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Data Engineer

Primis
Southampton
7 months ago
Applications closed

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Please Note: We cant offer Sponsorship


Due to company expansion - We are looking for an experienced Data Engineer to help design and build data systems that bring more value to the business, by creating strong, automated pipelines that collect, clean, organise, and share data in useful ways.


Key Responsibilities:

  • Implementing and managing data quality checks to ensure accuracy, consistency, and completeness across integrated data sources.
  • Strong ability to design and deploy data architectures that drive analytical and business value across diverse data sources.
  • Experience working in dynamic, agile environments, collaborating daily with data engineers, analysts, product managers, architects, and other internal stakeholders.


Tech Stack:

3+ Years Scripting with Python, PowerShell or Perl

3+ Years Snowflake, cloud platforms (AWS, Azure, GCP)

Experience with Datawarehouse solutions and ELT/ETL



Please apply with your updated cv to

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