示例#1
0
def main(args):
    # --- CONFIG
    device = torch.device(f"cuda:{args.cuda}" if torch.cuda.is_available()
                          and args.cuda >= 0 else "cpu")
    # ---------

    # --- TRANSFORMATIONS
    train_transform = transforms.Compose([
        RandomCrop(28, padding=4),
        ToTensor(),
        transforms.Normalize((0.1307, ), (0.3081, )),
    ])
    test_transform = transforms.Compose(
        [ToTensor(), transforms.Normalize((0.1307, ), (0.3081, ))])
    # ---------

    # --- SCENARIO CREATION
    mnist_train = MNIST(
        root=expanduser("~") + "/.avalanche/data/mnist/",
        train=True,
        download=True,
        transform=train_transform,
    )
    mnist_test = MNIST(
        root=expanduser("~") + "/.avalanche/data/mnist/",
        train=False,
        download=True,
        transform=test_transform,
    )
    scenario = nc_benchmark(mnist_train,
                            mnist_test,
                            5,
                            task_labels=False,
                            seed=1234)
    # ---------

    # MODEL CREATION
    model = SimpleMLP(num_classes=scenario.n_classes)

    interactive_logger = InteractiveLogger()
    wandb_logger = WandBLogger(project_name=args.project,
                               run_name=args.run,
                               config=vars(args))

    eval_plugin = EvaluationPlugin(
        accuracy_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        loss_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        forgetting_metrics(experience=True, stream=True),
        confusion_matrix_metrics(stream=True,
                                 wandb=True,
                                 class_names=[str(i) for i in range(10)]),
        cpu_usage_metrics(minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        timing_metrics(minibatch=True,
                       epoch=True,
                       experience=True,
                       stream=True),
        ram_usage_metrics(every=0.5,
                          minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        gpu_usage_metrics(
            args.cuda,
            every=0.5,
            minibatch=True,
            epoch=True,
            experience=True,
            stream=True,
        ),
        disk_usage_metrics(minibatch=True,
                           epoch=True,
                           experience=True,
                           stream=True),
        MAC_metrics(minibatch=True, epoch=True, experience=True),
        loggers=[interactive_logger, wandb_logger],
    )

    # CREATE THE STRATEGY INSTANCE (NAIVE)
    cl_strategy = Naive(
        model,
        SGD(model.parameters(), lr=0.001, momentum=0.9),
        CrossEntropyLoss(),
        train_mb_size=100,
        train_epochs=4,
        eval_mb_size=100,
        device=device,
        evaluator=eval_plugin,
    )

    # TRAINING LOOP
    print("Starting experiment...")
    results = []
    for experience in scenario.train_stream:
        print("Start of experience: ", experience.current_experience)
        print("Current Classes: ", experience.classes_in_this_experience)

        cl_strategy.train(experience)
        print("Training completed")

        print("Computing accuracy on the whole test set")
        results.append(cl_strategy.eval(scenario.test_stream))
示例#2
0
def main(args):
    # --- CONFIG
    device = torch.device(f"cuda:{args.cuda}" if torch.cuda.is_available()
                          and args.cuda >= 0 else "cpu")
    # ---------

    # --- TRANSFORMATIONS
    train_transform = transforms.Compose([
        RandomCrop(28, padding=4),
        ToTensor(),
        transforms.Normalize((0.1307, ), (0.3081, ))
    ])
    test_transform = transforms.Compose(
        [ToTensor(), transforms.Normalize((0.1307, ), (0.3081, ))])
    # ---------

    # --- SCENARIO CREATION
    mnist_train = MNIST(root=expanduser("~") + "/.avalanche/data/mnist/",
                        train=True,
                        download=True,
                        transform=train_transform)
    mnist_test = MNIST(root=expanduser("~") + "/.avalanche/data/mnist/",
                       train=False,
                       download=True,
                       transform=test_transform)
    scenario = nc_benchmark(mnist_train,
                            mnist_test,
                            5,
                            task_labels=False,
                            seed=1234)
    # ---------

    # MODEL CREATION
    model = SimpleMLP(num_classes=scenario.n_classes)

    # DEFINE THE EVALUATION PLUGIN AND LOGGER
    # The evaluation plugin manages the metrics computation.
    # It takes as argument a list of metrics and a list of loggers.
    # The evaluation plugin calls the loggers to serialize the metrics
    # and save them in persistent memory or print them in the standard output.

