Data Engineer

Nine Twenty
Glasgow
5 days ago
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Data Engineer

An established technology consultancy is looking to hire an experienced Data Engineer to work on large-scale, customer-facing data projects while also contributing to the development of internal data services. This role blends hands-on engineering with architecture design and technical advisory work, offering exposure to enterprise clients and modern cloud platforms.

You will play a key role in designing and delivering cloud-native data platforms, working closely with engineering teams, stakeholders, and customers from initial design through to production release. The role offers variety, autonomy, and the opportunity to work with leading-edge data technologies across Azure and AWS.

The role

As a Data Engineer, you will be responsible for designing, building, and maintaining scalable data platforms and pipelines. You will support and lead technical workshops, contribute to architecture decisions, and act as a trusted technical partner on complex data initiatives.

Key responsibilities include:

Designing and building scalable data platforms and ETL/ELT pipelines in Azure and AWS

Implementing serverless, batch, and streaming data architectures

Working hands-on with Spark, Python, Databricks, and SQL-based analytics platforms

Designing Lakehouse-style architectures and analytical data models

Feeding behavioural and analytical data back into production systems

Supporting architecture reviews, design sessions...

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