Data Engineer - AWS | London Insurance

London
2 hours ago
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AWS Data Engineer (Contract, Hybrid, London - Delivery-focused) 

Opus are looking for a highly experienced Data SME with strong AWS expertise to support a long‑term cloud data transformation programme. The role will act as the key technical link between client stakeholders and offshore delivery teams, driving delivery of a modern, scalable data platform.

Responsibilities:

Lead client engagement, run agile ceremonies, and provide technical leadership.

Own delivery end to end, managing risks, progress, and scaling activities.

Review data architectures and solutions in line with AWS best practices.

Coordinate and align offshore teams to ensure consistent delivery.

Maintain governance, security, and engineering standards throughout.Skills Required:

Deep hands‑on experience with AWS data services (Glue, Redshift, Lambda, Spark, Delta Lake)

Strong data engineering and architecture background (ETL/ELT, Lakehouse, MDM).

Proven offshore delivery leadership and stakeholder management.

Lloyd’s / London Market experience desirable.Interviews are taking place this week, and next.

Please reach out to Adam Akhtar at Opus Recruitment for more detail. (url removed)

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