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Kogan.com is hiring an onsite ML Engineer in South Melbourne for a full-time role. You’ll design and deploy ML models for recommendations, forecasting, segmentation, churn, pricing and fraud, build real-time and batch production services, and own MLOps pipelines and monitoring. Collaborating with Product, Engineers and Analysts, you’ll deliver measurable value while upholding software engineering best practices. Requirements: strong Python and production ML experience, MLOps, SQL, and cloud/GCP familiarity (Vertex AI, BigQuery, Cloud Run); LLM or embeddings experience is a plus. Bonus for recommender or forecasting projects, streaming, and ML platforms. Tailor your application to show end-to-end ML lifecycle impact, production deployment and cross-functional collaboration; more at careers.kogan.com and devblog.kogan.com.
Kogan.com is a pioneer of Australian eCommerce, and the software we build is used by millions of customers every day. You'll join a fast-moving engineering team with real ownership, shipping to production daily and using AI as part of how we work.
As a Data Engineer you'll design and run the data and ML pipelines that let teams across Marketing, Purchasing, Logistics and Finance make confident, data-driven decisions.
What you'll do:
Machine Learning Development: Design, build and deploy machine learning models that solve practical business problems, including recommendation systems, demand forecasting, customer segmentation, churn prediction, pricing optimisation and fraud detection.
Production ML Systems: Build reliable and scalable machine learning services that deliver predictions in both real time and batch environments, ensuring strong performance, reliability and cost efficiency.
MLOps & Automation: Develop and maintain MLOps pipelines that automate model training, validation, deployment, monitoring and retraining.
Feature Engineering: Work with large datasets to create robust feature pipelines and reusable datasets that improve model performance and accelerate experimentation.
LLM & Generative AI Applications: Design, evaluate and deploy AI powered solutions using large language models (LLMs), retrieval systems, agents and emerging AI technologies to enhance customer experiences and internal productivity.
Model Monitoring & Optimisation: Implement monitoring frameworks to track model performance, drift, accuracy and business impact, continuously improving models in production.
Cross Functional Collaboration: Partner with Product Managers, Engineers, Analysts and business stakeholders to identify opportunities where machine learning can create measurable value.
Software Engineering Excellence: Develop solutions in line with software engineering best practices, including Git, CI/CD, trunk based development, testing and observability.
AI Collaboration: Contribute to experiments with AI and emerging technologies, helping shape how Kogan.com leverages machine learning and automation across the business.
What you'll need:
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Strong Python Skills: Commercial experience building machine learning applications and data pipelines using Python and relevant machine learning libraries.
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Machine Learning Expertise: Hands on experience developing, evaluating and deploying machine learning models in production environments.
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MLOps Experience: Experience building and maintaining model deployment, monitoring and retraining pipelines using modern MLOps practices and tools.
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Data Engineering Foundations: Strong SQL skills and experience working with large datasets, feature engineering workflows and distributed data processing systems.
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Cloud Experience: Hands on experience with cloud platforms, preferably Google Cloud Platform (GCP), including Vertex AI, BigQuery and Cloud Run.
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Software Engineering Best Practices: Strong understanding of Git, CI/CD, testing frameworks, containerisation and production system reliability.
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AI & LLM Experience: Experience working with LLMs, embeddings, vector databases, RAG architectures or AI agents through commercial or personal projects.
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Problem Solving Mindset: A practical engineering approach that balances experimentation and innovation with reliability, scalability and business impact.
Bonus Points
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Recommendation & Forecasting Systems: Experience building recommendation systems, search ranking models or forecasting solutions.
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ML Platforms & Tooling: Exposure to ML platforms and tools such as Vertex AI, Databricks, SageMaker or Kubeflow.
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Streaming & Event Driven Systems: Experience with event driven architectures and streaming technologies such as Kafka or Pub/Sub.
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LLM Application Deployment: Experience deploying AI applications powered by LLMs and agent frameworks.
Why Kogan.com?
- Our culture is unlike anywhere else and regardless of where you are in your career journey, we empower you to do your best work and have a big impact. Check us out https://devblog.kogan.com/ & https://goodteams.app/teams/kogan.com.
- Work with an incredible team to solve important challenges, helping to drive Australia and New Zealand's eCommerce future.
- Your role has a lot of ownership, autonomy and little red tape. You'll be empowered to achieve positive outcomes and your work will have a real impact.
- You'll be at the forefront of the eCommerce industry and be part of a company that are the Pioneers of eCommerce in Australia.
- Be an Intrepreneur, playing a hands on role in shaping our strategy at our HQ.
- Learning budget of $1000.
- A range of employee benefits such as; complimentary Kogan First Membership, team exclusive discounts, Health & Wellness program, Learning & Development and Lunch & Learns, Hackathons, Team member referral program, Company and team events and celebrations, community engagement (volunteering) and extensive career development opportunities plus loads more!