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| import string |
| import math |
| import json |
| from itertools import chain |
| import os |
|
|
| import torch |
| import torch.distributed as dist |
|
|
| from data import data_utils |
| from tasks.nlg_tasks.gigaword import fix_tokenization |
|
|
|
|
| def get_symbols_to_strip_from_output(generator): |
| if hasattr(generator, "symbols_to_strip_from_output"): |
| return generator.symbols_to_strip_from_output |
| else: |
| return {generator.bos, generator.eos} |
|
|
|
|
| def decode_fn(x, tgt_dict, bpe, generator, tokenizer=None): |
| x = tgt_dict.string(x.int().cpu(), extra_symbols_to_ignore=get_symbols_to_strip_from_output(generator)) |
| if bpe is not None: |
| x = bpe.decode(x) |
| if tokenizer is not None: |
| x = tokenizer.decode(x) |
| return x |
|
|
|
|
| def eval_caption(task, generator, models, sample, **kwargs): |
| transtab = str.maketrans({key: None for key in string.punctuation}) |
| hypos = task.inference_step(generator, models, sample) |
| results = [] |
| for i, sample_id in enumerate(sample["id"].tolist()): |
| detok_hypo_str = decode_fn(hypos[i][0]["tokens"], task.tgt_dict, task.bpe, generator) |
| results.append({"image_id": str(sample_id), "caption": detok_hypo_str.translate(transtab).strip()}) |
| return results, None |
|
|
|
|
| def eval_vqa_gen(task, generator, models, sample, **kwargs): |
| if kwargs['beam_search_vqa_eval']: |
| hypos = task.inference_step(generator, models, sample, prefix_tokens=sample['prefix_tokens']) |
| results = [] |
| for i, sample_id in enumerate(sample["id"].tolist()): |
| prefix_len = sample['prefix_tokens'][i].ne(1).sum().item() |
| detok_hypo_str = decode_fn(hypos[i][0]["tokens"][prefix_len:], task.tgt_dict, task.bpe, generator) |
| results.append({"question_id": int(sample_id), "answer": detok_hypo_str.strip()}) |
| scores = [ref_dict.get(result['answer'], 0) for ref_dict, result in zip(sample['ref_dict'], results)] |
| return results, scores |
|
|
| encoder_out = models[0].encoder( |
| sample["net_input"]["src_tokens"], |
| src_lengths=sample["net_input"]["src_lengths"], |
| patch_images=sample["net_input"]["patch_images"], |
| patch_masks=sample["net_input"]["patch_masks"] |
| ) |
| device = sample["net_input"]["src_tokens"].device |
| eos_item = torch.tensor([task.src_dict.eos()]) |
| pad = task.src_dict.pad() |
| valid_result = [] |
| for valid_answers, valid_constraint_masks in zip(task.valid_answers_list, task.valid_constraint_masks_list): |
| valid_size = len(valid_answers) |
| valid_tgt_items = [ |
| torch.cat([torch.tensor(decoder_prompt[1:]), valid_answer, eos_item]) |
| for decoder_prompt in sample["decoder_prompts"] for valid_answer in valid_answers |
| ] |
| valid_prev_items = [ |
| torch.cat([torch.tensor(decoder_prompt), valid_answer]) |
| for decoder_prompt in sample["decoder_prompts"] for valid_answer in valid_answers |
| ] |
| valid_constraint_mask_items = [ |
| torch.cat( |
| [torch.zeros(len(decoder_prompt) - 1, valid_constraint_mask.size(1)).bool(), valid_constraint_mask], |
| dim=0 |
| ) |
| for decoder_prompt in sample["decoder_prompts"] for valid_constraint_mask in valid_constraint_masks |
| ] |
