Couverture de Experiencing Data w/ Brian T. O’Neill (AI & data product management leadership—powered by UX design)

Experiencing Data w/ Brian T. O’Neill (AI & data product management leadership—powered by UX design)

Experiencing Data w/ Brian T. O’Neill (AI & data product management leadership—powered by UX design)

De : Brian T. O’Neill from Designing for Analytics
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Is the value of your enterprise analytics SAAS or AI product not obvious through it’s UI/UX? Got the data and ML models right...but user adoption of your dashboards and UI isn’t what you hoped it would be?

While it is easier than ever to create AI and analytics solutions from a technology perspective, do you find as a founder or product leader that getting users to use and buyers to buy seems harder than it should be?

If you lead an internal enterprise data team, have you heard that a ”data product” approach can help—but you’re concerned it’s all hype?

My name is Brian T. O’Neill, and on Experiencing Data—one of the top 2% of podcasts in the world—I share the stories of leaders who are leveraging product and UX design to make SAAS analytics, AI applications, and internal data products indispensable to their customers. After all, you can’t create business value with data if the humans in the loop can’t or won’t use your solutions.

Every 2 weeks, I release interviews with experts and impressive people I’ve met who are doing interesting work at the intersection of enterprise software product management, UX design, AI and analytics—work that you need to hear about and from whom I hope you can borrow strategies.

I also occasionally record solo episodes on applying UI/UX design strategies to data products—so you and your team can unlock financial value by making your users’ and customers’ lives better.

Hashtag: #ExperiencingData.

JOIN MY INSIGHTS LIST FOR 1-PAGE EPISODE SUMMARIES, TRANSCRIPTS, AND FREE UX STRATEGY TIPS
https://designingforanalytics.com/ed

ABOUT THE HOST, BRIAN T. O’NEILL:
https://designingforanalytics.com/bio/© 2019 Designing for Analytics, LLC
Art Economie Management Management et direction
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    Épisodes
    • 186 - Why Powerful AI Products Feel Useless to Buyers
      Jan 20 2026

      I’m back! After about 7 years (or more) of bi-weekly publishing, I gave myself a break (to have the flu, in part), but now it’s back to business! In 2026, I’ll be focusing the podcast more on the commercial side of data products. This means more founders, CEOs, and product leader guests at small and mid-sized B2B software companies who are building technically impressive B2B analytics and AI products. With all the focus on AI, I want to focus on things that don’t change: what do value and outcomes look like to buyers and users, and how do we recreate it with analytics and AI? What learnings and changes have leaders had to make on the product and UI/UX side to get buyers to buy and users to use?

      So, that brings us to today’s episode. Today, I’ll explain why I think model quality, analytics data, and raw AI capability are quickly becoming commodities, shifting the real challenge to how effectively companies can translate their data and intelligence into value that buyers and users can clearly understand and defend.

      I dig into a core tension in B2B products: fiscal buyers and end users want different things. Buyers need confidence, risk reduction, and defensible ROI, while users care about making their daily work easier and safer. When products try to appeal broadly or force customers to figure out how AI fits into their workflows, adoption breaks down. Instead, I make the case for tightly scoped, workflow-aware solutions that make value obvious, deliver fast time-to-value, and support real decisions and actions.

      Highlights/ Skip to:

      • Refocusing the trajectory of the show for 2026 (00:31)
      • Turning your product’s intelligence into clear, actionable solutions so users can see the value without having to figure it out themselves (4:32)
      • You’re selling capability, but buyers are buying relief from a specific pain point (7:33)
      • Asking customers where AI fits into their workflow is poor design (16:57)
      • Buyers and users both require proof of value, but in different ways (20:05)
      • Why incomplete workflows kill trust (24:18)
      • The importance of translating technical capability into something a human is willing to own (30:09)
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      38 min
    • 185 - Driving Healthcare Impact by Aligning Teams Around Outcomes with Bill Saltmarsh
      Dec 23 2025

      Bill Saltmarsh joins me to discuss where a modern CDO gets the inspiration to “operate in the producty way” in his domain, which is healthcare. Now Vice President of Enterprise Data and Transformation and the Chief Data Officer at Children’s Mercy Kansas City, his early days as an analyst revealed a gap between what stakeholders asked for vs. the outcomes they sought. This convinced him that data teams need to pause, ask better questions, and prioritize meaningful outcomes over quickly churning out dashboards and reports.

