Sentence-BERT (SBERT) is a modification of the BERT model that is specifically trained to generate semantically meaningful sentence embeddings. The model architecture and pre-training process are detailed in the Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks paper. Similar to BERT, Sentence-BERT utilizes a BERT-based architecture, but it is trained using a Siamese and triplet network structure to derive fixed-sized sentence embeddings that capture semantic information. Sentence-BERT is commonly used to generate high-quality sentence embeddings for various downstream natural language processing tasks, such as semantic textual similarity, clustering, and information retrieval
The fine-tuning data for the Sentence-BERT (SBERT) model should consist of data instances, each comprising a query, a positive document, and a list of negative documents. Negative mining is not supported in NeMo yet; therefore, data preprocessing should be performed offline before training. The dataset should be in JSON format. For instance, the dataset should have the following structure:
[
{
"query": "Query",
"pos_doc": "Positive",
"neg_doc": ["Negative_1", "Negative_2", ..., "Negative_n"]
},
{
// Next data instance
},
...,
{
// Subsequent data instance
}
]
This format ensures that the fine-tuning data is appropriately structured for training the Sentence-BERT model.
For fine-tuning Sentence-BERT model, you need to initialize the Sentence-BERT model with BERT model
checkpoint. To do so, you should either have a .nemo
checkpoint or need to convert a HuggingFace
BERT checkpoint to NeMo (mcore) using the following:
python NeMo/scripts/nlp_language_modeling/convert_bert_hf_to_nemo.py \
--input_name_or_path "intfloat/e5-large-unsupervised" \
--output_path /path/to/output/nemo/file.nemo \
--mcore True \
--precision 32
Then you can fine-tune the sentence-BERT model using the following script:
#!/bin/bash
PROJECT= # wandb project name
NAME= # wandb run name
export WANDB_API_KEY= # your_wandb_key
NUM_DEVICES=1 # number of gpus to train on
CONFIG_PATH="/NeMo/examples/nlp/information_retrieval/conf/"
CONFIG_NAME="megatron_bert_embedding_config"
PATH_TO_NEMO_MODEL= # Path to conveted nemo model from hf
TRAIN_DATASET_PATH= # Path to json dataset
VALIDATION_DATASET_PATH= # Path to validation dataset
SAVE_DIR= # where the checkpoint and logs are saved
mkdir -p $SAVE_DIR
export NVTE_FLASH_ATTN=0
export NVTE_ALLOW_NONDETERMINISTIC_ALGO=0
export NVTE_FUSED_ATTN=0
python NeMo/examples/nlp/information_retrieval/megatron_bert_embedding_finetuning.py \
--config-path=${CONFIG_PATH} \
--config-name=${CONFIG_NAME} \
restore_from_path=${PATH_TO_NEMO_MODEL} \
trainer.devices=${NUM_DEVICES} \
trainer.max_steps=10000 \
trainer.val_check_interval=100 \
trainer.max_epochs=1 \
+trainer.num_sanity_val_steps=0 \
model.mcore_bert=True \
model.post_process=False \
model.global_batch_size=8 \ # should be NUM_DEVICES * model.micro_batch_size
model.micro_batch_size=8 \
model.optim.lr=0.000005 \
model.optim.sched.min_lr=0.00000001 \
model.optim.sched.warmup_steps=100 \
model.encoder_seq_length=512 \
model.tokenizer.library="huggingface" \
model.tokenizer.type="intfloat/e5-large-unsupervised" \
model.data.data_train=${TRAIN_DATASET_PATH} \
model.data.data_validation=${VALIDATION_DATASET_PATH} \
model.data.hard_negatives_to_train=4 \
exp_manager.explicit_log_dir=${SAVE_DIR} \
exp_manager.create_wandb_logger=True \
exp_manager.resume_if_exists=True \
exp_manager.wandb_logger_kwargs.name=${NAME} \
exp_manager.wandb_logger_kwargs.project=${PROJECT}