Documentation Index
Fetch the complete documentation index at: https://training-docs.cerebras.ai/llms.txt
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Beta support for GPTJ indicates that we have confirmed the model’s μP functionality using coordinate checks, but have yet to perform long convergence runs.
Model Params
-
mup_base_hidden_size(Required to enable μP):The hidden size of the proxy model in μP transfer used to calculate the necessary multipliers. -
mup_base_filter_size(Required to enable μP):The filter size of the proxy model in μP transfer used to calculate the necessary multipliers. -
embeddings_scale:Scales the embedding hidden states (i.e. the tensor after embeddings & embedding layer norm are applied). Recommended to tune for stabilizing gradient flow during μP training. -
output_logits_alpha:Constant applied to the output logits scalar in μP training. The output logits are scaled byoutput_logits_alpha * mup_base_hidden_size/hidden_size. Recommended to tune for stabilizing output logits in μP training. -
scale_qk_dot_by_d:Scales attention QK dot product by d instead of sqrt(d). Must be enabled for muP training. -
attention_logits_alpha:Scales the attention QK dot product by the specified value. Recommended to tune for stabilizing attention logits in muP training. -
scale_output_logits_by_d:Scales the output logits in μP bymup_base_hidden_size/hidden_sizeif True andsqrt(mup_base_hidden_size/hidden_size)if False. It is traditionally set toTruein the μP implementation of this model.
Supported LR Adjustment Groups
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embedding: Targets the embedding weights. -
decoder_attention: Targets the dense layers in the decoder (Q, K, V, Output projections) -
decoder_input_ffn: Targets the first of the two FFN blocks in the decoder. -
decoder_output_ffn: Targets the final FFN block in the decoder.