初始化项目,由ModelHub XC社区提供模型
Model: the-jb/tofu_Llama-3.2-3B-Instruct_forget10_DPO Source: Original Platform
This commit is contained in:
550
evals/.hydra/config.yaml
Normal file
550
evals/.hydra/config.yaml
Normal file
@@ -0,0 +1,550 @@
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model:
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model_args:
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device_map: cuda
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pretrained_model_name_or_path: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO
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attn_implementation: flash_attention_2
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torch_dtype: bfloat16
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tokenizer_args:
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pretrained_model_name_or_path: meta-llama/Llama-3.2-3B-Instruct
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template_args:
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apply_chat_template: true
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system_prompt: You are a helpful assistant.
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system_prompt_with_special_tokens: '<|begin_of_text|><|start_header_id|>system<|end_header_id|>
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You are a helpful assistant.<|eot_id|>'
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user_start_tag: '<|start_header_id|>user<|end_header_id|>
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'
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user_end_tag: <|eot_id|>
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asst_start_tag: '<|start_header_id|>assistant<|end_header_id|>
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'
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asst_end_tag: <|eot_id|>
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date_string: 10 Apr 2025
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mode: eval
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task_name: tofu_Llama-3.2-3B-Instruct_forget10_DPO
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seed: 0
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eval:
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tofu:
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metrics:
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||||
forget_quality:
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||||
pre_compute:
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||||
forget_truth_ratio:
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||||
pre_compute:
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||||
forget_Q_A_PARA_Prob:
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||||
datasets:
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||||
TOFU_QA_forget_para:
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||||
handler: QADataset
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||||
args:
|
||||
hf_args:
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||||
name: ${eval.tofu.forget_split}_perturbed
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split: train
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path: locuslab/TOFU
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question_key: question
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||||
answer_key: paraphrased_answer
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max_length: 512
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
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||||
args:
|
||||
padding_side: right
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||||
index: index
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handler: probability
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batch_size: 32
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access_key: correct
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||||
forget_Q_A_PERT_Prob:
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||||
datasets:
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||||
TOFU_QA_forget_pert:
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handler: QADataset
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||||
args:
|
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hf_args:
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name: ${eval.tofu.forget_split}_perturbed
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split: train
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path: locuslab/TOFU
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question_key: question
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||||
answer_key: perturbed_answer
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max_length: 512
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collators:
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||||
DataCollatorForSupervisedDataset:
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handler: DataCollatorForSupervisedDataset
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||||
args:
|
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padding_side: right
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||||
index: index
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handler: probability
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batch_size: 32
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access_key: wrong
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handler: truth_ratio
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aggregator: closer_to_1_better
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access_key: forget
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reference_logs:
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retain_model_logs:
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path: ${eval.tofu.retain_logs_path}
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include:
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forget_truth_ratio:
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access_key: retain
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handler: ks_test
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forget_Q_A_Prob:
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datasets:
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TOFU_QA_forget:
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handler: QADataset
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args:
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||||
hf_args:
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||||
name: ${eval.tofu.forget_split}
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split: train
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path: locuslab/TOFU
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question_key: question
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||||
answer_key: answer
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max_length: 512
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
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handler: DataCollatorForSupervisedDataset
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args:
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padding_side: right
