Senior Data Analyst - Paper.io 2

Voodoo
City of London
4 days ago
Applications closed

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About Voodoo

Founded in 2013, Voodoo is a tech company that creates mobile games and apps with a mission to entertain the world. Gathering 800 employees, 7 billion downloads, and over 200 million active users, Voodoo is the #3 mobile publisher worldwide in terms of downloads after Google and Meta. Our portfolio includes chart-topping games like Mob Control and Block Jam, alongside popular apps such as BeReal and Wizz. This position can be Paris-based or full remote within CET time ±3h.

Team

Our Gaming team is made up of hybrid-casual, casual, and mid-core experts. Our Core games team supports internal and external studios worldwide in creating, developing, and launching new hit games, whilst our Live games team focuses on delivering higher engagement on our existing and successful games.

Joining our Live games team means collaborating with gaming industry experts on globally renowned, enduring games while embracing exciting new entrepreneurial ventures. With over seven billion downloads worldwide and a portfolio of more than 10 resilient hybrid games generating more than $20m per year, we are the world\'s largest and most successful hybrid publisher.

You will be joining one of our Live Studios, working on Paper.io 2.

About us

We’re a small team of excellent people who handle everything, from ideas to testing and we’re growing fast while keeping our high standards. We avoid the obvious, value original thinking, and look for people who bring real personality and perspective to their work. That’s why we skip the usual technical checklist and focus on what really matters: the kind of person you are.

Role
  • Autonomously take ownership of the A/B testing cycle on Paper.io 2, validating feature values, refining key parameters, and optimizing monetization to drive core KPIs.
  • Lead analysis of large, complex datasets to uncover player behaviors and growth opportunities.
  • Translate data insights into clear, actionable recommendations that shape game design and the product roadmap.
  • Collaborate closely with designers, product managers, and developers to embed data-driven decisions throughout the game lifecycle.
  • Build and maintain dashboards and reports that keep the team aligned on critical metrics.
Profile
  • 4+ years in analytical roles within gaming, comfortable working with product teams.
  • Skilled in SQL and either R or Python; experience with complex, large datasets.
  • Strong grasp of A/B testing and statistical analysis methods.
  • Autonomous and pragmatic problem solver with a sharp analytical mind and attention to detail.
  • Thrives in fast-paced live-ops/product-driven environments with rapid iteration.
  • Creative thinker who challenges assumptions and sees beyond the obvious.
  • Player-first mindset with genuine interest in games and player behavior.
  • Excellent communicator who turns data into compelling, actionable stories.
  • Collaborative team player who adapts quickly to change and ambiguity.
Benefits
  • Best-in-class compensation
  • Other benefits based on your country of residence


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