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import os.path as osp |
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from mmengine.config import read_base |
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from opencompass.partitioners import NaivePartitioner, NumWorkerPartitioner |
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from opencompass.runners import LocalRunner |
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from opencompass.tasks import OpenICLEvalTask, OpenICLInferTask |
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with read_base(): |
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from opencompass.configs.datasets.bbh.bbh_gen_98fba6 import bbh_datasets |
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from opencompass.configs.datasets.cmmlu.cmmlu_ppl_041cbf import \ |
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cmmlu_datasets |
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from opencompass.configs.datasets.drop.drop_gen_a2697c import drop_datasets |
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from opencompass.configs.datasets.gpqa.gpqa_few_shot_ppl_2c9cd6 import \ |
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gpqa_datasets |
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from opencompass.configs.datasets.gsm8k.gsm8k_gen_17d0dc import \ |
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gsm8k_datasets |
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from opencompass.configs.datasets.hellaswag.hellaswag_10shot_ppl_59c85e import \ |
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hellaswag_datasets |
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from opencompass.configs.datasets.humaneval.deprecated_humaneval_gen_d2537e import \ |
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humaneval_datasets |
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from opencompass.configs.datasets.math.math_4shot_base_gen_43d5b6 import \ |
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math_datasets |
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from opencompass.configs.datasets.MathBench.mathbench_2024_few_shot_mixed_4a3fd4 import \ |
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mathbench_datasets |
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from opencompass.configs.datasets.mbpp.sanitized_mbpp_gen_742f0c import \ |
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sanitized_mbpp_datasets |
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from opencompass.configs.datasets.mmlu.mmlu_ppl_ac766d import mmlu_datasets |
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from opencompass.configs.datasets.mmlu_pro.mmlu_pro_few_shot_gen_bfaf90 import \ |
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mmlu_pro_datasets |
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from opencompass.configs.models.qwen2_5.lmdeploy_qwen2_5_1_5b import \ |
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models as lmdeploy_qwen2_5_1_5b_model |
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from opencompass.configs.summarizers.groups.bbh import bbh_summary_groups |
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from opencompass.configs.summarizers.groups.cmmlu import \ |
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cmmlu_summary_groups |
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from opencompass.configs.summarizers.groups.mathbench_v1_2024 import \ |
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mathbench_2024_summary_groups |
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from opencompass.configs.summarizers.groups.mmlu import mmlu_summary_groups |
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from opencompass.configs.summarizers.groups.mmlu_pro import \ |
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mmlu_pro_summary_groups |
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datasets = sum((v for k, v in locals().items() if k.endswith('_datasets')), []) |
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core_summary_groups = [ |
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{ |
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'name': |
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'core_average', |
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'subsets': [['mmlu', 'accuracy'], ['mmlu_pro', 'accuracy'], |
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['cmmlu', 'accuracy'], ['bbh', 'naive_average'], |
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['hellaswag', 'accuracy'], ['drop', 'accuracy'], |
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['math', 'accuracy'], ['gsm8k', 'accuracy'], |
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['mathbench-t (average)', 'naive_average'], |
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['GPQA_diamond', 'accuracy'], |
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['openai_humaneval', 'humaneval_pass@1'], |
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['IFEval', 'Prompt-level-strict-accuracy'], |
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['sanitized_mbpp', 'score'], |
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['mathbench-t (average)', 'naive_average']], |
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}, |
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] |
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summarizer = dict( |
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dataset_abbrs=[ |
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['mmlu', 'accuracy'], |
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['mmlu_pro', 'accuracy'], |
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['cmmlu', 'accuracy'], |
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['bbh', 'naive_average'], |
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['hellaswag', 'accuracy'], |
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['drop', 'accuracy'], |
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['math', 'accuracy'], |
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['gsm8k', 'accuracy'], |
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['mathbench-t (average)', 'naive_average'], |
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['GPQA_diamond', 'accuracy'], |
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['openai_humaneval', 'humaneval_pass@1'], |
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['IFEval', 'Prompt-level-strict-accuracy'], |
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['sanitized_mbpp', 'score'], |
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'mathbench-a (average)', |
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'mathbench-t (average)' |
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'', |
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['mmlu', 'accuracy'], |
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['mmlu-stem', 'accuracy'], |
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['mmlu-social-science', 'accuracy'], |
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['mmlu-humanities', 'accuracy'], |
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['mmlu-other', 'accuracy'], |
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'', |
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['mmlu_pro', 'accuracy'], |
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['mmlu_pro_math', 'accuracy'], |
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['mmlu_pro_physics', 'accuracy'], |
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['mmlu_pro_chemistry', 'accuracy'], |
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['mmlu_pro_law', 'accuracy'], |
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['mmlu_pro_engineering', 'accuracy'], |
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['mmlu_pro_other', 'accuracy'], |
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['mmlu_pro_economics', 'accuracy'], |
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['mmlu_pro_health', 'accuracy'], |
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['mmlu_pro_psychology', 'accuracy'], |
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['mmlu_pro_business', 'accuracy'], |
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['mmlu_pro_biology', 'accuracy'], |
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['mmlu_pro_philosophy', 'accuracy'], |
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['mmlu_pro_computer_science', 'accuracy'], |
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['mmlu_pro_history', 'accuracy'], |
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'', |
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['cmmlu', 'accuracy'], |
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['cmmlu-stem', 'accuracy'], |
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['cmmlu-social-science', 'accuracy'], |
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['cmmlu-humanities', 'accuracy'], |
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['cmmlu-other', 'accuracy'], |
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['cmmlu-china-specific', 'accuracy'], |
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], |
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summary_groups=sum( |
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[v for k, v in locals().items() if k.endswith('_summary_groups')], []), |
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) |
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models = sum([v for k, v in locals().items() if k.endswith('_model')], []) |
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infer = dict( |
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partitioner=dict(type=NumWorkerPartitioner, num_worker=8), |
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runner=dict( |
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type=LocalRunner, |
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max_num_workers=16, |
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retry=0, |
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task=dict(type=OpenICLInferTask)), |
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) |
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eval = dict( |
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partitioner=dict(type=NaivePartitioner, n=10), |
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runner=dict(type=LocalRunner, |
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max_num_workers=16, |
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task=dict(type=OpenICLEvalTask)), |
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) |
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base_exp_dir = 'outputs/corebench_2409_objective/' |
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work_dir = osp.join(base_exp_dir, 'base_objective') |
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