Solicitor / Conveyancer (Head of Department)

Coventry
1 month ago
Applications closed

Title: Solicitor / Conveyancer (Head of Department)

Location options: West Midlands.

The role:

We are seeking a Conveyancing Solicitor to Head the department departments in three local offices and be responsible for leading the team, as well as holding your own case load of residential conveyancing matters (experience to undertake commercial work would also be an asset).

You should have strong leadership, organisation and communication skills.

Key responsibilities:

  • Manage the team – a team of conveyancers across three offices,

  • Conducting team meetings, appraisals and supervision of staff;

  • Report to Members in respect of Risk, Compliance and Business;

  • Hold own caseload in all aspects of residential conveyancing;

  • Assist with training and compliance for the department;

  • Networking, to include maintaining and building relationships with estate agents.

    Skills:

  • Solicitor, Qualified Conveyancer

  • Previous experience of supervising staff;

  • Ability to meet deadlines and hold a busy caseload;

  • Excellent leadership and communication skills.

    #Conveyancerjobsmidlands, #Solictitorjobsmidlands, lawyerjobsmidlands,

    About Brimstone Consulting: We specialise in finding highly qualified staff in the following areas: Forensic Accounting & Fraud - (AML/CTF, Investigation, CFE’s etc.); Legal and LegalTech (E-Discovery, Digital Forensics, EDRM); Big Data and Data Analytics- (MI/BI/CI); InfoSec and Cyber Crime; Audit; Accountancy and Finance; FinTech (Payments etc.); Risk - (Credit, Regulatory, Liquidity, Market, Analysts-SAS, SPSS etc.); Compliance/Corporate Governance; IT- (full SDLC- BA’s PM’s , Architects, Developers etc.);

    Brimstone Consulting acts as an employment agency (permanent) and as an employment business (temporary) - a free and confidential service to candidates. Brimstone Consulting is an equal opportunities employer. Due to time constraints we can only reply to applicants that match our clients’ specifications. We may store applications in our cloud storage facilities that may include dropbox

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