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SFLV1_ResNet_HAM10000.py
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SFLV1_ResNet_HAM10000.py
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#============================================================================
# SplitfedV1 (SFLV1) learning: ResNet18 on HAM10000
# HAM10000 dataset: Tschandl, P.: The HAM10000 dataset, a large collection of multi-source dermatoscopic images of common pigmented skin lesions (2018), doi:10.7910/DVN/DBW86T
# We have three versions of our implementations
# Version1: without using socket and no DP+PixelDP
# Version2: with using socket but no DP+PixelDP
# Version3: without using socket but with DP+PixelDP
# This program is Version1: Single program simulation
# ============================================================================
import torch
from torch import nn
from torchvision import transforms
from torch.utils.data import DataLoader, Dataset
import torch.nn.functional as F
import math
import os.path
import pandas as pd
from sklearn.model_selection import train_test_split
from PIL import Image
from glob import glob
from pandas import DataFrame
import random
import numpy as np
import os
import matplotlib
matplotlib.use('Agg')
import matplotlib.pyplot as plt
import copy
SEED = 1234
random.seed(SEED)
np.random.seed(SEED)
torch.manual_seed(SEED)
torch.cuda.manual_seed(SEED)
if torch.cuda.is_available():
torch.backends.cudnn.deterministic = True
print(torch.cuda.get_device_name(0))
#===================================================================
program = "SFLV1 ResNet18 on HAM10000"
print(f"---------{program}----------") # this is to identify the program in the slurm outputs files
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
# To print in color -------test/train of the client side
def prRed(skk): print("\033[91m {}\033[00m" .format(skk))
def prGreen(skk): print("\033[92m {}\033[00m" .format(skk))
#===================================================================
# No. of users
num_users = 5
epochs = 200
frac = 1 # participation of clients; if 1 then 100% clients participate in SFLV1
lr = 0.0001
#=====================================================================================================
# Client-side Model definition
#=====================================================================================================
# Model at client side
class ResNet18_client_side(nn.Module):
def __init__(self):
super(ResNet18_client_side, self).__init__()
self.layer1 = nn.Sequential (
nn.Conv2d(3, 64, kernel_size = 7, stride = 2, padding = 3, bias = False),
nn.BatchNorm2d(64),
nn.ReLU (inplace = True),
nn.MaxPool2d(kernel_size = 3, stride = 2, padding =1),
)
self.layer2 = nn.Sequential (
nn.Conv2d(64, 64, kernel_size = 3, stride = 1, padding = 1, bias = False),
nn.BatchNorm2d(64),
nn.ReLU (inplace = True),
nn.Conv2d(64, 64, kernel_size = 3, stride = 1, padding = 1),
nn.BatchNorm2d(64),
)
for m in self.modules():
if isinstance(m, nn.Conv2d):
n = m.kernel_size[0] * m.kernel_size[1] * m.out_channels
m.weight.data.normal_(0, math.sqrt(2. / n))
elif isinstance(m, nn.BatchNorm2d):
m.weight.data.fill_(1)
m.bias.data.zero_()
def forward(self, x):
resudial1 = F.relu(self.layer1(x))
out1 = self.layer2(resudial1)
out1 = out1 + resudial1 # adding the resudial inputs -- downsampling not required in this layer
resudial2 = F.relu(out1)
return resudial2
net_glob_client = ResNet18_client_side()
if torch.cuda.device_count() > 1:
print("We use",torch.cuda.device_count(), "GPUs")
net_glob_client = nn.DataParallel(net_glob_client)
net_glob_client.to(device)
print(net_glob_client)
#=====================================================================================================
# Server-side Model definition
#=====================================================================================================
# Model at server side
class Baseblock(nn.Module):
expansion = 1
def __init__(self, input_planes, planes, stride = 1, dim_change = None):
super(Baseblock, self).__init__()
self.conv1 = nn.Conv2d(input_planes, planes, stride = stride, kernel_size = 3, padding = 1)
self.bn1 = nn.BatchNorm2d(planes)
self.conv2 = nn.Conv2d(planes, planes, stride = 1, kernel_size = 3, padding = 1)
self.bn2 = nn.BatchNorm2d(planes)
