X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;ds=inline;f=main.py;h=1ef01e9c510ba9fbb2df269c19809f1f30d639bb;hb=050976a525fee2d3b824350a3058ab7299a2bd3d;hp=11d712a0d6ece85c5c4a3e37022f85d83870b6c7;hpb=8adf0586ee5aeb9fbdf81b78c7ff4b484a9b82ab;p=culture.git diff --git a/main.py b/main.py index 11d712a..1ef01e9 100755 --- a/main.py +++ b/main.py @@ -12,7 +12,13 @@ from torch import nn from torch.nn import functional as F import ffutils -import mygpt, tasks, problems + +import mygpt +import sky, grids, quiz_machine + +import threading + +# world quizzes vs. culture quizzes ###################################################################### @@ -25,28 +31,20 @@ else: ###################################################################### parser = argparse.ArgumentParser( - description="An implementation of GPT with cache.", formatter_class=argparse.ArgumentDefaultsHelpFormatter, ) -parser.add_argument( - "--task", - type=str, - default="world", - help="file, byheart, learnop, guessop, mixing, memory, twotargets, addition, picoclvr, mnist, maze, snake, stack, expr, rpl, grid, qmlp, greed", -) - -parser.add_argument("--log_filename", type=str, default="train.log", help=" ") +parser.add_argument("--log_filename", type=str, default="train.log") parser.add_argument("--result_dir", type=str, default=None) parser.add_argument("--seed", type=int, default=0) -parser.add_argument("--max_percents_of_test_in_train", type=int, default=1) +parser.add_argument("--max_percents_of_test_in_train", type=int, default=-1) ######################################## -parser.add_argument("--nb_epochs", type=int, default=100) +parser.add_argument("--nb_epochs", type=int, default=10000) parser.add_argument("--batch_size", type=int, default=None) @@ -56,11 +54,7 @@ parser.add_argument("--nb_train_samples", type=int, default=None) parser.add_argument("--nb_test_samples", type=int, default=None) -parser.add_argument("--optim", type=str, default="adam") - -parser.add_argument("--learning_rate", type=float, default=1e-4) - -parser.add_argument("--learning_rate_schedule", type=str, default=None) +parser.add_argument("--learning_rate", type=float, default=5e-4) ######################################## @@ -82,245 +76,65 @@ parser.add_argument("--dropout", type=float, default=0.1) parser.add_argument("--deterministic_synthesis", action="store_true", default=False) -############################## -# filetask - -parser.add_argument("--filetask_train_file", type=str, default=None) - -parser.add_argument("--filetask_test_file", type=str, default=None) - -############################## -# rpl options - -parser.add_argument("--rpl_nb_starting_values", type=int, default=3) - -parser.add_argument("--rpl_max_input", type=int, default=9) - -parser.add_argument("--rpl_prog_len", type=int, default=8) - -parser.add_argument("--rpl_nb_runs", type=int, default=5) - -parser.add_argument("--rpl_no_prog", action="store_true", default=False) - -############################## -# grid options - -parser.add_argument("--grid_size", type=int, default=6) - -parser.add_argument("--grid_fraction_play", type=float, default=0) - -############################## -# picoclvr options - -parser.add_argument("--picoclvr_nb_colors", type=int, default=5) - -parser.add_argument("--picoclvr_height", type=int, default=12) - -parser.add_argument("--picoclvr_width", type=int, default=16) - -parser.add_argument("--picocvlr_prune_properties", type=str, default="none") - -############################## -# Maze options - -parser.add_argument("--maze_height", type=int, default=13) - -parser.add_argument("--maze_width", type=int, default=21) - -parser.add_argument("--maze_nb_walls", type=int, default=15) - -############################## -# Snake options - -parser.add_argument("--snake_height", type=int, default=9) - -parser.add_argument("--snake_width", type=int, default=12) - -parser.add_argument("--snake_nb_colors", type=int, default=5) - -parser.add_argument("--snake_length", type=int, default=200) - -############################## -# ByHeart