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Data Analyst (S/4 HANA)

All Season Movers, Inc
City of London
1 week ago
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Overview

Data Analyst (S/4 HANA) up to 45k+ Bonus – Hybrid 3:2. As Data Analyst and part of a global IT project team, you will play a key role in managing and maintaining data assets, ensuring integrity, consistency, and usability across the company in SAP. You will support the transition to SAP S/4HANA and SAP Master Data Governance (MDG), contributing to the implementation of data administration processes. You will also support data quality initiatives to automate data quality checks and drive continuous improvement to enhance data management skills and data quality proficiency, including data profiling and resolving data discrepancies to ensure accuracy and consistency.

Responsibilities
  • Data Administration: Administer and maintain master data and other critical datasets (e.g., customer, vendor, material, finance in SAP ECC and other enterprise systems).
  • Ensure data consistency and lifecycle management across SAP modules and related systems.
  • Support data cleansing, enrichment, and harmonization activities (e.g., in preparation for S/4HANA migration).
  • Contribute to the design and implementation of SAP MDG for centralized master data governance.
  • Collaborate with SAP functional teams to align data structures with evolving business processes.
  • Data Governance & Stewardship: Support metadata management, enrichment and cataloging; define data ownership, stewardship, and maintenance processes in collaboration with business units.
  • Monitor and resolve data discrepancies, duplication, and integrity issues.
  • Contribute to the development and documentation of data governance procedures and ensure data is structured, standardized, and maintained per governance policies.
  • Data Quality Monitoring & Issue Management: Conduct data profiling and quality checks; monitor data quality dashboards, KPIs, and data trends; identify and remediate data quality issues; translate business needs into data quality rules and governance processes.
  • Present findings, data quality reports, and recommendations to stakeholders; support audits and compliance initiatives related to data quality and governance.
Qualifications, Knowledge And Experience Required
  • Degree in Information Management, Data Science, Business, or a related field is desirable.
  • SAP Data Administration: prior experience with SAP environments (preferably in data analysis and administration).
  • Knowledge of SAP data structures, transactions, and integration points; experience managing master data in SAP ECC; exposure to SAP S/4HANA, SAP Datasphere, and SAP MDG.
  • Data Governance & Quality Tools: e.g. Collibra, Talend, Snowflake, PowerBI. Knowledge of metadata management, data lineage, and cataloguing. Proficiency in SQL and data analysis tools. Experience with data integration and ETL processes. Familiarity with data visualization tools (Power BI, Tableau).
  • Awareness of data governance, management practices, and tools.
  • Exposure across several key global groups.

Note: This description preserves the original content while restructuring for clarity and readability, focusing on responsibilities and qualifications.


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