163 - It’s Not a Math Problem: How to Quantify the Value of Your Enterprise Data Products or Your Data Product Management Function
Feb 18, 2025
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Discover the challenges of quantifying the value of enterprise data products and the vital role of UX teams. Learn how value is subjective and extends beyond numbers. Explore the art of estimation, emphasizing qualitative assessments to communicate impact effectively. Delve into long-term innovation and ethics in measuring success, urging a shift from traditional ROI calculations. Engage with thoughtful insights on audience feedback and community involvement for continuous improvement.
Value assessment of enterprise data products is subjective and should focus on understanding stakeholder perceptions rather than just relying on quantifiable metrics.
Engaging stakeholders in iterative discussions and providing estimated value ranges can enhance alignment and better inform decision-making processes.
Deep dives
Subjective Value and Stakeholder Perception
Value in the context of enterprise data products is subjective and can vary greatly between stakeholders. An example to illustrate this is the pricing of drinks at a concert venue, where the same product can be valued differently based on context and environment, leading to prices far exceeding those found in grocery stores. This subjectivity implies that when attempting to establish the value of a product or service, it is crucial to understand the stakeholders' perceptions rather than relying solely on abstract metrics. Building rapport and aligning understanding with stakeholders can significantly enhance the perceived value of contributions from teams involved in product management and design.
Beyond Quantitative Metrics
Not all valuable contributions can be quantified in terms of direct financial impact, and it is important to recognize that measurability does not equate to actual value. Stakeholders may prioritize different factors that do not necessarily have a clear monetary correlation, such as reducing risk, enhancing job simplify, or achieving strategic goals. For example, a data product might not directly translate into sales figures, but it may help a company pivot to new markets or improve operational efficiencies. By engaging in conversations that uncover these broader objectives and values, teams can better align their work with the important goals of the organization.
Creating Indirect Value: The Role of Conversations
The process of valuing a product begins by asking the right questions to understand what matters most to stakeholders rather than jumping into calculations immediately. This iterative dialogue helps reveal what constitutes success for them, such as satisfaction among team members or the efficacy of decision-making tools. Moreover, the very act of facilitating this discussion establishes the value of the product team, as it demonstrates an understanding of the stakeholders' needs. As teams gather and refine these insights, they can thoughtfully direct efforts towards measurable outcomes based on shared objectives.
Estimation Over Precision
Focusing on providing estimated value as a range rather than striving for precision can better serve stakeholders who seek guidance in decision-making processes. This approach acknowledges the inherent uncertainty in measuring indirect value while still offering actionable insights that can inform further steps. For instance, instead of providing a single estimate, suggesting that a product has a potential value between $10 million and $20 million allows flexibility and invites stakeholder input to refine those numbers. The emphasis on estimation encourages collaboration, enabling a team to pivot and strategize more effectively as new data and insights emerge.
I keep hearing data product, data strategy, and UX teams often struggle to quantify the value of their work. Whether it’s as a team as a whole or on a specific data product initiative, the underlying problem is the same – your contribution is indirect, so it’s harder to measure. Even worse, your stakeholders want to know if your work is creating an impact and value, but because you can’t easily put numbers on it, valuation spirals into a messy problem.
The messy part of this valuation problem is what today’s episode is all about—not math! Value is largely subjective, not objective, and I think this is partly why analytical teams may struggle with this. To improve at how you estimate the value of your data products, you need to leverage other skills—and stop approaching this as a math problem.
As a consulting product designer, estimating value when it’s indirect is something that I’ve dealt with my entire career. It’s not a skill learned overnight, and it’s one you will need to keep developing over time—but the basic concepts are simple. I hope you’ll find some value in applying these along with your other frameworks and tools.
Highlights/ Skip to
Value is subjective, not objective (5:01)
Measurability does not necessarily mean valuable (6:36)
Businesses are made up of humans. Most b2b stakeholders aren’t spending their own money when making business decisions—what does that mean for your work? (9:30)
Quantifying a data product’s value starts with understanding what is worth measuring in the eye of the beholder(s)—not math calculations (13:44)
The more difficult it is to show the value of your product (or team) in numbers, the lower that value is to the stakeholder—initially (16:46)
By simply helping a stakeholder to think through how value should be calculated on a data product, you’re likely already providing additional value (18:02)
Focus on expressing estimated value via a range versus a single number (19:36)
Measurement of anything requires that we can observe the phenomenon first—but many stakeholders won’t be able to cite these phenomena without [your!] help (22:16)
When you are measuring quantitative aspects of value, remember that measurement is not the same as accuracy (precision)—and the precision game can become a trap (25:37)
How to measure anything—and why estimates often trump accuracy (31:19)
Why you may need to steer the conversation away from ROI calculations in the short term (35:00)
Quotes from Today’s Episode
Even when you can easily assign a dollar value to the data product you’re building, that does not necessarily reflect what your stakeholder actually feels about it—or your team’s contribution. So, why do they keep asking you to quantify the value of your work? By actually understanding what a shareholder needs to observe for them to know progress has been made on their initiative or data product, you will be positioned to deliver results they actually care about. While most of the time, you should be able to show some obvious economic value in the work you’re doing, you may be getting hounded about this because you’re not meeting the often unstated qualitative goals. If you can surface the qualitative goals of your stakeholder, then the perception of the value of your team and its work goes up, and you’ll spend less time trying to measure an indirect contribution in quant terms that only has a subjectively right answer. (6:50)
The more difficult it is for you to show the monetary value of your data product (or team), the lower that value likely is to the stakeholder. This does not mean the value of your work is “low.” It means it’s perceived as low because it cannot be easily quantified in a way that is observable to the person whose judgment matters. By understanding the personal motivations and interests of your stakeholders, you can begin to collaboratively figure out what the correct success metrics should be—and how they’d be measured. By just simply beginning to ask and uncover what they’re trying to measure, you can start to increase your contributions’ perceived value. (17:01)
Think about expressing “indirect value” as a range, not a precise single value. It’s much easier to refine your estimate (if necessary) once a range has been defined, and you only need to get precise enough for your stakeholder to make a decision with the information. How much time should you spend refining your measurement of the value? Potentially little to none—if the “better math” isn’t going to change anyone’s mind or decision. Spending more time to measure a data product’s value more accurately takes you away from doing actual product work—and if there isn’t much obvious value to the work, maybe the work—not the measurement of the work—needs to change. (19:49)
Smart leaders know that deriving a simple calculation of indirect contributions is complex—otherwise, the topic wouldn’t keep coming up. There is a “why” behind why they’re asking, and when you understand the “why,” you’ll be better positioned to deliver the value they actually seek, using valuation measurements that are “just enough” in their precision. What do you think it says to a stakeholder if you’re spending an inordinate amount of time simply trying to calculate and explain the value of your data product? (23:22)
Many organizations for years have invested in things that don’t always have a short term ROI. They know that ROI takes time, and they can’t really measure what it’s worth along the way. Examples include investments in company culture, innovation, brand reputation, and many others. If you’re constantly playing defense and having to justify your existence or methods by quantifying the financial value of your data products (or data product management team, or UX team, or any other indirect contributor/contribution), then either your work truly does lack value, or you haven’t surfaced what the actual success metrics and outcomes are— in the eyes of the stakeholder. As such, the perceived value is “low” or opaque. They might be looking for a hard number to assign to it because they’re not seeing any of the other forms of value that they care about that would indicate positive progress. It’s easier to write [you] a large check for a big, innovative, unproven initiative if your stakeholders know what you and your team can accomplish with a small check. (35:16)