Lead AWS Data Engineer

Opus Recruitment Solutions
London
5 days ago
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Lead AWS Data Engineer | London | Finance | AWS | Java | Outside IR35 | Contract | 12 Months

Opus is partnered with financial services client to deliver a major programme of work.

You’ll join an established engineering group, working alongside internal teams to build a new reporting workflow, upgrade an existing pipeline, and lead a full data‑sourcing uplift across multiple reporting workflows. The team will also be responsible for helping upgrade the framework for two critical internal workflows. This role will require you to be on site in either the London or Birmingham office 5 days per week, please only apply if you hit this criteria.

Required Experience

Strong background in data engineering within distributed data environments
Hands-on expertise with AWS, Spark, Glue, and Snowflake
Experience building and optimising data pipelines & reporting workflows
Ability to work closely with internal engineering and controls teams
Experience upgrading or modernising existing workflows and frameworks
For Lead-level: prior experience leading engineering teams or workstreamsTech Stack
AWS (Glue, S3, Lambda, Step Functions)
Apache Spark
Snowflake
Java
if you are interested in this role then please apply here or email me your most recent and up to date CV, along with your availability  to (url removed) 

Lead AWS Data Engineer | London | Finance | AWS | Java | Outside IR35 | Contract | 12 Months

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