SlideShare una empresa de Scribd logo
1 de 31
Technology Evaluation Centers From Data Quality to Data Governance Jorge García, Research Analyst ComputerWorld Technology Insights, Toronto , 10/2011. www.technologyevaluation.com
Technology Evaluation Centers 1. Introduction No, I don’t seeanyproblemwiththe data! Source: www.wolaver.org
Technology Evaluation Centers 1. Introduction (What is Data Quality?) The totality of features and characteristics of data that bears on their ability to satisfy a given purpose.
Technology Evaluation Centers 1. Introduction (What is Data Quality?) Data Quality Management: Entails the establishment and deployment of roles, responsibilities, and procedures concerning the acquisition, maintenance, dissemination, and disposition of data.
Technology Evaluation Centers 1. Introduction (Data Quality features) - Accuracy - Reliability - Completness - Appropriatness - Timeliness - Credibility Ideal features of Data
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) At what level of Data Quality is your organization? Incidental  Data Quality Proactive prevention Optimization Limited data analysis Addressing root causes Data profiling, Data cleansing, ETL Continuous DQ process  improvements Repairing source data and programs Enterprise-wide DQ methods & techniques
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) At what level of Data Quality is your organization? Incidental  Data Quality Proactive prevention Optimization Limited data analysis Addressing root causes More - Management complexity - Cross Functionality - Security concerns
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance)  Data Management Data Quality Data Quality Business Process Data Governance Policy People Technology Governance comes into play when individual managers find that they cannot – or should not – make independent decisions.The Data Gov. Institute
Technology Evaluation Centers 1. Introduction (What is Data Governance?) - “Data Governance is a system of decision rights and accountabilities for information-related processes.” (The Data GovernanceInstitute) ,[object Object],[object Object]
 Data cleansing
 Extract, transform and load data (ETL)
 Data warehousing
 Database designData governance can be applied to these disciplines, but is not included in any of them.
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data Rules Business Rules Policy DQ BPM DG
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data Rules Business Rules Policy DQ BPM DG A data stewardshipstrategy can help data to become a corporateasset
Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data stewardship  = Function Role: ,[object Object]
Resolveconflictsand facilitate dataKey Issues: ,[object Object]
Quality
Sharing,[object Object]
Technology Evaluation Centers 2. Some Facts (Initiatives priorities) Source: Programs or Initiatives, Initiate Data Governance Survey Report
Technology Evaluation Centers 2. Some Facts (Company Size) Source: Company Size, Initiate Data Governance Survey Report
Technology Evaluation Centers 2. Some Facts (Industry) Source: Industry, Initiate Data Governance Survey Report
Technology Evaluation Centers 3. DG- Benefits ,[object Object]
 Reduces corporate data redundancy
 Encourages control over valuable data and information assets
 Assists in making more effective use of data assets.
 Transforms and manages data more effectively and securely
 Improves business decisions by the provision of accurate data
 Increases end user trust in data,[object Object]
 Define all necessary data requirements
 Define cross-functional initiatives

Más contenido relacionado

La actualidad más candente

COVID-19 Rapid Response Crisis Checklist
COVID-19 Rapid Response Crisis ChecklistCOVID-19 Rapid Response Crisis Checklist
COVID-19 Rapid Response Crisis ChecklistBoston Consulting Group
 
Introduction to Data Analytics
Introduction to Data AnalyticsIntroduction to Data Analytics
Introduction to Data AnalyticsUtkarsh Sharma
 
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?Boston Consulting Group
 
AI Strategy & Advance Analytics
AI Strategy & Advance AnalyticsAI Strategy & Advance Analytics
AI Strategy & Advance Analyticssrosen18
 
2C2P-IDC-InfoBrief_AP241383IB.pdf
2C2P-IDC-InfoBrief_AP241383IB.pdf2C2P-IDC-InfoBrief_AP241383IB.pdf
2C2P-IDC-InfoBrief_AP241383IB.pdfRizkyAdiPoetra
 
Tim Daines, QuantumBlack
Tim Daines, QuantumBlackTim Daines, QuantumBlack
Tim Daines, QuantumBlackMad*Pow
 
Monetizing car-data
Monetizing car-dataMonetizing car-data
Monetizing car-dataMerve Kara
 
Ever–ready for every opportunity
Ever–ready for every opportunityEver–ready for every opportunity
Ever–ready for every opportunityaccenture
 
HP Megatrends: 2019 Update
HP Megatrends: 2019 UpdateHP Megatrends: 2019 Update
HP Megatrends: 2019 UpdateAndrew Bolwell
 
