data governance by stealth v0.0.2

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Selling Data Governance or DG by Stealth? CHRISTOPHER BRADLEY CHIEF DATA OFFICER

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Selling Data Governance or DG by Stealth?C H R I S T O P H E R B R A D L E YC H I E F D A T A O F F I C E R

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Introduction: Who Am I?

My blog: Information Management, Life & Petrolhttp://infomanagementlifeandpetrol.blogspot.com

@InfoRacer

uk.linkedin.com/in/christophermichaelbradley/

Christopher [email protected]

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Introduction To Chris Bradley

Chris is a leading Information Management strategist with 34 years

experience in the Information Management field, Chris works with

leading organisations including Total, Barclays, ANZ, GSK, Shell, BP,

Statoil, Riyad Bank & Aramco in Data Governance, Information

Management Strategy, Data Quality & Master Data Management,

Metadata Management and Business Intelligence.

He is a Director of DAMA- I, holds the CDMP Master certification,

examiner for CDMP, a Fellow of the Chartered Institute of

Management Consulting (now IC) member of the MPO, and SME

Director of the DM Board.

A recognised thought-leader in Information Management Chris is

creator of sections of DMBoK 2.0, a columnist, a frequent

contributor to industry publications and member of standards

authorities.

He leads an experts channel on the influential BeyeNETWORK, is a

regular speaker at major international conferences, and is the co-

author of “Data Modelling For The Business – A Handbook for

aligning the business with IT using high-level data models”. He also

blogs frequently on Information Management (and motorsport).

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Recent PresentationsDAMA UK Webinar: February 2015; “An Introduction to the Information Disciplines of the

DAMA DMBoK”

Petroleum Information Management Summit 2015: February 2015, Berlin DE,

“How to succeed with MDM and Data Governance”

Enterprise Data & Business Intelligence 2014: (IRM), November 2014, London, UK “Data

Modelling 101 Workshop”

Enterprise Data World: (DataVersity), May 2014, Austin, Texas, “MDM Architectures & How to

identify the right Subject Area & tooling for your MDM strategy”

E&P Information Management Dubai: (DMBoard),17-19 March 2014, Dubai, UAE “Master

Data Management Fundamentals, Architectures & Identify the starting Data Subject Areas”

DAMA Australia: (DAMA-A),18-21 November 2013, Melbourne, Australia “DAMA DMBoK

2.0”, “Information Management Fundamentals” 1 day workshop”

Data Management & Information Quality Europe:

(IRM Conferences), 4-6 November 2013, London, UK

“Data Modelling Fundamentals” ½ day workshop:

“Myths, Fairy Tales & The Single View” Seminar

“Imaginative Innovation - A Look to the Future” DAMA Panel Discussion

IPL / Embarcadero series: June 2013, London, UK, “Implementing Effective Data

Governance”

Riyadh Information Exchange: May 2013, Riyadh, Saudi Arabia,

“Big Data – What’s the big fuss?”

Enterprise Data World: (Wilshire Conferences), May 2013, San Diego, USA, “Data and

Process Blueprinting – A practical approach for rapidly optimising Information Assets”

Data Governance & MDM Europe: (IRM Conferences), April 2013, London, “Selecting the Optimum Business approach for MDM success…. Case study with Statoil”

E&P Information Management: (SMI Conference), February 2013, London, “Case Study, Using Data Virtualisation for Real Time BI & Analytics”

E&P Data Governance: (DMBoard / DG Events), January 2013, Marrakech, Morocco, “Establishing a successful Data Governance program”

Big Data 2: (Whitehall), December 2012, London, “The Pillars of successful knowledge management”

Financial Information Management Association (FIMA): (WBR), November 2012, London; “Data Strategy as a Business Enabler”

Data Modeling Zone: (Technics), November 2012, Baltimore USA “Data Modelling for the business”

Data Management & Information Quality Europe: (IRM), November 2012, London; “All you need to know to prepare for DAMA CDMP professional certification”

