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What If Shewhart Had Built A Data Warehouse? Robert N. Rodriguez SAS Institute Quality Center SAS Cary Ian Cox Programme Manager, Enterprise Quality SAS EMEA Copyright © 2000 SAS EMEA Agenda ! Introduction The Value and Role of Process Centring ! Process knowledge warehouse Motivation ! Basic data warehouse concepts ! Process metadata enrichment ! Process metadata exploitation ! ! Examples SPC in semiconductor manufacturing ! strategic use of design of experiments ! Copyright © 2000 SAS EMEA Change is Both Predictable and Unpredictable . . . ! Companies organised by functions and managed hierarchically can no longer respond adequately to accelerating change and, sooner or later, will fail to be viable. Companies that have re-engineered some of their high value business processes, and streamlined their organisation for better operating effectiveness and efficiency, will respond to predictable change. e) t u t i t l l s an In have reOnly process-centred companies GA Pa he Jurthat t f o t n e engineered all of theirrhigh d value business processes i s e P ec i V r for maximum adaptability, and align their organisation (Senio around these, will respond to both predicable and unpredictable change. : e s i r p r e t n E d e r t s t n n e e ! C m s t s i e m c o m r o P C e f h o T r e w o P e Th ! Copyright © 2000 SAS EMEA Change is Both Predictable and Unpredictable . . . ! ! ! Companies organised by functions and managed hierarchically can no longer respond adequately to accelerating change and, sooner or later, will fail to be viable. Companies that have re-engineered some of their high value business processes, and streamlined their organisation for better operating effectiveness and efficiency, will respond to predictable change. Only process-centred companies that have reengineered all of their high value business processes for maximum adaptability, and align their organisation around these, will respond to both predicable and unpredictable change. Copyright © 2000 SAS EMEA Requirements for Process-Centring ! Process Thinking The process is the fundamental management construct. ! Process Adaptability The ability to respond to unexpected but detectable events by innovative changes and enhancements to processes. ! Management of Commitments The essence of business is the negotiation and subsequent fulfilment of commitments between suppliers and customers along the value chain. ! Information Technology The expediting and integrating effect of information technology is prerequisite for process adaptability. ! Alignment Organisation around processes based on their value contribution to business performance. Copyright © 2000 SAS EMEA Process Adaptability Process Measure Actual Performance Standards Copyright © 2000 SAS EMEA OK Compare to Standards Not OK Corrective Action Process Adaptability The feedback learning loop is the means of making the processProcess adaptive. ! An “open process” has an effective feedback loop, in which process activities Measure OK can be modified whilst they are being Actual executed. Performance Compare to Corrective ! A “closed process”Standards has no Not feedback Actionloops OK a procedure. andStandards is better thought of as Once started, it cannot be modified until completion. ! Copyright © 2000 SAS EMEA SAS Institute’s Value-Add ! Process Management: Codification of process performance requirements. Intelligent process monitoring and exception reporting through SPC and business rules. Support for collaborative working. ! Warehousing technology and an adaptive Enterprise Computing architecture allow us to respect the natural process scope. Copyright © 2000 SAS EMEA Manufacturers are asking “How can we … ?” ! ! ! ! Compare quality across products, manufacturing lines, and plants Use process measures to predict the quality of the product before it reaches the customer Improve yield, efficiency, and predictability of high-tech manufacturing processes Optimize manufacturing processes through a strategy of experimentation Copyright © 2000 SAS EMEA Finding the answers requires a strategy for process knowledge discovery ... Copyright © 2000 SAS EMEA Process Data Analysis (1924) Walter Shewhart, 1891-1967 Copyright © 2000 SAS EMEA Shewhart Chart (1924) Subgroup Process Measurement Upper Control Limit Lower Control Limit Copyright © 2000 SAS EMEA Shewhart’s Legacy Control chart is basis for modern statistical process control (SPC) ! Used to detect unusual patterns of variation over time ! Pros and cons ! easy to interpret ! applies to many types of processes ! difficult to apply to many processes ! Copyright © 2000 SAS EMEA What’s Different Today? ! More data, more data sources heavy investment in measurement systems ! highly complex processes and products ! multivariate data ! ! ! Process management, not just process