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index: index
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handler: probability
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batch_size: 32
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forget_Q_A_ROUGE:
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datasets:
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TOFU_QA_forget:
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handler: QADataset
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args:
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hf_args:
|
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name: ${eval.tofu.forget_split}
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split: train
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path: locuslab/TOFU
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question_key: question
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answer_key: answer
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max_length: 512
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predict_with_generate: true
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collators:
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DataCollatorForSupervisedDataset:
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handler: DataCollatorForSupervisedDataset
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||||
args:
|
||||
padding_side: left
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||||
index: index
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generation_args:
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||||
do_sample: false
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||||
top_p: null
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||||
temperature: null
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max_new_tokens: 200
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use_cache: true
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handler: rouge
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rouge_type: rougeL_recall
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batch_size: 32
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model_utility:
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pre_compute:
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retain_Q_A_Prob:
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datasets:
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TOFU_QA_retain_eval:
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handler: QADataset
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||||
args:
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||||
hf_args:
|
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name: retain_perturbed
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split: train
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path: locuslab/TOFU
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||||
question_key: question
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||||
answer_key: answer
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||||
max_length: 512
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
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||||
args:
|
||||
padding_side: right
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||||
index: index
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||||
handler: probability
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batch_size: 32
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retain_Q_A_ROUGE:
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||||
datasets:
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TOFU_QA_retain_eval:
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handler: QADataset
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||||
args:
|
||||
hf_args:
|
||||
name: retain_perturbed
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||||
split: train
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||||
path: locuslab/TOFU
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||||
question_key: question
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||||
answer_key: answer
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||||
max_length: 512
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||||
predict_with_generate: true
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: left
|
||||
index: index
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||||
generation_args:
|
||||
do_sample: false
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||||
top_p: null
|
||||
temperature: null
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||||
max_new_tokens: 200
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||||
use_cache: true
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||||
handler: rouge
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||||
rouge_type: rougeL_recall
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||||
batch_size: 32
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||||
retain_Truth_Ratio:
|
||||
pre_compute:
|
||||
retain_Q_A_PARA_Prob:
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||||
datasets:
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||||
TOFU_QA_retain_para:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: retain_perturbed
|
||||
split: train
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||||
path: locuslab/TOFU
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||||
question_key: question
|
||||
answer_key: paraphrased_answer
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||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
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||||
access_key: correct
|
||||
retain_Q_A_PERT_Prob:
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||||
datasets:
|
||||
TOFU_QA_retain_pert:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: retain_perturbed
|
||||
split: train
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||||
path: locuslab/TOFU
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||||
question_key: question
|
||||
answer_key: perturbed_answer
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||||
max_length: 512
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
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||||
index: index
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||||
handler: probability
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||||
batch_size: 32
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||||
access_key: wrong
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||||
handler: truth_ratio
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||||
aggregator: true_better
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ra_Q_A_Prob_normalised:
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||||
pre_compute:
|
||||
ra_Q_A_Prob:
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||||
datasets:
|
||||
TOFU_QA_ra:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: real_authors_perturbed
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||||
split: train
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||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
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||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
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||||
