尊敬的 微信汇率:1円 ≈ 0.046239 元 支付宝汇率:1円 ≈ 0.04633元 [退出登录]
SlideShare a Scribd company logo
Business Drivers Behind
Data Governance
Today’s speakers
Mikkel Holmgaard
Data Governance Lead
Emily Washington
Senior Vice President, Product Management
“We need to
govern our data!”
A Typical Governance Story
3
LEADERSHIP
DATA
GOVERNANCE
TEAM
BUSINESS
USERS
DATA
GOVERNANCE
TEAM
BUSINESS
USERS
LEADERSHIP
INCITING
EVENT
Governance
spends more
time fighting
data fires.
Business
quickly loses
interest; stops
attending
meetings
Program
investment is
deprioritized
Asked to
help with
definitions,
approvals, and
ownership.
Team is
tasked with
putting
program in
place
Exec calls for
a data
governance
program
“We need to get the
business involved!”
“How does this help
me do my job?”
“We’re spending a lot more
time fighting data fires.
We need more meetings…”
“These meetings are
a waste of time!”
“I’m not seeing
the ROI”
Accelerate
program
roll-out by 18-40%
Generate 2-7x
greater ROI
Increase likelihood
of reinvestment by
over 75%
Benefits of a
business-first
approach
Successful programs
link Data Governance to business goals
Business goals inform your steps
Data to
minimize risk
Data to
deliver insights
Data to
run the business
REPORTING & COMPLIANCE ANALYTICS & INSIGHTS OPERATIONAL EXCELLENCE
Data protection
Risk and fraud
Privacy
Safety
Regulatory compliance
Internal reporting
Net Promoter Score
Website traffic
Targeted marketing
Customer retention
Buying patterns
Customer 360° view
Optimize working capital
Enhance customer care
Facilitate M&A
Lower operating expenses
Increase service levels
Reduce attrition
How data drives trusted business decisions
Data to
minimize risk
Data to
deliver insights
Data to
run the business
REPORTING & COMPLIANCE ANALYTICS & INSIGHTS OPERATIONAL EXCELLENCE
Data protection
Risk and fraud
Privacy
Safety
Regulatory compliance
Internal reporting
Net Promoter Score
Website traffic
Targeted marketing
Customer retention
Buying patterns
Customer 360° view
Optimize working capital
Enhance customer care
Facilitate M&A
Lower operating expenses
Increase service levels
Reduce attrition
Mapping data governance to business value
Goal Org Stakeholders Expected Outcomes DG Objective DG Capabilities
Improve
personalization of
customer products
and services
• Marketing
• Sales
• Finance
• Increase NPS by 5%
• 17%+ repeat customer
purchases
• 11% reduced churn
• Establish a common
view of trusted
customer data assets
• Data Catalog
• Data Lineage
• Approval Workflow
• Data Integrity rules
Accurate and timely
credit-risk analysis
• Underwriting
• Loan office
• Finance
• 10% reduction in
expected loss
• 20% lower Probability
of Default
• Establish stage gates,
rules, policies, and
quality measures
across credit risk
analysis process
• Analytics governance
• Model analysis
• Data quality metrics
Increase user
productivity by
improving time-to-
insights
• Business Analytics
• IT
• Data Office
• Improve decision-
accuracy by 22%
• Reduce time-to-insight
by 45%
• Launch data literacy
campaign across
business data SMEs
• Data lineage
• Data Catalog
• Automated workflow
Mitigate risk and
facilitate regulatory
compliance and
reporting
• Compliance Office
• Finance
• IT
• 10% improvement to
Reputation Index
• 15% reduction in
regulatory fines and
settlements
• Establish risk and
control framework
for regulatory
drivers
• PII detection
• Data monitoring
• Access control
Governance as a “painkiller” and “vitamin”
Goal DG Objective DG Capabilities
Improve
personalization of
customer products
and services
• Establish trusted view
of customer data
assets
• Data Catalog
• Data Lineage
• Approval Workflow
• Data Integrity rules
Accurate and
timely credit-risk
analysis
• Underwriting
• Loan office
• Finance
• •10% reduction in
expected loss
• •20% lower
Probability of Default
Increase user
productivity by
improving time-to-
insights
• Launch data literacy
campaign across
business data SMEs
• Data lineage
• Data Catalog
• Automated workflow
Mitigate risk and
facilitate regulatory
compliance and
reporting
• Establish risk and
control framework for
regulatory drivers
• PII detection
• Data monitoring
• Access control
Centralized collection
of customer data
elements used for
marketing and
promotion
Data profile providing
additional context on
volume, counts,
location, and contents
Data lineage flow of
upstream/downstream
relationships
Impact analysis to
business processes,
metrics, and analytics
Approved governance
ownership indicating
data is certified for
access and use
Automated approval
workflow to grant
access to data at
source
Data integrity metrics
to indicate data that is
accurate, consistent,
and trusted
Quality monitoring to
trigger notifications
below acceptable
values
P A I N K I L L E R
“ M u s t H a v e s ”
V I T A M I N
“ B o n u s ”
Prioritizing what matters
Goal Org Stakeholders Expected Results DG Objective DG Capabilities
Improve
personalization
of customer
goods and
services
Marketing
Sales
Finance
• Increase referrals
by 5%
• 17%+ repeat
customer
purchases
• 11% reduced churn
• Establish a
common view of
trusted customer
data
• Data Catalog
• Data Lineage
• Approval
Workflow
• Data Integrity
rules
“We need to
personalize our
outreach to
reduce churn.”
Operational
Bridging the gap between business & IT
Strategic
Tactical
e.g., KPIs / metrics,
strategic programs,
data privacy & protection
e.g., product development,
planning, sourcing,
manufacturing
e.g., data migrations, system
implementations, data
science & engineering
Critical data that drives
business processes
and operations
Grow the Business
Critical data assets that have
operational, compliance and
analytical business impacts
Run the Business
Critical information driving
business goals, objectives,
KPIs, and metrics
Transform the Business
Value metrics across three levels
Strategic
• Business Transformation Lead
• CDO / Data & Analytics Lead
• CIO
Value Metrics: Business Impact / ROI
• Process enablement
• KPI’s / PPI’s
Value Metrics: Performance Improvement
• Data Quality
(e.g. Accuracy)
• # of touches
Value Metrics: Efficiency & Effectiveness
• Volume / counts
• Completeness
• Accessibility
• Curation times
• Scale (# Systems managed)
• Data Error % (Rework %)
• Cycle time vs SLA’s
• Timeliness / availability
• Customer sentiment
• Project acceleration
Operational
• Business Process Lead
• Data Governance Lead
• Data Management Lead
• Information Architect
Tactical
• Business Data SME
• Data Analyst / Scientist
• Data Steward
• Data Maintenance & Quality
