2025-12-09 21:30:55
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After reading the early draft of this post, my approach to investing and giving career advice immediately shifted. Thank you, Bob, Cristina, Soleio, Rasmus, and Sean, for sharing your incredible insights with us 🙏
For more from Terrence Rohan (i.e. one of my absolute favorite seed investors), find him on X and LinkedIn. Also, don’t miss his previous beloved guest post: Raising a seed round 101.
P.S. You can listen to this post in convenient podcast form: Spotify / Apple / YouTube.
There are endless posts and podcasts about how investors pick startups. But Lenny and I were curious about a quiet class of employees who seem just as good as—if not better than—the most famous VCs at spotting generational companies before they blow up.
How do these rare folks keep joining world-changing companies before most of the world even notices them?
To find out, we interviewed five people whose resumes include some of Silicon Valley’s most remarkable companies: Palantir, OpenAI, Facebook, Stripe, Linear, Figma, Notion, Slack, Box, Spotify, and Dropbox.
Each joined at least two of these companies early—an extraordinary feat, especially since they committed as full-time employees, not diversified investors. Their “hit rate” is phenomenal.
We were curious: What did they see? How did they choose? Are there lessons to take from their experiences?
Across their stories, we saw three distinct factors that mattered most.
Though originally written for job seekers, these insights apply much more broadly—for founders, investors, or anyone trying to recognize greatness early.
Here’s what to look for.
This was the most novel takeaway for us: One of the clearest markers of a future generational company, according to our interviewees, is ambition. It came up again and again.
Bob pointed out that “both Palantir and OpenAI were considered ludicrous when the companies were first started. Joining Palantir in particular seemed like a very risky proposition. But actually it wasn’t risky at all. If the company failed, at worst, I’d wasted a year of my life and would have to go back to my PhD. But if the company succeeded, it would be life-changing.”
Soleio “was surprised by the ferocity and ambition of the early Facebook team. They all seemed too smart to be working on ‘social networking’ but had a lofty idea for where the internet was ultimately headed and how Facebook might completely reshape it.”
Sean added, “If a company’s thesis is marked by extraordinary ambition, it’s probably worth paying attention.”
“The key tell,” Bob said, “was always the ambition of the goal.”
Rasmus explained, “The logic here is simple: If everyone says, ‘Yes, that’s clearly a great idea, and you have direct competitors on day one, you are definitely late to the game. Even if you excel and go above and beyond expectations, the chance of making a meaningful difference in this world is small-ish. However, if someone has sailed across the sea of exploration, waded through the bog of research, and is still going on about an idea, there’s a small chance that they are ahead of the rest of us and see something I’ve yet to see.”
What are signs that the founder’s ambition is big enough?
The founder sounds a bit crazy. Sean shared, “For Meter, to start from scratch to make your own hardware across many platforms . . . it really indicated that this company is taking a huge swing. Or they’re just crazy. Along those same lines, when I met Dylan Field [CEO and co-founder of Figma] on a bus to a developer conference in 2013, he was just starting Figma. I remember talking to him about what he was building, what he wanted to do with it, and how it seemed completely insane to do in the browser. It was clear Dylan was not going to stop, no matter what, and we know how that has gone.”
People laugh at them. Rasmus recalled, “Spotify, a little group of ‘nobodies’ in Sweden, said, ‘Let’s build a catalog of all the music in the world and give everyone access.’ People laughed at us—I mean that literally, as in record-label officials laughing at Daniel [Ek, CEO and co-founder], asking them to give us a chance. The key here was that businesspeople thought it was a bad, bonkers idea while friends thought it sounded like a perfect future.”
No one has ever attempted this idea before. Rasmus added, “It may be a bit of a cliché at this point, but if no one else is trying to do what a company is trying to change in this world, then there might be something interesting going on, especially if it’s ambitious.”
To close, in the words of Bob, “At one point at Palantir, [co-founder and CEO Alex] Karp said, ‘We want Palantir to be the most important company in the world, not the most valuable one. But if it’s really important, it’s going to be valuable too.’”
Building on the above insight, every interviewee emphasized the same point: the founders matter above all else. Not as one variable among many—this was the variable.
Cristina (early Stripe, Notion, Linear) said it outright: “The founders (and early team)—nothing matters more than this to me. I’m going to work hard, and I want to win, but I want to do it with people whom I want to see win too. When I joined Stripe, I joined more because I thought the people were special. I had more conviction about the company itself later.”
Sean (early Slack, Box, Meter) echoed her: “Quality (and authenticity) of founders have always been the most important variable to me.”
