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[beaver.git] / beaver.py
1 #!/usr/bin/env python
2
3 # Any copyright is dedicated to the Public Domain.
4 # https://creativecommons.org/publicdomain/zero/1.0/
5
6 # Written by Francois Fleuret <francois@fleuret.org>
7
8 # torch.backends.cuda.matmul.allow_tf23
9 # torch.autocast(torch.bfloat16)
10
11 import math, sys, argparse, time, tqdm, itertools, os
12
13 import torch, torchvision
14 from torch import nn
15 from torch.nn import functional as F
16
17 import mygpt, tensorstack
18
19 ######################################################################
20
21 if torch.cuda.is_available():
22     device = torch.device("cuda")
23     torch.backends.cuda.matmul.allow_tf32 = True
24 else:
25     device = torch.device("cpu")
26
27 ######################################################################
28
29 parser = argparse.ArgumentParser(description="A maze shortest path solving with a GPT.")
30
31 parser.add_argument("--log_filename", type=str, default="train.log")
32
33 parser.add_argument("--result_dir", type=str, default="results_default")
34
35 parser.add_argument("--seed", type=int, default=0)
36
37 parser.add_argument("--nb_epochs", type=int, default=25)
38
39 parser.add_argument("--nb_train_samples", type=int, default=200000)
40
41 parser.add_argument("--nb_test_samples", type=int, default=50000)
42
43 parser.add_argument("--batch_size", type=int, default=25)
44
45 parser.add_argument("--optim", type=str, default="adam")
46
47 parser.add_argument("--learning_rate", type=float, default=1e-3)
48
49 parser.add_argument(
50     "--learning_rate_schedule", type=str, default="10: 2e-4,20: 4e-5,30: 8e-6"
51 )
52
53 parser.add_argument("--dim_model", type=int, default=512)
54
55 parser.add_argument("--dim_keys", type=int, default=64)
56
57 parser.add_argument("--dim_hidden", type=int, default=2048)
58
59 parser.add_argument("--nb_heads", type=int, default=8)
60
61 parser.add_argument("--nb_blocks", type=int, default=12)
62
63 parser.add_argument("--dropout", type=float, default=0.1)
64
65 parser.add_argument("--deterministic_synthesis", action="store_true", default=False)
66
67 parser.add_argument("--random_regression_order", action="store_true", default=False)
68
69 parser.add_argument("--noncausal_prompt", action="store_true", default=False)
70
71 parser.add_argument("--no_checkpoint", action="store_true", default=False)
72
73 parser.add_argument("--overwrite_results", action="store_true", default=False)
74
75 parser.add_argument("--checkpoint_name", type=str, default="checkpoint.pth")
76
77 ##############################
78 # maze options
79
80 parser.add_argument("--maze_height", type=int, default=13)
81
82 parser.add_argument("--maze_width", type=int, default=21)
83
84 parser.add_argument("--maze_nb_walls", type=int, default=15)
85
86 ##############################
87 # one-shot prediction
88
89 parser.add_argument("--oneshot", action="store_true", default=False)
90
91 parser.add_argument("--oneshot_input", type=str, default="head")
92
93 parser.add_argument("--oneshot_output", type=str, default="trace")
94
95 ######################################################################
96
97 args = parser.parse_args()
98
99 try:
100     os.mkdir(args.result_dir)
101 except FileExistsError:
102     if not args.overwrite_results:
103         print(f"result directory {args.result_dir} already exists")
104         exit(1)
105
106 log_file = open(os.path.join(args.result_dir, args.log_filename), "a")
107
108 if args.seed >= 0:
109     # torch.backends.cudnn.deterministic = True
110     # torch.backends.cudnn.benchmark = False
111     # torch.use_deterministic_algorithms(True)
112     torch.manual_seed(args.seed)
113     if torch.cuda.is_available():
114         torch.cuda.manual_seed_all(args.seed)
115
116 ######################################################################
117
118
119 def log_string(s):
120     t = time.strftime("%Y%m%d-%H:%M:%S ", time.localtime())
121
122     if log_file is not None:
123         log_file.write(t + s + "\n")
124         log_file.flush()
125
126     print(t + s)
127     sys.stdout.flush()
128
129
130 for n in vars(args):
131     log_string(f"args.{n} {getattr(args, n)}")
132
