Product Data Analyst (iGaming) - to £65k - ID41747

Humand Talent
London
8 months ago
Applications closed

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Passionate About Data and Digital Entertainment?


Do you get excited by the idea of using data to shape dynamic digital experiences?


Are you looking to deepen your career in a fast-paced, constantly evolving online entertainment environment?


If so, this Product Analyst role with our client in the iGaming sector could be your next great move.


🎮 The Opportunity

Our client is a leading player in the global online entertainment industry, operating across multiple markets with a focus on innovation, engagement, and digital excellence. As a Product Analyst, you will play a key role in refining customer journeys, optimising digital products, and supporting a data-driven approach to player engagement and lifecycle strategies.


You will work with cross-functional teams to identify opportunities, run experiments, and provide the insights that power smarter decisions in a regulated, performance-driven environment.


🧠 Why This Role is Great

  • Shape Player Journeys: Use data to identify friction points and optimise every stage of the digital user experience
  • Enhance Product Performance: Collaborate on A/B tests and feature evaluations to drive engagement and retention
  • Deliver Actionable Insights: Build dashboards and reports that bring clarity to performance across products and touchpoints
  • Drive Strategic Thinking: Inform marketing, acquisition, and retention decisions with robust data analysis
  • Engage in Continuous Experimentation: Contribute to a culture of testing, learning, and fast iteration in a dynamic market


🧩 About You

You will bring an analytical mindset, a strong interest in digital behaviour, and experience or ambition to thrive in the iGaming or online entertainment space. You will be excited to work with:

  • SQL or Python for data extraction and analysis
  • BI tools such as Tableau, Power BI, or similar for reporting and visualisation
  • Cross-functional teams including product, marketing, and user experience
  • Multiple workstreams in a fast-moving environment


You may have a degree in a quantitative or scientific field and some professional experience in a data or product-focused role. Most importantly, you are eager to grow your skills and make an impact in a highly competitive space.



🕹️ Desirable Experience

  • Exposure to online gaming, betting, or other high-traffic consumer digital products
  • Understanding of digital funnels, player lifecycles, or retention strategies
  • Familiarity with tools like Google Analytics, Adobe Analytics, or similar platforms
  • Experience designing or interpreting A/B or multivariate tests in a digital environment
  • A passion for digital innovation and consumer insight


🌟 What You’ll Enjoy

  • Clear progression paths and access to learning and development tools
  • Supportive performance feedback culture to help you grow
  • Health and wellbeing support for you and your family
  • Local benefits that may include:
  • Private medical insurance
  • Life assurance and income protection
  • Company pension scheme


🌈 Inclusion Statement

We and our client believe that diverse perspectives create stronger teams and better products. We encourage applicants from all backgrounds to apply. Even if your experience is not a perfect match, we are excited to hear from individuals who are eager to grow and contribute.

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