In a new, explosive market like AI, the initial phase is a 'land grab' focused on acquiring any and all users. As the market matures and competition intensifies, the strategy must shift to 'oil drilling'—identifying and focusing on specific, high-value customer segments where you have a unique advantage.

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A market bifurcation is underway where investors prioritize AI startups with extreme growth rates over traditional SaaS companies. This creates a "changing of the guard," forcing established SaaS players to adopt AI aggressively or risk being devalued as legacy assets, while AI-native firms command premium valuations.

Unlike cloud or mobile, which incumbents initially ignored, AI adoption is consensus. Startups can't rely on incumbents being slow. The new 'white space' for disruption exists in niche markets large companies still deem too small to enter.

As startups build on commoditized AI platforms like GPT, product differentiation becomes less of a moat. Success now hinges on cracking growth faster than rivals. The new competitive advantages are proprietary data for training models and the deep domain expertise required to find unique growth levers.

The current AI market is like hot, moving fat in a skillet—fluid and competitive. The key strategic question is predicting when "the heat comes off and then everything's fixed." This "congealing" moment will lock in market leaders and make disruption much harder, marking the end of the wild early phase.

Higgsfield initially saw high adoption for viral, consumer-facing AI features but pivoted. They realized foundation model players like OpenAI will dominate and subsidize these markets. The defensible startup strategy is to ignore consumer virality and solve specific, monetizable B2B workflow problems instead.

In fast-moving industries like AI, achieving product-market fit is not a final destination. It's a temporary state that only applies to the current 'chapter' of the market. Founders must accept that their platform will need to evolve significantly and be rebuilt for the next chapter to maintain relevance and leadership.

Don't fear competitive "red oceans"; they signal huge demand. The winning strategy is to start in an artificially constrained niche (a puddle) where you can dominate. Once you're the biggest fish there, sequentially expand your market to a pond, then a lake, and finally the ocean.

The strategy for scaling a business evolves. The first phase is typically dominated by maximizing acquisition volume—doing more of what works. Once you hit a ceiling (e.g., market saturation or physical capacity), the next level of growth comes from compounding. The primary mission must shift to retention and ensuring customers never leave.

Conventional venture capital wisdom of 'winner-take-all' may not apply to AI applications. The market is expanding so rapidly that it can sustain multiple, fast-growing, highly valuable companies, each capturing a significant niche. For VCs, this means huge returns don't necessarily require backing a monopoly.

An emerging AI growth strategy involves using expensive frontier models to acquire users and distribution at an explosive rate, accepting poor initial margins. Once critical mass is reached, the company introduces its own fine-tuned, cheaper model, drastically improving unit economics overnight and capitalizing on the established user base.