528 lines
23 KiB
Python
528 lines
23 KiB
Python
# coding=utf-8
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# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import copy
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import json
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import os
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import random
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import unittest
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from pathlib import Path
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from transformers.testing_utils import (
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is_pipeline_test,
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require_decord,
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require_pytesseract,
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require_timm,
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require_torch,
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require_torch_or_tf,
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require_vision,
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)
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from transformers.utils import direct_transformers_import, logging
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from .pipelines.test_pipelines_audio_classification import AudioClassificationPipelineTests
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from .pipelines.test_pipelines_automatic_speech_recognition import AutomaticSpeechRecognitionPipelineTests
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from .pipelines.test_pipelines_conversational import ConversationalPipelineTests
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from .pipelines.test_pipelines_depth_estimation import DepthEstimationPipelineTests
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from .pipelines.test_pipelines_document_question_answering import DocumentQuestionAnsweringPipelineTests
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from .pipelines.test_pipelines_feature_extraction import FeatureExtractionPipelineTests
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from .pipelines.test_pipelines_fill_mask import FillMaskPipelineTests
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from .pipelines.test_pipelines_image_classification import ImageClassificationPipelineTests
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from .pipelines.test_pipelines_image_feature_extraction import ImageFeatureExtractionPipelineTests
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from .pipelines.test_pipelines_image_segmentation import ImageSegmentationPipelineTests
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from .pipelines.test_pipelines_image_to_image import ImageToImagePipelineTests
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from .pipelines.test_pipelines_image_to_text import ImageToTextPipelineTests
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from .pipelines.test_pipelines_mask_generation import MaskGenerationPipelineTests
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from .pipelines.test_pipelines_object_detection import ObjectDetectionPipelineTests
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from .pipelines.test_pipelines_question_answering import QAPipelineTests
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from .pipelines.test_pipelines_summarization import SummarizationPipelineTests
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from .pipelines.test_pipelines_table_question_answering import TQAPipelineTests
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from .pipelines.test_pipelines_text2text_generation import Text2TextGenerationPipelineTests
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from .pipelines.test_pipelines_text_classification import TextClassificationPipelineTests
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from .pipelines.test_pipelines_text_generation import TextGenerationPipelineTests
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from .pipelines.test_pipelines_text_to_audio import TextToAudioPipelineTests
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from .pipelines.test_pipelines_token_classification import TokenClassificationPipelineTests
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from .pipelines.test_pipelines_translation import TranslationPipelineTests
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from .pipelines.test_pipelines_video_classification import VideoClassificationPipelineTests
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from .pipelines.test_pipelines_visual_question_answering import VisualQuestionAnsweringPipelineTests
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from .pipelines.test_pipelines_zero_shot import ZeroShotClassificationPipelineTests
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from .pipelines.test_pipelines_zero_shot_audio_classification import ZeroShotAudioClassificationPipelineTests
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from .pipelines.test_pipelines_zero_shot_image_classification import ZeroShotImageClassificationPipelineTests
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from .pipelines.test_pipelines_zero_shot_object_detection import ZeroShotObjectDetectionPipelineTests
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pipeline_test_mapping = {
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"audio-classification": {"test": AudioClassificationPipelineTests},
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"automatic-speech-recognition": {"test": AutomaticSpeechRecognitionPipelineTests},
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"conversational": {"test": ConversationalPipelineTests},
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"depth-estimation": {"test": DepthEstimationPipelineTests},
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"document-question-answering": {"test": DocumentQuestionAnsweringPipelineTests},
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"feature-extraction": {"test": FeatureExtractionPipelineTests},
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"fill-mask": {"test": FillMaskPipelineTests},
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"image-classification": {"test": ImageClassificationPipelineTests},
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"image-feature-extraction": {"test": ImageFeatureExtractionPipelineTests},
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"image-segmentation": {"test": ImageSegmentationPipelineTests},
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"image-to-image": {"test": ImageToImagePipelineTests},
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"image-to-text": {"test": ImageToTextPipelineTests},
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"mask-generation": {"test": MaskGenerationPipelineTests},
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"object-detection": {"test": ObjectDetectionPipelineTests},
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"question-answering": {"test": QAPipelineTests},
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"summarization": {"test": SummarizationPipelineTests},
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"table-question-answering": {"test": TQAPipelineTests},
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"text2text-generation": {"test": Text2TextGenerationPipelineTests},
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"text-classification": {"test": TextClassificationPipelineTests},
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"text-generation": {"test": TextGenerationPipelineTests},
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"text-to-audio": {"test": TextToAudioPipelineTests},
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"token-classification": {"test": TokenClassificationPipelineTests},
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"translation": {"test": TranslationPipelineTests},
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"video-classification": {"test": VideoClassificationPipelineTests},
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"visual-question-answering": {"test": VisualQuestionAnsweringPipelineTests},
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"zero-shot": {"test": ZeroShotClassificationPipelineTests},
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"zero-shot-audio-classification": {"test": ZeroShotAudioClassificationPipelineTests},
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"zero-shot-image-classification": {"test": ZeroShotImageClassificationPipelineTests},
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"zero-shot-object-detection": {"test": ZeroShotObjectDetectionPipelineTests},
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}
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for task, task_info in pipeline_test_mapping.items():
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test = task_info["test"]
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task_info["mapping"] = {
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"pt": getattr(test, "model_mapping", None),
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"tf": getattr(test, "tf_model_mapping", None),
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}
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# The default value `hf-internal-testing` is for running the pipeline testing against the tiny models on the Hub.
