NVIDIA stack
Built around Isaac Sim, OpenUSD, Replicator, DGX/HGX, Jetson, TensorRT, and NIM.
Start with one workflow, expand when the evidence is clear.
SimMint adapts Flank’s dark editorial confidence to Physical AI infrastructure.
Built around Isaac Sim, OpenUSD, Replicator, DGX/HGX, Jetson, TensorRT, and NIM.
Scenes match customer layout, lighting, sensors, SKUs, motion, and edge cases.
RGB, segmentation, depth, force, trajectories, and failure metadata without manual annotation.
SimMint replaces one-off data projects with an operating loop that continuously improves robot models.
Produce perfectly labeled synthetic scenes.
Match sites, sensors, light, materials, and motion.
Score transfer and classify failures.
Choose the next scenarios for maximum policy lift.
average scene-match calibration score
perfect labels produced per monthly factory
policy lift from curriculum-led regeneration
Totes, bins, forklifts, pallets, changing SKUs, bad lighting, and dense human motion create the long tail robots must master.
Move faster than physical data collection without hiding transfer risk.
Create repeatable evidence packs for sensors, grippers, and robot cells.
Launch skills with scenarios matched to real aisles, bins, totes, and exceptions.
CSS-drawn panels visualize scenario inventory, drift, transfer gates, and curriculum decisions.
Every layer is designed for GPU-scale simulation, training, and deployment evidence.
| Simulation | Isaac Sim, Omniverse Replicator, OpenUSD scene graphs |
|---|---|
| Compute | DGX/HGX, GB200, RTX/OVX for data generation |
| Deployment | TensorRT, Triton, NIM, Jetson Orin, Fleet Command |
| Training | TAO, NeMo, RAPIDS, NVIDIA AI Enterprise |
Artifacts help engineering, safety, and procurement move together.
Every scene, label, and scenario variant tracked.
Site-match score, drift notes, and capture plan.
Failure taxonomy and policy readiness score.
Start focused and expand when evidence is clear.
Designed for robotics teams that need repeatable evidence, not more demo data.
Designed for robotics teams that need repeatable evidence, not more demo data.
Designed for robotics teams that need repeatable evidence, not more demo data.
We calibrate scenes from real site evidence, evaluate transfer, and regenerate missing scenarios until models clear gates.
No. Real data anchors calibration and evaluation; synthetic data expands coverage, labels, and edge cases.
We start with warehouse perception and manipulation, then adapt to sensors, end-effectors, SKUs, and policies.
Bring one site, one workflow, and one target model. SimMint returns a calibrated data-factory plan.