Data Engineer

BIOMETRIC TALENT
Preston
3 months ago
Applications closed

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About the Client

Our client is a long-established, service-focused business delivering intelligent, data-driven solutions that help organisations increase efficiency, reduce operational risk, and streamline complex logistical processes. With a strong reputation for reliability and innovation, they serve a diverse portfolio of national and regional clients, many of whom rely on their services as a critical part of day-to-day operations.

They pride themselves on combining technology with exceptional service delivery, offering bespoke solutions tailored to the evolving needs of their customers. The organisation continues to invest in digital transformation and strategic partnerships to remain at the forefront of operational excellence. Known for a collaborative and pragmatic culture, they value long-term relationships and continuous improvement.


How youll spend your day

Youll play a key role in building, maintaining, and optimising data pipelines and transformation workflows.
Your focus will be on ensuring data integrity, reliability, and performance across the organisations cloud-based analytics environment.

  • Develop and maintain automated data ingestion pipelines using Fivetran.
  • Implement and manage dbt models for scalable data transformations.
  • Monitor and optimise Snowflake performance and costs.
  • Ensure version control...

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