PyTorch 60 分钟入门教程:数据并行处理 - V2EX
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PyTorch 60 分钟入门教程:数据并行处理

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  •   1722332572 2018-12-11 11:15:52 +08:00 7105 次点击
    这是一个创建于 2560 天前的主题,其中的信息可能已经有所发展或是发生改变。
    可选择:数据并行处理(文末有完整代码下载)
    作者:Sung Kim 和 Jenny Kang

    在这个教程中,我们将学习如何用 DataParallel 来使用多 GPU。
    通过 PyTorch 使用多个 GPU 非常简单。你可以将模型放在一个 GPU:

    device = torch.device("cuda:0")
    model.to(device)
    然后,你可以复制所有的张量 GPU:

    mytensor = my_tensor.to(device)
    请注意,只是调用 my_tensor.to(device) 返回一个 my_tensor 新的复制在 GPU 上,而不是重写 my_tensor。你需要分配给他一个新的张量并且在 GPU 上使用这个张量。

    在多 GPU 中执行前馈,后馈操作是非常自然的。尽管如此,PyTorch 默认只会使用一个 GPU。通过使用 DataParallel 让你的模型并行运行,你可以很容易的在多 GPU 上运行你的操作。

    model = nn.DataParallel(model)
    这是整个教程的核心,我们接下来将会详细讲解。
    引用和参数

    引入 PyTorch 模块和定义参数

    import torch
    import torch.nn as nn
    from torch.utils.data import Dataset, DataLoader
    # 参数

    input_size = 5
    output_size = 2

    batch_size = 30
    data_size = 100
    设备

    device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
    实验(玩具)数据

    生成一个玩具数据。你只需要实现 getitem.

    class RandomDataset(Dataset):

    def __init__(self, size, length):
    self.len = length
    self.data = torch.randn(length, size)

    def __getitem__(self, index):
    return self.data[index]

    def __len__(self):
    return self.len

    rand_loader = DataLoader(dataset=RandomDataset(input_size, data_size),batch_size=batch_size, shuffle=True)
    简单模型

    为了做一个小 demo,我们的模型只是获得一个输入,执行一个线性操作,然后给一个输出。尽管如此,你可以使用 DataParallel 在任何模型(CNN, RNN, Capsule Net 等等.)

    我们放置了一个输出声明在模型中来检测输出和输入张量的大小。请注意在 batch rank 0 中的输出。

    class Model(nn.Module):
    # Our model

    def __init__(self, input_size, output_size):
    super(Model, self).__init__()
    self.fc = nn.Linear(input_size, output_size)

    def forward(self, input):
    output = self.fc(input)
    print("\tIn Model: input size", input.size(),
    "output size", output.size())

    return output


    创建模型并且数据并行处理

    这是整个教程的核心。首先我们需要一个模型的实例,然后验证我们是否有多个 GPU。如果我们有多个 GPU,我们可以用 nn.DataParallel 来 包裹 我们的模型。然后我们使用 model.to(device) 把模型放到多 GPU 中。



    model = Model(input_size, output_size)
    if torch.cuda.device_count() > 1:
    print("Let's use", torch.cuda.device_count(), "GPUs!")
    # dim = 0 [30, xxx] -> [10, ...], [10, ...], [10, ...] on 3 GPUs
    model = nn.DataParallel(model)

    model.to(device)
    输出:

    Let's use 2 GPUs!
    运行模型:
    现在我们可以看到输入和输出张量的大小了。
    for data in rand_loader:
    input = data.to(device)
    output = model(input)
    print("Outside: input size", input.size(),
    "output_size", output.size())
    输出:

    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([5, 5]) output size torch.Size([5, 2])
    In Model: input size torch.Size([5, 5]) output size torch.Size([5, 2])
    Outside: input size torch.Size([10, 5]) output_size torch.Size([10, 2])
    结果:

    如果你没有 GPU 或者只有一个 GPU,当我们获取 30 个输入和 30 个输出,模型将期望获得 30 个输入和 30 个输出。但是如果你有多个 GPU,你会获得这样的结果。

    多 GPU

    如果你有 2 个 GPU,你会看到:

    # on 2 GPUs
    Let's use 2 GPUs!
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    In Model: input size torch.Size([15, 5]) output size torch.Size([15, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([5, 5]) output size torch.Size([5, 2])
    In Model: input size torch.Size([5, 5]) output size torch.Size([5, 2])
    Outside: input size torch.Size([10, 5]) output_size torch.Size([10, 2])


    如果你有 3 个 GPU,你会看到:

    Let's use 3 GPUs!
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    In Model: input size torch.Size([10, 5]) output size torch.Size([10, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    Outside: input size torch.Size([10, 5]) output_size torch.Size([10, 2])
    如果你有 8 个 GPU,你会看到:

    Let's use 8 GPUs!
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([4, 5]) output size torch.Size([4, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    In Model: input size torch.Size([2, 5]) output size torch.Size([2, 2])
    Outside: input size torch.Size([10, 5]) output_size torch.Size([10, 2])
    总结
    数据并行自动拆分了你的数据并且将任务单发送到多个 GPU 上。当每一个模型都完成自己的任务之后,DataParallel 收集并且合并这些结果,然后再返回给你。

    更多信息,请访问:
    https://pytorch.org/tutorials/beginner/former_torchies/parallelism_tutorial.html

    下载完整 Python 代码: http://pytorchchina.com/2018/12/11/optional-data-parallelism/
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