self.dim_change = dim_change
def forward(self, x):
res = x
output = F.relu(self.bn1(self.conv1(x)))
output = self.bn2(self.conv2(output))
if self.dim_change is not None:
res =self.dim_change(res)
output += res
output = F.relu(output)
return output
class ResNet18_server_side(nn.Module):
def __init__(self, block, num_layers, classes):
super(ResNet18_server_side, self).__init__()
self.input_planes = 64
self.layer3 = nn.Sequential (
nn.Conv2d(64, 64, kernel_size = 3, stride = 1, padding = 1),
nn.BatchNorm2d(64),
nn.ReLU (inplace = True),
nn.Conv2d(64, 64, kernel_size = 3, stride = 1, padding = 1),
nn.BatchNorm2d(64),
)
self.layer4 = self._layer(block, 128, num_layers[0], stride = 2)
self.layer5 = self._layer(block, 256, num_layers[1], stride = 2)
self.layer6 = self._layer(block, 512, num_layers[2], stride = 2)
self. averagePool = nn.AvgPool2d(kernel_size = 7, stride = 1)
self.fc = nn.Linear(512 * block.expansion, classes)
for m in self.modules():
if isinstance(m, nn.Conv2d):
n = m.kernel_size[0] * m.kernel_size[1] * m.out_channels
m.weight.data.normal_(0, math.sqrt(2. / n))
elif isinstance(m, nn.BatchNorm2d):
m.weight.data.fill_(1)
m.bias.data.zero_()
def _layer(self, block, planes, num_layers, stride = 2):
dim_change = None
if stride != 1 or planes != self.input_planes * block.expansion:
dim_change = nn.Sequential(nn.Conv2d(self.input_planes, planes*block.expansion, kernel_size = 1, stride = stride),
nn.BatchNorm2d(planes*block.expansion))
netLayers = []
netLayers.append(block(self.input_planes, planes, stride = stride, dim_change = dim_change))
self.input_planes = planes * block.expansion
for i in range(1, num_layers):
netLayers.append(block(self.input_planes, planes))
self.input_planes = planes * block.expansion
return nn.Sequential(*netLayers)
def forward(self, x):
out2 = self.layer3(x)
out2 = out2 + x # adding the resudial inputs -- downsampling not required in this layer
x3 = F.relu(out2)
x4 = self. layer4(x3)
x5 = self.layer5(x4)
x6 = self.layer6(x5)
x7 = F.avg_pool2d(x6, 7)
x8 = x7.view(x7.size(0), -1)
y_hat =self.fc(x8)
return y_hat
net_glob_server = ResNet18_server_side(Baseblock, [2,2,2], 7) #7 is my numbr of classes
if torch.cuda.device_count() > 1:
print("We use",torch.cuda.device_count(), "GPUs")
net_glob_server = nn.DataParallel(net_glob_server) # to use the multiple GPUs
net_glob_server.to(device)
print(net_glob_server)
#===================================================================================
# For Server Side Loss and Accuracy
loss_train_collect = []
acc_train_collect = []
loss_test_collect = []
acc_test_collect = []
batch_acc_train = []
batch_loss_train = []
batch_acc_test = []
batch_loss_test = []
criterion = nn.CrossEntropyLoss()
count1 = 0
count2 = 0
#====================================================================================================
# Server Side Program
#====================================================================================================
# Federated averaging: FedAvg
def FedAvg(w):
w_avg = copy.deepcopy(w[0])
for k in w_avg.keys():
for i in range(1, len(w)):
w_avg[k] += w[i][k]
w_avg[k] = torch.div(w_avg[k], len(w))
return w_avg
def calculate_accuracy(fx, y):
preds = fx.max(1, keepdim=True)[1]
correct = preds.eq(y.view_as(preds)).sum()
acc = 100.00 *correct.float()/preds.shape[0]
return acc
# to print train - test together in each round-- these are made global
acc_avg_all_user_train = 0
loss_avg_all_user_train = 0
loss_train_collect_user = []
acc_train_collect_user = []
loss_test_collect_user = []
acc_test_collect_user = []
w_glob_server = net_glob_server.state_dict()
w_locals_server = []
#client idx collector
idx_collect = []
l_epoch_check = False
fed_check = False
# Initialization of net_model_server and net_server (server-side model)
net_model_server = [net_glob_server for i in range(num_users)]
net_server = copy.deepcopy(net_model_server[0]).to(device)
#optimizer_server = torch.optim.Adam(net_server.parameters(), lr = lr)
# Server-side function associated with Training
def train_server(fx_client, y, l_epoch_count, l_epoch, idx, len_batch):
global net_model_server, criterion, optimizer_server, device, batch_acc_train, batch_loss_train, l_epoch_check, fed_check
