SlideShare une entreprise Scribd logo
1  sur  21
Stop the Madness!
Never doubt the quality of BI again using
Data Governance
Mary Levins, PMP
April 18, 2013
About 3sage Consulting
Consultant-owned firm of proven, tenured consultants specializing in
Information Management
Our People
• “Big Firm” Talent, each with 10-20 years experience in Information Management
• Proven success to bring business value & context to every data initiative
• Capability to execute all phases (strategy -> delivery) of large-scale data programs and projects
Deliver Results
• Our consultants deep business acumen and technical expertise is crucial to design the right
solution.
• Our consultants have substantial breadth across multiple Information Management disciplines,
but significant depth in at least one core competency.
• 3sage is focused in Atlanta – each initiative is paramount as our business depends on it and our
consultants live here with our clients.
4
Topics
• BI Governance vs Governance of BI Data
• Why is Data Governance Important for BI?
• Data Governance Framework
• Data Governance in Action and Lessons
Learned
• Future Challenges
BI Governance vs Data Governance
• BI Governance
– governing activities in a BI environment
– project oriented (defined beginning and end, and defined scope and
resources)
• Data Governance
– applying data governance disciplines across the enterprise
– Program oriented (group of related projects with strategic goals)
Data Governance is an Integrated discipline for
assessing, managing, using, improving and protecting
data for the strategic benefit of the organization
• Data is the Foundation and must be managed to run, improve, and expand
the business
Raw Data To Meaningful Information
- Depends on Quality Data
Insight
Knowledge
Information
Data
Discrete facts
Definition
Format
Growth
Strategic Direction
Business Value
Value
Inference
Predictive
Decision-making
Patterns
Trends
Relationships
Assumptions
Necessary for the
Business = Data
Asset
Operational
Intelligence to Run
the business
Analytical Intelligence
to Improve the
Business
Strategic and
Predictive Intelligence
to Expand the
Business
Is
Knowledge
Really
Power?
• Data is the Foundation and must be managed to run, improve, and
expand the business
Discrete facts
Definition
Format
Relevance
Growth
Business Value
Value
Inference
Patterns
Trends
Relationships
Necessary for the
Business
Operational to run the
business
Analytical to Improve
the Business
Strategic and Predictive
Insight to Expand the
BusinessIs
Knowledge
Really
Power?
Raw Data To Meaningful Information
- Depends on Quality Data
Breakout Discussion Points
• What are your biggest data related challenges
impacting your BI initiatives?
• What level of data governance maturity do
you think your organization is?
Common Business Concerns related to
Bad Data
8
I have to make
assumptions
on the data to
use
There are
multiple
answers to the
same question
There are no
clear
consistent
definitions
We have
multiple
versions of the
truth
I have to
reconcile and
restate metrics
You have to
have a lot of
friends to get
what you need
Data doesn’t kill
business, it’s
the use of the
data that kills
We need a
common way to
look at critical
metrics
I have no
confidence in the
data or existing
reports
DATA GOVERNANCE FRAMEWORK
Data Governance Maturity
Where is your organization?
• High level of
dependency on
"Tribal Knowledge"
across the
organization
• Data is created on
an as needed basis
with no or few
rules/standards
• Ownership and/or
stewardship models
are undefined
• Data quality issues
are addressed after
they occur
(reactive)
• Decision making
dependent on
consensus and/or
multiple systems
• Heroic culture
(performance
measured by
"fixing" problems)
• No Active Data
Governance
Strategy
• Data Projects on
need basis
• Governance program
has been implemented
at an enterprise level
• Metadata
management and data
standards are in place
across the enterprise
• Data standards
processes are in place
• Proactive monitoring
for data quality
controls feeds into the
governance program
• Governance policies are
used to set, communicate,
and enforce business and
IT information
management
• Governance is second
nature throughout the
enterprise
• Agility and responsiveness
is greatly increased due to
a single unified view of
enterprise data
• Enterprise data governance
enables high-quality
information sharing across
all divisions
Aware Reactive Proactive Managed Innovative
• Leadership is
aware of the
importance of
Data Governance
and the impact on
the performance
of the
organization.
• Enterprise Data
Governance
organizational
structure defined
and sponsored
Level 1 Level 2 Level 3 Level 4 Level 5
Benefits of Data Governance
• Increase Revenue
– Business Growth
• Reduce Costs
– Protect the investments in new initiatives (BI/ ERP)
– Improve Efficiencies
– Simplification
• Minimize Risk (compliance, security, privacy)
– Liability and Fraud
– Compliance to internal standards, policies, guidelines
Data Governance is an Integrated discipline for assessing, managing, using,
