Data Engineer

Sanderson
London
6 days ago
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Sanderson are currently working with a client who are looking to develop their data engineering capability, this involves working on mission critical solutions that focuses on data services for their customers. You will be managing and developing data pipelines that transforms raw data, enabling downstream analytics.

You will be responsible for

  • Data pipeline development - Data ingestion and pipeline orchestration design and tooling.
  • Database schema design / database modelling
  • Data integration - Integrating and enriching data from various sources, ensuring data consistency and quality.
  • ETL processing design and coding - Extract transform and load processing
  • Maintain and develop existing architectural components
  • Work as part of an operational team investigating and diagnosing problems identified with integrated data.
  • Data security - Implementing data security measures to protect sensitive information.
  • Monitor and maintain - Monitor data systems for performance issues and make any necessary updates.

Required Skills

  • Apache Kafka
  • Apache NiFI
  • SQL and noSQL databases
  • ETL processing languages

This role will require eligibility to be clearable to DV Clearance

If you're interested in the above, apply or reach out to

Reasonable Adjustments:

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