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In this episode, Eric Olson, CEO of Consensus, explores how AI startups can compete against tech giants by staying laser-focused on vertical problems. He shares insights from raising a Series A from Union Square Ventures while building an AI search engine for scientific research that serves 5 million users worldwide. Olson discusses the competitive dynamics between horizontal AI models and specialized vertical products (10:06), explaining why focused startups can still thrive despite massive AI talent wars where contracts reach astronomical figures (02:06). The conversation covers everything from product development strategies driven by 70-30 customer feedback (18:39), to why traditional moats don't apply to AI startups, to tactical advice for navigating the hyperscale AI market where models evolve faster than product cycles.
Co-founder and CEO of Consensus, an AI search engine for scientific research that serves 5 million users worldwide. Recently closed a Series A led by Union Square Ventures with participation from notable AI investors Nat Friedman and Dan Gross. Previously scaled the company from startup to 20 employees while achieving 20% month-over-month growth targeting Series B metrics.
Experienced podcast host conducting in-depth interviews with startup founders and industry leaders. Demonstrates expertise in venture capital dynamics, AI market analysis, and strategic business development through thoughtful questioning about competitive moats, market positioning, and scaling challenges.
Your moat isn't technology—it's obsessive focus on a specific problem set. Even billion-dollar companies can only truly excel at a finite number of things. (10:14) When you concentrate all resources on solving one narrow problem exceptionally well, you outmaneuver competitors who treat your market as their "fifth priority."
In AI's breakneck pace, urgency trumps optimization. Ship with GPT-4 knowing GPT-5 will be cheaper and faster next quarter. (17:49) Build with the assumption that models will continuously improve—eat short-term costs to capture mindshare before competitors can react.
Customers excel at identifying pain points but lack technical insight for solutions. Maintain a 70-30 split: let user requests drive direction, but distill their asks into core problems you solve differently. (18:59) The question isn't "what should we build?" but "what frustrates you most?"
OpenAI's meeting transcription tool failed to disrupt Granola because specialized products deliver 10% better experiences through maniacal attention to workflow details. (09:49) Like choosing a cleaning service over a random hire—users pay premiums for companies that exist solely to solve their specific problem.
Big tech companies lose $100 billion in market cap from single AI demo mistakes, constraining their innovation appetite. (15:23) As a startup, you can iterate boldly, launch experimental features, and pivot quickly—advantages that scale inversely with company size and public scrutiny.
No specific statistics were provided in this episode.