utils.py 723 Bytes
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from lm_eval.utils import weighted_f1_score
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def doc_to_choice(doc):
    choices = eval(doc["choices"])
    return choices


def doc_to_text(doc):
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    output = """You are a subject matter expert in {subject}.

  Utilizing your expertise in {subject}, answer the following multiple-choice question
  by picking 'A', 'B', 'C', or 'D'.

Question: {question}
Choices:
        A: {choice1}
        B: {choice2}
        C: {choice3}
        D: {choice4}
Answer: """
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    choices = eval(doc["choices"])
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    text = output.format(
        subject=doc["subject"],
        question=doc["question"],
        choice1=choices[0],
        choice2=choices[1],
        choice3=choices[2],
        choice4=choices[3],
    )
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    return text