• Data Engineer
The Value Story
• Catalog assets
• Terms defined
• Quality rules developed
• Data owners identified
• Issue requests
Tactical Value (Inputs)
• FTE Productivity
• Data Literacy index
• Adoption / NPS
• Cycle time
• Data sharing
Strategic Value (Outcomes)
• Our customer onboarding process has
decreased by 25%...
• We’re able to identify 33% more customers
to cross-sell of lending products…
• And we’ve increased FTE productivity
by 20% due to data self-service …
• We’ve catalogued 10,000 supplier data assets…
• Defined the top 50 critical customer data assets …
• Aligned on key rules and policies for each…
• And our data quality is showing 90+% accuracy
and consistency for customer objects…
Value metrics come together at each level to tell a complete story that resonates.
As a result…
Lead to
Data Governance journey
Where to start?
DATA GOVERNANCE IN ORIFARM
A Business-first Approach to Data Governance
15
ORIFARM: Family owned, Danish pharmaceutical company
Organic
Growth
Expansion to rest of
the Nordics and start
of Generics business
1995-2005
New
markets
Entry in Netherlands,
United Kingdom &
Austria Acquisition of
Viminco/Alternova
2015 -
Start – up
The idea takes form
and the company
starts in Denmark
1994-1995
30
BIG
M&A
Acquisition of
Pharma Westen
German Market
2006
300
Center of
excellence
Production
and inbound
logistics setup Czech
Republic
2013
1000
Ambitious
growth
strategy
Acquisition
of Pilatus
2018 -
1200
Transformation
Takeda asset
acquisition
2020
1900
16
”Parallel Import ”
(Repacking)
Geograpichal expansion
& Functional expansion
”Generics” (CMO sourcing)
Geograpical
expansion
Functional
Consolidation
Geographical expansion
& Functional expansion
”pharma production”
Functional expansion
”Clinical Services”
& ”Unlicensed”
“Towards new
hights”
Winning in Sales &
Procurement
Building scalable and
efficient foundation.
Grow people to grow
Orifarm
- 2025
+2200
Geographical expansion
& Functional expansion
”CHC”, ”pharma production”
Corporate
Alignment
& entrepreneurial
Orifarm
Data Governance Story
(Preface)
Pain points
17
Slow and cumbersom IT-development
Confusion & Frustration Hidden misunderstanding
Inconsistant information
Internal expressions, business terms
& abbreviations
Diffient meaning of
shared expressions
key figures
based on different definitions
Solutions must be defined
from scratch
Orifarm
Data Governance Story
(Preface)
18
Executive Ambassadeur (Sponsor)
Concept Development
Forced through by CFO
Joint concept development by external SME and internal employee proven by P.O.C.
Orifarm Data Governance Story
(Chapter 1)
Respect business peculiarities:
• Be aware of
maturity/Litteracy
• Choose your battles
Utilize existing resources
• Ensure anchoring
• Align ambitions and speed
• Keep costs low
19
Data Governance Board
Head of
Corporate IT
Head of Quality
Compliance
Head of Corporate
Development
Chairman
Vendor
SteerCo
Data
Specialists
Stc.
Members
Item
SteerCo
Stc.
Chairman
…
SteerCo
Data
Specialists
Data
Specialists
Stc.
Members
Stc.
Members
Stc.
Chairman
Stc.
Chairman
Data Governance
Competency Centre
Lead Facilitator
Analyst Architect
Developing the Data Governance concept
Orifarm Data Governance Story
(Chapter 2)
Roll-Out according to
business value
• Simple DG users
• Advanced DG users
• IT-developers
• Other Users
Define individual
scopes per area
20
Align abbreviations and
business terms
Establish Steering
Committees, Communities
and related workflows
Show how data is defined
and where it comes from. Inventorize which reports and data-
sources are available and where
Publish terms (and their meaning)
used in reports and daily business
Support introduction of
report and data lifecycle
management
Highlight redundant data and
undesired data flows
Govern data quality and
compliance issues
Data Governance concept roll-out
Orifarm Data Governance Story
(Chapters being written)
Accept strategic
focus areas as
Data Governance
drivers
• Strategy => highway
• Include sideways
when possible
21
IT Service
Management
STRATEGIC ROADMAP
Process Technology
People
Systems
&
Processes
Data
Data,
Masterdata
&
Data
governance
Enablers
/
out
of
MWB
scope
Business Process Management PAC community Continuous improvement ERP Application Domains Digital Centric/Enablers
2021 2022 2023 2024 2025 2025 2024 2023 2022 2021
Mission & Vision
Strategic Ambition
Digitalizing
Quality
ERP preparation
ERP analysis
ERP implementation
Implementing digi
Board
Resource fluidity
Agile training
Legal entities
Organization
Roles &
Responsibilities
Architecture maturity
Platforms
Data Strategy
Digital Transformation
Change
leadership
Data
Governance
Relations
Group Data
Ownership
Master Data
Management
Support
Individual Data
Ownership
Data
Governance
Application
Workflow
principles and
Templates
Workflow
Standards
Data Quality
Compliance?
Defining the top 5 E2E
processes
Kick-starting PAC
network
Green Belt Lean
Training
Implementing “fit for
purpose” project
teams
Finance process
description
Clean-up RFCs
1 PAC in each
Department
PAC = Orifarm
Specialist
Part of Orifarm to
challenge with
improvements
Foundation for
decisions (ERP)
M&A Plug & Play
model
Mature & reliable core
processes
Business Process
Transparency
BPM IT Platform in place
CI IT Platform in place
Improvement potential for
2024 budgeted​
Tracking of all CI
activities
Several local initiatives
from PAC
Double digit savings
from CI
CI KPI for all
departments
“demo Friday”
Masterdata
Management is a
selfsustained
discipline
Core Data
Catalog &
Confirmed
Terminology
Base
BI solutions
consolidated on
new platform
IT partnering
program in
place
Data asset
life cycle
management
Standards for
data integration
Strategic target: “Building scalable and efficient foundation”
Corporate data
platform
available
Data Education
Program
Application Portfolio
Management
Core Workflow
Support
Orifarm Data Governance Story (Summary)
Implement a dedicated concept with
utilization of existing resources
Start small and adjust the journey along the
way to generate a ”proven track record”
Piggy bag on strategic initiatives
22
Takeaways
• Link data governance program initiatives to
higher-level business goals, stakeholders,
and business outcomes
• Deploy data governance capabilities that
directly serve as both painkillers and vitamins
to protect and grow the business
• Communicate Governance Value across
three levels – Strategic, Operational, and
Tactical
• Quantify business impact with value metrics
that resonate across each level
Questions?
Thank you