options - -parser.add_argument("--byheart_separation", type=int, default=1) - -############################## -# Stack options - -parser.add_argument("--stack_nb_steps", type=int, default=100) +parser.add_argument("--problem", type=str, default="grids") -parser.add_argument("--stack_nb_stacks", type=int, default=3) +parser.add_argument("--nb_threads", type=int, default=1) -parser.add_argument("--stack_nb_digits", type=int, default=3) +parser.add_argument("--nb_gpus", type=int, default=1) -parser.add_argument("--stack_fraction_values_for_train", type=float, default=None) +parser.add_argument("--nb_gpts", type=int, default=5) -############################## -# Expr options +parser.add_argument("--min_to_validate", type=int, default=None) -parser.add_argument("--expr_nb_variables", type=int, default=5) +parser.add_argument("--max_to_validate", type=int, default=None) -parser.add_argument("--expr_sequence_length", type=int, default=40) +parser.add_argument("--accuracy_to_make_c_quizzes", type=float, default=0.975) -parser.add_argument("--expr_operand_max", type=int, default=9) +parser.add_argument("--generation_temperature", type=float, default=2.0) -parser.add_argument("--expr_result_max", type=int, default=99) +parser.add_argument("--deterministic_validation", action="store_true", default=False) -parser.add_argument("--expr_input_file", type=str, default=None) +parser.add_argument("--bidirectional_validation", action="store_true", default=False) -############################## -# Mixing +parser.add_argument("--dirty_debug", action="store_true", default=False) -parser.add_argument("--mixing_hard", action="store_true", default=False) - -parser.add_argument("--mixing_deterministic_start", action="store_true", default=False) - -############################## -# greed options +###################################################################### -parser.add_argument("--greed_height", type=int, default=5) +parser.add_argument("--sky_height", type=int, default=6) -parser.add_argument("--greed_width", type=int, default=7) +parser.add_argument("--sky_width", type=int, default=8) -parser.add_argument("--greed_T", type=int, default=25) +parser.add_argument("--sky_nb_birds", type=int, default=3) -parser.add_argument("--greed_nb_walls", type=int, default=5) +parser.add_argument("--sky_nb_iterations", type=int, default=2) -parser.add_argument("--greed_nb_coins", type=int, default=2) +parser.add_argument("--sky_speed", type=int, default=3) ###################################################################### args = parser.parse_args() -assert args.picocvlr_prune_properties in {"none", "train+eval", "eval"} +if args.min_to_validate is None: + args.min_to_validate = args.nb_gpts - 1 + +if args.max_to_validate is None: + args.max_to_validate = args.nb_gpts - 1 if args.result_dir is None: - args.result_dir = f"results_{args.task}" + args.result_dir = f"results_culture" ###################################################################### -default_task_args = { - "world": { - "model": "37M", - "batch_size": 100, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "file": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "addition": { - "model": "352M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "byheart": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 50000, - "nb_test_samples": 10000, - }, - "expr": { - "model": "352M", - "batch_size": 25, - "nb_train_samples": 2500000, - "nb_test_samples": 10000, - }, - "grid": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "qmlp": { - "model": "37M", - "batch_size": 10, - "nb_train_samples": 100000, - "nb_test_samples": 1000, - }, - "guessop": { - "model": "352M", - "batch_size": 25, - "nb_train_samples": 1000000, - "nb_test_samples": 10000, - }, - "learnop": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 50000, - "nb_test_samples": 10000, - }, - "maze": { - "model": "37M", - "batch_size": 5, - "nb_train_samples": 100000, - "nb_test_samples": 10000, - }, - "picoclvr": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "rpl": { - "model": "352M", - "batch_size": 