Model Overview
An XLM-RoBERTa encoder network.
This class implements a bi-directional Transformer-based encoder as described in "Unsupervised Cross-lingual Representation Learning at Scale". It includes the embedding lookups and transformer layers, but it does not include the masked language modeling head used during pretraining.
The default constructor gives a fully customizable, randomly initialized
RoBERTa encoder with any number of layers, heads, and embedding dimensions.
To load preset architectures and weights, use the from_preset()
constructor.
Disclaimer: Pre-trained models are provided on an "as is" basis, without warranties or conditions of any kind. The underlying model is provided by a third party and subject to a separate license, available here.
Arguments
- vocabulary_size: int. The size of the token vocabulary.
- num_layers: int. The number of transformer layers.
- num_heads: int. The number of attention heads for each transformer. The hidden size must be divisible by the number of attention heads.
- hidden_dim: int. The size of the transformer encoding layer.
- intermediate_dim: int. The output dimension of the first Dense layer in a two-layer feedforward network for each transformer.
- dropout: float. Dropout probability for the Transformer encoder.
- max_sequence_length: int. The maximum sequence length this encoder can
consume. The sequence length of the input must be less than
max_sequence_length
default value. This determines the variable shape for positional embeddings.
Example Usage
import keras
import keras_hub
import numpy as np
Raw string data.
features = ["The quick brown fox jumped.", "نسيت الواجب"]
labels = [0, 3]
# Pretrained classifier.
classifier = keras_hub.models.XLMRobertaClassifier.from_preset(
"xlm_roberta_base_multi",
num_classes=4,
)
classifier.fit(x=features, y=labels, batch_size=2)
classifier.predict(x=features, batch_size=2)
# Re-compile (e.g., with a new learning rate).
classifier.compile(
loss=keras.losses.SparseCategoricalCrossentropy(from_logits=True),
optimizer=keras.optimizers.Adam(5e-5),
jit_compile=True,
)
# Access backbone programmatically (e.g., to change `trainable`).
classifier.backbone.trainable = False
# Fit again.
classifier.fit(x=features, y=labels, batch_size=2)
Preprocessed integer data.
features = {
"token_ids": np.ones(shape=(2, 12), dtype="int32"),
"padding_mask": np.array([[1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 0, 0]] * 2),
}
labels = [0, 3]
# Pretrained classifier without preprocessing.
classifier = keras_hub.models.XLMRobertaClassifier.from_preset(
"xlm_roberta_base_multi",
num_classes=4,
preprocessor=None,
)
classifier.fit(x=features, y=labels, batch_size=2)
Example Usage with Hugging Face URI
import keras
import keras_hub
import numpy as np
Raw string data.
features = ["The quick brown fox jumped.", "نسيت الواجب"]
labels = [0, 3]
# Pretrained classifier.
classifier = keras_hub.models.XLMRobertaClassifier.from_preset(
"hf://keras/xlm_roberta_base_multi",
num_classes=4,
)
classifier.fit(x=features, y=labels, batch_size=2)
classifier.predict(x=features, batch_size=2)
# Re-compile (e.g., with a new learning rate).
classifier.compile(
loss=keras.losses.SparseCategoricalCrossentropy(from_logits=True),
optimizer=keras.optimizers.Adam(5e-5),
jit_compile=True,
)
# Access backbone programmatically (e.g., to change `trainable`).
classifier.backbone.trainable = False
# Fit again.
classifier.fit(x=features, y=labels, batch_size=2)
Preprocessed integer data.
features = {
"token_ids": np.ones(shape=(2, 12), dtype="int32"),
"padding_mask": np.array([[1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 0, 0]] * 2),
}
labels = [0, 3]
# Pretrained classifier without preprocessing.
classifier = keras_hub.models.XLMRobertaClassifier.from_preset(
"hf://keras/xlm_roberta_base_multi",
num_classes=4,
preprocessor=None,
)
classifier.fit(x=features, y=labels, batch_size=2)
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