示例#1
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def train(max_iter=60000):
    # Initialize data provider
    di_l = I.data_iterator_mnist(batch_size, True)
    di_t = I.data_iterator_mnist(batch_size, False)

    # Network
    shape_x = (1, 28, 28)
    shape_z = (50, )
    x = nn.Variable((batch_size, ) + shape_x)
    loss_l = I.vae(x, shape_z, test=False)
    loss_t = I.vae(x, shape_z, test=True)

    # Create solver
    solver = S.Adam(learning_rate)
    solver.set_parameters(nn.get_parameters())

    # Monitors for training and validation
    path = cache_dir(os.path.join(I.name, "monitor"))
    monitor = M.Monitor(path)
    monitor_train_loss = M.MonitorSeries("train_loss", monitor, interval=600)
    monitor_val_loss = M.MonitorSeries("val_loss", monitor, interval=600)
    monitor_time = M.MonitorTimeElapsed("time", monitor, interval=600)

    # Training Loop.
    for i in range(max_iter):

        # Initialize gradients
        solver.zero_grad()

        # Forward, backward and update
        x.d, _ = di_l.next()
        loss_l.forward(clear_no_need_grad=True)
        loss_l.backward(clear_buffer=True)
        solver.weight_decay(weight_decay)
        solver.update()

        # Forward for test
        x.d, _ = di_t.next()
        loss_t.forward(clear_no_need_grad=True)

        # Monitor for logging
        monitor_train_loss.add(i, loss_l.d.copy())
        monitor_val_loss.add(i, loss_t.d.copy())
        monitor_time.add(i)

    return path
示例#2
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def train(max_iter=5000, learning_rate=0.001, weight_decay=0):
    train = create_net(False)
    test = create_net(True)

    # ソルバーの作成
    solver = S.Adam(learning_rate)
    solver.set_parameters(nn.get_parameters())

    # モニタの作成
    path = cache_dir(os.path.join(I.name, "monitor"))
    monitor = M.Monitor(path)
    monitor_loss_train = M.MonitorSeries("training_loss", monitor, interval=100)
    monitor_time = M.MonitorTimeElapsed("time", monitor, interval=100)
    monitor_loss_val = M.MonitorSeries("val_loss", monitor, interval=100)

    # 訓練の実行
    for i in range(max_iter):
        if (i + 1) % 100 == 0:
            val_error = 0.0
            val_iter = 10
            for j in range(val_iter):
                test.image0.d, test.image1.d, test.label.d = test.data.next()
                test.loss.forward(clear_buffer=True)
                val_error += test.loss.d
            monitor_loss_val.add(i, val_error / val_iter)
        train.image0.d, train.image1.d, train.label.d = train.data.next()
        solver.zero_grad()
        train.loss.forward(clear_no_need_grad=True)
        train.loss.backward(clear_buffer=True)
        solver.weight_decay(weight_decay)
        solver.update()
        monitor_loss_train.add(i, train.loss.d.copy())
        monitor_time.add(i)

        nn.save_parameters(os.path.join(path, "params.h5"))
        return path
示例#3
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    loss(model, training_inputs, training_outputs)))
print("W = {}, B = {}".format(model.W.numpy(), model.B.numpy()))

# ## Use objects for state during eager execution
# ### Variables are objects
if tf.test.is_gpu_available():
    with tf.device("gpu:0"):
        v = tf.Variable(tf.random.normal([1000, 1000]))
        v = None  # v no longer takes up GPU memory

# ### Object-based saving
x = tf.Variable(10.0)
checkpoint = tf.train.Checkpoint(x=x)

x.assign(2.0)  # type: ignore
checkpoint_path = cache_dir("tensorflow/eager")
checkpoint.save(os.path.join(checkpoint_path, "ckpt"))

# -
x.assign(11.0)  # type: ignore # Change the variable after saving.

# Restore values from the checkpoint
checkpoint.restore(tf.train.latest_checkpoint(checkpoint_path))

print(x)  # => 2.0

# -
model = tf.keras.Sequential([
    tf.keras.layers.Conv2D(16, [3, 3], activation="relu"),
    tf.keras.layers.GlobalAveragePooling2D(),
    tf.keras.layers.Dense(10),
model.add(Dense(1, activation="sigmoid"))
model.compile(optimizer="rmsprop", loss="binary_crossentropy", metrics=["acc"])
model.summary()

history = model.fit(x_train,
                    y_train,
                    epochs=10,
                    batch_size=32,
                    validation_split=0.2)

