Beispiel #1
0
Datei: MbPA.py Projekt: esgl/MbPA
class MbPA:
    def __init__(self, sess, args):
        with tf.variable_scope(args.model_name):
            self.args = args
            self.learning_rate = args.learning_rate
            self.session = sess

            self.x = tf.placeholder(tf.float32, shape=[None, 784], name="x")
            self.y = tf.placeholder(tf.float32, shape=[None, 10], name="y")
            # self.trainable = tf.placeholder(tf.int32, shape=(), name="trainable")
            self.memory_sample_batch = tf.placeholder(
                tf.int16, shape=(), name="memory_sample_batch")

            self.embed = self.embedding(self.x)

            self.M = Memory(args.memory_size,
                            self.embed.get_shape()[-1],
                            self.y.get_shape()[-1])
            embs_and_values = tf.py_func(self.get_memory_sample,
                                         [self.memory_sample_batch],
                                         [tf.float64, tf.float64])

            self.memory_batch_x = tf.to_float(embs_and_values[0])
            self.memory_batch_y = tf.to_float(embs_and_values[1])
            self.xa = tf.concat(values=[self.embed, self.memory_batch_x],
                                axis=0)
            self.ya = tf.concat(values=[self.y, self.memory_batch_y], axis=0)

            self.y_ = self.output_network(self.xa)

            self.cross_entropy = tf.reduce_mean(
                tf.nn.softmax_cross_entropy_with_logits(labels=self.ya,
                                                        logits=self.y_))
            self.optim = tf.train.GradientDescentOptimizer(
                self.learning_rate).minimize(self.cross_entropy)
            self.correct_prediction = tf.equal(tf.argmax(self.ya, 1),
                                               tf.argmax(self.y_, 1))
            self.accuracy = tf.reduce_mean(
                tf.cast(self.correct_prediction, tf.float32))

            self.session.run(tf.global_variables_initializer())

    def train(self, xs, ys, memory_sample_batch):
        # print(memory_sample_batch)
        embeds, _ = self.session.run([self.embed, self.optim],
                                     feed_dict={
                                         self.x:
                                         xs,
                                         self.y:
                                         ys,
                                         self.memory_sample_batch:
                                         memory_sample_batch
                                     })
        return embeds

    def test(self, xs_test, ys_test):
        acc = self.session.run(self.accuracy,
                               feed_dict={
                                   self.x: xs_test,
                                   self.y: ys_test,
                                   self.memory_sample_batch: 0
                               })
        return acc

    def get_memory_sample(self, batch_size):
        x, y = self.M.sample(batch_size)
        return x, y

    def add_to_memory(self, xs, ys):
        if self.args.sample_add == "normal":
            self.M.add(xs, ys)
        elif self.args.sample_add == "lru":
            self.M.add_lru(xs, ys)
        elif self.args.sample_add == "rand":
            self.M.add_rand(xs, ys)
        elif self.args.sample_add == "knn":
            self.M.add_knn(xs, ys)
        elif self.args.sample_add == "knn_lru":
            self.M.add_knn_lru(xs, ys)
        else:
            raise Exception(
                "error sample adding type, pleace choose in ['normal', 'lru', 'rand']"
            )

    @staticmethod
    def embedding(x):
        out = tf.reshape(x, [-1, 28, 28, 1])
        # convs = [(16, 8, 4), (32, 4, 2)]
        # with tf.variable_scope("conv1"):
        # out = layers.convolution2d(inputs=out,
        #                            num_outputs=16,
        #                            kernel_size=8,
        #                            stride=4,
        #                            trainable=trainable)
        # out = tf.nn.relu(out)
        # out = tf.nn.max_pool(out, ksize=[1, 2, 3, 1], strides=[1, 2, 2, 1], padding="SAME")
        with tf.variable_scope("conv2"):
            # out = layers.convolution2d(inputs=out,
            #                            num_outputs=32,
            #                            kernel_size=4,
            #                            stride=2,
            #                            trainable=trainable)
            # out = tf.nn.relu(out)
            # out = tf.nn.max_pool(out, ksize=[1, 2, 3, 1], strides=[1, 2, 2, 1], padding="SAME")
            embed = layers.flatten(out)
        return embed

