Merge master internal to github 1028master
| @@ -176,7 +176,10 @@ class HubApi: | |||||
| """ | """ | ||||
| cookies = ModelScopeConfig.get_cookies() | cookies = ModelScopeConfig.get_cookies() | ||||
| owner_or_group, name = model_id_to_group_owner_name(model_id) | owner_or_group, name = model_id_to_group_owner_name(model_id) | ||||
| path = f'{self.endpoint}/api/v1/models/{owner_or_group}/{name}?Revision={revision}' | |||||
| if revision: | |||||
| path = f'{self.endpoint}/api/v1/models/{owner_or_group}/{name}?Revision={revision}' | |||||
| else: | |||||
| path = f'{self.endpoint}/api/v1/models/{owner_or_group}/{name}' | |||||
| r = requests.get(path, cookies=cookies, headers=self.headers) | r = requests.get(path, cookies=cookies, headers=self.headers) | ||||
| handle_http_response(r, logger, cookies, model_id) | handle_http_response(r, logger, cookies, model_id) | ||||
| @@ -447,8 +450,12 @@ class HubApi: | |||||
| Returns: | Returns: | ||||
| List[dict]: Model file list. | List[dict]: Model file list. | ||||
| """ | """ | ||||
| path = '%s/api/v1/models/%s/repo/files?Revision=%s&Recursive=%s' % ( | |||||
| self.endpoint, model_id, revision, recursive) | |||||
| if revision: | |||||
| path = '%s/api/v1/models/%s/repo/files?Revision=%s&Recursive=%s' % ( | |||||
| self.endpoint, model_id, revision, recursive) | |||||
| else: | |||||
| path = '%s/api/v1/models/%s/repo/files?Recursive=%s' % ( | |||||
| self.endpoint, model_id, recursive) | |||||
| cookies = self._check_cookie(use_cookies) | cookies = self._check_cookie(use_cookies) | ||||
| if root is not None: | if root is not None: | ||||
| path = path + f'&Root={root}' | path = path + f'&Root={root}' | ||||
| @@ -499,13 +506,14 @@ class HubApi: | |||||
| shutil.rmtree(cache_dir) | shutil.rmtree(cache_dir) | ||||
| os.makedirs(cache_dir, exist_ok=True) | os.makedirs(cache_dir, exist_ok=True) | ||||
| datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}' | datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}' | ||||
| r = requests.get(datahub_url) | |||||
| cookies = ModelScopeConfig.get_cookies() | |||||
| r = requests.get(datahub_url, cookies=cookies) | |||||
| resp = r.json() | resp = r.json() | ||||
| datahub_raise_on_error(datahub_url, resp) | datahub_raise_on_error(datahub_url, resp) | ||||
| dataset_id = resp['Data']['Id'] | dataset_id = resp['Data']['Id'] | ||||
| dataset_type = resp['Data']['Type'] | dataset_type = resp['Data']['Type'] | ||||
| datahub_url = f'{self.endpoint}/api/v1/datasets/{dataset_id}/repo/tree?Revision={revision}' | datahub_url = f'{self.endpoint}/api/v1/datasets/{dataset_id}/repo/tree?Revision={revision}' | ||||
| r = requests.get(datahub_url, headers=self.headers) | |||||
| r = requests.get(datahub_url, cookies=cookies, headers=self.headers) | |||||
| resp = r.json() | resp = r.json() | ||||
| datahub_raise_on_error(datahub_url, resp) | datahub_raise_on_error(datahub_url, resp) | ||||
| file_list = resp['Data'] | file_list = resp['Data'] | ||||
| @@ -524,7 +532,7 @@ class HubApi: | |||||
| if extension in dataset_meta_format: | if extension in dataset_meta_format: | ||||
| datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/repo?' \ | datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/repo?' \ | ||||
| f'Revision={revision}&FilePath={file_path}' | f'Revision={revision}&FilePath={file_path}' | ||||
| r = requests.get(datahub_url) | |||||
| r = requests.get(datahub_url, cookies=cookies) | |||||
| raise_for_http_status(r) | raise_for_http_status(r) | ||||
| local_path = os.path.join(cache_dir, file_path) | local_path = os.path.join(cache_dir, file_path) | ||||
| if os.path.exists(local_path): | if os.path.exists(local_path): | ||||
| @@ -569,9 +577,7 @@ class HubApi: | |||||
| datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/' \ | datahub_url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/' \ | ||||
| f'ststoken?Revision={revision}' | f'ststoken?Revision={revision}' | ||||
| cookies = requests.utils.dict_from_cookiejar(cookies) | |||||
| r = requests.get( | |||||
| url=datahub_url, cookies=cookies, headers=self.headers) | |||||
| r = requests.get(url=datahub_url, cookies=cookies, headers=self.headers) | |||||
| resp = r.json() | resp = r.json() | ||||
| raise_on_error(resp) | raise_on_error(resp) | ||||
| return resp['Data'] | return resp['Data'] | ||||
| @@ -582,9 +588,6 @@ class HubApi: | |||||
| f'MaxLimit={max_limit}&Revision={revision}&Recursive={is_recursive}&FilterDir={is_filter_dir}' | f'MaxLimit={max_limit}&Revision={revision}&Recursive={is_recursive}&FilterDir={is_filter_dir}' | ||||
| cookies = ModelScopeConfig.get_cookies() | cookies = ModelScopeConfig.get_cookies() | ||||
| if cookies: | |||||
| cookies = requests.utils.dict_from_cookiejar(cookies) | |||||
| resp = requests.get(url=url, cookies=cookies) | resp = requests.get(url=url, cookies=cookies) | ||||
| resp = resp.json() | resp = resp.json() | ||||
| raise_on_error(resp) | raise_on_error(resp) | ||||
| @@ -593,17 +596,48 @@ class HubApi: | |||||
| def on_dataset_download(self, dataset_name: str, namespace: str) -> None: | def on_dataset_download(self, dataset_name: str, namespace: str) -> None: | ||||
| url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/download/increase' | url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/download/increase' | ||||
| r = requests.post(url, headers=self.headers) | |||||
| cookies = ModelScopeConfig.get_cookies() | |||||
| r = requests.post(url, cookies=cookies, headers=self.headers) | |||||
| raise_for_http_status(r) | raise_for_http_status(r) | ||||
| def delete_oss_dataset_object(self, object_name: str, dataset_name: str, | |||||
| namespace: str, revision: str) -> str: | |||||
| if not object_name or not dataset_name or not namespace or not revision: | |||||
| raise ValueError('Args cannot be empty!') | |||||
| url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/oss?Path={object_name}&Revision={revision}' | |||||
| cookies = self.check_local_cookies(use_cookies=True) | |||||
| resp = requests.delete(url=url, cookies=cookies) | |||||
| resp = resp.json() | |||||
| raise_on_error(resp) | |||||
| resp = resp['Message'] | |||||
| return resp | |||||
| def delete_oss_dataset_dir(self, object_name: str, dataset_name: str, | |||||
| namespace: str, revision: str) -> str: | |||||
| if not object_name or not dataset_name or not namespace or not revision: | |||||
| raise ValueError('Args cannot be empty!') | |||||
| url = f'{self.endpoint}/api/v1/datasets/{namespace}/{dataset_name}/oss/prefix?Prefix={object_name}/' \ | |||||
| f'&Revision={revision}' | |||||
| cookies = self.check_local_cookies(use_cookies=True) | |||||
| resp = requests.delete(url=url, cookies=cookies) | |||||
| resp = resp.json() | |||||
| raise_on_error(resp) | |||||
| resp = resp['Message'] | |||||
| return resp | |||||
| @staticmethod | @staticmethod | ||||
| def datahub_remote_call(url): | def datahub_remote_call(url): | ||||
| r = requests.get(url, headers={'user-agent': ModelScopeConfig.get_user_agent()}) | |||||
| cookies = ModelScopeConfig.get_cookies() | |||||
| r = requests.get(url, cookies=cookies, headers={'user-agent': ModelScopeConfig.get_user_agent()}) | |||||
| resp = r.json() | resp = r.json() | ||||
| datahub_raise_on_error(url, resp) | datahub_raise_on_error(url, resp) | ||||
| return resp['Data'] | return resp['Data'] | ||||
| def check_cookies_upload_data(self, use_cookies) -> CookieJar: | |||||
| def check_local_cookies(self, use_cookies) -> CookieJar: | |||||
| return self._check_cookie(use_cookies=use_cookies) | return self._check_cookie(use_cookies=use_cookies) | ||||
| @@ -63,6 +63,7 @@ def handle_http_post_error(response, url, request_body): | |||||
| except HTTPError as error: | except HTTPError as error: | ||||
| logger.error('Request %s with body: %s exception' % | logger.error('Request %s with body: %s exception' % | ||||
| (url, request_body)) | (url, request_body)) | ||||
| logger.error('Response details: %s' % response.content) | |||||
| raise error | raise error | ||||
| @@ -254,6 +254,7 @@ class Pipelines(object): | |||||
| translation_en_to_de = 'translation_en_to_de' # keep it underscore | translation_en_to_de = 'translation_en_to_de' # keep it underscore | ||||
| translation_en_to_ro = 'translation_en_to_ro' # keep it underscore | translation_en_to_ro = 'translation_en_to_ro' # keep it underscore | ||||
| translation_en_to_fr = 'translation_en_to_fr' # keep it underscore | translation_en_to_fr = 'translation_en_to_fr' # keep it underscore | ||||
| token_classification = 'token-classification' | |||||
| # audio tasks | # audio tasks | ||||
| sambert_hifigan_tts = 'sambert-hifigan-tts' | sambert_hifigan_tts = 'sambert-hifigan-tts' | ||||
| @@ -305,6 +306,8 @@ class Trainers(object): | |||||
| face_detection_scrfd = 'face-detection-scrfd' | face_detection_scrfd = 'face-detection-scrfd' | ||||
| card_detection_scrfd = 'card-detection-scrfd' | card_detection_scrfd = 'card-detection-scrfd' | ||||
| image_inpainting = 'image-inpainting' | image_inpainting = 'image-inpainting' | ||||
| referring_video_object_segmentation = 'referring-video-object-segmentation' | |||||
| image_classification_team = 'image-classification-team' | |||||
| # nlp trainers | # nlp trainers | ||||
| bert_sentiment_analysis = 'bert-sentiment-analysis' | bert_sentiment_analysis = 'bert-sentiment-analysis' | ||||
| @@ -422,6 +425,8 @@ class Metrics(object): | |||||
| image_inpainting_metric = 'image-inpainting-metric' | image_inpainting_metric = 'image-inpainting-metric' | ||||
| # metric for ocr | # metric for ocr | ||||
| NED = 'ned' | NED = 'ned' | ||||
| # metric for referring-video-object-segmentation task | |||||
| referring_video_object_segmentation_metric = 'referring-video-object-segmentation-metric' | |||||
| class Optimizers(object): | class Optimizers(object): | ||||
| @@ -20,6 +20,7 @@ if TYPE_CHECKING: | |||||
| from .accuracy_metric import AccuracyMetric | from .accuracy_metric import AccuracyMetric | ||||
| from .bleu_metric import BleuMetric | from .bleu_metric import BleuMetric | ||||
| from .image_inpainting_metric import ImageInpaintingMetric | from .image_inpainting_metric import ImageInpaintingMetric | ||||
| from .referring_video_object_segmentation_metric import ReferringVideoObjectSegmentationMetric | |||||
| else: | else: | ||||
| _import_structure = { | _import_structure = { | ||||
| @@ -40,6 +41,8 @@ else: | |||||
| 'image_inpainting_metric': ['ImageInpaintingMetric'], | 'image_inpainting_metric': ['ImageInpaintingMetric'], | ||||
| 'accuracy_metric': ['AccuracyMetric'], | 'accuracy_metric': ['AccuracyMetric'], | ||||
| 'bleu_metric': ['BleuMetric'], | 'bleu_metric': ['BleuMetric'], | ||||
| 'referring_video_object_segmentation_metric': | |||||
| ['ReferringVideoObjectSegmentationMetric'], | |||||
| } | } | ||||
| import sys | import sys | ||||
| @@ -43,6 +43,8 @@ task_default_metrics = { | |||||
| Tasks.visual_question_answering: [Metrics.text_gen_metric], | Tasks.visual_question_answering: [Metrics.text_gen_metric], | ||||
| Tasks.movie_scene_segmentation: [Metrics.movie_scene_segmentation_metric], | Tasks.movie_scene_segmentation: [Metrics.movie_scene_segmentation_metric], | ||||
| Tasks.image_inpainting: [Metrics.image_inpainting_metric], | Tasks.image_inpainting: [Metrics.image_inpainting_metric], | ||||
| Tasks.referring_video_object_segmentation: | |||||
| [Metrics.referring_video_object_segmentation_metric], | |||||
| } | } | ||||
| @@ -0,0 +1,108 @@ | |||||
| # Part of the implementation is borrowed and modified from MTTR, | |||||
| # publicly available at https://github.com/mttr2021/MTTR | |||||
| from typing import Dict | |||||
| import numpy as np | |||||
| import torch | |||||
| from pycocotools.coco import COCO | |||||
| from pycocotools.cocoeval import COCOeval | |||||
| from pycocotools.mask import decode | |||||
| from tqdm import tqdm | |||||
| from modelscope.metainfo import Metrics | |||||
| from modelscope.utils.registry import default_group | |||||
| from .base import Metric | |||||
| from .builder import METRICS, MetricKeys | |||||
| @METRICS.register_module( | |||||
| group_key=default_group, | |||||
| module_name=Metrics.referring_video_object_segmentation_metric) | |||||
| class ReferringVideoObjectSegmentationMetric(Metric): | |||||
| """The metric computation class for movie scene segmentation classes. | |||||
| """ | |||||
| def __init__(self, | |||||
| ann_file=None, | |||||
| calculate_precision_and_iou_metrics=True): | |||||
| self.ann_file = ann_file | |||||
| self.calculate_precision_and_iou_metrics = calculate_precision_and_iou_metrics | |||||
| self.preds = [] | |||||
| def add(self, outputs: Dict, inputs: Dict): | |||||
| preds_batch = outputs['pred'] | |||||
| self.preds.extend(preds_batch) | |||||
| def evaluate(self): | |||||
| coco_gt = COCO(self.ann_file) | |||||
| coco_pred = coco_gt.loadRes(self.preds) | |||||
| coco_eval = COCOeval(coco_gt, coco_pred, iouType='segm') | |||||
| coco_eval.params.useCats = 0 | |||||
| coco_eval.evaluate() | |||||
| coco_eval.accumulate() | |||||
| coco_eval.summarize() | |||||
| ap_labels = [ | |||||
| 'mAP 0.5:0.95', 'AP 0.5', 'AP 0.75', 'AP 0.5:0.95 S', | |||||
| 'AP 0.5:0.95 M', 'AP 0.5:0.95 L' | |||||
| ] | |||||
| ap_metrics = coco_eval.stats[:6] | |||||
| eval_metrics = {la: m for la, m in zip(ap_labels, ap_metrics)} | |||||
| if self.calculate_precision_and_iou_metrics: | |||||
| precision_at_k, overall_iou, mean_iou = calculate_precision_at_k_and_iou_metrics( | |||||
| coco_gt, coco_pred) | |||||
| eval_metrics.update({ | |||||
| f'P@{k}': m | |||||
| for k, m in zip([0.5, 0.6, 0.7, 0.8, 0.9], precision_at_k) | |||||
| }) | |||||
| eval_metrics.update({ | |||||
| 'overall_iou': overall_iou, | |||||
| 'mean_iou': mean_iou | |||||
| }) | |||||
| return eval_metrics | |||||
| def compute_iou(outputs: torch.Tensor, labels: torch.Tensor, EPS=1e-6): | |||||
| outputs = outputs.int() | |||||
| intersection = (outputs & labels).float().sum( | |||||
| (1, 2)) # Will be zero if Truth=0 or Prediction=0 | |||||
| union = (outputs | labels).float().sum( | |||||
| (1, 2)) # Will be zero if both are 0 | |||||
| iou = (intersection + EPS) / (union + EPS | |||||
| ) # EPS is used to avoid division by zero | |||||
| return iou, intersection, union | |||||
| def calculate_precision_at_k_and_iou_metrics(coco_gt: COCO, coco_pred: COCO): | |||||
| print('evaluating precision@k & iou metrics...') | |||||
| counters_by_iou = {iou: 0 for iou in [0.5, 0.6, 0.7, 0.8, 0.9]} | |||||
| total_intersection_area = 0 | |||||
| total_union_area = 0 | |||||
| ious_list = [] | |||||
| for instance in tqdm(coco_gt.imgs.keys() | |||||
| ): # each image_id contains exactly one instance | |||||
| gt_annot = coco_gt.imgToAnns[instance][0] | |||||
| gt_mask = decode(gt_annot['segmentation']) | |||||
| pred_annots = coco_pred.imgToAnns[instance] | |||||
| pred_annot = sorted( | |||||
| pred_annots, | |||||
| key=lambda a: a['score'])[-1] # choose pred with highest score | |||||
| pred_mask = decode(pred_annot['segmentation']) | |||||
| iou, intersection, union = compute_iou( | |||||
| torch.tensor(pred_mask).unsqueeze(0), | |||||
| torch.tensor(gt_mask).unsqueeze(0)) | |||||
| iou, intersection, union = iou.item(), intersection.item(), union.item( | |||||
| ) | |||||
| for iou_threshold in counters_by_iou.keys(): | |||||
| if iou > iou_threshold: | |||||
| counters_by_iou[iou_threshold] += 1 | |||||
| total_intersection_area += intersection | |||||
| total_union_area += union | |||||
| ious_list.append(iou) | |||||
| num_samples = len(ious_list) | |||||
| precision_at_k = np.array(list(counters_by_iou.values())) / num_samples | |||||
| overall_iou = total_intersection_area / total_union_area | |||||
| mean_iou = np.mean(ious_list) | |||||
| return precision_at_k, overall_iou, mean_iou | |||||
| @@ -3,6 +3,7 @@ | |||||
| from typing import Dict | from typing import Dict | ||||
| import numpy as np | import numpy as np | ||||
| from sklearn.metrics import accuracy_score, f1_score | |||||
| from modelscope.metainfo import Metrics | from modelscope.metainfo import Metrics | ||||
| from modelscope.outputs import OutputKeys | from modelscope.outputs import OutputKeys | ||||
| @@ -41,5 +42,11 @@ class SequenceClassificationMetric(Metric): | |||||
| preds = np.argmax(preds, axis=1) | preds = np.argmax(preds, axis=1) | ||||
| return { | return { | ||||
| MetricKeys.ACCURACY: | MetricKeys.ACCURACY: | ||||
| (preds == labels).astype(np.float32).mean().item() | |||||
| accuracy_score(labels, preds), | |||||
| MetricKeys.F1: | |||||
| f1_score( | |||||
| labels, | |||||
| preds, | |||||
| average='micro' if any([label > 1 | |||||
| for label in labels]) else None), | |||||
| } | } | ||||
| @@ -2,7 +2,7 @@ | |||||
| from typing import Dict, Iterable, List | from typing import Dict, Iterable, List | ||||
| from nltk.translate.bleu_score import sentence_bleu | |||||
| from nltk.translate.bleu_score import SmoothingFunction, corpus_bleu | |||||
| from rouge import Rouge | from rouge import Rouge | ||||
| from modelscope.metainfo import Metrics | from modelscope.metainfo import Metrics | ||||
| @@ -63,14 +63,18 @@ class TextGenerationMetric(Metric): | |||||
| rouge_scores = self.rouge.get_scores(hyps=preds, refs=tgts) | rouge_scores = self.rouge.get_scores(hyps=preds, refs=tgts) | ||||
| rouge_1 = mean(map(lambda score: score['rouge-1']['f'], rouge_scores)) | rouge_1 = mean(map(lambda score: score['rouge-1']['f'], rouge_scores)) | ||||
| rouge_l = mean(map(lambda score: score['rouge-l']['f'], rouge_scores)) | rouge_l = mean(map(lambda score: score['rouge-l']['f'], rouge_scores)) | ||||
| pred_split = tuple(pred.split(' ') for pred in self.preds) | |||||
| tgt_split = tuple(tgt.split(' ') for tgt in self.tgts) | |||||
| bleu_1 = mean( | |||||
| sentence_bleu([tgt], pred, weights=(1, 0, 0, 0)) | |||||
| for pred, tgt in zip(pred_split, tgt_split)) | |||||
| bleu_4 = mean( | |||||
| sentence_bleu([tgt], pred) | |||||
| for pred, tgt in zip(pred_split, tgt_split)) | |||||
| pred_list = [each.strip().split(' ') for each in self.preds] | |||||
| tgt_list = [[each.strip().split(' ')] for each in self.tgts] | |||||
| bleu_1 = corpus_bleu( | |||||
| tgt_list, | |||||
| pred_list, | |||||
| weights=(1, 0, 0, 0), | |||||
| smoothing_function=SmoothingFunction().method3) | |||||
| bleu_4 = corpus_bleu( | |||||
| tgt_list, | |||||
| pred_list, | |||||
| smoothing_function=SmoothingFunction().method3) | |||||
| return { | return { | ||||
| MetricKeys.ROUGE_1: rouge_1, | MetricKeys.ROUGE_1: rouge_1, | ||||
| MetricKeys.ROUGE_L: rouge_l, | MetricKeys.ROUGE_L: rouge_l, | ||||
| @@ -67,8 +67,28 @@ class Model(ABC): | |||||
| cfg_dict: Config = None, | cfg_dict: Config = None, | ||||
| device: str = None, | device: str = None, | ||||
| **kwargs): | **kwargs): | ||||
| """ Instantiate a model from local directory or remote model repo. Note | |||||
| """Instantiate a model from local directory or remote model repo. Note | |||||
| that when loading from remote, the model revision can be specified. | that when loading from remote, the model revision can be specified. | ||||
| Args: | |||||
| model_name_or_path(str): A model dir or a model id to be loaded | |||||
| revision(str, `optional`): The revision used when the model_name_or_path is | |||||
| a model id of the remote hub. default `master`. | |||||
