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Tag Archives: #AIinProduct

How AI is Redefining Product Management: From Writing PRDs to Rasing the Bar

How AI is Redefining Product Management: From Writing PRDs to Rasing the Bar

During my second week at Facebook, mid-pandemic, onboarding remotely into the VR org, I joined a product review where a PM spent more time challenging their own proposal than defending it. Before anyone else could question it, they walked through what might break, where adoption could fail, and what risks Legal or Infra would raise. By the time feedback started, most of the obvious objections had already been addressed. 

That was my first real glimpse into how the strongest product managers operate. They don’t just present ideas, they argue with them. I have seen similar behavior in startups, but there it usually comes from necessity, limited resources force sharper thinking. In Fortune 500 companies, this kind of rigor comes from discipline.

That’s where AI changes the game today. AI gives every PM a first-pass sparring partner, but only if you use it the right way. Today, most teams use AI to generate PRDs, architecture docs, epics, and user stories. That’s useful, but it misses the point.

The real leverage shows up when AI becomes the voice that challenges you: “Here’s what you might be wrong about.” It’s particularly effective at surfacing blind spots like downstream dependencies, operational risks, users you overlooked, or costs that don’t show up in feature narratives.

Over the past few years, I have coached many PMs to use AI differently. Instead of asking it to generate output, we trained AI to think like stakeholders. At Amazon, for example, we created detailed personas for 3rd party sellers, engineering leaders, legal, finance, marketing, and operations teams. PMs would then prompt AI to respond from those perspectives:

  • What would Legal push back on?
  • How would Finance evaluate this investment?
  • What risks would Operations flag?
  • What architectural dependencies could delay the launch?

Early on, the outputs had rough edges. But as models improved, this approach became increasingly powerful, because product decisions rarely live in isolation.

One PM I worked with used this exact approach while planning a new seller facing feature. On the surface, it looked straightforward, improving onboarding flows to increase seller activation. The PRD was clean, the metrics were strong, and engineering had already sized it.

Before finalizing, we ran the idea through stakeholder based AI prompts. When prompted as “Legal,” AI flagged a potential compliance issue with how seller data was being surfaced across regions. When prompted as “Finance,” it highlighted an unaccounted cost in supporting international payment reconciliation. And from an “Operations” lens, it exposed a spike in expected support tickets due to onboarding ambiguity in edge cases.

None of these were obvious in the original proposal. Catching them early avoided what would have likely been a delayed launch and a much more expensive fix post-release. That’s the real value.

Over time, PMs who use AI this way will produce sharper, clearer proposals, not because AI wrote them, but because weak thinking was exposed earlier, grounded in data and organizational context. Thus, AI becomes a forcing function for rigor. And that leads to a broader implication: Product excellence has never been about output volume. It has always been about decision quality and the outcomes those decisions drive.

AI is now raising the bar for decision hygiene and quietly exposing teams that rely on intuition without validation.

 

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New Operating Model for Product & Engineering Ops in the World of AI

New Operating Model for Product & Engineering Ops in the World of AI

When I first saw teams experimenting with AI before it became cool, the behavior felt really familiar. It reminded me of how teams treated Agile in the early days, something you “use/follow” rather than something that fundamentally reshapes how work flows. Teams were excited, curious, and well intentioned, but almost everyone was underestimating the change in front of them.

At larger enterprises like GE and Schneider, operations always lived a layer below the visible product surface. Customers never see the spreadsheets, the JIRA workflows, the dependency maps, or executive readouts, but those invisible systems determined whether strategy delivered the outcomes that we were looking for. AI is now inserting itself directly into that invisible layer.

Most teams today are using AI as a chatbot. They paste in meeting notes, ask for summaries, maybe generate a PRD draft or clean up status language. That’s fine, but it’s also like using a high performance engine only to power the radio. The real power shows up when AI becomes part of how decisions get made, not just how words get written.

I saw a version of this contrast clearly when working with startups versus large enterprises. Startups rarely debate whether a process is “ready.” They automate thinking early because speed leaves no alternative. In contrast, large organizations often wait for certainty, governance, and sign‑off, which delays leverage. AI flips this dynamic. For the first time, large companies can gain a startup‑like operational awareness without burning people out.

The biggest mental shift is this: AI is not just another productivity tool, it is an operating layer that sits between data and action. Every organization already has raw inputs: roadmaps, sprint plans, incident logs, metrics, emails, Slack threads. What most lack is synthesis at scale. Humans do this manually, inconsistently, and too late. AI changes that.

One of the most effective early experiments I have seen is when we stop asking AI to “do work” and start asking it to “explain the system.” Thus, I often ask questions like: What changed this week that mattered? Where are we accumulating hidden risk? What assumptions are we acting as if they are true, but haven’t validated recently? These questions help me sharpen my approach and provide insights that I can quickly review and validate with my organization’s strategy.

Another practical way to begin is to deliberately wire AI into your operating cadence. For example, before every weekly program review, I feed my model JIRA updates, dependency map, and roadmap changes. After that I ask it for a narrative and compare it against my overall understanding of the program. This approach has helped me cut down my manual tasks by almost 40%. Recently, I have started providing some additional context to my model and started asking it what tradeoffs it will make based on the information and using that to improve program’s execution. If you follow this approach, then overtime AI will become your partner and help you expedite decision making. 

I believe that the teams that win with AI won’t be the ones who generate content faster. They will be the ones who design systems where insight appears earlier, decisions happen cleaner, and surprises shrink. This isn’t a tooling upgrade, it is an operating model shift.

 

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