Data Engineer

Ignite Digital
Milton Keynes
2 days ago
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Location: Milton Keynes (Hybrid) or remote working / home based within the UK with very occasional office visits


Are you a Data Engineer passionate about cloud data solutions, modern data architectures, and scalable ETL/ELT processes? Join a forward-thinking organisation in the financial services sector, driving data transformation and innovation.


About the Role

As a Data Engineer, you will play a key role in developing and optimising data pipelines, integrating structured and unstructured data, and supporting the evolution of a modern Snowflake cloud-based data platform. This role involves working with Snowflake, data lakehouse architectures, and cloud technologies to ensure robust, scalable, and efficient data processing.


Key Responsibilities

  • Develop and maintain ETL/ELT processes to ingest, transform, and integrate data from multiple sources into Snowflake and data lakehouse environments
  • Design and optimise data models and schemas for both structured and unstructured data with a snowflake environment
  • Enhance cloud data capabilities, working with AWS S3, Azure Data Lake, and Apache Spark
  • Collaborate with cross-functional teams to ensure data availability for advanced analytics and reporting
  • Automate workflows, implement CI/CD pipelines, and maintain data integrity and quality
  • Stay ahead of emerging technologies to drive continuous improvement and innovation in data engineering

Key Skills & Experience

  • Proven experience in data engineering, data warehousing, and data lakehouse development
  • Hands‑on expertise in Snowflake and cloud platforms (AWS, Azure)
  • Strong SQL and programming skills in Python, Java, or Scala
  • Experience with data integration tools, APIs, and real‑time data processing
  • Knowledge of BI tools (Tableau, Power BI) and ETL/ELT frameworks (Talend preferred)
  • Excellent problem‑solving and stakeholder communication skills

Why Join Us?

  • Work on cutting‑edge cloud and data projects in a fast‑moving, innovative environment
  • Be part of a collaborative, inclusive, and forward‑thinking team
  • Career growth opportunities, training, and professional development
  • Influence the future of data strategy and analytics within a leading organisation
  • 10% bonus
  • Excellent 10.5% company pension contributionComprehensive healthcare package
  • Flexible working arrangements – Milton Keynes (Hybrid) or remote working / home based within the UK with ad hoc and occasional office visits
  • Modern tech stack and innovation‑focused environment
  • 27 days annual leave (plus bank holidays) and a holiday purchase scheme
  • Life Assurance (×4 salary), subsidised private medical insurance, cycle‑to‑work scheme, employee discounts platform, including gym discounts, 24/7 employee assistance programme supporting your mental wellbeing, 2 days volunteer leave, etc.


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