The essential skill for AI PMs is deep intuition, which can only be built through hands-on experimentation. This means actively using every new LLM, image, and video model upon release to objectively understand its capabilities, limitations, and trajectory, rather than relying on second-hand analysis.
To prepare for a future of human-AI collaboration, technology adoption is not enough. Leaders must actively build AI fluency within their teams by personally engaging with the tools. This hands-on approach models curiosity and confidence, creating a culture where it's safe to experiment, learn, and even fail with new technology.
For product managers not yet working on AI, the best way to gain experience is to build simple AI tools for personal use cases, like a parenting advisor or a board game timer. Using no-code prototyping tools, they can learn the entire development lifecycle—from ideation to prompting and user feedback—without needing an official AI project at work.
Building an AI-native product requires betting on the trajectory of model improvement, much like developers once bet on Moore's Law. Instead of designing for today's LLM constraints, assume rapid progress and build for the capabilities that will exist tomorrow. This prevents creating an application that is quickly outdated.
In today's fast-paced tech landscape, especially in AI, there is no room for leaders who only manage people. Every manager, up to the CPO, must be a "builder" capable of diving into the details—whether adjusting copy or pushing pixels—to effectively guide their teams.
Simply buying an AI tool is insufficient for understanding its potential or deriving value. Leaders feeling behind in AI must actively participate in the deployment process—training the model, handling errors, and iterating daily. Passive ownership and delegation yield zero learning.
Vercel designer Pranati Perry advises viewing AI models as interns. This mindset shifts the focus from blindly accepting output to actively guiding the AI and reviewing its work. This collaborative approach helps designers build deeper technical understanding rather than just shipping code they don't comprehend.
A technical AI background isn't required to be a PM in the AI space. The critical need is for leaders who can translate powerful AI models into tangible, human-centric value for end users. Your expertise in customer behavior and problem-solving is often more valuable than model-building skills.
AI prototyping should be viewed as a fundamental skill for modern PMs, not an extra job responsibility. Just like using Figma to communicate design, AI prototyping tools allow PMs to make abstract AI concepts tangible for stakeholders and customers. This accelerates feedback loops and improves alignment on complex product behaviors.
To stay current in a fast-moving field like AI, passive learning through articles and videos is insufficient. The key is active engagement: experimenting with new platforms, trying new features as they launch, and even building small applications to truly understand their capabilities and limitations.
A significant source of competitive advantage ("alpha") comes from systematically testing various AI models for different tasks. This creates a personal map of which tools are best for specific use cases, ensuring you always use the optimal solution.