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With AI tools enabling anyone to ship code, all team members directly impact the user experience. Floto.ai now includes traditional PM-style product thinking questions in interviews for engineers and growth roles to ensure everyone builds with strong user empathy and business context.

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Candidates complete an exhaustive "friction logging" exercise, documenting pain points and user experience issues within a product. This practical test is a primary tool for evaluating a candidate's product sense and problem-identification skills, valued almost as much as the interview itself.

The historical separation between product management, design, and engineering is dissolving. AI assistants handle the coding, allowing a single person to define the product (PM), ensure high-quality aesthetics and UX (designer), and direct the technical implementation (engineer), thus converging the three roles.

As AI agents automate code-writing, companies like WorkOS are hiring "product engineers" who possess taste, product sense, and strong communication. The stereotype of the purely technical, anti-social developer is becoming unemployable in modern tech companies.

With AI agents automating raw code generation, an engineer's role is evolving beyond pure implementation. To stay valuable, engineers must now cultivate a deep understanding of business context and product taste to know *what* to build and *why*, not just *how*.

In AI PM interviews, 'vibe coding' isn't a technical test. Interviewers evaluate your product thinking through how you structure prompts, the user insights you bring to iterations, and your ability to define feedback loops, not your ability to write code.

Ramp requires all new hires, regardless of role, to be proficient with AI tools. The interview process for product managers now includes a practical session where candidates must build and present a functional product prototype using AI, demonstrating hands-on skill rather than just theoretical knowledge.

With AI handling much of the coding, the most valuable engineers are no longer just prolific coders. Companies now prioritize platform engineers who can make deep architectural choices and product engineers who can embed with customers to excel at requirements gathering, which becomes the new bottleneck.

The creator of Claude Code prioritizes hiring generalists who possess skills beyond coding, such as product sense and a desire to talk to users. This 'full-stack' approach, where even PMs and data scientists code, fosters a more effective and versatile team.

Technical implementation is becoming easier with AI. The critical, and now more valuable, skill is the ability to deeply understand customer needs, communicate effectively, and guide a product to market fit. The focus is shifting from "how to build it" to "what to build and why."

To build a truly product-focused company, make the final interview for every role a product management-style assessment. Ask all candidates to suggest product improvements. This filters for a shared value and weeds out those who aren't user-obsessed, regardless of their function.