mirror of
https://github.com/open-thought/reasoning-gym.git
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79 lines
3.1 KiB
Python
79 lines
3.1 KiB
Python
"""Sentence re-ordering task generator"""
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import re
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from dataclasses import dataclass
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from random import Random
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from typing import List, Optional
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from ..data import read_data_file
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from ..factory import ProceduralDataset, register_dataset
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@dataclass
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class SentenceReorderingConfig:
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"""Configuration for sentence reordering task generation"""
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num_of_words_in_sentence: int = 10
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seed: Optional[int] = None
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size: int = 500
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def validate(self) -> None:
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"""Validate configuration parameters"""
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pass
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class SentenceReorderingDataset(ProceduralDataset):
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"""Generates sentence reordering tasks from text spans"""
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def __init__(self, config: SentenceReorderingConfig):
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super().__init__(config=config, seed=config.seed, size=config.size)
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# Load and preprocess text
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text = read_data_file("in_the_year_2889.txt")
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# Extract sentences make sure they are greater than or equal to the number of words in a sentence
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self.sentences = [
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sentence
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for sentence in re.findall(r"[^.!?]+", text)
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if len(sentence.split()) >= self.config.num_of_words_in_sentence
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]
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def _generate_sentence_dataset(self, sentence: str, seed: int, idx: int, shuffle=True):
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"""
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Generate a procedural dataset by shuffling the words in the input sentence.
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Args:
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sentence (str): The correct sentence to use for dataset generation.
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shuffle (bool): Whether to shuffle the words to create the input sentence.
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Returns:
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dict: A dictionary containing the input sentence and the correct sentence (goal).
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"""
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rng = Random(seed + idx)
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words = sentence.split() # Split the sentence into words
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scrambled_words = words.copy()
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if shuffle:
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rng.shuffle(scrambled_words) # Shuffle the words to generate the input
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input_sentence = " ".join(scrambled_words)
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goal_sentence = " ".join(words)
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return {"input": input_sentence, "goal": goal_sentence}
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def __getitem__(self, idx: int) -> dict:
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"""Generate a single sentence reordering task"""
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rng = Random(self.seed + idx)
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sentence_dataset = self._generate_sentence_dataset(rng.choice(self.sentences), self.seed, idx)
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# Ensure only 'input' and 'goal' keys are present
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if set(sentence_dataset.keys()) != {'input', 'goal'}:
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raise KeyError("The dictionary must contain only 'input' and 'goal' keys")
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# Solve the task by sorting words to match the goal sentence
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input_words = sentence_dataset['input'].split()
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question = " ".join(input_words)
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goal_words = sentence_dataset['goal'].split()
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solved_sentence = " ".join(sorted(input_words, key=lambda word: goal_words.index(word)))
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return {
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"question": f"Correct the following sentence: {question}",
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"answer": solved_sentence,
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"metadata": {"num_of_words_in_sentence": len(goal_words)},
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}
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register_dataset("sentence_reordering", SentenceReorderingDataset, SentenceReorderingConfig)
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