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I am training my implementation of CycleGAN on a colab notebook using the GPU but the training seems to be quite slow, I'm training with a batch size of 1 and this is my training code:

def train():

    generator_A2B = Generator(3).train().to(device)
    generator_B2A = Generator(3).train().to(device)
    discriminator_A = Discriminator(3).to(device)
    discriminator_B = Discriminator(3).to(device)

    L2Loss = nn.MSELoss().to(device)
    L1Loss = nn.L1Loss().to(device)
    train_step = 0


    optimizer_G_A2B = optim.Adam(generator_A2B.parameters(), lr=lr, betas=(0.5, 0.999))
    optimizer_G_B2A = optim.Adam(generator_B2A.parameters(), lr=lr, betas=(0.5, 0.999))
    optimizer_D_A = optim.Adam(discriminator_A.parameters(), lr=lr, betas=(0.5, 0.999))
    optimizer_D_B = optim.Adam(discriminator_B.parameters(), lr=lr, betas=(0.5, 0.999))

    transforms_list = transforms.Compose([transforms.ToTensor(),
                                          transforms.Normalize(mean=[0.5, 0.5, 0.5], std=[0.5, 0.5, 0.5])])
    
    dataset = CycleGANData(data_root_x, data_root_y, transforms_list=transforms_list)

    data_loader = DataLoader(dataset, batch_size=batch_size, shuffle=True)
    iter_nums = len(data_loader)
    print(f"Total Iterations per Epoch {iter_nums}")
    for epoch in range(1, num_epochs + 1):

            for i, (img_a, img_b) in enumerate(data_loader):

                for Disc in range(1):

                    train_step += 1
                    
                    discriminator_A.zero_grad()
                    discriminator_B.zero_grad()

                    realA = img_a.to(device)
                    realB = img_b.to(device)
                    fakeB = generator_A2B(realA)
                    fakeA = generator_B2A(realB)

                    D_A_real = discriminator_A(realA)
                    D_A_fake = discriminator_A(fakeA)
                    D_B_real = discriminator_B(realB)
                    D_B_fake = discriminator_B(fakeB)

                    y_real = torch.ones_like(D_A_real)
                    y_fake = -torch.ones_like(D_A_real)

                    D_A_real_loss = L2Loss(D_A_real, y_real)
                    D_B_real_loss = L2Loss(D_B_real, y_real)
                    D_A_fake_loss = L2Loss(D_A_fake, y_fake)
                    D_B_fake_loss = L2Loss(D_B_fake, y_fake)

                    D_A_GANloss = (D_A_real_loss + D_A_fake_loss)/2
                    D_B_GANloss = (D_B_real_loss + D_B_fake_loss)/2

                    D_A_GANloss.backward(retain_graph=True)
                    D_B_GANloss.backward(retain_graph=True)
                    optimizer_D_A.step()
                    optimizer_D_B.step()


                    if train_step % 1 == 0:

                        generator_A2B.zero_grad()
                        generator_B2A.zero_grad()

                        fakeB = generator_A2B(realA)
                        fakeA = generator_B2A(realB)

                        D_A_fake = discriminator_A(fakeA)
                        D_B_fkae = discriminator_B(fakeB)

                        G_A2B_GANLoss = L2Loss(D_B_fake, y_real)
                        G_B2A_GANLoss = L2Loss(D_A_fake, y_real)

                        B_idt = generator_A2B(realB)
                        A_idt = generator_B2A(realA)

                        G_A2B_iden_loss = L1Loss(B_idt, realB)
                        G_B2A_iden_loss = L1Loss(A_idt, realA)

                        A_cycle = generator_B2A(generator_A2B(realA))
                        B_cycle = generator_A2B(generator_B2A(realB))
                        A_cycle_loss = L1Loss(A_cycle, realA)
                        B_cycle_loss = L1Loss(B_cycle, realB)

                        G_loss = (G_A2B_GANLoss + G_B2A_GANLoss) + lambda_identity * (G_A2B_iden_loss + G_B2A_iden_loss) + lambda_cyc * (A_cycle_loss + B_cycle_loss)
                        G_loss.backward()
                        optimizer_G_B2A.step()
                        optimizer_G_A2B.step()

                print(f"[Epoch - {epoch}] [Step - {i}/{iter_nums}] [Generator Loss - {G_loss}] [Discriminator A Loss - {D_A_GANloss}] [Discriminator B Loss - {D_B_GANloss}]")
                




    
train()

Is there something I could fix to speed up training or is there an immediate problem to fix the training time, Thanks in advance.

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