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Data engineer

Luxoft
City of London
4 weeks ago
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Project description

Luxoft is looking for a Senior Data Engineer for development of new application to be used by investors and investment committees to review their portfolio data, tailored to specific user groups.


Responsibilities

  • Work with complex data structures and provide innovative ways to a solution for complex data delivery requirements
  • Evaluate new and alternative data sources and new integration techniques
  • Contribute to data models and designs for the data warehouse
  • Establish standards for documentation and ensure your team adheres to those standards
  • Influence and develop a thorough understanding of standards and best practices used by your team

SKILLS
Must have

  • Seasoned data engineer who has hands‑on experience in AWS to conduct end‑to‑end data analysis and data pipeline build‑out using Python, Glue, S3, Airflow, DBT, Redshift, RDS, etc.
  • Very solution‑driven, and highly collaborative at providing thought leadership and soliciting diverse opinions
  • Accountable for results. Experienced in leading team of data engineers to work collectively to deliver solutions on time
  • Experience on operating in agile (scaled Agile) setting.


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