133 ######################################################################
134
135
136 def reorder(x, order, reverse=False):  # x is NxTxD1x...xDk, order is NxT'
137     u = x.reshape(x.size()[:2] + (-1,))
138     order = order.unsqueeze(-1).expand(-1, -1, u.size(-1))
139     if reverse:
140         v = u.new(u.size()).scatter_(1, order, u)
141     else:
142         v = u.gather(1, order)
143     v = v.reshape(v.size()[:2] + x.size()[2:])
144     return v
145
146
147 def shuffle(x, prompt_len):
148     if args.random_regression_order:
149         order = torch.rand(x.size(), device=x.device)
150         order[:, :prompt_len] = torch.arange(-prompt_len, 0, device=x.device)
151         order = order.sort(1).indices
152     else:
153         order = (
154             torch.arange(x.size(1), device=x.device).unsqueeze(0).expand(x.size(0), -1)
155         )
156     return reorder(x, order), order
157
158
159 def eval_mygpt(model, input, mode="standard", prompt_len=0):
160     x, order = shuffle(input, prompt_len)
161     x = model(mygpt.BracketedSequence(x), mode=mode, order=order).x
162     return reorder(x, order, reverse=True)
163
164
165 ######################################################################
166
167 # ar_mask is a Boolean matrix of same shape as input, with 1s on the
168 # tokens that should be generated
169
170
171 def masked_inplace_autoregression(model, batch_size, input, ar_mask, order=None):
172     for input, ar_mask, order in zip(
173         input.split(batch_size), ar_mask.split(batch_size), order.split(batch_size)
174     ):
175         i = (ar_mask.sum(0) > 0).nonzero()
176         if i.min() > 0:
177             # Needed to initialize the model's cache
178             model(mygpt.BracketedSequence(input, 0, i.min()), order=order)
179         for s in range(i.min(), i.max() + 1):
180             output = model(mygpt.BracketedSequence(input, s, 1), order=order).x
181             logits = output[:, s]
182             if args.deterministic_synthesis:
183                 t_next = logits.argmax(1)
184             else:
185                 dist = torch.distributions.categorical.Categorical(logits=logits)
186                 t_next = dist.sample()
187             input[:, s] = ar_mask[:, s] * t_next + (1 - ar_mask[:, s]) * input[:, s]
188
189
190 ######################################################################
191
192
193 def compute_perplexity(model, task, prompt_len, split="train"):
194     with torch.autograd.no_grad():
195         t = model.training
196         model.eval()
197
198         nb_samples, acc_loss = 0, 0.0
199
200         for input in task.batches(split=split):
201             input = input.to(device)
202             output = eval_mygpt(model, input, prompt_len=prompt_len)
203             if args.noncausal_prompt:
204                 d = input.size(1) // 2
205                 loss = F.cross_entropy(output[:, d:].transpose(1, 2), input[:, d:])
206             else:
207                 loss = F.cross_entropy(output.transpose(1, 2), input)
208             acc_loss += loss.item() * input.size(0)
209             nb_samples += input.size(0)
210
211         model.train(t)
212
213         return math.exp(min(100, acc_loss / nb_samples))
214
215
216 ######################################################################
217
218
219 def oneshot_policy_loss(mazes, output, policies, height, width):
220     masks = (mazes == maze.v_empty).unsqueeze(-1)
221     targets = policies.permute(0, 2, 1) * masks
222     output = output * masks
223     return -(output.log_softmax(-1) * targets).sum() / masks.sum()
224
225
226 def oneshot_trace_loss(mazes, output, policies, height, width):
227     masks = mazes == maze.v_empty
228     targets = maze.stationary_densities(
229         mazes.view(-1, height, width), policies.view(-1, 4, height, width)
230     ).flatten(-2)
231     targets = targets * masks
232     output = output.squeeze(-1) * masks
233     return (output - targets).abs().sum() / masks.sum()
234
235
236 def oneshot(model, learning_rate_scheduler, task):
237     t = model.training
238     model.eval()
239     mazes = task.test_input[:32].clone()
240     mazes[:, task.height * task.width :] = 0
