| from mmengine.config import read_base |
|
|
| from opencompass.models import (HuggingFacewithChatTemplate, |
| TurboMindModelwithChatTemplate) |
| from opencompass.utils.text_postprocessors import extract_non_reasoning_content |
|
|
| with read_base(): |
| |
| |
| from opencompass.configs.datasets.aime2024.aime2024_gen_6e39a4 import \ |
| aime2024_datasets |
| from opencompass.configs.datasets.ARC_c.ARC_c_cot_gen_926652 import \ |
| ARC_c_datasets |
| |
| |
| from opencompass.configs.datasets.bbh.bbh_gen_5b92b0 import \ |
| bbh_datasets |
| |
| |
| |
| |
| from opencompass.configs.datasets.cmmlu.cmmlu_0shot_cot_gen_305931 import \ |
| cmmlu_datasets |
| from opencompass.configs.datasets.cmo_fib.cmo_fib_gen_ace24b import \ |
| cmo_fib_datasets |
| from opencompass.configs.datasets.drop.drop_openai_simple_evals_gen_3857b0 import \ |
| drop_datasets |
| from opencompass.configs.datasets.GaokaoBench.GaokaoBench_no_subjective_gen_4c31db import \ |
| GaokaoBench_datasets |
| from opencompass.configs.datasets.gpqa.gpqa_openai_simple_evals_gen_5aeece import \ |
| gpqa_datasets |
| |
| from opencompass.configs.datasets.gsm8k.gsm8k_0shot_v2_gen_6e39a4 import \ |
| gsm8k_datasets |
| from opencompass.configs.datasets.hellaswag.hellaswag_10shot_gen_e42710 import \ |
| hellaswag_datasets |
| from opencompass.configs.datasets.humaneval.humaneval_openai_sample_evals_gen_dcae0e import \ |
| humaneval_datasets |
| from opencompass.configs.datasets.IFEval.IFEval_gen_353ae7 import \ |
| ifeval_datasets |
| from opencompass.configs.datasets.korbench.korbench_single_0_shot_gen import \ |
| korbench_0shot_single_datasets |
| from opencompass.configs.datasets.livecodebench.livecodebench_gen_b2b0fd import \ |
| LCB_datasets |
| from opencompass.configs.datasets.math.math_0shot_gen_11c4b5 import \ |
| math_datasets |
| from opencompass.configs.datasets.MathBench.mathbench_2024_gen_50a320 import \ |
| mathbench_datasets |
| from opencompass.configs.datasets.mbpp.sanitized_mbpp_mdblock_gen_a447ff import \ |
| sanitized_mbpp_datasets |
| from opencompass.configs.datasets.mmlu.mmlu_openai_simple_evals_gen_b618ea import \ |
| mmlu_datasets |
| from opencompass.configs.datasets.mmlu_pro.mmlu_pro_0shot_cot_gen_08c1de import \ |
| mmlu_pro_datasets |
| from opencompass.configs.datasets.mmmlu_lite.mmmlu_lite_gen_c51a84 import \ |
| mmmlu_lite_datasets |
| from opencompass.configs.datasets.musr.musr_gen_3622bb import \ |
| musr_datasets |
| from opencompass.configs.datasets.nq.nq_open_1shot_gen_2e45e5 import \ |
| nq_datasets |
| from opencompass.configs.datasets.race.race_cot_gen_d95929 import \ |
| race_datasets |
| from opencompass.configs.datasets.scicode.scicode_gen_085b98 import \ |
| SciCode_datasets |
| from opencompass.configs.datasets.SuperGLUE_BoolQ.SuperGLUE_BoolQ_cot_gen_1d56df import \ |
| BoolQ_datasets |
| from opencompass.configs.datasets.teval.teval_en_gen_1ac254 import \ |
| teval_datasets as teval_en_datasets |
| from opencompass.configs.datasets.teval.teval_zh_gen_1ac254 import \ |
| teval_datasets as teval_zh_datasets |
| from opencompass.configs.datasets.TheoremQA.TheoremQA_5shot_gen_6f0af8 import \ |
| TheoremQA_datasets |
| from opencompass.configs.datasets.triviaqa.triviaqa_wiki_1shot_gen_bc5f21 import \ |
| triviaqa_datasets |
| from opencompass.configs.datasets.wikibench.wikibench_gen_0978ad import \ |
| wikibench_datasets |
| |
| |
| from opencompass.configs.summarizers.groups.bbh import \ |
| bbh_summary_groups |
| from opencompass.configs.summarizers.groups.cmmlu import \ |
