Lil-Bevo
Lil-Bevo is UT Austin's submission to the BabyLM challenge, specifically the strict-small track.
TLDR:
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Unigram tokenizer trained on 10M BabyLM tokens plus MAESTRO dataset for a vocab size of 16k.
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deberta-small-v3
trained on mixture of MAESTRO and 10M tokens for 5 epochs. -
Model continues training for 50 epochs on 10M tokens with sequence length of 128.
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Model is trained for 2 epochs with targeted linguistic masking with sequence length of 512.
This README will be updated with more details soon.