index: index
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||||
handler: probability
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||||
batch_size: 32
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||||
access_key: correct
|
||||
ra_Q_A_PERT_Prob:
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||||
datasets:
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||||
TOFU_QA_ra_pert:
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||||
handler: QADataset
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||||
args:
|
||||
hf_args:
|
||||
name: real_authors_perturbed
|
||||
split: train
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||||
path: locuslab/TOFU
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||||
question_key: question
|
||||
answer_key: perturbed_answer
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||||
max_length: 512
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||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
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||||
handler: probability
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||||
batch_size: 32
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||||
access_key: wrong
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||||
handler: probability_w_options
|
||||
ra_Q_A_ROUGE:
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||||
datasets:
|
||||
TOFU_QA_ra:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: real_authors_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
predict_with_generate: true
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: left
|
||||
index: index
|
||||
generation_args:
|
||||
do_sample: false
|
||||
top_p: null
|
||||
temperature: null
|
||||
max_new_tokens: 200
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||||
use_cache: true
|
||||
handler: rouge
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||||
rouge_type: rougeL_recall
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||||
batch_size: 32
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||||
ra_Truth_Ratio:
|
||||
pre_compute:
|
||||
ra_Q_A_Prob:
|
||||
datasets:
|
||||
TOFU_QA_ra:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: real_authors_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: correct
|
||||
ra_Q_A_PERT_Prob:
|
||||
datasets:
|
||||
TOFU_QA_ra_pert:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: real_authors_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: perturbed_answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: wrong
|
||||
handler: truth_ratio
|
||||
aggregator: true_better
|
||||
wf_Q_A_Prob_normalised:
|
||||
pre_compute:
|
||||
wf_Q_A_Prob:
|
||||
datasets:
|
||||
TOFU_QA_wf:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: world_facts_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: correct
|
||||
wf_Q_A_PERT_Prob:
|
||||
datasets:
|
||||
TOFU_QA_wf_pert:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: world_facts_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: perturbed_answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: wrong
|
||||
handler: probability_w_options
|
||||
wf_Q_A_ROUGE:
|
||||
datasets:
|
||||
TOFU_QA_wf:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: world_facts_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
predict_with_generate: true
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: left
|
||||
index: index
|
||||
generation_args:
|
||||
do_sample: false
|
||||
top_p: null
|
||||
temperature: null
|
||||
max_new_tokens: 200
|
||||
use_cache: true
|
||||
handler: rouge
|
||||
rouge_type: rougeL_recall
|
||||
batch_size: 32
|
||||
wf_Truth_Ratio:
|
||||
pre_compute:
|
||||
wf_Q_A_Prob:
|
||||
datasets:
|
||||
TOFU_QA_wf:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: world_facts_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: correct
|
||||
wf_Q_A_PERT_Prob:
|
||||
datasets:
|
||||
TOFU_QA_wf_pert:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: world_facts_perturbed
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: perturbed_answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: probability
|
||||
batch_size: 32
|
||||
access_key: wrong
|
||||
handler: truth_ratio
|
||||
aggregator: true_better
|
||||
handler: hm_aggregate
|
||||
privleak:
|
||||
pre_compute:
|
||||
mia_min_k:
|
||||
datasets:
|
||||
TOFU_QA_forget:
|
||||
access_key: forget
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: ${eval.tofu.forget_split}
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
TOFU_QA_holdout:
|
||||
access_key: holdout
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: ${eval.tofu.holdout_split}
|
||||
path: locuslab/TOFU
|
||||
split: train
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
batch_size: 32
|
||||
handler: mia_min_k
|
||||
k: 0.4
|
||||
access_key: forget
|
||||
reference_logs:
|
||||
retain_model_logs:
|
||||
path: ${eval.tofu.retain_logs_path}
|
||||
include:
|
||||
mia_min_k:
|
||||
access_key: retain
|
||||
handler: privleak
|
||||
ref_value: 0.5
|
||||
extraction_strength:
|
||||
datasets:
|
||||
TOFU_QA_forget:
|
||||
handler: QADataset
|
||||
args:
|
||||
hf_args:
|
||||
name: ${eval.tofu.forget_split}
|
||||
split: train
|
||||
path: locuslab/TOFU
|
||||
question_key: question
|
||||
answer_key: answer
|
||||
max_length: 512
|
||||
collators:
|
||||
DataCollatorForSupervisedDataset:
|
||||
handler: DataCollatorForSupervisedDataset
|
||||
args:
|
||||
padding_side: right
|
||||
index: index
|
||||
handler: extraction_strength
|
||||
batch_size: 32
|
||||
handler: TOFUEvaluator
|
||||
output_dir: ${paths.output_dir}
|
||||
overwrite: false
|
||||
forget_split: ${forget_split}
|
||||
holdout_split: ${holdout_split}
|
||||
retain_logs_path: ${retain_logs_path}
|
||||
paths:
|
||||
root_dir: .
|
||||
data_dir: ${paths.root_dir}/data/
|
||||
datasets: ${paths.root_dir}/configs/data/datasets
|
||||
output_dir: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
work_dir: ${hydra:runtime.cwd}
|
||||
forget_split: forget10
|
||||
holdout_split: holdout10
|
||||
retain_logs_path: saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
269
evals/.hydra/hydra.yaml
Normal file
269
evals/.hydra/hydra.yaml
Normal file
@@ -0,0 +1,269 @@
|
||||
hydra:
|
||||
run:
|
||||
dir: ${paths.output_dir}
|
||||
sweep:
|
||||
dir: multirun/${now:%Y-%m-%d}/${now:%H-%M-%S}
|
||||
subdir: ${hydra.job.num}
|
||||
launcher:
|
||||
_target_: hydra._internal.core_plugins.basic_launcher.BasicLauncher
|
||||
sweeper:
|
||||
_target_: hydra._internal.core_plugins.basic_sweeper.BasicSweeper
|
||||
max_batch_size: null
|
||||
params: null
|
||||
help:
|
||||
app_name: ${hydra.job.name}
|
||||
header: '${hydra.help.app_name} is powered by Hydra.
|
||||
|
||||
'
|
||||
footer: 'Powered by Hydra (https://hydra.cc)
|
||||
|
||||
Use --hydra-help to view Hydra specific help
|
||||
|
||||
'
|
||||
template: '${hydra.help.header}
|
||||
|
||||
== Configuration groups ==
|
||||
|
||||
Compose your configuration from those groups (group=option)
|
||||
|
||||
|
||||
$APP_CONFIG_GROUPS
|
||||
|
||||
|
||||
== Config ==
|
||||
|
||||
Override anything in the config (foo.bar=value)
|
||||
|
||||
|
||||
$CONFIG
|
||||
|
||||
|
||||
${hydra.help.footer}
|
||||
|
||||
'
|
||||
hydra_help:
|
||||
template: 'Hydra (${hydra.runtime.version})
|
||||
|
||||
See https://hydra.cc for more info.
