Data Engineer

Vector Resourcing
London
3 days ago
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Job Profile

Our client is delivering a defined data programme to transform customer data from multiple UK locations into real-time, actionable insights. They are seeking an experienced Data Engineer (AWS) to deliver scalable data pipelines, data models, and dashboards that support regional and time-based reporting. The role is focused on the delivery of clearly defined outcomes within an AWS data platform.


Responsibilities

  • Deliver end-to-end data pipelines to ingest, process, and structure customer data from multiple sources
  • Design and implement AWS-based data architecture and data models to support real-time analytics
  • Populate, optimise, and maintain an AWS Redshift data warehouse
  • Produce Tableau dashboards and reporting aligned to agreed business metrics
  • Engage with programme teams and stakeholders to define reporting requirements and acceptance criteria
  • Ensure data solutions meet agreed performance, quality, and scalability standards


Skills

  • Proven experience delivering data engineering solutions in AWS environments
  • Strong hands-on experience with AWS services including Redshift, S3, Lambda, and DynamoDB
  • Advanced SQL and Python development skills
  • Experience integrating data via APIs
  • Tableau dashboard development and data visualisation experience

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