Operations Analyst

Nottingham
1 year ago
Applications closed

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Loans Operations & Data Analyst I

Data Analyst x 7
£12.92 per hour
Nottingham (hybrid working)
Monday-Friday 37.5 hours between 8am-6pm
6 month temporary contract
Start date: Monday 14th October
We have an exciting opportunity for several Data Analysts to join our client based in Nottingham.
We're looking for analytically minded candidates to join a highly reputable and innovative company who are celebrating growth and expansion due to their continued market dominance. Our client can offer further career development and exceptional training opportunities. The role is fast-paced so you need to be adaptable.
Duties will include.

  • Providing full back-office support to our Clients
  • Processing industry data for approximately 100k customers
  • Handling a variety of issues from disputes, metering, billing, registrations, and settlements
  • Managing and maintaining large data sets and identifying errors in data flows
  • Resolving data disputes to get things moving
  • Working closely with other departments to ensure optimal performance and fluid workflow
  • Maintaining positive internal and external stakeholder relationships
  • Working with suppliers to gather customer information
  • Meeting agreed SLAs with each Client
  • Problem solving!
    Skills and experience required.
  • Naturally analytically minded - you are driven to solve problems!
  • IT Proficient including Microsoft 365, Excel, Word
  • Able to move between tasks with speed and accuracy
  • 'Can do' attitude and adaptability is critical!
    What's in it for you?
  • These roles are 6 month temporary contracts but there is potential for permanent based on performance. (not guaranteed)
  • A real opportunity to develop and grow, if you want it!
  • Remote working after successful training period
  • Open plan modern office space in Nottingham and a collaborative team environment
    First class training, support and equipment is provided for you to work from home. You will be based at home with one day per fortnight in the Nottingham office for collaboration and relationship building. You will be fully office-based for 2 weeks of training, or until competent to work alone.
    Apply NOW to avoid disappointment! Due to the large volume of applications we receive, we are unfortunately unable to contact all candidates. If you have not heard from a Consultant within the next three business days, please assume that you have not been successful on this occasion. Please do not hesitate to apply for other suitable roles in the future

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