Chef De Partie- Casual- York

Compass Group UK
York
3 weeks ago
Applications closed

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Job Description Based in York, National Railway Museum 0 hour contract £15 to £16 per hour DOE Free parking on site Free staff meals We have an exciting opportunity for an ambitious Chef de Partie to help us create exceptional food experiences for Restaurant Associates on a zero hour contract basis. As a Chef de Partie, you will be working in a passionate and hard-working team to create an outstanding culinary experience for our customers in the market-leading food service company in the UK. In return we offer support and development to progress within a company that invests in its people, celebrates individuality, and rewards and recognises employees who go beyond the plate. Could you bring your spark to Restaurant Associates? 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 Being an enthusiastic team player and excellent communicator Representing Restaurant Associates and maintaining a positive brand image Complying with Food Handling & Hygiene standards Complying with Health & Safety regulations

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