ECIM Exploration & Production: September 2012, Haugesund, Norway: “Enhancing communication through the use of industry standard models; case study in E&P using WITSML”

Preparing the Business for MDM success: Threadneedles Executive breakfast briefing series,

July 2012, London

Big Data – What’s the big fuss?: (Whitehall), Big Data & Analytics, June 2012, London,

Enterprise Data World International: (DAMA / Wilshire), May 2012, Atlanta GA,

“A Model Driven Data Governance Framework For MDM - Statoil Case Study”“When Two Worlds Collide – Data and Process Architecture Synergies” (rated best workshop in conference); “Petrochemical Information Management utilising PPDM in an Enterprise Information Architecture”

Data Governance & MDM Europe: (DAMA / IRM), April 2012, London, “A Model Driven Data Governance Framework For MDM - Statoil Case Study”

AAPG Exploration & Production Data Management: April 2012, Dead Sea Jordan; “A Process For Introducing Data Governance into Large Enterprises”

PWC & Iron Mountain Corporate Information Management: March 2012, Madrid; “Information Management & Regulatory Compliance”

DAMA Scandinavia: March 2012, Stockholm, “Reducing Complexity in Information Management” (rated best presentation in conference)

Ovum IT Governance & Planning: March 2012, London; “Data Governance – An Essential Part of IT Governance”

American Express Global Technology Conference: November 2011, UK, “All An Enterprise Architect Needs To Know About Information Management”

FIMA Europe (Financial Information Management):, November 2011, London; “Confronting The Complexities Of Financial Regulation With A Customer Centric Approach; Applying IPL’s Master Data Management And Data Governance Process In Clydesdale Bank “

Data Management & Information Quality Europe: (DAMA / IRM), November 2011, London, “Assessing & Improving Information Management Effectiveness – Cambridge University Press Case Study”; “Too Good To Be True? – The Truth About Open Source BI”

ECIM Exploration & Production: September 12th 14th 2011, Haugesund, Norway: “The Role Of

Data Virtualisation In Your EIM Strategy”

Enterprise Data World International: (DAMA / Wilshire), April 2011, Chicago IL; “How Do You Want Yours Served? – The Role Of Data Virtualisation And Open Source BI”

Data Governance & MDM Europe: (DAMA / IRM), March 2011, London, “Clinical Information Data Governance”

Data Management & Information Management Europe: (DAMA / IRM), November 2010, London, “How Do You Get A Business Person To Read A Data Model?

DAMA Scandinavia: October 26th-27th 2010, Stockholm, “Incorporating ERP Systems Into Your Overall Models & Information Architecture” (rated best presentation in conference)

BPM Europe: (IRM), September 27th – 29th 2010, London,

“Learning to Love BPMN 2.0”

IPL / Composite Information Management in Pharmaceuticals: September 15th 2010, London,“Clinical Information Management – Are We The Cobblers Children?”

ECIM Exploration & Production: September 13th 15th 2010, Haugesund, Norway: “Information Challenges and Solutions” (rated best presentation in conference)

Enterprise Architecture Europe: (IRM), June 16th – 18th 2010, London: ½ day workshop; “The Evolution of Enterprise Data Modelling”

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Recent Publications

Book: “Data Modelling For The Business – A Handbook for aligning the business with IT using high-level data models”; Technics Publishing;

ISBN 978-0-9771400-7-7; http://www.amazon.com/Data-Modeling-Business-Handbook-High-Level

White Paper: “Information is at the heart of ALL Architecture disciplines”,; March 2014

Article: The Bookbinder, the Librarian & a Data Governance story ; July 2013

Article: Data Governance is about Hearts and Minds, not Technology January 2013

White Paper: “The fundamentals of Information Management”, January 2013

White Paper: “Knowledge Management – From justification to delivery”, December 2012

Article: “Chief INFORMATION Officer? Not really” Article, November 2012

White Paper: “Running a successful Knowledge Management Practice” November 2012

White Paper: “Big Data Projects are not one man shows” June 2012

Article: “IPL & Statoil’s innovative approach to Master Data Management in Statoil”, Oil IT Journal, May 2012

