Update Space (evaluate main: 940d6dee)
Browse files- README.md +12 -11
 - perplexity.py +4 -4
 - requirements.txt +1 -1
 
    	
        README.md
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            - metric
         
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            description: >-
         
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              Perplexity (PPL) is one of the most common metrics for evaluating language models.
         
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              It is defined as the exponentiated average negative log-likelihood of a sequence 
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              For more information, see https://huggingface.co/docs/transformers/perplexity
         
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            ---
         
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            # Metric Card for Perplexity
         
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            ## Metric Description
         
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            Given a model and an input text sequence, perplexity measures how likely the model is to generate the input text sequence.
         
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            As a metric, it can be used to evaluate how well the model has learned the distribution of the text it was trained on
         
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            ## Intended Uses
         
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            Any language generation task.
         
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            ### Inputs
         
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            - **model_id** (str): model used for calculating Perplexity. NOTE: Perplexity can only be calculated for causal language models.
         
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                - This includes models such as gpt2, causal variations of bert, causal versions of t5, and more (the full list can be found in the AutoModelForCausalLM documentation here: https://huggingface.co/docs/transformers/master/en/model_doc/auto#transformers.AutoModelForCausalLM )
         
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            - **predictions** (list of str): input text, each separate text snippet is one list entry.
         
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            - **batch_size** (int): the batch size to run texts through the model. Defaults to 16.
         
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            - **add_start_token** (bool): whether to add the start token to the texts, so the perplexity can include the probability of the first word. Defaults to True.
         
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            - **device** (str): device to run on, defaults to  
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            ### Output Values
         
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            This metric outputs a dictionary with the perplexity scores for the text input in the list, and the average perplexity.
         
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            {'perplexities': [8.182524681091309, 33.42122268676758, 27.012239456176758], 'mean_perplexity': 22.871995608011883}
         
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            ```
         
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            #### Values from Popular Papers
         
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            print(list(results.keys()))
         
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            >>>['perplexities', 'mean_perplexity']
         
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            print(round(results["mean_perplexity"], 2))
         
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            >>> 
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            print(round(results["perplexities"][0], 2))
         
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            >>> 
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            ```
         
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            Calculating perplexity on predictions loaded in from a dataset:
         
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            ```python
         
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            print(list(results.keys()))
         
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            >>>['perplexities', 'mean_perplexity']
         
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            print(round(results["mean_perplexity"], 2))
         
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            >>> 
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            print(round(results["perplexities"][0], 2))
         
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            >>> 
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            ```
         
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            ## Limitations and Bias
         
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            - metric
         
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            description: >-
         
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              Perplexity (PPL) is one of the most common metrics for evaluating language models.
         
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              It is defined as the exponentiated average negative log-likelihood of a sequence, calculated with exponent base `e`.
         
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              For more information on perplexity, see [this tutorial](https://huggingface.co/docs/transformers/perplexity).
         
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            ---
         
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            # Metric Card for Perplexity
         
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            ## Metric Description
         
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            Given a model and an input text sequence, perplexity measures how likely the model is to generate the input text sequence.
         
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            As a metric, it can be used to evaluate how well the model has learned the distribution of the text it was trained on.
         
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            In this case, `model_id` should be the trained model to be evaluated, and the input texts should be the text that the model was trained on.
         
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            This implementation of perplexity is calculated with log base `e`, as in `perplexity = e**(sum(losses) / num_tokenized_tokens)`, following recent convention in deep learning frameworks.
         
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            ## Intended Uses
         
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            Any language generation task.
         
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            ### Inputs
         
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            - **model_id** (str): model used for calculating Perplexity. NOTE: Perplexity can only be calculated for causal language models.
         
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                - This includes models such as gpt2, causal variations of bert, causal versions of t5, and more (the full list can be found in the AutoModelForCausalLM documentation here: https://huggingface.co/docs/transformers/master/en/model_doc/auto#transformers.AutoModelForCausalLM )
         
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            - **predictions** (list of str): input text, where each separate text snippet is one list entry.
         
