Data Engineer

Henderson Scott
London
4 days ago
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Data Engineer - Azure Databricks - 6 month contract - London Hybrid (3 days onsite)

I am working with a well known consultancy who are looking for an experienced Data Engineer to join an ongoing project in London. The role will be Hybrid and flexibility to work 3 days onsite is expected.

You will design, build and maintain Azure Databricks data pipelines and ELT workflows, working with Medallion architectures to deliver reliable, well-modelled data sets for analytics and reporting for their Insurance client.

As such, I am keen to speak with candidates who have:

  • Proven background working as a Data Engineer in large, corporate environments
  • Strong hands-on experience with SQL and Python.
  • Background in data integration/ingestion using tools such as Informatica IICS, Azure Data Factory, notebooks and Databricks.
  • Experience with Delta Lake, data warehousing technologies and Azure cloud services.
  • Proven experience modelling, integrating and transforming insurance domain data,
  • Experience with both on-prem and cloud databases such as Oracle and SQL Server.
  • Familiarity with agile delivery frameworks (e.g. Scrum, SAFe) and tools such as Jira or Azure DevOps.
  • Knowledge of mass ingestion patterns, cloud data processing, data quality and master data management.
  • Understanding of data security considerations and tooling in platforms such as Databr...

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