Data Engineer

City of London
5 days ago
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A Data Engineer is required to support the development and improvement of data pipelines within a Microsoft-based analytics environment. The role focuses on ingesting, transforming, and standardising data from multiple sources to enable reliable reporting and analytics.

Key Technical Responsibilities

  • Design, build, and maintain data pipelines using SQL, Python, and R

  • Ingest and transform structured and semi-structured data within Microsoft Fabric

  • Improve data quality, performance, and reliability across existing pipelines

  • Prepare analytics-ready datasets optimised for Power BI consumption

  • Apply data modelling and transformation best practices

  • Identify and resolve data inconsistencies, missing data, and schema issues

  • Maintain documentation aligned to data governance standards

    Technical Requirements

  • Strong SQL for data transformation and modelling

  • Python experience for data processing and automation

  • Working knowledge of R in a data or analytics context

  • Hands-on experience with Microsoft Fabric or closely related Microsoft data platforms

  • Understanding of how engineered data supports Power BI reporting

  • Experience working with incomplete, inconsistent, or poorly structured data

    Desirable

  • Experience in regulated or data-intensive environments

  • Exposure to cloud-based Microsoft data technologies

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