More Related Content

What's hot

Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
DATAVERSITY
 
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
Element22
 
Glossaries, Dictionaries, and Catalogs Result in Data Governance
Glossaries, Dictionaries, and Catalogs Result in Data GovernanceGlossaries, Dictionaries, and Catalogs Result in Data Governance
Glossaries, Dictionaries, and Catalogs Result in Data Governance
DATAVERSITY
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
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
 
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
 
Straight Talk to Demystify Data Lineage
Straight Talk to Demystify Data LineageStraight Talk to Demystify Data Lineage
Straight Talk to Demystify Data Lineage
DATAVERSITY
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management
DATAVERSITY
 
The Business Value of Metadata for Data Governance
The Business Value of Metadata for Data GovernanceThe Business Value of Metadata for Data Governance
The Business Value of Metadata for Data Governance
Roland Bullivant
 
Adopting a Process-Driven Approach to Master Data Management
Adopting a Process-Driven Approach to Master Data ManagementAdopting a Process-Driven Approach to Master Data Management
Adopting a Process-Driven Approach to Master Data Management
Software AG
 
DAS Slides: Enterprise Architecture vs. Data Architecture
DAS Slides: Enterprise Architecture vs. Data ArchitectureDAS Slides: Enterprise Architecture vs. Data Architecture
DAS Slides: Enterprise Architecture vs. Data Architecture
DATAVERSITY
 
Data Catalog as a Business Enabler
Data Catalog as a Business EnablerData Catalog as a Business Enabler
Data Catalog as a Business Enabler
Srinivasan Sankar
 
Data-Ed Slides: Best Practices in Data Stewardship (Technical)
Data-Ed Slides: Best Practices in Data Stewardship (Technical)Data-Ed Slides: Best Practices in Data Stewardship (Technical)
Data-Ed Slides: Best Practices in Data Stewardship (Technical)
DATAVERSITY
 
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
DATAVERSITY
 
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes  Data Mesh Work at ScaleHow a Semantic Layer Makes  Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
DATAVERSITY
 
The ABCs of Treating Data as Product
The ABCs of Treating Data as ProductThe ABCs of Treating Data as Product
The ABCs of Treating Data as Product
DATAVERSITY
 
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
 
Why data governance is the new buzz?
Why data governance is the new buzz?Why data governance is the new buzz?
Why data governance is the new buzz?
Aachen Data & AI Meetup
 
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?
DATAVERSITY
 
Data Governance Roles as the Backbone of Your Program
Data Governance Roles as the Backbone of Your ProgramData Governance Roles as the Backbone of Your Program
Data Governance Roles as the Backbone of Your Program
DATAVERSITY
 

What's hot (20)

Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
 
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
Introduction to DCAM, the Data Management Capability Assessment Model - Editi...
 
Glossaries, Dictionaries, and Catalogs Result in Data Governance
Glossaries, Dictionaries, and Catalogs Result in Data GovernanceGlossaries, Dictionaries, and Catalogs Result in Data Governance
Glossaries, Dictionaries, and Catalogs Result in Data Governance
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
 
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?
 
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
 
Straight Talk to Demystify Data Lineage
Straight Talk to Demystify Data LineageStraight Talk to Demystify Data Lineage
Straight Talk to Demystify Data Lineage
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management
 
The Business Value of Metadata for Data Governance
The Business Value of Metadata for Data GovernanceThe Business Value of Metadata for Data Governance
The Business Value of Metadata for Data Governance
 
Adopting a Process-Driven Approach to Master Data Management
Adopting a Process-Driven Approach to Master Data ManagementAdopting a Process-Driven Approach to Master Data Management
Adopting a Process-Driven Approach to Master Data Management
 
DAS Slides: Enterprise Architecture vs. Data Architecture
DAS Slides: Enterprise Architecture vs. Data ArchitectureDAS Slides: Enterprise Architecture vs. Data Architecture
DAS Slides: Enterprise Architecture vs. Data Architecture
 
Data Catalog as a Business Enabler
Data Catalog as a Business EnablerData Catalog as a Business Enabler
Data Catalog as a Business Enabler
 
Data-Ed Slides: Best Practices in Data Stewardship (Technical)
Data-Ed Slides: Best Practices in Data Stewardship (Technical)Data-Ed Slides: Best Practices in Data Stewardship (Technical)
Data-Ed Slides: Best Practices in Data Stewardship (Technical)
 
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
LDM Slides: Conceptual Data Models - How to Get the Attention of Business Use...
 
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes  Data Mesh Work at ScaleHow a Semantic Layer Makes  Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
 
The ABCs of Treating Data as Product
The ABCs of Treating Data as ProductThe ABCs of Treating Data as Product
The ABCs of Treating Data as Product
 
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 ...
 
Why data governance is the new buzz?
Why data governance is the new buzz?Why data governance is the new buzz?
Why data governance is the new buzz?
 
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?
 
Data Governance Roles as the Backbone of Your Program
Data Governance Roles as the Backbone of Your ProgramData Governance Roles as the Backbone of Your Program
Data Governance Roles as the Backbone of Your Program
 

Similar to Business Drivers Behind Data Governance

Linking Data Governance to Business Goals
Linking Data Governance to Business GoalsLinking Data Governance to Business Goals
Linking Data Governance to Business Goals
Precisely
 
A Business-first Approach to Building Data Governance Programs
A Business-first Approach to Building Data Governance ProgramsA Business-first Approach to Building Data Governance Programs
A Business-first Approach to Building Data Governance Programs
Precisely
 
Governance as a "painkiller": A Business First Approach to Data Governance
Governance as a "painkiller": A Business First Approach to Data GovernanceGovernance as a "painkiller": A Business First Approach to Data Governance
Governance as a "painkiller": A Business First Approach to Data Governance
Precisely
 
How to Build Data Governance Programs That Lasts: A Business-First Approach
 How to Build Data Governance Programs That Lasts: A Business-First Approach How to Build Data Governance Programs That Lasts: A Business-First Approach
How to Build Data Governance Programs That Lasts: A Business-First Approach
Precisely
 