| cfg_dict(Config, `optional`): An optional model config. If provided, it will replace | |||||
| the config read out of the `model_name_or_path` | |||||
| device(str, `optional`): The device to load the model. | |||||
| **kwargs: | |||||
| task(str, `optional`): The `Tasks` enumeration value to replace the task value | |||||
| read out of config in the `model_name_or_path`. This is useful when the model to be loaded is not | |||||
| equal to the model saved. | |||||
| For example, load a `backbone` into a `text-classification` model. | |||||
| Other kwargs will be directly fed into the `model` key, to replace the default configs. | |||||
| Returns: | |||||
| A model instance. | |||||
| Examples: | |||||
| >>> from modelscope.models import Model | |||||
| >>> Model.from_pretrained('damo/nlp_structbert_backbone_base_std', task='text-classification') | |||||
| """ | """ | ||||
| prefetched = kwargs.get('model_prefetched') | prefetched = kwargs.get('model_prefetched') | ||||
| if prefetched is not None: | if prefetched is not None: | ||||
| @@ -5,11 +5,11 @@ from modelscope.utils.import_utils import LazyImportModule | |||||
| if TYPE_CHECKING: | if TYPE_CHECKING: | ||||
| from .model import MovieSceneSegmentation | |||||
| from .model import ReferringVideoObjectSegmentation | |||||
| else: | else: | ||||
| _import_structure = { | _import_structure = { | ||||
| 'model': ['MovieSceneSegmentation'], | |||||
| 'model': ['ReferringVideoObjectSegmentation'], | |||||
| } | } | ||||
| import sys | import sys | ||||
| @@ -1,4 +1,6 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| # Part of the implementation is borrowed and modified from MTTR, | |||||
| # publicly available at https://github.com/mttr2021/MTTR | |||||
| import os.path as osp | import os.path as osp | ||||
| from typing import Any, Dict | from typing import Any, Dict | ||||
| @@ -10,7 +12,9 @@ from modelscope.models.builder import MODELS | |||||
| from modelscope.utils.config import Config | from modelscope.utils.config import Config | ||||
| from modelscope.utils.constant import ModelFile, Tasks | from modelscope.utils.constant import ModelFile, Tasks | ||||
| from modelscope.utils.logger import get_logger | from modelscope.utils.logger import get_logger | ||||
| from .utils import (MTTR, A2DSentencesPostProcess, ReferYoutubeVOSPostProcess, | |||||
| from .utils import (MTTR, A2DSentencesPostProcess, HungarianMatcher, | |||||
| ReferYoutubeVOSPostProcess, SetCriterion, | |||||
| flatten_temporal_batch_dims, | |||||
| nested_tensor_from_videos_list) | nested_tensor_from_videos_list) | ||||
| logger = get_logger() | logger = get_logger() | ||||
| @@ -35,16 +39,66 @@ class ReferringVideoObjectSegmentation(TorchModel): | |||||
| params_dict = params_dict['model_state_dict'] | params_dict = params_dict['model_state_dict'] | ||||
| self.model.load_state_dict(params_dict, strict=True) | self.model.load_state_dict(params_dict, strict=True) | ||||
| dataset_name = self.cfg.pipeline.dataset_name | |||||
| if dataset_name == 'a2d_sentences' or dataset_name == 'jhmdb_sentences': | |||||
| self.postprocessor = A2DSentencesPostProcess() | |||||
| elif dataset_name == 'ref_youtube_vos': | |||||
| self.postprocessor = ReferYoutubeVOSPostProcess() | |||||
| self.set_postprocessor(self.cfg.pipeline.dataset_name) | |||||
| self.set_criterion() | |||||
| def set_device(self, device, name): | |||||
| self.device = device | |||||
| self._device_name = name | |||||
| def set_postprocessor(self, dataset_name): | |||||
| if 'a2d_sentences' in dataset_name or 'jhmdb_sentences' in dataset_name: | |||||
| self.postprocessor = A2DSentencesPostProcess() # fine-tune | |||||
| elif 'ref_youtube_vos' in dataset_name: | |||||
| self.postprocessor = ReferYoutubeVOSPostProcess() # inference | |||||
| else: | else: | ||||
| assert False, f'postprocessing for dataset: {dataset_name} is not supported' | assert False, f'postprocessing for dataset: {dataset_name} is not supported' | ||||
| def forward(self, inputs: Dict[str, Any]) -> Dict[str, torch.Tensor]: | |||||
| return inputs | |||||
| def forward(self, inputs: Dict[str, Any]): | |||||
| samples = inputs['samples'] | |||||
| targets = inputs['targets'] | |||||
| text_queries = inputs['text_queries'] | |||||
| valid_indices = torch.tensor( | |||||
| [i for i, t in enumerate(targets) if None not in t]) | |||||
| targets = [targets[i] for i in valid_indices.tolist()] | |||||
| if self._device_name == 'gpu': | |||||
| samples = samples.to(self.device) | |||||
| valid_indices = valid_indices.to(self.device) | |||||
| if isinstance(text_queries, tuple): | |||||
| text_queries = list(text_queries) | |||||
| outputs = self.model(samples, valid_indices, text_queries) | |||||
| losses = -1 | |||||
| if self.training: | |||||
| loss_dict = self.criterion(outputs, targets) | |||||
| weight_dict = self.criterion.weight_dict | |||||
| losses = sum(loss_dict[k] * weight_dict[k] | |||||
| for k in loss_dict.keys() if k in weight_dict) | |||||
| predictions = [] | |||||
| if not self.training: | |||||
| outputs.pop('aux_outputs', None) | |||||
| outputs, targets = flatten_temporal_batch_dims(outputs, targets) | |||||
| processed_outputs = self.postprocessor( | |||||
| outputs, | |||||
| resized_padded_sample_size=samples.tensors.shape[-2:], | |||||
| resized_sample_sizes=[t['size'] for t in targets], | |||||
| orig_sample_sizes=[t['orig_size'] for t in targets]) | |||||
| image_ids = [t['image_id'] for t in targets] | |||||
| predictions = [] | |||||
| for p, image_id in zip(processed_outputs, image_ids): | |||||
| for s, m in zip(p['scores'], p['rle_masks']): | |||||
| predictions.append({ | |||||
| 'image_id': image_id, | |||||
| 'category_id': | |||||
| 1, # dummy label, as categories are not predicted in ref-vos | |||||
| 'segmentation': m, | |||||
| 'score': s.item() | |||||
| }) | |||||
| re = dict(pred=predictions, loss=losses) | |||||
| return re | |||||
| def inference(self, **kwargs): | def inference(self, **kwargs): | ||||
| window = kwargs['window'] | window = kwargs['window'] | ||||
| @@ -63,3 +117,26 @@ class ReferringVideoObjectSegmentation(TorchModel): | |||||
| def postprocess(self, inputs: Dict[str, Any], **kwargs): | def postprocess(self, inputs: Dict[str, Any], **kwargs): | ||||
| return inputs | return inputs | ||||
| def set_criterion(self): | |||||
| matcher = HungarianMatcher( | |||||
| cost_is_referred=self.cfg.matcher.set_cost_is_referred, | |||||
| cost_dice=self.cfg.matcher.set_cost_dice) | |||||
| weight_dict = { | |||||
| 'loss_is_referred': self.cfg.loss.is_referred_loss_coef, | |||||
| 'loss_dice': self.cfg.loss.dice_loss_coef, | |||||
| 'loss_sigmoid_focal': self.cfg.loss.sigmoid_focal_loss_coef | |||||
| } | |||||
| if self.cfg.loss.aux_loss: | |||||
| aux_weight_dict = {} | |||||
| for i in range(self.cfg.model.num_decoder_layers - 1): | |||||
| aux_weight_dict.update( | |||||
| {k + f'_{i}': v | |||||
| for k, v in weight_dict.items()}) | |||||
| weight_dict.update(aux_weight_dict) | |||||
| self.criterion = SetCriterion( | |||||
| matcher=matcher, | |||||
| weight_dict=weight_dict, | |||||
| eos_coef=self.cfg.loss.eos_coef) | |||||
| @@ -1,4 +1,6 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | # Copyright (c) Alibaba, Inc. and its affiliates. | ||||
| from .misc import nested_tensor_from_videos_list | |||||
| from .criterion import SetCriterion, flatten_temporal_batch_dims | |||||
| from .matcher import HungarianMatcher | |||||
| from .misc import interpolate, nested_tensor_from_videos_list | |||||
| from .mttr import MTTR | from .mttr import MTTR | ||||
| from .postprocessing import A2DSentencesPostProcess, ReferYoutubeVOSPostProcess | from .postprocessing import A2DSentencesPostProcess, ReferYoutubeVOSPostProcess | ||||
| @@ -0,0 +1,198 @@ | |||||
| # The implementation is adopted from MTTR, | |||||
| # made publicly available under the Apache 2.0 License at https://github.com/mttr2021/MTTR | |||||
| # Modified from DETR https://github.com/facebookresearch/detr | |||||
| import torch | |||||
| from torch import nn | |||||
| from .misc import (get_world_size, interpolate, is_dist_avail_and_initialized, | |||||
| nested_tensor_from_tensor_list) | |||||
| from .segmentation import dice_loss, sigmoid_focal_loss | |||||
| class SetCriterion(nn.Module): | |||||
| """ This class computes the loss for MTTR. | |||||
| The process happens in two steps: | |||||
| 1) we compute the hungarian assignment between the ground-truth and predicted sequences. | |||||
| 2) we supervise each pair of matched ground-truth / prediction sequences (mask + reference prediction) | |||||
| """ | |||||
| def __init__(self, matcher, weight_dict, eos_coef): | |||||
| """ Create the criterion. | |||||
| Parameters: | |||||
| matcher: module able to compute a matching between targets and proposals | |||||
| weight_dict: dict containing as key the names of the losses and as values their relative weight. | |||||
| eos_coef: relative classification weight applied to the un-referred category | |||||
| """ | |||||
| super().__init__() | |||||
| self.matcher = matcher | |||||
| self.weight_dict = weight_dict | |||||
| self.eos_coef = eos_coef | |||||
| # make sure that only loss functions with non-zero weights are computed: | |||||
| losses_to_compute = [] | |||||
| if weight_dict['loss_dice'] > 0 or weight_dict[ | |||||
| 'loss_sigmoid_focal'] > 0: | |||||
| losses_to_compute.append('masks') | |||||
| if weight_dict['loss_is_referred'] > 0: | |||||
| losses_to_compute.append('is_referred') | |||||
| self.losses = losses_to_compute | |||||
| def forward(self, outputs, targets): | |||||
| aux_outputs_list = outputs.pop('aux_outputs', None) | |||||
| # compute the losses for the output of the last decoder layer: | |||||
| losses = self.compute_criterion( | |||||
| outputs, targets, losses_to_compute=self.losses) | |||||
| # In case of auxiliary losses, we repeat this process with the output of each intermediate decoder layer. | |||||
| if aux_outputs_list is not None: | |||||
| aux_losses_to_compute = self.losses.copy() | |||||
| for i, aux_outputs in enumerate(aux_outputs_list): | |||||
| losses_dict = self.compute_criterion(aux_outputs, targets, | |||||
| aux_losses_to_compute) | |||||
| losses_dict = {k + f'_{i}': v for k, v in losses_dict.items()} | |||||
| losses.update(losses_dict) | |||||
| return losses | |||||
| def compute_criterion(self, outputs, targets, losses_to_compute): | |||||
| # Retrieve the matching between the outputs of the last layer and the targets | |||||
| indices = self.matcher(outputs, targets) | |||||
| # T & B dims are flattened so loss functions can be computed per frame (but with same indices per video). | |||||
| # also, indices are repeated so so the same indices can be used for frames of the same video. | |||||
| T = len(targets) | |||||
| outputs, targets = flatten_temporal_batch_dims(outputs, targets) | |||||
| # repeat the indices list T times so the same indices can be used for each video frame | |||||
| indices = T * indices | |||||
| # Compute the average number of target masks across all nodes, for normalization purposes | |||||
| num_masks = sum(len(t['masks']) for t in targets) | |||||
| num_masks = torch.as_tensor([num_masks], | |||||
| dtype=torch.float, | |||||
| device=indices[0][0].device) | |||||
| if is_dist_avail_and_initialized(): | |||||
| torch.distributed.all_reduce(num_masks) | |||||
| num_masks = torch.clamp(num_masks / get_world_size(), min=1).item() | |||||
| # Compute all the requested losses | |||||
| losses = {} | |||||
| for loss in losses_to_compute: | |||||
| losses.update( | |||||
| self.get_loss( | |||||
| loss, outputs, targets, indices, num_masks=num_masks)) | |||||
| return losses | |||||
| def loss_is_referred(self, outputs, targets, indices, **kwargs): | |||||
| device = outputs['pred_is_referred'].device | |||||
| bs = outputs['pred_is_referred'].shape[0] | |||||
| pred_is_referred = outputs['pred_is_referred'].log_softmax( | |||||
| dim=-1) # note that log-softmax is used here | |||||
| target_is_referred = torch.zeros_like(pred_is_referred) | |||||
| # extract indices of object queries that where matched with text-referred target objects | |||||
| query_referred_indices = self._get_query_referred_indices( | |||||
| indices, targets) | |||||
| # by default penalize compared to the no-object class (last token) | |||||
| target_is_referred[:, :, :] = torch.tensor([0.0, 1.0], device=device) | |||||
| if 'is_ref_inst_visible' in targets[ | |||||
| 0]: # visibility labels are available per-frame for the referred object: | |||||
| is_ref_inst_visible_per_frame = torch.stack( | |||||
| [t['is_ref_inst_visible'] for t in targets]) | |||||
| ref_inst_visible_frame_indices = is_ref_inst_visible_per_frame.nonzero( | |||||
| ).squeeze() | |||||
| # keep only the matched query indices of the frames in which the referred object is visible: | |||||
| visible_query_referred_indices = query_referred_indices[ | |||||
| ref_inst_visible_frame_indices] | |||||
| target_is_referred[ref_inst_visible_frame_indices, | |||||
| visible_query_referred_indices] = torch.tensor( | |||||
| [1.0, 0.0], device=device) | |||||
| else: # assume that the referred object is visible in every frame: | |||||
| target_is_referred[torch.arange(bs), | |||||
| query_referred_indices] = torch.tensor( | |||||
| [1.0, 0.0], device=device) | |||||
| loss = -(pred_is_referred * target_is_referred).sum(-1) | |||||
| # apply no-object class weights: | |||||
| eos_coef = torch.full(loss.shape, self.eos_coef, device=loss.device) | |||||
| eos_coef[torch.arange(bs), query_referred_indices] = 1.0 | |||||
| loss = loss * eos_coef | |||||
| bs = len(indices) | |||||
| loss = loss.sum() / bs # sum and normalize the loss by the batch size | |||||
| losses = {'loss_is_referred': loss} | |||||
| return losses | |||||
| def loss_masks(self, outputs, targets, indices, num_masks, **kwargs): | |||||
| assert 'pred_masks' in outputs | |||||
| src_idx = self._get_src_permutation_idx(indices) | |||||
| tgt_idx = self._get_tgt_permutation_idx(indices) | |||||
| src_masks = outputs['pred_masks'] | |||||
| src_masks = src_masks[src_idx] | |||||
| masks = [t['masks'] for t in targets] | |||||
| target_masks, valid = nested_tensor_from_tensor_list(masks).decompose() | |||||
| target_masks = target_masks.to(src_masks) | |||||
| target_masks = target_masks[tgt_idx] | |||||
| # upsample predictions to the target size | |||||
| src_masks = interpolate( | |||||
| src_masks[:, None], | |||||
| size=target_masks.shape[-2:], | |||||
| mode='bilinear', | |||||
| align_corners=False) | |||||
| src_masks = src_masks[:, 0].flatten(1) | |||||
| target_masks = target_masks.flatten(1) | |||||
| target_masks = target_masks.view(src_masks.shape) | |||||
| losses = { | |||||
| 'loss_sigmoid_focal': | |||||
| sigmoid_focal_loss(src_masks, target_masks, num_masks), | |||||
| 'loss_dice': | |||||
| dice_loss(src_masks, target_masks, num_masks), | |||||
| } | |||||
| return losses | |||||
| @staticmethod | |||||
| def _get_src_permutation_idx(indices): | |||||
| # permute predictions following indices | |||||
| batch_idx = torch.cat( | |||||
| [torch.full_like(src, i) for i, (src, _) in enumerate(indices)]) | |||||
| src_idx = torch.cat([src for (src, _) in indices]) | |||||
| return batch_idx, src_idx | |||||
| @staticmethod | |||||
| def _get_tgt_permutation_idx(indices): | |||||
| # permute targets following indices | |||||
| batch_idx = torch.cat( | |||||
| [torch.full_like(tgt, i) for i, (_, tgt) in enumerate(indices)]) | |||||
| tgt_idx = torch.cat([tgt for (_, tgt) in indices]) | |||||
| return batch_idx, tgt_idx | |||||
| @staticmethod | |||||
| def _get_query_referred_indices(indices, targets): | |||||
| """ | |||||
| extract indices of object queries that where matched with text-referred target objects | |||||
| """ | |||||
| query_referred_indices = [] | |||||
| for (query_idxs, target_idxs), target in zip(indices, targets): | |||||
| ref_query_idx = query_idxs[torch.where( | |||||
| target_idxs == target['referred_instance_idx'])[0]] | |||||
| query_referred_indices.append(ref_query_idx) | |||||
| query_referred_indices = torch.cat(query_referred_indices) | |||||
| return query_referred_indices | |||||
| def get_loss(self, loss, outputs, targets, indices, **kwargs): | |||||
| loss_map = { | |||||
| 'masks': self.loss_masks, | |||||
| 'is_referred': self.loss_is_referred, | |||||
| } | |||||
| assert loss in loss_map, f'do you really want to compute {loss} loss?' | |||||
| return loss_map[loss](outputs, targets, indices, **kwargs) | |||||
| def flatten_temporal_batch_dims(outputs, targets): | |||||
| for k in outputs.keys(): | |||||
| if isinstance(outputs[k], torch.Tensor): | |||||
| outputs[k] = outputs[k].flatten(0, 1) | |||||
| else: # list | |||||
| outputs[k] = [i for step_t in outputs[k] for i in step_t] | |||||
| targets = [ | |||||
| frame_t_target for step_t in targets for frame_t_target in step_t | |||||
| ] | |||||
| return outputs, targets | |||||
| @@ -0,0 +1,163 @@ | |||||
| # The implementation is adopted from MTTR, | |||||
| # made publicly available under the Apache 2.0 License at https://github.com/mttr2021/MTTR | |||||
| # Modified from DETR https://github.com/facebookresearch/detr | |||||
| # Module to compute the matching cost and solve the corresponding LSAP. | |||||
| import torch | |||||
| from scipy.optimize import linear_sum_assignment | |||||
| from torch import nn | |||||
| from .misc import interpolate, nested_tensor_from_tensor_list | |||||
| class HungarianMatcher(nn.Module): | |||||
| """This class computes an assignment between the targets and the predictions of the network | |||||
| For efficiency reasons, the targets don't include the no_object. Because of this, in general, | |||||
| there are more predictions than targets. In this case, we do a 1-to-1 matching of the best predictions, | |||||
| while the others are un-matched (and thus treated as non-objects). | |||||
| """ | |||||
| def __init__(self, cost_is_referred: float = 1, cost_dice: float = 1): | |||||
| """Creates the matcher | |||||
| Params: | |||||
| cost_is_referred: This is the relative weight of the reference cost in the total matching cost | |||||
| cost_dice: This is the relative weight of the dice cost in the total matching cost | |||||
| """ | |||||
| super().__init__() | |||||
| self.cost_is_referred = cost_is_referred | |||||
| self.cost_dice = cost_dice | |||||
| assert cost_is_referred != 0 or cost_dice != 0, 'all costs cant be 0' | |||||
| @torch.inference_mode() | |||||
| def forward(self, outputs, targets): | |||||
| """ Performs the matching | |||||
| Params: | |||||
| outputs: A dict that contains at least these entries: | |||||
| "pred_is_referred": Tensor of dim [time, batch_size, num_queries, 2] with the reference logits | |||||
| "pred_masks": Tensor of dim [time, batch_size, num_queries, H, W] with the predicted masks logits | |||||
| targets: A list of lists of targets (outer - time steps, inner - batch samples). each target is a dict | |||||
| which contain mask and reference ground truth information for a single frame. | |||||
| Returns: | |||||
| A list of size batch_size, containing tuples of (index_i, index_j) where: | |||||
| - index_i is the indices of the selected predictions (in order) | |||||
| - index_j is the indices of the corresponding selected targets (in order) | |||||
| For each batch element, it holds: | |||||
