尊敬的 微信汇率:1円 ≈ 0.046374 元 支付宝汇率:1円 ≈ 0.046466元 [退出登录]
SlideShare a Scribd company logo
Introduction to Data Governance
John Bao Vuu
Director of Data Management
www.enterpriseim.com
www.linkedin.com/in/johnvuu
Director of DM
Consultant | Advisor
John Vuu SPECIALTIES
✓ EIM Strategy & Solutions
✓ Data Governance / DQ
✓ Business Analytics
✓ Data Warehouse
INDUSTRIES
✓ Banking
✓ Insurance
✓ Ecommerce
✓ Healthcare
• 18 years experience in Data Management
• Founder of 2 technology companies
• Former Accenture BI Consultant
• DM Director at EIM Partners
• BA degree in Finance – Western WWU, Washington, USA
• BS degree Information Systems – WWU, Washington, USA
About the Speaker
• IM Foundational Disciplines
• Cross-functional Workflow Exchange
• Key Objectives of the Data Governance Framework
• Components of a Data Governance Framework
• Key Roles in Data Governance
• Data Governance Committee (DGC)
• 4 Data Governance Policy Areas
• 3 Challenges to Implementing Data Governance
• Data Governance Success Factors
Presentation Outline
IM Foundational Disciplines
DATA WAREHOUSE
✓Data integration
✓Enterprise data model
✓Common data dictionary
✓Data standardization
✓Data mapping / ETL
✓Applications support
BUSINESS INTELLIGENCE
✓Web portal BI
✓Decentralized reporting
✓Authorization & security
✓Applications development
✓Data marts
✓Advanced Data Analytics*
DATA GOVERNANCE
✓Policies & procedures
✓Stewardship / Ownership
✓Metadata management
✓Business glossary
✓DQ management
✓Data remediation / cleansing
✓MDM
Bank’s fragmented Information
Management architecture and
poor data quality can present
operational risks, strategic
uncertainty and the potential for
loss of revenue. Inconsistent and
improper handling of data across
departments can also contribute
to lower staff productivity,
workflow inefficiency and
additional cost of maintenance
and support for lack of robust
enterprise information and data
governance strategy.
Example: Cross-functional Workflow Exchange
Department A
provides
reports & data
to Department
B
Department B
checks
Department A
work; validates
accuracy of
data, makes or
requests
corrections
Department B
takes action
on approvals,
scoring, rating,
campaigns,
cust. offerings,
commissions,
etc.
Department B
deals with the
consequences
of any errors in
reporting and
from poor
data quality
ACTION
Poor data quality cost as much as 25%
of an organization’s revenue each year.
TDWI – The Data Warehouse Institute
Typical workflow exchange between departments:
✓ Reports become more accurate
✓ Greater confidence in decision-making – lower risks
✓ Increase productivity and efficiency across business functions
✓ More effective campaigns programs – cross & up selling
✓ Reduce operational costs – increase in revenue
Key Objectives of the Data Governance Framework
Data Governance framework baseline components:
1. Establish accountability by defining key roles and responsibilities within the DG framework
2. Define DG procedures and the methodology used to execute them
3. Define guidelines for data policies, data quality, data provisioning, metadata and reference data
4. Provide guidance for data management practices to maximize business value such as redundancy and
improving data consistency
5. Provide guidance for creating and maintaining standards and tools for managing corporate data
Components of a Data Governance Framework
Key Roles in Data Governance
Data Owner: person that has direct operational / business responsibility within a business unit for the
management of one or more types of data
Data Steward: person that assigns and delegates appropriate responsibility for the management of data to
respective individuals
Data Custodian: person that is responsible for the operation and management of systems and servers which
collect, manage, and provide data access
Data Governance Committee (DGC)
1. Oversees the execution of vision and objectives of
the Data Governance program
2. DGC is responsible for taking data architecture
decisions, data remediation, setting up and
enforcing data standards / policies and driving data
quality
3. DGC acts as the point of escalation and decision
making for Data Governance related policies and
procedures
4. DGC helps to define KDE (key data elements),
standards and metrics, conduct root cause analysis
of issues and propose solutions
Executives
Cross-functional
Team Members (Owners)
Cross-functional
Stewards / Custodians
Business Consumers
DG Council
DG Steering Committee
Data Stewards
End Users
Data Governance Organization Structure
4 Data Governance Policy Areas
DG policies are principles or rules that guide data-related
decisions.
Four primary DG policy areas:
1. Data Quality: establish how to define, measure and improve DQ
2. Data Provisioning: providing guidelines and best practices for
provisioning data in efficient and effective ways
3. Metadata: organizing and classifying data for reference and use
in the right business context
4. Reference Data: management of define values, i.e. KDE (key
data elements), data dictionary, glossary, business rules,
reference code values, etc.
Data
Quality
Completeness
Consistency
Conformity
Accuracy Integrity
Timeliness
6 Data Quality Dimensions
3 Challenges to Implementing Data Governance
Organization Fit – the strategy and approach are not clearly defined and do not take into
account resource involvement and their level of understanding
Ignored Efforts – lack of stakeholder buy-in and cross-functional collaboration leading to
independent workarounds by departments looking for quick solutions to their problems
Lack of Perceived Value – the value of data governance is often not as explicit as in other
projects. Internal bureaucracies and seemingly intrusive efforts of the DG program can
impede progress and muddy value
Data Governance Success Factors
Data governance is a discipline that evolves over time as part of the organization’s data-driven culture
Requirements for achieving an effective Data Governance program:
1. Enforced policies and standards
2. Development and execution of processes and procedures
3. Involvement of senior leadership
4. A clearly define DG framework structure (governing body)
Business Value
The goal of Data Governance is to provide appropriate
guidance for the organization to enable business effectiveness.
People
ProcessTechnology
BUSINESS : www.enterpriseim.com
LINKEDIN : www.linkedin.com/in/johnvuu
BLOG : www.johnvuu.com
MOBILE: +84 090.264.0230
Thank You!

