Gartner identified the top data and analytics (D&A) trends for 2024 that are driving the emergence of a wide range of challenges, including organizational and human issues.
“The power of AI, and the increasing importance of GenAI are changing the way people work, teams collaborate, and processes operate,” says Ramke Ramakrishnan, vice-president analyst at Gartner. “Amidst this technological revolution, organizations that fail to make the transition and effectively leverage D&A, in general, and AI, in particular, will not be successful.”
Trend 1: Betting the Business
As AI continues to revolutionise industries on a strategic level, D&A leaders must demonstrate a bet-the-business skill set on AI and earn trust to lead the AI strategy within the enterprise.
“D&A leaders must demonstrate their value to the organisation by linking the capabilities they are developing and the work they do to achieve the business outcomes required by the organisation,” said Ramakrishnan. “If this is not done, issues such as misallocation of resources and underutilised investments will continue to escalate, and D&A will not be entrusted with leading the AI strategy within the organisation.”
With AI changing the way businesses are run, enterprises are heading towards a cost avalanche. D&A leaders must act by implementing a FinOps practice to establish and enforce standards and decrease expenses.
Gartner predicts by 2026, chief data and analytics officers (CDAOs) that become trusted advisors to, and partners with, the CFO in delivering business value will have elevated D&A to a strategic growth driver for the organisation.
Trend 2: Managed Complexity
Many D&A systems are delicate, and their redundancies can cause chaos and added costs.
“Leading organizations are working to turn this chaos into something they can manage – complexity. Complexity is, by definition, not an easy place to be, but acknowledging it gives a realistic understanding of the dynamic environment and helps the D&A teams in taking appropriate actions,” says Ramakrishnan.
D&A leaders need to embrace complexity by using AI-enabled tools to automate and improve productivity. This includes investing in augmented data management, decision automation, and analytics capabilities like natural language processing (NLP).
Gartner predicts that CDAOs will have adopted data fabric as a driving factor in successfully addressing data management complexity, thereby enabling them to focus on value-adding digital business priorities by 2025.
Trend 3: Be Trusted
With the increasing accessibility and efficiency of GenAI, there is a challenge in navigating a world where data reliability is constantly questioned. Lack of trust within organisations, concerns about the value and quality of data, and regulations around AI are leading to a deluge of distrust.
“If data is not trusted, it may not be used correctly to make decisions,” says Ramakrishnan.
“D&A leaders should use decision intelligence practices to build trust in data and monitor decision-making processes and outcomes. Additionally, implementing effective AI governance and responsible AI practices is crucial in establishing trust among stakeholders. It includes making data AI-ready which means it is ethically governed, secure and free from bias and is enriched to ensure more accurate responses.”
Trend 4: Empowered Workforce
“It is important that employees feel empowered through the use of AI in D&A, rather than causing them to feel threatened or frustrated by it,” says Ramakrishnan.
Organisations must invest in developing AI literacy among employees, use adaptive governance practices for effective governance, and implement a trust-based approach to managing information assets, helping individuals understand the provenance of information used by them.
“AI training is not just about quantity; it also requires a different approach. Recognise that the skill sets required for expert AI users will be very different from other users,” says Ramakrishnan. “Gartner predicts that, by 2027, more than half of CDAOs will secure funding for data literacy and AI literacy programs, fueled by enterprise failure to realise expected value from generative AI.”