|
||||
|
||||
|
||||
== Flags ==
|
||||
|
||||
$FLAGS_HELP
|
||||
|
||||
|
||||
== Configuration groups ==
|
||||
|
||||
Compose your configuration from those groups (For example, append hydra/job_logging=disabled
|
||||
to command line)
|
||||
|
||||
|
||||
$HYDRA_CONFIG_GROUPS
|
||||
|
||||
|
||||
Use ''--cfg hydra'' to Show the Hydra config.
|
||||
|
||||
'
|
||||
hydra_help: ???
|
||||
hydra_logging:
|
||||
version: 1
|
||||
formatters:
|
||||
colorlog:
|
||||
(): colorlog.ColoredFormatter
|
||||
format: '[%(cyan)s%(asctime)s%(reset)s][%(purple)sHYDRA%(reset)s] %(message)s'
|
||||
handlers:
|
||||
console:
|
||||
class: logging.StreamHandler
|
||||
formatter: colorlog
|
||||
stream: ext://sys.stdout
|
||||
root:
|
||||
level: INFO
|
||||
handlers:
|
||||
- console
|
||||
disable_existing_loggers: false
|
||||
job_logging:
|
||||
version: 1
|
||||
formatters:
|
||||
simple:
|
||||
format: '[%(asctime)s][%(name)s][%(levelname)s] - %(message)s'
|
||||
colorlog:
|
||||
(): colorlog.ColoredFormatter
|
||||
format: '[%(cyan)s%(asctime)s%(reset)s][%(blue)s%(name)s%(reset)s][%(log_color)s%(levelname)s%(reset)s]
|
||||
- %(message)s'
|
||||
log_colors:
|
||||
DEBUG: purple
|
||||
INFO: green
|
||||
WARNING: yellow
|
||||
ERROR: red
|
||||
CRITICAL: red
|
||||
handlers:
|
||||
console:
|
||||
class: logging.StreamHandler
|
||||
formatter: colorlog
|
||||
stream: ext://sys.stdout
|
||||
file:
|
||||
class: logging.FileHandler
|
||||
formatter: simple
|
||||
filename: ${hydra.runtime.output_dir}/eval.log
|
||||
root:
|
||||
level: INFO
|
||||
handlers:
|
||||
- console
|
||||
- file
|
||||
disable_existing_loggers: false
|
||||
env: {}
|
||||
mode: RUN
|
||||
searchpath: []
|
||||
callbacks: {}
|
||||
output_subdir: .hydra
|
||||
overrides:
|
||||
hydra:
|
||||
- hydra.mode=RUN
|
||||
task:
|
||||
- experiment=eval/tofu/default.yaml
|
||||
- forget_split=forget10
|
||||
- holdout_split=holdout10
|
||||
- model=Llama-3.2-3B-Instruct
|
||||
- task_name=tofu_Llama-3.2-3B-Instruct_forget10_DPO
|
||||
- model.model_args.pretrained_model_name_or_path=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO
|
||||
- paths.output_dir=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
- retain_logs_path=saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
job:
|
||||
name: eval
|
||||
chdir: null
|
||||
override_dirname: experiment=eval/tofu/default.yaml,forget_split=forget10,holdout_split=holdout10,model.model_args.pretrained_model_name_or_path=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO,model=Llama-3.2-3B-Instruct,paths.output_dir=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals,retain_logs_path=saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json,task_name=tofu_Llama-3.2-3B-Instruct_forget10_DPO
|
||||
id: ???
|
||||
num: ???
