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  1. poke-env poke-env Public

    A python interface for training Reinforcement Learning bots to battle on pokemon showdown

    Python 301 107

  2. Speech-to-maths Speech-to-maths Public

    Speech-recognition for Latex generation

    CSS 6 2

  3. Pokemon-Showdown Pokemon-Showdown Public

    Forked from smogon/pokemon-showdown

    Pokemon-Showdown fork optimized for RL training performance.

    TypeScript 11 7

  4. This function takes a tensorflow dat... This function takes a tensorflow dataset and returns a corresponding dataset implementing cutmix
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    def tf_ds_cutmix(ds, shuffling=1024):
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        ds_shuffled = ds.shuffle(shuffling)
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        def cutmix(p1, p2):
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            img_1, label_1 = p1
  5. This snippet was used to recover a p... This snippet was used to recover a proper keras model from a saved model which contained a submodel (ie., one of its layers was actually another model), in order to apply model optimization a posteriori (quantization, pruning). It can be extended to handle more type of layers.
    1
    from tensorflow.keras.models import Sequential
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    import tensorflow.keras.layers as keras_layers
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    clone = Sequential()
  6. A custom tensorflow / keras loss imp... A custom tensorflow / keras loss implementing OHEM (https://arxiv.org/abs/1604.03540) with cross-entropy.
    1
    import tensorflow as tf
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    from tensorflow.keras.losses import categorical_crossentropy
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    @tf.function
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    def ohem_crossentropy_loss(y_true, y_pred):