# ### Putting it all together: from raw text to word embeddings

# #### ##Download the IMDB data as raw text

url = "http://ai.stanford.edu/~amaas/data/sentiment/aclImdb_v1.tar.gz"
base_dir = cache_dir("keras/ch6/data")
path = os.path.join(base_dir, os.path.basename(url))
res = requests.get(url, stream=True)
if res.status_code == 200:
    with open(path, "wb") as f:
        for chunk in res.iter_content(chunk_size=1024):
            f.write(chunk)

with tarfile.open(path, "r:gz") as tarf:
    tarf.extractall(path=base_dir)

# -
imdb_dir = os.path.join(base_dir, "aclImdb")
train_dir = os.path.join(imdb_dir, "train")

labels = []
示例#5
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def train(max_iter=24000):
    shape_x = (1, 28, 28)
    n_h = args.n_units
    n_y = args.n_class

    # Load MNIST Dataset
    from mnist_data import load_mnist, data_iterator_mnist

    images, labels = load_mnist(train=True)
    rng = np.random.RandomState(706)
    inds = rng.permutation(len(images))

    def feed_labeled(i):
        j = inds[i]
        return images[j], labels[j]

    def feed_unlabeled(i):
        j = inds[i]
        return images[j], labels[j]

    di_l = I.data_iterator_simple(
        feed_labeled,
        args.n_labeled,
        args.batchsize_l,
        shuffle=True,
        rng=rng,
        with_file_cache=False,
    )
    di_u = I.data_iterator_simple(
        feed_unlabeled,
        args.n_train,
        args.batchsize_u,
        shuffle=True,
        rng=rng,
        with_file_cache=False,
    )
    di_v = data_iterator_mnist(args.batchsize_v, train=False)

    # Create networks
    # feed-forward-net building function
    def forward(x, test=False):
        return I.mlp_net(x, n_h, n_y, test)

    # Net for learning labeled data
    xl = nn.Variable((args.batchsize_l,) + shape_x, need_grad=False)
    yl = forward(xl, test=False)
    tl = nn.Variable((args.batchsize_l, 1), need_grad=False)
    loss_l = F.mean(F.softmax_cross_entropy(yl, tl))

    # Net for learning unlabeled data
    xu = nn.Variable((args.batchsize_u,) + shape_x, need_grad=False)
    yu = forward(xu, test=False)
    y1 = yu.get_unlinked_variable()
    y1.need_grad = False

    noise = nn.Variable((args.batchsize_u,) + shape_x, need_grad=True)
    r = noise / (F.sum(noise ** 2, [1, 2, 3], keepdims=True)) ** 0.5
    r.persistent = True
    y2 = forward(xu + args.xi_for_vat * r, test=False)
    y3 = forward(xu + args.eps_for_vat * r, test=False)
    loss_k = F.mean(I.distance(y1, y2))
    loss_u = F.mean(I.distance(y1, y3))

    # Net for evaluating validation data
    xv = nn.Variable((args.batchsize_v,) + shape_x, need_grad=False)
    hv = forward(xv, test=True)
    tv = nn.Variable((args.batchsize_v, 1), need_grad=False)
    err = F.mean(F.top_n_error(hv, tv, n=1))

    # Create solver
    solver = S.Adam(args.learning_rate)
    solver.set_parameters(nn.get_parameters())

    # Monitor training and validation stats.
    path = cache_dir(os.path.join(I.name, "monitor"))
    monitor = M.Monitor(path)
    monitor_verr = M.MonitorSeries("val_error", monitor, interval=240)
    monitor_time = M.MonitorTimeElapsed("time", monitor, interval=240)

    # Training Loop.
    for i in range(max_iter):

        # Validation Test
        if i % args.val_interval == 0:
            valid_error = I.calc_validation_error(di_v, xv, tv, err, args.val_iter)
            monitor_verr.add(i, valid_error)

        # forward, backward and update
        xl.d, tl.d = di_l.next()
        xl.d = xl.d / 255
        solver.zero_grad()
        loss_l.forward(clear_no_need_grad=True)
        loss_l.backward(clear_buffer=True)
        solver.weight_decay(args.weight_decay)
        solver.update()

