← Industries

Warehousing & Logistics

Picking, sorting, packing — and the data to make learning-based systems work at scale.

Warehouse robotics

Industry Context

E-commerce and fulfillment demand ever-higher throughput and SKU diversity. Fixed automation struggles with variation; learning-based systems can generalize across items, bins, and layouts — but they need large, diverse datasets. Your warehouse has unique geometry, lighting, and product mix; off-the-shelf datasets rarely match.

What We Offer

  • Data Collection — We collect pick-place, sort, and pack demonstrations tailored to your SKU mix, bin types, and workflows. Language labels for "pick the red box" style conditioning.
  • W1 Mobile Manipulator — Wheeled base + arm for mobile picking. Navigate aisles, reach shelves, return to stations.
  • Fearless Data Platform — Log pick failures, mis-grasps, and wrong-bin errors. Replay, analyze, and retrain. A/B test policy updates before rollout.
  • RL Environment — Persistent real-world environments for training and evaluating pick policies without blocking production lines.

Value We Deliver

  • Generalization — Policies that handle new SKUs, cluttered bins, and varying poses without manual reprogramming.
  • Throughput — Faster cycle times via learned recovery, batching, and multi-step sequencing.
  • Lower integration cost — Learning reduces the need for precise fixturing and rigid workflows.
  • Continuous improvement — Platform closes the loop: failures become training data.

Example Use Cases

  • Order picking: cartons, totes, individual items
  • Sortation: divert, palletize, depalletize
  • Returns processing: inspect, sort, restock
  • Kitting and assembly for custom orders
Request Data Contact Us