What is Data Governance and why it’s crucial for PropTech
What is Data Governance and why it’s crucial for PropTechWhat is Data Governance and why it’s crucial for PropTech
What is Data Governance and why it’s crucial for PropTech
Precisely
 
Data Governance That Drives the Bottom Line
Data Governance That Drives the Bottom LineData Governance That Drives the Bottom Line
Data Governance That Drives the Bottom Line
Precisely
 
Four Must-Haves for Successful Data Governance in CPG Manufacturing
Four Must-Haves for Successful Data Governance in CPG ManufacturingFour Must-Haves for Successful Data Governance in CPG Manufacturing
Four Must-Haves for Successful Data Governance in CPG Manufacturing
Precisely
 
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDM
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDMOptimizing Solution Value– Dynamic Data Quality, Governance, and MDM
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDM
DATAVERSITY
 
How to Make a Data Governance Program that Lasts
How to Make a Data Governance Program that LastsHow to Make a Data Governance Program that Lasts
How to Make a Data Governance Program that Lasts
DATAVERSITY
 
How to Achieve Trusted Data with a Business-First Approach to Data Governance
How to Achieve Trusted Data with a Business-First Approach to Data GovernanceHow to Achieve Trusted Data with a Business-First Approach to Data Governance
How to Achieve Trusted Data with a Business-First Approach to Data Governance
Precisely
 
How to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First ApproachHow to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First Approach
Precisely
 
How to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First ApproachHow to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First Approach
Precisely
 
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
Precisely
 
Four Must-Haves for Data Governance in Financial Services
Four Must-Haves for Data Governance in Financial ServicesFour Must-Haves for Data Governance in Financial Services
Four Must-Haves for Data Governance in Financial Services
Precisely
 
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
Precisely
 
Top 4 Priorities in Building Insurance Data Governance Programs That Work
Top 4 Priorities in Building Insurance Data Governance Programs That WorkTop 4 Priorities in Building Insurance Data Governance Programs That Work
Top 4 Priorities in Building Insurance Data Governance Programs That Work
Precisely
 
How to Build Data Governance Programs That Last - A Business-First Approach.pdf
How to Build Data Governance Programs That Last - A Business-First Approach.pdfHow to Build Data Governance Programs That Last - A Business-First Approach.pdf
How to Build Data Governance Programs That Last - A Business-First Approach.pdf
Precisely
 
Data Governance: Business First, Govern Alway
Data Governance: Business First, Govern AlwayData Governance: Business First, Govern Alway
Data Governance: Business First, Govern Alway
Precisely
 
Data Governance Strategies for Public Sector
Data Governance Strategies for Public SectorData Governance Strategies for Public Sector
Data Governance Strategies for Public Sector
Precisely
 
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
IBM Switzerland
 

Similar to Business Drivers Behind Data Governance (20)

Linking Data Governance to Business Goals
Linking Data Governance to Business GoalsLinking Data Governance to Business Goals
Linking Data Governance to Business Goals
 
A Business-first Approach to Building Data Governance Programs
A Business-first Approach to Building Data Governance ProgramsA Business-first Approach to Building Data Governance Programs
A Business-first Approach to Building Data Governance Programs
 
Governance as a "painkiller": A Business First Approach to Data Governance
Governance as a "painkiller": A Business First Approach to Data GovernanceGovernance as a "painkiller": A Business First Approach to Data Governance
Governance as a "painkiller": A Business First Approach to Data Governance
 
How to Build Data Governance Programs That Lasts: A Business-First Approach
 How to Build Data Governance Programs That Lasts: A Business-First Approach How to Build Data Governance Programs That Lasts: A Business-First Approach
How to Build Data Governance Programs That Lasts: A Business-First Approach
 
What is Data Governance and why it’s crucial for PropTech
What is Data Governance and why it’s crucial for PropTechWhat is Data Governance and why it’s crucial for PropTech
What is Data Governance and why it’s crucial for PropTech
 
Data Governance That Drives the Bottom Line
Data Governance That Drives the Bottom LineData Governance That Drives the Bottom Line
Data Governance That Drives the Bottom Line
 
Four Must-Haves for Successful Data Governance in CPG Manufacturing
Four Must-Haves for Successful Data Governance in CPG ManufacturingFour Must-Haves for Successful Data Governance in CPG Manufacturing
Four Must-Haves for Successful Data Governance in CPG Manufacturing
 
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDM
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDMOptimizing Solution Value– Dynamic Data Quality, Governance, and MDM
Optimizing Solution Value– Dynamic Data Quality, Governance, and MDM
 
How to Make a Data Governance Program that Lasts
How to Make a Data Governance Program that LastsHow to Make a Data Governance Program that Lasts
How to Make a Data Governance Program that Lasts
 
How to Achieve Trusted Data with a Business-First Approach to Data Governance
How to Achieve Trusted Data with a Business-First Approach to Data GovernanceHow to Achieve Trusted Data with a Business-First Approach to Data Governance
How to Achieve Trusted Data with a Business-First Approach to Data Governance
 
How to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First ApproachHow to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First Approach
 
How to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First ApproachHow to Build Data Governance Programs That Last: A Business-First Approach
How to Build Data Governance Programs That Last: A Business-First Approach
 
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
 
Four Must-Haves for Data Governance in Financial Services
Four Must-Haves for Data Governance in Financial ServicesFour Must-Haves for Data Governance in Financial Services
Four Must-Haves for Data Governance in Financial Services
 
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
Maximize ROI of Insurance Digital Transformation Initiatives with Proven Data...
 
Top 4 Priorities in Building Insurance Data Governance Programs That Work
Top 4 Priorities in Building Insurance Data Governance Programs That WorkTop 4 Priorities in Building Insurance Data Governance Programs That Work
Top 4 Priorities in Building Insurance Data Governance Programs That Work
 
How to Build Data Governance Programs That Last - A Business-First Approach.pdf
How to Build Data Governance Programs That Last - A Business-First Approach.pdfHow to Build Data Governance Programs That Last - A Business-First Approach.pdf
How to Build Data Governance Programs That Last - A Business-First Approach.pdf
 
Data Governance: Business First, Govern Alway
Data Governance: Business First, Govern AlwayData Governance: Business First, Govern Alway
Data Governance: Business First, Govern Alway
 
Data Governance Strategies for Public Sector
Data Governance Strategies for Public SectorData Governance Strategies for Public Sector
Data Governance Strategies for Public Sector
 
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
Erfolgreicher agieren mit Analytics_Markus Barmettler_IBM Symposium 2013
 