| valid_tgt = data_utils.collate_tokens(valid_tgt_items, pad_idx=pad).to(device) |
| valid_prev_output = data_utils.collate_tokens(valid_prev_items, pad_idx=pad).to(device) |
| valid_constraint_masks = data_utils.collate_tokens(valid_constraint_mask_items, pad_idx=pad).to(device) |
|
|
| new_encoder_out = {} |
| new_encoder_out["encoder_out"] = [ |
| encoder_out["encoder_out"][0].repeat_interleave(valid_size, dim=1) |
| ] |
| new_encoder_out["encoder_padding_mask"] = [ |
| encoder_out["encoder_padding_mask"][0].repeat_interleave(valid_size, dim=0) |
| ] |
| new_encoder_out["position_embeddings"] = [ |
| encoder_out["position_embeddings"][0].repeat_interleave(valid_size, dim=0) |
| ] |
|
|
| decoder_out = models[0].decoder(valid_prev_output, encoder_out=new_encoder_out) |
| decoder_out[0].masked_fill_(~valid_constraint_masks, -math.inf) |
| lprobs = models[0].get_normalized_probs(decoder_out, log_probs=True) |
| scores = lprobs.gather(dim=-1, index=valid_tgt.unsqueeze(-1)).squeeze(-1) |
| scores = scores.masked_fill(valid_tgt.eq(task.tgt_dict.pad()), 0) |
| scores = scores.masked_fill((~valid_constraint_masks).all(2), 0) |
| scores = scores.sum(1) |
| scores = scores.view(-1, valid_size) |
| valid_result.append(scores) |
| valid_result = torch.cat(valid_result, dim=-1) |
| predicts = valid_result.argmax(1).tolist() |
| hyps = [task.index2ans[predict_index] for predict_index in predicts] |
| results = [{"question_id": int(id), "answer": hyp} for id, hyp in zip(sample["id"].tolist(), hyps)] |
| scores = [ref_dict.get(hyp, 0) for ref_dict, hyp in zip(sample['ref_dict'], hyps)] |
| return results, scores |
|
|
|
|
| def eval_refcoco(task, generator, models, sample, **kwargs): |
| def _calculate_ap_score(hyps, refs, thresh=0.5): |
| interacts = torch.cat( |
| [torch.where(hyps[:, :2] < refs[:, :2], refs[:, :2], hyps[:, :2]), |
| torch.where(hyps[:, 2:] < refs[:, 2:], hyps[:, 2:], refs[:, 2:])], |
| dim=1 |
| ) |
| area_predictions = (hyps[:, 2] - hyps[:, 0]) * (hyps[:, 3] - hyps[:, 1]) |
| area_targets = (refs[:, 2] - refs[:, 0]) * (refs[:, 3] - refs[:, 1]) |
| interacts_w = interacts[:, 2] - interacts[:, 0] |
| interacts_h = interacts[:, 3] - interacts[:, 1] |
| area_interacts = interacts_w * interacts_h |
| ious = area_interacts / (area_predictions + area_targets - area_interacts + 1e-6) |
| return ((ious >= thresh) & (interacts_w > 0) & (interacts_h > 0)).float() |
|
|
| gen_out = task.inference_step(generator, models, sample) |
| hyps = [] |
| for i in range(len(gen_out)): |
| hyps.append(gen_out[i][0]["tokens"][:-1] - len(task.src_dict) + task.cfg.num_bins) |
| hyps = torch.stack(hyps, dim=0) |
| hyps = hyps / (task.cfg.num_bins - 1) * task.cfg.max_image_size |
| hyps[:, ::2] /= sample['w_resize_ratios'].unsqueeze(1) |
| hyps[:, 1::2] /= sample['h_resize_ratios'].unsqueeze(1) |
|
|
| results = [ |
| {"uniq_id": sample_id, |
| "box": [hyps[i][0].item(), hyps[i][1].item(), hyps[i][2].item(), hyps[i][3].item()]} |
| for i, sample_id in enumerate(sample["id"].tolist()) |
| ] |
| scores = _calculate_ap_score(hyps, sample['region_coords'].float()) |
| return results, scores |
|
|
|
|
| def eval_snli_ve(task, generator, models, sample, **kwargs): |
| encoder_out = models[0].encoder( |
