Data Engineer - Inside IR35 - Remote

Tenth Revolution Group
London
3 days ago
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Data Engineer - Inside IR35 - Remote

A strong Data Engineer is required to work on a Data Transformation workstream within a complex, end-to-end service delivery environment. The role supports a programme focused on modernising and transforming a large-scale national service through secure, scalable, and data-driven digital capabilities.

Working as part of a small team of data specialists, you will design and build robust data ingestion and transformation pipelines across multiple source systems. You will play a key role in identifying and resolving data quality issues, shaping future target datasets and structures, and producing auditable, reproducible outputs.

The core focus of this role is to build secure, repeatable data pipelines, implement data cleansing and standardisation rules, and ensure high-quality, traceable data products suitable for operational and analytical use.

Essential Skills & ExperienceData Engineering & Pipelines

  • Establish import/export patterns, including handling data extracts, schema discovery, incremental loads, and multiple source system instances

  • Build transformation-heavy pipelines covering data profiling, cleansing, standardisation, conformance, and publishing

  • Advanced SQL skills for data profiling, joins and merges, deduplication, anomaly detection, and performance tuning

  • St...

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