White Paper: “Data Modelling is NOT just for DBMS’s” April 2012

Article: “Data Governance in the Financial Services Sector” FSTech Magazine, April 2012

Article: “Data Governance, an essential component of IT Governance" March 2012

Article: “Leveraging a Model Driven approach to Master Data Management in Statoil”, Oil IT Journal, February 2012

Article: “How Data Virtualization Helps Data Integration Strategies” BeyeNETWORK (December 2011)

Article: “Approaches & Selection Criteria For organizations approaching data integration programmes” TechTarget (November 2011)

Article: Big Data – Same Problems? BeyeNETWORK and TechTarget. (July 2011)

Article “10 easy steps to evaluate Data Modelling tools” Information Management, (March 2010)

Article “How Do You Want Your Data Served?” Conspectus Magazine (February 2010)

Article “How do you want yours served (data that is)” (BeyeNETWORK January 2010)

Article “Seven deadly sins of data modelling” (BeyeNETWORK October 2009)

Article “Data Modelling is NOT just for DBMS’s” Part 1 BeyeNETWORK July 2009 and Part 2 BeyeNETWORK August 2009

Web Channel: BeyeNETWORK “Chris Bradley Expert Channel” Information Asset Management

http://www.b-eye-network.co.uk/channels/1554/

Article: “Preventing a Data Disaster” February 2009, Database Marketing Magazine

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Data Governance Foundations W H A T I S D A T A G O V E R N A N C E

W H Y D A T A G O V E R N A N C E

B U S I N E S S C A S E

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• DQ & MDM Tool

Workflow:

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DAMA FrameworkIM Disciplines (DMBoK 1)

DATA

ARCHITECTURE

MANAGEMENT

DATA

DEVELOPMENT

DATABASE

OPERATIONS

MANAGEMENT

DATA

SECURITY

MANAGEMENT

REFERENCE &

MASTER DATA

MANAGEMENT

DATA

QUALITY

MANAGEMENT

META DATA

MANAGEMENT

DOCUMENT &

CONTENT

MANAGEMENT

DATA

WAREHOUSE

& BUSINESS

INTELLIGENCE

MANAGEMENT

DATA

GOVERNANCE

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What Is Data Governance?

The Design & Execution Of Standards & Policies Covering …› Design and operation of a management system to assure that data delivers value

and is not a cost

› Who can do what to the organisation’s data and how

› Ensuring standards are set and met

› A strategic & high level view across the whole organisation

To Ensure …› Key principles/processes of effective Information Management are put into practice

› Continual improvement through the evolution of an Information Management strategy

Data Governance Is NOT …› A “one off” Tactical management exercise

› The responsibility of the Technology and IT department alone

T H E E X E R C I S E O F A U T H O R I T Y A N D C O N T R O L , P L A N N I N G , M O N I T O R I N G , A N DE N F O R C E M E N T O V E R T H E M A N A G E M E N T O F D A T A A S S E T S . ( D A M A I N T E R N A T I O N A L )

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Data governance – alternate definitions

“Data Governance is the exercise of

authority and control (planning,

monitoring, and enforcement) over

the management of data assets.”

(DAMA International)

“Data Governance is a quality control

discipline for adding new rigor and

discipline to the process of managing,

using, improving and protecting

organizational information.”

(IBM Data Governance Council)

“Data Governance is a system of

decision rights and accountabilities for

information-related processes,

executed according to agreed-upon

models which describe who can take

what actions with what information,

and when, under what circumstances,

using what methods.”

(Data Governance Institute)

“Data Governance is the formal

orchestration of people, processes,

and technology to enable an

organization to leverage data as an

enterprise asset.”

(MDM Institute)

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Data Governance – a simple definition

“The process of

managing and

improving data for

the benefit of all

stakeholders”

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Why Is Data Governance Critical?

