tensornets - High level network definitions with pre-trained weights in TensorFlow

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High level network definitions with pre-trained weights in TensorFlow (tested with >= 1.1.0). You can install TensorNets from PyPI (pip install tensornets) or directly from GitHub (pip install git+https://github.com/taehoonlee/tensornets.git).

https://github.com/taehoonlee/tensornets

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