TensorFlow1.2版本下CIFAR10可运行代码
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笔者最近在学习TensorFlow。看到了教程上面的CIFAR10的code,下下来以后发现由于版本太旧,根本没法跑起来。索性进行了修改,更新了所有需要更新的函数。方便新学习的小伙伴们。
代码的具体解释可以参照“极客学院”的文章:极客学院:卷积神经网络
以下是需要用到的4个PYTHON文件。
1:cifar10_input.py
# Copyright 2015 Google Inc. All Rights Reserved.## Licensed under the Apache License, Version 2.0 (the "License");# you may not use this file except in compliance with the License.# You may obtain a copy of the License at## http://www.apache.org/licenses/LICENSE-2.0## Unless required by applicable law or agreed to in writing, software# distributed under the License is distributed on an "AS IS" BASIS,# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.# See the License for the specific language governing permissions and# limitations under the License.# =============================================================================="""Routine for decoding the CIFAR-10 binary file format."""from __future__ import absolute_importfrom __future__ import divisionfrom __future__ import print_functionimport osimport tensorflow.python.platformfrom six.moves import xrange # pylint: disable=redefined-builtinimport tensorflow as tffrom tensorflow.python.platform import gfile# Process images of this size. Note that this differs from the original CIFAR# image size of 32 x 32. If one alters this number, then the entire model# architecture will change and any model would need to be retrained.IMAGE_SIZE = 24# Global constants describing the CIFAR-10 data set.NUM_CLASSES = 10NUM_EXAMPLES_PER_EPOCH_FOR_TRAIN = 50000NUM_EXAMPLES_PER_EPOCH_FOR_EVAL = 10000def read_cifar10(filename_queue): """Reads and parses examples from CIFAR10 data files. Recommendation: if you want N-way read parallelism, call this function N times. This will give you N independent Readers reading different files & positions within those files, which will give better mixing of examples. Args: filename_queue: A queue of strings with the filenames to read from. Returns: An object representing a single example, with the following fields: height: number of rows in the result (32) width: number of columns in the result (32) depth: number of color channels in the result (3) key: a scalar string Tensor describing the filename & record number for this example. label: an int32 Tensor with the label in the range 0..9. uint8image: a [height, width, depth] uint8 Tensor with the image data """ class CIFAR10Record(object): pass result = CIFAR10Record() # Dimensions of the images in the CIFAR-10 dataset. # See http://www.cs.toronto.edu/~kriz/cifar.html for a description of the # input format. label_bytes = 1 # 2 for CIFAR-100 result.height = 32 result.width = 32 result.depth = 3 image_bytes = result.height * result.width * result.depth # Every record consists of a label followed by the image, with a # fixed number of bytes for each. record_bytes = label_bytes + image_bytes # Read a record, getting filenames from the filename_queue. No # header or footer in the CIFAR-10 format, so we leave header_bytes # and footer_bytes at their default of 0. reader = tf.FixedLengthRecordReader(record_bytes=record_bytes) result.key, value = reader.read(filename_queue) # Convert from a string to a vector of uint8 that is record_bytes long. record_bytes = tf.decode_raw(value, tf.uint8) # The first bytes represent the label, which we convert from uint8->int32. result.label = tf.cast( tf.slice(record_bytes, [0], [label_bytes]), tf.int32) # The remaining bytes after the label represent the image, which we reshape # from [depth * height * width] to [depth, height, width]. depth_major = tf.reshape(tf.slice(record_bytes, [label_bytes], [image_bytes]), [result.depth, result.height, result.width]) # Convert from [depth, height, width] to [height, width, depth]. result.uint8image = tf.transpose(depth_major, [1, 2, 0]) return resultdef _generate_image_and_label_batch(image, label, min_queue_examples, batch_size): """Construct a queued batch of images and labels. Args: image: 3-D Tensor of [height, width, 3] of type.float32. label: 1-D Tensor of type.int32 min_queue_examples: int32, minimum number of samples to retain in the queue that provides of batches of examples. batch_size: Number of images per batch. Returns: images: Images. 