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Game Data Analyst - All in Hole

Homa
City of London
1 week ago
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Overview

Homa is a global mobile game developer and publisher creating games people love. We partner with studios and internally develop games, having launched over 80 titles and reached over 2 billion downloads. We built Homa Lab, our proprietary platform that gives developers market intelligence, data tools, and game tech, with AI built-in, to find product-market fit fast and scale mass-market games into lasting experiences for players.

We are building the next billion-player experiences from the ground up and shaping the future of entertainment. This is a remote position open to multiple countries.

Role and Missions — What you will do

Senior Game Data Analyst dedicated to All in Hole, our ambitious hybrid-casual puzzle game, will shape the game's roadmap with data-driven insights. You will work closely with the Product team to place All in Hole among top grossing games.

Responsibilities
  • Act as the primary data authority for the game, influencing strategy and development through a deeply data-informed perspective
  • Collaborate with Product Management to design a roadmap guided by analytics, supporting creative direction and user engagement
  • Set up data tracking and reporting pipelines: define events, automate real-time dashboards, and ensure reliable insights
  • Analyze and report on game performance, providing actionable recommendations on player behavior and in-game purchases
  • Lead A/B testing initiatives: plan, execute, and analyze tests to inform the game's roadmap
Requirements
  • 2–4 years of experience as Advanced Data Analyst or Data Scientist working on mobile games (ideally casual puzzle games on the product side)
  • Technical skills: SQL, Python (EDA), automation (Python scripts, dbt, Tableau)
  • Experience with economy design is a plus
  • Hands-on attitude; able to do tasks outside of job description when impact is possible
  • Passion for playing mobile games
  • Fluent in English (interviews in English)
Benefits
  • Comprehensive benefits (insurance, meal vouchers, transport, gym, etc.)
  • Paris HQ access with WeWork perks
  • WeWork access across Europe
  • Global team with diverse backgrounds
  • Team gatherings and retreats
  • Performance reviews every six months
  • Equipment support and home office setup allowance for remote work
Where We Hire

HQ in Paris and teams across Europe. We primarily hire within European time zones (UTC to UTC+3). This is a remote position open to multiple countries.

Note: This is one remote position not multiple openings.


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