Data Engineer

Bada Bingo
Nottingham
22 hours ago
Create job alert
Job Title: Data Engineer

Location: Hybrid
Contract Type: Permanent / Full-Time


About the Role

Are you passionate about technology and eager to make a real impact? At Buzz Bingo, we’re looking for a Data Engineer who thrives on innovation and enjoys working across a diverse technology stack.


The systems you’ll support underpin both our in-club and online customer experiences, giving you the opportunity to influence how thousands of people interact with Buzz Bingo every day.


What You’ll Do

  • Data Pipeline Development: Design, implement, and maintain robust ETL/ELT pipelines for ingesting and transforming data from multiple sources.
  • Data Modelling: Create and maintain models that support analytics and reporting needs, ensuring data integrity and consistency.
  • Database Management: Administer and optimize relational databases for efficient storage and retrieval of large datasets.
  • Collaboration: Work closely with software engineers, analysts, and business teams to deliver secure, reusable, and efficient data solutions.
  • Data Quality Assurance: Implement checks and monitoring processes to ensure accuracy and reliability.
  • Documentation: Maintain detailed technical documentation for data architectures, pipeline designs, and operational procedures.
  • Performance Tuning: Analyse and optimize workflows for performance and cost efficiency.
  • Innovation: Stay current with emerging technologies and best practices to continuously improve our data engineering capabilities.

What You’ll Get in Return

  • Help@Hand – 24/7 access to GPs, mental health support, and more for you and your family
  • Thrive App – NHS-approved mental wellbeing support
  • Buzz Brights Apprenticeships & Buzz Learning – access to 100s of online courses
  • Buzz Brilliance Awards – employee recognition scheme
  • 5 weeks annual leave plus public holidays (pro-rated for part-time roles)
  • Holiday Buy Scheme – purchase an extra week of holiday (eligibility applies)
  • 50% staff discount on bingo tickets, food, and soft drinks
  • Refer a Friend Scheme
  • Life Assurance & Pension Scheme
  • Access to trained Mental Health Advocates

What We’re Looking For
Essential Skills & Experience:

  • Proven experience as a Data Engineer or similar role, with strong knowledge of data warehousing and modelling.
  • Proficiency in C#, Python, Java, or Scala.
  • Hands‑on experience with ETL (e.g., SSIS) and orchestration tools (e.g., Azure Data Factory).
  • Strong SQL skills and experience with relational databases (MSSQL, PostgreSQL, MySQL).
  • Familiarity with Azure services (Fabric, Azure SQL, Synapse Analytics, Blob Storage) and hybrid cloud/on‑prem solutions.
  • Understanding of data security best practices, GDPR compliance, and governance frameworks.
  • Strong experience with data visualization tools (Power BI, Tableau, SSRS).
  • Knowledge of CI/CD pipelines and version control (Git).
  • Experience with SSAS cubes, Azure‑based data pipelines, and containerization technologies.

Desirable:

  • Familiarity with DAX Studio for performance tuning and query diagnostics.
  • Strong proficiency in DAX (Data Analysis Expressions) for creating complex measures, calculated columns, and tables
  • Background in retail, hospitality, or gaming/gambling sectors.

Ready to make an impact?

Apply now and help us build secure, scalable, and innovative data solutions for Buzz Bingo!


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