More Related Content

What's hot

Best Practices in Metadata Management
Best Practices in Metadata ManagementBest Practices in Metadata Management
Best Practices in Metadata Management
DATAVERSITY
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
Boris Otto
 
Data Quality & Data Governance
Data Quality & Data GovernanceData Quality & Data Governance
Data Quality & Data Governance
Tuba Yaman Him
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
DATAVERSITY
 
Data Modeling is Data Governance
Data Modeling is Data GovernanceData Modeling is Data Governance
Data Modeling is Data Governance
DATAVERSITY
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?
Precisely
 
Implementing Effective Data Governance
Implementing Effective Data GovernanceImplementing Effective Data Governance
Implementing Effective Data Governance
Christopher Bradley
 
DAS Slides: Data Governance - Combining Data Management with Organizational ...
DAS Slides: Data Governance -  Combining Data Management with Organizational ...DAS Slides: Data Governance -  Combining Data Management with Organizational ...
DAS Slides: Data Governance - Combining Data Management with Organizational ...
DATAVERSITY
 
Reference master data management
Reference master data managementReference master data management
Reference master data management
Dr. Hamdan Al-Sabri
 
Improving Data Literacy Around Data Architecture
Improving Data Literacy Around Data ArchitectureImproving Data Literacy Around Data Architecture
Improving Data Literacy Around Data Architecture
DATAVERSITY
 
Master Data Management's Place in the Data Governance Landscape
Master Data Management's Place in the Data Governance Landscape Master Data Management's Place in the Data Governance Landscape
Master Data Management's Place in the Data Governance Landscape
CCG
 
Data Management vs Data Strategy
Data Management vs Data StrategyData Management vs Data Strategy
Data Management vs Data Strategy
DATAVERSITY
 
Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)
DATAVERSITY
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
DATAVERSITY
 
Selecting Data Management Tools - A practical approach
Selecting Data Management Tools - A practical approachSelecting Data Management Tools - A practical approach
Selecting Data Management Tools - A practical approach
Christopher Bradley
 
The Role of Data Governance in a Data Strategy
The Role of Data Governance in a Data StrategyThe Role of Data Governance in a Data Strategy
The Role of Data Governance in a Data Strategy
DATAVERSITY
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
DATAVERSITY
 
Master Data Management – Aligning Data, Process, and Governance
Master Data Management – Aligning Data, Process, and GovernanceMaster Data Management – Aligning Data, Process, and Governance
Master Data Management – Aligning Data, Process, and Governance
DATAVERSITY
 
Modern Metadata Strategies
Modern Metadata StrategiesModern Metadata Strategies
Modern Metadata Strategies
DATAVERSITY
 
Data Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital TransformationData Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital Transformation
DATAVERSITY
 

What's hot (20)

Best Practices in Metadata Management
Best Practices in Metadata ManagementBest Practices in Metadata Management
Best Practices in Metadata Management
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Data Quality & Data Governance
Data Quality & Data GovernanceData Quality & Data Governance
Data Quality & Data Governance
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
 
Data Modeling is Data Governance
Data Modeling is Data GovernanceData Modeling is Data Governance
Data Modeling is Data Governance
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?
 
Implementing Effective Data Governance
Implementing Effective Data GovernanceImplementing Effective Data Governance
Implementing Effective Data Governance
 
DAS Slides: Data Governance - Combining Data Management with Organizational ...
DAS Slides: Data Governance -  Combining Data Management with Organizational ...DAS Slides: Data Governance -  Combining Data Management with Organizational ...
DAS Slides: Data Governance - Combining Data Management with Organizational ...
 
Reference master data management
Reference master data managementReference master data management
Reference master data management
 
Improving Data Literacy Around Data Architecture
Improving Data Literacy Around Data ArchitectureImproving Data Literacy Around Data Architecture
Improving Data Literacy Around Data Architecture
 
Master Data Management's Place in the Data Governance Landscape
Master Data Management's Place in the Data Governance Landscape Master Data Management's Place in the Data Governance Landscape
Master Data Management's Place in the Data Governance Landscape
 
Data Management vs Data Strategy
Data Management vs Data StrategyData Management vs Data Strategy
Data Management vs Data Strategy
 
Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)Data Governance Takes a Village (So Why is Everyone Hiding?)
Data Governance Takes a Village (So Why is Everyone Hiding?)
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
 
Selecting Data Management Tools - A practical approach
Selecting Data Management Tools - A practical approachSelecting Data Management Tools - A practical approach
Selecting Data Management Tools - A practical approach
 
The Role of Data Governance in a Data Strategy
The Role of Data Governance in a Data StrategyThe Role of Data Governance in a Data Strategy
The Role of Data Governance in a Data Strategy
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
 
Master Data Management – Aligning Data, Process, and Governance
Master Data Management – Aligning Data, Process, and GovernanceMaster Data Management – Aligning Data, Process, and Governance
Master Data Management – Aligning Data, Process, and Governance
 
Modern Metadata Strategies
Modern Metadata StrategiesModern Metadata Strategies
Modern Metadata Strategies
 
Data Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital TransformationData Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital Transformation
 

Similar to Introduction to Data Governance

Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework Overview
John Bao Vuu
 
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 Failing
CCG
 
Data Governance Maturity Levels
Data Governance Maturity LevelsData Governance Maturity Levels
Data Governance Maturity Levels
Sowmya Kandregula
 
Securing big data (july 2012)
Securing big data (july 2012)Securing big data (july 2012)
Securing big data (july 2012)
Marc Vael
 
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
Mary Levins, PMP
 
TOP_407070357-Data-Governance-Playbook.pptx
TOP_407070357-Data-Governance-Playbook.pptxTOP_407070357-Data-Governance-Playbook.pptx
TOP_407070357-Data-Governance-Playbook.pptx
SabrinaLameiras1
 