    # log to text file
    text_logger = TextLogger(open('log.txt', 'a'))

    # print to stdout
    interactive_logger = InteractiveLogger()

    csv_logger = CSVLogger()

    eval_plugin = EvaluationPlugin(
        accuracy_metrics(minibatch=True,
                         epoch=True,
                         epoch_running=True,
                         experience=True,
                         stream=True),
        loss_metrics(minibatch=True,
                     epoch=True,
                     epoch_running=True,
                     experience=True,
                     stream=True),
        forgetting_metrics(experience=True, stream=True),
        bwt_metrics(experience=True, stream=True),
        forward_transfer_metrics(experience=True, stream=True),
        cpu_usage_metrics(minibatch=True,
                          epoch=True,
                          epoch_running=True,
                          experience=True,
                          stream=True),
        timing_metrics(minibatch=True,
                       epoch=True,
                       epoch_running=True,
                       experience=True,
                       stream=True),
        ram_usage_metrics(every=0.5,
                          minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        gpu_usage_metrics(args.cuda,
                          every=0.5,
                          minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        disk_usage_metrics(minibatch=True,
                           epoch=True,
                           experience=True,
                           stream=True),
        MAC_metrics(minibatch=True, epoch=True, experience=True),
        loggers=[interactive_logger, text_logger, csv_logger],
        collect_all=True)  # collect all metrics (set to True by default)

    # CREATE THE STRATEGY INSTANCE (NAIVE)
    cl_strategy = Naive(model,
                        SGD(model.parameters(), lr=0.001, momentum=0.9),
                        CrossEntropyLoss(),
                        train_mb_size=500,
                        train_epochs=1,
                        eval_mb_size=100,
                        device=device,
                        evaluator=eval_plugin,
                        eval_every=1)

    # TRAINING LOOP
    print('Starting experiment...')
    results = []
    for i, experience in enumerate(scenario.train_stream):
        print("Start of experience: ", experience.current_experience)
        print("Current Classes: ", experience.classes_in_this_experience)

        # train returns a dictionary containing last recorded value
        # for each metric.
        res = cl_strategy.train(experience,
                                eval_streams=[scenario.test_stream])
        print('Training completed')

        print('Computing accuracy on the whole test set')
        # test returns a dictionary with the last metric collected during
        # evaluation on that stream
        results.append(cl_strategy.eval(scenario.test_stream))

    print(f"Test metrics:\n{results}")

    # Dict with all the metric curves,
    # only available when `collect_all` is True.
    # Each entry is a (x, metric value) tuple.
    # You can use this dictionary to manipulate the
    # metrics without avalanche.
    all_metrics = cl_strategy.evaluator.get_all_metrics()
    print(f"Stored metrics: {list(all_metrics.keys())}")
示例#3
0
def main(args):
    # --- CONFIG
    device = torch.device(f"cuda:{args.cuda}" if torch.cuda.is_available()
                          and args.cuda >= 0 else "cpu")
    # ---------

    # --- TRANSFORMATIONS
    train_transform = transforms.Compose([
        RandomCrop(28, padding=4),
        ToTensor(),
        transforms.Normalize((0.1307, ), (0.3081, ))
    ])
    test_transform = transforms.Compose(
        [ToTensor(), transforms.Normalize((0.1307, ), (0.3081, ))])
    # ---------

    # --- SCENARIO CREATION
    mnist_train = MNIST('./data/mnist',
                        train=True,
                        download=True,
                        transform=train_transform)
    mnist_test = MNIST('./data/mnist',
                       train=False,
                       download=True,
                       transform=test_transform)
    scenario = nc_scenario(mnist_train,
                           mnist_test,
                           5,
                           task_labels=False,
                           seed=1234)
    # ---------

    # MODEL CREATION
    model = SimpleMLP(num_classes=scenario.n_classes)

    interactive_logger = InteractiveLogger()
    tensorboard_logger = TensorboardLogger()

    eval_plugin = EvaluationPlugin(
        accuracy_metrics(minibatch=True,
                         epoch=True,
                         epoch_running=True,
                         experience=True,
                         stream=True),
        loss_metrics(minibatch=True,
                     epoch=True,
                     epoch_running=True,
                     experience=True,
                     stream=True),
        ExperienceForgetting(),
        StreamConfusionMatrix(),
        cpu_usage_metrics(minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        timing_metrics(minibatch=True,
                       epoch=True,
                       experience=True,
                       stream=True),
        ram_usage_metrics(every=0.5,
                          minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        gpu_usage_metrics(args.cuda,
                          every=0.5,
                          minibatch=True,
                          epoch=True,
                          experience=True,
                          stream=True),
        disk_usage_metrics(minibatch=True,
                           epoch=True,
                           experience=True,
                           stream=True),
        MAC_metrics(minibatch=True, epoch=True, experience=True),
        loggers=[interactive_logger, tensorboard_logger])

