Data Engineer

Robert Walters
Peterborough
3 weeks ago
Applications closed

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Data EngineerPeterborough (hybrid with occasional travel to the office)£50,000 to £70,000Permanent

I am currently recruiting for a Data Engineer to join a forward-thinking organisation based in Peterborough, where you will play a pivotal role in the ongoing transformation of their data infrastructure. Currently transitioning to Databricks, you will ensure seamless migration and optimisation of data pipelines.

Data Engineer - What will you be doing?

* Collaborating with team members to migrate existing data pipelines from legacy systems to the new Databricks platform.* Supporting the ongoing build-out of the Databricks environment by developing robust, scalable data solutions that meet current and future business needs.* Maintaining dual operations across both legacy and modern stacks, ensuring reliable data flow and system integrity during the transition period.* Contributing to the strategic roadmap for data engineering by providing insights, feedback, and technical recommendations that align with organisational goals.* Troubleshooting issues related to data integration, pipeline performance, and platform dependencies.* Working closely with other engineers and business users to understand requirements, translate them into technical specifications, and deliver effective solutions.

Data Engineer - What will you need?

* Experience working with Databricks or a similar cloud-based data p...

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