DECEMBER - JANUARYCIOAPPLICATIONSEUROPE.COM9the businesses within and organisation is crucial. Data governance frameworks andprotocols play a key role in ensuring long-term sustainability.2) Data Quality: Data Quality has been a topic of discussion since the inception of data warehouses in the 1990s, but until recently, had never gained the right visibility or focus to shift the dial. As volumes increase and technology is further advanced, data quality has been recognised for its critical role in ensuring accurate and timely inferences are made from data for decisions and for data-driven customer engagement. Regulators are increasingly putting a high importance on data quality. The other key important factor is the role of quality in supporting initiatives in AIif the quality is not right outcomes can be diluted. Where to from here?Against this backdrop, we are seeing lot of examples where organisations are being forced to move quickly in governance and quality managementthis is usually driven by regulatory and compliance pressures. This is not ideal nor are these investments perceived as `growth related'. It is important for data and analytics leaders to balance and communicate the context whilst approaching actions in a more strategic and pre-emptive manner.It would be prudent to rapidly assess your organisation against industry, local and global standards such as data management capability assessment model (DCAM) to understand your current position. Then the next step is making a start: this is important since governance and quality programs can take a prolonged period to initiate/implement depending on the size and complexity of the organisation and the level of business awareness and sponsorship. Active business participation in every stage is critical for the success of governance and quality initiatives.Making technology choices and implementations can often be tricky. In many cases where issues such as data lineage must be addressed, rework is often required and migrations to new tools can be expensive, time consuming and difficult to obtain stakeholder buy-in. Pragmatically selecting technology must often be balanced between the future data strategy (e.g. Cloud, Data fabric) and existing legacy systems. Some of the usual challenges are it is often difficult to retrofit capabilities such as quality. The key to success is striking the balance between the focus on getting Governance and Quality right whilst keeping up with the progress required to take the Data Strategy forward. Whichever way it is addressed, the key is to ensure that both Governance and Quality are embedded in the Growth strategies in Data. Active business participation in every stage is critical for the success of governance and quality initiatives
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