Enterprise Data Governance for Financial Institutions
Enterprise Data Governance for Financial InstitutionsEnterprise Data Governance for Financial Institutions
Enterprise Data Governance for Financial Institutions
Sheldon McCarthy
 
Data Governance & Data Architecture - Alignment and Synergies
Data Governance & Data Architecture - Alignment and SynergiesData Governance & Data Architecture - Alignment and Synergies
Data Governance & Data Architecture - Alignment and Synergies
DATAVERSITY
 
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
 
Business impact without data governance
Business impact without data governanceBusiness impact without data governance
Business impact without data governance
John Bao Vuu
 
Data Governance for Enterprises
Data Governance for EnterprisesData Governance for Enterprises
Data Governance for Enterprises
Chaitanya Avasarala
 
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
 
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
CCG
 
2014 dqe handouts
2014 dqe handouts2014 dqe handouts
2014 dqe handouts
Data Blueprint
 
Data-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality EngineeringData-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality Engineering
DATAVERSITY
 
CDMP SLIDE TRAINER .pptx
CDMP SLIDE TRAINER .pptxCDMP SLIDE TRAINER .pptx
CDMP SLIDE TRAINER .pptx
ssuser65981b
 
Data Governance: From speed dating to lifelong partnership
Data Governance: From speed dating to lifelong partnershipData Governance: From speed dating to lifelong partnership
Data Governance: From speed dating to lifelong partnership
Precisely
 
Corporate Overview - Information Management Consultancy
Corporate Overview - Information Management ConsultancyCorporate Overview - Information Management Consultancy
Corporate Overview - Information Management Consultancy
Michelle Pellettier
 
Workable Enteprise Data Governance
Workable Enteprise Data GovernanceWorkable Enteprise Data Governance
Workable Enteprise Data Governance
Bhavendra Chavan
 

Similar to Introduction to Data Governance (20)

Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework Overview
 
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
 
Data Governance Maturity Levels
Data Governance Maturity LevelsData Governance Maturity Levels
Data Governance Maturity Levels
 
Securing big data (july 2012)
Securing big data (july 2012)Securing big data (july 2012)
Securing big data (july 2012)
 
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
 
TOP_407070357-Data-Governance-Playbook.pptx
TOP_407070357-Data-Governance-Playbook.pptxTOP_407070357-Data-Governance-Playbook.pptx
TOP_407070357-Data-Governance-Playbook.pptx
 
Enterprise Data Governance for Financial Institutions
Enterprise Data Governance for Financial InstitutionsEnterprise Data Governance for Financial Institutions
Enterprise Data Governance for Financial Institutions
 
Data Governance & Data Architecture - Alignment and Synergies
Data Governance & Data Architecture - Alignment and SynergiesData Governance & Data Architecture - Alignment and Synergies
Data Governance & Data Architecture - Alignment and Synergies
 
Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG Data Governance with Profisee, Microsoft & CCG
Data Governance with Profisee, Microsoft & CCG
 
Business impact without data governance
Business impact without data governanceBusiness impact without data governance
Business impact without data governance
 
Data Governance for Enterprises
Data Governance for EnterprisesData Governance for Enterprises
Data Governance for Enterprises
 
DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts
 
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
 
2014 dqe handouts
2014 dqe handouts2014 dqe handouts
2014 dqe handouts
 
Data-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality EngineeringData-Ed Webinar: Data Quality Engineering
Data-Ed Webinar: Data Quality Engineering
 
CDMP SLIDE TRAINER .pptx
CDMP SLIDE TRAINER .pptxCDMP SLIDE TRAINER .pptx
CDMP SLIDE TRAINER .pptx
 
Data Governance: From speed dating to lifelong partnership
Data Governance: From speed dating to lifelong partnershipData Governance: From speed dating to lifelong partnership
Data Governance: From speed dating to lifelong partnership
 
