| 
DAMA INTERNATIONAL SYMPOSIUM & WILSHIRE
META-DATA CONFERENCE
May 2-6, 2004 – Century Plaza Hotel, Los Angeles, CA USA
CONFERENCE SESSIONS
Tuesday,
May 4, 2004
10:15 am - 11:15 am
Entropy,
Energy, and Data Resource Quality
Michael Brackett
Consulting Data Architect
Data Resource Design & Remodeling
Data quality is becoming
increasingly important for every public and private sector organization,
particularly as organizations are being held accountable for the quality
of their data. However, there are many different perspectives of data
quality ranging from developing databases to integrating data to business
information. There are also many perceptions about what quality is and
the cost of Quality. This presentation steps back and takes a basic look
at quality from the standpoint of physics - entropy and energy. It covers
basic topics about:
- How data go bad
- What it takes
to maintain data good
- The costs for
collecting good data
- The costs of integrating
disparate data
- Is data quality
really free
- When is quality
good enough
Adding
Value in a Changing Environment - A Case Study
Duncan
McMillan
Enterprise Architect (Information)
Westpac Banking Corporation (NZ)
Boards change, CIOs
move on, mergers occur, parents the market evolves - the one thing that
is constant is the importance of change and the ability to implement change
within an organisation. This case study examines how the approach to Architecture
and Information Management within Westpac (NZ), one of the top banks in
New Zealand, has changed over the last 10+ years in response to changing
needs and environments, where we are now, and what lessons have been learnt.
It covers a period in which there have been both significant enterprise
successes and failures, a major take-over and varying strengths of relationships
with the parent company and between different business units within the
company. A number of different Architecture and IM approaches have been
used to gain value for the organisation and show that value has been gained.
Aspects of these approaches have been cited by Gartner as examples of
best practice.
- The Forces
- The Rise and Fall
of Towers
- Languages, People,
Politics and Money
- The Journey
- Lessons Learned
10
Great Things Which Data Administrators Can Do with Use Cases and Class
Diagrams
Susan Burk
Director - Systems Architecture
MassMutual Financial Group
Promoting early definition
and understanding of data through logical data modeling, and helping teams
understand cross-business-area impacts have been Data Administration's
greatest strengths. However, use case modeling and analysis/design class
diagramming are here to stay, especially for the development and enhancement
of operational systems. For a number of good reasons, logical data modeling
should follow use case/class modeling rather than precede it. A challenge
for Data Administrators is to reap the benefits from use case/class modeling
without having a project or the enterprise lose the unique benefits which
DA can provide. By presenting the "Top 10", the following focus
areas will be covered:
- Past, Current
and Future Role for DA for the develpment of operational systems
- Using the "modeler's
eyes" and the DA perspective to support of use case and class diagramming
techniques
- Specific aspects
of use case and class diagramming techniques which impact data modeling
and database development
- Morphing from
"Data Modelers" to "Modelers"
A
Practical Guide for Inventorying Your Data Assets
Perry
Benjamin
Data Management Specialist
The Boeing Company
An inventory of data
resources can provide an enterprise with visibility into what data it
has, where the data resides, how it is being used, and who is responsible
for it. With this visibility the enterprise can more easily integrate
its computer applications and respond more quickly to business and technological
change. This session will introduce the approach taken to develop and
populate the data inventory in use at Boeing Integrated Defense Systems.
This inventory system is comprised of a collection of COTS products integrated
by a homegrown metadata repository. Both "traditional" and object-oriented/component-based
applications are supported.
- Scope and organization
of the metadata
- Construction of
an enterprise common business object model
- Metadata capture
and change management processes
- Components of
the inventory system
- Typical use and
navigation of the inventory
Are
Business Rules Meta-Data In Disguise?
Terry Moriarty
President
Inastrol
The statement “a
premier customer is allowed to have up to five unpaid orders outstanding
at one time” represents a typical business rule. Further analysis
will result in the following questions: “What is a customer?”,
“What differentiates a premier customer from any other customer?”,
“What is an order?”. In traditional information engineering
methodologies, the answers to these types of questions are normally recorded
as meta-data in our models. When you look at the natural language statements
that are the basis of business rules, do you see the same statements that
we normally use in defining an enterprise’s meta-data? The standard
definition of the term Meta-data is “Data About Data”. However,
this definition leave a lot open to interpretation. This presentation
proposes an alternate definition that “Meta-data is the representation
of an enterprise’s business rule statements according to a classification
scheme that can be readily transformed into business information systems.”
Using this definition as its theme, this presentation provides an introduction
to the business rule approach and its relationship to meta-data.
- What are business
rules
- What is Meta-data?
- How business rule
classification schemes relate to traditional modeling techniques
- Integrating the
business rule meta-model into an organization’s meta-data model
- Demonstrates how
incorporating meta-data structures into an enterprise model can provide
the flexibility needed to support changing business rules
Building
An XML-Based Data Standard
| Bill
Hopton
Systems Consultant
Manulife Financial |
|
Branimir
Kralj
Systems Director
Manulife Financial |
The state-of-the-art
approach for interface development is to use Enterprise Application Integration
(EAI) tools. However, the full benefits of an EAI tool can be realized
only with a unified understanding of how to describe business data. If
you have a standard way to describe the data, you can de-couple systems
from each other and eliminate redundancy. The source system's data is
first transformed to the Data Standard, and then from Data Standard to
what the target system needs. We began to build our own XML based securities
data standard (trade, holdings, prices, etc) , since no single industry
standard covers all subject areas and on the other hand the applicable
standards are far more complex than what we need. Using this data standard,
the project team developed 15+ interfaces in a relatively short time.
Having gone through this exercise, we hope that as industry standards
like SWIFT, FIX and MDDL become more widely used, we will have a simpler
migration path. The steps we took to create a prototype data standard
include:
- define a Data
Dictionary with all the data elements required for our project.
- define a Catalogue
of Business Transactions, which defines the data elements involved in
each type of business event within our project scope.
- develop a way
of generating an XML Schema description of each Business Transaction.
XML is an industry standard and is the language of our EAI tool.
From
Afterthought to Asset: The Business Value of Data
Jill
Dyche
Vice President and Partner
Baseline Consulting Group
As executives continue
to scruitinize IT budgets and apply new rigor to strategic business programs,
information has evolved from a common denominator to become a strategic
business asset. In this session, author and consultant Jill Dyche makes
a case for managing data as a corporate asset and describes the business
benefits that accompany this strategy. She'll explain why business managers
should consider data management as a discrete part of every new project,
irrespective of specific architecture or software packages. She will introduce
the concept of a corporate Information Center of Excellence- an organization
that transcends high-profile business initiatives such as business intelligence
and CRM. Jill will present case studies of real-life companies who have
put strategic data management to work and reaped the rewards.
