Senior Data Engineer

IO Associates
Newcastle upon Tyne
3 days ago
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Our client, a leading financial services organisation undergoing significant growth, is seeking a Senior Data Engineer with strong Databricks expertise to drive high-value data initiatives within the reinsurance and investment domain. This role centres on building scalable data solutions, optimising analytical workflows, and partnering with senior business experts to deliver insight-driven outcomes.

Key Responsibilities

Develop and optimise data pipelines on Databricks , leveraging Spark for large-scale processing.

Design and implement data models, mapping, and transformation workflows across complex financial datasets.

Use Python (Pandas, NumPy) and SQL to support advanced analytics and data manipulation.

Collaborate with business SMEs to translate requirements into robust, production-ready data solutions.

Integrate Databricks with GCP/BigQuery to support cloud-native data engineering initiatives.

Essential Skills

Hands-on Databricks experience , including Spark, Delta Lake, and workflow orchestration.

Strong SQL for complex querying and optimisation.

Python proficiency , especially for data wrangling and automation.

Financial domain knowledge , ideally asset management, investment operations, or asset data.

Degree in investments, accounting, or actuarial science from a UK university.

Desirable

Experience with dbt for transformation pipelines.

Background in reinsurance, life insurance, or investment-focused projects .

Familiarity with GCP/BigQuery in a production environment.

If you're a Databricks-savvy engineer ready to make an immediate impact in a high-performing financial environment, send your CV to be considered.

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