Sr. Staff, Data Architect

Warner Bros Discovery Warner Bros Discovery · Media · Hyderabad, Telangāna, India · Technology

Sr. Staff Data Architect responsible for designing and governing the Enterprise AI Context Layer, which includes multi-domain canonical modeling, a universal semantic layer, and architecting the backbone for Agentic AI, LLM grounding, and GraphRAG systems. The role involves rapid prototyping using AI-native tools and hands-on PoCs to validate semantic architectures and retrieval mechanisms, ensuring scalability, data integrity, and cost optimization.

What you'd actually do

  1. Architect the Enterprise AI Context Layer: Define, scale, and govern the global Enterprise Ontology (abstract domain maps, business entity classes, and entity-relationship rules) that serves as the backbone for Agentic AI, LLM grounding, and GraphRAG systems.
  2. Multi-Domain Canonical Modeling: Lead the rationalization and creation of cross-domain canonical models (e.g., content hierarchies, unified customer identity spines, financial ledgers) that seamlessly unify data across deeply siloed source applications.
  3. AI-Native Prototyping: Leverage modern AI-native development environments (such as Cursor, GitHub Copilot) to rapidly generate, iterate, and document blueprints for complex enterprise data schemas and metadata layers.
  4. Establish the Well-Architected Data Framework: Define and enforce enterprise pillars for data architecture—focusing heavily on scalability, absolute data integrity, fault-tolerant schema evolution, and FinOps-driven cost optimization.
  5. Hands-on Proof of Concepts (PoCs): Actively build, code, and deploy functional, lightweight PoCs to stress-test and validate semantic architectures, semantic views, and AI context-retrieval mechanisms before handing them off to core engineering squads.

Skills

Required

  • 12+ years of deep data architecture and engineering experience
  • Staff, Principal, or Enterprise Architect capacity
  • governing, designing, or managing large-scale data lakehouses containing dozens of concurrent data products or domains
  • Snowflake (Dynamic Tables, Cortex, Horizon), Databricks (Unity Catalog, Delta Live Tables), or Microsoft Fabric
  • underlying cloud infrastructure (AWS/GCP/Azure)
  • Relational, Dimensional (Kimball), Data Vault 2.0, and Graph/Ontological modeling frameworks
  • Python
  • SQL
  • modern AI development acceleration tools (Cursor, LLM-prompted code generation)
  • writing code and spin up rapid, validating PoCs
  • executive presence and communication skills
  • translating highly abstract semantic concepts (ontologies, knowledge graphs) into compelling business value narratives

Nice to have

  • stream processing specialists
  • API developers
  • DevOps team
  • analysts
  • business analysts & business users
  • technical leadership and mentorship to junior team members
  • data platform product teams
  • feasibility checks
  • TCO rationalization

What the JD emphasized

  • AI Context Layer
  • Agentic AI
  • LLM grounding
  • GraphRAG
  • 45+ data products
  • AI-Native Prototyping
  • Cursor
  • GitHub Copilot
  • PoCs

Other signals

  • design and govern the AI Context Layer
  • transforming a massive multi-domain data ecosystem into an interconnected, machine-readable semantic engine
  • architect the Enterprise AI Context Layer
  • backbone for Agentic AI, LLM grounding, and GraphRAG systems
  • AI-Native Prototyping
  • Hands-on Proof of Concepts (PoCs)
  • downstream AI agents