Summary:
1. Companies are rushing to associate themselves with artificial intelligence, similar to the dot-com boom with the “.com” trend.
2. Start small, find your niche, and scale deliberately to avoid the mistakes of the past.
3. Building proprietary data loops early on is essential for long-term success in the gen AI era.
Article:
In the era of the dot-com boom, the addition of “.com” to a company’s name was enough to skyrocket its stock price, even without real customers or profitability. Fast forward to today, the trend has shifted to artificial intelligence (AI), with companies eagerly embracing the hype by incorporating “AI” into their branding and products, reminiscent of the past frenzy.
The lesson learned from the dot-com crash is clear – chasing hype is not sustainable. The key to success lies in solving real problems, scaling with purpose, and cutting through the noise of the AI craze. Starting small and identifying a specific niche before expanding is crucial for AI product builders to avoid the pitfalls of premature scaling.
Take eBay as an example of starting small and growing strategically. By focusing on a niche market of collectibles, eBay established a strong foothold before expanding into broader categories. In contrast, Webvan’s ambitious approach to revolutionize grocery shopping on a large scale without solid customer demand led to its downfall. The key takeaway is to start small, dominate a specific segment, and expand gradually as demand grows.
Once a product gains traction, the next focus should be on building defensibility through proprietary data. Companies like Amazon and Google leveraged data to enhance their products and create a competitive advantage that competitors struggled to match. For AI product builders, owning and leveraging proprietary data loops early on is crucial for long-term success in the rapidly evolving gen AI landscape.
In conclusion, the future of AI belongs to those who prioritize problem-solving, disciplined scaling, and building real moats through proprietary data. The marathon of the gen AI era requires grit, strategic planning, and a focus on fundamentals rather than fleeting trends. Embracing these principles will set AI builders on the path to enduring success in the ever-changing technological landscape.
Kailiang Fu, an AI product manager at Uber, emphasizes the importance of understanding the marathon nature of AI development and the dedication required to navigate the evolving landscape effectively.