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Data Analyst (Growth Hacking)

fanvue
Manchester
1 week ago
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Fanvue is thefastest-growing creator monetisation platform in the creator economy. We are the leading AI-powered creator-first platform, designed to empower creators worldwide to directly monetise their audience. We’re on a mission to redefine the creator economy by empowering creators to connect, share, and earn more efficiently.


We’re looking for aData Analystto join ourGrowth team.This is a high-impact role for someone who thrives in fast-paced environments, takes ownership, and is excited by the opportunity to shape strategy through insights and experimentation.


You’ll play a critical role in uncovering new growth opportunities, driving data-driven decisions, and setting up the infrastructure to make experimentation and insight generation more effective.


What You’ll Do:

Insight Generation & Opportunity Identification

  • Use data to uncover new growth levers and highlight areas of opportunity across the product and marketing funnel
  • Drive ad-hoc investigations into user behaviour, acquisition, retention, and monetisation
  • Help define and prioritise the data points we capture to enable smarter decision-making

Experimentation & Analysis

  • Conduct A/B test analysis to inform and validate hypotheses
  • Collaborate with the Growth team to interpret results and iterate on experiments
  • Use tools like Amplitude and SQL to understand user behavior patterns and conversion metrics

Dashboarding & Reporting

  • Build and maintain executive-level dashboards to surface the most important insights
  • Elevate the team’s data literacy and decision-making through accessible and high-impact reporting

Tooling & Predictive Analytics

  • Support the setup and optimisation of Amplitude to improve experimentation workflows (event setup by engineering)
  • Leverage Python and SQL to deliver predictive models and analysis where valuable
  • Help establish frameworks for innovation and continuous improvement in how we use data


Who You Are:

Must-haves

  • 5–6 years of experience in a data analyst or product analytics role
  • Advanced SQL skills; comfortable querying complex datasets
  • Intermediate Python skills (for deeper analysis or light modeling)
  • Experience with A/B testing, ideally in a product-led growth or experimentation-heavy environment
  • Strong knowledge of SaaS product analytics; ability to work cross-functionally with product and growth teams


Nice-to-haves

  • Experience with Amplitude and/or Amazon QuickSight is a plus, but not essential


You’ll Be Successful If:

  • You've surfaced high-quality, previously unknown insights that helped drive product or growth wins
  • Amplitude is fully utilised for experiment tracking, and your dashboards are being used regularly by key stakeholders
  • You're known for high ownership and your ability to ask the right questions at the right time
  • The Growth team relies on your analyses to drive strategy and prioritisation


You’ll Struggle If:

  • You need handholding and don’t take initiative
  • Prioritise ego over team
  • Can’t operate with ambiguity
  • You wait for permission instead of making informed decisions and taking ownership
  • Don’t give or request feedback in any direction


Why Join Fanvue?

  • Competitive salary and benefits package
  • Work with a talented, mission-driven team dedicated to empowering creators worldwide
  • A culture that values innovation, speed, excellence, ownership, and transparency
  • Unlimited holiday
  • Remote working
  • Flexible hours, according to the times you perform best
  • Budget for growth and wellbeing

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National AI Awards 2025

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