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Data Engineer

Made Tech
Gloucester
1 week ago
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Our Senior Data Engineers enable public sector organisations to embrace a data-driven approach by providing high-quality, cost-efficient data platforms and services tailored to clients' needs. They develop, operate, and maintain these services, ensuring maximum value for data consumers, including analysts, scientists, and business stakeholders.

As a Senior Data Engineer, you may assume multiple roles based on our clients' needs. The role is highly hands‑on, supporting project delivery as a senior contributor and upskilling client team members. You might also take on a technical architect role, collaborating with the MadeTech team to identify growth opportunities within the account.

You’ll need a drive to deliver outcomes for users, considering the broader context of delivery and maintaining alignment between operational and analytical aspects of the engineering solution. Skills, knowledge and expertise: we seek candidates with a range of skills and experience; please apply even if you don’t meet all criteria.

Core Skills and Experience
  • Enthusiasm for learning and self-development
  • Proficiency in Git (including Github Actions) and understanding of branch strategies
  • Experience gathering and meeting requirements from clients and users on data projects
  • Strong experience in Infrastructure as Code (IaC) and deploying infrastructure across environments
  • Managing cloud infrastructure with a DevOps approach
  • Handling and transforming various data types (JSON, CSV, etc.) using Apache Spark, Databricks, or Hadoop
  • Understanding modern data system architectures (Data Warehouse, Data Lakes, Data Meshes) and their use cases
  • Creating data pipelines on cloud platforms with error handling and reusable libraries
  • Documenting and presenting end-to-end data processing system diagrams (C4, UML, etc.)
  • Implementing robust DevOps practices in data projects, including DataOps tools for orchestration, data integration, and analytics
  • Enhancing resilience through vulnerability checks and testing strategies (unit, integration, data quality)
  • Applying SOLID, DRY, and TDD principles practically
  • Agile methodologies such as Scrum, XP, and Kanban
  • Designing and implementing efficient batch and streaming data transformations at scale
  • Mentoring, team support, and line management skills
  • Commercial mindset to grow accounts organically with senior stakeholders
Desirable Experience
  • Working in a technology consultancy
  • Using Docker and virtual environments in CI/CD
  • Engaging with senior stakeholders for requirements gathering
  • Collaborating with engineers via pair or mob programming
  • Working with data scientists to productionise machine learning models
  • Knowledge of statistics
  • Collaborating across multidisciplinary teams
  • Experience within the public sector


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