

  22. IT Perspective,Sample results

  23. IT Perspective,Sample results

  24. IT Perspective,Sample results

  25. Results,Project deliverables • Iteration 1 delivered January 2008 • Purchasing document cycle time reporting • Iteration 2 delivered July 2008 • Demand forecast accuracy reporting • Information delivered used to support continuous process improvement and operational efficiencies in the supply chain

  26. Example-Material Lead Time

  27. . . . Business Explorer Sample Output

  28. Results,Project “side benefits” • Prototypes used to drive early business results • Identified excess inventory to drive decisions for inventory reduction in excess of $5MM • Identified opportunities for improved contract management to drive down inventory replenishment cycle time and reduce stock outs • Prototypes of demand accuracy results supported cross-functional dialogue seeking improvement • Process and transaction system “anomalies” exposed during data analysis and reconciliation

  29. Results,Project “side benefits” • Knowledge transfer from consultants strengthened in-house BI team skills • Supply Chain Information Team participation created foundational skills and knowledge for future extension of supply chain analytics in BI environment • Experience with iteration 1 and iteration 2 project plans, budgets and results will serve to improve future BI project plans and cost estimates

  30. Lessons Learned • Prototyping reports using data extracted from SAP tables helped stakeholders define reporting data sources and uses • Professional services from an experienced consulting firm benefited both business and IT stakeholders • Combining technical upgrades with a development project added complexities requiring a “program” approach to project management

  31. Lessons Learned • BI projects are not simply about reporting • Security model • Process chain reliability • Information distribution choices • End user training needs and considerations • Development iterations deliver value earlier and allow the application of lessons learned to improve subsequent iterations

  32. Recap,Q & A • Business perspective • CPS Energy • Supply Chain at CPS Energy • IT perspective • SAP solutions at CPS Energy • Supply Chain Analytics project • Results and lessons learned • Q & A

  33. Elaina Ball Ralph Shay CPS Energy eball@cpsenergy.com rrshay@cpsenergy.com

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