5, - "nb_train_samples": 2500000, - "nb_test_samples": 10000, - }, - "snake": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "stack": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 100000, - "nb_test_samples": 1000, - }, - "twotargets": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 50000, - "nb_test_samples": 10000, - }, - "memory": { - "model": "37M", - "batch_size": 100, - "nb_train_samples": 25000, - "nb_test_samples": 1000, - }, - "mixing": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 250000, - "nb_test_samples": 10000, - }, - "mnist": { - "model": "37M", - "batch_size": 10, - "nb_train_samples": 60000, - "nb_test_samples": 10000, - }, - "greed": { - "model": "37M", - "batch_size": 25, - "nb_train_samples": 25000, - "nb_test_samples": 10000, - }, +default_args = { + "model": "37M", + "batch_size": 25, + "nb_train_samples": 100000, + "nb_test_samples": 10000, } -if args.task in default_task_args: - for k, v in default_task_args[args.task].items(): - if getattr(args, k) is None: - setattr(args, k, v) +for k, v in default_args.items(): + if getattr(args, k) is None: + setattr(args, k, v) ###################################################################### @@ -409,24 +223,9 @@ for n in vars(args): ###################################################################### - -def picoclvr_pruner_horizontal_green(p): - return not ("green" in p and ("left" in p or "right" in p)) - - -picoclvr_pruner_train = ( - picoclvr_pruner_horizontal_green - if args.picocvlr_prune_properties in {"train+eval"} - else None -) - -picoclvr_pruner_eval = ( - (lambda p: not picoclvr_pruner_horizontal_green(p)) - if args.picocvlr_prune_properties in {"train+eval", "eval"} - else None -) - -###################################################################### +if args.dirty_debug: + args.nb_train_samples = 2500 + args.nb_test_samples = 100 if args.physical_batch_size is None: args.physical_batch_size = args.batch_size @@ -436,330 +235,99 @@ else: assert args.nb_train_samples % args.batch_size == 0 assert args.nb_test_samples % args.batch_size == 0 -if args.task == "file": - assert ( - args.filetask_train_file is not None and args.filetask_test_file is not None - ), "You have to specify the task train and test files" - task = tasks.TaskFromFile( - args.filetask_train_file, - args.filetask_test_file, - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - shuffle=True, - device=device, - ) - args.max_percents_of_test_in_train = 0 - -elif args.task == "byheart": - task = tasks.SandBox( - problem=problems.ProblemByHeart(separation=args.byheart_separation), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - args.max_percents_of_test_in_train = -1 - -elif args.task == "world": - task = tasks.World( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - result_dir=args.result_dir, - logger=log_string, - device=device, +if args.problem == "sky": + problem = sky.Sky( + height=args.sky_height, + width=args.sky_width, + nb_birds=args.sky_nb_birds, + nb_iterations=args.sky_nb_iterations, + speed=args.sky_speed, + max_nb_cached_chunks=args.nb_gpus * args.nb_train_samples // 100, + chunk_size=100, + nb_threads=args.nb_threads, ) - args.max_percents_of_test_in_train = -1 - -elif args.task == "learnop": - task = tasks.SandBox( - problem=problems.ProblemLearnOperator(), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, + back_accuracy = False +elif args.problem == "grids": + problem = grids.Grids( + max_nb_cached_chunks=args.nb_gpus * args.nb_train_samples // 100, + chunk_size=100, + nb_threads=args.nb_threads, ) - - -elif args.task == "guessop": - task = tasks.SandBox( - problem=problems.ProblemGuessOperator(), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - - -elif args.task == "twotargets": - task = tasks.SandBox( - problem=problems.ProblemTwoTargets(), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - -elif args.task == "memory": - task = tasks.SandBox( - problem=problems.ProblemMemory(), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - -elif