241     output = eval_mygpt(model, mazes, prompt_len=task.height * task.width)
242     output = F.softmax(output, dim=2)
243     print(f"{output.size()=}")
244     proba_path = output[:, task.height * task.width :, 4].reshape(
245         -1, task.height, task.width
246     )
247     mazes = mazes[:, : task.height * task.width].reshape(-1, task.height, task.width)
248     paths = task.test_input[:32, task.height * task.width :].reshape(
249         -1, task.height, task.width
250     )
251     filename = f"oneshot.png"
252     maze.save_image(
253         os.path.join(args.result_dir, filename),
254         mazes=mazes,
255         target_paths=paths,
256         score_paths=proba_path,
257         # score_truth=targets,
258     )
259     log_string(f"wrote {filename}")
260
261
262 def oneshot_old(gpt, learning_rate_scheduler, task):
263     t = gpt.training
264     gpt.eval()
265
266     if args.oneshot_input == "head":
267         dim_in = args.dim_model
268     elif args.oneshot_input == "deep":
269         dim_in = args.dim_model * args.nb_blocks * 2
270     else:
271         raise ValueError(f"{args.oneshot_input=}")
272
273     if args.oneshot_output == "policy":
274         dim_out = 4
275         compute_loss = oneshot_policy_loss
276     elif args.oneshot_output == "trace":
277         dim_out = 1
278         compute_loss = oneshot_trace_loss
279     else:
280         raise ValueError(f"{args.oneshot_output=}")
281
282     model = nn.Sequential(
283         nn.Linear(dim_in, args.dim_model),
284         nn.ReLU(),
285         nn.Linear(args.dim_model, args.dim_model),
286         nn.ReLU(),
287         nn.Linear(args.dim_model, dim_out),
288     ).to(device)
289
290     learning_rate_scheduler.reset()
291
292     for n_epoch in range(args.nb_epochs):
293         learning_rate = learning_rate_scheduler.get_learning_rate()
294         log_string(f"learning_rate {n_epoch} {learning_rate}")
295
296         optimizer = torch.optim.Adam(model.parameters(), lr=learning_rate)
297
298         acc_train_loss, nb_train_samples = 0, 0
299         for mazes, policies in task.policy_batches(split="train"):
300             output_gpt = eval_mygpt(
301                 gpt, mazes, mode=args.oneshot_input, prompt_len=task.height * task.width
302             )
303             output = model(output_gpt)
304
305             loss = compute_loss(mazes, output, policies, task.height, task.width)
306             acc_train_loss += loss.item() * mazes.size(0)
307             nb_train_samples += mazes.size(0)
308
309             optimizer.zero_grad()
310             loss.backward()
311             optimizer.step()
312
313         learning_rate_scheduler.update(n_epoch + 1, acc_train_loss)
314
315         acc_test_loss, nb_test_samples = 0, 0
316         for mazes, policies in task.policy_batches(split="test"):
317             output_gpt = eval_mygpt(
318                 gpt, mazes, mode=args.oneshot_input, prompt_len=task.height * task.width
319             )
320             output = model(output_gpt)
321             loss = compute_loss(mazes, output, policies, task.height, task.width)
322             acc_test_loss += loss.item() * mazes.size(0)
323             nb_test_samples += mazes.size(0)
324
325         log_string(
326             f"diff_ce {n_epoch} train {acc_train_loss/nb_train_samples} test {acc_test_loss/nb_test_samples}"
327         )
328
329         # -------------------
330         mazes = task.test_input[:32, : task.height * task.width]
331         policies = task.test_policies[:32]
332         output_gpt = eval_mygpt(
333             gpt, mazes, mode=args.oneshot_input, prompt_len=task.height * task.width
334         )
335         output = model(output_gpt)
336         if args.oneshot_output == "policy":
337             targets = policies.permute(0, 2, 1)
338             scores = (
339                 (F.one_hot(output.argmax(-1), num_classes=4) * targets).sum(-1) == 0
340             ).float()
341         elif args.oneshot_output == "trace":
342             targets = maze.stationary_densities(
343                 mazes.view(-1, task.height, task.width),
344                 policies.view(-1, 4, task.height, task.width),
345             ).flatten(-2)
346             scores = output
347         else:
348             raise ValueError(f"{args.oneshot_output=}")
349
350         scores = scores.reshape(-1, task.height, task.width)
351         mazes = mazes.reshape(-1, task.height, task.width)
352         targets = targets.reshape(-1, task.height, task.width)
353         filename = (
354             f"oneshot_{args.oneshot_input}_{args.oneshot_output}_{n_epoch:04d}.png"
355         )
356         maze.save_image(
357             os.path.join(args.result_dir, filename),
358             mazes=mazes,
359             score_paths=scores,
360             score_truth=targets,
361         )
362         log_string(f"wrote {filename}")
363
364         # -------------------
365
366     gpt.train(t)
367
368
369 ######################################################################
370
371
372 class LearningRateScheduler:
373     def get_learning_rate(self):
374         pass
375
376     def update(self, nb_finished_epochs, loss):
377         pass
378
379     def reset(self):
380         pass
381
382     def get_state(self):
383         return vars(self)
384
385     def set_state(self, state):
386         print(f"{state=}")
387         for k, v in state.items():
388             setattr(self, k, v)
389
390
391 class StepWiseScheduler(LearningRateScheduler):
392     def __init__(self, schedule):
393         self.nb_finished_epochs = 0
394         self.schedule = schedule
395
396     def get_learning_rate(self):
397         return self.schedule[self.nb_finished_epochs]
398
399     def update(self, nb_finished_epochs, loss):
400         self.nb_finished_epochs = nb_finished_epochs
401
402     def reset(self):
403         self.nb_finished_epochs = 0
404
405     def get_state(self):
406         return {"nb_finished_epochs": self.nb_finished_epochs}
407
408
409 class AutoScheduler(LearningRateScheduler):
410     def __init__(self, learning_rate_init, growth=1.0, degrowth=0.2):
411         self.learning_rate_init = learning_rate_init
412         self.learning_rate = learning_rate_init
413         self.growth = growth
414         self.degrowth = degrowth
415         self.pred_loss = None
416
417     def get_learning_rate(self):
418         return self.learning_rate
419
420     def update(self, nb_finished_epochs, loss):
421         if self.pred_loss is not None:
422             if loss >= self.pred_loss:
423                 self.learning_rate *= self.degrowth
424             else:
425                 self.learning_rate *= self.growth
426         self.pred_loss = loss
427
428     def reset(self):
429         self.learning_rate = self.learning_rate_init
430
431     def get_state(self):
432         return {
433             "learning_rate_init": self.learning_rate_init,
434             "pred_loss": self.pred_loss,
435         }
436
437
438 ######################################################################
439
440
441 class Task:
442     def batches(self, split="train", nb_to_use=-1, desc=None):
443         pass
444
445     def vocabulary_size(self):
446         pass
447
448     def produce_results(self, n_epoch, model):
449         pass
450
451
452 ######################################################################
453
454 import maze
455
456
457 class TaskMaze(Task):
458     def map2seq(self, *m):
459         return torch.cat([x.flatten(1) for x in m], 1)
460
461     def seq2map(self, s):
462         s = s.reshape(s.size(0), -1, self.height, self.width)
463         return (s[:, k] for k in range(s.size(1)))
464
465     def __init__(
466         self,
467         nb_train_samples,
468         nb_test_samples,
469         batch_size,
470         height,
471         width,
472         nb_walls,
473         device=torch.device("cpu"),
474     ):
475         self.batch_size = batch_size
476         self.height = height
477         self.width = width
478         self.device = device
479
480         train_mazes, train_paths, train_policies = maze.create_maze_data(
481             nb_train_samples,
482             height=height,
483             width=width,
484             nb_walls=nb_walls,
485             progress_bar=lambda x: tqdm.tqdm(x, dynamic_ncols=True, desc=f"data-train"),
486         )
487         self.train_input = self.map2seq(train_mazes.to(device), train_paths.to(device))