      Bill and I discuss how a producty mindset can be embedded across an organization. He also talks about why data leaders must set firm expectations. We explore the personal and cultural shifts needed for analysts and data scientists to embrace design, facilitation, and deeper discovery, even when it initially seems to slow things down. We also examine how to define value and ROI in healthcare, where a data team's impact is often indirect.

      By tying data efforts to organizational OKRs and investing in governance, strong data foundations, and data literacy, he argues that analytics, data, and AI can drive better decisions, enhance patient care, and create durable organizational value.

      Highlights/ Skip to:

      • What led Bill Saltmarsh to run his team at Children’s Mercy “the producty way” (1:42)
      • The kinds of environments Bill worked in prior that influenced his current management philosophy (4:36)
      • Why data teams shouldn’t be report factories (6:37)
      •  Setting the standard at the leadership level vs the everyday work (10:53)
      • How Bill is skilling and hiring for non-technical skills (i.e. product, design, etc) (13:51)
      •  Patterns that data professionals go through to know if they’re guiding stakeholders correctly (20:54)
      •  The point when Bill has to think about the financial side of the hospital (26:30)
      • How Bill thinks about measuring the data team’s contributions to the hospital’s success (30:28)
      • Bill’s philosophy on generative AI (36:00)

      Links

      • Bill Saltmarsh on LinkedIn
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      41 min
    • 184 - Part III: Designing with the Flow of Work: Accelerating Sales in B2B Analytics and AI Products by Minimizing Behavior Change
      Dec 9 2025

      In this final part of my three-episode series on accelerating sales and adoption in B2B analytics and AI products, I unpack a growing challenge in the age of generative AI: what to do when your product automates a major chunk of a user’s workflow only to reveal an entirely new problem right behind it.

      Building on Part I and Part II, I look at how AI often collapses the “front half” of a process, pushing the more complex, value-heavy work directly to users. This raises critical questions about product scope, market readiness, competitive risks, and whether you should expand your solution to tackle these newly surfaced problems or stay focused and validate what buyers will actually pay for.

      I also discuss why achieving customer delight—not mere satisfaction—is essential for earning trust, reducing churn, and creating the conditions where customers become engaged design partners. Finally, I highlight the common pitfalls of DIY product design and why intentional, validated UX work is so important, especially when AI is changing how work gets done faster than ever.

      Highlights/ Skip to:

      • Finishing the journey: staying focused, delighting users, and intentional UX (00:35)
      • AI solves problems—and can create new ones for your customers—now what? (2:17)
      • Do AI products have to solve your customers’ downstream “tomorrow” problems too before they’ll pay? (6:24)
      • Questions that reveal whether buyers will pay for expanded scope (6:45)
      • UX outcomes: moving customers from satisfied to delighted before tackling new problems (8:11)
      • How obtaining “delight” status in the customer’s mind creates trust, lock-in, and permission to build the next solution (9:54)
      • Designing experiences with intention (not hope) as AI changes workflows (10:40)
      • My “Ten Risks of DIY Product Design…” — why DIY UX often causes self-inflicted friction (11:46)

      Links

      • Listen to part I: Episode 182 and part two: Episode 183
      • Read: “Ten Risks of DIY Product Design On Sales And Adoption Of B2B Data Products”
      • Stop guessing what is blocking your own product’s adoption and sales: Schedule a Design-Eyes Assessment with me, and in 90 minutes, I'll diagnose whether you're facing a design problem, a product management gap, a positioning issue, or something else entirely. You'll walk away knowing exactly what's standing between your product and the traction you need—so you don't waste time and money on product design "improvements" that won't move your critical KPIs.
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      14 min
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