improving and protecting data for the strategic benefit of the organization
Data Governance Framework
Key Disciplines and Sub-disciplines
11. Technologies
• Workflow Routing Tools
• Collaboration Tools
• DQ Tools
12. Infrastructure
1. Data Governance Organization
2. Data Stewards
3. Policies and Procedures
4. Data Quality and Compliance
5. Data Quality Assurance
6. Information Lifecycle Management
7. Data Privacy and Risk Management
8. Meta-data Management
9. Data Model
Process
DataTechnology
People
The Data Governance process covers the people, process, technology, and data disciplines to ensure
a holistic solution is designed
Change
Management
DATA GOVERNANCE IN ACTION
Siebel
®
Single Integrated
Architecture
Worldwide
New World:
 Integrated data
 Real-time
 Schedule - 24-hour
clock
 Global
 One instance
2128 instances of 887 applications
Old World:
 Data and processes customized to fit business,
geography or application
 Interfaces helped customize data for downstream
applications
 Separate silos maintaining data
 Each instance controlled their own schedule
A Global Integrated Solution requires an Integrated
Approach for Managing Data & Processes
SAP
DATA GOVERNANCE DRIVER
Procurement
Requestor or
Employee
Central Vendor
Administrator
Supplier
Employee
Accounts
Payable
Operations
Buyer
Technology
High-Level Information Life Cycle – With Non-Quality Data
Submit request
for supplier
master record
to be set up.
Request
OK?
Request tool Oracle
Review
request
Create supplier
master record in
Oracle.
Receive
payment
Receive
reimbursement
Process
Invoice
Payment
Process
Employee
reimbursements
Place order
with supplier
Receive
order
Send request
to authorizing
agent.
Review and
approve
request.
Manager or
Authorizing
Agent
Receive notification
that supplier setup is
complete.
Type
completion info
into SARS.
SARS
NoFrom
previous
page
CVA rejects
request in
SARS
Receive
reject notice
Receive
reject notice
Support
Contact
Receive request to
investigate rejection
issue (email, phone,
BLT, etc)
Investigate
rejection
issue
Investigate
rejection
issue
Investigate
rejection
issue
Investigate
rejection
issue
Resolve
rejection
issue
Resolve
rejection
issue
Resolve
rejection issue
or notification
of resolution
Resolve
rejection
issue
Impact to request process:
• Additional rework
• Time delay in completing business txn
• Extra resources
• Duplication of effort
Procurement
Requestor or
Employee
Central Vendor
Administrator
Supplier
Employee
Accounts
Payable
Operations
Buyer
Technology
High-Level Information Life Cycle – With Good Data
Submit request
for supplier
master record
to be set up.
Request
OK?
Request tool Oracle
Review
request
Create supplier
master record in
Oracle.
Receive
payment
Receive
reimbursement
Yes
Process
Invoice
Payment
Process
Employee
reimbursements
Place order
with supplier
Receive
order
Send request
to authorizing
agent.
Review and
approve
request.
Manager or
Authorizing
Agent
Receive notification
that supplier setup is
complete.
Type
completion info
into SARS.
SARS
No
See
next
page
Business Impact
of Reducing Rejected Supplier Setup Requests
What is the impact of reducing rejected setup requests?
• Decreased or no time delay in placing orders to suppliers, paying supplier invoices, and
reimbursing employees for expenses. How did this slow down a product introduction?
Shipments? Contracts? Take to another level of detail.
• Reduced rework by employee (reject the request, ensure investigation and resolution, re-
review updated request).
• Reduced rework by requestor who submitted the original request (to investigate and
resubmit).
• Reduced rework by support employee (to investigate and resolve).
• No frustrated employees
• No frustrated suppliers, many of whom are also Agilent customers.
• No loss of service to the company because payment has not been made.
Thanks for the
timely payment!
Thanks for the
timely
reimbursement!
Lessons Learned
• Data governance can influence common processes through Data
Standards and rules
• Established controls will minimize exceptions and rework resulting in
greater efficiencies
• A defined organization structure will help business owners/ partners to
define and maintain business requirements
• Data governance can leverage & tighten linkage between Business, IT, and
other Enterprise teams
• Consolidation and communication of data and business rules into an
enterprise location helps to drive quality across the enterprise
– Change Management Process
– Collaboration
Future Challenges
• Technology Changes are driving a greater need for
Data Governance
– How do we maintain trusted and secure information
in these new environments
• Listen to Books and Read our Cell Phones
• Play music on our TV’s and watch movies on Computers
• Data Explosion – data growth is predicted to be 44
times by 2020
– How do we share and synchronize so much data
internally and externally?
• Culture and Communication Changes
– Innovation can only occur in an Inclusive Culture
– New language of texting acronyms (OMG!)
Your Enterprise Knows More Than It’s Telling You….
3sage can lend a hand.
Sponsors