| len(index_i) = len(index_j) = min(num_queries, num_target_masks) | |||||
| """ | |||||
| t, bs, num_queries = outputs['pred_masks'].shape[:3] | |||||
| # We flatten to compute the cost matrices in a batch | |||||
| out_masks = outputs['pred_masks'].flatten( | |||||
| 1, 2) # [t, batch_size * num_queries, mask_h, mask_w] | |||||
| # preprocess and concat the target masks | |||||
| tgt_masks = [[ | |||||
| m for v in t_step_batch for m in v['masks'].unsqueeze(1) | |||||
| ] for t_step_batch in targets] | |||||
| # pad the target masks to a uniform shape | |||||
| tgt_masks, valid = list( | |||||
| zip(*[ | |||||
| nested_tensor_from_tensor_list(t).decompose() | |||||
| for t in tgt_masks | |||||
| ])) | |||||
| tgt_masks = torch.stack(tgt_masks).squeeze(2) | |||||
| # upsample predicted masks to target mask size | |||||
| out_masks = interpolate( | |||||
| out_masks, | |||||
| size=tgt_masks.shape[-2:], | |||||
| mode='bilinear', | |||||
| align_corners=False) | |||||
| # Compute the soft-tokens cost: | |||||
| if self.cost_is_referred > 0: | |||||
| cost_is_referred = compute_is_referred_cost(outputs, targets) | |||||
| else: | |||||
| cost_is_referred = 0 | |||||
| # Compute the DICE coefficient between the masks: | |||||
| if self.cost_dice > 0: | |||||
| cost_dice = -dice_coef(out_masks, tgt_masks) | |||||
| else: | |||||
| cost_dice = 0 | |||||
| # Final cost matrix | |||||
| C = self.cost_is_referred * cost_is_referred + self.cost_dice * cost_dice | |||||
| C = C.view(bs, num_queries, -1).cpu() | |||||
| num_traj_per_batch = [ | |||||
| len(v['masks']) for v in targets[0] | |||||
| ] # number of instance trajectories in each batch | |||||
| indices = [ | |||||
| linear_sum_assignment(c[i]) | |||||
| for i, c in enumerate(C.split(num_traj_per_batch, -1)) | |||||
| ] | |||||
| device = out_masks.device | |||||
| return [(torch.as_tensor(i, dtype=torch.int64, device=device), | |||||
| torch.as_tensor(j, dtype=torch.int64, device=device)) | |||||
| for i, j in indices] | |||||
| def dice_coef(inputs, targets, smooth=1.0): | |||||
| """ | |||||
| Compute the DICE coefficient, similar to generalized IOU for masks | |||||
| Args: | |||||
| inputs: A float tensor of arbitrary shape. | |||||
| The predictions for each example. | |||||
| targets: A float tensor with the same shape as inputs. Stores the binary | |||||
| classification label for each element in inputs | |||||
| (0 for the negative class and 1 for the positive class). | |||||
| """ | |||||
| inputs = inputs.sigmoid().flatten(2).unsqueeze(2) | |||||
| targets = targets.flatten(2).unsqueeze(1) | |||||
| numerator = 2 * (inputs * targets).sum(-1) | |||||
| denominator = inputs.sum(-1) + targets.sum(-1) | |||||
| coef = (numerator + smooth) / (denominator + smooth) | |||||
| coef = coef.mean( | |||||
| 0) # average on the temporal dim to get instance trajectory scores | |||||
| return coef | |||||
| def compute_is_referred_cost(outputs, targets): | |||||
| pred_is_referred = outputs['pred_is_referred'].flatten(1, 2).softmax( | |||||
| dim=-1) # [t, b*nq, 2] | |||||
| device = pred_is_referred.device | |||||
| t = pred_is_referred.shape[0] | |||||
| # number of instance trajectories in each batch | |||||
| num_traj_per_batch = torch.tensor([len(v['masks']) for v in targets[0]], | |||||
| device=device) | |||||
| total_trajectories = num_traj_per_batch.sum() | |||||
| # note that ref_indices are shared across time steps: | |||||
| ref_indices = torch.tensor( | |||||
| [v['referred_instance_idx'] for v in targets[0]], device=device) | |||||
| # convert ref_indices to fit flattened batch targets: | |||||
| ref_indices += torch.cat( | |||||
| (torch.zeros(1, dtype=torch.long, | |||||
| device=device), num_traj_per_batch.cumsum(0)[:-1])) | |||||
| # number of instance trajectories in each batch | |||||
| target_is_referred = torch.zeros((t, total_trajectories, 2), device=device) | |||||
| # 'no object' class by default (for un-referred objects) | |||||
| target_is_referred[:, :, :] = torch.tensor([0.0, 1.0], device=device) | |||||
| if 'is_ref_inst_visible' in targets[0][ | |||||
| 0]: # visibility labels are available per-frame for the referred object: | |||||
| is_ref_inst_visible = torch.stack([ | |||||
| torch.stack([t['is_ref_inst_visible'] for t in t_step]) | |||||
| for t_step in targets | |||||
| ]).permute(1, 0) | |||||
| for ref_idx, is_visible in zip(ref_indices, is_ref_inst_visible): | |||||
| is_visible = is_visible.nonzero().squeeze() | |||||
| target_is_referred[is_visible, | |||||
| ref_idx, :] = torch.tensor([1.0, 0.0], | |||||
| device=device) | |||||
| else: # assume that the referred object is visible in every frame: | |||||
| target_is_referred[:, ref_indices, :] = torch.tensor([1.0, 0.0], | |||||
| device=device) | |||||
| cost_is_referred = -(pred_is_referred.unsqueeze(2) | |||||
| * target_is_referred.unsqueeze(1)).sum(dim=-1).mean( | |||||
| dim=0) | |||||
| return cost_is_referred | |||||
| @@ -122,8 +122,8 @@ class MultimodalTransformer(nn.Module): | |||||
| with torch.inference_mode(mode=self.freeze_text_encoder): | with torch.inference_mode(mode=self.freeze_text_encoder): | ||||
| encoded_text = self.text_encoder(**tokenized_queries) | encoded_text = self.text_encoder(**tokenized_queries) | ||||
| # Transpose memory because pytorch's attention expects sequence first | # Transpose memory because pytorch's attention expects sequence first | ||||
| txt_memory = rearrange(encoded_text.last_hidden_state, | |||||
| 'b s c -> s b c') | |||||
| tmp_last_hidden_state = encoded_text.last_hidden_state.clone() | |||||
| txt_memory = rearrange(tmp_last_hidden_state, 'b s c -> s b c') | |||||
| txt_memory = self.txt_proj( | txt_memory = self.txt_proj( | ||||
| txt_memory) # change text embeddings dim to model dim | txt_memory) # change text embeddings dim to model dim | ||||
| # Invert attention mask that we get from huggingface because its the opposite in pytorch transformer | # Invert attention mask that we get from huggingface because its the opposite in pytorch transformer | ||||
| @@ -123,7 +123,8 @@ class WindowAttention3D(nn.Module): | |||||
| # define a parameter table of relative position bias | # define a parameter table of relative position bias | ||||
| wd, wh, ww = window_size | wd, wh, ww = window_size | ||||
| self.relative_position_bias_table = nn.Parameter( | self.relative_position_bias_table = nn.Parameter( | ||||
| torch.zeros((2 * wd - 1) * (2 * wh - 1) * (2 * ww - 1), num_heads)) | |||||
| torch.zeros((2 * wd - 1) * (2 * wh - 1) * (2 * ww - 1), | |||||
| num_heads)) # 2*Wd-1 * 2*Wh-1 * 2*Ww-1, nH | |||||
| # get pair-wise relative position index for each token inside the window | # get pair-wise relative position index for each token inside the window | ||||
| coords_d = torch.arange(self.window_size[0]) | coords_d = torch.arange(self.window_size[0]) | ||||
| @@ -269,8 +269,11 @@ class TinyNAS(nn.Module): | |||||
| the_block_class = block_info['class'] | the_block_class = block_info['class'] | ||||
| if the_block_class == 'ConvKXBNRELU': | if the_block_class == 'ConvKXBNRELU': | ||||
| if use_focus: | if use_focus: | ||||
| the_block = Focus(block_info['in'], block_info['out'], | |||||
| block_info['k']) | |||||
| the_block = Focus( | |||||
| block_info['in'], | |||||
| block_info['out'], | |||||
| block_info['k'], | |||||
| act=act) | |||||
| else: | else: | ||||
| the_block = ConvKXBNRELU( | the_block = ConvKXBNRELU( | ||||
| block_info['in'], | block_info['in'], | ||||
| @@ -6,6 +6,7 @@ import pickle | |||||
| import cv2 | import cv2 | ||||
| import torch | import torch | ||||
| import torch.nn as nn | |||||
| import torchvision | import torchvision | ||||
| from modelscope.metainfo import Models | from modelscope.metainfo import Models | ||||
| @@ -47,6 +48,7 @@ class SingleStageDetector(TorchModel): | |||||
| self.backbone = build_backbone(self.cfg.model.backbone) | self.backbone = build_backbone(self.cfg.model.backbone) | ||||
| self.neck = build_neck(self.cfg.model.neck) | self.neck = build_neck(self.cfg.model.neck) | ||||
| self.head = build_head(self.cfg.model.head) | self.head = build_head(self.cfg.model.head) | ||||
| self.apply(self.init_bn) | |||||
| self.load_pretrain_model(model_path) | self.load_pretrain_model(model_path) | ||||
| @@ -59,6 +61,12 @@ class SingleStageDetector(TorchModel): | |||||
| new_state_dict[k] = v | new_state_dict[k] = v | ||||
| self.load_state_dict(new_state_dict, strict=True) | self.load_state_dict(new_state_dict, strict=True) | ||||
| def init_bn(self, M): | |||||
| for m in M.modules(): | |||||
| if isinstance(m, nn.BatchNorm2d): | |||||
| m.eps = 1e-3 | |||||
| m.momentum = 0.03 | |||||
| def inference(self, x): | def inference(self, x): | ||||
| if self.training: | if self.training: | ||||
| @@ -1,6 +1,7 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | # Copyright (c) Alibaba, Inc. and its affiliates. | ||||
| import os | import os | ||||
| from os import path as osp | |||||
| from typing import Any, Dict | from typing import Any, Dict | ||||
| import json | import json | ||||
| @@ -23,7 +24,8 @@ from modelscope.models.multi_modal.ofa import OFAModel, OFATokenizer | |||||
| from modelscope.models.multi_modal.ofa.generate import sequence_generator as sg | from modelscope.models.multi_modal.ofa.generate import sequence_generator as sg | ||||
| from modelscope.models.multi_modal.ofa.generate.search import Sampling | from modelscope.models.multi_modal.ofa.generate.search import Sampling | ||||
| from modelscope.models.multi_modal.ofa.generate.utils import move_to_device | from modelscope.models.multi_modal.ofa.generate.utils import move_to_device | ||||
| from modelscope.utils.constant import Tasks | |||||
| from modelscope.utils.config import Config | |||||
| from modelscope.utils.constant import ModelFile, Tasks | |||||
| try: | try: | ||||
| from torchvision.transforms import InterpolationMode | from torchvision.transforms import InterpolationMode | ||||
| @@ -133,6 +135,8 @@ class OfaForTextToImageSynthesis(Model): | |||||
| super().__init__(model_dir=model_dir, *args, **kwargs) | super().__init__(model_dir=model_dir, *args, **kwargs) | ||||
| # Initialize ofa | # Initialize ofa | ||||
| model = OFAModel.from_pretrained(model_dir) | model = OFAModel.from_pretrained(model_dir) | ||||
| self.cfg = Config.from_file( | |||||
| osp.join(model_dir, ModelFile.CONFIGURATION)) | |||||
| self.model = model.module if hasattr(model, 'module') else model | self.model = model.module if hasattr(model, 'module') else model | ||||
| self.tokenizer = OFATokenizer.from_pretrained(model_dir) | self.tokenizer = OFATokenizer.from_pretrained(model_dir) | ||||
| self.tokenizer.add_tokens(['<code_{}>'.format(i) for i in range(8192)]) | self.tokenizer.add_tokens(['<code_{}>'.format(i) for i in range(8192)]) | ||||
| @@ -171,6 +175,8 @@ class OfaForTextToImageSynthesis(Model): | |||||
| 'gen_code': True, | 'gen_code': True, | ||||
| 'constraint_range': '50265,58457' | 'constraint_range': '50265,58457' | ||||
| } | } | ||||
| if hasattr(self.cfg.model, 'beam_search'): | |||||
| sg_args.update(self.cfg.model.beam_search) | |||||
| self.generator = sg.SequenceGenerator(**sg_args) | self.generator = sg.SequenceGenerator(**sg_args) | ||||
| def clip_tokenize(self, texts, context_length=77, truncate=False): | def clip_tokenize(self, texts, context_length=77, truncate=False): | ||||
| @@ -8,7 +8,6 @@ from torch import nn | |||||
| from modelscope.metainfo import Heads | from modelscope.metainfo import Heads | ||||
| from modelscope.models.base import TorchHead | from modelscope.models.base import TorchHead | ||||
| from modelscope.models.builder import HEADS | from modelscope.models.builder import HEADS | ||||
| from modelscope.outputs import OutputKeys | |||||
| from modelscope.utils.constant import Tasks | from modelscope.utils.constant import Tasks | ||||
| @@ -27,9 +26,8 @@ class TextGenerationHead(TorchHead): | |||||
| def forward(self, inputs=None): | def forward(self, inputs=None): | ||||
| logits = self.linear(inputs) | logits = self.linear(inputs) | ||||
| return {OutputKeys.LOGITS: logits} | |||||
| return logits | |||||
| def compute_loss(self, outputs: Dict[str, torch.Tensor], | |||||
| def compute_loss(self, logits: torch.Tensor, | |||||
| labels) -> Dict[str, torch.Tensor]: | labels) -> Dict[str, torch.Tensor]: | ||||
| logits = outputs[OutputKeys.LOGITS] | |||||
| return {OutputKeys.LOSS: F.cross_entropy(logits, labels)} | |||||
| return F.cross_entropy(logits, labels) | |||||
| @@ -1,7 +1,6 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | # Copyright (c) Alibaba, Inc. and its affiliates. | ||||
| from typing import Any, Dict | from typing import Any, Dict | ||||
| import addict | |||||
| import numpy as np | import numpy as np | ||||
| from transformers.modeling_utils import PreTrainedModel | from transformers.modeling_utils import PreTrainedModel | ||||
| @@ -9,7 +8,8 @@ from modelscope.metainfo import TaskModels | |||||
| from modelscope.models.builder import MODELS | from modelscope.models.builder import MODELS | ||||
| from modelscope.models.nlp.task_models.task_model import \ | from modelscope.models.nlp.task_models.task_model import \ | ||||
| SingleBackboneTaskModelBase | SingleBackboneTaskModelBase | ||||
| from modelscope.outputs import OutputKeys | |||||
| from modelscope.outputs import (OutputKeys, TextGenerationModelOutput, | |||||
| TokenGeneratorOutput) | |||||
| from modelscope.utils.constant import Tasks | from modelscope.utils.constant import Tasks | ||||
| __all__ = ['TaskModelForTextGeneration'] | __all__ = ['TaskModelForTextGeneration'] | ||||
| @@ -43,12 +43,12 @@ class TaskModelForTextGeneration(SingleBackboneTaskModelBase, PreTrainedModel): | |||||
| backbone_outputs = super().forward(input) | backbone_outputs = super().forward(input) | ||||
| hidden_states = backbone_outputs[0] | hidden_states = backbone_outputs[0] | ||||
| outputs = self.head.forward(hidden_states) | |||||
| logits = self.head.forward(hidden_states) | |||||
| loss = None | |||||
| if labels is not None: | if labels is not None: | ||||
| input[OutputKeys.LABELS] = labels | input[OutputKeys.LABELS] = labels | ||||
| loss = self.compute_loss(outputs, labels) | |||||
| outputs.update(loss) | |||||
| return addict.Dict(outputs) | |||||
| loss = self.compute_loss(logits, labels) | |||||
| return TextGenerationModelOutput(logits=logits, loss=loss) | |||||
| def prepare_inputs_for_generation(self, input_ids, past=None, **kwargs): | def prepare_inputs_for_generation(self, input_ids, past=None, **kwargs): | ||||
| # only last token for inputs_ids if past is defined in kwargs | # only last token for inputs_ids if past is defined in kwargs | ||||
| @@ -76,4 +76,12 @@ class TaskModelForTextGeneration(SingleBackboneTaskModelBase, PreTrainedModel): | |||||
| def generate(self, inputs, *args, **kwargs): | def generate(self, inputs, *args, **kwargs): | ||||
| input_ids = inputs['input_ids'] if isinstance(inputs, Dict) else inputs | input_ids = inputs['input_ids'] if isinstance(inputs, Dict) else inputs | ||||
| return super().generate(input_ids, *args, **kwargs) | |||||
| generate_output = super().generate(input_ids, *args, **kwargs) | |||||
| if isinstance(generate_output, Dict): | |||||
| return TokenGeneratorOutput( | |||||
| sequences=generate_output.sequences, | |||||
| scores=generate_output.scores, | |||||
| attentions=generate_output.attentions, | |||||
| hidden_states=generate_output.hidden_states) | |||||
| else: | |||||
| return TokenGeneratorOutput(sequences=generate_output) | |||||
| @@ -66,7 +66,6 @@ class TokenClassificationModel(SingleBackboneTaskModelBase): | |||||
| attentions=outputs.attentions, | attentions=outputs.attentions, | ||||
| offset_mapping=input['offset_mapping'], | offset_mapping=input['offset_mapping'], | ||||
| ) | ) | ||||
| return outputs | |||||
| def extract_logits(self, outputs): | def extract_logits(self, outputs): | ||||
| return outputs[OutputKeys.LOGITS].cpu().detach() | return outputs[OutputKeys.LOGITS].cpu().detach() | ||||
| @@ -288,8 +288,8 @@ class InvariantPointAttention(nn.Module): | |||||
| pt_att *= pt_att | pt_att *= pt_att | ||||
| pt_att = pt_att.sum(dim=-1) | pt_att = pt_att.sum(dim=-1) | ||||
| head_weights = self.softplus(self.head_weights).view( | |||||
| *((1, ) * len(pt_att.shape[:-2]) + (-1, 1))) | |||||
| head_weights = self.softplus(self.head_weights).view( # noqa | |||||
| *((1, ) * len(pt_att.shape[:-2]) + (-1, 1))) # noqa | |||||
| head_weights = head_weights * math.sqrt( | head_weights = head_weights * math.sqrt( | ||||
| 1.0 / (3 * (self.num_qk_points * 9.0 / 2))) | 1.0 / (3 * (self.num_qk_points * 9.0 / 2))) | ||||
| pt_att *= head_weights * (-0.5) | pt_att *= head_weights * (-0.5) | ||||
| @@ -20,13 +20,15 @@ from modelscope.msdatasets.task_datasets.builder import build_task_dataset | |||||
| from modelscope.msdatasets.utils.dataset_builder import ExternalDataset | from modelscope.msdatasets.utils.dataset_builder import ExternalDataset | ||||
| from modelscope.msdatasets.utils.dataset_utils import ( | from modelscope.msdatasets.utils.dataset_utils import ( | ||||
| get_dataset_files, get_target_dataset_structure, load_dataset_builder) | get_dataset_files, get_target_dataset_structure, load_dataset_builder) | ||||
| from modelscope.msdatasets.utils.delete_utils import DatasetDeleteManager | |||||
| from modelscope.msdatasets.utils.download_utils import DatasetDownloadManager | from modelscope.msdatasets.utils.download_utils import DatasetDownloadManager | ||||
| from modelscope.msdatasets.utils.upload_utils import DatasetUploadManager | from modelscope.msdatasets.utils.upload_utils import DatasetUploadManager | ||||
| from modelscope.utils.config import ConfigDict | from modelscope.utils.config import ConfigDict | ||||
| from modelscope.utils.config_ds import MS_DATASETS_CACHE | from modelscope.utils.config_ds import MS_DATASETS_CACHE | ||||
| from modelscope.utils.constant import (DEFAULT_DATASET_NAMESPACE, | from modelscope.utils.constant import (DEFAULT_DATASET_NAMESPACE, | ||||
| DEFAULT_DATASET_REVISION, | DEFAULT_DATASET_REVISION, | ||||
| DatasetFormations, DownloadMode, Hubs) | |||||
| DatasetFormations, DownloadMode, Hubs, | |||||
| UploadMode) | |||||
| from modelscope.utils.logger import get_logger | from modelscope.utils.logger import get_logger | ||||
| logger = get_logger() | logger = get_logger() | ||||
| @@ -576,15 +578,17 @@ class MsDataset: | |||||
| return self._hf_ds.rename_columns(column_mapping) | return self._hf_ds.rename_columns(column_mapping) | ||||
| @staticmethod | @staticmethod | ||||
| def upload(object_name: str, | |||||
| local_file_path: str, | |||||
| dataset_name: str, | |||||
| namespace: Optional[str] = DEFAULT_DATASET_NAMESPACE, | |||||
| version: Optional[str] = DEFAULT_DATASET_REVISION, | |||||
| num_processes: Optional[int] = None, | |||||
| chunksize: Optional[int] = 1, | |||||
| filter_hidden_files: Optional[bool] = True) -> None: | |||||
| """Upload dataset file or directory to the ModelScope Hub. Please login to the ModelScope Hub first. | |||||
| def upload( | |||||
| object_name: str, | |||||
| local_file_path: str, | |||||
| dataset_name: str, | |||||
| namespace: Optional[str] = DEFAULT_DATASET_NAMESPACE, | |||||
| version: Optional[str] = DEFAULT_DATASET_REVISION, | |||||
| num_processes: Optional[int] = None, | |||||
| chunksize: Optional[int] = 1, | |||||