_Higher volumes of data generated by

organisations

_Proliferation of data-centric systems

_Greater demand for reliable information

_Tighter regulatory compliance

_Competitive advantage

_Business change is no longer optional;

it’s inevitable

_Big Data explosion (and hype)

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Benefits Of Data Governance

_ Assurance and evidence that data is

managed effectively reduces regulatory

compliance risk and improves confidence

in operational and management decisions

_ Known individuals, their responsibilities and

escalation route reduces the time and

effort to resolve data issues

_Improved opportunity to rapidly and

effectively exploit information for

customer insights and competitive

advantage

_ Increased agility and capability to

respond to change and events fasterthrough joint understanding across users and IT

_Reduced system design and integration

effort

_Reduced risk of departmental silos

and duplication leading to reconciliation effort and argument

I N F O R M A T I O N T H A T I S T R U S T E D A N D F I T F O R P U R P O S E

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A typical average company loses 30% of revenue andturnover through poor data quality

Millions of UK National Health Service patient records sold to insurance firms

On average, organizations waste 15-18% of budgets dealing with datainaccuracies

The US economy loses $3.1 trillion a year because of poor data quality

Why Data Governance?

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3 motivationsfor Data

Governance2. Pre-emptive Governance

1. Reactive Governance

3. Proactive Governance

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Motivations For Data Governance

_Tactical exercise

_Efforts designed to respond to current pains

_Organisation has suffered a regulatory breach or a data disaster

R E A C T I V E G O V E R N A N C E

_Organisation is facing a major change or threats

_Designed to ward off significant issues that could affect success of the company

_Probably driven by impending regulatory & compliance needs

PRE-EMPTIVE GOVERNANCE

_Efforts designed to improve capabilities to resolve risk and data issues.

_Build on reactive governance to create an ever-increasing body of validated rules,

standards, and tested processes.

_Part of a wider Information Management strategy

PROACTIVE GOVERNANCE

“If your main motivation for Data Governance is Regulation & Compliance, the best you can ever

hope to achieve is just to be compliant”

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Aligning with Business Motivation

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What is the Business Motivation Model?

The language of strategic planning is often inconsistent. The BMM provides us with a Consistent Language to articulate business strategy.

“The BMM is a technique in which one determines an ultimate

goal and determines the best strategy for attaining the goal in

the current situation”

Mission

Strategies

Tactics

Vision

Goals

Objectives

A statement describing the aims,

values and overall plan of an organisation.

e.g. “To be the leading creator and protector of wealth.”

The strategic plan.

e.g. “Defend our current customer base to reduce churn

and increase repeat business”

A concise statement of a desired

change.

e.g. “To be the leading provider of

wealth management services in our major target markets within the next 5

years.”

A high level statement of what the

plan will achieve.

e.g. “Improve customer satisfaction

(over the next five years)”

A Course of Action that channels

efforts towards objectives

e.g. “Call first-time customers

personally”

The outcome of projects improving

capabilities, process, assets, etc.

e.g. “Develop an operational

customer call centre by June 30, 2015”

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The Business Motivation Model Example

The Motivation Model resonates well with business sponsors

› Business Stakeholders can often find business architecture models difficult to understand

› The Business Motivation model resonates well with business stakeholders allowing us to talk in Business terms

› Helps move away from point solutions to focus on business outcomes

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Validate and Refine Business Goals

_A Goal is a statement about a state or condition of the

enterprise to be brought about or sustained through

appropriate Means.

_A Goal amplifies a Vision — that is, it indicates what must be satisfied on a continuing basis to effectively attain the

Vision.

_A Goal should be narrow — focused enough that it can

be quantified by Objectives.

_A Vision, in contrast, is too broad or grand for it to be

specifically measured directly by Objectives.

However, determining whether a statement is a Vision or a

Goal is often impossible without in depth knowledge of the

context and intent of the business planners.

