Data Engineer

Reed Technology Careers
Ipswich
2 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer


Data Engineering Analyst
Hybrid - Ipswich (3 days onsite, Tuesday & Wednesday mandatory)

Salary: £35,000-£50,000 (depending on experience)

REED Technology are working with a client who have created two positions at different levels to be a key part of an exciting transition: the organisation is moving its data warehouse from Netezza to Snowflake, and building an in-house data engineering capability for the first time.

If you want to help shape a modern data platform, support critical migrations, and work closely with BI and Analytics teams to deliver high-quality data products, this role offers significant technical growth and hands-on experience.

Responsibilities

  • Supporting the migration of data pipelines from Netezza to Snowflake.
  • Building reliable ELT/ETL processes, API integrations, and automated workflows (Workato).
  • Developing and maintaining data models that support BI and analytics use cases.
  • Ensuring data quality through cleansing, validation, and testing.
  • Troubleshooting data issues and ensuring consistency across datasets.
  • Working closely with BI Developers, Analysts, and business teams to deliver data they can trust.
  • Contributing to the establishment of new in-house data engineering standards.
  • Learning from and supporting the new Data Engineering Lead, Linda.

...

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