from opencompass.multimodal.models.qwen import QwenVLChatVQAPromptConstructor # dataloader settings val_pipeline = [ dict(type='mmpretrain.LoadImageFromFile'), dict(type='mmpretrain.ToPIL', to_rgb=True), dict(type='mmpretrain.torchvision/Resize', size=(448, 448), interpolation=3), dict(type='mmpretrain.torchvision/ToTensor'), dict(type='mmpretrain.torchvision/Normalize', mean=(0.48145466, 0.4578275, 0.40821073), std=(0.26862954, 0.26130258, 0.27577711)), dict( type='mmpretrain.PackInputs', algorithm_keys=['question', 'gt_answer', 'gt_answer_weight'], meta_keys=['question_id', 'image_id'], ) ] dataset = dict( type='mmpretrain.COCOVQA', data_root='data/coco', data_prefix='images/val2014', question_file='annotations/v2_OpenEnded_mscoco_val2014_questions.json', ann_file='annotations/v2_mscoco_val2014_annotations.json', pipeline=val_pipeline) qwen_vqav2_dataloader = dict(batch_size=1, num_workers=4, dataset=dataset, collate_fn=dict(type='pseudo_collate'), sampler=dict(type='DefaultSampler', shuffle=False)) # model settings qwen_vqav2_model = dict( type='qwen-vl-chat', pretrained_path='Qwen/Qwen-VL-Chat', # or Huggingface repo id prompt_constructor=dict(type=QwenVLChatVQAPromptConstructor) ) # evaluation settings qwen_vqav2_evaluator = [dict(type='mmpretrain.VQAAcc')]