Data Analyst (Finance)

Total Assist Recruitment
Belfast
4 days ago
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This role is based in Belfast, BT8 8BH

JOB SUMMARY / MAIN PURPOSE:

The post holder will assist in the provision of costing and benchmarking information to support decision making within the Trust, collating, analysing, interpreting and presenting high quality information, considering the use of new technologies, in particular to improve usability and accessibility of information for non-finance managers.

KEY RESULT AREAS / MAIN RESPONSIBILITIES

Costing

  • Assist with the production of person level costs for both hospital and community sectors, required by the Department of Health/SPPG, working to ensure cost information is accurate, timely, accessible and relevant
  • Support the development of the regional costing system to realise the full potential for the Trust
  • Assist in developing close links with service and Information staff to obtain and develop the activity information required to support costing
  • Provide support to Trust departments in ad hoc costing exercises and projects
  • Liaise with professional managers and other senior staff in the discharge of duties and responsibilities

Benchmarking, Productivity and Efficiency

  • Assist with the analysis and presentation of business intelligence information using a range of communication and data visualisation...

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