Head of Finance

Cardinal Newman College
Preston
10 months ago
Applications closed

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Head of Finance

We welcome applications for this support post to commence as soon as possible.

The Head of Finance plays a key role at the college. This role is an exciting opportunity to contribute to
an outstanding sixth form college.

We are looking for the successful candidate to build on the strengths of the team and improve financial systems and processes. As a Roman Catholic sixth form coll...




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