488         self.train_policies = train_policies.flatten(-2).to(device)
489
490         test_mazes, test_paths, test_policies = maze.create_maze_data(
491             nb_test_samples,
492             height=height,
493             width=width,
494             nb_walls=nb_walls,
495             progress_bar=lambda x: tqdm.tqdm(x, dynamic_ncols=True, desc=f"data-test"),
496         )
497         self.test_input = self.map2seq(test_mazes.to(device), test_paths.to(device))
498         self.test_policies = test_policies.flatten(-2).to(device)
499
500         self.nb_codes = self.train_input.max() + 1
501
502     def batches(self, split="train", nb_to_use=-1, desc=None):
503         assert split in {"train", "test"}
504         input = self.train_input if split == "train" else self.test_input
505         if nb_to_use > 0:
506             input = input[:nb_to_use]
507         if desc is None:
508             desc = f"epoch-{split}"
509         for batch in tqdm.tqdm(
510             input.split(self.batch_size), dynamic_ncols=True, desc=desc
511         ):
512             yield batch
513
514     def policy_batches(self, split="train", nb_to_use=-1, desc=None):
515         assert split in {"train", "test"}
516         input = self.train_input if split == "train" else self.test_input
517         policies = self.train_policies if split == "train" else self.test_policies
518         input = input[:, : self.height * self.width]
519         policies = policies * (input != maze.v_wall)[:, None]
520
521         if nb_to_use > 0:
522             input = input[:nb_to_use]
523             policies = policies[:nb_to_use]
524
525         if desc is None:
526             desc = f"epoch-{split}"
527         for batch in tqdm.tqdm(
528             zip(input.split(self.batch_size), policies.split(self.batch_size)),
529             dynamic_ncols=True,
530             desc=desc,
531         ):
532             yield batch
533
534     def vocabulary_size(self):
535         return self.nb_codes
536
537     def compute_error(self, model, split="train", nb_to_use=-1):
538         nb_total, nb_correct = 0, 0
539         for input in task.batches(split, nb_to_use):
540             result = input.clone()
541             ar_mask = result.new_zeros(result.size())
542             ar_mask[:, self.height * self.width :] = 1
543             result *= 1 - ar_mask
544             x, order = shuffle(result, self.height * self.width)
545             masked_inplace_autoregression(
546                 model, self.batch_size, x, ar_mask, order=order
547             )
548             result = reorder(x, order, reverse=True)
549             mazes, paths = self.seq2map(result)
550             nb_correct += maze.path_correctness(mazes, paths).long().sum()
551             nb_total += mazes.size(0)
552
553         return nb_total, nb_correct
554
555     def produce_results(self, n_epoch, model):
556         with torch.autograd.no_grad():
557             t = model.training
558             model.eval()
559
560             train_nb_total, train_nb_correct = self.compute_error(
561                 model, "train", nb_to_use=1000
562             )
563             log_string(
564                 f"accuracy_train nb_total {train_nb_total} nb_correct {train_nb_correct} accuracy {(100.0*train_nb_correct)/train_nb_total:.02f}%"
565             )
566
567             test_nb_total, test_nb_correct = self.compute_error(
568                 model, "test", nb_to_use=1000
569             )
570             log_string(
571                 f"accuracy_test nb_total {test_nb_total} nb_correct {test_nb_correct} accuracy {(100.0*test_nb_correct)/test_nb_total:.02f}%"
572             )
573
574             input = self.test_input[:32]
575             result = input.clone()
576             ar_mask = result.new_zeros(result.size())
577             ar_mask[:, self.height * self.width :] = 1
578             result *= 1 - ar_mask
579             x, order = shuffle(result, self.height * self.width)
580             masked_inplace_autoregression(
581                 model, self.batch_size, x, ar_mask, order=order
582             )
583             result = reorder(x, order, reverse=True)
584
585             mazes, paths = self.seq2map(input)