| filter_hidden_files: Optional[bool] = True, | |||||
| upload_mode: Optional[UploadMode] = UploadMode.OVERWRITE) -> None: | |||||
| """Upload dataset file or directory to the ModelScope Hub. Please log in to the ModelScope Hub first. | |||||
| Args: | Args: | ||||
| object_name (str): The object name on ModelScope, in the form of your-dataset-name.zip or your-dataset-name | object_name (str): The object name on ModelScope, in the form of your-dataset-name.zip or your-dataset-name | ||||
| @@ -592,7 +596,7 @@ class MsDataset: | |||||
| dataset_name (str): Name of the dataset | dataset_name (str): Name of the dataset | ||||
| namespace(str, optional): Namespace of the dataset | namespace(str, optional): Namespace of the dataset | ||||
| version: Optional[str]: Version of the dataset | version: Optional[str]: Version of the dataset | ||||
| num_processes: Optional[int]: The number of processes used for multi-process uploading. | |||||
| num_processes: Optional[int]: The number of processes used for multiprocess uploading. | |||||
| This is only applicable when local_file_path is a directory, and we are uploading mutliple-files | This is only applicable when local_file_path is a directory, and we are uploading mutliple-files | ||||
| insided the directory. When None provided, the number returned by os.cpu_count() is used as default. | insided the directory. When None provided, the number returned by os.cpu_count() is used as default. | ||||
| chunksize: Optional[int]: The chunksize of objects to upload. | chunksize: Optional[int]: The chunksize of objects to upload. | ||||
| @@ -600,24 +604,34 @@ class MsDataset: | |||||
| using the default value of 1. Available if local_file_path is a directory. | using the default value of 1. Available if local_file_path is a directory. | ||||
| filter_hidden_files: Optional[bool]: Whether to filter hidden files. | filter_hidden_files: Optional[bool]: Whether to filter hidden files. | ||||
| Available if local_file_path is a directory. | Available if local_file_path is a directory. | ||||
| upload_mode: Optional[UploadMode]: How to upload objects from local. Default: UploadMode.OVERWRITE, upload | |||||
| all objects from local, existing remote objects may be overwritten. | |||||
| Returns: | Returns: | ||||
| None | None | ||||
| """ | """ | ||||
| if not object_name: | |||||
| raise ValueError('object_name cannot be empty!') | |||||
| _upload_manager = DatasetUploadManager( | _upload_manager = DatasetUploadManager( | ||||
| dataset_name=dataset_name, namespace=namespace, version=version) | dataset_name=dataset_name, namespace=namespace, version=version) | ||||
| upload_mode = UploadMode(upload_mode or UploadMode.OVERWRITE) | |||||
| if os.path.isfile(local_file_path): | if os.path.isfile(local_file_path): | ||||
| _upload_manager.upload( | _upload_manager.upload( | ||||
| object_name=object_name, local_file_path=local_file_path) | |||||
| object_name=object_name, | |||||
| local_file_path=local_file_path, | |||||
| upload_mode=upload_mode) | |||||
| elif os.path.isdir(local_file_path): | elif os.path.isdir(local_file_path): | ||||
| _upload_manager.upload_dir( | _upload_manager.upload_dir( | ||||
| object_dir_name=object_name, | object_dir_name=object_name, | ||||
| local_dir_path=local_file_path, | local_dir_path=local_file_path, | ||||
| num_processes=num_processes, | num_processes=num_processes, | ||||
| chunksize=chunksize, | chunksize=chunksize, | ||||
| filter_hidden_files=filter_hidden_files) | |||||
| filter_hidden_files=filter_hidden_files, | |||||
| upload_mode=upload_mode) | |||||
| else: | else: | ||||
| raise ValueError( | raise ValueError( | ||||
| f'{local_file_path} is not a valid file path or directory') | f'{local_file_path} is not a valid file path or directory') | ||||
| @@ -672,7 +686,7 @@ class MsDataset: | |||||
| revision of the model you want to clone from. Can be any of a branch, tag or commit hash | revision of the model you want to clone from. Can be any of a branch, tag or commit hash | ||||
| auth_token(`Optional[str]`): | auth_token(`Optional[str]`): | ||||
| token obtained when calling `HubApi.login()`. Usually you can safely ignore the parameter | token obtained when calling `HubApi.login()`. Usually you can safely ignore the parameter | ||||
| as the token is already saved when you login the first time, if None, we will use saved token. | |||||
| as the token is already saved when you log in the first time, if None, we will use saved token. | |||||
| git_path:(`Optional[str]`): | git_path:(`Optional[str]`): | ||||
| The git command line path, if None, we use 'git' | The git command line path, if None, we use 'git' | ||||
| force (Optional[bool]): whether to use forced-push. | force (Optional[bool]): whether to use forced-push. | ||||
| @@ -687,8 +701,29 @@ class MsDataset: | |||||
| revision=revision, | revision=revision, | ||||
| auth_token=auth_token, | auth_token=auth_token, | ||||
| git_path=git_path) | git_path=git_path) | ||||
| _repo.push( | |||||
| commit_message=commit_message, | |||||
| local_branch=revision, | |||||
| remote_branch=revision, | |||||
| force=force) | |||||
| _repo.push(commit_message=commit_message, branch=revision, force=force) | |||||
| @staticmethod | |||||
| def delete(object_name: str, | |||||
| dataset_name: str, | |||||
| namespace: Optional[str] = DEFAULT_DATASET_NAMESPACE, | |||||
| version: Optional[str] = DEFAULT_DATASET_REVISION) -> str: | |||||
| """ Delete object of dataset. Please log in first and make sure you have permission to manage the dataset. | |||||
| Args: | |||||
| object_name (str): The object name of dataset to be deleted. Could be a name of file or directory. If it's | |||||
| directory, then ends with `/`. | |||||
| For example: your-data-name.zip, train/001/img_001.png, train/, ... | |||||
| dataset_name (str): Path or name of the dataset. | |||||
| namespace(str, optional): Namespace of the dataset. | |||||
| version (str, optional): Version of the dataset. | |||||
| Returns: | |||||
| res_msg (str): Response message. | |||||
| """ | |||||
| _delete_manager = DatasetDeleteManager( | |||||
| dataset_name=dataset_name, namespace=namespace, version=version) | |||||
| resp_msg = _delete_manager.delete(object_name=object_name) | |||||
| logger.info(f'Object {object_name} successfully removed!') | |||||
| return resp_msg | |||||
| @@ -13,6 +13,7 @@ if TYPE_CHECKING: | |||||
| from .video_summarization_dataset import VideoSummarizationDataset | from .video_summarization_dataset import VideoSummarizationDataset | ||||
| from .image_inpainting import ImageInpaintingDataset | from .image_inpainting import ImageInpaintingDataset | ||||
| from .text_ranking_dataset import TextRankingDataset | from .text_ranking_dataset import TextRankingDataset | ||||
| from .referring_video_object_segmentation import ReferringVideoObjectSegmentationDataset | |||||
| else: | else: | ||||
| _import_structure = { | _import_structure = { | ||||
| @@ -29,6 +30,8 @@ else: | |||||
| 'sidd_image_denoising_dataset': ['SiddImageDenoisingDataset'], | 'sidd_image_denoising_dataset': ['SiddImageDenoisingDataset'], | ||||
| 'image_portrait_enhancement_dataset': | 'image_portrait_enhancement_dataset': | ||||
| ['ImagePortraitEnhancementDataset'], | ['ImagePortraitEnhancementDataset'], | ||||
| 'referring_video_object_segmentation': | |||||
| ['ReferringVideoObjectSegmentationDataset'], | |||||
| } | } | ||||
| import sys | import sys | ||||
| @@ -0,0 +1,3 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| from .referring_video_object_segmentation_dataset import \ | |||||
| ReferringVideoObjectSegmentationDataset | |||||
| @@ -0,0 +1,361 @@ | |||||
| # Part of the implementation is borrowed and modified from MTTR, | |||||
| # publicly available at https://github.com/mttr2021/MTTR | |||||
| from glob import glob | |||||
| from os import path as osp | |||||
| import h5py | |||||
| import json | |||||
| import numpy as np | |||||
| import pandas | |||||
| import torch | |||||
| import torch.distributed as dist | |||||
| import torchvision.transforms.functional as F | |||||
| from pycocotools.mask import area, encode | |||||
| from torchvision.io import read_video | |||||
| from tqdm import tqdm | |||||
| from modelscope.metainfo import Models | |||||
| from modelscope.models.cv.referring_video_object_segmentation.utils import \ | |||||
| nested_tensor_from_videos_list | |||||
| from modelscope.msdatasets.task_datasets.builder import TASK_DATASETS | |||||
| from modelscope.msdatasets.task_datasets.torch_base_dataset import \ | |||||
| TorchTaskDataset | |||||
| from modelscope.utils.constant import Tasks | |||||
| from modelscope.utils.logger import get_logger | |||||
| from . import transformers as T | |||||
| LOGGER = get_logger() | |||||
| def get_image_id(video_id, frame_idx, ref_instance_a2d_id): | |||||
| image_id = f'v_{video_id}_f_{frame_idx}_i_{ref_instance_a2d_id}' | |||||
| return image_id | |||||
| @TASK_DATASETS.register_module( | |||||
| Tasks.referring_video_object_segmentation, | |||||
| module_name=Models.referring_video_object_segmentation) | |||||
| class ReferringVideoObjectSegmentationDataset(TorchTaskDataset): | |||||
| def __init__(self, **kwargs): | |||||
| split_config = kwargs['split_config'] | |||||
| LOGGER.info(kwargs) | |||||
| data_cfg = kwargs.get('cfg').data_kwargs | |||||
| trans_cfg = kwargs.get('cfg').transformers_kwargs | |||||
| distributed = data_cfg.get('distributed', False) | |||||
| self.data_root = next(iter(split_config.values())) | |||||
| if not osp.exists(self.data_root): | |||||
| self.data_root = osp.dirname(self.data_root) | |||||
| assert osp.exists(self.data_root) | |||||
| self.window_size = data_cfg.get('window_size', 8) | |||||
| self.mask_annotations_dir = osp.join( | |||||
| self.data_root, 'text_annotations/annotation_with_instances') | |||||
| self.videos_dir = osp.join(self.data_root, 'Release/CLIPS320') | |||||
| self.subset_type = next(iter(split_config.keys())) | |||||
| self.text_annotations = self.get_text_annotations( | |||||
| self.data_root, self.subset_type, distributed) | |||||
| self.transforms = A2dSentencesTransforms(self.subset_type, **trans_cfg) | |||||
| self.collator = Collator() | |||||
| self.ann_file = osp.join( | |||||
| self.data_root, | |||||
| data_cfg.get('ann_file', | |||||
| 'a2d_sentences_test_annotations_in_coco_format.json')) | |||||
| # create ground-truth test annotations for the evaluation process if necessary: | |||||
| if self.subset_type == 'test' and not osp.exists(self.ann_file): | |||||
| if (distributed and dist.get_rank() == 0) or not distributed: | |||||
| create_a2d_sentences_ground_truth_test_annotations( | |||||
| self.data_root, self.subset_type, | |||||
| self.mask_annotations_dir, self.ann_file) | |||||
| if distributed: | |||||
| dist.barrier() | |||||
| def __len__(self): | |||||
| return len(self.text_annotations) | |||||
| def __getitem__(self, idx): | |||||
| text_query, video_id, frame_idx, instance_id = self.text_annotations[ | |||||
| idx] | |||||
| text_query = ' '.join( | |||||
| text_query.lower().split()) # clean up the text query | |||||
| # read the source window frames: | |||||
| video_frames, _, _ = read_video( | |||||
| osp.join(self.videos_dir, f'{video_id}.mp4'), | |||||
| pts_unit='sec') # (T, H, W, C) | |||||
| # get a window of window_size frames with frame frame_idx in the middle. | |||||
| # note that the original a2d dataset is 1 indexed, so we have to subtract 1 from frame_idx | |||||
| start_idx, end_idx = frame_idx - 1 - self.window_size // 2, frame_idx - 1 + ( | |||||
| self.window_size + 1) // 2 | |||||
| # extract the window source frames: | |||||
| source_frames = [] | |||||
| for i in range(start_idx, end_idx): | |||||
| i = min(max(i, 0), | |||||
| len(video_frames) | |||||
| - 1) # pad out of range indices with edge frames | |||||
| source_frames.append( | |||||
| F.to_pil_image(video_frames[i].permute(2, 0, 1))) | |||||
| # read the instance mask: | |||||
| frame_annot_path = osp.join(self.mask_annotations_dir, video_id, | |||||
| f'{frame_idx:05d}.h5') | |||||
| f = h5py.File(frame_annot_path, 'r') | |||||
| instances = list(f['instance']) | |||||
| instance_idx = instances.index( | |||||
| instance_id) # existence was already validated during init | |||||
| instance_masks = np.array(f['reMask']) | |||||
| if len(instances) == 1: | |||||
| instance_masks = instance_masks[np.newaxis, ...] | |||||
| instance_masks = torch.tensor(instance_masks).transpose(1, 2) | |||||
| mask_rles = [encode(mask) for mask in instance_masks.numpy()] | |||||
| mask_areas = area(mask_rles).astype(np.float) | |||||
| f.close() | |||||
| # create the target dict for the center frame: | |||||
| target = { | |||||
| 'masks': instance_masks, | |||||
| 'orig_size': instance_masks. | |||||
| shape[-2:], # original frame shape without any augmentations | |||||
| # size with augmentations, will be changed inside transforms if necessary | |||||
| 'size': instance_masks.shape[-2:], | |||||
| 'referred_instance_idx': torch.tensor( | |||||
| instance_idx), # idx in 'masks' of the text referred instance | |||||
| 'area': torch.tensor(mask_areas), | |||||
| 'iscrowd': | |||||
| torch.zeros(len(instance_masks) | |||||
| ), # for compatibility with DETR COCO transforms | |||||
| 'image_id': get_image_id(video_id, frame_idx, instance_id) | |||||
| } | |||||
| # create dummy targets for adjacent frames: | |||||
| targets = self.window_size * [None] | |||||
| center_frame_idx = self.window_size // 2 | |||||
| targets[center_frame_idx] = target | |||||
| source_frames, targets, text_query = self.transforms( | |||||
| source_frames, targets, text_query) | |||||
| return source_frames, targets, text_query | |||||
| @staticmethod | |||||
| def get_text_annotations(root_path, subset, distributed): | |||||
| saved_annotations_file_path = osp.join( | |||||
| root_path, f'sentences_single_frame_{subset}_annotations.json') | |||||
| if osp.exists(saved_annotations_file_path): | |||||
| with open(saved_annotations_file_path, 'r') as f: | |||||
| text_annotations_by_frame = [tuple(a) for a in json.load(f)] | |||||
| return text_annotations_by_frame | |||||
| elif (distributed and dist.get_rank() == 0) or not distributed: | |||||
| print(f'building a2d sentences {subset} text annotations...') | |||||
| # without 'header == None' pandas will ignore the first sample... | |||||
| a2d_data_info = pandas.read_csv( | |||||
| osp.join(root_path, 'Release/videoset.csv'), header=None) | |||||
| # 'vid', 'label', 'start_time', 'end_time', 'height', 'width', 'total_frames', 'annotated_frames', 'subset' | |||||
| a2d_data_info.columns = [ | |||||
| 'vid', '', '', '', '', '', '', '', 'subset' | |||||
| ] | |||||
| with open( | |||||
| osp.join(root_path, 'text_annotations/missed_videos.txt'), | |||||
| 'r') as f: | |||||
| unused_videos = f.read().splitlines() | |||||
| subsets = {'train': 0, 'test': 1} | |||||
| # filter unused videos and videos which do not belong to our train/test subset: | |||||
| used_videos = a2d_data_info[ | |||||
| ~a2d_data_info.vid.isin(unused_videos) | |||||
| & (a2d_data_info.subset == subsets[subset])] | |||||
| used_videos_ids = list(used_videos['vid']) | |||||
| text_annotations = pandas.read_csv( | |||||
| osp.join(root_path, 'text_annotations/annotation.txt')) | |||||
| # filter the text annotations based on the used videos: | |||||
| used_text_annotations = text_annotations[ | |||||
| text_annotations.video_id.isin(used_videos_ids)] | |||||
| # remove a single dataset annotation mistake in video: T6bNPuKV-wY | |||||
| used_text_annotations = used_text_annotations[ | |||||
| used_text_annotations['instance_id'] != '1 (copy)'] | |||||
| # convert data-frame to list of tuples: | |||||
| used_text_annotations = list( | |||||
| used_text_annotations.to_records(index=False)) | |||||
| text_annotations_by_frame = [] | |||||
| mask_annotations_dir = osp.join( | |||||
| root_path, 'text_annotations/annotation_with_instances') | |||||
| for video_id, instance_id, text_query in tqdm( | |||||
| used_text_annotations): | |||||
| frame_annot_paths = sorted( | |||||
| glob(osp.join(mask_annotations_dir, video_id, '*.h5'))) | |||||
| instance_id = int(instance_id) | |||||
| for p in frame_annot_paths: | |||||
| f = h5py.File(p) | |||||
| instances = list(f['instance']) | |||||
| if instance_id in instances: | |||||
| # in case this instance does not appear in this frame it has no ground-truth mask, and thus this | |||||
| # frame-instance pair is ignored in evaluation, same as SOTA method: CMPC-V. check out: | |||||
| # https://github.com/spyflying/CMPC-Refseg/blob/094639b8bf00cc169ea7b49cdf9c87fdfc70d963/CMPC_video/build_A2D_batches.py#L98 | |||||
| frame_idx = int(p.split('/')[-1].split('.')[0]) | |||||
| text_query = text_query.lower( | |||||
| ) # lower the text query prior to augmentation & tokenization | |||||
| text_annotations_by_frame.append( | |||||
| (text_query, video_id, frame_idx, instance_id)) | |||||
| with open(saved_annotations_file_path, 'w') as f: | |||||
| json.dump(text_annotations_by_frame, f) | |||||
| if distributed: | |||||
| dist.barrier() | |||||
| with open(saved_annotations_file_path, 'r') as f: | |||||
| text_annotations_by_frame = [tuple(a) for a in json.load(f)] | |||||
| return text_annotations_by_frame | |||||
| class A2dSentencesTransforms: | |||||
| def __init__(self, subset_type, horizontal_flip_augmentations, | |||||
| resize_and_crop_augmentations, train_short_size, | |||||
| train_max_size, eval_short_size, eval_max_size, **kwargs): | |||||
| self.h_flip_augmentation = subset_type == 'train' and horizontal_flip_augmentations | |||||
| normalize = T.Normalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225]) | |||||
| scales = [ | |||||
| train_short_size | |||||
| ] # no more scales for now due to GPU memory constraints. might be changed later | |||||
| transforms = [] | |||||
| if resize_and_crop_augmentations: | |||||
| if subset_type == 'train': | |||||
| transforms.append( | |||||
| T.RandomResize(scales, max_size=train_max_size)) | |||||
| elif subset_type == 'test': | |||||
| transforms.append( | |||||
| T.RandomResize([eval_short_size], max_size=eval_max_size)), | |||||
| transforms.extend([T.ToTensor(), normalize]) | |||||
| self.size_transforms = T.Compose(transforms) | |||||
| def __call__(self, source_frames, targets, text_query): | |||||
| if self.h_flip_augmentation and torch.rand(1) > 0.5: | |||||
| source_frames = [F.hflip(f) for f in source_frames] | |||||
| targets[len(targets) // 2]['masks'] = F.hflip( | |||||
| targets[len(targets) // 2]['masks']) | |||||
| # Note - is it possible for both 'right' and 'left' to appear together in the same query. hence this fix: | |||||
| text_query = text_query.replace('left', '@').replace( | |||||
| 'right', 'left').replace('@', 'right') | |||||
| source_frames, targets = list( | |||||
| zip(*[ | |||||
| self.size_transforms(f, t) | |||||
| for f, t in zip(source_frames, targets) | |||||
| ])) | |||||
| source_frames = torch.stack(source_frames) # [T, 3, H, W] | |||||
| return source_frames, targets, text_query | |||||
| class Collator: | |||||
| def __call__(self, batch): | |||||
| samples, targets, text_queries = list(zip(*batch)) | |||||
| samples = nested_tensor_from_videos_list(samples) # [T, B, C, H, W] | |||||
| # convert targets to a list of tuples. outer list - time steps, inner tuples - time step batch | |||||