11:30 am - 12:30 pm Achieving
Data Excellence: Roadmap to Success
| Larry
Dziedzic
Technology Manager
Johnson & Johnson |
|
Maggie
O'Hara
Assistant Professor of MIS
East Carolina University |
Data quality, or the
lack thereof, has become a hot topic in business, with much attention
being given recently to the problems that may arise due to bad data. This
is not surprising, given that in 2001, The Data Warehouse Institute estimated
that dirty data cost US businesses $600 billion. Despite efforts by organizations
to eliminate bad data, however, widespread problems still exist. While
much attention has been given to defining data quality and to the impact
of poor data on the business, less attention has been given to the specific
processes involved in improving data quality. Data Quality Improvement
(DQI) to achieve data excellence is the focus of this presentation. Using
a data life-cycle approach, the presenters will demonstrate clear, concrete
steps organizations can take to improve data quality at all life-cycle
stages: capture, storage, and access. Those attending this presentation
will learn:
- The life-cycle
view of data excellence
- Strategies for
achieving data excellence at all life-cycle stages
- Three primary
areas in which DQI initiatives should focus
- How to sell a
DQI to top management
The
Training and Mentoring of Data Analysts
Janet
Siebert
Data Architect
Data Pantheon
Effective data analysis
is essential to successful IT implementations, operations, and troubleshooting.
Yet, data analysis is not a subject normally taught in universities, nor
is it a subject of many books or articles. Drawing on her background as
a professional educator and data analyst, and integrating material from
interviews with other high-performing data analysts, Ms. Siebert discusses
the fundamentals of data analysis. Additionally, the discipline of data
analysis is examined against the background of relevant theories of education
and educational psychology. Topics discussed will include:
- What are the core
competencies of successful data analysts?
- How do we deliver
more effective data analysis through training and mentoring?
- What can we learn
about improving data analysis by examining educational theory and practice?
Verbalizing
Business Rules
Terry Halpin
Professor and VP (Conceptual Modeling)
Northface University
Although business
rules may be implemented in many ways, they should first be specified
at the conceptual level, using concepts and language easily understood
by the business domain experts who are required to validate the rules.
Business rules come in many varieties, such as constraints and derivation
rules, and may be specified using graphical and/or textual languages.
The focus of this presentation is on expressing a wide variety of business
rules in a high-level, textual language that has been designed for expressibility,
clarity, formality, generality, and localizability. The rule verbalization
techniques and patterns are illustrated using practical examples. Alternative
verbalization approaches are identified to allow the techniques to be
applied to business models diagrammed in Entity Relationship, Object-Role
Modeling, or Unified Modeling Language notations.
- Using positive,
negative, and neutral verbalization patterns for rule validation
- Relational-style
verbalization vs Attribute-style verbalization
- The use of context
for verbalization of complex rules and rule sets
- Verbalizing rules
involving projections over multiple associations of any arity
- Verbalizing reaction
rules
- Making verbalizations
formal and executable
Metadata
Management Converges with Business Modeling
Joshua Fox
Sr. Software Architect
Unicorn Solutions Inc.
It is valuable to
have metadata resources in a repository. However, metadata identifiers
tend to be cryptic, oriented towards application developers, and unable
to convey relationships between various enterprise assets. Likewise, business
models help analysts and business leaders understand an enterprise. But
in many cases, the models become disconnected from reality; when models
are not used by technology implementers, they soon cease to accurately
reflect the enterprise.
Mapping metadata to
a central model combines these two approaches and brings out the best
in both of them. Metadata gains semantics, and models gain a firm grounding
in the actual enterprise infrastructure. This results in improved quality
and agility in the management and development of information assets. Existing
assets can be reused, and redundant assets can be eliminated. When the
models are synchronized with the IT infrastructure, the enterprise can
unite on a shared understanding of business concepts and processes. In
this way, linking business models and metadata in tandem increases the
value of both. The presentation will be based on real-life case studies
implementing an integrated metadata/modeling architecture in enterprises.
- The relationship
between business models and metadata repositories, and the integration
points between them.
- A methodology
for providing direct business value while implementing integration in
small steps.
- The business value
gained from this integration
Successful
Meta Data Management in Complex Siloed Systems
Sean Goggins
Principal Consultant
Ciber, Inc.
Manufacturing, medical
research and the emerging “informatics” labeled disciplines
are most often substantially concerned with the existence of inconsistently
labeled and classified data across 20 or more small “systems”
that compose an organization’s complete super-system for data creation
and analysis in these areas. It is also common for disparate versions
of systems like this to be deployed in 10 or more specific instances across
such organizations or, in some cases, customers. Traditional approaches
to data management and meta data management provide a strong but incomplete
foundation for successfully adding value to systems of this scale. Participants
in this session will gain a comprehensive, “Big Picture” view
of the challenges to consider in the development of a metadata management
strategy for organizations with complex systems that support real time
manufacturing, clinical research and informatics oriented domains. Specific,
proven “Tools of the trade” covered in this hands on workshop
include:
XML
Tools Comparison:
Cutting through the hype - what works for Data Management?
| Peter
Aiken
Founding Director
VCU/Data Blueprint |
|
David
Allen
VCU/Data Blueprint |
Much of the hype generated
around XML comes from and revolves around the various XML tools and XML
features of existing tools. This session will demonstrate the functionality
of various classes of XML tools including:
- XML editors
- Translators
- XML parsing technologies
- Servers.
Attendees will understand
how they can apply these technologies in support of their day to day data
management activities.
Database
Trends: The DBMS Landscape Circa 2004
Craig Mullins
Director, Technology Planning
BMC Software
Database Management
Systems are at the heart of most modern computer applications. Whether
you use DB2, Oracle, SQL Server, or some other DBMS, chances are you rely
on a database to store, protect, and serve your organization's data. But
what is a DBMS really? Of course, there is a simple answer at the core
that most of us know - but database technology is changing very rapidly.
This presentation will take a look at the major trends impacting DBMSs
in order to help clarify all of that new stuff your DBMS does - or will
do very soon.
1:45
pm - 2:45 pm
Using
an Enterprise Portal to Drive Global Data Architecture at Citigroup
Denis
Kosar
VP Data Architecture
Citigroup
Today, the US Government
has added more business pressures to the already changing economy. Legislation
such as Sarbanes Oxley and Basel II have changed the way corporations
in the Financial Services industry conduct business. This has had a major
impact on the way that IT has to design, maintain and report their corporate
data. This presentation will show how a metadata driven strategy has helped
Global Data Architecture at Citigroup meet these business drivers and
challenges. Using an Enterprise Portal to market data modeling, best practices,
reference data and reverse engineering services Citigroup has made the
role of Global Data Architecture not only successful but has helped them
to flourish across the enterprise.
- Overview of Citigroup
organization structure
- Roles and responsibilities
of Global Data Architecture
- Citigroup's Metadata
Framwork and Strategy
International
Cross-Enterprise Shared Data
A Framework for Business Implementation
| Simon
Dunford
Customer Business Improvement Executive
Rolls-Royce Defence |
|
Paul
Grant
EB/KM Deputy Director
Dept of Defense |
The goal of securely
sharing sensitive data across enterprises and across international boundaries
is fraught with security, commercial and regulatory pitfalls. This presentation
describes the significant progress being made by Defence primes with transatlantic
governments support to enable large Defence contracts to benefit from
real e-business advantages whilst ensuring compliance of different nations
respective national security, data protection, privacy, export control,
Sarbanes-Oxley regulations. The description of the Framework and associated
guidance will highlight how developments in:
- identity management
(of personal and assets)
- secure cross enterprise
logical information architecture,
- multi-national
export control compliance business rules,
- applying DRM
...can be used with
a revolutionary collaborative risk assessment methodology to share data
securely and profitably. The talk will close by detailing areas in which
optimization of data architecture, meta-meta data developments and data
stewardship are needed in order to enable maximum business benefit.
