当前位置: 首页 > news >正文

甘肃省建设厅职业资格注册中心网站广告平台有哪些

甘肃省建设厅职业资格注册中心网站,广告平台有哪些,mac安装免费wordpress,专业制作网站有哪些PyTorch——利用Accelerate轻松控制多个CPU/GPU/TPU加速计算 前言官方示例单个程序内控制多个CPU/GPU/TPU简单说一下设备环境导包加载数据 FashionMNIST创建一个简单的CNN模型训练函数-只包含训练训练函数-包含训练和验证训练 多个服务器、多个程序间控制多个CPU/GPU/TPU参考链…

PyTorch——利用Accelerate轻松控制多个CPU/GPU/TPU加速计算

    • 前言
    • 官方示例
    • 单个程序内控制多个CPU/GPU/TPU
      • 简单说一下
      • 设备环境
      • 导包
      • 加载数据 FashionMNIST
      • 创建一个简单的CNN模型
      • 训练函数-只包含训练
      • 训练函数-包含训练和验证
      • 训练
    • 多个服务器、多个程序间控制多个CPU/GPU/TPU
    • 参考链接

前言

  • CPU?GPU?TPU?
    • 计算设备太多,很混乱?
    • 切换环境,代码大量改来改去?
    • 不懂怎么调用多个CPU/GPU/TPU?或者想轻松调用?
  • OK!OK!OK!
    • 来自HuggingFace的Accelerate库帮你轻松解决这些问题,只需几行代码改动就可以快速完成计算设备的自动调整。
      huggingface
  • 相关地址
    • 官方文档:https://huggingface.co/docs/accelerate/index
    • GitHub:https://github.com/huggingface/accelerate
    • 安装(推荐用>=0.14的版本) $ pip install accelerate
  • 下面就来说说怎么用
    • 你也可以直接看我在Kaggle上做好的完整的Notebook示例

官方示例

  • 先大致看个样
  • 移除掉以前.to(device)部分的代码,引入Acceleratormodel、optimizer、data、loss.backward()做下处理即可
import torch
import torch.nn.functional as F
from datasets import load_dataset
from accelerate import Accelerator# device = 'cpu'
accelerator = Accelerator()# model = torch.nn.Transformer().to(device)
model = torch.nn.Transformer()
optimizer = torch.optim.Adam(model.parameters())dataset = load_dataset('my_dataset')
data = torch.utils.data.DataLoader(dataset, shuffle=True)model, optimizer, data = accelerator.prepare(model, optimizer, data)model.train()
for epoch in range(10):for source, targets in data:# source = source.to(device)# targets = targets.to(device)optimizer.zero_grad()output = model(source)loss = F.cross_entropy(output, targets)# loss.backward()accelerator.backward(loss)optimizer.step()

单个程序内控制多个CPU/GPU/TPU

  • 详细内容请参考官方Example

简单说一下

  • 对于单个计算设备,像前面那个简单示例改下代码即可
  • 多个计算设备(例如GPU)的情况下,有一点特殊的要处理,下面做个完整的PyTorch训练示例
    • 你可以拿这个和我之前发的示例做个对比 CNN图像分类-FashionMNIST
    • 也可以直接看我在Kaggle上做好的完整的Notebook示例

设备环境

  • 看看当前的显卡设备(2颗Tesla T4),命令 $ nvidia-smi
Thu Apr 27 10:53:26 2023       
+-----------------------------------------------------------------------------+
| NVIDIA-SMI 470.161.03   Driver Version: 470.161.03   CUDA Version: 11.4     |
|-------------------------------+----------------------+----------------------+
| GPU  Name        Persistence-M| Bus-Id        Disp.A | Volatile Uncorr. ECC |
| Fan  Temp  Perf  Pwr:Usage/Cap|         Memory-Usage | GPU-Util  Compute M. |
|                               |                      |               MIG M. |
|===============================+======================+======================|
|   0  Tesla T4            Off  | 00000000:00:04.0 Off |                    0 |
| N/A   43C    P8     9W /  70W |      0MiB / 15109MiB |      0%      Default |
|                               |                      |                  N/A |
+-------------------------------+----------------------+----------------------+
|   1  Tesla T4            Off  | 00000000:00:05.0 Off |                    0 |
| N/A   41C    P8     9W /  70W |      0MiB / 15109MiB |      0%      Default |
|                               |                      |                  N/A |
+-------------------------------+----------------------+----------------------++-----------------------------------------------------------------------------+
| Processes:                                                                  |
|  GPU   GI   CI        PID   Type   Process name                  GPU Memory |
|        ID   ID                                                   Usage      |
|=============================================================================|
|  No running processes found                                                 |
+-----------------------------------------------------------------------------+
  • 安装或更新Accelerate,命令 $ !pip install --upgrade accelerate

