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Data Analyst

Gamdom
London
1 month ago
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Gamdom is home to thousands of betting options for both sports and casino players to wager on. Since 2016, we have been steadily growing to provide more than just casino games and sports betting events to enjoy; With us, you can enjoy unique bonuses and earn massive rewards simultaneously. Discover all the rewarding features Gamdom can offer you below.

Gamdom is seeking aData Analystwith strong technical skills to join our fast-paced data team. This role is ideal for someone who thrives at the intersection of analytics, engineering, and visualization. You'll bring hands-on experience in SQL, Snowflake, and dbt, along with business-facing skills in reporting, dashboard development (using Tableau), and data analysis to drive insights across the company.

The successful candidate will analyze existing reporting logic, collaborate with data engineers to design robust data models and data marts, and build scalable, high-impact Tableau dashboards. You will also support the transition of reports and dashboards to our new Snowflake environment and provide actionable insights to stakeholders across finance, CRM, marketing, and operations.

We’re looking for someone who is independent, proactive, and adaptable—comfortable managing their workload, collaborating across teams, and driving solutions forward with minimal supervision. The ideal candidate is passionate about analytics, confident in SQL and data modeling, and experienced in working alongside engineers and analysts to translate business needs into technical solutions.

Key Responsibilities


  • Analyze SQL queries in Tableau and Snowflake datasets to extract key KPIs, metrics, and business logic.
  • Collaborate with data engineers to build robust reporting data models and data marts in Snowflake.
  • Act as a bridge between stakeholders and data engineering—gathering requirements, clarifying business definitions, and ensuring accurate metric implementation.
  • Design, develop, and optimize Tableau dashboards aligned with business needs and performance standards.
  • Support the migration of reports and dashboards to the new Snowflake environment.
  • Conduct data analysis to generate actionable insights for finance, CRM, marketing, and operations teams.
  • Clearly communicate new data models and metrics to BI and data analysts to ensure adoption and consistency.
  • Provide support for ad hoc data analyses, reporting requests, and broader data initiatives.
  • Contribute to data governance by documenting definitions, processes, and ensuring consistency across the organization.
  • Assist in advanced analytics initiatives, such as fraud detection, customer segmentation, churn analysis, and performance tracking.

Required Skills & Competencies


  • 2–4 years of experience in a data analytics role, ideally within the casino, iGaming, or online entertainment industry.
  • Strong SQL skills for data extraction, transformation, and analysis.
  • Experience with Snowflake and dbt (or similar tools) for data modeling and ETL.
  • Proficiency in Tableau or similar BI tools (e.g., Power BI), including dashboard design and optimization.
  • Solid understanding of SQL-based data modeling, warehousing principles, and KPI frameworks.
  • Ability to work independently, manage competing priorities, and proactively solve problems.
  • Strong analytical mindset with excellent attention to detail.
  • Excellent communication skills for both technical and non-technical audiences.
  • Familiarity with tools like Jira for backlog and task management (a plus).
  • Understanding of data privacy considerations in analytics.
  • Bachelor's degree in Mathematics, Statistics, Computer Science, Economics, or a related field (preferred).

Why Join Us


  • Work with a talented, collaborative team on meaningful, high-impact projects.
  • Help shape the future of analytics in a fast-growing, innovative company.
  • Gain hands-on experience with cutting-edge cloud data platforms and tools.
  • Enjoy flexibility, autonomy, and strong opportunities for professional growth.

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National AI Awards 2025

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