Enterprise
Data and Process Modeling for the
Telecommunications Industry — a case study using the E-TOM model
Robert Mattison
CEO
Excellence In Telecommunication
In this session we
will review the way that the Telecommunications industry E-TOM (Telecommunications
Operations Model) was utilized to create an entire enterprise reporting,
data warehouse, data mining and operational process quality infrastructure
for a very large, start-up telecommunications company.
Yes, it is possible
to do it right the first time, and this case study will you how it was
done!
The
Role of Metadata Management in the Construction of a Successful Data Warehouse
Kris Morris
Specialist IT Design - Enterprise Information Management
3M Company
3M’s large
and diverse Data Warehouse requires a robust, active metadata (MD) repository.
It's critical to its success to store MD, supporting the entire construction
process: data design, analysis, development, and testing & quality
assurance. 3M’s MD solution is a best practice in many ways:
- Manages data legacy
from source system through each transformation.
- Captures subject
areas data structures.
- Audits the DW,
detecting undocumented changes.
- Provides web reports
to DW developers and business users.
- Generates data
models.
- Manages ‘canonical
formats’ for internal ETL.
- Manages business
rules and error conditions.
- Defines tolerance:
data completeness and accuracy.
Components of “MD
Family”:
- MD Portal
- MD Warehouse
- MD Design Manager
(MDM), the UI
- MD Reporting (Business
Objects); (e) MD Acquisition
- MD Quality –
auditing MD; and (g) MD Engineering (“CASE” tool).
Creative
Metadata on a Shoestring!
Bonnie ONeil
President
Westridge Consulting
Learn how to exploit
inexpensive software tools to do metadata management in creative ways.
Some of the tools presented here include a bibliographic database for
rapid text/content searches, “mind mapping” software for content
management and brainstorming, and business rule management software. Topics
covered will be:
- Tools for requirements
gathering and business rule mining
- Capture metadata
from existing data in your environment
- Present data in
different formats (present data on the web with a single mouse click!)
- Turn business
rules into useful metadata
- Involve end users
Metadata:
How Far Can it Take Us?
Doug Lenat
President
Cycorp
Prepare to “upgrade”
the vision you have for your metadata strategy. After a near 20-year effort
to convert human common sense into a form that computers can understand
and use, the Cyc Knowledge Base (pronounced “psyche”) has
recently emerged into the commercial world. You can think of Cyc as a
“super-metadata” engine – providing layer upon layer
of additional understanding and context to the specific metadata already
in your systems. These extra layers of metadata then open the door for
all sorts of new and exciting applications. Cyc is an extraordinary technological
achievement will likely change the metadata landscape forever, and this
session gives you the opportunity to learn directly from its creator,
Dr. Douglas Lenat.
- What is Cyc and
the CYC Knowledge Base?
- How does Cyc provide
you with metadata?
- How is this qualitatively
different from what metadata usually provides?
- How does the layering
of more and more metadata help? What changes occur as we add these additional
layers?
- Application areas
in data management:
- Integrating
disparate databases
- Data quality
- Better search
and querying
- Semantic web
- Security and
compliance
Assessing
BI Suites and Platforms for Performance Excellence
Jonathan Wu
Senior Principal
Knightsbridge Solutions
Business Intelligence
(BI) provides individuals with the ability to easily access information
for analysis, reporting and decision-making purposes without having to
understand the associated complexities of the structured data, technical
architecture or transactional systems. Executives and managers need access
to information, which ranges from sophisticated cross-functional enterprise
analytics to trend analysis and potentially transactional data. This information
can hold the key to increased market share, customer retention, and operational
efficiency. Through BI and data warehousing technologies, individuals
can access information to monitor business activities and performance,
which is critical to success and in certain cases survival in today's
economy. The audience will learn the functionality of the leading BI suites
and reporting technologies, as the session addresses the following:
- Leading Product
Vendors
- Product Categories
- Technical Architectures
- Matching Needs
with the Corresponding Technology
3:15
pm - 4:15 pm
PANEL:
Data Modeling is Alive and Well!
Davida
Berger, Terry Halpin Graham Witt, David Hay, Chris Date
We live in a world
of ERP, packages, short-term solutions, tactile projects and outsourcing.
Some organizations have replaced corporate data architecture areas with
project teams that include database administrators but may not include
data modelers. Others only develop physical models and skip development
of the logical model. Is this the best way to proceed? Where does UML,
and ORM fit into this type of environment? What happens with project models
when a centralized data management area no longer exists? Are short-term
project models integrated or simply discarded after a project is implemented?
Is there no longer business value in business modeling? In other words
is data modeling as we know it a thing of the past. Our panel of experts
will address these questions and other controversial areas of concern
to today's data modeler.
Enterprise
Common Data Architecture - Roadmap to Integration
Daniel Paolini
Director, Data Management Services
State of NJ Office of Information Technology
An Enterprise Common
Data Architecture (ECDA) is a collection of related tools and technologies,
along with standards and policies and the methodology and the expertise
to employ them. The architecture enables real-time operational integration
as well as the delivery of integrated analytical data to different communities
in the format that each requires. The creation of an ECDA is a major yet
essential commitment to any long-term strategic initiative to support
data reusability. This architecture forms the foundation for collecting,
storing, managing and controlling privacy of and access to data on an
enterprise basis. The presentation will discuss:
- The problems and
challenges of a legacy environment
- The opposing needs
of operational and analytical systems
- The process to
create integrated operational systems
- The rational creation
of analytical solutions
- How to get IT
staff, executive management and business users to see the big picture
Can
the Warehousing Center of Excellence implement a Meta Data Repository?
Lowell Fryman
President
Metrics Consulting Corp
This session will
explore the real-world implementation of an enterprise meta data repository
by the Center of Excellence (CoE) for an international automobile-manufacturing
firm. Many companies are implementing the model were the CoE is responsible
for Pattern definition, tools, practices, and providing guidance to application
teams. However, the CoE is not responsible for implementations. In that
case how can an enterprise meta data repository be implemented and managed?
Attendees will be presented with the case study of how this issue was
resolved by this an international automobile manufacturing firm.
- What were the
options for enterprise meta data Vision, Goals, Objectives and ROI
- How to build and
engage the cross-functional evaluation team
- What was the meta
data tool evaluation process
- How to develop
the evaluation criteria and weighting
- How were the product
scored and the team achieve a recommendation consensus
- What is the enterprise
meta data architecture and how was it integrated with the application
development environment
- What were the
implementation challenges and how they were resolved
Working
with the Dublin Core Metadata Standard
David White
Lead Architect, Metadata
BellSouth Corporation
The Dublin Core is
fast becoming the standard representation of metadata that for representing
the semantic meaning of web-based documents. This presentation will introduce
the basics of the Dublin Core initiative and how your organization can
implement this standard.
- Overview of Web
based Metadata
- Dublin Core Schema,
Elements, Qualifiers, Expansion
- Dublin Core within
HTML (Metatag)
- Dublin Core within
XML (RDF)
- Dublin Core Syntax
- How BellSouth
is using Dublin Core currently, and how we will be using it in future
- Recommended starting
points for working with the standard
Metadata
and IT Service Management
Charlie Betz
Technical Consultant
Best Buy Corporation
What is configuration
management? What is the difference between incident and problem management?
