remove old useless traditional pytorch trainer in exp2
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@@ -15,86 +15,6 @@ sys.path.append(str(Path(__file__).resolve().parent.parent.parent))
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import gpu_utils
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import gpu_utils
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# class Trainer:
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# device: torch.device
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# data_source: MnistDataLoaders
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# model: Cnn
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# def __init__(self):
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# self.device = gpu_utils.get_gpu_device()
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# self.data_source = MnistDataLoaders(Trainer.N_BATCH_SIZE)
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# self.model = Cnn().to(self.device)
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# # 展示模型结构。批次为指定批次数量,通道只有一个灰度通道,大小28x28。
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# torchinfo.summary(self.model, (Trainer.N_BATCH_SIZE, 1, 28, 28))
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# def train(self):
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# optimizer = torch.optim.Adam(self.model.parameters(), eps=1e-7)
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# # optimizer = torch.optim.AdamW(
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# # self.model.parameters(),
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# # lr=0.001, # 两者默认学习率都是 0.001
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# # betas=(0.9, 0.999), # 两者默认值相同
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# # eps=1e-07, # 【关键】匹配 TensorFlow 的默认 epsilon
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# # weight_decay=0.0, # 两者默认都是 0
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# # amsgrad=False # 两者默认都是 False
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# # )
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# loss_func = torch.nn.CrossEntropyLoss()
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# for epoch in range(Trainer.N_EPOCH):
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# self.model.train()
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# batch_images: torch.Tensor
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# batch_labels: torch.Tensor
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# for batch_index, (batch_images, batch_labels) in enumerate(self.data_source.train_loader):
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# gpu_images = batch_images.to(self.device)
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# gpu_labels = batch_labels.to(self.device)
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# prediction: torch.Tensor = self.model(gpu_images)
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# loss: torch.Tensor = loss_func(prediction, gpu_labels)
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# optimizer.zero_grad()
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# loss.backward()
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# optimizer.step()
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# if batch_index % 100 == 0:
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# literal_loss = loss.item()
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# print(f'Epoch: {epoch+1}, Batch: {batch_index}, Loss: {literal_loss:.4f}')
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# def save(self):
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# file_dir_path = Path(__file__).resolve().parent.parent / 'models'
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# file_dir_path.mkdir(parents=True, exist_ok=True)
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# file_path = file_dir_path / 'cnn.pth'
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# torch.save(self.model.state_dict(), file_path)
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# print(f'模型已保存至:{file_path}')
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# def test(self):
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# self.model.eval()
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# correct_sum = 0
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# total_sum = 0
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# with torch.no_grad():
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# batch_images: torch.Tensor
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# batch_labels: torch.Tensor
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# for batch_images, batch_labels in self.data_source.test_loader:
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# gpu_images = batch_images.to(self.device)
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# gpu_labels = batch_labels.to(self.device)
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# possibilities: torch.Tensor = self.model(gpu_images)
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# # 输出出来是10个数字各自的可能性,所以要选取最高可能性的那个对比
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# # 在dim=1上找最大的那个,就选那个。dim=0是批次所以不管他。
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# _, prediction = possibilities.max(1)
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# # 返回标签的个数作为这一批的总个数
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# total_sum += gpu_labels.size(0)
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# correct_sum += prediction.eq(gpu_labels).sum()
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# test_acc = 100. * correct_sum / total_sum
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# print(f"准确率: {test_acc:.4f}%,共测试了{total_sum}张图片")
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# def main():
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# trainer = Trainer()
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# trainer.train()
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# trainer.save()
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# trainer.test()
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class Trainer:
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class Trainer:
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"""核心训练器"""
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"""核心训练器"""
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@@ -122,7 +42,7 @@ class Trainer:
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self.model, optimizer, criterion, self.device)
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self.model, optimizer, criterion, self.device)
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# 将训练器关联到进度条
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# 将训练器关联到进度条
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self.pbar = ProgressBar(persist=True)
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self.pbar = ProgressBar(persist=True)
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self.pbar.attach(self.trainer, output_transform=lambda o: {"loss": o})
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self.pbar.attach(self.trainer, output_transform=lambda loss: {"loss": loss})
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# 创建测试的评估器的评估量
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# 创建测试的评估器的评估量
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evaluator_metrics = {
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evaluator_metrics = {
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