Data Analytics Engineer
Data is a core pillar of SCOR’s Forward 2026 strategic plan and beyond. Our ambition is to enable trusted, governed, and accessible data so that business teams can generate insights faster and make better decisions.
As a Data Analytics Engineer within the Chief Data Officer organization, you will design and deliver analytics ready datasets and curated data products that power dashboards, reporting, and analytical use cases within one primary business domain: Property & Casualty, Life & Health, or Finance.
A critical aspect of this role is a strong understanding of the business domain you are supporting. You are expected to develop deep knowledge of key processes, metrics, and decision drivers within your assigned domain, and to translate this business understanding into robust analytical data models, consistent KPIs, and meaningful datasets.
You will work at the intersection of data engineering and analytics, shaping data models, implementing transformations, ensuring data quality, and making datasets discoverable and usable for business consumers on SCOR’s enterprise data foundation (Genesis) and modern data platforms.
The Data Analytics Engineer is a professional who is: ·
• Outcome driven: Focuses on delivering datasets and metrics that materially improve business steering and decision making (timeliness, trust, usability).
• Data product minded: Treats analytical datasets as products with clear contracts (definitions, grain, lineage, quality expectations, documentation). ·
• Quality & governance oriented: Designs datasets that are consistent, auditable, and aligned with governance expectations (definitions, controls, traceability). ·
• Collaborative bridge-builder: Works effectively with business stakeholders, Data Foundation, Governance, Analytics & AI, and Platform teams to translate needs into robust analytical assets.
• Clear communicator: Can explain complex data concepts in a practical way and build trust with both technical and non-technical stakeholders.
• Design, build, and maintain analytics‑ready datasets that directly support reporting, dashboards, and decision‑making within your business domain (P&C, L&H, or Finance). ·
• Translate business concepts, processes, and decisions into clear analytical data models, dataset structures, and reusable metrics. ·
• Ensure data quality, traceability, and documentation for analytical datasets (definitions, grain, assumptions, lineage, known limitations). ·
• Partner closely with business stakeholders (e.g. actuarial, finance, underwriting, performance steering) to understand analytical needs and deliver data products with real business impact. ·
• Contribute to and apply data governance standards and best practices at the analytical layer, in collaboration with Data Foundation and Governance teams. ·
• Support adoption of analytical datasets by ensuring they are understandable, discoverable, and fit for self‑service consumption. ·
• Collaborate with Platform, Analytics & AI teams to ensure tooling, standards, and architecture effectively support analytics delivery.
Core skills:
• Proven experience delivering analytics‑ready datasets used for AI, dashboards, reporting, and decision‑making in a complex data environment. ·
• Strong business understanding in at least one domain: Property & Casualty, Life & Health, or Finance, with the ability to reason about domain KPIs, metrics, and processes. ·
• Hands‑on experience with SQL and data transformations; experience with Python / PySpark is a strong plus. ·
• Experience working on modern data platforms such as Palantir Foundry and/or Databricks (or equivalent analytics platforms). ·
• Solid understanding of analytical data modeling and metric consistency across multiple consumers. ·
• Strong stakeholder collaboration skills, with the ability to align business and technical teams on definitions, priorities, and delivery. ·
• Structured thinking, strong ownership mindset, and focus on sustainable, production‑grade analytics delivery. ·
• Proficiency in English; French is a plus.
Required Education
· Degree in technical or quantitative discipline (e.g. data, engineering, applied mathematics, statistics) or equivalent professional experience.
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