Contenu connexe

Tendances

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
 
CDMP preparation workshop EDW2016
CDMP preparation workshop EDW2016CDMP preparation workshop EDW2016
CDMP preparation workshop EDW2016Christopher Bradley
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewJohn Bao Vuu
 
Enterprise Data Governance Framework With Change Management
Enterprise Data Governance Framework With Change ManagementEnterprise Data Governance Framework With Change Management
Enterprise Data Governance Framework With Change ManagementSlideTeam
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best PracticesDATAVERSITY
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best PracticesDATAVERSITY
 
Implementing Effective Data Governance
Implementing Effective Data GovernanceImplementing Effective Data Governance
Implementing Effective Data GovernanceChristopher Bradley
 
Business Value Through Reference and Master Data Strategies
Business Value Through Reference and Master Data StrategiesBusiness Value Through Reference and Master Data Strategies
Business Value Through Reference and Master Data StrategiesDATAVERSITY
 
Create a 'Customer 360' with Master Data Management for Financial Services
Create a 'Customer 360' with Master Data Management for Financial ServicesCreate a 'Customer 360' with Master Data Management for Financial Services
Create a 'Customer 360' with Master Data Management for Financial ServicesPerficient, Inc.
 
Requirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationRequirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationVicki McCracken
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureDATAVERSITY
 
Data Architecture for Data Governance
Data Architecture for Data GovernanceData Architecture for Data Governance
Data Architecture for Data GovernanceDATAVERSITY
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management DATAVERSITY
 
Data Catalogues - Architecting for Collaboration & Self-Service
Data Catalogues - Architecting for Collaboration & Self-ServiceData Catalogues - Architecting for Collaboration & Self-Service
Data Catalogues - Architecting for Collaboration & Self-ServiceDATAVERSITY
 
Introduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsIntroduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsKingland
 
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 TransformationDATAVERSITY
 
Real-World Data Governance Webinar: Data Governance Framework Components
Real-World Data Governance Webinar: Data Governance Framework ComponentsReal-World Data Governance Webinar: Data Governance Framework Components
Real-World Data Governance Webinar: Data Governance Framework ComponentsDATAVERSITY
 
Data Governance Program Powerpoint Presentation Slides
Data Governance Program Powerpoint Presentation SlidesData Governance Program Powerpoint Presentation Slides
Data Governance Program Powerpoint Presentation SlidesSlideTeam
 
Do-It-Yourself (DIY) Data Governance Framework
Do-It-Yourself (DIY) Data Governance FrameworkDo-It-Yourself (DIY) Data Governance Framework
Do-It-Yourself (DIY) Data Governance FrameworkDATAVERSITY
 

Tendances (20)

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 ...
 
