David's Saturday AI Thoughts
WHAT HAPPENED THIS WEEK * The people with the most skin in the AI economy read this week's data both ways at once.: The Bank for International Settlements warned that AI 'exuberance' could end in a long investment bust, a warning about returns (whether the money earns back enough) rather than capability. The same week a Ramp and Revelio Labs study of 21,559 US firms found heavy AI adopters grew employment about 10% and lifted entry-level hiring 12%, which Noah Smith read as AI complementing people; on the same day The Kobeissi Letter reported AI-linked sectors shedding about 11,000 jobs a month and the US labour share of income at its lowest since records began in 1947. Not contradictions to resolve but different populations: the firms mastering the technology and the sectors it disrupts from outside. Two board questions collapse into one: are we the group that masters this, or the group it happens to? * Zapier is killing private direct messages to feed the company's 'shared brain'.: Wade Foster, chief executive of the automation company Zapier, is ending private direct messages, starting with the executive team, and running a public 'transparency leaderboard' that has pushed the share of conversation in open channels from 33% to 46%. His logic: every private message is a gap in the company's shared brain, context lost to both the humans and the AI agents that increasingly work over its records. The bottleneck in most organisations' AI adoption is context that never gets written down, not model quality. Most firms bolt AI onto the way they already work; Zapier is redesigning how it works so the AI can pull its full weight, which is the step separating the leaders from the licence-buyers. * The Economist ran 25 AI models through the World Values Survey and they came back more extreme than any country.: The World Values Survey has mapped human morals across more than 100 countries since 1981. The 25 leading models did not land at the average of humanity; they clustered in the corner occupied by rich, secular, self-expression-focused countries, often further out than the most extreme nation surveyed. OpenAI's models came back more secular than any country, and none reflected the world view of most African or Muslim countries. Where there is no factually correct answer, a model's values fill the gap, so a tool a billion people delegate decisions to carries a world view measurably narrower than the human range. It is the values version of Edition 18's point: unless you bring yourself, the machine's defaults stand in for you. WHAT TO TRY * Give any automation a few reversible dress rehearsals before you trust it for real.: David set up an agent to grab a hard-to-get morning swim slot for Teresa at their local gym, and did not hand it the real booking on day one. For the three days before the one that mattered, it booked a genuine slot the proper way, then immediately cancelled and emailed him the confirmation. His logic: if it works for three days you feel good, and if it does not you have three chances to fix it before it goes live. The rehearsal runs the whole chain against the real system, but in a mode where any failure is free to fix. * Find the one thing your AI reliably gets wrong, then make it your first check.: Any AI tool you use on a repeated task has a consistent blind spot: the transcript that always mangles names, the summary that always drops the final ten minutes, the invoice reader that always leaves the tax field blank. David's was that last one, and catching it recovered £9,860 of VAT that would otherwise have gone unclaimed. The first few times you use a tool, compare its output with the source and note what it consistently misses, then make that one thing your standing first check, so you keep the time-saving without inheriting the blind spot. * Queue what you'd doomscroll past, and have a model teach it back at your level.: Suhail Doshi, the founder behind Mixpanel and Playground, described the habit on X: queue every interesting blog post, paper or tweet, ask a model to teach it back to you, and read the approachable version in spare moments instead of doomscrolling. The model does not just summarise; it teaches, pitched at how much you already know, so a dense paper meets you where you are. The simplest way in: paste a link or the text into Claude or ChatGPT with 'Teach me this. Here's what I already know:' and one honest sentence. Read the full edition with all links and sources [https://steadman.ai/newsletters/david/#edition-2026-07-04]
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