5 November 2025
Data-Driven Economy: How Data Redefines Decisions and Strategy
The data-driven economy represents a profound transformation in the way businesses, governments, and citizens interact, make decisions, and innovate. Today, data is recognised as a strategic asset essential for economic development, the personalisation of products and services, and the continuous improvement of decision-making.
We are living in an era marked by large-scale digitalisation: it is estimated that by 2025, the world will generate around 180 zettabytes (180 billion terabytes) of data — a 20% increase compared with the previous year. The global data analytics market, valued at US$82.2 billion in 2025, is projected to reach US$402.7 billion by 2032, growing at a compound annual growth rate (CAGR) of 25.5%. This scenario underscores the pivotal role of data in the digital economy and highlights its immense potential for driving innovation and efficiency.
The rapid evolution of technologies such as Artificial Intelligence (AI), Machine Learning, Edge Computing, IoT, and Blockchain is revolutionising the way data is captured, analysed, and used in real time. Increasingly accessible platforms are democratising access to data, enabling professionals from different fields to interpret complex information and extract strategic insights — fostering a collaborative and agile culture within organisations.
Companies that harness the power of data are able to deliver personalised responses, tailoring products, services, and campaigns to each customer’s profile while anticipating market trends.
In the financial sector, for example, Machine Learning algorithms are used to predict fraudulent patterns almost in real time.
In retail, predictive analytics help prepare stock for seasonal fluctuations and identify opportunities for cross-selling and up-selling.
For consumers, the result is access to relevant products, tailored experiences, and truly personalised offers. Meanwhile, governments and regulators use data to develop predictive public policies, urban planning, and more effective emergency responses — all supported by statistical analysis and AI algorithms.
A major European retailer utilised AI to forecast demand peaks during festive periods, automatically adjusting stock levels and enhancing the customer experience.
Similarly, a national bank implemented Machine Learning systems to analyse suspicious transactions, reducing fraud cases and increasing customer confidence in digital services.
These are just two examples of how technological solutions are positively transforming multiple sectors.
However, with the explosive growth of data, new challenges arise. Ensuring data quality, and not merely volume, is essential. Increasingly strict privacy and security policies, such as GDPR, demand robust data protection and governance.
It is also crucial to eliminate internal silos, promote integration between platforms, and encourage data storytelling — making complex analyses accessible at all organisational levels.
The data-driven economy is no longer just an innovative concept; it is a reality and a driving force behind both businesses and governments.
In the era of data, informed decisions lead to greater agility, personalisation, collective efficiency, and sustainable growth for society.