Updated ConversationalPipeline to work with encoder-decoder models (#8207)
* Updated ConversationalPipeline to work with encoder-decoder models (e.g. BlenderBot) * Addition of integration test for EncoderDecoder conversation model Co-authored-by: Lysandre Debut <lysandre@huggingface.co>
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@@ -2430,18 +2430,31 @@ class ConversationalPipeline(Pipeline):
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**generate_kwargs,
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)
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cleaned_history = self._clean_padding_history(generated_responses)
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if self.model.config.is_encoder_decoder:
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if self.framework == "pt":
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history = torch.cat((inputs["input_ids"], generated_responses[:, 1:]), 1)
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elif self.framework == "tf":
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history = tf.concat([inputs["input_ids"], generated_responses[:, 1:]], 1)
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else:
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history = generated_responses
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history = self._clean_padding_history(history)
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if self.model.config.is_encoder_decoder:
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start_position = 1
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else:
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start_position = input_length
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output = []
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for conversation_index, conversation in enumerate(conversations):
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conversation.mark_processed()
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conversation.generated_responses.append(
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self.tokenizer.decode(
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cleaned_history[conversation_index][input_length:],
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generated_responses[conversation_index][start_position:],
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skip_special_tokens=True,
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clean_up_tokenization_spaces=clean_up_tokenization_spaces,
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)
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)
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conversation.set_history(cleaned_history[conversation_index])
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conversation.set_history(history[conversation_index])
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output.append(conversation)
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if len(output) == 1:
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return output[0]
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@@ -2475,6 +2488,8 @@ class ConversationalPipeline(Pipeline):
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is_previous_pad = False
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for token in sequence:
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if token == self.tokenizer.pad_token_id:
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if self.tokenizer.pad_token_id != self.tokenizer.eos_token_id:
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continue
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if is_previous_pad:
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continue
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else:
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@@ -1,6 +1,6 @@
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import unittest
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from transformers import Conversation, pipeline
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from transformers import AutoModelForSeq2SeqLM, AutoTokenizer, Conversation, ConversationalPipeline, pipeline
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from transformers.testing_utils import require_torch, slow, torch_device
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from .test_pipelines_common import MonoInputPipelineCommonMixin
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@@ -15,8 +15,9 @@ class ConversationalPipelineTests(MonoInputPipelineCommonMixin, unittest.TestCas
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large_models = ["microsoft/DialoGPT-medium"] # Models tested with the @slow decorator
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invalid_inputs = ["Hi there!", Conversation()]
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def _test_pipeline(self, nlp):
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# e overide the default test method to check that the output is a `Conversation` object
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def _test_pipeline(
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self, nlp
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): # override the default test method to check that the output is a `Conversation` object
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self.assertIsNotNone(nlp)
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# We need to recreate conversation for successive tests to pass as
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@@ -95,3 +96,50 @@ class ConversationalPipelineTests(MonoInputPipelineCommonMixin, unittest.TestCas
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self.assertEqual(len(result.generated_responses), 2)
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self.assertEqual(result.past_user_inputs[1], "Is it an action movie?")
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self.assertEqual(result.generated_responses[1], "It's a comedy.")
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@require_torch
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@slow
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def test_integration_torch_conversation_encoder_decoder(self):
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# When
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tokenizer = AutoTokenizer.from_pretrained("facebook/blenderbot-90M")
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model = AutoModelForSeq2SeqLM.from_pretrained("facebook/blenderbot-90M")
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nlp = ConversationalPipeline(model=model, tokenizer=tokenizer, device=DEFAULT_DEVICE_NUM)
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conversation_1 = Conversation("My name is Sarah and I live in London")
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conversation_2 = Conversation("Going to the movies tonight, What movie would you recommend? ")
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# Then
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self.assertEqual(len(conversation_1.past_user_inputs), 0)
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self.assertEqual(len(conversation_2.past_user_inputs), 0)
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# When
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result = nlp([conversation_1, conversation_2], do_sample=False, max_length=1000)
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# Then
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self.assertEqual(result, [conversation_1, conversation_2])
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self.assertEqual(len(result[0].past_user_inputs), 1)
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self.assertEqual(len(result[1].past_user_inputs), 1)
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self.assertEqual(len(result[0].generated_responses), 1)
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self.assertEqual(len(result[1].generated_responses), 1)
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self.assertEqual(result[0].past_user_inputs[0], "My name is Sarah and I live in London")
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self.assertEqual(
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result[0].generated_responses[0],
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"hi sarah, i live in london as well. do you have any plans for the weekend?",
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)
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self.assertEqual(
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result[1].past_user_inputs[0], "Going to the movies tonight, What movie would you recommend? "
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)
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self.assertEqual(
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result[1].generated_responses[0], "i don't know... i'm not really sure. what movie are you going to see?"
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)
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# When
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conversation_1.add_user_input("Not yet, what about you?")
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conversation_2.add_user_input("What's your name?")
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result = nlp([conversation_1, conversation_2], do_sample=False, max_length=1000)
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# Then
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self.assertEqual(result, [conversation_1, conversation_2])
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self.assertEqual(len(result[0].past_user_inputs), 2)
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self.assertEqual(len(result[1].past_user_inputs), 2)
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self.assertEqual(len(result[0].generated_responses), 2)
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self.assertEqual(len(result[1].generated_responses), 2)
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self.assertEqual(result[0].past_user_inputs[1], "Not yet, what about you?")
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self.assertEqual(result[0].generated_responses[1], "i don't have any plans yet. i'm not sure what to do yet.")
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self.assertEqual(result[1].past_user_inputs[1], "What's your name?")
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self.assertEqual(result[1].generated_responses[1], "i don't have a name, but i'm going to see a horror movie.")
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