导包

import torch
from torch import nn
from torch.utils.data import DataLoader
from torchvision.transforms import ToTensor, Compose
import torchvision.datasets as datasets
from accelerate import Accelerator
from accelerate import notebook_launcher

加载数据 FashionMNIST

train_data = datasets.FashionMNIST(root="./data",train=True,download=True,transform=Compose([ToTensor()])
)test_data = datasets.FashionMNIST(root="./data",train=False,download=True,transform=Compose([ToTensor()])
)print(train_data.data.shape)
print(test_data.data.shape)

创建一个简单的CNN模型

class CNNModel(nn.Module):def __init__(self):super(CNNModel, self).__init__()self.module1 = nn.Sequential(nn.Conv2d(1, 32, kernel_size=5, stride=1, padding=2),nn.BatchNorm2d(32),nn.ReLU(),nn.MaxPool2d(kernel_size=2, stride=2))  self.module2 = nn.Sequential(nn.Conv2d(32, 64, kernel_size=5, stride=1, padding=2),nn.BatchNorm2d(64),nn.ReLU(),nn.MaxPool2d(kernel_size=2, stride=2))self.flatten = nn.Flatten()self.linear1 = nn.Linear(7 * 7 * 64, 64)self.linear2 = nn.Linear(64, 10)self.relu = nn.ReLU()def forward(self, x):out = self.module1(x)out = self.module2(out)out = self.flatten(out)out = self.linear1(out)out = self.relu(out)out = self.linear2(out)return out

训练函数-只包含训练

  • 注意看accelerator相关代码
  • 若要实现多设备控制训练,for epoch in range(epoch_num):中末尾处的代码必不可少
def training_function():# 参数配置epoch_num = 4batch_size = 64learning_rate = 0.005# device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')# 数据train_loader = DataLoader(dataset=train_data, batch_size=batch_size, shuffle=True)val_loader = DataLoader(test_data, batch_size=batch_size, shuffle=True)# 模型/损失函数/优化器# model = CNNModel().to(device)model = CNNModel()criterion = nn.CrossEntropyLoss()optimizer = torch.optim.Adam(model.parameters(), lr=learning_rate)accelerator = Accelerator()model, optimizer, train_loader, val_loader = accelerator.prepare(model, optimizer, train_loader, val_loader)# 开始训练for epoch in range(epoch_num):# 训练model.train()for i, (X_train, y_train) in enumerate(train_loader):# X_train = X_train.to(device)# y_train = y_train.to(device)out = model(X_train)loss = criterion(out, y_train)optimizer.zero_grad()# loss.backward()accelerator.backward(loss)optimizer.step()if (i + 1) % 100 == 0:print(f"{accelerator.device} Train... [epoch {epoch + 1}/{epoch_num}, step {i + 1}/{len(train_loader)}]\t[loss {loss.item()}]")# 等待每个GPU上的模型执行完当前的epoch,并进行合并同步accelerator.wait_for_everyone() model = accelerator.unwrap_model(model)# 现在所有GPU上都一样了,可以保存modelaccelerator.save(model, "model.pth") 