586             _, predicted_paths = self.seq2map(result)
587             filename = f"result_{n_epoch:04d}.png"
588             maze.save_image(
589                 os.path.join(args.result_dir, filename),
590                 mazes=mazes,
591                 target_paths=paths,
592                 predicted_paths=predicted_paths,
593                 path_correct=maze.path_correctness(mazes, predicted_paths),
594             )
595             log_string(f"wrote {filename}")
596
597             model.train(t)
598
599
600 ######################################################################
601
602 log_string(f"device {device}")
603
604
605 task = TaskMaze(
606     nb_train_samples=args.nb_train_samples,
607     nb_test_samples=args.nb_test_samples,
608     batch_size=args.batch_size,
609     height=args.maze_height,
610     width=args.maze_width,
611     nb_walls=args.maze_nb_walls,
612     device=device,
613 )
614
615
616 vocabulary_size = task.vocabulary_size()
617
618 log_string(f"vocabulary_size {vocabulary_size}")
619
620 ##############################
621
622
623 def noncausal_prompt_amm_generator(d):
624     q = torch.arange(d)[:, None]
625     k = torch.arange(d)[None, :]
626     s = args.maze_height * args.maze_width
627     return torch.logical_and(q < k, torch.logical_or(q >= s, k >= s))
628     # return q < k
629
630
631 def noncausal_prompt_oneshot_amm_generator(d):
632     q = torch.arange(d)[:, None]
633     k = torch.arange(d)[None, :]
634     s = args.maze_height * args.maze_width
635     return k >= s
636     # return q < k
637
638
639 if args.oneshot:
640     amm_generator = noncausal_prompt_oneshot_amm_generator
641 elif args.noncausal_prompt:
642     amm_generator = noncausal_prompt_amm_generator
643 else:
644     amm_generator = None
645
646 model = mygpt.MyGPT(
647     vocabulary_size=vocabulary_size,
648     dim_model=args.dim_model,
649     dim_keys=args.dim_keys,
650     dim_hidden=args.dim_hidden,
651     nb_heads=args.nb_heads,
652     nb_blocks=args.nb_blocks,
653     causal=True,
654     dropout=args.dropout,
655     amm_generator=amm_generator,
656 )
657
658 model.to(device)
659
660 nb_parameters = sum(p.numel() for p in model.parameters())
661 log_string(f"nb_parameters {nb_parameters} ({int(nb_parameters/1e6)}M)")
662
663 ######################################################################
664
665 if args.learning_rate_schedule == "auto":
666     learning_rate_scheduler = AutoScheduler(args.learning_rate)
667
668 elif args.learning_rate_schedule == "cos":
669     schedule = {}
670     for n_epoch in range(args.nb_epochs):
671         u = n_epoch / args.nb_epochs * math.pi
672         schedule[n_epoch] = args.learning_rate * 0.5 * (1 + math.cos(u))
673     learning_rate_scheduler = StepWiseScheduler(schedule)
674     log_string(f"learning_rate_schedule {schedule}")
675
676 else:
677     u = {
678         int(k): float(v)
679         for k, v in [
680             tuple(x.split(":")) for x in args.learning_rate_schedule.split(",")
681         ]
682     }
683
684     schedule = {}
685     learning_rate = args.learning_rate
686     for n_epoch in range(args.nb_epochs):
687         if n_epoch in u:
688             learning_rate = u[n_epoch]
689         schedule[n_epoch] = learning_rate
690     learning_rate_scheduler = StepWiseScheduler(schedule)
691     log_string(f"learning_rate_schedule {schedule}")
692
693 ######################################################################
694
695 nb_epochs_finished = 0
696
697 if args.no_checkpoint:
698     log_string(f"not trying to load checkpoint.")
699
700 else:
701     try:
702         checkpoint_name = os.path.join(args.result_dir, args.checkpoint_name)
703         checkpoint = torch.load(checkpoint_name)
704         nb_epochs_finished = checkpoint["nb_epochs_finished"]
705         model.load_state_dict(checkpoint["model_state"])
706         learning_rate_scheduler.set_state(checkpoint["learning_rate_scheduler_state"])
707         torch.set_rng_state(checkpoint["rng_state"])
708         if torch.cuda.is_available():
709             torch.cuda.set_rng_state(checkpoint["cuda_rng_state"])
710
711         log_string(f"checkpoint loaded with {nb_epochs_finished} epochs finished.")
