This repository contains code and resources for building and deploying machine learning workflows using various AWS tools. It includes code snippets, Jupyter notebooks, and covers a wide range of fields, including AI services and SageMaker tools.
The ML Workflows with AWS Tools repository provides practical examples, tutorials, and demonstrations for leveraging AWS services to develop end-to-end machine learning pipelines. Whether you're a beginner exploring AI or an experienced practitioner, this repository aims to facilitate your understanding and utilization of AWS tools in the context of ML workflows.
The repository is organized into the following sections:
- Code Snippets: Collection of reusable code snippets and utility functions to simplify common ML tasks in AWS environments.
- Jupyter Notebooks: Interactive notebooks showcasing step-by-step examples of ML workflows using AWS services.
- AI Services: Examples and integrations with various AWS AI services, such as Amazon Rekognition, Amazon Comprehend, and Amazon Polly.
- SageMaker Tools: Hands-on tutorials and templates for building and deploying ML models using Amazon SageMaker.
To make the most of this repository, clone or download the code to your local environment. Each section contains its own README file with detailed instructions on setup, dependencies, and usage. Feel free to explore, modify, and experiment with the provided code and notebooks to fit your specific ML use cases.
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You are free to use, modify, and distribute the code.
Happy building and deploying your ML workflows with AWS tools!