Data Engineer

Gillingham
1 day ago
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Our client are passionate about providing a 5* customer service to its clients. This busy expanding company want to add experienced Data Analysts to the existing staff.

A skilled Data Analytics Engineer would drive the development and optimisation of the data infrastructure, with a primary focus on analytics engineering to support revenue and business insights. This role is essential in empowering data-driven decision-making by creating and managing data pipelines, ensuring data quality, and developing reports and dashboards for key stakeholders.

Responsibilities:

  • Data Pipeline Management: Build and maintain reliable data pipelines to integrate, clean, and structure data from various sources and internal databases.

  • Data Modelling & Storage: Design and optimise data models for reporting and analytics, ensuring scalability and alignment with revenue and catalogue reporting needs.

  • Analytics & Reporting Support: Enable business teams with actionable insights by creating scalable data sources for BI tools.

  • Data Quality Assurance: Implement data validation, error handling, and quality checks to maintain high standards across the data ecosystem.

  • Collaboration: Work closely with finance and operations teams to ensure data solutions meet business goals and collaborate with stakeholders to refine data requirements.

    Require Skills & Qualifications

  • 3-5 years in data engineering or a similar role, with expertise in pipeline development, data integration and business analytics support.

    Technical Skills:

  • Strong SQL or Python skills

  • Proficient in cloud data warehousing and data modelling

  • Experience with Bi tools

  • Data validation, automated quality checks and troubleshooting

  • Familiar with cloud automation

    Professional Skills:

  • Ability to align data projects with business goals and translate insights into actionable recommendations.

  • Strong communication skills, with the ability to present technical findings to non-technical audiences.

  • Analytical problem-solving to diagnose and resolve data pipeline issues.

  • Collaborative mindset to work with stakeholders across finance, operations, and leadership.

  • High attention to detail, ensuring data accuracy and maintaining clear documentation.

    If you’re a data-driven problem solver looking to make a real impact, we’d love to hear from you! Apply now to be part of a growing team and help shape our company's future.

    Benefits:

  • Free parking

  • On-site gym

  • On-site parking

  • Store discount

  • Work from home Hybrid

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