Senior Data Engineer

Tenth Revolution Group
Nottingham
1 month ago
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Connecting top Cloud, Data and AI talent with Organisations across the UK

Senior and Mid-Level Data Engineering Roles - Remote - £50k - £75k

My client is a young, expanding Microsoft Partner actively seeking senior and mid-level data engineers to join their in-demand data engineering team. If you are experienced with the Azure Data Stack and have consulting experience, this is a great opportunity for you.

Salary and Benefits

  • Salary of £50k - £75k (DOE)
  • Discretionary bonus of up to 10%
  • Fully remote working (office attendance once per month)
  • And many more!

Role and Responsibilities

  • Collaborate with clients to gather requirements and develop tailored Azure-focused solutions
  • Deploy and manage Azure Data Factory, Synapse, Data Lake Storage, Python
  • Navigate clients' ERP environments (particularly SAP and/or Dynamics 365)
  • Identify and share opportunities to reuse existing data flows
  • Build data-streaming systems
  • Apply systems integration knowledge
  • Promote data engineering best practices within the business
  • Senior roles require leading projects, mentoring, and ensuring best practices

Requirements to Apply

  • Expertise in Python
  • Expertise in the full Azure Data Stack
  • ERP experience
  • Desirable skills: MS Fabric, Databricks, PySpark, Power BI

Our client has limited interview slots and aims to fill this vacancy by the end of the month. If interested, send your updated CV to or call .

Please Note: This is a permanent role for UK residents only. No sponsorship is provided. You must have the right to work in the UK without restrictions. Background checks may be required.

TRG is the leading recruiter for Power BI and Azure Data Platform roles in the UK. We are sponsors/supporters of SQLBits, Power Platform World Tour, Power BI User Groups, and Data Platform and Cloud User Groups in Newcastle. Contact me for confidential job search or hiring discussions at

Seniority level

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Consulting

Industries

  • IT Services and IT Consulting

Referrals can double your chances of interview success at Tenth Revolution Group.


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