What is the purpose of a capacity planning capability? These IT process
areas have increasingly formalized definitions, based on the emerging
general area of IT Service Management and its flagship standard, the UK-based
Information Technology Infrastructure Library (ITIL). ITIL has been sweeping
US Fortune 500 corporations over the past 2 years and, while it never
mentions the word “metadata,” calls for something termed a
“Configuration Management Database” (CMDB). What is the relationship
between this and the concept of a metadata repository? There are significant
overlaps and opportunities for both synergy and disharmony. This presentation
will discuss in detail the ITIL concepts as they relate to metadata. In
particular, the highly generalized data model of the ITIL CMDB concept
will be critiqued, and richer, more accurate approaches discussed. The
following points will be covered:
- History and purpose
of ITSM and ITIL, and the major players involved
- The major IT process
areas as described by ITSM
- What is a CMDB,
and how does it contrast with a metadata repository
- How process-centric
standards (ITIL, CMM) and information-centric standards (OMG, DMTF)
might be related
- The benefits of
integrating data metadata and configuration management
- Vendor directions
in these areas
Enterprise
Information Architecture for Unstructured Data
| David
Grube
Senior Information Management Analyst
Merck &Co., Inc. |
|
Marie
DeRatto
Senior Information Management Analyst
Merck &Co., Inc. |
The development of
enterprise data architecture is typically viewed only from the standpoint
of sharing common, structured data. However, for many corporations, unstructured
data comprises the majority of the information assets, and the development
of an enterprise architecture around unstructured data is an important
component of the overall enterprise information strategy. This presentation
will focus on the approach being used to develop an information architecture
for unstructured data, the unique challenges that the unstructured data
environment poses, and the approach and techniques used on a project currently
underway at a large, global pharmaceutical corporation. The key areas
of the presentation will focus on:
- The challenges
of developing enterprise information architecture for the unstructured
content world.
- Content classifications
and hierarchies, and the relationship to an enterprise information
architecture.
- Elements of content
analysis that are critical to developing enterprise information architectures.
- The development
of a metadata strategy and implementation to support enterprise information
architectures.
- The importance
of information architecture for corporate knowledge management (cross-enterprise
search and retrieval, taxonomies and categorization).
Data
Privacy and Security: What It Is, Why You Need It, and How To Do It
David Schlesinger
Intel Data Policy Governance Manager
Intel Corporation
In an increasingly
regulated data environment, Data Administration holds the key to effectively
managing HIPAA privacy issues, Sorbanes-Oxley regulation compliance, EU
privacy regulations, and other data-content related compliance requirements.
This session will show why capturing these data-specific security attributes
during data definition and application user-role development will:
- Turn your metadata
repository into an active and pivotal element of your information architecture
- Provide unprecedented
value to your developers and managers trying to comply with data-specific
regulations
The session will present
a framework from which to work to define the various types of regulated
data, and to capture it in a way that will present itself usefully to
both managers and automated security processes. New HIPAA and Sorbanes-Oxley
legislation, in addition to new privacy regulation in California and elsewhere,
make it imperative that Data Administrators identify the data elements
which require special care and security. The proper place to capture this
metadata is the metadata repository.
Wednesday,
May 5, 2004
8:30 am - 9:30 am
What
do you do when the CIO says "forget the gurus - go save me some money!"
David Newman
Senior Director of Enterprise Data Management
Radio Shack
David Newman at RadioShack
has that challenge, and is creating a comprehensive information asset
management environment that will challenge some of the conventional wisdom
around the role of today's data management organizations. He is responsible
for defining and implementing a comprehensive information management program
in a tight economic climate and an increasingly competitive industry.
He will introduce a new value proposition for Enterprise Data Management,
including:
- Compliance
Teaming with Internal Audit to help your CIO and CFO, especially in
areas such as SARBOX: How to assist Internal Audit functions with: Meta
Data Management; ETL; Data Quality Management; and Data Model Management
- Helping
Your CIO on Operational Efficiency
Identify inefficiencies in current application portfolio, such as redundant
point-point interfaces and how to create common views for a Single Version
of the Truth.
- Architecting
a better way - EDM support for EAI
Migrating to lower cost platforms, establising a common data layer and
EDM'r role in Enterprise Data Warehousing
Hear about RadioShack's
strong foundation for Information Asset Management in areas such as: Enterprise
Data Architecture; Data Governance, Change Management, Technology; Organization
and Business Application Alignment and how these can be applied in a practical,
cost-conscious manner to achieve significant benefits to the organization.
UML
for Database Design
Terry Quatrani
UML Evangelist
IBM
The Unified Modeling
Language is the standard language for visualizing, specifying, constructing
and documenting all of the artifacts for a software system. Finally database
modelers can now reap the same rewards from using the Unified Modeling
Language as application developers have been doing for years. Application
and database modelers can now speak one language - UML. No longer are
database analysts, modelers, and designers relegated to the tail end of
the development lifecycle. Now database designers can participate from
the inception of the project, helping shape those early decisions that
often have a critical impact on the system’s data. Also, being able
to link together the object and data models, and thereby improving the
understanding of both, helps yield higher quality systems. Attendees will
learn about:
- The basic UML
diagrams and how they can be used for data modeling
- The UML profile
for data modeling
- The relationship
between the UML diagrams and conceptual, logical, and physical data
modeling
- The benefits of
each UML diagram to the database designer
- How UML helps
to jumpstart their database design
Success
in a Storm: A Case Study on Wyeth Consumer Healthcare Data Architecture
April Reeve
Associate Director
Wyeth Consumer Healthcare
While many corporations
were trimming or eliminating their IS Data Architecture functions during
these last two years, Wyeth Consumer Healthcare continued to invest and
grow its Data Architecture team. Data Architecture had become a key contributor
and trusted advisor to their client organizations while other Data Architecture
organizations have struggled to prove their value within Information Technology
and their corporate organizations. This presentation will discuss the
factors and behaviors that have made Data Architecture a success at Wyeth
Consumer Healthcare.
- Why did the Wyeth
Consumer Healthcare Data Architecture organization continue to grow
even during a period of organizational downsizing?
- What were the
key differentiators between this organization and traditional approaches
taken by architectural groups?
- How did Data Architecture
become a trusted advisor?
- Why did there
remain an independent IS Architecture organization in Wyeth Consumer
Healthcare while other infrastructure organizations were being combined
into shared services for the entire Corporation?
- What are the benefits,
and struggles, of being a small organization within a much larger organization?
- How is the time
of the Data Architecture staff apportioned to various functions?
Meta
Data Exploitation for Financial Gain
Christine Craven
Customer Insight Development Programme Manage
Abbey
Increasing competition,
strategic partners, mergers and acquisitions represent some major challenges
for the organisations of today. However, effective development and exploitation
of meta data can significantly facilitate information integration requirements
associated with these challenges and at the same time provide substantial
financial benefits and improved customer service.
This presentation
will provide practical examples of how Abbey has developed and exploited
its meta data to improve its Cost : Income Ratio and eliminate some major
customer service eyesores. Testament to the success of this particular
metadata effort is that Abbey received a Wilshire Award for Metadata Best
Practices in 2003 (Highly Commended).