control Higher-level questions “Which of our processes contributed to yield loss?” ! “How many experiments optimized a process?” ! Copyright © 2000 SAS EMEA Barriers Flood of data … not analysis-ready ! Multiple sources of transactional data ! Statistical Process Control (SPC) ! Manufacturing Execution Systems (MES) ! Enterprise Resource Planning (ERP) ! ! Data owners, data analysts, and business users speak different languages Copyright © 2000 SAS EMEA Process Knowledge Warehouse Copyright © 2000 SAS EMEA Data Warehouse Basics Introduced in early 1990s ! Recognized distinct requirements of ! on-line transaction processing systems, which bring data in ! decision support systems, which get information out ! Copyright © 2000 SAS EMEA Data Warehouse Basics Data warehousing is the process of gathering, transforming, loading OLTP data into a repository that is optimized for decision-making ! Data warehouse is ! subject-oriented ! time dependent ! read-only ! integrated ! Copyright © 2000 SAS EMEA Process Knowledge Warehouse Stores process data in analysis-ready format ! Integrates supplier, process, quality, and customer data ! Contains pre-generated analysis of important findings using model-based exception reporting ! Supports statistical modeling, data mining ! Copyright © 2000 SAS EMEA Process Knowledge Warehouse ! Maintains history of process changes and abnormal product variation deviations from target ! out-of-control points ! capability indices ! ! Provides trends, predictions ! traceability ! answers to hierarchy of questions ! Copyright © 2000 SAS EMEA Building on Metadata ! Metadata are data about data publish origin and content ! describe roles of variables in analysis ! Well-structured metadata simplify and validate analysis ! Enriched metadata are data about processes ! derive from basic process analysis ! describe results stored in warehouse ! answer higher-level questions ! Copyright © 2000 SAS EMEA Metadata Spectrum Administration Copyright © 2000 SAS EMEA Analysis Metadata Spectrum Administration Where did this data originate? Copyright © 2000 SAS EMEA Analysis Metadata Spectrum Administration Analysis Do I have all the data I need? Copyright © 2000 SAS EMEA Metadata Spectrum Administration Analysis What chart should be used? What control limits were in effect? Is the process in control for this capability analysis? Copyright © 2000 SAS EMEA Metadata Spectrum Administration Analysis Which process steps are critical? What should we work on first? Which activities maximize cost-benefits? Copyright © 2000 SAS EMEA What is Metadata Enrichment? ! Process of obtaining a chunk of raw data from the warehouse ! performing a sound statistical analysis on that data ! saving the metadata results of the analysis in a traceable and usable structure ! Copyright © 2000 SAS EMEA Experimental Design Metadata Enrichment Copyright © 2000 SAS EMEA Experimental Design Metadata Enrichment Copyright © 2000 SAS EMEA Experimental Design Metadata Enrichment Copyright © 2000 SAS EMEA Data Model With Enriched Experimental Metadata Copyright © 2000 SAS EMEA Process Knowledge Warehouse Exploitation ! Shift in analytical focus ! ! ! from one control chart to questions about all processes from individual experiment to questions about enterprise experimentation strategy Process scorecard Copyright © 2000 SAS EMEA Example: Semiconductor Yield Loss Copyright © 2000 SAS EMEA Example: Semiconductor Yield Loss ! Cost of yield lost at wafer probe = wafer material cost x wafer volume x (1 - model-adjusted yield) ! Hierarchical exploitation high-level views published by SAS/WA with references in analytically enriched metadata ! detailed views generated by SAS/Intrnet calls with data in warehouse ! Copyright © 2000 SAS EMEA Enterprise-Level Process Knowledge Warehouse Copyright © 2000 SAS EMEA Benefits of a Process Knowledge Warehouse ! Raw data integration integrates raw data from many processes ! stores data in analysis-ready structure described by data model ! ! Metadata enrichment generates process metadata via analysis ! creates data tables, GIF, HTML ! ! Metadata exploitation ! Copyright © 2000 SAS EMEA answers global questions Links . . . Wednesday, 1315, Technology Centre, Booth 5, Data Mining and Applied Analysis Enhancements to ADX in Release 8e Wednesday, 1545 - Mainstream SAS Presentation, Business Solutions Stream, Pavilion 2 What if Shewhart Had Built A Data Warehouse? Thursday, 0945, Technology Centre, Booth 5, Data Mining and Applied Analysis Enhancements to ADX in Release 8e Thursday 1700, Business Applications of Data Mining, Theatre 2 Building a Data Warehouse For Process Knowledge Management Copyright © 2000 SAS EMEA What If Shewhart Had Built A Data Warehouse? Robert N. Rodriguez SAS Institute Quality Center SAS Cary Ian Cox Programme Manager, Enterprise Quality SAS EMEA Copyright © 2000 SAS EMEA