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For roles leveraging new technologies like AI, where tools are nascent and constantly changing, competency is a fleeting metric. Instead, hire for curiosity. A curious mind will adapt, learn, and master new tools as they emerge, making them a more valuable long-term asset.

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Hire for Curiosity, Not Competency, for Roles Involving Rapidly Evolving AI Tools | RiffOn