Data Engineer

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Belfast
4 days ago
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Job description Data Engineer Location: Belfast - Remote Eligibility: UK work authorisation required (no sponsorship available) We're looking for a Data Engineer who wants to help shape, grow, and modernise a data engineering function from the ground up. This is an opportunity to design and build data capabilities that directly influence business growth and unlock meaningful insights across the organisation. You'll join a curious, outcome-driven team that values autonomy, creativity, and practical problem-solving. If you enjoy working in small, empowered teams and want room to experiment, iterate, and master your craft - this is the place to do it. Why join? * Small teams, big impact - Clear goals, support when needed, and freedom to deliver without unnecessary blockers * Room to grow - A culture that encourages experimentation, learning, and continuous improvement * Solving real problems - Build data solutions that directly support the needs of customers and internal stakeholders * Modern environment - Work with cloud-native tools, automation, and best-in-class engineering practices What you'll be doing: * Designing and maintaining scalable, cloud-native data pipelines and workflows (ETL/ELT) * Modelling and transforming data from diverse sources to support analytics, reporting, and decision-making * Improving data quality, performance, and reliability across the data ecosystem * Troubleshooting pipeline issues, resolving discrepancies, and participating in on-call support when needed * Prototyping analytical tools and automation to enhance operational efficiency * Collaborating with BI, Finance, and cross-functional teams to deliver reliable, high-performing data solutions * Maintaining documentation across configurations, test scripts, and specifications * Contributing to agile ways of working and continuous engineering improvements What you'll bring: * Bachelor's degree in computer science or a similar technical field * Experience working with SQL, Java and ingestion tools * Familiarity with cloud data warehouses or ELT tools (Snowflake, Redshift, DBT) - nice to have * Experience working in Agile teams * Knowledge of version control and automation * Understanding of cloud storage concepts Interested? Reach out to Justin Donaldson for more details or to apply directly. Skills: SQL Java ETL ELT Cloud Airflow Automation Benefits: Work From Home

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