Human Resources Business Partner

Hays
London
10 months ago
Applications closed

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Job Description Human resources Business Partner - specific experience in Hr matters and Legislation in the Republic of Ireland - but will be London based.T his role will benefit from our Hays Balanced Working agreement – and will be based in one of our London or surrounding areas offices.At Hays, we believe in being long-term partners with our people as well as our customers. Together, we will work for your tomorrow, and the possibilities are endless.With over 50 years of business success, we have built a reputation as the world leader in specialist recruitment and workforce solutions. But joining Hays isn’t just about being part of a global business leader; together with over 12,000 people across 33 countries, you’ll be making a difference in the world of work.Key Result Areas:We are looking for an individual with specific experience in Hr matters and Legislation in the Republic of Ireland – although based will be London or the surrounding areas.Business Relationships & Strategic People PlanningBuild and maintain key business relationships with key stakeholders and the wider People teamUnderstand the business challenges, opportunities and context of the areas you support to ensure that you are a valued thinking partner, developin...

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