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237 lines
11 KiB
Python
237 lines
11 KiB
Python
# Copyright 2026 the HuggingFace 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 shutil
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import unittest
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import numpy as np
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from transformers import Gemma4Processor
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from transformers.testing_utils import get_tests_dir, require_vision
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from transformers.utils import is_vision_available
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from ...test_processing_common import ProcessorTesterMixin
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if is_vision_available():
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pass
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SAMPLE_VOCAB = get_tests_dir("fixtures/test_sentencepiece.model")
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@require_vision
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class Gemma4ProcessorTest(ProcessorTesterMixin, unittest.TestCase):
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processor_class = Gemma4Processor
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video_unstructured_max_length = 570
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video_text_kwargs_max_length = 570
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video_text_kwargs_override_max_length = 570
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@classmethod
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def _setup_test_attributes(cls, processor):
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cls.image_token = processor.image_token
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cls.video_token = processor.video_token
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@classmethod
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def _setup_video_processor(cls):
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video_processor_class = cls._get_component_class_from_processor("video_processor")
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gemma4_video_processor_kwargs = {
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"patch_size": 28,
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"max_soft_tokens": 70,
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"pooling_kernel_size": 3,
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"num_frames": 2,
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}
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return video_processor_class(**gemma4_video_processor_kwargs)
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@classmethod
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def _setup_feature_extractor(cls):
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feature_extractor_class = cls._get_component_class_from_processor("feature_extractor")
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gemma4_feature_extractor_kwargs = {}
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return feature_extractor_class(**gemma4_feature_extractor_kwargs)
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@classmethod
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def _setup_image_processor(cls):
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image_processor_class = cls._get_component_class_from_processor("image_processor")
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gemma4_image_processor_kwargs = {
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"patch_size": 28,
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"max_soft_tokens": 70,
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"pooling_kernel_size": 3,
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}
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return image_processor_class(**gemma4_image_processor_kwargs)
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@classmethod
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def _setup_tokenizer(cls):
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tokenizer_class = cls._get_component_class_from_processor("tokenizer")
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extra_special_tokens = {
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"image_token": "<|image|>",
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"video_token": "<|video|>",
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"boi_token": "<start_of_image>",
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"eoi_token": "<end_of_image>",
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"audio_token": "<audio_soft_token>",
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"boa_token": "<start_of_audio>",
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"eoa_token": "<end_of_audio>",
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}
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tokenizer = tokenizer_class.from_pretrained(
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SAMPLE_VOCAB, keep_accents=True, extra_special_tokens=extra_special_tokens
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)
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tokenizer.pad_token_id = tokenizer.eos_token_id
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return tokenizer
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# Copied from tests.models.llava.test_processing_llava.LlavaProcessorTest.test_get_num_vision_tokens
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def test_get_num_vision_tokens(self):
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"Tests general functionality of the helper used internally in vLLM"
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processor = self.get_processor()
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output = processor._get_num_multimodal_tokens(image_sizes=[(100, 100), (300, 100), (500, 30)])
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self.assertTrue("num_image_tokens" in output)
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self.assertEqual(len(output["num_image_tokens"]), 3)
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self.assertTrue("num_image_patches" in output)
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self.assertEqual(len(output["num_image_patches"]), 3)
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@classmethod
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def tearDownClass(cls):
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shutil.rmtree(cls.tmpdirname, ignore_errors=True)
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@staticmethod
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def prepare_processor_dict():
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return {
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"chat_template": "{{ bos_token }}\n{%- if messages[0]['role'] == 'system' -%}\n {%- set first_user_prefix = messages[0]['content'][0]['text'] + '\n\n' -%}\n {%- set loop_messages = messages[1:] -%}\n{%- else -%}\n {%- set first_user_prefix = \"\" -%}\n {%- set loop_messages = messages -%}\n{%- endif -%}\n{%- for message in loop_messages -%}\n {%- if (message['role'] == 'user') != (loop.index0 % 2 == 0) -%}\n {{ raise_exception(\"Conversation roles must alternate user/assistant/user/assistant/...\") }}\n {%- endif -%}\n {%- if (message['role'] == 'assistant') -%}\n {%- set role = \"model\" -%}\n {%- else -%}\n {%- set role = message['role'] -%}\n {%- endif -%}\n {{ '<start_of_turn>' + role + '\n' + (first_user_prefix if loop.first else \"\") }}\n {%- if message['content'] is string -%}\n {{ message['content'] | trim }}\n {%- elif message['content'] is iterable -%}\n {%- for item in message['content'] -%}\n {%- if item['type'] == 'image' -%}\n {{ '<|image|>' }}\n {%- elif item['type'] == 'video' -%}\n{{ '<video_soft_token>' }}\n {%- elif item['type'] == 'text' -%}\n {{ item['text'] | trim }}\n {%- endif -%}\n {%- endfor -%}\n {%- else -%}\n {{ raise_exception(\"Invalid content type\") }}\n {%- endif -%}\n {{ '<end_of_turn>\n' }}\n{%- endfor -%}\n{%- if add_generation_prompt -%}\n {{'<start_of_turn>model\n'}}\n{%- endif -%}\n", "image_seq_length": 3,
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} # fmt: skip
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# Override as Gemma4 needs images to be an explicitly nested batch
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def prepare_image_inputs(self, batch_size: int | None = None):
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"""This function prepares a list of PIL images for testing"""
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images = super().prepare_image_inputs(batch_size)
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if isinstance(images, (list, tuple)):
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images = [[image] for image in images]
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return images
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def test_text_with_image_tokens(self):
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feature_extractor = self.get_component("feature_extractor")
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image_processor = self.get_component("image_processor")
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video_processor = self.get_component("video_processor")
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tokenizer = self.get_component("tokenizer")
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processor = self.processor_class(
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feature_extractor=feature_extractor,
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tokenizer=tokenizer,
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image_processor=image_processor,
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video_processor=video_processor,
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)
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text_multi_images = f"{processor.image_token}{processor.image_token}Dummy text!"
