{ "results": { "openaimmlu": { " ": " ", "alias": "openaimmlu" }, "openaimmlu_STEM": { "acc,none": 0.7248344370860927, "acc_stderr,none": 0.00790772330279595, "alias": " - STEM" }, "openaimmlu_abstract_algebra": { "alias": " - abstract_algebra", "acc,none": 0.56, "acc_stderr,none": 0.049888765156985884 }, "openaimmlu_astronomy": { "alias": " - astronomy", "acc,none": 0.875, "acc_stderr,none": 0.026913523521537846 }, "openaimmlu_college_biology": { "alias": " - college_biology", "acc,none": 0.8888888888888888, "acc_stderr,none": 0.026280550932848073 }, "openaimmlu_college_chemistry": { "alias": " - college_chemistry", "acc,none": 0.59, "acc_stderr,none": 0.04943110704237101 }, "openaimmlu_college_computer_science": { "alias": " - college_computer_science", "acc,none": 0.64, "acc_stderr,none": 0.048241815132442176 }, "openaimmlu_college_mathematics": { "alias": " - college_mathematics", "acc,none": 0.54, "acc_stderr,none": 0.05009082659620333 }, "openaimmlu_college_physics": { "alias": " - college_physics", "acc,none": 0.5882352941176471, "acc_stderr,none": 0.048971049527263666 }, "openaimmlu_computer_security": { "alias": " - computer_security", "acc,none": 0.77, "acc_stderr,none": 0.04229525846816506 }, "openaimmlu_conceptual_physics": { "alias": " - conceptual_physics", "acc,none": 0.7829787234042553, "acc_stderr,none": 0.026947483121496234 }, "openaimmlu_econometrics": { "alias": " - econometrics", "acc,none": 0.6929824561403509, "acc_stderr,none": 0.04339138322579862 }, "openaimmlu_electrical_engineering": { "alias": " - electrical_engineering", "acc,none": 0.6827586206896552, "acc_stderr,none": 0.038783523721386215 }, "openaimmlu_elementary_mathematics": { "alias": " - elementary_mathematics", "acc,none": 0.7301587301587301, "acc_stderr,none": 0.022860838309232072 }, "openaimmlu_high_school_biology": { "alias": " - high_school_biology", "acc,none": 0.8806451612903226, "acc_stderr,none": 0.018443411325315403 }, "openaimmlu_high_school_chemistry": { "alias": " - high_school_chemistry", "acc,none": 0.7044334975369458, "acc_stderr,none": 0.032104944337514575 }, "openaimmlu_high_school_computer_science": { "alias": " - high_school_computer_science", "acc,none": 0.85, "acc_stderr,none": 0.03588702812826369 }, "openaimmlu_high_school_mathematics": { "alias": " - high_school_mathematics", "acc,none": 0.5888888888888889, "acc_stderr,none": 0.02999992350870668 }, "openaimmlu_high_school_physics": { "alias": " - high_school_physics", "acc,none": 0.6225165562913907, "acc_stderr,none": 0.0395802723112157 }, "openaimmlu_high_school_statistics": { "alias": " - high_school_statistics", "acc,none": 0.7685185185185185, "acc_stderr,none": 0.028765111718046948 }, "openaimmlu_humanities": { "acc,none": 0.8276053215077606, "acc_stderr,none": 0.008832654533380828, "alias": " - Humanities" }, "openaimmlu_high_school_european_history": { "alias": " - high_school_european_history", "acc,none": 0.8424242424242424, "acc_stderr,none": 0.028450388805284343 }, "openaimmlu_high_school_us_history": { "alias": " - high_school_us_history", "acc,none": 0.8921568627450981, "acc_stderr,none": 0.02177052228136839 }, "openaimmlu_high_school_world_history": { "alias": " - high_school_world_history", "acc,none": 0.869198312236287, "acc_stderr,none": 0.021948766059470767 }, "openaimmlu_international_law": { "alias": " - international_law", "acc,none": 0.859504132231405, "acc_stderr,none": 0.031722334260021585 }, "openaimmlu_jurisprudence": { "alias": " - jurisprudence", "acc,none": 0.8148148148148148, "acc_stderr,none": 0.03755265865037183 }, "openaimmlu_logical_fallacies": { "alias": " - logical_fallacies", "acc,none": 0.7852760736196319, "acc_stderr,none": 0.03226219377286774 }, "openaimmlu_philosophy": { "alias": " - philosophy", "acc,none": 0.7363344051446945, "acc_stderr,none": 0.02502553850053234 }, "openaimmlu_prehistory": { "alias": " - prehistory", "acc,none": 0.8611111111111112, "acc_stderr,none": 0.019242526226544553 }, "openaimmlu_world_religions": { "alias": " - world_religions", "acc,none": 0.8070175438596491, "acc_stderr,none": 0.030267457554898458 }, "openaimmlu_other": { "acc,none": 0.7144302090357384, "acc_stderr,none": 0.0056155230824463725, "alias": " - Other" }, "openaimmlu_anatomy": { "alias": " - anatomy", "acc,none": 0.6222222222222222, "acc_stderr,none": 0.04188307537595853 }, "openaimmlu_clinical_knowledge": { "alias": " - clinical_knowledge", "acc,none": 0.7660377358490567, "acc_stderr,none": 0.02605529690115292 }, "openaimmlu_college_medicine": { "alias": " - college_medicine", "acc,none": 0.6705202312138728, "acc_stderr,none": 0.03583901754736411 }, "openaimmlu_formal_logic": { "alias": " - formal_logic", "acc,none": 0.6428571428571429, "acc_stderr,none": 0.042857142857142816 }, "openaimmlu_global_facts": { "alias": " - global_facts", "acc,none": 0.55, "acc_stderr,none": 0.049999999999999996 }, "openaimmlu_high_school_geography": { "alias": " - high_school_geography", "acc,none": 0.8585858585858586, "acc_stderr,none": 0.024825909793343343 }, "openaimmlu_high_school_psychology": { "alias": " - high_school_psychology", "acc,none": 