Balancing “Data” and “Digital”
In today’s corporate environments, the words "data" and "digital" are often used interchangeably, but they carry distinct meanings and implications depending on the context. Understanding how these terms are related – and where they diverge – can have a significant impact on how organizations approach their business and data strategies. Let’s look at four different perspectives on how "data" and "digital" are used, especially as companies focus on data management, governance, analytics, AI, and AI governance.
First, there’s the technology perspective, where "digital" often refers to the tools and platforms that transform analog processes into electronic, automated workflows. Here, "data" is viewed as the raw material fueling these digital systems. For many organizations, this transformation means digitizing legacy systems and ensuring that data is properly captured, stored, and processed. Companies are heavily investing in "going digital," which is often equated with moving to the cloud or automating tasks, but without a focus on the underlying data, digital efforts can lack direction. Without reliable, well-governed data, the success of these digital initiatives is in jeopardy.
From this perspective, while "digital" is typically about the technology enabling business operations, "data" is the element that provides value to these digital systems. The power of digital tools depends entirely on the quality of the data they process. This means that an organization’s ability to optimize its digital transformation is directly linked to how well it handles data. Poor data quality can undermine even the most advanced digital platforms, turning them from innovation drivers into costly burdens. For a true digital transformation, organizations must prioritize data from the outset, treating it not as an afterthought but as an essential building block for their digital tools.
Second, from a data governance perspective, especially through the lens of Non-Invasive Data Governance (NIDG), the terms "data" and "digital" take on a different relationship. Here, data is treated as an asset that must be governed effectively, and "digital" represents the environment where that data is used, managed, and shared. In this case, "data" is central to the conversation, and "digital" is the ecosystem within which data governance policies must operate. Companies that take the NIDG approach understand that they can implement governance within existing digital workflows, ensuring data quality, security, and compliance without disrupting the digital systems already in place.
In this view, governance doesn’t have to disrupt digital processes – it can complement them. By recognizing that "data" and "digital" are interconnected but separate, NIDG helps organizations implement governance policies that work seamlessly within their digital environments. This approach ensures that digital initiatives don’t get bogged down with bureaucratic governance processes. Instead, governance happens naturally, in the background, as part of digital operations. It allows organizations to reap the benefits of digital transformation while maintaining full control over their data, ensuring that the integrity of the data is preserved, even as the technology around it evolves.
A third perspective is the data analytics angle. When organizations talk about becoming "digital-first," they’re often referring to their ability to leverage data for insights and decision-making. Here, "data" is the foundational element that drives "digital" efforts. Without high-quality data, the analytics and dashboards that power digital business models fall flat. In these cases, the interplay between "data" and "digital" becomes critical – digital platforms generate the data, but it’s the data itself that drives innovation, customer insights, and operational efficiency. Analytics sits at the intersection, ensuring that the data flowing through these digital systems is actionable and insightful.
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Looking deeper, the relationship between "data" and "digital" in the context of analytics is one of continuous feedback. Digital systems generate a vast amount of data from every interaction, which analytics tools then process to provide insights. But without robust analytics, the digital data remains raw and largely useless. This highlights the need for organizations to invest in both sides – digital infrastructure to gather data and advanced analytics to turn that data into actionable intelligence. It’s not just about collecting data anymore – it’s about having the right tools to transform it into something that drives decision-making and business value.
Finally, there’s the perspective of AI and AI governance. When people talk about "digital transformation" today, AI often plays a major role. But the success of AI hinges on data – good data. Without well-managed, accurate, and governed data, AI models fail to perform as expected. This makes AI governance a critical part of the digital strategy, ensuring that the AI systems behaving autonomously in these digital environments are ethical, fair, and transparent. AI is often the final stage of a company’s digital journey, but the road to AI success is paved with good data governance practices that start long before AI enters the picture.
The relationship between "data" and "digital" in AI governance goes beyond just feeding clean data into AI systems. AI governance also involves ensuring that the algorithms within these digital systems operate ethically and responsibly. As AI grows more autonomous, organizations must take care that their digital platforms are transparent in how they handle data, ensuring that the decisions made by AI are explainable and fair. The link between data quality and AI governance is crucial – without trustworthy data, AI systems can quickly become unreliable, and without governance, they can become unaccountable.
While "data" and "digital" are often used together in corporate settings, the nuances between them matter. The semantics of these words – how and when they are used – can influence a company’s strategy. Whether it's through governance, analytics, or AI, organizations need to be intentional in distinguishing between "data" and "digital" in order to create effective, data-driven digital ecosystems that support their business goals. The right understanding of these terms ensures that businesses don’t just become digital – they become data-informed, and that’s where the real value lies.
Non-Invasive Data Governance? is a trademark of Robert S. Seiner and KIK Consulting & Educational Services
Copyright ? 2024 – Robert S. Seiner and KIK Consulting & Educational Services
CDMP Certified - Experienced Data Professional
1 个月Thanks for the insights, Robert S. Seiner. Currently we are also in a phase wherein we have recently come out of a big transformation program, and we are struggling to emphasize the need for and importance of data in all the AI and digital initiatives in the company.
Data Governance Leader | CDMP | Solution Design Leader | Technical Product Manager
1 个月I love delving into new technologies, and I know that AI has enormous potential to benefit businesses in every industry. That said, I'm wary of those organizations that jump right into implementing AI without first putting the appropriate governance guardrails in place. Data governance is - and must be - foundational; giving it short shrift is effectively asking for an enormous data debt with compounding interest.
Data and BI Architect at Fortune 500 Manufacturer
1 个月So many companies interpret “Digital” as meaning “We have to move to the Cloud”, even though all their data and applications reside on-prem. But you’re right in saying that Digital is about creating value-producing processes (what used to be called “virtual value streams”), while Data is about ensuring the business value of those processes.
I agree 100% Bob
Data Quality Lead | Data Governance | Master Data Management
1 个月Very informative