The roleAs a Machine Learing Engineer, you will support a team of Data Scientists with tooling, data transformation, and deploying realtime models on Ray Serve endpoints.The team builds risk models and other related scores, using geospatial data as inputs to identify damage, rate the quality of a roof, or predict the likelihood of damage in the event of a natural disaster.Your role is to support the Data Science team's end-to-end workflow, and to be the key bridge between them and our ML Ops teams and systems in Australia and Poland
What you'll be doingSupporting the deployment of new risk models and scores in production.Helping work with large scale data sets (hundreds of millions of rows), and building custom workflows on top of existing foundations.Set up Claude Code usage patterns to allow team members to work more easily with AWS / Ray / Docker / Linux tooling.Own data transformation pipelines that turn semantic geospatial maps of a property into attributes suitable for categorical modelling.Collaborating with engineers to ensure solutions will work reliably on our tens-of-petabyte scale data sets, with multi-date, multi-angle, multi-modal data as inputs to algorithms.