Lead Data Engineer (AD -Consulting) - Exclusive

Anson McCade
england, united kingdom, united kingdom
1 week ago
Create job alert

Brand new and exclusive opportunity for Lead Data engineers to join a global technology and consulting leader as the company builds out its UK data consulting practice. This role is ideal for both hands on and strategic data engineers. If your passionate about AWS data solutions and are eager to build something new this this could be the ideal next career step.


What's on offer?

  • Salary £105k (Negotiable dependant upon experience)
  • Bonus scheme
  • Hybrid flexible working
  • Benefits pack
  • Open to candidates in the London, Leeds and Bristol areas
  • Plus more


What do I need?

  • Hands-on experience as a senior data engineer with AWS infrastructure.
  • Consulting experience
  • Proven ability to lead large engineering teams and deliver enterprise-scale solutions.
  • Expertise in ELT/ETL workflows and cloud data warehouse development.
  • Experience participating in RFI/RFP processes and crafting technical proposals.
  • Strong familiarity with data formats (JSON, Parquet, etc.) and RDBMS.
  • Eligible for SC clearance (public sector experience is a strong plus).


Nice-to-Have:

  • Experience with big data tools (e.g. Hadoop, Spark, MapReduce).
  • Exposure to microservices for data delivery and streaming architectures.
  • AWS certifications (e.g. Solutions Architect, Big Data).
  • Knowledge of data visualization tools (QuickSight, Tableau, Looker).
  • Interest in or exposure to Machine Learning.


O.K. I'm in what's next?

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