
Over the last six weeks, the center of gravity shifted. People spent 2024 learning how to talk to one model, now they manage systems where models talk to each other. Prompts still matter, but they increasingly hide inside workflows, agent routers, tool calls, and multi-step automation. That shift breaks the normal way professionals build competence, because the surface area you have to learn keeps changing faster than most teams can train, document, and standardize.
The Conundrum:
If AI skills now behave like a liquid, always taking the shape of the latest interface, model, or agent framework, what should you actually invest in? If you focus on the current tools and patterns, you stay effective, but your knowledge can expire quickly and you end up rebuilding your playbook every quarter. If you focus mainly on durable fundamentals, you build long-term leverage, but you risk falling behind on the practical methods that deliver results right now. How do you choose what to learn, teach, and operationalize, when the payoff window for tool-specific mastery keeps shrinking, but ignoring the tools also carries a real performance penalty?
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