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The next frontier of competitive advantage in AI may not be public models, but proprietary 'bootleg skills'—custom markdown files—shared within trusted circles. Gatekeeping these unique, highly effective prompts and workflows could become a significant personal or corporate moat in a world of commoditized AI.

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Go beyond viewing prompts as mere instructions. The detailed system prompts your team develops to automate work constitute a new form of valuable IP. A well-developed library of internal prompts can increase a company's acquisition value, as it represents a codified, efficient operating system.

The primary bottleneck for advancing AI is high-quality, tacit data—skills and local insights that are hard to digitize. Individuals can retain economic value by guarding this information and using it to train personalized AI tools that work for them, not their employers.

The key for enterprises isn't integrating general AI like ChatGPT but creating "proprietary intelligence." This involves fine-tuning smaller, custom models on their unique internal data and workflows, creating a competitive moat that off-the-shelf solutions cannot replicate.

A key competitive advantage for AI companies lies in capturing proprietary outcomes data by owning a customer's end-to-end workflow. This data, such as which legal cases are won or lost, is not publicly available. It creates a powerful feedback loop where the AI gets smarter at predicting valuable outcomes, a moat that general models cannot replicate.

Since LLMs are commodities, sustainable competitive advantage in AI comes from leveraging proprietary data and unique business processes that competitors cannot replicate. Companies must focus on building AI that understands their specific "secret sauce."

Simply using AI provides no competitive advantage, as it's a widely available tool. A true, defensible moat is created by combining AI's capabilities with your unique domain expertise, proprietary processes, and established relationships. AI should augment your existing strengths, not replace them.

If a company and its competitor both ask a generic LLM for strategy, they'll get the same answer, erasing any edge. The only way to generate unique, defensible strategies is by building evolving models trained on a company's own private data.

The real competitive advantage from AI comes from encoding your organization's unique intellectual property—its frameworks, theses, and internal voice—directly into prompts. This 'Savile Row' level of tailoring transforms a generic tool into a bespoke, high-value asset that competitors cannot replicate.

The concept of "sovereignty" is evolving from data location to model ownership. A company's ultimate competitive moat will be its proprietary foundation model, which embeds tacit knowledge and institutional memory, making the firm more efficient than the open market.

Contrary to the belief that distribution is the new moat, the crucial differentiator in AI is talent. Building a truly exceptional AI product is incredibly nuanced and complex, requiring a rare skill set. The scarcity of people who can build off models in an intelligent, tasteful way is the real technological moat, not just access to data or customers.