How to use PyTorch for neural network training
Introduction:
PyTorch is an open source machine learning framework based on Python. Its flexibility and simplicity make it the first choice of many researchers and engineers. . This article will introduce you to how to use PyTorch for neural network training and provide corresponding code examples.
1. Install PyTorch
Before starting, you need to install PyTorch first. You can choose the version suitable for your operating system and hardware to install through the installation guide provided on the official website (https://pytorch.org/). Once installed, you can import the PyTorch library in Python and start writing code.
2. Build a neural network model
Before using PyTorch to train a neural network, you first need to build a suitable model. PyTorch provides a class called torch.nn.Module
, which you can inherit to define your own neural network model.
The following is a simple example showing how to use PyTorch to build a neural network model containing two fully connected layers:
import torch import torch.nn as nn class Net(nn.Module): def __init__(self): super(Net, self).__init__() self.fc1 = nn.Linear(in_features=784, out_features=256) self.fc2 = nn.Linear(in_features=256, out_features=10) def forward(self, x): x = x.view(x.size(0), -1) x = self.fc1(x) x = torch.relu(x) x = self.fc2(x) return x net = Net()
In the above code, we first define a name It is a Net class and inherits the torch.nn.Module
class. In the __init__
method, we define two fully connected layers fc1
and fc2
. Then, we define the process of forward propagation of data in the model through the forward
method. Finally, we create an instance of Net.
3. Define the loss function and optimizer
Before training, we need to define the loss function and optimizer. PyTorch provides a rich selection of loss functions and optimizers, which can be selected according to specific circumstances.
Here is an example that shows how to define a training process using the cross-entropy loss function and the stochastic gradient descent optimizer:
loss_fn = nn.CrossEntropyLoss() optimizer = torch.optim.SGD(net.parameters(), lr=0.01)
In the above code, we will use the cross-entropy loss function and stochastic gradient descent optimizer are assigned to the loss_fn
and optimizer
variables respectively. net.parameters()
indicates that we want to optimize all learnable parameters in the neural network model, and the lr
parameter indicates the learning rate.
4. Prepare the data set
Before training the neural network, we need to prepare the training data set and the test data set. PyTorch provides some practical tool classes to help us load and preprocess data sets.
Here is an example showing how to load the MNIST handwritten digits dataset and preprocess it:
import torchvision import torchvision.transforms as transforms transform = transforms.Compose([ transforms.ToTensor(), transforms.Normalize((0.5,), (0.5,)), ]) train_set = torchvision.datasets.MNIST(root='./data', train=True, download=True, transform=transform) train_loader = torch.utils.data.DataLoader(train_set, batch_size=32, shuffle=True) test_set = torchvision.datasets.MNIST(root='./data', train=False, download=True, transform=transform) test_loader = torch.utils.data.DataLoader(test_set, batch_size=32, shuffle=False)
In the above code, we first define a transform
Variables are used to preprocess data. We then loaded the MNIST dataset using the torchvision.datasets.MNIST
class and specified the training dataset and testing using the train=True
and train=False
parameters data set. Finally, we use the torch.utils.data.DataLoader
class to convert the dataset into an iterable data loader.
5. Start training
After preparing the data set, we can start training the neural network. In a training loop, we need to complete the following steps in sequence: input input data into the model, calculate the loss function, backpropagate the updated gradient, and optimize the model.
Here is an example showing how to use PyTorch for neural network training:
for epoch in range(epochs): running_loss = 0.0 for i, data in enumerate(train_loader): inputs, labels = data optimizer.zero_grad() outputs = net(inputs) loss = loss_fn(outputs, labels) loss.backward() optimizer.step() running_loss += loss.item() if (i+1) % 100 == 0: print('[%d, %5d] loss: %.3f' % (epoch+1, i+1, running_loss/100)) running_loss = 0.0
In the above code, we first iterate over the training data load using the enumerate
function processor, got the input data and labels. We then zero out the gradients, feed the input data into the model, and compute the predictions and loss function. Next, we calculate the gradient through the backward
method, and then update the model parameters through the step
method. Finally, we accumulate the losses and print them as needed.
6. Test the model
After the training is completed, we still need to test the performance of the model. We can evaluate the performance of the model by calculating its accuracy on the test data set.
Here is an example that shows how to use PyTorch to test the accuracy of the model:
correct = 0 total = 0 with torch.no_grad(): for data in test_loader: inputs, labels = data outputs = net(inputs) _, predicted = torch.max(outputs.data, 1) total += labels.size(0) correct += (predicted == labels).sum().item() accuracy = 100 * correct / total print('Accuracy: %.2f %%' % accuracy)
In the above code, we first define two variables correct
and total
, used to calculate the number of correctly classified samples and the total number of samples. Next, we use the torch.no_grad()
context manager to turn off gradient calculations, thereby reducing memory consumption. Then, we sequentially calculate the prediction results, update the number of correctly classified samples and the total number of samples. Finally, the accuracy is calculated based on the number of correctly classified samples and the total number of samples and printed.
Summary:
Through the introduction of this article, you have understood the basic steps of how to use PyTorch for neural network training, and learned how to build a neural network model, define loss functions and optimizers, prepare data sets, Start training and testing the model. I hope this article will be helpful to your work and study in using PyTorch for neural network training.
References:
- PyTorch official website: https://pytorch.org/
- PyTorch documentation: https://pytorch.org/docs/stable /index.html
The above is the detailed content of How to use PyTorch for neural network training. For more information, please follow other related articles on the PHP Chinese website!