712
713     except FileNotFoundError:
714         log_string("starting from scratch.")
715
716     # except:
717     # log_string("error when loading the checkpoint.")
718     # exit(1)
719
720 ######################################################################
721
722 if args.oneshot:
723     oneshot(model, learning_rate_scheduler, task)
724     exit(0)
725
726 ######################################################################
727
728 token_count = 0
729 for input in task.batches(split="train"):
730     token_count += F.one_hot(input, num_classes=task.vocabulary_size()).sum((0, 1))
731 token_probas = token_count / token_count.sum()
732 entropy = -torch.xlogy(token_probas, token_probas).sum()
733 train_set_perplexity = math.exp(entropy)
734
735 ##############################
736
737 if nb_epochs_finished >= args.nb_epochs:
738     n_epoch = nb_epochs_finished
739     train_perplexity = compute_perplexity(
740         model, task, prompt_len=task.height * task.width, split="train"
741     )
742     test_perplexity = compute_perplexity(
743         model, task, prompt_len=task.height * task.width, split="test"
744     )
745
746     log_string(
747         f"perplexity {n_epoch} train_set {train_set_perplexity} train_prediction {train_perplexity} test_prediction {test_perplexity}"
748     )
749
750     task.produce_results(n_epoch, model)
751
752 ##############################
753
754 learning_rate_scheduler.reset()
755
756 for n_epoch in range(nb_epochs_finished, args.nb_epochs):
757     learning_rate = learning_rate_scheduler.get_learning_rate()
758     log_string(f"learning_rate {n_epoch} {learning_rate}")
759
760     if args.optim == "sgd":
761         optimizer = torch.optim.SGD(model.parameters(), lr=learning_rate)
762     elif args.optim == "adam":
763         optimizer = torch.optim.Adam(model.parameters(), lr=learning_rate)
764     elif args.optim == "adamw":
765         optimizer = torch.optim.AdamW(model.parameters(), lr=learning_rate)
766     else:
767         raise ValueError(f"{args.optim=}")
768
769     model.train()
770
771     nb_train_samples, acc_train_loss = 0, 0.0
772
773     for input in task.batches(split="train"):
774         input = input.to(device)
775         output = eval_mygpt(model, input, prompt_len=task.height * task.width)
776         if args.noncausal_prompt:
777             d = input.size(1) // 2
778             loss = F.cross_entropy(output[:, d:].transpose(1, 2), input[:, d:])
779         else:
780             loss = F.cross_entropy(output.transpose(1, 2), input)
781         acc_train_loss += loss.item() * input.size(0)
782         nb_train_samples += input.size(0)
783
784         optimizer.zero_grad()
785         loss.backward()
786         optimizer.step()
787
788     learning_rate_scheduler.update(n_epoch + 1, acc_train_loss)
789
790     train_perplexity = math.exp(min(100, acc_train_loss / nb_train_samples))
791     test_perplexity = compute_perplexity(
792         model, task, prompt_len=task.height * task.width, split="test"
793     )
794
795     log_string(
796         f"perplexity {n_epoch} train_set {train_set_perplexity} train_prediction {train_perplexity} test_prediction {test_perplexity}"
797     )
798
799     task.produce_results(n_epoch, model)
800
801     checkpoint = {
802         "nb_epochs_finished": n_epoch + 1,
803         "model_state": model.state_dict(),
804         "learning_rate_scheduler_state": learning_rate_scheduler.get_state(),
805         "rng_state": torch.get_rng_state(),
806     }
807
808     if torch.cuda.is_available():
809         checkpoint["cuda_rng_state"] = torch.cuda.get_rng_state()
810
811     checkpoint_name = os.path.join(args.result_dir, args.checkpoint_name)
812     torch.save(checkpoint, checkpoint_name)
813     log_string(f"saved checkpoint {checkpoint_name}")
814
815 ######################################################################