MoneySmart Group

Product Manager (AI Builder)

MoneySmart Group · Singapore

Technology, Information and Internet · 51-200 employees

4 h ago
Senior (5-10 yrs) Full-time Singapore
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About the role

Identify friction points in financial user journeys and rapidly build testable prototypes using AI tools. Ship code to production and iterate based on real user evidence and performance metrics.

What they look for

AI Prototyping Product Management GitHub User Experience Design Rapid Prototyping Consumer Product Taste Problem-First Thinking AI Agents Data-Driven Decision Making Customer Research

Requirements

Requires a proven track record of building and shipping real products independently using AI tools and GitHub. Must possess strong product judgment, comfort with ambiguity, and a focus on solving the riskiest assumptions first.

Full description

MoneySmart is Southeast Asia’s leading personal finance platform, helping consumers across Singapore and Hong Kong find the right financial products and make smarter decisions with their money.

We’re at an inflection point: moving from a comparison platform to a genuinely personalised financial companion, and marketing is the engine that gets us there.

Mission

MoneySmart helps people compare and choose financial products: credit cards, loans, insurance, mortgages, savings, and investments. Some of those decisions are quick. Many are ones people make a handful of times in their lives, and most find them stressful. The online journey decides whether they trust us enough to take the next step, whether that happens on the site or with one of our advisors.

Comparing financial products on our site today can feel heavier than it should: long forms, jargon, and decisions most people would rather not think about. Your job might be to pick one of those journeys, figure out what makes it feel that way, prototype two or three directions with AI tools, put them in front of real users the same week, and iterate on what you see rather than what you assumed going in. Most weeks look something like that.

We're hiring someone who can take a fuzzy problem about how people make financial decisions and turn it into something real that users can touch, usually within days. Sometimes that's a rapid prototype that proves or kills a thesis. Sometimes it's a product that ships to production. AI tooling makes that speed possible, and we'll train you on our stack. The tooling is the easy part. The scarce part is judgment: knowing what's worth building, and the taste to tell whether what you've built is any good.

One requirement is not negotiable: you've built and shipped something real. A prototype, a side project, a product. Other people used it, and you made most of it yourself. Managing builders or designing for builders doesn't count. When you apply, send us the thing you made. It's the first thing we'll look at.

Who is this for

  • A PM who prototypes their own ideas and has shipped things with AI tools, usually because waiting on an engineering queue was too slow
  • A designer who turned their Figma work into something interactive and live, and got hooked on that feeling
  • An engineer who wants to own the whole problem and has strong opinions about both the experience and the implementation
  • A founder or solo builder who has shipped products end to end, wearing every hat, and now treats AI as a force multiplier

Responsibilities

  • Talk to customers, advisors, and internal teams to find where our journeys break down, and turn what you hear into one-line problem statements worth betting on
  • Take a loosely defined problem to a working prototype on your own, without an engineering pipeline behind you
  • Ship code to production with AI agents, with GitHub as part of your normal workflow
  • Decide the details users actually feel: the copy, the defaults, the number of steps, what gets cut
  • Agree what a win looks like before you ship. Every build gets a metric and a read date, and the read decides whether we double down or kill it
  • Put work in front of real users within days and let the evidence pick the next version. Over time, the winners become new products and experiences on MoneySmart
  • Work in a small team alongside an engineering partner

Requirements

This is a mid-to-senior individual contributor role. You'll be expected to find problems yourself, frame them, and get to something testable without detailed requirements from anyone. Most of the work starts from a one-line problem statement, not a spec.

We don't screen on years of experience, a specific language or stack, a traditional PM or engineering ladder, or design credentials. We screen on what you've shipped and the judgment behind it.

  • Speed with judgment. Building has become cheap. Knowing what to build, and holding a quality bar while moving fast, is the scarce part
  • Comfort shipping with AI agents. You're at home getting code into production with agents and you know your way around GitHub, even without an engineering team behind you
  • Taste in consumer products. Put two flows in front of you and you can tell us which is better and why. This matters in finance, where a confused user simply leaves
  • Problem-first thinking. You attack the riskiest assumption first instead of polishing something untested for a month
  • Comfort with ambiguity. You can turn a vague brief into something concrete without waiting for a specification

MoneySmart Culture Values & Tenets

The traits we admire are core intrinsic qualities we look for in someone we want on our team, and we look for people who are Hungry, Humble and Smart. We also expect all our people to uphold the following company values:

  • Play to win as a team
  • Solve for the customer
  • Embrace a personal growth mindset
  • Step up and own it
  • Challenge the status quo and deliver outcomes

MoneySmart Group is an equal opportunity employer. Please include only relevant details and avoid unnecessary information (e.g., photos, age) in your job application to assist us in ensuring that the interview process is devoid of bias.