Treat AI skills not just as prompts, but as instruction manuals embodying deep domain expertise. An expert can 'download their brain' into a skill, providing the final 10-20% of nuance that generic AI outputs lack, leading to superior results.

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For niche tasks, leverage an AI model with deep domain knowledge (like Claude for its own 'Skills' feature) to create highly specific prompts. Then, feed these optimized prompts into a powerful, generalist coding assistant (like Google's) to achieve a more accurate and robust final product.

The transformative power of AI agents is unlocked by professionals with deep domain knowledge who can craft highly specific, iterative prompts and integrate the agent into a valid workflow. The technology itself does not compensate for a lack of expertise or flawed underlying processes.

Effective AI prompting is a high-level form of programming that requires a rich, specific vocabulary. Experts in fields like art history or software engineering can generate superior results because they can provide more precise instructions (e.g., specific styles, frameworks), making deep domain knowledge more valuable than ever.

In its current form, AI primarily benefits experts by amplifying their existing knowledge. An expert can provide better prompts due to a richer vocabulary and more effectively verify the output due to deep domain context. It's a tool that makes knowledgeable people more productive, not a replacement for their expertise.

To master a new skill like creating a sales offer, first command an LLM to outline the framework of a known expert (e.g., Alex Hormozi). Then, have it generate interview questions based on that framework. Answering these allows the LLM to apply the expert's model directly to your specific situation.

Building an AI application is becoming trivial and fast ("under 10 minutes"). The true differentiator and the most difficult part is embedding deep domain knowledge into the prompts. The AI needs to be taught *what* to look for, which requires human expertise in that specific field.

Simply using one-sentence AI queries is insufficient. The marketers who will excel are those who master 'prompt engineering'—the ability to provide AI tools with detailed context, examples, and specific instructions to generate high-quality, nuanced output.

Use prompting to access expertise you don't have and can't afford to hire. Instead of a generic prompt, instruct the AI to act as a specific, highly-credentialed expert (e.g., "an award-winning market strategist"). This effectively allows AI to fill gaps in your own skill set.

AI has no memory between tasks. Effective users create a comprehensive "context library" about their business. Before each task, they "onboard" the AI by feeding it this library, giving it years of business knowledge in seconds to produce superior, context-aware results instead of generic outputs.

The most valuable AI systems are built by people with deep knowledge in a specific field (like pest control or law), not by engineers. This expertise is crucial for identifying the right problems and, more importantly, for creating effective evaluations to ensure the agent performs correctly.