Business Development Manager (Staffing Solutions)

Bern
8 months ago
Applications closed

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Business Development Manager (Staffing Solutions)

Switzerland - Remote

CHF85,000 Basic (OTE CHF165k) + Car Allowance + Progression + Training + Private Medical

Are you a Business Development Manager that is Bi-Lingual English plus French that wants to work for one of the globes leading staffing solutions provider?

Do you want to work for a business that is providing best in class, cutting edge and state of the art staffing solutions with engineers that are building the latest AI, Data Science, and SAP solutions?

This company are quickly becoming the go to name in staffing solutions as the are at the forefront of emerging technologies and industry experts.

On offer is the chance to have full autonomy over from where you work, your diary and earning potential.

In this role you will be covering Belgium in its entirety, setting up meetings with engineering and technology businesses to demonstrate how effective the staffing solutions are.

The ideal candidate will be from a staffing / personal provider, bi-lingual and in Switzerland.

THE ROLE:

Meet with decision makers of technology and engineering businesses to present different staffing solutions
Work from home to drive new leads
Liaise with sales managers and directors to build sales pipelines
Generate leads and work with marketing teams to create new business opportunitiesTHE PERSON:

Based in Switzerland
Bi-lingual English French
From a Staffing / Consultancy providerKeywords: AI, Cloud, ERP, SAP, Software, Technologies, Staffing, Statement of Work, Contractors, People Provider,

If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV.
We are an equal opportunities employer and welcome applications from all suitable candidates. The salary advertised is a guideline for this position. The offered remuneration will be dependent on the extent of your experience, qualifications, and skill set.

Ernest Gordon Recruitment Limited acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers. By applying for this job, you accept the T&C's, Privacy Policy and Disclaimers which can be found at our website

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