如何保存模型的训练权重检查点并从 PyTorch 的最后一点继续训练?

如何解决如何保存模型的训练权重检查点并从 PyTorch 的最后一点继续训练?

我正在尝试在一定数量的时期后保存训练模型的检查点权重,并继续使用 PyTorch 从最后一个检查点训练到另一个时期数 为了实现这一点,我编写了一个如下所示的脚本

训练模型:

def create_model():
  # load model from package
  model = smp.Unet(
      encoder_name="resnet152",# choose encoder,e.g. mobilenet_v2 or efficientnet-b7
      encoder_weights='imagenet',# use `imagenet` pre-trained weights for encoder initialization
      in_channels=3,# model input channels (1 for gray-scale images,3 for RGB,etc.)
      classes=2,# model output channels (number of classes in your dataset)
  )
  return model

model = create_model()
model.to(device)
learning_rate = 1e-3
optimizer = torch.optim.Adam(model.parameters(),lr=learning_rate)
epochs = 5

for epoch in range(epochs):
    print('Epoch: [{}/{}]'.format(epoch+1,epochs))

    # train set
    pbar = tqdm(train_loader)
    model.train()
    iou_logger = iouTracker()
    for batch in pbar:
        # load image and mask into device memory
        image = batch['image'].to(device)
        mask = batch['mask'].to(device)

        # pass images into model
        pred = model(image)
        # pred = checkpoint['model_state_dict']

        # get loss
        loss = criteria(pred,mask)

        # update the model
        optimizer.zero_grad()
        loss.backward()
        optimizer.step()
        
        # compute and display progress
        iou_logger.update(pred,mask)
        mIoU = iou_logger.get_mean()
        pbar.set_description('Loss: {0:1.4f} | mIoU {1:1.4f}'.format(loss.item(),mIoU))

    # development set
    pbar = tqdm(development_loader)
   
    model.eval()
    iou_logger = iouTracker()
    with torch.no_grad():
        for batch in pbar:
            # load image and mask into device memory
            image = batch['image'].to(device)
            mask = batch['mask'].to(device)

            # pass images into model
            pred = model(image)

            # get loss
            loss = criteria(pred,mask)
            
            # compute and display progress
            iou_logger.update(pred,mask)
            mIoU = iou_logger.get_mean()
            pbar.set_description('Loss: {0:1.4f} | mIoU {1:1.4f}'.format(loss.item(),mIoU))

# save model
torch.save({
            'epoch': epoch,'model_state_dict': model.state_dict(),'optimizer_state_dict': optimizer.state_dict(),'loss': loss,},'/content/drive/MyDrive/checkpoint.pt')

由此,我可以将模型检查点文件保存为 checkpoint.pt 5 epochs

为了使用保存的检查点权重文件继续训练,我在下面的脚本中编写了:

epochs = 5    
for epoch in range(epochs):
    print('Epoch: [{}/{}]'.format(epoch+1,epochs))

    # train set
    pbar = tqdm(train_loader)


    checkpoint = torch.load( '/content/drive/MyDrive/checkpoint.pt')
    print(checkpoint)
    

    model.load_state_dict(checkpoint['model_state_dict'])
    model.to(device)

    
    optimizer.load_state_dict(checkpoint['optimizer_state_dict'])
    epoch = checkpoint['epoch']
    loss = checkpoint['loss']
    model.train()
    iou_logger = iouTracker()
    for batch in pbar:
        # load image and mask into device memory
        image = batch['image'].to(device)
        mask = batch['mask'].to(device)

        # pass images into model
        pred = model(image)
        # pred = checkpoint['model_state_dict']

        # get loss
        loss = criteria(pred,'checkpoint.pt')

这会引发错误:

RuntimeError                              Traceback (most recent call last)
<ipython-input-31-54f48c10531a> in <module>()


---> 14     model.load_state_dict(checkpoint['model_state_dict'])



/usr/local/lib/python3.7/dist-packages/torch/nn/modules/module.py in load_state_dict(self,state_dict,strict)
   1222         if len(error_msgs) > 0:
   1223             raise RuntimeError('Error(s) in loading state_dict for {}:\n\t{}'.format(
-> 1224                                self.__class__.__name__,"\n\t".join(error_msgs)))
   1225         return _IncompatibleKeys(missing_keys,unexpected_keys)
   1226 