| sample["net_input"]["src_tokens"], |
| src_lengths=sample["net_input"]["src_lengths"], |
| patch_images=sample["net_input"]["patch_images"], |
| patch_masks=sample["net_input"]["patch_masks"] |
| ) |
| device = sample["net_input"]["src_tokens"].device |
| eos_item = torch.tensor([task.src_dict.eos()]) |
| pad = task.src_dict.pad() |
| valid_result = [] |
| for valid_answers, valid_constraint_masks in zip(task.valid_answers_list, task.valid_constraint_masks_list): |
| valid_size = len(valid_answers) |
| valid_tgt_items = [ |
| torch.cat([torch.tensor(decoder_prompt[1:]), valid_answer, eos_item]) |
| for decoder_prompt in sample["decoder_prompts"] for valid_answer in valid_answers |
| ] |
| valid_prev_items = [ |
| torch.cat([torch.tensor(decoder_prompt), valid_answer]) |
| for decoder_prompt in sample["decoder_prompts"] for valid_answer in valid_answers |
| ] |
| valid_constraint_mask_items = [ |
| torch.cat( |
| [torch.zeros(len(decoder_prompt) - 1, valid_constraint_mask.size(1)).bool(), valid_constraint_mask], |
| dim=0 |
| ) |
| for decoder_prompt in sample["decoder_prompts"] for valid_constraint_mask in valid_constraint_masks |
| ] |
| valid_tgt = data_utils.collate_tokens(valid_tgt_items, pad_idx=pad).to(device) |
| valid_prev_output = data_utils.collate_tokens(valid_prev_items, pad_idx=pad).to(device) |
| valid_constraint_masks = data_utils.collate_tokens(valid_constraint_mask_items, pad_idx=pad).to(device) |
|
|
| new_encoder_out = {} |
| new_encoder_out["encoder_out"] = [ |
| encoder_out["encoder_out"][0].repeat_interleave(valid_size, dim=1) |
| ] |
| new_encoder_out["encoder_padding_mask"] = [ |
| encoder_out["encoder_padding_mask"][0].repeat_interleave(valid_size, dim=0) |
| ] |
| new_encoder_out["position_embeddings"] = [ |
| encoder_out["position_embeddings"][0].repeat_interleave(valid_size, dim=0) |
| ] |
|
|
| decoder_out = models[0].decoder(valid_prev_output, encoder_out=new_encoder_out) |
| decoder_out[0].masked_fill_(~valid_constraint_masks, -math.inf) |
| lprobs = models[0].get_normalized_probs(decoder_out, log_probs=True) |
| scores = lprobs.gather(dim=-1, index=valid_tgt.unsqueeze(-1)).squeeze(-1) |
| scores = scores.masked_fill(valid_tgt.eq(task.tgt_dict.pad()), 0) |
| scores = scores.masked_fill((~valid_constraint_masks).all(2), 0) |
| scores = scores.sum(1) |
| scores = scores.view(-1, valid_size) |
| valid_result.append(scores) |
| valid_result = torch.cat(valid_result, dim=-1) |
| predicts = valid_result.argmax(1).tolist() |
| hyps = [task.index2ans[predict_index] for predict_index in predicts] |
| results = [{"uniq_id": id, "answer": hyp} for id, hyp in zip(sample["id"].tolist(), hyps)] |
| scores = [ref_dict.get(hyp, 0) for ref_dict, hyp in zip(sample['ref_dict'], hyps)] |
| return results, scores |
|
|
|
|
| def eval_image_gen(task, generator, models, sample, **kwargs): |
| hypos, _ = task.inference_image(generator, sample, models) |
| tokens = sample['net_input']['src_tokens'][0].view(-1).tolist() |
| caption = task.bpe.decode(task.tgt_dict.string([token for token in tokens if token >= 4]))[ |
| 38:].replace('/', '') |
|
|
| text_similarity_score, indices = task.compute_text_similarity(hypos, caption, |
