SAP MASTER DATA ANALYST – SERVICE INDUSTRY

Sciens Building Solutions
Newcastle upon Tyne
1 day ago
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OverviewResponsibilities
  • Design and document scalable, compliant master data creation and maintenance processes for S/4HANA Public Cloud (e.g., using Fiori apps, predefined business roles, and public cloud extensibility constraints).
  • Define data standards, naming conventions, validation rules, approval workflows, and SLAs across core domains: Business Partner (customer/vendor), Material/Products, Finance (G/L, cost centers, profit centers), Pricing/Conditions, Functional Locations, and Plant/Org structures.
  • Stand up and evolve a data governance model (RACI, stewardship roles, approval matrices) and operating procedures for new divisions.
  • Establish and maintain a data dictionary, templates, and work instructions/SOPs; ensure alignment with operational objective and compliance requirements.
  • Data Migration for New Divisions
  • Lead master data assessment, profiling, cleansing, enrichment, mapping, and transformation activities from legacy sources to S/4HANA Public Cloud.
  • Execute and/or oversee loads using the SAP S/4HANA Migration Cockpit (templates/staging tables/Fiori), perform trial loads, reconcile results, and coordinate cutover and hypercare.
  • Build quality checks, reconciliation frameworks, and sign‑off criteria with business owners; track and resolve load errors and defects to closure.
  • Implement data quality KPIs (completeness, accuracy, timeliness, duplicates) and monitoring dashboards; drive root‑cause analysis and remediation.
  • Manage change requests for new fields, extensions, or process improvements in line with public cloud guardrails; coordinate with business process owners, functional leads and implementation partners.
  • Support training, process reviews, and onboarding for division teams; serve as SME for audits and master data controls.
What We Like About You

Education: Bachelor’s degree in Information Systems, Business Administration, or a related field. Master’s degree preferred.

Qualifications
  • Experience
    4–7+ years in SAP Master Data with hands‑on experience in S/4HANA (Public Cloud preferred; Private Cloud/On‑Prem acceptable with strong cloud orientation).
  • Demonstrated experience designing master data processes and executing end‑to‑end migrations (assessment → cleansing → mapping → loading → reconciliation).

Technical Skills
Proficiency with S/4HANA Fiori apps for master data and the SAP S/4HANA Migration Cockpit (template/staging approaches).

  • Strong knowledge of at least two master data domains: Business Partner, Material/Product, Finance, Pricing/Conditions, or Functional Locations.
  • Solid understanding of data governance, controls/compliance, and data quality management practices.
  • Advanced Excel and data manipulation skills; working knowledge of SQL or a scripting language (e.g., Python) for data profiling/validation.

Soft Skills
Excellent communication skills with a track record of partnering across Business and IT.

  • Strong analytical and problem-solving abilities.
  • Ability to manage multiple priorities and drive results in a dynamic environment.

Preferred Qualifications
Certification in SAP Master Data Governance or related modules.

  • Experience in leading data migration projects for SAP implementations.
  • Knowledge of service industry processes and best practices.
  • Experience with SAP MDG, SimpleMDG or other governance tooling in a cloud context.
  • Experience with SAP CPQ, C4C, FSM, Ariba.
What We’re Bringing To The Table
  • Competitive salary based on qualifications.
  • Paid time off plan and holidays.
  • 401(k) matching.
  • Short term and long-term disability.
  • Medical, dental, and vision plans with options.
  • Life insurance.
  • Company laptop.
  • Professional career development opportunities.
  • Tuition reimbursement program.


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