训练函数-包含训练和验证

  • 相比前面的代码,多了“验证”相关的代码
  • 验证时,因为使用多个设备进行训练,所以会比较特殊,会涉及到多个设备的验证结果合并的问题
def training_function():# 参数配置epoch_num = 4batch_size = 64learning_rate = 0.005# 数据train_loader = DataLoader(dataset=train_data, batch_size=batch_size, shuffle=True)val_loader = DataLoader(test_data, batch_size=batch_size, shuffle=True)# 模型/损失函数/优化器model = CNNModel()criterion = nn.CrossEntropyLoss()optimizer = torch.optim.Adam(model.parameters(), lr=learning_rate)accelerator = Accelerator()model, optimizer, train_loader, val_loader = accelerator.prepare(model, optimizer, train_loader, val_loader)# 开始训练for epoch in range(epoch_num):# 训练model.train()for i, (X_train, y_train) in enumerate(train_loader):out = model(X_train)loss = criterion(out, y_train)optimizer.zero_grad()accelerator.backward(loss)optimizer.step()if (i + 1) % 100 == 0:print(f"{accelerator.device} Train... [epoch {epoch + 1}/{epoch_num}, step {i + 1}/{len(train_loader)}]\t[loss {loss.item()}]")# 验证model.eval()correct, total = 0, 0for X_val, y_val in val_loader:with torch.no_grad():output = model(X_val)_, pred = torch.max(output, 1)# 合并每个GPU的验证数据pred, y_val = accelerator.gather_for_metrics((pred, y_val))total += y_val.size(0)correct += (pred == y_val).sum()# 用main process打印accuracyaccelerator.print(f'epoch {epoch + 1}/{epoch_num}, accuracy = {100 * (correct.item() / total):.2f}')# 等待每个GPU上的模型执行完当前的epoch,并进行合并同步accelerator.wait_for_everyone() model = accelerator.unwrap_model(model)# 现在所有GPU上都一样了,可以保存modelaccelerator.save(model, "model.pth") 

