Partner One Capital

Senior Machine Learning Engineer

Job Description

You’ll build and run large-scale data, ML, and agentic systems. The focus is geospatial pipelines, operational ML, and modern agent frameworks. You should be comfortable owning the full lifecycle: data ingestion, distributed processing, model development, deployment, and monitoring.


Key Responsibilities:

  • Implement and integrate agent-based systems into operational workflows.
  • Build, deploy, and monitor ML/AI models in production (batch).
  • Design, build, and maintain large-scale geospatial data pipelines.
  • Develop backend services and ML tooling
  • Establish observability for pipelines, models, and agents (metrics, tracing, alerting).
  • Collaborate with product and customer teams to drive revenue.

Requirements

  • Strong experience with distributed data processing (Spark, Python, Scala).
  • Strong experience building production ML systems (training, deployment, monitoring).
  • Experience with agent frameworks (LangChain, OpenAI Assistants, custom agentic architectures).
  • Experience with AWS across data, compute, and ML services.
  • Proficiency with CI/CD, infrastructure as code, containerization.

Nice to Have:

  • Experience with large geospatial datasets, formats, and indexing strategies.
  • Experience with vector databases, search, or embeddings.
  • Experience with graph or spatial databases.
  • Experience with fine tuning LLM models.

What Success Looks Like:

  • Reliable, scalable geospatial pipelines running in production.
  • ML/AI models deployed with robust monitoring, automated retraining, and clear visibility.
  • Agentic workflows improving internal/external operations.
  • Infrastructure that is stable, observable, and automated.