The
Ins and Outs of Semantic Integration
JP Morgenthal
Chief Services Architect
Software AG
Semantic integration
is a powerful superset of data and systems integration. It allows us to
integrate data and systems behind an abstract representation that provides
additional context. JP will discuss how semantics allow machines to understand
how data and systems relate to one another and then provide abstraction,
reusability and agility for future application development. He’ll
demonstrate the critical importance of metadata and explain how ontologies
improve the capability for semantic integration by providing classifications
that help to create order and improve the understanding of relationships
between entities. JP will present real-world applications of this technology
and attendees will leave with a greater understanding of:
- The power of semantic
integration
- The critical role
of metadata in semantic integration
- How ontologies
improve the capability for semantic integration
- XML and Web Services
as the standards driving dynamic integration
- New approaches
to delivering semantic integration to the enterprise
XML
vs Relational: Comparisons and Contrasts
David Plotkin
Data Quality Manager
Well Fargo Bank Consumer Credit Group
This presentation
will compare and contrast XML vs. Relational data management and technologies.
Many of the differences between them are quite clear, and their advantages
and disadvantages obvious. However that doesn't necessarily make it easy
to choose between the two, as trade-offs will always exist. David Plotkin
is a seasoned practitioner who has worked extensively with both technologies
in a variety of corporate environments. He will identify the principle
differences and similarities so that you can better understand each one,
and to enable you to make better architectural decisions in future.
- What is XML from
the data practitioner's view
- The basic assumptions
for relational data
- Relational metadata
schemas and the repository
- XML metadata schemas
and the repository
- Relational architecture
vs. XML architecture
- What relational
is really good for
- What XML is really
good for
- Querying XML vs.
querying relational
- Managing change
(flexibility) for relational vs. XML
- Cost considerations
- Comparing data
integrity
- "Future-proofing"
your decisions
The
Human Side of Data Modeling:
Proven Techniques for Improving Communication With Subject Matter Experts
Alec Sharp
Consultant
Clariteq Systems Consulting Ltd.
Above all, data models
should be viewed as a communication vehicle - a "lingua franca"
- among different stakeholders, including decision-makers, content experts,
analysts, and designers. Unfortunately, the communication often gets lost
- we data modelers can get so proficient in our world of abstraction,
generalization, and various forms of ER, OR, or class modeling that we
forget that this is not everyone's natural way to converse. The result
- goggle-eyed, confused, or frustrated subject matter experts, and therefore,
inaccurate models. Luckily, experience has shown that doesn't have to
be this way - simple techniques, consistently and regularly applied, will
go a long way to ensuring involvement, buy-in, and communication. This
presentation, based on over 20 years of successful data modeling experience,
will describe these techniques and topics such as:
- How to initiate
and proceed through a modeling session starting from scratch
- How to initiate
and proceed through a session starting with existing models
- Why you should
skip the client "tutorial" on data modeling
- The value of regular
recap presentations, and how to conduct them
- How to use IPA
- "Information Pain Analysis"
- Appealing to all
learning styles - visuals, auditories, and kinesthetic.
- Conventions for
comprehension - guidelines for data model graphics
- How to develop
entity definitions that uncover the surprises
- Using other perspectives
to add context - process workflow, use cases, and application logic/business
rules
10:00
am - 11:00 am
Challenges
for Data Architecture in a Package Environment
Dawn Michels
Senior Data Architect
Guidant Corporation
More and more companies
are embracing "off the shelf" software packages to perform their
Information Systems functions. Unique challenges to the data architecture
discipline abound. Even though companies are turning to packages, it doesn’t
mean data modeling, data design, and documentation aren’t important.
The approach is just a bit different. Many of the skills possessed by
a qualified data architect, still add value to this challenge. This presentation
will highlight some of the specific challenges as well as some techniques
for sustaining a valued data architecture function in a package environment.
- Understanding
the data layer of software packages
- Integrating corporate
data models while working with disparate packages.
- Showing continued
value of data analysis
- Discussing who
should be involved in the data modeling work
- Controlling "run-away"
programming
- Defining deliverables
that add value with package implementations
Creating
a Global Master Data Organization and Process: A Real World Case Study
Terry Haas
Director, Customer Analytics
Air Products and Chemicals, Inc.
Air Products and
Chemicals, with over $5B in sales in chemicals and specialty gases, was
implementing SAP worldwide. The first go-live highlighted the need for
a radically different approach to data management. This presentation will
describe how senior management came to this conclusion, and the steps
to define the process and establish the new dedicated organization. The
result of this 18 month journey is a new process for data management led
by a single Global Process Owner with Data Stewards in the three major
regions managing dedicated teams of data administrators. As an example,
in the North America legacy environment over 140 people could update parts
of customer master and pricing data – in the new world, this work
is done by 10 full time data administrators. Terry Haas led this project
and is currently responsible for the function. While the result is now
a success, there were some missteps and lessons learned along the way
that he will share. This is a real life case study in the formation of
a full-time data management organization and process.
- Convincing management
to change to a dedicated data management organization
- Resolving the
politics of moving roles for data management to a separate, full time
group
- Defining a workable
data management process including service level agreements
- Managing master
data management through process and quality measures
- Implementing data
quality process as well as data administration
- Defining success
Making
Your Entities Behave: Entity Life Histories
David Hay
President
Essential Strategies, Inc.
The characteristic
of object classes in object models that distinguishes them from entity
types in entity-type relationship diagrams is the specification of their
behavior. It seems a reasonable extension to suggest, then, that when
entity types representing things in the world are specified in requirements
analysis, entity/relationship models could also be extended to represent
the behavior of these entity types. The behavior of a real-world entity
type, however, is often much more complex than the list of steps that
could be captured in the lower third of a UML class box. So, while it
is appropriate to want to know what functions are performed around the
entity type, the description requires much more than a simple narrative.
Enter the entity life history. This is a technique for representing the
set of events that affect a particular entity type and the operations
that are carried out in response to those events. It represents the complexity
of different events and their effects. This paper will present the technique
with a set of examples.
- Objects, entities,
and behavior in the real world
- A sample data
model
- Events
- Event/Entity type
matrix
- Sample entity
life histories
- Activity Fragments
and operations
End-to-End
Enterprise Data Integration
Toyota's best practices for integrated metadata, data migration and data
quality management
John Gonzales
Data Quality Manager
Toyota Motor Sales
In this session,
Toyota Motor Sales will describe the best practices it successfully implemented
via an integrated data integration suite – enabling them to incorporate
metadata into data quality analyses, as well as data migration and transformation
logic, and vice versa. Toyota will detail its data integration architecture,
and discuss the key benefits it has achieved since the implementation.
These benefits include the ability to provide timely and critical information
to business experts, as well as data integration and quality analysts.
By capturing information about data modeling and architecture, source-to-target
mappings, data transformation logic and data validations, Toyota is able
to incorporate the results of its data quality analyses into its data
migration logic and quickly address potential data anomalies. This session
will illustrate:
- How to implement
enterprise data integration best practices for metadata, data quality,
data migration and data transformation.
- Key technical
benefits obtained by Toyota via their integrated data integration suite,
including reduced redundancy of data and processes, increased productivity
and lower impact off staff turnover.
