Data Product Owner
Londres, Reino Unido ;ABOUT GREYSTAR
Greystar is a leading, fully integrated global real estate platform offering expertise in property management, investment management, development, and construction services in institutional-quality rental housing. Headquartered in Charleston, South Carolina, Greystar manages and operates over $300 billion of real estate in over 260 markets globally with offices throughout North America, Europe, South America, and the Asia-Pacific region. Greystar is the largest operator of apartments in the United States, managing more than one million units/beds globally. Across its platforms, Greystar has over $79 billion of assets under management, including approximately $36 billion of development assets and over $30 billion of regulatory assets under management. Greystar was founded by Bob Faith in 1993 to become a provider of world-class service in the rental residential real estate business. To learn more, visit www.greystar.com.
JOB DESCRIPTION SUMMARY
JOB DESCRIPTION
Key Responsibilities:
Stakeholder Alignment & Road mapping
- Serve as the primary point of contact for the LOB analytics teams you support.
- Define and manage the roadmap and priorities for data initiatives in partnership with analytics leads.
- Provide updates on backlog progress, risks, dependencies, and timelines to stakeholders.
Backlog Ownership & Delivery
- Own and prioritize the Data Management Platform (DMP) backlog for the data domains they own to maximize business value and minimize downstream ripple effects.
- Gather, clarify, and document requirements (functional, technical, and data quality) and translate them into user stories and acceptance criteria.
- Drive Sprint Planning and backlog execution in partnership with engineering teams.
Prototyping & Self-Service Enablement
- Write SQL and Python to support just-in-time analysis and prototyping for the analytics teams
- Demonstrate how curated (“gold”) datasets can be leveraged to drive business outcomes by developing light weight dashboards /prototypes which can answer specific business questions, enabling analytics teams to productionalize their use cases.
- Champion self-service analytics enablement by answering questions and providing training to business teams so they can use governed data assets.
Business Rule Definition & Documentation
- Partner with domain experts and governance teams to define business rules for data transformation from bronze → silver → gold layers.
- Create source-to-target mapping documents in plain language, capturing proposed business rules and refining them based on stakeholder feedback.
- Break down business rules into detailed user stories for engineering teams to implement.
Cross-Functional Collaboration
- Align with data governance, data stewards, and architects to standardize data definitions, quality rules, and compliance controls.
- Perform testing and validation alongside engineering and QA to ensure acceptance criteria is met and data deployed to production is of high quality and able to drive business value
- Collaborate with engineering teams to industrialize data pipelines and integrate governance-driven quality controls.
Governance & Alignment
- Ensure consistency of business rules and data definitions across multiple LOBs; coordinate with Governance to resolve misalignments.
- Surface and escalate conflicting business requirements to governance teams, helping drive consensus.
- Support governance discussions by providing insights on current implementation using domain knowledge, documentation, or reverse-engineering with engineering teams when necessary.
Qualifications
- Technical Expertise in SQL and Python (able to query, analyze, and prototype solutions).
- Strong knowledge of data modeling concepts
- Familiarity with modern data platforms and tools (Databricks, Snowflake, ADF, etc.).
- Experience with data governance, data quality frameworks, and business rule standardization.
- Excellent communication and stakeholder management skills, with the ability to translate between business and technical audiences.
- Strong organizational skills with experience in Agile methodologies (backlog management, sprint planning, user story creation).
What Success Looks Like
- LOB analytics teams have a clear, prioritized roadmap for data initiatives.
- Business rules and definitions are standardized, governed, and documented across LOBs.
- Analytics teams are enabled to leverage the gold data layer for self-service without heavy reliance on engineering.
- The DMP backlog delivers high-value features with minimal downstream disruption.
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