Operations Manager

Upper Holloway
8 months ago
Applications closed

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An exciting opportunity has arisen to join the Whittington Health - NHS as an Operations Manager for the Temporary Staffing Team.

This post will act upon the analysis provided by the data analyst. They will support divisions and departments in transitioning away from high-cost agency and locums, day-to-day operational activities such as fill issues, be a liaison between a third party, who provide temporary staff and the divisions and departments, support in increasing onboarding and compliance processes.

Responsibilities:

  • To pick up day-to-day activity

  • Supporting managers and divisions

  • Link between a third party and the divisions.

  • Oversight on process and compliance.

  • Addressing operational issues.

    Experience Required:

  • Temporary Staffing experience/knowledge

  • Can deal with a fast paced, high-pressured environment.

  • Previous experience in an Operations role

  • Excellent organisational and time management skills

  • Strong communication abilities, both written and verbal

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