Data Engineer (Azure)

Hays Technology
London
3 days ago
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Your new company
Working for a renowned financial services organisation

Your new role
Seeking a Data Engineer to help design and maintain scalable batch and near‑real‑time ingestion pipelines, modernizing legacy ETL/ELT processes into Azure and Snowflake, and implementing best‑practice patterns such as CDC, incremental loading, schema evolution, and automated ingestion frameworks. They build cloud‑native solutions using Azure Data Factory/Synapse, Databricks/Spark, ADLS Gen2, and Snowflake capabilities including stages, file formats, COPY INTO, and Streams/Tasks to support raw‑to‑curated data modelling.

The role involves creating reusable components and Python libraries to accelerate delivery across teams, enforcing data quality through validation, observability, and robust pipeline design, and ensuring strong security, governance, and documentation standards. Collaboration within agile workflows-including CI/CD, code reviews, and iterative planning-is also key to delivering consistent, reliable, and secure data solutions.

What you'll need to succeed

Strong hands-on data engineering experience, with strong focus on data ingestion
Experience building production pipelines using Azure Data Factory, Databricks, Synapse
Solid SQL skills and experience working with modern cloud data warehouses, ideally Snowflake
Proficiency in Python for data processing, automation, and pipeline utilities...

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