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text_single_image = f"{processor.image_token}Dummy text!"
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image = self.prepare_image_inputs()
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# We can't be sure what is users intention: if user wants one image per text OR two images for first text and no image for second text
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with self.assertRaises(ValueError):
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_ = processor(text=[text_single_image, text_single_image], images=[image, image], return_tensors="np")
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# The users is expected to be explicit about which image belong to which text by nesting the images list
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out_multiimages = processor(text=text_multi_images, images=[image, image], return_tensors="np")
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out_batch_oneimage = processor(
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text=[text_single_image, text_single_image], images=[[image], [image]], return_tensors="np"
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)
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self.assertListEqual(
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out_batch_oneimage[self.images_input_name].tolist(), out_multiimages[self.images_input_name].tolist()
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)
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def test_special_mm_token_truncation(self):
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"""Tests that special vision tokens do not get truncated when `truncation=True` is set."""
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processor = self.get_processor()
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input_str = self.prepare_text_inputs(batch_size=2, modalities="image")
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image_input = self.prepare_image_inputs(batch_size=2)
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_ = processor(
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text=input_str,
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images=image_input,
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return_tensors="pt",
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truncation=None,
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padding=True,
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)
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with self.assertRaises(ValueError):
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_ = processor(
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text=input_str,
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images=image_input,
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return_tensors="pt",
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truncation=True,
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padding=True,
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max_length=5,
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)
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def test_get_num_multimodal_tokens_matches_processor_call(self):
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"Tests that the helper used internally in vLLM works correctly"
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processor = self.get_processor()
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if processor.tokenizer.pad_token_id is None:
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processor.tokenizer.pad_token_id = processor.tokenizer.eos_token_id
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if not hasattr(processor, "_get_num_multimodal_tokens"):
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self.skipTest("Processor doesn't support `_get_num_multimodal_tokens` yet")
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image_sizes = [(100, 100), (300, 100), (500, 30), (213, 167)]
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# Overwritten because Gemma3 needs nested image inputs
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image_inputs = []
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for h, w in image_sizes:
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image_inputs.append([np.random.randint(255, size=(h, w, 3), dtype=np.uint8)])
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text = [f"This is an image {getattr(self, 'image_token', '')}"] * len(image_inputs)
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inputs = processor(
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text=text, images=image_inputs, padding=True, return_mm_token_type_ids=True, return_tensors="pt"
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)
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if "mm_token_type_ids" not in inputs:
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self.skipTest("Processor doesn't support `mm_token_type_ids`")
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num_image_tokens_from_call = inputs.mm_token_type_ids.sum(-1).tolist()
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num_image_tokens_from_helper = processor._get_num_multimodal_tokens(image_sizes=image_sizes)
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self.assertListEqual(num_image_tokens_from_call, num_image_tokens_from_helper["num_image_tokens"])
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def test_get_num_audio_tokens(self):
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"""Tests the audio path of the helper used internally in vLLM."""
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processor = self.get_processor()
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if not hasattr(processor, "_compute_audio_num_tokens") or processor.audio_token is None:
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self.skipTest("Processor doesn't support audio token counting")
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# The golden counts are keyed on raw sample counts and assume 16 kHz framing
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# (frame_length=320, hop_length=160 = round(16000 * {20, 10} ms)). Those framing
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# params are derived from the feature extractor's sampling_rate and, because of
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# integer rounding, are not rate-invariant -- so pin a 16 kHz feature extractor
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# here instead of depending on (and asserting) the class default.
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processor.feature_extractor = type(processor.feature_extractor)(sampling_rate=16000)
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# {num_samples (at 16 kHz): expected_audio_tokens}. Some samples diverge from the naive
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# ceil(duration_ms / 40ms) shortcut for each length -- it disagrees with the real
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# arithmetic for most entries except for the 3s/40s ones.
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expected_num_tokens = {
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38560: 60, # 2.41s
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48000: 75, # 3.00s
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48800: 76, # 3.05s
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99360: 155, # 6.21s
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640000: 750, # 40s
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}
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audio_lengths = list(expected_num_tokens)
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num_from_helper = processor._get_num_multimodal_tokens(audio_lengths=audio_lengths)["num_audio_tokens"]
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self.assertListEqual(num_from_helper, list(expected_num_tokens.values()))
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@unittest.skip("This test seems to be loading a different video, check for all models and fix")
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def test_apply_chat_template_video_frame_sampling(self):
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pass
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