Rasmus (early Spotify, Figma, Dropbox) distilled it even further: “People and mission. Who and why (not as much ‘how’).”
Bob (early Palantir, OpenAI) added, “The common pattern was an incredibly ambitious goal combined with a credible team.” There’s that ambition again.
Joining a company with great founders is easy to say and hard to do. What exactly makes a founder great? Many people call out intelligence, and we have a whole section highlighting the importance of ambition. But our interviewees mentioned some less obvious traits.
1. Ability to adapt
Bob pointed out that “both Palantir and OpenAI started with an unworkable initial strategy that perhaps the world was correct to mock. But both iterated over time to something that worked. It’s more important to be able to learn quickly than to have a good strategy.”
Cristina shared the same sentiment: “It’s so difficult to build a company, and there’s so much you need to learn going from one stage to the next and scaling. Founders who truly love to learn and look at company-building as a learning experience are quite predictive of whether founders will build durable, special companies. I remember saying early on at Stripe that Patrick and John [Collison, co-founders] didn’t just want to build a great product; they wanted to build a great company. And in looking back, I remember their apartment had books piled to the ceiling—they knew so much about so many different topics, and they always sought advice from others. They had a learning mindset, and I think they still do.”
Sean described this as “rate of change.” Soleio called it “clock speed,” adding, “The common thread I’ve observed with all of these companies is how fast they operated and how extraordinarily capable their early employees were. Are they building their ideas in real time or does it take months to see their visions crystallize in software?”
2. Ferocity
Rasmus looked for “clear passion from the people who are ‘the company.’ Passionate and interesting people have been a core aspect of my professional life.”
Cristina said she “loved Ivan’s [Zhao, founder and CEO of Notion] intensity” and has always been drawn to “intensity plus intelligence.”
And as you’ll recall from above, Soleio “was surprised by the ferocity and ambition of the early Facebook team.”
3. Founder-market fit
Sean always asked himself, “Do these people seem like they’re doing what they’re meant to be doing, and is there no question that no one else can do it as well as them?”
Bob was optimistic about Palantir’s chances because “it was founded to take the ideas behind the analysis software that solved fraud at PayPal and apply them to the intelligence community.”
To close, in the words of Cristina: “If the three most important things in real estate are location, location, location, the three most important things in startups are people, people, people.”
You’d think that for legendary product companies like Stripe, Figma, Slack, Notion, and Facebook, you could tell how special they were going to be by how good their early product was. It turns out this way of thinking is a trap.
Soleio said that when he first logged in to Facebook, “I remember being disappointed. The version their team had described was light-years ahead of what I saw that day.” Likewise, Figma was more prototype than product the day Dylan laid out his vision to me for building a collaborative design platform.”
Cristina had a similar perspective: “Many of the companies I’ve joined were developer products or products that were meant for teams, so I couldn’t truly try the product myself, as I’m not a developer or didn’t have a team use case for it. So in general, I discount my own thoughts about a product in those cases.”
Sean told us that “in the earliest days of Slack, it was rough around the edges. To quote Stewart [Butterfield, co-founder], it was a giant piece of shit. The bulk of the vision was there in that beta period from 2013 to 2014, but still awaiting refinement.”
Rasmus rightly pointed out, “Almost every product I’ve worked on started out as one thing but was something quite different at the time of consumer success. Spotify was going to be a video streaming platform and Figma a meme generator.” So even if the product is great, it may have to radically change anyway.
2025-12-09 18:01:51
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How do certain early employees keep picking generational companies—again and again—before the rest of the world catches on? In this episode, we distill lessons from five such super-spotters whose resumes include Palantir, OpenAI, Facebook, Stripe, Linear, Figma, Notion, Slack, Box, Spotify, and Dropbox. You’ll learn the three rare traits they all look for, and how you can apply these signals to your own career and company-building.
In this episode, you’ll learn:
How “ludicrous” ambition shows up
The underrated signs of founder greatness
How to evaluate an early product
What a “Jurassic Park” moment in startups means
How to think about risk as an early employee
Tactics to “optimize for serendipity” when breaking into rocket ships
References:
2025-12-09 00:03:21
Here’s a weekly recap of new podcast episodes across Lenny’s Podcast Network:
Every Monday, host Claire Vo shares a 30- to 45-minute episode with a new guest demoing a practical, impactful way they’ve learned to use AI in their work or life. No pontificating—just specific and actionable advice.
