281 lines
9.9 KiB
Python
281 lines
9.9 KiB
Python
import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from torchvision import datasets, transforms
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from torch.utils.data import DataLoader, Subset
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import numpy as np
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import copy
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from tqdm import tqdm
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from model.repvit import repvit_m1_1
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from model.mobilenetv3 import MobileNetV3
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# 配置参数
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NUM_CLIENTS = 4
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NUM_ROUNDS = 3
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CLIENT_EPOCHS = 5
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BATCH_SIZE = 32
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TEMP = 2.0 # 蒸馏温度
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# 设备配置
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device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
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# 数据准备
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def prepare_data(num_clients):
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transform = transforms.Compose([
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transforms.Resize((224, 224)), # 将图像调整为 224x224
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transforms.Grayscale(num_output_channels=3),
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transforms.ToTensor()
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])
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train_set = datasets.MNIST("./data", train=True, download=True, transform=transform)
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# 非IID数据划分(每个客户端2个类别)
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client_data = {i: [] for i in range(num_clients)}
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labels = train_set.targets.numpy()
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for label in range(10):
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label_idx = np.where(labels == label)[0]
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np.random.shuffle(label_idx)
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split = np.array_split(label_idx, num_clients//2)
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for i, idx in enumerate(split):
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client_data[i*2 + label%2].extend(idx)
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return [Subset(train_set, ids) for ids in client_data.values()]
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# 客户端训练函数
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def client_train(client_model, server_model, dataset):
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client_model.train()
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server_model.eval()
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optimizer = torch.optim.SGD(client_model.parameters(), lr=0.1)
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loader = DataLoader(dataset, batch_size=BATCH_SIZE, shuffle=True)
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# 训练进度条
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progress_bar = tqdm(total=CLIENT_EPOCHS*len(loader),
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desc="Client Training",
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unit="batch")
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for epoch in range(CLIENT_EPOCHS):
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epoch_loss = 0.0
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task_loss = 0.0
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distill_loss = 0.0
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correct = 0
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total = 0
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for batch_idx, (data, target) in enumerate(loader):
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data, target = data.to(device), target.to(device)
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optimizer.zero_grad()
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# 前向传播
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client_output = client_model(data)
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# 获取教师模型输出
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with torch.no_grad():
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server_output = server_model(data)
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# 计算损失
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loss_task = F.cross_entropy(client_output, target)
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loss_distill = F.kl_div(
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F.log_softmax(client_output/TEMP, dim=1),
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F.softmax(server_output/TEMP, dim=1),
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reduction="batchmean"
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) * (TEMP**2)
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total_loss = loss_task + loss_distill
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# 反向传播
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total_loss.backward()
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optimizer.step()
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# 统计指标
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epoch_loss += total_loss.item()
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task_loss += loss_task.item()
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distill_loss += loss_distill.item()
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_, predicted = torch.max(client_output.data, 1)
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correct += (predicted == target).sum().item()
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total += target.size(0)
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# 实时更新进度条
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progress_bar.set_postfix({
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"Epoch": f"{epoch+1}/{CLIENT_EPOCHS}",
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"Batch": f"{batch_idx+1}/{len(loader)}",
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"Loss": f"{total_loss.item():.4f}",
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"Acc": f"{100*correct/total:.2f}%\n",
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})
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progress_bar.update(1)
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# 每10个batch打印详细信息
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if (batch_idx + 1) % 10 == 0:
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progress_bar.write(f"\nEpoch {epoch+1} | Batch {batch_idx+1}")
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progress_bar.write(f"Task Loss: {loss_task:.4f}")
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progress_bar.write(f"Distill Loss: {loss_distill:.4f}")
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progress_bar.write(f"Total Loss: {total_loss:.4f}")
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progress_bar.write(f"Batch Accuracy: {100*correct/total:.2f}%\n")
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# 每个epoch结束打印汇总信息
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avg_loss = epoch_loss / len(loader)
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avg_task = task_loss / len(loader)
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avg_distill = distill_loss / len(loader)
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epoch_acc = 100 * correct / total
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print(f"\n{'='*40}")
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print(f"Epoch {epoch+1} Summary:")
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print(f"Average Loss: {avg_loss:.4f}")
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print(f"Task Loss: {avg_task:.4f}")
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print(f"Distill Loss: {avg_distill:.4f}")
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print(f"Training Accuracy: {epoch_acc:.2f}%")
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print(f"{'='*40}\n")
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progress_bar.close()
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return client_model.state_dict()
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# 模型参数聚合(FedAvg)
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def aggregate(client_params):
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global_params = {}
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for key in client_params[0].keys():
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global_params[key] = torch.stack([param[key].float() for param in client_params]).mean(dim=0)
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return global_params
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# 服务器知识更新
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def server_update(server_model, client_models, public_loader):
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server_model.train()
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optimizer = torch.optim.Adam(server_model.parameters(), lr=0.001)
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total_loss = 0.0
