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TensorFlow-compatible Transformer layers and models.

Reason this release was yanked:

I uploaded a newer release

Project description

# maximal

Current version: 0.3.0 (Beta)

A TensorFlow-compatible Python library that provides models and layers to implement custom Transformer neural networks.

Built on TensorFlow 2.

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# Installation Its installation is straightforward:

` pip install maximal `

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# How to use it? maximal is commonly called as:

` import maximal as max `

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# Documentation An official [documentation website] with explanations and tutorials is on the way.

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# Elements

In layers.py: - SelfAttention: keras.Layer, computes Scaled Dot-Product Attention.

  • MultiHeadSelfAttention: keras.Layer, it is a concatenation of SelfAttention layers, resized back to original input shape through linear transformation.

  • PositionalEmbedding: keras.Layer, implements double Embedding layers used in Transformers literature, for tokens and positions. Positional encoding is learned through a tf.keras.layers.Embedding() layer, instead of deterministic positional encoding in the original paper.

  • TransformerLayer: keras.Layer single Transformer Encoder piece. It can be used inside any Sequential() model in Keras.

In schedules.py: - OriginalTransformerSchedule: keras.Layer implements the learning rate schedule of the original Transformer paper. It is taken from this [official TensorFlow tutorial](https://www.tensorflow.org/text/tutorials/transformer).

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# Requirements ` numpy tensorflow >= 2.0 `

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# Author Ivan Bongiorni. [LinkedIn](https://www.linkedin.com/in/ivan-bongiorni-b8a583164/)

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# License 2020 Ivan Bongiorni

This repository is licensed under the MIT license. See [LICENCE.txt]() for further details.

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