Brought to you by:
Brex—The intelligent finance platform built for founders
Google Gemini—Your everyday AI assistant
In this episode, Michal Peled walks through three real examples from her work at HoneyBook—using ChatGPT’s agent mode to automate LinkedIn recruiting (and surface candidates humans missed), turning static customer research into interactive AI personas, and even building a parking-avoidance calendar app for Giants games. Along the way, Michal breaks down how to structure great agent workflows, why interviewing humans is the key to good automation, and how tools like NotebookLM can turn messy research into reliable, citation-backed prompts.
Biggest takeaways:
ChatGPT agent mode is your “little helper” that can perform real-world tasks. Unlike regular ChatGPT, agent mode can navigate websites, perform searches, and execute complex workflows—all while narrating its thought process. This transforms it from a text generator into a true digital assistant that can replicate human workflows.
The best AI automation starts with interviewing humans about their process. Michal’s recruiting automation succeeded because she asked the hiring team exactly what criteria they use: “Candidates must be from Israel or working at an Israeli company, active on LinkedIn within 3 months, and employed at their current job for over a year.” By codifying these specific requirements, she created an agent that found candidates the team had missed.
The best prompt improvement technique: ask AI to fix your prompt. When AI isn’t giving you the results you want, Michal’s approach is to say: “This is the prompt I’m using. This is what’s wrong with the output. This is how I want it to be. Take away everything that doesn’t work well.”
▶️ Listen now on YouTube | Spotify | Apple Podcasts
Brought to you by: Lovable—Build apps by simply chatting with AI
In this episode, Claire runs a simple but revealing experiment: give the exact same prompt to three leading AI models—Gemini 3, Claude Opus 4.5, and GPT-5.1 Codex—and see which is actually good at design. One model produces a polished, thoughtful, near-production-ready redesign. One delivers something usable but uninspired. And one . . . reminds us that strong coding ability doesn’t always translate to front-end taste. If you’ve ever wondered which AI you should trust with real design work, this episode gives you the clearest answer yet.
Biggest takeaways:
Anthropic’s Opus 4.5 is the clear design winner. It delivered the most visually appealing and functionally complete redesign, with thoughtful details like hover effects with call-to-action arrows, placeholder images for missing content, and elegant background imagery instead of generic gradients.
Codex 5.1 struggles with front-end design. Despite its strong coding capabilities, OpenAI’s model delivered the weakest design, falling back on “AI slop purple gradients” and creating non-functional elements. The lesson: don’t use it as your design resource.
Gemini 3 is serviceable but lacks refinement. While it created a functional redesign with hero sections and card layouts, it missed opportunities for visual polish and didn’t handle edge cases (like missing images) as elegantly as Opus 4.5.
▶️ Listen now on YouTube | Spotify | Apple Podcasts
More shows coming soon. . . 👀
If you’re enjoying these episodes, reply and let me know what you’d love to learn more about: AI workflows, hiring, growth, product strategy—anything.
Catch you next week,
Lenny
P.S. Want every new episode delivered the moment it drops? Hit “Follow” on your favorite podcast app.
2025-12-08 21:03:55
Michal Peled is a Technical Operations Engineer at HoneyBook who specializes in building internal tools and automations that eliminate friction for teams. In this episode, Michal demonstrates three practical AI use cases: using ChatGPT’s agent mode to automate LinkedIn recruiting, transforming customer research into interactive AI personas, and creating a custom calendar solution for a very San Francisco–specific problem—avoiding expensive parking during Giants games.
Listen or watch on YouTube, Spotify, or Apple Podcasts
How to use ChatGPT agent mode to automate LinkedIn recruiting and find high-quality candidates that manual searches missed
The step-by-step process for turning static customer research into interactive AI personas that product and marketing teams can actually use
Why NotebookLM excels at creating prompts from source material with proper citations
How to structure agent-mode prompts to create effective “little helpers” that follow your exact workflow
A practical framework for improving your prompts when AI tools aren’t giving you the results you want
How internal tools teams can drive massive impact by focusing on eliminating friction in everyday workflows
Brex—The intelligent finance platform built for founders
Google Gemini—Your everyday AI assistant
(00:00) Introduction to Michal and ChatGPT agent mode
(02:10) Using agent mode for LinkedIn recruiting automation
(05:14) Creating effective prompts for agent mode
(10:50) Demo of agent mode searching LinkedIn profiles
(16:29) Results and team reception of the recruiting automation
(19:53) The outcome of implementing on Michal’s team
(23:50) Creating custom GPT personas from customer research
(28:43) Using NotebookLM to transform research into persona prompts
(35:00) Adding guardrails to custom GPT personas
(37:20) Demo of interacting with custom-persona GPTs
(41:02) Creating a calendar automation for parking during baseball games
(48:15) Lightning round and final thoughts
• ChatGPT: https://chat.openai.com/
• NotebookLM: https://notebooklm.google.com/
• Claude: https://claude.ai/
• Google Calendar: https://calendar.google.com/
• HoneyBook: https://www.honeybook.com/
• LinkedIn: https://www.linkedin.com/
LinkedIn: https://www.linkedin.com/in/michalpeled/
ChatPRD: https://www.chatprd.ai/
Website: https://clairevo.com/
LinkedIn: https://www.linkedin.com/in/clairevo/
Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].
