aws-neuron / deep-learning-containersLinks
AWS Neuron Deep Learning Containers (DLCs) are a set of Docker images for training and serving models on AWS Trainium and Inferentia instances using AWS Neuron SDK.
☆20Updated this week
Alternatives and similar repositories for deep-learning-containers
Users that are interested in deep-learning-containers are comparing it to the libraries listed below
Sorting:
- A high-throughput and memory-efficient inference and serving engine for LLMs☆25Updated 3 months ago
- A CLI tool that helps manage training jobs on the SageMaker HyperPod clusters orchestrated by Amazon EKS☆33Updated last week
- ☆57Updated this week
- Foundation model benchmarking tool. Run any model on any AWS platform and benchmark for performance across instance type and serving stac…☆254Updated 10 months ago
- Collection of best practices, reference architectures, model training examples and utilities to train large models on AWS.☆387Updated this week
- ☆132Updated 2 weeks ago
- Example code for AWS Neuron SDK developers building inference and training applications☆157Updated 3 weeks ago
- This repository aims to showcase how to finetune a FM model in Amazon EKS cluster using, JupyterHub to provision notebooks and craft both…☆52Updated 7 months ago
- ☆25Updated last week
- A helper library to connect into Amazon SageMaker with AWS Systems Manager and SSH (Secure Shell)☆258Updated 7 months ago
- ☆111Updated last year
- Powering AWS purpose-built machine learning chips. Blazing fast and cost effective, natively integrated into PyTorch and TensorFlow and i…☆578Updated last week
- Create, List, Update, Delete Amazon EKS clusters. Deploy and manage software on EKS. Run distributed model training and inference example…☆64Updated 2 weeks ago
- Implementing a fast scaling and low cost Stable Diffusion inference solution with serverless and containers on AWS☆41Updated last year
- This Guidance demonstrates how to streamline access to numerous large language models (LLMs) through a unified, industry-standard API gat…☆193Updated 7 months ago
- Hands-on workshop for distributed training and hosting on SageMaker☆151Updated 3 months ago
- ☆72Updated last year
- Mistral on AWS examples for Bedrock & SageMaker☆89Updated this week
- Foundation Model Evaluations Library☆276Updated 6 months ago
- Seamlessly invoke Amazon Bedrock or your custom models, enabling a smooth experience with AWS GenAI services.☆97Updated last week
- Some crazy experiments☆35Updated 5 months ago
- One stop shop for running AI/ML on AWS.☆1,137Updated this week
- AIOps modules is a collection of reusable Infrastructure as Code (IaC) modules for Machine Learning (ML), Foundation Models (FM), Large L…☆101Updated this week
- ☆68Updated 2 weeks ago
- Toolkit for allowing inference and serving with PyTorch on SageMaker. Dockerfiles used for building SageMaker Pytorch Containers are at h…☆142Updated last year
- This Guidance demonstrates how to deploy a machine learning inference architecture on Amazon Elastic Kubernetes Service (Amazon EKS). It …☆46Updated 8 months ago
- A generative AI-powered framework for testing virtual agents.☆337Updated last month
- Create an Amazon EKS cluster and run a distributed training example☆29Updated last year
- Run existing Model Context Protocol (MCP) stdio-based servers in AWS Lambda functions☆347Updated this week
- Build LangChain Applications on AWS☆291Updated this week