Business Unit/Group: WBD Studio Economics
Requisition Number: 22065-1
Intended Start Date: 9/4/25
Contract Duration: 10-months
Possibility For Extension / Conversion Yes
Max Hourly Pay Rate: BR/hr
OT Required / Expected No
WB Games Resource(s) No
CNN Resource(s) No
What We Do/Project
As part of the Studio Economics transformation we are building a modern governed and reusable data foundation to power financial forecasting title economics content sales planning and AI-driven insights across the Studios.
The Senior Data Analyst plays a pivotal role in shaping that foundation translating product requirements into robust scalable data models that serve both immediate application needs and long-term analytical and AI objectives.
Embedded within the Platform Pod this role works closely with Application Designers Platform Engineers the Senior Data Architect and product-aligned pods to ensure application-specific data models integrate seamlessly with the enterprise data platform. They act as the primary bridge between feature-level requirements and platform-level data strategy ensuring reusability governance compliance and analytical readiness.
Job Responsibilities / Typical Day in the Role
Lead Data Analysis for Application & Platform Alignment
Translate product features and user stories into well-defined data model requirements that support application workflows and downstream analytics.
Partner with Application Designers and Engineers to profile assess and validate source data ensuring it meets both functional and non-functional requirements.
Collaborate with the Senior Data Architect to align application data models with canonical and semantic models across domains.
Ensure Long-Term Analytical & AI Enablement
Design data structures and pipelines that serve both operational application needs and future analytical/AI use cases.
Anticipate and define data capture transformation and enrichment requirements to support predictive modeling forecasting and advanced analytics.
Recommend optimizations that improve data quality timeliness and completeness for decision-making.
Governance Quality and Documentation
Partner with enterprise data governance teams to apply metadata lineage and access control standards.
Define and execute data validation profiling and reconciliation processes to ensure trusted results.
Maintain documentation of data definitions mapping specifications and lineage diagrams for both applications and analytical datasets.
Cross-Pod Collaboration and Mentorship
Lead cross-pod workshops to resolve semantic conflicts promote reusable data assets and ensure consistent application of standards.
Mentor junior analysts and support teams in data discovery mapping and quality assessment best practices.
Represent the Platform Pod s data perspective in architecture boards product councils and design reviews.
Must Have Skills / Requirements
1) Proven expertise in data modeling techniques (relational dimensional wide-table for ML data vault) and mapping business processes to data structures.
a. 7-10 years of experience
2) Strong proficiency in SQL data profiling and transformation tools (e.g. dbt Informatica AWS Glue).
a. 7-10 years of experience
3) Familiarity with distributed data processing and analytics platforms (e.g. Snowflake Databricks AWS-native analytics stack).
a. 7-10 years of experience
4) Experience Translating product features and user stories into well-defined data model requirements
a. 7-10 years of experience
Nice to Have Skills / Preferred Requirements
1) None
Functional Knowledge / Skills in the following areas:
1) You ll thrive in this role if you:
a. Think in Domains and Products You design data solutions that reflect business semantics and scale across use cases.
b. Bridge Technical and Business Worlds You can translate analytical needs into technical specifications and vice versa.
c. Govern Through Enablement You make governance easy to adopt by embedding it directly into design and workflows.
d. See Beyond the Immediate You anticipate future analytical and AI needs when designing today s application data structures.
e. Collaborate to Elevate You work across functions to raise the quality reusability and reliability of data.
2) What You ll Bring:
a. Excellent communication and facilitation skills to influence design decisions across product platform and governance teams.
Technology Requirements:
1) Proven expertise in data modeling techniques (relational dimensional wide-table for ML data vault) and mapping business processes to data structures.
2) Strong proficiency in SQL data profiling and transformation tools (e.g. dbt Informatica AWS Glue).
3) Experience in data quality frameworks validation automation and reconciliation methods.
4) Familiarity with distributed data processing and analytics platforms (e.g. Snowflake Databricks AWS-native analytics stack).
5) Demonstrated ability to align cross-team requirements into unified reusable and governed data solutions.
6) Experience Translating product features and user stories into well-defined data model requirements
Education / Certifications
1) None
Interview Process / Next Steps
1) 1st round with Data Engineer
2) 2nd round with Product Owner
Additional Notes
Sourcing in CA Burbank.
Hybrid schedule 3 days on-site.