Lifecycle Vocabulary Primer 9
let the volume of material overwhelm you. Not every detail of every Lifecycle
task will be performed on every project.
Finally, as we’ll further describe in Chapter 2, the Kimball Lifecycle is most
effective when used to implement projects of manageable, yet meaningful
scope. It is nearly impossible to tackle everything at once, so don’t let your
business users, fellow team members, or management force that approach.
Lifecycle Navigation Aids
Not surprisingly, the book is riddled with references to the Kimball Lifecycle.
For starters, each chapter title page includes a miniature graphic of the
Lifecycle diagram, highlighting where you are within the overall framework.
You should view this as your Lifecycle mile marker. Be forewarned that
there is not always a one-to-one relationship between mile markers and
book chapters. In some cases, a single chapter addresses multiple markers,
as in Chapter 2, which covers both program/project planning and manage-
ment. In other cases, multiple chapters cover a single mile marker, such as
Chapters 6 and 7, which discuss dimensional modeling, or Chapters 9 and 10,
which provide detailed coverage of ETL design and development.
In addition to the ‘‘you are here’’ mile markers, there’s a ‘‘blueprint for
action’’ at the end of each process-oriented chapter that includes the following
guidance and recommendations:
Managing the effort and reducing risk.
Assuring quality.
Key project team roles involved in the process.
Key deliverables.
Estimating guidelines.
Templates and other resources available on the companion book website
at
www.kimballgroup.com.
Detailed listing of project tasks.
Lifecycle Vocabulary Primer
You are inevitably anxious to jump into the details and move ahead with your
DW/BI program/project, but we first want to define several terms that are
used throughout this book. We’ll also note core vocabulary changes since the
first edition of this publication.
Unfortunately, the DW/BI industry is plagued with terminology that’s used
imprecisely or in contradictory ways. Some of the long-standing debates in
10 Chapter 1 Introducing the Kimball Lifecycle
our industry are fueled as much from misunderstandings about what others
mean by a term, as from true differences in philosophy. Though we can’t settle
the debates in this forum, we will try to be clear and consistent throughout
this text.
Data Warehouse versus Business Intelligence
As an industry, we can’t seem to reach consensus about what to call
ourselves. Traditionally, the Kimball Group has referred to the overall pro-
cess of providing information to support business decision making as data
warehousing. Delivering the entire end-to-end solution, from the source extracts
to the queries and applications that the business users interact with, has always
been one of our fundamental principles; we would never consider building
data warehouse databases without delivering the presentation and access
capabilities. This terminology is strongly tied to our legacy of books, articles,
and design tips. In fact, nearly all our Toolkit books include references to the
data warehouse in their titles.
The term business intelligence initially emerged in the 1990s to refer to the
reporting and analysis of data stored in the warehouse. When it first appeared
on the industry’s radar, several of this book’s authors were dumbfounded
about the hoopla it was generating because we’d been advocating the practices
for years. It wasn’t until we dug a little deeper that we discovered many
organizations had built data warehouses as if they were archival librarians,
without any regard to getting the data out and delivered to the business
users in a useful manner. No wonder earlier data warehouses had failed
and people were excited about BI as a vehicle to deliver on the promise of
business value!
Some folks in our industry continue to refer to data warehousing as the
overall umbrella term, with the data warehouse databases and BI layers as
subset deliverables within that context. Alternatively, others refer to business
intelligence as the overarching term, with the data warehouse relegated to
describe the central data store foundation of the overall business intelligence
environment.
Because the industry has not reached agreement, we consistently use the
phrase ‘‘data warehouse/business intelligence’’ (DW/BI) to mean the com-
plete end-to-end system. Though some would argue that you can theoretically
deliver BI without a data warehouse, and vice versa, that is ill-advised from
our perspective. Linking the two together in the DW/BI acronym further
reinforces their dependency.
Independently, we refer to the queryable data in your DW/BI system as the
enterprise data warehouse, and value-add analytics as BI applications.Inother
words, the data warehouse is the foundation for business intelligence.Wedisagree

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