Amazon Sagemaker ExamplesExample 📓 Jupyter notebooks that demonstrate how to build, train, and deploy machine learning models using 🧠 Amazon SageMaker.
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sagemaker-xgboost-containerThis is the Docker container based on open source framework XGBoost (https://xgboost.readthedocs.io/en/latest/) to allow customers use their own XGBoost scripts in SageMaker.
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clip-containerA containerized REST API around OpenAI's CLIP model.
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domino-researchProjects developed by Domino's R&D team
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hubPublic reusable components for Polyaxon
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map-floodwater-satellite-imageryThis repository focuses on training semantic segmentation models to predict the presence of floodwater for disaster prevention. Models were trained using SageMaker and Colab.
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studio-lab-examplesExample notebooks for working with SageMaker Studio Lab. Sign up for an account at the link below!
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mlops-platformsCompare MLOps Platforms. Breakdowns of SageMaker, VertexAI, AzureML, Dataiku, Databricks, h2o, kubeflow, mlflow...
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datajobBuild and deploy a serverless data pipeline on AWS with no effort.
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aws-customer-churn-pipelineAn End to End Customer Churn Prediction solution using AWS services.
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aws-is-howKnow How Guide and Hands on Guide for AWS
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managed ml systems and iotManaged Machine Learning Systems and Internet of Things Live Lesson
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aws-ai-ml-workshop-krA collection of localized (Korean) AWS AI/ML workshop materials for hands-on labs.
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SyntheticSunSyntheticSun is a defense-in-depth security automation and monitoring framework which utilizes threat intelligence, machine learning, managed AWS security services and, serverless technologies to continuously prevent, detect and respond to threats.
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awesome-aws-researchA curated list of awesome Amazon Web Services (AWS) libraries, open source repos, guides, blogs, and other resources for Academic Researchers new to AWS
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syne-tuneLarge scale and asynchronous Hyperparameter Optimization at your fingertip.
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sagemaker-sparkml-serving-containerThis code is used to build & run a Docker container for performing predictions against a Spark ML Pipeline.
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Hello-AWS-Data-ServicesSample code for AWS data service and ML courses on LinkedIn Learning
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