Metric3D / training /mono /datasets /distributed_sampler.py
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import numpy as np
import logging
import torch.distributed as dist
import math
import os
from mono.utils.comm import get_func, main_process
from torch.utils.data import ConcatDataset, DataLoader
import random
import copy
import torch
import logging
def build_dataset_n_sampler_with_cfg(cfg, phase):
# build data array, similar datasets are organized in the same group
datasets_array = build_data_array(cfg, phase)
# concatenate datasets with torch.utils.data.ConcatDataset methods
dataset_merge = concatenate_datasets(datasets_array)
# customerize sampler
custom_sampler = CustomerMultiDataSampler(cfg, dataset_merge, phase)
return dataset_merge, custom_sampler
class CustomerMultiDataSampler(torch.utils.data.Sampler):
"""
Customerize a sampler method. During this process, the size of some datasets will be tailored or expanded.
Such process aims to ensure each group has the same data size.
e.g. dataset_list: [[A, B, C], [E, F], M], then group 'A,B,C' (Size(A) + Size(B) + Size(C)) has the same size
as to group 'E,F' (Size(E) + Size(F)), so as to 'M'.
args:
@ cfg: configs for each dataset.
@ dataset_merge: merged multiple datasets with the torch.utils.data.ConcatDataset method.
@ phase: train/val/test phase.
"""
def __init__(self, cfg, dataset_merge, phase):
self.cfg = cfg
self.world_size = int(os.environ['WORLD_SIZE'])
self.phase = phase
self.global_rank = cfg.dist_params.global_rank
self.dataset_merge = dataset_merge
self.logger = logging.getLogger()
if main_process():
self.logger.info(f'Initilized CustomerMultiDataSampler for {phase}.')
self.random_seed = 136
self.random_seed_cp = 639
def __iter__(self):
self.create_samplers()
self.logger.info("Sample list of {} in rank {} is: {}".format(self.phase, self.global_rank, ' '.join(map(str, self.sample_indices_array[-20: -10]))))
# subsample, each rank sample a subset for training.
rank_offset = self.each_gpu_size * self.global_rank
rank_indices = self.sample_indices_array[rank_offset : rank_offset + self.each_gpu_size]
assert rank_indices.size == self.each_gpu_size
for id in rank_indices:
yield id
def __len__(self):
return self.total_dist_size
def create_samplers(self):
# sample idx for each dataset, idx value should not exceed the size of data,
# i.e. 0 <= idx < len(data_size)
#self.samples_mat = []
self.indices_mat = []
# size expanded, idx cumulative aggregrated for calling
self.indices_expand_mat = []
# max group size, each group may consists of multiple similar datasets
max_group_size = max([len(i) for i in self.dataset_merge.datasets])
dataset_cumulative_sizes = [0] + self.dataset_merge.cumulative_sizes
for gi, dataset_group in enumerate(self.dataset_merge.datasets):
# the merged dataset consists of multiple grouped datasets
samples_group = []
indices_expand_group = []
indices_group = []
# to ensure each group has the same size, group with less data has to duplicate its sample list for 'cp_times' times
cp_times = max_group_size / len(dataset_group)
# adjust each group to ensure they have the same data size
group_cumulative_sizes = [0] + dataset_group.cumulative_sizes
expand_indices_sizes = (np.array(group_cumulative_sizes) * cp_times).astype(np.int)
expand_indices_sizes[-1] = max_group_size
# datasets in the same group have to expand its sample list
expand_indices_sizes = expand_indices_sizes[1:] - expand_indices_sizes[:-1]
