from typing import List, Union from sglang.srt.managers.schedule_batch import MultimodalProcessorOutput from sglang.srt.models.mllama4 import Llama4ForConditionalGeneration from sglang.srt.multimodal.processors.base_processor import ( BaseMultimodalProcessor, MultimodalSpecialTokens, ) class Mllama4ImageProcessor(BaseMultimodalProcessor): models = [Llama4ForConditionalGeneration] def __init__(self, hf_config, server_args, _processor, *args, **kwargs): super().__init__(hf_config, server_args, _processor, *args, **kwargs) self.vision_config = hf_config.vision_config self.text_config = hf_config.text_config self.IM_START_TOKEN_ID = hf_config.boi_token_index self.IM_END_TOKEN_ID = hf_config.eoi_token_index self.IM_TOKEN_ID = hf_config.image_token_index self.mm_tokens = MultimodalSpecialTokens( image_token=_processor.image_token, image_token_id=self.IM_TOKEN_ID, ).build(_processor) async def process_mm_data_async( self, image_data: List[Union[str, bytes]], input_text, *args, **kwargs, ): base_output = await self.load_mm_data( prompt=input_text, image_data=image_data, multimodal_tokens=self.mm_tokens, ) # Process the prompt and images mm_items, input_ids, _ = self.process_and_combine_mm_data( base_output, self.mm_tokens ) return MultimodalProcessorOutput( input_ids=input_ids.tolist(), mm_items=mm_items, im_start_id=self.IM_START_TOKEN_ID, im_end_id=self.IM_END_TOKEN_ID, im_token_id=self.IM_TOKEN_ID, )