0.8954128440366973, "acc_stderr,none": 0.013120530245265606 }, "openaimmlu_human_aging": { "alias": " - human_aging", "acc,none": 0.7309417040358744, "acc_stderr,none": 0.029763779406874972 }, "openaimmlu_machine_learning": { "alias": " - machine_learning", "acc,none": 0.6607142857142857, "acc_stderr,none": 0.0449394906861354 }, "openaimmlu_medical_genetics": { "alias": " - medical_genetics", "acc,none": 0.79, "acc_stderr,none": 0.040936018074033256 }, "openaimmlu_miscellaneous": { "alias": " - miscellaneous", "acc,none": 0.8607918263090677, "acc_stderr,none": 0.01237878610188513 }, "openaimmlu_nutrition": { "alias": " - nutrition", "acc,none": 0.8300653594771242, "acc_stderr,none": 0.021505383121231354 }, "openaimmlu_professional_accounting": { "alias": " - professional_accounting", "acc,none": 0.5709219858156028, "acc_stderr,none": 0.02952591430255856 }, "openaimmlu_professional_law": { "alias": " - professional_law", "acc,none": 0.5541069100391134, "acc_stderr,none": 0.012695244711379774 }, "openaimmlu_professional_medicine": { "alias": " - professional_medicine", "acc,none": 0.8345588235294118, "acc_stderr,none": 0.02257177102549475 }, "openaimmlu_professional_psychology": { "alias": " - professional_psychology", "acc,none": 0.761437908496732, "acc_stderr,none": 0.017242385828779603 }, "openaimmlu_virology": { "alias": " - virology", "acc,none": 0.5602409638554217, "acc_stderr,none": 0.03864139923699121 }, "openaimmlu_social_science": { "acc,none": 0.7343274497869751, "acc_stderr,none": 0.007406426245646063, "alias": " - Social Science" }, "openaimmlu_business_ethics": { "alias": " - business_ethics", "acc,none": 0.75, "acc_stderr,none": 0.04351941398892446 }, "openaimmlu_high_school_government_and_politics": { "alias": " - high_school_government_and_politics", "acc,none": 0.8911917098445595, "acc_stderr,none": 0.022473253332768752 }, "openaimmlu_high_school_macroeconomics": { "alias": " - high_school_macroeconomics", "acc,none": 0.7923076923076923, "acc_stderr,none": 0.020567539567246797 }, "openaimmlu_high_school_microeconomics": { "alias": " - high_school_microeconomics", "acc,none": 0.8865546218487395, "acc_stderr,none": 0.020600225750204825 }, "openaimmlu_human_sexuality": { "alias": " - human_sexuality", "acc,none": 0.8320610687022901, "acc_stderr,none": 0.032785485373431386 }, "openaimmlu_management": { "alias": " - management", "acc,none": 0.8155339805825242, "acc_stderr,none": 0.03840423627288276 }, "openaimmlu_marketing": { "alias": " - marketing", "acc,none": 0.8290598290598291, "acc_stderr,none": 0.024662496845209814 }, "openaimmlu_moral_disputes": { "alias": " - moral_disputes", "acc,none": 0.7514450867052023, "acc_stderr,none": 0.023267528432100174 }, "openaimmlu_moral_scenarios": { "alias": " - moral_scenarios", "acc,none": 0.5441340782122905, "acc_stderr,none": 0.016657229424586303 }, "openaimmlu_public_relations": { "alias": " - public_relations", "acc,none": 0.7090909090909091, "acc_stderr,none": 0.04350271442923243 }, "openaimmlu_security_studies": { "alias": " - security_studies", "acc,none": 0.7510204081632653, "acc_stderr,none": 0.027682979522960234 }, "openaimmlu_sociology": { "alias": " - sociology", "acc,none": 0.8407960199004975, "acc_stderr,none": 0.025870646766169146 }, "openaimmlu_us_foreign_policy": { "alias": " - us_foreign_policy", "acc,none": 0.81, "acc_stderr,none": 0.039427724440366234 } }, "groups": { "openaimmlu_STEM": { "acc,none": 0.7248344370860927, "acc_stderr,none": 0.00790772330279595, "alias": " - STEM" }, "openaimmlu_humanities": { "acc,none": 0.8276053215077606, "acc_stderr,none": 0.008832654533380828, "alias": " - Humanities" }, "openaimmlu_other": { "acc,none": 0.7144302090357384, "acc_stderr,none": 0.0056155230824463725, "alias": " - Other" }, "openaimmlu_social_science": { "acc,none": 0.7343274497869751, "acc_stderr,none": 0.007406426245646063, "alias": " - Social Science" } }, "group_subtasks": { "openaimmlu_humanities": [ "openaimmlu_international_law", "openaimmlu_philosophy", "openaimmlu_logical_fallacies", "openaimmlu_high_school_us_history", "openaimmlu_world_religions", "openaimmlu_high_school_world_history", "openaimmlu_high_school_european_history", "openaimmlu_prehistory", "openaimmlu_jurisprudence" ], "openaimmlu_social_science": [ "openaimmlu_marketing", "openaimmlu_human_sexuality", "openaimmlu_public_relations", "openaimmlu_high_school_microeconomics", "openaimmlu_security_studies", "openaimmlu_moral_scenarios", "openaimmlu_management", "openaimmlu_us_foreign_policy", "openaimmlu_sociology", "openaimmlu_moral_disputes", "openaimmlu_high_school_government_and_politics", "openaimmlu_high_school_macroeconomics", "openaimmlu_business_ethics" ], "openaimmlu_other": [ "openaimmlu_professional_medicine", "openaimmlu_global_facts", "openaimmlu_high_school_geography", "openaimmlu_medical_genetics", "openaimmlu_human_aging", "openaimmlu_high_school_psychology", "openaimmlu_professional_accounting", "openaimmlu_machine_learning", "openaimmlu_professional_psychology", "openaimmlu_anatomy", "openaimmlu_nutrition", "openaimmlu_formal_logic", "openaimmlu_miscellaneous", "openaimmlu_professional_law", "openaimmlu_virology", "openaimmlu_college_medicine", "openaimmlu_clinical_knowledge" ], "openaimmlu_STEM": [ "openaimmlu_high_school_chemistry", "openaimmlu_conceptual_physics", "openaimmlu_college_chemistry", "openaimmlu_high_school_mathematics", "openaimmlu_high_school_biology", "openaimmlu_computer_security", "openaimmlu_astronomy", "openaimmlu_college_computer_science", "openaimmlu_high_school_statistics", "openaimmlu_college_physics", "openaimmlu_econometrics", "openaimmlu_high_school_computer_science", "openaimmlu_college_mathematics", "openaimmlu_abstract_algebra", "openaimmlu_high_school_physics", "openaimmlu_electrical_engineering", "openaimmlu_college_biology", "openaimmlu_elementary_mathematics" ], "openaimmlu": [ "openaimmlu_STEM", "openaimmlu_other", "openaimmlu_social_science", "openaimmlu_humanities" ] }, "configs": { "openaimmlu_abstract_algebra": { "task": "openaimmlu_abstract_algebra", "task_alias": "abstract_algebra", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "abstract_algebra", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_anatomy": { "task": "openaimmlu_anatomy", "task_alias": "anatomy", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "anatomy", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_astronomy": { "task": "openaimmlu_astronomy", "task_alias": "astronomy", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "astronomy", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_business_ethics": { "task": "openaimmlu_business_ethics", "task_alias": "business_ethics", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "business_ethics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_clinical_knowledge": { "task": "openaimmlu_clinical_knowledge", "task_alias": "clinical_knowledge", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "clinical_knowledge", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_biology": { "task": "openaimmlu_college_biology", "task_alias": "college_biology", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_biology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_chemistry": { "task": "openaimmlu_college_chemistry", "task_alias": "college_chemistry", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_chemistry", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_computer_science": { "task": "openaimmlu_college_computer_science", "task_alias": "college_computer_science", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_computer_science", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_mathematics": { "task": "openaimmlu_college_mathematics", "task_alias": "college_mathematics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_mathematics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_medicine": { "task": "openaimmlu_college_medicine", "task_alias": "college_medicine", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_medicine", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_college_physics": { "task": "openaimmlu_college_physics", "task_alias": "college_physics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "college_physics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_computer_security": { "task": "openaimmlu_computer_security", "task_alias": "computer_security", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "computer_security", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_conceptual_physics": { "task": "openaimmlu_conceptual_physics", "task_alias": "conceptual_physics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "conceptual_physics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_econometrics": { "task": "openaimmlu_econometrics", "task_alias": "econometrics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "econometrics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_electrical_engineering": { "task": "openaimmlu_electrical_engineering", "task_alias": "electrical_engineering", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "electrical_engineering", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_elementary_mathematics": { "task": "openaimmlu_elementary_mathematics", "task_alias": "elementary_mathematics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "elementary_mathematics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_formal_logic": { "task": "openaimmlu_formal_logic", "task_alias": "formal_logic", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "formal_logic", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_global_facts": { "task": "openaimmlu_global_facts", "task_alias": "global_facts", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "global_facts", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_biology": { "task": "openaimmlu_high_school_biology", "task_alias": "high_school_biology", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_biology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_chemistry": { "task": "openaimmlu_high_school_chemistry", "task_alias": "high_school_chemistry", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_chemistry", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_computer_science": { "task": "openaimmlu_high_school_computer_science", "task_alias": "high_school_computer_science", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_computer_science", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_european_history": { "task": "openaimmlu_high_school_european_history", "task_alias": "high_school_european_history", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_european_history", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_geography": { "task": "openaimmlu_high_school_geography", "task_alias": "high_school_geography", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_geography", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_government_and_politics": { "task": "openaimmlu_high_school_government_and_politics", "task_alias": "high_school_government_and_politics", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_government_and_politics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_macroeconomics": { "task": "openaimmlu_high_school_macroeconomics", "task_alias": "high_school_macroeconomics", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_macroeconomics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_mathematics": { "task": "openaimmlu_high_school_mathematics", "task_alias": "high_school_mathematics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_mathematics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_microeconomics": { "task": "openaimmlu_high_school_microeconomics", "task_alias": "high_school_microeconomics", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_microeconomics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_physics": { "task": "openaimmlu_high_school_physics", "task_alias": "high_school_physics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_physics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_psychology": { "task": "openaimmlu_high_school_psychology", "task_alias": "high_school_psychology", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_psychology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_statistics": { "task": "openaimmlu_high_school_statistics", "task_alias": "high_school_statistics", "tag": "openaimmlu_STEM_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_statistics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_us_history": { "task": "openaimmlu_high_school_us_history", "task_alias": "high_school_us_history", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_us_history", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_high_school_world_history": { "task": "openaimmlu_high_school_world_history", "task_alias": "high_school_world_history", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "high_school_world_history", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_human_aging": { "task": "openaimmlu_human_aging", "task_alias": "human_aging", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "human_aging", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_human_sexuality": { "task": "openaimmlu_human_sexuality", "task_alias": "human_sexuality", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "human_sexuality", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_international_law": { "task": "openaimmlu_international_law", "task_alias": "international_law", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "international_law", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_jurisprudence": { "task": "openaimmlu_jurisprudence", "task_alias": "jurisprudence", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "jurisprudence", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_logical_fallacies": { "task": "openaimmlu_logical_fallacies", "task_alias": "logical_fallacies", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "logical_fallacies", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_machine_learning": { "task": "openaimmlu_machine_learning", "task_alias": "machine_learning", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "machine_learning", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_management": { "task": "openaimmlu_management", "task_alias": "management", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "management", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_marketing": { "task": "openaimmlu_marketing", "task_alias": "marketing", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "marketing", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_medical_genetics": { "task": "openaimmlu_medical_genetics", "task_alias": "medical_genetics", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "medical_genetics", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_miscellaneous": { "task": "openaimmlu_miscellaneous", "task_alias": "miscellaneous", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "miscellaneous", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_moral_disputes": { "task": "openaimmlu_moral_disputes", "task_alias": "moral_disputes", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "moral_disputes", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_moral_scenarios": { "task": "openaimmlu_moral_scenarios", "task