GPU Hypervisor for ML Platforms
MLOps · ML Infra · Platform
Do more experiments per GPU. Cut queue times. Delay your next GPU purchase.
Built for ML platform & MLOps teams running CUDA workloads on NVIDIA.
Notebook/Pipeline
Your existing ML Pods/Containers + WoolyAI Runtime libraries
Core Scheduling across Kernels
Safe VRAM Overcommit
WoolyAI treats GPUs as a continuously active accelerated compute fabric, not a per-job reserved device.
Pillar 1
(GPU core-level)
Fractional Core Allocation
Priority-Based Core Sharing
Elastic Core Redistribution
Pillar 2
Virtualization
Elastic VRAM Overcommit
Max-Density Scheduling
Smart Swap Eviction
Pillar 3
Dedup
Shared Weights Dedup
Lower VRAM Footprint
Faster cold starts
Pillar 4
Decoupling
CPU Pods Accelerated
Transparent GPU Offload
Route-to-Any GPU
Higher Utilization
Faster Queue Times
Balanced Cluster
Placement Flexibility
Reclaim idle gaps and keep the GPU busy while preserving responsiveness.
Run many small trials concurrently instead of one GPU per run.
Guarantee priority workloads while safely sharing the GPU with background workloads.
Deduplicate shared base weights so VRAM scales with adapters, not full models.
Drop-in compatibility with your existing ML platform!
Works with your existing ML containers
Deploy with WoolyAI's Kubernetes GPU Operator
(5 min setup)
Measure headroom -> Review findings -> Plan rollout