More from Precisely

Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdfAutomate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
Precisely
 
Making Your Data and AI Ready for Business Transformation.pdf
Making Your Data and AI Ready for Business Transformation.pdfMaking Your Data and AI Ready for Business Transformation.pdf
Making Your Data and AI Ready for Business Transformation.pdf
Precisely
 
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNowGetting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
Precisely
 
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
Precisely
 
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party DataPredictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Precisely
 
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party DataPredictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Precisely
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Precisely
 
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
Precisely
 
AI-Ready Data - The Key to Transforming Projects into Production.pptx
AI-Ready Data - The Key to Transforming Projects into Production.pptxAI-Ready Data - The Key to Transforming Projects into Production.pptx
AI-Ready Data - The Key to Transforming Projects into Production.pptx
Precisely
 
Building a Multi-Layered Defense for Your IBM i Security
Building a Multi-Layered Defense for Your IBM i SecurityBuilding a Multi-Layered Defense for Your IBM i Security
Building a Multi-Layered Defense for Your IBM i Security
Precisely
 
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdfOptimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
Precisely
 
Chaining, Looping, and Long Text for Script Development and Automation.pdf
Chaining, Looping, and Long Text for Script Development and Automation.pdfChaining, Looping, and Long Text for Script Development and Automation.pdf
Chaining, Looping, and Long Text for Script Development and Automation.pdf
Precisely
 
Revolutionizing SAP® Processes with Automation and Artificial Intelligence
Revolutionizing SAP® Processes with Automation and Artificial IntelligenceRevolutionizing SAP® Processes with Automation and Artificial Intelligence
Revolutionizing SAP® Processes with Automation and Artificial Intelligence
Precisely
 
Navigating the Cloud: Best Practices for Successful Migration
Navigating the Cloud: Best Practices for Successful MigrationNavigating the Cloud: Best Practices for Successful Migration
Navigating the Cloud: Best Practices for Successful Migration
Precisely
 
Unlocking the Power of Your IBM i and Z Security Data with Google Chronicle
Unlocking the Power of Your IBM i and Z Security Data with Google ChronicleUnlocking the Power of Your IBM i and Z Security Data with Google Chronicle
Unlocking the Power of Your IBM i and Z Security Data with Google Chronicle
Precisely
 
Zukuntssichere SAP Prozesse dank automatisierter Massendaten
Zukuntssichere SAP Prozesse dank automatisierter MassendatenZukuntssichere SAP Prozesse dank automatisierter Massendaten
Zukuntssichere SAP Prozesse dank automatisierter Massendaten
Precisely
 
Unlocking the Potential of the Cloud for IBM Power Systems
Unlocking the Potential of the Cloud for IBM Power SystemsUnlocking the Potential of the Cloud for IBM Power Systems
Unlocking the Potential of the Cloud for IBM Power Systems
Precisely
 
Crucial Considerations for AI-ready Data.pdf
Crucial Considerations for AI-ready Data.pdfCrucial Considerations for AI-ready Data.pdf
Crucial Considerations for AI-ready Data.pdf
Precisely
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Precisely
 
Justifying Capacity Managment Webinar 4/10
Justifying Capacity Managment Webinar 4/10Justifying Capacity Managment Webinar 4/10
Justifying Capacity Managment Webinar 4/10
Precisely
 

More from Precisely (20)

Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdfAutomate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
Automate Studio Training: Easy Loop Creation for Greater Efficiency.pdf
 
Making Your Data and AI Ready for Business Transformation.pdf
Making Your Data and AI Ready for Business Transformation.pdfMaking Your Data and AI Ready for Business Transformation.pdf
Making Your Data and AI Ready for Business Transformation.pdf
 
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNowGetting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
Getting a Deeper Look at Your IBM® Z and IBM i Data in ServiceNow
 
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
Predictive Powerhouse - Elevating AI ML Accuracy and Relevance with Third-Par...
 
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party DataPredictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
 
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party DataPredictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
Predictive Powerhouse: Elevating AI Accuracy and Relevance with Third-Party Data
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
 
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
信頼できるデータでESGイニシアチブを成功に導く方法.pdf How to drive success with ESG initiatives with...
 
AI-Ready Data - The Key to Transforming Projects into Production.pptx
AI-Ready Data - The Key to Transforming Projects into Production.pptxAI-Ready Data - The Key to Transforming Projects into Production.pptx
AI-Ready Data - The Key to Transforming Projects into Production.pptx
 
Building a Multi-Layered Defense for Your IBM i Security
Building a Multi-Layered Defense for Your IBM i SecurityBuilding a Multi-Layered Defense for Your IBM i Security
Building a Multi-Layered Defense for Your IBM i Security
 
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdfOptimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
Optimierte Daten und Prozesse mit KI / ML + SAP Fiori.pdf
 
Chaining, Looping, and Long Text for Script Development and Automation.pdf
Chaining, Looping, and Long Text for Script Development and Automation.pdfChaining, Looping, and Long Text for Script Development and Automation.pdf
Chaining, Looping, and Long Text for Script Development and Automation.pdf
 
Revolutionizing SAP® Processes with Automation and Artificial Intelligence
Revolutionizing SAP® Processes with Automation and Artificial IntelligenceRevolutionizing SAP® Processes with Automation and Artificial Intelligence
Revolutionizing SAP® Processes with Automation and Artificial Intelligence
 
Navigating the Cloud: Best Practices for Successful Migration
Navigating the Cloud: Best Practices for Successful MigrationNavigating the Cloud: Best Practices for Successful Migration
Navigating the Cloud: Best Practices for Successful Migration
 
Unlocking the Power of Your IBM i and Z Security Data with Google Chronicle
Unlocking the Power of Your IBM i and Z Security Data with Google ChronicleUnlocking the Power of Your IBM i and Z Security Data with Google Chronicle
Unlocking the Power of Your IBM i and Z Security Data with Google Chronicle
 
Zukuntssichere SAP Prozesse dank automatisierter Massendaten
Zukuntssichere SAP Prozesse dank automatisierter MassendatenZukuntssichere SAP Prozesse dank automatisierter Massendaten
Zukuntssichere SAP Prozesse dank automatisierter Massendaten
 
Unlocking the Potential of the Cloud for IBM Power Systems
Unlocking the Potential of the Cloud for IBM Power SystemsUnlocking the Potential of the Cloud for IBM Power Systems
Unlocking the Potential of the Cloud for IBM Power Systems
 