global loss_train_collect, acc_train_collect, count1, acc_avg_all_user_train, loss_avg_all_user_train, idx_collect, w_locals_server, w_glob_server, net_server
global loss_train_collect_user, acc_train_collect_user, lr
net_server = copy.deepcopy(net_model_server[idx]).to(device)
net_server.train()
optimizer_server = torch.optim.Adam(net_server.parameters(), lr = lr)
# train and update
optimizer_server.zero_grad()
fx_client = fx_client.to(device)
y = y.to(device)
#---------forward prop-------------
fx_server = net_server(fx_client)
# calculate loss
loss = criterion(fx_server, y)
# calculate accuracy
acc = calculate_accuracy(fx_server, y)
#--------backward prop--------------
loss.backward()
dfx_client = fx_client.grad.clone().detach()
optimizer_server.step()
batch_loss_train.append(loss.item())
batch_acc_train.append(acc.item())
# Update the server-side model for the current batch
net_model_server[idx] = copy.deepcopy(net_server)
# count1: to track the completion of the local batch associated with one client
count1 += 1
if count1 == len_batch:
acc_avg_train = sum(batch_acc_train)/len(batch_acc_train) # it has accuracy for one batch
loss_avg_train = sum(batch_loss_train)/len(batch_loss_train)
batch_acc_train = []
batch_loss_train = []
count1 = 0
prRed('Client{} Train => Local Epoch: {} \tAcc: {:.3f} \tLoss: {:.4f}'.format(idx, l_epoch_count, acc_avg_train, loss_avg_train))
# copy the last trained model in the batch
w_server = net_server.state_dict()
# If one local epoch is completed, after this a new client will come
if l_epoch_count == l_epoch-1:
l_epoch_check = True # to evaluate_server function - to check local epoch has completed or not
# We store the state of the net_glob_server()
w_locals_server.append(copy.deepcopy(w_server))
# we store the last accuracy in the last batch of the epoch and it is not the average of all local epochs
# this is because we work on the last trained model and its accuracy (not earlier cases)
#print("accuracy = ", acc_avg_train)
acc_avg_train_all = acc_avg_train
loss_avg_train_all = loss_avg_train
# accumulate accuracy and loss for each new user
loss_train_collect_user.append(loss_avg_train_all)
acc_train_collect_user.append(acc_avg_train_all)
# collect the id of each new user
if idx not in idx_collect:
idx_collect.append(idx)
#print(idx_collect)
# This is for federation process--------------------
if len(idx_collect) == num_users:
fed_check = True # to evaluate_server function - to check fed check has hitted
# Federation process at Server-Side------------------------- output print and update is done in evaluate_server()
# for nicer display
w_glob_server = FedAvg(w_locals_server)
# server-side global model update and distribute that model to all clients ------------------------------
net_glob_server.load_state_dict(w_glob_server)
net_model_server = [net_glob_server for i in range(num_users)]
w_locals_server = []
idx_collect = []
acc_avg_all_user_train = sum(acc_train_collect_user)/len(acc_train_collect_user)
loss_avg_all_user_train = sum(loss_train_collect_user)/len(loss_train_collect_user)
loss_train_collect.append(loss_avg_all_user_train)
acc_train_collect.append(acc_avg_all_user_train)
acc_train_collect_user = []
loss_train_collect_user = []
# send gradients to the client
return dfx_client
# Server-side functions associated with Testing
def evaluate_server(fx_client, y, idx, len_batch, ell):
global net_model_server, criterion, batch_acc_test, batch_loss_test, check_fed, net_server, net_glob_server
global loss_test_collect, acc_test_collect, count2, num_users, acc_avg_train_all, loss_avg_train_all, w_glob_server, l_epoch_check, fed_check
global loss_test_collect_user, acc_test_collect_user, acc_avg_all_user_train, loss_avg_all_user_train
net = copy.deepcopy(net_model_server[idx]).to(device)
net.eval()
with torch.no_grad():
fx_client = fx_client.to(device)
y = y.to(device)
#---------forward prop-------------
fx_server = net(fx_client)
# calculate loss
loss = criterion(fx_server, y)
# calculate accuracy
acc = calculate_accuracy(fx_server, y)
batch_loss_test.append(loss.item())
batch_acc_test.append(acc.item())
count2 += 1
if count2 == len_batch:
acc_avg_test = sum(batch_acc_test)/len(batch_acc_test)
loss_avg_test = sum(batch_loss_test)/len(batch_loss_test)
batch_acc_test = []
batch_loss_test = []
count2 = 0
