The Analytics Power Hour
Michael Helbling, Moe Kiss, Tim Wilson, Val Kroll, and Julie Hoyer
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The Analytics Power Hour is a podcast where digital analytics professionals share their thoughts and experiences on the cutting edge of the field. Each episode covers a closed topic in an open forum format, aiming to provide listeners with actionable insights for their work. The hosts, including Michael Helbling, Tim Wilson, and Moe Kiss, draw from real-world discussions and industry best practices. The podcast originated from conversations at analytics conferences and aims to contribute valuable knowledge to the analytics community.
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#299: AI Can (Help) Build the Dashboard. It Can't Build the Buy-In. 09.06.2026 1tThere are roughly a thousand ways to roll out a new analytics platform, a BI tool migration, or an AI initiative to your organization. Most of them involve a town hall, an email with a link to some training materials, and the quiet hope that everyone figures it out. Most of them also don't really work. On this episode, Yehonatan Schwarzmer joined Michael, Val, and Tim to bring some long-overdue organizational change management thinking into the analytics conversation. Yehonatan has the unusual combination of real-world experience in both change management consulting and data leadership, which makes him exactly the right person to explain why the technical rollout is the easy part. The harder part is understanding that when someone says "this tool doesn't have what I need," they might really be saying "I was the hero in the old system and I don't know who I'll be in the new one." The Kübler-Ross grief model shows up. Psychological safety shows up (reluctantly). And Val's question about who analysts should recruit to help them manage change at scale almost gets answered. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#298: Listener Questions Answered Live from Marketing Analytics Summit! 26.05.2026 52minPicture this: four analytics professionals, one live audience, a bunch of submitted questions, and absolutely no filter when it comes to sharing their real thoughts about AI, stakeholder management, and the state of the industry. That's what you get when the Analytics Power Hour goes live from Marketing Analytics Summit, with Michael, Moe, Tim, and Val fielding everything from, "How do I prove I'm a partner rather than just an order taker?" to "What's your icky threshold with AI?" The conversation ping-ponged from the fundamentals—like why curiosity beats feature checklists when selecting tools—to the controversial, including a heated debate about whether AI-generated meeting notes are helpful productivity boosters or lazy crutches that strip away human editorial judgment. Along the way, they tackled data trust issues, the pressure to show AI efficiency gains, and why trying to nail down the "best" deliverable will just trigger existential musings about what a deliverable even IS! Fair warning: Tim gets triggered by AI hype, Moe calls some industry BS, and everyone agrees that being useful beats being right. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#297: Durable Wisdom in an Age of AI Slop 12.05.2026 1t 6minWhat do colors, soup kitchens, and mountain climbing have in common? They're all part of the mental models that have shaped how we think about analytics, and they're exactly the kind of durable wisdom that matters more than ever in an age of AI slop. This campfire-style conversation among the co-hosts reveals the concepts, books, and aha moments that have stuck with us across decades of analytics work. From the magic of randomization to the critical distinction between outputs and outcomes, we share the frameworks that guide our thinking whether we're writing SQL by hand or asking Claude to do it for us. It turns out the most valuable analytics wisdom isn't about tools or techniques—it's about understanding how humans actually make decisions, build trust, and collaborate effectively. Some things never go out of style. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#296: Avoiding Major Oopsies: Twyman's Law, Intuition, and Valuing Accuracy Over Precision 28.04.2026 1t 4minWhat do diamond ring shopping, Uber pricing psychology, and active user metrics gone wrong have in common? They all highlight our complicated relationship with precision versus accuracy—and how that relationship can either build or destroy trust in our data. Arik Friedman from Atlassian joins us to unpack why being "about right" often beats being "exactly wrong," and why your nagging feeling that something's off might be a useful insight in and of itself. From the discipline of documenting assumptions to the art of knowing when to round your numbers, we tackle the very human challenge of working with data that's supposed to be objective but rarely is. Plus, we explore Twyman's Law (if data looks too good to be true, it probably is) and why sometimes your intuition is your last line of defense against embarrassing mistakes. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#295: Research and Analytics: the Peanut Butter and Chocolate of Data? 14.04.2026 1t 9minResearch and analytics: are they more like peanut butter and chocolate, or more like oil and water? On this episode, we dig into the surprisingly common (and surprisingly unfortunate) divide between these two disciplines with Stefanie Zammit, Global Director of Analytics and Insights at Bang & Olufsen. Stefanie has spent her career bridging the qual and quant worlds, and she makes a compelling case that the best insights come from putting both methodologies to work on the same business problems. From the "never ask a survey question you already have the answer to" rule to why personas are usually terrible (spoiler: it's not the clustering, it's the storytelling), we explore how organizations can break down the silos between research and analytics teams. Turns out, the fear of the unknown and a bunch of fancy terminology might be keeping us from some pretty powerful insights. Also, apparently 100% soundproof rooms are absolutely terrifying. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#294: Adapting an Analytics Team to an AI World 31.03.2026 1t 8minAI is moving fast. But so is life. AI is widely recognized as a must-adopt technology, but how and where are data workers expected to find the time for that?! Organizations are struggling to find effective ways to productively drive healthy adoption of AI: What is it they expect their workers to do with AI? Is it purely an efficiency driver, or should they expect other avenues of value creation to be pursued? What guardrails need to be in place? What incentive structures are (and are not) effective when it comes encouraging team members to take the AI plunge? One tactic that is definitely effective is to have leaders who are excited, engaged, and transparent as they get their hands dirty. And, boy, did the algorithm deliver one of those to us in the form of John Lovett, VP of Analytics at SEER Interactive, for this discussion! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#293: Tool Selection and the Unhelpfulness of Feature Comparisons 17.03.2026 1t 5minThe one rule about the Analytics Power Hour is that we don't talk about specific tools. But that doesn't mean we won't talk about tool SELECTION! Jason Packer recently released the second edition of Google Analytics Alternatives, (also available on Amazon) and his approach in the book is very much not an RFP-like "check which features your tool offers" system. And his rationale for that seems just as applicable (to us, at least!) for any data platform selection, be it a digital/product analytics platform, a BI tool, database or storage infrastructure, or, well, you name it! Ultimately, the challenge is how to go about getting a reasonably strong understanding of the philosophy and historical roots of each platform being considered and then marrying that up with the foundational priorities and needs of the organization. Is that a lot harder than a feature checklist? Yes. But them's the breaks. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#292: AI Without Adult Supervision with Aubrey Blanche 03.03.2026 1t 4minAs Kevin McCallister once taught us: just because the house is still standing doesn't mean everything's under control. Everyone's racing to adopt AI, but has anyone actually read the fine print? For this year's International Women's Day episode, we are joined by Aubrey Blanche to unpack the hype, the hidden tradeoffs, and the quiet ways teams are giving up agency in the name of "productivity." We explore how data and tech teams are uniquely prepared and positioned to ask better questions, measure what really matters, and avoid letting the AI teenager run the house. Learn more about "phantom value" and why faster isn't always better… or even cheaper! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#291: The Data Work that Lives in the Shadows 17.02.2026 1t 2minWe know what the work of the data practitioner is, right? It's everything from managing data ingestion to data governance to report development to experimental design to basic and advanced analytics. It's writing (or vibe-writing?) SQL or Python or R while also being adept at whatever data stack—no matter how modern—is at hand. Of course, it's a lot more, too! And that's the topic of this episode: the unofficial, often unheralded, but often quite important "shadow work" of the analyst—the myriad tasks required to effectively glue together all the data work that occurs out in broad daylight to enable the data to truly be useful at driving the business forward. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#290: Always Be Learning 03.02.2026 1t 6minFrom a professional development perspective, you should always be learning: listening to podcasts, reading books, connecting with internal colleagues, following useful people on Medium and LinkedIn, and so on. Did we mention listening to podcasts? Well, THIS episode of THIS podcast is not really about that kind of learning. It's more about the sort of organizational learning that experimentation and analytics is supposed to deliver. How does a brand stay ahead of their competitors? One surefire way is to get smarter about their customers at a faster rate than their competitors do. But what does that even mean? Is it a learning to discover that the MVP of a hot new feature…doesn't look to be moving the needle at all? Our guest, Mårten Schultzberg from Spotify, makes a compelling case that it is! And the co-hosts agree. But it's tricky. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#289: The Imperative of Developing Business Acumen 20.01.2026 1t 10minThat darn data. It's so complicated and fragmented and gap-filled and noisy that no amount of time is ever enough to truly get to the bottom of all of its complexity. As a result, it's pretty easy to fill all of our time handling as much of that underlying data messiness as possible. At what cost, though? It's easy for the analyst's connection to the business to suffer as they get mired (too) deeply in the data and lose sight of the broader business needs. In this episode, the gang had a chat about business acumen—what it is, how to develop it, and why it's a must-have for any data or analytics role. This episode's Measurement Bite from show sponsor Recast is a brief explanation of identifiability—what it is and how to check for it using simulation—from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#288: Our LLM Suggested We Chat about MCP. Kinda' Meta, No? 06.01.2026 1tIf there's one thing that we absolutely knew would be coming along with the increased interest and use of AI, it would be… more acronyms! And, along with the acronyms, we pretty much could predict that we see a lot of online flexing through casual dropping of said acronyms as though they're deeply understood by everyone who's anyone. We tackled one such acronym on this episode: MCP! That's "model context protocol" for those who like their acronyms written out, and Sam Redfern joined us to help us wrap our heads around the topic. You see, MCP is kinda' like some other more familiar acronyms like API and XML. But, it's also like… fingers? Sam's enthusiasm and explanation certainly had us ready to dive in! This episode's Measurement Bite from show sponsor Recast is an explanation of model robustness from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#287: 2025 Year in Review 23.12.2025 1tIt's the most…won…derful…tiiiiime…of the year! And by that, we mean it's the time of the year when we sit back, look at each other, and ask, "Where did all the time go?!" We brought back a very special someone for this episode as we collectively reflected on the year—show highlights (and what about those shows have stuck with us), industry reflections, and a little shameless shilling for Tim's book (are you still short on a few stocking stuffers? Order now…!). This episode's Measurement Bite from show sponsor Recast is a brief explanation of Granger causality (and how it's NOT actually a causal measure!) from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#286: Metrics Layers. Data Dictionaries. Maybe It's All Semantic (Layers)? With Cindi Howson 09.12.2025 55minSemantic layers are having something of a moment, but they're not actually new as a concept. Ever since the first database table was designed with cryptic field names that no business user could possibly understand, there's been a need for some form of mapping and translation. Should every company be considering employing a semantic layer? Is the idea of a single, comprehensive semantic layer within an organization a monolithic concept that is doomed to fail? These questions and more get bandied about on this episode, where we were joined by industry legend Cindi Howson, Chief Data & AI Strategy Officer at Thoughtspot. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page. This episode's Measurement Bite from show sponsor Recast is an explanation of multicollinearity from Michael Kaminsky!
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#285: Our Prior Is That Many Analysts Are Confounded by Bayesian Statistics 25.11.2025 1t 6minBefore you listen to this episode, can you quantify how useful you expect it to be? That's a prior! And "priors" is a word that gets used a lot in this discussion with Michael Kaminsky as we try to demystify the world of Bayesian statistics. Luckily, you can just listen to the episode once and then update your expectation—no need to simulate listening to the show a few thousand times or crunch any numbers whatsoever. The most important takeaway is that you'll know you've achieved Bayesian clarity when you come to realize that human beings are naturally Bayesian, and the underlying principles behind Bayesian statistics are inherently intuitive. This episode's Measurement Bite from show sponsor Recast is a brief explanation of statistical significance (and why shorthanding it is problematic…and why confidence intervals are generally more practically useful in business than p-values) from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#284: I Used to Think...But Not Any More 11.11.2025 1t 7minAs the world turns, a couple of things happen: 1) we grow and learn, and 2) the world changes. On this episode, inspired by a job interview question, the hosts walked through a range of thoughts and beliefs they had at one time that they no longer have today. Analytics intake forms are good…or bad? Analytics centers of excellence are the sign of a mature organization…or they're just one of many potential options? Privacy concerns are something no one really cares about…or they are something everyone cares deeply about? Voices were raised. Light profanity was employed. Laughter ensued. This episode's Measurement Bite from show sponsor Recast is a brief explanation of statistical significance (and why shorthanding it is problematic…and why confidence intervals are often more practically useful in business than p-values) from Michael Kaminsky. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#283: Good Things (Can) Come in Small Datasets with Joe Domaleski 28.10.2025 1t 12minDoes size matter? When it comes to datasets, the conventional wisdom seems to be a resounding, "Yes!" But what about small datasets? Small- and mid-sized businesses and nonprofits, especially, often have limited web traffic, small email lists, CRM systems that can comfortably operate under the free tier, and lead and order counts that don't lend themselves to "big data" descriptors. Even large enterprises have scenarios where some datasets easily fit into Google Sheets with limited scrolling required. Should this data be dismissed out of hand, or should it be treated as what it is: potentially useful? Joe Domaleski from Country Fried Creative works with a lot of businesses that are operating in the small data world, and he was so intrigued by the potential of putting data to use on behalf of his clients that he's mid-way through getting a Master's degree in Analytics from Georgia Tech! He wrote a really useful article about the ins and outs of small data, so we brought him on for a discussion on the topic! This episode's Measurement Bite from show sponsor Recast is an explanation of synthetic controls and how they can be used as counterfactuals from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#282: Using (and Creating!) Data to Understand Pop Culture with Chris Dalla Riva 14.10.2025 1t 7minData does not just magically spring into existence. Someone, somewhere, has to decide what data gets created and the rules for its creation. We would claim that this often starts as a pretty simple exercise, and then, over time, that simplicity balloons to be pretty complex! What if, for instance, you decided to listen to every #1 song on the Billboard Hot 100 going back to its inception in 1958? You may start by just capturing the song name, the artist, and the week(s) it was the #1 song. But, before you know it, you may find that you're adding in artist details…and songwriter details…and producer details…and genre details…and instrumentation details, and your dataset has 105 columns! But, oh, the questions that dataset could answer! And that's exactly the dataset that our guest for this episode, Chris Dalla Riva, created. He uses it (with a range of supplemental datasets) for his pieces in his Substack, Can't Get Much Higher, as well as the underlying raw material for his upcoming book, Uncharted Territory: What Numbers Tell Us about the Biggest Hit Songs and Ourselves. While the underlying material was music, the parallels to more staid business data were many when it comes to the underlying processes and challenges for doing that work! This episode's Measurement Bite from show sponsor Recast is an explanation of the miracle of randomization when it comes to addressing unobserved confounders from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#281: Analytics: The View from the Corner Office with Anna Lee 30.09.2025 1t 6minFrom spreadsheets to strategy: what does data look like from the CEO's chair? For this episode, we sat down with Anna Lee, CEO of Flybuys and former CFO/COO of THE ICONIC, to get her view on data-led leadership and what great looks like in data and analytics. Discover how Anna's journey from finance to the corner office has shaped her approach to leveraging evidence for strategic decision-making. From productive curiosity, to informed pragmatism, and how data teams can build trust with leadership, this is a candid conversation about analytics from the top down. Whether you're embedded in a squad or building the next big data platform, this one's for anyone who's ever wondered what it takes to truly influence the C-suite! This episode's Measurement Bite from show sponsor Recast is an overview of the fundamental problem of causal inference from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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#280: Dashboards Must Die! Long Live Dashboards! with Andy Cotgreave 16.09.2025 1t 6minIf you didn't have a visceral reaction to the title for this episode, then you are almost certainly not in our target audience. There are few more certain ways to get a room full of analytics folk fired up than to raise the topic of dashboards. Are they where data goes to die, or are they the essential key to unlocking self-service access to actionable insights? Are they both? Is the question irrelevant, because, if they exist to inform business users, aren't they soon going to be replaced by an AI-powered chatbot, anyway? We thought a great way to dig into the topic (and, BTW, we were right) would be to have someone on the show who has co-penned multiple books on the topic. As luck would have it, Andy Cotgreave, one of the co-authors of both 2017's The Big Book of Dashboards: Visualizing Your Data Using Real-World Business Scenarios and the imminently releasing Dashboards That Deliver: How to Design, Develop, and Deploy Dashboards That Work agreed to join us for a lively chat on the topic! This episode's Measurement Bite from show sponsor Recast is a quick explanation of power analysis from Michael Kaminsky! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.
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