Significance Of Data Quality Management The basic ingredient involved in controlling and monitoring business information is Data Quality Management (DQM). This application ensures that important data stored within an enterprise is reliable, accurate and complete. Organizing data is the most critical and mandatory task as the available information is meant to be shared by different people to make strategic business decisions within a company. This makes an integrated DQM application a dire necessity for any organization.
Many organizations are stacked with volumes of data, which contain off-color information. It may be noted that having clumps of unhealthy information can cause more harm to the health of a company compared to having no information at all. Therefore, it becomes essential to deploy transactional data intelligence to acquire operational efficiency, better performance and enhance bottom-line results. Volumes of data and transactions that organizations generate daily have magnified the need for data quality management.
Today’s corporate business culture lays much focus on internal controls. Unfortunately, most data management solutions fail to provide the need-driven analytics necessary to validate the effectiveness of internal controls. They generally lay more emphasis on business operations and transactional processes. Inferior data often runs through such applications, potentially defeating the purpose for which they were initially designed. Data quality issues often surface while transforming data: -
In system conversions and integration projects that accompany mergers and acquisitions. When building data banks to feed management reporting and business intelligence systems.
With the ability to rapidly maneuver huge volumes of data drawn from multiple operating systems, database structures and enterprise applications, powerful data analytics give companies acute visibility into their transactional information.
How should a company formulate a data quality management strategy?
The very first step taken on this front is to assess the current state of data within the enterprise. Post assessment, DQM policies should be evaluated along the given four parameters: -
1.Data classification: Determining the data to be maintained, degree of accuracy, compliance and completion, and timeframe to be followed. (Real-time, daily, monthly). 2.Organizational structure: Defining authority with the ultimate responsibility for maintaining data quality and laying greater emphasis on bottom-up (successful) efforts rather than top-down efforts. 3.User classification:Assigning responsibility for maintaining data quality on the user end, especially at entry and transition points. 4.Applicable Technologies:Data profiling, data standardization, data enrichment, data integration and data monitoring tools.
When determining the kind of resources and degree of involvement required in your DQM efforts, it is essential to receive active participation from all the relevant business owners and users who are responsible for any success or downfall. In order to convert every initiative into a positive outcome, it is advisable to form
a work
group of representatives from each business unit, conduct regular meetings
to discuss and update DQM policies and procedures, evaluate prevailing
technologies and tweak the existing system for gaps and success.
The
IT industry has recognized the importance of Data Quality Management, but majority of them don’t deploy the
binding technology or processes that can bring out the best possible
from their data-quality efforts. Until now, IT sector has used DQM
for fixing data in batch jobs or at a customer’s request. Many professionals
avoid using DQM technology because they are not aware of its deep-rooted
advantages. They exploit it more like demographic-data updating software.
On
the contrary, today’s DQM applications are strategic issues that need
to be dealt with careful thought and planning. They capacitate enriching
and profiling data; help companies integrate authentic data from discrepant
sources, and monitor contacts, leads and sales functions as an ongoing
process.
How will you ensure that your sales team identifies
the right prospect companies to increase your customer population?
Consulting
an Account Intelligence vendor appears to be an ideal option for quality
data management. Salesforce.com, in collaboration with OneSource.com,
help your sales teams find the right companies, contacts and industry
information to gear them for compelling sales calls.
As one
of the global leaders in on-demand business solutions provider carrying
over 2500 data sources, Salesforce.com allows you instant access to
the latest high-quality data for your accounts, contacts and leads.
Using this real-time comprehensive database of millions of global companies,
facilitates enhancing data quality, drive more business value and speed-up
prospect opportunities. OneSource Account Intelligence program, integrated
with Salesforce technology, offers to help you:
Generate more
revenue via fast and effective mass-lead generation. Turn leads
into lucrative opportunities. Make account and territory planning
much easier and efficient. Reduce gradient time for new sales staff. Study
market changes, competitive trends and industry news. Recognize
and understand your prospects in terms of contact details, company
size, structure news and possible complications. Earn credibility
and trust through industry knowledge and expertise.
In addition,
the document management capabilities empower you to manage the content
that drives business operations. Salesforce provides a common bank
for storing all documents enabling effective and consistent communication
at anytime and from anywhere. The available organizational tools and
search capabilities allow you to access these documents whenever required.
Do
you need a compatible DQM system tailored to your business needs, which
lets you organize, collect pertinent business-related information,
and make it instantly available?
|