Business Intelligence Developer

Sheffield
2 weeks ago
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In this role you will:

  • Work alongside a team of data engineers in the design, development, and maintenance of data management solutions, including data modeling, ETL processes, and data pipelines.

  • Develop and implement data quality checks and monitoring processes to ensure data accuracy and integrity.

  • Design and build infrastructure.

  • Design and develop reports, dashboards, and visualisations to provide insights into business performance.

  • Proactively identify and resolve technical issues, including data anomalies, performance bottlenecks, and data quality problems.

  • Drive technical governance initiatives, including documentation, data lineage, and data access control.

  • Participate in architecture discussions.

  • Evaluate and recommend new technologies and tools to improve the efficiency and effectiveness of the team.

  • Work with a collaborative global team of varied disciplines, skills, and experience.

    To be successful in this role, you should meet the following requirements:

  • Sheffield office attendance is mandatory, either 2 days per week, or 8 days per month.

  • Experience with working with Cloud Computing (Google Cloud Platform preferable).

  • Strong SQL skills and proficiency in at least one programme language e.g. Python.

  • Experience with data processing framework Apache Flink.

  • Experience with workflow management tool Apache Airflow.

  • Excellent communication and collaboration skills, with the ability to effectively interact with both technical and non-technical stakeholders.

  • Strong problem-solving skills and a proactive approach to identifying and resolving issues.

  • Experience with agile development methodologies.

  • Positive, proactive, and can-do attitude

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