- Key business benefits
obtained by Toyota via their integrated data integration suite, including
faster analysis of corporate data, more profitable decision-making and
increased confidence in corporate data.
- The do’s
and don’ts of implementing end-to-end data integration.
Proactive
Metadata-Driven Information Quality
David Loshin
President
Knowledge Integrity, Inc.
As more data is used
for multiple purposes across an enterprise, the perception of information
quality depends on the information consumer and the corresponding application
context. Fitness for use is directly related to compliance with the expectations
of how data is used by the information client, and being able to measure
compliance with those expectations can provide an objective assessment
of the quality of the data. For any data set, many consumer data quality
expectations can be refined into formal relational constraints to be incorporated
as metadata. In turn, these constraints can be used as business logic
for proactively identifying noncompliant data instances before they are
integrated or committed. This workshop focuses on a process for successively
refining naturally defined data quality requirements into formal metadata
constraints and rules, as well as techniques for using these rules as
a component of a proactive information quality assessment and monitoring
program. Attendees will learn:
- Successive refinement
of data quality expectations
- A syntactic framework
for formally defining data quality constraints
- Managing data
quality constraints as metadata
- A technique for
transforming data quality rules into operational code
A
Checklist for Building a Taxonomy
Malcolm
Chisholm
President
Askget.com Inc
Taxonomies are increasingly
important in knowledge management, but are more frequent than is often
realized, since many reference data tables are in fact taxonomies. However,
building a taxonomy can be surprisingly difficult. This presentation walks
through a checklist of items that need to be addressed for a taxonomy
to be successfully implemented. Issues that can arise from not dealing
with each item in the checklist are examined. Assuring the internal consistency
of taxonomies is also explored. The checklist also highlights the limitations
of taxonomies.
- Governance of
taxonomies, both during their design and after their implementation
- Strategies for
classifying the subjects of a taxonomy.
- Managing the different
contexts in which a taxonomy can be used.
- Managing evolution
of the taxonomy over time.
PANEL:
Data Management Imperatives for Sarbanes Oxley Compliance
Tim Mawhinney, PricewaterhouseCoopers
Christine Craven, Abbey
Legal representative TBA
This presentation
will take a look at the requirements of Sarbanes Oxley and how you in
data management organization can effectively help your organization meet
its the compliance requirements. It will look at how various organizations
are meeting their compliance needs through data quality and metadata programs,
and how you can learn from these efforts. For some organizations there
may be a requirement to disclose deficiencies in the design or operation
of internal controls within their compliance process. Because many companies
rely on their enterprise data as the foundation of theses internal controls,
there will be a growing need for the technical staff to understand the
business ramifications of these initiatives.
- Data Requirements
for Sarbanes Oxley
- Ramifications
of data quality and business semantics for compliance
- Role of metadata
in compliance
- Is it too soon
for best practices to have emerged?
11:15
am - 12:15 pm
Practical
Experience with Enterprise Data Modeling
John Sykes
Manager
The Vanguard Group
Since 1999, The Vanguard
Group has actively pursued the deployment of enterprise databases. These
databases now provide the back-bone for Vanguard's award-winning website,
as well as new CRM applications being deployed company-wide. The ongoing
Enterprise Data Modeling Effort has been critical to the successful roll-out
of these applications. This presentation will share some of our experiences,
successes and pitfalls, with the session attendee, including:
Successes:
- Adopting a maturity
model for enterprise database evolution to establish a vision and temper
expectations.
- Setting clear
and measurable objectives for the data modeling team.
- Utilizing Reverse-Engineering
to jump-start models.
- Adopting "structured
agile" data modeling techniques.
- Embracing continuous
process improvement.
Pitfalls:
- The desire for
"top-down modeling".
- Dealing with conversion
and interface teams.
- Analysis Model
(Class Diagrams) vs Logical Data Model Dilemma.
- Insufficient Metadata
for knowledge sharing.
Enterprise
Architecture: A Strategic Approach to Improving Data Quality and Restructuring
Information Management
C.
Lwanga Yonke
Manager, Information Delivery and Quality
Aera Energy LLC
This presentation
describes how Aera is using Enterprise Architecture to achieve data quality
and fundamentally restructure the way it manages information. Enterprise
Architecture Planning provided a rigorous assessment of the current state
and clearly defined the target architectures. The subsequent implementation
program is defined by an ambitious system development schedule and supported
by a comprehensive Data Quality process. It is steadily delivering the
desired state. The presentation discusses the essential components of
Aera’s approach and examines the critical success factors identified.
Enterprise Architecture has proven to be a superior means to align business
and IT, integrate people, process and technology, and reduce the costs
of information management. Topics include:
- Defining an Enterprise
Architecture Plan
- Using the Zachman
Framework as a guide
- Blending Enterprise
Architecture and Data Quality
- Choosing the right
system development methodology
- Implementation
challenges and results
- Maintaining constancy
of purpose over the years
- Real-life successes,
pitfalls, trade-offs and lessons learned
The
Table Management Distribution System:
Air Mobility Command’s Reference Data Success Story
Michele
Johnson
Deputy Chief, Data Integration Branch
United States Air Force |
|
William
Clark
TMDS Team Lead
TRI-COR Industries Inc. |
The Table Management
Distribution System (TMDS) is an Air Mobility Command (AMC) unique, on-line
information system that supports centralized control, maintenance, and
distribution of reference data. TMDS provides AMC with a single, integrated,
consistent source of reference data and distributes that data to the operational
systems as changes occur. Operational systems use this data to validate
specific data fields in operational information transactions. TMDS solves
a major gap in the operational command and control and transportation
systems by ensuring reference data are the same across the enterprise.
In addition, TMDS provides synchronized distribution, ensuring the systems
have access to updated reference data at the same time. In the past, dissimilar
reference data was a primary cause of rejected messages between systems,
causing disjointed information for decision-makers. Since the systems
have implemented data value checking and TMDS has supplied data to the
operational systems, the error rate due to data integrity dropped from
50% down to 7%.
- The background
of TMDS and why it was created
- The current process
TMDS follows in managing reference data for AMC
- TMDS success stories
- How TMDS enables
interoperability within AMC, the Air Force, and the Department of Defense
Pragmatic
ways of getting ROI on you metadata investment
Wilfred Ulmer
Data Architect
WCB Alberta
Ensuring that the
information user has the access to the right metadata that is accurate,
complete and timely is critical for any organization. This must be managed
in a pragmatic fashion to ensure continued budget support and user compliance
to standards. This presentation will identify what has and what has not
worked at the WCB to obtain return on investment of the meta data repository
(MDR) and how we are addressing changes to CASE tools, database managers
with the MDR. This workshop will provide a live demo of the repository
showing how the WCB has extended the base product to address metadata
change management. These approachs can be applied to any custome built
or purchase MDR.
- How the metadata
management strategies were implemented in a world of budget cuts.
- Live demonstration
of approaches implemented in managing the synchronization of metadata
from various meta stores including COGNOS, multiple CASE tools and database
managers.
- Strategies used
to work in a collaborative development approach with software vendors
to manage the upgrade of scanners and buses required for provisioning
metadata.
- Roles and Responsibilities
of the various agents
- Strategies to
ensure compliance to information management standards.