Crucial Considerations for AI-ready Data.pdf
Crucial Considerations for AI-ready Data.pdfCrucial Considerations for AI-ready Data.pdf
Crucial Considerations for AI-ready Data.pdf
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
 
Justifying Capacity Managment Webinar 4/10
Justifying Capacity Managment Webinar 4/10Justifying Capacity Managment Webinar 4/10
Justifying Capacity Managment Webinar 4/10
 

Recently uploaded

So You've Lost Quorum: Lessons From Accidental Downtime
So You've Lost Quorum: Lessons From Accidental DowntimeSo You've Lost Quorum: Lessons From Accidental Downtime
So You've Lost Quorum: Lessons From Accidental Downtime
ScyllaDB
 
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptxPRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
christinelarrosa
 
Northern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
Northern Engraving | Modern Metal Trim, Nameplates and Appliance PanelsNorthern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
Northern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
Northern Engraving
 
Facilitation Skills - When to Use and Why.pptx
Facilitation Skills - When to Use and Why.pptxFacilitation Skills - When to Use and Why.pptx
Facilitation Skills - When to Use and Why.pptx
Knoldus Inc.
 
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
AlexanderRichford
 
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
anilsa9823
 
ScyllaDB Real-Time Event Processing with CDC
ScyllaDB Real-Time Event Processing with CDCScyllaDB Real-Time Event Processing with CDC
ScyllaDB Real-Time Event Processing with CDC
ScyllaDB
 
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdfLee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
leebarnesutopia
 
Christine's Product Research Presentation.pptx
Christine's Product Research Presentation.pptxChristine's Product Research Presentation.pptx
Christine's Product Research Presentation.pptx
christinelarrosa
 
Day 2 - Intro to UiPath Studio Fundamentals
Day 2 - Intro to UiPath Studio FundamentalsDay 2 - Intro to UiPath Studio Fundamentals
Day 2 - Intro to UiPath Studio Fundamentals
UiPathCommunity
 
A Deep Dive into ScyllaDB's Architecture
A Deep Dive into ScyllaDB's ArchitectureA Deep Dive into ScyllaDB's Architecture
A Deep Dive into ScyllaDB's Architecture
ScyllaDB
 
Demystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through StorytellingDemystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through Storytelling
Enterprise Knowledge
 
Cost-Efficient Stream Processing with RisingWave and ScyllaDB
Cost-Efficient Stream Processing with RisingWave and ScyllaDBCost-Efficient Stream Processing with RisingWave and ScyllaDB
Cost-Efficient Stream Processing with RisingWave and ScyllaDB
ScyllaDB
 
Multivendor cloud production with VSF TR-11 - there and back again
Multivendor cloud production with VSF TR-11 - there and back againMultivendor cloud production with VSF TR-11 - there and back again
Multivendor cloud production with VSF TR-11 - there and back again
Kieran Kunhya
 
ScyllaDB Kubernetes Operator Goes Global
ScyllaDB Kubernetes Operator Goes GlobalScyllaDB Kubernetes Operator Goes Global
ScyllaDB Kubernetes Operator Goes Global
ScyllaDB
 
MongoDB to ScyllaDB: Technical Comparison and the Path to Success
MongoDB to ScyllaDB: Technical Comparison and the Path to SuccessMongoDB to ScyllaDB: Technical Comparison and the Path to Success
MongoDB to ScyllaDB: Technical Comparison and the Path to Success
ScyllaDB
 
Must Know Postgres Extension for DBA and Developer during Migration
Must Know Postgres Extension for DBA and Developer during MigrationMust Know Postgres Extension for DBA and Developer during Migration
Must Know Postgres Extension for DBA and Developer during Migration
Mydbops
 
Getting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
Getting the Most Out of ScyllaDB Monitoring: ShareChat's TipsGetting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
Getting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
ScyllaDB
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
Pablo Gómez Abajo
 
inQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
inQuba Webinar Mastering Customer Journey Management with Dr Graham HillinQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
inQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
LizaNolte
 

Recently uploaded (20)

So You've Lost Quorum: Lessons From Accidental Downtime
So You've Lost Quorum: Lessons From Accidental DowntimeSo You've Lost Quorum: Lessons From Accidental Downtime
So You've Lost Quorum: Lessons From Accidental Downtime
 
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptxPRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
PRODUCT LISTING OPTIMIZATION PRESENTATION.pptx
 
Northern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
Northern Engraving | Modern Metal Trim, Nameplates and Appliance PanelsNorthern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
Northern Engraving | Modern Metal Trim, Nameplates and Appliance Panels
 
Facilitation Skills - When to Use and Why.pptx
Facilitation Skills - When to Use and Why.pptxFacilitation Skills - When to Use and Why.pptx
Facilitation Skills - When to Use and Why.pptx
 
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
QR Secure: A Hybrid Approach Using Machine Learning and Security Validation F...
 
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
Call Girls Chennai ☎️ +91-7426014248 😍 Chennai Call Girl Beauty Girls Chennai...
 
ScyllaDB Real-Time Event Processing with CDC
ScyllaDB Real-Time Event Processing with CDCScyllaDB Real-Time Event Processing with CDC
ScyllaDB Real-Time Event Processing with CDC
 
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdfLee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
Lee Barnes - Path to Becoming an Effective Test Automation Engineer.pdf
 
Christine's Product Research Presentation.pptx
Christine's Product Research Presentation.pptxChristine's Product Research Presentation.pptx
Christine's Product Research Presentation.pptx
 
Day 2 - Intro to UiPath Studio Fundamentals
Day 2 - Intro to UiPath Studio FundamentalsDay 2 - Intro to UiPath Studio Fundamentals
Day 2 - Intro to UiPath Studio Fundamentals
 
A Deep Dive into ScyllaDB's Architecture
A Deep Dive into ScyllaDB's ArchitectureA Deep Dive into ScyllaDB's Architecture
A Deep Dive into ScyllaDB's Architecture
 
Demystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through StorytellingDemystifying Knowledge Management through Storytelling
Demystifying Knowledge Management through Storytelling
 
Cost-Efficient Stream Processing with RisingWave and ScyllaDB
Cost-Efficient Stream Processing with RisingWave and ScyllaDBCost-Efficient Stream Processing with RisingWave and ScyllaDB
Cost-Efficient Stream Processing with RisingWave and ScyllaDB
 
Multivendor cloud production with VSF TR-11 - there and back again
Multivendor cloud production with VSF TR-11 - there and back againMultivendor cloud production with VSF TR-11 - there and back again
Multivendor cloud production with VSF TR-11 - there and back again
 
