Client Relationship Manager, Office Based with Travel, Wigan

Carrington Recruitment Solutions
Wigan
11 months ago
Applications closed

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Client Relationship Manager, Office Based with Travel, Wigan, Greater Manchester

Client Relationship Manager required to work for a fast growing and exciting company based in Wigan, Greater Manchester. They work with both private clients and the public sector to locate missing Next of Kin and beneficiaries to an estate. They are now one of the countrys largest genealogists/heir hunter firms and due to substantial organic growth, are looking to recruit a Data Analyst.

Role summary

The Client Relationship Manager (CRM) is a new role due to company growth.

As the CRM you will work alongside our Business Development Team and engage with new, current, and long-term clients to build solid working relationships.

You will serve as the main point of contact to ensure our clients are satisfied with our services and will work collaboratively with the Private Client Department.

The CRM must be knowledgeable about all Estate Research Private Client services, highly organised, have an eye for detail & be able to confidentiality & professionally communicate with heads of department/decision makers.

Day to day tasks:

Managing the relationships of approximately 200 3000 firms of solicitors; this will involve maintaining regular contact with the overall goal of raising the volumes of enquiries received by an average ...

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