Sr. Staff, Data Science & Applied AI

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

Senior Staff Data Scientist & Applied AI role focused on architecting and scaling enterprise AI, Generative AI, and agentic AI solutions on AWS and Snowflake. Responsibilities include defining end-to-end architectures, translating business challenges into AI solutions, designing agentic systems with orchestration and guardrails, and collaborating with cross-functional teams for productionization, governance, and innovation.

What you'd actually do

  1. Define end-to-end solution architecture for enterprise AI, GenAI, and agentic AI applications aligned to business and technology strategy.
  2. Translate business workflows and operational challenges into scalable AI solution patterns, including autonomous and semi-autonomous agent use cases.
  3. Design enterprise agentic AI solutions leveraging multi-agent orchestration, tool invocation, memory, planning, reasoning flows, and human-in-the-loop control mechanisms.
  4. Establish design guardrails, evaluation frameworks, monitoring approaches, and observability standards for agent behavior in production.
  5. Collaborate with Data Engineering, Platform Engineering, DevOps, and Security teams to productionize AI and GenAI solutions in scalable cloud environments.

Skills

Required

  • Solution architecture
  • Data science
  • Machine learning
  • AI engineering
  • Generative AI
  • LLM-based solutions
  • Enterprise AI solutions
  • GenAI application design
  • Agentic systems
  • AI cloud architecture
  • AWS
  • Snowflake
  • Prompt engineering
  • RAG architectures
  • Semantic search
  • Embeddings
  • Evaluation frameworks
  • Orchestration
  • Tool usage
  • Memory
  • Guardrails
  • Human oversight patterns
  • Cloud-native AI/ML architecture
  • Deployment patterns
  • Platform reliability
  • Observability
  • Security
  • Cost optimization
  • Reusable architecture patterns
  • Technical standards
  • Governance controls
  • AWS Bedrock Agents
  • Enterprise LLM platforms
  • Foundation models
  • Structured output design
  • Few-shot prompting
  • Systematic prompt optimization
  • Retrieval-Augmented Generation (RAG) pipelines
  • Embedding models
  • Vector stores
  • OpenSearch vector search

Nice to have

  • Multimodal AI
  • Foundation models
  • Multimodal AI
  • Agent frameworks
  • Orchestration patterns
  • Cloud-native AI services

What the JD emphasized

  • at least 2+ years of experience in Generative AI / LLM-based solutions
  • Demonstrated track record of designing and delivering production-grade AI/ML/GenAI solutions with measurable business impact
  • Hands-on expertise in building and scaling GenAI and LLM applications
  • Experience designing or supporting agentic AI systems

Other signals

  • designing and delivering production-grade AI/ML/GenAI solutions
  • architecting enterprise AI solutions
  • building and scaling GenAI and LLM applications
  • designing or supporting agentic AI systems
  • productionize AI and GenAI solutions