import torch import torch.distributed as dist from vlmeval.config import supported_VLM from vlmeval.utils import track_progress_rich from vlmeval.smp import * from vlmeval.dataset.utils import extract_answer FAIL_MSG = 'Failed to obtain answer via API.' def parse_args(): parser = argparse.ArgumentParser() parser.add_argument('--data', type=str, nargs='+', required=True) parser.add_argument('--model', type=str, nargs='+', required=True) parser.add_argument('--nproc', type=int, default=4, required=True) parser.add_argument('--verbose', action='store_true') args = parser.parse_args() return args # Only API model is accepted def infer_data_api(model, work_dir, model_name, dataset, index_set=None, api_nproc=4, ignore_failed=False): rank, world_size = get_rank_and_world_size() assert rank == 0 and world_size == 1 dataset_name = dataset.dataset_name data = dataset.data if index_set is not None: data = data[data['index'].isin(index_set)] model = supported_VLM[model_name]() if isinstance(model, str) else model assert getattr(model, 'is_api', False) if hasattr(model, 'set_dump_image'): model.set_dump_image(dataset.dump_image) lt, indices = len(data), list(data['index']) structs = [] for i in range(lt): item = data.iloc[i] if hasattr(model, 'use_custom_prompt') and model.use_custom_prompt(dataset_name): assert hasattr(model, 'build_prompt') struct = model.build_prompt(item, dataset=dataset_name) else: struct = dataset.build_prompt(item) structs.append(struct) out_file = f'{work_dir}/{model_name}_{dataset_name}_supp.pkl' # To reuse records in MMBench_V11 if dataset_name in ['MMBench', 'MMBench_CN']: v11_pred = f'{work_dir}/{model_name}_{dataset_name}_V11.xlsx' if osp.exists(v11_pred): try: reuse_inds = load('http://opencompass.openxlab.space/utils/mmb_reuse.pkl') data = load(v11_pred) ans_map = {x: y for x, y in zip(data['index'], data['prediction']) if x in reuse_inds} dump(ans_map, out_file) except Exception as err: print(type(err), err) res = {} if osp.exists(out_file): res = load(out_file) if ignore_failed: res = {k: v for k, v in res.items() if FAIL_MSG not in v} structs = [s for i, s in zip(indices, structs) if i not in res] indices = [i for i in indices if i not in res] gen_func = model.generate structs = [dict(message=struct, dataset=dataset_name) for struct in structs] if len(structs): track_progress_rich(gen_func, structs, nproc=api_nproc, chunksize=api_nproc, save=out_file, keys=indices) res = load(out_file) if index_set is not None: res = {k: v for k, v in res.items() if k in index_set} os.remove(out_file) return res def infer_data(model, model_name, work_dir, dataset, out_file, verbose=False, api_nproc=4): dataset_name = dataset.dataset_name prev_file = f'{work_dir}/{model_name}_{dataset_name}_PREV.pkl' res = load(prev_file) if osp.exists(prev_file) else {} if osp.exists(out_file): res.update(load(out_file)) rank, world_size = get_rank_and_world_size() sheet_indices = list(range(rank, len(dataset), world_size)) lt = len(sheet_indices) data = dataset.data.iloc[sheet_indices] data_indices = [i for i in data['index']] # If finished, will exit without building the model all_finished = True for i in range(lt): idx = data.iloc[i]['index'] if idx not in res: all_finished = False if all_finished: res = {k: res[k] for k in data_indices} dump(res, out_file) return # Data need to be inferred data = data[~data['index'].isin(res)] lt = len(data) model = supported_VLM[model_name]() if isinstance(model, str) else model is_api = getattr(model, 'is_api', False) if is_api: lt, indices = len(data), list(data['index']) supp = infer_data_api( model=model, work_dir=work_dir, model_name=model_name, dataset=dataset, index_set=set(indices), api_nproc=api_nproc) for idx in indices: assert idx in supp res.update(supp) res = {k: res[k] for k in data_indices} dump(res, out_file) return model else: model.set_dump_image(dataset.dump_image) for i in tqdm(range(lt)): idx = data.iloc[i]['index'] if idx in res: continue if hasattr(model, 'use_custom_prompt') and model.use_custom_prompt(dataset_name): struct = model.build_prompt(data.iloc[i], dataset=dataset_name) else: struct = dataset.build_prompt(data.iloc[i]) response = model.generate(message=struct, dataset=dataset_name) torch.cuda.empty_cache() if verbose: print(response, flush=True) res[idx] = response if (i + 1) % 10 == 0: dump(res, out_file) res = {k: res[k] for k in data_indices} dump(res, out_file) return model # A wrapper for infer_data, do the pre & post processing def infer_data_job(model, work_dir, model_name, dataset, verbose=False, api_nproc=4, ignore_failed=False): rank, world_size = get_rank_and_world_size() dataset_name = dataset.dataset_name result_file = osp.join(work_dir, f'{model_name}_{dataset_name}.xlsx') prev_file = f'{work_dir}/{model_name}_{dataset_name}_PREV.pkl' if osp.exists(result_file): if rank == 0: data = load(result_file) results = {k: v for k, v in zip(data['index'], data['prediction'])} if not ignore_failed: results = {k: v for k, v in results.items() if FAIL_MSG not in str(v)} dump(results, prev_file) if world_size > 1: dist.barrier() tmpl = osp.join(work_dir, '{}' + f'{world_size}_{dataset_name}.pkl') out_file = tmpl.format(rank) model = infer_data( model=model, work_dir=work_dir, model_name=model_name, dataset=dataset, out_file=out_file, verbose=verbose, api_nproc=api_nproc) if world_size > 1: dist.barrier() if rank == 0: data_all = {} for i in range(world_size): data_all.update(load(tmpl.format(i))) data = dataset.data for x in data['index']: assert x in data_all data['full_prediction'] = [str(data_all[x]) for x in data['index']] data['prediction'] = [extract_answer(x) for x in data['full_prediction']] if 'image' in data: data.pop('image') dump(data, result_file) for i in range(world_size): os.remove(tmpl.format(i)) if world_size > 1: dist.barrier() return model