| targets = list(zip(*targets)) | |||||
| batch_dict = { | |||||
| 'samples': samples, | |||||
| 'targets': targets, | |||||
| 'text_queries': text_queries | |||||
| } | |||||
| return batch_dict | |||||
| def get_text_annotations_gt(root_path, subset): | |||||
| # without 'header == None' pandas will ignore the first sample... | |||||
| a2d_data_info = pandas.read_csv( | |||||
| osp.join(root_path, 'Release/videoset.csv'), header=None) | |||||
| # 'vid', 'label', 'start_time', 'end_time', 'height', 'width', 'total_frames', 'annotated_frames', 'subset' | |||||
| a2d_data_info.columns = ['vid', '', '', '', '', '', '', '', 'subset'] | |||||
| with open(osp.join(root_path, 'text_annotations/missed_videos.txt'), | |||||
| 'r') as f: | |||||
| unused_videos = f.read().splitlines() | |||||
| subsets = {'train': 0, 'test': 1} | |||||
| # filter unused videos and videos which do not belong to our train/test subset: | |||||
| used_videos = a2d_data_info[~a2d_data_info.vid.isin(unused_videos) | |||||
| & (a2d_data_info.subset == subsets[subset])] | |||||
| used_videos_ids = list(used_videos['vid']) | |||||
| text_annotations = pandas.read_csv( | |||||
| osp.join(root_path, 'text_annotations/annotation.txt')) | |||||
| # filter the text annotations based on the used videos: | |||||
| used_text_annotations = text_annotations[text_annotations.video_id.isin( | |||||
| used_videos_ids)] | |||||
| # convert data-frame to list of tuples: | |||||
| used_text_annotations = list(used_text_annotations.to_records(index=False)) | |||||
| return used_text_annotations | |||||
| def create_a2d_sentences_ground_truth_test_annotations(dataset_path, | |||||
| subset_type, | |||||
| mask_annotations_dir, | |||||
| output_path): | |||||
| text_annotations = get_text_annotations_gt(dataset_path, subset_type) | |||||
| # Note - it is very important to start counting the instance and category ids from 1 (not 0). This is implicitly | |||||
| # expected by pycocotools as it is the convention of the original coco dataset annotations. | |||||
| categories_dict = [{ | |||||
| 'id': 1, | |||||
| 'name': 'dummy_class' | |||||
| }] # dummy class, as categories are not used/predicted in RVOS | |||||
| images_dict = [] | |||||
| annotations_dict = [] | |||||
| images_set = set() | |||||
| instance_id_counter = 1 | |||||
| for annot in tqdm(text_annotations): | |||||
| video_id, instance_id, text_query = annot | |||||
| annot_paths = sorted( | |||||
| glob(osp.join(mask_annotations_dir, video_id, '*.h5'))) | |||||
| for p in annot_paths: | |||||
| f = h5py.File(p) | |||||
| instances = list(f['instance']) | |||||
| try: | |||||
| instance_idx = instances.index(int(instance_id)) | |||||
| # in case this instance does not appear in this frame it has no ground-truth mask, and thus this | |||||
| # frame-instance pair is ignored in evaluation, same as SOTA method: CMPC-V. check out: | |||||
| # https://github.com/spyflying/CMPC-Refseg/blob/094639b8bf00cc169ea7b49cdf9c87fdfc70d963/CMPC_video/build_A2D_batches.py#L98 | |||||
| except ValueError: | |||||
| continue # instance_id does not appear in current frame | |||||
| mask = f['reMask'][instance_idx] if len( | |||||
| instances) > 1 else np.array(f['reMask']) | |||||
| mask = mask.transpose() | |||||
| frame_idx = int(p.split('/')[-1].split('.')[0]) | |||||
| image_id = get_image_id(video_id, frame_idx, instance_id) | |||||
| assert image_id not in images_set, f'error: image id: {image_id} appeared twice' | |||||
| images_set.add(image_id) | |||||
| images_dict.append({ | |||||
| 'id': image_id, | |||||
| 'height': mask.shape[0], | |||||
| 'width': mask.shape[1] | |||||
| }) | |||||
| mask_rle = encode(mask) | |||||
| mask_rle['counts'] = mask_rle['counts'].decode('ascii') | |||||
| mask_area = float(area(mask_rle)) | |||||
| bbox = f['reBBox'][:, instance_idx] if len( | |||||
| instances) > 1 else np.array( | |||||
| f['reBBox']).squeeze() # x1y1x2y2 form | |||||
| bbox_xywh = [ | |||||
| bbox[0], bbox[1], bbox[2] - bbox[0], bbox[3] - bbox[1] | |||||
| ] | |||||
| instance_annot = { | |||||
| 'id': instance_id_counter, | |||||
| 'image_id': image_id, | |||||
| 'category_id': | |||||
| 1, # dummy class, as categories are not used/predicted in ref-vos | |||||
| 'segmentation': mask_rle, | |||||
| 'area': mask_area, | |||||
| 'bbox': bbox_xywh, | |||||
| 'iscrowd': 0, | |||||
| } | |||||
| annotations_dict.append(instance_annot) | |||||
| instance_id_counter += 1 | |||||
| dataset_dict = { | |||||
| 'categories': categories_dict, | |||||
| 'images': images_dict, | |||||
| 'annotations': annotations_dict | |||||
| } | |||||
| with open(output_path, 'w') as f: | |||||
| json.dump(dataset_dict, f) | |||||
| @@ -0,0 +1,294 @@ | |||||
| # The implementation is adopted from MTTR, | |||||
| # made publicly available under the Apache 2.0 License at https://github.com/mttr2021/MTTR | |||||
| # Modified from DETR https://github.com/facebookresearch/detr | |||||
| import random | |||||
| import PIL | |||||
| import torch | |||||
| import torchvision.transforms as T | |||||
| import torchvision.transforms.functional as F | |||||
| from modelscope.models.cv.referring_video_object_segmentation.utils import \ | |||||
| interpolate | |||||
| def crop(image, target, region): | |||||
| cropped_image = F.crop(image, *region) | |||||
| target = target.copy() | |||||
| i, j, h, w = region | |||||
| # should we do something wrt the original size? | |||||
| target['size'] = torch.tensor([h, w]) | |||||
| fields = ['labels', 'area', 'iscrowd'] | |||||
| if 'boxes' in target: | |||||
| boxes = target['boxes'] | |||||
| max_size = torch.as_tensor([w, h], dtype=torch.float32) | |||||
| cropped_boxes = boxes - torch.as_tensor([j, i, j, i]) | |||||
| cropped_boxes = torch.min(cropped_boxes.reshape(-1, 2, 2), max_size) | |||||
| cropped_boxes = cropped_boxes.clamp(min=0) | |||||
| area = (cropped_boxes[:, 1, :] - cropped_boxes[:, 0, :]).prod(dim=1) | |||||
| target['boxes'] = cropped_boxes.reshape(-1, 4) | |||||
| target['area'] = area | |||||
| fields.append('boxes') | |||||
| if 'masks' in target: | |||||
| # FIXME should we update the area here if there are no boxes? | |||||
| target['masks'] = target['masks'][:, i:i + h, j:j + w] | |||||
| fields.append('masks') | |||||
| # remove elements for which the boxes or masks that have zero area | |||||
| if 'boxes' in target or 'masks' in target: | |||||
| # favor boxes selection when defining which elements to keep | |||||
| # this is compatible with previous implementation | |||||
| if 'boxes' in target: | |||||
| cropped_boxes = target['boxes'].reshape(-1, 2, 2) | |||||
| keep = torch.all( | |||||
| cropped_boxes[:, 1, :] > cropped_boxes[:, 0, :], dim=1) | |||||
| else: | |||||
| keep = target['masks'].flatten(1).any(1) | |||||
| for field in fields: | |||||
| target[field] = target[field][keep] | |||||
| return cropped_image, target | |||||
| def hflip(image, target): | |||||
| flipped_image = F.hflip(image) | |||||
| w, h = image.size | |||||
| target = target.copy() | |||||
| if 'boxes' in target: | |||||
| boxes = target['boxes'] | |||||
| boxes = boxes[:, [2, 1, 0, 3]] * torch.as_tensor( | |||||
| [-1, 1, -1, 1]) + torch.as_tensor([w, 0, w, 0]) | |||||
| target['boxes'] = boxes | |||||
| if 'masks' in target: | |||||
| target['masks'] = target['masks'].flip(-1) | |||||
| return flipped_image, target | |||||
| def resize(image, target, size, max_size=None): | |||||
| # size can be min_size (scalar) or (w, h) tuple | |||||
| def get_size_with_aspect_ratio(image_size, size, max_size=None): | |||||
| w, h = image_size | |||||
| if max_size is not None: | |||||
| min_original_size = float(min((w, h))) | |||||
| max_original_size = float(max((w, h))) | |||||
| if max_original_size / min_original_size * size > max_size: | |||||
| size = int( | |||||
| round(max_size * min_original_size / max_original_size)) | |||||
| if (w <= h and w == size) or (h <= w and h == size): | |||||
| return (h, w) | |||||
| if w < h: | |||||
| ow = size | |||||
| oh = int(size * h / w) | |||||
| else: | |||||
| oh = size | |||||
| ow = int(size * w / h) | |||||
| return (oh, ow) | |||||
| def get_size(image_size, size, max_size=None): | |||||
| if isinstance(size, (list, tuple)): | |||||
| return size[::-1] | |||||
| else: | |||||
| return get_size_with_aspect_ratio(image_size, size, max_size) | |||||
| size = get_size(image.size, size, max_size) | |||||
| rescaled_image = F.resize(image, size) | |||||
| if target is None: | |||||
| return rescaled_image, None | |||||
| ratios = tuple( | |||||
| float(s) / float(s_orig) | |||||
| for s, s_orig in zip(rescaled_image.size, image.size)) | |||||
| ratio_width, ratio_height = ratios | |||||
| target = target.copy() | |||||
| if 'boxes' in target: | |||||
| boxes = target['boxes'] | |||||
| scaled_boxes = boxes * torch.as_tensor( | |||||
| [ratio_width, ratio_height, ratio_width, ratio_height]) | |||||
| target['boxes'] = scaled_boxes | |||||
| if 'area' in target: | |||||
| area = target['area'] | |||||
| scaled_area = area * (ratio_width * ratio_height) | |||||
| target['area'] = scaled_area | |||||
| h, w = size | |||||
| target['size'] = torch.tensor([h, w]) | |||||
| if 'masks' in target: | |||||
| target['masks'] = interpolate( | |||||
| target['masks'][:, None].float(), size, mode='nearest')[:, 0] > 0.5 | |||||
| return rescaled_image, target | |||||
| def pad(image, target, padding): | |||||
| # assumes that we only pad on the bottom right corners | |||||
| padded_image = F.pad(image, (0, 0, padding[0], padding[1])) | |||||
| if target is None: | |||||
| return padded_image, None | |||||
| target = target.copy() | |||||
| # should we do something wrt the original size? | |||||
| target['size'] = torch.tensor(padded_image.size[::-1]) | |||||
| if 'masks' in target: | |||||
| target['masks'] = torch.nn.functional.pad( | |||||
| target['masks'], (0, padding[0], 0, padding[1])) | |||||
| return padded_image, target | |||||
| class RandomCrop(object): | |||||
| def __init__(self, size): | |||||
| self.size = size | |||||
| def __call__(self, img, target): | |||||
| region = T.RandomCrop.get_params(img, self.size) | |||||
| return crop(img, target, region) | |||||
| class RandomSizeCrop(object): | |||||
| def __init__(self, min_size: int, max_size: int): | |||||
| self.min_size = min_size | |||||
| self.max_size = max_size | |||||
| def __call__(self, img: PIL.Image.Image, target: dict): | |||||
| w = random.randint(self.min_size, min(img.width, self.max_size)) | |||||
| h = random.randint(self.min_size, min(img.height, self.max_size)) | |||||
| region = T.RandomCrop.get_params(img, [h, w]) | |||||
| return crop(img, target, region) | |||||
| class CenterCrop(object): | |||||
| def __init__(self, size): | |||||
| self.size = size | |||||
| def __call__(self, img, target): | |||||
| image_width, image_height = img.size | |||||
| crop_height, crop_width = self.size | |||||
| crop_top = int(round((image_height - crop_height) / 2.)) | |||||
| crop_left = int(round((image_width - crop_width) / 2.)) | |||||
| return crop(img, target, | |||||
| (crop_top, crop_left, crop_height, crop_width)) | |||||
| class RandomHorizontalFlip(object): | |||||
| def __init__(self, p=0.5): | |||||
| self.p = p | |||||
| def __call__(self, img, target): | |||||
| if random.random() < self.p: | |||||
| return hflip(img, target) | |||||
| return img, target | |||||
| class RandomResize(object): | |||||
| def __init__(self, sizes, max_size=None): | |||||
| assert isinstance(sizes, (list, tuple)) | |||||
| self.sizes = sizes | |||||
| self.max_size = max_size | |||||
| def __call__(self, img, target=None): | |||||
| size = random.choice(self.sizes) | |||||
| return resize(img, target, size, self.max_size) | |||||
| class RandomPad(object): | |||||
| def __init__(self, max_pad): | |||||
| self.max_pad = max_pad | |||||
| def __call__(self, img, target): | |||||
| pad_x = random.randint(0, self.max_pad) | |||||
| pad_y = random.randint(0, self.max_pad) | |||||
| return pad(img, target, (pad_x, pad_y)) | |||||
| class RandomSelect(object): | |||||
| """ | |||||
| Randomly selects between transforms1 and transforms2, | |||||
| with probability p for transforms1 and (1 - p) for transforms2 | |||||
| """ | |||||
| def __init__(self, transforms1, transforms2, p=0.5): | |||||
| self.transforms1 = transforms1 | |||||
| self.transforms2 = transforms2 | |||||
| self.p = p | |||||
| def __call__(self, img, target): | |||||
| if random.random() < self.p: | |||||
| return self.transforms1(img, target) | |||||
| return self.transforms2(img, target) | |||||
| class ToTensor(object): | |||||
| def __call__(self, img, target): | |||||
| return F.to_tensor(img), target | |||||
| class RandomErasing(object): | |||||
| def __init__(self, *args, **kwargs): | |||||
| self.eraser = T.RandomErasing(*args, **kwargs) | |||||
| def __call__(self, img, target): | |||||
| return self.eraser(img), target | |||||
| class Normalize(object): | |||||
| def __init__(self, mean, std): | |||||
| self.mean = mean | |||||
| self.std = std | |||||
| def __call__(self, image, target=None): | |||||
| image = F.normalize(image, mean=self.mean, std=self.std) | |||||
| if target is None: | |||||
| return image, None | |||||
| target = target.copy() | |||||
| h, w = image.shape[-2:] | |||||
| if 'boxes' in target: | |||||
| boxes = target['boxes'] | |||||
| boxes = box_xyxy_to_cxcywh(boxes) | |||||
| boxes = boxes / torch.tensor([w, h, w, h], dtype=torch.float32) | |||||
| target['boxes'] = boxes | |||||
| return image, target | |||||
| class Compose(object): | |||||
| def __init__(self, transforms): | |||||
| self.transforms = transforms | |||||
| def __call__(self, image, target): | |||||
| for t in self.transforms: | |||||
| image, target = t(image, target) | |||||
| return image, target | |||||
| def __repr__(self): | |||||
| format_string = self.__class__.__name__ + '(' | |||||
| for t in self.transforms: | |||||
| format_string += '\n' | |||||
| format_string += ' {0}'.format(t) | |||||
| format_string += '\n)' | |||||
| return format_string | |||||
| @@ -82,7 +82,7 @@ def list_dataset_objects(hub_api: HubApi, max_limit: int, is_recursive: bool, | |||||
| dataset_name: str, namespace: str, | dataset_name: str, namespace: str, | ||||
| version: str) -> list: | version: str) -> list: | ||||
| """ | """ | ||||
| List all of objects for specific dataset. | |||||
| List all objects for specific dataset. | |||||
| Args: | Args: | ||||
| hub_api (class HubApi): HubApi instance. | hub_api (class HubApi): HubApi instance. | ||||
| @@ -0,0 +1,32 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| from modelscope.hub.api import HubApi | |||||
| class DatasetDeleteManager(object): | |||||
| def __init__(self, dataset_name: str, namespace: str, version: str): | |||||
| self.api = HubApi() | |||||
| self.dataset_name = dataset_name | |||||
| self.namespace = namespace | |||||
| self.version = version | |||||
| def delete(self, object_name: str) -> str: | |||||
| # single object | |||||
| if not object_name.endswith('/'): | |||||
| resp_msg = self.api.delete_oss_dataset_object( | |||||
| object_name=object_name, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace, | |||||
| revision=self.version) | |||||
| else: | |||||
| # multiple objects | |||||
| object_name = object_name.strip('/') | |||||
| resp_msg = self.api.delete_oss_dataset_dir( | |||||
| object_name=object_name, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace, | |||||
| revision=self.version) | |||||
| return resp_msg | |||||
| @@ -27,7 +27,11 @@ class DatasetDownloadManager(DownloadManager): | |||||
| oss_config = api.get_dataset_access_config(self._dataset_name, | oss_config = api.get_dataset_access_config(self._dataset_name, | ||||
| self._namespace, | self._namespace, | ||||
| self._version) | self._version) | ||||
| self.oss_utilities = OssUtilities(oss_config) | |||||
| self.oss_utilities = OssUtilities( | |||||
| oss_config=oss_config, | |||||
| dataset_name=self._dataset_name, | |||||
| namespace=self._namespace, | |||||
| revision=self._version) | |||||
| def _download(self, url_or_filename: str, | def _download(self, url_or_filename: str, | ||||
| download_config: DownloadConfig) -> str: | download_config: DownloadConfig) -> str: | ||||
| @@ -6,19 +6,28 @@ import os | |||||
| import oss2 | import oss2 | ||||
| from datasets.utils.file_utils import hash_url_to_filename | from datasets.utils.file_utils import hash_url_to_filename | ||||
| from modelscope.hub.api import HubApi | |||||
| from modelscope.utils.constant import UploadMode | |||||
| from modelscope.utils.logger import get_logger | |||||
| logger = get_logger() | |||||
| ACCESS_ID = 'AccessId' | |||||
| ACCESS_SECRET = 'AccessSecret' | |||||
| SECURITY_TOKEN = 'SecurityToken' | |||||
| BUCKET = 'Bucket' | |||||
| BACK_DIR = 'BackupDir' | |||||
| DIR = 'Dir' | |||||
| class OssUtilities: | class OssUtilities: | ||||
| def __init__(self, oss_config): | |||||
| self.key = oss_config['AccessId'] | |||||
| self.secret = oss_config['AccessSecret'] | |||||
| self.token = oss_config['SecurityToken'] | |||||
| self.endpoint = f"https://{oss_config['Region']}.aliyuncs.com" | |||||
| self.bucket_name = oss_config['Bucket'] | |||||
| auth = oss2.StsAuth(self.key, self.secret, self.token) | |||||
| self.bucket = oss2.Bucket(auth, self.endpoint, self.bucket_name) | |||||
| self.oss_dir = oss_config['Dir'] | |||||
| self.oss_backup_dir = oss_config['BackupDir'] | |||||
| def __init__(self, oss_config, dataset_name, namespace, revision): | |||||
| self._do_init(oss_config=oss_config) | |||||
| self.dataset_name = dataset_name | |||||
| self.namespace = namespace | |||||
| self.revision = revision | |||||
| self.upload_resumable_tmp_store = '/tmp/modelscope/tmp_dataset' | self.upload_resumable_tmp_store = '/tmp/modelscope/tmp_dataset' | ||||
| self.upload_multipart_threshold = 50 * 1024 * 1024 | self.upload_multipart_threshold = 50 * 1024 * 1024 | ||||
| @@ -26,6 +35,28 @@ class OssUtilities: | |||||
| self.upload_num_threads = 4 | self.upload_num_threads = 4 | ||||
| self.upload_max_retries = 3 | self.upload_max_retries = 3 | ||||
| self.api = HubApi() | |||||
| def _do_init(self, oss_config): | |||||
| self.key = oss_config[ACCESS_ID] | |||||
| self.secret = oss_config[ACCESS_SECRET] | |||||
| self.token = oss_config[SECURITY_TOKEN] | |||||
| self.endpoint = f"https://{oss_config['Region']}.aliyuncs.com" | |||||
| self.bucket_name = oss_config[BUCKET] | |||||
| auth = oss2.StsAuth(self.key, self.secret, self.token) | |||||
| self.bucket = oss2.Bucket(auth, self.endpoint, self.bucket_name) | |||||
| self.oss_dir = oss_config[DIR] | |||||
| self.oss_backup_dir = oss_config[BACK_DIR] | |||||
| def _reload_sts(self): | |||||
| cookies = self.api.check_local_cookies(use_cookies=True) | |||||
| oss_config_refresh = self.api.get_dataset_access_config_session( | |||||
| cookies=cookies, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace, | |||||
| revision=self.revision) | |||||
| self._do_init(oss_config_refresh) | |||||
| @staticmethod | @staticmethod | ||||
| def _percentage(consumed_bytes, total_bytes): | def _percentage(consumed_bytes, total_bytes): | ||||
| if total_bytes: | if total_bytes: | ||||
| @@ -51,7 +82,8 @@ class OssUtilities: | |||||
| return local_path | return local_path | ||||