CDMP preparation workshop EDW2016
CDMP preparation workshop EDW2016CDMP preparation workshop EDW2016
CDMP preparation workshop EDW2016
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework Overview
 
Enterprise Data Governance Framework With Change Management
Enterprise Data Governance Framework With Change ManagementEnterprise Data Governance Framework With Change Management
Enterprise Data Governance Framework With Change Management
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best Practices
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Implementing Effective Data Governance
Implementing Effective Data GovernanceImplementing Effective Data Governance
Implementing Effective Data Governance
 
Business Value Through Reference and Master Data Strategies
Business Value Through Reference and Master Data StrategiesBusiness Value Through Reference and Master Data Strategies
Business Value Through Reference and Master Data Strategies
 
Create a 'Customer 360' with Master Data Management for Financial Services
Create a 'Customer 360' with Master Data Management for Financial ServicesCreate a 'Customer 360' with Master Data Management for Financial Services
Create a 'Customer 360' with Master Data Management for Financial Services
 
Requirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationRequirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - Presentation
 
Top 10 Artifacts Needed For Data Governance
Top 10 Artifacts Needed For Data GovernanceTop 10 Artifacts Needed For Data Governance
Top 10 Artifacts Needed For Data Governance
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
 
Data Architecture for Data Governance
Data Architecture for Data GovernanceData Architecture for Data Governance
Data Architecture for Data Governance
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management
 
Data Catalogues - Architecting for Collaboration & Self-Service
Data Catalogues - Architecting for Collaboration & Self-ServiceData Catalogues - Architecting for Collaboration & Self-Service
Data Catalogues - Architecting for Collaboration & Self-Service
 
Introduction to Data Management Maturity Models
Introduction to Data Management Maturity ModelsIntroduction to Data Management Maturity Models
Introduction to Data Management Maturity Models
 
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
 
Real-World Data Governance Webinar: Data Governance Framework Components
Real-World Data Governance Webinar: Data Governance Framework ComponentsReal-World Data Governance Webinar: Data Governance Framework Components
Real-World Data Governance Webinar: Data Governance Framework Components
 
Data Governance Program Powerpoint Presentation Slides
Data Governance Program Powerpoint Presentation SlidesData Governance Program Powerpoint Presentation Slides
Data Governance Program Powerpoint Presentation Slides
 
Do-It-Yourself (DIY) Data Governance Framework
Do-It-Yourself (DIY) Data Governance FrameworkDo-It-Yourself (DIY) Data Governance Framework
Do-It-Yourself (DIY) Data Governance Framework
 

Similaire à Stop the madness - Never doubt the quality of BI again using Data Governance

Is Your Agency Data Challenged?
Is Your Agency Data Challenged?Is Your Agency Data Challenged?
Is Your Agency Data Challenged?DLT Solutions
 
Securing big data (july 2012)
Securing big data (july 2012)Securing big data (july 2012)
Securing big data (july 2012)Marc Vael
 
DC Salesforce1 Tour Data Governance Lunch Best Practices deck
DC Salesforce1 Tour Data Governance Lunch Best Practices deckDC Salesforce1 Tour Data Governance Lunch Best Practices deck
DC Salesforce1 Tour Data Governance Lunch Best Practices deckBeth Fitzpatrick
 
Cff data governance best practices
Cff data governance best practicesCff data governance best practices
Cff data governance best practicesBeth Fitzpatrick
 
When the business needs intelligence (15Oct2014)
When the business needs intelligence   (15Oct2014)When the business needs intelligence   (15Oct2014)
When the business needs intelligence (15Oct2014)Dipti Patil
 
How to Structure the Data Organization
How to Structure the Data OrganizationHow to Structure the Data Organization
How to Structure the Data OrganizationRobyn Bollhorst
 
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
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data GovernanceJohn Bao Vuu
 
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...Health Catalyst
 
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...Health Catalyst
 
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...ARMA International
 
Data architecture around risk management
Data architecture around risk managementData architecture around risk management
Data architecture around risk managementSuvradeep Rudra
 
Data Integrity: From speed dating to lifelong partnership
Data Integrity: From speed dating to lifelong partnershipData Integrity: From speed dating to lifelong partnership
Data Integrity: From speed dating to lifelong partnershipPrecisely
 
A Business-first Approach to Building Data Governance Program
A Business-first Approach to Building Data Governance ProgramA Business-first Approach to Building Data Governance Program
A Business-first Approach to Building Data Governance ProgramPrecisely
 
Five Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data StrategyFive Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data StrategyPerficient, Inc.
 
