Data Engineer
Indexed description
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:
- Scalable Pipeline Development: Design and maintain ETL/ELT pipelines capable of handling 10M+ daily events and large-scale data transfers across our platforms.
- Data Modeling: Develop and optimize data models in environments like BigQuery or Snowflake to ensure high performance for both analytics and ML training sets with optimal cost
- Support ML Workflows: Build the underlying features and data inputs required for Machine Learning models
- Develop and refine ML models for practical business use cases, such as customer sentiment, churn prediction or demand forecasting
- MLOps Integration: Establish and maintain MLOps pipelines to help automate the deployment and monitoring of models in production.
- System Integration: Work with internal APIs and third-party tools to ingest data efficiently while maintaining strict data integrity.
- Governance & Quality: Implement best practices for data quality, security, and documentation to ensure our data remains a "source of truth."
- Development according to software engineering best practices (Git, CI/CD, trunk based development, tests)
- AI Collaboration: Contribute to experiments with AI and LLMs to assess how they can be practically applied to solve business problems.
- Strong SQL Foundations: Solid experience writing and optimizing SQL for commercial-scale products (e.g., handling millions of rows and complex joins efficiently).
- Pipeline Orchestration: Proven experience using tools like Airflow, dbt, or AWS Glue to manage and monitor production-grade data workflows.
- Python Proficiency: Strong Python skills for data transformation, scripting and interacting with various data sources.
- ML Engineering Exposure: Practical experience building the data infrastructure that supports machine learning, including data preprocessing and model deployment pipelines. Experience with machine learning models development
- Cloud Experience: Hands-on experience with cloud data platforms, with a strong preference for GCP.
- Software Best Practices: Familiarity with Git, CI/CD, and basic containerization (Docker) to ensure code quality and deployment reliability.
- Problem-Solving Mindset: A practical approach to engineering that balances the need for speed with long-term system stability.
- Experience with event streaming (e.g., Kafka, Kinesis) for real-time data needs.
- Exposure to ML platforms and tools such as SageMaker, Vertex AI, or Databricks.
- Familiarity with BI and visualization tools like Looker or Tableau.
- An interest in eCommerce dynamics and customer behavior analytics.
- 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!
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