It includes a GPU scheduler that can do finegrained GPU memory scheduling (Kubernetes can only do whole-GPU, we do it per-GB of GPU memory to pack both inference and fine tuning jobs into the same fleet) to fit model instances into GPU memory to optimally trade off user facing latency with GPU memory utilization
It's a pretty simple stack of control plane and a fat container that runs anywhere you can get hold of a GPU (e.g. runpod).
Architecture: https://docs.helix.ml/docs/architecture
Demo walkthrough showing runner dashboard: https://docs.helix.ml/docs/overview
Run it yourself: https://docs.helix.ml/docs/controlplane
Discord: https://discord.gg/VJftd844GE
Please roast me!