Principal Data Engineer

Anson McCade
Leeds
7 months ago
Applications closed

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Job Description

Principal Data Engineer, Consulting


Leeds Based


You must be eligible for SC Clearance


Role Overview

The Principal Data Engineer will be responsible for designing and implementing cloud-based data solutions using a range of AWS services. This role involves working closely with clients to define requirements, build custom solutions, and transfer knowledge to client technical teams. The ideal candidate is passionate about problem-solving, thrives in greenfield project environments, and enjoys working both independently and collaboratively.


Key Responsibilities as a Principal Data Engineer

  • Propose and implement data solutions usingAWS servicesincludingS3, Redshift, Lambda, Step Functions, DynamoDB, AWS Glue, and Matillion.
  • Work directly with clients to define requirements, refine solutions, and ensure successful handover to internal teams.
  • Design and implementETL/ELT pipelinesfor cloud data warehouse solutions.
  • Build and maintaindata dictionaries and metadata management systems.
  • Analyze and cleanse data using a range of tools and techniques.
  • Manage and process structured and semi-structured data formats such asJSON, XML, ...

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