for di, dataset_i in enumerate(dataset_group.datasets):
# datasets residing in each group may have similar features
# samples indices list
dataset_i_ori_sample_list = self.dataset_merge.datasets[gi].datasets[di].sample_list
if self.phase == 'train':
#sample_list_i = random.sample(dataset_i_ori_sample_list, len(dataset_i_ori_sample_list))
sample_list_i = dataset_i_ori_sample_list
else:
# no shuffle in val or test
sample_list_i = dataset_i_ori_sample_list
#samples_group.append(sample_list_i)
# expand the sample list for each dataset
expand_size_i = expand_indices_sizes[di]
indices_expand_list = copy.deepcopy(sample_list_i)
for i in range(int(cp_times)-1):
#indices_expand_list += random.sample(sample_list_i, len(dataset_i))
indices_expand_list += sample_list_i
random.seed(self.random_seed_cp)
indices_expand_list += random.sample(sample_list_i, len(dataset_i))[:expand_size_i % len(dataset_i)]
# adjust indices value
indices_expand_list = np.array(indices_expand_list) + dataset_cumulative_sizes[gi] + group_cumulative_sizes[di]
indices_list = np.array(sample_list_i) + dataset_cumulative_sizes[gi] + group_cumulative_sizes[di]
# the expanded sample list for dataset_i
indices_expand_group.append(indices_expand_list)
# the original sample list for the dataset_i
indices_group.append(indices_list)
if main_process():
self.logger.info(f'"{dataset_i.data_name}", {self.phase} set in group {gi}: ' +
f'expand size {len(sample_list_i)} --->>>---, {expand_size_i}')
concat_group = np.concatenate(indices_expand_group)
# shuffle the grouped datasets samples, e.g. each group data is [a1, a2, a3, b1, b2, b3, b4, c1, c2], the shuffled one, maybe, is [a3, b1, b2, b3, b4, c1,...]
np.random.seed(self.random_seed)
if self.phase == 'train':
np.random.shuffle(concat_group)
self.indices_expand_mat.append(concat_group)
self.indices_mat.append(np.concatenate(indices_group))
# create sample list
if "train" in self.phase:
# data groups are cross sorted, i.e. [A, B, C, A, B, C....]
self.sample_indices_array = np.array(self.indices_expand_mat).transpose(1, 0).reshape(-1)
self.total_indices_size = max_group_size * len(self.dataset_merge.datasets)
else:
self.sample_indices_array = np.concatenate(self.indices_mat[:])
self.total_indices_size = self.sample_indices_array.size
self.total_sample_size = len(self.dataset_merge)
self.each_gpu_size = int(np.ceil(self.total_indices_size * 1.0 / self.world_size)) # ignore some residual samples
self.total_dist_size = self.each_gpu_size * self.world_size
# add extra samples to make it evenly divisible
diff_size = int(self.total_dist_size - self.total_indices_size) # int(self.total_dist_size - self.total_sample_size)
if diff_size > 0:
self.sample_indices_array = np.append(self.sample_indices_array, self.sample_indices_array[:diff_size])
#if main_process():
self.logger.info(f'Expanded data size in merged dataset: {self.total_sample_size}, adjusted data size for distributed running: {self.total_dist_size}')
self.random_seed += 413
self.random_seed_cp += 377
def build_data_array(cfg, phase):
"""
Construct data repo with cfg. In cfg, there is a data name array, which encloses the name of each data.
Each data name links to a data config file. With this config file, dataset can be constructed.
e.g. [['A', 'B', 'C'], ['E', 'F'], 'M']. Each letter indicates a dataset.