args.task == "mixing": - task = tasks.SandBox( - problem=problems.ProblemMixing( - hard=args.mixing_hard, random_start=not args.mixing_deterministic_start - ), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - -elif args.task == "addition": - task = tasks.SandBox( - problem=problems.ProblemAddition(), - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - device=device, - ) - -elif args.task == "picoclvr": - task = tasks.PicoCLVR( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - height=args.picoclvr_height, - width=args.picoclvr_width, - nb_colors=args.picoclvr_nb_colors, - logger=log_string, - device=device, - pruner_train=picoclvr_pruner_train, - pruner_eval=picoclvr_pruner_eval, - ) - -elif args.task == "mnist": - task = tasks.MNIST( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - device=device, - ) - -elif args.task == "maze": - task = tasks.Maze( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - height=args.maze_height, - width=args.maze_width, - nb_walls=args.maze_nb_walls, - device="cpu", - ) - -elif args.task == "snake": - task = tasks.Snake( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - height=args.snake_height, - width=args.snake_width, - nb_colors=args.snake_nb_colors, - length=args.snake_length, - prompt_length=args.snake_length // 2, - device=device, - ) - -elif args.task == "stack": - task = tasks.Stack( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - logger=log_string, - nb_steps=args.stack_nb_steps, - nb_stacks=args.stack_nb_stacks, - nb_digits=args.stack_nb_digits, - fraction_values_for_train=args.stack_fraction_values_for_train, - device=device, - ) - -elif args.task == "expr": - task = tasks.Expr( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - nb_variables=args.expr_nb_variables, - sequence_length=args.expr_sequence_length, - operand_max=args.expr_operand_max, - result_max=args.expr_result_max, - batch_size=args.physical_batch_size, - device=device, - ) - -elif args.task == "rpl": - task = tasks.RPL( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - nb_starting_values=args.rpl_nb_starting_values, - max_input=args.rpl_max_input, - prog_len=args.rpl_prog_len, - nb_runs=args.rpl_nb_runs, - no_prog=args.rpl_no_prog, - logger=log_string, - device=device, - ) - -elif args.task == "grid": - task = tasks.Grid( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - size=args.grid_size, - fraction_play=args.grid_fraction_play, - logger=log_string, - device=device, - ) - -elif args.task == "qmlp": - task = tasks.QMLP( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - result_dir=args.result_dir, - logger=log_string, - device=device, - ) - -elif args.task == "greed": - task = tasks.Greed( - nb_train_samples=args.nb_train_samples, - nb_test_samples=args.nb_test_samples, - batch_size=args.physical_batch_size, - height=args.greed_height, - width=args.greed_width, - T=args.greed_T, - nb_walls=args.greed_nb_walls, - nb_coins=args.greed_nb_coins, - logger=log_string, - device=device, - ) - + back_accuracy = True else: - raise ValueError(f"Unknown task {args.task}") + raise ValueError + +quiz_machine = quiz_machine.QuizMachine( + problem=problem, + nb_train_samples=args.nb_train_samples, + nb_test_samples=args.nb_test_samples, + back_accuracy=back_accuracy, + batch_size=args.physical_batch_size, + result_dir=args.result_dir, + logger=log_string, + device=device, +) ###################################################################### log_string(f"device {device}") -vocabulary_size = task.vocabulary_size() +vocabulary_size = quiz_machine.vocabulary_size() log_string(f"vocabulary_size {vocabulary_size}") ###################################################################### -# Compute the entropy of the training tokens - -token_count = 0 -for input in task.batches(split="train", desc="train-entropy"): - token_count += F.one_hot(input, num_classes=task.vocabulary_size()).sum((0, 1)) -token_probas = token_count / token_count.sum() -entropy = -torch.xlogy(token_probas, token_probas).sum() -train_set_perplexity = math.exp(entropy) ###################################################################### -# A bit of paranoia never hurts -if args.max_percents_of_test_in_train >= 0: - def subsets_as_tuples(batches, cs): - s = set() - for batch in batches: - for x in batch: - s.add(tuple([v.item() for v in x])) - if len(s) == cs: - yield s - s = set() - yield s +def run_tests(model, quiz_machine, deterministic_synthesis, local_device=None): + if local_device is None: + local_device = device - nb_test, nb_in_train = 0, 0 - for test_subset in subsets_as_tuples( - task.batches(split="test", desc="test-check"), 25000 - ): - in_train = set() - for train_subset in subsets_as_tuples( - task.batches(split="train", desc="train-check"), 25000 - ): - in_train.update(test_subset.intersection(train_subset)) - nb_in_train += len(in_train) - nb_test += len(test_subset) + with torch.autograd.no_grad(): + model.eval().to(local_device) - log_string( - f"data_check {nb_in_train*100/nb_test:.02f}% ({nb_in_train}/{nb_test}) of test samples are in the train set" - ) + nb_test_samples, acc_test_loss = 0, 0.0 + nb_samples_accumulated = 0 - assert ( - nb_in_train <= args.max_percents_of_test_in_train * nb_test / 100 - ), f"More than {args.max_percents_of_test_in_train}% of test samples are in the train set" + for input in quiz_machine.batches(model, split="test"): + input = input.to(local_device) + + bs = model(mygpt.BracketedSequence(input)) + output = bs.x -############################## + loss = F.cross_entropy(output.transpose(1, 2), input) -if args.learning_rate_schedule == "cos": - learning_rate_schedule = {} - for n_epoch in range(args.nb_epochs): - u = n_epoch / args.nb_epochs * math.pi - learning_rate_schedule[n_epoch] = args.learning_rate * 0.5 * (1 + math.cos(u)) -else: - if args.learning_rate_schedule is not None: - u = { - int(k): float(v) - for k, v in [ - tuple(x.split(":")) for x in args.learning_rate_schedule.split(",") - ] - } - else: - u = {} - - learning_rate_schedule = {} - learning_rate = args.learning_rate - for n_epoch in range(args.nb_epochs): - if n_epoch in u: - learning_rate = u[n_epoch] - learning_rate_schedule[n_epoch] = learning_rate - -log_string(f"learning_rate_schedule {learning_rate_schedule}") + acc_test_loss += loss.item() * input.size(0) -###################################################################### + nb_test_samples += input.size(0) + + test_perplexity = math.exp(min(100, acc_test_loss / nb_test_samples)) + + log_string(f"test_perplexity {n_epoch} {test_perplexity}") + + model.main_test_accuracy = quiz_machine.produce_results( + n_epoch=n_epoch, + model=model, + result_dir=args.result_dir, + deterministic_synthesis=deterministic_synthesis, + ) -def one_epoch(model, task): - if args.optim == "sgd": - optimizer = torch.optim.SGD(model.parameters(), lr=args.learning_rate) - elif args.optim == "adam": - optimizer = torch.optim.Adam(model.parameters(), lr=args.learning_rate) - elif args.optim == "adamw": - optimizer = torch.optim.AdamW(model.parameters(), lr=args.learning_rate) - else: - raise ValueError(f"Unknown optimizer {args.optim}.") +def one_epoch(model, quiz_machine, local_device=None): + if local_device is None: + local_device = device - model.train() + optimizer = torch.optim.Adam(model.parameters(), lr=args.learning_rate) + + model.to(local_device).train() nb_train_samples, acc_train_loss = 0, 0.0 - for input in task.batches(split="train"): - input = input.to(device) + for input in quiz_machine.batches(model, split="train"): + input = input.to(local_device) if nb_train_samples % args.batch_size == 0: optimizer.zero_grad() @@ -779,88 +347,207 @@ def one_epoch(model, task): log_string(f"train_perplexity {n_epoch} {train_perplexity}") + run_tests(model, quiz_machine, deterministic_synthesis=False) + + model.TRAINING_LOCK.release() + ###################################################################### -def run_tests(model, task, deterministic_synthesis): - with torch.autograd.no_grad(): - model.eval() +def standard_validity(logproba): + l = logproba.sort(dim=-1).values + return (l[:, 0] < math.log(0.5)) & (l[:, 1] > math.log(0.99)) + # warnings.warn("TEST!!!", RuntimeWarning) + # print(l.exp()) + # return (l[:, 0] < math.log(0.99)) - nb_test_samples, acc_test_loss = 0, 0.0 - nb_samples_accumulated = 0 - for input in task.batches(split="test"): - input = input.to(device) +def valid_c_quizzes(recorded, criteria): + result = [q[criteria(lp)] for q, lp in recorded] + return torch.cat(result, dim=0) if len(result) > 0 else torch.tensor([]) - bs = model(mygpt.BracketedSequence(input)) - output = bs.x - loss = F.cross_entropy(output.transpose(1, 2), input) +###################################################################### - acc_test_loss += loss.item() * input.size(0) - nb_test_samples += input.size(0) +def create_c_quizzes( + models, + quiz_machine, + nb_for_train=1000, + nb_for_test=100, +): + quizzes_and_logproba_records = [] - main_test_accuracy = task.produce_results( - n_epoch=n_epoch, - model=model, - result_dir=args.result_dir, - logger=log_string, - deterministic_synthesis=deterministic_synthesis, - ) + nb_to_create = nb_for_train + nb_for_test - test_perplexity = math.exp(min(100, acc_test_loss / nb_test_samples)) + # ------------------------------------------------------------ - log_string(f"test_perplexity {n_epoch} {test_perplexity}") + file_name = os.path.join(args.result_dir, f"culture_c_quiz_{n_epoch:04d}_logp.dat") + + with open(file_name, "w") as logp_file: + while ( + valid_c_quizzes(quizzes_and_logproba_records, standard_validity).size(0) + < nb_to_create + ): + # Select a model at random to generate the new quizzes + + model_for_generation = models[torch.randint(len(models), (1,))] + + c_quizzes = quiz_machine.generate_quizzes( + nb_to_create, + model_for_generation=model_for_generation, + temperature=args.generation_temperature, + ) + + c_quizzes = c_quizzes[quiz_machine.non_trivial(c_quizzes)] + + if c_quizzes.size(0) > 0: + logproba = quiz_machine.logproba_of_solutions(models, c_quizzes) + for l in logproba: + s = " ".join([str(x.item()) for x in l]) + logp_file.write(s + "\n") + quizzes_and_logproba_records.append((c_quizzes, logproba)) + + nb_validated = valid_c_quizzes( + quizzes_and_logproba_records, standard_validity + ).size(0) - model.main_test_accuracy = main_test_accuracy + log_string( + f"keep c_quizzes model {model_for_generation.id} nb_accumulated {nb_validated} / {nb_to_create}" + ) + + # store the new c_quizzes which have been validated + + new_c_quizzes = valid_c_quizzes(quizzes_and_logproba_records, standard_validity) + + quiz_machine.reverse_random_half_in_place(new_c_quizzes) + + quiz_machine.store_c_quizzes(new_c_quizzes[:nb_for_train], for_train=True) + quiz_machine.store_c_quizzes(new_c_quizzes[nb_for_train:], for_train=False) + + # save a bunch of images to investigate what quizzes with a + # certain nb of correct predictions look like + + q = new_c_quizzes[:72] + + if q.size(0) > 0: + quiz_machine.save_quizzes(args.result_dir, f"culture_c_quiz_{n_epoch:04d}", q) ###################################################################### -def create_quizzes( - model, - other_models, - task, +def create_c_quizzes_( + models, + quiz_machine, nb_for_train=1000, nb_for_test=100, ): - kept = [] + quizzes_and_nb_correct_records = [] - while sum([x.size(0) for x in kept]) < nb_for_train + nb_for_test: - new_quizzes, nb_correct = task.create_new_quizzes( - n_epoch=n_epoch, - result_dir=args.result_dir, - logger=log_string, - nb=4 * (nb_for_train + nb_for_test), - model=model, - other_models=other_models, - ) + nb_to_create = nb_for_train + nb_for_test - to_keep = new_quizzes[nb_correct == len(other_models) - 1] - log_string(f"keep {to_keep.size(0)} quizzes") - kept.append(to_keep) + # ------------------------------------------------------------ - new_quizzes = torch.cat(kept, dim=0)[: nb_for_train + nb_for_test] + standard_validity = lambda nb_correct: (nb_correct >= args.min_to_validate) & ( + nb_correct <= args.max_to_validate + ) - task.store_new_quizzes(new_quizzes[:nb_for_train], for_train=True) - task.store_new_quizzes(new_quizzes[nb_for_train:], for_train=False) + file_name = os.path.join(args.result_dir, f"culture_c_quiz_{n_epoch:04d}_logp.dat") - task.save_image( - new_quizzes[:96], - args.result_dir, - f"world_new_{n_epoch:04d}.png", - log_string, - ) + with open(file_name, "w") as logp_file: + while ( + valid_c_quizzes(quizzes_and_nb_correct_records, standard_validity).size(0) + < nb_to_create + ): + # Select a model at random to generate the new quizzes + + model_for_generation = models[torch.randint(len(models), (1,))] + + c_quizzes = quiz_machine.generate_quizzes( + nb_to_create, + model_for_generation=model_for_generation, + temperature=args.generation_temperature, + ) + + # if args.prediction_correctness: + + # else: + # logproba = quiz_machine.new(quiz_machine.size(0), len(models)) + # for q,l in zip(quizzes.split(args.batch_size), logits.split(args.batch_size)): + # for model in models: + # l[...] = F.cross_entropy(model(q)) + + c_quizzes = c_quizzes[quiz_machine.non_trivial(c_quizzes)] + + if c_quizzes.size(0) > 0: + nb_correct, seq_logproba = quiz_machine.compute_correctness( + c_quizzes, + models, + bidirectional_validation=args.bidirectional_validation, + deterministic_validation=args.deterministic_validation, + ) + + for n, l in zip(nb_correct, seq_logproba): + s = " ".join([str(x.item()) for x in l]) + logp_file.write(f"{n} {s}\n") + + if args.dirty_debug: + nb_correct = torch.randint( + len(models) + 1, nb_correct.size(), device=c_quizzes.device + ) + + quizzes_and_nb_correct_records.append((c_quizzes, nb_correct)) + + nv = F.one_hot(nb_correct, num_classes=len(models) + 1).sum(0) + nv = " ".join([str(x.item()) for x in nv]) + + nb_validated = valid_c_quizzes( + quizzes_and_nb_correct_records, standard_validity + ).size(0) + + log_string( + f"keep c_quizzes model {model_for_generation.id} kept {nv} nb_accumulated {nb_validated} / {nb_to_create}" + ) + + # store the new c_quizzes which have been validated + + new_c_quizzes = valid_c_quizzes(quizzes_and_nb_correct_records, standard_validity) + + quiz_machine.reverse_random_half_in_place(new_c_quizzes) + + quiz_machine.store_c_quizzes(new_c_quizzes[:nb_for_train], for_train=True) + quiz_machine.store_c_quizzes(new_c_quizzes[nb_for_train:], for_train=False) + + # save a bunch of images to investigate what quizzes with a + # certain nb of correct predictions look like + + for n in range(len(models) + 1): + s = ( + "_validated" + if n >= args.min_to_validate and n <= args.max_to_validate + else "" + ) + + q = valid_c_quizzes( + quizzes_and_nb_correct_records, criteria=lambda nb_correct: nb_correct == n + )[:72] + + quiz_machine.reverse_random_half_in_place(q) + + if q.size(0) > 0: + quiz_machine.save_quizzes( + args.result_dir, f"culture_c_quiz_{n_epoch:04d}_N{n}{s}", q + ) ###################################################################### models = [] -for k in range(5): +for k in range(args.nb_gpts): + log_string(f"creating model {k} and its w_quizzes") model = mygpt.MyGPT( vocabulary_size=vocabulary_size, dim_model=args.dim_model, @@ -874,6 +561,16 @@ for k in range(5): model.main_test_accuracy = 0.0 model.id = k + model.TRAINING_LOCK = threading.Lock() + + model.train_w_quizzes = quiz_machine.generate_token_sequences( + args.nb_train_samples + ).to(device) + quiz_machine.reverse_random_half_in_place(model.train_w_quizzes) + model.test_w_quizzes = quiz_machine.generate_token_sequences( + args.nb_test_samples + ).to(device) + quiz_machine.reverse_random_half_in_place(model.test_w_quizzes) models.append(model) @@ -883,36 +580,121 @@ log_string(f"nb_parameters {nb_parameters} ({int(nb_parameters/1e6)}M)") ###################################################################### -accuracy_to_make_quizzes = 0.975 +# Compute the entropy of the training tokens -for n_epoch in range(args.nb_epochs): - models.sort(key=lambda model: model.main_test_accuracy) +token_count = 0 +for input in quiz_machine.batches(models[0], split="train", desc="train-entropy"): + token_count += F.one_hot(input, num_classes=quiz_machine.vocabulary_size()).sum( + (0, 1) + ) +token_probas = token_count / token_count.sum() +entropy = -torch.xlogy(token_probas, token_probas).sum() +train_set_perplexity = math.exp(entropy) - model = models[0] +###################################################################### +# A bit of paranoia never hurts + +if args.max_percents_of_test_in_train >= 0: + + def subsets_as_tuples(batches, cs): + s = set() + for batch in batches: + for x in batch: + s.add(tuple([v.item() for v in x])) + if len(s) == cs: + yield s + s = set() + yield s + + nb_test, nb_in_train = 0, 0 + for test_subset in subsets_as_tuples( + quiz_machine.batches(models[0], split="test", desc="test-check"), 25000 + ): + in_train = set() + for train_subset in subsets_as_tuples( + quiz_machine.batches(models[0], split="train", desc="train-check"), 25000 + ): + in_train.update(test_subset.intersection(train_subset)) + nb_in_train += len(in_train) + nb_test += len(test_subset) log_string( - f"training model {model.id} main_test_accuracy {model.main_test_accuracy}" + f"data_check {nb_in_train*100/nb_test:.02f}% ({nb_in_train}/{nb_test}) of test samples are in the train set" ) - one_epoch(model, task) + assert ( + nb_in_train <= args.max_percents_of_test_in_train * nb_test / 100 + ), f"More than {args.max_percents_of_test_in_train}% of test samples are in the train set" + +###################################################################### + +nb_new_c_quizzes_for_train = args.nb_train_samples // 50 +nb_new_c_quizzes_for_test = args.nb_test_samples // 50 + +log_string( + f"nb_new_c_quizzes_for_train {nb_new_c_quizzes_for_train} nb_new_c_quizzes_for_test {nb_new_c_quizzes_for_test}" +) + +###################################################################### + +if args.dirty_debug: + args.accuracy_to_make_c_quizzes = 0.0 + args.nb_gpts = 2 + nb_new_c_quizzes_for_train = 100 + nb_new_c_quizzes_for_test = 10 + +###################################################################### + +for n_epoch in range(args.nb_epochs): + log_string(f"--- epoch {n_epoch} ----------------------------------------") + + cta = " ".join([f"{float(m.main_test_accuracy):.04f}" for m in models]) + log_string(f"current_test_accuracies {cta}") + + ################################################## + # Select, improve, and eval the worst model + + ranked_models = sorted(models, key=lambda m: float(m.main_test_accuracy)) + + weakest_models = ranked_models[: args.nb_gpus] + + for gpu_id, model in enumerate(weakest_models): + model.TRAINING_LOCK.acquire() + + log_string( + f"training model {model.id} main_test_accuracy {model.main_test_accuracy}" + ) + + threading.Thread( + target=one_epoch, daemon=True, args=(model, quiz_machine, f"cuda:{gpu_id}") + ).start() + + for model in weakest_models: + model.TRAINING_LOCK.acquire() + model.TRAINING_LOCK.release() + + ################################################## + # Replace a fraction of the w_quizzes with fresh ones log_string( - f"train_set_composition world {task.nb_batch_samples_world} quizzes {task.nb_batch_samples_quizzes}" + f"cache_w_quizzes contains {quiz_machine.problem.nb_cached_quizzes()} quizzes" ) - run_tests(model, task, deterministic_synthesis=False) + # Renew entirely the train set - if model.main_test_accuracy >= accuracy_to_make_quizzes: - other_models = models.copy() - other_models.remove(model) + for model in weakest_models: + quiz_machine.renew_w_quizzes(model, args.nb_train_samples) - create_quizzes( - model, - other_models, - task, - nb_for_train=1000, - nb_for_test=100, - ) + ################################################## + # If all the models are good enough, generate new quizzes and + # re-compute the test errors + if min([m.main_test_accuracy for m in models]) >= args.accuracy_to_make_c_quizzes: + create_c_quizzes( + models, + quiz_machine, + nb_for_train=nb_new_c_quizzes_for_train, + nb_for_test=nb_new_c_quizzes_for_test, + ) ######################################################################