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Introduction

This repo showcases different ways NVIDIA NIMs can be deployed. This repo contains reference implementations, example documents, and architecture guides that can be used as a starting point to deploy multiple NIMs and other NVIDIA microservices into Kubernetes and other production deployment environments.

Note The content in this repository is designed to provide reference architectures and best-practices for production-grade deployments and product integrations; however the code is not validated on all platforms and does not come with any level of enterprise support. While the deployments should perform well, please treat this codebase as experimental and a collaborative sandbox. For long-term production deployments that require enterprise support from NVIDIA, looks to the official releases on NVIDIA NGC which are based on the code in this repo.

Deployment Options

Category Deployment Option Description
On-premise Deployments Helm
LLM NIM
LLM NIM on OpenShift Container Platform (coming soon)
Open Source Platforms
KServe
Independent Software Vendors
Run.ai (coming soon)
Cloud Service Provider Deployments Azure
AKS Managed Kubernetes
Azure ML
Azure prompt flow
Amazon Web Services
EKS Managed Kubernetes
Amazon SageMaker
EKS Managed Kubernetes - NIM Operator
Google Cloud Platform
GKE Managed Kubernetes
Google Cloud Vertex AI
Cloud Run
NVIDIA DGX Cloud
NVIDIA Cloud Functions
Documents Deployment Guide
Hugging Face NIM Deployment

Contributions

Contributions are welcome. Developers can contribute by opening a pull request and agreeing to the terms in CONTRIBUTING.MD.

Support and Getting Help

Please open an issue on the GitHub project for any questions. All feedback is appreciated, issues, requested features, and new deployment scenarios included.

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Deploying NIMs on AzureML.

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