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on
A10G
Running
on
A10G
import logging | |
import os | |
import time | |
from typing import List | |
import torch | |
from eval import verification | |
from utils.utils_logging import AverageMeter | |
class CallBackVerification(object): | |
def __init__(self, frequent, rank, val_targets, rec_prefix, image_size=(112, 112)): | |
self.frequent: int = frequent | |
self.rank: int = rank | |
self.highest_acc: float = 0.0 | |
self.highest_acc_list: List[float] = [0.0] * len(val_targets) | |
self.ver_list: List[object] = [] | |
self.ver_name_list: List[str] = [] | |
if self.rank is 0: | |
self.init_dataset(val_targets=val_targets, data_dir=rec_prefix, image_size=image_size) | |
def ver_test(self, backbone: torch.nn.Module, global_step: int): | |
results = [] | |
for i in range(len(self.ver_list)): | |
acc1, std1, acc2, std2, xnorm, embeddings_list = verification.test( | |
self.ver_list[i], backbone, 10, 10) | |
logging.info('[%s][%d]XNorm: %f' % (self.ver_name_list[i], global_step, xnorm)) | |
logging.info('[%s][%d]Accuracy-Flip: %1.5f+-%1.5f' % (self.ver_name_list[i], global_step, acc2, std2)) | |
if acc2 > self.highest_acc_list[i]: | |
self.highest_acc_list[i] = acc2 | |
logging.info( | |
'[%s][%d]Accuracy-Highest: %1.5f' % (self.ver_name_list[i], global_step, self.highest_acc_list[i])) | |
results.append(acc2) | |
def init_dataset(self, val_targets, data_dir, image_size): | |
for name in val_targets: | |
path = os.path.join(data_dir, name + ".bin") | |
if os.path.exists(path): | |
data_set = verification.load_bin(path, image_size) | |
self.ver_list.append(data_set) | |
self.ver_name_list.append(name) | |
def __call__(self, num_update, backbone: torch.nn.Module): | |
if self.rank is 0 and num_update > 0 and num_update % self.frequent == 0: | |
backbone.eval() | |
self.ver_test(backbone, num_update) | |
backbone.train() | |
class CallBackLogging(object): | |
def __init__(self, frequent, rank, total_step, batch_size, world_size, writer=None): | |
self.frequent: int = frequent | |
self.rank: int = rank | |
self.time_start = time.time() | |
self.total_step: int = total_step | |
self.batch_size: int = batch_size | |
self.world_size: int = world_size | |
self.writer = writer | |
self.init = False | |
self.tic = 0 | |
def __call__(self, | |
global_step: int, | |
loss: AverageMeter, | |
epoch: int, | |
fp16: bool, | |
learning_rate: float, | |
grad_scaler: torch.cuda.amp.GradScaler): | |
if self.rank == 0 and global_step > 0 and global_step % self.frequent == 0: | |
if self.init: | |
try: | |
speed: float = self.frequent * self.batch_size / (time.time() - self.tic) | |
speed_total = speed * self.world_size | |
except ZeroDivisionError: | |
speed_total = float('inf') | |
time_now = (time.time() - self.time_start) / 3600 | |
time_total = time_now / ((global_step + 1) / self.total_step) | |
time_for_end = time_total - time_now | |
if self.writer is not None: | |
self.writer.add_scalar('time_for_end', time_for_end, global_step) | |
self.writer.add_scalar('learning_rate', learning_rate, global_step) | |
self.writer.add_scalar('loss', loss.avg, global_step) | |
if fp16: | |
msg = "Speed %.2f samples/sec Loss %.4f LearningRate %.4f Epoch: %d Global Step: %d " \ | |
"Fp16 Grad Scale: %2.f Required: %1.f hours" % ( | |
speed_total, loss.avg, learning_rate, epoch, global_step, | |
grad_scaler.get_scale(), time_for_end | |
) | |
else: | |
msg = "Speed %.2f samples/sec Loss %.4f LearningRate %.4f Epoch: %d Global Step: %d " \ | |
"Required: %1.f hours" % ( | |
speed_total, loss.avg, learning_rate, epoch, global_step, time_for_end | |
) | |
logging.info(msg) | |
loss.reset() | |
self.tic = time.time() | |
else: | |
self.init = True | |
self.tic = time.time() | |
class CallBackModelCheckpoint(object): | |
def __init__(self, rank, output="./"): | |
self.rank: int = rank | |
self.output: str = output | |
def __call__(self, global_step, backbone, partial_fc, ): | |
if global_step > 100 and self.rank == 0: | |
path_module = os.path.join(self.output, "backbone.pth") | |
torch.save(backbone.module.state_dict(), path_module) | |
logging.info("Pytorch Model Saved in '{}'".format(path_module)) | |
if global_step > 100 and partial_fc is not None: | |
partial_fc.save_params() | |