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SAP S/4HANA Finance Data Analyst

Sanderson
London
6 days ago
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SAP S/4HANA Finance Data Analyst

Rate - £450 - £475 Outside IR35

Duration - 6 months

Location - Central London (Two / Three days a week on site)

We're looking for a Data Analyst who will be responsible for the in-depth analysis of finance data to identify key data and information issues, gaps and patterns across the core financial functions. The programme scope covers all core financial functions including Financial Accounting, Budget and Treasury, their inter-relationship and cross-functional processes such as Human Resources.

The Finance Data Analyst will work closely with business stakeholders to understand issues and requirements and elicit and articulate the data and information requirements, and with IT Architecture and Data Management to understand and align with the Bank's design principles. This role will also engage closely with Business Analysts and other programme team members across various stages of the programme as required.

Skills and Experience:

  • 3+ years' experience in data analysis and reporting/insight role, preferably in finance data domain or ERP transformation programmes
  • Strong understanding of finance processes and data
  • Experience with SAP S/4HANA data structures and migration processes
  • Basic knowledge of data management capabilities particularly data gover...

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