RuntimeError: Error(s) in loading state_dict for DataParallel:
    Missing key(s) in state_dict: "module.encoder.conv1.weight","module.encoder.bn1.weight","module.encoder.bn1.bias","module.encoder.bn1.running_mean","module.encoder.bn1.running_var","module.encoder.layer1.0.conv1.weight","module.encoder.layer1.0.bn1.weight","module.encoder.layer1.0.bn1.bias","module.encoder.layer1.0.bn1.running_mean","module.encoder.layer1.0.bn1.running_var","module.encoder.layer1.0.conv2.weight","module.encoder.layer1.0.bn2.weight","module.encoder.layer1.0.bn2.bias","module.encoder.layer1.0.bn2.running_mean","module.encoder.layer1.0.bn2.running_var","module.encoder.layer1.0.conv3.weight","module.encoder.layer1.0.bn3.weight","module.encoder.layer1.0.bn3.bias","module.encoder.layer1.0.bn3.running_mean","module.encoder.layer1.0.bn3.running_var","module.encoder.layer1.0.downsample.0.weight","module.encoder.layer1.0.downsample.1.weight","module.encoder.layer1.0.downsample.1.bias","module.encoder.layer1.0.downsample.1.running_mean","module.encoder.layer1.0.downsample.1.running_var","module.encoder.layer1.1.conv1.weight","module.encoder.layer1.1.bn1.weight","module.encoder.layer1.1.bn1.bias","module.encoder.layer1.1.bn1.running_mean","module.encoder.layer1.1.bn1.running_var","module.encoder.layer1.1.conv2.weight","module.encoder.layer1.1.bn2.weight","module.encoder.layer1.1.bn2.bias","module.encoder.layer1.1.bn2.running_mean","module.encoder.layer1.1.bn2.running_var","module.encoder.layer1.1.conv3.weight","module.encoder.layer...
    Unexpected key(s) in state_dict: "encoder.conv1.weight","encoder.bn1.weight","encoder.bn1.bias","encoder.bn1.running_mean","encoder.bn1.running_var","encoder.bn1.num_batches_tracked","encoder.layer1.0.conv1.weight","encoder.layer1.0.bn1.weight","encoder.layer1.0.bn1.bias","encoder.layer1.0.bn1.running_mean","encoder.layer1.0.bn1.running_var","encoder.layer1.0.bn1.num_batches_tracked","encoder.layer1.0.conv2.weight","encoder.layer1.0.bn2.weight","encoder.layer1.0.bn2.bias","encoder.layer1.0.bn2.running_mean","encoder.layer1.0.bn2.running_var","encoder.layer1.0.bn2.num_batches_tracked","encoder.layer1.1.conv1.weight","encoder.layer1.1.bn1.weight","encoder.layer1.1.bn1.bias","encoder.layer1.1.bn1.running_mean","encoder.layer1.1.bn1.running_var","encoder.layer1.1.bn1.num_batches_tracked","encoder.layer1.1.conv2.weight","encoder.layer1.1.bn2.weight","encoder.layer1.1.bn2.bias","encoder.layer1.1.bn2.running_mean","encoder.layer1.1.bn2.running_var","encoder.layer1.1.bn2.num_batches_tracked","encoder.layer1.2.conv1.weight","encoder.layer1.2.bn1.weight","encoder.layer1.2.bn1.bias","encoder.layer1.2.bn1.running_mean","encoder.layer1.2.bn1.running_var","encoder.layer1.2.bn1.num_batches_tracked","encoder.layer1.2.conv2.weight","encoder.layer1.2.bn2.weight","encoder.layer1.2.bn2.bias","encoder.layer1.2.bn2.running_mean","encoder.layer1.2.bn2.running_var","encoder.layer1.2.bn2.num_batches_tracked","encoder.layer2.0.conv1.weight","encoder.layer...

我做错了什么?我怎样才能解决这个问题?对此的任何帮助都会有所帮助。

解决方法

这一行:

model.load_state_dict(checkpoint['model_state_dict'])

应该是这样的:

model.load_state_dict(checkpoint)
,

您需要创建一个新的模型对象来加载状态字典。如official guide中的建议。

因此,在您进行第二个训练阶段之前,


model = create_model()
model.load_state_dict(checkpoint['model_state_dict'])

# then start the training loop
,

您正在 epoch 循环中加载状态字典。你需要在循环之前加载它...

