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Senior SAP Data Transformation Consultant – London (Hybrid)

London
4 days ago
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Fast-growing SAP consultancy at the forefront of S/4HANA transformation across the UK and globally. Are looking for a seasoned SAP Data Transformation Consultant to lead complex migration projects, collaborate with expert teams, and contribute to our culture of excellence.

Key Responsibilities:

  • Lead end-to-end SAP data migration projects using industry-standard tools and methodologies.

  • Collaborate with cross-functional teams to deliver high-impact solutions for clients.

  • Manage workstreams and engage directly with stakeholders to ensure successful project outcomes.

  • Mentor junior consultants and contribute to internal knowledge sharing.

  • Ensure data quality, integrity, and compliance throughout the migration lifecycle.

    Skills and Experience:

  • Minimum 5 years of SAP technical experience, including ABAP, LSMW, and ETL tools.

  • Proven track record in full lifecycle SAP data migration projects.

  • Strong understanding of SAP ERP modules and cross-functional integration.

  • Excellent communication, leadership, and problem-solving abilities.

  • Experience with S/4HANA and SAP Landscape Transformation is highly desirable.

  • Knowledge of SAP Basis and ABAP certification is a plus.

  • Project management credentials such as PRINCE2 are advantageous.

    Background in consulting (Big 4 or niche firms) preferred.

    Why Join Us:

  • Be part of a consultancy that values quality, innovation, and continuous growth.

    If your experience matches the criteria required and you are intersted in exploring this opportunity then please forward your CV for consideration

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