Data Analyst: Finance & Partnerships

Flo Health Inc.
London
5 days ago
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400M+ downloads. 75M+ monthly users. A decade of building – and we’re still accelerating.

Flo is the world’s #1 health app on a mission to build a better future for female health. Backed by a $200M investment led by General Atlantic, we became the first product of our kind to reach a $1B valuation in 2024 – and we’re not slowing down.

With 6M paid subscribers and the highest-rated experience in the App Store’s health category, we’ve spent 10 years earning trust at scale. Now, we’re building the next generation of digital health – AI-powered, privacy-first, clinically backed – to help our users know their body better.

The job

We are seeking a highly analytical and strategic Finance & Partnerships Data Analyst to join our team. This role is crucial for driving data-informed decisions across our financial planning and partnership initiatives. You will be a key player in supporting the FP&A team with robust financial analysis, forecasting, and strategic insights.

In addition to core finance functions, you will take the lead on the analytical framework for our strategic partnerships. This involves creating models for new ventures, collaborating closely with engineering and product teams to ensure precise data tracking and measurement, and evaluating the performance of these partnerships to ensure they align with our financial goals.

What You Will Be Doing

  • Develop sophisticated financial models to analyse growth in terms of revenue, user acquisition costs, and lifetime value metrics.
  • Create and optimise unit economics frameworks to understand premium/freemium conversions, subscription dynamics, LTV calculations, and user acquisition payback periods.
  • Build custom financial models for new partners to project potential ROI and guide negotiation strategy.
  • Collaborate with engineering and product teams to establish and maintain sufficient data tracking and measurement for all partnership activities.
  • Measure and report on the performance of strategic partnerships, ensuring that partnership revenue is accurately integrated into broader financial reporting.
  • Analyse revenue impacts of potential product features and prepare evidence-based recommendations.
  • Investigate revenue fluctuations and develop data-driven strategies to address performance issues.
  • Create and maintain comprehensive financial datarooms for investors, including key financial metrics, cohort analyses, and performance dashboards.
  • Present financial insights to peers and senior leaders, ensuring findings directly influence strategic decisions.
  • Standardise financial analysis methodologies (e.g., ROI calculations) and promote the adoption of financial best practices across teams.

What We're Looking For

  • A minimum of 5-7 years of work experience in Analytics and Data, or similar like FP&A.
  • Advanced proficiency in SQL and experience with data visualization tools like Looker, Tableau, or similar platforms.
  • Proven experience in building complex financial and operational models from the ground up.
  • Exceptional ability in data storytelling and communicating complex financial insights to diverse audiences, including senior stakeholders.
  • A deep understanding of core financial metrics (LTV, CAC, Payback Periods, ROI) and their connection to business objectives.
  • Experience in cross-functional collaboration, particularly with technical teams (engineering, product) to influence and drive projects.
  • A strong sense of ownership, a proactive mindset, and the ability to work autonomously in a fast-paced environment.
  • Some experience with Product Analytics and AB testing.
  • Proficiency in Python for statistical analysis is a plus.

#LI-Hybrid #LI-LM12

How we work

We’re a mission-led, product-driven team. We move fast, stay focused and take ownership – from brief to build to impact. Debate is encouraged. Decisions are shared. We care about craft, ship with purpose, and always raise the bar.

You’ll be working with people who take their work seriously, not themselves. It takes commitment, resilience, and the drive to keep going when things get tough. Because better health outcomes are worth it.

What you'll get

We support impact with meaningful reward. Here’s what that looks like:

  • Competitive salary and annual reviews
  • Opportunity to participate in Flo’s performance incentive scheme
  • Paid holiday, sick leave, and female health leave
  • Enhanced parental leave and pay for maternity, paternity, same-sex and adoptive parents
  • Accelerated professional growth through world-changing work and learning support
  • Flexible office + home working, up to 2 months a year working abroad
  • 5-week fully paid sabbatical at 5-year Floversary
  • Flo Premium for friends & family, plus more health, pension and wellbeing perks

Diversity, equity and inclusion

Our strength is in our differences. At Flo, hiring is based on merit, skill and what you bring to the role – nothing else. We’re proud to be an equal opportunity employer, and we welcome applicants from all backgrounds, communities and identities. Read our privacy notice for job applicants .

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