Efficiently
Implement Data Lineage and Impact Analysis in 100 days
Myles Chapman
IS Leader - Data Management
Best Buy Co., Inc.
Data Lineage and
Impact Analysis are key deliverables of Data Professionals. Sarbanes-Oxley
requires companies to “collect, process and disclose the information
required in the company's [financial] reports.” Implementation of
Data Lineage allows your auditors to validate the information on is accurate.
Many IS shops have aggressive service level agreements to meet. Implementing
Impact Analysis aids your development groups providing a roadmap for development
and testing of systems. This capability can find hidden dependencies before
that key job fails affecting your whole batch window.
Many companies don't
implement a metadata repository because there is no perceived financial
ROI. Best Buy has implemented a very successful metadata repository that
provides Data Lineage and Impact Analysis. This session will cover the
common tricks, tips and traps to an successful and efficient Metadata
Repository. We will share the secrets to our success, common challenges,
work-arounds.
- Data Lineage and
Impact Analysis, why is it so important?
- Minimum data required
to implement these functions
- Build vs. Purchase.
Technology considerations
- Best Buy metadata
implementation
- Tricks, tips and
traps
Managing
Metadata in Oracle
Daniel Liu
Senior Technical Consultant
First American Real Estate Solutions
There are several
different ways of managing metadata in an Oracle database environment.
Prior to Oracle9i, there are two popular methods to extract metadata from
data dictionary. The first method involves querying the data dictionary
using SQL statements. The second method involves running Export with ROWS=N,
then running Import with SHOW=Y. Oracle9i introduces a new Metadata API
(DBMS_METADATA package). It allows database users to easily retrieve complete
database object definitions (metadata) from the data dictionary. This
presentation will cover different aspects of managing metadata in Oracle
database. Attendees will also learn the new way of managing metadata in
Oracle9i using metadata API package tool.
Defining
the Financial Value of Information
Robert
Randall
Senior Consultant
The Intoinfo Consulting Group
Policies and corporate
directives on the management of organizational and public information
assets have created a new imperative for effective Information Management
(IM). However, despite such demands, scarce budgets and no commonly accepted
and understood methodology for putting a dollar value on the information
asset is impeding information management specialists in private and public
sector organizations. Information management professionals are having
difficulty convincing executive management of the investment that needs
to be made. This presentation will provide practical guidance to help
managers place a value on information assets through case studies and
tactical suggestions. The presentation format consists of the following:
- The Information
Value Proposition
- Business Drivers
for defining value
- Critical factors
in placing financial value on information assets
- Case study: Transport
Canada
- Tactical steps
for defining and communicating the financial value of information assets
1:15
pm - 2:15 pm
Information
Stewardship: From Vision to Implementation and Beyond
| Janie
Corbett
Senior Systems Consultant
Anthem Blue Cross Blue Shield |
|
Kimberly
Martin
Lead Data Architecture Analyst
Anthem Blue Cross Blue Shield |
Become a data tour
guide for information quality in your company. Learn how Anthem Blue Cross
Blue Shield’s Southeast region took poorly organized Meta data and
developed a formal information stewardship program. This presentation
will show how to create, organize and manage Business Metadata, Data Quality,
Training and Awareness, and Communications. Attendees will gain an understanding
of roles and responsibilities, value added, success criteria and measurements,
Meta data gathering tool kit, standards and guidelines, and more.
- Creating the program
- Organizing the
program:
- Data Gathering Tool Kit
- Identifying Success Criteria and measurements
- How to establish value added
- Managing:
- Business
Metadata Management
- Discovery tools
- Management Tools
- Training and Awareness:
- Information
Stewardship Website
A
Contrarian View of the ODS Value in a CIF
| Michael
Bryan
Director
Nextel Communications |
|
Ali
Tafreshi
Data Architect
Nextel Communications |
Conventional wisdom
on the role of operational data stores (ODS) in developing and managing
a corporate information factory (CIF) has been a top down approach. The
ODS has historically been an interim, staging area where CIF source data
is staged and then transformed into a data warehouse or data mart. Nextel’s
experience, however, suggests that the CIF’s value and future may
lie in its ODS rather than its integrated data warehouse. This article
advocates a bottom up approach, and challenges the conventional implementations.
The Nextel experience is summarized in the following eight misconceptions:
- Operational Data
Responsibility - The ODS can serve as a data replication point among
operational systems.
- Linkage - The
ODS allows functional analysts to translate strategic decisions into
operational actions, measuring and monitoring impact.
- Archaeology -
The ODS allows lost or incomplete business rules to be re-discovered
from the behavior of source systems.
- Requirements -
By sourcing more data than required, the ODS can isolate the CIF from
requirements changes.
- Business Case
- The ODS can justify the CIF with less discretionary and more persuasivebusiness
cases.
- Risk- The ODS
can convert the CIF’s data quality challenge from risk to service.
- Impact - The ODS
can add smaller tactical impacts from operational reporting to the benefits
of the CIF.
- Sponsorship -
The ODS allows a CIF’s sponsorship to extend beyond an analytical
champion.
Managing
Your Project Manager: A Survival Guide for Data Professionals
Karen Lopez
Principal Consultant
InfoAdvisors, Inc.
As we are asked to
do more with less, project pressures can lead to compromises, shortcuts,
and other streamlining techniques. These shortcuts influence the quality
and completeness of data management deliverables, yet most project managers
have only a high-level understanding of what we do and what we require
to do it. How will you respond when your project manager asks you how
long it will take, how much will it cost, and how your efforts should
be reflected in the project plan? This highly interactive (and sometimes
irreverent) discussion will include:
- Warning Signs:
When project pressures influence you ability deliver
- Getting It Right:
Questions to ask when estimating data management activities
- Survival Tips:
Making the best of more for less
- Resources: Where
to turn for other survival tips
How
to Implement a Quick, Low-Cost Metadata Management Program:
Janice
Tyson Wolf
Information Technology Specialist
Dept. of HUD |
|
Diana
Young
Registrar
Federal Aviation Administration |
This presentation
will show you how to leverage the work from other Federal
Agencies and save millions of dollars in metadata implementation.
- Getting Started
is not hard.
- Communication
is the key.
- Don't reinvent
the wheel.
- Get group support
through a user's group.
- Next Steps
- Benefits
Instituting
the Meta Data LifeCycle
Barbara
Nichols
Principal, Consultant
Metaview360, Inc.
Many different kinds
of tools are used to create and maintain a data warehouse, such as: data
modeling tools, data extraction, transformation and loading tools, data
quality assessors, databases, gateways, business intelligence and reporting
tools, web sites, and portals. Meta data occurs throughout the entire
process, and with the use of each kind of tool. An effective meta data
management lifecycle captures the meta data from all points in the process,
organizes it for analysis, and makes it available to all the processes
and people that need it. This presentation describes a life cycle for
meta data management, and the corresponding kinds of tool implementation
architectures that support it. The presenter has implemented this approach
successfully at multiple client sites. The presentation will cover:
- The Life Cycle
Components - It’s not an SDLC
- How Tools Enter
the Mix - An Effective Tool Approach
- Dealing with Implementation
Obstacles: Technical, Organizational, and Cultural
PANEL:
Data Management: The Next Big Thing
Tony Shaw, Wilshire Conferences
Todd Stephens, BellSouth
John Friedrich, JRFII, Inc.