| def upload(self, oss_object_name: str, local_file_path: str, | def upload(self, oss_object_name: str, local_file_path: str, | ||||
| indicate_individual_progress: bool) -> str: | |||||
| indicate_individual_progress: bool, | |||||
| upload_mode: UploadMode) -> str: | |||||
| retry_count = 0 | retry_count = 0 | ||||
| object_key = os.path.join(self.oss_dir, oss_object_name) | object_key = os.path.join(self.oss_dir, oss_object_name) | ||||
| resumable_store = oss2.ResumableStore( | resumable_store = oss2.ResumableStore( | ||||
| @@ -64,6 +96,13 @@ class OssUtilities: | |||||
| while True: | while True: | ||||
| try: | try: | ||||
| retry_count += 1 | retry_count += 1 | ||||
| exist = self.bucket.object_exists(object_key) | |||||
| if upload_mode == UploadMode.APPEND and exist: | |||||
| logger.info( | |||||
| f'Skip {oss_object_name} in case of {upload_mode.value} mode.' | |||||
| ) | |||||
| break | |||||
| oss2.resumable_upload( | oss2.resumable_upload( | ||||
| self.bucket, | self.bucket, | ||||
| object_key, | object_key, | ||||
| @@ -74,7 +113,9 @@ class OssUtilities: | |||||
| progress_callback=progress_callback, | progress_callback=progress_callback, | ||||
| num_threads=self.upload_num_threads) | num_threads=self.upload_num_threads) | ||||
| break | break | ||||
| except Exception: | |||||
| except Exception as e: | |||||
| if e.__getattribute__('status') == 403: | |||||
| self._reload_sts() | |||||
| if retry_count >= self.upload_max_retries: | if retry_count >= self.upload_max_retries: | ||||
| raise | raise | ||||
| @@ -5,6 +5,7 @@ from multiprocessing.dummy import Pool as ThreadPool | |||||
| from tqdm import tqdm | from tqdm import tqdm | ||||
| from modelscope.utils.constant import UploadMode | |||||
| from .oss_utils import OssUtilities | from .oss_utils import OssUtilities | ||||
| @@ -13,38 +14,45 @@ class DatasetUploadManager(object): | |||||
| def __init__(self, dataset_name: str, namespace: str, version: str): | def __init__(self, dataset_name: str, namespace: str, version: str): | ||||
| from modelscope.hub.api import HubApi | from modelscope.hub.api import HubApi | ||||
| _hub_api = HubApi() | _hub_api = HubApi() | ||||
| _cookies = _hub_api.check_cookies_upload_data(use_cookies=True) | |||||
| _cookies = _hub_api.check_local_cookies(use_cookies=True) | |||||
| _oss_config = _hub_api.get_dataset_access_config_session( | _oss_config = _hub_api.get_dataset_access_config_session( | ||||
| cookies=_cookies, | cookies=_cookies, | ||||
| dataset_name=dataset_name, | dataset_name=dataset_name, | ||||
| namespace=namespace, | namespace=namespace, | ||||
| revision=version) | revision=version) | ||||
| self.oss_utilities = OssUtilities(_oss_config) | |||||
| self.oss_utilities = OssUtilities( | |||||
| oss_config=_oss_config, | |||||
| dataset_name=dataset_name, | |||||
| namespace=namespace, | |||||
| revision=version) | |||||
| def upload(self, object_name: str, local_file_path: str) -> str: | |||||
| def upload(self, object_name: str, local_file_path: str, | |||||
| upload_mode: UploadMode) -> str: | |||||
| object_key = self.oss_utilities.upload( | object_key = self.oss_utilities.upload( | ||||
| oss_object_name=object_name, | oss_object_name=object_name, | ||||
| local_file_path=local_file_path, | local_file_path=local_file_path, | ||||
| indicate_individual_progress=True) | |||||
| indicate_individual_progress=True, | |||||
| upload_mode=upload_mode) | |||||
| return object_key | return object_key | ||||
| def upload_dir(self, object_dir_name: str, local_dir_path: str, | def upload_dir(self, object_dir_name: str, local_dir_path: str, | ||||
| num_processes: int, chunksize: int, | num_processes: int, chunksize: int, | ||||
| filter_hidden_files: bool) -> int: | |||||
| filter_hidden_files: bool, upload_mode: UploadMode) -> int: | |||||
| def run_upload(args): | def run_upload(args): | ||||
| self.oss_utilities.upload( | self.oss_utilities.upload( | ||||
| oss_object_name=args[0], | oss_object_name=args[0], | ||||
| local_file_path=args[1], | local_file_path=args[1], | ||||
| indicate_individual_progress=False) | |||||
| indicate_individual_progress=False, | |||||
| upload_mode=upload_mode) | |||||
| files_list = [] | files_list = [] | ||||
| for root, dirs, files in os.walk(local_dir_path): | for root, dirs, files in os.walk(local_dir_path): | ||||
| for file_name in files: | for file_name in files: | ||||
| if filter_hidden_files and file_name.startswith('.'): | if filter_hidden_files and file_name.startswith('.'): | ||||
| continue | continue | ||||
| # Concatenate directory name and relative path into a oss object key. e.g., train/001/1_1230.png | |||||
| # Concatenate directory name and relative path into oss object key. e.g., train/001/1_1230.png | |||||
| object_name = os.path.join( | object_name = os.path.join( | ||||
| object_dir_name, | object_dir_name, | ||||
| root.replace(local_dir_path, '', 1).strip('/'), file_name) | root.replace(local_dir_path, '', 1).strip('/'), file_name) | ||||
| @@ -541,3 +541,50 @@ class Seq2SeqLMOutput(ModelOutputBase): | |||||
| encoder_last_hidden_state: Optional[Tensor] = None | encoder_last_hidden_state: Optional[Tensor] = None | ||||
| encoder_hidden_states: Optional[Tuple[Tensor]] = None | encoder_hidden_states: Optional[Tuple[Tensor]] = None | ||||
| encoder_attentions: Optional[Tuple[Tensor]] = None | encoder_attentions: Optional[Tuple[Tensor]] = None | ||||
| @dataclass | |||||
| class TextGenerationModelOutput(ModelOutputBase): | |||||
| """The output class for text generation models. | |||||
| Args: | |||||
| logits (`Tensor`): The logits output of the model. loss (`Tensor`, | |||||
| *optional*) The loss of the model, available when training. | |||||
| hidden_states (`Tensor`, *optional*) Hidden-states of the model at the | |||||
| output of each layer plus the optional initial embedding outputs. | |||||
| """ | |||||
| logits: Tensor = None | |||||
| loss: Tensor = None | |||||
| @dataclass | |||||
| class TokenGeneratorOutput(ModelOutputBase): | |||||
| """ | |||||
| The output class for generate method of text generation models. | |||||
| Args: | |||||
| sequences (`torch.LongTensor` of shape `(batch_size*num_return_sequences, sequence_length)`): | |||||
| The generated sequences. The second dimension (sequence_length) is either equal to `max_length` or shorter | |||||
| if all batches finished early due to the `eos_token_id`. | |||||
| scores (`tuple(torch.FloatTensor)` *optional*, returned when `output_scores=True` | |||||
| is passed or when `config.output_scores=True`): | |||||
| Processed prediction scores of the language modeling head (scores for each vocabulary token before SoftMax) | |||||
| at each generation step. Tuple of `torch.FloatTensor` with up to `max_new_tokens` elements (one element for | |||||
| each generated token), with each tensor of shape `(batch_size*num_return_sequences, config.vocab_size)`. | |||||
| attentions (`tuple(tuple(torch.FloatTensor))`, *optional*, returned when `output_attentions=True` | |||||
| is passed or `config.output_attentions=True`): | |||||
| Tuple (one element for each generated token) of tuples (one element for each layer of the decoder) of | |||||
| `torch.FloatTensor` of shape `(num_return_sequences*batch_size, num_heads, generated_length, | |||||
| sequence_length)`. | |||||
| hidden_states (`tuple(tuple(torch.FloatTensor))`, *optional*, returned when `output_hidden_states=True` | |||||
| is passed or when `config.output_hidden_states=True`): | |||||
| Tuple (one element for each generated token) of tuples (one element for each layer of the decoder) of | |||||
| `torch.FloatTensor` of shape `(num_return_sequences*batch_size, generated_length, hidden_size)`. | |||||
| """ | |||||
| sequences: Tensor = None | |||||
| scores: Optional[Tuple[Tensor]] = None | |||||
| attentions: Optional[Tuple[Tuple[Tensor]]] = None | |||||
| hidden_states: Optional[Tuple[Tuple[Tensor]]] = None | |||||
| @@ -157,7 +157,13 @@ class ReferringVideoObjectSegmentationPipeline(Pipeline): | |||||
| * text_border_height_per_query, 0, 0)) | * text_border_height_per_query, 0, 0)) | ||||
| W, H = vid_frame.size | W, H = vid_frame.size | ||||
| draw = ImageDraw.Draw(vid_frame) | draw = ImageDraw.Draw(vid_frame) | ||||
| font = ImageFont.truetype(font='DejaVuSansMono.ttf', size=30) | |||||
| if self.model.cfg.pipeline.output_font: | |||||
| font = ImageFont.truetype( | |||||
| font=self.model.cfg.pipeline.output_font, | |||||
| size=self.model.cfg.pipeline.output_font_size) | |||||
| else: | |||||
| font = ImageFont.load_default() | |||||
| for i, (text_query, color) in enumerate( | for i, (text_query, color) in enumerate( | ||||
| zip(self.text_queries, colors), start=1): | zip(self.text_queries, colors), start=1): | ||||
| w, h = draw.textsize(text_query, font=font) | w, h = draw.textsize(text_query, font=font) | ||||
| @@ -104,6 +104,10 @@ class TextGenerationPipeline(Pipeline): | |||||
| tokenizer = self.preprocessor.tokenizer | tokenizer = self.preprocessor.tokenizer | ||||
| return tokenizer.decode(inputs.tolist(), skip_special_tokens=True) | return tokenizer.decode(inputs.tolist(), skip_special_tokens=True) | ||||
| def sentence_piece(self, inputs) -> str: | |||||
| tokenizer = self.preprocessor.tokenizer | |||||
| return tokenizer.decode(inputs.tolist()) | |||||
| def roberta(self, inputs) -> str: | def roberta(self, inputs) -> str: | ||||
| tokenizer = self.preprocessor.tokenizer | tokenizer = self.preprocessor.tokenizer | ||||
| decoded = tokenizer.decode(inputs.tolist()) | decoded = tokenizer.decode(inputs.tolist()) | ||||
| @@ -121,7 +125,7 @@ class TextGenerationPipeline(Pipeline): | |||||
| Dict[str, str]: the prediction results | Dict[str, str]: the prediction results | ||||
| """ | """ | ||||
| inputs = inputs['sequences'] | inputs = inputs['sequences'] | ||||
| if isinstance(inputs, list): | |||||
| if isinstance(inputs, list) or len(inputs.shape) > 1: | |||||
| inputs = inputs[0] | inputs = inputs[0] | ||||
| decoded = getattr(self, self.postprocessor)(inputs) | decoded = getattr(self, self.postprocessor)(inputs) | ||||
| text = self._remove_space_between_chinese_chars(decoded) | text = self._remove_space_between_chinese_chars(decoded) | ||||
| @@ -17,6 +17,8 @@ from modelscope.utils.tensor_utils import (torch_nested_detach, | |||||
| __all__ = ['TokenClassificationPipeline'] | __all__ = ['TokenClassificationPipeline'] | ||||
| @PIPELINES.register_module( | |||||
| Tasks.token_classification, module_name=Pipelines.token_classification) | |||||
| @PIPELINES.register_module( | @PIPELINES.register_module( | ||||
| Tasks.token_classification, module_name=Pipelines.part_of_speech) | Tasks.token_classification, module_name=Pipelines.part_of_speech) | ||||
| @PIPELINES.register_module( | @PIPELINES.register_module( | ||||
| @@ -41,7 +43,7 @@ class TokenClassificationPipeline(Pipeline): | |||||
| str) else model | str) else model | ||||
| if preprocessor is None: | if preprocessor is None: | ||||
| preprocessor = Model.from_pretrained( | |||||
| preprocessor = Preprocessor.from_pretrained( | |||||
| model.model_dir, | model.model_dir, | ||||
| sequence_length=kwargs.pop('sequence_length', 128)) | sequence_length=kwargs.pop('sequence_length', 128)) | ||||
| model.eval() | model.eval() | ||||
| @@ -147,8 +147,50 @@ class Preprocessor(ABC): | |||||
| cfg_dict: Config = None, | cfg_dict: Config = None, | ||||
| preprocessor_mode=ModeKeys.INFERENCE, | preprocessor_mode=ModeKeys.INFERENCE, | ||||
| **kwargs): | **kwargs): | ||||
| """ Instantiate a model from local directory or remote model repo. Note | |||||
| """Instantiate a preprocessor from local directory or remote model repo. Note | |||||
| that when loading from remote, the model revision can be specified. | that when loading from remote, the model revision can be specified. | ||||
| Args: | |||||
| model_name_or_path(str): A model dir or a model id used to load the preprocessor out. | |||||
| revision(str, `optional`): The revision used when the model_name_or_path is | |||||
| a model id of the remote hub. default `master`. | |||||
| cfg_dict(Config, `optional`): An optional config. If provided, it will replace | |||||
| the config read out of the `model_name_or_path` | |||||
| preprocessor_mode(str, `optional`): Specify the working mode of the preprocessor, can be `train`, `eval`, | |||||
| or `inference`. Default value `inference`. | |||||
| The preprocessor field in the config may contain two sub preprocessors: | |||||
| >>> { | |||||
| >>> "train": { | |||||
| >>> "type": "some-train-preprocessor" | |||||
| >>> }, | |||||
| >>> "val": { | |||||
| >>> "type": "some-eval-preprocessor" | |||||
| >>> } | |||||
| >>> } | |||||
| In this scenario, the `train` preprocessor will be loaded in the `train` mode, the `val` preprocessor | |||||
| will be loaded in the `eval` or `inference` mode. The `mode` field in the preprocessor class | |||||
| will be assigned in all the modes. | |||||
| Or just one: | |||||
| >>> { | |||||
| >>> "type": "some-train-preprocessor" | |||||
| >>> } | |||||
| In this scenario, the sole preprocessor will be loaded in all the modes, | |||||
| and the `mode` field in the preprocessor class will be assigned. | |||||
| **kwargs: | |||||
| task(str, `optional`): The `Tasks` enumeration value to replace the task value | |||||
| read out of config in the `model_name_or_path`. | |||||
| This is useful when the preprocessor does not have a `type` field and the task to be used is not | |||||
| equal to the task of which the model is saved. | |||||
| Other kwargs will be directly fed into the preprocessor, to replace the default configs. | |||||
| Returns: | |||||
| The preprocessor instance. | |||||
| Examples: | |||||
| >>> from modelscope.preprocessors import Preprocessor | |||||
| >>> Preprocessor.from_pretrained('damo/nlp_debertav2_fill-mask_chinese-base') | |||||
| """ | """ | ||||
| if not os.path.exists(model_name_or_path): | if not os.path.exists(model_name_or_path): | ||||
| model_dir = snapshot_download( | model_dir = snapshot_download( | ||||
| @@ -157,7 +157,7 @@ class MPlugPreprocessor(Preprocessor): | |||||
| def image_open(self, path: str) -> Tuple[Image.Image, int]: | def image_open(self, path: str) -> Tuple[Image.Image, int]: | ||||
| if path not in self._image_map: | if path not in self._image_map: | ||||
| index = len(self._image_map) | index = len(self._image_map) | ||||
| self._image_map[path] = (Image.open(path), index) | |||||
| self._image_map[path] = (load_image(path), index) | |||||
| return self._image_map[path] | return self._image_map[path] | ||||
| def __call__( | def __call__( | ||||
| @@ -9,7 +9,8 @@ if TYPE_CHECKING: | |||||
| from .builder import build_trainer | from .builder import build_trainer | ||||
| from .cv import (ImageInstanceSegmentationTrainer, | from .cv import (ImageInstanceSegmentationTrainer, | ||||
| ImagePortraitEnhancementTrainer, | ImagePortraitEnhancementTrainer, | ||||
| MovieSceneSegmentationTrainer, ImageInpaintingTrainer) | |||||
| MovieSceneSegmentationTrainer, ImageInpaintingTrainer, | |||||
| ReferringVideoObjectSegmentationTrainer) | |||||
| from .multi_modal import CLIPTrainer | from .multi_modal import CLIPTrainer | ||||
| from .nlp import SequenceClassificationTrainer, TextRankingTrainer | from .nlp import SequenceClassificationTrainer, TextRankingTrainer | ||||
| from .nlp_trainer import NlpEpochBasedTrainer, VecoTrainer, NlpTrainerArguments | from .nlp_trainer import NlpEpochBasedTrainer, VecoTrainer, NlpTrainerArguments | ||||
| @@ -9,6 +9,7 @@ if TYPE_CHECKING: | |||||
| from .image_portrait_enhancement_trainer import ImagePortraitEnhancementTrainer | from .image_portrait_enhancement_trainer import ImagePortraitEnhancementTrainer | ||||
| from .movie_scene_segmentation_trainer import MovieSceneSegmentationTrainer | from .movie_scene_segmentation_trainer import MovieSceneSegmentationTrainer | ||||
| from .image_inpainting_trainer import ImageInpaintingTrainer | from .image_inpainting_trainer import ImageInpaintingTrainer | ||||
| from .referring_video_object_segmentation_trainer import ReferringVideoObjectSegmentationTrainer | |||||
| else: | else: | ||||
| _import_structure = { | _import_structure = { | ||||
| @@ -17,7 +18,9 @@ else: | |||||
| 'image_portrait_enhancement_trainer': | 'image_portrait_enhancement_trainer': | ||||
| ['ImagePortraitEnhancementTrainer'], | ['ImagePortraitEnhancementTrainer'], | ||||
| 'movie_scene_segmentation_trainer': ['MovieSceneSegmentationTrainer'], | 'movie_scene_segmentation_trainer': ['MovieSceneSegmentationTrainer'], | ||||
| 'image_inpainting_trainer': ['ImageInpaintingTrainer'] | |||||
| 'image_inpainting_trainer': ['ImageInpaintingTrainer'], | |||||
| 'referring_video_object_segmentation_trainer': | |||||
| ['ReferringVideoObjectSegmentationTrainer'] | |||||
| } | } | ||||
| import sys | import sys | ||||
| @@ -0,0 +1,63 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import os | |||||
| import torch | |||||
| from modelscope.metainfo import Trainers | |||||
| from modelscope.trainers.builder import TRAINERS | |||||
| from modelscope.trainers.trainer import EpochBasedTrainer | |||||
| from modelscope.utils.constant import ModeKeys | |||||
| @TRAINERS.register_module( | |||||
| module_name=Trainers.referring_video_object_segmentation) | |||||
| class ReferringVideoObjectSegmentationTrainer(EpochBasedTrainer): | |||||
| def __init__(self, *args, **kwargs): | |||||
| super().__init__(*args, **kwargs) | |||||
| self.model.set_postprocessor(self.cfg.dataset.name) | |||||
| self.train_data_collator = self.train_dataset.collator | |||||
| self.eval_data_collator = self.eval_dataset.collator | |||||
| device_name = kwargs.get('device', 'gpu') | |||||
| self.model.set_device(self.device, device_name) | |||||
| def train(self, *args, **kwargs): | |||||
| self.model.criterion.train() | |||||
| super().train(*args, **kwargs) | |||||
| def evaluate(self, checkpoint_path=None): | |||||
| if checkpoint_path is not None and os.path.isfile(checkpoint_path): | |||||
| from modelscope.trainers.hooks import CheckpointHook | |||||
| CheckpointHook.load_checkpoint(checkpoint_path, self) | |||||
| self.model.eval() | |||||
| self._mode = ModeKeys.EVAL | |||||
| if self.eval_dataset is None: | |||||
| self.eval_dataloader = self.get_eval_data_loader() | |||||
| else: | |||||
| self.eval_dataloader = self._build_dataloader_with_dataset( | |||||
| self.eval_dataset, | |||||
| dist=self._dist, | |||||
| seed=self._seed, | |||||
| collate_fn=self.eval_data_collator, | |||||
| **self.cfg.evaluation.get('dataloader', {})) | |||||
| self.data_loader = self.eval_dataloader | |||||
| from modelscope.metrics import build_metric | |||||
| ann_file = self.eval_dataset.ann_file | |||||
| metric_classes = [] | |||||
| for metric in self.metrics: | |||||
| metric.update({'ann_file': ann_file}) | |||||
| metric_classes.append(build_metric(metric)) | |||||
| for m in metric_classes: | |||||
| m.trainer = self | |||||
| metric_values = self.evaluation_loop(self.eval_dataloader, | |||||
| metric_classes) | |||||
| self._metric_values = metric_values | |||||
| return metric_values | |||||
| def prediction_step(self, model, inputs): | |||||
| pass | |||||
| @@ -101,8 +101,9 @@ class CheckpointHook(Hook): | |||||
| model = trainer.model.module | model = trainer.model.module | ||||
| else: | else: | ||||
| model = trainer.model | model = trainer.model | ||||
