from opencompass.openicl.icl_prompt_template import PromptTemplate from opencompass.openicl.icl_retriever import ZeroRetriever from opencompass.openicl.icl_inferencer import GenInferencer from opencompass.openicl.icl_evaluator import AccEvaluator from opencompass.datasets import TheoremQADataset, TheoremQA_postprocess TheoremQA_reader_cfg = dict(input_columns=['Question', 'Answer_type'], output_column='Answer', train_split='test') TheoremQA_prompt1 = ( 'Please read a math problem, and then think step by step to derive the answer. The answer is decided by Answer Type. ' 'If the Answer type in [bool], the answer needs to be True or False. ' 'Else if the Answer type in [integer, float] , The answer needs to be in numerical form. ' 'Else if the Answer type in [list of integer, list of float] , the answer needs to be a list of number like [2, 3, 4]. ' 'Else if the Answer type in [option], the answer needs to be an option like (a), (b), (c), (d).' "You need to output the answer in your final sentence like 'Therefore, the answer is ...'." ) TheoremQA_prompt2 = ( f'Below is an instruction that describes a task, paired with an input that provides further context. ' f'Write a response that appropriately completes the request.\n\n### Instruction:\n{TheoremQA_prompt1}\n\n### Input:\n{{Question}}\nAnswer_type:{{Answer_type}}\n### Response:\n' ) TheoremQA_infer_cfg = dict( prompt_template=dict(type=PromptTemplate, template=TheoremQA_prompt2), retriever=dict(type=ZeroRetriever), inferencer=dict(type=GenInferencer, max_out_len=512), ) TheoremQA_eval_cfg = dict(evaluator=dict(type=AccEvaluator), pred_postprocessor=dict(type=TheoremQA_postprocess)) TheoremQA_datasets = [ dict( abbr='TheoremQA', type=TheoremQADataset, path='./data/TheoremQA/test.csv', reader_cfg=TheoremQA_reader_cfg, infer_cfg=TheoremQA_infer_cfg, eval_cfg=TheoremQA_eval_cfg, ) ]