prGreen('Client{} Test => \tAcc: {:.3f} \tLoss: {:.4f}'.format(idx, acc_avg_test, loss_avg_test))
# if a local epoch is completed
if l_epoch_check:
l_epoch_check = False
# Store the last accuracy and loss
acc_avg_test_all = acc_avg_test
loss_avg_test_all = loss_avg_test
loss_test_collect_user.append(loss_avg_test_all)
acc_test_collect_user.append(acc_avg_test_all)
# if federation is happened----------
if fed_check:
fed_check = False
print("------------------------------------------------")
print("------ Federation process at Server-Side ------- ")
print("------------------------------------------------")
acc_avg_all_user = sum(acc_test_collect_user)/len(acc_test_collect_user)
loss_avg_all_user = sum(loss_test_collect_user)/len(loss_test_collect_user)
loss_test_collect.append(loss_avg_all_user)
acc_test_collect.append(acc_avg_all_user)
acc_test_collect_user = []
loss_test_collect_user= []
print("====================== SERVER V1==========================")
print(' Train: Round {:3d}, Avg Accuracy {:.3f} | Avg Loss {:.3f}'.format(ell, acc_avg_all_user_train, loss_avg_all_user_train))
print(' Test: Round {:3d}, Avg Accuracy {:.3f} | Avg Loss {:.3f}'.format(ell, acc_avg_all_user, loss_avg_all_user))
print("==========================================================")
return
#==============================================================================================================
# Clients-side Program
#==============================================================================================================
class DatasetSplit(Dataset):
def __init__(self, dataset, idxs):
self.dataset = dataset
self.idxs = list(idxs)
def __len__(self):
return len(self.idxs)
def __getitem__(self, item):
image, label = self.dataset[self.idxs[item]]
return image, label
# Client-side functions associated with Training and Testing
class Client(object):
def __init__(self, net_client_model, idx, lr, device, dataset_train = None, dataset_test = None, idxs = None, idxs_test = None):
self.idx = idx
self.device = device
self.lr = lr
self.local_ep = 1
#self.selected_clients = []
self.ldr_train = DataLoader(DatasetSplit(dataset_train, idxs), batch_size = 256, shuffle = True)
self.ldr_test = DataLoader(DatasetSplit(dataset_test, idxs_test), batch_size = 256, shuffle = True)
def train(self, net):
net.train()
optimizer_client = torch.optim.Adam(net.parameters(), lr = self.lr)
for iter in range(self.local_ep):
len_batch = len(self.ldr_train)
for batch_idx, (images, labels) in enumerate(self.ldr_train):
images, labels = images.to(self.device), labels.to(self.device)
optimizer_client.zero_grad()
#---------forward prop-------------
fx = net(images)
client_fx = fx.clone().detach().requires_grad_(True)
# Sending activations to server and receiving gradients from server
dfx = train_server(client_fx, labels, iter, self.local_ep, self.idx, len_batch)
#--------backward prop -------------
fx.backward(dfx)
optimizer_client.step()
#prRed('Client{} Train => Epoch: {}'.format(self.idx, ell))
return net.state_dict()
def evaluate(self, net, ell):
net.eval()
with torch.no_grad():
len_batch = len(self.ldr_test)
for batch_idx, (images, labels) in enumerate(self.ldr_test):
images, labels = images.to(self.device), labels.to(self.device)
#---------forward prop-------------
fx = net(images)
# Sending activations to server
evaluate_server(fx, labels, self.idx, len_batch, ell)
#prRed('Client{} Test => Epoch: {}'.format(self.idx, ell))
return
#=====================================================================================================
# dataset_iid() will create a dictionary to collect the indices of the data samples randomly for each client
# IID HAM10000 datasets will be created based on this
def dataset_iid(dataset, num_users):
num_items = int(len(dataset)/num_users)
dict_users, all_idxs = {}, [i for i in range(len(dataset))]
for i in range(num_users):
dict_users[i] = set(np.random.choice(all_idxs, num_items, replace = False))
all_idxs = list(set(all_idxs) - dict_users[i])
return dict_users
#=============================================================================
# Data loading
#=============================================================================
df = pd.read_csv('data/HAM10000_metadata.csv')
print(df.head())
lesion_type = {
'nv': 'Melanocytic nevi',
'mel': 'Melanoma',
