欧美一级a免费放视频,欧美一级a免费放视频_丰满年轻岳欲乱中文字幕电影_欧美成人性一区二区三区_av不卡网站,99久久精品产品给合免费视频,色综合黑人无码另类字幕,特级免费黄片,看黃色录像片,色色资源站无码AV网址,暖暖 免费 日本 在线播放,欧美com

合肥生活安徽新聞合肥交通合肥房產(chǎn)生活服務(wù)合肥教育合肥招聘合肥旅游文化藝術(shù)合肥美食合肥地圖合肥社保合肥醫(yī)院企業(yè)服務(wù)合肥法律

代寫Neural Networks for Image 編程
代寫Neural Networks for Image 編程

時(shí)間:2024-11-08  來源:合肥網(wǎng)hfw.cc  作者:hfw.cc 我要糾錯(cuò)



Lab 2: Neural Networks for Image 
Classification
Duration: 2 hours
Tools:
• Jupyter Notebook
• IDE: PyCharm==2024.2.3 (or any IDE of your choice)
• Python: 3.12
• Libraries:
o PyTorch==2.4.0
o TorchVision==0.19.0
o Matplotlib==3.9.2
Learning Objectives:
• Understand the basic architecture of a neural network.
• Load and explore the CIFAR-10 dataset.
• Implement and train a neural network, individualized by your QMUL ID.
• Verify machine learning concepts such as accuracy, loss, and evaluation metrics 
by running predefined code.
Lab Outline:
In this lab, you will implement a simple neural network model to classify images from 
the CIFAR-10 dataset. The task will be individualized based on your QMUL ID to ensure 
unique configurations for each student.
1. Task 1: Understanding the CIFAR-10 Dataset
• The CIFAR-10 dataset consists of 60,000 **x** color images categorized into 10 
classes (airplanes, cars, birds, cats, deer, dogs, frogs, horses, ships, and trucks).
• The dataset is divided into 50,000 training images and 10,000 testing images.
• You will load the CIFAR-10 dataset using PyTorch’s built-in torchvision library.
Step-by-step Instructions:
1. Open the provided Jupyter Notebook.
2. Load and explore the CIFAR-10 dataset using the following code:
import torchvision.transforms as transforms
import torchvision.datasets as datasets
# Basic transformations for the CIFAR-10 dataset
transform = transforms.Compose([transforms.ToTensor(), 
transforms.Normalize((0.5,), (0.5,))])
# Load the CIFAR-10 dataset
dataset = datasets.CIFAR10(root='./data', train=True, 
download=True, transform=transform)
2. Task 2: Individualized Neural Network Implementation, Training, and Test
You will implement a neural network model to classify images from the CIFAR-10 
dataset. However, certain parts of the task will be individualized based on your QMUL 
ID. Follow the instructions carefully to ensure your model’s configuration is unique.
Step 1: Dataset Split Based on Your QMUL ID
You will use the last digit of your QMUL ID to define the training-validation split:
• If your ID ends in 0-4: use a 70-30 split (70% training, 30% validation).
• If your ID ends in 5-9: use an 80-20 split (80% training, 20% validation).
Code:
from torch.utils.data import random_split
# Set the student's last digit of the ID (replace with 
your own last digit)
last_digit_of_id = 7 # Example: Replace this with the 
last digit of your QMUL ID
# Define the split ratio based on QMUL ID
split_ratio = 0.7 if last_digit_of_id <= 4 else 0.8
# Split the dataset
train_size = int(split_ratio * len(dataset))
val_size = len(dataset) - train_size
train_dataset, val_dataset = random_split(dataset, 
[train_size, val_size])
# DataLoaders
from torch.utils.data import DataLoader
batch_size = ** + last_digit_of_id # Batch size is ** + 
last digit of your QMUL ID
train_loader = DataLoader(train_dataset, 
batch_size=batch_size, shuffle=True)
val_loader = DataLoader(val_dataset, 
batch_size=batch_size, shuffle=False)
print(f"Training on {train_size} images, Validating on 
{val_size} images.")
Step 2: Predefined Neural Network Model
You will use a predefined neural network architecture provided in the lab. The model’s 
hyperparameters will be customized based on your QMUL ID.
1. Learning Rate: Set the learning rate to 0.001 + (last digit of your QMUL ID * 
0.0001).
2. Number of Epochs: Train your model for 10 + (last digit of your QMUL ID) 
epochs.
Code:
import torch
import torch.optim as optim
# Define the model
model = torch.nn.Sequential(
 torch.nn.Flatten(),
 torch.nn.Linear(******3, 512),
 torch.nn.ReLU(),
 torch.nn.Linear(512, 10) # 10 output classes for 
CIFAR-10
)
# Loss function and optimizer
criterion = torch.nn.CrossEntropyLoss()
# Learning rate based on QMUL ID
learning_rate = 0.001 + (last_digit_of_id * 0.0001)
optimizer = optim.Adam(model.parameters(), 
lr=learning_rate)
# Number of epochs based on QMUL ID
num_epochs = 100 + last_digit_of_id
print(f"Training for {num_epochs} epochs with learning 
rate {learning_rate}.")
Step 3: Model Training and Evaluation
Use the provided training loop to train your model and evaluate it on the validation set. 
Track the loss and accuracy during the training process.
Expected Output: For training with around 100 epochs, it may take 0.5~1 hour to finish. 
You may see a lower accuracy, especially for the validation accuracy, due to the lower 
number of epochs or the used simple neural network model, etc. If you are interested, 
you can find more advanced open-sourced codes to test and improve the performance. 
In this case, it may require a long training time on the CPU-based device.
Code:
# Training loop
train_losses = [] 
train_accuracies = []
val_accuracies = []
for epoch in range(num_epochs):
 model.train()
 running_loss = 0.0
 correct = 0
 total = 0
 for inputs, labels in train_loader:
 optimizer.zero_grad()
 outputs = model(inputs)
 loss = criterion(outputs, labels)
 loss.backward()
 optimizer.step()
 
