Sr. Applied Scientist - Computer Vision, Amazon Robotics

Amazon Amazon · Big Tech · Seattle, WA · Machine Learning Science

Senior Applied Scientist role focused on developing and deploying 3D perception models for Amazon Robotics. The role involves architecting, designing, and implementing models for semantic occupancy prediction and scene completion, optimizing inference latency for edge deployment, and scaling training pipelines using SageMaker. It also includes driving multi-view perception integration and mentoring junior scientists and engineers. The work directly impacts the intelligence of robotic systems in fulfillment centers.

What you'd actually do

  1. Architect, design, and implement 3D perception models - including encoder-decoder networks, query-based transformers, and generative architectures- for semantic occupancy prediction and scene completion on robotic platforms.
  2. Own the end-to-end model lifecycle: develop scalable training pipelines, optimize inference latency for ARM-based edge processors, and deploy production models that meet real-time performance targets.
  3. Design and scale pseudo-ground-truth data generation pipelines - both heuristic-based and learning-based (e.g., SAM3D, shape completion) to produce curated training samples using SageMaker infrastructure.
  4. Drive multi-view perception integration by fusing multiple view camera inputs for robust 3D reconstruction in partially observed and occluded bin environments.
  5. Influence the team's technical strategy and contribute to the long-term vision and roadmap for 3D perception in fulfillment robotics.

Skills

Required

  • 3D perception
  • computer vision
  • deep learning
  • generative modeling
  • 3D scene understanding
  • semantic occupancy prediction
  • multi-view 3D reconstruction
  • depth estimation
  • shape completion
  • real-time inference
  • encoder-decoder networks
  • transformer architectures
  • voxelized occupancy prediction
  • panoptic and instance segmentation
  • point cloud processing
  • multi-view fusion
  • 3D generative models
  • query-based transformers
  • masked autoencoder-style completion
  • scalable pseudo-ground-truth data generation
  • optimizing inference latency for edge deployment
  • SageMaker infrastructure
  • simulation
  • synthetic data evaluation
  • live robotic workcell testing
  • 3D metrics (mIoU, IoU)
  • affordance-based evaluation frameworks
  • mentor applied scientists and engineers

Nice to have

  • scientific vision
  • project management skills
  • communication skills
  • drive to achieve results
  • passion for robotics

What the JD emphasized

  • deep in code and algorithms
  • technically strong in building scalable 3D perception systems
  • optimize inference latency for edge deployment
  • deliver solutions
  • directly contribute to implementation
  • excellent technical depth in 3D computer vision
  • scientific vision
  • project management skills
  • great communication skills
  • drive to achieve results
  • solving real-world problems that, quite frankly, haven't been solved at scale anywhere before
  • real-time performance targets

Other signals

  • real-time robotic systems
  • AI systems for robotics
  • 3D perception
  • deep learning
  • generative modeling
  • real-time inference
  • 3D scene understanding
  • scalable 3D perception systems
  • 3D generative models
  • query-based transformers
  • masked autoencoder-style completion
  • scalable pseudo-ground-truth data generation
  • optimizing inference latency for edge deployment
  • end-to-end solutions from research prototype to production deployment
  • simulation, synthetic data evaluation, and live robotic workcell testing