Corporate Overview - Information Management Consultancy
Corporate Overview - Information Management ConsultancyCorporate Overview - Information Management Consultancy
Corporate Overview - Information Management Consultancy
 
Workable Enteprise Data Governance
Workable Enteprise Data GovernanceWorkable Enteprise Data Governance
Workable Enteprise Data Governance
 

Recently uploaded

Call Girls Hyderabad (india) ☎️ +91-7426014248 Hyderabad Call Girl
Call Girls Hyderabad  (india) ☎️ +91-7426014248 Hyderabad  Call GirlCall Girls Hyderabad  (india) ☎️ +91-7426014248 Hyderabad  Call Girl
Call Girls Hyderabad (india) ☎️ +91-7426014248 Hyderabad Call Girl
sapna sharmap11
 
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
osoyvvf
 
How To Control IO Usage using Resource Manager
How To Control IO Usage using Resource ManagerHow To Control IO Usage using Resource Manager
How To Control IO Usage using Resource Manager
Alireza Kamrani
 
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
9gr6pty
 
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
Timothy Spann
 
一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理
zsafxbf
 
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
nitachopra
 
06-18-2024-Princeton Meetup-Introduction to Milvus
06-18-2024-Princeton Meetup-Introduction to Milvus06-18-2024-Princeton Meetup-Introduction to Milvus
06-18-2024-Princeton Meetup-Introduction to Milvus
Timothy Spann
 
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Marlon Dumas
 
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
aguty
 
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Do People Really Know Their Fertility Intentions?  Correspondence between Sel...Do People Really Know Their Fertility Intentions?  Correspondence between Sel...
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Xiao Xu
 
Data Scientist Machine Learning Profiles .pdf
Data Scientist Machine Learning  Profiles .pdfData Scientist Machine Learning  Profiles .pdf
Data Scientist Machine Learning Profiles .pdf
Vineet
 
Drownings spike from May to August in children
Drownings spike from May to August in childrenDrownings spike from May to August in children
Drownings spike from May to August in children
Bisnar Chase Personal Injury Attorneys
 
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
PsychoTech Services
 
Sample Devops SRE Product Companies .pdf
Sample Devops SRE  Product Companies .pdfSample Devops SRE  Product Companies .pdf
Sample Devops SRE Product Companies .pdf
Vineet
 
Telemetry Solution for Gaming (AWS Summit'24)
Telemetry Solution for Gaming (AWS Summit'24)Telemetry Solution for Gaming (AWS Summit'24)
Telemetry Solution for Gaming (AWS Summit'24)
GeorgiiSteshenko
 
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
Rebecca Bilbro
 
Overview IFM June 2024 Consumer Confidence INDEX Report.pdf
Overview IFM June 2024 Consumer Confidence INDEX Report.pdfOverview IFM June 2024 Consumer Confidence INDEX Report.pdf
Overview IFM June 2024 Consumer Confidence INDEX Report.pdf
nhutnguyen355078
 
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdfreading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
perranet1
 
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
oaxefes
 

Recently uploaded (20)

Call Girls Hyderabad (india) ☎️ +91-7426014248 Hyderabad Call Girl
Call Girls Hyderabad  (india) ☎️ +91-7426014248 Hyderabad  Call GirlCall Girls Hyderabad  (india) ☎️ +91-7426014248 Hyderabad  Call Girl
Call Girls Hyderabad (india) ☎️ +91-7426014248 Hyderabad Call Girl
 
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
一比一原版(uom毕业证书)曼彻斯特大学毕业证如何办理
 
How To Control IO Usage using Resource Manager
How To Control IO Usage using Resource ManagerHow To Control IO Usage using Resource Manager
How To Control IO Usage using Resource Manager
 
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
 
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
06-20-2024-AI Camp Meetup-Unstructured Data and Vector Databases
 
