Senior SQL Data Engineer

Harnham
Wolverhampton, England
11 months ago
Applications closed

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Role: Senior SQL Data Engineer

Location: Wolverhampton, West Midlands

Hybrid working: go into office 3 days a week

Salary: £55,000 - £70,000 (dependent on experience)

Insight into the Company:

This organisation is a large, well-established bank who are looking to expand their existing Data Engineering team. You would be coming into a team of 10 Data Engineers as a Senior Data Engineer, and be responsible for maintaining the SQL Server, using T-SQL and building ETL pipelines.

The ideal candidate will have experience working in the financial sector and working with end-to-end processes.

Role and Responsibilities:

  • You will mentor junior members in the team
  • You will build ETL in SQL server
  • You will use SSIS and SSRS

Skills and Experience:

  • Essential to have experience with:
  • Expert level SQL and T-SQL
  • ETL pipelines
  • SSRS
  • Stakeholder skills

Interview Process

  • Interview with Data Engineering Manager
  • Interview with Data Engineering Manager and Senior Data Engineer on the team, including T-SQL tech test and soft skills

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