Repairs Data Analyst

German Villarreal, Financial Advisor
Manchester
2 weeks ago
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Repairs Data Analyst - Hybrid Role

Location: Manchester


Contract: Up to 3 months


Pay: £25 - £27 Umbrella


About The Role

We're looking for a Repairs Planning Officer to join our team on a hybrid basis. You will be responsible for providing analytical insight across data linked to a key materials project; supporting informed decision-making, with particular focus on performance monitoring, process compliance and the tracking of materials purchasing.


Responsibilities

  • Ensuring that data collected and managed by the Distribution Centre team is accurate, reliable, up to date, and sufficient to support data-driven decision making within the department and wider business.
  • Collating, organising, and analysing data to provide operational and business insight.
  • Identifying trends across datasets to inform investigations, proactive surveys, or planned programmes of work.
  • Producing analysis and reports for the department and wider business, aligned to the project scope.
  • Processing, analysing, and interpreting data related to Great Places' performance and operations.
  • Creating visualisations and reports to communicate findings effectively to key stakeholders.
  • Providing accurate, timely, and relevant business-critical performance information.

Qualifications

  • Proficiency in the full Microsoft Office suite, with advanced skills in Microsoft Excel.
  • Experience working with large datasets, analysing and comparing information, and communicating results effectively.
  • Experience of project management.
  • Advantageous experience in SQL, Power BI and data warehouse reporting and extraction.

Please contact Josh at the Derby Office for more information.


Sellick Partnership is proud to be an inclusive and accessible recruitment business and we support applications from candidates of all backgrounds and circumstances. Please note, our advertisements use years' experience, hourly rates, and salary levels purely as a guide and we assess applications based on the experience and skills evidenced on the CV. For information on how your personal details may be used by Sellick Partnership, please review our data processing notice on our website.


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