Data Integrity Auditor (Global)

Valpak Limited
Stratford-upon-Avon
1 month ago
Applications closed

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Vacancy Type: Contract
Location: Stratford-upon-Avon (Hybrid)
Salary: Competitive + up to 10% bonus & benefits

Valpak has created a friendly and supportive working environment that enables our team to perform to the best of their abilities, with flexible hours, hybrid working options, access to training and opportunities to get involved in various groups to nurture key interests .

With social value at the heart of our business ethos, employees can take a day on us to volunteer for an organisation of their choice, and our Charity Committee organises fundraising events for the employee nominated charity of the year.

Valpak endorses wellbeing and healthy lifestyles , offering subsidised gym membership , optional healthy living seminars and social events , encouraging cross team integration . Plus the “After Work” social group organises regular gatherings – an opportunity to get to know friendly faces .

Our team is passionate, friendly, approachable and dedicated to the business mission – to inspire businesses to do all they can to reduce their environmental impact. If you have an interest in sustainability and like the sound of all Valpak offers, we would love to hear from you!

How will I make a difference?

As the UK’s leading provider of environmental compliance, Valpak strives to work together towards a profitable, sustainable, waste-free world. To date, our teams work in partnership with more than 400 customers, in nearly every corner of the globe.

As Senior IT Analyst, and working alongside the IT Support Analyst your primary role is to provide first-class end-user support to up to 400 staff and ensure the smooth running of IT services to allow them to successfully carry out their roles efficiently.

What will I be doing?

The purpose of the Data Integrity Auditor within our data insight team is to uphold the highest standards of data accuracy, reliability, and compliance in our Extended Producer Responsibility (EPR) reporting. This role is crucial in ensuring that all data submitted for compliance purposes is thoroughly validated and verified, maintaining the integrity of our reporting processes. The Data Integrity Auditor is dedicated to conducting thorough sign offs, identifying discrepancies, and implementing improvements to our data management practices, thereby supporting our commitment to regulatory compliance and enhancing the overall quality of our EPR compliance reports.

What kind of businesses will I be working with?What benefits will I receive?

We strive to make Valpak an employer of choice. Whether it’s achieving work-life balance, helping towards a healthier lifestyle, or saving money. We have a range of benefits to help support you, including:

  • Hybrid working and flexi Friday early finish
  • Company annual bonus – up to 10%
  • Enhanced pension scheme with Aviva (doubled up to 8%)
  • Access to voluntary benefits such as private medical insurance, cycle to work scheme and subsidised gym membership
  • Enhanced maternity pay
  • 25 days annual leave and option to buy/sell additional days
  • Annual volunteering day
  • An extra day off for your birthday
  • Access to a savings platform that includes discounts and money-off promotions from 800+ retailers
  • Wellbeing initiatives

If you would like to be considered for more than one role, or any future roles, please send your CV to .

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