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Data Warehouse Engineer

Newark on Trent
4 weeks ago
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Data Warehouse Engineer
Newark, Full Time, Permanent, Hybrid working available
Salary up to £38,000 per annum

Our award-winning client, based in Newark, Nottinghamshire is seeking a highly skilled Data Warehouse Engineer to join their Data and Analytics team. This is a full time, permanent position with the opportunity for hybrid working.

THE ROLE

As a Data Warehouse Engineer, you will have the following responsibilities:

  • Design, develop, and maintain scalable data warehouse architecture and solutions to consolidate data from multiple sources.

  • Build and optimize ETL pipelines using modern tools, automation and best practices.

  • Develop and maintain dashboards, visualizations, and reports using Power BI.

  • Collaborate with business stakeholders to gather requirements, translate them into data solutions, and deliver actionable insights.

  • Ensure data integrity, quality, consistency and security across the warehouse and reporting environments.

  • Optimize performance of queries and data loads in the warehouse environment.

  • Troubleshoot and optimize models, efficient performance and maintain documentation of data models, data flows, and reporting solutions.

  • Leverage AI and machine learning tools to enhance reporting capabilities, automate data insights, and drive predictive analytics.

  • Participate in data governance and contribute to the continuous improvement of data architecture and standards.

    THE CANDIDATE

    The ideal Data Warehouse Engineer will possess the following skills:

  • 2+ years of experience in data warehousing, ETL development, and business intelligence reporting.

  • Strong experience with Power BI, including DAX, Power Query, and dashboard development.

  • Proficiency in SQL and data modelling techniques.

  • Strong analytical and problem-solving skills with an ability to work in agile development environment independently.

  • Experience with data warehouse platforms (e.g., Snowflake, Azure Synapse, Redshift, BigQuery, or similar).

  • Ability to work independently and manage multiple projects simultaneously.

  • Excellent communication and collaboration skills.

    THE BENEFITS

    As a Data Warehouse Engineer, you will receive the following benefits:

  • Paid volunteer day.

  • Onsite gym.

  • Ongoing learning and development.

  • Bonus paid day off for your birthday.

  • Annual wellbeing budget.

  • Increasing annual leave.

  • Company sick pay.

    Thank you for your interest in this vacancy and good luck with your application.

    If you have not heard from a member of the Future Prospects team within 7 days from your application, please assume that your application has not been successful on this occasion. Unfortunately, due to the high volume of applications we receive, we are unable to provide individual feedback.

    The services of Future Prospects are those of an Employment Agency

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National AI Awards 2025

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