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            - **batch_size** (int): the batch size to run texts through the model. Defaults to 16.
         
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            - **add_start_token** (bool): whether to add the start token to the texts, so the perplexity can include the probability of the first word. Defaults to True.
         
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            - **device** (str): device to run on, defaults to `cuda` when available
         
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            ### Output Values
         
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            This metric outputs a dictionary with the perplexity scores for the text input in the list, and the average perplexity.
         
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            {'perplexities': [8.182524681091309, 33.42122268676758, 27.012239456176758], 'mean_perplexity': 22.871995608011883}
         
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            ```
         
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            The range of this metric is [0, inf). A lower score is better.
         
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            #### Values from Popular Papers
         
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            print(list(results.keys()))
         
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            >>>['perplexities', 'mean_perplexity']
         
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            print(round(results["mean_perplexity"], 2))
         
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            >>>646.74
         
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            print(round(results["perplexities"][0], 2))
         
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            >>>32.25
         
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            ```
         
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            Calculating perplexity on predictions loaded in from a dataset:
         
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            ```python
         
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            print(list(results.keys()))
         
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            >>>['perplexities', 'mean_perplexity']
         
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            print(round(results["mean_perplexity"], 2))
         
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            >>>576.76
         
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            print(round(results["perplexities"][0], 2))
         
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            >>>889.28
         
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            ```
         
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            ## Limitations and Bias
         
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        perplexity.py
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         @@ -29,7 +29,7 @@ _CITATION = """\ 
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            _DESCRIPTION = """
         
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            Perplexity (PPL) is one of the most common metrics for evaluating language models.
         
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            It is defined as the exponentiated average negative log-likelihood of a sequence 
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            For more information, see https://huggingface.co/docs/transformers/perplexity
         
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            """
         
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                    >>> print(list(results.keys()))
         
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                    ['perplexities', 'mean_perplexity']
         
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                    >>> print(round(results["mean_perplexity"], 2)) # doctest: +SKIP
         
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                    >>> print(round(results["perplexities"][0], 2)) # doctest: +SKIP
         
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            """
         
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                        shift_labels = labels[..., 1:].contiguous()
         
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                        shift_attention_mask_batch = attn_mask[..., 1:].contiguous()
         
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                        perplexity_batch = torch. 
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                            (loss_fct(shift_logits.transpose(1, 2), shift_labels) * shift_attention_mask_batch).sum(1)
         
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                            / shift_attention_mask_batch.sum(1)
         
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                        )
         
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            _DESCRIPTION = """
         
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            Perplexity (PPL) is one of the most common metrics for evaluating language models.
         
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            It is defined as the exponentiated average negative log-likelihood of a sequence, calculated with exponent base `e`.
         
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            For more information, see https://huggingface.co/docs/transformers/perplexity
         
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            """
         
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                    >>> print(list(results.keys()))
         
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                    ['perplexities', 'mean_perplexity']
         
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                    >>> print(round(results["mean_perplexity"], 2)) # doctest: +SKIP
         
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                    576.76
         
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                    >>> print(round(results["perplexities"][0], 2)) # doctest: +SKIP
         
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                    889.28
         
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            """
         
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                        shift_labels = labels[..., 1:].contiguous()
         
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                        shift_attention_mask_batch = attn_mask[..., 1:].contiguous()
         
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                        perplexity_batch = torch.exp(
         
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                            (loss_fct(shift_logits.transpose(1, 2), shift_labels) * shift_attention_mask_batch).sum(1)
         
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                            / shift_attention_mask_batch.sum(1)
         
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                        )
         
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        requirements.txt
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            git+https://github.com/huggingface/evaluate@ 
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            git+https://github.com/huggingface/evaluate@940d6dee3b4a23eabb0c81e4117c9533cd7c458a
         
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            torch
         
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            torch
         
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            transformers
         
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