| meta = load_checkpoint(filename, model, trainer.optimizer, | |||||
| trainer.lr_scheduler) | |||||
| meta = load_checkpoint(filename, model, | |||||
| getattr(trainer, 'optimizer', None), | |||||
| getattr(trainer, 'lr_scheduler', None)) | |||||
| trainer._epoch = meta.get('epoch', trainer._epoch) | trainer._epoch = meta.get('epoch', trainer._epoch) | ||||
| trainer._iter = meta.get('iter', trainer._iter) | trainer._iter = meta.get('iter', trainer._iter) | ||||
| trainer._inner_iter = meta.get('inner_iter', trainer._inner_iter) | trainer._inner_iter = meta.get('inner_iter', trainer._inner_iter) | ||||
| @@ -111,7 +112,7 @@ class CheckpointHook(Hook): | |||||
| # hook: Hook | # hook: Hook | ||||
| key = f'{hook.__class__}-{i}' | key = f'{hook.__class__}-{i}' | ||||
| if key in meta and hasattr(hook, 'load_state_dict'): | if key in meta and hasattr(hook, 'load_state_dict'): | ||||
| hook.load_state_dict(meta[key]) | |||||
| hook.load_state_dict(meta.get(key, {})) | |||||
| else: | else: | ||||
| trainer.logger.warn( | trainer.logger.warn( | ||||
| f'The state_dict of hook {hook.__class__} at index {i} is not found in the checkpoint file.' | f'The state_dict of hook {hook.__class__} at index {i} is not found in the checkpoint file.' | ||||
| @@ -123,7 +124,7 @@ class CheckpointHook(Hook): | |||||
| f'The modelscope version of loaded checkpoint does not match the runtime version. ' | f'The modelscope version of loaded checkpoint does not match the runtime version. ' | ||||
| f'The saved version: {version}, runtime version: {__version__}' | f'The saved version: {version}, runtime version: {__version__}' | ||||
| ) | ) | ||||
| trainer.logger.warn( | |||||
| trainer.logger.info( | |||||
| f'Checkpoint {filename} saving time: {meta.get("time")}') | f'Checkpoint {filename} saving time: {meta.get("time")}') | ||||
| return meta | return meta | ||||
| @@ -171,12 +172,17 @@ class CheckpointHook(Hook): | |||||
| else: | else: | ||||
| model = trainer.model | model = trainer.model | ||||
| config = trainer.cfg.to_dict() | |||||
| # override pipeline by tasks name after finetune done, | |||||
| # avoid case like fill mask pipeline with a text cls task | |||||
| config['pipeline'] = {'type': config['task']} | |||||
| if hasattr(model, 'save_pretrained'): | if hasattr(model, 'save_pretrained'): | ||||
| model.save_pretrained( | model.save_pretrained( | ||||
| output_dir, | output_dir, | ||||
| ModelFile.TORCH_MODEL_BIN_FILE, | ModelFile.TORCH_MODEL_BIN_FILE, | ||||
| save_function=save_checkpoint, | save_function=save_checkpoint, | ||||
| config=trainer.cfg.to_dict(), | |||||
| config=config, | |||||
| with_meta=False) | with_meta=False) | ||||
| def after_train_iter(self, trainer): | def after_train_iter(self, trainer): | ||||
| @@ -5,9 +5,13 @@ from modelscope.utils.import_utils import LazyImportModule | |||||
| if TYPE_CHECKING: | if TYPE_CHECKING: | ||||
| from .clip import CLIPTrainer | from .clip import CLIPTrainer | ||||
| from .team import TEAMImgClsTrainer | |||||
| else: | else: | ||||
| _import_structure = {'clip': ['CLIPTrainer']} | |||||
| _import_structure = { | |||||
| 'clip': ['CLIPTrainer'], | |||||
| 'team': ['TEAMImgClsTrainer'] | |||||
| } | |||||
| import sys | import sys | ||||
| @@ -0,0 +1,3 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| from .team_trainer import TEAMImgClsTrainer | |||||
| @@ -0,0 +1,144 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import os | |||||
| from collections import OrderedDict | |||||
| from typing import Callable, Dict, Optional | |||||
| import numpy as np | |||||
| import torch | |||||
| import torch.nn as nn | |||||
| import torchvision.datasets as datasets | |||||
| import torchvision.transforms as transforms | |||||
| from sklearn.metrics import confusion_matrix | |||||
| from torch.optim import AdamW | |||||
| from torch.utils.data import DataLoader, Dataset | |||||
| from modelscope.metainfo import Trainers | |||||
| from modelscope.models.base import Model | |||||
| from modelscope.msdatasets import MsDataset | |||||
| from modelscope.trainers.base import BaseTrainer | |||||
| from modelscope.trainers.builder import TRAINERS | |||||
| from modelscope.trainers.multi_modal.team.team_trainer_utils import ( | |||||
| get_optimizer, train_mapping, val_mapping) | |||||
| from modelscope.utils.config import Config | |||||
| from modelscope.utils.constant import DownloadMode, ModeKeys | |||||
| from modelscope.utils.logger import get_logger | |||||
| logger = get_logger() | |||||
| @TRAINERS.register_module(module_name=Trainers.image_classification_team) | |||||
| class TEAMImgClsTrainer(BaseTrainer): | |||||
| def __init__(self, cfg_file: str, model: str, device_id: int, | |||||
| data_collator: Callable, train_dataset: Dataset, | |||||
| val_dataset: Dataset, *args, **kwargs): | |||||
| super().__init__(cfg_file) | |||||
| self.cfg = Config.from_file(cfg_file) | |||||
| team_model = Model.from_pretrained(model) | |||||
| image_model = team_model.model.image_model.vision_transformer | |||||
| classification_model = nn.Sequential( | |||||
| OrderedDict([('encoder', image_model), | |||||
| ('classifier', | |||||
| nn.Linear(768, self.cfg.dataset.class_num))])) | |||||
| self.model = classification_model | |||||
| for pname, param in self.model.named_parameters(): | |||||
| if 'encoder' in pname: | |||||
| param.requires_grad = False | |||||
| self.device_id = device_id | |||||
| self.total_epoch = self.cfg.train.epoch | |||||
| self.train_batch_size = self.cfg.train.batch_size | |||||
| self.val_batch_size = self.cfg.evaluation.batch_size | |||||
| self.ckpt_dir = self.cfg.train.ckpt_dir | |||||
| self.collate_fn = data_collator | |||||
| self.train_dataset = train_dataset | |||||
| self.val_dataset = val_dataset | |||||
| self.criterion = nn.CrossEntropyLoss().to(self.device_id) | |||||
| def train(self, *args, **kwargs): | |||||
| self.model.train() | |||||
| self.model.to(self.device_id) | |||||
| optimizer = get_optimizer(self.model) | |||||
| for epoch in range(self.total_epoch): | |||||
| train_params = { | |||||
| 'pin_memory': True, | |||||
| 'collate_fn': self.collate_fn, | |||||
| 'batch_size': self.train_batch_size, | |||||
| 'shuffle': True, | |||||
| 'drop_last': True, | |||||
| 'num_workers': 8 | |||||
| } | |||||
| train_loader = DataLoader(self.train_dataset, **train_params) | |||||
| for batch_idx, data in enumerate(train_loader): | |||||
| img_tensor, label_tensor = data['pixel_values'], data['labels'] | |||||
| img_tensor = img_tensor.to(self.device_id, non_blocking=True) | |||||
| label_tensor = label_tensor.to( | |||||
| self.device_id, non_blocking=True) | |||||
| pred_logits = self.model(img_tensor) | |||||
| loss = self.criterion(pred_logits, label_tensor) | |||||
| optimizer.zero_grad() | |||||
| loss.backward() | |||||
| optimizer.step() | |||||
| if batch_idx % 10 == 0: | |||||
| logger.info( | |||||
| 'epoch: {}, train batch {}/{}, loss={:.5f}'.format( | |||||
| epoch, batch_idx, len(train_loader), loss.item())) | |||||
| os.makedirs(self.ckpt_dir, exist_ok=True) | |||||
| torch.save(self.model.state_dict(), | |||||
| '{}/epoch{}.pth'.format(self.ckpt_dir, epoch)) | |||||
| self.evaluate() | |||||
| def evaluate(self, | |||||
| checkpoint_path: Optional[str] = None, | |||||
| *args, | |||||
| **kwargs) -> Dict[str, float]: | |||||
| if checkpoint_path is not None: | |||||
| checkpoint_params = torch.load(checkpoint_path, 'cpu') | |||||
| self.model.load_state_dict(checkpoint_params) | |||||
| self.model.eval() | |||||
| self.model.to(self.device_id) | |||||
| val_params = { | |||||
| 'collate_fn': self.collate_fn, | |||||
| 'batch_size': self.val_batch_size, | |||||
| 'shuffle': False, | |||||
| 'drop_last': False, | |||||
| 'num_workers': 8 | |||||
| } | |||||
| val_loader = DataLoader(self.val_dataset, **val_params) | |||||
| tp_cnt, processed_cnt = 0, 0 | |||||
| all_pred_labels, all_gt_labels = [], [] | |||||
| with torch.no_grad(): | |||||
| for batch_idx, data in enumerate(val_loader): | |||||
| img_tensor, label_tensor = data['pixel_values'], data['labels'] | |||||
| img_tensor = img_tensor.to(self.device_id, non_blocking=True) | |||||
| label_tensor = label_tensor.to( | |||||
| self.device_id, non_blocking=True) | |||||
| pred_logits = self.model(img_tensor) | |||||
| pred_labels = torch.max(pred_logits, dim=1)[1] | |||||
| tp_cnt += torch.sum(pred_labels == label_tensor).item() | |||||
| processed_cnt += img_tensor.shape[0] | |||||
| logger.info('Accuracy: {:.3f}'.format(tp_cnt / processed_cnt)) | |||||
| all_pred_labels.extend(pred_labels.tolist()) | |||||
| all_gt_labels.extend(label_tensor.tolist()) | |||||
| conf_mat = confusion_matrix(all_gt_labels, all_pred_labels) | |||||
| acc_mean_per_class = np.mean(conf_mat.diagonal() | |||||
| / conf_mat.sum(axis=1)) | |||||
| logger.info( | |||||
| 'Accuracy mean per class: {:.3f}'.format(acc_mean_per_class)) | |||||
| @@ -0,0 +1,87 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import torch | |||||
| import torchvision.transforms as transforms | |||||
| from PIL import Image | |||||
| from torch.optim import AdamW | |||||
| from modelscope.utils.logger import get_logger | |||||
| logger = get_logger() | |||||
| train_transforms = transforms.Compose([ | |||||
| transforms.RandomResizedCrop(224), | |||||
| transforms.RandomHorizontalFlip(), | |||||
| transforms.ToTensor(), | |||||
| transforms.Normalize((0.48145466, 0.4578275, 0.40821073), | |||||
| (0.26862954, 0.26130258, 0.27577711)), | |||||
| ]) | |||||
| val_transforms = transforms.Compose([ | |||||
| transforms.Resize(256), | |||||
| transforms.CenterCrop(224), | |||||
| transforms.ToTensor(), | |||||
| transforms.Normalize((0.48145466, 0.4578275, 0.40821073), | |||||
| (0.26862954, 0.26130258, 0.27577711)), | |||||
| ]) | |||||
| def train_mapping(examples): | |||||
| examples['pixel_values'] = [ | |||||
| train_transforms(Image.open(image).convert('RGB')) | |||||
| for image in examples['image:FILE'] | |||||
| ] | |||||
| examples['labels'] = [label for label in examples['label:LABEL']] | |||||
| return examples | |||||
| def val_mapping(examples): | |||||
| examples['pixel_values'] = [ | |||||
| val_transforms(Image.open(image).convert('RGB')) | |||||
| for image in examples['image:FILE'] | |||||
| ] | |||||
| examples['labels'] = [label for label in examples['label:LABEL']] | |||||
| return examples | |||||
| def collate_fn(examples): | |||||
| images = [] | |||||
| labels = [] | |||||
| for example in examples: | |||||
| images.append((example['pixel_values'])) | |||||
| labels.append(example['labels']) | |||||
| pixel_values = torch.stack(images) | |||||
| labels = torch.tensor(labels) | |||||
| return {'pixel_values': pixel_values, 'labels': labels} | |||||
| def get_params_groups(ddp_model, lr): | |||||
| large_lr_params = [] | |||||
| small_lr_params = [] | |||||
| for name, param in ddp_model.named_parameters(): | |||||
| if not param.requires_grad: | |||||
| continue | |||||
| if 'encoder' in name: | |||||
| small_lr_params.append(param) | |||||
| elif 'classifier' in name: | |||||
| large_lr_params.append(param) | |||||
| else: | |||||
| logger.info('skip param: {}'.format(name)) | |||||
| params_groups = [{ | |||||
| 'params': small_lr_params, | |||||
| 'lr': lr / 10.0 | |||||
| }, { | |||||
| 'params': large_lr_params, | |||||
| 'lr': lr | |||||
| }] | |||||
| return params_groups | |||||
| def get_optimizer(ddp_model): | |||||
| lr_init = 1e-3 | |||||
| betas = [0.9, 0.999] | |||||
| weight_decay = 0.02 | |||||
| params_groups = get_params_groups(ddp_model, lr=lr_init) | |||||
| return AdamW( | |||||
| params_groups, lr=lr_init, betas=betas, weight_decay=weight_decay) | |||||
| @@ -646,7 +646,9 @@ class VecoTrainer(NlpEpochBasedTrainer): | |||||
| break | break | ||||
| for metric_name in self.metrics: | for metric_name in self.metrics: | ||||
| metric_values[metric_name] = np.average( | |||||
| [m[metric_name] for m in metric_values.values()]) | |||||
| all_metrics = [m[metric_name] for m in metric_values.values()] | |||||
| for key in all_metrics[0].keys(): | |||||
| metric_values[key] = np.average( | |||||
| [metric[key] for metric in all_metrics]) | |||||
| return metric_values | return metric_values | ||||
| @@ -667,10 +667,25 @@ class EpochBasedTrainer(BaseTrainer): | |||||
| return dataset | return dataset | ||||
| def build_optimizer(self, cfg: ConfigDict, default_args: dict = None): | def build_optimizer(self, cfg: ConfigDict, default_args: dict = None): | ||||
| return build_optimizer(self.model, cfg=cfg, default_args=default_args) | |||||
| try: | |||||
| return build_optimizer( | |||||
| self.model, cfg=cfg, default_args=default_args) | |||||
| except KeyError as e: | |||||
| self.logger.error( | |||||
| f'Build optimizer error, the optimizer {cfg} is native torch optimizer, ' | |||||
| f'please check if your torch with version: {torch.__version__} matches the config.' | |||||
| ) | |||||
| raise e | |||||
| def build_lr_scheduler(self, cfg: ConfigDict, default_args: dict = None): | def build_lr_scheduler(self, cfg: ConfigDict, default_args: dict = None): | ||||
| return build_lr_scheduler(cfg=cfg, default_args=default_args) | |||||
| try: | |||||
| return build_lr_scheduler(cfg=cfg, default_args=default_args) | |||||
| except KeyError as e: | |||||
| self.logger.error( | |||||
| f'Build lr_scheduler error, the lr_scheduler {cfg} is native torch lr_scheduler, ' | |||||
| f'please check if your torch with version: {torch.__version__} matches the config.' | |||||
| ) | |||||
| raise e | |||||
| def create_optimizer_and_scheduler(self): | def create_optimizer_and_scheduler(self): | ||||
| """ Create optimizer and lr scheduler | """ Create optimizer and lr scheduler | ||||
| @@ -62,7 +62,10 @@ def single_gpu_test(trainer, | |||||
| if 'nsentences' in data: | if 'nsentences' in data: | ||||
| batch_size = data['nsentences'] | batch_size = data['nsentences'] | ||||
| else: | else: | ||||
| batch_size = len(next(iter(data.values()))) | |||||
| try: | |||||
| batch_size = len(next(iter(data.values()))) | |||||
| except Exception: | |||||
| batch_size = data_loader.batch_size | |||||
| else: | else: | ||||
| batch_size = len(data) | batch_size = len(data) | ||||
| for _ in range(batch_size): | for _ in range(batch_size): | ||||
| @@ -134,9 +134,7 @@ def load_checkpoint(filename, | |||||
| state_dict = checkpoint if 'state_dict' not in checkpoint else checkpoint[ | state_dict = checkpoint if 'state_dict' not in checkpoint else checkpoint[ | ||||
| 'state_dict'] | 'state_dict'] | ||||
| model.load_state_dict(state_dict) | model.load_state_dict(state_dict) | ||||
| if 'meta' in checkpoint: | |||||
| return checkpoint.get('meta', {}) | |||||
| return checkpoint.get('meta', {}) | |||||
| def save_pretrained(model, | def save_pretrained(model, | ||||
| @@ -238,6 +238,15 @@ class DownloadMode(enum.Enum): | |||||
| FORCE_REDOWNLOAD = 'force_redownload' | FORCE_REDOWNLOAD = 'force_redownload' | ||||
| class UploadMode(enum.Enum): | |||||
| """ How to upload object to remote. | |||||
| """ | |||||
| # Upload all objects from local, existing remote objects may be overwritten. (Default) | |||||
| OVERWRITE = 'overwrite' | |||||
| # Upload local objects in append mode, skipping all existing remote objects. | |||||
| APPEND = 'append' | |||||
| class DatasetFormations(enum.Enum): | class DatasetFormations(enum.Enum): | ||||
| """ How a dataset is organized and interpreted | """ How a dataset is organized and interpreted | ||||
| """ | """ | ||||
| @@ -87,21 +87,23 @@ class HubOperationTest(unittest.TestCase): | |||||
| assert mdtime1 == mdtime2 | assert mdtime1 == mdtime2 | ||||
| def test_download_public_without_login(self): | def test_download_public_without_login(self): | ||||
| self.prepare_case() | |||||
| rmtree(ModelScopeConfig.path_credential) | |||||
| snapshot_path = snapshot_download( | |||||
| model_id=self.model_id, revision=self.revision) | |||||
| downloaded_file_path = os.path.join(snapshot_path, | |||||
| download_model_file_name) | |||||
| assert os.path.exists(downloaded_file_path) | |||||
| temporary_dir = tempfile.mkdtemp() | |||||
| downloaded_file = model_file_download( | |||||
| model_id=self.model_id, | |||||
| file_path=download_model_file_name, | |||||
| revision=self.revision, | |||||
| cache_dir=temporary_dir) | |||||
| assert os.path.exists(downloaded_file) | |||||
| self.api.login(TEST_ACCESS_TOKEN1) | |||||
| try: | |||||
| self.prepare_case() | |||||
| rmtree(ModelScopeConfig.path_credential) | |||||
| snapshot_path = snapshot_download( | |||||
| model_id=self.model_id, revision=self.revision) | |||||
| downloaded_file_path = os.path.join(snapshot_path, | |||||
| download_model_file_name) | |||||
| assert os.path.exists(downloaded_file_path) | |||||
| temporary_dir = tempfile.mkdtemp() | |||||
| downloaded_file = model_file_download( | |||||
| model_id=self.model_id, | |||||
| file_path=download_model_file_name, | |||||
| revision=self.revision, | |||||
| cache_dir=temporary_dir) | |||||
| assert os.path.exists(downloaded_file) | |||||
| finally: | |||||
| self.api.login(TEST_ACCESS_TOKEN1) | |||||
| def test_snapshot_delete_download_cache_file(self): | def test_snapshot_delete_download_cache_file(self): | ||||
| self.prepare_case() | self.prepare_case() | ||||
| @@ -0,0 +1,32 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import unittest | |||||
| import numpy as np | |||||
| from modelscope.metrics.sequence_classification_metric import \ | |||||
| SequenceClassificationMetric | |||||
| from modelscope.utils.test_utils import test_level | |||||
| class TestTextClsMetrics(unittest.TestCase): | |||||
| @unittest.skipUnless(test_level() >= 0, 'skip test in current test level') | |||||
| def test_value(self): | |||||
| metric = SequenceClassificationMetric() | |||||
| outputs = { | |||||
| 'logits': | |||||
| np.array([[2.0, 1.0, 0.5], [1.0, 1.5, 1.0], [2.0, 1.0, 3.0], | |||||
| [2.4, 1.5, 4.0], [2.0, 1.0, 3.0], [2.4, 1.5, 1.7], | |||||
| [2.0, 1.0, 0.5], [2.4, 1.5, 0.5]]) | |||||
| } | |||||
| inputs = {'labels': np.array([0, 1, 2, 2, 0, 1, 2, 2])} | |||||
| metric.add(outputs, inputs) | |||||
| ret = metric.evaluate() | |||||
| self.assertTrue(np.isclose(ret['f1'], 0.5)) | |||||
| self.assertTrue(np.isclose(ret['accuracy'], 0.5)) | |||||
| print(ret) | |||||
| if __name__ == '__main__': | |||||
| unittest.main() | |||||
| @@ -0,0 +1,112 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import os | |||||
| import shutil | |||||
| import tempfile | |||||
| import unittest | |||||
| import zipfile | |||||
| from modelscope.msdatasets import MsDataset | |||||
| from modelscope.utils import logger as logging | |||||
| from modelscope.utils.test_utils import test_level | |||||
| logger = logging.get_logger(__name__) | |||||
| KEY_EXTRACTED = 'extracted' | |||||
| EXPECTED_MSG = 'success' | |||||
| class DatasetDeleteTest(unittest.TestCase): | |||||
| def setUp(self): | |||||
| self.old_dir = os.getcwd() | |||||
| self.dataset_name = 'small_coco_for_test' | |||||
| self.dataset_file_name = self.dataset_name | |||||
| self.prepared_dataset_name = 'pets_small' | |||||
| self.token = os.getenv('TEST_UPLOAD_MS_TOKEN') | |||||
| error_msg = 'The modelscope token can not be empty, please set env variable: TEST_UPLOAD_MS_TOKEN' | |||||
| self.assertIsNotNone(self.token, msg=error_msg) | |||||
| from modelscope.hub.api import HubApi | |||||
