Pytorch如何保存训练好的模型

其他教程   发布日期:2023年07月09日   浏览次数:350

本篇内容介绍了“Pytorch如何保存训练好的模型”的有关知识,在实际案例的操作过程中,不少人都会遇到这样的困境,接下来就让小编带领大家学习一下如何处理这些情况吧!希望大家仔细阅读,能够学有所成!

为什么要保存和加载模型

用数据对模型进行训练后得到了比较理想的模型,但在实际应用的时候不可能每次都先进行训练然后再使用,所以就得先将之前训练好的模型保存下来,然后在需要用到的时候加载一下直接使用。

模型的本质是一堆用某种结构存储起来的参数,所以在保存的时候有两种方式

  • 一种方式是直接将整个模型保存下来,之后直接加载整个模型,但这样会比较耗内存;

  • 另一种是只保存模型的参数,之后用到的时候再创建一个同样结构的新模型,然后把所保存的参数导入新模型。

两种情况的实现方法

(1)只保存模型参数字典(推荐)

#保存
torch.save(the_model.state_dict(), PATH)
#读取
the_model = TheModelClass(*args, **kwargs)
the_model.load_state_dict(torch.load(PATH))

(2)保存整个模型

#保存
torch.save(the_model, PATH)
#读取
the_model = torch.load(PATH)

只保存模型参数的情况(例子)

pytorch会把模型的参数放在一个字典里面,而我们所要做的就是将这个字典保存,然后再调用。

比如说设计一个单层LSTM的网络,然后进行训练,训练完之后将模型的参数字典进行保存,保存为同文件夹下面的rnn.pt文件:

class LSTM(nn.Module):
    def __init__(self, input_size, hidden_size, num_layers):
        super(LSTM, self).__init__()
        self.hidden_size = hidden_size
        self.num_layers = num_layers
        self.lstm = nn.LSTM(input_size, hidden_size, num_layers, batch_first=True)
        self.fc = nn.Linear(hidden_size, 1)

    def forward(self, x):
        # Set initial states
        h0 = torch.zeros(self.num_layers, x.size(0), self.hidden_size).to(device) 
         # 2 for bidirection
        c0 = torch.zeros(self.num_layers, x.size(0), self.hidden_size).to(device)
        # Forward propagate LSTM
        out, _ = self.lstm(x, (h0, c0))  
        # out: tensor of shape (batch_size, seq_length, hidden_size*2)
        out = self.fc(out)
        return out


rnn = LSTM(input_size=1, hidden_size=10, num_layers=2).to(device)

# optimize all cnn parameters
optimizer = torch.optim.Adam(rnn.parameters(), lr=0.001)  
# the target label is not one-hotted
loss_func = nn.MSELoss()  

for epoch in range(1000):
    output = rnn(train_tensor)  # cnn output`
    loss = loss_func(output, train_labels_tensor)  # cross entropy loss
    optimizer.zero_grad()  # clear gradients for this training step
    loss.backward()  # backpropagation, compute gradients
    optimizer.step()  # apply gradients
    output_sum = output


# 保存模型
torch.save(rnn.state_dict(), 'rnn.pt')

保存完之后利用这个训练完的模型对数据进行处理:

# 测试所保存的模型
m_state_dict = torch.load('rnn.pt')
new_m = LSTM(input_size=1, hidden_size=10, num_layers=2).to(device)
new_m.load_state_dict(m_state_dict)
predict = new_m(test_tensor)

这里做一下说明,在保存模型的时候rnn.state_dict()表示rnn这个模型的参数字典,在测试所保存的模型时要先将这个参数字典加载一下

m_state_dict = torch.load('rnn.pt');

然后再实例化一个LSTM对像,这里要保证传入的参数跟实例化rnn是传入的对象时一样的,即结构相同

new_m = LSTM(input_size=1, hidden_size=10, num_layers=2).to(device);

下面是给这个新的模型传入之前加载的参数

new_m.load_state_dict(m_state_dict);

最后就可以利用这个模型处理数据了

predict = new_m(test_tensor)

保存整个模型的情况(例子)

class LSTM(nn.Module):
    def __init__(self, input_size, hidden_size, num_layers):
        super(LSTM, self).__init__()
        self.hidden_size = hidden_size
        self.num_layers = num_layers
        self.lstm = nn.LSTM(input_size, hidden_size, num_layers, batch_first=True)
        self.fc = nn.Linear(hidden_size, 1)

    def forward(self, x):
        # Set initial states
        h0 = torch.zeros(self.num_layers, x.size(0), self.hidden_size).to(device)  # 2 for bidirection
        c0 = torch.zeros(self.num_layers, x.size(0), self.hidden_size).to(device)

        # Forward propagate LSTM
        out, _ = self.lstm(x, (h0, c0))  # out: tensor of shape (batch_size, seq_length, hidden_size*2)
        # print("output_in=", out.shape)
        # print("fc_in_shape=", out[:, -1, :].shape)
        # Decode the hidden state of the last time step
        # out = torch.cat((out[:, 0, :], out[-1, :, :]), axis=0)
        # out = self.fc(out[:, -1, :])  # 取最后一列为out
        out = self.fc(out)
        return out


rnn = LSTM(input_size=1, hidden_size=10, num_layers=2).to(device)
print(rnn)


optimizer = torch.optim.Adam(rnn.parameters(), lr=0.001)  # optimize all cnn parameters
loss_func = nn.MSELoss()  # the target label is not one-hotted

for epoch in range(1000):
    output = rnn(train_tensor)  # cnn output`
    loss = loss_func(output, train_labels_tensor)  # cross entropy loss
    optimizer.zero_grad()  # clear gradients for this training step
    loss.backward()  # backpropagation, compute gradients
    optimizer.step()  # apply gradients
    output_sum = output


# 保存模型

torch.save(rnn, 'rnn1.pt')

保存完之后利用这个训练完的模型对数据进行处理:

new_m = torch.load('rnn1.pt')
predict = new_m(test_tensor)

以上就是Pytorch如何保存训练好的模型的详细内容,更多关于Pytorch如何保存训练好的模型的资料请关注九品源码其它相关文章!