# Dynamo Support Matrix This document provides the support matrix for Dynamo, including hardware, software and build instructions. ## Hardware Compatibility | **CPU Architecture** | **Status** | | :------------------- | :----------- | | **x86_64** | Supported | | **ARM64** | Experimental | > [!Warning] > While **x86_64** architecture is supported on systems with a minimum of 32 GB RAM and at least 4 CPU cores, > the **ARM64** support is experimental and may have limitations. ### GPU Compatibility If you are using a **GPU**, the following GPU models and architectures are supported: | **GPU Architecture** | **Status** | | :----------------------------------- | :--------- | | **NVIDIA Blackwell Architecture** | Supported | | **NVIDIA Hopper Architecture** | Supported | | **NVIDIA Ada Lovelace Architecture** | Supported | | **NVIDIA Ampere Architecture** | Supported | ## Platform Architecture Compatibility **Dynamo** is compatible with the following platforms: | **Operating System** | **Version** | **Architecture** | **Status** | | :------------------- | :---------- | :--------------- | :----------- | | **Ubuntu** | 22.04 | x86_64 | Supported | | **Ubuntu** | 24.04 | x86_64 | Supported | | **Ubuntu** | 24.04 | ARM64 | Experimental | | **CentOS Stream** | 9 | x86_64 | Experimental | > [!Note] > For **Linux**, the **ARM64** support is experimental and may have limitations. > Wheels are built using a manylinux_2_28-compatible environment and they have been validated on CentOS 9 and Ubuntu (22.04, 24.04). > > Compatibility with other Linux distributions is expected but has not been officially verified yet. > [!Caution] > KV Block Manager is supported only with Python 3.12. Python 3.12 support is currently limited to Ubuntu 24.04. ## Software Compatibility ### Runtime Dependency | **Python Package** | **Version** | glibc version | CUDA Version | | :----------------- | :---------- | :------------------------------------ | :----------- | | ai-dynamo | 0.6.1 | >=2.28 | | | ai-dynamo-runtime | 0.6.1 | >=2.28 (Python 3.12 has known issues) | | | NIXL | 0.7.0 | >=2.27 | >=11.8 | ### Build Dependency | **Build Dependency** | **Version** | | :------------------- | :------------------------------------------------------------------------------- | | **TensorRT-LLM** | 1.1.0rc5 | | **NIXL** | 0.7.0 | | **vLLM** | 0.10.1.1 | | **SGLang** | 0.5.3rc0 | > [!Important] > Specific versions of TensorRT-LLM supported by Dynamo are subject to change. Currently TensorRT-LLM does not support Python 3.11 so installation of the ai-dynamo[trtllm] will fail. ## Cloud Service Provider Compatibility ### AWS | **Host Operating System** | **Version** | **Architecture** | **Status** | | :------------------------ | :---------- | :--------------- | :--------- | | **Amazon Linux** | 2023 | x86_64 | Supported¹ | > [!Caution] > ¹ There is a known issue with the TensorRT-LLM framework when running the AL2023 container locally with `docker run --network host ...` due to a [bug](https://github.com/mpi4py/mpi4py/discussions/491#discussioncomment-12660609) in mpi4py. To avoid this issue, replace the `--network host` flag with more precise networking configuration by mapping only the necessary ports (e.g., 4222 for nats, 2379/2380 for etcd, 8000 for frontend). ## Build Support **Dynamo** currently provides build support in the following ways: - **Wheels**: Pre-built Python wheels are only available for **x86_64 Linux**. No wheels are available for other platforms at this time. - **Runtime Container Images**: We distribute only **AMD64** images of the runtime target on [NGC](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/collections/ai-dynamo) for [TensorRT-LLM](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/containers/tensorrtllm-runtime), [vLLM](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/containers/vllm-runtime), and [SGLang](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/containers/sglang-runtime). Users must build the container image from source if they require an **ARM64** image. - **Deployment-supportive Images**: [NGC](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/collections/ai-dynamo) hosts the [Dynamo kubernetes-operator](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/containers/kubernetes-operator) to simplify deployments of Dynamo Graphs. It is currently provided as an **AMD64** image only. - **Helm Charts**: [NGC](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/collections/ai-dynamo) hosts the helm charts supporting Kubernetes deployments of Dynamo. [Dynamo CRDs](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/helm-charts/dynamo-crds), [Dynamo Platform](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/helm-charts/dynamo-platform), and [Dynamo Graph](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/helm-charts/dynamo-graph) are available. Once you've confirmed that your platform and architecture are compatible, you can install **Dynamo** by following the instructions in the [Quick Start Guide](https://github.com/ai-dynamo/dynamo/blob/main/README.md#installation).