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from abc import ABC, abstractmethod |
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from typing import List, Optional |
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class Constraint(ABC): |
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r"""Abstract base class for all constraints that can be applied during generation. |
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It must define how the constraint can be satisfied. |
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All classes that inherit Constraint must follow the requirement that |
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```py |
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completed = False |
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while not completed: |
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_, completed = constraint.update(constraint.advance()) |
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``` |
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will always terminate (halt). |
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""" |
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def __init__(self): |
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self.test() |
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def test(self): |
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""" |
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Tests whether this constraint has been properly defined. |
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""" |
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counter = 0 |
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completed = False |
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while not completed: |
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if counter == 1: |
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self.reset() |
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advance = self.advance() |
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if not self.does_advance(advance): |
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raise Exception( |
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"Custom Constraint is not defined correctly. self.does_advance(self.advance()) must be true." |
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) |
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stepped, completed, reset = self.update(advance) |
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counter += 1 |
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if counter > 10000: |
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raise Exception("update() does not fulfill the constraint.") |
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if self.remaining() != 0: |
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raise Exception("Custom Constraint is not defined correctly.") |
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@abstractmethod |
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def advance(self): |
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""" |
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When called, returns the token that would take this constraint one step closer to being fulfilled. |
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Return: |
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token_ids(`torch.tensor`): Must be a tensor of a list of indexable tokens, not some integer. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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@abstractmethod |
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def does_advance(self, token_id: int): |
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""" |
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Reads in a token and returns whether it creates progress. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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@abstractmethod |
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def update(self, token_id: int): |
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""" |
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Reads in a token and returns booleans that indicate the progress made by it. This function will update the |
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state of this object unlikes `does_advance(self, token_id: int)`. |
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This isn't to test whether a certain token will advance the progress; it's to update its state as if it has |
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been generated. This becomes important if token_id != desired token (refer to else statement in |
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PhrasalConstraint) |
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Args: |
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token_id(`int`): |
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The id of a newly generated token in the beam search. |
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Return: |
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stepped(`bool`): |
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Whether this constraint has become one step closer to being fulfuilled. |
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completed(`bool`): |
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Whether this constraint has been completely fulfilled by this token being generated. |
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reset (`bool`): |
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Whether this constraint has reset its progress by this token being generated. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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@abstractmethod |
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def reset(self): |
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""" |
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Resets the state of this constraint to its initialization. We would call this in cases where the fulfillment of |
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a constraint is abrupted by an unwanted token. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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@abstractmethod |
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def remaining(self): |
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""" |
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Returns the number of remaining steps of `advance()` in order to complete this constraint. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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@abstractmethod |
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def copy(self, stateful=False): |
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""" |
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Creates a new instance of this constraint. |
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Args: |
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stateful(`bool`): Whether to not only copy the constraint for new instance, but also its state. |
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Return: |
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constraint(`Constraint`): The same constraint as the one being called from. |
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""" |
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raise NotImplementedError( |
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f"{self.__class__} is an abstract class. Only classes inheriting this class can be called." |
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) |
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class PhrasalConstraint(Constraint): |
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r""" |
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[`Constraint`] enforcing that an ordered sequence of tokens is included in the output. |
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Args: |
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token_ids (`List[int]`): |
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The id of the token that must be generated by the output. |
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""" |
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def __init__(self, token_ids: List[int]): |
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super(Constraint, self).__init__() |
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if not isinstance(token_ids, list) or len(token_ids) == 0: |
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raise ValueError(f"`token_ids` has to be a non-empty list, but is {token_ids}.") |
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if any((not isinstance(token_id, int) or token_id < 0) for token_id in token_ids): |
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raise ValueError(f"Each list in `token_ids` has to be a list of positive integers, but is {token_ids}.") |
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self.token_ids = token_ids |
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self.seqlen = len(self.token_ids) |
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self.fulfilled_idx = -1 |
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self.completed = False |
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def advance(self): |
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if self.completed: |
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return None |
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return self.token_ids[self.fulfilled_idx + 1] |
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def does_advance(self, token_id: int): |
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if not isinstance(token_id, int): |
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raise ValueError(f"`token_id` has to be an `int`, but is {token_id} of type {type(token_id)}") |
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if self.completed: |
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return False |
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return token_id == self.token_ids[self.fulfilled_idx + 1] |
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def update(self, token_id: int): |
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if not isinstance(token_id, int): |
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raise ValueError(f"`token_id` has to be an `int`, but is {token_id} of type {type(token_id)}") |
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stepped = False |
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completed = False |
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reset = False |
