GCP Data Engineer

Lime Street Recruitment Limited
London
5 days ago
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In the role you will be designing and developing complex data processing modules and reporting using Big Query and Tableau.

Read the overview of this opportunity to understand what skills, including and relevant soft skills and software package proficiencies, are required.

In addition, you will also work closely with the Infrastructure/Platform Team who are responsible for architecting, and operating the core of the clients Data Analytics platform.

You will: Work with both the business teams data scientists and engineers to design, build, optimise and maintain production grade data pipelines and reporting from an internal Data warehouse solution, based on GCP/Big Query Work with finance, actuaries, data scientists and engineers to understand how the client can make best use of new internal and external data sources Work with the clients delivery partners at to ensure robustness of Design and engineering of the data model/ MI and reporting which can support their ambitions for growth and scale BAU ownership of data models, reporting and integrations/pipelines Create frameworks, infrastructure and systems to manage and govern data assets Produce detailed documentation to allow ongoing BAU support and maintenance of data structures, schema, reporting etc.

Work with the broader Engineering community to develop the clients data and MLOps capability infrastructure Ensure data quality, governance, and compliance with internal and external standards. xjlbheb

Monitor and troubleshoot data pipeline issues, ensuring reliability and accuracy.

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