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Data Scientist- Marketing Agentic AI

Australia, Sydney/ Melbourne · Job Posted May 16, 2026
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Job Responsibility

  • Partner with the Group's marketing teams to accelerate and optimise campaign creation strategies through cutting-edge AI
  • Architect Agentic Systems: Design autonomous, cyclic loops and multi-step reasoning systems (moving beyond linear prompting) to automate marketing workflows
  • Deploy Multi-Modal Solutions: Scale GenAI applications across Text (Advanced RAG), Audio (STT/TTS), and Video (e.g., Veo) to enhance creative output
  • Production-Grade Engineering: Architect scalable solutions and manage the transition from initial concept to formal production release
  • Advanced Evaluation & Observability: Implement frameworks using LangFuse and custom metrics to track tool-calling accuracy, trajectory, and goal completion
  • Strategic Problem Framing: Bridge the gap between technical possibilities and commercial outcomes, identifying where Agentic systems add the most value
  • Collaborative Innovation: Integrate embeddings and vector databases into live systems in collaboration with Product and Engineering

Requirements

  • Agentic Orchestration: Expert-level experience with LangGraph, LangChain, ADK, or PydanticAI. Proficiency in CoT, ReAct, Tree of Thoughts, and Multi-Agent handoffs
  • Multi-Modal Expertise: Hands-on experience with long-context RAG, fine-tuning, and audio/video generative models
  • Engineering Excellence: Expert Python and SQL skills
  • clean code advocate. Experience with React (prototyping) and PyTest/CI-CD (DevOps)
  • Modern AI Stack: Familiarity with AI-assisted development (Claude Code, Gemini Copilot) and vector databases (GCP Vector Search, Qdrant)
  • Solution Architecture: Ability to frame 'big picture' business problems into viable technical roadmaps
  • Foundational Data Science: Deep understanding of embeddings, non-deterministic output interpretation, and metrics (Gini, Precision/Recall vs. LLM-as-a-judge)
  • Stakeholder Leadership: High-level communication skills to translate complex logic into clear business recommendations
  • Proven Delivery: A portfolio of productionised systems (not just POCs or notebooks) deployed in cloud environments
  • Industry Context (Bonus): Background in Digital Marketing, AdTech, or E-commerce

Nice to have

Background in Digital Marketing, AdTech, or E-commerce

What we offer

  • Team discounts across our range of Woolworths Group brands
  • robust rewards program
  • 12 weeks paid parental leave for primary caregivers plus paid superannuation for up to 12 months while the Team Member is on parental leave - eligible from the first day of employment
  • range of programs to help you prioritise and manage your wellbeing including 24/7 access to the Sonder app
  • progressive and competitive leave policy

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