Autonomy Engineer - ML & Dl Infrastructure

Skydio Skydio · Defense · Zurich, Switzerland · R&D

The role focuses on building and scaling the ML/DL infrastructure for training autonomous flight systems in drones. This includes designing and implementing data pipelines, annotation workflows, data ingestion, versioning, model training, deployment, and monitoring systems, as well as optimizing training workflows.

What you'd actually do

  1. Design and implement scalable, extensible, interactive data pipelines and annotation workflows
  2. Build tools that leverage state-of-the-art machine learning systems for efficient data exploration and curation across the fleet of Skydio drones
  3. Design and implement pipelines for data ingestion, versioning, model training, deployment and monitoring
  4. Optimize and scale deep learning training workflows to improve team iteration velocity
  5. Leverage your expertise and best-practices to uphold and improve Skydio’s engineering standards

Skills

Required

  • data engineering
  • building large scale, performant and efficient data processing pipelines
  • cloud-based ML platforms
  • containerization technologies
  • ML Ops platforms
  • databases
  • building and managing ML pipelines (data preparation, model training, model deployment, monitoring)
  • software lifecycle (architecture, development, testing, deployment, monitoring)
  • navigating and delivering within a complex codebase
  • communication skills
  • collaboration

Nice to have

  • Experience and understanding of security and compliance requirements in ML infrastructure

What the JD emphasized

  • building and scaling the infrastructure that supports Skydio’s DL and AI training efforts
  • data engineering
  • large scale, performant and efficient data processing pipelines
  • cloud-based ML platforms
  • containerization technologies
  • ML Ops platforms
  • databases
  • ML pipelines including data preparation, model training, model deployment and monitoring
  • security and compliance requirements in ML infrastructure

Other signals

  • building and scaling the infrastructure that supports Skydio’s DL and AI training efforts
  • design and implement scalable, extensible, interactive data pipelines and annotation workflows
  • build tools that leverage state-of-the-art machine learning systems for efficient data exploration and curation
  • design and implement pipelines for data ingestion, versioning, model training, deployment and monitoring
  • optimize and scale deep learning training workflows