When AI can generate code and designs endlessly, creating "AI slop," the critical human contribution becomes judgment. The key challenge shifts from *building* to *deciding what to build* and evaluating the output's quality and security. The question is no longer "can we build it?" but "should we build it?"

Related Insights

As AI commoditizes execution and intellectual labor, the only remaining scarce human skill will be judgment: the wisdom to know what to build, why, and for whom. This shifts economic value from effort and hard work to discernment and taste.

The most successful professionals will be those who don't just accept AI-generated outputs uncritically. Instead, they will use their judgment and expertise to question, refine, and go beyond the simple, automated solutions that AI offers, thus providing unique value.

As AI handles analytical tasks, the most critical human skills are those it cannot replicate: setting aspirational goals, applying nuanced judgment, and demonstrating true orthogonal creativity. This shifts focus from credentials to raw intrinsic talent.

AI tools are dramatically lowering the cost of implementation and "rote building." The value shifts, making the most expensive and critical part of product creation the design phase: deeply understanding the user pain point, exercising good judgment, and having product taste.

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*.

The most effective use of AI isn't about mindlessly automating tasks. It's about developing the critical judgment to know when and how to use these tools, and when to rely on human intellect. Resisting the default, easy answer is what will create value and differentiate successful individuals in the future.

As AI commoditizes the 'how' of building products, the most critical human skills become the 'what' and 'why.' Product sense (knowing ingredients for a great product) and product taste (discerning what’s missing) will become far more valuable than process management.

As AI makes the act of writing code a commodity, the primary challenge is no longer execution but discovery. The most valuable work becomes prototyping and exploring to determine *what* should be built, increasing the strategic importance of the design function.

As AI makes it incredibly easy to build products, the market will be flooded with options. The critical, differentiating skill will no longer be technical execution but human judgment: deciding *what* should exist, which features matter, and the right distribution strategy. Synthesizing these elements is where future value lies.

As AI generates more code, the core engineering task evolves from writing to reviewing. Developers will spend significantly more time evaluating AI-generated code for correctness, style, and reliability, fundamentally changing daily workflows and skill requirements.