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if self.does_advance(token_id): |
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self.fulfilled_idx += 1 |
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stepped = True |
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if self.fulfilled_idx == (self.seqlen - 1): |
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completed = True |
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self.completed = completed |
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else: |
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reset = True |
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self.reset() |
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return stepped, completed, reset |
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def reset(self): |
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self.completed = False |
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self.fulfilled_idx = 0 |
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def remaining(self): |
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return self.seqlen - (self.fulfilled_idx + 1) |
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def copy(self, stateful=False): |
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new_constraint = PhrasalConstraint(self.token_ids) |
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if stateful: |
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new_constraint.seq_len = self.seqlen |
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new_constraint.fulfilled_idx = self.fulfilled_idx |
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new_constraint.completed = self.completed |
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return new_constraint |
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class DisjunctiveTrie: |
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def __init__(self, nested_token_ids: List[List[int]], no_subsets=True): |
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r""" |
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A helper class that builds a trie with the words represented in `nested_token_ids`. |
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""" |
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self.max_height = max([len(one) for one in nested_token_ids]) |
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root = {} |
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for token_ids in nested_token_ids: |
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level = root |
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for tidx, token_id in enumerate(token_ids): |
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if token_id not in level: |
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level[token_id] = {} |
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level = level[token_id] |
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if no_subsets and self.has_subsets(root, nested_token_ids): |
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raise ValueError( |
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"Each list in `nested_token_ids` can't be a complete subset of another list, but is" |
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f" {nested_token_ids}." |
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) |
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self.trie = root |
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def next_tokens(self, current_seq): |
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""" |
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The next possible tokens that will progress the trie, given the current sequence of tokens in `current_seq`. |
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""" |
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start = self.trie |
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for current_token in current_seq: |
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start = start[current_token] |
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next_tokens = list(start.keys()) |
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return next_tokens |
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def reached_leaf(self, current_seq): |
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next_tokens = self.next_tokens(current_seq) |
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return len(next_tokens) == 0 |
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def count_leaves(self, root): |
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next_nodes = list(root.values()) |
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if len(next_nodes) == 0: |
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return 1 |
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else: |
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return sum([self.count_leaves(nn) for nn in next_nodes]) |
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def has_subsets(self, trie, nested_token_ids): |
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""" |
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Returns whether # of leaves == # of words. Otherwise some word is a subset of another. |
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""" |
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leaf_count = self.count_leaves(trie) |
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return len(nested_token_ids) != leaf_count |
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class DisjunctiveConstraint(Constraint): |
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r""" |
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A special [`Constraint`] that is fulfilled by fulfilling just one of several constraints. |
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Args: |
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nested_token_ids (`List[List[int]]`): |
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A list of words, where each word is a list of ids. This constraint is fulfilled by generating just one from |
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the list of words. |
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""" |
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def __init__(self, nested_token_ids: List[List[int]]): |
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super(Constraint, self).__init__() |
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if not isinstance(nested_token_ids, list) or len(nested_token_ids) == 0: |
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raise ValueError(f"`nested_token_ids` has to be a non-empty list, but is {nested_token_ids}.") |
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if any(not isinstance(token_ids, list) for token_ids in nested_token_ids): |
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raise ValueError(f"`nested_token_ids` has to be a list of lists, but is {nested_token_ids}.") |
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if any( |
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any((not isinstance(token_id, int) or token_id < 0) for token_id in token_ids) |
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for token_ids in nested_token_ids |
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): |
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raise ValueError( |
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f"Each list in `nested_token_ids` has to be a list of positive integers, but is {nested_token_ids}." |
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) |
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self.trie = DisjunctiveTrie(nested_token_ids) |
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self.token_ids = nested_token_ids |
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self.seqlen = self.trie.max_height |
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self.current_seq = [] |
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self.completed = False |
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def advance(self): |
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token_list = self.trie.next_tokens(self.current_seq) |
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if len(token_list) == 0: |
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return None |
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else: |
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return token_list |
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def does_advance(self, token_id: int): |
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if not isinstance(token_id, int): |
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raise ValueError(f"`token_id` is supposed to be type `int`, but is {token_id} of type {type(token_id)}") |
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next_tokens = self.trie.next_tokens(self.current_seq) |
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return token_id in next_tokens |
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def update(self, token_id: int): |
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if not isinstance(token_id, int): |
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raise ValueError(f"`token_id` is supposed to be type `int`, but is {token_id} of type {type(token_id)}") |
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stepped = False |
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completed = False |
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reset = False |
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if self.does_advance(token_id): |
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self.current_seq.append(token_id) |
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stepped = True |
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else: |
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reset = True |
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self.reset() |
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completed = self.trie.reached_leaf(self.current_seq) |
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self.completed = completed |
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return stepped, completed, reset |
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def reset(self): |
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self.completed = False |
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self.current_seq = [] |
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def remaining(self): |
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if self.completed: |
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return 0 |
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else: |
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return self.seqlen - len(self.current_seq) |
