Opinion & Analysis
Written by: Sujay Dutta | Data & AI Advisor
Updated 3:50 PM UTC, May 21, 2026

When Chief Data Officers (CDOs) enter the boardroom to secure funding for data initiatives, they encounter a persistent paradox: everyone agrees that data is the foundation for AI success, yet data operations are considered a cost center.
CDOs are pressured to provide return on investment (ROI) projections. However, data is pervasive, it is generated and consumed through every business process and is critical for every AI application. Accurately isolating and quantifying the financial return is impossible.
This challenge becomes a critical roadblock as enterprises chase their AI ambitions. AI success is achieved when enterprises scale the application of AI vertically within and horizontally across their business functions to accelerate their enterprise value (EV).
With data and its context being the critical ingredient for AI, enterprises’ three-pillared operating model of People, Processes, and Technology, treats data as a subservient byproduct. This is the root cause of AI failure.
To succeed by design, organizations need to make a structural change: elevating Data as the fourth pillar of their operating model, alongside People, Processes, and Technology. That elevation enables data to be managed as a true strategic asset.

So, how can the roadblock be cleared?
How do CDOs secure funding for this structural change when traditional return on investment metrics cannot be applied?
The solution lies in CDOs reframing the boardroom conversation from “return on investment” to two existential risks for their enterprises: the Risk of Inaction and the Risk of Incorrect Action.

Figure: The Risks of Inaction and Incorrect Action
This first risk emerges through inaction: when enterprises continue with their legacy three-pillared operating model in the AI-first age. Failing to fund the data as the fourth pillar ensures that data silos persist and risks EV growth by preventing the “flywheel effect” between people, processes, technology, and data that AI success demands.
To quantify this risk, CDOs should introduce a new strategic metric to the CEO and the Board: Total Addressable Value (TAV) through data. It captures the total potential business value that could be unlocked by leveraging data across all use cases and strategic initiatives. The value is gauged vertically within a business function and horizontally across business functions.
Example: Insurance company
A global insurance company identified $400M in TAV across use cases including: fraud detection, claims automation, underwriting optimization, customer churn prediction, and personalized customer offers. However, due to fragmented data silos, these initiatives were delivering only $75M in Realized Value (RV).
The Value at Risk (VAR) due to inaction is the $325M gap between the TAV and the RV. Each day without a funded data pillar increases the risk to EV growth as customers’ expectations go unmet and competitors move faster.

When the CDO presented this $325M VAR to the CEO and the Board, the conversation shifted immediately to “Why are we leaving $325M on the table and how do we recoup it?”
When the data pillar is underfunded, enterprises fail to build data capabilities and operationalize the Data Operating Model (DOM). DOM is the systematic framework that supplies data and its context to use cases and initiatives, at their required data intensity. Without this supply, the gap between the TAV and RV continues to widen, stakeholder expectations (including customers) go unmet, and the VAR due to inaction increases consistently.
While the first risk focuses on missed opportunities, the second risk addresses the potential for catastrophic failure. To illustrate this risk, CDOs can use the QCS Framework for Data Intensity:

The Risk of Incorrect Action is the probability of damaging the enterprise by supplying use cases and initiatives with data that does not fulfill their required data intensity.
Example (continued): Insurance Company
Returning to our insurance provider, the firm leveraged AI agents to provide personalized offers to customers and answer queries about those offers. The insurance company faces the following risks of incorrect action by not fulfilling data intensity requirements:
This will result in lost revenue, market share, and a damaged reputation.
But if the compliance requirements are not fully addressed, such as using customers’ personal data without prior consent, this can result in regulatory penalties, legal claims from customers, lost revenue, and a tarnished brand.
The Risk of Incorrect Action isn’t merely operational, it is existential.
In the AI-first era, Data Pillar is not a luxury, it is a requirement for survival. To secure the sponsorship of the CEO and the Board for the data pillar, the CDO must position it as essential for mitigating both the Risk of Inaction and the Risk of Incorrect Action.
This involves two primary strategic actions, leveraging the data pillar:
The CDO must collaborate with the business stakeholders and prioritize high-impact use cases to identify the Expected Addressable Value (EAV), the subset of TAV targeted for the next planning period.
Case Study: Insurance Roadmap.
The insurance company mentioned earlier prioritized three use cases representing $200M in EAV to be targeted in the next 12 months:
The data pillar will develop the data capabilities like data product development, semantic data management, and master data management, and operationalize the DOM to convert that EAV into increased RV.
The CDO presents this as a clear value progression to the CEO and the Board:

This projected EAV to RV conversion will happen only when the data intensity requirements of the prioritized use cases are met.
Simultaneously, the CDO must engage with the business stakeholders to understand their data intensity requirements: the specific QCS (Quality, Compliance, Speed) requirements for each prioritized use case.
The DOM is then calibrated to ensure the data supply meets those requirements, preventing incorrect actions.
For the insurance company, it meant that its prioritized use cases received high-quality, compliant data at their required speed, enabling it to realize the projected EAV to RV conversion, maintain happy customers, prevent reputational damage, increase market share, and ultimately increase its EV.
Establishing data as the fourth pillar is a journey that requires sustained investment and leadership commitment. CDOs should develop it in three stages:
Before beginning the journey, CDOs must assess the current position of their enterprise and execute a structured change management plan to improve maturity throughout the journey.
Disclaimer: The core frameworks and strategic insights presented in this article are based on the book Data as the Fourth Pillar: An Executive Guide for Scaling AI (CRC Press/Taylor & Francis), co-authored by Sujay Dutta and Siddharth Rajagopal. The views expressed herein are personal and do not reflect the positions or policies of any current or former employers. AI tools have been used to generate the images used in the article.
About the Author:
After 25+ years partnering with Fortune 500 and Global 2000 leaders, Sujay Dutta has identified a structural barrier preventing organizations from succeeding in the AI-first era: they fail to establish a strategic flywheel connecting People, Processes, Technology, and Data, across their business functions/units.
The insight is simple but radical: Data becomes the Fourth Pillar only when Boards and C-suites govern it with the same rigor applied to People, Processes, and Technology.
Dutta’s A.B.C.D. Framework (AI, Business Outcomes, Culture, Data) operationalizes this shift. It’s the blueprint for the organizational transformation leaders need to architect today.