 running_loss += loss.item()
 _, predicted = torch.max(outputs, 1)
 total += labels.size(0)
 correct += (predicted == labels).sum().item()
 train_accuracy = 100 * correct / total
 print(f"Epoch {epoch+1}/{num_epochs}, Loss: 
{running_loss:.4f}, Training Accuracy: 
{train_accuracy:.2f}%")
 
 # Validation step
 model.eval()
 correct = 0
 total = 0
 with torch.no_grad():
 for inputs, labels in val_loader:
 outputs = model(inputs)
 _, predicted = torch.max(outputs, 1)
 total += labels.size(0)
 correct += (predicted == labels).sum().item()
 
 val_accuracy = 100 * correct / total
 print(f"Validation Accuracy after Epoch {epoch + 1}: 
{val_accuracy:.2f}%")
 train_losses.append(running_loss) 
 train_accuracies.append(train_accuracy)
 val_accuracies.append(val_accuracy)
Task 3: Visualizing and Analyzing the Results
Visualize the results of the training and validation process. Generate the following plots 
using Matplotlib:
• Training Loss vs. Epochs.
• Training and Validation Accuracy vs. Epochs.
Code for Visualization:
import matplotlib.pyplot as plt
# Plot Loss
plt.figure()
plt.plot(range(1, num_epochs + 1), train_losses, 
label="Training Loss")
plt.xlabel("Epochs")
plt.ylabel("Loss")
plt.title("Training Loss")
plt.legend()
plt.show()
# Plot Accuracy
plt.figure()
plt.plot(range(1, num_epochs + 1), train_accuracies, 
label="Training Accuracy")
plt.plot(range(1, num_epochs + 1), val_accuracies, 
label="Validation Accuracy")
plt.xlabel("Epochs")
plt.ylabel("Accuracy")
plt.title("Training and Validation Accuracy")
plt.legend()
plt.show()
Lab Report Submission and Marking Criteria
After completing the lab, you need to submit a report that includes:
1. Individualized Setup (20/100):
o Clearly state the unique configurations used based on your QMUL ID, 
including dataset split, number of epochs, learning rate, and batch size.
2. Neural Network Architecture and Training (30/100):
o Provide an explanation of the model architecture (i.e., the number of input 
layer, hidden layer, and output layer, activation function) and training 
procedure (i.e., the used optimizer).
o Include the plots of training loss, training and validation accuracy.
3. Results Analysis (30/100):
o Provide analysis of the training and validation performance.
o Reflect on whether the model is overfitting or underfitting based on the 
provided results.
4. Concept Verification (20/100):
o Answer the provided questions below regarding machine learning 
concepts.
(1) What is overfitting issue? List TWO methods for addressing the overfitting 
issue.
(2) What is the role of loss function? List TWO representative loss functions.

請加QQ:99515681  郵箱:[email protected]   WX:codinghelp





 

掃一掃在手機(jī)打開當(dāng)前頁
  • 上一篇:CPSC 471代寫、代做Python語言程序
  • 下一篇:代做INT2067、Python編程設(shè)計(jì)代寫
  • 無相關(guān)信息
    合肥生活資訊

    合肥圖文信息
    出評 開團(tuán)工具
    出評 開團(tuán)工具
    挖掘機(jī)濾芯提升發(fā)動(dòng)機(jī)性能
    挖掘機(jī)濾芯提升發(fā)動(dòng)機(jī)性能
    戴納斯帝壁掛爐全國售后服務(wù)電話24小時(shí)官網(wǎng)400(全國服務(wù)熱線)
    戴納斯帝壁掛爐全國售后服務(wù)電話24小時(shí)官網(wǎng)
    菲斯曼壁掛爐全國統(tǒng)一400售后維修服務(wù)電話24小時(shí)服務(wù)熱線
    菲斯曼壁掛爐全國統(tǒng)一400售后維修服務(wù)電話2
    美的熱水器售后服務(wù)技術(shù)咨詢電話全國24小時(shí)客服熱線
    美的熱水器售后服務(wù)技術(shù)咨詢電話全國24小時(shí)
    海信羅馬假日洗衣機(jī)亮相AWE  復(fù)古美學(xué)與現(xiàn)代科技完美結(jié)合
    海信羅馬假日洗衣機(jī)亮相AWE 復(fù)古美學(xué)與現(xiàn)代
    合肥機(jī)場巴士4號線
    合肥機(jī)場巴士4號線
    合肥機(jī)場巴士3號線
    合肥機(jī)場巴士3號線
  • 上海廠房出租 短信驗(yàn)證碼 酒店vi設(shè)計(jì)