Products are no longer 'done' upon shipping. They are dynamic systems that continuously evolve based on data inputs and feedback loops. This requires a shift in mindset from building a finished object to nurturing a living, breathing system with its own 'metabolism of data'.
AI automates tactical tasks, shifting the PM's role from process management to de-risking delivery by developing deep customer insights. This allows PMs to spend more time confirming their instincts about customer needs, which engineering teams now demand.
Don't just sprinkle AI features onto your existing product ('AI at the edge'). Transformative companies rethink workflows and shrink their old codebase, making the LLM a core part of the solution. This is about re-architecting the solution from the ground up, not just enhancing it.
In an AI-driven world, product teams should operate like a busy shipyard: seemingly chaotic but underpinned by high skill and careful communication. This cross-functional pod (PM, Eng, Design, Research, Data, Marketing) collaborates constantly, breaking down traditional processes like standups.
Don't expect your organization to adopt a new strategy uniformly. Apply the 'Crossing the Chasm' model internally: identify early adopters to champion the change, then methodically win over the early majority and laggards. This manages expectations and improves strategic alignment across the company.
The pace of change in AI means even senior leaders must adopt a learner's mindset. Humility is teachability, and teachability is survivability. Successful leaders are willing to learn from junior colleagues, take basic courses, and admit they don't know everything, which is crucial when there is no established blueprint.
When products offer too many configurations, it often signals that leaders lack the conviction to make a decision. This fear of being wrong creates a confusing user experience. It's better to ship a simple, opinionated product, learn from being wrong, and then adjust, rather than shipping a convoluted experience.
The best way to learn new AI tools is to apply them to a personal, tangible problem you're passionate about, like automating your house. This creates intrinsic motivation and a practical testbed for learning skills like fine-tuning models and working with APIs, turning learning into a project with a real-world outcome.
While AI efficiently transcribes user interviews, true customer insight comes from ethnographic research—observing users in their natural environment. What people say is often different from their actual behavior. Don't let AI tools create a false sense of understanding that replaces direct observation.
