# Copyright (c) ModelScope Contributors. All rights reserved. import sys from functools import wraps from transformers import AutoModel, PretrainedConfig, PreTrainedModel from swift.template import TemplateType from swift.utils import Processor, git_clone_github, safe_snapshot_download from ..constant import MLLMModelType from ..model_arch import ModelArch from ..model_meta import Model, ModelGroup, ModelMeta from ..patcher import patch_output_clone from ..register import ModelLoader, register_model class GotOCR2Loader(ModelLoader): def get_model(self, model_dir: str, *args, **kwargs) -> PreTrainedModel: self.auto_model_cls = AutoModel return super().get_model(model_dir, *args, **kwargs) register_model( ModelMeta( MLLMModelType.got_ocr2, [ ModelGroup([ Model('stepfun-ai/GOT-OCR2_0', 'stepfun-ai/GOT-OCR2_0'), ]), ], GotOCR2Loader, template=TemplateType.got_ocr2, model_arch=ModelArch.got_ocr2, architectures=['GOTQwenForCausalLM'], tags=['vision'])) class GotOCR2HfLoader(ModelLoader): def get_model(self, model_dir: str, *args, **kwargs) -> PreTrainedModel: from transformers.models.got_ocr2 import GotOcr2ForConditionalGeneration GotOcr2ForConditionalGeneration._no_split_modules = ['GotOcr2VisionLayer'] return super().get_model(model_dir, *args, **kwargs) register_model( ModelMeta( MLLMModelType.got_ocr2_hf, [ ModelGroup([ Model('stepfun-ai/GOT-OCR-2.0-hf', 'stepfun-ai/GOT-OCR-2.0-hf'), ]), ], GotOCR2HfLoader, template=TemplateType.got_ocr2_hf, model_arch=ModelArch.llava_hf, architectures=['GotOcr2ForConditionalGeneration'], tags=['vision'])) class StepAudioLoader(ModelLoader): def get_model(self, model_dir: str, *args, **kwargs) -> PreTrainedModel: local_repo_path = self.local_repo_path if not local_repo_path: local_repo_path = git_clone_github('https://github.com/stepfun-ai/Step-Audio.git') sys.path.append(local_repo_path) from tokenizer import StepAudioTokenizer encoder_path = safe_snapshot_download('stepfun-ai/Step-Audio-Tokenizer', check_local=True) model = super().get_model(model_dir, *args, **kwargs) model.encoder = StepAudioTokenizer(encoder_path) # from tts import StepAudioTTS # if not os.path.exists('speakers'): # shutil.copytree(os.path.join(local_repo_path, 'speakers'), 'speakers') # decoder_path = safe_snapshot_download('stepfun-ai/Step-Audio-TTS-3B', check_local=True) # model.decoder = StepAudioTTS(decoder_path, model.encoder) return model register_model( ModelMeta( MLLMModelType.step_audio, [ ModelGroup([ Model('stepfun-ai/Step-Audio-Chat', 'stepfun-ai/Step-Audio-Chat'), ]), ], StepAudioLoader, template=TemplateType.step_audio, architectures=['Step1ForCausalLM'], requires=['funasr', 'sox', 'conformer', 'openai-whisper', 'librosa'], tags=['audio'])) def _patch_step_audio2_mini(model): if hasattr(model.__class__, 'origin_forward'): return model.__class__.origin_forward = model.__class__.forward @wraps(model.__class__.origin_forward) def _forward(self, *args, **kwargs): labels = kwargs.get('labels') output = self.origin_forward(*args, **kwargs) if labels is not None and output.loss is None: output['loss'] = self.loss_function( logits=output.logits, labels=labels, vocab_size=self.config.get_text_config().vocab_size) return output model.__class__.forward = _forward class StepAudio2MiniLoader(ModelLoader): def get_model(self, model_dir: str, *args, **kwargs) -> PreTrainedModel: model = super().get_model(model_dir, *args, **kwargs) patch_output_clone(model.model.embed_tokens) _patch_step_audio2_mini(model) return model register_model( ModelMeta( MLLMModelType.step_audio2_mini, [ModelGroup([ Model('stepfun-ai/Step-Audio-2-mini', 'stepfun-ai/Step-Audio-2-mini'), ])], StepAudio2MiniLoader, template=TemplateType.step_audio2_mini, model_arch=ModelArch.step_audio2_mini, architectures=['StepAudio2ForCausalLM'], requires=['transformers==4.53.3', 'torchaudio', 'librosa'], tags=['audio'], )) class Step3VLLoader(ModelLoader): def get_config(self, model_dir: str) -> PretrainedConfig: config = super().get_config(model_dir) config.vocab_size = config.text_config.vocab_size return config def get_model(self, model_dir: str, config: PretrainedConfig, processor: Processor, model_kwargs) -> PreTrainedModel: key_mapping = { '^vision_model': 'model.vision_model', r'^model(?!\.(language_model|vision_model))': 'model.language_model', 'vit_large_projector': 'model.vit_large_projector', } model_kwargs = model_kwargs.copy() model_kwargs['key_mapping'] = key_mapping return super().get_model(model_dir, config, processor, model_kwargs) register_model( ModelMeta( MLLMModelType.step3_vl, [ ModelGroup([ Model('stepfun-ai/Step3-VL-10B-Base', 'stepfun-ai/Step3-VL-10B-Base'), Model('stepfun-ai/Step3-VL-10B', 'stepfun-ai/Step3-VL-10B'), ]) ], Step3VLLoader, template=TemplateType.step3_vl, model_arch=ModelArch.step3_vl, architectures=['StepVLForConditionalGeneration'], requires=['transformers>=4.57.0'], tags=['vision'], ))