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def copy(self, stateful=False): |
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new_constraint = DisjunctiveConstraint(self.token_ids) |
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if stateful: |
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new_constraint.seq_len = self.seqlen |
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new_constraint.current_seq = self.current_seq |
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new_constraint.completed = self.completed |
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return new_constraint |
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class ConstraintListState: |
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r""" |
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A class for beam scorers to track its progress through a list of constraints. |
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Args: |
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constraints (`List[Constraint]`): |
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A list of [`Constraint`] objects that must be fulfilled by the beam scorer. |
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""" |
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def __init__(self, constraints: List[Constraint]): |
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self.constraints = constraints |
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self.max_seqlen = max([c.seqlen for c in constraints]) |
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self.n_constraints = len(constraints) |
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self.completed = False |
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self.init_state() |
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def init_state(self): |
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self.complete_constraints = [] |
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self.inprogress_constraint = None |
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self.pending_constraints = [constraint.copy(stateful=False) for constraint in self.constraints] |
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def get_bank(self): |
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add = 0 |
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if self.inprogress_constraint: |
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add += self.max_seqlen - self.inprogress_constraint.remaining() |
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return (len(self.complete_constraints) * self.max_seqlen) + add |
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def advance(self): |
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"""The list of tokens to generate such that we can make progress. |
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By "list" we don't mean the list of token that will fully fulfill a constraint. |
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Given constraints `c_i = {t_ij | j == # of tokens}`, If we're not in the middle of progressing through a |
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specific constraint `c_i`, we return: |
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`[t_k1 for k in indices of unfulfilled constraints]` |
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If we are in the middle of a constraint, then we return: |
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`[t_ij]`, where `i` is the index of the inprogress constraint, `j` is the next step for the constraint. |
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Though we don't care which constraint is fulfilled first, if we are in the progress of fulfilling a constraint, |
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that's the only one we'll return. |
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""" |
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token_list = [] |
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if self.inprogress_constraint is None: |
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for constraint in self.pending_constraints: |
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advance = constraint.advance() |
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if isinstance(advance, int): |
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token_list.append(advance) |
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elif isinstance(advance, list): |
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token_list.extend(advance) |
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else: |
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advance = self.inprogress_constraint.advance() |
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if isinstance(advance, int): |
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token_list.append(advance) |
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elif isinstance(advance, list): |
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token_list.extend(advance) |
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if len(token_list) == 0: |
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return None |
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else: |
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return token_list |
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def reset(self, token_ids: Optional[List[int]]): |
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""" |
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token_ids: the tokens generated thus far to reset the state of the progress through constraints. |
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""" |
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self.init_state() |
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if token_ids is not None: |
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for token in token_ids: |
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complete, stepped = self.add(token) |
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if self.completed: |
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break |
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def add(self, token_id: int): |
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if not isinstance(token_id, int): |
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raise ValueError(f"`token_id` should be an `int`, but is `{token_id}`.") |
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complete, stepped = False, False |
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if self.completed: |
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complete = True |
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stepped = False |
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return complete, stepped |
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if self.inprogress_constraint is not None: |
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stepped, complete, reset = self.inprogress_constraint.update(token_id) |
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if reset: |
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self.pending_constraints.append(self.inprogress_constraint.copy(stateful=False)) |
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self.inprogress_constraint = None |
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if complete: |
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self.complete_constraints.append(self.inprogress_constraint) |
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self.inprogress_constraint = None |
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if len(self.pending_constraints) == 0: |
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self.completed = True |
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else: |
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for cidx, pending_constraint in enumerate(self.pending_constraints): |
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if pending_constraint.does_advance(token_id): |
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stepped, complete, reset = pending_constraint.update(token_id) |
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if not stepped: |
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raise Exception( |
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"`constraint.update(token_id)` is not yielding incremental progress, " |
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"even though `constraint.does_advance(token_id)` is true." |
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) |
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if complete: |
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self.complete_constraints.append(pending_constraint) |
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self.inprogress_constraint = None |
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if not complete and stepped: |
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self.inprogress_constraint = pending_constraint |
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if complete or stepped: |
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self.pending_constraints = ( |
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self.pending_constraints[:cidx] + self.pending_constraints[cidx + 1 :] |
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) |
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if len(self.pending_constraints) == 0 and self.inprogress_constraint is None: |
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self.completed = True |
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break |
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return complete, stepped |
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def copy(self, stateful=True): |
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new_state = ConstraintListState(self.constraints) |
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if stateful: |
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new_state.complete_constraints = [ |
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constraint.copy(stateful=True) for constraint in self.complete_constraints |
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] |
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if self.inprogress_constraint is not None: |
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new_state.inprogress_constraint = self.inprogress_constraint.copy(stateful=True) |
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new_state.pending_constraints = [constraint.copy() for constraint in self.pending_constraints] |
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return new_state |
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