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2026.05.25

25+ builders tracked

TL;DR

Levie warned AI demos fool CEOs; the hard work starts after. Tan said high agency plus taste beat everything, while Yang urged builders to build the system that builds the MVP first. LeCun kept the pressure on: LLMs help, but they’re not the road to real intelligence.

BUILDER INSIGHTS
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01
Aaron Levie Aaron Levie CEO, box

AI demos fool CEOs; the real work starts after

CEOs are especially prone to AI psychosis because they’re far from the last mile, so they see the happy-path demo and miss the 10–20 follow-on steps needed for real enterprise value. The point: use AI a lot, but come out with a clearer sense of both the upside and the ugly integration work agents still need.

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02
Zara Zhang Zara Zhang

IC work beats management for builders

She says a former engineering manager voluntarily switched back to being an IC and is happier now that she can build again. The subtext: for some people, hands-on shipping is the job, and management is just a detour.

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03
Garry Tan Garry Tan CEO, ycombinator

High agency + taste is the real edge

He says the current unlock is pairing high agency with high taste — basically, being able to spot what matters and move fast on it. The other posts are more vibe than substance, but the throughline is clear: YC’s Garry Tan is still pushing the idea that builders on the frontier win by moving early and with judgment.

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04
Thariq Thariq anthropicai

Legacy code is the new training data

He says the Bun rewrite points to a bigger shift: old codebases will become valuable raw material for distilling software into new forms. The bigger bet is that models will get good enough to turn legacy apps into cross-platform, web-native software — no COBOL-era baggage required.

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05
Peter Yang Peter Yang

Build the system that builds the MVP first

He says the old startup playbook is flipping: instead of hiring fast, founders should set up AI agents to handle email, meetings, sales outreach, and even coding. In his chat with Ryan Carson, the big idea was simple — spend upfront on docs, skills, and access, then one founder can run like a 10-person team.

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06
Nikunj Kothari Nikunj Kothari Partner, fpvventures

Agents will need a map of the web’s hidden APIs

He argues the real trick with Claude Code isn’t DOM scraping — it’s sniffing network requests, reverse-engineering the underlying APIs, and automating against those instead. That leads to a bigger prediction: websites will need to be headless, and the web will eventually need something like a `tools.txt` for agents to discover what they can use and pay for.

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07
Madhu Guru Madhu Guru

AI mandates fail when leaders stay hands-off

CEOs are feeling AI FOMO, but too many are still running the company from arm’s length — which leads to vague mandates and fake-progress demos instead of real adoption. The warning: if leadership won’t get hands-on with AI, a startup with tighter execution will eat their lunch.

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08
Matt Turck Matt Turck FirstMarkCap

AGI may be mostly a harness problem

He argues that if model weights stopped improving today, better tooling and orchestration around them could still make people feel AGI across every domain. It’s a neat reframing from OpenAI’s Yann Dubois: the missing piece may be the harness, not just bigger models.

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PODCAST HIGHLIGHTS
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LeCun says LLMs are useful, but not the road to real intelligence

The Takeaway: Yann LeCun thinks the future belongs to world models that plan, not chatbots that predict tokens.

  • LLMs are “great… for what they do,” but he says they’re a dead end for human- or animal-like intelligence.
  • His bet is contrarian: stop generating pixels and start learning abstract representations that predict the consequences of actions.
  • He sees the real prize in data efficiency — a system that can learn a new task like a teenager learning to drive, not by hoovering up millions of demos.

LeCun, the Meta AI veteran and Turing Award winner, has now spun out Ami Labs to push what he calls “AI for the real world.” His argument is blunt: language is special, but reality is messier — continuous, noisy, high-dimensional — and that’s where current architectures break. He points to JEPA-style systems as the better path because they learn representations by predicting one view from another, rather than reconstructing every pixel. In his view, that shift matters because intelligence isn’t about regurgitating inputs; it’s about anticipating outcomes and choosing actions through search.

That’s also why he’s skeptical of vision-language-action models and imitation-heavy robotics. They can look impressive, but they’re brittle and data-hungry. “Why can’t a 17-year-old learn to drive in twenty hours?” he asks. If a machine needs endless demonstrations for every new task, it’s not really generalizing. His near-term targets are industrial control, robotics, and other complex systems like jet engines, power plants, and even patient modeling. The long game is bigger: “what we’re designing are systems that are capable of thinking.”

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