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progress_bar = tqdm(public_loader, desc="Server Updating", unit="batch")
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for batch_idx, (data, _) in enumerate(progress_bar):
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data = data.to(device)
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optimizer.zero_grad()
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# 获取客户端模型的平均输出
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with torch.no_grad():
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client_outputs = [model(data).mean(dim=0, keepdim=True) for model in client_models]
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soft_targets = torch.stack(client_outputs).mean(dim=0)
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# 蒸馏学习
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server_output = server_model(data)
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loss = F.kl_div(
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F.log_softmax(server_output, dim=1),
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F.softmax(soft_targets, dim=1),
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reduction="batchmean"
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)
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# 反向传播
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loss.backward()
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optimizer.step()
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# 更新统计信息
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total_loss += loss.item()
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progress_bar.set_postfix({
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"Avg Loss": f"{total_loss/(batch_idx+1):.4f}",
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"Current Loss": f"{loss.item():.4f}"
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})
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print(f"\nServer Update Complete | Average Loss: {total_loss/len(public_loader):.4f}\n")
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def test_model(model, test_loader):
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model.eval()
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correct = 0
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total = 0
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with torch.no_grad():
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for data, target in test_loader:
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data, target = data.to(device), target.to(device)
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output = model(data)
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_, predicted = torch.max(output.data, 1)
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total += target.size(0)
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correct += (predicted == target).sum().item()
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accuracy = 100 * correct / total
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return accuracy
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# 主训练流程
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def main():
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# 初始化模型
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global_server_model = repvit_m1_1(num_classes=10).to(device)
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client_models = [MobileNetV3(n_class=10).to(device) for _ in range(NUM_CLIENTS)]
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round_progress = tqdm(total=NUM_ROUNDS, desc="Federated Rounds", unit="round")
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# 准备数据
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client_datasets = prepare_data(NUM_CLIENTS)
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public_loader = DataLoader(
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datasets.MNIST("./data", train=False, download=True,
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transform= transforms.Compose([
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transforms.Resize((224, 224)), # 将图像调整为 224x224
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transforms.Grayscale(num_output_channels=3),
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transforms.ToTensor() # 将图像转换为张量
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])),
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batch_size=100, shuffle=True)
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test_dataset = datasets.MNIST(
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"./data",
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train=False,
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transform= transforms.Compose([
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transforms.Resize((224, 224)), # 将图像调整为 224x224
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transforms.Grayscale(num_output_channels=3),
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transforms.ToTensor() # 将图像转换为张量
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])
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)
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test_loader = DataLoader(test_dataset, batch_size=100, shuffle=False)
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for round in range(NUM_ROUNDS):
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print(f"\n{'#'*50}")
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print(f"Federated Round {round+1}/{NUM_ROUNDS}")
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print(f"{'#'*50}")
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# 客户端选择
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selected_clients = np.random.choice(NUM_CLIENTS, 2, replace=False)
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print(f"Selected Clients: {selected_clients}")
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# 客户端本地训练
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client_params = []
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for cid in selected_clients:
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print(f"\nTraining Client {cid}")
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local_model = copy.deepcopy(client_models[cid])
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local_model.load_state_dict(client_models[cid].state_dict())
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updated_params = client_train(local_model, global_server_model, client_datasets[cid])
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client_params.append(updated_params)
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# 模型聚合
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global_client_params = aggregate(client_params)
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for model in client_models:
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model.load_state_dict(global_client_params)
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# 服务器知识更新
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print("\nServer Updating...")
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server_update(global_server_model, client_models, public_loader)
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# 测试模型性能
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server_acc = test_model(global_server_model, test_loader)
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client_acc = test_model(client_models[0], test_loader)
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print(f"\nRound {round+1} Performance:")
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print(f"Global Model Accuracy: {server_acc:.2f}%")
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print(f"Client Model Accuracy: {client_acc:.2f}%")
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round_progress.update(1)
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print(f"Round {round+1} completed")
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print("Training completed!")
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# 保存训练好的模型
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torch.save(global_server_model.state_dict(), "server_model.pth")
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torch.save(client_models[0].state_dict(), "client_model.pth")
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print("Models saved successfully.")
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# 创建测试数据加载器
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# 测试服务器模型
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server_model = repvit_m1_1(num_classes=10).to(device)
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server_model.load_state_dict(torch.load("server_model.pth"))
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server_acc = test_model(server_model, test_loader)
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print(f"Server Model Test Accuracy: {server_acc:.2f}%")
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# 测试客户端模型
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client_model = MobileNetV3(n_class=10).to(device)
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client_model.load_state_dict(torch.load("client_model.pth"))
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client_acc = test_model(client_model, test_loader)
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print(f"Client Model Test Accuracy: {client_acc:.2f}%")
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if __name__ == "__main__":
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main() |