"""
datasets_array = []
data_array_names_for_log = []
dataname_array = cfg.data_array
for group_i in dataname_array:
dataset_group_i = []
data_group_i_names_for_log = []
if not isinstance(group_i, list):
group_i = [group_i, ]
for data_i in group_i:
if not isinstance(data_i, dict):
raise TypeError(f'data name must be a dict, but got {type(data_i)}')
# each data only can employ a single dataset config
assert len(data_i.values()) == 1
if list(data_i.values())[0] not in cfg:
raise RuntimeError(f'cannot find the data config for {data_i}')
# dataset configure for data i
#data_i_cfg = cfg[data_i]
args = copy.deepcopy(cfg) #data_i_cfg.copy()
data_i_cfg_name = list(data_i.values())[0]
data_i_db_info_name = list(data_i.keys())[0]
data_i_db_info = cfg.db_info[data_i_db_info_name]
# Online evaluation using only metric datasets
# if phase == 'val' and 'exclude' in cfg.evaluation \
# and data_i_db_info_name in cfg.evaluation.exclude:
# continue
# dataset lib name
obj_name = cfg[data_i_cfg_name]['lib']
obj_path = os.path.dirname(__file__).split(os.getcwd() + '/')[-1].replace('/', '.') + '.' + obj_name
obj_cls = get_func(obj_path)
if obj_cls is None:
raise KeyError(f'{obj_name} is not in .data')
dataset_i = obj_cls(
args[data_i_cfg_name],
phase,
db_info=data_i_db_info,
**cfg.data_basic)
# if 'Taskonomy' not in data_i:
# print('>>>>>>>>>>ditributed_sampler LN189', dataset_i.data_name, dataset_i.annotations['files'][0]['rgb'].split('/')[-1],
# dataset_i.annotations['files'][1000]['rgb'].split('/')[-1], dataset_i.annotations['files'][3000]['rgb'].split('/')[-1])
# else:
# print('>>>>>>>>>>ditributed_sampler LN189', dataset_i.data_name, dataset_i.annotations['files'][0]['meta_data'].split('/')[-1],
# dataset_i.annotations['files'][1000]['meta_data'].split('/')[-1], dataset_i.annotations['files'][3000]['meta_data'].split('/')[-1])
dataset_group_i.append(dataset_i)
# get data name for log
data_group_i_names_for_log.append(data_i_db_info_name)
datasets_array.append(dataset_group_i)
data_array_names_for_log.append(data_group_i_names_for_log)
if main_process():
logger = logging.getLogger()
logger.info(f'{phase}: data array ({data_array_names_for_log}) has been constructed.')
return datasets_array
def concatenate_datasets(datasets_array):
"""
Merge grouped datasets to a single one.
args:
@ dataset_list: the list of constructed dataset.
"""
#max_size = 0
dataset_merge = []
for group in datasets_array:
group_dataset = ConcatDataset(group)
group_size = len(group_dataset)
#max_size = max_size if group_size < max_size else group_size
dataset_merge.append(group_dataset)
return ConcatDataset(dataset_merge)
def log_canonical_transfer_info(cfg):
logger = logging.getLogger()
data = []
canonical_focal_length = cfg.data_basic.canonical_space.focal_length
canonical_size = cfg.data_basic.canonical_space.img_size
for group_i in cfg.data_array:
if not isinstance(group_i, list):
group_i = [group_i, ]
for data_i in group_i:
if not isinstance(data_i, dict):
raise TypeError(f'data name must be a dict, but got {type(data_i)}')
assert len(data_i.values()) == 1
if list(data_i.values())[0] not in cfg:
raise RuntimeError(f'cannot find the data config for {data_i.values()}')
if list(data_i.values())[0] not in data:
data.append(list(data_i.values())[0])
logger.info('>>>>>>>>>>>>>>Some data transfer details during augmentation.>>>>>>>>>>>>>>')
for data_i in data:
data_i_cfg = cfg[data_i]
if type(data_i_cfg.original_focal_length) != tuple:
ori_focal = (data_i_cfg.original_focal_length, )
else:
ori_focal = data_i_cfg.original_focal_length
log_str = '%s transfer details: \n' % data_i
for ori_f in ori_focal:
# to canonical space
scalor = canonical_focal_length / ori_f
img_size = (data_i_cfg.original_size[0]*scalor, data_i_cfg.original_size[1]*scalor)
log_str += 'To canonical space: focal length, %f -> %f; size, %s -> %s\n' %(ori_f, canonical_focal_length, data_i_cfg.original_size, img_size)
# random resize in augmentaiton
resize_range = data_i_cfg.data.train.pipeline[1].ratio_range
resize_low = (img_size[0]*resize_range[0], img_size[1]*resize_range[0])
resize_up = (img_size[0]*resize_range[1], img_size[1]*resize_range[1])
log_str += 'Random resize bound: %s ~ %s; \n' %(resize_low, resize_up)
logger.info(log_str)