Commercial Estate & Service Manager

Jackson Sims Recruitment Ltd
London
2 months ago
Applications closed

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Job purpose:

  • A key role in ensuring the Estate and Services Management of the Campus is operating efficiently, effectively and safely in line with expected high standards and operational business strategies, working with all departments and external service partners to ensure delivery in line with our overall Mission, Vision, Values and Objectives.

Key accountabilities:

  • Estate Management by facilitating the planning, developing and implementation of the Estate strategy and planner across the 33-acre site area
  • Keeping all external areas, gardens and grounds clean and maintained through effective management of contractors.
  • Contract Management by taking an active lead in managing Service Partner contract such as Guest Services (Cleaning) and Landscaping & Wildlife, and supporting additional Service Partner contracts where necessary
  • Day to day management of the highest standards of excellence for all areas across the Estate and Services in line with the Enjoy-Work Operations
  • Full financial accountability for the Estate and Services budgets ensuring accurate tracking, and involvement in forecast planning
  • Business continuity by supporting Project, Lifecycle Replacement and Fabric work on the Estate
  • Influencing sustainable asset management in line with the business strategy. Working with the Sustainability Data Analyst and Waste & Recycling Manager on...

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