Tokenizer kwargs in textgeneration pipe (#28362)
* added args to the pipeline * added test * more sensical tests * fixup * docs * typo ; * docs * made changes to support named args * fixed test * docs update * styles * docs * docs
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@@ -216,6 +216,12 @@ array([[1, 1, 1, 1, 1, 1, 1, 1, 0, 0, 0, 0, 0, 0, 0],
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</tf>
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</frameworkcontent>
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<Tip>
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Different pipelines support tokenizer arguments in their `__call__()` differently. `text-2-text-generation` pipelines support (i.e. pass on)
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only `truncation`. `text-generation` pipelines support `max_length`, `truncation`, `padding` and `add_special_tokens`.
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In `fill-mask` pipelines, tokenizer arguments can be passed in the `tokenizer_kwargs` argument (dictionary).
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</Tip>
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## Audio
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For audio tasks, you'll need a [feature extractor](main_classes/feature_extractor) to prepare your dataset for the model. The feature extractor is designed to extract features from raw audio data, and convert them into tensors.
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@@ -104,9 +104,20 @@ class TextGenerationPipeline(Pipeline):
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handle_long_generation=None,
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stop_sequence=None,
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add_special_tokens=False,
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truncation=None,
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padding=False,
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max_length=None,
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**generate_kwargs,
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):
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preprocess_params = {"add_special_tokens": add_special_tokens}
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preprocess_params = {
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"add_special_tokens": add_special_tokens,
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"truncation": truncation,
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"padding": padding,
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"max_length": max_length,
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}
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if max_length is not None:
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generate_kwargs["max_length"] = max_length
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if prefix is not None:
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preprocess_params["prefix"] = prefix
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if prefix:
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@@ -208,10 +219,23 @@ class TextGenerationPipeline(Pipeline):
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return super().__call__(text_inputs, **kwargs)
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def preprocess(
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self, prompt_text, prefix="", handle_long_generation=None, add_special_tokens=False, **generate_kwargs
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self,
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prompt_text,
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prefix="",
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handle_long_generation=None,
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add_special_tokens=False,
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truncation=None,
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padding=False,
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max_length=None,
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**generate_kwargs,
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):
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inputs = self.tokenizer(
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prefix + prompt_text, padding=False, add_special_tokens=add_special_tokens, return_tensors=self.framework
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prefix + prompt_text,
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return_tensors=self.framework,
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truncation=truncation,
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padding=padding,
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max_length=max_length,
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add_special_tokens=add_special_tokens,
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)
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inputs["prompt_text"] = prompt_text
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@@ -90,6 +90,22 @@ class TextGenerationPipelineTests(unittest.TestCase):
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{"generated_token_ids": ANY(list)},
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],
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)
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## -- test tokenizer_kwargs
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test_str = "testing tokenizer kwargs. using truncation must result in a different generation."
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output_str, output_str_with_truncation = (
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text_generator(test_str, do_sample=False, return_full_text=False)[0]["generated_text"],
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text_generator(
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test_str,
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do_sample=False,
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return_full_text=False,
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truncation=True,
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max_length=3,
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)[0]["generated_text"],
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)
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assert output_str != output_str_with_truncation # results must be different because one hd truncation
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# -- what is the point of this test? padding is hardcoded False in the pipeline anyway
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text_generator.tokenizer.pad_token_id = text_generator.model.config.eos_token_id
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text_generator.tokenizer.pad_token = "<pad>"
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outputs = text_generator(
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