
    si                     p    d dl mZmZmZ d dlZd dlmZmZ d dlmZ d dl	m
Z
  G d dej                  ZdS )    )AnyDictIterableN)Tensornn)util)SentenceTransformerc                        e Zd Zdej        fdededdf fdZdee	e
ef                  dedefd	Zde	e
ef         fd
Zede
fd            Z xZS )
CoSENTLossg      4@modelscalereturnNc                     t          t          |                                            || _        || _        || _        dS )a  
        This class implements CoSENT (Cosine Sentence) loss.
        It expects that each of the InputExamples consists of a pair of texts and a float valued label, representing
        the expected similarity score between the pair.

        It computes the following loss function:

        ``loss = logsum(1+exp(s(k,l)-s(i,j))+exp...)``, where ``(i,j)`` and ``(k,l)`` are any of the input pairs in the
        batch such that the expected similarity of ``(i,j)`` is greater than ``(k,l)``. The summation is over all possible
        pairs of input pairs in the batch that match this condition.

        Anecdotal experiments show that this loss function produces a more powerful training signal than :class:`CosineSimilarityLoss`,
        resulting in faster convergence and a final model with superior performance. Consequently, CoSENTLoss may be used
        as a drop-in replacement for :class:`CosineSimilarityLoss` in any training script.

        Args:
            model: SentenceTransformerModel
            similarity_fct: Function to compute the PAIRWISE similarity
                between embeddings. Default is
                ``util.pairwise_cos_sim``.
            scale: Output of similarity function is multiplied by scale
                value. Represents the inverse temperature.

        References:
            - For further details, see: https://kexue.fm/archives/8847

        Requirements:
            - Sentence pairs with corresponding similarity scores in range of the similarity function. Default is [-1,1].

        Relations:
            - :class:`AnglELoss` is CoSENTLoss with ``pairwise_angle_sim`` as the metric, rather than ``pairwise_cos_sim``.
            - :class:`CosineSimilarityLoss` seems to produce a weaker training signal than CoSENTLoss. In our experiments, CoSENTLoss is recommended.

        Inputs:
            +--------------------------------+------------------------+
            | Texts                          | Labels                 |
            +================================+========================+
            | (sentence_A, sentence_B) pairs | float similarity score |
            +--------------------------------+------------------------+

        Example:
            ::

                from sentence_transformers import SentenceTransformer, SentenceTransformerTrainer, losses
                from datasets import Dataset

                model = SentenceTransformer("microsoft/mpnet-base")
                train_dataset = Dataset.from_dict({
                    "sentence1": ["It's nice weather outside today.", "He drove to work."],
                    "sentence2": ["It's so sunny.", "She walked to the store."],
                    "score": [1.0, 0.3],
                })
                loss = losses.CoSENTLoss(model)

                trainer = SentenceTransformerTrainer(
                    model=model,
                    train_dataset=train_dataset,
                    loss=loss,
                )
                trainer.train()
        N)superr   __init__r   similarity_fctr   )selfr   r   r   	__class__s       Z/var/www/icac/venv/lib/python3.11/site-packages/sentence_transformers/losses/CoSENTLoss.pyr   zCoSENTLoss.__init__   s<    | 	j$((***
,


    sentence_featureslabelsc                      fd|D             }                      |d         |d                   }| j        z  }|d d d f         |d d d f         z
  }|d d d f         |d d d f         k     }|                                }|d|z
  dz  z
  }t          j        t          j        d                              |j                  |                    d          fd          }t          j	        |d          }|S )Nc                 F    g | ]}                     |          d          S )sentence_embedding)r   ).0sentence_featurer   s     r   
<listcomp>z&CoSENTLoss.forward.<locals>.<listcomp>O   s-    sssM]djj!1223GHsssr   r      g   mB)dim)
r   r   floattorchcatzerostodeviceview	logsumexp)r   r   r   
embeddingsscoreslosss   `     r   forwardzCoSENTLoss.forwardN   s   ssssarsss
$$Z]JqMBB$*$46$'?2 46$'?2 1v:-- EKNN--fm<<fkk"ooNTUVVVv1---r   c                 *    | j         | j        j        dS )N)r   r   )r   r   __name__r   s    r   get_config_dictzCoSENTLoss.get_config_dictb   s    t7J7STTTr   c                     dS )Nz
@online{kexuefm-8847,
    title={CoSENT: A more efficient sentence vector scheme than Sentence-BERT},
    author={Su Jianlin},
    year={2022},
    month={Jan},
    url={https://kexue.fm/archives/8847},
}
 r0   s    r   citationzCoSENTLoss.citatione   s     r   )r/   
__module____qualname__r   pairwise_cos_simr	   r"   r   r   r   strr   r-   r   r1   propertyr4   __classcell__)r   s   @r   r   r   
   s        BFW[Wl A A1 A% Aqu A A A A A AF$sF{2C)D f Y_    (Uc3h U U U U 	# 	 	 	 X	 	 	 	 	r   r   )typingr   r   r   r#   r   r   sentence_transformersr   )sentence_transformers.SentenceTransformerr	   Moduler   r3   r   r   <module>r?      s    & & & & & & & & & &          & & & & & & I I I I I Ie e e e e e e e e er   