|
||||
config_name: eval.yaml
|
||||
env_set: {}
|
||||
env_copy: []
|
||||
config:
|
||||
override_dirname:
|
||||
kv_sep: '='
|
||||
item_sep: ','
|
||||
exclude_keys: []
|
||||
runtime:
|
||||
version: 1.3.0
|
||||
version_base: '1.3'
|
||||
cwd: /mnt/nas/slurm_account/thejb/workspace/open-unlearning
|
||||
config_sources:
|
||||
- path: hydra.conf
|
||||
schema: pkg
|
||||
provider: hydra
|
||||
- path: /mnt/nas/slurm_account/thejb/workspace/open-unlearning/configs
|
||||
schema: file
|
||||
provider: main
|
||||
- path: hydra_plugins.hydra_colorlog.conf
|
||||
schema: pkg
|
||||
provider: hydra-colorlog
|
||||
- path: ''
|
||||
schema: structured
|
||||
provider: schema
|
||||
output_dir: /mnt/nas/slurm_account/thejb/workspace/open-unlearning/saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
choices:
|
||||
experiment: eval/tofu/default.yaml
|
||||
hydra: eval
|
||||
paths: default
|
||||
eval: tofu
|
||||
eval/tofu_metrics/../../collator@eval.tofu.metrics.extraction_strength.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/../../data/datasets@eval.tofu.metrics.extraction_strength.datasets: TOFU_QA_forget
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.privleak.pre_compute.mia_min_k: mia_min_k
|
||||
eval/tofu_metrics/./../../collator@eval.tofu.metrics.privleak.pre_compute.mia_min_k.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/./../../data/datasets@eval.tofu.metrics.privleak.pre_compute.mia_min_k.datasets: TOFU_MIA
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio: wf_Truth_Ratio
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_PERT_Prob: wf_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_wf_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_Prob: wf_Q_A_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.wf_Truth_Ratio.pre_compute.wf_Q_A_Prob.datasets
|
||||
: TOFU_QA_wf
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_ROUGE: wf_Q_A_ROUGE
|
||||
eval/tofu_metrics/./../../generation@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_ROUGE.generation_args: default
|
||||
eval/tofu_metrics/./../../collator@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_ROUGE.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/./../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_ROUGE.datasets: TOFU_QA_wf
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised: wf_Q_A_Prob_normalised
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_PERT_Prob: wf_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_wf_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_Prob: wf_Q_A_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.wf_Q_A_Prob_normalised.pre_compute.wf_Q_A_Prob.datasets
|
||||
: TOFU_QA_wf
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio: ra_Truth_Ratio
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_PERT_Prob: ra_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_ra_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_Prob: ra_Q_A_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.ra_Truth_Ratio.pre_compute.ra_Q_A_Prob.datasets
|
||||
: TOFU_QA_ra
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_ROUGE: ra_Q_A_ROUGE
|
||||
eval/tofu_metrics/./../../generation@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_ROUGE.generation_args: default
|
||||
eval/tofu_metrics/./../../collator@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_ROUGE.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/./../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_ROUGE.datasets: TOFU_QA_ra
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised: ra_Q_A_Prob_normalised
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_PERT_Prob: ra_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_ra_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_Prob: ra_Q_A_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.ra_Q_A_Prob_normalised.pre_compute.ra_Q_A_Prob.datasets
|
||||
: TOFU_QA_ra
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio: retain_Truth_Ratio
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PERT_Prob: retain_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_retain_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PARA_Prob: retain_Q_A_PARA_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PARA_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.retain_Truth_Ratio.pre_compute.retain_Q_A_PARA_Prob.datasets
