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David George, General Partner at Andreessen Horowitz, shares insights on leading the firm's growth investing business and building one of the most successful venture portfolios of our time. The conversation explores how a16z has invested across the AI stack from foundational models to applications, with portfolio companies including Databricks, Figma, Stripe, SpaceX, and OpenAI. (04:02) George discusses his investment philosophy of paying fair prices for great companies, particularly focusing on "technical terminators" - founders who start technical and evolve into excellent business leaders. The discussion covers AI's business model evolution, competitive dynamics in growth investing, and why most great tech markets end up winner-take-all. George explains a16z's unique culture and decision-making process, emphasizing their "Yankees-level" performance expectations and collaborative approach without traditional investment committees. (41:00)
David George is a General Partner at Andreessen Horowitz, where he leads the firm's growth investing business. His team has backed many of the defining companies of this era, including Databricks, Figma, Stripe, SpaceX, Anduril, and OpenAI, and is now investing behind a new generation of AI startups like Cursor, Harvey, and Abridge. Before joining a16z, George was an investor at General Atlantic, bringing experience in growth-stage investing to build and scale the firm's growth practice.
George emphasizes his strong preference for what he calls "technical terminators" - founders who begin with deep technical capabilities and then develop commercial business skills over time. (19:26) He cites examples like Ali from Databricks, who started as one of seven co-founders working on the open source project but wasn't initially the CEO, yet eventually became both technically brilliant and commercially sophisticated. The key insight is that these founders have the technical grounding to understand products and are likely to figure out the next product areas, while also learning the business side over time. This archetype includes Mark Zuckerberg and Elon Musk, who both started technical and evolved into exceptional business leaders. The advantage of this approach is that technical depth provides product insight and market understanding that pure business leaders often lack, especially in rapidly evolving technology markets.
Drawing from the famous Glengarry Glen Ross scene, George explains that the vast majority of market cap creation goes to market leaders in technology markets. (23:50) This principle applies not just to obvious network effect businesses like Google and Facebook, but also to enterprise companies where there's "no number two to Salesforce" and no viable number two to companies like Workday or ServiceNow. The key analysis is understanding whether markets will fragment or consolidate, with most technology markets eventually becoming winner-take-all scenarios. Even in markets that do support multiple players, like cloud infrastructure, the winners are still massive businesses that would rank among the most valuable companies in the world if independently owned. This insight drives investment decisions toward companies positioned to become market leaders rather than settling for viable but secondary positions.
George emphasizes the critical difference between companies where the market is demanding more product (pull) versus companies that must actively sell and market their offerings (push). (49:18) He keeps a Post-it note on his computer asking "Is the market demanding more of your product?" because pull businesses represent the most special companies in the world. Examples include ChatGPT's billion organic users without traditional marketing, and companies like Anduril where desperate geopolitical needs create natural demand. The key insight is that pull businesses tend to get easier to scale over time, while push businesses often get harder as they grow, especially consumer businesses dependent on platforms like Google and Facebook for customer acquisition. In the AI era, this translates to looking for viral growth patterns and organic adoption rather than heavy marketing spend to drive usage.
George predicts that AI monetization will evolve far beyond current chatbot interfaces and subscription models, drawing parallels to how no one predicted feed-based advertising before social media feeds existed. (08:00) He believes the future will shift from today's reactive AI interactions to proactive AI that offers solutions and executes tasks on users' behalf. The business model insight comes from recognizing that ChatGPT has reached a billion users but monetizes fewer than 50 million of them, creating massive untapped potential. George expects new native monetization formats to emerge, similar to how Instagram ads became a highly effective format that users actually appreciate. The key is understanding that 90% of technological surplus typically goes to end users, but even capturing a small percentage of the value created by AI could build the largest companies in history.
George argues that markets consistently undervalue companies growing above 30% because it's unnatural to model sustained high growth over long periods. (47:00) He provides the example of Apple in 2009, where consensus estimates for 2013 were off by 3x, demonstrating how even the most-covered company in the world can surprise with persistent growth. The insight is that investors naturally model growth deceleration (80% to 65% to 50% to 40%), but when companies maintain higher growth rates (80% to 75% to 65%), the valuation difference can be 3x. This creates opportunities for growth investors who can identify businesses with sustainable competitive advantages that enable growth rate persistence. The practical application is being willing to pay what seem like high multiples for truly exceptional growth companies, as the math works out favorably when growth persists longer than models typically assume.