__init__.py 8.0 KB
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# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
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import inspect
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import copy
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import random
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import platform

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import paddle
import numpy as np
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import paddle.distributed as dist
from functools import partial
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from paddle.io import DistributedBatchSampler, BatchSampler, DataLoader
from ppcls.utils import logger

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from ppcls.data import dataloader
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# dataset
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from ppcls.data.dataloader.imagenet_dataset import ImageNetDataset
from ppcls.data.dataloader.multilabel_dataset import MultiLabelDataset
from ppcls.data.dataloader.common_dataset import create_operators
from ppcls.data.dataloader.vehicle_dataset import CompCars, VeriWild
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from ppcls.data.dataloader.logo_dataset import LogoDataset
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from ppcls.data.dataloader.icartoon_dataset import ICartoonDataset
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from ppcls.data.dataloader.mix_dataset import MixDataset
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from ppcls.data.dataloader.multi_scale_dataset import MultiScaleDataset
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from ppcls.data.dataloader.person_dataset import Market1501, MSMT17, DukeMTMC
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from ppcls.data.dataloader.face_dataset import FiveValidationDataset, AdaFaceDataset
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from ppcls.data.dataloader.custom_label_dataset import CustomLabelDataset
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from ppcls.data.dataloader.cifar import Cifar10, Cifar100
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from ppcls.data.dataloader.metabin_sampler import DomainShuffleBatchSampler, NaiveIdentityBatchSampler
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# sampler
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from ppcls.data.dataloader.DistributedRandomIdentitySampler import DistributedRandomIdentitySampler
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from ppcls.data.dataloader.pk_sampler import PKSampler
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from ppcls.data.dataloader.mix_sampler import MixSampler
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from ppcls.data.dataloader.multi_scale_sampler import MultiScaleSampler
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from ppcls.data import preprocess
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from ppcls.data.preprocess import transform
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def create_operators(params, class_num=None):
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    """
    create operators based on the config

    Args:
        params(list): a dict list, used to create some operators
    """
    assert isinstance(params, list), ('operator config should be a list')
    ops = []
    for operator in params:
        assert isinstance(operator,
                          dict) and len(operator) == 1, "yaml format error"
        op_name = list(operator)[0]
        param = {} if operator[op_name] is None else operator[op_name]
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        op_func = getattr(preprocess, op_name)
        if "class_num" in inspect.getfullargspec(op_func).args:
            param.update({"class_num": class_num})
        op = op_func(**param)
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        ops.append(op)

    return ops


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def worker_init_fn(worker_id: int, num_workers: int, rank: int, seed: int):
    """callback function on each worker subprocess after seeding and before data loading.

    Args:
        worker_id (int): Worker id in [0, num_workers - 1]
        num_workers (int): Number of subprocesses to use for data loading.
        rank (int): Rank of process in distributed environment. If in non-distributed environment, it is a constant number `0`.
        seed (int): Random seed
    """
    # The seed of each worker equals to
    # num_worker * rank + worker_id + user_seed
    worker_seed = num_workers * rank + worker_id + seed
    np.random.seed(worker_seed)
    random.seed(worker_seed)


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def build_dataloader(config, *mode, seed=None):
    dataloader_config = config["DataLoader"]
    for m in mode:
        assert m in [
            'Train', 'Eval', 'Test', 'Gallery', 'Query', 'UnLabelTrain'
        ], "Dataset mode should be Train, Eval, Test, Gallery, Query, UnLabelTrain"
        assert m in dataloader_config.keys(), "{} config not in yaml".format(m)
        dataloader_config = dataloader_config[m]
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    class_num = config["Arch"].get("class_num", None)
    epochs = config["Global"]["epochs"]
    use_dali = config["Global"].get("use_dali", False)
    num_workers = dataloader_config['loader']["num_workers"]
    use_shared_memory = dataloader_config['loader']["use_shared_memory"]

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    # build dataset
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    if use_dali:
        from ppcls.data.dataloader.dali import dali_dataloader
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        return dali_dataloader(
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            config["DataLoader"],
            mode,
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            paddle.device.get_device(),
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            num_threads=num_workers,
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            seed=seed,
            enable_fuse=True)
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    config_dataset = dataloader_config['dataset']
    config_dataset = copy.deepcopy(config_dataset)
    dataset_name = config_dataset.pop('name')
    if 'batch_transform_ops' in config_dataset:
        batch_transform = config_dataset['batch_transform_ops']
    else:
        batch_transform = None

    dataset = eval(dataset_name)(**config_dataset)

    logger.debug("build dataset({}) success...".format(dataset))

    # build sampler
    config_sampler = dataloader_config['sampler']
    if config_sampler and "name" not in config_sampler:
        batch_sampler = None
        batch_size = config_sampler["batch_size"]
        drop_last = config_sampler["drop_last"]
        shuffle = config_sampler["shuffle"]
    else:
        sampler_name = config_sampler.pop("name")
        sampler_argspec = inspect.getargspec(eval(sampler_name).__init__).args
        if "total_epochs" in sampler_argspec:
            config_sampler.update({"total_epochs": epochs})
        batch_sampler = eval(sampler_name)(dataset, **config_sampler)

    logger.debug("build batch_sampler({}) success...".format(batch_sampler))

    # build batch operator
    def mix_collate_fn(batch):
        batch = transform(batch, batch_ops)
        # batch each field
        slots = []
        for items in batch:
            for i, item in enumerate(items):
                if len(slots) < len(items):
                    slots.append([item])
                else:
                    slots[i].append(item)
        return [np.stack(slot, axis=0) for slot in slots]

    if isinstance(batch_transform, list):
        batch_ops = create_operators(batch_transform, class_num)
        batch_collate_fn = mix_collate_fn
    else:
        batch_collate_fn = None

    init_fn = partial(
        worker_init_fn,
        num_workers=num_workers,
        rank=dist.get_rank(),
        seed=seed) if seed is not None else None

    if batch_sampler is None:
        data_loader = DataLoader(
            dataset=dataset,
            places=paddle.device.get_device(),
            num_workers=num_workers,
            return_list=True,
            use_shared_memory=use_shared_memory,
            batch_size=batch_size,
            shuffle=shuffle,
            drop_last=drop_last,
            collate_fn=batch_collate_fn,
            worker_init_fn=init_fn)
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    else:
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        data_loader = DataLoader(
            dataset=dataset,
            places=paddle.device.get_device(),
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            num_workers=num_workers,
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            return_list=True,
            use_shared_memory=use_shared_memory,
            batch_sampler=batch_sampler,
            collate_fn=batch_collate_fn,
            worker_init_fn=init_fn)
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    total_samples = len(
        data_loader.dataset) if not use_dali else data_loader.size
    max_iter = len(data_loader) - 1 if platform.system() == "Windows" else len(
        data_loader)
    data_loader.max_iter = max_iter
    data_loader.total_samples = total_samples

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    # TODO(gaotingquan): mv to build_sampler
    if mode == "train":
        if dataloader_config["Train"].get("max_iter", None):
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            # set max iteration per epoch mannualy, when training by iteration(s), such as XBM, FixMatch.
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            max_iter = config["Train"].get("max_iter")
        update_freq = config["Global"].get("update_freq", 1)
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        max_iter = data_loader.max_iter // update_freq * update_freq
        data_loader.max_iter = max_iter

    logger.debug("build data_loader({}) success...".format(data_loader))
    return data_loader