
What 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.
AI Summary coming soon
Sign up to get notified when the full AI-powered summary is ready.
Free forever for up to 3 podcasts. No credit card required.

#295: Research and Analytics: the Peanut Butter and Chocolate of Data?

#294: Adapting an Analytics Team to an AI World

#293: Tool Selection and the Unhelpfulness of Feature Comparisons

#292: AI Without Adult Supervision with Aubrey Blanche
Free AI-powered recaps of The Analytics Power Hour and your other favorite podcasts, delivered to your inbox.
Free forever for up to 3 podcasts. No credit card required.