Data Analyst

Chaucer
3 weeks ago
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Are you a Senior Data Analyst with experience in the iGaming and Gambling sector, looking for your next challenge?

BENEFITS: £70,000–£85,000 depending on experience, fully remote, excellent benefits package

You’ll be joining a rapidly expanding iGaming and online casino business that delivers high-quality entertainment to players worldwide. The company is recognised as a leading brand across sports betting and online casino, operating on a custom-built platform with a strong focus on innovation, transparency and player experience.

As a Senior Data Analyst, you’ll play a key role in turning complex data into actionable insight. You’ll work closely with product, marketing, compliance and commercial teams to support smarter decision-making across the business, with a strong focus on player behaviour, performance and growth.

Core Responsibilities
Analyse large datasets across casino, sports and player activity to identify trends, risks and opportunities
Build and maintain dashboards and reports to track KPIs across acquisition, retention, revenue and player value
Partner with product and commercial teams to support feature launches, experiments and optimisation
Provide insight into player journeys, lifecycle behaviour and segmentation
Support responsible gambling and compliance reporting with clear, accurate data analysis
Translate business questions into clear analytical approaches and recommendations
Ensure data accuracy, consistency and trust across reporting outputs
Contribute to improving data processes, tooling and best practice across the analytics functionRequired Experience & Expertise
Previous experience as a Data Analyst within iGaming, gambling or a similar regulated B2C environment
Strong SQL skills and experience working with large, complex datasets
Experience with BI and visualisation tools such as Tableau, Power BI or Looker
Comfortable working with product, marketing and commercial stakeholders
Strong understanding of player metrics, KPIs and cohort analysis
Experience with A/B testing, experimentation or behavioural analysis is highly desirable
Excellent communication skills with the ability to present insights clearly to non-technical audiences

Eligo Recruitment is acting as an Employment Business in relation to this vacancy. Eligo is proud to be an equal opportunity employer dedicated to fostering diversity and creating an inclusive and equitable environment for employees and applicants. We actively celebrate and embrace differences, including but not limited to race, colour, religion, sex, sexual orientation, gender identity, national origin, veteran status, and disability. We encourage applications from individuals of all backgrounds and experiences and all will be considered for employment without discrimination. At Eligo Recruitment diversity, equity and inclusion is integral to achieving our mission to ensure every workplace reflects the richness of human diversity

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