To maximize the efficiency of learning Python in a limited time, you can use Python's datetime, time, and schedule modules. 1. The datetime module is used to record and plan learning time. 2. The time module helps to set study and rest time. 3. The schedule module automatically arranges weekly learning tasks.

Python excels in gaming and GUI development. 1) Game development uses Pygame, providing drawing, audio and other functions, which are suitable for creating 2D games. 2) GUI development can choose Tkinter or PyQt. Tkinter is simple and easy to use, PyQt has rich functions and is suitable for professional development.

Python is suitable for data science, web development and automation tasks, while C is suitable for system programming, game development and embedded systems. Python is known for its simplicity and powerful ecosystem, while C is known for its high performance and underlying control capabilities.

You can learn basic programming concepts and skills of Python within 2 hours. 1. Learn variables and data types, 2. Master control flow (conditional statements and loops), 3. Understand the definition and use of functions, 4. Quickly get started with Python programming through simple examples and code snippets.

Python is widely used in the fields of web development, data science, machine learning, automation and scripting. 1) In web development, Django and Flask frameworks simplify the development process. 2) In the fields of data science and machine learning, NumPy, Pandas, Scikit-learn and TensorFlow libraries provide strong support. 3) In terms of automation and scripting, Python is suitable for tasks such as automated testing and system management.

You can learn the basics of Python within two hours. 1. Learn variables and data types, 2. Master control structures such as if statements and loops, 3. Understand the definition and use of functions. These will help you start writing simple Python programs.

How to teach computer novice programming basics within 10 hours? If you only have 10 hours to teach computer novice some programming knowledge, what would you choose to teach...

How to avoid being detected when using FiddlerEverywhere for man-in-the-middle readings When you use FiddlerEverywhere...


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

MantisBT
Mantis is an easy-to-deploy web-based defect tracking tool designed to aid in product defect tracking. It requires PHP, MySQL and a web server. Check out our demo and hosting services.

SecLists
SecLists is the ultimate security tester's companion. It is a collection of various types of lists that are frequently used during security assessments, all in one place. SecLists helps make security testing more efficient and productive by conveniently providing all the lists a security tester might need. List types include usernames, passwords, URLs, fuzzing payloads, sensitive data patterns, web shells, and more. The tester can simply pull this repository onto a new test machine and he will have access to every type of list he needs.

ZendStudio 13.5.1 Mac
Powerful PHP integrated development environment