Senior Data Management Professional - Data Quality - Entities Data (Private Markets)
Job Description
- Develop and deliver the data quality strategy for the Entities product, aligning it with client use cases and industry best practices.
- Define, measure, and monitor data quality metrics that ensure transparency and accountability across workflows.
- Partner with Product, Engineering, and Data teams to embed quality-by-design principles into ingestion, transformation, and delivery pipelines.
- Perform data profiling, statistical analysis, and root cause investigations to validate approaches and recommend improvements.
- Lead initiatives to modernize workflows—advocating for automation, AI/ML-enabled quality checks, and scalable infrastructure enhancements.
- Promote data quality awareness and education across the organization, empowering colleagues to embed quality into their work.
- Stay ahead of industry developments in reference data and private markets to shape our data strategy.
- 3+ years of professional experience in data science, data quality management, reference data, or data governance
- Excellent project management skills and the ability to collaborate across teams and geographies
- Strong communication skills to influence stakeholders as well as present complex findings clearly to both technical and non-technical audiences
- Strong coding skills in Python (e.g. OOP, PySpark, Pandas, NumPy, etc) and experience with SQL
- Strong statistical & analytical skills (e.g. sampling methods), attention to detail, and a proactive empirical mindset
- Familiarity with data modelling & modern data tech stack tools such as Airflow, dbt, Kafka, Iceberg, Trino, Superset etc.
- Familiarity with some data visualization tools (Tableau, QlikSense, Power BI, or similar) to communicate quality insights
- Familiarity with at least one version control system (e.g. Git) and collaborative development platform (e.g., GitHub, GitLab)
- Familiarity with ETL processes, data pipelines, workflow & schema design
- Comfort working in a dynamic, evolving environment, balancing long-term strategy with immediate operational needs
- Industry-recognized data management certifications (e.g., DAMA, CDMP, DCAM).
- Experience with reference data, entity/issuer data, or private markets datasets, including integration of third-party providers.
- Exposure to Agile methodologies such as Scrum or Kanban.
- Hands-on knowledge of data governance and quality frameworks, including metadata management and regulatory considerations.
- Familiarity with modern data infrastructure and architecture (APIs, pipelines, cloud platforms), with exposure to AI/ML or LLM-based enrichment solutions for anomaly detection and automation.
- Exposure to Agile methodologies such as Scrum or Kanban.
- Awareness of emerging trends in Private Markets data, including the complexities of non-public entities and their role in financial workflows.
- Understanding of financial use cases that depend on accurate entity data, such as client onboarding, compliance/KYC, counterparty risk, and issuer classification.
Does this sound like you?
Apply if you think we're a good match. We'll get in touch to let you know what the next steps are!