Charles Betz, Best Buy
Craig Mullins, BMC Software
Neil Raden, Hired Brains
At the past two conferences
we've conducted the "Next Big Thing" panel and have correctly
identified numerous significant trends in the data world, including the
emergence of unstructured data management, privacy issues, compliance
requirements (such as Sarbox) and the increasing pace of change and evolution
in data roles. In our first panel we also predicted, quite notoriously,
the end of traditional, centralized data management as we then knew it
(we'll leave it to you to judge if we were correct on that one!). So will
we be on target again in 2004? We'll try to keep the tone of the panel
both informative and entertaining, certainly fast-paced, and most likely
controversial. By the end of the discussion we expect to have some serious
new ideas and directions for you to think about. As the conference draws
nearer we will define the topics more specifically, but here is a quick
sample of the topics we’ll be looking at:
- Major “macro”
trends shaping data management, including financial cost reduction,
outsourcing, security, real-time decision-making, customer-centricity,
compliance, regulatory influences
- What new issues
and technologies are coming that you will have to know something about?
Artificial intelligence? Autonomics? Digital rights management? Identity
management? More unstructured data? Process integration?
- What will your
job entail 2 years from now? 5 years? 10 years? Will you even be working
in the same field?
Optimizing
the Value of Metadata for Business People
Hans Yeager
Partner
SH Group
If you ask a businessperson
if metadata is important to them, he or she will more than likely say
“no”. If, however, you ask them whether it is important to
know how an element in a report was calculated, or to know how current
the information is, or to know from where the information was obtained,
you’ll likely get affirmative answers on all counts. This presentation
will help you understand what is involved in delivering a practical business
intelligence solution and covers the following five areas.
- Metadata that
is important to business people
- Approaches to
managing metadata
- Idea places to
manage business metadata
- Business intelligence
software metadata integration
Thursday,
May 6, 2004
8:30 am - 9:30 am
Establishing
Best Practices within American Century's Data Services Department
Kevin Phelps
Data Analyst - Specialist
American Century Investments, Inc.
After the Data Administration
Team was established within the Data Services Department, the standards,
processes, and work flows within the team all had to be evaluated and/or
created in order for the existing DBA Team and the newly established DA
Team to work effectively and efficiently together; as well as with the
application areas. This presentation will cover the historical and on-going
efforts to establish these “Best Practices” within our Data
Services Team, including:
- Types of Data
Models Defined
- Data Modeling
Standards
- Education to application
areas on Data Services
- Data Services
Work Flow
- Data Services
Engagement System
- XML Management
- Metadata Management
- Change Procedures
to manage all these practices
Driving
Strategic Direction and Results for Enterprise Data Architecture at Intel
Gregg Wyant
Chief Data Architect
Intel Corporation
The Chief Data Architect
at Intel Corporation will discuss the challenges of introducing Data Architecture
as a major management initiative in a large and distributed manufacturing
company. The major challenge is to illustrate to senior management the
strategic advantages of establishing an Enterprise Data Architecture,
simplifying tools and methods, managing information with the same care
as the company manages other valuable assets. He also showed his CIO level
why central administration of data can actually free businesses users
to develop more creative and useful local applications, and add greater
data security. Mention will be made of the power of the Zachman framework
to direct individual efforts, and Data Quality, as defined by Larry English,
to locate systems of origin and records of reference that could serve
the needs of the company with consistently defined business information.
The last part of the session will be open to invite senior managers and
those who are likewise involved in Enterprise Data Architecture to share
their successes and warn us of traps that lie ahead.
- Establish Enterprise
Data Architecture org and Chief Data Architect role
- Base Enterprise
Architecture on Zachman Framework
- Mandate Common
Tools and Governance Process across organization
- All data (and
its associated metadata) aligned to the Enterprise Model
- Data security
centrally administered; data access centrally controlled
Putting
"Place" in the Database - Spatial Information Storage and Use
Paul Baynham
Senior Systems Analyst
PlanGraphics, Inc.
We are witnessing
a movement of location-based information from proprietary software packages
into enterprise databases. Geographic Information Systems (GIS) has been
the domain of adepts with very specialized knowledge, and for the most
part remains so for data creation. However, a massive increase in the
amount of location-based information and the need to distribute and deploy
it over a widely disbursed enterprise has led to databases that are storing
location information in new and dynamic ways. The information about an
object in a database can now include that object's location - from a minute
bit of the human genome along the DNA double-helix to the multi-dimensional
map of the universe to the mundane coordinate of the nearest pharmacy.
This presentation will discuss the notion of location, how it might be
defined when coming up against the very small and the very large, and
the impact this may have on data modeling and management.
What
Your Mother Never Told You about Meta Data
(Including, No One Makes Their Own Bootstraps!!)
Richard
Weimar, Jr.
Senior Consultant
State of Michigan
We have just successfully
completed the first phase of the meta-Data Repository for the State of
Michigan’s welfare organization, The Family Independence Agency
(FIA). We have progressed from being “green as gourd guts”
to relatively sophisticated journeymen about what meta-data is, its true
value and how to manage it to benefit the business. We were surprised
by the significant potential value and power in good meta-data of broad
scope which we had not considered initially. We are beginning to take
advantage of these attributes. The key is - No one does this successfully
by themselves. Other people have good ideas too! Accepting this up front
and using it as the driving principle will significant contribute to a
successful project.
- Doing it Right
the First Time (for your organization), the Scope and Plan
- Getting the Business
People involved From the Beginning
- Choose a meta-Data
Management Tool Set That Fits Your Needs
- Dig ‘Till
You Find the Correct meta-Data
- Use the Repository
to Bring Data Standards to Your Organization.
- Make the Repository
Painless to Use and Pretty (Pretty Counts!)
Refactoring
Metadata: Finding Architectural Compatibility through Structural Comparisons
Baden Hughes
Research Associate
Department of Computer Science
A plethora of metadata
standards are emerging, often founded in different descriptive traditions,
and documenting an increasing variety of objects. As a consequence, there
is an increasing need to be able to compare, merge or translate metadata
between different standards. Prior to the conversion between different
metadata standards, an interoperability analysis must first be undertaken
to ensure that the correspondences between XML architectural components
(namespaces, schemas, DTDs) and XML documents (elements, nodes) are understood
and any incompatibilities resolved. Methods for such analysis are often
complex, and require reference to formal standards in order to clarify
structural relations. With the growth of metadata catalogues, there is
increasing importance of automated methods for such large scale analysis
and conversion tasks. In this paper we will first consider the influence
of metadata heritage on structural analysis approaches and review some
formal comparison methodologies. Next, we will investigate comparisons
at both an XML architecture and XML instance levels. Finally we provide
some abstracted but robust techniques for the automated analysis of metadata
instances.
- Metadata Lineage/Heritage
- Comparison Metholodogies
- Architectural
Comparisons
- Instance Comparisons
- Robust Techniques
The
Return of the Data Warehouse: This Time It's for Real
Neil Raden
President
Hired Brains, Inc.
Despite the centralization
of operational data, data that is needed for analytical processing must
be extracted, transformed and loaded into a data warehouse before it can
be used. This |