Companies mistakenly try to hire one person for both applying AI in products and building the underlying AI infrastructure. These are two distinct roles requiring different skill sets. A VP of Engineering leverages existing AI for efficiency, while a Head of AI builds the core platforms for the company.

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Simply hiring superstar "Galacticos" is an ineffective team-building strategy. A successful AI team requires a deliberate mix of three archetypes: visionaries who set direction, rigorous executors who ship product, and social "glue" who maintain team cohesion and morale.

As AI becomes foundational, the PM role will specialize. A new "AI Platform PM" will emerge to own core infrastructure like embeddings and RAG. They will expose these as services to domain-expert PMs who focus on user-facing features, allowing for deeper expertise in both areas.

Simply instructing engineers to "build AI" is ineffective. Leaders must develop hands-on proficiency with no-code tools to understand AI's capabilities and limitations. This direct experience provides the necessary context to guide technical teams, make bolder decisions, and avoid being misled.

When building core AI technology, prioritize hiring 'AI-native' recent graduates over seasoned veterans. These individuals often possess a fearless execution mindset and a foundational understanding of new paradigms that is critical for building from the ground up, countering the traditional wisdom of hiring for experience.

It's nearly impossible to hire senior product or engineering leaders who are also fluent in AI. The advice for experienced managers is to step back into an Individual Contributor (IC) role. This allows them to build hands-on AI skills, demonstrating the humility and beginner's mindset necessary to lead in this new era.

When hiring for the C-suite, the importance of domain expertise varies by role. For Chief Product Officers, a deep passion and knowledge of the problem space is critical for setting vision. For engineering leaders (CTOs/VPs), specific domain experience is less important than relevant tech stack knowledge and transformation skills.

AI tools reduce the communication overhead and lengthy handoffs that traditionally separated product and engineering. By streamlining the path from idea to code, AI makes the combined Chief Product and Technology Officer (CPTO) role more viable, enabling a single leader to manage both functions effectively.

Pega's CTO warns leaders not to confuse managing AI with managing people. AI is software that is configured, coded, and tested. People require inspiration, development, and leadership. Treating AI like a human team member is a fundamental error that leads to poor management of both technology and people.