The shift towards a data-driven business strategy has transformed how companies achieve growth and operational efficiency. Organisations now see data as an essential asset that informs decisions and enhances customer experience. Data isn’t just for tech giants anymore; it’s a critical driver for all businesses.
Treating data as a strategic asset
Data is no longer an isolated IT concern—it’s a strategic business asset that influences every department. It powers customer insights, operational processes, and multi-channel engagement. To fully harness its value, organisations must place data at the core of their business model rather than treating it as isolated projects. Quality data consistently drives business value, especially as social networks, big data, and machine learning applications evolve.
Shifting data ownership to business teams
Organisations must see data as crucial information that supports business goals, not just as a technical resource. Business leaders, not only IT departments, should direct data’s role within strategy, while technology enables infrastructure. Creating value from data requires business-IT collaboration, with each side bringing its expertise.
Three levels of data maturity
An IDC survey of EMEA organisations highlights three data maturity levels (illustrated in Figure 1):
- Data Beginners (30%): Starting out with foundational data practices.
- Data Explorers (51%): Standardising and scaling data management.
- Data Thrivers (19%): Embedding data across culture, processes, and decision-making.
These levels represent different stages in the data journey, showing organisations’ progress toward a fully data-driven approach. An IDC white paper offers further insights to help organisations assess their own maturity level.
Take a few minutes and take the test to know the level of data maturity in your organisation.
Building a roadmap for data transformation
Understanding your data maturity is just the beginning; a defined roadmap drives effective transformation. Key questions help guide this process (as shown in the diagram):
- What is the business strategy?
Align data initiatives with specific business goals, such as increasing customer engagement, revenue, or efficiency.
- What is the current situation?
Evaluate the starting point and balance short-term use cases with building strong technological foundations. Establishing a data office—including data management, science, and engineering roles—enhances the project’s success.
- What difficulties can we expect?
Data transformation involves obstacles. Preparation is essential. Common challenges include:
- Overfocusing on either data use cases or technology.
- Delegating all data management to IT.
- Ignoring historical and cultural impacts.
- Losing sight of core business goals.
Investing time upfront in defining strategy, aligning business and IT, and establishing solid governance significantly improves the chances of a successful, scalable data transformation. A culture that embraces data helps embed it into every business decision.
Envisioning a data-driven future
Data’s role in business is growing rapidly, driven by data science, AI, and automation advances. This shift requires an integrated approach, where data quality and accessibility are prioritised. Embedding data in every aspect of the value chain positions organisations to thrive in a data-focused world.
Transforming HR with data
Data is reshaping HR, creating demand for new skills and roles in data strategy. With talent shortages in data-centric roles, companies are turning to strategic data-sharing partnerships. These collaborations support future data academies, facilitating knowledge exchange between organisations and experts.
Ethics and the future of data
As data use expands, ethical guidelines are essential. They steer responsible exploration and application. Ethical considerations also encompass environmental, social, and governance (ESG) goals, helping organisations measure and manage their impact. Data ethics supports sustainable, responsible practices that benefit society.
Conclusion
A data-driven business strategy turns data into a powerful tool for growth and efficiency. By treating data as a business asset and aligning with IT, organisations can create a balanced approach, integrating strategic vision, targeted use cases, and robust technology. This step-by-step approach, supported by in-house or external expertise, builds a sustainable foundation for long-term success in a data-centric world.
If you want to know your organisation’s data maturity level or explore data strategy further, consult our white paper From Data to Impact: Ready or Not.
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In conclusion
Managing data to create business value implies that data should no longer be considered a purely IT subject and should instead be at the centre of business issues and the strategy of organisations. It is a very powerful lever for growth, operational efficiency and differentiation.
Moving forward step by step and capitalising on internal resources or via a partner will make it possible to establish the right balance over time between the :
- Definition of the strategic vision, which translates the business strategy and feeds into acculturation, and which is based on a realistic analysis of the situation to date
- Identification of the most valuable business use cases
- Implementation of an adapted, relevant and sustainable technological base for the scaling up of data
If you want to know the level of maturity of your organisation or simply to understand data issues even better, don’t hesitate to consult our dedicated white paper From Data to Impact: Ready or Not.
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