Customer Service Assistant

Compass UK & Ireland
Cirencester
1 year ago
Applications closed

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Are you a team player with a passion for food and people? Do you thrive in a busy environment? If so, then we are looking for someone just like you to help us deliver exceptional customer experience for Defence on a part time basis, contracted to 15 hours per week.

If you want to know about the requirements for this role, read on for all the relevant information.

As a Customer Services Assistant, you will contribute to a passionate and friendly team working in a fast-paced environment. You'll get given every opportunity to progress within a company that invests in its people, celebrates individuality, and rewards and recognises employees who go beyond the plate.

Please note: This role is contracted to 50 weeks per year

Could you bring your spark to Defence? Here's what you need to know before applying:

Your key responsibilities will include:
Preparing delicious, high-quality food that delights our clients and customers
Creating attractive food and counter displays
Representing Defence and maintaining a positive brand image
Handling cash and operating the cash register
Complying with Food Handling & Hygiene standards
Complying with Health & Safety regulations

Our ideal Customer Services Assistant will:
Have an enthusiastic can-do attitude
Display passion for delivering excellent customer service
Be an excellent team player
Arrive equipped with a desire to succeed in your role
Thrive working under pressure
Demonstrate outstanding timekeeping and reliability
Have a safety-first mind set
Have experience within a similar catering-related role, but this isn't essential.

Part of Compass Group UK&I, ESS is the Defence, Government, and Energy services sector of Compass Group UK & Ireland. We support 250+ UK military establishments, high profile police, secure environments and government sites, along with a range of onshore and offshore facilities including platforms, drilling rigs, floatels and offices for the energy sector. We know that a friendly face makes all the difference, so we look for people who are passionate about delivering excellent customer service, at all levels, to join our teams.

Job Reference: com/2211/95600001/52498659/R/BU

Compass Group UK&I is committed to fostering an environment where every individual can truly be themselves at work and has equal opportunities to advance in their careers. We strive to build a culture that respects and celebrates the unique talents, beliefs, backgrounds, and abilities of all our team members. We want our colleagues to feel valued, empowered to reach their full potential, and to thrive?because diversity is our strength!
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