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LUF – Works Package 4.3 – Castle Grounds & Keep, Canterbury

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Close date

2025-09-12

Description

Canterbury City Council wishes to select and appoint a suitable supplier for the provision of LUF – Works Package 4.3 – Castle Grounds & Keep, Canterbury and invites tenderers to submit a tender to meet the Council’s requirements: Description of works. This project involves the regeneration of the Canterbury castle grounds and the manufacture and installation of a new raised walkway within the historic castle keep. Works will include: Hard and Soft Landscaping: • Earthworks • Creating new soft landscape areas • Creating new hard landscape areas using new and reclaimed historic paving and kerbs • Installation of new street furniture including benches, bins and signage • Installation of new lighting Castle Keep – Viewing Platform: • Manufacture and installation of castle walkway • Hard landscaping works to the interior of the castle • Installation of new lighting The specific requirements for the above are detailed in the Suite of documentation. It should be noted that by submitting a tender, you confirm that you understand and can meet these requirements. The Contract is anticipated to commence September / October 2025 and has to be completed by March 2026 (unless terminated early in accordance with the terms and conditions of the Contract). Keywords: Landscaping Works

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