McKinsey Survey: Australian consumer sentiment during the coronavirus crisis
McKinsey Survey: Australian consumer sentiment during the coronavirus crisisMcKinsey Survey: Australian consumer sentiment during the coronavirus crisis
McKinsey Survey: Australian consumer sentiment during the coronavirus crisisMcKinsey on Marketing & Sales
 
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016HIMSS Analytics Adoption Model for Analytics Maturity - March 2016
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016James E. Gaston, FHIMSS
 
Presentasi 1 - Business Intelligence
Presentasi 1 - Business IntelligencePresentasi 1 - Business Intelligence
Presentasi 1 - Business IntelligenceDEDE IRYAWAN
 
Vitesse - InsurTech Innovation Award 2022
Vitesse - InsurTech Innovation Award 2022Vitesse - InsurTech Innovation Award 2022
Vitesse - InsurTech Innovation Award 2022The Digital Insurer
 
Accenture and SAP Business Solutions Group
Accenture and SAP Business Solutions GroupAccenture and SAP Business Solutions Group
Accenture and SAP Business Solutions GroupAccenture Technology
 
Industry X.0 - Realizing Digital Value in Industrial Sectors
Industry X.0 - Realizing Digital Value in Industrial SectorsIndustry X.0 - Realizing Digital Value in Industrial Sectors
Industry X.0 - Realizing Digital Value in Industrial Sectorsaccenture
 
Building a Next Generation Clinical and Scientific Data Management Solution
Building a Next Generation Clinical and Scientific Data Management SolutionBuilding a Next Generation Clinical and Scientific Data Management Solution
Building a Next Generation Clinical and Scientific Data Management SolutionSaama
 
Insurance BPO Services: Outsourcing For Insurance Industry
Insurance BPO Services: Outsourcing For Insurance IndustryInsurance BPO Services: Outsourcing For Insurance Industry
Insurance BPO Services: Outsourcing For Insurance IndustryCogneesol
 
Win The Fight: Crush and Contain for Safer Reopening
Win The Fight: Crush and Contain for Safer Reopening Win The Fight: Crush and Contain for Safer Reopening
Win The Fight: Crush and Contain for Safer Reopening Boston Consulting Group
 
AI and Blockchain 2017
AI and Blockchain 2017AI and Blockchain 2017
AI and Blockchain 2017Peter Morgan
 

La actualidad más candente (20)

COVID-19 Rapid Response Crisis Checklist
COVID-19 Rapid Response Crisis ChecklistCOVID-19 Rapid Response Crisis Checklist
COVID-19 Rapid Response Crisis Checklist
 
Introduction to Data Analytics
Introduction to Data AnalyticsIntroduction to Data Analytics
Introduction to Data Analytics
 
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?
What Does the Recovery of Demand for Urban Mobility Look Like Post-COVID-19?
 
Big data ppt
Big data pptBig data ppt
Big data ppt
 
AI Strategy & Advance Analytics
AI Strategy & Advance AnalyticsAI Strategy & Advance Analytics
AI Strategy & Advance Analytics
 
2C2P-IDC-InfoBrief_AP241383IB.pdf
2C2P-IDC-InfoBrief_AP241383IB.pdf2C2P-IDC-InfoBrief_AP241383IB.pdf
2C2P-IDC-InfoBrief_AP241383IB.pdf
 
Tim Daines, QuantumBlack
Tim Daines, QuantumBlackTim Daines, QuantumBlack
Tim Daines, QuantumBlack
 
Monetizing car-data
Monetizing car-dataMonetizing car-data
Monetizing car-data
 
Ever–ready for every opportunity
Ever–ready for every opportunityEver–ready for every opportunity
Ever–ready for every opportunity
 
HP Megatrends: 2019 Update
HP Megatrends: 2019 UpdateHP Megatrends: 2019 Update
HP Megatrends: 2019 Update
 
McKinsey Survey: Australian consumer sentiment during the coronavirus crisis
McKinsey Survey: Australian consumer sentiment during the coronavirus crisisMcKinsey Survey: Australian consumer sentiment during the coronavirus crisis
McKinsey Survey: Australian consumer sentiment during the coronavirus crisis
 
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016HIMSS Analytics Adoption Model for Analytics Maturity - March 2016
HIMSS Analytics Adoption Model for Analytics Maturity - March 2016
 
Presentasi 1 - Business Intelligence
Presentasi 1 - Business IntelligencePresentasi 1 - Business Intelligence
Presentasi 1 - Business Intelligence
 
Vitesse - InsurTech Innovation Award 2022
Vitesse - InsurTech Innovation Award 2022Vitesse - InsurTech Innovation Award 2022
Vitesse - InsurTech Innovation Award 2022
 
Accenture and SAP Business Solutions Group
Accenture and SAP Business Solutions GroupAccenture and SAP Business Solutions Group
Accenture and SAP Business Solutions Group
 
Industry X.0 - Realizing Digital Value in Industrial Sectors
Industry X.0 - Realizing Digital Value in Industrial SectorsIndustry X.0 - Realizing Digital Value in Industrial Sectors
Industry X.0 - Realizing Digital Value in Industrial Sectors
 
Building a Next Generation Clinical and Scientific Data Management Solution
Building a Next Generation Clinical and Scientific Data Management SolutionBuilding a Next Generation Clinical and Scientific Data Management Solution
Building a Next Generation Clinical and Scientific Data Management Solution
 
Insurance BPO Services: Outsourcing For Insurance Industry
Insurance BPO Services: Outsourcing For Insurance IndustryInsurance BPO Services: Outsourcing For Insurance Industry
Insurance BPO Services: Outsourcing For Insurance Industry
 
Win The Fight: Crush and Contain for Safer Reopening
Win The Fight: Crush and Contain for Safer Reopening Win The Fight: Crush and Contain for Safer Reopening
Win The Fight: Crush and Contain for Safer Reopening
 
AI and Blockchain 2017
AI and Blockchain 2017AI and Blockchain 2017
AI and Blockchain 2017
 

Similar a From DQ to DG

Is Your Agency Data Challenged?
Is Your Agency Data Challenged?Is Your Agency Data Challenged?
Is Your Agency Data Challenged?DLT Solutions
 
The Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingThe Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingCCG
 
Most Common Data Governance Challenges in the Digital Economy
Most Common Data Governance Challenges in the Digital EconomyMost Common Data Governance Challenges in the Digital Economy
Most Common Data Governance Challenges in the Digital EconomyRobyn Bollhorst
 
DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts Angela Boyd
 
Best Practices For GCC Analytics
Best Practices For GCC AnalyticsBest Practices For GCC Analytics
Best Practices For GCC AnalyticsPolestar Solutions
 
Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG CCG
 
Data Governance Workshop
Data Governance WorkshopData Governance Workshop
Data Governance WorkshopCCG
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data GovernanceJohn Bao Vuu
 
Data Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGData Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGCCG
 
Targeted Analytics: Using Core Measures to Jump-Start Enterprise Analytics
Targeted Analytics: Using Core Measures to Jump-Start Enterprise AnalyticsTargeted Analytics: Using Core Measures to Jump-Start Enterprise Analytics
Targeted Analytics: Using Core Measures to Jump-Start Enterprise AnalyticsPerficient, Inc.
 
Stop the madness - Never doubt the quality of BI again using Data Governance
Stop the madness - Never doubt the quality of BI again using Data GovernanceStop the madness - Never doubt the quality of BI again using Data Governance
Stop the madness - Never doubt the quality of BI again using Data GovernanceMary Levins, PMP
 
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...Alan D. Duncan
 
Data Governance: Description, Design, Delivery
Data Governance: Description, Design, DeliveryData Governance: Description, Design, Delivery
Data Governance: Description, Design, DeliveryInnoTech
 
Data-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality EngineeringData-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality EngineeringDATAVERSITY
 
Data Governance_Notes.pptx
Data Governance_Notes.pptxData Governance_Notes.pptx
Data Governance_Notes.pptxVivekDubley
 
Workable Enteprise Data Governance
Workable Enteprise Data GovernanceWorkable Enteprise Data Governance
Workable Enteprise Data GovernanceBhavendra Chavan
 
Sheila Jeffrey - Well Behaved Data - It's a Matter of Principles
Sheila Jeffrey - Well Behaved Data - It's a Matter of PrinciplesSheila Jeffrey - Well Behaved Data - It's a Matter of Principles
Sheila Jeffrey - Well Behaved Data - It's a Matter of Principlesiasaglobal
 

Similar a From DQ to DG (20)

Is Your Agency Data Challenged?
Is Your Agency Data Challenged?Is Your Agency Data Challenged?
Is Your Agency Data Challenged?
 
The Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is FailingThe Key Reason Why Your DG Program is Failing
The Key Reason Why Your DG Program is Failing
 
Most Common Data Governance Challenges in the Digital Economy
Most Common Data Governance Challenges in the Digital EconomyMost Common Data Governance Challenges in the Digital Economy
Most Common Data Governance Challenges in the Digital Economy
 
DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts
 
Best Practices For GCC Analytics
Best Practices For GCC AnalyticsBest Practices For GCC Analytics
Best Practices For GCC Analytics
 
Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG
 
Infographic: Data Governance Best Practices
Infographic: Data Governance Best Practices Infographic: Data Governance Best Practices
Infographic: Data Governance Best Practices
 
Data Governance Workshop
Data Governance WorkshopData Governance Workshop
Data Governance Workshop
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data Governance
 
Data Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCGData Governance and MDM | Profisse, Microsoft, and CCG
Data Governance and MDM | Profisse, Microsoft, and CCG
 
Targeted Analytics: Using Core Measures to Jump-Start Enterprise Analytics
Targeted Analytics: Using Core Measures to Jump-Start Enterprise AnalyticsTargeted Analytics: Using Core Measures to Jump-Start Enterprise Analytics
Targeted Analytics: Using Core Measures to Jump-Start Enterprise Analytics
 
Stop the madness - Never doubt the quality of BI again using Data Governance
Stop the madness - Never doubt the quality of BI again using Data GovernanceStop the madness - Never doubt the quality of BI again using Data Governance
Stop the madness - Never doubt the quality of BI again using Data Governance
 
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
 
Data Governance: Description, Design, Delivery
Data Governance: Description, Design, DeliveryData Governance: Description, Design, Delivery
Data Governance: Description, Design, Delivery
 
Data-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality EngineeringData-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality Engineering
 
2014 dqe handouts
2014 dqe handouts2014 dqe handouts
2014 dqe handouts
 
Data Governance_Notes.pptx
Data Governance_Notes.pptxData Governance_Notes.pptx
Data Governance_Notes.pptx
 
Workable Enteprise Data Governance
Workable Enteprise Data GovernanceWorkable Enteprise Data Governance
Workable Enteprise Data Governance
 
BI_StrategyDM2
BI_StrategyDM2BI_StrategyDM2
BI_StrategyDM2
 
Sheila Jeffrey - Well Behaved Data - It's a Matter of Principles
Sheila Jeffrey - Well Behaved Data - It's a Matter of PrinciplesSheila Jeffrey - Well Behaved Data - It's a Matter of Principles
Sheila Jeffrey - Well Behaved Data - It's a Matter of Principles
 