训练

  • 如果你在本地训练的话,直接调用前面定义的函数training_function即可。最后在命令行启动训练脚本 $ accelerate launch example.py
training_function()
  • 如果你在Kaggle/Colab上面,则需要利用notebook_launcher进行训练
# num_processes=2 指定使用2个GPU,因为当前我申请了2颗 Nvidia T4
notebook_launcher(training_function, num_processes=2)
  • 下面是2个GPU训练时的控制台输出样例
Launching training on 2 GPUs.
cuda:0 Train... [epoch 1/4, step 100/469]	[loss 0.43843933939933777]
cuda:1 Train... [epoch 1/4, step 100/469]	[loss 0.5267877578735352]
cuda:0 Train... [epoch 1/4, step 200/469]	[loss 0.39918822050094604]cuda:1 Train... [epoch 1/4, step 200/469]	[loss 0.2748252749443054]cuda:1 Train... [epoch 1/4, step 300/469]	[loss 0.54105544090271]cuda:0 Train... [epoch 1/4, step 300/469]	[loss 0.34716445207595825]cuda:1 Train... [epoch 1/4, step 400/469]	[loss 0.2694844901561737]
cuda:0 Train... [epoch 1/4, step 400/469]	[loss 0.4343942701816559]
epoch 1/4, accuracy = 88.49
cuda:0 Train... [epoch 2/4, step 100/469]	[loss 0.19695354998111725]
cuda:1 Train... [epoch 2/4, step 100/469]	[loss 0.2911057770252228]
cuda:0 Train... [epoch 2/4, step 200/469]	[loss 0.2948791980743408]
cuda:1 Train... [epoch 2/4, step 200/469]	[loss 0.292676717042923]
cuda:0 Train... [epoch 2/4, step 300/469]	[loss 0.222089946269989]
cuda:1 Train... [epoch 2/4, step 300/469]	[loss 0.28814008831977844]
cuda:0 Train... [epoch 2/4, step 400/469]	[loss 0.3431250751018524]
cuda:1 Train... [epoch 2/4, step 400/469]	[loss 0.2546379864215851]
epoch 2/4, accuracy = 87.31
cuda:1 Train... [epoch 3/4, step 100/469]	[loss 0.24118559062480927]cuda:0 Train... [epoch 3/4, step 100/469]	[loss 0.363821804523468]cuda:0 Train... [epoch 3/4, step 200/469]	[loss 0.36783623695373535]
cuda:1 Train... [epoch 3/4, step 200/469]	[loss 0.18346744775772095]
cuda:0 Train... [epoch 3/4, step 300/469]	[loss 0.23459288477897644]
cuda:1 Train... [epoch 3/4, step 300/469]	[loss 0.2887689769268036]
cuda:0 Train... [epoch 3/4, step 400/469]	[loss 0.3079166114330292]
cuda:1 Train... [epoch 3/4, step 400/469]	[loss 0.18255220353603363]
epoch 3/4, accuracy = 88.46
cuda:1 Train... [epoch 4/4, step 100/469]	[loss 0.27428603172302246]
cuda:0 Train... [epoch 4/4, step 100/469]	[loss 0.17705145478248596]
cuda:1 Train... [epoch 4/4, step 200/469]	[loss 0.2811894416809082]
cuda:0 Train... [epoch 4/4, step 200/469]	[loss 0.22682836651802063]
cuda:0 Train... [epoch 4/4, step 300/469]	[loss 0.2291710525751114]
cuda:1 Train... [epoch 4/4, step 300/469]	[loss 0.32024848461151123]
cuda:0 Train... [epoch 4/4, step 400/469]	[loss 0.24648766219615936]
cuda:1 Train... [epoch 4/4, step 400/469]	[loss 0.0805584192276001]
epoch 4/4, accuracy = 89.38
  • 下面是1个TPU训练时的控制台输出样例
Launching training on CPU.
xla:0 Train... [epoch 1/4, step 100/938]	[loss 0.6051161289215088]
xla:0 Train... [epoch 1/4, step 200/938]	[loss 0.27442359924316406]
xla:0 Train... [epoch 1/4, step 300/938]	[loss 0.557417631149292]
xla:0 Train... [epoch 1/4, step 400/938]	[loss 0.1840067058801651]
xla:0 Train... [epoch 1/4, step 500/938]	[loss 0.5252436399459839]
xla:0 Train... [epoch 1/4, step 600/938]	[loss 0.2718536853790283]
xla:0 Train... [epoch 1/4, step 700/938]	[loss 0.2763175368309021]
xla:0 Train... [epoch 1/4, step 800/938]	[loss 0.39897507429122925]
xla:0 Train... [epoch 1/4, step 900/938]	[loss 0.28720396757125854]
epoch = 0, accuracy = 86.36
xla:0 Train... [epoch 2/4, step 100/938]	[loss 0.24496735632419586]
xla:0 Train... [epoch 2/4, step 200/938]	[loss 0.37713131308555603]
xla:0 Train... [epoch 2/4, step 300/938]	[loss 0.3106330633163452]
xla:0 Train... [epoch 2/4, step 400/938]	[loss 0.40438592433929443]
xla:0 Train... [epoch 2/4, step 500/938]	[loss 0.38303741812705994]
xla:0 Train... [epoch 2/4, step 600/938]	[loss 0.39199298620224]
xla:0 Train... [epoch 2/4, step 700/938]	[loss 0.38932573795318604]
xla:0 Train... [epoch 2/4, step 800/938]	[loss 0.26298171281814575]
xla:0 Train... [epoch 2/4, step 900/938]	[loss 0.21517205238342285]
epoch = 1, accuracy = 90.07
xla:0 Train... [epoch 3/4, step 100/938]	[loss 0.366019606590271]
xla:0 Train... [epoch 3/4, step 200/938]	[loss 0.27360212802886963]
xla:0 Train... [epoch 3/4, step 300/938]	[loss 0.2014923095703125]
xla:0 Train... [epoch 3/4, step 400/938]	[loss 0.21998485922813416]
xla:0 Train... [epoch 3/4, step 500/938]	[loss 0.28129786252975464]
xla:0 Train... [epoch 3/4, step 600/938]	[loss 0.42534705996513367]
xla:0 Train... [epoch 3/4, step 700/938]	[loss 0.22158119082450867]
xla:0 Train... [epoch 3/4, step 800/938]	[loss 0.359947144985199]
xla:0 Train... [epoch 3/4, step 900/938]	[loss 0.3221997022628784]
epoch = 2, accuracy = 90.36
xla:0 Train... [epoch 4/4, step 100/938]	[loss 0.2814193069934845]
xla:0 Train... [epoch 4/4, step 200/938]	[loss 0.16465164721012115]
xla:0 Train... [epoch 4/4, step 300/938]	[loss 0.2897304892539978]
xla:0 Train... [epoch 4/4, step 400/938]	[loss 0.13403896987438202]
xla:0 Train... [epoch 4/4, step 500/938]	[loss 0.1135573536157608]
xla:0 Train... [epoch 4/4, step 600/938]	[loss 0.14964193105697632]
xla:0 Train... [epoch 4/4, step 700/938]	[loss 0.20239461958408356]
xla:0 Train... [epoch 4/4, step 800/938]	[loss 0.23625142872333527]
xla:0 Train... [epoch 4/4, step 900/938]	[loss 0.3418393135070801]
epoch = 3, accuracy = 90.11

