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  1. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-160/trainer_state.json +273 -0
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  5. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-180/README.md +202 -0
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  9. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-190/adapter_config.json +31 -0
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  11. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-200/README.md +202 -0
  12. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-200/adapter_config.json +31 -0
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  14. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-210/README.md +202 -0
  15. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-210/adapter_config.json +31 -0
  16. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-210/trainer_state.json +348 -0
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  18. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-220/adapter_config.json +31 -0
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  27. output_ft_more_layers_bookcorpus2_epoch_9_mlp/pythia-6_9b-member-6_9b-epoch-9-pile-full-600-subsets-bookcorpus2-8e-05/checkpoint-250/adapter_config.json +31 -0
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+ ## How to Get Started with the Model
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+ ### Framework versions
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+
202
+ - PEFT 0.13.2
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+ - PEFT 0.13.2
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+ - PEFT 0.13.2
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+ ### Framework versions
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+
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+ - PEFT 0.13.2
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+ ---
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+ base_model: /workspace/pythia-6_9b
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+ library_name: peft
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+ ---
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+ # Model Card for Model ID
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+ ### Framework versions
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+
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