zoukankan      html  css  js  c++  java
  • pytorch构建优化器

    这是莫凡python学习笔记。

    1.构造数据,可以可视化看看数据样子

    import torch
    import torch.utils.data as Data
    import torch.nn.functional as F
    import matplotlib.pyplot as plt
    %matplotlib inline
    # torch.manual_seed(1)    # reproducible
    
    LR = 0.01
    BATCH_SIZE = 32
    EPOCH = 12
    
    # fake dataset
    x = torch.unsqueeze(torch.linspace(-1, 1, 1000), dim=1)
    y = x.pow(2) + 0.1*torch.normal(torch.zeros(*x.size()))
    
    # plot dataset
    plt.scatter(x.numpy(), y.numpy())
    plt.show()

    输出

    2.构造数据集,及数据加载器

    # put dateset into torch dataset
    torch_dataset = Data.TensorDataset(x, y)
    loader = Data.DataLoader(dataset=torch_dataset, batch_size=BATCH_SIZE, shuffle=True, num_workers=2,)

    3.搭建网络,以相应优化器命名

    # default network
    class Net(torch.nn.Module):
        def __init__(self):
            super(Net, self).__init__()
            self.hidden = torch.nn.Linear(1, 20)   # hidden layer
            self.predict = torch.nn.Linear(20, 1)   # output layer
    
        def forward(self, x):
            x = F.relu(self.hidden(x))      # activation function for hidden layer
            x = self.predict(x)             # linear output
            return x
    
    net_SGD         = Net()
    net_Momentum    = Net()
    net_RMSprop     = Net()
    net_Adam        = Net()
    nets = [net_SGD, net_Momentum, net_RMSprop, net_Adam]

    4.构造优化器,此处共构造了SGD,Momentum,RMSprop,Adam四种优化器

    # different optimizers
        opt_SGD         = torch.optim.SGD(net_SGD.parameters(), lr=LR)
        opt_Momentum    = torch.optim.SGD(net_Momentum.parameters(), lr=LR, momentum=0.8)
        opt_RMSprop     = torch.optim.RMSprop(net_RMSprop.parameters(), lr=LR, alpha=0.9)
        opt_Adam        = torch.optim.Adam(net_Adam.parameters(), lr=LR, betas=(0.9, 0.99))
        optimizers = [opt_SGD, opt_Momentum, opt_RMSprop, opt_Adam]

    5.定义损失函数,并开始迭代训练

       loss_func = torch.nn.MSELoss()
        losses_his = [[], [], [], []]   # record loss
    
        # training
        for epoch in range(EPOCH):
            print('Epoch: ', epoch)
            for step, (b_x, b_y) in enumerate(loader):          # for each training step
                for net, opt, l_his in zip(nets, optimizers, losses_his):
                    output = net(b_x)              # get output for every net
                    loss = loss_func(output, b_y)  # compute loss for every net
                    opt.zero_grad()                # clear gradients for next train
                    loss.backward()                # backpropagation, compute gradients
                    opt.step()                     # apply gradients
                    l_his.append(loss.data.numpy())     # loss recoder

    6.画图,观察损失在不同优化器下的变化

        labels = ['SGD', 'Momentum', 'RMSprop', 'Adam']
        for i, l_his in enumerate(losses_his):
            plt.plot(l_his, label=labels[i])
        plt.legend(loc='best')
        plt.xlabel('Steps')
        plt.ylabel('Loss')
        plt.ylim((0, 0.2))
        plt.show()

    输出

    可以看到RMSprop和Adam的效果最好。

  • 相关阅读:
    STM32F401
    按字母顺序排列的IDC函数列表
    IDA 中文字符串
    Retrieving ST-Link/V2 Firmware from Update Utility
    IDA IDC Tutorials: Additional Auto-Commenting
    IDA resources
    Digital Current-Mode Control Challenges Analog Counterparts
    SQLSERVER 里SELECT COUNT(1) 和SELECT COUNT(*)哪个性能好?
    将ACCESS数据库迁移到SQLSERVER数据库
    RedGate 工具SQLMultiScript1.1
  • 原文地址:https://www.cnblogs.com/wzyuan/p/9460092.html
Copyright © 2011-2022 走看看