多个服务器、多个程序间控制多个CPU/GPU/TPU

  • 详细内容请参考官方Example
  • 包括
    • 单服务器内,多个程序控制多个计算设备
    • 多个服务器间,多个程序控制多个计算设备
  • 写好代码后,请先在每个服务器下执行$ accelerate config生成对应的配置文件,下面是个样例
(huggingface) PS C:\Users\alion\temp> accelerate config
------------------------------------------------------------------------------------------------------------------------In which compute environment are you running?
This machine
------------------------------------------------------------------------------------------------------------------------Which type of machine are you using?
multi-GPU
How many different machines will you use (use more than 1 for multi-node training)? [1]: 2
------------------------------------------------------------------------------------------------------------------------What is the rank of this machine?
0
What is the IP address of the machine that will host the main process? 192.168.101
What is the port you will use to communicate with the main process? 12345
Are all the machines on the same local network? Answer `no` if nodes are on the cloud and/or on different network hosts [YES/no]: yes
Do you wish to optimize your script with torch dynamo?[yes/NO]:no
Do you want to use DeepSpeed? [yes/NO]: no
Do you want to use FullyShardedDataParallel? [yes/NO]: no
Do you want to use Megatron-LM ? [yes/NO]: no
How many GPU(s) should be used for distributed training? [1]:2
What GPU(s) (by id) should be used for training on this machine as a comma-seperated list? [all]:0
------------------------------------------------------------------------------------------------------------------------Do you wish to use FP16 or BF16 (mixed precision)?
fp16
accelerate configuration saved at C:\Users\alion/.cache\huggingface\accelerate\default_config.yaml
  • 最后在每个服务器启动训练脚本 $ accelerate launch example.py(如果你是单台服务器多个程序,那就只启动一台的脚本就完了)

参考链接

  • https://github.com/huggingface/accelerate
  • https://www.kaggle.com/code/muellerzr/multi-gpu-and-accelerate
  • https://github.com/huggingface/notebooks/blob/main/examples/accelerate_examples/simple_nlp_example.ipynb
  • https://github.com/huggingface/accelerate/tree/main/examples
http://www.mmbaike.com/news/80055.html

相关文章:

  • 中国物流企业网站建设问题新东方考研班收费价格表
  • 怎么做试玩平台推广网站网站建设图片
  • 网站备案号如何查询做运营需要具备什么能力
  • 西安做网站收费价格线上推广的渠道有哪些
  • 关于做网站的ppt国际域名注册网站
  • 做网站运营有前景吗网站建设报价方案
  • 深圳网站建设哪家公司好专业的营销团队哪里找
  • 淘宝联盟如何建设个人网站比较正规的代运营
  • 河南郑州建设网站制作百度竞价培训班
  • wordpress图片0x0淄博seo网站推广
  • 做精美ppt网站百度官网下载安装到桌面上
  • 网站开发项目视频教程网络营销平台
  • 做药品网站规划方案网络舆情监控系统
  • 中文 域名的网站企业网站设计规范
  • 网站开发的特点app搜索优化
  • 百度权重5的网站能卖多少钱seo网址超级外链工具
  • 域名备案网站名称网站优化方案
  • 赣州网站建设-赣州做网站免费引流推广方法
  • 手机网站按那个尺寸做全网热搜榜
  • wordpress 免费企业网站 模板下载整站seo排名
  • 房山重庆网站建设推广点击器
  • wordpress防盗链插件苏州seo公司
  • 东营做网站郑州网站推广公司排名
  • 软装设计用什么软件北京seo业务员
  • 株洲网站排名优化2022网站seo
  • 嵌入式软件开发前景怎么样谷歌广告优化师
  • 剑网三魁首怎么做网站沪深300指数基金排名
  • 手机网站制作合同兰州seo整站优化服务商
  • 如何才能做好品牌网站建设营销网点机构号
  • ebay网站怎么做武汉企业网站推广