2025-12-07 21:31:23
Edwin Chen is the founder and CEO of Surge AI, the company that teaches AI what’s good and bad, powering frontier labs with elite data, environments, and evaluations. Surge surpassed $1 billion in revenue with under 100 employees last year, completely bootstrapped—the fastest company in history to reach this milestone. Before founding Surge, Edwin was a research scientist at Google, Facebook, and Twitter and studied mathematics, computer science, and linguistics at MIT.
Listen on YouTube, Spotify and Apple Podcasts
How Surge reached over $1 billion in revenue with fewer than 100 people by obsessing over quality
The story behind how Claude Code got so good at coding and writing
The problems with AI benchmarks and why they’re pushing AI in the wrong direction
How RL environments are the next frontier in AI training
Why Edwin believes we’re still a decade away from AGI
Why taste and human judgment shape which AI models become industry leaders
His contrarian approach to company building that rejects Silicon Valley’s “pivot and blitzscale” playbook
How AI models will become increasingly differentiated based on the values of the companies building them
Vanta—Automate compliance. Simplify security.
WorkOS—Modern identity platform for B2B SaaS, free up to 1 million MAUs
Coda—The all-in-one collaborative workspace
• X: https://x.com/echen
• LinkedIn: https://www.linkedin.com/in/edwinzchen
• Surge’s blog: https://surgehq.ai/blog
• Surge: https://surgehq.ai
• Surge’s product page: https://surgehq.ai/products
• Claude Code: https://www.claude.com/product/claude-code
• Gemini 3: https://aistudio.google.com/models/gemini-3
• Sora: https://openai.com/sora
• Terrence Rohan on LinkedIn: https://www.linkedin.com/in/terrencerohan
• Richard Sutton—Father of RL thinks LLMs are a dead end: https://www.dwarkesh.com/p/richard-sutton
• The Bitter Lesson: http://www.incompleteideas.net/IncIdeas/BitterLesson.html
• Reinforcement learning: https://en.wikipedia.org/wiki/Reinforcement_learning
• Grok: https://grok.com
• Warren Buffett on X: https://x.com/WarrenBuffett
• OpenAI’s CPO on how AI changes must-have skills, moats, coding, startup playbooks, more | Kevin Weil (CPO at OpenAI, ex-Instagram, Twitter): https://www.lennysnewsletter.com/p/kevin-weil-open-ai
• Anthropic’s CPO on what comes next | Mike Krieger (co-founder of Instagram): https://www.lennysnewsletter.com/p/anthropics-cpo-heres-what-comes-next
• Brian Armstrong on LinkedIn: https://www.linkedin.com/in/barmstrong
• Interstellar on Prime Video: https://www.amazon.com/Interstellar-Matthew-McConaughey/dp/B00TU9UFTS
• Arrival on Prime Video: https://www.amazon.com/Arrival-Amy-Adams/dp/B01M2C4NP8
• Travelers on Netflix: https://www.netflix.com/title/80105699
• Waymo: https://waymo.com
• Soda versus pop: https://flowingdata.com/2012/07/09/soda-versus-pop-on-twitter
• Stories of Your Life and Others: https://www.amazon.com/Stories-Your-Life-Others-Chiang/dp/1101972122
• The Myth of Sisyphus: https://www.amazon.com/Myth-Sisyphus-Vintage-International/dp/0525564454
• Le Ton Beau de Marot: In Praise of the Music of Language: https://www.amazon.com/dp/0465086454
• Gödel, Escher, Bach: An Eternal Golden Braid: https://www.amazon.com/G%C3%B6del-Escher-Bach-Eternal-Golden/dp/0465026567
Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].
Lenny may be an investor in the companies discussed.
2025-12-07 01:01:25
👋 Hello and welcome to this week’s edition of ✨ Community Wisdom ✨ a subscriber-only email, delivered every Saturday, highlighting the most helpful conversations in our members-only Slack community.