How to Build & Sustain a Data Governance Operating Model
How to Build & Sustain a Data Governance Operating Model How to Build & Sustain a Data Governance Operating Model
How to Build & Sustain a Data Governance Operating Model DATUM LLC
 
Building a Data Strategy Your C-Suite Will Support
Building a Data Strategy Your C-Suite Will SupportBuilding a Data Strategy Your C-Suite Will Support
Building a Data Strategy Your C-Suite Will SupportReid Colson
 
SQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 PresentationSQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 PresentationMatthew W. Bowers
 
Best Practices of Data Governance.pptx
Best Practices of Data Governance.pptxBest Practices of Data Governance.pptx
Best Practices of Data Governance.pptxpreludesyscloudmigra
 

Similaire à Stop the madness - Never doubt the quality of BI again using Data Governance (20)

Is Your Agency Data Challenged?
Is Your Agency Data Challenged?Is Your Agency Data Challenged?
Is Your Agency Data Challenged?
 
Securing big data (july 2012)
Securing big data (july 2012)Securing big data (july 2012)
Securing big data (july 2012)
 
DC Salesforce1 Tour Data Governance Lunch Best Practices deck
DC Salesforce1 Tour Data Governance Lunch Best Practices deckDC Salesforce1 Tour Data Governance Lunch Best Practices deck
DC Salesforce1 Tour Data Governance Lunch Best Practices deck
 
Cff data governance best practices
Cff data governance best practicesCff data governance best practices
Cff data governance best practices
 
When the business needs intelligence (15Oct2014)
When the business needs intelligence   (15Oct2014)When the business needs intelligence   (15Oct2014)
When the business needs intelligence (15Oct2014)
 
How to Structure the Data Organization
How to Structure the Data OrganizationHow to Structure the Data Organization
How to Structure the Data Organization
 
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
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data Governance
 
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...
Part 2 - 20 Years in Healthcare Analytics & Data Warehousing: What did we lea...
 
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...
20 Years in Healthcare Analytics & Data Warehousing: What did we learn? What'...
 
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...
Morgan Templar - Connecting IT Strategy To Business Operations For Seamless C...
 
Data architecture around risk management
Data architecture around risk managementData architecture around risk management
Data architecture around risk management
 
Data Integrity: From speed dating to lifelong partnership
Data Integrity: From speed dating to lifelong partnershipData Integrity: From speed dating to lifelong partnership
Data Integrity: From speed dating to lifelong partnership
 
A Business-first Approach to Building Data Governance Program
A Business-first Approach to Building Data Governance ProgramA Business-first Approach to Building Data Governance Program
A Business-first Approach to Building Data Governance Program
 
Five Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data StrategyFive Attributes to a Successful Big Data Strategy
Five Attributes to a Successful Big Data Strategy
 
How to Build & Sustain a Data Governance Operating Model
How to Build & Sustain a Data Governance Operating Model How to Build & Sustain a Data Governance Operating Model
How to Build & Sustain a Data Governance Operating Model
 
Building a Data Strategy Your C-Suite Will Support
Building a Data Strategy Your C-Suite Will SupportBuilding a Data Strategy Your C-Suite Will Support
Building a Data Strategy Your C-Suite Will Support
 
SQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 PresentationSQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 Presentation
 
Data Strategy
Data StrategyData Strategy
Data Strategy
 
Best Practices of Data Governance.pptx
Best Practices of Data Governance.pptxBest Practices of Data Governance.pptx
Best Practices of Data Governance.pptx
 

Dernier

Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectBoston Institute of Analytics
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data VisualizationKianJazayeri1
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfrahulyadav957181
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxMike Bennett
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataTecnoIncentive
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...Jack Cole
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
IBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaIBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaManalVerma4
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxHimangsuNath
 
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelDecoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelBoston Institute of Analytics
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Cathrine Wilhelmsen
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksdeepakthakur548787
 
SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxHaritikaChhatwal1
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024Susanna-Assunta Sansone
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...Dr Arash Najmaei ( Phd., MBA, BSc)
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxSimranPal17
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 

Dernier (20)

Insurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis ProjectInsurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis Project
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis Project
 
Data Analysis Project: Stroke Prediction
Data Analysis Project: Stroke PredictionData Analysis Project: Stroke Prediction
Data Analysis Project: Stroke Prediction
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdf
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptx
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded data
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
IBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaIBEF report on the Insurance market in India
IBEF report on the Insurance market in India
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptx
 
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelDecoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing works
 
SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptx
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptx
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 

Stop the madness - Never doubt the quality of BI again using Data Governance

  • 1. Stop the Madness! Never doubt the quality of BI again using Data Governance Mary Levins, PMP April 18, 2013
  • 2. About 3sage Consulting Consultant-owned firm of proven, tenured consultants specializing in Information Management Our People • “Big Firm” Talent, each with 10-20 years experience in Information Management • Proven success to bring business value & context to every data initiative • Capability to execute all phases (strategy -> delivery) of large-scale data programs and projects Deliver Results • Our consultants deep business acumen and technical expertise is crucial to design the right solution. • Our consultants have substantial breadth across multiple Information Management disciplines, but significant depth in at least one core competency. • 3sage is focused in Atlanta – each initiative is paramount as our business depends on it and our consultants live here with our clients. 4
  • 3. Topics • BI Governance vs Governance of BI Data • Why is Data Governance Important for BI? • Data Governance Framework • Data Governance in Action and Lessons Learned • Future Challenges
  • 4. BI Governance vs Data Governance • BI Governance – governing activities in a BI environment – project oriented (defined beginning and end, and defined scope and resources) • Data Governance – applying data governance disciplines across the enterprise – Program oriented (group of related projects with strategic goals) Data Governance is an Integrated discipline for assessing, managing, using, improving and protecting data for the strategic benefit of the organization
  • 5. • Data is the Foundation and must be managed to run, improve, and expand the business Raw Data To Meaningful Information - Depends on Quality Data Insight Knowledge Information Data Discrete facts Definition Format Growth Strategic Direction Business Value Value Inference Predictive Decision-making Patterns Trends Relationships Assumptions Necessary for the Business = Data Asset Operational Intelligence to Run the business Analytical Intelligence to Improve the Business Strategic and Predictive Intelligence to Expand the Business Is Knowledge Really Power?
  • 6. • Data is the Foundation and must be managed to run, improve, and expand the business Discrete facts Definition Format Relevance Growth Business Value Value Inference Patterns Trends Relationships Necessary for the Business Operational to run the business Analytical to Improve the Business Strategic and Predictive Insight to Expand the BusinessIs Knowledge Really Power? Raw Data To Meaningful Information - Depends on Quality Data
  • 7. Breakout Discussion Points • What are your biggest data related challenges impacting your BI initiatives? • What level of data governance maturity do you think your organization is?
  • 8. Common Business Concerns related to Bad Data 8 I have to make assumptions on the data to use There are multiple answers to the same question There are no clear consistent definitions We have multiple versions of the truth I have to reconcile and restate metrics You have to have a lot of friends to get what you need Data doesn’t kill business, it’s the use of the data that kills We need a common way to look at critical metrics I have no confidence in the data or existing reports
  • 10. Data Governance Maturity Where is your organization? • High level of dependency on "Tribal Knowledge" across the organization • Data is created on an as needed basis with no or few rules/standards • Ownership and/or stewardship models are undefined • Data quality issues are addressed after they occur (reactive) • Decision making dependent on consensus and/or multiple systems • Heroic culture (performance measured by "fixing" problems) • No Active Data Governance Strategy • Data Projects on need basis • Governance program has been implemented at an enterprise level • Metadata management and data standards are in place across the enterprise • Data standards processes are in place • Proactive monitoring for data quality controls feeds into the governance program • Governance policies are used to set, communicate, and enforce business and IT information management • Governance is second nature throughout the enterprise • Agility and responsiveness is greatly increased due to a single unified view of enterprise data • Enterprise data governance enables high-quality information sharing across all divisions Aware Reactive Proactive Managed Innovative • Leadership is aware of the importance of Data Governance and the impact on the performance of the organization. • Enterprise Data Governance organizational structure defined and sponsored Level 1 Level 2 Level 3 Level 4 Level 5
  • 11. Benefits of Data Governance • Increase Revenue – Business Growth • Reduce Costs – Protect the investments in new initiatives (BI/ ERP) – Improve Efficiencies – Simplification • Minimize Risk (compliance, security, privacy) – Liability and Fraud – Compliance to internal standards, policies, guidelines
