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Senior ML Engineer

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Woolworths Supermarkets

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Location:
Australia , Sydney

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Contract Type:
Not provided

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Salary:

Not provided

Job Description:

Harness huge datasets and work on projects to create innovative retail tools. We strive to create better experiences together for a better tomorrow for our customers and team, bringing the best of Woolworths Group and Quantium together to make data driven decisions.

Job Responsibility:

  • Design, develop, implement, scale and maintain Advanced Analytics solutions using predominantly Google Cloud (GCP) products
  • Develop Cloud based ML pipelines to solve a broad range of business problems
  • Grow the Engineering Guild capability through pioneering new tech and approaches
  • Work collaboratively with Data Scientists, ML Engineers & Data Engineers to develop cutting edge retail tools in an agile manner
  • Create, present and seek inputs and feedback on architecture, solution designs
  • Apply relevant testing frameworks to ensure the robustness of solutions
  • Communicate analyses, insights, solution designs and showcase working solutions

Requirements:

  • Bachelor or above degree in Computer Science, Engineering or related field
  • 5+ years of commercial software development experience
  • 3+ years of hands on experience in Python, SQL and Linux
  • 3+ years of experience in system design with focus on reliable high throughput batch or streaming solutions
  • Practical experience developing and integrating RESTful or gRPC APIs
  • Hands on experience with real-time NoSQL databases (e.g., Firestore, Bigtable, DynamoDB, etc)
  • Hands on experience on CICD ( Github Action / Cloud Build / Jenkins )

Nice to have:

  • Experience building or integrating real-time data pipelines using streaming technologies such as Google Pub/Sub, Kafka or Dataflow
  • Experience with Google Cloud preferred
  • Experience in ML Engineering / ML Ops / DevOps
  • Hands on experience in Kubernetes or Docker
What we offer:
  • Team discounts across our range of Woolworths Group brands and a robust rewards program
  • A global business with endless career possibilities
  • High impact role supporting our teams who enrich our communities
  • A range of programs to help you prioritise and manage your wellbeing, including 24/7 access to the Sonder app
  • A progressive and competitive leave policy

Additional Information:

Job Posted:
January 02, 2026

Employment Type:
Fulltime
Work Type:
Hybrid work
Job Link Share:

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