Adjust Attention Mechanism and Dataset Handling #295
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Summary
This pull request introduces several updates to the attention mechanism and dataset handling. The main changes include adjustments to the attention mask logic, enhancements in data preprocessing, and integration of JSONL dataset support.
Changes
Attention Mechanism
attention.py
to check if the shape of queries is equal to 1 instead of only the second dimension, improving the handling of causal and non-causal attention modes.Dataset Handling
concatenate_datasets
from the datasets library to support combining multiple datasets efficiently.JSONLDataset
class to handle datasets in JSONL format, including methods for loading, padding, and chunking data. This class supports flexible handling of input sequences and ensures compatibility with the training pipeline.Data Loader
get_jsonl_dataloader
function to generate data loaders for JSONL datasets, handling training and validation datasets separately and ensuring proper batching and shuffling mechanisms.