The core value of business intelligence solutions is to convert
data into insights. This enables businesses to use a clear decision making process
and ultimately make better decisions, faster. The benefits can be equally as valuable
for executives making strategic decisions, as it can be for middle management, business
analysts or operations staff making tactical decisions. A business intelligence
solution must be able to integrate historical business data from multiple business
applications into a single database which is optimized for responsive querying and
analysis. To ensure that the solution is utilized long-term, desktop applications
must provide users with flexibility and the ability to perform complex analysis
without a steep learning curve.
o2olap for Excel and SQL Server offer a complete business intelligence (BI) platform that
provides the features, tools and functionality to build both classic and innovative
kinds of analytical and business intelligent applications. From data warehouse generation to reporting, o2olap
and SQL Server provide the tools you need to build scalable, secure and comprehensive BI solutions.
The most common bottleneck to making good decisions is the ability to quickly and
routinely measure business results and perform complex analysis. This bottleneck
can be the result of information being too slow to obtain, too complicated to access
or too much to analyze.
- Too slow. Standard business reports are typically dependent on
operational cycles and may not be produced for days or weeks after the close of
a period. Manual intervention may also be required to produce final formatted reports.
- Too complicated. Data from multiple corporate database systems
is often not integrated and usually only specialized technicians know how to get
to the data.
- Too much. The sheer volume of data can make analysis overwhelming.
Data often requires organization to make sense.
Today's medium sized businesses capture data about their business in many forms.
Data sources could include Web site statistics from the corporate Internet or various
intranet sites, financial and customer data in Enterprise Resource Management (ERM)
and Customer Relationship Management (CRM) databases as well as any number of custom
solutions that store data in text files, desktop productivity software or corporate
databases. The sheer volume of this data can become overwhelming. Yet merely possessing
the data, in itself, does not give the organization a competitive advantage.
The value of data is realized by putting it in the hands of business decision
makers, so that they can analyze it, put it in context and turn it into actionable
intelligence. To do this you need a solution with four main elements:
- Aggregation. Pull the data together from the many different sources
and formats. Ensure that it is consistent and accurate.
- Storage. The data must then be stored in a format that makes efficient
querying possible. It also needs to be managed and kept up-to-date.
- Modelable. The data must be modelable to produce additional business
critical information that is not present in the original data source.
- Analysis. Make the data available to decision makers through sophisticated,
yet simple to use, analysis tools.
The combination of these four elements make up what is called a business intelligence solution.
A BI solution provides knowledge workers with the data they need
to make informed business decisions. Over time, these decisions can have a dramatic
bottom-line impact on the business. For example, with a business intelligence solution,
an organization can analyze:
- Product performance. Understand sales trends, product mix and seasonality
issues, individual product profitability and product life cycle issues. Determine
which products will bring the greatest opportunity for
return on investment (ROI).
- Customer trends. Understand customer buying habits. Shift
sales and support focus on customers that will bring the greatest ROI, and devise strategies
to grow the customer base or retain existing customers.
- Marketing campaigns. Reduce the cost per lead and improve the quality
of the marketing pipeline by measuring the success of individual marketing campaigns.
- Sales performance. Measure sales interactions to help managers
identify low-performing areas and spotlight the most successful sales channels.
- Customer Service incidents. Analysis of customer service data may
focus on evaluating efficiency of the customer service center. It may be desirable
to analyze cost per request, customer, product or customer service
representative. This analysis can help management determine if changes are required,
such as additional headcount, improved documentation, increased training, changes
in pricing structure for service calls or customer self-help options.
- Order and shipment trends. Optimize production through more efficient
inventory management, reduce or eliminate shipping backlogs, help sales set accurate
expectations for product delivery and negotiate lower shipping costs by understanding
order and shipment trends.
- Inventory Levels. Reduce inventory costs by more accurately anticipating
inventory needs. Measure seasonal and sales trends to forecast future demand.
- Web site statistics. Correlate the volume and origin of Web site
visits with marketing and advertising campaigns. Optimize navigation by analyzing
traffic patterns.
- Point-of-Sale data. Analysis of retail sales data may focus on
store operation, including measures and key performance indicators (KPIs) to support
sales performance, fraud detection, store performance and marketing campaign analysis.
To learn more about the many
uses for Business Intelligence, please
contact
o2olap.
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