|
||||
: TOFU_QA_retain_para
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_ROUGE: retain_Q_A_ROUGE
|
||||
eval/tofu_metrics/./../../generation@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_ROUGE.generation_args: default
|
||||
eval/tofu_metrics/./../../collator@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_ROUGE.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/./../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_ROUGE.datasets: TOFU_QA_retain_eval
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_Prob: retain_Q_A_Prob
|
||||
eval/tofu_metrics/./../../collator@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_Prob.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/./../../data/datasets@eval.tofu.metrics.model_utility.pre_compute.retain_Q_A_Prob.datasets: TOFU_QA_retain_eval
|
||||
eval/tofu_metrics/../../generation@eval.tofu.metrics.forget_Q_A_ROUGE.generation_args: default
|
||||
eval/tofu_metrics/../../collator@eval.tofu.metrics.forget_Q_A_ROUGE.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/../../data/datasets@eval.tofu.metrics.forget_Q_A_ROUGE.datasets: TOFU_QA_forget
|
||||
eval/tofu_metrics/../../collator@eval.tofu.metrics.forget_Q_A_Prob.collators: DataCollatorForSupervisedDatasetwithIndex
|
||||
eval/tofu_metrics/../../data/datasets@eval.tofu.metrics.forget_Q_A_Prob.datasets: TOFU_QA_forget
|
||||
eval/tofu_metrics/.@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio: forget_Truth_Ratio
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PERT_Prob: forget_Q_A_PERT_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PERT_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PERT_Prob.datasets
|
||||
: TOFU_QA_forget_pert
|
||||
eval/tofu_metrics/./.@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PARA_Prob: forget_Q_A_PARA_Prob
|
||||
? eval/tofu_metrics/././../../collator@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PARA_Prob.collators
|
||||
: DataCollatorForSupervisedDatasetwithIndex
|
||||
? eval/tofu_metrics/././../../data/datasets@eval.tofu.metrics.forget_quality.pre_compute.forget_truth_ratio.pre_compute.forget_Q_A_PARA_Prob.datasets
|
||||
: TOFU_QA_forget_para
|
||||
model: Llama-3.2-3B-Instruct
|
||||
hydra/env: default
|
||||
hydra/callbacks: null
|
||||
hydra/job_logging: colorlog
|
||||
hydra/hydra_logging: colorlog
|
||||
hydra/hydra_help: default
|
||||
hydra/help: default
|
||||
hydra/sweeper: basic
|
||||
hydra/launcher: basic
|
||||
hydra/output: default
|
||||
verbose: false
|
||||
8
evals/.hydra/overrides.yaml
Normal file
8
evals/.hydra/overrides.yaml
Normal file
@@ -0,0 +1,8 @@
|
||||
- experiment=eval/tofu/default.yaml
|
||||
- forget_split=forget10
|
||||
- holdout_split=holdout10
|
||||
- model=Llama-3.2-3B-Instruct
|
||||
- task_name=tofu_Llama-3.2-3B-Instruct_forget10_DPO
|
||||
- model.model_args.pretrained_model_name_or_path=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO
|
||||
- paths.output_dir=saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
- retain_logs_path=saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
38240
evals/TOFU_EVAL.json
Normal file
38240
evals/TOFU_EVAL.json
Normal file
File diff suppressed because it is too large
Load Diff
8
evals/TOFU_SUMMARY.json
Normal file
8
evals/TOFU_SUMMARY.json
Normal file
@@ -0,0 +1,8 @@
|
||||
{
|
||||
"extraction_strength": 0.261045404211332,
|
||||
"forget_Q_A_Prob": 0.5762331750616432,
|
||||
"forget_Q_A_ROUGE": 0.04170014203058363,
|
||||
"forget_quality": 5.805666105234786e-14,
|
||||
"model_utility": 0.3277496519583408,
|
||||
"privleak": -96.0889072091442
|
||||
}
|
||||
82
evals/eval.log
Normal file
82
evals/eval.log
Normal file
@@ -0,0 +1,82 @@
|
||||
[2025-05-02 21:35:12,013][model][INFO] - Setting pad_token as eos token: <|eot_id|>
|
||||
[2025-05-02 21:35:12,016][evaluator][INFO] - Evaluations stored in the experiment directory: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
[2025-05-02 21:35:12,017][evaluator][INFO] - ***** Running TOFU evaluation suite *****
|
||||
[2025-05-02 21:35:12,017][evaluator][INFO] - Fine-grained evaluations will be saved to: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_EVAL.json
|
||||
[2025-05-02 21:35:12,017][evaluator][INFO] - Aggregated evaluations will be summarised in: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_SUMMARY.json
|
||||