| cmmlu_summary_groups |
| from opencompass.configs.summarizers.groups.GaokaoBench import \ |
| GaokaoBench_summary_groups |
| from opencompass.configs.summarizers.groups.korbench import \ |
| korbench_summary_groups |
| from opencompass.configs.summarizers.groups.mathbench_v1_2024 import \ |
| mathbench_2024_summary_groups |
| from opencompass.configs.summarizers.groups.mmlu import \ |
| mmlu_summary_groups |
| from opencompass.configs.summarizers.groups.mmlu_pro import \ |
| mmlu_pro_summary_groups |
| from opencompass.configs.summarizers.groups.musr_average import \ |
| summarizer as musr_summarizer |
| from opencompass.configs.summarizers.groups.scicode import \ |
| scicode_summary_groups |
| from opencompass.configs.summarizers.groups.teval import \ |
| teval_summary_groups |
| from opencompass.configs.summarizers.mmmlu_lite import \ |
| mmmlu_summary_groups |
|
|
| from ...rjob import eval, infer |
|
|
| race_datasets = [race_datasets[1]] |
|
|
| bbh_datasets = [ |
| x for x in bbh_datasets if 'logical_deduction_seven_objects' in x['abbr'] |
| or 'multistep_arithmetic_two' in x['abbr'] |
| ] |
| cmmlu_datasets = [ |
| x for x in cmmlu_datasets if x['abbr'].replace('cmmlu-', '') in [ |
| 'ancient_chinese', 'chinese_civil_service_exam', |
| 'chinese_driving_rule', 'chinese_food_culture', |
| 'chinese_foreign_policy', 'chinese_history', 'chinese_literature', |
| 'chinese_teacher_qualification', 'construction_project_management', |
| 'elementary_chinese', 'elementary_commonsense', 'ethnology', |
| 'high_school_politics', 'modern_chinese', |
| 'traditional_chinese_medicine' |
| ] |
| ] |
| mmlu_datasets = [ |
| x for x in mmlu_datasets if x['abbr'].replace('lukaemon_mmlu_', '') in [ |
| 'business_ethics', 'clinical_knowledge', 'college_medicine', |
| 'global_facts', 'human_aging', 'management', 'marketing', |
| 'medical_genetics', 'miscellaneous', 'nutrition', |
| 'professional_accounting', 'professional_medicine', 'virology' |
| ] |
| ] |
|
|
| mmlu_pro_datasets = [mmlu_pro_datasets[0]] |
|
|
| mmmlu_lite_datasets = [ |
| x for x in mmmlu_lite_datasets if 'mmlu_lite_AR-XY' in x['abbr'] |
| ] |
| mathbench_datasets = [x for x in mathbench_datasets if 'college' in x['abbr']] |
| GaokaoBench_datasets = [ |
| x for x in GaokaoBench_datasets if '2010-2022_Math_II_MCQs' in x['abbr'] |
| or '2010-2022_Math_II_Fill-in-the-Blank' in x['abbr'] |
| ] |
|
|
| datasets = sum( |
| (v for k, v in locals().items() if k.endswith('_datasets') |
| and 'scicode' not in k.lower() and 'teval' not in k and 'human' not in k), |
| [], |
| ) |
| datasets += teval_en_datasets |
| datasets += teval_zh_datasets |
| datasets += humaneval_datasets |
| |
|
|
| musr_summary_groups = musr_summarizer['summary_groups'] |
| summary_groups = sum( |
| [v for k, v in locals().items() if k.endswith('_summary_groups')], []) |
| summary_groups.append( |
| { |
| 'name': 'Mathbench', |
| 'subsets': ['mathbench-a (average)', 'mathbench-t (average)'], |
| }, ) |
|
|
| |
| summarizer = dict( |
| dataset_abbrs=[ |
| 'Language', |
| ['race-high', 'accuracy'], |
| ['ARC-c', 'accuracy'], |
| ['BoolQ', 'accuracy'], |
| ['triviaqa_wiki_1shot', 'score'], |
| ['nq_open_1shot', 'score'], |
| ['mmmlu_lite', 'naive_average'], |
| '', |
| 'Instruction Following', |
| ['IFEval', 'Prompt-level-strict-accuracy'], |
| '', |
| 'General Reasoning', |
| ['drop', 'accuracy'], |
| ['bbh', 'naive_average'], |
| ['GPQA_diamond', 'accuracy'], |
| ['hellaswag', 'accuracy'], |
| ['TheoremQA', 'score'], |
| ['musr_average', 'naive_average'], |
