This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
We are seeking a highly skilled and experienced Data Quality Lead (DQL) to fill a foundational role in a newly formed group concentrating on Data. This role will work closely with the business and Data Stewards to define what 'good' data looks like. The DQL also partners with Data Engineering to implement frameworks that ensure data quality aligns to business standards. Ultimately, this is a key position that will drive a continuous improvement process that builds trust and confidence in our data.
Job Responsibility:
Establish domain specific data quality rules and dimension thresholds (accuracy, completeness, consistency, validity, timeliness) for core Asset Management datasets spanning Real Estate, Lending & Credit
Define and establish metrics to assess data quality performance and drive continuous improvement
Partner with Data Engineering to design automated checks, dashboards, and alerts for pipelines, data products, and key reports
Proactively lead root-cause analysis of data incidents. Coordinate fixes with source platforms
Use trend analysis to prioritize remediation, reduce chronic/recurring defects, and improve overall data reliability and trust
Maintain expertise in data quality industry trends and strategically implement advanced methodologies to elevate data quality practices
Requirements:
Degree in Computer Science, Information Systems, Data Science, or a related field
Demonstrated experience in a Data Governance or Data Management program
Proven experience leading data quality, data governance, or data controls in a data rich environment (financial services, credit, real estate, asset management, or similar)
A background in financial data domains (IBOR/ABOR, transactions, market data, reference data)
Experience working with business stakeholders to define critical data elements, data definitions, and 'fit for use' requirements
Familiarity with data quality tooling and modern orchestration/observability practices
Comfortable building processes from scratch in a newly formed team
Resourceful, motivated self-starter with the ability to collaborate across business and technology
Strong analytical, verbal, and written communication skills