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Tensor Fusion is a state-of-the-art GPU virtualization and pooling solution designed to optimize GPU cluster utilization to its fullest potential.

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TensorFusion.AI
Next-Generation GPU Virtualization and Pooling for Enterprises
Less GPUs, More AI Apps.
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♾️ Tensor Fusion

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Tensor Fusion is a state-of-the-art GPU virtualization and pooling solution designed to optimize GPU cluster utilization to its fullest potential.

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🌟 Highlights

📐 Fractional GPU with Single TFlops/MiB Precision

🔄 Battle-tested GPU-over-IP Remote GPU Sharing

⚖️ GPU-first Scheduling and Auto-scaling

📊 Computing Oversubscription and GPU VRAM Expansion

🛫 GPU Pooling, Monitoring, Live Migration, AI Model Preloading and more

🎬 Demo

Fractional vGPU & GPU-over-IP & Distributed Allocation

Fractional vGPU & GPU-over-IP & Distributed Allocation

AI Infra Console

AI Infra Console

GPU Live-migration [End-to-end feature WIP]

https://cdn.tensor-fusion.ai/GPU_Content_Migration.mp4

🚀 Quick Start

Onboard Your Own AI Infra

💬 Discussion

🔮 Features & Roadmap

Core GPU Virtualization Features

  • Fractional GPU and flexible oversubscription
  • Remote GPU sharing with SOTA GPU-over-IP technology, less than 4% performance loss
  • GPU VRAM expansion and hot/warm/cold tiering
  • None NVIDIA GPU/NPU vendor support

Pooling & Scheduling & Management

  • GPU/NPU pool management in Kubernetes
  • GPU-first scheduling and allocation, with single TFlops/MB precision
  • GPU node auto provisioning/termination
  • GPU compaction/bin-packing
  • Seamless onboarding experience for Pytorch, TensorFlow, llama.cpp, vLLM, Tensor-RT, SGlang and all popular AI training/serving frameworks
  • Centralized Dashboard & Control Plane
  • GPU-first autoscaling policies, auto set requests/limits/replicas
  • Request multiple vGPUs with group scheduling for large models
  • Support different QoS levels

Enterprise Features

  • GPU live-migration, snapshot/distribute/restore GPU context cross cluster, fastest in the world
  • AI model registry and preloading, build your own private MaaS(Model-as-a-Service)
  • Advanced auto-scaling policies, scale to zero, rebalance of hot GPUs
  • Advanced observability features, detailed metrics & tracing/profiling of CUDA calls
  • Monetization your GPU cluster by multi-tenancy usage measurement & billing report
  • Enterprise level high availability and resilience, support topology aware scheduling, GPU node auto failover etc.
  • Enterprise level security, complete on-premise deployment support, encryption in-transit & at-rest
  • Enterprise level compliance, SSO/SAML support, advanced audit, ReBAC control, SOC2 and other compliance reports available

🗳️ Platform Support

  • Run on Linux Kubernetes clusters
  • Run on Linux VMs or Bare Metal (one-click onboarding to Edge K3S)
  • Run on Windows (Docs not ready, contact us for support)
  • Run on MacOS (Imagining mount a virtual NVIDIA GPU device on MacOS!)

See the open issues for a full list of proposed features (and known issues).

🙏 Contributing

Contributions are what make the open source community such an amazing place to learn, inspire, and create. Any contributions you make are greatly appreciated.

If you have a suggestion that would make this better, please fork the repo and create a pull request. You can also simply open an issue with the tag "enhancement". Don't forget to give the project a star! Thanks again!

  1. Fork the Project
  2. Create your Feature Branch (git checkout -b feature/AmazingFeature)
  3. Commit your Changes (git commit -m 'Add some AmazingFeature')
  4. Push to the Branch (git push origin feature/AmazingFeature)
  5. Open a Pull Request

Top contributors

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🔷 License

  1. This repo is open sourced with Apache 2.0 License, which includes GPU pooling, scheduling, management features, you can use it for free and modify it.
  2. GPU virtualization and GPU-over-IP features are also free to use as the part of Community Plan, the implementation is not fully open sourced
  3. Features mentioned in "Enterprise Features" above are paid, licensed users can automatically unlock these features.