Data Warehouse Manager

ShortList Recruitment Limited
Chester
2 months ago
Applications closed

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Location: Chester

ShortList Recruitment are working with an excellent Chester-based client who are recruiting for a Data Warehouse Manager to join their growing team.

The Data Warehouse Manager will ensure the data warehouse team is managed appropriately, scheduled jobs run without error and are delivered within SLA. This is a hands-on role which will primarily support the business with SAS, being used as the primary tool for analytics, data mining, data warehousing and production of MI/BI.

Responsibilities

Key responsibilities include:

  • Management of the data warehouse team
  • Ensure scheduled jobs run without error and are delivered within SLA
  • Support the business with SAS for analytics and data warehousing

Nice to have skills for the Data Warehouse Manager role:

  • At least 3 years of experience in a data-related role
  • Experience managing a technical team
  • SAS
  • SQL
  • Oracle
  • Understanding of ETL
  • Python

In return, the Data Warehouse Manager can expect a salary up to £60,000 DOE + benefits. The role will be based in the Chester offices, but will be on a hybrid working model with the flexibility to work from home 3 days per week.

The role is commutable from North Wales, Birkenhead, Liverpool, Runcorn, Warrington, and Widnes.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

Staffing and Recruiting


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