Senior Data Governance Manager - Automation & Insights

FDJ UNITED
London
2 months ago
Applications closed

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Job Description

About the Company


At FDJ UNITED, we don't just follow the game, we reinvent it. FDJ UNITED is one of Europe’s leading betting and gaming operators, with a vast portfolio of iconic brands and a reputation for technological excellence. With more than 5,000 employees and a presence in around fifteen regulated markets, the Group offers a diversified, responsible range of games, both under exclusive rights and open to competition. We set new standards, proving that entertainment and safety can go hand in hand. Here, you’ll work alongside a team of passionate individuals dedicated to delivering the best and safest entertaining experiences for our customers every day. We’re looking for bold people who are eager to succeed and ready to level-up the game. If you thrive on innovation, embrace challenges, and want to make a real impact at all levels, FDJ UNITED is your playing field. Join us in shaping the future of gaming. Are you ready to LEVEL-UP THE GAME?


About the Role


We are a global leader in data-driven transformation, harnessing AI and automation to power decisions, create innovative products, and deliver trusted customer experiences. Our mission is to build an intelligent, self-service data ecosystem where automation, explainability, and trust are embedded at every layer. As we accelerate into the era of ge...

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