| from modelscope.hub.api import ModelScopeConfig | |||||
| self.api = HubApi() | |||||
| self.api.login(self.token) | |||||
| # get user info | |||||
| self.namespace, _ = ModelScopeConfig.get_user_info() | |||||
| self.temp_dir = tempfile.mkdtemp() | |||||
| self.test_work_dir = os.path.join(self.temp_dir, self.dataset_name) | |||||
| if not os.path.exists(self.test_work_dir): | |||||
| os.makedirs(self.test_work_dir) | |||||
| def tearDown(self): | |||||
| os.chdir(self.old_dir) | |||||
| shutil.rmtree(self.temp_dir, ignore_errors=True) | |||||
| logger.info( | |||||
| f'Temporary directory {self.temp_dir} successfully removed!') | |||||
| @staticmethod | |||||
| def get_raw_downloaded_file_path(extracted_path): | |||||
| raw_downloaded_file_path = '' | |||||
| raw_data_dir = os.path.abspath( | |||||
| os.path.join(extracted_path, '../../..')) | |||||
| for root, dirs, files in os.walk(raw_data_dir): | |||||
| if KEY_EXTRACTED in dirs: | |||||
| for file in files: | |||||
| curr_file_path = os.path.join(root, file) | |||||
| if zipfile.is_zipfile(curr_file_path): | |||||
| raw_downloaded_file_path = curr_file_path | |||||
| return raw_downloaded_file_path | |||||
| def upload_test_file(self): | |||||
| # Get the prepared data from hub, using default modelscope namespace | |||||
| ms_ds_train = MsDataset.load(self.prepared_dataset_name, split='train') | |||||
| config_res = ms_ds_train._hf_ds.config_kwargs | |||||
| extracted_path = config_res.get('split_config').get('train') | |||||
| raw_zipfile_path = self.get_raw_downloaded_file_path(extracted_path) | |||||
| object_name = self.dataset_file_name + '_for_del.zip' | |||||
| MsDataset.upload( | |||||
| object_name=object_name, | |||||
| local_file_path=raw_zipfile_path, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace) | |||||
| return object_name | |||||
| def upload_test_dir(self): | |||||
| ms_ds_train = MsDataset.load(self.prepared_dataset_name, split='train') | |||||
| config_train = ms_ds_train._hf_ds.config_kwargs | |||||
| extracted_path_train = config_train.get('split_config').get('train') | |||||
| object_name = 'train_for_del' | |||||
| MsDataset.upload( | |||||
| object_name=object_name, | |||||
| local_file_path=os.path.join(extracted_path_train, | |||||
| 'Pets/images/train'), | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace) | |||||
| return object_name + '/' | |||||
| @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') | |||||
| def test_ds_delete_object(self): | |||||
| # upload prepared data | |||||
| file_name = self.upload_test_file() | |||||
| dir_name = self.upload_test_dir() | |||||
| # delete object | |||||
| del_file_msg = MsDataset.delete( | |||||
| object_name=file_name, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace) | |||||
| del_dir_msg = MsDataset.delete( | |||||
| object_name=dir_name, | |||||
| dataset_name=self.dataset_name, | |||||
| namespace=self.namespace) | |||||
| assert all([del_file_msg == EXPECTED_MSG, del_dir_msg == EXPECTED_MSG]) | |||||
| if __name__ == '__main__': | |||||
| unittest.main() | |||||
| @@ -243,6 +243,7 @@ class OfaTasksTest(unittest.TestCase, DemoCompatibilityCheck): | |||||
| def test_run_with_text_to_image_synthesis_with_name(self): | def test_run_with_text_to_image_synthesis_with_name(self): | ||||
| model = 'damo/ofa_text-to-image-synthesis_coco_large_en' | model = 'damo/ofa_text-to-image-synthesis_coco_large_en' | ||||
| ofa_pipe = pipeline(Tasks.text_to_image_synthesis, model=model) | ofa_pipe = pipeline(Tasks.text_to_image_synthesis, model=model) | ||||
| ofa_pipe.model.generator.beam_size = 2 | |||||
| example = {'text': 'a bear in the water.'} | example = {'text': 'a bear in the water.'} | ||||
| result = ofa_pipe(example) | result = ofa_pipe(example) | ||||
| result[OutputKeys.OUTPUT_IMG].save('result.png') | result[OutputKeys.OUTPUT_IMG].save('result.png') | ||||
| @@ -253,6 +254,7 @@ class OfaTasksTest(unittest.TestCase, DemoCompatibilityCheck): | |||||
| model = Model.from_pretrained( | model = Model.from_pretrained( | ||||
| 'damo/ofa_text-to-image-synthesis_coco_large_en') | 'damo/ofa_text-to-image-synthesis_coco_large_en') | ||||
| ofa_pipe = pipeline(Tasks.text_to_image_synthesis, model=model) | ofa_pipe = pipeline(Tasks.text_to_image_synthesis, model=model) | ||||
| ofa_pipe.model.generator.beam_size = 2 | |||||
| example = {'text': 'a bear in the water.'} | example = {'text': 'a bear in the water.'} | ||||
| result = ofa_pipe(example) | result = ofa_pipe(example) | ||||
| result[OutputKeys.OUTPUT_IMG].save('result.png') | result[OutputKeys.OUTPUT_IMG].save('result.png') | ||||
| @@ -14,7 +14,7 @@ class ReferringVideoObjectSegmentationTest(unittest.TestCase, | |||||
| self.task = Tasks.referring_video_object_segmentation | self.task = Tasks.referring_video_object_segmentation | ||||
| self.model_id = 'damo/cv_swin-t_referring_video-object-segmentation' | self.model_id = 'damo/cv_swin-t_referring_video-object-segmentation' | ||||
| @unittest.skipUnless(test_level() >= 0, 'skip test in current test level') | |||||
| @unittest.skip('skip since the model is set to private for now') | |||||
| def test_referring_video_object_segmentation(self): | def test_referring_video_object_segmentation(self): | ||||
| input_location = 'data/test/videos/referring_video_object_segmentation_test_video.mp4' | input_location = 'data/test/videos/referring_video_object_segmentation_test_video.mp4' | ||||
| text_queries = [ | text_queries = [ | ||||
| @@ -31,7 +31,7 @@ class ReferringVideoObjectSegmentationTest(unittest.TestCase, | |||||
| else: | else: | ||||
| raise ValueError('process error') | raise ValueError('process error') | ||||
| @unittest.skipUnless(test_level() >= 2, 'skip test in current test level') | |||||
| @unittest.skip('skip since the model is set to private for now') | |||||
| def test_referring_video_object_segmentation_with_default_task(self): | def test_referring_video_object_segmentation_with_default_task(self): | ||||
| input_location = 'data/test/videos/referring_video_object_segmentation_test_video.mp4' | input_location = 'data/test/videos/referring_video_object_segmentation_test_video.mp4' | ||||
| text_queries = [ | text_queries = [ | ||||
| @@ -183,7 +183,7 @@ class TextGenerationTest(unittest.TestCase, DemoCompatibilityCheck): | |||||
| task=Tasks.text_generation, model='langboat/bloom-1b4-zh') | task=Tasks.text_generation, model='langboat/bloom-1b4-zh') | ||||
| print(pipe('中国的首都是')) | print(pipe('中国的首都是')) | ||||
| @unittest.skip("Langboat's checkpoint has not been uploaded to modelhub") | |||||
| @unittest.skipUnless(test_level() >= 2, 'skip test in current test level') | |||||
| def test_gpt_neo(self): | def test_gpt_neo(self): | ||||
| pipe = pipeline( | pipe = pipeline( | ||||
| task=Tasks.text_generation, model='langboat/mengzi-gpt-neo-base') | task=Tasks.text_generation, model='langboat/mengzi-gpt-neo-base') | ||||
| @@ -20,16 +20,16 @@ class TinynasObjectDetectionTest(unittest.TestCase, DemoCompatibilityCheck): | |||||
| Tasks.image_object_detection, model='damo/cv_tinynas_detection') | Tasks.image_object_detection, model='damo/cv_tinynas_detection') | ||||
| result = tinynas_object_detection( | result = tinynas_object_detection( | ||||
| 'data/test/images/image_detection.jpg') | 'data/test/images/image_detection.jpg') | ||||
| print(result) | |||||
| print('airdet', result) | |||||
| @unittest.skip('will be enabled after damoyolo officially released') | |||||
| @unittest.skipUnless(test_level() >= 0, 'skip test in current test level') | |||||
| def test_run_damoyolo(self): | def test_run_damoyolo(self): | ||||
| tinynas_object_detection = pipeline( | tinynas_object_detection = pipeline( | ||||
| Tasks.image_object_detection, | Tasks.image_object_detection, | ||||
| model='damo/cv_tinynas_object-detection_damoyolo') | model='damo/cv_tinynas_object-detection_damoyolo') | ||||
| result = tinynas_object_detection( | result = tinynas_object_detection( | ||||
| 'data/test/images/image_detection.jpg') | 'data/test/images/image_detection.jpg') | ||||
| print(result) | |||||
| print('damoyolo', result) | |||||
| @unittest.skip('demo compatibility test is only enabled on a needed-basis') | @unittest.skip('demo compatibility test is only enabled on a needed-basis') | ||||
| def test_demo_compatibility(self): | def test_demo_compatibility(self): | ||||
| @@ -39,7 +39,8 @@ class TinynasObjectDetectionTest(unittest.TestCase, DemoCompatibilityCheck): | |||||
| def test_image_object_detection_auto_pipeline(self): | def test_image_object_detection_auto_pipeline(self): | ||||
| test_image = 'data/test/images/image_detection.jpg' | test_image = 'data/test/images/image_detection.jpg' | ||||
| tinynas_object_detection = pipeline( | tinynas_object_detection = pipeline( | ||||
| Tasks.image_object_detection, model='damo/cv_tinynas_detection') | |||||
| Tasks.image_object_detection, | |||||
| model='damo/cv_tinynas_object-detection_damoyolo') | |||||
| result = tinynas_object_detection(test_image) | result = tinynas_object_detection(test_image) | ||||
| tinynas_object_detection.show_result(test_image, result, | tinynas_object_detection.show_result(test_image, result, | ||||
| 'demo_ret.jpg') | 'demo_ret.jpg') | ||||
| @@ -346,7 +346,7 @@ class TestFinetuneSequenceClassification(unittest.TestCase): | |||||
| train_datasets = [] | train_datasets = [] | ||||
| from datasets import DownloadConfig | from datasets import DownloadConfig | ||||
| dc = DownloadConfig() | dc = DownloadConfig() | ||||
| dc.local_files_only = True | |||||
| dc.local_files_only = False | |||||
| for lang in langs: | for lang in langs: | ||||
| train_datasets.append( | train_datasets.append( | ||||
| load_dataset('xnli', lang, split='train', download_config=dc)) | load_dataset('xnli', lang, split='train', download_config=dc)) | ||||
| @@ -0,0 +1,101 @@ | |||||
| # Copyright (c) Alibaba, Inc. and its affiliates. | |||||
| import os | |||||
| import shutil | |||||
| import tempfile | |||||
| import unittest | |||||
| import zipfile | |||||
| from modelscope.hub.snapshot_download import snapshot_download | |||||
| from modelscope.metainfo import Trainers | |||||
| from modelscope.models.cv.movie_scene_segmentation import \ | |||||
| MovieSceneSegmentationModel | |||||
| from modelscope.msdatasets import MsDataset | |||||
| from modelscope.trainers import build_trainer | |||||
| from modelscope.utils.config import Config, ConfigDict | |||||
| from modelscope.utils.constant import ModelFile | |||||
| from modelscope.utils.test_utils import test_level | |||||
| class TestImageInstanceSegmentationTrainer(unittest.TestCase): | |||||
| model_id = 'damo/cv_swin-t_referring_video-object-segmentation' | |||||
| dataset_name = 'referring_vos_toydata' | |||||
| def setUp(self): | |||||
| print(('Testing %s.%s' % (type(self).__name__, self._testMethodName))) | |||||
| cache_path = snapshot_download(self.model_id) | |||||
| config_path = os.path.join(cache_path, ModelFile.CONFIGURATION) | |||||
| cfg = Config.from_file(config_path) | |||||
| max_epochs = cfg.train.max_epochs | |||||
| train_data_cfg = ConfigDict( | |||||
| name=self.dataset_name, | |||||
| split='train', | |||||
| test_mode=False, | |||||
| cfg=cfg.dataset) | |||||
| test_data_cfg = ConfigDict( | |||||
| name=self.dataset_name, | |||||
| split='test', | |||||
| test_mode=True, | |||||
| cfg=cfg.dataset) | |||||
| self.train_dataset = MsDataset.load( | |||||
| dataset_name=train_data_cfg.name, | |||||
| split=train_data_cfg.split, | |||||
| cfg=train_data_cfg.cfg, | |||||
| namespace='damo', | |||||
| test_mode=train_data_cfg.test_mode) | |||||
| assert next( | |||||
| iter(self.train_dataset.config_kwargs['split_config'].values())) | |||||
| self.test_dataset = MsDataset.load( | |||||
| dataset_name=test_data_cfg.name, | |||||
| split=test_data_cfg.split, | |||||
| cfg=test_data_cfg.cfg, | |||||
| namespace='damo', | |||||
| test_mode=test_data_cfg.test_mode) | |||||
| assert next( | |||||
| iter(self.test_dataset.config_kwargs['split_config'].values())) | |||||
| self.max_epochs = max_epochs | |||||
| @unittest.skip('skip since the model is set to private for now') | |||||
| def test_trainer(self): | |||||
| kwargs = dict( | |||||
| model=self.model_id, | |||||
| train_dataset=self.train_dataset, | |||||
| eval_dataset=self.test_dataset, | |||||
| work_dir='./work_dir') | |||||
| trainer = build_trainer( | |||||
| name=Trainers.referring_video_object_segmentation, | |||||
| default_args=kwargs) | |||||
| trainer.train() | |||||
| results_files = os.listdir(trainer.work_dir) | |||||
| self.assertIn(f'{trainer.timestamp}.log.json', results_files) | |||||
| @unittest.skip('skip since the model is set to private for now') | |||||
| def test_trainer_with_model_and_args(self): | |||||
| cache_path = snapshot_download(self.model_id) | |||||
| model = MovieSceneSegmentationModel.from_pretrained(cache_path) | |||||
| kwargs = dict( | |||||
| cfg_file=os.path.join(cache_path, ModelFile.CONFIGURATION), | |||||
| model=model, | |||||
| train_dataset=self.train_dataset, | |||||
| eval_dataset=self.test_dataset, | |||||
| work_dir='./work_dir') | |||||
| trainer = build_trainer( | |||||
| name=Trainers.referring_video_object_segmentation, | |||||
| default_args=kwargs) | |||||
| trainer.train() | |||||
| results_files = os.listdir(trainer.work_dir) | |||||
| self.assertIn(f'{trainer.timestamp}.log.json', results_files) | |||||
| if __name__ == '__main__': | |||||
| unittest.main() | |||||
| @@ -0,0 +1,94 @@ | |||||
| import os | |||||
| import unittest | |||||
| import json | |||||
| import requests | |||||
| import torch | |||||
| import torch.distributed as dist | |||||
| import torch.multiprocessing as mp | |||||
| from modelscope.hub.snapshot_download import snapshot_download | |||||
| from modelscope.metainfo import Trainers | |||||
| from modelscope.msdatasets import MsDataset | |||||
| from modelscope.trainers import build_trainer | |||||
| from modelscope.trainers.multi_modal.team.team_trainer_utils import ( | |||||
| collate_fn, train_mapping, val_mapping) | |||||
| from modelscope.utils.config import Config | |||||
| from modelscope.utils.constant import DownloadMode, ModeKeys, ModelFile | |||||
| from modelscope.utils.logger import get_logger | |||||
| from modelscope.utils.test_utils import test_level | |||||
| logger = get_logger() | |||||
| def train_worker(device_id): | |||||
| model_id = 'damo/multi-modal_team-vit-large-patch14_multi-modal-similarity' | |||||
| ckpt_dir = './ckpt' | |||||
| os.makedirs(ckpt_dir, exist_ok=True) | |||||
| # Use epoch=1 for faster training here | |||||
| cfg = Config({ | |||||
| 'framework': 'pytorch', | |||||
| 'task': 'multi-modal-similarity', | |||||
| 'pipeline': { | |||||
| 'type': 'multi-modal-similarity' | |||||
| }, | |||||
| 'model': { | |||||
| 'type': 'team-multi-modal-similarity' | |||||
| }, | |||||
| 'dataset': { | |||||
| 'name': 'Caltech101', | |||||
| 'class_num': 101 | |||||
| }, | |||||
| 'preprocessor': {}, | |||||
| 'train': { | |||||
| 'epoch': 1, | |||||
| 'batch_size': 32, | |||||
| 'ckpt_dir': ckpt_dir | |||||
| }, | |||||
| 'evaluation': { | |||||
| 'batch_size': 64 | |||||
| } | |||||
| }) | |||||
| cfg_file = '{}/{}'.format(ckpt_dir, ModelFile.CONFIGURATION) | |||||
| cfg.dump(cfg_file) | |||||
| train_dataset = MsDataset.load( | |||||
| cfg.dataset.name, | |||||
| namespace='modelscope', | |||||
| split='train', | |||||
| download_mode=DownloadMode.FORCE_REDOWNLOAD).to_hf_dataset() | |||||
| train_dataset = train_dataset.with_transform(train_mapping) | |||||
| val_dataset = MsDataset.load( | |||||
| cfg.dataset.name, | |||||
| namespace='modelscope', | |||||
| split='validation', | |||||
| download_mode=DownloadMode.FORCE_REDOWNLOAD).to_hf_dataset() | |||||
| val_dataset = val_dataset.with_transform(val_mapping) | |||||
| default_args = dict( | |||||
| cfg_file=cfg_file, | |||||
| model=model_id, | |||||
| device_id=device_id, | |||||
| data_collator=collate_fn, | |||||
| train_dataset=train_dataset, | |||||
| val_dataset=val_dataset) | |||||
| trainer = build_trainer( | |||||
| name=Trainers.image_classification_team, default_args=default_args) | |||||
| trainer.train() | |||||
| trainer.evaluate() | |||||
| class TEAMTransferTrainerTest(unittest.TestCase): | |||||
| @unittest.skipUnless(test_level() >= 0, 'skip test in current test level') | |||||
| def test_trainer(self): | |||||
| if torch.cuda.device_count() > 0: | |||||
| train_worker(device_id=0) | |||||
| else: | |||||
| train_worker(device_id=-1) | |||||
| logger.info('Training done') | |||||
| if __name__ == '__main__': | |||||
| unittest.main() | |||||
| @@ -119,7 +119,7 @@ class TestTrainerWithNlp(unittest.TestCase): | |||||
| checkpoint_path=os.path.join(self.tmp_dir, 'epoch_10.pth')) | checkpoint_path=os.path.join(self.tmp_dir, 'epoch_10.pth')) | ||||
| self.assertTrue(Metrics.accuracy in eval_results) | self.assertTrue(Metrics.accuracy in eval_results) | ||||
| @unittest.skipUnless(test_level() >= 2, 'skip test in current test level') | |||||
| @unittest.skip('skip for now before test is re-configured') | |||||
| def test_trainer_with_configured_datasets(self): | def test_trainer_with_configured_datasets(self): | ||||
| model_id = 'damo/nlp_structbert_sentence-similarity_chinese-base' | model_id = 'damo/nlp_structbert_sentence-similarity_chinese-base' | ||||
| cfg: Config = read_config(model_id) | cfg: Config = read_config(model_id) | ||||
| @@ -223,13 +223,31 @@ class TestTrainerWithNlp(unittest.TestCase): | |||||
| trainer, 'trainer_continue_train', level='strict'): | trainer, 'trainer_continue_train', level='strict'): | ||||
| trainer.train(os.path.join(self.tmp_dir, 'iter_3.pth')) | trainer.train(os.path.join(self.tmp_dir, 'iter_3.pth')) | ||||
| @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') | |||||
| def test_trainer_with_evaluation(self): | |||||
| tmp_dir = tempfile.TemporaryDirectory().name | |||||
| if not os.path.exists(tmp_dir): | |||||
| os.makedirs(tmp_dir) | |||||
| model_id = 'damo/nlp_structbert_sentence-similarity_chinese-tiny' | |||||
| cache_path = snapshot_download(model_id) | |||||
| model = SbertForSequenceClassification.from_pretrained(cache_path) | |||||
| kwargs = dict( | |||||
| cfg_file=os.path.join(cache_path, ModelFile.CONFIGURATION), | |||||
| model=model, | |||||
| eval_dataset=self.dataset, | |||||
| work_dir=self.tmp_dir) | |||||
| trainer = build_trainer(default_args=kwargs) | |||||
| print(trainer.evaluate(cache_path + '/pytorch_model.bin')) | |||||
| @unittest.skipUnless(test_level() >= 2, 'skip test in current test level') | @unittest.skipUnless(test_level() >= 2, 'skip test in current test level') | ||||
| def test_trainer_with_model_and_args(self): | def test_trainer_with_model_and_args(self): | ||||
| tmp_dir = tempfile.TemporaryDirectory().name | tmp_dir = tempfile.TemporaryDirectory().name | ||||
| if not os.path.exists(tmp_dir): | if not os.path.exists(tmp_dir): | ||||
| os.makedirs(tmp_dir) | os.makedirs(tmp_dir) | ||||
| model_id = 'damo/nlp_structbert_sentence-similarity_chinese-base' | |||||
| model_id = 'damo/nlp_structbert_sentence-similarity_chinese-tiny' | |||||
| cache_path = snapshot_download(model_id) | cache_path = snapshot_download(model_id) | ||||
| model = SbertForSequenceClassification.from_pretrained(cache_path) | model = SbertForSequenceClassification.from_pretrained(cache_path) | ||||
| kwargs = dict( | kwargs = dict( | ||||