'bkl': 'Benign keratosis-like lesions ',
'bcc': 'Basal cell carcinoma',
'akiec': 'Actinic keratoses',
'vasc': 'Vascular lesions',
'df': 'Dermatofibroma'
}
# merging both folders of HAM1000 dataset -- part1 and part2 -- into a single directory
imageid_path = {os.path.splitext(os.path.basename(x))[0]: x
for x in glob(os.path.join("data", '*', '*.jpg'))}
#print("path---------------------------------------", imageid_path.get)
df['path'] = df['image_id'].map(imageid_path.get)
df['cell_type'] = df['dx'].map(lesion_type.get)
df['target'] = pd.Categorical(df['cell_type']).codes
print(df['cell_type'].value_counts())
print(df['target'].value_counts())
#==============================================================
# Custom dataset prepration in Pytorch format
class SkinData(Dataset):
def __init__(self, df, transform = None):
self.df = df
self.transform = transform
def __len__(self):
return len(self.df)
def __getitem__(self, index):
X = Image.open(self.df['path'][index]).resize((64, 64))
y = torch.tensor(int(self.df['target'][index]))
if self.transform:
X = self.transform(X)
return X, y
#=============================================================================
# Train-test split
train, test = train_test_split(df, test_size = 0.2)
train = train.reset_index()
test = test.reset_index()
#=============================================================================
# Data preprocessing
#=============================================================================
# Data preprocessing: Transformation
mean = [0.485, 0.456, 0.406]
std = [0.229, 0.224, 0.225]
train_transforms = transforms.Compose([transforms.RandomHorizontalFlip(),
transforms.RandomVerticalFlip(),
transforms.Pad(3),
transforms.RandomRotation(10),
transforms.CenterCrop(64),
transforms.ToTensor(),
transforms.Normalize(mean = mean, std = std)
])
test_transforms = transforms.Compose([
transforms.Pad(3),
transforms.CenterCrop(64),
transforms.ToTensor(),
transforms.Normalize(mean = mean, std = std)
])
# With augmentation
dataset_train = SkinData(train, transform = train_transforms)
dataset_test = SkinData(test, transform = test_transforms)
#----------------------------------------------------------------
dict_users = dataset_iid(dataset_train, num_users)
dict_users_test = dataset_iid(dataset_test, num_users)
#------------ Training And Testing -----------------
net_glob_client.train()
#copy weights
w_glob_client = net_glob_client.state_dict()
# Federation takes place after certain local epochs in train() client-side
# this epoch is global epoch, also known as rounds
for iter in range(epochs):
m = max(int(frac * num_users), 1)
idxs_users = np.random.choice(range(num_users), m, replace = False)
w_locals_client = []
for idx in idxs_users:
local = Client(net_glob_client, idx, lr, device, dataset_train = dataset_train, dataset_test = dataset_test, idxs = dict_users[idx], idxs_test = dict_users_test[idx])
# Training ------------------
w_client = local.train(net = copy.deepcopy(net_glob_client).to(device))
w_locals_client.append(copy.deepcopy(w_client))
# Testing -------------------
local.evaluate(net = copy.deepcopy(net_glob_client).to(device), ell= iter)
# Ater serving all clients for its local epochs------------
# Fed Server: Federation process at Client-Side-----------
print("-----------------------------------------------------------")
print("------ FedServer: Federation process at Client-Side ------- ")
print("-----------------------------------------------------------")
w_glob_client = FedAvg(w_locals_client)
# Update client-side global model
net_glob_client.load_state_dict(w_glob_client)
#===================================================================================
print("Training and Evaluation completed!")
#===============================================================================
# Save output data to .excel file (we use for comparision plots)
round_process = [i for i in range(1, len(acc_train_collect)+1)]
df = DataFrame({'round': round_process,'acc_train':acc_train_collect, 'acc_test':acc_test_collect})
file_name = program+".xlsx"
df.to_excel(file_name, sheet_name= "v1_test", index = False)
#=============================================================================
# Program Completed
#=============================================================================