    @staticmethod
    def output_network(embed):
        out = embed
        with tf.variable_scope("fc_1"):
            out = layers.fully_connected(inputs=out, num_outputs=1024)
            out = tf.nn.relu(out)
        with tf.variable_scope("fc_2"):
            out = layers.fully_connected(inputs=out, num_outputs=10)
        return out
Beispiel #2
0
class MbPA_KNN_Test:
    def __init__(self, sess, args):
        self.args = args
        self.session = sess
        self.w = {}
        self.eval_w = {}
        with tf.variable_scope(self.args.model_name):
            self.x = tf.placeholder(tf.float32, shape=[None, 784], name="x")
            self.y = tf.placeholder(tf.float32, shape=[None, 10], name="y")
            self.memory_sample_batch = tf.placeholder(
                tf.int16, shape=(), name="memory_sample_batch")
            with tf.variable_scope("training"):
                with tf.variable_scope("embedding"):
                    self.out = tf.reshape(self.x, [-1, 28, 28, 1])
                    with tf.variable_scope("conv"):
                        #         # self.out, self.w["l1_w"], self.w["l1_b"] = conv2d(
                        #         #     x=self.out,
                        #         #     output_dim=16,
                        #         #     kernel_size=[8, 8],
                        #         #     stride=[4, 4],
                        #         #     activation_fn=tf.nn.relu,
                        #         #     name="conv1"
                        #         # )
                        #         # self.out, self.w["l2_w"], self.w["l2_b"] = conv2d(
                        #         #     x=self.out,
                        #         #     output_dim=32,
                        #         #     kernel_size=[4, 4],
                        #         #     stride=[2, 2],
                        #         #     activation_fn=tf.nn.relu,
                        #         #     name="conv2"
                        #         # )
                        self.embed = layers.flatten(self.out)
                #         self.embed_dim = self.embed.get_shape()[-1]
                self.M = Memory(self.args.memory_size,
                                self.x.get_shape()[-1],
                                self.y.get_shape()[-1])
                embs_and_values = tf.py_func(self.get_memory_sample,
                                             [self.memory_sample_batch],
                                             [tf.float64, tf.float64])
                self.memory_batch_x = tf.to_float(embs_and_values[0])
                self.memory_batch_y = tf.to_float(embs_and_values[1])
                self.xa = tf.concat(values=[self.x, self.memory_batch_x],
                                    axis=0)
                self.ya = tf.concat(values=[self.y, self.memory_batch_y],
                                    axis=0)
                with tf.variable_scope("fc"):
                    self.out = self.xa
                    # self.out, self.w["l3_w"], self.w["l3_b"] = linear(
                    #     input_=self.out,
                    #     output_size=1024,
                    #     activation_fn=tf.nn.relu,
                    #     name="fc_1"
                    # )
                    self.out, self.w["l4_w"], self.w["l4_b"] = linear(
                        input_=self.out, output_size=10, name="fc_2")
                    self.ya_ = self.out

                self.cross_entropy = tf.reduce_mean(
                    tf.nn.softmax_cross_entropy_with_logits(labels=self.ya,
                                                            logits=self.ya_))

                self.optim = tf.train.GradientDescentOptimizer(
                    self.args.learning_rate).minimize(self.cross_entropy)
                self.correct_prediction = tf.equal(tf.argmax(self.ya, 1),
                                                   tf.argmax(self.ya_, 1))
                self.accuracy = tf.reduce_mean(
                    tf.cast(self.correct_prediction, tf.float32))

            self.session.run(tf.global_variables_initializer())

    def update_training_to_prediction(self):
        for name in self.eval_w.keys():
            self.t_w_assign_op[name].eval(
                {self.t_w_input[name]: self.w[name].eval()})

    def train(self, xs, ys, memory_sample_batch):
        embeds, _ = self.session.run([self.embed, self.optim],
                                     feed_dict={
                                         self.x:
                                         xs,
                                         self.y:
                                         ys,
                                         self.memory_sample_batch:
                                         memory_sample_batch
                                     })
        return embeds

    def get_memory_sample(self, batch_size):
        xs, ys = self.M.sample(batch_size)
        return xs, ys

    def add_to_memory(self, xs, ys):
        if self.args.sample_add == "normal":
            self.M.add(xs, ys)
        elif self.args.sample_add == "lru":
            self.M.add_lru(xs, ys)
        elif self.args.sample_add == "rand":
            self.M.add_rand(xs, ys)
        elif self.args.sample_add == "knn":
            self.M.add_knn(xs, ys)
        elif self.args.sample_add == "knn_lru":
            self.M.add_knn_lru(xs, ys)
        else:
            raise Exception(
                "error sample adding type, pleace choose in ['normal', 'lru', 'rand']"
            )

    def test(self, xs_test, ys_test):
        # self.update_training_to_prediction()
        acc = self.session.run(self.accuracy,
                               feed_dict={
                                   self.x: xs_test,
                                   self.y: ys_test,
                                   self.memory_sample_batch: 0
                               })
        return acc

    @property
    def memory_length(self):
        return self.M.length