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Information Assurance. The Coordinated Approach To Improving Enterprise Data Quality. Introduction. Information Assurance requires the coordinated efforts of multiple teams working on strategy, tactics, and projects
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Information Assurance The Coordinated Approach To Improving Enterprise Data Quality
Introduction Information Assurance requires the coordinated efforts of multiple teams working on strategy, tactics, and projects Information Assurance team members share responsibility, resources, and rewards 2
Agenda • What is Information Assurance? • Nationwide Activities and Results • Your Benefits 3
What is Information Assurance? A Method for Addressing Data Quality Issues and Improving Business Value Using: • A Coordinated Team Interaction Model • A Standard IA Process Flow Model • A Focused Organizational Structure • A Defined Set of Responsibilities 4
Select Value (or accept default): A Status Unknown {default} A Open Account B Closed Account C Account Locked D No Value E Typical Data Quality Issues Have you encountered: • Data management processes that generate data inconsistent with your business operations? • User interfaces that encourage data entry personnel to select a specific data value whether or not it is the correct value? 5
Internal Audits Finance Business Stewardship Governance Information Assurance Team Data Quality Administration Business Information Architect Management Systems Team Interaction Model 6
Information Assurance Process Flow Start Is element within DQ compliance limits? Yes End Data Analysis Project Initiation Data Steward Appoints Data Quality Analysis Team Document – participants, roles, responsibilities, time commitments No DQ Team identifies remediation options & recommendations Document – what can we do, how much will it cost, what benefit will we see DQ Team identifies key elements & acceptable DQ compliance levels Document – which elements, how good is good enough, why, what metrics to use Data Steward & DGC select appropriate remediation action(s) Document – selected option, reasons for selection, how it will be implemented DQ Team & Data Architect(s) perform Data Quality Analysis Document – who, what, why, how, when, and results for each pass thru data Remediation actions successfully implemented Document – complete new project documentation 7
Business Advantage Wisdom Timely Use + Decisions & Implementation Shared Knowledge Accurate Application + BI,EIS, & Data Mining Business Value Information Agreed Meaning + Data Governance Data Business Context + Metadata Repository Input Processes OLTP & Data Capture Communication Complexity Stepping up to Business Value 8
Information Assurance Responsibilities Data Governance Committee • Guidance, Standards, Common Definitions, Metrics, Business Rules Data Stewardship Team • Validation, Metadata Management, Business Usage, Data Quality Analysis Data Quality Committee • Prioritization, Funding Allocation, Data Quality Oversight, Senior Escalation Point for Data Quality Issues Information Assurance Team • Data Quality Analysis and Reporting, Data Quality Training 10
Nationwide Activities and Results Why an Information Assurance Focus Current Information Assurance State The Problems We Addressed Our Deliverables to Date The Results of Our Efforts 11
Why an Information Assurance Focus Information Assurance encourages a "Collaborative Assault" on data quality issues Information Assurance enables a Speed to Market strategy in support of business operations Information Assurance insures that Front-Line Decision Makers have access to reliable and timely information on which to base their decisions 12
Current Information Assurance State Data Governance Committee fully operational Information Assurance Team being staffed Data Stewards being identified for most areas Data Quality Committee established, supported by Metadata Management team Internal Audit approval of process models Data Quality Administration providing detailed data quality analysis 13
The Problems We Addressed No standard review, approval, and certification process for new data warehouse projects Inconsistent definition, testing, and approval for new metrics Fragmented error management processes – no enforceable service level agreements Project and team based data quality analysis processes provided unverifiable results 14
Our Deliverables to Date Data Governance Certification Process New Metrics Development Process Error Management Process (2004) Data Quality Analysis Process (2004) 15
New Metrics Development Guarantees Unique Names & Definitions Improves Data Quality Insures Accuracy & Reliability Promotes Reusability Provides for a "Single Version of the Truth" 17
Error Management Insures Common Error Reporting and Management Improves Error Tracking & Issue Resolution Operations Provides Common Issue Escalation Practices Release in 2004 18
Data Quality Analysis Release in 2004 Business Must Apply ROI Discipline 19
The Results of Our Efforts Simplified, common review, approval, and certification for data warehouse projects Consistent, enforceable process for new metrics development and approval Common error management process, supported by realistic service level agreements Centrally managed data quality analysis processes for raw data sets providing verifiable business value for effort 20
The Lessons We Learned Each process checkpoint must add value Process tasks must prevent bottlenecks in the design and development lifecycle Get the right people into a room and don't leave until the issues have been identified and addressed Each defined activity must be associated with an enforceable service level agreement 21
Future Programs Expanding Data Governance Committee structure and authority to include all business data sets Initiating Data Stewardship program for all business units Establishing Data Quality Committee as senior escalation point on data quality issues Establishing Information Assurance team and program as shared business resources 22
Your Benefits Improving Business Processes and Decision Making Leveraging Organizational Structure, Communication, and Cooperation Coordinating Technological Operations to Reduce Redundancy 23
Improving Business Processes • Improved data quality • Increased information value • Value based decisions driven by measurable ROI • Emphasis on quality, not quantity, of work • Improved metadata accuracy and increased content 24
Leveraging Organizational Structure • Shared effort among business, finance, and technology teams • Team Interaction Model encourages idea exchange and joint development efforts • New/improved processes emphasize organizational strengths 25
Coordinating Technological Operations • Enables use of common and standardized process models • Encourages development of and adherence to best practices • Coordinates review and improvement of Data Quality concepts and processes • Leverages staff resource strengths • Minimizes risks due to resource rebalancing 26
Conclusion The goal of Information Assurance is to provide business units with the highest quality data possible The establishment of a business focused Information Assurance team is of utmost importance Information Assurance activities must involve the coordinated effort of multiple teams relying on skilled specialists Each Information Assurance activity must provide a verifiable net improvement in overall data quality 27
The Authors Ann Moore, Officer, Strategic Projects With a background in sales management, Claims, NI Systems management, Internal Audits, and NI Data Governance, Ann brings both business and technical expertise to Information Assurance operations and processes Ronald Borland, Data Architect With three years in NIS data architecture and a background in project management, data quality, metadata management, and application design and development, Ron is able to bring a strong cross discipline approach to Information Assurance operations and processes 28
Information Assurance is a state of mind as much as a technological process. The goal is to provide the business with the highest quality information possible 29