Human Resources Graduate

Melbreck Technical Recruitment
Leeds
3 months ago
Applications closed

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Human Resources Graduate

£34,000

Two Year Graduate Programme with four 6-month placements, three in the UK and one abroad.


Welcome to the Parker Graduate Scheme 2025


Do you have what it takes to shape the future?


Enabling engineering breakthroughs that lead to a better tomorrow.


Parker products can be found on and around virtually everything that moves. Why? Because we produce motion and control technologies that make a difference in people’s lives. But there are endless engineering challenges still waiting to be solved. That’s why we need you! People with the talent and drive to make the world move.


Challenges drive Parker people forward. We are continuously seeking new ways to innovate, combine technologies, collaborate, develop systems and partner with our customers to solve problems.


We’re looking for the brightest future talent to help make our world move.


Human Resources Graduate


As the global leader in motion and control technologies, Parker Hannifin is present in almost every area of industrial applications and employs about 55,000 people in 50 countries.


This opens up a whole world of possibilities in which you can make the best out of yourself. At Parker, you have the individual scope for development to discover a broad range of topics and possibilities to which you can contribute your own ideas. On eye level with your colleagues, interacting in a team which welcomes you heartily. Take charge of your future. Discover Parker for yourself.


This is an amazing opportunity for you to develop your professionalism in technical engineering industry and learn more about your leadership skills. The goal of the program is to provide you with the best possible support early in your career so that you can reach your full potential in working life!


What you can expect:

  • Get to know Parker’s business, working in HR
  • Build and develop your expertise in areas such as Talent Management, Employee Relations, Compensation & Benefits, HR Systems & Operations
  • You will work on local and global HR projects in national and international teams
  • Develop contacts and create a valuable network for your future career within the Company
  • Responsibility for your own projects


Your ideal profile should include:

  • Master’s Degree in social sciences, law, or economics with a focus on human resources or comparable degree.
  • First hand experience in project management is a plus
  • Excellent influencing and interpersonal skills
  • Initiative, self-starter approach, and strong communications skills
  • Geographical flexibility to move to any Parker location both during and upon completion of the program
  • Fluent in local language, English and an additional language would be beneficial


About the EMEA Graduate Program:


Accelerated development of your functional, technical and leadership skills, while building your network which will become the foundation for your future career development. This is what you will get when embarking our international Graduate program.


During the two-year program, you will go through multiple assignments including one abroad, discovering multiple roles and gathering various experiences.


Starting your career at Parker, means the opportunity to expand your competencies and apply your knowledge through an international first job experience.


Parker is an equal opportunity employer and aware of its responsibility toward people with disabilities.


Did we spark your interest?


Then put your career in motion as soon as possible!


Simply click Apply Now and attach a copy of your CV.

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