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NVIDIA Dynamo

Dynamo is a new modular inference framework designed for serving large language models (LLMs) in multi-node distributed environments. It enables seamless scaling of inference workloads across GPU nodes and the dynamic allocation of GPU workers to address traffic bottlenecks at various stages of the model pipeline.

This GitHub organization hosts repositories for Dynamo's core components and integrations, including:

Core Framework

  • Distributed inference runtime with Rust-based orchestration
  • Python bindings for workflow customization
  • Multi-GPU/multi-node serving capabilities

LLM Optimized Components

  • Disaggregated Serving Engine: Decoupling of prefill and decode to optimize for throughput at latency SLOs
  • Intelligent Routing System: Prefix-based and load-aware request distribution
  • KV Cache Management: Distributed KV Cache management

NVIDIA Optimized Transfer Library (NIXL)

  • Abstracts memory of heterogeneous devices, i.e., CPU, GPU, storage, and enables most efficient and low-latency communication among them
  • Integrates with distributed inference servers such as Dynamo. This library will target distributed inference communication patterns to effectively transfer the KV cache in disaggregated LLM serving platforms.

Getting Started

To learn more about NVIDIA Dynamo Inference Serving Platform, please refer to the Dynamo developer page and read our Quickstart Guide for container setup and basic workflows.

Documentation

User documentation on Dynamo features, APIs, and architecture is located in the Dynamo documents folder on GitHub.

FAQ

Consult the Dynamo FAQ Guide for frequently asked questions and answers.

Contribution & Support

  • Follow Contribution Guidelines
  • Report issues via GitHub Discussions
  • Enterprise support available through NVIDIA AI Enterprise

License

Apache 2.0 licensed with third-party attributions documented in each repository.

Note

This project is currently in alpha stage - APIs and components may evolve based on community feedback

Pinned Loading

  1. dynamo dynamo Public

    A Datacenter Scale Distributed Inference Serving Framework

    Rust 4.9k 567

  2. nixl nixl Public

    NVIDIA Inference Xfer Library (NIXL)

    C++ 584 131

  3. enhancements enhancements Public

    Enhancement Proposals and Architecture Decisions

    6 5

  4. aiconfigurator aiconfigurator Public

    Offline optimization of your disaggregated Dynamo graph

    Python 53 12

Repositories

Showing 7 of 7 repositories
  • dynamo Public

    A Datacenter Scale Distributed Inference Serving Framework

    ai-dynamo/dynamo’s past year of commit activity
    Rust 4,867 Apache-2.0 567 181 (11 issues need help) 107 Updated Sep 3, 2025
  • nixl Public

    NVIDIA Inference Xfer Library (NIXL)

    ai-dynamo/nixl’s past year of commit activity
    C++ 584 Apache-2.0 131 18 56 Updated Sep 3, 2025
  • aiconfigurator Public

    Offline optimization of your disaggregated Dynamo graph

    ai-dynamo/aiconfigurator’s past year of commit activity
    Python 53 Apache-2.0 12 2 1 Updated Sep 3, 2025
  • modelexpress Public

    Model Express is a Rust-based component meant to be placed next to existing model inference systems to speed up their startup times and improve overall performance.

    ai-dynamo/modelexpress’s past year of commit activity
    Rust 3 Apache-2.0 0 0 3 Updated Sep 3, 2025
  • enhancements Public

    Enhancement Proposals and Architecture Decisions

    ai-dynamo/enhancements’s past year of commit activity
    6 Apache-2.0 5 0 23 Updated Sep 2, 2025
  • examples Public
    ai-dynamo/examples’s past year of commit activity
    Python 8 Apache-2.0 2 0 3 Updated Aug 23, 2025
  • .github Public
    ai-dynamo/.github’s past year of commit activity
    0 3 0 1 Updated Aug 21, 2025

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