Autonomy Engineer - Deep Learning Infrastructure

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

The role focuses on building and scaling the infrastructure for Skydio's Deep Learning (DL) and AI efforts, specifically for computer vision workloads. Responsibilities include developing high-performance inference solutions, optimizing models, designing MLOps workflows, and implementing GPU kernels. The role operates at the intersection of autonomy, embedded, and cloud teams, aiming to accelerate progress in intelligent mobile robots.

What you'd actually do

  1. Develop solutions for high-performance deep learning inference for CV workloads that can deliver high throughput and low latency on different hardware platforms
  2. Profile CV and Vision Language Models (VLMs) to analyze performance, identify bottlenecks and acceleration/optimization opportunities and improve power efficiency of deep learning inference workloads
  3. Design and implement end to end MLOps workflows for model deployment, monitoring, and re-training
  4. Utilize advanced Machine Learning knowledge to leverage training or runtime frameworks or model efficiency tools to improve system performance
  5. Create new methods for improving training efficiency

Skills

Required

  • MLOps
  • ML inference acceleration/optimization
  • edge deployment
  • DL fundamentals
  • CV fundamentals
  • image processing
  • video processing
  • ML pipelines
  • model training
  • model deployment
  • monitoring
  • ML frameworks and libraries
  • software lifecycle (architecture, development, testing, deployment, monitoring)
  • complex codebase navigation
  • communication skills
  • collaboration skills

Nice to have

  • Vision Language Models (VLMs)
  • GPU kernels for custom architectures
  • SDK design for ML workflows
  • security and compliance requirements in ML infrastructure

What the JD emphasized

  • high-performance deep learning inference
  • MLOps
  • ML inference acceleration/optimization
  • edge deployment
  • ML pipelines
  • ML infrastructure

Other signals

  • building and scaling infrastructure for DL/AI
  • high-performance deep learning inference for CV
  • MLOps workflows for model deployment, monitoring, and re-training
  • ML infrastructure