| ['korbench_single', 'naive_average'], |
| ['ARC_Prize_Public_Evaluation', 'accuracy'], |
| '', |
| 'Math Calculation', |
| ['gsm8k', 'accuracy'], |
| ['GaokaoBench', 'weighted_average'], |
| ['math', 'accuracy'], |
| ['cmo_fib', 'accuracy'], |
| ['aime2024', 'accuracy'], |
| ['Mathbench', 'naive_average'], |
| '', |
| 'Knowledge', |
| ['wikibench-wiki-single_choice_cncircular', 'perf_4'], |
| ['cmmlu', 'naive_average'], |
| ['mmlu', 'naive_average'], |
| ['mmlu_pro', 'naive_average'], |
| '', |
| 'Code', |
| ['openai_humaneval', 'humaneval_pass@1'], |
| ['sanitized_mbpp', 'score'], |
| ['humanevalx', 'naive_average'], |
| ['ds1000', 'naive_average'], |
| ['lcb_code_generation', 'pass@1'], |
| ['lcb_code_execution', 'pass@1'], |
| ['lcb_test_output', 'pass@1'], |
| ['bigcodebench_hard_instruct', 'pass@1'], |
| ['bigcodebench_hard_complete', 'pass@1'], |
| '', |
| 'Agent', |
| ['teval', 'naive_average'], |
| ['SciCode', 'accuracy'], |
| ['SciCode', 'sub_accuracy'], |
| '', |
| 'bbh-logical_deduction_seven_objects', |
| 'bbh-multistep_arithmetic_two', |
| '', |
| 'mmlu', |
| 'mmlu-stem', |
| 'mmlu-social-science', |
| 'mmlu-humanities', |
| 'mmlu-other', |
| '', |
| 'cmmlu', |
| 'cmmlu-stem', |
| 'cmmlu-social-science', |
| 'cmmlu-humanities', |
| 'cmmlu-other', |
| 'cmmlu-china-specific', |
| '', |
| 'mmlu_pro', |
| 'mmlu_pro_biology', |
| 'mmlu_pro_business', |
| 'mmlu_pro_chemistry', |
| 'mmlu_pro_computer_science', |
| 'mmlu_pro_economics', |
| 'mmlu_pro_engineering', |
| 'mmlu_pro_health', |
| 'mmlu_pro_history', |
| 'mmlu_pro_law', |
| 'mmlu_pro_math', |
| 'mmlu_pro_philosophy', |
| 'mmlu_pro_physics', |
| 'mmlu_pro_psychology', |
| 'mmlu_pro_other', |
| '', |
| 'ds1000_Pandas', |
| 'ds1000_Numpy', |
| 'ds1000_Tensorflow', |
| 'ds1000_Scipy', |
| 'ds1000_Sklearn', |
| 'ds1000_Pytorch', |
| 'ds1000_Matplotlib', |
| '', |
| 'mmmlu_lite', |
| 'openai_mmmlu_lite_AR-XY', |
| 'openai_mmmlu_lite_BN-BD', |
| 'openai_mmmlu_lite_DE-DE', |
| 'openai_mmmlu_lite_ES-LA', |
| 'openai_mmmlu_lite_FR-FR', |
| 'openai_mmmlu_lite_HI-IN', |
| 'openai_mmmlu_lite_ID-ID', |
| 'openai_mmmlu_lite_IT-IT', |
| 'openai_mmmlu_lite_JA-JP', |
| 'openai_mmmlu_lite_KO-KR', |
| 'openai_mmmlu_lite_PT-BR', |
| 'openai_mmmlu_lite_SW-KE', |
| 'openai_mmmlu_lite_YO-NG', |
| 'openai_mmmlu_lite_ZH-CN', |
| '', |
| '###### MathBench-A: Application Part ######', |
| 'college', |
| 'high', |
| 'middle', |
| 'primary', |
| 'arithmetic', |
| 'mathbench-a (average)', |
| '###### MathBench-T: Theory Part ######', |
| 'college_knowledge', |
| 'high_knowledge', |
| 'middle_knowledge', |
| 'primary_knowledge', |
| 'mathbench-t (average)', |
| ], |
| summary_groups=summary_groups, |
| ) |
|
|
| for d in datasets: |
| d['reader_cfg']['test_range'] = '[0:16]' |
|
|
| hf_model = dict(type=HuggingFacewithChatTemplate, |
| abbr='qwen-3-8b-hf-fullbench', |
| path='Qwen/Qwen3-8B', |
| max_out_len=32768, |
| batch_size=8, |
| run_cfg=dict(num_gpus=1), |
| pred_postprocessor=dict(type=extract_non_reasoning_content)) |
|
|
| tm_model = dict(type=TurboMindModelwithChatTemplate, |
| abbr='qwen-3-8b-fullbench', |
| path='Qwen/Qwen3-8B', |
| engine_config=dict(session_len=32768, max_batch_size=1, tp=1), |
| gen_config=dict(do_sample=False, enable_thinking=True), |
| max_seq_len=32768, |
| max_out_len=32768, |
| batch_size=1, |
| run_cfg=dict(num_gpus=1), |
| pred_postprocessor=dict(type=extract_non_reasoning_content)) |
|
|
| models = [hf_model, tm_model] |
|
|
| models = sorted(models, key=lambda x: x['run_cfg']['num_gpus']) |
|
|