Engineer, Machine Learning Systems (AI Products)
Indexed description
Beyond architecture, your impact lies in lifting the technical capability of the entire AI Products team. You will champion engineering excellence, mentor junior engineers, and collaborate across Xero to enhance data usability - applying modern AI research, including Large Language Models, only once it can be engineered into reliable, production-grade systems.
The team
You will join the AI Products group, a diverse team of scientists, engineers, product managers, and analysts within our broader Data & Science division. As a Machine Learning Engineer, you'll partner closely with Applied Scientists to build the interfaces and harnesses that safely and reliably transition models from research into production. Together, this collaborative team reduces toil and delivers beautiful, data-driven insights for small businesses.
The Team Is Currently Working On
- Designing and building highly scalable, distributed production infrastructure to support generative AI features
- Harnessing tools like Python, SQL, and distributed processing engines such as Spark or Dask to handle web-scale data workloads
- Deploying to production environments running on AWS and Kubernetes Integrating modern Large Language Model technologies into product features once they're production-ready
What We're Looking For
- 5+ years building and operating production Python (or equivalent language) services at scale - this is a software engineering role first; strong system design and coding proficiency are non-negotiable
- A track record of owning services or pipelines in production, including operational/on-call responsibility, incident response, and managing technical debt over time
- Deep understanding of distributed processing principles (Spark, Dask, or similar) alongside strong SQL capabilities
- Demonstrated experience integrating ML models or LLM-based features into production systems - you don't need a research background, but you should be comfortable working alongside Applied Scientists to productionize their work
- Exceptional communication skills, with the ability to translate complex technical concepts for both business and technical audiences
- A natural coaching mindset, with experience establishing engineering standards and mentoring other engineers
- Familiarity with ML tooling such as MLFlow, TensorFlow, or PyTorch, and data orchestration tools like Airflow or Prefect, is valued - but production engineering depth matters more than research exposure
- Nice to have: prior experience applying or fine-tuning LLMs in a product context, though this is not a substitute for the core software engineering bar above
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