[Dependencies|tokenizers] Make both SentencePiece and Tokenizers optional dependencies (#7659)
* splitting fast and slow tokenizers [WIP] * [WIP] splitting sentencepiece and tokenizers dependencies * update dummy objects * add name_or_path to models and tokenizers * prefix added to file names * prefix * styling + quality * spliting all the tokenizer files - sorting sentencepiece based ones * update tokenizer version up to 0.9.0 * remove hard dependency on sentencepiece 🎉 * and removed hard dependency on tokenizers 🎉 * update conversion script * update missing models * fixing tests * move test_tokenization_fast to main tokenization tests - fix bugs * bump up tokenizers * fix bert_generation * update ad fix several tokenizers * keep sentencepiece in deps for now * fix funnel and deberta tests * fix fsmt * fix marian tests * fix layoutlm * fix squeezebert and gpt2 * fix T5 tokenization * fix xlnet tests * style * fix mbart * bump up tokenizers to 0.9.2 * fix model tests * fix tf models * fix seq2seq examples * fix tests without sentencepiece * fix slow => fast conversion without sentencepiece * update auto and bert generation tests * fix mbart tests * fix auto and common test without tokenizers * fix tests without tokenizers * clean up tests lighten up when tokenizers + sentencepiece are both off * style quality and tests fixing * add sentencepiece to doc/examples reqs * leave sentencepiece on for now * style quality split hebert and fix pegasus * WIP Herbert fast * add sample_text_no_unicode and fix hebert tokenization * skip FSMT example test for now * fix style * fix fsmt in example tests * update following Lysandre and Sylvain's comments * Update src/transformers/testing_utils.py Co-authored-by: Sylvain Gugger <35901082+sgugger@users.noreply.github.com> * Update src/transformers/testing_utils.py Co-authored-by: Sylvain Gugger <35901082+sgugger@users.noreply.github.com> * Update src/transformers/tokenization_utils_base.py Co-authored-by: Sylvain Gugger <35901082+sgugger@users.noreply.github.com> * Update src/transformers/tokenization_utils_base.py Co-authored-by: Sylvain Gugger <35901082+sgugger@users.noreply.github.com> Co-authored-by: Sylvain Gugger <35901082+sgugger@users.noreply.github.com>
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@@ -758,8 +758,8 @@ Here is an example of using the pipelines to do summarization. It leverages a Ba
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... If convicted, Barrientos faces up to four years in prison. Her next court appearance is scheduled for May 18.
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... """
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Because the summarization pipeline depends on the ``PretrainedModel.generate()`` method, we can override the default arguments
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of ``PretrainedModel.generate()`` directly in the pipeline for ``max_length`` and ``min_length`` as shown below.
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Because the summarization pipeline depends on the ``PreTrainedModel.generate()`` method, we can override the default arguments
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of ``PreTrainedModel.generate()`` directly in the pipeline for ``max_length`` and ``min_length`` as shown below.
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This outputs the following summary:
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.. code-block::
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@@ -772,7 +772,7 @@ Here is an example of doing summarization using a model and a tokenizer. The pro
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1. Instantiate a tokenizer and a model from the checkpoint name. Summarization is usually done using an encoder-decoder model, such as ``Bart`` or ``T5``.
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2. Define the article that should be summarized.
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3. Add the T5 specific prefix "summarize: ".
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4. Use the ``PretrainedModel.generate()`` method to generate the summary.
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4. Use the ``PreTrainedModel.generate()`` method to generate the summary.
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In this example we use Google`s T5 model. Even though it was pre-trained only on a multi-task mixed dataset (including CNN / Daily Mail), it yields very good results.
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@@ -819,15 +819,15 @@ translation results.
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>>> print(translator("Hugging Face is a technology company based in New York and Paris", max_length=40))
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[{'translation_text': 'Hugging Face ist ein Technologieunternehmen mit Sitz in New York und Paris.'}]
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Because the translation pipeline depends on the ``PretrainedModel.generate()`` method, we can override the default arguments
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of ``PretrainedModel.generate()`` directly in the pipeline as is shown for ``max_length`` above.
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Because the translation pipeline depends on the ``PreTrainedModel.generate()`` method, we can override the default arguments
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of ``PreTrainedModel.generate()`` directly in the pipeline as is shown for ``max_length`` above.
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Here is an example of doing translation using a model and a tokenizer. The process is the following:
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1. Instantiate a tokenizer and a model from the checkpoint name. Summarization is usually done using an encoder-decoder model, such as ``Bart`` or ``T5``.
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2. Define the article that should be summarizaed.
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3. Add the T5 specific prefix "translate English to German: "
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4. Use the ``PretrainedModel.generate()`` method to perform the translation.
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4. Use the ``PreTrainedModel.generate()`` method to perform the translation.
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.. code-block::
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