版权声明:本文内容由互联网用户自发贡献,该文观点与技术仅代表作者本人。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如发现本站有涉嫌侵权/违法违规的内容, 请发送邮件至 dio@foxmail.com 举报,一经查实,本站将立刻删除。

相关推荐


使用本地python环境可以成功执行 import pandas as pd import matplotlib.pyplot as plt # 设置字体 plt.rcParams[&#39;font.sans-serif&#39;] = [&#39;SimHei&#39;] # 能正确显示负号 p
错误1:Request method ‘DELETE‘ not supported 错误还原:controller层有一个接口,访问该接口时报错:Request method ‘DELETE‘ not supported 错误原因:没有接收到前端传入的参数,修改为如下 参考 错误2:cannot r
错误1:启动docker镜像时报错:Error response from daemon: driver failed programming external connectivity on endpoint quirky_allen 解决方法:重启docker -&gt; systemctl r
错误1:private field ‘xxx‘ is never assigned 按Altʾnter快捷键,选择第2项 参考:https://blog.csdn.net/shi_hong_fei_hei/article/details/88814070 错误2:启动时报错,不能找到主启动类 #
报错如下,通过源不能下载,最后警告pip需升级版本 Requirement already satisfied: pip in c:\users\ychen\appdata\local\programs\python\python310\lib\site-packages (22.0.4) Coll
错误1:maven打包报错 错误还原:使用maven打包项目时报错如下 [ERROR] Failed to execute goal org.apache.maven.plugins:maven-resources-plugin:3.2.0:resources (default-resources)
错误1:服务调用时报错 服务消费者模块assess通过openFeign调用服务提供者模块hires 如下为服务提供者模块hires的控制层接口 @RestController @RequestMapping(&quot;/hires&quot;) public class FeignControl
错误1:运行项目后报如下错误 解决方案 报错2:Failed to execute goal org.apache.maven.plugins:maven-compiler-plugin:3.8.1:compile (default-compile) on project sb 解决方案:在pom.
参考 错误原因 过滤器或拦截器在生效时,redisTemplate还没有注入 解决方案:在注入容器时就生效 @Component //项目运行时就注入Spring容器 public class RedisBean { @Resource private RedisTemplate&lt;String
使用vite构建项目报错 C:\Users\ychen\work&gt;npm init @vitejs/app @vitejs/create-app is deprecated, use npm init vite instead C:\Users\ychen\AppData\Local\npm-
参考1 参考2 解决方案 # 点击安装源 协议选择 http:// 路径填写 mirrors.aliyun.com/centos/8.3.2011/BaseOS/x86_64/os URL类型 软件库URL 其他路径 # 版本 7 mirrors.aliyun.com/centos/7/os/x86
报错1 [root@slave1 data_mocker]# kafka-console-consumer.sh --bootstrap-server slave1:9092 --topic topic_db [2023-12-19 18:31:12,770] WARN [Consumer clie
错误1 # 重写数据 hive (edu)&gt; insert overwrite table dwd_trade_cart_add_inc &gt; select data.id, &gt; data.user_id, &gt; data.course_id, &gt; date_format(
错误1 hive (edu)&gt; insert into huanhuan values(1,&#39;haoge&#39;); Query ID = root_20240110071417_fe1517ad-3607-41f4-bdcf-d00b98ac443e Total jobs = 1
报错1:执行到如下就不执行了,没有显示Successfully registered new MBean. [root@slave1 bin]# /usr/local/software/flume-1.9.0/bin/flume-ng agent -n a1 -c /usr/local/softwa
虚拟及没有启动任何服务器查看jps会显示jps,如果没有显示任何东西 [root@slave2 ~]# jps 9647 Jps 解决方案 # 进入/tmp查看 [root@slave1 dfs]# cd /tmp [root@slave1 tmp]# ll 总用量 48 drwxr-xr-x. 2
报错1 hive&gt; show databases; OK Failed with exception java.io.IOException:java.lang.RuntimeException: Error in configuring object Time taken: 0.474 se
报错1 [root@localhost ~]# vim -bash: vim: 未找到命令 安装vim yum -y install vim* # 查看是否安装成功 [root@hadoop01 hadoop]# rpm -qa |grep vim vim-X11-7.4.629-8.el7_9.x
修改hadoop配置 vi /usr/local/software/hadoop-2.9.2/etc/hadoop/yarn-site.xml # 添加如下 &lt;configuration&gt; &lt;property&gt; &lt;name&gt;yarn.nodemanager.res