How to build a business case for data governance

How to build a business case for data governance

There is no “one-size-fits-all” model for data governance. Nor is there a standardized initiation process. It is up to each enterprise to make a qualified business decision as to how a data governance strategy is rolled out and by whom.

While some companies may decide to commit to an enterprise-wide program, others may prefer to implement changes department by department. However, before you begin, you must understand the type of organization you represent. Further down the line, critical implementation steps are dependent on this factor.

"There is no "one-size-fits-all" model for data governance. Nor is there a standardized initiation process."

Although the scope of data governance ranges from application integrations to analytics, the maximum value of data governance is in analytics. That’s why in this blog, we’ll be focusing on analytical use cases.

Categorizing Your Organization

Before you start planning a data governance strategy, you need to identify your organization’s existing data initiatives. In general, a company's data preparedness comes under two categories, mature—in the field of data analytics—or fledgling.

A mature organization will already utilize its data for analysis and turn these insights into progressive business decisions. On the other hand, a fledgling organization will have limited warehousing facilities and may have yet to start a period of focused data-driven growth.

Here’s how to identify whether your organization is mature or fledgling:

Mature:

Fledgling:

"A mature organization will utilize its data for analysis but a fledgling organization has yet to start a period of focused data-driven growth."

Step 1: Identify and Build the Value Driver

The first step to building a business case is to understand the value of the data initiatives you have or plan to have. It’s not worth investing in a massive data platform if you don’t know the value of potential use cases.

In mature organizations, there are already various data initiatives in place. So, to understand the importance of data governance, you simply need to determine how a data governance program could help speed up or improve the efficiency of these initiatives. On the other hand, in a fledgling organization, you must determine the potential value of these initiatives first.

Mature organizations will usually have built a business case before implementing a significant web of data lakes and data warehouses. A mature organization will ask itself whether it has achieved the objectives it set out to achieve, and if not, why not.

"The primary aim of a mature organization is to establish existing problems that would be solved through a data governance program and create a new business case from this research."

In a mature organization, it can be difficult to build a definitive business case because there already exist many initiatives. The main objective is to create an inventory of these business cases and their objectives and record their successes and/or failures. The next step would be to focus on the problems you’ve identified. If any initiatives are inefficient you should focus on how to improve them. Often, data initiatives are interlinked, but many people within an organization are unaware of these connections.

The primary aim of a mature organization is to establish existing problems that would be solved through a data governance program and create a new business case from this research.

Aligning Business Goals with Business Case

When you align data governance program objectives with business goals it receives maximum traction within an organization. The following are examples of business goals and objectives:

With a fledgling organization, the aim is to build a brand new business case for data analytics and the data governance processes required to support it. In a mature organization, the business case is based on investigating and documenting existing practices, while fledgling organizations are required to start from scratch.

So, how is it done? There are three key areas that a new business case can be built from.

Generating More Revenue

The first is revenue generation. An organization’s data can’t itself grow a business, but the clever use of this data can. In healthcare, banking, technology, retail, and many other industries, there is huge potential to use data to boost the top line.

Using the healthcare industry as an example, they will receive a patient code from a doctor and then use it to bill the patient. If they can verify the legitimacy of the code, there will be less of a chance that a patient would appeal the fee and more of a likelihood that the claim will be accepted the first time. Higher approval rates will encourage more business from prospective clients.

In another example, the business case for revenue generation could be made for a retail company using data to increase profits through a targeted marketing campaign. By aiming particular products at particular customers, retail businesses can realize greater profits.

Improving Operational Efficiency

Data can be equally important for improving the operational efficiency of a company. Essentially, this improved efficiency will lead to a reduction in costs. This business case is often adopted by utility companies and organizations involved with banking and financial services.

To increase operational efficiency, you need to recognize the current state of operations within your organization and then streamline the process, perhaps through automation. To do this, you need to initiate Key Performance Indicators (KPIs) through a data warehouse.

There are many examples of how operational efficiency could be improved through data governance, but let’s focus on utilities. Let’s say an electricity provider is undergoing regular monthly maintenance based on the prescription provided by the manufacturer of its components. However, it could be the case that maintenance sessions are too frequent. This leads to both greater costs and more regular downtime.

"To increase operational efficiency, you need to recognize the current state of operations within your organization and then streamline the process. "

By optimizing the maintenance process through data analysis, you will not only save money but you will also have far fewer periods of downtime. Based on information from sensors that monitor the company’s equipment, bi-monthly maintenance tasks could be completed quarterly instead.

Reducing Risk

The third business case is risk reduction. This is usually focused on compliance issues, like adhering to the EU’s General Data Protection Regulation (GDPR). Even if a company is aware of the responsibilities they have, a data governance program can enable them to reduce the risk of unknowingly breaking compliance laws.

As a practical example, this risk reduction strategy could involve a company limiting access to certain data sets to protect PII.

Step 2: Understanding Pain Points

In a mature organization, various pain points exist. These pain points stop data initiatives from achieving their full potential. Although pain points are well known to individuals, they are usually not understood at a company-wide level. The main objective of this step is to document existing pain points and identify the potential benefits of addressing them.

To identify prominent issues, mature organizations are required to follow a particular methodology—fledgling organizations will use slightly different methods. The best way to discover these issues is to interview staff from each data-focused department, such as data warehousing, development, and implementation projects. These interviews can be conducted by you, a data governance officer, or a champion of data governance. You can also employ a data management consultant for the task.

"Although pain points are well known to individuals, they are usually not understood at a company-wide level."

You’ll need to make a list of all the problems currently affecting your organization. A pre-built template is the best resource to determine this information and will help in the interview process. With a spreadsheet like this, the time it takes to reveal the information you need is slashed because there is no requirement for brainstorming. Interviewers can simply distribute the sheet and check which problems arise.

Sample problems include: