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evaluate-llm-on-korean-dataset
Performs benchmarking on two Korean datasets with minimal time and effort.genai-ko-LLM
This hands-on lab walks you through a step-by-step approach to efficiently serving and fine-tuning large-scale Korean models on AWS infrastructure.sm-huggingface-kornlp
This hands-on lab guides you on how to easily train and deploy Korean NLP models in a cloud-native environment using SageMaker's Hugging Face container.sagemaker-studio-workshop-kr
Korean localized SageMaker Studio workshop materials for hands-on labs.sm-kornlp-usecases
SageMaker-based fine-tuning and deployment hands-on example of a Korean NLP downstream task. Recommended for customers considering adopting NLP workloads on AWS.tensorflow-in-sagemaker-workshop
Localized (Korean) Tensorflow in SageMaker workshop materials for hands-on labssm-distributed-training-step-by-step
This repository provides hands-on labs on PyTorch-based Distributed Training and SageMaker Distributed Training. It is written to make it easy for beginners to get started, and guides you through step-by-step modifications to the code based on the most basic BERT use cases.azure-llm-fine-tuning
This hands-on walks you through fine-tuning an open source LLM on Azure and serving the fine-tuned model on Azure. It is intended for Data Scientists and ML engineers who have experience with fine-tuning but are unfamiliar with Azure ML.tfs-workshop
Deep Learning Inference hands-on labs; Learn how to host pre-trained TensorFlow/MXNet models to Amazon SageMaker Endpoint without building Docker Imagetime-series-on-aws-hol
Time-series data hands-on lab on AWS for Data Scientists and Developers. Preprocessing, training and deployment using GluonTS and Amazon SageMaker.aws-inferentia
This repository provides an easy hands-on way to get started with AWS Inferentia. A demonstration of this hands-on can be seen in the AWS Innovate 2023 - AIML Edition session.blazingtext-workshop-korean
AWS SageMaker Workshop materials for hands-on labs; Word Embedding and Text Classification Using BlazingTextsagemaker-reinvent2019-kr
Korean localization of the SageMaker notebooks added in AWS re:Invent 2019recommendation-workshop
Recommendation system Hand-on Lab. Translated and modified original personalize hands-on lab to make it more appropriate for the workshop, and added Factorization Machine-based recommendation example.ggv2-cv-mlops-workshop
AWS IoT Greengrass V2 Hands-on Lab for Image classification and Object Detection. It guides both how to develop artifacts from the scratch and how to to deploy your own model from public components.end-to-end-pytorch-on-sagemaker
Building an end-to-end ML demo based on the PyTorch framework on SageMakerautogluon-on-aws
This hands-on lab covers example codes for Tabular, NLP, CV, SageMaker, HPO, and is suitable for self-study and half-day or full-day workshops.kobert-workshop
Hands-on Lab to perform KoBERT fine-tuning and inference on Amazon SageMaker. Also supports Multi-GPU training.sagemaker-studio-end-to-end
This hands-on lab is a Korean translated version of the official example code of Architect and build the full machine learning lifecycle with AWS. You can practice the SageMaker End-to-end pipeline in about 1 hour 30 minutes to 2 hours.triton-multi-model-endpoint
This hands-on provides a guide to SageMaker MME(Multi-Model-Endpoint) on GPU.sm-distributed-train-bloom-peft-lora
This hands-on labs modifies the Hugging Face PEFT fine-tuning and model deployment example on Amazon SageMaker.my-rag-project
sagemaker-distributed-training
Korean localization of the SageMaker Distributed Training notebooks added in AWS re:Invent 2020sm-inference-new-features
SageMaker new features (multi-container endpoint, async inference, serverless inference) hands-on. It can be used more practically than the official examples, and inference examples for Korean NLP models have been added.aiot-e2e-sagemaker-greengrass-v2-nvidia-jetson
Hands-on lab from ML model training to model compilation to edge device model deployment on the AWS Cloud. It covers the detailed method of compiling SageMaker Neo for the target device, including cloud instance and edge device, and how to write and deploy Greengrass-v2 components from scratch.architecting-for-ml-on-aws
sagemaker-yolo-finetune-workshop
gitbook
sagemaker-rl-kr
Korean localized SageMaker RL(Reinforcement Learning) jupyter notebook examples.sagemaker-pipelines
Korean localization of the SageMaker Pipelines notebooks added in AWS re:Invent 2020sagemaker-byos-byoc
Amazon SageMaker BYOS & BYOC hands-on labs. Designed for a 4-hour SageMaker workshop.homecredit-byoc-lightgbm
Hands-on that performs training and inference on SageMaker by pushing LightGBM to ECR as BYOC(Bring Your Own Container).Love Open Source and this site? Check out how you can help us