Delegate Relations Executive

Bloomsbury
1 year ago
Applications closed

Delegate Relations Executive

£27,000 - £32,000 + Uncapped Commission (£55,000 Year 1 highly realistic)

Office Based - 4 Days

London

Our client is an award winning events media business and due to record growth they are now looking to hire a Delegate Relations Executive to join their team working on industry leading cyber security events.

This is a fantastic opportunity for a highly driven and ambitious individual who is eager to move into a sales role focused on working within the fast paced world of b2b events.

The role will be a balanced mix between new business and key account management.

Profile: Delegate Relations Executive

  • Degree Educated

  • Excellent account management skills.

  • Strong desire to close deals and earn commission

  • Relish a challenge, are resilient and have a desire to succeed.

  • Excellent communication skills are a must along with bags of enthusiasm.

  • Target orientated

    Lipton Media is a specialist media recruitment agency based in London. We specialise in all forms of b2b media sales including conferences, exhibitions, awards, summits, publishing, digital, outdoor, TV, radio and business intelligence.

    Our clients range from small start-up companies to FTSE 100 and 250 businesses. We work with people at every stage of their career from undergraduates looking for their first entry point into sales to senior managers and directors looking for their next challenge

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