Fixing issue where generic model types wouldn't load properly with the pipeline (#18392)
* Adding a better error message when the model is improperly configured within transformers. * Update src/transformers/pipelines/__init__.py * Black version. * Overriding task aliases so that tokenizer+feature_extractor values are correct. * Fixing task aliases by overriding their names early * X. * Fixing feature-extraction. * black again. * Normalizing `translation` too. * Fixing last few corner cases. translation need to use its non normalized name (translation_XX_to_YY, so that the task_specific_params are correctly overloaded). This can be removed and cleaned up in a later PR. `speech-encode-decoder` actually REQUIRES to pass a `tokenizer` manually so the error needs to be discarded when the `tokenizer` is already there. * doc-builder fix. * Fixing the real issue. * Removing dead code. * Do not import the actual config classes.
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@@ -311,6 +311,11 @@ SUPPORTED_TASKS = {
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NO_FEATURE_EXTRACTOR_TASKS = set()
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NO_TOKENIZER_TASKS = set()
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# Those model configs are special, they are generic over their task, meaning
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# any tokenizer/feature_extractor might be use for a given model so we cannot
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# use the statically defined TOKENIZER_MAPPING and FEATURE_EXTRACTOR_MAPPING to
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# see if the model defines such objects or not.
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MULTI_MODEL_CONFIGS = {"VisionTextDualEncoderConfig", "SpeechEncoderDecoderConfig"}
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for task, values in SUPPORTED_TASKS.items():
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if values["type"] == "text":
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NO_FEATURE_EXTRACTOR_TASKS.add(task)
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@@ -380,8 +385,9 @@ def check_task(task: str) -> Tuple[Dict, Any]:
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- `"zero-shot-image-classification"`
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Returns:
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(task_defaults`dict`, task_options: (`tuple`, None)) The actual dictionary required to initialize the pipeline
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and some extra task options for parametrized tasks like "translation_XX_to_YY"
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(normalized_task: `str`, task_defaults: `dict`, task_options: (`tuple`, None)) The normalized task name
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(removed alias and options). The actual dictionary required to initialize the pipeline and some extra task
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options for parametrized tasks like "translation_XX_to_YY"
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"""
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@@ -614,7 +620,7 @@ def pipeline(
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model, module_file + ".py", class_name, revision=revision, use_auth_token=use_auth_token
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)
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else:
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targeted_task, task_options = check_task(task)
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normalized_task, targeted_task, task_options = check_task(task)
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if pipeline_class is None:
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pipeline_class = targeted_task["impl"]
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@@ -667,12 +673,36 @@ def pipeline(
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load_tokenizer = type(model_config) in TOKENIZER_MAPPING or model_config.tokenizer_class is not None
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load_feature_extractor = type(model_config) in FEATURE_EXTRACTOR_MAPPING or feature_extractor is not None
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if (
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tokenizer is None
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and not load_tokenizer
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and normalized_task not in NO_TOKENIZER_TASKS
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# Using class name to avoid importing the real class.
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and model_config.__class__.__name__ in MULTI_MODEL_CONFIGS
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):
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# This is a special category of models, that are fusions of multiple models
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# so the model_config might not define a tokenizer, but it seems to be
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# necessary for the task, so we're force-trying to load it.
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load_tokenizer = True
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if (
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feature_extractor is None
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and not load_feature_extractor
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and normalized_task not in NO_FEATURE_EXTRACTOR_TASKS
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# Using class name to avoid importing the real class.
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and model_config.__class__.__name__ in MULTI_MODEL_CONFIGS
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):
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# This is a special category of models, that are fusions of multiple models
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# so the model_config might not define a tokenizer, but it seems to be
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# necessary for the task, so we're force-trying to load it.
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load_feature_extractor = True
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if task in NO_TOKENIZER_TASKS:
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# These will never require a tokenizer.
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# the model on the other hand might have a tokenizer, but
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# the files could be missing from the hub, instead of failing
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# on such repos, we just force to not load it.
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load_tokenizer = False
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if task in NO_FEATURE_EXTRACTOR_TASKS:
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load_feature_extractor = False
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@@ -630,7 +630,6 @@ class PipedPipelineDataFormat(PipelineDataFormat):
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for line in sys.stdin:
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# Split for multi-columns
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if "\t" in line:
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line = line.split("\t")
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if self.column:
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# Dictionary to map arguments
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@@ -752,7 +751,6 @@ class Pipeline(_ScikitCompat):
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binary_output: bool = False,
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**kwargs,
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):
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if framework is None:
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framework, model = infer_framework_load_model(model, config=model.config)
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@@ -1123,18 +1121,19 @@ class PipelineRegistry:
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supported_task.sort()
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return supported_task
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def check_task(self, task: str) -> Tuple[Dict, Any]:
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def check_task(self, task: str) -> Tuple[str, Dict, Any]:
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if task in self.task_aliases:
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task = self.task_aliases[task]
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if task in self.supported_tasks:
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targeted_task = self.supported_tasks[task]
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return targeted_task, None
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return task, targeted_task, None
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if task.startswith("translation"):
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tokens = task.split("_")
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if len(tokens) == 4 and tokens[0] == "translation" and tokens[2] == "to":
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targeted_task = self.supported_tasks["translation"]
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return targeted_task, (tokens[1], tokens[3])
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task = "translation"
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return task, targeted_task, (tokens[1], tokens[3])
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raise KeyError(f"Invalid translation task {task}, use 'translation_XX_to_YY' format")
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raise KeyError(
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@@ -141,15 +141,8 @@ class AutomaticSpeechRecognitionPipelineTests(unittest.TestCase, metaclass=Pipel
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@require_torch
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def test_small_model_pt_seq2seq(self):
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model_id = "hf-internal-testing/tiny-random-speech-encoder-decoder"
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tokenizer = AutoTokenizer.from_pretrained(model_id)
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feature_extractor = AutoFeatureExtractor.from_pretrained(model_id)
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speech_recognizer = pipeline(
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task="automatic-speech-recognition",
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model=model_id,
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tokenizer=tokenizer,
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feature_extractor=feature_extractor,
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model="hf-internal-testing/tiny-random-speech-encoder-decoder",
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framework="pt",
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)
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