mitmul/chainer-handson
CAUTION: This is not maintained anymore. Visit https://github.com/chainer-community/chainer-colab-notebook/
This project provides practical, step-by-step guides for developers learning to build deep learning models with Chainer. It walks through fundamental tasks like setting up training loops, defining neural network architectures (like ConvNets and RNNs), and preparing data. The end-user persona is a software developer or machine learning engineer looking to implement deep learning solutions using the Chainer framework.
No commits in the last 6 months.
Use this if you are a developer learning the basics of the Chainer deep learning framework and need hands-on examples for common tasks.
Not ideal if you are looking for an actively maintained resource or advanced topics in deep learning beyond Chainer fundamentals.
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Last pushed
Jan 15, 2019
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