In light of the mission and vision and the influencer pressures, validate and refine the goals of the organisation

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Look for Levers

Derive a set of measurable levers of business value

and growth by cascading down the drivers of income

in your business.

_ The levers are intended to be durable even as business

strategy shifts.

Value levers indicate which business dimensions need

to be analysed for change projects.

_Business consultants use the matrix to understand

which business architecture dimensions have the

greatest impact on each lever, focusing attention on those dimensions most relevant to the levers in focus.

Look for levers that can help you address the goals

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Improvement

Levers ExampleIncrease price

Increase volumeImprove mix

Improve process

Reduce cost of inputsImprove warehouse

utilisation

Increase productivityDecrease staffing

Optimize scheduling

Optimize physical networkDecrease staffing

Use alternative distribution

Lower Customer Service &

Order Management Costs

Lower I/S costsLower Finance /

Accounting costs

Lower HR costs

Improve capital planning/ investment process

Reduce inventories

Reduce A/R increase A/P

o Profit-driven marketing

efforts:

• Target “best” customers

• Offer “best” product mix

• Improve pricing

management

• Proactive production

planning for inventory

management

• Most profitable capacity

allocation/utilization

o Reduced sales management

layers

o Focus on high-profit

accounts

o Improved inventory flow

visibility

• Lower transportation costs

• Higher facilities utilization

• Less “fire fighting”

o Better carrier

evaluation/mgmt.

o Higher quality Customer

Service

o Improved Supply Chain

visibility

• Improved order fill rates

• Significantly lower cost

• More consistent service

• Faster problem resolution

o Improved capital

stewardship

• Increased capital

productivity

• Reduced inventory

investment

• Reduced receivables

investment

o Automated PO

requisitions

o Improved information for

evaluating vendors

o Automation of some

scheduling functions

o Single point of entry

eliminates data re-entry

and improves accuracy

o Faster data reconciliation

o Automated billing

processes

o Automated payroll

processes

o Moderately lower safety

stock inventory

o Moderately improved

A/R and A/P

management

Increase

revenues

Decrease

costs

Reduce

selling costs

Reduce distribution

costs

Reduce administrative

costs

Increase

gross profit

Decrease

operating expenses

Capital

deployment

Cost

of capital

Increase net

operating profit after

tax (NOPAT) (I/S)

Improve

capital allocation

(B/S)

Enterprise

Value Map

VALUE LEVERS

TRANSFORMATION

BENEFIT (Outcome)

AUTOMATION

BENEFIT

Align benefits with Information

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Example Decomposition

What are our corporate goals?

What are the priorities and battlegrounds given our corporate goals?

What IT assets and data do we need to support these capabilities?

How will our business model change over the next three to five years?

What are the key capabilities that will maximize value creation in the business?

How do we optimize our IT operating model to deliver the required business capabilities?

Earn all

Our customers’

business

Drive a strong

Customer culture

Enhanced branch

Capability and

Power in frontline

Transform

Service delivery

And processes

Customer

centricity

Front office

empowerment

Channel and

Product operational

excellence

Customer

Profile

management

Relationship

managementCustomer

analytics

Offer

design

Product

management

Integrated

Data store

Enterprise

Service bus

Channel

platforms

Product

platforms

Security

platforms

End-user

computing

Customer

analytics engine

Universal

customer master

Integrated sales &

Service front end

Internet platform

transformation

Core banking

transformation

Vision

Strategic agenda

Business objectives

Business capabilities

IT capabilities

IT investments

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Where does Data

Governance Fit?