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# For debugging purpose, we can specify a local path which is the `output_path` argument of a previous run of
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# `utils/create_dummy_models.py`.
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TRANSFORMERS_TINY_MODEL_PATH = os.environ.get("TRANSFORMERS_TINY_MODEL_PATH", "hf-internal-testing")
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if TRANSFORMERS_TINY_MODEL_PATH == "hf-internal-testing":
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TINY_MODEL_SUMMARY_FILE_PATH = os.path.join(Path(__file__).parent.parent, "tests/utils/tiny_model_summary.json")
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else:
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TINY_MODEL_SUMMARY_FILE_PATH = os.path.join(TRANSFORMERS_TINY_MODEL_PATH, "reports", "tiny_model_summary.json")
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with open(TINY_MODEL_SUMMARY_FILE_PATH) as fp:
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tiny_model_summary = json.load(fp)
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PATH_TO_TRANSFORMERS = os.path.join(Path(__file__).parent.parent, "src/transformers")
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# Dynamically import the Transformers module to grab the attribute classes of the processor form their names.
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transformers_module = direct_transformers_import(PATH_TO_TRANSFORMERS)
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logger = logging.get_logger(__name__)
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class PipelineTesterMixin:
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model_tester = None
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pipeline_model_mapping = None
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supported_frameworks = ["pt", "tf"]
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def run_task_tests(self, task):
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"""Run pipeline tests for a specific `task`
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Args:
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task (`str`):
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A task name. This should be a key in the mapping `pipeline_test_mapping`.
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"""
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if task not in self.pipeline_model_mapping:
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self.skipTest(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: `{task}` is not in "
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f"`self.pipeline_model_mapping` for `{self.__class__.__name__}`."
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)
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model_architectures = self.pipeline_model_mapping[task]
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if not isinstance(model_architectures, tuple):
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model_architectures = (model_architectures,)
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if not isinstance(model_architectures, tuple):
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raise ValueError(f"`model_architectures` must be a tuple. Got {type(model_architectures)} instead.")
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for model_architecture in model_architectures:
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model_arch_name = model_architecture.__name__
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# Get the canonical name
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for _prefix in ["Flax", "TF"]:
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if model_arch_name.startswith(_prefix):
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model_arch_name = model_arch_name[len(_prefix) :]
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break
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tokenizer_names = []
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processor_names = []
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commit = None
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if model_arch_name in tiny_model_summary:
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tokenizer_names = tiny_model_summary[model_arch_name]["tokenizer_classes"]
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processor_names = tiny_model_summary[model_arch_name]["processor_classes"]
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if "sha" in tiny_model_summary[model_arch_name]:
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commit = tiny_model_summary[model_arch_name]["sha"]
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# Adding `None` (if empty) so we can generate tests
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tokenizer_names = [None] if len(tokenizer_names) == 0 else tokenizer_names
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processor_names = [None] if len(processor_names) == 0 else processor_names
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repo_name = f"tiny-random-{model_arch_name}"
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if TRANSFORMERS_TINY_MODEL_PATH != "hf-internal-testing":
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repo_name = model_arch_name
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self.run_model_pipeline_tests(
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task, repo_name, model_architecture, tokenizer_names, processor_names, commit
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)
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def run_model_pipeline_tests(self, task, repo_name, model_architecture, tokenizer_names, processor_names, commit):
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"""Run pipeline tests for a specific `task` with the give model class and tokenizer/processor class names
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Args:
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task (`str`):
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A task name. This should be a key in the mapping `pipeline_test_mapping`.