        # Calculate y without noise, only once.
        xu.d, _ = di_u.next()
        xu.d = xu.d / 255
        yu.forward(clear_buffer=True)

        # Do power method iteration
        noise.d = np.random.normal(size=xu.shape).astype(np.float32)
        for k in range(args.n_iter_for_power_method):
            r.grad.zero()
            loss_k.forward(clear_no_need_grad=True)
            loss_k.backward(clear_buffer=True)
            noise.data.copy_from(r.grad)

        # forward, backward and update
        solver.zero_grad()
        loss_u.forward(clear_no_need_grad=True)
        loss_u.backward(clear_buffer=True)
        solver.weight_decay(args.weight_decay)
        solver.update()

        if i % args.iter_per_epoch == 0:
            solver.set_learning_rate(solver.learning_rate() * args.learning_rate_decay)
        monitor_time.add(i)

    # Evaluate the final model by the error rate with validation dataset
    valid_error = I.calc_validation_error(di_v, xv, tv, err, args.val_iter)
    monitor_verr.add(i, valid_error)
    monitor_time.add(i)

    return path
from tensorflow.keras.applications import VGG16

from ivory.utils.path import cache_dir
from ivory.utils.keras.history import history_to_dataframe

# ### Feature extraction
conv_base = VGG16(weights="imagenet",
                  include_top=False,
                  input_shape=(150, 150, 3))
conv_base.summary()

# -
base = "keras/ch5/cats_and_dogs_small"
dirs = {}
for dataset in ["train", "validation", "test"]:
    dirs[dataset] = cache_dir(base, dataset)
datagen = ImageDataGenerator(rescale=1.0 / 255)
batch_size = 20


def extract_features(directory, sample_count):
    features = np.zeros(shape=(sample_count, 4, 4, 512))
    labels = np.zeros(shape=(sample_count))
    generator = datagen.flow_from_directory(directory,
                                            target_size=(150, 150),
                                            batch_size=batch_size,
                                            class_mode="binary")
    i = 0
    for inputs_batch, labels_batch in generator:
        features_batch = conv_base.predict(inputs_batch)
        features[i * batch_size:(i + 1) * batch_size] = features_batch
示例#7
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    model.compile(optimizer="adam",
                  loss="sparse_categorical_crossentropy",
                  metrics=["accuracy"])

    return model


# -
# !Create a basic model instance
model = create_model()
model.summary()

# ## Save checkpoints during training
# ### Checkpoint callback usage
checkpoint_dir = cache_dir("tensorflow/ml_basics/training_1")
checkpoint_path = os.path.join(checkpoint_dir, "cp.ckpt")

# !Create checkpoint callback
cp_callback = tf.keras.callbacks.ModelCheckpoint(checkpoint_path,
                                                 save_weights_only=True,
                                                 verbose=1)

model.fit(
    train_images,
    train_labels,
    epochs=10,
    validation_data=(test_images, test_labels),
    callbacks=[cp_callback],
)
# ## Define the optimizer and the loss function
optimizer = tf.keras.optimizers.Adam()
loss_object = tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True)


def loss_function(real, pred):
    mask = tf.math.logical_not(tf.math.equal(real, 0))
    loss_ = loss_object(real, pred)

    mask = tf.cast(mask, dtype=loss_.dtype)
    loss_ *= mask
    return tf.reduce_mean(loss_)


# ## Checkpoints (Object-based saving)
checkpoint_dir = cache_dir(
    "tensorflow/nmn_with_attention/training_checkpoints")
checkpoint_prefix = os.path.join(checkpoint_dir, "ckpt")
checkpoint = tf.train.Checkpoint(optimizer=optimizer,
                                 encoder=encoder,
                                 decoder=decoder)


# ## Training
@tf.function
def train_step(inp, targ, enc_hidden):
    loss = 0

    with tf.GradientTape() as tape:
        enc_output, enc_hidden = encoder(inp, enc_hidden)
        dec_hidden = enc_hidden
        dec_input = tf.expand_dims([targ_lang.word_index["<start>"]] *
示例#9
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    fake_loss = cross_entropy(tf.zeros_like(fake_output), fake_output)
    total_loss = real_loss + fake_loss
    return total_loss