4D tensor of [batch_size, height, width, 3] size. labels: Labels. 1D tensor of [batch_size] size. """ # Create a queue that shuffles the examples, and then # read 'batch_size' images + labels from the example queue. num_preprocess_threads = 16 images, label_batch = tf.train.shuffle_batch( [image, label], batch_size=batch_size, num_threads=num_preprocess_threads, capacity=min_queue_examples + 3 * batch_size, min_after_dequeue=min_queue_examples) # Display the training images in the visualizer. tf.summary.image('images', images) return images, tf.reshape(label_batch, [batch_size])def distorted_inputs(data_dir, batch_size): """Construct distorted input for CIFAR training using the Reader ops. Args: data_dir: Path to the CIFAR-10 data directory. batch_size: Number of images per batch. Returns: images: Images. 4D tensor of [batch_size, IMAGE_SIZE, IMAGE_SIZE, 3] size. labels: Labels. 1D tensor of [batch_size] size. """ filenames = [os.path.join(data_dir, 'data_batch_%d.bin' % i) for i in xrange(1, 6)] for f in filenames: if not gfile.Exists(f): raise ValueError('Failed to find file: ' + f) # Create a queue that produces the filenames to read. filename_queue = tf.train.string_input_producer(filenames) # Read examples from files in the filename queue. read_input = read_cifar10(filename_queue) reshaped_image = tf.cast(read_input.uint8image, tf.float32) height = IMAGE_SIZE width = IMAGE_SIZE # Image processing for training the network. Note the many random # distortions applied to the image. # Randomly crop a [height, width] section of the image. distorted_image = tf.random_crop(reshaped_image, [height, width,3]) # Randomly flip the image horizontally. distorted_image = tf.image.random_flip_left_right(distorted_image) # Because these operations are not commutative, consider randomizing # randomize the order their operation. distorted_image = tf.image.random_brightness(distorted_image, max_delta=63) distorted_image = tf.image.random_contrast(distorted_image, lower=0.2, upper=1.8) # Subtract off the mean and divide by the variance of the pixels. float_image = tf.image.per_image_standardization(distorted_image) # Ensure that the random shuffling has good mixing properties. min_fraction_of_examples_in_queue = 0.4 min_queue_examples = int(NUM_EXAMPLES_PER_EPOCH_FOR_TRAIN * min_fraction_of_examples_in_queue) print ('Filling queue with %d CIFAR images before starting to train. ' 'This will take a few minutes.' % min_queue_examples) # Generate a batch of images and labels by building up a queue of examples. return _generate_image_and_label_batch(float_image, read_input.label, min_queue_examples, batch_size)def inputs(eval_data, data_dir, batch_size): """Construct input for CIFAR evaluation using the Reader ops. Args: eval_data: bool, indicating if one should use the train or eval data set. data_dir: Path to the CIFAR-10 data directory. batch_size: Number of images per batch. Returns: images: Images. 4D tensor of [batch_size, IMAGE_SIZE, IMAGE_SIZE, 3] size. labels: Labels. 