GCP Data Engineer - Tableau, Basel III / Basel 3

We Are Dcoded
Manchester
1 week ago
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GCP Data Engineer - Digital Bank | Outside IR35 - Tableau, Basel III, BigQuery

Location: Remote-first (occasional travel to client site in Northern England)
Duration: 6 months
Engagement: Outside IR35
Day Rate: £400-450pd
Start: ASAP
Client: Leading Data Consultancy supporting a high-growth Digital Bank



About the Role

We Are Dcoded are partnered with a specialist consultancy delivering high-impact data, analytics, and cloud programmes across financial services. Their end-client, a leading digital bank, is scaling capability across its regulatory data environment and requires an experienced GCP Data Engineer to support a Basel III framework build-out.

This assignment sits within a high-performing engineering squad and will focus on enhancing data pipelines, regulatory data models, and analytics capability underpinning Basel III/III.I compliance.



Key Responsibilities

  • Develop, optimise, and maintain end-to-end data pipelines and ETL workflows within Google Cloud Platform (GCP).

  • Work closely with data, risk, and regulatory SMEs to ensure datasets meet Basel III/III.I standards.

  • Support analytical reporting through integration and modelling for Tableau dashboards.

  • Build and enhance BigQuery architectures, ensuring scalabi...

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