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Diffstat (limited to 'experiments/dfa_penalty_trajectory.py')
| -rw-r--r-- | experiments/dfa_penalty_trajectory.py | 135 |
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diff --git a/experiments/dfa_penalty_trajectory.py b/experiments/dfa_penalty_trajectory.py new file mode 100644 index 0000000..c46ce0b --- /dev/null +++ b/experiments/dfa_penalty_trajectory.py @@ -0,0 +1,135 @@ +""" +Canonical DFA penalty trajectory: per-epoch ||h_L|| and ||g_L|| for λ ∈ {0, 1e-4, 1e-2}. +3 seeds × 3 λ × 30 epochs. Uses canonical cifar_resmlp.py DFA implementation (no clipping, mean reduction). +""" +import os, sys, json, argparse +import numpy as np +import torch +import torch.nn as nn +import torch.nn.functional as F +import torch.optim as optim +from torch.utils.data import DataLoader +import torchvision, torchvision.transforms as transforms + +sys.path.insert(0, os.path.dirname(os.path.dirname(os.path.abspath(__file__)))) +from models.residual_mlp import ResidualMLP + + +def get_data(batch_size=128): + tv_train = transforms.Compose([ + transforms.RandomCrop(32, padding=4), transforms.RandomHorizontalFlip(), + transforms.ToTensor(), + transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2470, 0.2435, 0.2616)), + ]) + tv = transforms.Compose([ + transforms.ToTensor(), + transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2470, 0.2435, 0.2616)), + ]) + tr = torchvision.datasets.CIFAR10('./data', True, download=True, transform=tv_train) + te = torchvision.datasets.CIFAR10('./data', False, download=True, transform=tv) + return (DataLoader(tr, batch_size=batch_size, shuffle=True, num_workers=2), + DataLoader(te, batch_size=batch_size, shuffle=False, num_workers=2)) + + +def diagnose_quick(model, x_eval, y_eval): + model.eval() + x_flat = x_eval.view(x_eval.size(0), -1) + with torch.no_grad(): + logits, hiddens = model(x_flat, return_hidden=True) + h_L = hiddens[-1].norm(dim=-1).median().item() + # BP grad at h_L + h0 = model.embed(x_flat.detach()) + hs = [h0.clone().requires_grad_(True)] + for b in model.blocks: + hs.append(hs[-1] + b(hs[-1])) + logits2 = model.out_head(model.out_ln(hs[-1])) + loss = F.cross_entropy(logits2, y_eval) + grads = torch.autograd.grad(loss, hs) + g_L = grads[-1].norm(dim=-1).median().item() + acc = (logits.argmax(-1) == y_eval).float().mean().item() + model.train() + return h_L, g_L, acc + + +def train_dfa_trajectory(seed, train_loader, x_eval, y_eval, device, epochs, lam): + L, d, C = 4, 256, 10 + torch.manual_seed(seed); np.random.seed(seed); torch.cuda.manual_seed_all(seed) + model = ResidualMLP(3072, d, C, L).to(device) + Bs = [torch.randn(d, C, device=device) / np.sqrt(C) for _ in range(L)] + block_opts = [optim.AdamW(block.parameters(), lr=1e-3, weight_decay=0.01) for block in model.blocks] + embed_opt = optim.AdamW(model.embed.parameters(), lr=1e-3, weight_decay=0.01) + head_opt = optim.AdamW(list(model.out_head.parameters()) + list(model.out_ln.parameters()), + lr=1e-3, weight_decay=0.01) + all_sch = ([optim.lr_scheduler.CosineAnnealingLR(o, T_max=epochs) for o in block_opts] + + [optim.lr_scheduler.CosineAnnealingLR(embed_opt, T_max=epochs), + optim.lr_scheduler.CosineAnnealingLR(head_opt, T_max=epochs)]) + + log = [] + h_L, g_L, acc = diagnose_quick(model, x_eval, y_eval) + log.append({'epoch': 0, 'h_L': h_L, 'g_L': g_L, 'acc': acc}) + + for epoch in range(1, epochs + 1): + model.train() + for x, y in train_loader: + x = x.view(x.size(0), -1).to(device); y = y.to(device) + batch = x.size(0) + with torch.no_grad(): + logits, hiddens = model(x, return_hidden=True) + e_T = logits.softmax(-1); e_T[torch.arange(batch), y] -= 1 + hL_det = hiddens[-1].detach() + logits_out = model.out_head(model.out_ln(hL_det)) + head_opt.zero_grad(); F.cross_entropy(logits_out, y).backward(); head_opt.step() + for l in range(L): + h_l = hiddens[l].detach() + a_dfa = (e_T @ Bs[l].T).detach() + rms = (a_dfa ** 2).mean(dim=-1, keepdim=True).sqrt() + 1e-6 + f_l = model.blocks[l](h_l) + local_loss = (f_l * (a_dfa / rms)).sum(dim=-1).mean() + if lam > 0: + local_loss = local_loss + lam * (f_l ** 2).sum(dim=-1).mean() + block_opts[l].zero_grad(); local_loss.backward(); block_opts[l].step() + a_0 = (e_T @ Bs[0].T).detach() + rms_0 = (a_0 ** 2).mean(dim=-1, keepdim=True).sqrt() + 1e-6 + h0 = model.embed(x) + embed_loss = (h0 * (a_0 / rms_0)).sum(dim=-1).mean() + embed_opt.zero_grad(); embed_loss.backward(); embed_opt.step() + for s in all_sch: s.step() + h_L, g_L, acc = diagnose_quick(model, x_eval, y_eval) + log.append({'epoch': epoch, 'h_L': h_L, 'g_L': g_L, 'acc': acc}) + if epoch % 10 == 0 or epoch == epochs: + print(f" [lam={lam}] s={seed} ep {epoch}: ||h_L||={h_L:.3e} ||g_L||={g_L:.3e} acc={acc:.4f}", flush=True) + return log + + +def main(): + p = argparse.ArgumentParser() + p.add_argument('--output', type=str, default='results/dfa_canonical_penalty_trajectory.json') + args = p.parse_args() + + device = torch.device('cuda:0') + train_loader, test_loader = get_data(128) + # Fixed 128-sample eval buffer (consistent with cifar_resmlp.py compute_diagnostics) + xs, ys = [], [] + for x, y in test_loader: + xs.append(x); ys.append(y) + if sum(xb.size(0) for xb in xs) >= 128: + break + x_eval = torch.cat(xs)[:128].to(device) + y_eval = torch.cat(ys)[:128].to(device) + + results = {} + for lam in [0.0, 1e-4, 1e-2]: + lam_key = f'lam_{lam}' + results[lam_key] = {} + for seed in [42, 123, 456]: + print(f"\n=== λ={lam}, seed={seed} ===", flush=True) + log = train_dfa_trajectory(seed, train_loader, x_eval, y_eval, device, 30, lam) + results[lam_key][str(seed)] = log + + with open(args.output, 'w') as f: + json.dump(results, f, indent=2) + print(f"\nSaved: {args.output}", flush=True) + + +if __name__ == '__main__': + main() |