| sample['net_input']['src_tokens'].device) |
| results = [] |
| for i, indice in enumerate(indices): |
| results.append({"sample_id": str(sample["id"][0]), "score": text_similarity_score[i], "image": hypos[indice]}) |
| scores = [max(text_similarity_score).item()] |
| sorted_hyps = [hypos[indice] for indice in indices] |
| |
| if task.cfg.gen_images_path: |
| caption_tokens = sample['net_input']['src_tokens'][0].view(-1).tolist() |
| caption = task.bpe.decode(task.tgt_dict.string([token for token in caption_tokens if token >= 4]))[ |
| 38:].replace('/', '') |
| task.dump_images(sorted_hyps, text=caption, path=os.path.join(task.cfg.gen_images_path, 'all_results')) |
| task.dump_images(sorted_hyps, text=caption, path=os.path.join(task.cfg.gen_images_path, 'top1'), topk=1) |
|
|
| return results, scores |
|
|
|
|
| def eval_glue(task, generator, models, sample, **kwargs): |
| net_output = models[0](**sample["net_input"]) |
| net_output[0].masked_fill_(~sample["constraint_masks"], -math.inf) |
| last_token_ids = sample["net_input"]["prev_output_tokens"].ne(task.src_dict.pad()).sum(1, keepdim=True) - 1 |
| logits = net_output[0].gather(1, last_token_ids.unsqueeze(2).expand(-1, -1, net_output[0].size(2))) |
| logits = logits.squeeze(1) |
| predicts = logits.argmax(1).tolist() |
| hyps = [task.bpe.decode(task.src_dict[predict]).strip() for predict in predicts] |
| results = [{"hyp": hyp, "ref": ref_dict.keys()[0]} for hyp, ref_dict in zip(hyps, sample['ref_dict'])] |
| return results, None |
|
|
|
|
| def eval_gigaword(task, generator, models, sample, **kwargs): |
| gen_out = task.inference_step(generator, models, sample) |
| hyps, refs = [], [] |
| results = [] |
| for i in range(len(gen_out)): |
| hyp = decode_fn(gen_out[i][0]["tokens"], task.tgt_dict, task.bpe, generator).lower().strip() |
| hyp = fix_tokenization(hyp).replace('1', '#') |
| ref = sample['target_strs'][i] |
| hyps.append(hyp) |
| refs.append(ref) |
| results.append({"hyp": hyp, "ref": ref}) |
| return results, None |
|
|
|
|
| def eval_image_classify(task, generator, models, sample, **kwargs): |
| batch_size = sample["net_input"]["src_tokens"].size(0) |
| encoder_out = models[0].encoder( |
| sample["net_input"]["src_tokens"], |
| src_lengths=sample["net_input"]["src_lengths"], |
| patch_images=sample["net_input"]["patch_images"], |
| patch_masks=sample["net_input"]["patch_masks"] |
| ) |
| device = sample["net_input"]["src_tokens"].device |
| valid_result = [] |
| for valid_tgt, valid_prev_output, valid_constraint_masks in zip(task.valid_tgt_list, |
| task.valid_prev_output_list, |
| task.valid_constraint_masks_list): |
| valid_tgt_size = valid_tgt.size(0) |
| valid_tgt = valid_tgt.repeat(batch_size, 1).to(device) |
| valid_prev_output = valid_prev_output.repeat(batch_size, 1).to(device) |
| valid_constraint_masks = valid_constraint_masks.repeat(batch_size, 1, 1).to(device) |
| new_encoder_out = {} |
| new_encoder_out["encoder_out"] = [ |
| encoder_out["encoder_out"][0].repeat_interleave(valid_tgt_size, dim=1) |
| ] |
| new_encoder_out["encoder_padding_mask"] = [ |
| encoder_out["encoder_padding_mask"][0].repeat_interleave(valid_tgt_size, dim=0) |
| ] |
| new_encoder_out["position_embeddings"] = [ |
