Editor's note: This
chapter excerpt from Business Intelligence: The Savvy
Manager's Guide
by David Loshin focuses on the applications
of
business intelligence (BI). It is an excerpt of chapter two,
"The Value of Business Intelligence."It is interesting to note the different uses of data and the
contexts of each use as it pertains to the exploitation of
information. For the most part, we can break those into two areas.
The first area is operational data use, and the other is strategic
use. The predominant use of information today is operational: how
data helps run the business, as opposed to strategic information
use, which helps improve the business.
Clearly these both are valuable, and without the operational use
of information a business could not survive. But it is up to the
information consumer to determine the extent of the value to be
derived from the strategic use of information as well as what
strategic uses are of importance. In this section we review some of
the strategic uses of information as manifested through BI
analytics. Note that although many of these analytic applications
may be categorized within a specific business domain, many of them
depend on each other within the business context.
@35305 Customer analytics
A common, overused term is customer relationship management
(CRM), which has become a buzzword implying an all-encompassing
magic bullet to turn all contacts into customers and all customers
into great customers. The magic of CRM is actually based on a
number of customer analytic functions that together help people in
a company better understand who their customers are and how to
maximize the value of each customer. The results of these analytics
can be used to enhance the customer's experience as well.
Following are different aspects of customer analytics that
benefit the sales, marketing, and service organizations as they
interact with the customers.
- Customer profiling: The bulk of marketing traditionally
casts a wide net and hopes to capture as many individuals as
possible. Companies are realizing that all customers are not clones
of some predefined market segment but are thinking individuals. To
this end, customer analytics encompass the continuous refinement of
individual customer profiles that incorporate demographic,
psychographic, and behavioral data about each individual.
- Targeted marketing: Knowledge of a set of customer likes
and dislikes can augment a marketing campaign to target small
clusters of customers that share profiles. In fact, laser-style
marketing is focused directly at individuals as a by-product of
customer analytics.
- Personalization: As more business moves online, the
browser acts as a proxy for the company's first interface with the
customer. Personalization, which is the process of crafting a
presentation to the customer based on that customer's profile, is
the modern-day counterpart to the old-fashioned salesperson who
remembers everything about his or her individual "accounts." Web
site personalization exploits customer profiles to dynamically
collect content designed for an individual, and it is meant to
enhance that customer's experience.
- Collaborative filtering: We have all seen e-commerce Web
sites that suggest alternate or additional purchases based on other
people's preferences. In other words, the information on a Web page
may suggest that "people who have purchased product X also have
purchased product Y." These kinds of suggestions are the result of
a process called collaborative filtering, which evaluates the
similarity between the preferences of groups of customers. This
kind of recommendation generation
- Customer satisfaction: Another benefit of the customer
profile is the ability to provide customer information to the
customer satisfaction representatives. This can improve these
representatives' ability to deal with the customer and expedite
problem resolution.
- Customer lifetime value: How does a company determine
who their best customers are? The lifetime value of a customer is a
measure of a customer's profitability over the lifetime of the
relationship, which incorporates the costs associated with managing
that relationship and the revenues expected from that customer.
Customer analytics incorporates metrics for measuring customer
lifetime value.
- Customer loyalty: It is said that a company's best new
customers are its current customers. This means that a company's
best opportunities for new sales are with those customers that are
already happy with that company's products or services. Customer
analytics help.
Human capital productivity analytics
One way to attain value internally from BI is to be able to
streamline and optimize people within the organization,
including:
- Call center utilization and optimization: If you have
ever dawdled while on hold, waiting for a customer service
representative to pick up the telephone, you can understand the
value of analyzing call center utilization to look for ways to
improve throughput and decrease customer waiting time. When a
company's management realizes that inbound calls are likely to be
from unsatisfied customers, making them stew on the phone is not
going to improve customer satisfaction. In the more advanced cases,
quick access to customer profile information may also affect the
level of support provided to each customer (e.g., high level to
high-value customers, minimal support to low-value customers).
- Production effectiveness: This includes evaluating
on-time performance, labor costs, production yield, etc., all as
factors of how staff members work. This information can also be
integrated into an information repository and analyzed for
value.
Business productivity analytics
Another popular analytic realm involves business productivity
metrics and analysis, including:
- Defect analysis: While companies struggle to improve
quality production, there may be specific factors that affect the
number of defective items produced, such as time of day, the source
of raw materials used, and even the individuals who staff a
production line. These factors can be exposed through one component
of business productivity analytics.
- Capacity planning and optimization: Understanding
resource utilization for all aspects of a physical plant (i.e., all
aspects of the machinery, personnel, expected throughput, raw input
requirements, warehousing, just-in-time production, etc.) through a
BI analytics process can assist management in resource planning and
staffing.
- Financial reporting: Stricter industry regulatory
constraints may force companies to provide documentation about
their financials, especially in a time when companies are failing
due to misstated or inaccurately stated results. In addition,
financial reporting analytics provide the means for high-level
executives to take the pulse of the company and drill down on
particular areas.
- Risk management: Having greater accuracy or precision in
tracking business processes and productivity allows a manager to
make better decisions about how and when to allocate resources in a
way that minimizes risk to the organization. In addition, risk
analysis can be factored into business decisions regarding the kind
of arrangements that are negotiated with partners and
suppliers.
- Just-in-time: The concept of just-in-time product
development revolves around the mitigation of inventory risk
associated with commodity products with high price volatility. For
example, the commodity desktop computer business is driven by
successive generations of commodity components (disk drives, CPUs,
DRAM memory chips, to name a few). Should a vendor purchase these
items in large quantity and then come up against a low-sales
quarter, that vendor might be stuck with components sitting on the
shelf whose commodity value is rapidly declining. To alleviate
this, the knowledge of how quickly the production team can assemble
a product, along with sales channel information and supplier
information (see Sales Channel Analytics and Supply Chain Analytics
on page 21) can help in accurately delivering products built to
customer order within a predictable amount of time.
- Asset management and resource planning: Utilization,
productivity, and asset lifecycle information can be integrated
through business analytics to provide insight into short- and
long-term resource planning, as well as exposing optimal ways to
manage corporate assets to support the resource plan.
>>
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Printed with permission from Morgan Kaufmann, a division of
Elsevier. Copyright 2003. Business Intelligence: The Savvy
Manager's Guide by David Loshin. For more information about
this book and other similar titles, please visit
www.mkp.com.
David Loshin is president and CTO of Knowledge Integrity Inc. a
technical consulting firm that helps businesses address problems
arising from the collection, migration, transmission and analysis
of large sets of data. He holds a master's degree in computer
science from Cornell University and is the author of several books,
including Enterprise Knowledge Management (2001), and
High Performance Computing Demystified (1994).