  • 12. Data Governance is an Integrated discipline for assessing, managing, using, improving and protecting data for the strategic benefit of the organization Data Governance Framework Key Disciplines and Sub-disciplines 11. Technologies • Workflow Routing Tools • Collaboration Tools • DQ Tools 12. Infrastructure 1. Data Governance Organization 2. Data Stewards 3. Policies and Procedures 4. Data Quality and Compliance 5. Data Quality Assurance 6. Information Lifecycle Management 7. Data Privacy and Risk Management 8. Meta-data Management 9. Data Model Process DataTechnology People The Data Governance process covers the people, process, technology, and data disciplines to ensure a holistic solution is designed Change Management
  • 14. Siebel ® Single Integrated Architecture Worldwide New World:  Integrated data  Real-time  Schedule - 24-hour clock  Global  One instance 2128 instances of 887 applications Old World:  Data and processes customized to fit business, geography or application  Interfaces helped customize data for downstream applications  Separate silos maintaining data  Each instance controlled their own schedule A Global Integrated Solution requires an Integrated Approach for Managing Data & Processes SAP DATA GOVERNANCE DRIVER
  • 15. Procurement Requestor or Employee Central Vendor Administrator Supplier Employee Accounts Payable Operations Buyer Technology High-Level Information Life Cycle – With Non-Quality Data Submit request for supplier master record to be set up. Request OK? Request tool Oracle Review request Create supplier master record in Oracle. Receive payment Receive reimbursement Process Invoice Payment Process Employee reimbursements Place order with supplier Receive order Send request to authorizing agent. Review and approve request. Manager or Authorizing Agent Receive notification that supplier setup is complete. Type completion info into SARS. SARS NoFrom previous page CVA rejects request in SARS Receive reject notice Receive reject notice Support Contact Receive request to investigate rejection issue (email, phone, BLT, etc) Investigate rejection issue Investigate rejection issue Investigate rejection issue Investigate rejection issue Resolve rejection issue Resolve rejection issue Resolve rejection issue or notification of resolution Resolve rejection issue Impact to request process: • Additional rework • Time delay in completing business txn • Extra resources • Duplication of effort
  • 16. Procurement Requestor or Employee Central Vendor Administrator Supplier Employee Accounts Payable Operations Buyer Technology High-Level Information Life Cycle – With Good Data Submit request for supplier master record to be set up. Request OK? Request tool Oracle Review request Create supplier master record in Oracle. Receive payment Receive reimbursement Yes Process Invoice Payment Process Employee reimbursements Place order with supplier Receive order Send request to authorizing agent. Review and approve request. Manager or Authorizing Agent Receive notification that supplier setup is complete. Type completion info into SARS. SARS No See next page
  • 17. Business Impact of Reducing Rejected Supplier Setup Requests What is the impact of reducing rejected setup requests? • Decreased or no time delay in placing orders to suppliers, paying supplier invoices, and reimbursing employees for expenses. How did this slow down a product introduction? Shipments? Contracts? Take to another level of detail. • Reduced rework by employee (reject the request, ensure investigation and resolution, re- review updated request). • Reduced rework by requestor who submitted the original request (to investigate and resubmit). • Reduced rework by support employee (to investigate and resolve). • No frustrated employees • No frustrated suppliers, many of whom are also Agilent customers. • No loss of service to the company because payment has not been made. Thanks for the timely payment! Thanks for the timely reimbursement!
  • 18. Lessons Learned • Data governance can influence common processes through Data Standards and rules • Established controls will minimize exceptions and rework resulting in greater efficiencies • A defined organization structure will help business owners/ partners to define and maintain business requirements • Data governance can leverage & tighten linkage between Business, IT, and other Enterprise teams • Consolidation and communication of data and business rules into an enterprise location helps to drive quality across the enterprise – Change Management Process – Collaboration
  • 19. Future Challenges • Technology Changes are driving a greater need for Data Governance – How do we maintain trusted and secure information in these new environments • Listen to Books and Read our Cell Phones • Play music on our TV’s and watch movies on Computers • Data Explosion – data growth is predicted to be 44 times by 2020 – How do we share and synchronize so much data internally and externally? • Culture and Communication Changes – Innovation can only occur in an Inclusive Culture – New language of texting acronyms (OMG!)
  • 20. Your Enterprise Knows More Than It’s Telling You…. 3sage can lend a hand.