Data Engineer

R3vamp
Newbury
4 weeks ago
Applications closed

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Join to apply for the Data Engineer role at R3vamp.


This range is provided by R3vamp. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Base pay range

£45,000 – £60,000 (expected in the region of £45,000 - £60,000).


Direct message the job poster from R3vamp.


My client is seeking a Data Engineer to join an existing, multi-skilled IT team and support ongoing projects. You will be responsible for orchestrating data loading/workflows and managing data pipelines. Maintain, support, and build data warehouses using Azure SQL Technologies, work across consultants, BI Developers, Software Engineers & Stakeholders to understand requirements and translate them into technical solutions.


This is a hybrid position where you will be expected to work in the office 2 days a week in the South East of England. Ideally, you will have 2+ years of industry experience as a Junior Data Engineer, looking to level up your skills whilst working with Senior Engineers to work on cutting-edge technology to solve complex data problems.


To apply for this position or to seek more information about the role and my client, please contact me on .


Sponsorship is not available for my client and hybrid working is a must.


Experience and skills required:

  • Bachelor's in Software Engineering, Computer Science, Data Analytics etc.
  • Professional Industry Experience working on Microsoft Azure & SQL.
  • Strong understanding of SQL and Relational Database.
  • Understanding of data warehousing concepts and data architecture.
  • Strong analytical and problem-solving skills.
  • Excellent communication and teamwork abilities.

Seniority level

  • Mid-Senior level

Employment type

  • Full-time

Industries

  • Financial Services, IT System Data Services, and IT System Custom Software Development


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