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repo_name (`str`):
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A model repository id on the Hub.
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model_architecture (`type`):
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A subclass of `PretrainedModel` or `PretrainedModel`.
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tokenizer_names (`List[str]`):
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A list of names of a subclasses of `PreTrainedTokenizerFast` or `PreTrainedTokenizer`.
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processor_names (`List[str]`):
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A list of names of subclasses of `BaseImageProcessor` or `FeatureExtractionMixin`.
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"""
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# Get an instance of the corresponding class `XXXPipelineTests` in order to use `get_test_pipeline` and
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# `run_pipeline_test`.
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pipeline_test_class_name = pipeline_test_mapping[task]["test"].__name__
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for tokenizer_name in tokenizer_names:
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for processor_name in processor_names:
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if self.is_pipeline_test_to_skip(
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pipeline_test_class_name,
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model_architecture.config_class,
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model_architecture,
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tokenizer_name,
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processor_name,
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):
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: test is "
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f"currently known to fail for: model `{model_architecture.__name__}` | tokenizer "
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f"`{tokenizer_name}` | processor `{processor_name}`."
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)
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continue
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self.run_pipeline_test(task, repo_name, model_architecture, tokenizer_name, processor_name, commit)
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def run_pipeline_test(self, task, repo_name, model_architecture, tokenizer_name, processor_name, commit):
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"""Run pipeline tests for a specific `task` with the give model class and tokenizer/processor class name
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The model will be loaded from a model repository on the Hub.
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Args:
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task (`str`):
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A task name. This should be a key in the mapping `pipeline_test_mapping`.
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repo_name (`str`):
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A model repository id on the Hub.
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model_architecture (`type`):
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A subclass of `PretrainedModel` or `PretrainedModel`.
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tokenizer_name (`str`):
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The name of a subclass of `PreTrainedTokenizerFast` or `PreTrainedTokenizer`.
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processor_name (`str`):
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The name of a subclass of `BaseImageProcessor` or `FeatureExtractionMixin`.
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"""
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repo_id = f"{TRANSFORMERS_TINY_MODEL_PATH}/{repo_name}"
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if TRANSFORMERS_TINY_MODEL_PATH != "hf-internal-testing":
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model_type = model_architecture.config_class.model_type
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repo_id = os.path.join(TRANSFORMERS_TINY_MODEL_PATH, model_type, repo_name)
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tokenizer = None
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if tokenizer_name is not None:
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tokenizer_class = getattr(transformers_module, tokenizer_name)
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tokenizer = tokenizer_class.from_pretrained(repo_id, revision=commit)
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processor = None
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if processor_name is not None:
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processor_class = getattr(transformers_module, processor_name)
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# If the required packages (like `Pillow` or `torchaudio`) are not installed, this will fail.
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try:
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processor = processor_class.from_pretrained(repo_id, revision=commit)
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except Exception:
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: Could not load the "
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f"processor from `{repo_id}` with `{processor_name}`."
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)
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return
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# TODO: Maybe not upload such problematic tiny models to Hub.
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if tokenizer is None and processor is None:
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: Could not find or load "
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f"any tokenizer / processor from `{repo_id}`."
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)
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return
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# TODO: We should check if a model file is on the Hub repo. instead.
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try:
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model = model_architecture.from_pretrained(repo_id, revision=commit)
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except Exception:
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: Could not find or load "
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f"the model from `{repo_id}` with `{model_architecture}`."
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)
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return
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pipeline_test_class_name = pipeline_test_mapping[task]["test"].__name__
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if self.is_pipeline_test_to_skip_more(pipeline_test_class_name, model.config, model, tokenizer, processor):
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: test is "
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f"currently known to fail for: model `{model_architecture.__name__}` | tokenizer "
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f"`{tokenizer_name}` | processor `{processor_name}`."
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)
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return
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# validate
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validate_test_components(self, task, model, tokenizer, processor)
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if hasattr(model, "eval"):
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model = model.eval()
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# Get an instance of the corresponding class `XXXPipelineTests` in order to use `get_test_pipeline` and
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# `run_pipeline_test`.
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task_test = pipeline_test_mapping[task]["test"]()
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pipeline, examples = task_test.get_test_pipeline(model, tokenizer, processor)
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if pipeline is None:
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# The test can disable itself, but it should be very marginal
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# Concerns: Wav2Vec2ForCTC without tokenizer test (FastTokenizer don't exist)
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logger.warning(
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f"{self.__class__.__name__}::test_pipeline_{task.replace('-', '_')} is skipped: Could not get the "
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"pipeline for testing."
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)
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return
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task_test.run_pipeline_test(pipeline, examples)
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def run_batch_test(pipeline, examples):
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# Need to copy because `Conversation` are stateful
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if pipeline.tokenizer is not None and pipeline.tokenizer.pad_token_id is None:
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return # No batching for this and it's OK
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# 10 examples with batch size 4 means there needs to be a unfinished batch
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# which is important for the unbatcher
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def data(n):
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for _ in range(n):
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# Need to copy because Conversation object is mutated
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yield copy.deepcopy(random.choice(examples))
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out = []
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if task == "conversational":
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for item in pipeline(data(10), batch_size=4, max_new_tokens=5):
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out.append(item)
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else:
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for item in pipeline(data(10), batch_size=4):
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out.append(item)
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self.assertEqual(len(out), 10)
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run_batch_test(pipeline, examples)
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@is_pipeline_test
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def test_pipeline_audio_classification(self):
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self.run_task_tests(task="audio-classification")
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@is_pipeline_test
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def test_pipeline_automatic_speech_recognition(self):
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self.run_task_tests(task="automatic-speech-recognition")
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@is_pipeline_test
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def test_pipeline_conversational(self):
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self.run_task_tests(task="conversational")
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@is_pipeline_test
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@require_vision
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@require_timm
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@require_torch
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def test_pipeline_depth_estimation(self):
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self.run_task_tests(task="depth-estimation")
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@is_pipeline_test
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@require_pytesseract
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@require_torch
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@require_vision
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def test_pipeline_document_question_answering(self):
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self.run_task_tests(task="document-question-answering")
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@is_pipeline_test
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def test_pipeline_feature_extraction(self):
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self.run_task_tests(task="feature-extraction")
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@is_pipeline_test
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def test_pipeline_fill_mask(self):
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self.run_task_tests(task="fill-mask")
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@is_pipeline_test
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@require_torch_or_tf
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@require_vision
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def test_pipeline_image_classification(self):
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self.run_task_tests(task="image-classification")
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@is_pipeline_test
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@require_vision
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@require_timm
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@require_torch
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def test_pipeline_image_segmentation(self):
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self.run_task_tests(task="image-segmentation")
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@is_pipeline_test
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@require_vision
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def test_pipeline_image_to_text(self):
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self.run_task_tests(task="image-to-text")
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@is_pipeline_test
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@require_timm
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@require_vision
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@require_torch
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def test_pipeline_image_feature_extraction(self):
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self.run_task_tests(task="image-feature-extraction")
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@unittest.skip(reason="`run_pipeline_test` is currently not implemented.")
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@is_pipeline_test
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@require_vision
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@require_torch
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def test_pipeline_mask_generation(self):
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self.run_task_tests(task="mask-generation")
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@is_pipeline_test
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@require_vision
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@require_timm
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@require_torch
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def test_pipeline_object_detection(self):
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self.run_task_tests(task="object-detection")
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@is_pipeline_test
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def test_pipeline_question_answering(self):
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self.run_task_tests(task="question-answering")
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@is_pipeline_test
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def test_pipeline_summarization(self):
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self.run_task_tests(task="summarization")
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@is_pipeline_test
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def test_pipeline_table_question_answering(self):
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self.run_task_tests(task="table-question-answering")
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@is_pipeline_test
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def test_pipeline_text2text_generation(self):
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self.run_task_tests(task="text2text-generation")
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@is_pipeline_test
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def test_pipeline_text_classification(self):
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self.run_task_tests(task="text-classification")
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@is_pipeline_test
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@require_torch_or_tf
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def test_pipeline_text_generation(self):
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self.run_task_tests(task="text-generation")
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@is_pipeline_test
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@require_torch
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def test_pipeline_text_to_audio(self):
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self.run_task_tests(task="text-to-audio")
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@is_pipeline_test
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def test_pipeline_token_classification(self):
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self.run_task_tests(task="token-classification")
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@is_pipeline_test
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def test_pipeline_translation(self):
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self.run_task_tests(task="translation")
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@is_pipeline_test
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|
@require_torch_or_tf
|
|
@require_vision
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|
@require_decord
|
|
def test_pipeline_video_classification(self):
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|
self.run_task_tests(task="video-classification")
|
|
|
|
@is_pipeline_test
|
|
@require_torch
|
|
@require_vision
|
|
def test_pipeline_visual_question_answering(self):
|
|
self.run_task_tests(task="visual-question-answering")
|
|
|
|
@is_pipeline_test
|
|
def test_pipeline_zero_shot(self):
|
|
self.run_task_tests(task="zero-shot")
|
|
|
|
@is_pipeline_test
|
|
@require_torch
|
|
def test_pipeline_zero_shot_audio_classification(self):
|
|
self.run_task_tests(task="zero-shot-audio-classification")
|
|
|
|
@is_pipeline_test
|
|
@require_vision
|
|
def test_pipeline_zero_shot_image_classification(self):
|
|
self.run_task_tests(task="zero-shot-image-classification")
|
|
|
|
@is_pipeline_test
|
|
@require_vision
|
|
@require_torch
|
|
def test_pipeline_zero_shot_object_detection(self):
|
|
self.run_task_tests(task="zero-shot-object-detection")
|
|
|
|
# This contains the test cases to be skipped without model architecture being involved.
|
|
def is_pipeline_test_to_skip(
|
|
self, pipeline_test_casse_name, config_class, model_architecture, tokenizer_name, processor_name
|
|
):
|
|
"""Skip some tests based on the classes or their names without the instantiated objects.
|
|
|
|
This is to avoid calling `from_pretrained` (so reducing the runtime) if we already know the tests will fail.
|
|
"""
|
|
# No fix is required for this case.
|
|
if (
|
|
pipeline_test_casse_name == "DocumentQuestionAnsweringPipelineTests"
|
|
and tokenizer_name is not None
|
|
and not tokenizer_name.endswith("Fast")
|
|
):
|
|
# `DocumentQuestionAnsweringPipelineTests` requires a fast tokenizer.
|
|
return True
|
|
|
|
return False
|
|
|
|
def is_pipeline_test_to_skip_more(self, pipeline_test_casse_name, config, model, tokenizer, processor): # noqa
|
|
"""Skip some more tests based on the information from the instantiated objects."""
|
|
# No fix is required for this case.
|
|
if (
|
|
pipeline_test_casse_name == "QAPipelineTests"
|
|
and tokenizer is not None
|
|
and getattr(tokenizer, "pad_token", None) is None
|
|
and not tokenizer.__class__.__name__.endswith("Fast")
|
|
):
|
|
# `QAPipelineTests` doesn't work with a slow tokenizer that has no pad token.
|
|
return True
|
|
|
|
return False
|
|
|
|
|
|
def validate_test_components(test_case, task, model, tokenizer, processor):
|
|
# TODO: Move this to tiny model creation script
|
|
# head-specific (within a model type) necessary changes to the config
|
|
# 1. for `BlenderbotForCausalLM`
|
|
if model.__class__.__name__ == "BlenderbotForCausalLM":
|
|
model.config.encoder_no_repeat_ngram_size = 0
|
|
|
|
# TODO: Change the tiny model creation script: don't create models with problematic tokenizers
|
|
# Avoid `IndexError` in embedding layers
|
|
CONFIG_WITHOUT_VOCAB_SIZE = ["CanineConfig"]
|
|
if tokenizer is not None:
|
|
config_vocab_size = getattr(model.config, "vocab_size", None)
|
|
# For CLIP-like models
|
|
if config_vocab_size is None:
|
|
if hasattr(model.config, "text_config"):
|
|
config_vocab_size = getattr(model.config.text_config, "vocab_size", None)
|
|
elif hasattr(model.config, "text_encoder"):
|
|
config_vocab_size = getattr(model.config.text_encoder, "vocab_size", None)
|
|
|
|
if config_vocab_size is None and model.config.__class__.__name__ not in CONFIG_WITHOUT_VOCAB_SIZE:
|
|
raise ValueError(
|
|
"Could not determine `vocab_size` from model configuration while `tokenizer` is not `None`."
|
|
)
|