AutoKeras helps you build machine learning models easily with an automated system based on Keras. Find guides, resources, and community support.
AutoKeras is an open-source platform designed to make machine learning more approachable for everyone, whether you're a beginner or an experienced developer. The site offers comprehensive documentation and resources on using AutoKeras, which automates the process of building and training machine learning models using Keras.
You can explore step-by-step guides, learn about different types of models—like image or text classification—and find helpful links to installation instructions, learning materials, and the project’s community. If you want to contribute, there are resources for getting involved in development or citing their work.
Whether you're looking to quickly prototype machine learning solutions or dive deeper into customizing models, AutoKeras provides a supportive environment and clear documentation to help you get started.
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