一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理
 
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
Call Girls Goa👉9024918724👉Low Rate Escorts in Goa 💃 Available 24/7
 
06-18-2024-Princeton Meetup-Introduction to Milvus
06-18-2024-Princeton Meetup-Introduction to Milvus06-18-2024-Princeton Meetup-Introduction to Milvus
06-18-2024-Princeton Meetup-Introduction to Milvus
 
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
 
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
一比一原版澳洲西澳大学毕业证(uwa毕业证书)如何办理
 
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
Do People Really Know Their Fertility Intentions?  Correspondence between Sel...Do People Really Know Their Fertility Intentions?  Correspondence between Sel...
Do People Really Know Their Fertility Intentions? Correspondence between Sel...
 
Data Scientist Machine Learning Profiles .pdf
Data Scientist Machine Learning  Profiles .pdfData Scientist Machine Learning  Profiles .pdf
Data Scientist Machine Learning Profiles .pdf
 
Drownings spike from May to August in children
Drownings spike from May to August in childrenDrownings spike from May to August in children
Drownings spike from May to August in children
 
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
Interview Methods - Marital and Family Therapy and Counselling - Psychology S...
 
Sample Devops SRE Product Companies .pdf
Sample Devops SRE  Product Companies .pdfSample Devops SRE  Product Companies .pdf
Sample Devops SRE Product Companies .pdf
 
Telemetry Solution for Gaming (AWS Summit'24)
Telemetry Solution for Gaming (AWS Summit'24)Telemetry Solution for Gaming (AWS Summit'24)
Telemetry Solution for Gaming (AWS Summit'24)
 
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
PyData London 2024: Mistakes were made (Dr. Rebecca Bilbro)
 
Overview IFM June 2024 Consumer Confidence INDEX Report.pdf
Overview IFM June 2024 Consumer Confidence INDEX Report.pdfOverview IFM June 2024 Consumer Confidence INDEX Report.pdf
Overview IFM June 2024 Consumer Confidence INDEX Report.pdf
 
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdfreading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
reading_sample_sap_press_operational_data_provisioning_with_sap_bw4hana (1).pdf
 
