Data Analyst/ Consultant (SuccessFactors, MS Excel, Mapping)

Hays
London
2 weeks ago
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Your new company

Working for a renowned financial organisation

Your new role

Working as a data transformation analyst/ consultant within the HR department of this renowned financial organisation. You will be working on SAP SuccessFactors for this regional HR data mapping transformation program!

Transforming legacy HR data from a variety of sources in MS Excel and accurately populating data load templates for Success Factors. As well as working with business partners to understand data and transformation requirements supporting and defining the digital data transformation strategy for the business within SuccessFactors.

What you'll need to succeed

  • Advanced MS Excel skillset with ability to write formulas, marcos & VLookUps.
  • Good understanding of data analytics within HR software!
  • Strong working knowledge of SAP/ Success Factors.
  • Great expertise with data mapping (from multiple different sources).
  • Experienced working on Data Transformation projects.
  • Adaptable and able to work within a fast-paced environment.
  • Team player with fantastic communication skills, both verbally and written.
  • Personable and confident - you have the ability to hold meetings as a subject expert on data with internal/ external clientele.


What you'll get in return
Flexible working options available.

What you need to do now
If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now.

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