Global Marketing Alliance

Squaring the Data Governance circle

Janani Dumbleton (pictured) discusses the importance of data quality.Janani Dumbleton

More and more organisations are starting to understand how critical quality data is in achieving their strategic objectives, not to mention ensuring customer satisfaction. Accurate, complete data that is consistent with legal requirements and business rules can have a profound impact on a business’ long-term success.

However, while there is a growing consensus about the importance of quality data, the understanding of how to achieve it still lags behind – with organisations often focusing on short term fixes or projects to bring their data ‘up to scratch’, but then failing to follow this up with appropriate governance to maintain that new found quality. This makes it only a matter of time before another data quality drive is needed.

Data governance, the process of planning, monitoring and enforcing the management of data assets, is a key component of long-term data quality. It ensures that data is captured accurately and that this accuracy is maintained, no matter how long it is stored for, to avoid the expense of repeated data quality initiatives.

So why are so many organisations still shying away from a proper data governance structure when it makes such obvious business sense?

It all comes down to responsibility – without a single responsible person (or department) driving for a proper governance programme, it will invariably flounder. While some organisations are starting to create Data Quality roles and departments, there are few with a similar set up for Data Governance, and without this structure to report and feed back into, those responsible for data quality will frequently be cast in the role of fire fighter.

What is a data governance framework?

While there is no one size fits all approach, there are certain elements of a data governance framework that can be applied across the board.

1) A robust policy stating that your company requires proper data governance is integral in achieving the wider support needed for any initiative on a long-term basis.

2) Just as with any successful data quality programme, it is essential to have clearly defined and documented processes in place – setting out how things such as data quality reporting and data quality issue management should be handled.

3) As mentioned earlier, responsibility is key. Defining who is responsible for data (governance and quality) is at the corner stone of any data improvement.

How do you implement a successful data governance programme?

1) Analyse. This means:

2) Improve. This means:

3) Take control. This means:

Taking these steps, and embedding them within your organisation will help to ensure that data quality and governance become entwined in a symbiotic relationship. This will help to deliver long-term benefits for the organisation as a whole, and help you to capitalise on the benefits that data quality can bring in a sustainable manner.

Janani Dumbleton is principal consultant, Data Quality Propositions, Thought Leadership at Experian Data Quality UK.

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