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
 

Introduction to Data Governance

  • 1. Introduction to Data Governance John Bao Vuu Director of Data Management www.enterpriseim.com www.linkedin.com/in/johnvuu
  • 2. Director of DM Consultant | Advisor John Vuu SPECIALTIES ✓ EIM Strategy & Solutions ✓ Data Governance / DQ ✓ Business Analytics ✓ Data Warehouse INDUSTRIES ✓ Banking ✓ Insurance ✓ Ecommerce ✓ Healthcare • 18 years experience in Data Management • Founder of 2 technology companies • Former Accenture BI Consultant • DM Director at EIM Partners • BA degree in Finance – Western WWU, Washington, USA • BS degree Information Systems – WWU, Washington, USA About the Speaker
  • 3. • IM Foundational Disciplines • Cross-functional Workflow Exchange • Key Objectives of the Data Governance Framework • Components of a Data Governance Framework • Key Roles in Data Governance • Data Governance Committee (DGC) • 4 Data Governance Policy Areas • 3 Challenges to Implementing Data Governance • Data Governance Success Factors Presentation Outline
  • 4. IM Foundational Disciplines DATA WAREHOUSE ✓Data integration ✓Enterprise data model ✓Common data dictionary ✓Data standardization ✓Data mapping / ETL ✓Applications support BUSINESS INTELLIGENCE ✓Web portal BI ✓Decentralized reporting ✓Authorization & security ✓Applications development ✓Data marts ✓Advanced Data Analytics* DATA GOVERNANCE ✓Policies & procedures ✓Stewardship / Ownership ✓Metadata management ✓Business glossary ✓DQ management ✓Data remediation / cleansing ✓MDM Bank’s fragmented Information Management architecture and poor data quality can present operational risks, strategic uncertainty and the potential for loss of revenue. Inconsistent and improper handling of data across departments can also contribute to lower staff productivity, workflow inefficiency and additional cost of maintenance and support for lack of robust enterprise information and data governance strategy.
  • 5. Example: Cross-functional Workflow Exchange Department A provides reports & data to Department B Department B checks Department A work; validates accuracy of data, makes or requests corrections Department B takes action on approvals, scoring, rating, campaigns, cust. offerings, commissions, etc. Department B deals with the consequences of any errors in reporting and from poor data quality ACTION Poor data quality cost as much as 25% of an organization’s revenue each year. TDWI – The Data Warehouse Institute Typical workflow exchange between departments: ✓ Reports become more accurate ✓ Greater confidence in decision-making – lower risks ✓ Increase productivity and efficiency across business functions ✓ More effective campaigns programs – cross & up selling ✓ Reduce operational costs – increase in revenue
  • 6. Key Objectives of the Data Governance Framework Data Governance framework baseline components: 1. Establish accountability by defining key roles and responsibilities within the DG framework 2. Define DG procedures and the methodology used to execute them 3. Define guidelines for data policies, data quality, data provisioning, metadata and reference data 4. Provide guidance for data management practices to maximize business value such as redundancy and improving data consistency 5. Provide guidance for creating and maintaining standards and tools for managing corporate data
  • 7. Components of a Data Governance Framework
  • 8. Key Roles in Data Governance Data Owner: person that has direct operational / business responsibility within a business unit for the management of one or more types of data Data Steward: person that assigns and delegates appropriate responsibility for the management of data to respective individuals Data Custodian: person that is responsible for the operation and management of systems and servers which collect, manage, and provide data access
  • 9. Data Governance Committee (DGC) 1. Oversees the execution of vision and objectives of the Data Governance program 2. DGC is responsible for taking data architecture decisions, data remediation, setting up and enforcing data standards / policies and driving data quality 3. DGC acts as the point of escalation and decision making for Data Governance related policies and procedures 4. DGC helps to define KDE (key data elements), standards and metrics, conduct root cause analysis of issues and propose solutions Executives Cross-functional Team Members (Owners) Cross-functional Stewards / Custodians Business Consumers DG Council DG Steering Committee Data Stewards End Users Data Governance Organization Structure
  • 10. 4 Data Governance Policy Areas DG policies are principles or rules that guide data-related decisions. Four primary DG policy areas: 1. Data Quality: establish how to define, measure and improve DQ 2. Data Provisioning: providing guidelines and best practices for provisioning data in efficient and effective ways 3. Metadata: organizing and classifying data for reference and use in the right business context 4. Reference Data: management of define values, i.e. KDE (key data elements), data dictionary, glossary, business rules, reference code values, etc. Data Quality Completeness Consistency Conformity Accuracy Integrity Timeliness 6 Data Quality Dimensions
  • 11. 3 Challenges to Implementing Data Governance Organization Fit – the strategy and approach are not clearly defined and do not take into account resource involvement and their level of understanding Ignored Efforts – lack of stakeholder buy-in and cross-functional collaboration leading to independent workarounds by departments looking for quick solutions to their problems Lack of Perceived Value – the value of data governance is often not as explicit as in other projects. Internal bureaucracies and seemingly intrusive efforts of the DG program can impede progress and muddy value
  • 12. Data Governance Success Factors Data governance is a discipline that evolves over time as part of the organization’s data-driven culture Requirements for achieving an effective Data Governance program: 1. Enforced policies and standards 2. Development and execution of processes and procedures 3. Involvement of senior leadership 4. A clearly define DG framework structure (governing body) Business Value The goal of Data Governance is to provide appropriate guidance for the organization to enable business effectiveness. People ProcessTechnology
  • 13. BUSINESS : www.enterpriseim.com LINKEDIN : www.linkedin.com/in/johnvuu BLOG : www.johnvuu.com MOBILE: +84 090.264.0230 Thank You!
  翻译: