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Finance Data Analyst ›

Aztec
Southampton
2 months ago
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We are seeking an experiencedFinanceData Analyst to execute the data extraction and transformation of key commercial contract data required to drive customer billing as part of a wider Workday Financials transformation programme.

The Finance Data Analyst will work closely with the business teams, finance teams and third-party vendors to ensure seamless data migration, governance, and transformation across the commercial contract data area of the project. This role requires in-depth knowledge of data conversion activities typically found in the extract, transform and load (ETL) methodology

Key Responsibilities:

  • Execute data extraction and transformation activities for multiple migration cycles relating to commercial contract data
  • Define and execute data governance processes to ensure data quality, accuracy, and integrity throughout the project lifecycle.
  • Coordinate data validation and reconciliation efforts with the relevant project subject matter experts, ensuring discrepancies are resolved before go-live.
  • Contribute to regular programme updates on the status of data-related activities, including data readiness, migration progress, and issue resolution.
  • Ensure data privacy and compliance with regulatory requirements (e.g. GDPR, SOX).
  • Support post-go-live data maintenance, optimization, and troubleshooting efforts.

Qualifications & Experience:

  • Experience in data analysis, with the ability to understand and define the purpose of data within the commercial contract area of the business.
  • Advanced knowledge of Excel, and understanding of database principles for maintaining data, and data migration methodologies.
  • Experience with data governance and data quality frameworks.
  • Proven ability to collaborate with project delivery teams through complex ERP implementations.
  • Excellent communication skills and experience collaborating with cross-functional teams.
  • Strong analytical and problem-solving abilities.

Preferred Qualifications:

  • Understanding of project billing, customer invoicing and the constructs of commercial contracts
  • Knowledge of other ERP systems
  • Collaboration -Ability to work productively in a programme team across Finance, IT and the transformation office
  • Project Management -Ability to manage and report on multiple data deliverables.
  • Communication -Strong communication skills, both written and verbal, with the ability to explain complex data concepts to non-technical stakeholders and strong critical thinking and questioning skills, not simply accepting information at face value.
  • Attention to Detail -High degree of accuracy and attention to detail in all aspects of work.
  • Problem-Solving - Adept at identifying and resolving data issues and risks.


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