From DQ to DG

  • 1. Technology Evaluation Centers From Data Quality to Data Governance Jorge García, Research Analyst ComputerWorld Technology Insights, Toronto , 10/2011. www.technologyevaluation.com
  • 2. Technology Evaluation Centers 1. Introduction No, I don’t seeanyproblemwiththe data! Source: www.wolaver.org
  • 3. Technology Evaluation Centers 1. Introduction (What is Data Quality?) The totality of features and characteristics of data that bears on their ability to satisfy a given purpose.
  • 4. Technology Evaluation Centers 1. Introduction (What is Data Quality?) Data Quality Management: Entails the establishment and deployment of roles, responsibilities, and procedures concerning the acquisition, maintenance, dissemination, and disposition of data.
  • 5. Technology Evaluation Centers 1. Introduction (Data Quality features) - Accuracy - Reliability - Completness - Appropriatness - Timeliness - Credibility Ideal features of Data
  • 6. Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) At what level of Data Quality is your organization? Incidental Data Quality Proactive prevention Optimization Limited data analysis Addressing root causes Data profiling, Data cleansing, ETL Continuous DQ process improvements Repairing source data and programs Enterprise-wide DQ methods & techniques
  • 7. Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) At what level of Data Quality is your organization? Incidental Data Quality Proactive prevention Optimization Limited data analysis Addressing root causes More - Management complexity - Cross Functionality - Security concerns
  • 8. Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data Management Data Quality Data Quality Business Process Data Governance Policy People Technology Governance comes into play when individual managers find that they cannot – or should not – make independent decisions.The Data Gov. Institute
  • 9.
  • 11. Extract, transform and load data (ETL)
  • 13. Database designData governance can be applied to these disciplines, but is not included in any of them.
  • 14. Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data Rules Business Rules Policy DQ BPM DG
  • 15. Technology Evaluation Centers 1. Introduction (From Data Quality to Data Governance) Data Rules Business Rules Policy DQ BPM DG A data stewardshipstrategy can help data to become a corporateasset
  • 16.
  • 17.
  • 19.
  • 20. Technology Evaluation Centers 2. Some Facts (Initiatives priorities) Source: Programs or Initiatives, Initiate Data Governance Survey Report
  • 21. Technology Evaluation Centers 2. Some Facts (Company Size) Source: Company Size, Initiate Data Governance Survey Report
  • 22. Technology Evaluation Centers 2. Some Facts (Industry) Source: Industry, Initiate Data Governance Survey Report
  • 23.
  • 24. Reduces corporate data redundancy
  • 25. Encourages control over valuable data and information assets
  • 26. Assists in making more effective use of data assets.
  • 27. Transforms and manages data more effectively and securely
  • 28. Improves business decisions by the provision of accurate data
  • 29.
  • 30. Define all necessary data requirements
  • 32.
  • 33. Technology Evaluation Centers 4. DG - Challenges Source Board or Council, Initiate Data Governance Survey Report
  • 34.
  • 35. Encouraging commitment to keep the program alive and moving
  • 37.
  • 38. Lack of senior-level sponsorship
  • 39. Underestimating the amount of work involved
  • 40. Long on structure and policies, short on action
  • 41. Lack of business commitment
  • 42. Lack of understanding that business definitions vary
  • 43. Trying to move too fast from no-DG to enterprise-wide- DGSearchDataManagement.com
  • 44. Technology Evaluation Centers 5. DG- Tips (Call to Action) Place DG as a priority initiative. 2. Consider DG as part of the larger scope of knowledge asset management. 3. Understand DG must be properly planned and chartered. 4. Leverage a maturity model for planning manageable phases in DG. 5. Engage the business side of government in DG.
  • 45. Technology Evaluation Centers 5. DG- Tips (Starting point) Begin now to develop expertise and governance for managing data 2. Begin to build awareness through communications 3. Understand the scope of data governance 4. Ensure that DG has appropriate representation from business stakeholders Implement DG within existing enterprise and data architecture practice. Start with a limited scope initiative.
  • 46. Technology Evaluation Centers 5. DG- Tips (Drivers) Source: Data Governance Part III: Frameworks – Structure for Organizing Complexity, NASCIO
  • 47.
  • 49.
  • 50. Adhering to requirements and standards
  • 51.
  • 54.
  • 55. DG is a program, a permanent work in progress
  • 56. DG policies are made by humans, for which has an imperfect element
  • 57.

Notas del editor

  1. “Data Governance is a system of decision rights and accountabilities for information-related processes, executed according to agreed-upon models which describe who can take what actions with what information, and when, under what circumstances, using what methods.” (The Data GovernanceInstitute)“Data governance is a set of processes that ensures that important data assets are formally managed throughout the enterprise. Data governance ensures that data can be trusted and that people can be made accountable for any adverse event that happens because of low data quality..” (Wikipedia)
  2. Shortening the compilation of data for business decision-making purposes Corporate reduction in data redundancy Gaining control over valuable data and information assets Assisting in making more effective use of data assets. Transforming and managing data as a valuable organizational asset Improving business decisions by guarantying the provision of accurate data from all original sources Increasing end user trust in data stored within all organization's data repositories.
  3. A DG initiativemust:Define, monitor and manage policies to control how data assets are used Define all necessary data requirements for decisions at all levels: operational, tactical and estrategical. Define cross-functional initiatives in order to promote awareness of how data is used within all areas of the company Define and managetheproperdocumentation for managing data acrosstheenterprise and promoteitsadoptiontoimprovedailyoperations in allareas
  4. Call to ActionPlace data governance as a priority initiative.2. Understand data governance as part of the larger scope of knowledge asset management. 3. Understand data governance must be properly planned and chartered. Start with a limited scope initiative.4. Leverage a maturity model for planning manageable phases in data governance.5. Engage the business side of government in data governance.
  5. Begin now to develop expertise and governance for managing data, information and knowledge assets.2. Begin to build awareness through communications and marketing initiatives.3. Understand the scope of data governance.4. Ensure that data governance has appropriate representation from business stakeholders, i.e., the real owners of the information. 5. Implement data governance within existing enterprise and data architecture practice.
  6. Data Governance role is to enhance data quality management strategies to act as part of the specific business in order to serve the needs of all data consumers.Data governance is a program, a permanent work in progress that needs to be improved progressively. Data governance policies are made by humans, for which has an imperfect element , which has to be reviewed constantly in search for improvent.Data Governance initiatives will need to have 100% support from all levels of leadership (strategic , tactic and operational) in order to improve chances of success.