This function creates a transformer configuration based on the DeBERTa-V2 base architecture and a vocabulary based on SentencePiece tokenizer by using the python libraries 'transformers' and 'tokenizers'.
create_deberta_v2_model(
ml_framework = aifeducation_config$get_framework(),
model_dir,
vocab_raw_texts = NULL,
vocab_size = 128100,
do_lower_case = FALSE,
max_position_embeddings = 512,
hidden_size = 1536,
num_hidden_layer = 24,
num_attention_heads = 24,
intermediate_size = 6144,
hidden_act = "gelu",
hidden_dropout_prob = 0.1,
attention_probs_dropout_prob = 0.1,
sustain_track = TRUE,
sustain_iso_code = NULL,
sustain_region = NULL,
sustain_interval = 15,
trace = TRUE,
pytorch_safetensors = TRUE
)
This function does not return an object. Instead the configuration and the vocabulary of the new model are saved on disk.
string
Framework to use for training and inference.
ml_framework="tensorflow"
for 'tensorflow' and ml_framework="pytorch"
for 'pytorch'.
string
Path to the directory where the model should be saved.
vector
containing the raw texts for creating the
vocabulary.
int
Size of the vocabulary.
bool
If TRUE
all characters are transformed to lower case.
int
Number of maximal position embeddings. This parameter
also determines the maximum length of a sequence which can be processed with the model.
int
Number of neurons in each layer. This parameter determines the
dimensionality of the resulting text embedding.
int
Number of hidden layers.
int
Number of attention heads.
int
Number of neurons in the intermediate layer of
the attention mechanism.
string
name of the activation function.
double
Ratio of dropout.
double
Ratio of dropout for attention
probabilities.
bool
If TRUE
energy consumption is tracked
during training via the python library codecarbon.
string
ISO code (Alpha-3-Code) for the country. This variable
must be set if sustainability should be tracked. A list can be found on
Wikipedia: https://en.wikipedia.org/wiki/List_of_ISO_3166_country_codes.
Region within a country. Only available for USA and Canada See the documentation of codecarbon for more information. https://mlco2.github.io/codecarbon/parameters.html
integer
Interval in seconds for measuring power
usage.
bool
TRUE
if information about the progress should be
printed to the console.
bool
If TRUE
a 'pytorch' model
is saved in safetensors format. If FALSE
or 'safetensors' not available
it is saved in the standard pytorch format (.bin). Only relevant for pytorch models.
He, P., Liu, X., Gao, J. & Chen, W. (2020). DeBERTa: Decoding-enhanced BERT with Disentangled Attention. tools:::Rd_expr_doi("10.48550/arXiv.2006.03654")
Hugging Face Documentation https://huggingface.co/docs/transformers/model_doc/deberta-v2#debertav2
Other Transformer:
create_bert_model()
,
create_funnel_model()
,
create_longformer_model()
,
create_roberta_model()
,
train_tune_bert_model()
,
train_tune_deberta_v2_model()
,
train_tune_funnel_model()
,
train_tune_longformer_model()
,
train_tune_roberta_model()