_alias": "moral_scenarios", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "moral_scenarios", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_nutrition": { "task": "openaimmlu_nutrition", "task_alias": "nutrition", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "nutrition", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_philosophy": { "task": "openaimmlu_philosophy", "task_alias": "philosophy", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "philosophy", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_prehistory": { "task": "openaimmlu_prehistory", "task_alias": "prehistory", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "prehistory", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_professional_accounting": { "task": "openaimmlu_professional_accounting", "task_alias": "professional_accounting", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "professional_accounting", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_professional_law": { "task": "openaimmlu_professional_law", "task_alias": "professional_law", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "professional_law", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_professional_medicine": { "task": "openaimmlu_professional_medicine", "task_alias": "professional_medicine", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "professional_medicine", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_professional_psychology": { "task": "openaimmlu_professional_psychology", "task_alias": "professional_psychology", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "professional_psychology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_public_relations": { "task": "openaimmlu_public_relations", "task_alias": "public_relations", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "public_relations", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_security_studies": { "task": "openaimmlu_security_studies", "task_alias": "security_studies", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "security_studies", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_sociology": { "task": "openaimmlu_sociology", "task_alias": "sociology", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "sociology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_us_foreign_policy": { "task": "openaimmlu_us_foreign_policy", "task_alias": "us_foreign_policy", "tag": "openaimmlu_social_science_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "us_foreign_policy", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_virology": { "task": "openaimmlu_virology", "task_alias": "virology", "tag": "openaimmlu_other_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "virology", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } }, "openaimmlu_world_religions": { "task": "openaimmlu_world_religions", "task_alias": "world_religions", "tag": "openaimmlu_humanities_tasks", "dataset_path": "khalidalt/openai_mmlu_arabic", "dataset_name": "world_religions", "test_split": "test", "process_docs": "def process_docs(dataset: datasets.Dataset) -> datasets.Dataset:\n def _process_docs(doc):\n\n def format_example(doc, choices):\n options = []\n for _, choice in enumerate(choices):\n options.append(f'{en2ar[choice]}. {doc[choice]}')\n\n ar_subject = SUBJECTS[doc['Subject']]\n query = PROMPT.format(ar_subject, #doc['Subject'],\n doc['Question'],\n \"\\n\".join(options))\n return query\n\n keys_en = [\"A\", \"B\", \"C\", \"D\"]\n keys_ar = ['\u0623', '\u0628', '\u062c', '\u062f']\n ar_label = en2ar[doc['Answer']]\n\n out_doc = {\n \"query\": format_example(doc, keys_en),\n \"choices\": keys_ar,\n \"gold\": keys_ar.index(ar_label)\n }\n\n return out_doc\n\n return dataset.map(_process_docs) \n", "doc_to_text": "query", "doc_to_target": "gold", "doc_to_choice": "choices", "description": "", "target_delimiter": " ", "fewshot_delimiter": "\n\n", "num_fewshot": 0, "metric_list": [ { "metric": "acc", "aggregation": "mean", "higher_is_better": true } ], "output_type": "multiple_choice", "repeats": 1, "should_decontaminate": false, "metadata": { "version": 0.0 } } }, "versions": { "openaimmlu_STEM": 0, "openaimmlu_abstract_algebra": 0.0, "openaimmlu_anatomy": 0.0, "openaimmlu_astronomy": 0.0, "openaimmlu_business_ethics": 0.0, "openaimmlu_clinical_knowledge": 0.0, "openaimmlu_college_biology": 0.0, "openaimmlu_college_chemistry": 0.0, "openaimmlu_college_computer_science": 0.0, "openaimmlu_college_mathematics": 0.0, "openaimmlu_college_medicine": 0.0, "openaimmlu_college_physics": 0.0, "openaimmlu_computer_security": 0.0, "openaimmlu_conceptual_physics": 0.0, "openaimmlu_econometrics": 0.0, "openaimmlu_electrical_engineering": 0.0, "openaimmlu_elementary_mathematics": 0.0, "openaimmlu_formal_logic": 0.0, "openaimmlu_global_facts": 0.0, "openaimmlu_high_school_biology": 0.0, "openaimmlu_high_school_chemistry": 0.0, "openaimmlu_high_school_computer_science": 0.0, "openaimmlu_high_school_european_history": 0.0, "openaimmlu_high_school_geography": 0.0, "openaimmlu_high_school_government_and_politics": 0.0, "openaimmlu_high_school_macroeconomics": 