ScyllaDB Kubernetes Operator Goes Global
ScyllaDB Kubernetes Operator Goes GlobalScyllaDB Kubernetes Operator Goes Global
ScyllaDB Kubernetes Operator Goes Global
 
MongoDB to ScyllaDB: Technical Comparison and the Path to Success
MongoDB to ScyllaDB: Technical Comparison and the Path to SuccessMongoDB to ScyllaDB: Technical Comparison and the Path to Success
MongoDB to ScyllaDB: Technical Comparison and the Path to Success
 
Must Know Postgres Extension for DBA and Developer during Migration
Must Know Postgres Extension for DBA and Developer during MigrationMust Know Postgres Extension for DBA and Developer during Migration
Must Know Postgres Extension for DBA and Developer during Migration
 
Getting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
Getting the Most Out of ScyllaDB Monitoring: ShareChat's TipsGetting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
Getting the Most Out of ScyllaDB Monitoring: ShareChat's Tips
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
 
inQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
inQuba Webinar Mastering Customer Journey Management with Dr Graham HillinQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
inQuba Webinar Mastering Customer Journey Management with Dr Graham Hill
 

Business Drivers Behind Data Governance

  • 2. Today’s speakers Mikkel Holmgaard Data Governance Lead Emily Washington Senior Vice President, Product Management
  • 3. “We need to govern our data!” A Typical Governance Story 3 LEADERSHIP DATA GOVERNANCE TEAM BUSINESS USERS DATA GOVERNANCE TEAM BUSINESS USERS LEADERSHIP INCITING EVENT Governance spends more time fighting data fires. Business quickly loses interest; stops attending meetings Program investment is deprioritized Asked to help with definitions, approvals, and ownership. Team is tasked with putting program in place Exec calls for a data governance program “We need to get the business involved!” “How does this help me do my job?” “We’re spending a lot more time fighting data fires. We need more meetings…” “These meetings are a waste of time!” “I’m not seeing the ROI”
  • 4. Accelerate program roll-out by 18-40% Generate 2-7x greater ROI Increase likelihood of reinvestment by over 75% Benefits of a business-first approach
  • 5. Successful programs link Data Governance to business goals
  • 6. Business goals inform your steps Data to minimize risk Data to deliver insights Data to run the business REPORTING & COMPLIANCE ANALYTICS & INSIGHTS OPERATIONAL EXCELLENCE Data protection Risk and fraud Privacy Safety Regulatory compliance Internal reporting Net Promoter Score Website traffic Targeted marketing Customer retention Buying patterns Customer 360° view Optimize working capital Enhance customer care Facilitate M&A Lower operating expenses Increase service levels Reduce attrition
  • 7. How data drives trusted business decisions Data to minimize risk Data to deliver insights Data to run the business REPORTING & COMPLIANCE ANALYTICS & INSIGHTS OPERATIONAL EXCELLENCE Data protection Risk and fraud Privacy Safety Regulatory compliance Internal reporting Net Promoter Score Website traffic Targeted marketing Customer retention Buying patterns Customer 360° view Optimize working capital Enhance customer care Facilitate M&A Lower operating expenses Increase service levels Reduce attrition
  • 8. Mapping data governance to business value Goal Org Stakeholders Expected Outcomes DG Objective DG Capabilities Improve personalization of customer products and services • Marketing • Sales • Finance • Increase NPS by 5% • 17%+ repeat customer purchases • 11% reduced churn • Establish a common view of trusted customer data assets • Data Catalog • Data Lineage • Approval Workflow • Data Integrity rules Accurate and timely credit-risk analysis • Underwriting • Loan office • Finance • 10% reduction in expected loss • 20% lower Probability of Default • Establish stage gates, rules, policies, and quality measures across credit risk analysis process • Analytics governance • Model analysis • Data quality metrics Increase user productivity by improving time-to- insights • Business Analytics • IT • Data Office • Improve decision- accuracy by 22% • Reduce time-to-insight by 45% • Launch data literacy campaign across business data SMEs • Data lineage • Data Catalog • Automated workflow Mitigate risk and facilitate regulatory compliance and reporting • Compliance Office • Finance • IT • 10% improvement to Reputation Index • 15% reduction in regulatory fines and settlements • Establish risk and control framework for regulatory drivers • PII detection • Data monitoring • Access control
  • 9. Governance as a “painkiller” and “vitamin” Goal DG Objective DG Capabilities Improve personalization of customer products and services • Establish trusted view of customer data assets • Data Catalog • Data Lineage • Approval Workflow • Data Integrity rules Accurate and timely credit-risk analysis • Underwriting • Loan office • Finance • •10% reduction in expected loss • •20% lower Probability of Default Increase user productivity by improving time-to- insights • Launch data literacy campaign across business data SMEs • Data lineage • Data Catalog • Automated workflow Mitigate risk and facilitate regulatory compliance and reporting • Establish risk and control framework for regulatory drivers • PII detection • Data monitoring • Access control Centralized collection of customer data elements used for marketing and promotion Data profile providing additional context on volume, counts, location, and contents Data lineage flow of upstream/downstream relationships Impact analysis to business processes, metrics, and analytics Approved governance ownership indicating data is certified for access and use Automated approval workflow to grant access to data at source Data integrity metrics to indicate data that is accurate, consistent, and trusted Quality monitoring to trigger notifications below acceptable values P A I N K I L L E R “ M u s t H a v e s ” V I T A M I N “ B o n u s ”
  • 10. Prioritizing what matters Goal Org Stakeholders Expected Results DG Objective DG Capabilities Improve personalization of customer goods and services Marketing Sales Finance • Increase referrals by 5% • 17%+ repeat customer purchases • 11% reduced churn • Establish a common view of trusted customer data • Data Catalog • Data Lineage • Approval Workflow • Data Integrity rules “We need to personalize our outreach to reduce churn.”
  • 11. Operational Bridging the gap between business & IT Strategic Tactical e.g., KPIs / metrics, strategic programs, data privacy & protection e.g., product development, planning, sourcing, manufacturing e.g., data migrations, system implementations, data science & engineering Critical data that drives business processes and operations Grow the Business Critical data assets that have operational, compliance and analytical business impacts Run the Business Critical information driving business goals, objectives, KPIs, and metrics Transform the Business