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DATAARCHITECTUREMANAGEMENT

DATADEVELOPMENT

DATABASEOPERATIONS

MANAGEMENT

DATA SECURITYMANAGEMENT

REFERENCE & MASTER DATAMANAGEMENT

DATA QUALITYMANAGEMENT

META DATAMANAGEMENT

DOCUMENT & CONTENTMANAGEMENT

DATA WAREHOUSE

& BUSINESS INTELLIGENCE

MANAGEMENT

DATA GOVERNANCE

› Enterprise Data Modelling› Value Chain Analysis› Related Data Architecture

› External Codes› Internal Codes› Customer Data› Product Data› Dimension Management

› Acquisition› Recovery› Tuning› Retention› Purging

› Standards› Classifications› Administration› Authentication› Auditing

› Analysis› Data modelling› Database Design› Implementation

› Strategy› Organisation & Roles› Policies & Standards› Issues› Valuation

› Architecture› Implementation› Training & Support› Monitoring & Tuning

› Acquisition & Storage› Backup & Recovery› Content Management› Retrieval› Retention

› Architecture› Integration› Control› Delivery

› Specification› Analysis› Measurement› Improvement

Data Governance Is At The Heart Of ALL Information Management Disciplines

Information Management Disciplines DAMA-International

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Data GovernancePart Of An Overall EIM Framework

I N F O R M A T I O N I S A T T H E H E A R T O F T H E

B U S I N E S S & M U S T B E M A N A G E D

E F F E C T I V E L Y T O D R I V E V A L U E

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Introducing Data

GovernanceB E N E F I T S & P I T F A L L S

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4 – MAYBE MORE

Organisational Models For DG

PROCESS CENTRIC

Process owner(s) become(s) the data

owner for all data created, amended

& deleted by the business process for

which he / she is responsible.

DATA CENTRIC

Business appointed FT or PT roles

accountable for improvement of key

data domains wherever created or

used across an organisation, e.g. Data

Stewardship.

SYSTEMS CENTRIC

System owner(s) become(s) the data

owner for all data created, amended

& deleted by the system for which he /

she is responsible.

CONTINGENT

There is no single best model for data

governance, either when initiating

data improvement activities, or as

Business As Usual. The best model is

dependent on the type of data and

the circumstances of each initiative, at

each stage of maturity.

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Data Governance Organisations

DATA GOVERNANCE COUNCIL

The primary and highest authority organisation for data

governance. Includes senior managers serving as

executive data stewards, DM Leader and the CIO.

DATA STEWARDSHIP STEERING COMMITTEE

One or more cross-functional groups of coordinating data

stewards responsible for support and oversight of a

particular data management initiative.

DATA STEWARDSHIP TEAM

One or more business data stewards collaborating on an

area of data management, typically within an assigned

subject area, led by a Coordinating Data Steward.

DATA GOVERNANCE OFFICE

Exists in larger organisations to support the above teams.

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Data Stewards

EXECUTIVE DATA STEWARD

Senior Managers who serve on a Data Governance

Council.

COORDINATING DATA STEWARD

Leads and represents teams of business data stewards in

discussions across teams and with executive data stewards.

Coordinating data stewards are particularly important in

large organizations.

BUSINESS DATA STEWARD

A knowledge worker and business leader recognized as a

subject matter expert who is assigned accountability for the

data specifications and data quality of specifically

assigned business entities, subject areas or databases.

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Data Governance Activities

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What’s the evidence?

_Starting “bottom up”

_Gather the facts – horror stories work well

_Undertake Data Quality profiling

_Publish DQ metrics

› Unconscious competition

› Teases out who is responsible for the data

› Improvement Projects begin to self form

› Ultimately becomes self policing

› Data Governance (lite) starts to emerge as the

way to address the issues

› Momentum & an appetite for DG created

E X P O S E T H E P R O B L E M

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Perception is important

_Don’t call it Data Governance (at least at

the start)

_Start Small

_Promote Data Improvement Projects (vs a

Data Governance strategy)

_Who is responsible for the data?

W H A T ’ S I N A N A M E ?

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Identify Best Practices

_Identify in-house good guys

_Does anyone actually do it well?

_What are current best practices

_Where is there some passion & emotion

about data, it’s quality and meaning?

_Often found in downstream areas who are

impacted day to day; e.g.

› ETL developers

› BI users

› Customer Service operators

› DBA’s

I S A N Y O N E D O I N G I T W E L L ?

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Join it up

_Identify the Islands of excellence / atoll's of

mediocrity

_Join them up

_Community of interest

_Promote as best practice

_Evolve Organisation structures

› Do not set up the target DG organisation too

early

› Have the target in mind

› Develop transition steps

I S L A N D S O F E X C E L L E N C E ?

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Land & expand

_Community of interest evolves best practices that work in your environment

› A gentle steer & guidance is always useful

› Operating models & processes emerge

_Communicate successes & widen COI

_Establish common glossaries

› Always useful across the organization

› What do you mean by XYZ?

_Infiltrate Data Governance into existing processes

› Jump on transformation programs

› “Customer First”

› Process Improvement

_Grow incrementally & eventually “top down” support emerges

U N D E R T H E R A D A R ?

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I N D E P E N D E N T O R C O E X I S T E N T ?

MDM & DG

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Be

nef

its

$

# projects / reused objects

Portfolio planning / design for reuse

Project by project / without reuse

Design for reuse: First projects hit a “cost” as there is nothing in place

that can be re-used / leveraged for

benefit.

Project based accounting

discourages infrastructure

investment.

Seed Money: To not penalise initial projects, but rather encourage them to do the “right

thing” for the corporation, seed money helps

with provision of resources, budget offset

etc.

Design for reuse: Once a few reusable artefacts, models, Master Data

objects, reusable methods, skills etc.

are established, projects start to reap

big benefits

Design in isolation: Initially no interaction outside the confines of “the

project” and just a few interfaces will

appear attractive as no wider

considerations need to be made

Design in isolation: Costs increase dramatically with Increasing number

of point to point interfaces, undo-

redo work as clashes about data

concepts explode.

Portfolio vs Per Project

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Plan Big – implement small

Business Initiative / Project 1

Some of MD area A

needed here

Some of MD area B needed here

Business Initiative / Project 2

More of MD area A

needed here

Some of MD area C needed here

More of MD area B needed here

Business Initiative / Project 3

More of MD area C

needed here

More of MD area B needed here

More of MD area A needed here

Business Initiative / Project 4

Lots of MD area D

needed here

More of MD area B needed here

More of MD area A needed here

Project4 later includes MD for

area D

MDM program cannot deliver Data Subject Area D at this time

for Project 4.Project 4 gains exemption to add

this MD later

IN THE CONTEXT OF THE BIG PICTUREIMPLEMENT MDM IN ALIGNMENT WITH BUSINESS INTITIATIVES

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A Framework For

Data Governance

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Why might DG fail?

_Lack of business leadership and commitment

_Failure to link Data Governance to organisational goals and benefits

_Giving people data responsibility but not equipping them to succeed

_Failure to focus on the data that really matters

_Placing too much emphasis on data monitoring and not data improvement

_Thinking new technology will alone solve the problems

_Forgetting Data Governance must embrace all who use data across an organisation

_Not delivering benefits early and regularly

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Data Governance Readiness Assessment

Source: R.Brennan

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Typical Data Governance Operating Models

Source: Mitre

Source: Informeta

Source: Informatica

Source: Collibra

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Common Themes In Operating Models & Frameworks

Understand Business Drivers & build a foundation

Set the Scope

Assess Current

position

Determine readiness

for DG

Build Business

Case

Understand Business

Motivation

Define the Organisation & approach to introduce DG

DG

implementation

Program

Communicatio

n plan

Organisation

structure & bodies

Education plan

Roles &

Responsibilities

Apply

Create and

apply policies

Execute

communicatio

n plan

Organisation

structure & bodies

Execute

education & mentoring

Develop & roll

out standards

& procedures

Introduce DG

Processes

Introduce

DGO

Establish Principles

Monitor, Report & Measure

Adherence

to Principles

DG Metrics

Feedback &

continuous

improvement

DG

Knowledge Base

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ESTABLISH FOUNDATION

ESTABLISH

STRATEGY

BUILD

BUSINESS CASE

AGREE DG

SCOPE

ESTABLISH

AS-IS SITUATION

ESTABLISH DG PROGRAMCREATE COMMUNICATION

STRATEGY

ORGANISATION

OWNERS STEWARDS

CUSTODIANS STAKEHOLDERS

COUNCILDG

GROUPS

WORKING

GROUPSDGO

DIRECTION

PRINCIPLES &

STANDARDSPOLICY

PROCESS PROCEDURES

Control & Report Control

& Report

REPORTING & ASSURANCE

PERFORMANCE

MANAGEMENT

CONTINUOUS

IMPROVEMENTMATURITY MODEL

Co

ntin

uo

us A

ctiv

ityIn

itial A

ctiv

ity

PLAN FOR IMPLEMENTING DATA GOVERNANCE

Typical Data Governance Operating Model

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What is the

Business Motivation

What Information do we need

to run our business

What business

processes & capabilities

must we have

What roles are

necessary to operate our

business

What systems do we

depend upon to run our business

Key is to understand the Business motivation & its operation

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Data Governance OfficeD A T A G O V E R N A N C E H A S T O U C H P O I N T S T H R O U G H O U T T H E P R O J E C T L I F E C Y C L E

V I A L I A I S O N W I T H T H E D A T A G O V E R N A N C E O F F I C E ( D G O , S I M I L A R T O P M O )

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Early Step: EIM Maturity Assessment

IM Disciplines IM Enablers

2

1.5

2

1.5

1.5

2

1.51.5

1.5

2

4

4

4

3

4

4

3.5

4

3.5

4

0

1

2

3

4

5

IM Principles

Data Governance

IM Planning

Data Quality

IM Lifecycle Management

Data Integration & Access

Data Models & Taxonomy

Metadata Management

Master Data Management

DW & BI

Information Management Maturity Assessment

Current Target

1.5

1.5

1.52

1.5

1.5

3.5

3.5

4

3.5

3

3

0

1

2

3

4

5

People

Processes

Executive Sponsorship/Leadership

Technology

Compliance

Measurement

Information Management Enablers Maturity Assessment

Current Target

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Applying The Framework

Maturity Assessment

Current Status

Vision & Strategy

Org. & People

DM & Measures

Processes & W/flows

Comms & Training

Tools & Technology

.

Roadmap

Implementation Plan

Business Justification

DG

Visio

n

Bu

sine

ss D

rive

rs

Desired State

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By aligning the various activities and providing an overarching management

framework can:

_ Identify the dependencies and boundaries of the activities,

_ Reduce the likelihood of duplication, and

_ Ensure tighter integration across the frameworks.

Architecture Framework

(TOGAF)

IT Governance

(COBIT)

Business

Analysis

(BABOK)

Data

Managemen

t

(DMBOK)

Project

Managemen

t

(PMBOK)

IT Service

Managemen

t

(ITIL)

Informs

Governs

System

Developmen

t

(SDLC)

Aligning multiple frameworks?

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Data governance must be

embedded within broader governance frameworks.

Data governance is designed

to govern the data management practices.

Data governance is informed

by the enterprise information architecture.

A closer look at Data Governance

The exercise of authority and

control (planning, monitoring, and enforcement) over the management of data assets. (DAMA International)

Data governance is NOT a

tactical one off exercise nor the responsibility of the IT Function alone

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Summary

_ Business ownership is key

_ Communication is vital

_ Must connect and align Data Governance with business

motivations, strategies and goals – current & future

_ This is not simply an IT problem. Requires holistic solutions –

people, process, and technology

_ It’s essential to outline & communicate what success can

deliver and is delivering

_ Establish the current baseline and maturity

_ Deliver early & incrementally

_ Demonstrate success & real business benefits to sustain

business support

_ Ensure accountable people are equipped to succeed –

knowledge, methods & tools; training & mentoring

_ Stealth DG is possible – up to a point

Data Governance

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[email protected]

@inforacer

uk.linkedin.com/in/christophermichaelbradley/

+44 7973 184475

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