Data Analyst - HR System migration/replacement

Robert Half
London
1 day ago
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Data Analyst - HR system replacement - SAP SuccessFactors/Sage people

Remote role - (travel required to London or Portsmouth 1-2 days p/month)

6 month contract - Inside IR35 - £350 p/day via Umbrella

Robert Half are working with a leading Tech client and are looking for an experienced Data Analyst that has experience of working on large scale HR System replacement projects, ideally SAP SuccessFactors/Sage people.

Candidates without demonstrable experince of this wil not be considered

Role overview

Responsible for mapping and analyzing data, creating reports, and helping with data insights to enable data integration, data management and overall data cleansing within the Hire to Retire value stream. This includes analysis of data from a wide range of diverse sources, data exploration and visualisation, statistical analysis, and version control.

Scope:

This role covers all data consumed within the Hire to Retire value stream. You will design and implement data flows to connect production and analytical systems. Create solution and data-flow diagrams, as well as documentation to support governance, maintenance, and usage by the organisation. Ensure adherence to change and release management processes.

Required experience

  • Proven ex...

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