Comments (1)
The custom classification head has been implemented. It is off by default (the model's original head will be used) but can be turned on with either a list of channels to use for multiple hidden layers, or an int indicating the number of such layers. The number of channels will adapt so as not to bottleneck the original preclassifier.
FineTuneLLMAsClassifier(extra_class_layers: Optional[Union[int, list]] = None)
from torch-control.
Related Issues (20)
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from torch-control.