    # CREATE THE STRATEGY INSTANCE (NAIVE)
    cl_strategy = Naive(model,
                        SGD(model.parameters(), lr=0.001, momentum=0.9),
                        CrossEntropyLoss(),
                        train_mb_size=100,
                        train_epochs=4,
                        eval_mb_size=100,
                        device=device,
                        evaluator=eval_plugin)

    # TRAINING LOOP
    print('Starting experiment...')
    results = []
    for experience in scenario.train_stream:
        print("Start of experience: ", experience.current_experience)
        print("Current Classes: ", experience.classes_in_this_experience)

        cl_strategy.train(experience)
        print('Training completed')

        print('Computing accuracy on the whole test set')
        results.append(cl_strategy.eval(scenario.test_stream))
示例#4
0
def main(args):
    # --- CONFIG
    device = torch.device(
        f"cuda:{args.cuda}"
        if torch.cuda.is_available() and args.cuda >= 0
        else "cpu"
    )
    # ---------

    tr_ds = [
        AvalancheTensorDataset(
            torch.randn(10, 3),
            torch.randint(0, 3, (10,)).tolist(),
            task_labels=torch.randint(0, 5, (10,)).tolist(),
        )
        for _ in range(3)
    ]
    ts_ds = [
        AvalancheTensorDataset(
            torch.randn(10, 3),
            torch.randint(0, 3, (10,)).tolist(),
            task_labels=torch.randint(0, 5, (10,)).tolist(),
        )
        for _ in range(3)
    ]
    scenario = create_multi_dataset_generic_benchmark(
        train_datasets=tr_ds, test_datasets=ts_ds
    )
    # ---------

    # MODEL CREATION
    model = SimpleMLP(num_classes=3, input_size=3)

    # DEFINE THE EVALUATION PLUGIN AND LOGGER
    # The evaluation plugin manages the metrics computation.
    # It takes as argument a list of metrics and a list of loggers.
    # The evaluation plugin calls the loggers to serialize the metrics
    # and save them in persistent memory or print them in the standard output.

    # log to text file
    text_logger = TextLogger(open("log.txt", "a"))

    # print to stdout
    interactive_logger = InteractiveLogger()

    csv_logger = CSVLogger()

    eval_plugin = EvaluationPlugin(
        accuracy_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        loss_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        forgetting_metrics(experience=True, stream=True),
        bwt_metrics(experience=True, stream=True),
        cpu_usage_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        timing_metrics(
            minibatch=True,
            epoch=True,
            epoch_running=True,
            experience=True,
            stream=True,
        ),
        ram_usage_metrics(
            every=0.5, minibatch=True, epoch=True, experience=True, stream=True
        ),
        gpu_usage_metrics(
            args.cuda,
            every=0.5,
            minibatch=True,
            epoch=True,
            experience=True,
            stream=True,
        ),
        disk_usage_metrics(
            minibatch=True, epoch=True, experience=True, stream=True
        ),
        MAC_metrics(minibatch=True, epoch=True, experience=True),
        loggers=[interactive_logger, text_logger, csv_logger],
        collect_all=True,
    )  # collect all metrics (set to True by default)

    # CREATE THE STRATEGY INSTANCE (NAIVE)
    cl_strategy = Naive(
        model,
        SGD(model.parameters(), lr=0.001, momentum=0.9),
        CrossEntropyLoss(),
        train_mb_size=500,
        train_epochs=1,
        eval_mb_size=100,
        device=device,
        evaluator=eval_plugin,
        eval_every=1,
    )

    # TRAINING LOOP
    print("Starting experiment...")
    results = []
    for i, experience in enumerate(scenario.train_stream):
        print("Start of experience: ", experience.current_experience)
        print("Current Classes: ", experience.classes_in_this_experience)

        # train returns a dictionary containing last recorded value
        # for each metric.
        res = cl_strategy.train(experience, eval_streams=[scenario.test_stream])
        print("Training completed")

        print("Computing accuracy on the whole test set")
        # test returns a dictionary with the last metric collected during
        # evaluation on that stream
        results.append(cl_strategy.eval(scenario.test_stream))

    print(f"Test metrics:\n{results}")