1D tensor of [batch_size] size. """ if not eval_data: filenames = [os.path.join(data_dir, 'data_batch_%d.bin' % i) for i in xrange(1, 6)] num_examples_per_epoch = NUM_EXAMPLES_PER_EPOCH_FOR_TRAIN else: filenames = [os.path.join(data_dir, 'test_batch.bin')] num_examples_per_epoch = NUM_EXAMPLES_PER_EPOCH_FOR_EVAL for f in filenames: if not gfile.Exists(f): raise ValueError('Failed to find file: ' + f) # Create a queue that produces the filenames to read. filename_queue = tf.train.string_input_producer(filenames) # Read examples from files in the filename queue. read_input = read_cifar10(filename_queue) reshaped_image = tf.cast(read_input.uint8image, tf.float32) height = IMAGE_SIZE width = IMAGE_SIZE # Image processing for evaluation. # Crop the central [height, width] of the image. resized_image = tf.image.resize_image_with_crop_or_pad(reshaped_image, width, height) # Subtract off the mean and divide by the variance of the pixels. float_image = tf.image.per_image_standardization(resized_image) # Ensure that the random shuffling has good mixing properties. min_fraction_of_examples_in_queue = 0.4 min_queue_examples = int(num_examples_per_epoch * min_fraction_of_examples_in_queue) # Generate a batch of images and labels by building up a queue of examples. return _generate_image_and_label_batch(float_image, read_input.label, min_queue_examples, batch_size)
2: cifar10.py
# Copyright 2015 Google Inc. All Rights Reserved.## Licensed under the Apache License, Version 2.0 (the "License");# you may not use this file except in compliance with the License.# You may obtain a copy of the License at## http://www.apache.org/licenses/LICENSE-2.0## Unless required by applicable law or agreed to in writing, software# distributed under the License is distributed on an "AS IS" BASIS,# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.# See the License for the specific language governing permissions and# limitations under the License.# =============================================================================="""Builds the CIFAR-10 network.Summary of available functions: # Compute input images and labels for training. If you would like to run # evaluations, use input() instead. inputs, labels = distorted_inputs() # Compute inference on the model inputs to make a prediction. predictions = inference(inputs) # Compute the total loss of the prediction with respect to the labels. loss = loss(predictions, labels) # Create a graph to run one step of training with respect to the loss. train_op = train(loss, global_step)"""# pylint: disable=missing-docstringfrom __future__ import absolute_importfrom __future__ import divisionfrom __future__ import print_functionimport gzipimport osimport reimport sysimport tarfileimport tensorflow.python.platformfrom six.moves import urllibimport tensorflow as tfimport cifar10_inputFLAGS = tf.app.flags.FLAGS# Basic model parameters.tf.app.flags.DEFINE_integer('batch_size', 128, """Number of images to process in a batch.""")tf.app.flags.DEFINE_string('data_dir', '/tmp/cifar10_data', """Path to the CIFAR-10 data directory.""")# Global constants describing the CIFAR-10 data set.IMAGE_SIZE = cifar10_input.IMAGE_SIZENUM_CLASSES = cifar10_input.NUM_CLASSESNUM_EXAMPLES_PER_EPOCH_FOR_TRAIN = cifar10_input.NUM_EXAMPLES_PER_EPOCH_FOR_TRAINNUM_EXAMPLES_PER_EPOCH_FOR_EVAL = cifar10_input.NUM_EXAMPLES_PER_EPOCH_FOR_EVAL# Constants describing the training process.MOVING_AVERAGE_DECAY = 0.9999 # The decay to use for the moving average.NUM_EPOCHS_PER_DECAY = 350.0 # Epochs after which learning rate decays.LEARNING_RATE_DECAY_FACTOR = 0.1 # Learning rate decay factor.INITIAL_LEARNING_RATE = 0.1 # Initial learning rate.