0.0, "openaimmlu_high_school_mathematics": 0.0, "openaimmlu_high_school_microeconomics": 0.0, "openaimmlu_high_school_physics": 0.0, "openaimmlu_high_school_psychology": 0.0, "openaimmlu_high_school_statistics": 0.0, "openaimmlu_high_school_us_history": 0.0, "openaimmlu_high_school_world_history": 0.0, "openaimmlu_human_aging": 0.0, "openaimmlu_human_sexuality": 0.0, "openaimmlu_humanities": 0, "openaimmlu_international_law": 0.0, "openaimmlu_jurisprudence": 0.0, "openaimmlu_logical_fallacies": 0.0, "openaimmlu_machine_learning": 0.0, "openaimmlu_management": 0.0, "openaimmlu_marketing": 0.0, "openaimmlu_medical_genetics": 0.0, "openaimmlu_miscellaneous": 0.0, "openaimmlu_moral_disputes": 0.0, "openaimmlu_moral_scenarios": 0.0, "openaimmlu_nutrition": 0.0, "openaimmlu_other": 0, "openaimmlu_philosophy": 0.0, "openaimmlu_prehistory": 0.0, "openaimmlu_professional_accounting": 0.0, "openaimmlu_professional_law": 0.0, "openaimmlu_professional_medicine": 0.0, "openaimmlu_professional_psychology": 0.0, "openaimmlu_public_relations": 0.0, "openaimmlu_security_studies": 0.0, "openaimmlu_social_science": 0, "openaimmlu_sociology": 0.0, "openaimmlu_us_foreign_policy": 0.0, "openaimmlu_virology": 0.0, "openaimmlu_world_religions": 0.0 }, "n-shot": { "openaimmlu_abstract_algebra": 0, "openaimmlu_anatomy": 0, "openaimmlu_astronomy": 0, "openaimmlu_business_ethics": 0, "openaimmlu_clinical_knowledge": 0, "openaimmlu_college_biology": 0, "openaimmlu_college_chemistry": 0, "openaimmlu_college_computer_science": 0, "openaimmlu_college_mathematics": 0, "openaimmlu_college_medicine": 0, "openaimmlu_college_physics": 0, "openaimmlu_computer_security": 0, "openaimmlu_conceptual_physics": 0, "openaimmlu_econometrics": 0, "openaimmlu_electrical_engineering": 0, "openaimmlu_elementary_mathematics": 0, "openaimmlu_formal_logic": 0, "openaimmlu_global_facts": 0, "openaimmlu_high_school_biology": 0, "openaimmlu_high_school_chemistry": 0, "openaimmlu_high_school_computer_science": 0, "openaimmlu_high_school_european_history": 0, "openaimmlu_high_school_geography": 0, "openaimmlu_high_school_government_and_politics": 0, "openaimmlu_high_school_macroeconomics": 0, "openaimmlu_high_school_mathematics": 0, "openaimmlu_high_school_microeconomics": 0, "openaimmlu_high_school_physics": 0, "openaimmlu_high_school_psychology": 0, "openaimmlu_high_school_statistics": 0, "openaimmlu_high_school_us_history": 0, "openaimmlu_high_school_world_history": 0, "openaimmlu_human_aging": 0, "openaimmlu_human_sexuality": 0, "openaimmlu_international_law": 0, "openaimmlu_jurisprudence": 0, "openaimmlu_logical_fallacies": 0, "openaimmlu_machine_learning": 0, "openaimmlu_management": 0, "openaimmlu_marketing": 0, "openaimmlu_medical_genetics": 0, "openaimmlu_miscellaneous": 0, "openaimmlu_moral_disputes": 0, "openaimmlu_moral_scenarios": 0, "openaimmlu_nutrition": 0, "openaimmlu_philosophy": 0, "openaimmlu_prehistory": 0, "openaimmlu_professional_accounting": 0, "openaimmlu_professional_law": 0, "openaimmlu_professional_medicine": 0, "openaimmlu_professional_psychology": 0, "openaimmlu_public_relations": 0, "openaimmlu_security_studies": 0, "openaimmlu_sociology": 0, "openaimmlu_us_foreign_policy": 0, "openaimmlu_virology": 0, "openaimmlu_world_religions": 0 }, "higher_is_better": { "openaimmlu": { "acc": true }, "openaimmlu_STEM": { "acc": true }, "openaimmlu_abstract_algebra": { "acc": true }, "openaimmlu_anatomy": { "acc": true }, "openaimmlu_astronomy": { "acc": true }, "openaimmlu_business_ethics": { "acc": true }, "openaimmlu_clinical_knowledge": { "acc": true }, "openaimmlu_college_biology": { "acc": true }, "openaimmlu_college_chemistry": { "acc": true }, "openaimmlu_college_computer_science": { "acc": true }, "openaimmlu_college_mathematics": { "acc": true }, "openaimmlu_college_medicine": { "acc": true }, "openaimmlu_college_physics": { "acc": true }, "openaimmlu_computer_security": { "acc": true }, "openaimmlu_conceptual_physics": { "acc": true }, "openaimmlu_econometrics": { "acc": true }, "openaimmlu_electrical_engineering": { "acc": true }, "openaimmlu_elementary_mathematics": { "acc": true }, "openaimmlu_formal_logic": { "acc": true }, "openaimmlu_global_facts": { "acc": true }, "openaimmlu_high_school_biology": { "acc": true }, "openaimmlu_high_school_chemistry": { "acc": true }, "openaimmlu_high_school_computer_science": { "acc": true }, "openaimmlu_high_school_european_history": { "acc": true }, "openaimmlu_high_school_geography": { "acc": true }, "openaimmlu_high_school_government_and_politics": { "acc": true }, "openaimmlu_high_school_macroeconomics": { "acc": true }, "openaimmlu_high_school_mathematics": { "acc": true }, "openaimmlu_high_school_microeconomics": { "acc": true }, "openaimmlu_high_school_physics": { "acc": true }, "openaimmlu_high_school_psychology": { "acc": true }, "openaimmlu_high_school_statistics": { "acc": true }, "openaimmlu_high_school_us_history": { "acc": true }, "openaimmlu_high_school_world_history": { "acc": true }, "openaimmlu_human_aging": { "acc": true }, "openaimmlu_human_sexuality": { "acc": true }, "openaimmlu_humanities": { "acc": true }, "openaimmlu_international_law": { "acc": true }, "openaimmlu_jurisprudence": { "acc": true }, "openaimmlu_logical_fallacies": { "acc": true }, "openaimmlu_machine_learning": { "acc": true }, "openaimmlu_management": { "acc": true }, "openaimmlu_marketing": { "acc": true }, "openaimmlu_medical_genetics": { "acc": true }, "openaimmlu_miscellaneous": { "acc": true }, "openaimmlu_moral_disputes": { "acc": true }, "openaimmlu_moral_scenarios": { "acc": true }, "openaimmlu_nutrition": { "acc": true }, "openaimmlu_other": { "acc": true }, "openaimmlu_philosophy": { "acc": true }, "openaimmlu_prehistory": { "acc": true }, "openaimmlu_professional_accounting": { "acc": true }, "openaimmlu_professional_law": { "acc": true }, "openaimmlu_professional_medicine": { "acc": true }, "openaimmlu_professional_psychology": { "acc": true }, "openaimmlu_public_relations": { "acc": true }, "openaimmlu_security_studies": { "acc": true }, "openaimmlu_social_science": { "acc": true }, "openaimmlu_sociology": { "acc": true }, "openaimmlu_us_foreign_policy": { "acc": true }, "openaimmlu_virology": { "acc": true }, "openaimmlu_world_religions": { "acc": true } }, "n-samples": { "openaimmlu_high_school_chemistry": { "original": 203, "effective": 203 }, "openaimmlu_conceptual_physics": { "original": 235, "effective": 235 }, "openaimmlu_college_chemistry": { "original": 100, "effective": 100 }, "openaimmlu_high_school_mathematics": { "original": 270, "effective": 270 }, "openaimmlu_high_school_biology": { "original": 310, "effective": 310 }, "openaimmlu_computer_security": { "original": 100, "effective": 100 }, "openaimmlu_astronomy": { "original": 152, "effective": 152 }, "openaimmlu_college_computer_science": { "original": 100, "effective": 100 }, "openaimmlu_high_school_statistics": { "original": 216, "effective": 216 }, "openaimmlu_college_physics": { "original": 102, "effective": 102 }, "openaimmlu_econometrics": { "original": 114, "effective": 114 }, "openaimmlu_high_school_computer_science": { "original": 100, "effective": 100 }, "openaimmlu_college_mathematics": { "original": 100, "effective": 100 }, "openaimmlu_abstract_algebra": { "original": 100, "effective": 100 }, "openaimmlu_high_school_physics": { "original": 151, "effective": 151 }, "openaimmlu_electrical_engineering": { "original": 145, "effective": 145 }, "openaimmlu_college_biology": { "original": 144, "effective": 144 }, "openaimmlu_elementary_mathematics": { "original": 378, "effective": 378 }, "openaimmlu_professional_medicine": { "original": 272, "effective": 272 }, "openaimmlu_global_facts": { "original": 100, "effective": 100 }, "openaimmlu_high_school_geography": { "original": 198, "effective": 198 }, "openaimmlu_medical_genetics": { "original": 100, "effective": 100 }, "openaimmlu_human_aging": { "original": 223, "effective": 223 }, "openaimmlu_high_school_psychology": { "original": 545, "effective": 545 }, "openaimmlu_professional_accounting": { "original": 282, "effective": 282 }, "openaimmlu_machine_learning": { "original": 112, "effective": 112 }, "openaimmlu_professional_psychology": { "original": 612, "effective": 612 }, "openaimmlu_anatomy": { "original": 135, "effective": 135 }, "openaimmlu_nutrition": { "original": 306, "effective": 306 }, "openaimmlu_formal_logic": { "original": 126, "effective": 126 }, "openaimmlu_miscellaneous": { "original": 783, "effective": 783 }, "openaimmlu_professional_law": { "original": 1534, "effective": 1534 }, "openaimmlu_virology": { "original": 166, "effective": 166 }, "openaimmlu_college_medicine": { "original": 173, "effective": 173 }, "openaimmlu_clinical_knowledge": { "original": 265, "effective": 265 }, "openaimmlu_marketing": { "original": 234, "effective": 234 }, "openaimmlu_human_sexuality": { "original": 131, "effective": 131 }, "openaimmlu_public_relations": { "original": 110, "effective": 110 }, "openaimmlu_high_school_microeconomics": { "original": 238, "effective": 238 }, "openaimmlu_security_studies": { "original": 245, "effective": 245 }, "openaimmlu_moral_scenarios": { "original": 895, "effective": 895 }, "openaimmlu_management": { "original": 103, "effective": 103 }, "openaimmlu_us_foreign_policy": { "original": 100, "effective": 100 }, "openaimmlu_sociology": { "original": 201, "effective": 201 }, "openaimmlu_moral_disputes": { "original": 346, "effective": 346 }, "openaimmlu_high_school_government_and_politics": { "original": 193, "effective": 193 }, "openaimmlu_high_school_macroeconomics": { "original": 390, "effective": 390 }, "openaimmlu_business_ethics": { "original": 100, "effective": 100 }, "openaimmlu_international_law": { "original": 121, "effective": 121 }, "openaimmlu_philosophy": { "original": 311, "effective": 311 }, "openaimmlu_logical_fallacies": { "original": 163, "effective": 163 }, "openaimmlu_high_school_us_history": { "original": 204, "effective": 204 }, "openaimmlu_world_religions": { "original": 171, "effective": 171 }, "openaimmlu_high_school_world_history": { "original": 237, "effective": 237 }, "openaimmlu_high_school_european_history": { "original": 165, "effective": 165 }, "openaimmlu_prehistory": { "original": 