traditional-chinese-alpaca
TCIM
A research project that develops a Traditional-Chinese instruction-following language model using Alpaca as a basis.
A Traditional-Chinese instruction-following model with datasets based on Alpaca.
134 stars
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18 forks
Language: Python
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