# ### Generator loss
def generator_loss(fake_output):
    return cross_entropy(tf.ones_like(fake_output), fake_output)


# -
generator_optimizer = tf.keras.optimizers.Adam(1e-4)
discriminator_optimizer = tf.keras.optimizers.Adam(1e-4)

# ### Save checkpoints
checkpoint_dir = cache_dir("tensorflow/dcgan/training_checkpoints")
checkpoint_prefix = os.path.join(checkpoint_dir, "ckpt")
checkpoint = tf.train.Checkpoint(
    generator_optimizer=generator_optimizer,
    discriminator_optimizer=discriminator_optimizer,
    generator=generator,
    discriminator=discriminator,
)

# ## Define the training loop
EPOCHS = 50
noise_dim = 100
num_examples_to_generate = 16

# !We will reuse this seed overtime (so it's easier)
# !to visualize progress in the animated GIF)
model.add(layers.Conv1D(32, 7, activation="relu"))
model.add(layers.GlobalMaxPooling1D())
model.add(layers.Dense(1))

model.summary()

# -
model.compile(optimizer=RMSprop(lr=1e-4), loss="binary_crossentropy", metrics=["acc"])
history = model.fit(x_train, y_train, epochs=10, batch_size=128, validation_split=0.2)

# -
plot_history(history, "acc") | plot_history(history, "loss")

# ### Combining CNNs and RNNs to process long sequences

base_dir = cache_dir("keras/ch6/data/weather/zip")
dfs = []
for name in os.listdir(os.path.join(base_dir)):
    df = pd.read_csv(os.path.join(base_dir, name), encoding="cp932")
    dfs.append(df)
df = pd.concat(dfs)
float_data = df.iloc[:, 1:].values
mean = float_data[:200000].mean(axis=0)
float_data -= mean
std = float_data[:200000].std(axis=0)
float_data /= std


def generator(
    data, lookback, delay, min_index, max_index, shuffle=False, batch_size=128, step=6
):
示例#11
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import matplotlib.pyplot as plt
import numpy as np
from tensorflow.keras.preprocessing import image
from tensorflow.keras import backend as K
from tensorflow.keras import models
from tensorflow.keras.applications import VGG16
from tensorflow.keras.applications.vgg16 import (decode_predictions,
                                                 preprocess_input)
from tensorflow.keras.models import load_model

from ivory.utils.path import cache_dir

# ### Visualizing intermediate activations

model = load_model(
    os.path.join(cache_dir("keras/ch5"), "cats_and_dogs_small_2.h5"))
model.summary()  # As a reminder.

# -
img_path = os.path.join(cache_dir("keras/ch5/cats_and_dogs_small/test/cat"),
                        "cat.1700.jpg")
# !We preprocess the image into a 4D tensor
img = image.load_img(img_path, target_size=(150, 150))
img_tensor = image.img_to_array(img)
img_tensor = np.expand_dims(img_tensor, axis=0)
# !Remember that the model was trained on inputs that were preprocessed in the following
# !way:
img_tensor /= 255.0
# !Its shape is (1, 150, 150, 3)
print(img_tensor.shape)
示例#12
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# -
optimizer = tf.keras.optimizers.Adam()
loss_object = tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True)


def loss_function(real, pred):
    mask = tf.math.logical_not(tf.math.equal(real, 0))
    loss_ = loss_object(real, pred)

    mask = tf.cast(mask, dtype=loss_.dtype)
    loss_ *= mask
    return tf.reduce_mean(loss_)


# ## Checkpoint
checkpoint_path = cache_dir(
    "tensorflow/sequences/image_captioning/checkpoints/train")
ckpt = tf.train.Checkpoint(encoder=encoder,
                           decoder=decoder,
                           optimizer=optimizer)
ckpt_manager = tf.train.CheckpointManager(ckpt, checkpoint_path, max_to_keep=5)

# -
start_epoch = 0
if ckpt_manager.latest_checkpoint:
    start_epoch = int(ckpt_manager.latest_checkpoint.split("-")[-1])

# ## Training
# !adding this in a separate cell because if you run the training cell many times,
# !the loss_plot array will be reset
loss_plot = []
示例#13
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def get_monitor_path(net_name: str) -> str:
    return cache_dir(os.path.join(cl.name, net_name))
# ### How to train your DCGAN
# !Load CIFAR10 data
(x_train, y_train), (_, _) = keras.datasets.cifar10.load_data()

# !Select frog images (class 6)
x_train = x_train[y_train.flatten() == 6]

# !Normalize data
x_train = (x_train.reshape((x_train.shape[0], ) +
                           (height, width, channels)).astype("float32") /
           255.0)

iterations = 10000
batch_size = 20

save_dir = cache_dir("keras/ch8/gan_images")

# !Start training loop
start = 0
for step in range(iterations):
    # Sample random points in the latent space
    random_latent_vectors = np.random.normal(size=(batch_size, latent_dim))

    # Decode them to fake images
    generated_images = generator.predict(random_latent_vectors)

    # Combine them with real images
    stop = start + batch_size
    real_images = x_train[start:stop]
    combined_images = np.concatenate([generated_images, real_images])
示例#15
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    optimizer.apply_gradients(zip(gradients, variables))


# ## Generate Images
epochs = 100
latent_dim = 50
num_examples_to_generate = 16

# !keeping the random vector constant for generation (prediction) so
# !it will be easier to see the improvement.
random_vector_for_generation = tf.random.normal(
    shape=[num_examples_to_generate, latent_dim])
model = CVAE(latent_dim)

# -
directory = cache_dir("tensorflow/cvae")


def generate_and_save_images(model, epoch, test_input):
    predictions = model.sample(test_input)
    plt.figure(figsize=(4, 4))

    for i in range(predictions.shape[0]):
        plt.subplot(4, 4, i + 1)
        plt.imshow(predictions[i, :, :, 0], cmap="gray")
        plt.axis("off")

    # tight_layout minimizes the overlap between 2 sub-plots
    plt.savefig(
        os.path.join(directory, "image_at_epoch_{:04d}.png".format(epoch)))
    plt.show()
示例#16
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solver_gen = S.Adam(learning_rate, beta1=0.5)
solver_dis = S.Adam(learning_rate, beta1=0.5)
with nn.parameter_scope("gen"):
    solver_gen.set_parameters(nn.get_parameters())
with nn.parameter_scope("dis"):
    solver_dis.set_parameters(nn.get_parameters())

# パラメータスコープの使い方を見ておく。
print(len(nn.get_parameters()))
with nn.parameter_scope("gen"):
    print(len(nn.get_parameters()))
# パラメータスコープ内では、`get_parameters()`で取得できるパラメータがフィルタリングされ
# る。

# モニターの設定
path = cache_dir(os.path.join(I.name, "monitor"))
monitor = M.Monitor(path)
monitor_loss_gen = M.MonitorSeries("generator_loss", monitor, interval=100)
monitor_loss_dis = M.MonitorSeries("discriminator_loss", monitor, interval=100)
monitor_time = M.MonitorTimeElapsed("time", monitor, interval=100)
monitor_fake = M.MonitorImageTile("Fake images",
                                  monitor,
                                  normalize_method=lambda x: (x + 1) / 2.0)


# パラメータ保存関数の定義
def save_parameters(i):
    with nn.parameter_scope("gen"):
        nn.save_parameters(os.path.join(path, "generator_param_%06d.h5" % i))
    with nn.parameter_scope("dis"):
        nn.save_parameters(
示例#17
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    gan_loss = loss_object(tf.ones_like(disc_generated_output),
                           disc_generated_output)

    # mean absolute error
    l1_loss = tf.reduce_mean(tf.abs(target - gen_output))

    total_gen_loss = gan_loss + (LAMBDA * l1_loss)

    return total_gen_loss


generator_optimizer = tf.keras.optimizers.Adam(2e-4, beta_1=0.5)
discriminator_optimizer = tf.keras.optimizers.Adam(2e-4, beta_1=0.5)

# ## Checkpoints (Object-based saving)
checkpoint_dir = cache_dir("tensorflow/pix2pix/training_checkpoints")
checkpoint_prefix = os.path.join(checkpoint_dir, "ckpt")
checkpoint = tf.train.Checkpoint(
    generator_optimizer=generator_optimizer,
    discriminator_optimizer=discriminator_optimizer,
    generator=generator,
    discriminator=discriminator,
)

# ## Generate Images
EPOCHS = 200


def generate_images(model, test_input, tar):
    # the training=True is intentional here since
    # we want the batch statistics while running the model