  • 12. Value metrics across three levels Strategic • Business Transformation Lead • CDO / Data & Analytics Lead • CIO Value Metrics: Business Impact / ROI • Process enablement • KPI’s / PPI’s Value Metrics: Performance Improvement • Data Quality (e.g. Accuracy) • # of touches Value Metrics: Efficiency & Effectiveness • Volume / counts • Completeness • Accessibility • Curation times • Scale (# Systems managed) • Data Error % (Rework %) • Cycle time vs SLA’s • Timeliness / availability • Customer sentiment • Project acceleration Operational • Business Process Lead • Data Governance Lead • Data Management Lead • Information Architect Tactical • Business Data SME • Data Analyst / Scientist • Data Steward • Data Maintenance & Quality • Data Engineer
  • 13. The Value Story • Catalog assets • Terms defined • Quality rules developed • Data owners identified • Issue requests Tactical Value (Inputs) • FTE Productivity • Data Literacy index • Adoption / NPS • Cycle time • Data sharing Strategic Value (Outcomes) • Our customer onboarding process has decreased by 25%... • We’re able to identify 33% more customers to cross-sell of lending products… • And we’ve increased FTE productivity by 20% due to data self-service … • We’ve catalogued 10,000 supplier data assets… • Defined the top 50 critical customer data assets … • Aligned on key rules and policies for each… • And our data quality is showing 90+% accuracy and consistency for customer objects… Value metrics come together at each level to tell a complete story that resonates. As a result… Lead to
  • 15. DATA GOVERNANCE IN ORIFARM A Business-first Approach to Data Governance 15
  • 16. ORIFARM: Family owned, Danish pharmaceutical company Organic Growth Expansion to rest of the Nordics and start of Generics business 1995-2005 New markets Entry in Netherlands, United Kingdom & Austria Acquisition of Viminco/Alternova 2015 - Start – up The idea takes form and the company starts in Denmark 1994-1995 30 BIG M&A Acquisition of Pharma Westen German Market 2006 300 Center of excellence Production and inbound logistics setup Czech Republic 2013 1000 Ambitious growth strategy Acquisition of Pilatus 2018 - 1200 Transformation Takeda asset acquisition 2020 1900 16 ”Parallel Import ” (Repacking) Geograpichal expansion & Functional expansion ”Generics” (CMO sourcing) Geograpical expansion Functional Consolidation Geographical expansion & Functional expansion ”pharma production” Functional expansion ”Clinical Services” & ”Unlicensed” “Towards new hights” Winning in Sales & Procurement Building scalable and efficient foundation. Grow people to grow Orifarm - 2025 +2200 Geographical expansion & Functional expansion ”CHC”, ”pharma production” Corporate Alignment & entrepreneurial
  • 17. Orifarm Data Governance Story (Preface) Pain points 17 Slow and cumbersom IT-development Confusion & Frustration Hidden misunderstanding Inconsistant information Internal expressions, business terms & abbreviations Diffient meaning of shared expressions key figures based on different definitions Solutions must be defined from scratch
  • 18. Orifarm Data Governance Story (Preface) 18 Executive Ambassadeur (Sponsor) Concept Development Forced through by CFO Joint concept development by external SME and internal employee proven by P.O.C.
  • 19. Orifarm Data Governance Story (Chapter 1) Respect business peculiarities: • Be aware of maturity/Litteracy • Choose your battles Utilize existing resources • Ensure anchoring • Align ambitions and speed • Keep costs low 19 Data Governance Board Head of Corporate IT Head of Quality Compliance Head of Corporate Development Chairman Vendor SteerCo Data Specialists Stc. Members Item SteerCo Stc. Chairman … SteerCo Data Specialists Data Specialists Stc. Members Stc. Members Stc. Chairman Stc. Chairman Data Governance Competency Centre Lead Facilitator Analyst Architect Developing the Data Governance concept
  • 20. Orifarm Data Governance Story (Chapter 2) Roll-Out according to business value • Simple DG users • Advanced DG users • IT-developers • Other Users Define individual scopes per area 20 Align abbreviations and business terms Establish Steering Committees, Communities and related workflows Show how data is defined and where it comes from. Inventorize which reports and data- sources are available and where Publish terms (and their meaning) used in reports and daily business Support introduction of report and data lifecycle management Highlight redundant data and undesired data flows Govern data quality and compliance issues Data Governance concept roll-out
  • 21. Orifarm Data Governance Story (Chapters being written) Accept strategic focus areas as Data Governance drivers • Strategy => highway • Include sideways when possible 21 IT Service Management STRATEGIC ROADMAP Process Technology People Systems & Processes Data Data, Masterdata & Data governance Enablers / out of MWB scope Business Process Management PAC community Continuous improvement ERP Application Domains Digital Centric/Enablers 2021 2022 2023 2024 2025 2025 2024 2023 2022 2021 Mission & Vision Strategic Ambition Digitalizing Quality ERP preparation ERP analysis ERP implementation Implementing digi Board Resource fluidity Agile training Legal entities Organization Roles & Responsibilities Architecture maturity Platforms Data Strategy Digital Transformation Change leadership Data Governance Relations Group Data Ownership Master Data Management Support Individual Data Ownership Data Governance Application Workflow principles and Templates Workflow Standards Data Quality Compliance? Defining the top 5 E2E processes Kick-starting PAC network Green Belt Lean Training Implementing “fit for purpose” project teams Finance process description Clean-up RFCs 1 PAC in each Department PAC = Orifarm Specialist Part of Orifarm to challenge with improvements Foundation for decisions (ERP) M&A Plug & Play model Mature & reliable core processes Business Process Transparency BPM IT Platform in place CI IT Platform in place Improvement potential for 2024 budgeted​ Tracking of all CI activities Several local initiatives from PAC Double digit savings from CI CI KPI for all departments “demo Friday” Masterdata Management is a selfsustained discipline Core Data Catalog & Confirmed Terminology Base BI solutions consolidated on new platform IT partnering program in place Data asset life cycle management Standards for data integration Strategic target: “Building scalable and efficient foundation” Corporate data platform available Data Education Program Application Portfolio Management Core Workflow Support
  • 22. Orifarm Data Governance Story (Summary) Implement a dedicated concept with utilization of existing resources Start small and adjust the journey along the way to generate a ”proven track record” Piggy bag on strategic initiatives 22
  • 23. Takeaways • Link data governance program initiatives to higher-level business goals, stakeholders, and business outcomes • Deploy data governance capabilities that directly serve as both painkillers and vitamins to protect and grow the business • Communicate Governance Value across three levels – Strategic, Operational, and Tactical • Quantify business impact with value metrics that resonate across each level
  翻译: