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| from mmengine.config import read_base |
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| from opencompass.partitioners import NaivePartitioner, NumWorkerPartitioner |
| from opencompass.runners import LocalRunner |
| from opencompass.tasks import OpenICLEvalTask, OpenICLInferTask |
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| |
| |
| with read_base(): |
| |
| from opencompass.configs.datasets.aime2025.aime2025_cascade_eval_gen_5e9f4f import aime2025_datasets |
| from opencompass.configs.datasets.gpqa.gpqa_cascade_eval_gen_772ea0 import ( |
| gpqa_datasets, |
| ) |
| from opencompass.configs.datasets.mmlu_pro.mmlu_pro_0shot_nocot_genericllmeval_gen_08c1de import ( |
| mmlu_pro_datasets, |
| ) |
| from opencompass.configs.datasets.IFEval.IFEval_gen_353ae7 import ( |
| ifeval_datasets, |
| ) |
| from opencompass.configs.datasets.SmolInstruct.smolinstruct_0shot_instruct_gen import ( |
| smolinstruct_datasets_0shot_instruct as smolinstruct_datasets, |
| ) |
| from opencompass.configs.datasets.ChemBench.ChemBench_llmjudge_gen_c584cf import ( |
| chembench_datasets, |
| ) |
| from opencompass.configs.datasets.matbench.matbench_llm_judge_gen_0e9276 import ( |
| matbench_datasets, |
| ) |
| from opencompass.configs.datasets.ProteinLMBench.ProteinLMBench_llmjudge_gen_a67965 import ( |
| proteinlmbench_datasets, |
| ) |
|
|
| |
| from opencompass.configs.summarizers.groups.mmlu_pro import ( |
| mmlu_pro_summary_groups, |
| ) |
|
|
| |
| from opencompass.configs.models.interns1.intern_s1 import \ |
| models as interns1_model |
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| datasets = sum((v for k, v in locals().items() if k.endswith('_datasets')), |
| []) |
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| |
| judge_cfg = dict() |
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| for item in datasets: |
| item['infer_cfg']['inferencer']['max_out_len'] = 65536 |
| if 'judge_cfg' in item['eval_cfg']['evaluator']: |
| item['eval_cfg']['evaluator']['judge_cfg'] = judge_cfg |
| if 'llm_evaluator' in item['eval_cfg']['evaluator'].keys() and 'judge_cfg' in item['eval_cfg']['evaluator']['llm_evaluator']: |
| item['eval_cfg']['evaluator']['llm_evaluator']['judge_cfg'] = judge_cfg |
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|
| summary_groups = sum( |
| [v for k, v in locals().items() if k.endswith('_summary_groups')], [] |
| ) |
|
|
| summary_groups.extend( |
| [ |
| { |
| 'name': 'ChemBench', |
| 'subsets': [ |
| 'ChemBench_Name_Conversion', |
| 'ChemBench_Property_Prediction', |
| 'ChemBench_Mol2caption', |
| 'ChemBench_Caption2mol', |
| 'ChemBench_Product_Prediction', |
| 'ChemBench_Retrosynthesis', |
| 'ChemBench_Yield_Prediction', |
| 'ChemBench_Temperature_Prediction', |
| ], |
| }, |
| ] |
| ) |
|
|
| summarizer = dict( |
| dataset_abbrs=[ |
| 'Knowledge', |
| ['mmlu_pro', 'accuracy'], |
| '', |
| 'Instruction Following', |
| ['IFEval', 'Prompt-level-strict-accuracy'], |
| '', |
| 'General Reasoning', |
| ['GPQA_diamond', 'accuracy'], |
| '', |
| 'Math Calculation', |
| ['aime2025', 'accuracy'], |
| '', |
| 'Academic', |
| ['ChemBench', 'naive_average'], |
| ['ProteinLMBench', 'accuracy'], |
| '', |
| 'SmolInstruct', |
| ['NC-I2F-0shot-instruct', 'score'], |
| ['NC-I2S-0shot-instruct', 'score'], |
| ['NC-S2F-0shot-instruct', 'score'], |
| ['NC-S2I-0shot-instruct', 'score'], |
| ['PP-ESOL-0shot-instruct', 'score'], |
| ['PP-Lipo-0shot-instruct', 'score'], |
| ['PP-BBBP-0shot-instruct', 'accuracy'], |
| ['PP-ClinTox-0shot-instruct', 'accuracy'], |
| ['PP-HIV-0shot-instruct', 'accuracy'], |
| ['PP-SIDER-0shot-instruct', 'accuracy'], |
| ['MC-0shot-instruct', 'score'], |
| ['MG-0shot-instruct', 'score'], |
| ['FS-0shot-instruct', 'score'], |
| ['RS-0shot-instruct', 'score'], |
| '', |
| ['matbench_expt_gap', 'mae'], |
| ['matbench_steels', 'mae'], |
| ['matbench_expt_is_metal', 'accuracy'], |
| ['matbench_glass', 'accuracy'], |
| '', |
| ], |
| summary_groups=summary_groups, |
| ) |
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| models = sum([v for k, v in locals().items() if k.endswith('_model')], []) |
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| infer = dict( |
| partitioner=dict(type=NumWorkerPartitioner, num_worker=8), |
| runner=dict( |
| type=LocalRunner, |
| max_num_workers=16, |
| retry=0, |
| task=dict(type=OpenICLInferTask), |
| ), |
| ) |
|
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| |
| eval = dict( |
| partitioner=dict(type=NaivePartitioner, n=10), |
| runner=dict(type=LocalRunner, |
| max_num_workers=16, |
| task=dict(type=OpenICLEvalTask)), |
| ) |
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| work_dir = './outputs/oc_bench_intern_s1' |
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|