    # Dict with all the metric curves,
    # only available when `collect_all` is True.
    # Each entry is a (x, metric value) tuple.
    # You can use this dictionary to manipulate the
    # metrics without avalanche.
    all_metrics = cl_strategy.evaluator.get_all_metrics()
    print(f"Stored metrics: {list(all_metrics.keys())}")
示例#5
0
def main(args):
    # --- CONFIG
    device = torch.device(f"cuda:{args.cuda}" if torch.cuda.is_available()
                          and args.cuda >= 0 else "cpu")
    # ---------

    # --- TRANSFORMATIONS
    train_transform = transforms.Compose([
        RandomCrop(28, padding=4),
        ToTensor(),
        transforms.Normalize((0.1307, ), (0.3081, ))
    ])
    test_transform = transforms.Compose(
        [ToTensor(), transforms.Normalize((0.1307, ), (0.3081, ))])
    # ---------

    # --- SCENARIO CREATION
    mnist_train = MNIST('./data/mnist',
                        train=True,
                        download=True,
                        transform=train_transform)
    mnist_test = MNIST('./data/mnist',
                       train=False,
                       download=True,
                       transform=test_transform)
    scenario = nc_scenario(mnist_train,
                           mnist_test,
                           5,
                           task_labels=False,
                           seed=1234)
    # ---------

    # MODEL CREATION
    model = SimpleMLP(num_classes=scenario.n_classes)

    # DEFINE THE EVALUATION PLUGIN AND LOGGER
    # The evaluation plugin manages the metrics computation.
    # It takes as argument a list of metrics and a list of loggers.
    # The evaluation plugin calls the loggers to serialize the metrics
    # and save them in persistent memory or print them in the standard output.

    # log to text file
    text_logger = TextLogger(open('log.txt', 'a'))

    # print to stdout
    interactive_logger = InteractiveLogger()

    eval_plugin = EvaluationPlugin(accuracy_metrics(minibatch=True,
                                                    epoch=True,
                                                    experience=True,
                                                    stream=True),
                                   loss_metrics(minibatch=True,
                                                epoch=True,
                                                experience=True,
                                                stream=True),
                                   ExperienceForgetting(),
                                   cpu_usage_metrics(minibatch=True,
                                                     epoch=True,
                                                     experience=True,
                                                     stream=True),
                                   timing_metrics(minibatch=True,
                                                  epoch=True,
                                                  experience=True,
                                                  stream=True),
                                   ram_usage_metrics(every=0.5,
                                                     minibatch=True,
                                                     epoch=True,
                                                     experience=True,
                                                     stream=True),
                                   gpu_usage_metrics(args.cuda,
                                                     every=0.5,
                                                     minibatch=True,
                                                     epoch=True,
                                                     experience=True,
                                                     stream=True),
                                   disk_usage_metrics(minibatch=True,
                                                      epoch=True,
                                                      experience=True,
                                                      stream=True),
                                   MAC_metrics(minibatch=True,
                                               epoch=True,
                                               experience=True),
                                   loggers=[interactive_logger, text_logger])

    # CREATE THE STRATEGY INSTANCE (NAIVE)
    cl_strategy = Naive(model,
                        SGD(model.parameters(), lr=0.001, momentum=0.9),
                        CrossEntropyLoss(),
                        train_mb_size=500,
                        train_epochs=1,
                        eval_mb_size=100,
                        device=device,
                        evaluator=eval_plugin)

    # TRAINING LOOP
    print('Starting experiment...')
    results = []
    for experience in scenario.train_stream:
        print("Start of experience: ", experience.current_experience)
        print("Current Classes: ", experience.classes_in_this_experience)

        # train returns a list of dictionaries (one for each experience). Each
        # dictionary stores the last value of each metric curve emitted
        # during training.
        res = cl_strategy.train(experience)
        print('Training completed')

        print('Computing accuracy on the whole test set')
        # test also returns a dictionary
        results.append(cl_strategy.eval(scenario.test_stream))

    print(f"Test metrics:\n{results}")

    # All the metric curves (x,y values) are stored inside the evaluator
    # (can be disabled). You can use this dictionary to manipulate the
    # metrics without avalanche.
    all_metrics = cl_strategy.evaluator.all_metrics
    print(f"Stored metrics: {list(all_metrics.keys())}")