[2025-05-02 21:35:15,625][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:35:15,636][metrics][INFO] - Evaluating forget_Q_A_PARA_Prob
|
||||
[2025-05-02 21:35:24,926][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:35:24,943][metrics][INFO] - Evaluating forget_Q_A_PERT_Prob
|
||||
[2025-05-02 21:35:56,842][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:35:56,853][metrics][INFO] - Evaluating forget_truth_ratio
|
||||
[2025-05-02 21:35:56,855][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:35:56,863][metrics][INFO] - Evaluating forget_quality
|
||||
[2025-05-02 21:35:56,864][evaluator][INFO] - Result for metric forget_quality: 5.805666105234786e-14
|
||||
[2025-05-02 21:35:59,226][metrics][INFO] - Evaluating forget_Q_A_Prob
|
||||
[2025-05-02 21:36:05,740][evaluator][INFO] - Result for metric forget_Q_A_Prob: 0.5762331750616432
|
||||
[2025-05-02 21:36:07,530][metrics][INFO] - Evaluating forget_Q_A_ROUGE
|
||||
[2025-05-02 21:36:20,707][evaluator][INFO] - Result for metric forget_Q_A_ROUGE: 0.04170014203058363
|
||||
[2025-05-02 21:36:22,500][metrics][INFO] - Evaluating retain_Q_A_Prob
|
||||
[2025-05-02 21:36:29,800][metrics][INFO] - Evaluating retain_Q_A_ROUGE
|
||||
[2025-05-02 21:36:49,706][metrics][INFO] - Evaluating retain_Q_A_PARA_Prob
|
||||
[2025-05-02 21:36:57,683][metrics][INFO] - Evaluating retain_Q_A_PERT_Prob
|
||||
[2025-05-02 21:37:27,050][metrics][INFO] - Evaluating retain_Truth_Ratio
|
||||
[2025-05-02 21:37:29,127][metrics][INFO] - Evaluating ra_Q_A_Prob
|
||||
[2025-05-02 21:37:31,606][metrics][INFO] - Evaluating ra_Q_A_PERT_Prob
|
||||
[2025-05-02 21:37:34,641][metrics][INFO] - Evaluating ra_Q_A_Prob_normalised
|
||||
[2025-05-02 21:37:36,149][metrics][INFO] - Evaluating ra_Q_A_ROUGE
|
||||
[2025-05-02 21:37:38,730][metrics][INFO] - Skipping ra_Truth_Ratio's precompute ra_Q_A_Prob, already evaluated.
|
||||
[2025-05-02 21:37:38,730][metrics][INFO] - Skipping ra_Truth_Ratio's precompute ra_Q_A_PERT_Prob, already evaluated.
|
||||
[2025-05-02 21:37:38,731][metrics][INFO] - Evaluating ra_Truth_Ratio
|
||||
[2025-05-02 21:37:41,024][metrics][INFO] - Evaluating wf_Q_A_Prob
|
||||
[2025-05-02 21:37:43,272][metrics][INFO] - Evaluating wf_Q_A_PERT_Prob
|
||||
[2025-05-02 21:37:46,377][metrics][INFO] - Evaluating wf_Q_A_Prob_normalised
|
||||
[2025-05-02 21:37:48,087][metrics][INFO] - Evaluating wf_Q_A_ROUGE
|
||||
[2025-05-02 21:37:53,552][metrics][INFO] - Skipping wf_Truth_Ratio's precompute wf_Q_A_Prob, already evaluated.
|
||||
[2025-05-02 21:37:53,552][metrics][INFO] - Skipping wf_Truth_Ratio's precompute wf_Q_A_PERT_Prob, already evaluated.
|
||||
[2025-05-02 21:37:53,552][metrics][INFO] - Evaluating wf_Truth_Ratio
|
||||
[2025-05-02 21:37:53,553][metrics][INFO] - Evaluating model_utility
|
||||
[2025-05-02 21:37:53,553][evaluator][INFO] - Result for metric model_utility: 0.3277496519583408
|
||||
[2025-05-02 21:37:57,014][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:37:57,032][metrics][INFO] - Evaluating mia_min_k
|
||||
[2025-05-02 21:38:05,882][metrics][INFO] - Loading evaluations from saves/eval/tofu_Llama-3.2-3B-Instruct_retain90/TOFU_EVAL.json
|
||||
[2025-05-02 21:38:05,891][metrics][INFO] - Evaluating privleak
|
||||
[2025-05-02 21:38:05,891][evaluator][INFO] - Result for metric privleak: -96.0889072091442
|
||||
[2025-05-02 21:38:07,692][metrics][INFO] - Evaluating extraction_strength
|
||||
[2025-05-02 21:38:12,357][evaluator][INFO] - Result for metric extraction_strength: 0.261045404211332
|
||||
[2025-05-09 20:28:33,178][model][INFO] - Setting pad_token as eos token: <|eot_id|>
|
||||
[2025-05-09 20:28:33,182][evaluator][INFO] - Evaluations stored in the experiment directory: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
[2025-05-09 20:28:33,183][evaluator][INFO] - Loading existing evaluations from saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_EVAL.json
|
||||
[2025-05-09 20:28:33,196][evaluator][INFO] - ***** Running TOFU evaluation suite *****
|
||||
[2025-05-09 20:28:33,197][evaluator][INFO] - Fine-grained evaluations will be saved to: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_EVAL.json
|
||||
[2025-05-09 20:28:33,197][evaluator][INFO] - Aggregated evaluations will be summarised in: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_SUMMARY.json
|
||||
[2025-05-09 20:28:33,197][evaluator][INFO] - Skipping forget_quality, already evaluated.
|
||||
[2025-05-09 20:28:33,197][evaluator][INFO] - Result for metric forget_quality: 5.805666105234786e-14
|
||||
[2025-05-09 20:28:33,199][evaluator][INFO] - Skipping forget_Q_A_Prob, already evaluated.
|
||||
[2025-05-09 20:28:33,199][evaluator][INFO] - Result for metric forget_Q_A_Prob: 0.5762331750616432
|
||||
[2025-05-09 20:28:33,218][evaluator][INFO] - Skipping forget_Q_A_ROUGE, already evaluated.
|
||||
[2025-05-09 20:28:33,218][evaluator][INFO] - Result for metric forget_Q_A_ROUGE: 0.04170014203058363
|
||||
[2025-05-09 20:28:33,241][evaluator][INFO] - Skipping model_utility, already evaluated.
|
||||
[2025-05-09 20:28:33,241][evaluator][INFO] - Result for metric model_utility: 0.3277496519583408
|
||||
[2025-05-09 20:28:33,247][evaluator][INFO] - Skipping privleak, already evaluated.
|
||||
[2025-05-09 20:28:33,247][evaluator][INFO] - Result for metric privleak: -96.0889072091442
|
||||
[2025-05-09 20:28:33,256][evaluator][INFO] - Skipping extraction_strength, already evaluated.
|
||||
[2025-05-09 20:28:33,256][evaluator][INFO] - Result for metric extraction_strength: 0.261045404211332
|
||||
[2025-05-13 09:25:54,344][model][INFO] - Setting pad_token as eos token: <|eot_id|>
|
||||
[2025-05-13 09:25:54,347][evaluator][INFO] - Evaluations stored in the experiment directory: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals
|
||||
[2025-05-13 09:25:54,348][evaluator][INFO] - Loading existing evaluations from saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_EVAL.json
|
||||
[2025-05-13 09:25:54,361][evaluator][INFO] - ***** Running TOFU evaluation suite *****
|
||||
[2025-05-13 09:25:54,361][evaluator][INFO] - Fine-grained evaluations will be saved to: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_EVAL.json
|
||||
[2025-05-13 09:25:54,361][evaluator][INFO] - Aggregated evaluations will be summarised in: saves/unlearn/tofu_Llama-3.2-3B-Instruct_forget10_DPO/evals/TOFU_SUMMARY.json
|
||||
[2025-05-13 09:25:54,361][evaluator][INFO] - Skipping forget_quality, already evaluated.
|
||||
[2025-05-13 09:25:54,361][evaluator][INFO] - Result for metric forget_quality: 5.805666105234786e-14
|
||||
[2025-05-13 09:25:54,370][evaluator][INFO] - Skipping forget_Q_A_Prob, already evaluated.
|
||||
[2025-05-13 09:25:54,370][evaluator][INFO] - Result for metric forget_Q_A_Prob: 0.5762331750616432
|
||||
[2025-05-13 09:25:54,372][evaluator][INFO] - Skipping forget_Q_A_ROUGE, already evaluated.
|
||||
[2025-05-13 09:25:54,372][evaluator][INFO] - Result for metric forget_Q_A_ROUGE: 0.04170014203058363
|
||||
[2025-05-13 09:25:54,373][evaluator][INFO] - Skipping model_utility, already evaluated.
|
||||
[2025-05-13 09:25:54,374][evaluator][INFO] - Result for metric model_utility: 0.3277496519583408
|
||||
[2025-05-13 09:25:54,375][evaluator][INFO] - Skipping privleak, already evaluated.
|
||||
[2025-05-13 09:25:54,375][evaluator][INFO] - Result for metric privleak: -96.0889072091442
|
||||
[2025-05-13 09:25:54,376][evaluator][INFO] - Skipping extraction_strength, already evaluated.
|
||||
[2025-05-13 09:25:54,376][evaluator][INFO] - Result for metric extraction_strength: 0.261045404211332
|
||||
Reference in New Issue
Block a user