Group Internal Auditor

Buntingsdale Estate
1 year ago
Applications closed

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Müller UK & Ireland is wholly owned by the Unternehmensgruppe Theo Müller which employs over 24,000 people throughout Europe. In the UK, Müller develops, manufactures and markets a wide range of branded and private label dairy products made with milk from more than 1,700 British farmers. The Müller brand is ranked at No.7 in The Grocer’s Top 100 list of Britain’s Biggest Brands, and is also the 7th most chosen brand in the UK.

Müller has been a loved brand in the UK for over 30 years. It’s a household name – and it continues to grow as we invest to make and market an ever-great range of fantastic dairy products. We are currently the 8th most chosen FMCG brand, picked from supermarket shelves over 208 million times each year

Müller pride ourselves on offering support to help develop your knowledge and skills. In return for your commitment, drive and enthusiasm, we offer our employees numerous benefits as part of your employment, including:
•Competitive Salary / Bonus scheme / Life Assurance / Contributory pension plan
• Employee Assistance Programme - an easy-to-use app which offers guidance and care for your physical and mental health. It puts a range of health and wellbeing services at the fingertips of Müller employees.
• Generous annual leave increasing with service and Flexible benefits programme
• New and improved family friendly policies for maternity, adoption/surrogacy and paternity/partner leave.
• Free onsite parking.
• In addition, our employees have access to a Rewards Benefits Programme providing an exclusive range of discounts across 800 retailers, utilities, holidays and cinema tickets.

We are currently recruiting at our Market Drayton, Shropshire head office for a Group Internal Auditor to support with the planning and execution of internal audits across all Group subsidiaries and branches in the UK and abroad.

Group Internal Auditor key responsibilities will include:
• Support with the planning, conducting and processing of internal audits in our subsidiaries and group branches in UK and abroad.
• Judging the appropriateness and effectiveness of existing control systems
• Analysing and assessing business processes in order to identify process-related improvement potentials.
• Preparation of closing documents and presentation of audit results in front of auditees as well as functional leaders and executives
• Agreement of corrective actions and their follow up
• Development of team-internal audit standards, concepts and procedures

Group Internal Auditor key skills & experience:
• Successfully completed degree level education in economic field; qualification as accountant, CFA or CIA is advantageous.
• A minimum of 2 years’ experience in audit or consulting is required; experience in dairy industry is advantageous.
• Analytical skills in extracting key points of significance, reliable and independent way of working.
• Strong communication skills as well as diplomatic appearance
• Good working knowledge of MS Office Applications and SAP; Big Data Analysis skills are advantageous.
• Excellent English language capabilities, good German language capabilities are advantageous.
• Flexibility in working arrangement especially regarding travelling within Europe.
• Enjoy working in a team and a high level of engagement.

The Process
If you have the skills and experience in the above areas and would like to be considered for this role, please apply at (url removed)

#L1 – MB1 #LI-Hybrid

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