%matplotlib inline
数据并行(选读)¶
Authors: Sung Kim and Jenny Kang
在这个教程里,我们将学习如何使用 DataParallel
来使用多GPU。
PyTorch非常容易就可以使用多GPU,用如下方式把一个模型放到GPU上:
device = torch.device("cuda:0") model.to(device)
mytensor = my_tensor.to(device)
my_tensor.to(device)
并没有复制张量到GPU上,而是返回了一个copy。所以你需要把它赋值给一个新的张量并在GPU上使用这个张量。
在多GPU上执行前向和反向传播是自然而然的事。 但是PyTorch默认将只使用一个GPU。
使用DataParallel
可以轻易的让模型并行运行在多个GPU上。
model = nn.DataParallel(model)
导入和参数¶
导入PyTorch模块和定义参数。
import torch import torch.nn as nn from torch.utils.data import Dataset, DataLoader # Parameters and DataLoaders input_size = 5 output_size = 2 batch_size = 30 data_size = 100
Device
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
虚拟数据集¶
制作一个虚拟(随机)数据集,
你只需实现 __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¶
作为演示,我们的模型只接受一个输入,执行一个线性操作,然后得到结果。
说明:DataParallel
能在任何模型(CNN,RNN,Capsule Net等)上使用。
我们在模型内部放置了一条打印语句来打印输入和输出向量的大小。
请注意批次的秩为0时打印的内容。
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
创建一个模型和数据并行¶
这是本教程的核心部分。
首先,我们需要创建一个模型实例和检测我们是否有多个GPU。
如果有多个GPU,使用nn.DataParallel
来包装我们的模型。
然后通过mmodel.to(device)
把模型放到GPU上。
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)
Model( (fc): Linear(in_features=5, out_features=2, bias=True) )
运行模型¶
现在可以看到输入和输出张量的大小。
for data in rand_loader: input = data.to(device) output = model(input) print("Outside: input size", input.size(), "output_size", output.size())
In Model: input size torch.Size([30, 5]) output size torch.Size([30, 2]) Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2]) In Model: input size torch.Size([30, 5]) output size torch.Size([30, 2]) Outside: input size torch.Size([30, 5]) output_size torch.Size([30, 2]) In Model: input size torch.Size([30, 5]) output size torch.Size([30, 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]) Outside: input size torch.Size([10, 5]) output_size torch.Size([10, 2])
结果¶
当没有或者只有一个GPU时,对30个输入和输出进行批处理,得到了期望的一样得到30个输入和输出,但是如果你有多个GPU,你得到如下的结果。
2 GPUs ~
If you have 2, you will see:
.. code:: bash
# 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])
3 GPUs ~
If you have 3 GPUs, you will see:
.. code:: bash
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])
8 GPUs ~~
If you have 8, you will see:
.. code:: bash
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¶
DataParallel会自动的划分数据,并将作业发送到多个GPU上的多个模型。 并在每个模型完成作业后,收集合并结果并返回。
更多信息请看这里: https://pytorch.org/tutorials/beginner/former_torchies/parallelism_tutorial.html.