324, "effective": 324 }, "openaimmlu_jurisprudence": { "original": 108, "effective": 108 } }, "config": { "model": "hf", "model_args": "parallelize=True,pretrained=Qwen/Qwen2.5-72B-Instruct,trust_remote_code=True,mm=False,trust_remote_code=True", "model_num_parameters": 72706203648, "model_dtype": "torch.bfloat16", "model_revision": "main", "model_sha": "d3d951150c1e5848237cd6a7ad11df4836aee842", "batch_size": 1, "batch_sizes": [], "device": null, "use_cache": null, "limit": null, "bootstrap_iters": 100000, "gen_kwargs": null, "random_seed": 0, "numpy_seed": 1234, "torch_seed": 1234, "fewshot_seed": 1234 }, "git_hash": "3127d82f", "date": 1731688102.6369689, "pretty_env_info": "PyTorch version: 2.1.0a0+29c30b1\nIs debug build: False\nCUDA used to build PyTorch: 12.2\nROCM used to build PyTorch: N/A\n\nOS: Ubuntu 22.04.3 LTS (x86_64)\nGCC version: (Ubuntu 11.4.0-1ubuntu1~22.04) 11.4.0\nClang version: Could not collect\nCMake version: version 3.27.1\nLibc version: glibc-2.35\n\nPython version: 3.10.12 (main, Jun 11 2023, 05:26:28) [GCC 11.4.0] (64-bit runtime)\nPython platform: Linux-5.15.0-1064-azure-x86_64-with-glibc2.35\nIs CUDA available: True\nCUDA runtime version: 12.2.128\nCUDA_MODULE_LOADING set to: LAZY\nGPU models and configuration: \nGPU 0: NVIDIA A100-SXM4-80GB\nGPU 1: NVIDIA A100-SXM4-80GB\nGPU 2: NVIDIA A100-SXM4-80GB\nGPU 3: NVIDIA A100-SXM4-80GB\nGPU 4: NVIDIA A100-SXM4-80GB\nGPU 5: NVIDIA A100-SXM4-80GB\nGPU 6: NVIDIA A100-SXM4-80GB\nGPU 7: NVIDIA A100-SXM4-80GB\n\nNvidia driver version: 535.161.08\ncuDNN version: Probably one of the following:\n/usr/lib/x86_64-linux-gnu/libcudnn.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_adv_infer.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_adv_train.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_cnn_infer.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_cnn_train.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_ops_infer.so.8.9.4\n/usr/lib/x86_64-linux-gnu/libcudnn_ops_train.so.8.9.4\nHIP runtime version: N/A\nMIOpen runtime version: N/A\nIs XNNPACK available: True\n\nCPU:\nArchitecture: x86_64\nCPU op-mode(s): 32-bit, 64-bit\nAddress sizes: 48 bits physical, 48 bits virtual\nByte Order: Little Endian\nCPU(s): 96\nOn-line CPU(s) list: 0-95\nVendor ID: AuthenticAMD\nModel name: AMD EPYC 7V12 64-Core Processor\nCPU family: 23\nModel: 49\nThread(s) per core: 1\nCore(s) per socket: 48\nSocket(s): 2\nStepping: 0\nBogoMIPS: 4890.88\nFlags: fpu vme de pse tsc msr pae mce cx8 apic sep mtrr pge mca cmov pat pse36 clflush mmx fxsr sse sse2 ht syscall nx mmxext fxsr_opt pdpe1gb rdtscp lm constant_tsc rep_good nopl tsc_reliable nonstop_tsc cpuid extd_apicid aperfmperf pni pclmulqdq ssse3 fma cx16 sse4_1 sse4_2 movbe popcnt aes xsave avx f16c rdrand hypervisor lahf_lm cmp_legacy cr8_legacy abm sse4a misalignsse 3dnowprefetch osvw topoext perfctr_core ssbd vmmcall fsgsbase bmi1 avx2 smep bmi2 rdseed adx smap clflushopt clwb sha_ni xsaveopt xsavec xgetbv1 clzero xsaveerptr rdpru arat umip rdpid\nHypervisor vendor: Microsoft\nVirtualization type: full\nL1d cache: 3 MiB (96 instances)\nL1i cache: 3 MiB (96 instances)\nL2 cache: 48 MiB (96 instances)\nL3 cache: 384 MiB (24 instances)\nNUMA node(s): 4\nNUMA node0 CPU(s): 0-23\nNUMA node1 CPU(s): 24-47\nNUMA node2 CPU(s): 48-71\nNUMA node3 CPU(s): 72-95\nVulnerability Gather data sampling: Not affected\nVulnerability Itlb multihit: Not affected\nVulnerability L1tf: Not affected\nVulnerability Mds: Not affected\nVulnerability Meltdown: Not affected\nVulnerability Mmio stale data: Not affected\nVulnerability Retbleed: Mitigation; untrained return thunk; SMT disabled\nVulnerability Spec rstack overflow: Mitigation; safe RET, no microcode\nVulnerability Spec store bypass: Mitigation; Speculative Store Bypass disabled via prctl and seccomp\nVulnerability Spectre v1: Mitigation; usercopy/swapgs barriers and __user pointer sanitization\nVulnerability Spectre v2: Mitigation; Retpolines; STIBP disabled; RSB filling; PBRSB-eIBRS Not affected; BHI Not affected\nVulnerability Srbds: Not affected\nVulnerability Tsx async abort: Not affected\n\nVersions of relevant libraries:\n[pip3] numpy==1.22.2\n[pip3] pytorch-lightning==2.0.7\n[pip3] pytorch-quantization==2.1.2\n[pip3] torch==2.1.0a0+29c30b1\n[pip3] torch-tensorrt==2.0.0.dev0\n[pip3] torchaudio==2.1.0\n[pip3] torchdata==0.7.0a0\n[pip3] torchmetrics==1.2.0\n[pip3] torchvision==0.16.0a0\n[pip3] triton==2.0.0.dev20221202\n[conda] Could not collect", "transformers_version": "4.46.2", "upper_git_hash": null, "tokenizer_pad_token": [ "<|endoftext|>", "151643" ], "tokenizer_eos_token": [ "<|im_end|>", "151645" ], "tokenizer_bos_token": [ null, "None" ], "eot_token_id": 151645, "max_length": 32768, "task_hashes": {}, "model_source": "hf", "model_name": "Qwen/Qwen2.5-72B-Instruct", "model_name_sanitized": "Qwen__Qwen2.5-72B-Instruct", "system_instruction": null, "system_instruction_sha": null, "fewshot_as_multiturn": false, "chat_template": null, "chat_template_sha": null, "start_time": 167961.887782116, "end_time": 174860.307504835, "total_evaluation_time_seconds": "6898.4197227189725" }