# If a model is trained with multiple GPU's prefix all Op names with tower_name# to differentiate the operations. Note that this prefix is removed from the# names of the summaries when visualizing a model.TOWER_NAME = 'tower'DATA_URL = 'http://www.cs.toronto.edu/~kriz/cifar-10-binary.tar.gz'def _activation_summary(x): """Helper to create summaries for activations. Creates a summary that provides a histogram of activations. Creates a summary that measure the sparsity of activations. Args: x: Tensor Returns: nothing """ # Remove 'tower_[0-9]/' from the name in case this is a multi-GPU training # session. This helps the clarity of presentation on tensorboard. tensor_name = re.sub('%s_[0-9]*/' % TOWER_NAME, '', x.op.name) tf.summary.histogram(tensor_name + '/activations', x) tf.summary.scalar(tensor_name + '/sparsity', tf.nn.zero_fraction(x))def _variable_on_cpu(name, shape, initializer): """Helper to create a Variable stored on CPU memory. Args: name: name of the variable shape: list of ints initializer: initializer for Variable Returns: Variable Tensor """ with tf.device('/cpu:0'): var = tf.get_variable(name, shape, initializer=initializer) return vardef _variable_with_weight_decay(name, shape, stddev, wd): """Helper to create an initialized Variable with weight decay. Note that the Variable is initialized with a truncated normal distribution. A weight decay is added only if one is specified. Args: name: name of the variable shape: list of ints stddev: standard deviation of a truncated Gaussian wd: add L2Loss weight decay multiplied by this float. If None, weight decay is not added for this Variable. Returns: Variable Tensor """ var = _variable_on_cpu(name, shape, tf.truncated_normal_initializer(stddev=stddev)) if wd: weight_decay = tf.multiply(tf.nn.l2_loss(var), wd, name='weight_loss') tf.add_to_collection('losses', weight_decay) return vardef distorted_inputs(): """Construct distorted input for CIFAR training using the Reader ops. Returns: images: Images. 4D tensor of [batch_size, IMAGE_SIZE, IMAGE_SIZE, 3] size. labels: Labels. 1D tensor of [batch_size] size. Raises: ValueError: If no data_dir """ if not FLAGS.data_dir: raise ValueError('Please supply a data_dir') data_dir = os.path.join(FLAGS.data_dir, 'cifar-10-batches-bin') return cifar10_input.distorted_inputs(data_dir=data_dir, batch_size=FLAGS.batch_size)def inputs(eval_data): """Construct input for CIFAR evaluation using the Reader ops. Args: eval_data: bool, indicating if one should use the train or eval data set. Returns: images: Images. 4D tensor of [batch_size, IMAGE_SIZE, IMAGE_SIZE, 3] size. labels: Labels. 1D tensor of [batch_size] size. Raises: ValueError: If no data_dir """ if not FLAGS.data_dir: raise ValueError('Please supply a data_dir') data_dir = os.path.join(FLAGS.data_dir, 'cifar-10-batches-bin') return cifar10_input.inputs(eval_data=eval_data, data_dir=data_dir, batch_size=FLAGS.batch_size)def inference(images): """Build the CIFAR-10 model. Args: images: Images returned from distorted_inputs() or inputs(). Returns: Logits. """ # We instantiate all variables using tf.get_variable() instead of # tf.Variable() in order to share variables across multiple GPU training runs. # If we only ran this model on a single GPU, we could simplify this function # by replacing all instances of tf.get_variable() with tf.Variable(). # # conv1 with tf.variable_scope('conv1') as scope: kernel = _variable_with_weight_decay('weights', shape=[5, 5, 3, 64], stddev=1e-4, wd=0.0) conv = tf.nn.conv2d(images, kernel, [1, 1, 1, 1], padding='SAME') biases = _variable_on_cpu('biases', [64], tf.constant_initializer(0.0)) bias = tf.nn.bias_add(conv, biases) conv1 = tf.nn.relu(bias, name=scope.name) _activation_summary(conv1) # pool1 pool1 = tf.nn.max_pool(conv1, ksize=[1, 3, 3, 1], strides=[1, 2, 2, 1], padding='SAME', name='pool1') # norm1 norm1 = tf.nn.lrn(pool1, 4, bias=1.0, alpha=0.001 / 9.0, beta=0.75, name='norm1') # conv2 with tf.variable_scope('conv2') as scope: kernel = _variable_with_weight_decay('weights', shape=[5, 5, 64, 64], stddev=1e-4, wd=0.0) conv = tf.nn.conv2d(norm1, kernel, [1, 1, 1, 1], padding='SAME') biases = _variable_on_cpu('biases', [64], tf.constant_initializer(0.1)) bias = tf.nn.bias_add(conv, biases) conv2 = tf.nn.relu(bias, name=scope.name) _activation_summary(conv2) # norm2 norm2 = tf.nn.lrn(conv2, 4, bias=1.0, alpha=0.001 / 9.0, beta=0.75, name='norm2') # pool2 pool2 = tf.nn.max_pool(norm2, ksize=[1, 3, 3, 1], strides=[1, 2, 2, 1], padding='SAME', name='pool2') # local3 with tf.variable_scope('local3') as scope: # Move everything into depth so we can perform a single matrix multiply. dim = 1 for d in pool2.get_shape()[1:].as_list(): dim *= d reshape = tf.reshape(pool2, [FLAGS.batch_size, dim]) weights = _variable_with_weight_decay('weights', shape=[dim, 384], stddev=0.04, wd=0.004) biases = _variable_on_cpu('biases', [384], tf.constant_initializer(0.1)) local3 = tf.nn.relu(tf.matmul(reshape, weights) + biases, name=scope.name) _activation_summary(local3) # local4 with tf.variable_scope('local4') as scope: weights = _variable_with_weight_decay('weights', shape=[384, 192], stddev=0.04, wd=0.004) biases = _variable_on_cpu('biases', [192], tf.constant_initializer(0.1)) local4 = tf.nn.relu(tf.matmul(local3, weights) + biases, name=scope.name) _activation_summary(local4) # softmax, i.e. softmax(WX + b) with tf.variable_scope('softmax_linear') as scope: weights = _variable_with_weight_decay('weights', [192, NUM_CLASSES], stddev=1/192.0, wd=0.0) biases = _variable_on_cpu('biases', [NUM_CLASSES], tf.constant_initializer(0.0)) softmax_linear = tf.add(tf.matmul(local4, weights), biases, name=scope.name) _activation_summary(softmax_linear) return softmax_lineardef loss(logits, labels): """Add L2Loss to all the trainable variables. Add summary for for "Loss" and "Loss/avg". Args: logits: Logits from inference(). labels: Labels from distorted_inputs or inputs(). 1-D tensor of shape [batch_size] Returns: Loss tensor of type float. """ # Reshape the labels into a dense Tensor of # shape [batch_size, NUM_CLASSES]. sparse_labels = tf.reshape(labels, [FLAGS.batch_size, 1]) indices = tf.reshape(tf.range(FLAGS.batch_size), [FLAGS.batch_size, 1]) concated = tf.concat([indices, sparse_labels], 1) dense_labels = tf.sparse_to_dense(concated, [FLAGS.batch_size, NUM_CLASSES], 1.0, 0.0) # Calculate the average cross entropy loss across the batch. cross_entropy = tf.nn.softmax_cross_entropy_with_logits(logits = logits, labels = dense_labels, name='cross_entropy_per_example') cross_entropy_mean = tf.reduce_mean(cross_entropy, name='cross_entropy') tf.add_to_collection('losses', cross_entropy_mean) # The total loss is defined as the cross entropy loss plus all of the weight # decay terms (L2 loss). return tf.add_n(tf.get_collection('losses'), name='total_loss')def _add_loss_summaries(total_loss): """Add summaries for losses in CIFAR-10 model. Generates moving average for all losses and associated summaries for visualizing the performance of the network. Args: total_loss: Total loss from loss(). Returns: loss_averages_op: op for generating moving averages of losses. """ # Compute the moving average of all individual losses and the total loss. loss_averages = tf.train.ExponentialMovingAverage(0.9, name='avg') losses = tf.get_collection('losses') loss_averages_op = loss_averages.apply(losses + [total_loss]) # Attach a scalar summary to all individual losses and the total loss; do the # same for the averaged version of the losses. for l in losses + [total_loss]: # Name each loss as '(raw)' and name the moving average version of the loss # as the original loss name. tf.summary.scalar(l.op.name +' (raw)', l) tf.summary.scalar(l.op.name, loss_averages.average(l)) return loss_averages_opdef train(total_loss, global_step): """Train CIFAR-10 model. Create an optimizer and apply to all trainable variables. Add moving average for all trainable variables. Args: total_loss: Total loss from loss(). global_step: Integer Variable counting the number of training steps processed. Returns: train_op: op for training. """ # Variables that affect learning rate. num_batches_per_epoch = NUM_EXAMPLES_PER_EPOCH_FOR_TRAIN / FLAGS.batch_size decay_steps = int(num_batches_per_epoch * NUM_EPOCHS_PER_DECAY) # Decay the learning rate exponentially based on the number of steps. lr = tf.train.exponential_decay(INITIAL_LEARNING_RATE, global_step, decay_steps, LEARNING_RATE_DECAY_FACTOR, staircase=True) tf.summary.scalar('learning_rate', lr) # Generate moving averages of all losses and associated summaries. loss_averages_op = _add_loss_summaries(total_loss) # Compute gradients. with tf.control_dependencies([loss_averages_op]): opt = tf.train.GradientDescentOptimizer(lr) grads = opt.compute_gradients(total_loss) # Apply gradients. apply_gradient_op = opt.apply_gradients(grads, global_step=global_step) # Add histograms for trainable variables. for var in tf.trainable_variables(): tf.summary.histogram(var.op.name, var) # Add histograms for gradients. for grad, var in grads: if grad is not None: tf.summary.histogram(var.op.name + '/gradients', grad) # Track the moving averages of all trainable variables. variable_averages = tf.train.ExponentialMovingAverage( MOVING_AVERAGE_DECAY, global_step) variables_averages_op = variable_averages.apply(tf.trainable_variables()) with tf.control_dependencies([apply_gradient_op, variables_averages_op]): train_op = tf.no_op(name='train') return train_opdef maybe_download_and_extract(): """Download and extract the tarball from Alex's website.""" dest_directory = FLAGS.data_dir if not os.path.exists(dest_directory): os.makedirs(dest_directory) filename = DATA_URL.split('/')[-1] filepath = os.path.join(dest_directory, filename) if not os.path.exists(filepath): def _progress(count, block_size, total_size): sys.stdout.write('\r>> Downloading %s %.1f%%' % (filename, float(count * block_size) / float(total_size) * 100.0)) sys.stdout.flush() filepath, _ = urllib.request.urlretrieve(DATA_URL, filepath, reporthook=_progress) print() statinfo = os.stat(filepath) print('Successfully downloaded', filename, statinfo.st_size, 'bytes.') tarfile.open(filepath, 'r:gz').extractall(dest_directory)
3:cifar10_train.py
# Copyright 2015 Google Inc. All Rights Reserved.## Licensed under the Apache License, Version 2.0 (the "License");# you may not use this file except in compliance with the License.# You may obtain a copy of the License at## http://www.apache.org/licenses/LICENSE-2.0## Unless required by applicable law or agreed to in writing, software# distributed under the License is distributed on an "AS IS" BASIS,# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.# See the License for the specific language governing permissions and# limitations under the License.# =============================================================================="""A binary to train CIFAR-10 using a single GPU.Accuracy:cifar10_train.py achieves ~86% accuracy after 100K steps (256 epochs ofdata) as judged by cifar10_eval.py.Speed: With batch_size 128.System | Step Time (sec/batch) | Accuracy------------------------------------------------------------------1 Tesla K20m | 0.35-0.60 | ~86% at 60K steps (5 hours)1 Tesla K40m | 0.25-0.35 | ~86% at 100K steps (4 hours)Usage:Please see the tutorial and website for how to download the CIFAR-10data set, compile the program and train the model.http://tensorflow.org/tutorials/deep_cnn/"""from __future__ import absolute_importfrom __future__ import divisionfrom __future__ import print_functionfrom datetime import datetimeimport os.pathimport timeimport tensorflow.python.platformfrom tensorflow.python.platform import gfileimport numpy as npfrom six.moves import xrange # pylint: disable=redefined-builtinimport tensorflow as tfimport cifar10FLAGS = tf.app.flags.FLAGStf.app.flags.DEFINE_string('train_dir', '/tmp/cifar10_train', """Directory where to write event logs """ """and checkpoint.""")tf.app.flags.DEFINE_integer('max_steps', 1000000, """Number of batches to run.""")tf.app.flags.DEFINE_boolean('log_device_placement', False, """Whether to log device placement.""")def train(): """Train CIFAR-10 for a number of steps.""" with tf.Graph().as_default(): global_step = tf.Variable(0, trainable=False) # Get images and labels for CIFAR-10. images, labels = cifar10.distorted_inputs() # Build a Graph that computes the logits predictions from the # inference model. logits = cifar10.inference(images) # Calculate loss. loss = cifar10.loss(logits, labels) # Build a Graph that trains the model with one batch of examples and # updates the model parameters. train_op = cifar10.train(loss, global_step) # Create a saver. saver = tf.train.Saver(tf.global_variables()) # Build the summary operation based on the TF collection of Summaries. summary_op = tf.summary.merge_all() # Build an initialization operation to run below. init = tf.initialize_all_variables() # Start running operations on the Graph. sess = tf.Session(config=tf.ConfigProto( log_device_placement=FLAGS.log_device_placement)) sess.run(init) # Start the queue runners. tf.train.start_queue_runners(sess=sess) summary_writer = tf.summary.FileWriter(FLAGS.train_dir, graph_def=sess.graph_def) for step in xrange(FLAGS.max_steps): start_time = time.time() _, loss_value = sess.run([train_op, loss]) duration = time.time() - start_time assert not np.isnan(loss_value), 'Model diverged with loss = NaN' if step % 10 == 0: num_examples_per_step = FLAGS.batch_size examples_per_sec = num_examples_per_step / duration sec_per_batch = float(duration) format_str = ('%s: step %d, loss = %.2f (%.1f examples/sec; %.3f ' 'sec/batch)') print (format_str % (datetime.now(), step, loss_value, examples_per_sec, sec_per_batch)) if step % 100 == 0: summary_str = sess.run(summary_op) summary_writer.add_summary(summary_str, step) # Save the model checkpoint periodically. if step % 1000 == 0 or (step + 1) == FLAGS.max_steps: checkpoint_path = os.path.join(FLAGS.train_dir, 'model.ckpt') saver.save(sess, checkpoint_path, global_step=step)def main(argv=None): # pylint: disable=unused-argument cifar10.maybe_download_and_extract() if gfile.Exists(FLAGS.train_dir): gfile.DeleteRecursively(FLAGS.train_dir) gfile.MakeDirs(FLAGS.train_dir) train()if __name__ == '__main__': tf.app.run()
4:cifar10_eval.py
# Copyright 2015 Google Inc. All Rights Reserved.## Licensed under the Apache License, Version 2.0 (the "License");# you may not use this file except in compliance with the License.# You may obtain a copy of the License at## http://www.apache.org/licenses/LICENSE-2.0## Unless required by applicable law or agreed to in writing, software# distributed under the License is distributed on an "AS IS" BASIS,# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.# See the License for the specific language governing permissions and# limitations under the License.# =============================================================================="""Evaluation for CIFAR-10.Accuracy:cifar10_train.py achieves 83.0% accuracy after 100K steps (256 epochsof data) as judged by cifar10_eval.py.Speed:On a single Tesla K40, cifar10_train.py processes a single batch of 128 imagesin 0.25-0.35 sec (i.e. 350 - 600 images /sec). The model reaches ~86%accuracy after 100K steps in 8 hours of training time.Usage:Please see the tutorial and website for how to download the CIFAR-10data set, compile the program and train the model.http://tensorflow.org/tutorials/deep_cnn/"""from __future__ import absolute_importfrom __future__ import divisionfrom __future__ import print_functionfrom datetime import datetimeimport mathimport timeimport tensorflow.python.platformfrom tensorflow.python.platform import gfileimport numpy as npimport tensorflow as tfimport cifar10FLAGS = tf.app.flags.FLAGStf.app.flags.DEFINE_string('eval_dir', '/tmp/cifar10_eval', """Directory where to write event logs.""")tf.app.flags.DEFINE_string('eval_data', 'test', """Either 'test' or 'train_eval'.""")tf.app.flags.DEFINE_string('checkpoint_dir', '/tmp/cifar10_train', """Directory where to read model checkpoints.""")tf.app.flags.DEFINE_integer('eval_interval_secs', 60 * 5, """How often to run the eval.""")tf.app.flags.DEFINE_integer('num_examples', 10000, """Number of examples to run.""")tf.app.flags.DEFINE_boolean('run_once', False, """Whether to run eval only once.""")def eval_once(saver, summary_writer, top_k_op, summary_op): """Run Eval once. Args: saver: Saver. summary_writer: Summary writer. top_k_op: Top K op. summary_op: Summary op. """ with tf.Session() as sess: ckpt = tf.train.get_checkpoint_state(FLAGS.checkpoint_dir) if ckpt and ckpt.model_checkpoint_path: # Restores from checkpoint saver.restore(sess, ckpt.model_checkpoint_path) # Assuming model_checkpoint_path looks something like: # /my-favorite-path/cifar10_train/model.ckpt-0, # extract global_step from it. global_step = ckpt.model_checkpoint_path.split('/')[-1].split('-')[-1] else: print('No checkpoint file found') return # Start the queue runners. coord = tf.train.Coordinator() try: threads = [] for qr in tf.get_collection(tf.GraphKeys.QUEUE_RUNNERS): threads.extend(qr.create_threads(sess, coord=coord, daemon=True, start=True)) num_iter = int(math.ceil(FLAGS.num_examples / FLAGS.batch_size)) true_count = 0 # Counts the number of correct predictions. total_sample_count = num_iter * FLAGS.batch_size step = 0 while step < num_iter and not coord.should_stop(): predictions = sess.run([top_k_op]) true_count += np.sum(predictions) step += 1 # Compute precision @ 1. precision = true_count / total_sample_count print('%s: precision @ 1 = %.3f' % (datetime.now(), precision)) summary = tf.Summary() summary.ParseFromString(sess.run(summary_op)) summary.value.add(tag='Precision @ 1', simple_value=precision) summary_writer.add_summary(summary, global_step) except Exception as e: # pylint: disable=broad-except coord.request_stop(e) coord.request_stop() coord.join(threads, stop_grace_period_secs=10)def evaluate(): """Eval CIFAR-10 for a number of steps.""" with tf.Graph().as_default(): # Get images and labels for CIFAR-10. eval_data = FLAGS.eval_data == 'test' images, labels = cifar10.inputs(eval_data=eval_data) # Build a Graph that computes the logits predictions from the # inference model. logits = cifar10.inference(images) # Calculate predictions. top_k_op = tf.nn.in_top_k(logits, labels, 1) # Restore the moving average version of the learned variables for eval. variable_averages = tf.train.ExponentialMovingAverage( cifar10.MOVING_AVERAGE_DECAY) variables_to_restore = variable_averages.variables_to_restore() saver = tf.train.Saver(variables_to_restore) # Build the summary operation based on the TF collection of Summaries. summary_op = tf.summary.merge_all() graph_def = tf.get_default_graph().as_graph_def() summary_writer = tf.summary.FileWriter(FLAGS.eval_dir, graph_def=graph_def) while True: eval_once(saver, summary_writer, top_k_op, summary_op) if FLAGS.run_once: break time.sleep(FLAGS.eval_interval_secs)def main(argv=None): # pylint: disable=unused-argument cifar10.maybe_download_and_extract() if gfile.Exists(FLAGS.eval_dir): gfile.DeleteRecursively(FLAGS.eval_dir) gfile.MakeDirs(FLAGS.eval_dir) evaluate()if __name__ == '__main__': tf.app.run()
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