My PM Interview® - Preparation for Success

My PM Interview® - Preparation for Success

Kickstarting Your AI Product Management Journey

How to Transition into AI PM with the Right Skills, Mindset, and Roadmap

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My PM Interview
Nov 21, 2025
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In just a couple of years, generative AI (GenAI) moved from cool demo to boardroom priority. A recent global survey found that about 65% of organisations now use GenAI in at least one business function, nearly double the adoption from the previous year. Another report estimates GenAI could add $2.6–$4.4 trillion in value annually across just 63 analysed use cases.

That kind of shift doesn’t just create new tools; it reshapes careers. One role emerging right in the centre of this shift is the AI Product Manager.

This article is your structured, no-nonsense starting point. We’ll cover:

  1. Why AI product management matters right now

  2. What AI product management actually is (and isn’t)

  3. How AI is changing day-to-day product work

  4. The mindset you need to learn this fast

  5. A practical roadmap for your first 6–12 months

  6. Common pitfalls and how to avoid them

No hand-wavy hype, but also no doom. Just a realistic, ambitious path.


Why AI Product Management Matters Right Now

1. AI Is No Longer “Emerging Tech”

Multiple large-scale surveys show the same pattern:

  • 78% of organisations report using some form of AI in at least one business function, up from 55% just a couple of years earlier.

  • GenAI specifically is already used most often in product and service development and IT, not just marketing experiments.

  • GenAI could increase the total economic impact of AI by 15–40%.

In other words: we’re past the novelty stage. AI is being woven into core product workflows and business processes.


2. Jobs Are Shifting, Not Just Disappearing

The World Economic Forum’s Future of Jobs report found that 23% of roles globally will change in the next five years due to technology, including AI. Some roles will shrink, others will grow, and many will be reshaped.

Notably:

  • AI & Machine Learning Specialists are among the fastest-growing roles worldwide.

  • AI-related job postings (across roles) roughly doubled in share between 2019 and 2024.

Within that trend, AI-focused product roles are spiking. One industry analysis noted tens of thousands of open roles globally that require AI competencies, including over 14,000 AI-related product roles at one point.

So this isn’t simply “learn AI so you don’t get replaced.” It’s: learn AI so you can move into one of the new growth roles being created.


3. Why AI PM Roles Are Exploding

Companies need people who can sit at the intersection of:

  • Business – monetisation, strategy, positioning

  • Technology – models, data, infrastructure constraints

  • User experience – workflows, usability, trust and safety

AI product management is exactly that intersection. One widely used definition of AI product management is:

“The practice of managing business, technology, and data to develop, launch, and operate AI products.”

Most organisations already have generic PMs. What they’re missing is people who can:

  • Tell the difference between “cool AI demo” and “scalable AI product”

  • Decide whether a problem should use prompting, retrieval-augmented generation, or fine-tuning

  • Translate vague business goals like “use AI in our product” into specific roadmaps and success metrics

That’s what you’re signing up for.


What AI Product Management Actually Is

Before going any further, it helps to draw a clear map.

1. Two Big Buckets: AI-Enabled PM vs AI Product PM

Think of AI product work in two major categories:

  1. AI-Enabled Product Manager

    • A “regular” PM who uses AI tools to do their work better.

    • Uses AI for research, writing PRDs, summarising interviews, generating experiments, etc.

    • Still works on non-AI products (e.g., fintech app, marketplace, SaaS tool) but uses AI heavily in the workflow.

  2. AI Product Manager (what most people mean by AI PM)

    • Owns a product where AI is part of the core user value.

    • Examples: AI copilot for a CRM, AI meeting assistant, AI code generation assistant, AI search or recommendations.

    • Makes decisions about models, data pipelines, AI UX, guardrails, and evaluation.

You should aim to be AI-enabled as soon as possible (this is your productivity multiplier) and then move into AI Product PM work if you want to own AI-driven features or products end-to-end.


2. Within AI PM: Core vs Applied

Within AI product management itself, there’s a useful sub-split:

  • Core AI PM

    • Works closer to the infrastructure and model layer.

    • Think: platform, APIs, vector databases, foundation models, ML tooling.

    • Needs deeper technical understanding of training, architecture, evaluation and cost/latency trade-offs.

  • Applied AI PM

    • Works at the application layer.

    • Uses available models & infra (e.g., from cloud providers or internal ML teams) to build user-facing products.

    • Focuses more on UX, workflows, adoption, and business impact, while being “conversationally fluent” in the tech.

Most people transitioning into AI PM will start or land in applied AI PM, and that’s perfectly fine. The demand there is huge.


3. How AI PM Differs From Traditional PM

You still do all the classic PM things:

  • Understand users and problems

  • Define success metrics

  • Prioritise roadmaps

  • Collaborate with design and engineering

But you also gain a new layer of responsibilities:

  1. Model decisions

    • Which model to use (big vs small)?

    • Hosted vs self-hosted vs open source?

    • When to upgrade? When to switch?

  2. Context strategy

    • What data do we pass into the model for each request?

    • Do we use RAG (retrieval-augmented generation)? If yes, how do we chunk, embed, and store data?

    • How do we personalise context per user or per workspace?

  3. Evaluation and safety

    • How do we define “good” vs “bad” output?

    • How do we catch hallucinations, unsafe content, bias?

    • How do we monitor quality as models change over time?

  4. Economics and latency

    • What does each call cost?

    • How long can users reasonably wait for a response?

    • Do we need a cheaper “fallback” model or caching strategy?

This is what makes AI product management a distinct discipline rather than just “normal PM with a buzzword.”


How AI Is Changing Day-to-Day Product Work

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