| encoder_out["position_embeddings"][0].repeat_interleave(valid_tgt_size, dim=0) |
| ] |
|
|
| decoder_out = models[0].decoder(valid_prev_output, encoder_out=new_encoder_out) |
| decoder_out[0].masked_fill_(~valid_constraint_masks, -math.inf) |
| lprobs = models[0].get_normalized_probs(decoder_out, log_probs=True) |
| scores = lprobs.gather(dim=-1, index=valid_tgt.unsqueeze(-1)).squeeze(-1) |
| scores = scores.masked_fill(valid_tgt.eq(task.tgt_dict.pad()), 0) |
| scores = scores.sum(1) |
| scores = scores.view(-1, valid_tgt_size) |
| valid_result.append(scores) |
| valid_result = torch.cat(valid_result, dim=-1) |
| predicts = valid_result.argmax(1).tolist() |
| hyps = [task.index2ans[predict_index] for predict_index in predicts] |
| scores = [ref_dict.get(hyp, 0) for ref_dict, hyp in zip(sample['ref_dict'], hyps)] |
| results = [{"uniq_id": id, "answer": hyp} for id, hyp in zip(sample["id"].tolist(), hyps)] |
| return results, scores |
|
|
|
|
| def eval_step(task, generator, models, sample, **kwargs): |
| if task.cfg._name == 'caption': |
| return eval_caption(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'vqa_gen': |
| return eval_vqa_gen(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'refcoco': |
| return eval_refcoco(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'snli_ve': |
| return eval_snli_ve(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'image_gen': |
| return eval_image_gen(task, generator, models, sample, **kwargs) |
| elif task.cfg._name in {'cola', 'mnli', 'mrpc', 'qnli', 'qqp', 'rte', 'sst2'}: |
| return eval_glue(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'gigaword': |
| return eval_gigaword(task, generator, models, sample, **kwargs) |
| elif task.cfg._name == 'image_classify': |
| return eval_image_classify(task, generator, models, sample, **kwargs) |
| else: |
| raise NotImplementedError |
|
|
|
|
| def merge_results(task, cfg, logger, score_cnt, score_sum, results): |
| if task.cfg._name == 'image_gen': |
| if cfg.distributed_training.distributed_world_size > 1: |
| dist.all_reduce(score_sum.data) |
| dist.all_reduce(score_cnt.data) |
| if score_cnt.item() > 0: |
| logger.info("score_sum: {}, score_cnt: {}, score: {}".format( |
| score_sum, score_cnt, round(score_sum.item() / score_cnt.item(), 4) |
| )) |
| else: |
| gather_results = None |
| if cfg.distributed_training.distributed_world_size > 1: |
| gather_results = [None for _ in range(dist.get_world_size())] |
| dist.all_gather_object(gather_results, results) |
| dist.all_reduce(score_sum.data) |
| dist.all_reduce(score_cnt.data) |
| if score_cnt.item() > 0: |
| logger.info("score_sum: {}, score_cnt: {}, score: {}".format( |
| score_sum, score_cnt, round(score_sum.item() / score_cnt.item(), 4) |
| )) |
|
|
| if cfg.distributed_training.distributed_world_size == 1 or dist.get_rank() == 0: |
| os.makedirs(cfg.common_eval.results_path, exist_ok=True) |
| output_path = os.path.join(cfg.common_eval.results_path, "{}_predict.json".format(cfg.dataset.gen_subset)) |
| gather_results = list(chain(*gather_results)) if gather_results is not None else results |
| with open(output_path, 'w') as fw: |
| json.dump(gather_results, fw) |
|
|