SAP Data Migration Analyst

Whitehall Resources Ltd
2 months ago
Applications closed

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SAP Data Migration Analyst - Quality

An SAP Data Migration Analyst is required by Whitehall Resources for our international client on a permanent basis. This role can be UK remote with travel into our client's Lincolnshire office one to two times a month.

The successful candidate would have come from a Data Migration background and have experience in SAP S4 data models or a similar ERP. This role will be heavily involved in data quality and will require strong communication skills to proactively work with both IT teams and Business users.

Do you have?

  1. Strong Data Migration experience?
  2. A background in Data Quality Analysis?
  3. SAP S/4 Hana or similar ERP experience?
  4. Outstanding communication skills?

Would you like?

  1. A good work and personal life balance?
  2. To work in a high impact role?
  3. Superb career progression opportunities?

If so, please apply!

Keywords:SAP Data Migration | Data Quality Analyst | ERP | S4 HANA | Data Migration

All of our opportunities require that applicants are eligible to work in the specified country/location, unless otherwise stated in the job description.

Whitehall Resources are an equal opportunities employer who value a diverse and inclusive working environment. All qualified applicants will receive consideration for employment without regard to race, religion, gender identity or expression, sexual orientation, national origin, pregnancy, disability, age, veteran status, or other characteristics.

Please note that if you are NOT a passport holder of the country for the vacancy you might need a work permit.

Bank or payment details should not be provided when applying for a job. All applications should be made via the 'Apply now' button.

Created on 10/02/2025 by Whitehall Resources Ltd

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